test_trainer.py 100 KB
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# coding=utf-8
# Copyright 2018 the HuggingFace Inc. team.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

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import dataclasses
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import gc
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import json
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import math
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import os
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import random
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import re
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import subprocess
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import sys
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import tempfile
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import time
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import unittest
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from pathlib import Path
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from unittest.mock import Mock, patch
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import numpy as np

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from huggingface_hub import HfFolder, Repository, delete_repo, set_access_token
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from parameterized import parameterized
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from requests.exceptions import HTTPError
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from transformers import (
    AutoTokenizer,
    IntervalStrategy,
    PretrainedConfig,
    TrainingArguments,
    is_torch_available,
    logging,
)
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from transformers.testing_utils import (
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    ENDPOINT_STAGING,
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    TOKEN,
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    USER,
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    CaptureLogger,
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    TestCasePlus,
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    get_gpu_count,
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    get_tests_dir,
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    is_staging_test,
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    require_intel_extension_for_pytorch,
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    require_optuna,
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    require_ray,
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    require_sentencepiece,
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    require_sigopt,
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    require_tokenizers,
    require_torch,
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    require_torch_bf16_cpu,
    require_torch_bf16_gpu,
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    require_torch_gpu,
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    require_torch_multi_gpu,
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    require_torch_non_multi_gpu,
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    require_torch_tf32,
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    require_torch_up_to_2_gpus,
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    require_torchdynamo,
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    require_wandb,
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    slow,
)
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from transformers.trainer_utils import PREFIX_CHECKPOINT_DIR
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from transformers.training_args import OptimizerNames
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from transformers.utils import WEIGHTS_INDEX_NAME, WEIGHTS_NAME, is_apex_available, is_bitsandbytes_available
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from transformers.utils.hp_naming import TrialShortNamer
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if is_torch_available():
    import torch
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    from torch import nn
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    from torch.utils.data import IterableDataset

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    import transformers.optimization
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    from transformers import (
        AutoModelForSequenceClassification,
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        EarlyStoppingCallback,
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        GlueDataset,
        GlueDataTrainingArguments,
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        GPT2Config,
        GPT2LMHeadModel,
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        LineByLineTextDataset,
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        PreTrainedModel,
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        Trainer,
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        TrainerState,
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    )
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    from transformers.modeling_utils import unwrap_model
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PATH_SAMPLE_TEXT = f"{get_tests_dir()}/fixtures/sample_text.txt"
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class RegressionDataset:
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    def __init__(self, a=2, b=3, length=64, seed=42, label_names=None):
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        np.random.seed(seed)
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        self.label_names = ["labels"] if label_names is None else label_names
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        self.length = length
        self.x = np.random.normal(size=(length,)).astype(np.float32)
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        self.ys = [a * self.x + b + np.random.normal(scale=0.1, size=(length,)) for _ in self.label_names]
        self.ys = [y.astype(np.float32) for y in self.ys]
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    def __len__(self):
        return self.length

    def __getitem__(self, i):
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        result = {name: y[i] for name, y in zip(self.label_names, self.ys)}
        result["input_x"] = self.x[i]
        return result
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@dataclasses.dataclass
class RegressionTrainingArguments(TrainingArguments):
    a: float = 0.0
    b: float = 0.0

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    def __post_init__(self):
        super().__post_init__()
        # save resources not dealing with reporting (also avoids the warning when it's not set)
        self.report_to = []

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class RepeatDataset:
    def __init__(self, x, length=64):
        self.x = x
        self.length = length

    def __len__(self):
        return self.length

    def __getitem__(self, i):
        return {"input_ids": self.x, "labels": self.x}


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class DynamicShapesDataset:
    def __init__(self, length=64, seed=42, batch_size=8):
        self.length = length
        np.random.seed(seed)
        sizes = np.random.randint(1, 20, (length // batch_size,))
        # For easy batching, we make every batch_size consecutive samples the same size.
        self.xs = [np.random.normal(size=(s,)) for s in sizes.repeat(batch_size)]
        self.ys = [np.random.normal(size=(s,)) for s in sizes.repeat(batch_size)]

    def __len__(self):
        return self.length

    def __getitem__(self, i):
        return {"input_x": self.xs[i], "labels": self.ys[i]}


