Coverage Report

Created: 2026-06-24 02:03

next uncovered line (L), next uncovered region (R), next uncovered branch (B)
be/src/exec/pipeline/pipeline_fragment_context.cpp
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Source
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// Licensed to the Apache Software Foundation (ASF) under one
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// or more contributor license agreements.  See the NOTICE file
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// distributed with this work for additional information
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// regarding copyright ownership.  The ASF licenses this file
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// to you under the Apache License, Version 2.0 (the
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// "License"); you may not use this file except in compliance
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// with the License.  You may obtain a copy of the License at
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//
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//   http://www.apache.org/licenses/LICENSE-2.0
10
//
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// Unless required by applicable law or agreed to in writing,
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// software distributed under the License is distributed on an
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// "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
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// KIND, either express or implied.  See the License for the
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// specific language governing permissions and limitations
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// under the License.
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#include "exec/pipeline/pipeline_fragment_context.h"
19
20
#include <gen_cpp/DataSinks_types.h>
21
#include <gen_cpp/FrontendService.h>
22
#include <gen_cpp/FrontendService_types.h>
23
#include <gen_cpp/PaloInternalService_types.h>
24
#include <gen_cpp/PlanNodes_types.h>
25
#include <pthread.h>
26
27
#include <algorithm>
28
#include <cstdlib>
29
// IWYU pragma: no_include <bits/chrono.h>
30
#include <fmt/format.h>
31
#include <thrift/Thrift.h>
32
#include <thrift/protocol/TDebugProtocol.h>
33
#include <thrift/transport/TTransportException.h>
34
35
#include <chrono> // IWYU pragma: keep
36
#include <map>
37
#include <memory>
38
#include <ostream>
39
#include <utility>
40
41
#include "cloud/config.h"
42
#include "common/cast_set.h"
43
#include "common/config.h"
44
#include "common/exception.h"
45
#include "common/logging.h"
46
#include "common/status.h"
47
#include "exec/exchange/local_exchange_sink_operator.h"
48
#include "exec/exchange/local_exchange_source_operator.h"
49
#include "exec/exchange/local_exchanger.h"
50
#include "exec/exchange/vdata_stream_mgr.h"
51
#include "exec/operator/aggregation_sink_operator.h"
52
#include "exec/operator/aggregation_source_operator.h"
53
#include "exec/operator/analytic_sink_operator.h"
54
#include "exec/operator/analytic_source_operator.h"
55
#include "exec/operator/assert_num_rows_operator.h"
56
#include "exec/operator/blackhole_sink_operator.h"
57
#include "exec/operator/bucketed_aggregation_sink_operator.h"
58
#include "exec/operator/bucketed_aggregation_source_operator.h"
59
#include "exec/operator/cache_sink_operator.h"
60
#include "exec/operator/cache_source_operator.h"
61
#include "exec/operator/datagen_operator.h"
62
#include "exec/operator/dict_sink_operator.h"
63
#include "exec/operator/distinct_streaming_aggregation_operator.h"
64
#include "exec/operator/empty_set_operator.h"
65
#include "exec/operator/exchange_sink_operator.h"
66
#include "exec/operator/exchange_source_operator.h"
67
#include "exec/operator/file_scan_operator.h"
68
#include "exec/operator/group_commit_block_sink_operator.h"
69
#include "exec/operator/group_commit_scan_operator.h"
70
#include "exec/operator/hashjoin_build_sink.h"
71
#include "exec/operator/hashjoin_probe_operator.h"
72
#include "exec/operator/hive_table_sink_operator.h"
73
#include "exec/operator/iceberg_delete_sink_operator.h"
74
#include "exec/operator/iceberg_merge_sink_operator.h"
75
#include "exec/operator/iceberg_table_sink_operator.h"
76
#include "exec/operator/jdbc_scan_operator.h"
77
#include "exec/operator/jdbc_table_sink_operator.h"
78
#include "exec/operator/local_merge_sort_source_operator.h"
79
#include "exec/operator/materialization_opertor.h"
80
#include "exec/operator/maxcompute_table_sink_operator.h"
81
#include "exec/operator/memory_scratch_sink_operator.h"
82
#include "exec/operator/meta_scan_operator.h"
83
#include "exec/operator/multi_cast_data_stream_sink.h"
84
#include "exec/operator/multi_cast_data_stream_source.h"
85
#include "exec/operator/nested_loop_join_build_operator.h"
86
#include "exec/operator/nested_loop_join_probe_operator.h"
87
#include "exec/operator/olap_scan_operator.h"
88
#include "exec/operator/olap_table_sink_operator.h"
89
#include "exec/operator/olap_table_sink_v2_operator.h"
90
#include "exec/operator/partition_sort_sink_operator.h"
91
#include "exec/operator/partition_sort_source_operator.h"
92
#include "exec/operator/partitioned_aggregation_sink_operator.h"
93
#include "exec/operator/partitioned_aggregation_source_operator.h"
94
#include "exec/operator/partitioned_hash_join_probe_operator.h"
95
#include "exec/operator/partitioned_hash_join_sink_operator.h"
96
#include "exec/operator/rec_cte_anchor_sink_operator.h"
97
#include "exec/operator/rec_cte_scan_operator.h"
98
#include "exec/operator/rec_cte_sink_operator.h"
99
#include "exec/operator/rec_cte_source_operator.h"
100
#include "exec/operator/repeat_operator.h"
101
#include "exec/operator/result_file_sink_operator.h"
102
#include "exec/operator/result_sink_operator.h"
103
#include "exec/operator/schema_scan_operator.h"
104
#include "exec/operator/select_operator.h"
105
#include "exec/operator/set_probe_sink_operator.h"
106
#include "exec/operator/set_sink_operator.h"
107
#include "exec/operator/set_source_operator.h"
108
#include "exec/operator/sort_sink_operator.h"
109
#include "exec/operator/sort_source_operator.h"
110
#include "exec/operator/spill_iceberg_table_sink_operator.h"
111
#include "exec/operator/spill_sort_sink_operator.h"
112
#include "exec/operator/spill_sort_source_operator.h"
113
#include "exec/operator/streaming_aggregation_operator.h"
114
#include "exec/operator/table_function_operator.h"
115
#include "exec/operator/tvf_table_sink_operator.h"
116
#include "exec/operator/union_sink_operator.h"
117
#include "exec/operator/union_source_operator.h"
118
#include "exec/pipeline/dependency.h"
119
#include "exec/pipeline/pipeline_task.h"
120
#include "exec/pipeline/task_scheduler.h"
121
#include "exec/runtime_filter/runtime_filter_mgr.h"
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#include "exec/sort/topn_sorter.h"
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#include "exec/spill/spill_file.h"
124
#include "io/fs/stream_load_pipe.h"
125
#include "load/stream_load/new_load_stream_mgr.h"
126
#include "runtime/exec_env.h"
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#include "runtime/fragment_mgr.h"
128
#include "runtime/result_buffer_mgr.h"
129
#include "runtime/runtime_state.h"
130
#include "runtime/thread_context.h"
131
#include "service/backend_options.h"
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#include "util/client_cache.h"
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#include "util/countdown_latch.h"
134
#include "util/debug_util.h"
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#include "util/network_util.h"
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#include "util/uid_util.h"
137
138
namespace doris {
139
PipelineFragmentContext::PipelineFragmentContext(
140
        TUniqueId query_id, const TPipelineFragmentParams& request,
141
        std::shared_ptr<QueryContext> query_ctx, ExecEnv* exec_env,
142
        const std::function<void(RuntimeState*, Status*)>& call_back)
143
450k
        : _query_id(std::move(query_id)),
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450k
          _fragment_id(request.fragment_id),
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450k
          _exec_env(exec_env),
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450k
          _query_ctx(std::move(query_ctx)),
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450k
          _call_back(call_back),
148
450k
          _is_report_on_cancel(true),
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450k
          _params(request),
150
450k
          _parallel_instances(_params.__isset.parallel_instances ? _params.parallel_instances : 0),
151
450k
          _need_notify_close(request.__isset.need_notify_close ? request.need_notify_close
152
450k
                                                               : false) {
153
450k
    _fragment_watcher.start();
154
450k
}
155
156
451k
PipelineFragmentContext::~PipelineFragmentContext() {
157
451k
    LOG_INFO("PipelineFragmentContext::~PipelineFragmentContext")
158
451k
            .tag("query_id", print_id(_query_id))
159
451k
            .tag("fragment_id", _fragment_id);
160
451k
    _release_resource();
161
451k
    {
162
        // The memory released by the query end is recorded in the query mem tracker.
163
451k
        SCOPED_SWITCH_THREAD_MEM_TRACKER_LIMITER(_query_ctx->query_mem_tracker());
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451k
        _runtime_state.reset();
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451k
        _query_ctx.reset();
166
451k
    }
167
451k
}
168
169
50
bool PipelineFragmentContext::is_timeout(timespec now) const {
170
50
    if (_timeout <= 0) {
171
0
        return false;
172
0
    }
173
50
    return _fragment_watcher.elapsed_time_seconds(now) > _timeout;
174
50
}
175
176
// notify_close() transitions the PFC from "waiting for external close notification" to
177
// "self-managed close". For recursive CTE fragments, the old PFC is kept alive until
178
// the rerun_fragment(wait_for_destroy) RPC calls this to trigger shutdown.
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// Returns true if all tasks have already closed (i.e., the PFC can be safely destroyed).
180
9.22k
bool PipelineFragmentContext::notify_close() {
181
9.22k
    bool all_closed = false;
182
9.22k
    bool need_remove = false;
183
9.22k
    {
184
9.22k
        std::lock_guard<std::mutex> l(_task_mutex);
185
9.22k
        if (_closed_tasks >= _total_tasks) {
186
3.51k
            if (_need_notify_close) {
187
                // Fragment was cancelled and waiting for notify to close.
188
                // Record that we need to remove from fragment mgr, but do it
189
                // after releasing _task_mutex to avoid ABBA deadlock with
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                // dump_pipeline_tasks() (which acquires _pipeline_map lock
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                // first, then _task_mutex via debug_string()).
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3.45k
                need_remove = true;
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3.45k
            }
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3.51k
            all_closed = true;
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3.51k
        }
196
        // make fragment release by self after cancel
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9.22k
        _need_notify_close = false;
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9.22k
    }
199
9.22k
    if (need_remove) {
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3.45k
        _exec_env->fragment_mgr()->remove_pipeline_context({_query_id, _fragment_id});
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3.45k
    }
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9.22k
    return all_closed;
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9.22k
}
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// Must not add lock in this method. Because it will call query ctx cancel. And
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// QueryCtx cancel will call fragment ctx cancel. And Also Fragment ctx's running
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// Method like exchange sink buffer will call query ctx cancel. If we add lock here
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// There maybe dead lock.
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5.71k
void PipelineFragmentContext::cancel(const Status reason) {
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5.71k
    LOG_INFO("PipelineFragmentContext::cancel")
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5.71k
            .tag("query_id", print_id(_query_id))
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5.71k
            .tag("fragment_id", _fragment_id)
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5.71k
            .tag("reason", reason.to_string());
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5.71k
    if (notify_close()) {
215
78
        return;
216
78
    }
217
    // Timeout is a special error code, we need print current stack to debug timeout issue.
218
5.63k
    if (reason.is<ErrorCode::TIMEOUT>()) {
219
1
        auto dbg_str = fmt::format("PipelineFragmentContext is cancelled due to timeout:\n{}",
220
1
                                   debug_string());
221
1
        LOG_LONG_STRING(WARNING, dbg_str);
222
1
    }
223
224
    // `ILLEGAL_STATE` means queries this fragment belongs to was not found in FE (maybe finished)
225
5.63k
    if (reason.is<ErrorCode::ILLEGAL_STATE>()) {
226
0
        LOG_WARNING("PipelineFragmentContext is cancelled due to illegal state : {}",
227
0
                    debug_string());
228
0
    }
229
230
5.63k
    if (reason.is<ErrorCode::MEM_LIMIT_EXCEEDED>() || reason.is<ErrorCode::MEM_ALLOC_FAILED>()) {
231
0
        print_profile("cancel pipeline, reason: " + reason.to_string());
232
0
    }
233
234
5.63k
    if (auto error_url = get_load_error_url(); !error_url.empty()) {
235
23
        _query_ctx->set_load_error_url(error_url);
236
23
    }
237
238
5.63k
    if (auto first_error_msg = get_first_error_msg(); !first_error_msg.empty()) {
239
23
        _query_ctx->set_first_error_msg(first_error_msg);
240
23
    }
241
242
5.63k
    _query_ctx->cancel(reason, _fragment_id);
243
5.63k
    if (reason.is<ErrorCode::LIMIT_REACH>()) {
244
290
        _is_report_on_cancel = false;
245
5.34k
    } else {
246
20.0k
        for (auto& id : _fragment_instance_ids) {
247
20.0k
            LOG(WARNING) << "PipelineFragmentContext cancel instance: " << print_id(id);
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20.0k
        }
249
5.34k
    }
250
    // Get pipe from new load stream manager and send cancel to it or the fragment may hang to wait read from pipe
251
    // For stream load the fragment's query_id == load id, it is set in FE.
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5.63k
    auto stream_load_ctx = _exec_env->new_load_stream_mgr()->get(_query_id);
253
5.63k
    if (stream_load_ctx != nullptr) {
254
31
        stream_load_ctx->pipe->cancel(reason.to_string());
255
        // Set error URL here because after pipe is cancelled, stream load execution may return early.
256
        // We need to set the error URL at this point to ensure error information is properly
257
        // propagated to the client.
258
31
        stream_load_ctx->error_url = get_load_error_url();
259
31
        stream_load_ctx->first_error_msg = get_first_error_msg();
260
31
    }
261
262
20.6k
    for (auto& tasks : _tasks) {
263
44.7k
        for (auto& task : tasks) {
264
44.7k
            task.first->unblock_all_dependencies();
265
44.7k
        }
266
20.6k
    }
267
5.63k
}
268
269
683k
PipelinePtr PipelineFragmentContext::add_pipeline(PipelinePtr parent, int idx) {
270
683k
    PipelineId id = _next_pipeline_id++;
271
683k
    auto pipeline = std::make_shared<Pipeline>(
272
683k
            id, parent ? std::min(parent->num_tasks(), _num_instances) : _num_instances,
273
683k
            parent ? parent->num_tasks() : _num_instances);
274
683k
    if (idx >= 0) {
275
1.17k
        _pipelines.insert(_pipelines.begin() + idx, pipeline);
276
682k
    } else {
277
682k
        _pipelines.emplace_back(pipeline);
278
682k
    }
279
683k
    if (parent) {
280
225k
        parent->set_children(pipeline);
281
225k
    }
282
683k
    return pipeline;
283
683k
}
284
285
450k
Status PipelineFragmentContext::_build_and_prepare_full_pipeline(ThreadPool* thread_pool) {
286
450k
    {
287
450k
        SCOPED_TIMER(_build_pipelines_timer);
288
        // 2. Build pipelines with operators in this fragment.
289
450k
        auto root_pipeline = add_pipeline();
290
450k
        RETURN_IF_ERROR(_build_pipelines(_runtime_state->obj_pool(), *_query_ctx->desc_tbl,
291
450k
                                         &_root_op, root_pipeline));
292
293
        // Propagate _num_instances from LOCAL_EXCHANGE pipelines to ancestor pipelines
294
        // that inherited reduced num_tasks from a serial operator.
295
450k
        _propagate_local_exchange_num_tasks();
296
297
        // Create deferred local exchangers now that all pipelines have final num_tasks.
298
450k
        RETURN_IF_ERROR(_create_deferred_local_exchangers());
299
300
        // Raise num_tasks for pipelines whose serial non-scan operators (e.g.,
301
        // UNPARTITIONED Exchange) reduced num_tasks below _num_instances.
302
        // Without this, fragment instances 1+ have no task for these pipelines
303
        // and downstream operators fail with "must set shared state".
304
        //
305
        // This applies to ALL pipelines (not just deferred exchanger upstreams):
306
        // fragments with UNION/INTERSECT/EXCEPT + serial Exchange in child
307
        // pipelines also need the raise, even without FE-planned local exchange.
308
        //
309
        // Exception: serial scan sources (pooling scan) keep num_tasks=1 — the
310
        // PassthroughExchanger(1, N) handles the fan-out correctly.
311
        // NOTE: Do NOT raise pipelines whose source is a serial operator
312
        // (Exchange or scan) — they legitimately have 1 task, and raising
313
        // them causes crashes (e.g., 4 Exchange tasks but only 1 receives
314
        // data).  The correct fix for shared state injection across
315
        // instances is handled by the FE: it inserts local exchange nodes
316
        // between serial operators and their downstream consumers, creating
317
        // proper pipeline boundaries with _num_instances tasks.
318
319
        // 3. Create sink operator
320
450k
        if (!_params.fragment.__isset.output_sink) {
321
0
            return Status::InternalError("No output sink in this fragment!");
322
0
        }
323
450k
        RETURN_IF_ERROR(_create_data_sink(_runtime_state->obj_pool(), _params.fragment.output_sink,
324
450k
                                          _params.fragment.output_exprs, _params,
325
450k
                                          root_pipeline->output_row_desc(), _runtime_state.get(),
326
450k
                                          *_desc_tbl, root_pipeline->id()));
327
450k
        RETURN_IF_ERROR(_sink->init(_params.fragment.output_sink));
328
450k
        RETURN_IF_ERROR(root_pipeline->set_sink(_sink));
329
330
681k
        for (PipelinePtr& pipeline : _pipelines) {
331
18.4E
            DCHECK(pipeline->sink() != nullptr) << pipeline->operators().size();
332
681k
            RETURN_IF_ERROR(pipeline->sink()->set_child(pipeline->operators().back()));
333
681k
        }
334
450k
    }
335
    // 4. Build local exchanger
336
450k
    if (_runtime_state->plan_local_shuffle()) {
337
147k
        SCOPED_TIMER(_plan_local_exchanger_timer);
338
147k
        RETURN_IF_ERROR(_plan_local_exchange(_params.num_buckets,
339
147k
                                             _params.bucket_seq_to_instance_idx,
340
147k
                                             _params.shuffle_idx_to_instance_idx));
341
147k
    }
342
343
    // 5. Initialize global states in pipelines.
344
683k
    for (PipelinePtr& pipeline : _pipelines) {
345
683k
        SCOPED_TIMER(_prepare_all_pipelines_timer);
346
683k
        pipeline->children().clear();
347
683k
        RETURN_IF_ERROR(pipeline->prepare(_runtime_state.get()));
348
683k
    }
349
350
449k
    {
351
449k
        SCOPED_TIMER(_build_tasks_timer);
352
        // 6. Build pipeline tasks and initialize local state.
353
449k
        RETURN_IF_ERROR(_build_pipeline_tasks(thread_pool));
354
449k
    }
355
356
449k
    return Status::OK();
357
449k
}
358
359
450k
Status PipelineFragmentContext::prepare(ThreadPool* thread_pool) {
360
450k
    if (_prepared) {
361
0
        return Status::InternalError("Already prepared");
362
0
    }
363
450k
    if (_params.__isset.query_options && _params.query_options.__isset.execution_timeout) {
364
450k
        _timeout = _params.query_options.execution_timeout;
365
450k
    }
366
367
450k
    _fragment_level_profile = std::make_unique<RuntimeProfile>("PipelineContext");
368
450k
    _prepare_timer = ADD_TIMER(_fragment_level_profile, "PrepareTime");
369
450k
    SCOPED_TIMER(_prepare_timer);
370
450k
    _build_pipelines_timer = ADD_TIMER(_fragment_level_profile, "BuildPipelinesTime");
371
450k
    _init_context_timer = ADD_TIMER(_fragment_level_profile, "InitContextTime");
372
450k
    _plan_local_exchanger_timer = ADD_TIMER(_fragment_level_profile, "PlanLocalLocalExchangerTime");
373
450k
    _build_tasks_timer = ADD_TIMER(_fragment_level_profile, "BuildTasksTime");
374
450k
    _prepare_all_pipelines_timer = ADD_TIMER(_fragment_level_profile, "PrepareAllPipelinesTime");
375
450k
    {
376
450k
        SCOPED_TIMER(_init_context_timer);
377
450k
        cast_set(_num_instances, _params.local_params.size());
378
450k
        _total_instances =
379
450k
                _params.__isset.total_instances ? _params.total_instances : _num_instances;
380
381
450k
        auto* fragment_context = this;
382
383
450k
        if (_params.query_options.__isset.is_report_success) {
384
447k
            fragment_context->set_is_report_success(_params.query_options.is_report_success);
385
447k
        }
386
387
        // 1. Set up the global runtime state.
