test_binaries.py 18.8 KB
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# Copyright (c) 2017-present, Facebook, Inc.
# All rights reserved.
#
# This source code is licensed under the license found in the LICENSE file in
# the root directory of this source tree. An additional grant of patent rights
# can be found in the PATENTS file in the same directory.

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import contextlib
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from io import StringIO
import os
import random
import sys
import tempfile
import unittest

import torch

from fairseq import options

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import preprocess
import train
import generate
import interactive
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import eval_lm


class TestTranslation(unittest.TestCase):

    def test_fconv(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_fconv') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'fconv_iwslt_de_en')
                generate_main(data_dir)

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    def test_raw(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_fconv_raw') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir, ['--output-format', 'raw'])
                train_translation_model(data_dir, 'fconv_iwslt_de_en', ['--raw-text'])
                generate_main(data_dir, ['--raw-text'])

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    def test_fp16(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_fp16') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'fconv_iwslt_de_en', ['--fp16'])
                generate_main(data_dir)

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    def test_memory_efficient_fp16(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_memory_efficient_fp16') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'fconv_iwslt_de_en', ['--memory-efficient-fp16'])
                generate_main(data_dir)

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    def test_update_freq(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_update_freq') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'fconv_iwslt_de_en', ['--update-freq', '3'])
                generate_main(data_dir)

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    def test_max_positions(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_max_positions') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                with self.assertRaises(Exception) as context:
                    train_translation_model(
                        data_dir, 'fconv_iwslt_de_en', ['--max-target-positions', '5'],
                    )
                self.assertTrue(
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                    'skip this example with --skip-invalid-size-inputs-valid-test' in str(context.exception)
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                )
                train_translation_model(
                    data_dir, 'fconv_iwslt_de_en',
                    ['--max-target-positions', '5', '--skip-invalid-size-inputs-valid-test'],
                )
                with self.assertRaises(Exception) as context:
                    generate_main(data_dir)
                generate_main(data_dir, ['--skip-invalid-size-inputs-valid-test'])

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    def test_generation(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_sampling') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'fconv_iwslt_de_en')
                generate_main(data_dir, [
                    '--sampling',
                    '--sampling-temperature', '2',
                    '--beam', '2',
                    '--nbest', '2',
                ])
                generate_main(data_dir, [
                    '--sampling',
                    '--sampling-topk', '3',
                    '--beam', '2',
                    '--nbest', '2',
                ])
                generate_main(data_dir, ['--prefix-size', '2'])

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    def test_lstm(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_lstm') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
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                train_translation_model(data_dir, 'lstm_wiseman_iwslt_de_en', [
                    '--encoder-layers', '2',
                    '--decoder-layers', '2',
                ])
                generate_main(data_dir)

    def test_lstm_bidirectional(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_lstm_bidirectional') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'lstm', [
                    '--encoder-layers', '2',
                    '--encoder-bidirectional',
                    '--encoder-hidden-size', '256',
                    '--decoder-layers', '2',
                ])
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                generate_main(data_dir)

    def test_transformer(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_transformer') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'transformer_iwslt_de_en')
                generate_main(data_dir)

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    def test_lightconv(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_lightconv') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'lightconv_iwslt_de_en', [
                    '--encoder-conv-type', 'lightweight',
                    '--decoder-conv-type', 'lightweight',
                ])
                generate_main(data_dir)

    def test_dynamicconv(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_dynamicconv') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'lightconv_iwslt_de_en', [
                    '--encoder-conv-type', 'dynamic',
                    '--decoder-conv-type', 'dynamic',
                ])
                generate_main(data_dir)

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    def test_mixture_of_experts(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_moe') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                train_translation_model(data_dir, 'transformer_iwslt_de_en', [
                    '--task', 'translation_moe',
                    '--method', 'hMoElp',
                    '--mean-pool-gating-network',
                    '--num-experts', '3',
                ])
                generate_main(data_dir, [
                    '--task', 'translation_moe',
                    '--method', 'hMoElp',
                    '--mean-pool-gating-network',
                    '--num-experts', '3',
                    '--gen-expert', '0'
                ])

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class TestStories(unittest.TestCase):

    def test_fconv_self_att_wp(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_fconv_self_att_wp') as data_dir:
                create_dummy_data(data_dir)
                preprocess_translation_data(data_dir)
                config = [
                    '--encoder-layers', '[(512, 3)] * 2',
                    '--decoder-layers', '[(512, 3)] * 2',
                    '--decoder-attention', 'True',
                    '--encoder-attention', 'False',
                    '--gated-attention', 'True',
                    '--self-attention', 'True',
                    '--project-input', 'True',
                ]
                train_translation_model(data_dir, 'fconv_self_att_wp', config)
                generate_main(data_dir)

