model_base.py 13.1 KB
Newer Older
1
2
3
4
5
# Copyright (c) Microsoft Corporation.
# Licensed under the MIT license.

"""Module of the model-benchmark base class."""

6
import math
7
import time
8
import statistics
9
10
11
from abc import abstractmethod

from superbench.common.utils import logger
12
from superbench.benchmarks import Precision, ModelAction, DistributedImpl, DistributedBackend, BenchmarkType, ReturnCode
13
14
from superbench.benchmarks.base import Benchmark
from superbench.benchmarks.context import Enum
15
from superbench.benchmarks.reducer import ReduceType
16
17


18
19
20
21
22
23
24
class Optimizer(Enum):
    """The Enum class representing different optimizers."""
    SGD = 'sgd'
    ADAM = 'adam'
    ADAMW = 'adamw'


25
26
27
28
29
30
31
32
33
34
35
36
class ModelBenchmark(Benchmark):
    """The base class of E2E model benchmarks."""
    def __init__(self, name, parameters=''):
        """Constructor.

        Args:
            name (str): benchmark name.
            parameters (str): benchmark parameters.
        """
        super().__init__(name, parameters)

        self._benchmark_type = BenchmarkType.MODEL
37
38
        self._world_size = 1
        self._local_rank = None
39
40
41
        self._dataset = None
        self._dataloader = None
        self._model = None
42
        self._optimizer_type = None
43
44
45
46
        self._optimizer = None
        self._loss_fn = None
        self._target = None
        self._supported_precision = []
47
        self._gpu_available = None
48
49
50
51
52
53
54
55
56
57

    def add_parser_arguments(self):
        """Add the specified arguments."""
        super().add_parser_arguments()

        self._parser.add_argument(
            '--num_warmup',
            type=int,
            default=64,
            required=False,
58
            help='The number of warmup step.',
59
60
61
62
63
64
        )
        self._parser.add_argument(
            '--num_steps',
            type=int,
            default=2048,
            required=False,
65
            help='The number of test step.',
66
        )
67
68
69
        self._parser.add_argument(
            '--sample_count',
            type=int,
70
            default=1024,
71
72
73
            required=False,
            help='The number of data samples in dataset.',
        )
74
75
76
77
78
        self._parser.add_argument(
            '--batch_size',
            type=int,
            default=32,
            required=False,
79
            help='The number of batch size.',
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
        )
        self._parser.add_argument(
            '--precision',
            type=Precision,
            default=[Precision.FLOAT32, Precision.FLOAT16],
            nargs='+',
            required=False,
            help='Model precision. E.g. {}.'.format(' '.join(Precision.get_values())),
        )
        self._parser.add_argument(
            '--model_action',
            type=ModelAction,
            default=[ModelAction.TRAIN],
            nargs='+',
            required=False,
            help='Benchmark model process. E.g. {}.'.format(' '.join(ModelAction.get_values())),
        )
        self._parser.add_argument(
            '--distributed_impl',
            type=DistributedImpl,
            default=None,
            required=False,
102
            help='Distributed implementations. E.g. {}.'.format(' '.join(DistributedImpl.get_values())),
103
104
105
106
107
108
109
        )

        self._parser.add_argument(
            '--distributed_backend',
            type=DistributedBackend,
            default=None,
            required=False,
110
111
112
113
114
115
116
117
            help='Distributed backends. E.g. {}.'.format(' '.join(DistributedBackend.get_values())),
        )

        self._parser.add_argument(
            '--no_gpu',
            action='store_true',
            default=False,
            help='Disable GPU training.',
118
119
        )

120
121
122
123
124
125
126
        self._parser.add_argument(
            '--pin_memory',
            action='store_true',
            default=False,
            help='Enable option to pin memory in data loader.',
        )

127
128
129
130
131
132
133
        self._parser.add_argument(
            '--force_fp32',
            action='store_true',
            default=False,
            help='Enable option to use full float32 precision.',
        )

134
135
136
137
138
    @abstractmethod
    def _judge_gpu_availability(self):
        """Judge GPUs' availability according to arguments and running environment."""
        pass

139
140
141
142
143
144
145
146
147
    @abstractmethod
    def _set_force_fp32(self):
        """Set the config that controls whether full float32 precision will be used.