388
450k
        _runtime_state = RuntimeState::create_unique(
389
450k
                _params.query_id, _params.fragment_id, _params.query_options,
390
450k
                _query_ctx->query_globals, _exec_env, _query_ctx.get());
391
450k
        _runtime_state->set_task_execution_context(shared_from_this());
392
450k
        SCOPED_SWITCH_THREAD_MEM_TRACKER_LIMITER(_runtime_state->query_mem_tracker());
393
450k
        if (_params.__isset.backend_id) {
394
445k
            _runtime_state->set_backend_id(_params.backend_id);
395
445k
        }
396
450k
        if (_params.__isset.import_label) {
397
242
            _runtime_state->set_import_label(_params.import_label);
398
242
        }
399
450k
        if (_params.__isset.db_name) {
400
194
            _runtime_state->set_db_name(_params.db_name);
401
194
        }
402
450k
        if (_params.__isset.load_job_id) {
403
0
            _runtime_state->set_load_job_id(_params.load_job_id);
404
0
        }
405
406
450k
        if (_params.is_simplified_param) {
407
151k
            _desc_tbl = _query_ctx->desc_tbl;
408
299k
        } else {
409
299k
            DCHECK(_params.__isset.desc_tbl);
410
299k
            RETURN_IF_ERROR(DescriptorTbl::create(_runtime_state->obj_pool(), _params.desc_tbl,
411
299k
                                                  &_desc_tbl));
412
299k
        }
413
450k
        _runtime_state->set_desc_tbl(_desc_tbl);
414
450k
        _runtime_state->set_num_per_fragment_instances(_params.num_senders);
415
450k
        _runtime_state->set_load_stream_per_node(_params.load_stream_per_node);
416
450k
        _runtime_state->set_total_load_streams(_params.total_load_streams);
417
450k
        _runtime_state->set_num_local_sink(_params.num_local_sink);
418
419
        // init fragment_instance_ids
420
450k
        const auto target_size = _params.local_params.size();
421
450k
        _fragment_instance_ids.resize(target_size);
422
1.63M
        for (size_t i = 0; i < _params.local_params.size(); i++) {
423
1.18M
            auto fragment_instance_id = _params.local_params[i].fragment_instance_id;
424
1.18M
            _fragment_instance_ids[i] = fragment_instance_id;
425
1.18M
        }
426
450k
    }
427
428
450k
    RETURN_IF_ERROR(_build_and_prepare_full_pipeline(thread_pool));
429
430
449k
    _init_next_report_time();
431
432
449k
    _prepared = true;
433
449k
    return Status::OK();
434
450k
}
435
436
Status PipelineFragmentContext::_build_pipeline_tasks_for_instance(
437
        int instance_idx,
438
1.18M
        const std::vector<std::shared_ptr<RuntimeProfile>>& pipeline_id_to_profile) {
439
1.18M
    const auto& local_params = _params.local_params[instance_idx];
440
1.18M
    auto fragment_instance_id = local_params.fragment_instance_id;
441
1.18M
    auto runtime_filter_mgr = std::make_unique<RuntimeFilterMgr>(false);
442
1.18M
    std::map<PipelineId, PipelineTask*> pipeline_id_to_task;
443
1.18M
    auto get_shared_state = [&](PipelinePtr pipeline)
444
1.18M
            -> std::map<int, std::pair<std::shared_ptr<BasicSharedState>,
445
1.96M
                                       std::vector<std::shared_ptr<Dependency>>>> {
446
1.96M
        std::map<int, std::pair<std::shared_ptr<BasicSharedState>,
447
1.96M
                                std::vector<std::shared_ptr<Dependency>>>>
448
1.96M
                shared_state_map;
449
2.47M
        for (auto& op : pipeline->operators()) {
450
2.47M
            auto source_id = op->operator_id();
451
2.47M
            if (auto iter = _op_id_to_shared_state.find(source_id);
452
2.47M
                iter != _op_id_to_shared_state.end()) {
453
757k
                shared_state_map.insert({source_id, iter->second});
454
757k
            }
455
2.47M
        }
456
1.96M
        for (auto sink_to_source_id : pipeline->sink()->dests_id()) {
457
1.96M
            if (auto iter = _op_id_to_shared_state.find(sink_to_source_id);
458
1.96M
                iter != _op_id_to_shared_state.end()) {
459
303k
                shared_state_map.insert({sink_to_source_id, iter->second});
460
303k
            }
461
1.96M
        }
462
1.96M
        return shared_state_map;
463
1.96M
    };
464
465
3.58M
    for (size_t pip_idx = 0; pip_idx < _pipelines.size(); pip_idx++) {
466
2.40M
        auto& pipeline = _pipelines[pip_idx];
467
2.40M
        if (pipeline->num_tasks() > 1 || instance_idx == 0) {
468
1.95M
            auto task_runtime_state = RuntimeState::create_unique(
469
1.95M
                    local_params.fragment_instance_id, _params.query_id, _params.fragment_id,
470
1.95M
                    _params.query_options, _query_ctx->query_globals, _exec_env, _query_ctx.get());
471
1.95M
            {
472
                // Initialize runtime state for this task
473
1.95M
                task_runtime_state->set_query_mem_tracker(_query_ctx->query_mem_tracker());
474
475
1.95M
                task_runtime_state->set_task_execution_context(shared_from_this());
476
1.95M
                task_runtime_state->set_be_number(local_params.backend_num);
477
478
1.96M
                if (_params.__isset.backend_id) {
479
1.96M
                    task_runtime_state->set_backend_id(_params.backend_id);
480
1.96M
                }
481
1.95M
                if (_params.__isset.import_label) {
482
243
                    task_runtime_state->set_import_label(_params.import_label);
483
243
                }
484
1.95M
                if (_params.__isset.db_name) {
485
195
                    task_runtime_state->set_db_name(_params.db_name);
486
195
                }
487
1.95M
                if (_params.__isset.load_job_id) {
488
0
                    task_runtime_state->set_load_job_id(_params.load_job_id);
489
0
                }
490
1.95M
                if (_params.__isset.wal_id) {
491
115
                    task_runtime_state->set_wal_id(_params.wal_id);
492
115
                }
493
1.95M
                if (_params.__isset.content_length) {
494
34
                    task_runtime_state->set_content_length(_params.content_length);
495
34
                }
496
497
1.95M
                task_runtime_state->set_desc_tbl(_desc_tbl);
498
1.95M
                task_runtime_state->set_per_fragment_instance_idx(local_params.sender_id);
499
1.95M
                task_runtime_state->set_num_per_fragment_instances(_params.num_senders);
500
1.95M
                task_runtime_state->resize_op_id_to_local_state(max_operator_id());
501
1.95M
                task_runtime_state->set_max_operator_id(max_operator_id());
502
1.95M
                task_runtime_state->set_load_stream_per_node(_params.load_stream_per_node);
503
1.95M
                task_runtime_state->set_total_load_streams(_params.total_load_streams);
504
1.95M
                task_runtime_state->set_num_local_sink(_params.num_local_sink);
505
506
1.95M
                task_runtime_state->set_runtime_filter_mgr(runtime_filter_mgr.get());
507
1.95M
            }
508
1.95M
            auto cur_task_id = _total_tasks++;
509
1.95M
            task_runtime_state->set_task_id(cur_task_id);
510
1.95M
            task_runtime_state->set_task_num(pipeline->num_tasks());
511
1.95M
            auto task = std::make_shared<PipelineTask>(
512
1.95M
                    pipeline, cur_task_id, task_runtime_state.get(),
513
1.95M
                    std::dynamic_pointer_cast<PipelineFragmentContext>(shared_from_this()),
514
1.95M
                    pipeline_id_to_profile[pip_idx].get(), get_shared_state(pipeline),
515
1.95M
                    instance_idx);
516
1.95M
            pipeline->incr_created_tasks(instance_idx, task.get());
517
1.95M
            pipeline_id_to_task.insert({pipeline->id(), task.get()});
518
1.95M
            _tasks[instance_idx].emplace_back(
519
1.95M
                    std::pair<std::shared_ptr<PipelineTask>, std::unique_ptr<RuntimeState>> {
520
1.95M
                            std::move(task), std::move(task_runtime_state)});
521
1.95M
        }
522
2.40M
    }
523
524
    /**
525
         * Build DAG for pipeline tasks.
526
         * For example, we have
527
         *
528
         *   ExchangeSink (Pipeline1)     JoinBuildSink (Pipeline2)
529
         *            \                      /
530
         *          JoinProbeOperator1 (Pipeline1)    JoinBuildSink (Pipeline3)
531
         *                 \                          /
532
         *               JoinProbeOperator2 (Pipeline1)
533
         *
534
         * In this fragment, we have three pipelines and pipeline 1 depends on pipeline 2 and pipeline 3.
535
         * To build this DAG, `_dag` manage dependencies between pipelines by pipeline ID and
536
         * `pipeline_id_to_task` is used to find the task by a unique pipeline ID.
537
         *
538
         * Finally, we have two upstream dependencies in Pipeline1 corresponding to JoinProbeOperator1
539
         * and JoinProbeOperator2.
540
         */
541
2.41M
    for (auto& _pipeline : _pipelines) {
542
2.41M
        if (pipeline_id_to_task.contains(_pipeline->id())) {
543
1.95M
            auto* task = pipeline_id_to_task[_pipeline->id()];
544
1.95M
            DCHECK(task != nullptr);
545
546
            // If this task has upstream dependency, then inject it into this task.
547
1.95M
            if (_dag.contains(_pipeline->id())) {
548
1.23M
                auto& deps = _dag[_pipeline->id()];
549
1.24M
                for (auto& dep : deps) {
550
1.24M
                    if (pipeline_id_to_task.contains(dep)) {
551
786k
                        auto ss = pipeline_id_to_task[dep]->get_sink_shared_state();
552
786k
                        if (ss) {
553
469k
                            task->inject_shared_state(ss);
554
469k
                        } else {
555
316k
                            pipeline_id_to_task[dep]->inject_shared_state(
556
316k
                                    task->get_source_shared_state());
557
316k
                        }
558
786k
                    }
559
1.24M
                }
560
1.23M
            }
561
1.95M
        }
562
2.41M
    }
563
3.59M
    for (size_t pip_idx = 0; pip_idx < _pipelines.size(); pip_idx++) {
564
2.41M
        if (pipeline_id_to_task.contains(_pipelines[pip_idx]->id())) {
565
1.95M
            auto* task = pipeline_id_to_task[_pipelines[pip_idx]->id()];
566
1.95M
            DCHECK(pipeline_id_to_profile[pip_idx]);
567
1.95M
            std::vector<TScanRangeParams> scan_ranges;
568
1.95M
            auto node_id = _pipelines[pip_idx]->operators().front()->node_id();
569
1.95M
            if (local_params.per_node_scan_ranges.contains(node_id)) {
570
348k
                scan_ranges = local_params.per_node_scan_ranges.find(node_id)->second;
571
348k
            }
572
1.95M
            RETURN_IF_ERROR_OR_CATCH_EXCEPTION(task->prepare(scan_ranges, local_params.sender_id,
573
1.95M
                                                             _params.fragment.output_sink));
574
1.95M
        }
575
2.41M
    }
576
1.18M
    {
577
1.18M
        std::lock_guard<std::mutex> l(_state_map_lock);
578
1.18M
        _runtime_filter_mgr_map[instance_idx] = std::move(runtime_filter_mgr);
579
1.18M
    }
580
1.18M
    return Status::OK();
581
1.18M
}
582
583
449k
Status PipelineFragmentContext::_build_pipeline_tasks(ThreadPool* thread_pool) {
584
449k
    _total_tasks = 0;
585
449k
    _closed_tasks = 0;
586
449k
    const auto target_size = _params.local_params.size();
587
449k
    _tasks.resize(target_size);
588
449k
    _runtime_filter_mgr_map.resize(target_size);
589
1.13M
    for (size_t pip_idx = 0; pip_idx < _pipelines.size(); pip_idx++) {
590
683k
        _pip_id_to_pipeline[_pipelines[pip_idx]->id()] = _pipelines[pip_idx].get();
591
683k
    }
592
449k
    auto pipeline_id_to_profile = _runtime_state->build_pipeline_profile(_pipelines.size());
593
594
449k
    if (target_size > 1 &&
595
449k
        (_runtime_state->query_options().__isset.parallel_prepare_threshold &&
596
125k
         target_size > _runtime_state->query_options().parallel_prepare_threshold)) {
597
        // If instances parallelism is big enough ( > parallel_prepare_threshold), we will prepare all tasks by multi-threads
598
19.6k
        std::vector<Status> prepare_status(target_size);
599
19.6k
        int submitted_tasks = 0;
600
19.6k
        Status submit_status;
601
19.6k
        CountDownLatch latch((int)target_size);
602
233k
        for (int i = 0; i < target_size; i++) {
603
213k
            submit_status = thread_pool->submit_func([&, i]() {
604
213k
                SCOPED_ATTACH_TASK(_query_ctx.get());
605
213k
                prepare_status[i] = _build_pipeline_tasks_for_instance(i, pipeline_id_to_profile);
606
213k
                latch.count_down();
607
213k
            });
608
213k
            if (LIKELY(submit_status.ok())) {
609
213k
                submitted_tasks++;
610
18.4E
            } else {
611
18.4E
                break;
612
18.4E
            }
613
213k
        }
614
19.6k
        latch.arrive_and_wait(target_size - submitted_tasks);
615
19.6k
        if (UNLIKELY(!submit_status.ok())) {
616
0
            return submit_status;
617
0
        }
618
233k
        for (int i = 0; i < submitted_tasks; i++) {
619
213k
            if (!prepare_status[i].ok()) {
620
0
                return prepare_status[i];
621
0
            }
622
213k
        }
623
430k
    } else {
624
1.39M
        for (int i = 0; i < target_size; i++) {
625
969k
            RETURN_IF_ERROR(_build_pipeline_tasks_for_instance(i, pipeline_id_to_profile));
626
969k
        }
627
430k
    }
628
449k
    _pipeline_parent_map.clear();
629
449k
    _op_id_to_shared_state.clear();
630
    // Record task cardinality once when this fragment context finishes task initialization.
631
449k
    _query_ctx->add_total_task_num(_total_tasks.load(std::memory_order_relaxed));
632
633
449k
    return Status::OK();
634
449k
}
635
636
447k
void PipelineFragmentContext::_init_next_report_time() {
637
447k
    auto interval_s = config::pipeline_status_report_interval;
638
447k
    if (_is_report_success && interval_s > 0 && _timeout > interval_s) {
639
43.7k
        VLOG_FILE << "enable period report: fragment id=" << _fragment_id;
640
43.7k
        uint64_t report_fragment_offset = (uint64_t)(rand() % interval_s) * NANOS_PER_SEC;
641
        // We don't want to wait longer than it takes to run the entire fragment.
642
43.7k
        _previous_report_time =
643
43.7k
                MonotonicNanos() + report_fragment_offset - (uint64_t)(interval_s)*NANOS_PER_SEC;
644
43.7k
        _disable_period_report = false;
645
43.7k
    }
646
447k
}
647
648
5.02k
void PipelineFragmentContext::refresh_next_report_time() {
649
5.02k
    auto disable = _disable_period_report.load(std::memory_order_acquire);
650
5.02k
    DCHECK(disable == true);
651
5.02k
    _previous_report_time.store(MonotonicNanos(), std::memory_order_release);
652
5.02k
    _disable_period_report.compare_exchange_strong(disable, false);
653
5.02k
}
654
655
7.19M
void PipelineFragmentContext::trigger_report_if_necessary() {
656
7.19M
    if (!_is_report_success) {
657
6.70M
        return;
658
6.70M
    }
659
497k
    auto disable = _disable_period_report.load(std::memory_order_acquire);
660
497k
    if (disable) {
661
10.1k
        return;
662
10.1k
    }
663
487k
    int32_t interval_s = config::pipeline_status_report_interval;
664
487k
    if (interval_s <= 0) {
665
0
        LOG(WARNING) << "config::status_report_interval is equal to or less than zero, do not "
666
0
                        "trigger "
667
0
                        "report.";
668
0
    }
669
487k
    uint64_t next_report_time = _previous_report_time.load(std::memory_order_acquire) +
670
487k
                                (uint64_t)(interval_s)*NANOS_PER_SEC;
671
487k
    if (MonotonicNanos() > next_report_time) {
672
5.03k
        if (!_disable_period_report.compare_exchange_strong(disable, true,
673
5.03k
                                                            std::memory_order_acq_rel)) {
674
20
            return;
675
20
        }
676
5.01k
        if (VLOG_FILE_IS_ON) {
677
0
            VLOG_FILE << "Reporting "
678
0
                      << "profile for query_id " << print_id(_query_id)
679
0
                      << ", fragment id: " << _fragment_id;
680
681
0
            std::stringstream ss;
682
0
            _runtime_state->runtime_profile()->compute_time_in_profile();
683
0
            _runtime_state->runtime_profile()->pretty_print(&ss);
684
0
            if (_runtime_state->load_channel_profile()) {
685
0
                _runtime_state->load_channel_profile()->pretty_print(&ss);
686
0
            }
687
688
0
            VLOG_FILE << "Query " << print_id(get_query_id()) << " fragment " << get_fragment_id()
689
0
                      << " profile:\n"
690
0
                      << ss.str();
691
0
        }
692
5.01k
        auto st = send_report(false);
693
5.01k
        if (!st.ok()) {
694
0
            disable = true;
695
0
            _disable_period_report.compare_exchange_strong(disable, false,
696
0
                                                           std::memory_order_acq_rel);
697
0
        }
698
5.01k
    }
699
487k
}
700
701
Status PipelineFragmentContext::_build_pipelines(ObjectPool* pool, const DescriptorTbl& descs,
702
447k
                                                 OperatorPtr* root, PipelinePtr cur_pipe) {
703
447k
    if (_params.fragment.plan.nodes.empty()) {
704
0
        throw Exception(ErrorCode::INTERNAL_ERROR, "Invalid plan which has no plan node!");
705
0
    }
706
707
447k
    int node_idx = 0;
708
709
447k
    RETURN_IF_ERROR(_create_tree_helper(pool, _params.fragment.plan.nodes, descs, nullptr,
710
447k
                                        &node_idx, root, cur_pipe, 0, false, false));
711
712
447k
    if (node_idx + 1 != _params.fragment.plan.nodes.size()) {
713
0
        return Status::InternalError(
714
0
                "Plan tree only partially reconstructed. Not all thrift nodes were used.");
715
0
    }
716
447k
    return Status::OK();
717
447k
}
718
719
449k
Status PipelineFragmentContext::_create_deferred_local_exchangers() {
720
449k
    for (auto& info : _deferred_exchangers) {
721
        // DANGER ZONE — do not "fix" this line without reading the history.
722
        //
723
        // sender_count seeds Exchanger::_running_sink_operators, which the source side
724
        // waits to reach 0 via sub_running_sink_operators on each sink LocalState close.
725
        // The correct value is THIS pipeline-instance's sink task count, which is exactly
726
        // info.upstream_pipe->num_tasks() — one PipelineTask per task, one close per task.
727
        //
728
        // Tempting wrong fix #1: `std::max(num_tasks, _num_instances)` to mirror the
729
        //   BE-planned path in _add_local_exchange_impl (~line 1023).  THIS BREAKS the
730
        //   common FE-planned shape of `serial scan → LE(PT) → ...`: upstream_pipe
731
        //   genuinely has num_tasks=1, only 1 close arrives, but seed becomes
732
        //   _num_instances so _running_sink_operators never reaches 0 — downstream
733
        //   sources hang on SHUFFLE_DATA_DEPENDENCY (e.g. MTMV refresh from
734
        //   mtmv_up_down_job_p0/load.groovy stays at Status=RUNNING and regressed
735
        //   exactly this way).  BE-planned mode uses max() because its
736
        //   `cur_pipe` is the source-side pipeline (always raised to _num_instances by
737
        //   add_pipeline) — not analogous to our `upstream_pipe` here, which is the
738
        //   sink-side pipeline that may legitimately stay at 1 for serial sources.
739
        //
740
        // Tempting wrong fix #2: multiply by _num_instances on the theory shared_state
741
        //   is shared across all instances.  Same hang — each fragment-instance
742
        //   PipelineFragmentContext has its OWN _op_id_to_shared_state map, so the
743
        //   exchanger is per-instance, not per-BE.  num_tasks() is already the right
744
        //   close-count for one instance.
745
        //
746
        // If a hang shows up with `_running_sink_operators < 0`, the bug is upstream:
747
        // _propagate_local_exchange_num_tasks left num_tasks too low (or too high) for
748
        // this fragment shape.  Fix THAT pass, not this seed value.
