runner.py 20.6 KB
Newer Older
1
2
3
4
5
# Copyright (c) Microsoft Corporation.
# Licensed under the MIT License.

"""SuperBench Runner."""

6
import json
7
import random
8
from pathlib import Path
9
from pprint import pformat
10
from collections import defaultdict
11

12
import jsonlines
13
from natsort import natsorted
14
from joblib import Parallel, delayed
15
16
from omegaconf import ListConfig, OmegaConf

17
from superbench.common.utils import SuperBenchLogger, logger, gen_tarffic_pattern_host_group
18
from superbench.runner.ansible import AnsibleClient
19
from superbench.benchmarks import ReduceType, Reducer
20
from superbench.monitor import MonitorRecord
21
22
23
24


class SuperBenchRunner():
    """SuperBench runner class."""
25
    def __init__(self, sb_config, docker_config, ansible_config, sb_output_dir):
26
27
28
29
30
31
        """Initilize.

        Args:
            sb_config (DictConfig): SuperBench config object.
            docker_config (DictConfig): Docker config object.
            ansible_config (DictConfig): Ansible config object.
32
            sb_output_dir (str): SuperBench output directory.
33
34
35
36
        """
        self._sb_config = sb_config
        self._docker_config = docker_config
        self._ansible_config = ansible_config
37
38
        self._sb_output_dir = sb_output_dir
        self._output_path = Path(sb_output_dir).expanduser().resolve()
39
        self._ansible_client = AnsibleClient(ansible_config)
40
41

        self.__set_logger('sb-run.log')
42
        logger.info('Runner uses config: %s.', pformat(OmegaConf.to_container(self._sb_config, resolve=True)))
43
        logger.info('Runner writes to: %s.', str(self._output_path))
44

45
        self._sb_benchmarks = self._sb_config.superbench.benchmarks
46
        self.__validate_sb_config()
47
48
49
        self._sb_enabled_benchmarks = self.__get_enabled_benchmarks()
        logger.info('Runner will run: %s', self._sb_enabled_benchmarks)

50
51
52
53
54
55
    def __set_logger(self, filename):
        """Set logger and add file handler.

        Args:
            filename (str): Log file name.
        """
56
        SuperBenchLogger.add_handler(logger.logger, filename=str(self._output_path / filename))
57

Yifan Xiong's avatar
Yifan Xiong committed
58
    def __validate_sb_config(self):    # noqa: C901
59
60
61
62
63
64
        """Validate SuperBench config object.

        Raise:
            InvalidConfigError: If input config is invalid.
        """
        # TODO: add validation and defaulting
65
66
        if not self._sb_config.superbench.env:
            self._sb_config.superbench.env = {}
67
68
69
70
        for name in self._sb_benchmarks:
            if not self._sb_benchmarks[name].modes:
                self._sb_benchmarks[name].modes = []
            for idx, mode in enumerate(self._sb_benchmarks[name].modes):
71
72
                if not mode.env:
                    self._sb_benchmarks[name].modes[idx].env = {}
73
74
75
76
77
78
79
80
                if mode.name == 'local':
                    if not mode.proc_num:
                        self._sb_benchmarks[name].modes[idx].proc_num = 1
                    if not mode.prefix:
                        self._sb_benchmarks[name].modes[idx].prefix = ''
                elif mode.name == 'torch.distributed':
                    if not mode.proc_num:
                        self._sb_benchmarks[name].modes[idx].proc_num = 8
Yifan Xiong's avatar
Yifan Xiong committed
81
82
83
84
85
86
87
88
                elif mode.name == 'mpi':
                    if not mode.mca:
                        self._sb_benchmarks[name].modes[idx].mca = {
                            'pml': 'ob1',
                            'btl': '^openib',
                            'btl_tcp_if_exclude': 'lo,docker0',
                            'coll_hcoll_enable': 0,
                        }
89
                    for key in ['PATH', 'LD_LIBRARY_PATH', 'SB_MICRO_PATH', 'SB_WORKSPACE']:
Yifan Xiong's avatar
Yifan Xiong committed
90
                        self._sb_benchmarks[name].modes[idx].env.setdefault(key, None)
91

92
93
94
95
96
97
98
99
100
101
102
103
104
    def __get_enabled_benchmarks(self):
        """Get enabled benchmarks list.