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class AlmostAccuracy:
    def __init__(self, thresh=0.25):
        self.thresh = thresh

    def __call__(self, eval_pred):
        predictions, labels = eval_pred
        true = np.abs(predictions - labels) <= self.thresh
        return {"accuracy": true.astype(np.float32).mean().item()}
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class RegressionModelConfig(PretrainedConfig):
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    def __init__(self, a=0, b=0, double_output=False, random_torch=True, **kwargs):
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        super().__init__(**kwargs)
        self.a = a
        self.b = b
        self.double_output = double_output
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        self.random_torch = random_torch
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        self.hidden_size = 1
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if is_torch_available():

    class SampleIterableDataset(IterableDataset):
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        def __init__(self, a=2, b=3, length=64, seed=42, label_names=None):
            self.dataset = RegressionDataset(a=a, b=b, length=length, seed=seed, label_names=label_names)
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        def __iter__(self):
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            for i in range(len(self.dataset)):
                yield self.dataset[i]
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    class FiniteIterableDataset(SampleIterableDataset):
        def __init__(self, a=2, b=3, length=64, seed=42, label_names=None):
            super().__init__(a, b, length, seed, label_names)
            self.current_sample = 0

        def __iter__(self):
            while self.current_sample < len(self.dataset):
                yield self.dataset[self.current_sample]
                self.current_sample += 1

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    class MultiLoader:
        def __init__(self, loaders):
            self.loaders = loaders

        def __len__(self):
            return sum(len(loader) for loader in self.loaders)

        def __iter__(self):
            for loader in self.loaders:
                yield from loader

    class CustomDataloaderTrainer(Trainer):
        def get_train_dataloader(self):
            dataloaders = [super().get_train_dataloader(), super().get_train_dataloader()]
            return MultiLoader(dataloaders)

        def get_eval_dataloader(self, eval_dataset):
            dataloaders = [super().get_eval_dataloader(eval_dataset), super().get_eval_dataloader(eval_dataset)]
            return MultiLoader(dataloaders)

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    class RegressionModel(nn.Module):
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        def __init__(self, a=0, b=0, double_output=False):
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            super().__init__()
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            self.a = nn.Parameter(torch.tensor(a).float())
            self.b = nn.Parameter(torch.tensor(b).float())
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            self.double_output = double_output
            self.config = None
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        def forward(self, input_x, labels=None, **kwargs):
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            y = input_x * self.a + self.b
            if labels is None:
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                return (y, y) if self.double_output else (y,)
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            loss = nn.functional.mse_loss(y, labels)
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            return (loss, y, y) if self.double_output else (loss, y)
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    class RegressionDictModel(nn.Module):
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        def __init__(self, a=0, b=0):
            super().__init__()
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            self.a = nn.Parameter(torch.tensor(a).float())
            self.b = nn.Parameter(torch.tensor(b).float())
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            self.config = None

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        def forward(self, input_x, labels=None, **kwargs):
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            y = input_x * self.a + self.b
            result = {"output": y}
            if labels is not None:
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                result["loss"] = nn.functional.mse_loss(y, labels)
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            return result

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    class RegressionPreTrainedModel(PreTrainedModel):
        config_class = RegressionModelConfig
        base_model_prefix = "regression"

        def __init__(self, config):
            super().__init__(config)
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            self.a = nn.Parameter(torch.tensor(config.a).float())
            self.b = nn.Parameter(torch.tensor(config.b).float())
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            self.double_output = config.double_output

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        def forward(self, input_x, labels=None, **kwargs):
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            y = input_x * self.a + self.b
            if labels is None:
                return (y, y) if self.double_output else (y,)
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            loss = nn.functional.mse_loss(y, labels)
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            return (loss, y, y) if self.double_output else (loss, y)

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    class RegressionRandomPreTrainedModel(PreTrainedModel):
        config_class = RegressionModelConfig
        base_model_prefix = "regression"

        def __init__(self, config):
            super().__init__(config)
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            self.a = nn.Parameter(torch.tensor(config.a).float())
            self.b = nn.Parameter(torch.tensor(config.b).float())
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            self.random_torch = config.random_torch
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        def forward(self, input_x, labels=None, **kwargs):
            y = input_x * self.a + self.b
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            if self.random_torch:
                torch_rand = torch.randn(1).squeeze()
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            np_rand = np.random.rand()
            rand_rand = random.random()