                # fusion model
                os.rename(os.path.join(data_dir, 'checkpoint_last.pt'), os.path.join(data_dir, 'pretrained.pt'))
                config.extend([
                    '--pretrained', 'True',
                    '--pretrained-checkpoint', os.path.join(data_dir, 'pretrained.pt'),
                    '--save-dir', os.path.join(data_dir, 'fusion_model'),
                ])
                train_translation_model(data_dir, 'fconv_self_att_wp', config)


class TestLanguageModeling(unittest.TestCase):

    def test_fconv_lm(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_fconv_lm') as data_dir:
                create_dummy_data(data_dir)
                preprocess_lm_data(data_dir)
                train_language_model(data_dir, 'fconv_lm')
                eval_lm_main(data_dir)


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class TestMaskedLanguageModel(unittest.TestCase):
    def test_masked_lm(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory("test_mlm") as data_dir:
                create_dummy_data(data_dir)
                preprocess_lm_data(data_dir)
                train_masked_language_model(data_dir, "xlm_base")

    def test_pretrained_masked_lm_for_translation(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory("test_mlm") as data_dir:
                create_dummy_data(data_dir)
                preprocess_lm_data(data_dir)
                train_masked_language_model(data_dir, arch="xlm_base")
                with tempfile.TemporaryDirectory(
                    "test_mlm_translation"
                ) as translation_dir:
                    create_dummy_data(translation_dir)
                    preprocess_translation_data(
                        translation_dir, extra_flags=["--joined-dictionary"]
                    )
                    # Train transformer with data_dir/checkpoint_last.pt
                    train_translation_model(
                        translation_dir,
                        arch="transformer_from_pretrained_xlm",
                        extra_flags=[
                            "--decoder-layers",
                            "1",
                            "--decoder-embed-dim",
                            "32",
                            "--decoder-attention-heads",
                            "1",
                            "--decoder-ffn-embed-dim",
                            "32",
                            "--encoder-layers",
                            "1",
                            "--encoder-embed-dim",
                            "32",
                            "--encoder-attention-heads",
                            "1",
                            "--encoder-ffn-embed-dim",
                            "32",
                            "--pretrained-xlm-checkpoint",
                            f"{data_dir}/checkpoint_last.pt",
                            "--encoder-learned-pos",
                            "--decoder-learned-pos",
                            "--activation-fn",
                            "gelu",
                            "--max-source-positions",
                            "500",
                            "--max-target-positions",
                            "500",
                        ],
                        task="translation_from_pretrained_xlm",
                    )


def train_masked_language_model(data_dir, arch):
    train_parser = options.get_training_parser()
    # TODO: langs should be in and out right?
    train_args = options.parse_args_and_arch(
        train_parser,
        [
            "--task",
            "cross_lingual_lm",
            data_dir,
            "--arch",
            arch,
            # Optimizer args
            "--optimizer",
            "adam",
            "--lr-scheduler",
            "reduce_lr_on_plateau",
            "--lr-shrink",
            "0.5",
            "--lr",
            "0.0001",
            "--min-lr",
            "1e-09",
            # dropout, attention args
            "--dropout",
            "0.1",
            "--no-bias-kv",
            "--attention-dropout",
            "0.1",
            # MLM args
            "--criterion",
            "masked_lm_loss",
            "--masked-lm-only",
            "--monolingual-langs",
            "in,out",
            "--num-segment",
            "5",
            # Transformer args: use a small transformer model for fast training
            "--encoder-layers",
            "1",
            "--encoder-embed-dim",
            "32",
            "--encoder-attention-heads",
            "1",
            "--encoder-ffn-embed-dim",
            "32",
            # Other training args
            "--max-tokens",
            "500",
            "--tokens-per-sample",
            "500",
            "--save-dir",
            data_dir,
            "--max-epoch",
            "1",
            "--no-progress-bar",
            "--distributed-world-size",
            "1",
            "--raw-text",
        ],
    )
    train.main(train_args)


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class TestCommonOptions(unittest.TestCase):

    def test_optimizers(self):
        with contextlib.redirect_stdout(StringIO()):
            with tempfile.TemporaryDirectory('test_optimizers') as data_dir:
                # Use just a bit of data and tiny model to keep this test runtime reasonable
                create_dummy_data(data_dir, num_examples=10, maxlen=5)
                preprocess_translation_data(data_dir)
                optimizers = ['adafactor', 'adam', 'nag', 'adagrad', 'sgd', 'adadelta']
                last_checkpoint = os.path.join(data_dir, 'checkpoint_last.pt')
                for optimizer in optimizers:
                    if os.path.exists(last_checkpoint):
                        os.remove(last_checkpoint)
                    train_translation_model(data_dir, 'lstm', [
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                        '--required-batch-size-multiple', '1',
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                        '--encoder-layers', '1',
                        '--encoder-hidden-size', '32',
                        '--decoder-layers', '1',
                        '--optimizer', optimizer,
                    ])
                    generate_main(data_dir)