        Return:
            list: List of benchmarks which will be executed.
        """
        if self._sb_config.superbench.enable:
            if isinstance(self._sb_config.superbench.enable, str):
                return [self._sb_config.superbench.enable]
            elif isinstance(self._sb_config.superbench.enable, (list, ListConfig)):
                return list(self._sb_config.superbench.enable)
        return [k for k, v in self._sb_benchmarks.items() if v.enable]

105
    def __get_mode_command(self, benchmark_name, mode, timeout=None):
106
107
108
        """Get runner command for given mode.

        Args:
109
            benchmark_name (str): Benchmark name.
110
            mode (DictConfig): Runner mode.
111
            timeout (int): The timeout value in seconds.
112
            host_list (list): The specified Host node list.
113
114
115
116

        Return:
            str: Runner command.
        """
117
118
119
120
        exec_command = ('sb exec --output-dir {output_dir} -c sb.config.yaml -C superbench.enable={name}').format(
            name=benchmark_name,
            output_dir=self._sb_output_dir,
        )
121
122
123
        if timeout is not None:
            exec_command = 'timeout {timeout} {command}'.format(timeout=timeout, command=exec_command)

124
125
126
127
128
129
        mode_command = exec_command
        if mode.name == 'local':
            mode_command = '{prefix} {command}'.format(
                prefix=mode.prefix.format(proc_rank=mode.proc_rank, proc_num=mode.proc_num),
                command=exec_command,
            )
130
            mode_command = f'PROC_RANK={mode.proc_rank} {mode_command.strip()}'
131
        elif mode.name == 'torch.distributed':
132
133
            # TODO: replace with torch.distributed.run in v1.9
            # TODO: only supports node_num=1 and node_num=all currently
134
135
            torch_dist_params = '' if mode.node_num == 1 else \
                '--nnodes=$NNODES --node_rank=$NODE_RANK --master_addr=$MASTER_ADDR --master_port=$MASTER_PORT '
136
            mode_command = (
137
138
139
140
                f'python3 -m torch.distributed.launch'
                f' --use_env --no_python --nproc_per_node={mode.proc_num} {torch_dist_params}{exec_command}'
                f' superbench.benchmarks.{benchmark_name}.parameters.distributed_impl=ddp'
                f' superbench.benchmarks.{benchmark_name}.parameters.distributed_backend=nccl'
141
            )
Yifan Xiong's avatar
Yifan Xiong committed
142
143
144
145
146
        elif mode.name == 'mpi':
            mode_command = (
                'mpirun '    # use default OpenMPI in image
                '-tag-output '    # tag mpi output with [jobid,rank]<stdout/stderr> prefix
                '-allow-run-as-root '    # allow mpirun to run when executed by root user
147
                '{host_list} '    # use prepared hostfile or specify nodes and launch {proc_num} processes on each node
Yifan Xiong's avatar
Yifan Xiong committed
148
149
150
                '-bind-to numa '    # bind processes to numa
                '{mca_list} {env_list} {command}'
            ).format(
151
152
153
                host_list=f'-host localhost:{mode.proc_num}' if mode.node_num == 1 else
                f'-hostfile hostfile -map-by ppr:{mode.proc_num}:node' if mode.host_list is None else '-host ' +
                ','.join(f'{host}:{mode.proc_num}' for host in mode.host_list),
Yifan Xiong's avatar
Yifan Xiong committed
154
                mca_list=' '.join(f'-mca {k} {v}' for k, v in mode.mca.items()),
155
156
157
158
                env_list=' '.join(
                    f'-x {k}={str(v).format(proc_rank=mode.proc_rank, proc_num=mode.proc_num)}'
                    if isinstance(v, str) else f'-x {k}' for k, v in mode.env.items()
                ),
Yifan Xiong's avatar
Yifan Xiong committed
159
160
161
162
                command=exec_command,
            )
        else:
            logger.warning('Unknown mode %s.', mode.name)
163
        return mode_command.strip()
164

165
166
167
168
169
170
171
172
    def get_failure_count(self):
        """Get failure count during Ansible run.