749
104k
        const int sender_count = info.upstream_pipe->num_tasks();
750
104k
        switch (info.partition_type) {
751
16.1k
        case TLocalPartitionType::LOCAL_EXECUTION_HASH_SHUFFLE:
752
16.1k
        case TLocalPartitionType::GLOBAL_EXECUTION_HASH_SHUFFLE:
753
16.1k
            info.shared_state->exchanger = ShuffleExchanger::create_unique(
754
16.1k
                    sender_count, _num_instances, info.num_partitions, info.free_blocks_limit,
755
16.1k
                    info.partition_type);
756
16.1k
            break;
757
495
        case TLocalPartitionType::BUCKET_HASH_SHUFFLE:
758
495
            info.shared_state->exchanger = BucketShuffleExchanger::create_unique(
759
495
                    sender_count, _num_instances, info.num_partitions, info.free_blocks_limit);
760
495
            break;
761
83.9k
        case TLocalPartitionType::PASSTHROUGH:
762
83.9k
            info.shared_state->exchanger = PassthroughExchanger::create_unique(
763
83.9k
                    sender_count, _num_instances, info.free_blocks_limit);
764
83.9k
            break;
765
364
        case TLocalPartitionType::BROADCAST:
766
364
            info.shared_state->exchanger = BroadcastExchanger::create_unique(
767
364
                    sender_count, _num_instances, info.free_blocks_limit);
768
364
            break;
769
2.68k
        case TLocalPartitionType::PASS_TO_ONE:
770
2.68k
            if (_runtime_state->enable_share_hash_table_for_broadcast_join()) {
771
1.64k
                info.shared_state->exchanger = PassToOneExchanger::create_unique(
772
1.64k
                        sender_count, _num_instances, info.free_blocks_limit);
773
1.64k
            } else {
774
1.03k
                info.shared_state->exchanger = BroadcastExchanger::create_unique(
775
1.03k
                        sender_count, _num_instances, info.free_blocks_limit);
776
1.03k
            }
777
2.68k
            break;
778
909
        case TLocalPartitionType::ADAPTIVE_PASSTHROUGH:
779
909
            info.shared_state->exchanger = AdaptivePassthroughExchanger::create_unique(
780
909
                    sender_count, _num_instances, info.free_blocks_limit);
781
909
            break;
782
0
        case TLocalPartitionType::NOOP:
783
0
        case TLocalPartitionType::LOCAL_MERGE_SORT:
784
            // FE-planned LocalExchangeNode currently never emits NOOP or LOCAL_MERGE_SORT
785
            // through the deferred-exchanger path.  NOOP means "no exchange needed" and
786
            // is filtered out before reaching here; LOCAL_MERGE_SORT is planned by the
787
            // legacy BE path only.  Crash in debug to surface the protocol violation if
788
            // that ever changes; return an error in release to avoid silently corrupting
789
            // execution.
790
0
            DCHECK(false) << "FE-planned local exchange should not emit partition_type="
791
0
                          << static_cast<int>(info.partition_type);
792
0
            return Status::InternalError("FE-planned local exchange emitted unsupported type: " +
793
0
                                         std::to_string(static_cast<int>(info.partition_type)));
794
0
        default:
795
            // New TLocalPartitionType added on FE side without a BE handler here.
796
0
            DCHECK(false) << "Unhandled TLocalPartitionType in deferred exchangers: "
797
0
                          << static_cast<int>(info.partition_type);
798
0
            return Status::InternalError("Unsupported FE-planned local exchange type: " +
799
0
                                         std::to_string(static_cast<int>(info.partition_type)));
800
104k
        }
801
104k
    }
802
449k
    _deferred_exchangers.clear();
803
449k
    return Status::OK();
804
449k
}
805
806
449k
void PipelineFragmentContext::_propagate_local_exchange_num_tasks() {
807
    // Only runs when FE has planned local exchanges and BE deferred their construction.
808
    // In legacy mode (enable_local_shuffle_planner=false) BE plans LE itself via
809
    // _plan_local_exchange and _deferred_exchangers stays empty — the legacy path
810
    // already gets its num_tasks right at construction time, so the propagate passes
811
    // would be no-ops and are skipped.  This is a transitional design: once the FE
812
    // planner is the only planner, the propagation logic itself should degrade into
813
    // a pure assertion that the FE plan already wired the right num_tasks everywhere.
814
449k
    if (_deferred_exchangers.empty()) {
815
367k
        return;
816
367k
    }
817
    // Reconcile num_tasks across paired pipelines created by pipeline-splitting operators
818
    // (AGG, SORT, JOIN): they share state via inject_shared_state and must agree, or
819
    // instance 1+ tasks access null shared_state.  A pipeline's num_tasks is fully
820
    // determined by its source operator plus its upstreams:
821
    //   - LocalExchangeSource  -> _num_instances (the LE re-parallelizes)
822
    //   - serial source        -> its reduced count (kept as-is, typically 1)
823
    //   - otherwise (splitter) -> inherit from upstreams: raise to _num_instances if any
824
    //                             upstream was raised by an LE, then lower to a serial
825
    //                             upstream's count (lower wins).
826
    // Visiting each pipeline only after all its upstreams (topological order over _dag) lets
827
    // a single sweep reach the same fixpoint the previous two while-loops iterated to — those
828
    // only existed to reconcile the top-down build's parent-inherited num_tasks guesses.
829
82.0k
    std::map<PipelineId, PipelinePtr> id_to_pipe;
830
82.0k
    std::map<PipelineId, std::vector<PipelineId>> downstreams_of;
831
82.0k
    std::map<PipelineId, int> in_degree;
832
244k
    for (auto& p : _pipelines) {
833
244k
        id_to_pipe[p->id()] = p;
834
244k
        in_degree.try_emplace(p->id(), 0);
835
244k
    }
836
156k
    for (const auto& [downstream_id, upstream_ids] : _dag) {
837
161k
        for (auto upstream_id : upstream_ids) {
838
161k
            downstreams_of[upstream_id].push_back(downstream_id);
839
161k
            in_degree[downstream_id]++;
840
161k
        }
841
156k
    }
842
82.0k
    std::vector<PipelineId> ready;
843
244k
    for (const auto& [id, deg] : in_degree) {
844
244k
        if (deg == 0) {
845
88.2k
            ready.push_back(id);
846
88.2k
        }
847
244k
    }
848
82.0k
    size_t visited = 0;
849
326k
    while (!ready.empty()) {
850
244k
        const auto id = ready.back();
851
244k
        ready.pop_back();
852
244k
        visited++;
853
244k
        auto pit = id_to_pipe.find(id);
854
244k
        if (pit != id_to_pipe.end()) {
855
244k
            auto& pipe = pit->second;
856
244k
            const auto& ops = pipe->operators();
857
244k
            const bool le_source =
858
244k
                    !ops.empty() && dynamic_cast<LocalExchangeSourceOperatorX*>(ops.front().get());
859
244k
            const bool serial_source = !ops.empty() && ops.front()->is_serial_operator();
860
244k
            if (le_source) {
861
104k
                pipe->set_num_tasks(_num_instances);
862
139k
            } else if (!serial_source) {
863
70.3k
                int target = pipe->num_tasks();
864
70.3k
                const auto up_it = _dag.find(id);
865
70.3k
                if (up_it != _dag.end()) {
866
                    // raise: any upstream already at _num_instances (e.g. an LE source)
867
51.3k
                    for (auto upstream_id : up_it->second) {
868
51.3k
                        auto uit = id_to_pipe.find(upstream_id);
869
51.3k
                        if (uit != id_to_pipe.end() && uit->second->num_tasks() >= _num_instances) {
870
51.3k
                            target = _num_instances;
871
51.3k
                            break;
872
51.3k
                        }
873
51.3k
                    }
874
                    // lower: a serial upstream with fewer tasks (wins over the raise above)
875
51.9k
                    for (auto upstream_id : up_it->second) {
876
51.9k
                        auto uit = id_to_pipe.find(upstream_id);
877
51.9k
                        if (uit != id_to_pipe.end() && uit->second->num_tasks() < target &&
878
51.9k
                            !uit->second->operators().empty() &&
879
51.9k
                            uit->second->operators().front()->is_serial_operator()) {
880
0
                            target = uit->second->num_tasks();
881
0
                        }
882
51.9k
                    }
883
51.3k
                }
884
70.3k
                pipe->set_num_tasks(target);
885
70.3k
            }
886
244k
        }
887
244k
        for (auto down : downstreams_of[id]) {
888
161k
            if (--in_degree[down] == 0) {
889
156k
                ready.push_back(down);
890
156k
            }
891
161k
        }
892
244k
    }
893
    // The pipeline DAG is acyclic; if a future change introduces a back-edge, some pipelines
894
    // stay unvisited (in_degree never reaches 0) — fail loudly rather than silently leaving
895
    // their num_tasks unreconciled.
896
82.0k
    DCHECK_EQ(visited, in_degree.size())
897
0
            << "pipeline num_tasks topological sweep visited " << visited << " of "
898
0
            << in_degree.size() << " pipelines (cycle in _dag?)";
899
82.0k
}
900
901
Status PipelineFragmentContext::_create_tree_helper(
902
        ObjectPool* pool, const std::vector<TPlanNode>& tnodes, const DescriptorTbl& descs,
903
        OperatorPtr parent, int* node_idx, OperatorPtr* root, PipelinePtr& cur_pipe, int child_idx,
904
770k
        const bool followed_by_shuffled_operator, const bool require_bucket_distribution) {
905
    // propagate error case
906
770k
    if (*node_idx >= tnodes.size()) {
907
0
        return Status::InternalError(
908
0
                "Failed to reconstruct plan tree from thrift. Node id: {}, number of nodes: {}",
909
0
                *node_idx, tnodes.size());
910
0
    }
911
770k
    const TPlanNode& tnode = tnodes[*node_idx];
912
913
770k
    int num_children = tnodes[*node_idx].num_children;
914
770k
    bool current_followed_by_shuffled_operator = followed_by_shuffled_operator;
915
770k
    bool current_require_bucket_distribution = require_bucket_distribution;
916
    // TODO: Create CacheOperator is confused now
917
770k
    OperatorPtr op = nullptr;
918
770k
    OperatorPtr cache_op = nullptr;
919
770k
    RETURN_IF_ERROR(_create_operator(pool, tnodes[*node_idx], descs, op, cur_pipe,
920
770k
                                     parent == nullptr ? -1 : parent->node_id(), child_idx,
921
770k
                                     followed_by_shuffled_operator,
922
770k
                                     current_require_bucket_distribution, cache_op));
923
    // Initialization must be done here. For example, group by expressions in agg will be used to
924
    // decide if a local shuffle should be planed, so it must be initialized here.
925
770k
    RETURN_IF_ERROR(op->init(tnode, _runtime_state.get()));
926
    // assert(parent != nullptr || (node_idx == 0 && root_expr != nullptr));
927
770k
    if (parent != nullptr) {
928
        // add to parent's child(s)
929
323k
        RETURN_IF_ERROR(parent->set_child(cache_op ? cache_op : op));
930
447k
    } else {
931
447k
        *root = op;
932
447k
    }
933
    /**
934
     * `TLocalPartitionType::GLOBAL_EXECUTION_HASH_SHUFFLE` should be used if an operator is followed by a shuffled operator (shuffled hash join, union operator followed by co-located operators).
935
     *
936
     * For plan:
937
     * LocalExchange(id=0) -> Aggregation(id=1) -> ShuffledHashJoin(id=2)
938
     *                           Exchange(id=3) -> ShuffledHashJoinBuild(id=2)
939
     * We must ensure data distribution of `LocalExchange(id=0)` is same as Exchange(id=3).
940
     *
941
     * If an operator's is followed by a local exchange without shuffle (e.g. passthrough), a
942
     * shuffled local exchanger will be used before join so it is not followed by shuffle join.
943
     */
944
770k
    auto required_data_distribution =
945
770k
            cur_pipe->operators().empty()
946
770k
                    ? cur_pipe->sink()->required_data_distribution(_runtime_state.get())
947
770k
                    : op->required_data_distribution(_runtime_state.get());
948
770k
    current_followed_by_shuffled_operator =
949
770k
            ((followed_by_shuffled_operator ||
950
770k
              (cur_pipe->operators().empty() ? cur_pipe->sink()->is_shuffled_operator()
951
704k
                                             : op->is_shuffled_operator())) &&
952
770k
             Pipeline::is_hash_exchange(required_data_distribution.distribution_type)) ||
953
770k
            (followed_by_shuffled_operator &&
954
655k
             required_data_distribution.distribution_type == TLocalPartitionType::NOOP);
955
956
770k
    current_require_bucket_distribution =
957
770k
            ((require_bucket_distribution ||
958
770k
              (cur_pipe->operators().empty() ? cur_pipe->sink()->is_colocated_operator()
959
709k
                                             : op->is_colocated_operator())) &&
960
770k
             Pipeline::is_hash_exchange(required_data_distribution.distribution_type)) ||
961
770k
            (require_bucket_distribution &&
962
662k
             required_data_distribution.distribution_type == TLocalPartitionType::NOOP);
963
964
770k
    if (num_children == 0) {
965
466k
        _use_serial_source = op->is_serial_operator();
966
466k
    }
967
    // rely on that tnodes is preorder of the plan
968
1.09M
    for (int i = 0; i < num_children; i++) {
969
323k
        ++*node_idx;
970
323k
        RETURN_IF_ERROR(_create_tree_helper(pool, tnodes, descs, op, node_idx, nullptr, cur_pipe, i,
971
323k
                                            current_followed_by_shuffled_operator,
972
323k
                                            current_require_bucket_distribution));
973
974
        // we are expecting a child, but have used all nodes
975
        // this means we have been given a bad tree and must fail
976
323k
        if (*node_idx >= tnodes.size()) {
977
0
            return Status::InternalError(
978
0
                    "Failed to reconstruct plan tree from thrift. Node id: {}, number of "
979
0
                    "nodes: {}",
980
0
                    *node_idx, tnodes.size());
981
0
        }
982
323k
    }
983
984
770k
    return Status::OK();
985
770k
}
986
987
void PipelineFragmentContext::_inherit_pipeline_properties(
988
        const DataDistribution& data_distribution, PipelinePtr pipe_with_source,
989
1.17k
        PipelinePtr pipe_with_sink) {
990
1.17k
    pipe_with_sink->set_num_tasks(pipe_with_source->num_tasks());
991
1.17k
    pipe_with_source->set_num_tasks(_num_instances);
992
1.17k
    pipe_with_source->set_data_distribution(data_distribution);
993
1.17k
}
994
995
Status PipelineFragmentContext::_add_local_exchange_impl(
996
        int idx, ObjectPool* pool, PipelinePtr cur_pipe, PipelinePtr new_pip,
997
        DataDistribution data_distribution, bool* do_local_exchange, int num_buckets,
998
        const std::map<int, int>& bucket_seq_to_instance_idx,
999
1.17k
        const std::map<int, int>& shuffle_idx_to_instance_idx) {
1000
1.17k
    auto& operators = cur_pipe->operators();
1001
1.17k
    const auto downstream_pipeline_id = cur_pipe->id();
1002
1.17k
    auto local_exchange_id = next_operator_id();
1003
    // 1. Create a new pipeline with local exchange sink.
1004
1.17k
    DataSinkOperatorPtr sink;
1005
1.17k
    auto sink_id = next_sink_operator_id();
1006
1007
    /**
1008
     * `bucket_seq_to_instance_idx` is empty if no scan operator is contained in this fragment.
1009
     * So co-located operators(e.g. Agg, Analytic) should use `HASH_SHUFFLE` instead of `BUCKET_HASH_SHUFFLE`.
1010
     */
1011
1.17k
    const bool followed_by_shuffled_operator =
1012
1.17k
            operators.size() > idx ? operators[idx]->followed_by_shuffled_operator()
1013
1.17k
                                   : cur_pipe->sink()->followed_by_shuffled_operator();
1014
1.17k
    const bool use_global_hash_shuffle = bucket_seq_to_instance_idx.empty() &&
1015
1.17k
                                         !shuffle_idx_to_instance_idx.contains(-1) &&
1016
1.17k
                                         followed_by_shuffled_operator && !_use_serial_source;
1017
1.17k
    sink = std::make_shared<LocalExchangeSinkOperatorX>(
1018
1.17k
            sink_id, local_exchange_id, use_global_hash_shuffle ? _total_instances : _num_instances,
1019
1.17k
            data_distribution.partition_exprs, bucket_seq_to_instance_idx);
1020
1.17k
    if (bucket_seq_to_instance_idx.empty() &&
1021
1.17k
        data_distribution.distribution_type == TLocalPartitionType::BUCKET_HASH_SHUFFLE) {
1022
2
        data_distribution.distribution_type =
1023
2
                use_global_hash_shuffle ? TLocalPartitionType::GLOBAL_EXECUTION_HASH_SHUFFLE
1024
2
                                        : TLocalPartitionType::LOCAL_EXECUTION_HASH_SHUFFLE;
1025
2
    }
1026
1.17k
    if (!use_global_hash_shuffle &&
1027
1.17k
        data_distribution.distribution_type == TLocalPartitionType::GLOBAL_EXECUTION_HASH_SHUFFLE) {
1028
102
        data_distribution.distribution_type = TLocalPartitionType::LOCAL_EXECUTION_HASH_SHUFFLE;
1029
102
    }
1030
1.17k
    RETURN_IF_ERROR(new_pip->set_sink(sink));
1031
1.17k
    RETURN_IF_ERROR(new_pip->sink()->init(_runtime_state.get(), data_distribution.distribution_type,
1032
1.17k
                                          num_buckets, shuffle_idx_to_instance_idx));
1033
1034
    // 2. Create and initialize LocalExchangeSharedState.
1035
1.17k
    std::shared_ptr<LocalExchangeSharedState> shared_state =
1036
1.17k
            LocalExchangeSharedState::create_shared(_num_instances);
1037
1.17k
    switch (data_distribution.distribution_type) {
1038
102
    case TLocalPartitionType::LOCAL_EXECUTION_HASH_SHUFFLE:
1039
105
    case TLocalPartitionType::GLOBAL_EXECUTION_HASH_SHUFFLE:
1040
105
        shared_state->exchanger = ShuffleExchanger::create_unique(
1041
105
                std::max(cur_pipe->num_tasks(), _num_instances), _num_instances,
1042
105
                use_global_hash_shuffle ? _total_instances : _num_instances,
1043
105
                _runtime_state->query_options().__isset.local_exchange_free_blocks_limit
1044
105
                        ? cast_set<int>(
1045
105
                                  _runtime_state->query_options().local_exchange_free_blocks_limit)
1046
105
                        : 0,
1047
105
                data_distribution.distribution_type);
1048
105
        break;
1049
14
    case TLocalPartitionType::BUCKET_HASH_SHUFFLE:
1050
14
        shared_state->exchanger = BucketShuffleExchanger::create_unique(
1051
14
                std::max(cur_pipe->num_tasks(), _num_instances), _num_instances, num_buckets,
1052
14
                _runtime_state->query_options().__isset.local_exchange_free_blocks_limit
1053
14
                        ? cast_set<int>(
1054
14
                                  _runtime_state->query_options().local_exchange_free_blocks_limit)
1055
14
                        : 0);
1056
14
        break;
1057
960
    case TLocalPartitionType::PASSTHROUGH:
1058
960
        shared_state->exchanger = PassthroughExchanger::create_unique(
1059
960
                cur_pipe->num_tasks(), _num_instances,
1060
960
                _runtime_state->query_options().__isset.local_exchange_free_blocks_limit
1061
960
                        ? cast_set<int>(
1062
960
                                  _runtime_state->query_options().local_exchange_free_blocks_limit)
1063
960
                        : 0);
1064
960
        break;
1065
8
    case TLocalPartitionType::BROADCAST:
1066
8
        shared_state->exchanger = BroadcastExchanger::create_unique(
1067
8
                cur_pipe->num_tasks(), _num_instances,
1068
8
                _runtime_state->query_options().__isset.local_exchange_free_blocks_limit
1069
8
                        ? cast_set<int>(
1070
8
                                  _runtime_state->query_options().local_exchange_free_blocks_limit)
1071
8
                        : 0);
1072
8
        break;
1073
2
    case TLocalPartitionType::PASS_TO_ONE:
1074
2
        if (_runtime_state->enable_share_hash_table_for_broadcast_join()) {
1075
            // If shared hash table is enabled for BJ, hash table will be built by only one task
1076
0
            shared_state->exchanger = PassToOneExchanger::create_unique(
1077
0
                    cur_pipe->num_tasks(), _num_instances,
1078
0
                    _runtime_state->query_options().__isset.local_exchange_free_blocks_limit
1079
0
                            ? cast_set<int>(_runtime_state->query_options()
1080
0
                                                    .local_exchange_free_blocks_limit)
1081
0
                            : 0);
1082
2
        } else {
1083
2
            shared_state->exchanger = BroadcastExchanger::create_unique(
1084
2
                    cur_pipe->num_tasks(), _num_instances,
1085
2
                    _runtime_state->query_options().__isset.local_exchange_free_blocks_limit
1086
2
                            ? cast_set<int>(_runtime_state->query_options()
1087
2
                                                    .local_exchange_free_blocks_limit)
1088
2
                            : 0);
1089
2
        }
1090
2
        break;
1091
83
    case TLocalPartitionType::ADAPTIVE_PASSTHROUGH:
1092
83
        shared_state->exchanger = AdaptivePassthroughExchanger::create_unique(
1093
83
                std::max(cur_pipe->num_tasks(), _num_instances), _num_instances,
1094
83
                _runtime_state->query_options().__isset.local_exchange_free_blocks_limit
1095
83
                        ? cast_set<int>(
1096
83
                                  _runtime_state->query_options().local_exchange_free_blocks_limit)
1097
83
                        : 0);
1098
83
        break;
1099
0
    default:
1100
0
        return Status::InternalError("Unsupported local exchange type : " +
1101
0
                                     std::to_string((int)data_distribution.distribution_type));
1102
1.17k
    }
1103
1.17k
    shared_state->create_source_dependencies(_num_instances, local_exchange_id, local_exchange_id,
1104
1.17k
                                             "LOCAL_EXCHANGE_OPERATOR");
1105
1.17k
    shared_state->create_sink_dependency(sink_id, local_exchange_id, "LOCAL_EXCHANGE_SINK");
1106
1.17k
    _op_id_to_shared_state.insert({local_exchange_id, {shared_state, shared_state->sink_deps}});
1107
1108
    // 3. Set two pipelines' operator list. For example, split pipeline [Scan - AggSink] to
1109
    // pipeline1 [Scan - LocalExchangeSink] and pipeline2 [LocalExchangeSource - AggSink].