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            if self.random_torch:
                y += 0.05 * torch_rand
            y += 0.05 * torch.tensor(np_rand + rand_rand)
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            if labels is None:
                return (y,)
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            loss = nn.functional.mse_loss(y, labels)
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            return (loss, y)

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    class TstLayer(nn.Module):
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        def __init__(self, hidden_size):
            super().__init__()
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            self.linear1 = nn.Linear(hidden_size, hidden_size)
            self.ln1 = nn.LayerNorm(hidden_size)
            self.linear2 = nn.Linear(hidden_size, hidden_size)
            self.ln2 = nn.LayerNorm(hidden_size)
            self.bias = nn.Parameter(torch.zeros(hidden_size))
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        def forward(self, x):
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            h = self.ln1(nn.functional.relu(self.linear1(x)))
            h = nn.functional.relu(self.linear2(x))
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            return self.ln2(x + h + self.bias)

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    def get_regression_trainer(a=0, b=0, double_output=False, train_len=64, eval_len=64, pretrained=True, **kwargs):
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        label_names = kwargs.get("label_names", None)
        train_dataset = RegressionDataset(length=train_len, label_names=label_names)
        eval_dataset = RegressionDataset(length=eval_len, label_names=label_names)
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        model_init = kwargs.pop("model_init", None)
        if model_init is not None:
            model = None
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        else:
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            if pretrained:
                config = RegressionModelConfig(a=a, b=b, double_output=double_output)
                model = RegressionPreTrainedModel(config)
            else:
                model = RegressionModel(a=a, b=b, double_output=double_output)

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        compute_metrics = kwargs.pop("compute_metrics", None)
        data_collator = kwargs.pop("data_collator", None)
        optimizers = kwargs.pop("optimizers", (None, None))
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        output_dir = kwargs.pop("output_dir", "./regression")
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        preprocess_logits_for_metrics = kwargs.pop("preprocess_logits_for_metrics", None)
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        args = RegressionTrainingArguments(output_dir, a=a, b=b, **kwargs)
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        return Trainer(
            model,
            args,
            data_collator=data_collator,
            train_dataset=train_dataset,
            eval_dataset=eval_dataset,
            compute_metrics=compute_metrics,
            optimizers=optimizers,
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            model_init=model_init,
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            preprocess_logits_for_metrics=preprocess_logits_for_metrics,
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        )

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class TrainerIntegrationCommon:
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    def check_saved_checkpoints(self, output_dir, freq, total, is_pretrained=True):
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        file_list = [WEIGHTS_NAME, "training_args.bin", "optimizer.pt", "scheduler.pt", "trainer_state.json"]
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        if is_pretrained:
            file_list.append("config.json")
        for step in range(freq, total, freq):
            checkpoint = os.path.join(output_dir, f"checkpoint-{step}")
            self.assertTrue(os.path.isdir(checkpoint))
            for filename in file_list:
                self.assertTrue(os.path.isfile(os.path.join(checkpoint, filename)))

    def check_best_model_has_been_loaded(
        self, output_dir, freq, total, trainer, metric, greater_is_better=False, is_pretrained=True
    ):
        checkpoint = os.path.join(output_dir, f"checkpoint-{(total // freq) * freq}")
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        log_history = TrainerState.load_from_json(os.path.join(checkpoint, "trainer_state.json")).log_history
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        values = [d[metric] for d in log_history]
        best_value = max(values) if greater_is_better else min(values)
        best_checkpoint = (values.index(best_value) + 1) * freq
        checkpoint = os.path.join(output_dir, f"checkpoint-{best_checkpoint}")
        if is_pretrained:
            best_model = RegressionPreTrainedModel.from_pretrained(checkpoint)
            best_model.to(trainer.args.device)
        else:
            best_model = RegressionModel()
            state_dict = torch.load(os.path.join(checkpoint, WEIGHTS_NAME))
            best_model.load_state_dict(state_dict)
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            best_model.to(trainer.args.device)
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        self.assertTrue(torch.allclose(best_model.a, trainer.model.a))
        self.assertTrue(torch.allclose(best_model.b, trainer.model.b))

        metrics = trainer.evaluate()
        self.assertEqual(metrics[metric], best_value)