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def create_dummy_data(data_dir, num_examples=1000, maxlen=20):

    def _create_dummy_data(filename):
        data = torch.rand(num_examples * maxlen)
        data = 97 + torch.floor(26 * data).int()
        with open(os.path.join(data_dir, filename), 'w') as h:
            offset = 0
            for _ in range(num_examples):
                ex_len = random.randint(1, maxlen)
                ex_str = ' '.join(map(chr, data[offset:offset+ex_len]))
                print(ex_str, file=h)
                offset += ex_len

    _create_dummy_data('train.in')
    _create_dummy_data('train.out')
    _create_dummy_data('valid.in')
    _create_dummy_data('valid.out')
    _create_dummy_data('test.in')
    _create_dummy_data('test.out')


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def preprocess_translation_data(data_dir, extra_flags=None):
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    preprocess_parser = options.get_preprocessing_parser()
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    preprocess_args = preprocess_parser.parse_args(
        [
            '--source-lang', 'in',
            '--target-lang', 'out',
            '--trainpref', os.path.join(data_dir, 'train'),
            '--validpref', os.path.join(data_dir, 'valid'),
            '--testpref', os.path.join(data_dir, 'test'),
            '--thresholdtgt', '0',
            '--thresholdsrc', '0',
            '--destdir', data_dir,
        ] + (extra_flags or []),
    )
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    preprocess.main(preprocess_args)


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def train_translation_model(data_dir, arch, extra_flags=None, task='translation'):
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    train_parser = options.get_training_parser()
    train_args = options.parse_args_and_arch(
        train_parser,
        [
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            '--task', task,
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            data_dir,
            '--save-dir', data_dir,
            '--arch', arch,
            '--lr', '0.05',
            '--max-tokens', '500',
            '--max-epoch', '1',
            '--no-progress-bar',
            '--distributed-world-size', '1',
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            '--source-lang', 'in',
            '--target-lang', 'out',
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        ] + (extra_flags or []),
    )
    train.main(train_args)


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def generate_main(data_dir, extra_flags=None):
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    generate_parser = options.get_generation_parser()
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    generate_args = options.parse_args_and_arch(
        generate_parser,
        [
            data_dir,
            '--path', os.path.join(data_dir, 'checkpoint_last.pt'),
            '--beam', '3',
            '--batch-size', '64',
            '--max-len-b', '5',
            '--gen-subset', 'valid',
            '--no-progress-bar',
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            '--print-alignment',
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        ] + (extra_flags or []),
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    )
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    # evaluate model in batch mode
    generate.main(generate_args)

    # evaluate model interactively
    generate_args.buffer_size = 0
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    generate_args.input = '-'
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    generate_args.max_sentences = None
    orig_stdin = sys.stdin
    sys.stdin = StringIO('h e l l o\n')
    interactive.main(generate_args)
    sys.stdin = orig_stdin


def preprocess_lm_data(data_dir):
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    preprocess_parser = options.get_preprocessing_parser()
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    preprocess_args = preprocess_parser.parse_args([
        '--only-source',
        '--trainpref', os.path.join(data_dir, 'train.out'),
        '--validpref', os.path.join(data_dir, 'valid.out'),
        '--testpref', os.path.join(data_dir, 'test.out'),
        '--destdir', data_dir,
    ])
    preprocess.main(preprocess_args)


def train_language_model(data_dir, arch):
    train_parser = options.get_training_parser()
    train_args = options.parse_args_and_arch(
        train_parser,
        [
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            '--task', 'language_modeling',
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            data_dir,
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            '--arch', arch,
            '--optimizer', 'nag',
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            '--lr', '0.1',
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            '--criterion', 'adaptive_loss',
            '--adaptive-softmax-cutoff', '5,10,15',
            '--decoder-layers', '[(850, 3)] * 2 + [(1024,4)]',
            '--decoder-embed-dim', '280',
            '--max-tokens', '500',
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            '--tokens-per-sample', '500',
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            '--save-dir', data_dir,
            '--max-epoch', '1',
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            '--no-progress-bar',
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            '--distributed-world-size', '1',
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            '--ddp-backend', 'no_c10d',
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        ],
    )
    train.main(train_args)


def eval_lm_main(data_dir):
    eval_lm_parser = options.get_eval_lm_parser()
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    eval_lm_args = options.parse_args_and_arch(
        eval_lm_parser,
        [
            data_dir,
            '--path', os.path.join(data_dir, 'checkpoint_last.pt'),
            '--no-progress-bar',
        ],
    )
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    eval_lm.main(eval_lm_args)
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if __name__ == '__main__':
    unittest.main()