        Return:
            int: Failure count.
        """
        return self._ansible_client.failure_count

173
174
175
176
177
    def deploy(self):    # pragma: no cover
        """Deploy SuperBench environment."""
        logger.info('Preparing SuperBench environment.')
        extravars = {
            'ssh_port': random.randint(1 << 14, (1 << 15) - 1),
178
            'output_dir': str(self._output_path),
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
            'docker_image': self._docker_config.image,
        }
        if bool(self._docker_config.username) and bool(self._docker_config.password):
            extravars.update(
                {
                    'docker_registry': self._docker_config.registry,
                    'docker_username': self._docker_config.username,
                    'docker_password': self._docker_config.password,
                }
            )
        self._ansible_client.run(self._ansible_client.get_playbook_config('deploy.yaml', extravars=extravars))

    def check_env(self):    # pragma: no cover
        """Check SuperBench environment."""
        logger.info('Checking SuperBench environment.')
194
        OmegaConf.save(config=self._sb_config, f=str(self._output_path / 'sb.config.yaml'))
195
        self._ansible_client.run(
196
197
198
            self._ansible_client.get_playbook_config(
                'check_env.yaml',
                extravars={
199
                    'no_docker': bool(self._docker_config.skip),
200
                    'output_dir': str(self._output_path),
201
202
203
                    'env': '\n'.join(f'{k}={v}' for k, v in self._sb_config.superbench.env.items()),
                }
            )
204
205
        )

206
207
208
209
    def cleanup(self):    # pragma: no cover
        """Cleanup remaining processes on all nodes."""
        self._ansible_client.run(self._ansible_client.get_playbook_config('cleanup.yaml'))

210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
    def fetch_results(self):    # pragma: no cover
        """Fetch benchmark results on all nodes."""
        try:
            (self._output_path / 'nodes').mkdir(mode=0o755, parents=True, exist_ok=True)
        except Exception:
            logger.exception('Failed to create directory %s.', str(self._output_path / 'nodes'))
            raise
        self._ansible_client.run(
            self._ansible_client.get_playbook_config(
                'fetch_results.yaml',
                extravars={
                    'sb_output_dir': self._sb_output_dir,
                    'absolute_output_dir': str(self._output_path),
                }
            )
        )

227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
    def __create_results_summary(self):    # pragma: no cover
        """Create the result summary file of all nodes."""
        all_results = list()
        for node_path in (self._output_path / 'nodes').glob('*'):
            if not node_path.is_dir():
                continue
            results_summary = self.__create_single_node_summary(node_path)
            results_summary['node'] = node_path.name
            all_results.append(results_summary)

        with (self._output_path / 'results-summary.jsonl').open(mode='w') as f:
            for result in all_results:
                json.dump(result, f)
                f.write('\n')

242
    def __create_single_node_summary(self, node_path):    # pragma: no cover # noqa: C901
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
        """Create the result summary file of single node.

        Args:
            node_path (Path): The Path instance of node directory.

        Returns:
            dict: Result summary of single node.
        """
        results_summary = dict()
        reduce_ops = dict()
        file_list = [Path(f) for f in natsorted([str(f) for f in node_path.glob('**/results.json')])]
        for results_file in file_list:
            with results_file.open() as f:
                try:
                    results = json.load(f)
                except ValueError:
                    logger.error('Invalid JSON file: {}'.format(results_file))
                    continue

                for result in results:
263
264
265
266
267
                    try:
                        benchmark_name = result['name']
                    except Exception:
                        logger.error('Invalid content in JSON file: {}'.format(results_file))
                        continue
268
269
270
271
272
273
274
275
276
277
278
279
                    if benchmark_name not in results_summary:
                        results_summary[benchmark_name] = defaultdict(list)
                    for metric in result['result']:
                        metric_name = '{}/{}'.format(benchmark_name, metric)
                        if metric_name not in reduce_ops:
                            reduce_ops[metric_name] = result['reduce_op'][metric]
                        elif reduce_ops[metric_name] != result['reduce_op'][metric]:
                            logger.error('Inconsistent reduce type for metric: {}'.format(metric_name))
                            continue

                        results_summary[benchmark_name][metric].append(result['result'][metric])

280
281
282
        results_summary = self.__merge_benchmark_metrics(results_summary, reduce_ops)
        monitor_summary = self.__merge_monitor_metrics(node_path)
        results_summary = {**results_summary, **monitor_summary}
283
284
285
286
287
        with (node_path / 'results-summary.json').open(mode='w') as f:
            json.dump(results_summary, f, indent=2)

        return results_summary

288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
    def __generate_metric_name(self, benchmark_name, metric, rank_count, run_count, curr_rank, curr_run):
        """Generate the summarized metrics name.