1110
1111
    // 3.1 Initialize new pipeline's operator list.
1112
1.17k
    std::copy(operators.begin(), operators.begin() + idx,
1113
1.17k
              std::inserter(new_pip->operators(), new_pip->operators().end()));
1114
1115
    // 3.2 Erase unused operators in previous pipeline.
1116
1.17k
    operators.erase(operators.begin(), operators.begin() + idx);
1117
1118
    // 4. Initialize LocalExchangeSource and insert it into this pipeline.
1119
1.17k
    OperatorPtr source_op;
1120
1.17k
    source_op = std::make_shared<LocalExchangeSourceOperatorX>(pool, local_exchange_id);
1121
1.17k
    RETURN_IF_ERROR(source_op->set_child(new_pip->operators().back()));
1122
1.17k
    RETURN_IF_ERROR(source_op->init(data_distribution.distribution_type));
1123
1.17k
    if (!operators.empty()) {
1124
294
        RETURN_IF_ERROR(operators.front()->set_child(nullptr));
1125
294
        RETURN_IF_ERROR(operators.front()->set_child(source_op));
1126
294
    }
1127
1.17k
    operators.insert(operators.begin(), source_op);
1128
1129
    // 5. Set children for two pipelines separately.
1130
1.17k
    std::vector<std::shared_ptr<Pipeline>> new_children;
1131
1.17k
    std::vector<PipelineId> edges_with_source;
1132
2.22k
    for (auto child : cur_pipe->children()) {
1133
2.22k
        bool found = false;
1134
3.06k
        for (auto op : new_pip->operators()) {
1135
3.06k
            if (child->sink()->node_id() == op->node_id()) {
1136
705
                new_pip->set_children(child);
1137
705
                found = true;
1138
705
            };
1139
3.06k
        }
1140
2.22k
        if (!found) {
1141
1.51k
            new_children.push_back(child);
1142
1.51k
            edges_with_source.push_back(child->id());
1143
1.51k
        }
1144
2.22k
    }
1145
1.17k
    new_children.push_back(new_pip);
1146
1.17k
    edges_with_source.push_back(new_pip->id());
1147
1148
    // 6. Set DAG for new pipelines.
1149
1.17k
    if (!new_pip->children().empty()) {
1150
389
        std::vector<PipelineId> edges_with_sink;
1151
705
        for (auto child : new_pip->children()) {
1152
705
            edges_with_sink.push_back(child->id());
1153
705
        }
1154
389
        _dag.insert({new_pip->id(), edges_with_sink});
1155
389
    }
1156
1.17k
    cur_pipe->set_children(new_children);
1157
1.17k
    _dag[downstream_pipeline_id] = edges_with_source;
1158
1.17k
    RETURN_IF_ERROR(new_pip->sink()->set_child(new_pip->operators().back()));
1159
1.17k
    RETURN_IF_ERROR(cur_pipe->sink()->set_child(nullptr));
1160
1.17k
    RETURN_IF_ERROR(cur_pipe->sink()->set_child(cur_pipe->operators().back()));
1161
1162
    // 7. Inherit properties from current pipeline.
1163
1.17k
    _inherit_pipeline_properties(data_distribution, cur_pipe, new_pip);
1164
1.17k
    return Status::OK();
1165
1.17k
}
1166
1167
Status PipelineFragmentContext::_add_local_exchange(
1168
        int pip_idx, int idx, int node_id, ObjectPool* pool, PipelinePtr cur_pipe,
1169
        DataDistribution data_distribution, bool* do_local_exchange, int num_buckets,
1170
        const std::map<int, int>& bucket_seq_to_instance_idx,
1171
11.0k
        const std::map<int, int>& shuffle_idx_to_instance_idx) {
1172
11.0k
    if (_num_instances <= 1 || cur_pipe->num_tasks_of_parent() <= 1) {
1173
9.27k
        return Status::OK();
1174
9.27k
    }
1175
1176
1.79k
    if (!cur_pipe->need_to_local_exchange(data_distribution, idx)) {
1177
667
        return Status::OK();
1178
667
    }
1179
1.12k
    *do_local_exchange = true;
1180
1181
1.12k
    auto& operators = cur_pipe->operators();
1182
1.12k
    auto total_op_num = operators.size();
1183
1.12k
    auto new_pip = add_pipeline(cur_pipe, pip_idx + 1);
1184
1.12k
    RETURN_IF_ERROR(_add_local_exchange_impl(
1185
1.12k
            idx, pool, cur_pipe, new_pip, data_distribution, do_local_exchange, num_buckets,
1186
1.12k
            bucket_seq_to_instance_idx, shuffle_idx_to_instance_idx));
1187
1188
18.4E
    CHECK(total_op_num + 1 == cur_pipe->operators().size() + new_pip->operators().size())
1189
18.4E
            << "total_op_num: " << total_op_num
1190
18.4E
            << " cur_pipe->operators().size(): " << cur_pipe->operators().size()
1191
18.4E
            << " new_pip->operators().size(): " << new_pip->operators().size();
1192
1193
    // There are some local shuffles with relatively heavy operations on the sink.
1194
    // If the local sink concurrency is 1 and the local source concurrency is n, the sink becomes a bottleneck.
1195
    // Therefore, local passthrough is used to increase the concurrency of the sink.
1196
    // op -> local sink(1) -> local source (n)
1197
    // op -> local passthrough(1) -> local passthrough(n) ->  local sink(n) -> local source (n)
1198
1.12k
    if (cur_pipe->num_tasks() > 1 && new_pip->num_tasks() == 1 &&
1199
1.12k
        Pipeline::heavy_operations_on_the_sink(data_distribution.distribution_type)) {
1200
47
        RETURN_IF_ERROR(_add_local_exchange_impl(
1201
47
                cast_set<int>(new_pip->operators().size()), pool, new_pip,
1202
47
                add_pipeline(new_pip, pip_idx + 2),
1203
47
                DataDistribution(TLocalPartitionType::PASSTHROUGH), do_local_exchange, num_buckets,
1204
47
                bucket_seq_to_instance_idx, shuffle_idx_to_instance_idx));
1205
47
    }
1206
1.12k
    return Status::OK();
1207
1.12k
}
1208
1209
Status PipelineFragmentContext::_plan_local_exchange(
1210
        int num_buckets, const std::map<int, int>& bucket_seq_to_instance_idx,
1211
147k
        const std::map<int, int>& shuffle_idx_to_instance_idx) {
1212
334k
    for (int pip_idx = cast_set<int>(_pipelines.size()) - 1; pip_idx >= 0; pip_idx--) {
1213
187k
        _pipelines[pip_idx]->init_data_distribution(_runtime_state.get());
1214
        // Set property if child pipeline is not join operator's child.
1215
187k
        if (!_pipelines[pip_idx]->children().empty()) {
1216
33.8k
            for (auto& child : _pipelines[pip_idx]->children()) {
1217
33.8k
                if (child->sink()->node_id() ==
1218
33.8k
                    _pipelines[pip_idx]->operators().front()->node_id()) {
1219
27.0k
                    _pipelines[pip_idx]->set_data_distribution(child->data_distribution());
1220
27.0k
                }
1221
33.8k
            }
1222
30.6k
        }
1223
1224
        // if 'num_buckets == 0' means the fragment is colocated by exchange node not the
1225
        // scan node. so here use `_num_instance` to replace the `num_buckets` to prevent dividing 0
1226
        // still keep colocate plan after local shuffle
1227
187k
        RETURN_IF_ERROR(_plan_local_exchange(num_buckets, pip_idx, _pipelines[pip_idx],
1228
187k
                                             bucket_seq_to_instance_idx,
1229
187k
                                             shuffle_idx_to_instance_idx));
1230
187k
    }
1231
147k
    return Status::OK();
1232
147k
}
1233
1234
Status PipelineFragmentContext::_plan_local_exchange(
1235
        int num_buckets, int pip_idx, PipelinePtr pip,
1236
        const std::map<int, int>& bucket_seq_to_instance_idx,
1237
187k
        const std::map<int, int>& shuffle_idx_to_instance_idx) {
1238
187k
    int idx = 1;
1239
187k
    bool do_local_exchange = false;
1240
187k
    do {
1241
187k
        auto& ops = pip->operators();
1242
187k
        do_local_exchange = false;
1243
        // Plan local exchange for each operator.
1244
196k
        for (; idx < ops.size();) {
1245
9.06k
            auto _le_req = ops[idx]->required_data_distribution(_runtime_state.get());
1246
9.06k
            if (_le_req.need_local_exchange()) {
1247
5.03k
                RETURN_IF_ERROR(_add_local_exchange(
1248
5.03k
                        pip_idx, idx, ops[idx]->node_id(), _runtime_state->obj_pool(), pip, _le_req,
1249
5.03k
                        &do_local_exchange, num_buckets, bucket_seq_to_instance_idx,
1250
5.03k
                        shuffle_idx_to_instance_idx));
1251
5.03k
            }
1252
9.06k
            if (do_local_exchange) {
1253
                // If local exchange is needed for current operator, we will split this pipeline to
1254
                // two pipelines by local exchange sink/source. And then we need to process remaining
1255
                // operators in this pipeline so we set idx to 2 (0 is local exchange source and 1
1256
                // is current operator was already processed) and continue to plan local exchange.
1257
294
                idx = 2;
1258
294
                break;
1259
294
            }
1260
8.77k
            idx++;
1261
8.77k
        }
1262
187k
    } while (do_local_exchange);
1263
187k
    if (pip->sink()->required_data_distribution(_runtime_state.get()).need_local_exchange()) {
1264
6.04k
        RETURN_IF_ERROR(_add_local_exchange(
1265
6.04k
                pip_idx, idx, pip->sink()->node_id(), _runtime_state->obj_pool(), pip,
1266
6.04k
                pip->sink()->required_data_distribution(_runtime_state.get()), &do_local_exchange,
1267
6.04k
                num_buckets, bucket_seq_to_instance_idx, shuffle_idx_to_instance_idx));
1268
6.04k
    }
1269
187k
    return Status::OK();
1270
187k
}
1271
1272
Status PipelineFragmentContext::_create_data_sink(ObjectPool* pool, const TDataSink& thrift_sink,
1273
                                                  const std::vector<TExpr>& output_exprs,
1274
                                                  const TPipelineFragmentParams& params,
1275
                                                  const RowDescriptor& row_desc,
1276
                                                  RuntimeState* state, DescriptorTbl& desc_tbl,
1277
450k
                                                  PipelineId cur_pipeline_id) {
1278
450k
    switch (thrift_sink.type) {
1279
149k
    case TDataSinkType::DATA_STREAM_SINK: {
1280
149k
        if (!thrift_sink.__isset.stream_sink) {
1281
0
            return Status::InternalError("Missing data stream sink.");
1282
0
        }
1283
149k
        _sink = std::make_shared<ExchangeSinkOperatorX>(
1284
149k
                state, row_desc, next_sink_operator_id(), thrift_sink.stream_sink,
1285
149k
                params.destinations, _fragment_instance_ids);
1286
149k
        break;
1287
149k
    }
1288
259k
    case TDataSinkType::RESULT_SINK: {
1289
259k
        if (!thrift_sink.__isset.result_sink) {
1290
0
            return Status::InternalError("Missing data buffer sink.");
1291
0
        }
1292
1293
259k
        auto& pipeline = _pipelines[cur_pipeline_id];
1294
259k
        int child_node_id = pipeline->operators().back()->node_id();
1295
259k
        _sink = std::make_shared<ResultSinkOperatorX>(next_sink_operator_id(), child_node_id + 1,
1296
259k
                                                      row_desc, output_exprs,
1297
259k
                                                      thrift_sink.result_sink);
1298
259k
        break;
1299
259k
    }
1300
104
    case TDataSinkType::DICTIONARY_SINK: {
1301
104
        if (!thrift_sink.__isset.dictionary_sink) {
1302
0
            return Status::InternalError("Missing dict sink.");
1303
0
        }
1304
1305
104
        _sink = std::make_shared<DictSinkOperatorX>(next_sink_operator_id(), row_desc, output_exprs,
1306
104
                                                    thrift_sink.dictionary_sink);
1307
104
        break;
1308
104
    }
1309
0
    case TDataSinkType::GROUP_COMMIT_OLAP_TABLE_SINK:
1310
34.7k
    case TDataSinkType::OLAP_TABLE_SINK: {
1311
34.7k
        auto& pipeline = _pipelines[cur_pipeline_id];
1312
34.7k
        int child_node_id = pipeline->operators().back()->node_id();
1313
34.7k
        if (state->query_options().enable_memtable_on_sink_node &&
1314
34.7k
            !_has_inverted_index_v1_or_partial_update(thrift_sink.olap_table_sink) &&
1315
34.7k
            !_has_row_binlog(thrift_sink.olap_table_sink) && !config::is_cloud_mode()) {
1316
2.88k
            _sink = std::make_shared<OlapTableSinkV2OperatorX>(
1317
2.88k
                    pool, next_sink_operator_id(), child_node_id + 1, row_desc, output_exprs);
1318
31.8k
        } else {
1319
31.8k
            _sink = std::make_shared<OlapTableSinkOperatorX>(
1320
31.8k
                    pool, next_sink_operator_id(), child_node_id + 1, row_desc, output_exprs);
1321
31.8k
        }
1322
34.7k
        break;
1323
0
    }
1324
168
    case TDataSinkType::GROUP_COMMIT_BLOCK_SINK: {
1325
168
        DCHECK(thrift_sink.__isset.olap_table_sink);
1326
168
        DCHECK(state->get_query_ctx() != nullptr);
1327
168
        state->get_query_ctx()->query_mem_tracker()->is_group_commit_load = true;
1328
168
        _sink = std::make_shared<GroupCommitBlockSinkOperatorX>(next_sink_operator_id(), row_desc,
1329
168
                                                                output_exprs);
1330
168
        break;
1331
0
    }
1332
1.48k
    case TDataSinkType::HIVE_TABLE_SINK: {
1333
1.48k
        if (!thrift_sink.__isset.hive_table_sink) {
1334
0
            return Status::InternalError("Missing hive table sink.");
1335
0
        }
1336
1.48k
        _sink = std::make_shared<HiveTableSinkOperatorX>(pool, next_sink_operator_id(), row_desc,
1337
1.48k
                                                         output_exprs);
1338
1.48k
        break;
1339
1.48k
    }
1340
1.73k
    case TDataSinkType::ICEBERG_TABLE_SINK: {
1341
1.73k
        if (!thrift_sink.__isset.iceberg_table_sink) {
1342
0
            return Status::InternalError("Missing iceberg table sink.");
1343
0
        }
1344
1.73k
        if (thrift_sink.iceberg_table_sink.__isset.sort_info) {
1345
4
            _sink = std::make_shared<SpillIcebergTableSinkOperatorX>(pool, next_sink_operator_id(),
1346
4
                                                                     row_desc, output_exprs);
1347
1.73k
        } else {
1348
1.73k
            _sink = std::make_shared<IcebergTableSinkOperatorX>(pool, next_sink_operator_id(),
1349
1.73k
                                                                row_desc, output_exprs);
1350
1.73k
        }
1351
1.73k
        break;
1352
1.73k
    }
1353
20
    case TDataSinkType::ICEBERG_DELETE_SINK: {
1354
20
        if (!thrift_sink.__isset.iceberg_delete_sink) {
1355
0
            return Status::InternalError("Missing iceberg delete sink.");
1356
0
        }
1357
20
        _sink = std::make_shared<IcebergDeleteSinkOperatorX>(pool, next_sink_operator_id(),
1358
20
                                                             row_desc, output_exprs);
1359
20
        break;
1360
20
    }
1361
80
    case TDataSinkType::ICEBERG_MERGE_SINK: {
1362
80
        if (!thrift_sink.__isset.iceberg_merge_sink) {
1363
0
            return Status::InternalError("Missing iceberg merge sink.");
1364
0
        }
1365
80
        _sink = std::make_shared<IcebergMergeSinkOperatorX>(pool, next_sink_operator_id(), row_desc,
1366
80
                                                            output_exprs);
1367
80
        break;
1368
80
    }
1369
0
    case TDataSinkType::MAXCOMPUTE_TABLE_SINK: {
1370
0
        if (!thrift_sink.__isset.max_compute_table_sink) {
1371
0
            return Status::InternalError("Missing max compute table sink.");
1372
0
        }
1373
0
        _sink = std::make_shared<MCTableSinkOperatorX>(pool, next_sink_operator_id(), row_desc,
1374
0
                                                       output_exprs);
1375
0
        break;
1376
0
    }
1377
88
    case TDataSinkType::JDBC_TABLE_SINK: {
1378
88
        if (!thrift_sink.__isset.jdbc_table_sink) {
1379
0
            return Status::InternalError("Missing data jdbc sink.");
1380
0
        }
1381
88
        if (config::enable_java_support) {
1382
88
            _sink = std::make_shared<JdbcTableSinkOperatorX>(row_desc, next_sink_operator_id(),
1383
88
                                                             output_exprs);
1384
88
        } else {
1385
0
            return Status::InternalError(
1386
0
                    "Jdbc table sink is not enabled, you can change be config "
1387
0
                    "enable_java_support to true and restart be.");
1388
0
        }
1389
88
        break;
1390
88
    }
1391
88
    case TDataSinkType::MEMORY_SCRATCH_SINK: {
1392
3
        if (!thrift_sink.__isset.memory_scratch_sink) {
1393
0
            return Status::InternalError("Missing data buffer sink.");
1394
0
        }
1395
1396
3
        _sink = std::make_shared<MemoryScratchSinkOperatorX>(row_desc, next_sink_operator_id(),
1397
3
                                                             output_exprs);
1398
3
        break;
1399
3
    }
1400
503
    case TDataSinkType::RESULT_FILE_SINK: {
1401
503
        if (!thrift_sink.__isset.result_file_sink) {
1402
0
            return Status::InternalError("Missing result file sink.");
1403
0
        }
1404
1405
        // Result file sink is not the top sink
1406
503
        if (params.__isset.destinations && !params.destinations.empty()) {
1407
0
            _sink = std::make_shared<ResultFileSinkOperatorX>(
1408
0
                    next_sink_operator_id(), row_desc, thrift_sink.result_file_sink,
1409
0
                    params.destinations, output_exprs, desc_tbl);
1410
503
        } else {
1411
503
            _sink = std::make_shared<ResultFileSinkOperatorX>(next_sink_operator_id(), row_desc,
1412
503
                                                              output_exprs);
1413
503
        }
1414
503
        break;
1415
503
    }
1416
2.41k
    case TDataSinkType::MULTI_CAST_DATA_STREAM_SINK: {
1417
2.41k
        DCHECK(thrift_sink.__isset.multi_cast_stream_sink);
1418
2.41k
        DCHECK_GT(thrift_sink.multi_cast_stream_sink.sinks.size(), 0);
1419
2.41k
        auto sink_id = next_sink_operator_id();
1420
2.41k
        const int multi_cast_node_id = sink_id;
1421
2.41k
        auto sender_size = thrift_sink.multi_cast_stream_sink.sinks.size();
1422
        // one sink has multiple sources.