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    def check_trainer_state_are_the_same(self, trainer_state, trainer_state1):
        # We'll pop things so operate on copies.
        state = trainer_state.copy()
        state1 = trainer_state1.copy()
        # Log history main contain different logs for the time metrics (after resuming a training).
        log_history = state.pop("log_history", None)
        log_history1 = state1.pop("log_history", None)
        self.assertEqual(state, state1)
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        skip_log_keys = ["train_runtime", "train_samples_per_second", "train_steps_per_second", "train_loss"]
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        for log, log1 in zip(log_history, log_history1):
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            for key in skip_log_keys:
                _ = log.pop(key, None)
                _ = log1.pop(key, None)
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            self.assertEqual(log, log1)

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    def convert_to_sharded_checkpoint(self, folder):
        # Converts a checkpoint of a regression model to a sharded checkpoint.
        state_dict = torch.load(os.path.join(folder, WEIGHTS_NAME))
        os.remove(os.path.join(folder, WEIGHTS_NAME))
        keys = list(state_dict.keys())

        shard_files = [
            WEIGHTS_NAME.replace(".bin", f"-{idx+1:05d}-of-{len(keys):05d}.bin") for idx in range(len(keys))
        ]
        index = {"metadata": {}, "weight_map": {key: shard_files[i] for i, key in enumerate(keys)}}

        save_index_file = os.path.join(folder, WEIGHTS_INDEX_NAME)
        with open(save_index_file, "w", encoding="utf-8") as f:
            content = json.dumps(index, indent=2, sort_keys=True) + "\n"
            f.write(content)

        for param_name, shard_file in zip(keys, shard_files):
            torch.save({param_name: state_dict[param_name]}, os.path.join(folder, shard_file))

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@require_torch
@require_sentencepiece
@require_tokenizers
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class TrainerIntegrationPrerunTest(TestCasePlus, TrainerIntegrationCommon):
    """
    Only tests that want to tap into the auto-pre-run 2 trainings:
    - self.default_trained_model
    - self.alternate_trained_model
    directly, or via check_trained_model
    """

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    def setUp(self):
        super().setUp()
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        args = TrainingArguments("..")
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        self.n_epochs = args.num_train_epochs
        self.batch_size = args.train_batch_size
        trainer = get_regression_trainer(learning_rate=0.1)
        trainer.train()
        self.default_trained_model = (trainer.model.a, trainer.model.b)

        trainer = get_regression_trainer(learning_rate=0.1, seed=314)
        trainer.train()
        self.alternate_trained_model = (trainer.model.a, trainer.model.b)

    def check_trained_model(self, model, alternate_seed=False):
        # Checks a training seeded with learning_rate = 0.1
        (a, b) = self.alternate_trained_model if alternate_seed else self.default_trained_model
        self.assertTrue(torch.allclose(model.a, a))
        self.assertTrue(torch.allclose(model.b, b))

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    def test_reproducible_training(self):
        # Checks that training worked, model trained and seed made a reproducible training.
        trainer = get_regression_trainer(learning_rate=0.1)
        trainer.train()
        self.check_trained_model(trainer.model)

        # Checks that a different seed gets different (reproducible) results.
        trainer = get_regression_trainer(learning_rate=0.1, seed=314)
        trainer.train()
        self.check_trained_model(trainer.model, alternate_seed=True)

    def test_trainer_with_datasets(self):
        import datasets

        np.random.seed(42)
        x = np.random.normal(size=(64,)).astype(np.float32)
        y = 2.0 * x + 3.0 + np.random.normal(scale=0.1, size=(64,))
        train_dataset = datasets.Dataset.from_dict({"input_x": x, "label": y})

        # Base training. Should have the same results as test_reproducible_training
        model = RegressionModel()
        args = TrainingArguments("./regression", learning_rate=0.1)
        trainer = Trainer(model, args, train_dataset=train_dataset)
        trainer.train()
        self.check_trained_model(trainer.model)

        # Can return tensors.
        train_dataset.set_format(type="torch", dtype=torch.float32)
        model = RegressionModel()
        trainer = Trainer(model, args, train_dataset=train_dataset)
        trainer.train()
        self.check_trained_model(trainer.model)

        # Adding one column not used by the model should have no impact
        z = np.random.normal(size=(64,)).astype(np.float32)
        train_dataset = datasets.Dataset.from_dict({"input_x": x, "label": y, "extra": z})
        model = RegressionModel()
        trainer = Trainer(model, args, train_dataset=train_dataset)
        trainer.train()
        self.check_trained_model(trainer.model)

    def test_model_init(self):
        train_dataset = RegressionDataset()
        args = TrainingArguments("./regression", learning_rate=0.1)
        trainer = Trainer(args=args, train_dataset=train_dataset, model_init=lambda: RegressionModel())
        trainer.train()
        self.check_trained_model(trainer.model)