        The format of metric name is:
               {benchmark_name}/[{run_count}/]{metric_name}[:rank]
        [run_count] and [rank] parts are optional.

        Args:
            benchmark_name (str): The benchmark name.
            metric (str): The metric name.
            rank_count (int): The total count of rank.
            run_count (int): The total count of benchmarking.
            curr_rank (int): The current rank index.
            curr_run (int): The current run index.

        Returns:
            dict: Flattened result with metric as key.
        """
        metric_name = benchmark_name
        if run_count > 1:
            metric_name = '{}/{}'.format(metric_name, curr_run)
        metric_name = '{}/{}'.format(metric_name, metric)
        if rank_count > 1:
            metric_name = '{}:{}'.format(metric_name, curr_rank)

        return metric_name

315
    def __merge_benchmark_metrics(self, results_summary, reduce_ops):
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
        """Merge metrics of all benchmarks in one node.

        Args:
            results_summary (dict): Summarized result of one node.
            reduce_ops (dict): The reduce type of each metric.

        Returns:
            dict: Flattened result with metric as key.
        """
        metrics_summary = dict()
        for benchmark_name in results_summary:
            for metric in results_summary[benchmark_name]:
                metric_name = '{}/{}'.format(benchmark_name, metric)
                if metric_name not in reduce_ops or (
                    reduce_ops[metric_name] is not None and reduce_ops[metric_name] not in ReduceType.get_values()
                ):
                    logger.error('Unknown reduce type for metric: {}'.format(metric_name))
                    continue

                if reduce_ops[metric_name] is not None:
                    reduce_func = Reducer.get_reduce_func(ReduceType(reduce_ops[metric_name]))
                    values = [reduce_func(list(result)) for result in zip(*results_summary[benchmark_name][metric])]
338
339
340
                    for run in range(len(values)):
                        metric_name = self.__generate_metric_name(benchmark_name, metric, 1, len(values), 0, run)
                        metrics_summary[metric_name] = values[run]
341
                else:
342
343
344
345
346
347
348
349
                    rank_count = len(results_summary[benchmark_name][metric])
                    for rank, rank_value in enumerate(results_summary[benchmark_name][metric]):
                        run_count = len(rank_value)
                        for run, run_value in enumerate(rank_value):
                            metric_name = self.__generate_metric_name(
                                benchmark_name, metric, rank_count, run_count, rank, run
                            )
                            metrics_summary[metric_name] = run_value
350
351
352

        return metrics_summary

353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
    def __merge_monitor_metrics(self, node_path):
        """Merge and summarize monitor metrics of one node.

        Args:
            node_path (Path): The Path instance of node directory.

        Returns:
            dict: Flattened result with metric as key.
        """
        metrics_summary = dict()
        all_samples = list()
        file_list = list(node_path.glob('**/monitor.jsonl'))
        for results_file in file_list:
            try:
                with jsonlines.open(results_file) as reader:
                    all_samples = list(reader)
            except BaseException as e:
                logger.error('Invalid Jsonline file: {}, error message: {}'.format(results_file, str(e)))
                continue
        all_samples = sorted(all_samples, key=lambda k: k.get('time', '0'))
        metrics_dict = dict()
        for sample in all_samples:
            for metric, value in sample.items():
                if metric not in metrics_dict:
                    metrics_dict[metric] = list()
                metrics_dict[metric].append(value)

        for metric, values in metrics_dict.items():
            for pattern, reduce_type in MonitorRecord.reduce_ops.items():
                if pattern in metric:
                    reduce_func = Reducer.get_reduce_func(reduce_type)
384
385
                    metric_name = 'monitor/{}'.format(metric)
                    metrics_summary[metric_name] = reduce_func(values)
386
387
388
389
                    continue

        return metrics_summary

390
391
392
393
394
395
396
397
398
399
400
401
402
    def _run_proc(self, benchmark_name, mode, vars):
        """Run the process.