1423
2.41k
        std::vector<int> sources;
1424
9.47k
        for (int i = 0; i < sender_size; ++i) {
1425
7.05k
            auto source_id = next_operator_id();
1426
7.05k
            sources.push_back(source_id);
1427
7.05k
        }
1428
1429
2.41k
        _sink = std::make_shared<MultiCastDataStreamSinkOperatorX>(
1430
2.41k
                sink_id, multi_cast_node_id, sources, pool, thrift_sink.multi_cast_stream_sink);
1431
9.47k
        for (int i = 0; i < sender_size; ++i) {
1432
7.05k
            auto new_pipeline = add_pipeline();
1433
            // use to exchange sink
1434
7.05k
            RowDescriptor* exchange_row_desc = nullptr;
1435
7.05k
            {
1436
7.05k
                const auto& tmp_row_desc =
1437
7.05k
                        !thrift_sink.multi_cast_stream_sink.sinks[i].output_exprs.empty()
1438
7.05k
                                ? RowDescriptor(state->desc_tbl(),
1439
7.05k
                                                {thrift_sink.multi_cast_stream_sink.sinks[i]
1440
7.05k
                                                         .output_tuple_id})
1441
7.05k
                                : row_desc;
1442
7.05k
                exchange_row_desc = pool->add(new RowDescriptor(tmp_row_desc));
1443
7.05k
            }
1444
7.05k
            auto source_id = sources[i];
1445
7.05k
            OperatorPtr source_op;
1446
            // 1. create and set the source operator of multi_cast_data_stream_source for new pipeline
1447
7.05k
            source_op = std::make_shared<MultiCastDataStreamerSourceOperatorX>(
1448
7.05k
                    /*node_id*/ source_id, /*consumer_id*/ i, pool,
1449
7.05k
                    thrift_sink.multi_cast_stream_sink.sinks[i], row_desc,
1450
7.05k
                    /*operator_id=*/source_id);
1451
7.05k
            RETURN_IF_ERROR(new_pipeline->add_operator(
1452
7.05k
                    source_op, params.__isset.parallel_instances ? params.parallel_instances : 0));
1453
            // 2. create and set sink operator of data stream sender for new pipeline
1454
1455
7.05k
            DataSinkOperatorPtr sink_op;
1456
7.05k
            sink_op = std::make_shared<ExchangeSinkOperatorX>(
1457
7.05k
                    state, *exchange_row_desc, next_sink_operator_id(),
1458
7.05k
                    thrift_sink.multi_cast_stream_sink.sinks[i],
1459
7.05k
                    thrift_sink.multi_cast_stream_sink.destinations[i], _fragment_instance_ids);
1460
1461
7.05k
            RETURN_IF_ERROR(new_pipeline->set_sink(sink_op));
1462
7.05k
            {
1463
7.05k
                TDataSink* t = pool->add(new TDataSink());
1464
7.05k
                t->stream_sink = thrift_sink.multi_cast_stream_sink.sinks[i];
1465
7.05k
                RETURN_IF_ERROR(sink_op->init(*t));
1466
7.05k
            }
1467
1468
            // 3. set dependency dag
1469
7.05k
            _dag[new_pipeline->id()].push_back(cur_pipeline_id);
1470
7.05k
        }
1471
2.41k
        if (sources.empty()) {
1472
0
            return Status::InternalError("size of sources must be greater than 0");
1473
0
        }
1474
2.41k
        break;
1475
2.41k
    }
1476
2.41k
    case TDataSinkType::BLACKHOLE_SINK: {
1477
13
        if (!thrift_sink.__isset.blackhole_sink) {
1478
0
            return Status::InternalError("Missing blackhole sink.");
1479
0
        }
1480
1481
13
        _sink.reset(new BlackholeSinkOperatorX(next_sink_operator_id()));
1482
13
        break;
1483
13
    }
1484
156
    case TDataSinkType::TVF_TABLE_SINK: {
1485
156
        if (!thrift_sink.__isset.tvf_table_sink) {
1486
0
            return Status::InternalError("Missing TVF table sink.");
1487
0
        }
1488
156
        _sink = std::make_shared<TVFTableSinkOperatorX>(pool, next_sink_operator_id(), row_desc,
1489
156
                                                        output_exprs);
1490
156
        break;
1491
156
    }
1492
0
    default:
1493
0
        return Status::InternalError("Unsuported sink type in pipeline: {}", thrift_sink.type);
1494
450k
    }
1495
449k
    return Status::OK();
1496
450k
}
1497
1498
// NOLINTBEGIN(readability-function-size)
1499
// NOLINTBEGIN(readability-function-cognitive-complexity)
1500
Status PipelineFragmentContext::_create_operator(ObjectPool* pool, const TPlanNode& tnode,
1501
                                                 const DescriptorTbl& descs, OperatorPtr& op,
1502
                                                 PipelinePtr& cur_pipe, int parent_idx,
1503
                                                 int child_idx,
1504
                                                 const bool followed_by_shuffled_operator,
1505
                                                 const bool require_bucket_distribution,
1506
774k
                                                 OperatorPtr& cache_op) {
1507
774k
    std::vector<DataSinkOperatorPtr> sink_ops;
1508
774k
    Defer defer = Defer([&]() {
1509
773k
        if (op) {
1510
773k
            op->update_operator(tnode, followed_by_shuffled_operator, require_bucket_distribution);
1511
773k
        }
1512
772k
        for (auto& s : sink_ops) {
1513
224k
            s->update_operator(tnode, followed_by_shuffled_operator, require_bucket_distribution);
1514
224k
        }
1515
772k
    });
1516
    // We directly construct the operator from Thrift because the given array is in the order of preorder traversal.
1517
    // Therefore, here we need to use a stack-like structure.
1518
774k
    _pipeline_parent_map.pop(cur_pipe, parent_idx, child_idx);
1519
774k
    std::stringstream error_msg;
1520
774k
    bool enable_query_cache = _params.fragment.__isset.query_cache_param;
1521
1522
774k
    bool fe_with_old_version = false;
1523
774k
    switch (tnode.node_type) {
1524
221k
    case TPlanNodeType::OLAP_SCAN_NODE: {
1525
221k
        op = std::make_shared<OlapScanOperatorX>(
1526
221k
                pool, tnode, next_operator_id(), descs, _num_instances,
1527
221k
                enable_query_cache ? _params.fragment.query_cache_param : TQueryCacheParam {});
1528
221k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1529
221k
        fe_with_old_version = !tnode.__isset.is_serial_operator;
1530
221k
        break;
1531
221k
    }
1532
80
    case TPlanNodeType::GROUP_COMMIT_SCAN_NODE: {
1533
80
        DCHECK(_query_ctx != nullptr);
1534
80
        _query_ctx->query_mem_tracker()->is_group_commit_load = true;
1535
80
        op = std::make_shared<GroupCommitOperatorX>(pool, tnode, next_operator_id(), descs,
1536
80
                                                    _num_instances);
1537
80
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1538
80
        fe_with_old_version = !tnode.__isset.is_serial_operator;
1539
80
        break;
1540
80
    }
1541
0
    case TPlanNodeType::JDBC_SCAN_NODE: {
1542
0
        if (config::enable_java_support) {
1543
0
            op = std::make_shared<JDBCScanOperatorX>(pool, tnode, next_operator_id(), descs,
1544
0
                                                     _num_instances);
1545
0
            RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1546
0
        } else {
1547
0
            return Status::InternalError(
1548
0
                    "Jdbc scan node is disabled, you can change be config enable_java_support "
1549
0
                    "to true and restart be.");
1550
0
        }
1551
0
        fe_with_old_version = !tnode.__isset.is_serial_operator;
1552
0
        break;
1553
0
    }
1554
25.9k
    case TPlanNodeType::FILE_SCAN_NODE: {
1555
25.9k
        op = std::make_shared<FileScanOperatorX>(pool, tnode, next_operator_id(), descs,
1556
25.9k
                                                 _num_instances);
1557
25.9k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1558
25.9k
        fe_with_old_version = !tnode.__isset.is_serial_operator;
1559
25.9k
        break;
1560
25.9k
    }
1561
153k
    case TPlanNodeType::EXCHANGE_NODE: {
1562
153k
        int num_senders = _params.per_exch_num_senders.contains(tnode.node_id)
1563
153k
                                  ? _params.per_exch_num_senders.find(tnode.node_id)->second
1564
18.4E
                                  : 0;
1565
153k
        DCHECK_GT(num_senders, 0);
1566
153k
        op = std::make_shared<ExchangeSourceOperatorX>(pool, tnode, next_operator_id(), descs,
1567
153k
                                                       num_senders);
1568
153k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1569
153k
        fe_with_old_version = !tnode.__isset.is_serial_operator;
1570
153k
        break;
1571
153k
    }
1572
132k
    case TPlanNodeType::AGGREGATION_NODE: {
1573
132k
        if (tnode.agg_node.grouping_exprs.empty() &&
1574
132k
            descs.get_tuple_descriptor(tnode.agg_node.output_tuple_id)->slots().empty()) {
1575
0
            return Status::InternalError("Illegal aggregate node " + std::to_string(tnode.node_id) +
1576
0
                                         ": group by and output is empty");
1577
0
        }
1578
132k
        bool need_create_cache_op =
1579
132k
                enable_query_cache && tnode.node_id == _params.fragment.query_cache_param.node_id;
1580
132k
        auto create_query_cache_operator = [&](PipelinePtr& new_pipe) {
1581
10
            auto cache_node_id = _params.local_params[0].per_node_scan_ranges.begin()->first;
1582
10
            auto cache_source_id = next_operator_id();
1583
10
            op = std::make_shared<CacheSourceOperatorX>(pool, cache_node_id, cache_source_id,
1584
10
                                                        _params.fragment.query_cache_param);
1585
10
            RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1586
1587
10
            const auto downstream_pipeline_id = cur_pipe->id();
1588
10
            if (!_dag.contains(downstream_pipeline_id)) {
1589
10
                _dag.insert({downstream_pipeline_id, {}});
1590
10
            }
1591
10
            new_pipe = add_pipeline(cur_pipe);
1592
10
            _dag[downstream_pipeline_id].push_back(new_pipe->id());
1593
1594
10
            DataSinkOperatorPtr cache_sink(new CacheSinkOperatorX(
1595
10
                    next_sink_operator_id(), op->node_id(), op->operator_id()));
1596
10
            RETURN_IF_ERROR(new_pipe->set_sink(cache_sink));
1597
10
            return Status::OK();
1598
10
        };
1599
132k
        const bool group_by_limit_opt =
1600
132k
                tnode.agg_node.__isset.agg_sort_info_by_group_key && tnode.limit > 0;
1601
1602
        /// PartitionedAggSourceOperatorX does not support "group by limit opt(#29641)" yet.
1603
        /// If `group_by_limit_opt` is true, then it might not need to spill at all.
1604
132k
        const bool enable_spill = _runtime_state->enable_spill() &&
1605
132k
                                  !tnode.agg_node.grouping_exprs.empty() && !group_by_limit_opt;
1606
132k
        const bool is_streaming_agg = tnode.agg_node.__isset.use_streaming_preaggregation &&
1607
132k
                                      tnode.agg_node.use_streaming_preaggregation &&
1608
132k
                                      !tnode.agg_node.grouping_exprs.empty();
1609
        // TODO: distinct streaming agg does not support spill.
1610
132k
        const bool can_use_distinct_streaming_agg =
1611
132k
                (!enable_spill || is_streaming_agg) && tnode.agg_node.aggregate_functions.empty() &&
1612
132k
                !tnode.agg_node.__isset.agg_sort_info_by_group_key &&
1613
132k
                _params.query_options.__isset.enable_distinct_streaming_aggregation &&
1614
132k
                _params.query_options.enable_distinct_streaming_aggregation;
1615
1616
132k
        if (can_use_distinct_streaming_agg) {
1617
75.7k
            if (need_create_cache_op) {
1618
8
                PipelinePtr new_pipe;
1619
8
                RETURN_IF_ERROR(create_query_cache_operator(new_pipe));
1620
1621
8
                cache_op = op;
1622
8
                op = std::make_shared<DistinctStreamingAggOperatorX>(pool, next_operator_id(),
1623
8
                                                                     tnode, descs);
1624
8
                RETURN_IF_ERROR(new_pipe->add_operator(op, _parallel_instances));
1625
8
                RETURN_IF_ERROR(cur_pipe->operators().front()->set_child(op));
1626
8
                cur_pipe = new_pipe;
1627
75.7k
            } else {
1628
75.7k
                op = std::make_shared<DistinctStreamingAggOperatorX>(pool, next_operator_id(),
1629
75.7k
                                                                     tnode, descs);
1630
75.7k
                RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1631
75.7k
            }
1632
75.7k
        } else if (is_streaming_agg) {
1633
2.02k
            if (need_create_cache_op) {
1634
0
                PipelinePtr new_pipe;
1635
0
                RETURN_IF_ERROR(create_query_cache_operator(new_pipe));
1636
0
                cache_op = op;
1637
0
                op = std::make_shared<StreamingAggOperatorX>(pool, next_operator_id(), tnode,
1638
0
                                                             descs);
1639
0
                RETURN_IF_ERROR(cur_pipe->operators().front()->set_child(op));
1640
0
                RETURN_IF_ERROR(new_pipe->add_operator(op, _parallel_instances));
1641
0
                cur_pipe = new_pipe;
1642
2.02k
            } else {
1643
2.02k
                op = std::make_shared<StreamingAggOperatorX>(pool, next_operator_id(), tnode,
1644
2.02k
                                                             descs);
1645
2.02k
                RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1646
2.02k
            }
1647
55.2k
        } else {
1648
            // create new pipeline to add query cache operator
1649
55.2k
            PipelinePtr new_pipe;
1650
55.2k
            if (need_create_cache_op) {
1651
2
                RETURN_IF_ERROR(create_query_cache_operator(new_pipe));
1652
2
                cache_op = op;
1653
2
            }
1654
1655
55.2k
            if (enable_spill) {
1656
71
                op = std::make_shared<PartitionedAggSourceOperatorX>(pool, tnode,
1657
71
                                                                     next_operator_id(), descs);
1658
55.1k
            } else {
1659
55.1k
                op = std::make_shared<AggSourceOperatorX>(pool, tnode, next_operator_id(), descs);
1660
55.1k
            }
1661
55.2k
            if (need_create_cache_op) {
1662
2
                RETURN_IF_ERROR(cur_pipe->operators().front()->set_child(op));
1663
2
                RETURN_IF_ERROR(new_pipe->add_operator(op, _parallel_instances));
1664
2
                cur_pipe = new_pipe;
1665
55.2k
            } else {
1666
55.2k
                RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1667
55.2k
            }
1668
1669
55.2k
            const auto downstream_pipeline_id = cur_pipe->id();
1670
55.2k
            if (!_dag.contains(downstream_pipeline_id)) {
1671
52.1k
                _dag.insert({downstream_pipeline_id, {}});
1672
52.1k
            }
1673
55.2k
            cur_pipe = add_pipeline(cur_pipe);
1674
55.2k
            _dag[downstream_pipeline_id].push_back(cur_pipe->id());
1675
1676
55.2k
            if (enable_spill) {
1677
71
                sink_ops.push_back(std::make_shared<PartitionedAggSinkOperatorX>(
1678
71
                        pool, next_sink_operator_id(), op->operator_id(), tnode, descs));
1679
55.1k
            } else {
1680
55.1k
                sink_ops.push_back(std::make_shared<AggSinkOperatorX>(
1681
55.1k
                        pool, next_sink_operator_id(), op->operator_id(), tnode, descs));
1682
55.1k
            }
1683
55.2k
            RETURN_IF_ERROR(cur_pipe->set_sink(sink_ops.back()));
1684
55.2k
            RETURN_IF_ERROR(cur_pipe->sink()->init(tnode, _runtime_state.get()));
1685
55.2k
        }
1686
132k
        break;
1687
132k
    }
1688
132k
    case TPlanNodeType::BUCKETED_AGGREGATION_NODE: {
1689
86
        if (tnode.bucketed_agg_node.grouping_exprs.empty()) {
1690
0
            return Status::InternalError(
1691
0
                    "Bucketed aggregation node {} should not be used without group by keys",
1692
0
                    tnode.node_id);
1693
0
        }
1694
1695
        // Create source operator (goes on the current / downstream pipeline).
1696
86
        op = std::make_shared<BucketedAggSourceOperatorX>(pool, tnode, next_operator_id(), descs);
1697
86
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1698
1699
        // Create a new pipeline for the sink side.
1700
86
        const auto downstream_pipeline_id = cur_pipe->id();
1701
86
        if (!_dag.contains(downstream_pipeline_id)) {
1702
86
            _dag.insert({downstream_pipeline_id, {}});
1703
86
        }
1704
86
        cur_pipe = add_pipeline(cur_pipe);
1705
86
        _dag[downstream_pipeline_id].push_back(cur_pipe->id());
1706
1707
        // Create sink operator.
1708
86
        sink_ops.push_back(std::make_shared<BucketedAggSinkOperatorX>(
1709
86
                pool, next_sink_operator_id(), op->operator_id(), tnode, descs));
1710
86
        RETURN_IF_ERROR(cur_pipe->set_sink(sink_ops.back()));
1711
86
        RETURN_IF_ERROR(cur_pipe->sink()->init(tnode, _runtime_state.get()));
1712
1713
        // Pre-register a single shared state for ALL instances so that every
1714
        // sink instance writes its per-instance hash table into the same
1715
        // BucketedAggSharedState and every source instance can merge across
1716
        // all of them.
1717
86
        {
1718
86
            auto shared_state = BucketedAggSharedState::create_shared();
1719
86
            shared_state->id = op->operator_id();
1720
86
            shared_state->related_op_ids.insert(op->operator_id());
1721
1722
680
            for (int i = 0; i < _num_instances; i++) {
1723
594
                auto sink_dep = std::make_shared<Dependency>(op->operator_id(), op->node_id(),
1724
594
                                                             "BUCKETED_AGG_SINK_DEPENDENCY");
1725
594
                sink_dep->set_shared_state(shared_state.get());
1726
594
                shared_state->sink_deps.push_back(sink_dep);
1727
594
            }
1728
86
            shared_state->create_source_dependencies(_num_instances, op->operator_id(),
1729
86
                                                     op->node_id(), "BUCKETED_AGG_SOURCE");
1730
86
            _op_id_to_shared_state.insert(
1731
86
                    {op->operator_id(), {shared_state, shared_state->sink_deps}});
1732
86
        }
1733
86
        break;
1734
86
    }
1735
10.3k
    case TPlanNodeType::HASH_JOIN_NODE: {
1736
10.3k
        const auto is_broadcast_join = tnode.hash_join_node.__isset.is_broadcast_join &&
1737
10.3k
                                       tnode.hash_join_node.is_broadcast_join;
1738
10.3k
        const auto enable_spill = _runtime_state->enable_spill();
1739
10.3k
        if (enable_spill && !is_broadcast_join) {
1740
0
            auto tnode_ = tnode;
1741
0
            tnode_.runtime_filters.clear();
1742
0
            auto inner_probe_operator =
1743
0
                    std::make_shared<HashJoinProbeOperatorX>(pool, tnode_, 0, descs);
1744
1745
            // probe side inner sink operator is used to build hash table on probe side when data is spilled.
1746
            // So here use `tnode_` which has no runtime filters.