        On Ampere or newer GPUs, pytorch and tensorflow will use TF32 instead of FP32 by default.
        We can disable TF32 execution by setting force_fp32 as True.
        """
        pass

148
149
    @abstractmethod
    def _init_distributed_setting(self):
150
151
152
153
154
        """Initialize the distributed library and bind the worker to GPU.

        Return:
            True if distributed library is initialized successfully.
        """
155
156
157
158
        pass

    @abstractmethod
    def _generate_dataset(self):
159
160
161
162
163
        """Generate dataset for benchmarking according to shape info.

        Return:
            True if dataset is created successfully.
        """
164
165
166
167
        pass

    @abstractmethod
    def _init_dataloader(self):
168
169
170
171
172
        """Initialize the dataloader.

        Return:
            True if dataloader is created successfully.
        """
173
174
175
176
177
178
179
180
        pass

    def _preprocess(self):
        """Preprocess/preparation operations before the benchmarking.

        Return:
            True if _preprocess() succeed.
        """
181
182
183
        if not super()._preprocess():
            return False

184
        self._judge_gpu_availability()
185
        self._set_force_fp32()
186
        logger.info(
187
188
            'Model placement - model: {}, GPU availablility: {}, pin memory: {}, force fp32: {}.'.format(
                self._name, self._gpu_available, self._args.pin_memory, self._args.force_fp32
189
190
            )
        )
191

192
193
194
195
        if not self._init_distributed_setting():
            self._result.set_return_code(ReturnCode.DISTRIBUTED_SETTING_INIT_FAILURE)
            return False

196
197
198
        # Set sample_count aligned with batch_size.
        self._args.sample_count = math.ceil(self._args.sample_count / self._args.batch_size) * self._args.batch_size

199
200
201
202
203
204
        if not self._generate_dataset():
            self._result.set_return_code(ReturnCode.DATASET_GENERATION_FAILURE)
            return False

        if not self._init_dataloader():
            self._result.set_return_code(ReturnCode.DATALOADER_INIT_FAILURE)
205
206
207
208
209
210
            return False

        return True

    @abstractmethod
    def _create_optimizer(self):
211
212
213
214
215
        """Create the optimzier instance used for training and wrap with distributed library if need.

        Return:
            True if optimizer instance is created successfully.
        """
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
        pass

    @abstractmethod
    def _create_model(self, precision):
        """Construct the model for benchmarking.

        Args:
            precision (Precision): precision of model and input data, such as float32, float16.
        """
        pass

    def __train(self, precision):
        """Launch the training benchmark.

        Args:
            precision (Precision): precision of model and input data, such as float32, float16.

        Return:
            True if step_times list is not empty.
        """
236
237
238
239
240
241
242
243
        if not self._create_model(precision):
            self._result.set_return_code(ReturnCode.MODEL_CREATION_FAILURE)
            return False

        if not self._create_optimizer():
            self._result.set_return_code(ReturnCode.OPTIMIZER_CREATION_FAILURE)
            return False

244
245
        # The unit of step time should be millisecond.
        step_times = self._train_step(precision)
246
        if not self.__process_model_result(ModelAction.TRAIN, precision, step_times):
247
            self._result.set_return_code(ReturnCode.INVALID_BENCHMARK_RESULT)
248
249
250
251
            return False

        logger.info(
            'Average train time - round: {}, model: {}, precision: {}, step time: {:.6f} ms.'.format(
252
                self._curr_run_index, self._name, precision, statistics.mean(step_times)
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
            )
        )

        return True

    def __inference(self, precision):
        """Launch the inference benchmark.

        Args:
            precision (Precision): precision of model and input data, such as float32, float16.

        Return:
            True if step_times list is not empty.
        """
        self._create_model(precision)
        # The unit of step time should be millisecond.
        step_times = self._inference_step(precision)
270
        if not self.__process_model_result(ModelAction.INFERENCE, precision, step_times):
271
            self._result.set_return_code(ReturnCode.INVALID_BENCHMARK_RESULT)
272
273
274
275
            return False

        logger.info(
            'Average inference time - round: {}, model: {}, precision: {}, step time: {:.6f} ms.'.format(
276
                self._curr_run_index, self._name, precision, statistics.mean(step_times)
277
278
279
280
281
282
283
284
285
286
287
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
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
            )
        )

        return True

    @abstractmethod
    def _train_step(self, precision):
        """Define the training process.