        Args:
            benchmark_name (str): Benchmark name.
            mode (DictConfig): Runner mode.
            vars (dict): Process variables.

        Returns:
            int: Process return code.
        """
        mode.update(vars)
        logger.info('Runner is going to run %s in %s mode, proc rank %d.', benchmark_name, mode.name, mode.proc_rank)
403
404

        timeout = self._sb_benchmarks[benchmark_name].timeout
405
        if isinstance(timeout, int):
406
            timeout = max(timeout, 60)
407

408
        env_list = '--env-file /tmp/sb.env'
409
410
        if self._docker_config.skip:
            env_list = 'set -o allexport && source /tmp/sb.env && set +o allexport'
411
412
        for k, v in mode.env.items():
            if isinstance(v, str):
413
414
415
416
417
                envvar = f'{k}={str(v).format(proc_rank=mode.proc_rank, proc_num=mode.proc_num)}'
                env_list += f' -e {envvar}' if not self._docker_config.skip else f' && export {envvar}'

        fcmd = "docker exec {env_list} sb-workspace bash -c '{command}'"
        if self._docker_config.skip:
418
            fcmd = "bash -c '{env_list} && cd $SB_WORKSPACE && {command}'"
Yifan Xiong's avatar
Yifan Xiong committed
419
        ansible_runner_config = self._ansible_client.get_shell_config(
420
            fcmd.format(env_list=env_list, command=self.__get_mode_command(benchmark_name, mode, timeout))
421
        )
422
        if mode.name == 'mpi' and mode.node_num != 1:
Yifan Xiong's avatar
Yifan Xiong committed
423
            ansible_runner_config = self._ansible_client.update_mpi_config(ansible_runner_config)
424

425
426
        if isinstance(timeout, int):
            # we do not expect timeout in ansible unless subprocess hangs
427
            ansible_runner_config['timeout'] = timeout + 60
428

429
        rc = self._ansible_client.run(ansible_runner_config, sudo=(not self._docker_config.skip))
430
431
        return rc

432
    def run(self):
433
434
435
436
437
438
        """Run the SuperBench benchmarks distributedly."""
        self.check_env()
        for benchmark_name in self._sb_benchmarks:
            if benchmark_name not in self._sb_enabled_benchmarks:
                continue
            benchmark_config = self._sb_benchmarks[benchmark_name]
439
            for mode in benchmark_config.modes:
440
                ansible_rc = 0
441
                if mode.name == 'local':
442
                    rc_list = Parallel(n_jobs=mode.proc_num if mode.parallel else 1)(
443
444
445
                        delayed(self._run_proc)(benchmark_name, mode, {
                            'proc_rank': proc_rank
                        }) for proc_rank in range(mode.proc_num)
446
                    )
447
                    ansible_rc = sum(rc_list)
Yifan Xiong's avatar
Yifan Xiong committed
448
                elif mode.name == 'torch.distributed' or mode.name == 'mpi':
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
                    if not mode.pattern:
                        ansible_rc = self._run_proc(benchmark_name, mode, {'proc_rank': 0})
                    else:
                        with open(self._output_path / 'hostfile', 'r') as f:
                            host_list = f.read().splitlines()
                        pattern_hostx = gen_tarffic_pattern_host_group(host_list, mode.pattern)
                        for host_groups in pattern_hostx:
                            para_rc_list = Parallel(n_jobs=len(host_groups))(
                                delayed(self._run_proc)
                                (benchmark_name, mode, vars={
                                    'proc_rank': 0,
                                    'host_list': host_group,
                                }) for host_group in host_groups
                            )
                            ansible_rc = ansible_rc + sum(para_rc_list)
Yifan Xiong's avatar
Yifan Xiong committed
464
465
                else:
                    logger.warning('Unknown mode %s.', mode.name)
466
467
                if ansible_rc != 0:
                    self.cleanup()
468
            self.fetch_results()
469
470

        self.__create_results_summary()