1747
0
            auto probe_side_inner_sink_operator =
1748
0
                    std::make_shared<HashJoinBuildSinkOperatorX>(pool, 0, 0, tnode_, descs);
1749
1750
0
            RETURN_IF_ERROR(inner_probe_operator->init(tnode_, _runtime_state.get()));
1751
0
            RETURN_IF_ERROR(probe_side_inner_sink_operator->init(tnode_, _runtime_state.get()));
1752
1753
0
            auto probe_operator = std::make_shared<PartitionedHashJoinProbeOperatorX>(
1754
0
                    pool, tnode_, next_operator_id(), descs);
1755
0
            probe_operator->set_inner_operators(probe_side_inner_sink_operator,
1756
0
                                                inner_probe_operator);
1757
0
            op = std::move(probe_operator);
1758
0
            RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1759
1760
0
            const auto downstream_pipeline_id = cur_pipe->id();
1761
0
            if (!_dag.contains(downstream_pipeline_id)) {
1762
0
                _dag.insert({downstream_pipeline_id, {}});
1763
0
            }
1764
0
            PipelinePtr build_side_pipe = add_pipeline(cur_pipe);
1765
0
            _dag[downstream_pipeline_id].push_back(build_side_pipe->id());
1766
1767
0
            auto inner_sink_operator =
1768
0
                    std::make_shared<HashJoinBuildSinkOperatorX>(pool, 0, 0, tnode, descs);
1769
0
            auto sink_operator = std::make_shared<PartitionedHashJoinSinkOperatorX>(
1770
0
                    pool, next_sink_operator_id(), op->operator_id(), tnode_, descs);
1771
0
            RETURN_IF_ERROR(inner_sink_operator->init(tnode, _runtime_state.get()));
1772
1773
0
            sink_operator->set_inner_operators(inner_sink_operator, inner_probe_operator);
1774
0
            sink_ops.push_back(std::move(sink_operator));
1775
0
            RETURN_IF_ERROR(build_side_pipe->set_sink(sink_ops.back()));
1776
0
            RETURN_IF_ERROR(build_side_pipe->sink()->init(tnode_, _runtime_state.get()));
1777
1778
0
            _pipeline_parent_map.push(op->node_id(), cur_pipe);
1779
0
            _pipeline_parent_map.push(op->node_id(), build_side_pipe);
1780
10.3k
        } else {
1781
10.3k
            op = std::make_shared<HashJoinProbeOperatorX>(pool, tnode, next_operator_id(), descs);
1782
10.3k
            RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1783
1784
10.3k
            const auto downstream_pipeline_id = cur_pipe->id();
1785
10.3k
            if (!_dag.contains(downstream_pipeline_id)) {
1786
8.65k
                _dag.insert({downstream_pipeline_id, {}});
1787
8.65k
            }
1788
10.3k
            PipelinePtr build_side_pipe = add_pipeline(cur_pipe);
1789
10.3k
            _dag[downstream_pipeline_id].push_back(build_side_pipe->id());
1790
1791
10.3k
            sink_ops.push_back(std::make_shared<HashJoinBuildSinkOperatorX>(
1792
10.3k
                    pool, next_sink_operator_id(), op->operator_id(), tnode, descs));
1793
10.3k
            RETURN_IF_ERROR(build_side_pipe->set_sink(sink_ops.back()));
1794
10.3k
            RETURN_IF_ERROR(build_side_pipe->sink()->init(tnode, _runtime_state.get()));
1795
1796
10.3k
            _pipeline_parent_map.push(op->node_id(), cur_pipe);
1797
10.3k
            _pipeline_parent_map.push(op->node_id(), build_side_pipe);
1798
10.3k
        }
1799
10.3k
        if (is_broadcast_join && _runtime_state->enable_share_hash_table_for_broadcast_join()) {
1800
3.15k
            std::shared_ptr<HashJoinSharedState> shared_state =
1801
3.15k
                    HashJoinSharedState::create_shared(_num_instances);
1802
19.9k
            for (int i = 0; i < _num_instances; i++) {
1803
16.8k
                auto sink_dep = std::make_shared<Dependency>(op->operator_id(), op->node_id(),
1804
16.8k
                                                             "HASH_JOIN_BUILD_DEPENDENCY");
1805
16.8k
                sink_dep->set_shared_state(shared_state.get());
1806
16.8k
                shared_state->sink_deps.push_back(sink_dep);
1807
16.8k
            }
1808
3.15k
            shared_state->create_source_dependencies(_num_instances, op->operator_id(),
1809
3.15k
                                                     op->node_id(), "HASH_JOIN_PROBE");
1810
3.15k
            _op_id_to_shared_state.insert(
1811
3.15k
                    {op->operator_id(), {shared_state, shared_state->sink_deps}});
1812
3.15k
        }
1813
10.3k
        break;
1814
10.3k
    }
1815
5.86k
    case TPlanNodeType::CROSS_JOIN_NODE: {
1816
5.86k
        op = std::make_shared<NestedLoopJoinProbeOperatorX>(pool, tnode, next_operator_id(), descs);
1817
5.86k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1818
1819
5.86k
        const auto downstream_pipeline_id = cur_pipe->id();
1820
5.86k
        if (!_dag.contains(downstream_pipeline_id)) {
1821
5.61k
            _dag.insert({downstream_pipeline_id, {}});
1822
5.61k
        }
1823
5.86k
        PipelinePtr build_side_pipe = add_pipeline(cur_pipe);
1824
5.86k
        _dag[downstream_pipeline_id].push_back(build_side_pipe->id());
1825
1826
5.86k
        sink_ops.push_back(std::make_shared<NestedLoopJoinBuildSinkOperatorX>(
1827
5.86k
                pool, next_sink_operator_id(), op->operator_id(), tnode, descs));
1828
5.86k
        RETURN_IF_ERROR(build_side_pipe->set_sink(sink_ops.back()));
1829
5.86k
        RETURN_IF_ERROR(build_side_pipe->sink()->init(tnode, _runtime_state.get()));
1830
5.86k
        _pipeline_parent_map.push(op->node_id(), cur_pipe);
1831
5.86k
        _pipeline_parent_map.push(op->node_id(), build_side_pipe);
1832
5.86k
        break;
1833
5.86k
    }
1834
54.4k
    case TPlanNodeType::UNION_NODE: {
1835
54.4k
        int child_count = tnode.num_children;
1836
54.4k
        op = std::make_shared<UnionSourceOperatorX>(pool, tnode, next_operator_id(), descs);
1837
54.4k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1838
1839
54.4k
        const auto downstream_pipeline_id = cur_pipe->id();
1840
54.4k
        if (!_dag.contains(downstream_pipeline_id)) {
1841
53.5k
            _dag.insert({downstream_pipeline_id, {}});
1842
53.5k
        }
1843
55.9k
        for (int i = 0; i < child_count; i++) {
1844
1.50k
            PipelinePtr build_side_pipe = add_pipeline(cur_pipe);
1845
1.50k
            _dag[downstream_pipeline_id].push_back(build_side_pipe->id());
1846
1.50k
            sink_ops.push_back(std::make_shared<UnionSinkOperatorX>(
1847
1.50k
                    i, next_sink_operator_id(), op->operator_id(), pool, tnode, descs));
1848
1.50k
            RETURN_IF_ERROR(build_side_pipe->set_sink(sink_ops.back()));
1849
1.50k
            RETURN_IF_ERROR(build_side_pipe->sink()->init(tnode, _runtime_state.get()));
1850
            // preset children pipelines. if any pipeline found this as its father, will use the prepared pipeline to build.
1851
1.50k
            _pipeline_parent_map.push(op->node_id(), build_side_pipe);
1852
1.50k
        }
1853
54.4k
        break;
1854
54.4k
    }
1855
54.4k
    case TPlanNodeType::SORT_NODE: {
1856
45.3k
        const auto should_spill = _runtime_state->enable_spill() &&
1857
45.3k
                                  tnode.sort_node.algorithm == TSortAlgorithm::FULL_SORT;
1858
45.3k
        const bool use_local_merge =
1859
45.3k
                tnode.sort_node.__isset.use_local_merge && tnode.sort_node.use_local_merge;
1860
45.3k
        if (should_spill) {
1861
9
            op = std::make_shared<SpillSortSourceOperatorX>(pool, tnode, next_operator_id(), descs);
1862
45.3k
        } else if (use_local_merge) {
1863
42.8k
            op = std::make_shared<LocalMergeSortSourceOperatorX>(pool, tnode, next_operator_id(),
1864
42.8k
                                                                 descs);
1865
42.8k
        } else {
1866
2.44k
            op = std::make_shared<SortSourceOperatorX>(pool, tnode, next_operator_id(), descs);
1867
2.44k
        }
1868
45.3k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1869
1870
45.3k
        const auto downstream_pipeline_id = cur_pipe->id();
1871
45.3k
        if (!_dag.contains(downstream_pipeline_id)) {
1872
45.2k
            _dag.insert({downstream_pipeline_id, {}});
1873
45.2k
        }
1874
45.3k
        cur_pipe = add_pipeline(cur_pipe);
1875
45.3k
        _dag[downstream_pipeline_id].push_back(cur_pipe->id());
1876
1877
45.3k
        if (should_spill) {
1878
9
            sink_ops.push_back(std::make_shared<SpillSortSinkOperatorX>(
1879
9
                    pool, next_sink_operator_id(), op->operator_id(), tnode, descs));
1880
45.3k
        } else {
1881
45.3k
            sink_ops.push_back(std::make_shared<SortSinkOperatorX>(
1882
45.3k
                    pool, next_sink_operator_id(), op->operator_id(), tnode, descs));
1883
45.3k
        }
1884
45.3k
        RETURN_IF_ERROR(cur_pipe->set_sink(sink_ops.back()));
1885
45.3k
        RETURN_IF_ERROR(cur_pipe->sink()->init(tnode, _runtime_state.get()));
1886
45.3k
        break;
1887
45.3k
    }
1888
45.3k
    case TPlanNodeType::PARTITION_SORT_NODE: {
1889
68
        op = std::make_shared<PartitionSortSourceOperatorX>(pool, tnode, next_operator_id(), descs);
1890
68
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1891
1892
68
        const auto downstream_pipeline_id = cur_pipe->id();
1893
68
        if (!_dag.contains(downstream_pipeline_id)) {
1894
68
            _dag.insert({downstream_pipeline_id, {}});
1895
68
        }
1896
68
        cur_pipe = add_pipeline(cur_pipe);
1897
68
        _dag[downstream_pipeline_id].push_back(cur_pipe->id());
1898
1899
68
        sink_ops.push_back(std::make_shared<PartitionSortSinkOperatorX>(
1900
68
                pool, next_sink_operator_id(), op->operator_id(), tnode, descs));
1901
68
        RETURN_IF_ERROR(cur_pipe->set_sink(sink_ops.back()));
1902
68
        RETURN_IF_ERROR(cur_pipe->sink()->init(tnode, _runtime_state.get()));
1903
68
        break;
1904
68
    }
1905
1.82k
    case TPlanNodeType::ANALYTIC_EVAL_NODE: {
1906
1.82k
        op = std::make_shared<AnalyticSourceOperatorX>(pool, tnode, next_operator_id(), descs);
1907
1.82k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1908
1909
1.82k
        const auto downstream_pipeline_id = cur_pipe->id();
1910
1.82k
        if (!_dag.contains(downstream_pipeline_id)) {
1911
1.81k
            _dag.insert({downstream_pipeline_id, {}});
1912
1.81k
        }
1913
1.82k
        cur_pipe = add_pipeline(cur_pipe);
1914
1.82k
        _dag[downstream_pipeline_id].push_back(cur_pipe->id());
1915
1916
1.82k
        sink_ops.push_back(std::make_shared<AnalyticSinkOperatorX>(
1917
1.82k
                pool, next_sink_operator_id(), op->operator_id(), tnode, descs));
1918
1.82k
        RETURN_IF_ERROR(cur_pipe->set_sink(sink_ops.back()));
1919
1.82k
        RETURN_IF_ERROR(cur_pipe->sink()->init(tnode, _runtime_state.get()));
1920
1.82k
        break;
1921
1.82k
    }
1922
1.82k
    case TPlanNodeType::MATERIALIZATION_NODE: {
1923
1.64k
        op = std::make_shared<MaterializationOperator>(pool, tnode, next_operator_id(), descs);
1924
1.64k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1925
1.64k
        break;
1926
1.64k
    }
1927
1.64k
    case TPlanNodeType::INTERSECT_NODE: {
1928
168
        RETURN_IF_ERROR(_build_operators_for_set_operation_node<true>(pool, tnode, descs, op,
1929
168
                                                                      cur_pipe, sink_ops));
1930
168
        break;
1931
168
    }
1932
168
    case TPlanNodeType::EXCEPT_NODE: {
1933
159
        RETURN_IF_ERROR(_build_operators_for_set_operation_node<false>(pool, tnode, descs, op,
1934
159
                                                                       cur_pipe, sink_ops));
1935
159
        break;
1936
159
    }
1937
327
    case TPlanNodeType::REPEAT_NODE: {
1938
327
        op = std::make_shared<RepeatOperatorX>(pool, tnode, next_operator_id(), descs);
1939
327
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1940
327
        break;
1941
327
    }
1942
920
    case TPlanNodeType::TABLE_FUNCTION_NODE: {
1943
920
        op = std::make_shared<TableFunctionOperatorX>(pool, tnode, next_operator_id(), descs);
1944
920
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1945
920
        break;
1946
920
    }
1947
920
    case TPlanNodeType::ASSERT_NUM_ROWS_NODE: {
1948
218
        op = std::make_shared<AssertNumRowsOperatorX>(pool, tnode, next_operator_id(), descs);
1949
218
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1950
218
        break;
1951
218
    }
1952
1.71k
    case TPlanNodeType::EMPTY_SET_NODE: {
1953
1.71k
        op = std::make_shared<EmptySetSourceOperatorX>(pool, tnode, next_operator_id(), descs);
1954
1.71k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1955
1.71k
        break;
1956
1.71k
    }
1957
1.71k
    case TPlanNodeType::DATA_GEN_SCAN_NODE: {
1958
489
        op = std::make_shared<DataGenSourceOperatorX>(pool, tnode, next_operator_id(), descs);
1959
489
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1960
489
        fe_with_old_version = !tnode.__isset.is_serial_operator;
1961
489
        break;
1962
489
    }
1963
2.08k
    case TPlanNodeType::SCHEMA_SCAN_NODE: {
1964
2.08k
        op = std::make_shared<SchemaScanOperatorX>(pool, tnode, next_operator_id(), descs);
1965
2.08k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1966
2.08k
        break;
1967
2.08k
    }
1968
6.32k
    case TPlanNodeType::META_SCAN_NODE: {
1969
6.32k
        op = std::make_shared<MetaScanOperatorX>(pool, tnode, next_operator_id(), descs);
1970
6.32k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1971
6.32k
        break;
1972
6.32k
    }
1973
6.32k
    case TPlanNodeType::SELECT_NODE: {
1974
2.41k
        op = std::make_shared<SelectOperatorX>(pool, tnode, next_operator_id(), descs);
1975
2.41k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1976
2.41k
        break;
1977
2.41k
    }
1978
2.41k
    case TPlanNodeType::REC_CTE_NODE: {
1979
163
        op = std::make_shared<RecCTESourceOperatorX>(pool, tnode, next_operator_id(), descs);
1980
163
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
1981
1982
163
        const auto downstream_pipeline_id = cur_pipe->id();
1983
163
        if (!_dag.contains(downstream_pipeline_id)) {
1984
159
            _dag.insert({downstream_pipeline_id, {}});
1985
159
        }
1986
1987
163
        PipelinePtr anchor_side_pipe = add_pipeline(cur_pipe);
1988
163
        _dag[downstream_pipeline_id].push_back(anchor_side_pipe->id());
1989
1990
163
        DataSinkOperatorPtr anchor_sink;
1991
163
        anchor_sink = std::make_shared<RecCTEAnchorSinkOperatorX>(next_sink_operator_id(),
1992
163
                                                                  op->operator_id(), tnode, descs);
1993
163
        RETURN_IF_ERROR(anchor_side_pipe->set_sink(anchor_sink));
1994
163
        RETURN_IF_ERROR(anchor_side_pipe->sink()->init(tnode, _runtime_state.get()));
1995
163
        _pipeline_parent_map.push(op->node_id(), anchor_side_pipe);
1996
1997
163
        PipelinePtr rec_side_pipe = add_pipeline(cur_pipe);
1998
163
        _dag[downstream_pipeline_id].push_back(rec_side_pipe->id());
1999
2000
163
        DataSinkOperatorPtr rec_sink;
2001
163
        rec_sink = std::make_shared<RecCTESinkOperatorX>(next_sink_operator_id(), op->operator_id(),
2002
163
                                                         tnode, descs);
2003
163
        RETURN_IF_ERROR(rec_side_pipe->set_sink(rec_sink));
2004
163
        RETURN_IF_ERROR(rec_side_pipe->sink()->init(tnode, _runtime_state.get()));
2005
163
        _pipeline_parent_map.push(op->node_id(), rec_side_pipe);
2006
2007
163
        break;
2008
163
    }
2009
2.18k
    case TPlanNodeType::REC_CTE_SCAN_NODE: {
2010
2.18k
        op = std::make_shared<RecCTEScanOperatorX>(pool, tnode, next_operator_id(), descs);
2011
2.18k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
2012
2.18k
        break;
2013
2.18k
    }
2014
104k
    case TPlanNodeType::LOCAL_EXCHANGE_NODE: {
2015
104k
        op = std::make_shared<LocalExchangeSourceOperatorX>(pool, tnode, next_operator_id(), descs);
2016
        // The downstream pipeline (containing LocalExchangeSource) must have
2017
        // _num_instances tasks — matching BE-native _inherit_pipeline_properties
2018
        // which sets pipe_with_source.set_num_tasks(_num_instances).
2019
        // Without this, when the parent pipeline was reduced by a serial operator
2020
        // (e.g., serial Exchange with use_serial_exchange=true, or UNPARTITIONED
2021
        // Exchange), the downstream inherits the reduced num_tasks via
2022
        // add_pipeline(parent).  The deferred exchanger creates _num_instances
2023
        // channels but only fewer source tasks initialize mem_counters — the
2024
        // sink round-robins to all channels and crashes on uninitialized ones.
2025
104k
        RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
2026
        // Restore downstream pipeline's num_tasks (mirroring _inherit_pipeline_properties:
2027
        // downstream keeps _num_instances, upstream gets the serial/reduced count)
2028
104k
        cur_pipe->set_num_tasks(_num_instances);
2029
2030
104k
        const auto downstream_pipeline_id = cur_pipe->id();
2031
104k
        if (!_dag.contains(downstream_pipeline_id)) {
2032
99.7k
            _dag.insert({downstream_pipeline_id, {}});
2033
99.7k
        }
2034
104k
        cur_pipe = add_pipeline(cur_pipe);
2035
        // If this local exchange was inserted because of a serial scan (is_serial_operator),
2036
        // the upstream pipeline (cur_pipe) should have num_tasks=1 (only 1 scan task).
2037
        // We set this now so the exchanger is created with the correct sender count.
2038
        // Child operators added later (serial scan) will also set num_tasks=1, which is
2039
        // consistent with this.
2040
104k
        if (op->is_serial_operator() && _parallel_instances > 0) {
2041
0
            cur_pipe->set_num_tasks(_parallel_instances);
2042
0
        }
2043
104k
        _dag[downstream_pipeline_id].push_back(cur_pipe->id());
2044
104k
        int num_partitions = 0;
2045
104k
        std::map<int, int> shuffle_id_to_instance_idx;
2046
104k
        auto partition_type = tnode.local_exchange_node.partition_type;
2047
104k
        switch (partition_type) {
2048
495
        case TLocalPartitionType::BUCKET_HASH_SHUFFLE:
2049
495
            num_partitions = _params.num_buckets;
2050
495
            shuffle_id_to_instance_idx = _params.bucket_seq_to_instance_idx;
2051
495
            break;
2052
16.1k
        case TLocalPartitionType::LOCAL_EXECUTION_HASH_SHUFFLE:
2053
137k
            for (int i = 0; i < _num_instances; i++) {
2054
121k
                shuffle_id_to_instance_idx[i] = i;
2055
121k
            }
2056
16.1k
            num_partitions = _num_instances;
2057
16.1k
            break;
2058
4
        case TLocalPartitionType::GLOBAL_EXECUTION_HASH_SHUFFLE:
2059
4
            num_partitions = _total_instances;
2060
4
            shuffle_id_to_instance_idx = _params.shuffle_idx_to_instance_idx;
2061
4
            break;
2062
87.7k
        default:
2063
87.7k
            break;
2064
104k
        }
2065
104k
        auto local_exchange_id = op->operator_id();
2066
104k
        auto sink_id = next_sink_operator_id();
2067
104k
        DataSinkOperatorPtr sink = std::make_shared<LocalExchangeSinkOperatorX>(
2068
104k
                sink_id, local_exchange_id, tnode, num_partitions, shuffle_id_to_instance_idx);
2069
104k
        sink_ops.push_back(sink);
2070
104k
        RETURN_IF_ERROR(cur_pipe->set_sink(sink));
2071
104k
        RETURN_IF_ERROR(cur_pipe->sink()->init(tnode, _runtime_state.get()));
2072
2073
        // For FE-planned local exchange, we need to:
2074
        // 1. Initialize the partitioner for hash shuffle types
2075
        // 2. Defer exchanger creation until after the full plan tree is built
2076
        //    (child operators like serial ExchangeNode may change cur_pipe->num_tasks())
2077
        // 3. Register shared state so pipeline tasks can find it
2078
104k
        RETURN_IF_ERROR(static_cast<LocalExchangeSinkOperatorX*>(cur_pipe->sink())
2079
104k
                                ->init_partitioner(_runtime_state.get()));
2080
2081
104k
        int free_blocks_limit =
2082
104k
                _runtime_state->query_options().__isset.local_exchange_free_blocks_limit
2083
104k
                        ? cast_set<int>(
2084
104k
                                  _runtime_state->query_options().local_exchange_free_blocks_limit)
2085
18.4E
                        : 0;
2086
104k
        auto shared_state = LocalExchangeSharedState::create_shared(_num_instances);
2087
104k
        shared_state->create_source_dependencies(_num_instances, local_exchange_id,
2088
104k
                                                 local_exchange_id, "LOCAL_EXCHANGE_OPERATOR");
2089
104k
        shared_state->create_sink_dependency(sink_id, local_exchange_id, "LOCAL_EXCHANGE_SINK");
2090
104k
        _op_id_to_shared_state.insert({local_exchange_id, {shared_state, shared_state->sink_deps}});
2091
        // Defer exchanger creation: sender count depends on final upstream num_tasks
2092
104k
        _deferred_exchangers.push_back({shared_state, cur_pipe, partition_type, num_partitions,
2093
104k
                                        free_blocks_limit, local_exchange_id, sink_id});
2094
104k
        break;
2095
104k
    }
2096
0
    default:
2097
0
        return Status::InternalError("Unsupported exec type in pipeline: {}",
2098
0
                                     print_plan_node_type(tnode.node_type));
2099
774k
    }
2100
773k
    if (_params.__isset.parallel_instances && fe_with_old_version) {
2101
0
        cur_pipe->set_num_tasks(_params.parallel_instances);
2102
0
        op->set_serial_operator();
2103
0
    }
2104
2105
773k
    return Status::OK();
2106
774k
}
2107
// NOLINTEND(readability-function-cognitive-complexity)
2108
// NOLINTEND(readability-function-size)
2109
2110
template <bool is_intersect>
2111
Status PipelineFragmentContext::_build_operators_for_set_operation_node(
2112
        ObjectPool* pool, const TPlanNode& tnode, const DescriptorTbl& descs, OperatorPtr& op,
2113
327
        PipelinePtr& cur_pipe, std::vector<DataSinkOperatorPtr>& sink_ops) {
2114
327
    op.reset(new SetSourceOperatorX<is_intersect>(pool, tnode, next_operator_id(), descs));
2115
327
    RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
2116
2117
327
    const auto downstream_pipeline_id = cur_pipe->id();
2118
327
    if (!_dag.contains(downstream_pipeline_id)) {
2119
320
        _dag.insert({downstream_pipeline_id, {}});
2120
320
    }
2121
2122
1.07k
    for (int child_id = 0; child_id < tnode.num_children; child_id++) {
2123
750
        PipelinePtr probe_side_pipe = add_pipeline(cur_pipe);
2124
750
        _dag[downstream_pipeline_id].push_back(probe_side_pipe->id());
2125
2126
750
        if (child_id == 0) {
2127
327
            sink_ops.push_back(std::make_shared<SetSinkOperatorX<is_intersect>>(
2128
327
                    child_id, next_sink_operator_id(), op->operator_id(), pool, tnode, descs));
2129
423
        } else {
2130
423
            sink_ops.push_back(std::make_shared<SetProbeSinkOperatorX<is_intersect>>(
2131
423
                    child_id, next_sink_operator_id(), op->operator_id(), pool, tnode, descs));
2132
423
        }
2133
750
        RETURN_IF_ERROR(probe_side_pipe->set_sink(sink_ops.back()));
2134
750
        RETURN_IF_ERROR(probe_side_pipe->sink()->init(tnode, _runtime_state.get()));
2135
        // prepare children pipelines. if any pipeline found this as its father, will use the prepared pipeline to build.