        Args:
            precision (Precision): precision of model and input data, such as float32, float16.

        Return:
            The step-time list of every training step.
        """
        pass

    @abstractmethod
    def _inference_step(self, precision):
        """Define the inference process.

        Args:
            precision (Precision): precision of model and input data,
              such as float32, float16.

        Return:
            The latency list of every inference operation.
        """
        pass

    def _benchmark(self):
        """Implementation for benchmarking.

        Return:
            True if run benchmark successfully.
        """
        precision_need_to_run = list()
        for precision in self._args.precision:
            # Check if the precision is supported or not.
            if precision not in self._supported_precision:
                logger.warning(
                    'Can not run with specified precision - model: {}, supprted precision: {}, specified precision: {}'.
                    format(self._name, ' '.join([p.value for p in self._supported_precision]), precision)
                )
            else:
                precision_need_to_run.append(precision)

        if len(precision_need_to_run) == 0:
            self._result.set_return_code(ReturnCode.NO_SUPPORTED_PRECISION)
            return False

        for precision in precision_need_to_run:
            for model_action in self._args.model_action:
330
                self._sub_benchmark_start_time = time.time()
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
                if model_action == ModelAction.TRAIN:
                    if not self.__train(precision):
                        return False
                elif model_action == ModelAction.INFERENCE:
                    if not self.__inference(precision):
                        return False
                else:
                    logger.warning(
                        'Model action has no implementation yet - model: {}, model_action: {}'.format(
                            self._name, model_action
                        )
                    )

        return True

346
347
348
349
350
351
352
353
354
355
356
    def _is_finished(self, curr_step, curr_time):
        total_steps = self._args.num_warmup + self._args.num_steps

        if (
            (self._args.duration > 0 and (curr_time - self._sub_benchmark_start_time) >= self._args.duration)
            or (total_steps > 0 and curr_step >= total_steps)
        ):
            return True

        return False

357
358
359
360
361
362
363
    def __process_model_result(self, model_action, precision, step_times):
        """Function to process raw results and save the summarized results.

        Args:
            model_action (ModelAction): train or inference.
            precision (Precision): precision of model and input data, such as float32, float16.
            step_times (list): The step time list of every training/inference step, unit is millisecond.
364
365
366

        Return:
            True if step_times list is not empty.
367
        """
368
369
370
371
372
373
374
375
376
        if len(step_times) == 0:
            logger.error(
                'Step time list is empty - round: {}, model: {}, model_action: {}, precision: {}.'.format(
                    self._curr_run_index, self._name, model_action, precision
                )
            )
            return False

        metric = 'steptime_{}_{}'.format(model_action, precision)
377
        self._result.add_raw_data(metric, step_times)
378
        avg = statistics.mean(step_times)
379
        self._result.add_result(metric, avg, reduce_type=ReduceType.MAX if model_action is ModelAction.TRAIN else None)
380
381
382
383

        # The unit of step time is millisecond, use it to calculate the throughput with the unit samples/sec.
        millisecond_per_second = 1000
        throughput = [millisecond_per_second / step_time * self._args.batch_size for step_time in step_times]
384
        metric = 'throughput_{}_{}'.format(model_action, precision)
385
        self._result.add_raw_data(metric, throughput)
386
        avg = statistics.mean(throughput)
387
        self._result.add_result(metric, avg, reduce_type=ReduceType.MIN if model_action is ModelAction.TRAIN else None)
388

389
390
        return True

391
    @abstractmethod
392
    def _cal_params_count(self):
393
394
395
396
397
398
399
400
401
402
403
        """Calculate the parameters scale of the model.

        Return:
            The count of trainable parameters.
        """
        pass

    def print_env_info(self):
        """Print environments or dependencies information."""
        # TODO: will implement it when add real benchmarks in the future.
        pass