2136
750
        _pipeline_parent_map.push(op->node_id(), probe_side_pipe);
2137
750
    }
2138
2139
327
    return Status::OK();
2140
327
}
_ZN5doris23PipelineFragmentContext39_build_operators_for_set_operation_nodeILb1EEENS_6StatusEPNS_10ObjectPoolERKNS_9TPlanNodeERKNS_13DescriptorTblERSt10shared_ptrINS_13OperatorXBaseEERSB_INS_8PipelineEERSt6vectorISB_INS_21DataSinkOperatorXBaseEESaISK_EE
Line
Count
Source
2113
168
        PipelinePtr& cur_pipe, std::vector<DataSinkOperatorPtr>& sink_ops) {
2114
168
    op.reset(new SetSourceOperatorX<is_intersect>(pool, tnode, next_operator_id(), descs));
2115
168
    RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
2116
2117
168
    const auto downstream_pipeline_id = cur_pipe->id();
2118
168
    if (!_dag.contains(downstream_pipeline_id)) {
2119
166
        _dag.insert({downstream_pipeline_id, {}});
2120
166
    }
2121
2122
585
    for (int child_id = 0; child_id < tnode.num_children; child_id++) {
2123
417
        PipelinePtr probe_side_pipe = add_pipeline(cur_pipe);
2124
417
        _dag[downstream_pipeline_id].push_back(probe_side_pipe->id());
2125
2126
417
        if (child_id == 0) {
2127
168
            sink_ops.push_back(std::make_shared<SetSinkOperatorX<is_intersect>>(
2128
168
                    child_id, next_sink_operator_id(), op->operator_id(), pool, tnode, descs));
2129
249
        } else {
2130
249
            sink_ops.push_back(std::make_shared<SetProbeSinkOperatorX<is_intersect>>(
2131
249
                    child_id, next_sink_operator_id(), op->operator_id(), pool, tnode, descs));
2132
249
        }
2133
417
        RETURN_IF_ERROR(probe_side_pipe->set_sink(sink_ops.back()));
2134
417
        RETURN_IF_ERROR(probe_side_pipe->sink()->init(tnode, _runtime_state.get()));
2135
        // prepare children pipelines. if any pipeline found this as its father, will use the prepared pipeline to build.
2136
417
        _pipeline_parent_map.push(op->node_id(), probe_side_pipe);
2137
417
    }
2138
2139
168
    return Status::OK();
2140
168
}
_ZN5doris23PipelineFragmentContext39_build_operators_for_set_operation_nodeILb0EEENS_6StatusEPNS_10ObjectPoolERKNS_9TPlanNodeERKNS_13DescriptorTblERSt10shared_ptrINS_13OperatorXBaseEERSB_INS_8PipelineEERSt6vectorISB_INS_21DataSinkOperatorXBaseEESaISK_EE
Line
Count
Source
2113
159
        PipelinePtr& cur_pipe, std::vector<DataSinkOperatorPtr>& sink_ops) {
2114
159
    op.reset(new SetSourceOperatorX<is_intersect>(pool, tnode, next_operator_id(), descs));
2115
159
    RETURN_IF_ERROR(cur_pipe->add_operator(op, _parallel_instances));
2116
2117
159
    const auto downstream_pipeline_id = cur_pipe->id();
2118
159
    if (!_dag.contains(downstream_pipeline_id)) {
2119
154
        _dag.insert({downstream_pipeline_id, {}});
2120
154
    }
2121
2122
492
    for (int child_id = 0; child_id < tnode.num_children; child_id++) {
2123
333
        PipelinePtr probe_side_pipe = add_pipeline(cur_pipe);
2124
333
        _dag[downstream_pipeline_id].push_back(probe_side_pipe->id());
2125
2126
333
        if (child_id == 0) {
2127
159
            sink_ops.push_back(std::make_shared<SetSinkOperatorX<is_intersect>>(
2128
159
                    child_id, next_sink_operator_id(), op->operator_id(), pool, tnode, descs));
2129
174
        } else {
2130
174
            sink_ops.push_back(std::make_shared<SetProbeSinkOperatorX<is_intersect>>(
2131
174
                    child_id, next_sink_operator_id(), op->operator_id(), pool, tnode, descs));
2132
174
        }
2133
333
        RETURN_IF_ERROR(probe_side_pipe->set_sink(sink_ops.back()));
2134
333
        RETURN_IF_ERROR(probe_side_pipe->sink()->init(tnode, _runtime_state.get()));
2135
        // prepare children pipelines. if any pipeline found this as its father, will use the prepared pipeline to build.
2136
333
        _pipeline_parent_map.push(op->node_id(), probe_side_pipe);
2137
333
    }
2138
2139
159
    return Status::OK();
2140
159
}
2141
2142
445k
Status PipelineFragmentContext::submit() {
2143
445k
    if (_submitted) {
2144
0
        return Status::InternalError("submitted");
2145
0
    }
2146
445k
    _submitted = true;
2147
2148
445k
    int submit_tasks = 0;
2149
445k
    Status st;
2150
445k
    auto* scheduler = _query_ctx->get_pipe_exec_scheduler();
2151
1.18M
    for (auto& task : _tasks) {
2152
1.96M
        for (auto& t : task) {
2153
1.96M
            st = scheduler->submit(t.first);
2154
1.96M
            DBUG_EXECUTE_IF("PipelineFragmentContext.submit.failed",
2155
1.96M
                            { st = Status::Aborted("PipelineFragmentContext.submit.failed"); });
2156
1.96M
            if (!st) {
2157
0
                cancel(Status::InternalError("submit context to executor fail"));
2158
0
                std::lock_guard<std::mutex> l(_task_mutex);
2159
0
                _total_tasks = submit_tasks;
2160
0
                break;
2161
0
            }
2162
1.96M
            submit_tasks++;
2163
1.96M
        }
2164
1.18M
    }
2165
445k
    if (!st.ok()) {
2166
0
        bool need_remove = false;
2167
0
        {
2168
0
            std::lock_guard<std::mutex> l(_task_mutex);
2169
0
            if (_closed_tasks >= _total_tasks) {
2170
0
                need_remove = _close_fragment_instance();
2171
0
            }
2172
0
        }
2173
        // Call remove_pipeline_context() outside _task_mutex to avoid ABBA deadlock.
2174
0
        if (need_remove) {
2175
0
            _exec_env->fragment_mgr()->remove_pipeline_context({_query_id, _fragment_id});
2176
0
        }
2177
0
        return Status::InternalError("Submit pipeline failed. err = {}, BE: {}", st.to_string(),
2178
0
                                     BackendOptions::get_localhost());
2179
445k
    } else {
2180
445k
        return st;
2181
445k
    }
2182
445k
}
2183
2184
0
void PipelineFragmentContext::print_profile(const std::string& extra_info) {
2185
0
    if (_runtime_state->enable_profile()) {
2186
0
        std::stringstream ss;
2187
0
        for (auto runtime_profile_ptr : _runtime_state->pipeline_id_to_profile()) {
2188
0
            runtime_profile_ptr->pretty_print(&ss);
2189
0
        }
2190
2191
0
        if (_runtime_state->load_channel_profile()) {
2192
0
            _runtime_state->load_channel_profile()->pretty_print(&ss);
2193
0
        }
2194
2195
0
        auto profile_str =
2196
0
                fmt::format("Query {} fragment {} {}, profile, {}", print_id(this->_query_id),
2197
0
                            this->_fragment_id, extra_info, ss.str());
2198
0
        LOG_LONG_STRING(INFO, profile_str);
2199
0
    }
2200
0
}
2201
// If all pipeline tasks binded to the fragment instance are finished, then we could
2202
// close the fragment instance.
2203
// Returns true if the caller should call remove_pipeline_context() **after** releasing
2204
// _task_mutex. We must not call remove_pipeline_context() here because it acquires
2205
// _pipeline_map's shard lock, and this function is called while _task_mutex is held.
2206
// Acquiring _pipeline_map while holding _task_mutex creates an ABBA deadlock with
2207
// dump_pipeline_tasks(), which acquires _pipeline_map first and then _task_mutex
2208
// (via debug_string()).
2209
449k
bool PipelineFragmentContext::_close_fragment_instance() {
2210
449k
    if (_is_fragment_instance_closed) {
2211
0
        return false;
2212
0
    }
2213
450k
    Defer defer_op {[&]() { _is_fragment_instance_closed = true; }};
2214
449k
    _fragment_level_profile->total_time_counter()->update(_fragment_watcher.elapsed_time());
2215
449k
    if (!_need_notify_close) {
2216
446k
        auto st = send_report(true);
2217
446k
        if (!st) {
2218
0
            LOG(WARNING) << fmt::format("Failed to send report for query {}, fragment {}: {}",
2219
0
                                        print_id(_query_id), _fragment_id, st.to_string());
2220
0
        }
2221
446k
    }
2222
    // Print profile content in info log is a tempoeray solution for stream load and external_connector.
2223
    // Since stream load does not have someting like coordinator on FE, so
2224
    // backend can not report profile to FE, ant its profile can not be shown
2225
    // in the same way with other query. So we print the profile content to info log.
2226
2227
449k
    if (_runtime_state->enable_profile() &&
2228
449k
        (_query_ctx->get_query_source() == QuerySource::STREAM_LOAD ||
2229
3.20k
         _query_ctx->get_query_source() == QuerySource::EXTERNAL_CONNECTOR ||
2230
3.20k
         _query_ctx->get_query_source() == QuerySource::GROUP_COMMIT_LOAD)) {
2231
0
        std::stringstream ss;
2232
        // Compute the _local_time_percent before pretty_print the runtime_profile
2233
        // Before add this operation, the print out like that:
2234
        // UNION_NODE (id=0):(Active: 56.720us, non-child: 00.00%)
2235
        // After add the operation, the print out like that:
2236
        // UNION_NODE (id=0):(Active: 56.720us, non-child: 82.53%)
2237
        // We can easily know the exec node execute time without child time consumed.
2238
0
        for (auto runtime_profile_ptr : _runtime_state->pipeline_id_to_profile()) {
2239
0
            runtime_profile_ptr->pretty_print(&ss);
2240
0
        }
2241
2242
0
        if (_runtime_state->load_channel_profile()) {
2243
0
            _runtime_state->load_channel_profile()->pretty_print(&ss);
2244
0
        }
2245
2246
0
        LOG_INFO("Query {} fragment {} profile:\n {}", print_id(_query_id), _fragment_id, ss.str());
2247
0
    }
2248
2249
449k
    if (_query_ctx->enable_profile()) {
2250
3.20k
        _query_ctx->add_fragment_profile(_fragment_id, collect_realtime_profile(),
2251
3.20k
                                         collect_realtime_load_channel_profile());
2252
3.20k
    }
2253
2254
    // Return whether the caller needs to remove from the pipeline map.
2255
    // The caller must do this after releasing _task_mutex.
2256
449k
    return !_need_notify_close;
2257
449k
}
2258
2259
1.95M
void PipelineFragmentContext::decrement_running_task(PipelineId pipeline_id) {
2260
    // If all tasks of this pipeline has been closed, upstream tasks is never needed, and we just make those runnable here
2261
1.95M
    DCHECK(_pip_id_to_pipeline.contains(pipeline_id));
2262
1.95M
    if (_pip_id_to_pipeline[pipeline_id]->close_task()) {
2263
683k
        if (_dag.contains(pipeline_id)) {
2264
275k
            for (auto dep : _dag[pipeline_id]) {
2265
234k
                _pip_id_to_pipeline[dep]->make_all_runnable(pipeline_id);
2266
234k
            }
2267
275k
        }
2268
683k
    }
2269
1.95M
    bool need_remove = false;
2270
1.95M
    {
2271
1.95M
        std::lock_guard<std::mutex> l(_task_mutex);
2272
1.95M
        ++_closed_tasks;
2273
        // Update query-level finished task progress in real time.
2274
1.95M
        _query_ctx->inc_finished_task_num();
2275
1.95M
        if (_closed_tasks >= _total_tasks) {
2276
450k
            need_remove = _close_fragment_instance();
2277
450k
        }
2278
1.95M
    }
2279
    // Call remove_pipeline_context() outside _task_mutex to avoid ABBA deadlock.
2280
1.95M
    if (need_remove) {
2281
446k
        _exec_env->fragment_mgr()->remove_pipeline_context({_query_id, _fragment_id});
2282
446k
    }
2283
1.95M
}
2284
2285
55.8k
std::string PipelineFragmentContext::get_load_error_url() {
2286
55.8k
    if (const auto& str = _runtime_state->get_error_log_file_path(); !str.empty()) {
2287
0
        return to_load_error_http_path(str);
2288
0
    }
2289
138k
    for (auto& tasks : _tasks) {
2290
209k
        for (auto& task : tasks) {
2291
209k
            if (const auto& str = task.second->get_error_log_file_path(); !str.empty()) {
2292
194
                return to_load_error_http_path(str);
2293
194
            }
2294
209k
        }
2295
138k
    }
2296
55.6k
    return "";
2297
55.8k
}
2298
2299
55.8k
std::string PipelineFragmentContext::get_first_error_msg() {
2300
55.8k
    if (const auto& str = _runtime_state->get_first_error_msg(); !str.empty()) {
2301
0
        return str;
2302
0
    }
2303
138k
    for (auto& tasks : _tasks) {
2304
209k
        for (auto& task : tasks) {
2305
209k
            if (const auto& str = task.second->get_first_error_msg(); !str.empty()) {
2306
194
                return str;
2307
194
            }
2308
209k
        }
2309
138k
    }
2310
55.6k
    return "";
2311
55.8k
}
2312
2313
0
std::string PipelineFragmentContext::_to_http_path(const std::string& file_name) const {
2314
0
    std::stringstream url;
2315
0
    url << "http://" << BackendOptions::get_localhost() << ":" << config::webserver_port
2316
0
        << "/api/_download_load?"
2317
0
        << "token=" << _exec_env->token() << "&file=" << file_name;
2318
0
    return url.str();
2319
0
}
2320
2321
50.2k
void PipelineFragmentContext::_coordinator_callback(const ReportStatusRequest& req) {
2322
50.2k
    DBUG_EXECUTE_IF("FragmentMgr::coordinator_callback.report_delay", {
2323
50.2k
        int random_seconds = req.status.is<ErrorCode::DATA_QUALITY_ERROR>() ? 8 : 2;
2324
50.2k
        LOG_INFO("sleep : ").tag("time", random_seconds).tag("query_id", print_id(req.query_id));
2325
50.2k
        std::this_thread::sleep_for(std::chrono::seconds(random_seconds));
2326
50.2k
        LOG_INFO("sleep done").tag("query_id", print_id(req.query_id));
2327
50.2k
    });
2328
2329
50.2k
    DCHECK(req.status.ok() || req.done); // if !status.ok() => done
2330
50.2k
    if (req.coord_addr.hostname == "external") {
2331
        // External query (flink/spark read tablets) not need to report to FE.
2332
0
        return;
2333
0
    }
2334
50.2k
    int callback_retries = 10;
2335
50.2k
    const int sleep_ms = 1000;
2336
50.2k
    Status exec_status = req.status;
2337
50.2k
    Status coord_status;
2338
50.2k
    std::unique_ptr<FrontendServiceConnection> coord = nullptr;
2339
50.2k
    do {
2340
50.2k
        coord = std::make_unique<FrontendServiceConnection>(_exec_env->frontend_client_cache(),
2341
50.2k
                                                            req.coord_addr, &coord_status);
2342
50.2k
        if (!coord_status.ok()) {
2343
0
            std::this_thread::sleep_for(std::chrono::milliseconds(sleep_ms));
2344
0
        }
2345
50.2k
    } while (!coord_status.ok() && callback_retries-- > 0);
2346
2347
50.2k
    if (!coord_status.ok()) {
2348
0
        UniqueId uid(req.query_id.hi, req.query_id.lo);
2349
0
        static_cast<void>(req.cancel_fn(Status::InternalError(
2350
0
                "query_id: {}, couldn't get a client for {}, reason is {}", uid.to_string(),
2351
0
                PrintThriftNetworkAddress(req.coord_addr), coord_status.to_string())));
2352
0
        return;
2353
0
    }
2354
2355
50.2k
    TReportExecStatusParams params;
2356
50.2k
    params.protocol_version = FrontendServiceVersion::V1;
2357
50.2k
    params.__set_query_id(req.query_id);
2358
50.2k
    params.__set_backend_num(req.backend_num);
2359
50.2k
    params.__set_fragment_instance_id(req.fragment_instance_id);
2360
50.2k
    params.__set_fragment_id(req.fragment_id);
2361
50.2k
    params.__set_status(exec_status.to_thrift());
2362
50.2k
    params.__set_done(req.done);
2363
50.2k
    params.__set_query_type(req.runtime_state->query_type());
2364
50.2k
    params.__isset.profile = false;
2365
2366
50.2k
    DCHECK(req.runtime_state != nullptr);
2367
2368
50.2k
    if (req.runtime_state->query_type() == TQueryType::LOAD) {
2369
44.8k
        params.__set_loaded_rows(req.runtime_state->num_rows_load_total());
2370
44.8k
        params.__set_loaded_bytes(req.runtime_state->num_bytes_load_total());
2371
44.8k
    } else {
2372
5.41k
        DCHECK(!req.runtime_states.empty());
2373
5.41k
        if (!req.runtime_state->output_files().empty()) {
2374
0
            params.__isset.delta_urls = true;
2375
0
            for (auto& it : req.runtime_state->output_files()) {
2376
0
                params.delta_urls.push_back(_to_http_path(it));
2377
0
            }
2378
0
        }
2379
5.41k
        if (!params.delta_urls.empty()) {
2380
0
            params.__isset.delta_urls = true;
2381
0
        }
2382
5.41k
    }
2383
2384
50.2k
    static std::string s_dpp_normal_all = "dpp.norm.ALL";
2385
50.2k
    static std::string s_dpp_abnormal_all = "dpp.abnorm.ALL";
2386
50.2k
    static std::string s_unselected_rows = "unselected.rows";
2387
50.2k
    int64_t num_rows_load_success = 0;
2388
50.2k
    int64_t num_rows_load_filtered = 0;
2389
50.2k
    int64_t num_rows_load_unselected = 0;
2390
50.2k
    if (req.runtime_state->num_rows_load_total() > 0 ||
2391
50.2k
        req.runtime_state->num_rows_load_filtered() > 0 ||
2392
50.2k
        req.runtime_state->num_finished_range() > 0) {
2393
0
        params.__isset.load_counters = true;
2394
2395
0
        num_rows_load_success = req.runtime_state->num_rows_load_success();
2396
0
        num_rows_load_filtered = req.runtime_state->num_rows_load_filtered();
2397
0
        num_rows_load_unselected = req.runtime_state->num_rows_load_unselected();
2398
0
        params.__isset.fragment_instance_reports = true;
2399
0
        TFragmentInstanceReport t;
2400
0
        t.__set_fragment_instance_id(req.runtime_state->fragment_instance_id());
2401
0
        t.__set_num_finished_range(cast_set<int>(req.runtime_state->num_finished_range()));
2402
0
        t.__set_loaded_rows(req.runtime_state->num_rows_load_total());
2403
0
        t.__set_loaded_bytes(req.runtime_state->num_bytes_load_total());
2404
0
        params.fragment_instance_reports.push_back(t);
2405
50.2k
    } else if (!req.runtime_states.empty()) {
2406
165k
        for (auto* rs : req.runtime_states) {
2407
165k
            if (rs->num_rows_load_total() > 0 || rs->num_rows_load_filtered() > 0 ||
2408
165k
                rs->num_finished_range() > 0) {
2409
37.9k
                params.__isset.load_counters = true;
2410
37.9k
                num_rows_load_success += rs->num_rows_load_success();
2411
37.9k
                num_rows_load_filtered += rs->num_rows_load_filtered();
2412
37.9k
                num_rows_load_unselected += rs->num_rows_load_unselected();
2413
37.9k
                params.__isset.fragment_instance_reports = true;
2414
37.9k
                TFragmentInstanceReport t;
2415
37.9k
                t.__set_fragment_instance_id(rs->fragment_instance_id());
2416
37.9k
                t.__set_num_finished_range(cast_set<int>(rs->num_finished_range()));
2417
37.9k
                t.__set_loaded_rows(rs->num_rows_load_total());
2418
37.9k
                t.__set_loaded_bytes(rs->num_bytes_load_total());
2419
37.9k
                params.fragment_instance_reports.push_back(t);
2420
37.9k
            }
2421
165k
        }
2422
50.2k
    }
2423
50.2k
    params.load_counters.emplace(s_dpp_normal_all, std::to_string(num_rows_load_success));
2424
50.2k
    params.load_counters.emplace(s_dpp_abnormal_all, std::to_string(num_rows_load_filtered));
2425
50.2k
    params.load_counters.emplace(s_unselected_rows, std::to_string(num_rows_load_unselected));
2426
2427
50.2k
    if (!req.load_error_url.empty()) {
2428
179
        params.__set_tracking_url(req.load_error_url);
2429
179
    }
2430
50.2k
    if (!req.first_error_msg.empty()) {
2431
179
        params.__set_first_error_msg(req.first_error_msg);
2432
179
    }
2433
165k
    for (auto* rs : req.runtime_states) {
2434
165k
        if (rs->wal_id() > 0) {
2435
114
            params.__set_txn_id(rs->wal_id());
2436
114
            params.__set_label(rs->import_label());
2437
114
        }
2438
165k
    }
2439
50.2k
    if (!req.runtime_state->export_output_files().empty()) {
2440
0
        params.__isset.export_files = true;
2441
0
        params.export_files = req.runtime_state->export_output_files();
2442
50.2k
    } else if (!req.runtime_states.empty()) {
2443
165k
        for (auto* rs : req.runtime_states) {
2444
165k
            if (!rs->export_output_files().empty()) {
2445
0
                params.__isset.export_files = true;
2446
0
                params.export_files.insert(params.export_files.end(),
2447
0
                                           rs->export_output_files().begin(),
2448
0
                                           rs->export_output_files().end());
2449
0
            }
2450
165k
        }
2451
50.2k
    }
2452
50.2k
    if (auto tci = req.runtime_state->tablet_commit_infos(); !tci.empty()) {
2453
0
        params.__isset.commitInfos = true;
2454
0
        params.commitInfos.insert(params.commitInfos.end(), tci.begin(), tci.end());
2455
50.2k
    } else if (!req.runtime_states.empty()) {
2456
165k
        for (auto* rs : req.runtime_states) {
2457
165k
            if (auto rs_tci = rs->tablet_commit_infos(); !rs_tci.empty()) {
2458
28.2k
                params.__isset.commitInfos = true;
2459
28.2k
                params.commitInfos.insert(params.commitInfos.end(), rs_tci.begin(), rs_tci.end());
2460
28.2k
            }
2461
165k
        }
2462
50.2k
    }
2463
50.2k
    if (auto eti = req.runtime_state->error_tablet_infos(); !eti.empty()) {
2464
0
        params.__isset.errorTabletInfos = true;
2465
0
        params.errorTabletInfos.insert(params.errorTabletInfos.end(), eti.begin(), eti.end());
2466
50.2k
    } else if (!req.runtime_states.empty()) {
2467
165k
        for (auto* rs : req.runtime_states) {
2468
165k
            if (auto rs_eti = rs->error_tablet_infos(); !rs_eti.empty()) {
2469
0
                params.__isset.errorTabletInfos = true;
2470
0
                params.errorTabletInfos.insert(params.errorTabletInfos.end(), rs_eti.begin(),
2471
0
                                               rs_eti.end());
2472
0
            }
2473
165k
        }
2474
50.2k
    }
2475
50.2k
    if (auto hpu = req.runtime_state->hive_partition_updates(); !hpu.empty()) {
2476
0
        params.__isset.hive_partition_updates = true;
2477
0
        params.hive_partition_updates.insert(params.hive_partition_updates.end(), hpu.begin(),
2478
0
                                             hpu.end());
2479
50.2k
    } else if (!req.runtime_states.empty()) {
2480
165k
        for (auto* rs : req.runtime_states) {
2481
165k
            if (auto rs_hpu = rs->hive_partition_updates(); !rs_hpu.empty()) {
2482
2.16k
                params.__isset.hive_partition_updates = true;
2483
2.16k
                params.hive_partition_updates.insert(params.hive_partition_updates.end(),
2484
2.16k
                                                     rs_hpu.begin(), rs_hpu.end());
2485
2.16k
            }
2486
165k
        }
2487
50.2k
    }
2488
50.2k
    if (auto icd = req.runtime_state->iceberg_commit_datas(); !icd.empty()) {
2489
0
        params.__isset.iceberg_commit_datas = true;
2490
0
        params.iceberg_commit_datas.insert(params.iceberg_commit_datas.end(), icd.begin(),
2491
0
                                           icd.end());
2492
50.2k
    } else if (!req.runtime_states.empty()) {
2493
165k
        for (auto* rs : req.runtime_states) {
2494
165k
            if (auto rs_icd = rs->iceberg_commit_datas(); !rs_icd.empty()) {
2495
2.08k
                params.__isset.iceberg_commit_datas = true;
2496
2.08k
                params.iceberg_commit_datas.insert(params.iceberg_commit_datas.end(),
2497
2.08k
                                                   rs_icd.begin(), rs_icd.end());
2498
2.08k
            }
2499
165k
        }
2500
50.2k
    }
2501
2502
50.2k
    if (auto mcd = req.runtime_state->mc_commit_datas(); !mcd.empty()) {
2503
0
        params.__isset.mc_commit_datas = true;
2504
0
        params.mc_commit_datas.insert(params.mc_commit_datas.end(), mcd.begin(), mcd.end());
2505
50.2k
    } else if (!req.runtime_states.empty()) {
2506
165k
        for (auto* rs : req.runtime_states) {
2507
165k
            if (auto rs_mcd = rs->mc_commit_datas(); !rs_mcd.empty()) {
2508
0
                params.__isset.mc_commit_datas = true;
2509
0
                params.mc_commit_datas.insert(params.mc_commit_datas.end(), rs_mcd.begin(),
2510
0
                                              rs_mcd.end());
2511
0
            }
2512
165k
        }
2513
50.2k
    }
2514
2515
50.2k
    req.runtime_state->get_unreported_errors(&(params.error_log));
2516
50.2k
    params.__isset.error_log = (!params.error_log.empty());
2517
2518
50.2k
    if (_exec_env->cluster_info()->backend_id != 0) {
2519
50.2k
        params.__set_backend_id(_exec_env->cluster_info()->backend_id);
2520
50.2k
    }
2521
2522
50.2k
    TReportExecStatusResult res;
2523
50.2k
    Status rpc_status;
2524
2525
50.2k
    VLOG_DEBUG << "reportExecStatus params is "
2526
12
               << apache::thrift::ThriftDebugString(params).c_str();
2527
50.2k
    if (!exec_status.ok()) {
2528
1.67k
        LOG(WARNING) << "report error status: " << exec_status.msg()
2529
1.67k
                     << " to coordinator: " << req.coord_addr
2530
1.67k
                     << ", query id: " << print_id(req.query_id);
2531
1.67k
    }
2532
50.2k
    try {
2533
50.2k
        try {
2534
50.2k
            (*coord)->reportExecStatus(res, params);
2535
50.2k
        } catch ([[maybe_unused]] apache::thrift::transport::TTransportException& e) {
2536
#ifndef ADDRESS_SANITIZER
2537
            LOG(WARNING) << "Retrying ReportExecStatus. query id: " << print_id(req.query_id)
2538
                         << ", instance id: " << print_id(req.fragment_instance_id) << " to "
2539
                         << req.coord_addr << ", err: " << e.what();
2540
#endif
2541
0
            rpc_status = coord->reopen();
2542
2543
0
            if (!rpc_status.ok()) {
2544
0
                req.cancel_fn(rpc_status);
2545
0
                return;
2546
0
            }
2547
0
            (*coord)->reportExecStatus(res, params);
2548
0
        }
2549
2550
50.2k
        rpc_status = Status::create<false>(res.status);
2551
50.2k
    } catch (apache::thrift::TException& e) {
2552
0
        rpc_status = Status::InternalError("ReportExecStatus() to {} failed: {}",
2553
0
                                           PrintThriftNetworkAddress(req.coord_addr), e.what());
2554
0
    }
2555
2556
50.2k
    if (!rpc_status.ok()) {
2557
0
        LOG_INFO("Going to cancel query {} since report exec status got rpc failed: {}",
2558
0
                 print_id(req.query_id), rpc_status.to_string());
2559
0
        req.cancel_fn(rpc_status);
2560
0
    }
2561
50.2k
}
2562
2563
451k
Status PipelineFragmentContext::send_report(bool done) {
2564
451k
    Status exec_status = _query_ctx->exec_status();
2565
    // If plan is done successfully, but _is_report_success is false,
2566
    // no need to send report.
2567
    // Load will set _is_report_success to true because load wants to know
2568
    // the process.
2569
451k
    if (!_is_report_success && done && exec_status.ok()) {
2570
401k
        return Status::OK();
2571
401k
    }
2572
2573
    // If both _is_report_success and _is_report_on_cancel are false,
2574
    // which means no matter query is success or failed, no report is needed.
2575
    // This may happen when the query limit reached and
2576
    // a internal cancellation being processed
2577
    // When limit is reached the fragment is also cancelled, but _is_report_on_cancel will
2578
    // be set to false, to avoid sending fault report to FE.
2579
50.5k
    if (!_is_report_success && !_is_report_on_cancel) {
2580
238
        if (done) {
2581
            // if done is true, which means the query is finished successfully, we can safely close the fragment instance without sending report to FE, and just return OK status here.
2582
238
            return Status::OK();
2583
238
        }
2584
0
        return Status::NeedSendAgain("");
2585
238
    }
2586
2587
50.2k
    std::vector<RuntimeState*> runtime_states;
2588
2589
117k
    for (auto& tasks : _tasks) {
2590
165k
        for (auto& task : tasks) {
2591
165k
            runtime_states.push_back(task.second.get());
2592
165k
        }
2593
117k
    }
2594
2595
50.2k
    std::string load_eror_url = _query_ctx->get_load_error_url().empty()
2596
50.2k
                                        ? get_load_error_url()
2597
50.2k
                                        : _query_ctx->get_load_error_url();
2598
50.2k
    std::string first_error_msg = _query_ctx->get_first_error_msg().empty()
2599
50.2k
                                          ? get_first_error_msg()
2600
50.2k
                                          : _query_ctx->get_first_error_msg();
2601
2602
50.2k
    ReportStatusRequest req {.status = exec_status,
2603
50.2k
                             .runtime_states = runtime_states,
2604
50.2k
                             .done = done || !exec_status.ok(),
2605
50.2k
                             .coord_addr = _query_ctx->coord_addr,
2606
50.2k
                             .query_id = _query_id,
2607
50.2k
                             .fragment_id = _fragment_id,
2608
50.2k
                             .fragment_instance_id = TUniqueId(),
2609
50.2k
                             .backend_num = -1,
2610
50.2k
                             .runtime_state = _runtime_state.get(),
2611
50.2k
                             .load_error_url = load_eror_url,
2612
50.2k
                             .first_error_msg = first_error_msg,
2613
50.2k
                             .cancel_fn = [this](const Status& reason) { cancel(reason); }};
2614
50.2k
    auto ctx = std::dynamic_pointer_cast<PipelineFragmentContext>(shared_from_this());
2615
50.2k
    return _exec_env->fragment_mgr()->get_thread_pool()->submit_func([this, req, ctx]() {
2616
50.2k
        SCOPED_ATTACH_TASK(ctx->get_query_ctx()->query_mem_tracker());
2617
50.2k
        _coordinator_callback(req);
2618
50.2k
        if (!req.done) {
2619
5.02k
            ctx->refresh_next_report_time();
2620
5.02k
        }
2621
50.2k
    });
2622
50.5k
}
2623
2624
0
size_t PipelineFragmentContext::get_revocable_size(bool* has_running_task) const {
2625
0
    size_t res = 0;
2626
    // _tasks will be cleared during ~PipelineFragmentContext, so that it's safe
2627
    // here to traverse the vector.
2628
0
    for (const auto& task_instances : _tasks) {
2629
0
        for (const auto& task : task_instances) {
2630
0
            if (task.first->is_running()) {
2631
0
                LOG_EVERY_N(INFO, 50) << "Query: " << print_id(_query_id)
2632
0
                                      << " is running, task: " << (void*)task.first.get()
2633
0
                                      << ", is_running: " << task.first->is_running();
2634
0
                *has_running_task = true;
2635
0
                return 0;
2636
0
            }
2637
2638
0
            size_t revocable_size = task.first->get_revocable_size();
2639
0
            if (revocable_size >= SpillFile::MIN_SPILL_WRITE_BATCH_MEM) {
2640
0
                res += revocable_size;
2641
0
            }
2642
0
        }
2643
0
    }
2644
0
    return res;
2645
0
}
2646
2647
0
std::vector<PipelineTask*> PipelineFragmentContext::get_revocable_tasks() const {
2648
0
    std::vector<PipelineTask*> revocable_tasks;
2649
0
    for (const auto& task_instances : _tasks) {
2650
0
        for (const auto& task : task_instances) {
2651
0
            size_t revocable_size_ = task.first->get_revocable_size();
2652
2653
0
            if (revocable_size_ >= SpillFile::MIN_SPILL_WRITE_BATCH_MEM) {
2654
0
                revocable_tasks.emplace_back(task.first.get());
2655
0
            }
2656
0
        }
2657
0
    }
2658
0
    return revocable_tasks;
2659
0
}
2660
2661
51
std::string PipelineFragmentContext::debug_string() {
2662
51
    std::lock_guard<std::mutex> l(_task_mutex);
2663
51
    fmt::memory_buffer debug_string_buffer;
2664
51
    fmt::format_to(debug_string_buffer,
2665
51
                   "PipelineFragmentContext Info: _closed_tasks={}, _total_tasks={}, "
2666
51
                   "need_notify_close={}, fragment_id={}, _rec_cte_stage={}\n",
2667
51
                   _closed_tasks, _total_tasks, _need_notify_close, _fragment_id, _rec_cte_stage);
2668
162
    for (size_t j = 0; j < _tasks.size(); j++) {
2669
111
        fmt::format_to(debug_string_buffer, "Tasks in instance {}:\n", j);
2670
259
        for (size_t i = 0; i < _tasks[j].size(); i++) {
2671
148
            fmt::format_to(debug_string_buffer, "Task {}: {}\n", i,
2672
148
                           _tasks[j][i].first->debug_string());
2673
148
        }
2674
111
    }
2675
2676
51
    return fmt::to_string(debug_string_buffer);
2677
51
}
2678
2679
std::vector<std::shared_ptr<TRuntimeProfileTree>>
2680
3.20k
PipelineFragmentContext::collect_realtime_profile() const {
2681
3.20k
    std::vector<std::shared_ptr<TRuntimeProfileTree>> res;
2682
2683
    // we do not have mutex to protect pipeline_id_to_profile
2684
    // so we need to make sure this funciton is invoked after fragment context
2685
    // has already been prepared.
2686
3.20k
    if (!_prepared) {
2687
0
        std::string msg =
2688
0
                "Query " + print_id(_query_id) + " collecting profile, but its not prepared";
2689
0
        DCHECK(false) << msg;
2690
0
        LOG_ERROR(msg);
2691
0
        return res;
2692
0
    }
2693
2694
    // Make sure first profile is fragment level profile
2695
3.20k
    auto fragment_profile = std::make_shared<TRuntimeProfileTree>();
2696
3.20k
    _fragment_level_profile->to_thrift(fragment_profile.get(), _runtime_state->profile_level());
2697
3.20k
    res.push_back(fragment_profile);
2698
2699
    // pipeline_id_to_profile is initialized in prepare stage
2700
6.11k
    for (auto pipeline_profile : _runtime_state->pipeline_id_to_profile()) {
2701
6.11k
        auto profile_ptr = std::make_shared<TRuntimeProfileTree>();
2702
6.11k
        pipeline_profile->to_thrift(profile_ptr.get(), _runtime_state->profile_level());
2703
6.11k
        res.push_back(profile_ptr);
2704
6.11k
    }
2705
2706
3.20k
    return res;
2707
3.20k
}
2708
2709
std::shared_ptr<TRuntimeProfileTree>
2710
3.20k
PipelineFragmentContext::collect_realtime_load_channel_profile() const {
2711
    // we do not have mutex to protect pipeline_id_to_profile
2712
    // so we need to make sure this funciton is invoked after fragment context
2713
    // has already been prepared.
2714
3.20k
    if (!_prepared) {
2715
0
        std::string msg =
2716
0
                "Query " + print_id(_query_id) + " collecting profile, but its not prepared";
2717
0
        DCHECK(false) << msg;
2718
0
        LOG_ERROR(msg);
2719
0
        return nullptr;
2720
0
    }
2721
2722
12.7k
    for (const auto& tasks : _tasks) {
2723
26.1k
        for (const auto& task : tasks) {
2724
26.1k
            if (task.second->load_channel_profile() == nullptr) {
2725
0
                continue;
2726
0
            }
2727
2728
26.1k
            auto tmp_load_channel_profile = std::make_shared<TRuntimeProfileTree>();
2729
2730
26.1k
            task.second->load_channel_profile()->to_thrift(tmp_load_channel_profile.get(),
2731
26.1k
                                                           _runtime_state->profile_level());
2732
26.1k
            _runtime_state->load_channel_profile()->update(*tmp_load_channel_profile);
2733
26.1k
        }
2734
12.7k
    }
2735
2736
3.20k
    auto load_channel_profile = std::make_shared<TRuntimeProfileTree>();
2737
3.20k
    _runtime_state->load_channel_profile()->to_thrift(load_channel_profile.get(),
2738
3.20k
                                                      _runtime_state->profile_level());
2739
3.20k
    return load_channel_profile;
2740
3.20k
}
2741
2742
// Collect runtime filter IDs registered by all tasks in this PFC.
2743
// Used during recursive CTE stage transitions to know which filters to deregister
2744
// before creating the new PFC for the next recursion round.
2745
// Called from rerun_fragment(wait_for_destroy) while tasks are still closing.
2746
// Thread safety: safe because _tasks is structurally immutable after prepare() —
2747
// the vector sizes do not change, and individual RuntimeState filter sets are
2748
// written only during open() which has completed by the time we reach rerun.
2749
3.30k
std::set<int> PipelineFragmentContext::get_deregister_runtime_filter() const {
2750
3.30k
    std::set<int> result;
2751
7.37k
    for (const auto& _task : _tasks) {
2752
13.1k
        for (const auto& task : _task) {
2753
13.1k
            auto set = task.first->runtime_state()->get_deregister_runtime_filter();
2754
13.1k
            result.merge(set);
2755
13.1k
        }
2756
7.37k
    }
2757
3.30k
    if (_runtime_state) {
2758
3.30k
        auto set = _runtime_state->get_deregister_runtime_filter();
2759
3.30k
        result.merge(set);
2760
3.30k
    }
2761
3.30k
    return result;
2762
3.30k
}
2763
2764
451k
void PipelineFragmentContext::_release_resource() {
2765
451k
    std::lock_guard<std::mutex> l(_task_mutex);
2766
    // The memory released by the query end is recorded in the query mem tracker.
2767
451k
    SCOPED_SWITCH_THREAD_MEM_TRACKER_LIMITER(_query_ctx->query_mem_tracker());
2768
451k
    auto st = _query_ctx->exec_status();
2769
1.18M
    for (auto& _task : _tasks) {
2770
1.18M
        if (!_task.empty()) {
2771
1.18M
            _call_back(_task.front().first->runtime_state(), &st);
2772
1.18M
        }
2773
1.18M
    }
2774
451k
    _tasks.clear();
2775
451k
    _dag.clear();
2776
451k
    _pip_id_to_pipeline.clear();
2777
451k
    _pipelines.clear();
2778
451k
    _sink.reset();
2779
451k
    _root_op.reset();
2780
451k
    _runtime_filter_mgr_map.clear();
2781
451k
    _op_id_to_shared_state.clear();
2782
451k
}
2783
2784
} // namespace doris