        # Re-training should restart from scratch, thus lead the same results.
        trainer.train()
        self.check_trained_model(trainer.model)

        # Re-training should restart from scratch, thus lead the same results and new seed should be used.
        trainer.args.seed = 314
        trainer.train()
        self.check_trained_model(trainer.model, alternate_seed=True)

    def test_gradient_accumulation(self):
        # Training with half the batch size but accumulation steps as 2 should give the same results.
        trainer = get_regression_trainer(
            gradient_accumulation_steps=2, per_device_train_batch_size=4, learning_rate=0.1
        )
        trainer.train()
        self.check_trained_model(trainer.model)

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    def test_training_loss(self):
        n_gpus = max(1, get_gpu_count())

        # With even logs
        trainer = get_regression_trainer(logging_steps=64 / (8 * n_gpus))
        trainer.train()
        log_history = trainer.state.log_history

        losses = [log["loss"] for log in log_history if "loss" in log]
        train_loss = log_history[-1]["train_loss"]
        self.assertAlmostEqual(sum(losses) / len(losses), train_loss, places=4)

        # With uneven logs
        trainer = get_regression_trainer(logging_steps=5)
        trainer.train()
        log_history = trainer.state.log_history

        # Training loss should be the same as before
        new_train_loss = log_history[-1]["train_loss"]
        self.assertAlmostEqual(train_loss, new_train_loss, places=4)

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    def test_custom_optimizer(self):
        train_dataset = RegressionDataset()
        args = TrainingArguments("./regression")
        model = RegressionModel()
        optimizer = torch.optim.SGD(model.parameters(), lr=1.0)
        lr_scheduler = torch.optim.lr_scheduler.LambdaLR(optimizer, lr_lambda=lambda x: 1.0)
        trainer = Trainer(model, args, train_dataset=train_dataset, optimizers=(optimizer, lr_scheduler))
        trainer.train()

        (a, b) = self.default_trained_model
        self.assertFalse(torch.allclose(trainer.model.a, a))
        self.assertFalse(torch.allclose(trainer.model.b, b))
        self.assertEqual(trainer.optimizer.state_dict()["param_groups"][0]["lr"], 1.0)

    def test_adafactor_lr_none(self):
        # test the special case where lr=None, since Trainer can't not have lr_scheduler

        from transformers.optimization import Adafactor, AdafactorSchedule

        train_dataset = RegressionDataset()
        args = TrainingArguments("./regression")
        model = RegressionModel()
        optimizer = Adafactor(model.parameters(), scale_parameter=True, relative_step=True, warmup_init=True, lr=None)
        lr_scheduler = AdafactorSchedule(optimizer)
        trainer = Trainer(model, args, train_dataset=train_dataset, optimizers=(optimizer, lr_scheduler))
        trainer.train()

        (a, b) = self.default_trained_model
        self.assertFalse(torch.allclose(trainer.model.a, a))
        self.assertFalse(torch.allclose(trainer.model.b, b))
        self.assertGreater(trainer.optimizer.state_dict()["param_groups"][0]["lr"], 0)

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    @require_torch_gpu
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    @require_torch_bf16_gpu
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    def test_mixed_bf16(self):

        # very basic test
        trainer = get_regression_trainer(learning_rate=0.1, bf16=True)
        trainer.train()
        self.check_trained_model(trainer.model)

        # --bf16 --half_precision_backend apex can't be used together
        with self.assertRaises(ValueError):
            trainer = get_regression_trainer(learning_rate=0.1, bf16=True, half_precision_backend="apex")

        # will add more specific tests once there are some bugs to fix

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    @require_torch_gpu
    @require_torch_tf32
    def test_tf32(self):

        # very basic test
        trainer = get_regression_trainer(learning_rate=0.1, tf32=True)
        trainer.train()
        self.check_trained_model(trainer.model)

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@require_torch
@require_sentencepiece
@require_tokenizers
class TrainerIntegrationTest(TestCasePlus, TrainerIntegrationCommon):
    def setUp(self):
        super().setUp()
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        args = TrainingArguments("..")
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        self.n_epochs = args.num_train_epochs
        self.batch_size = args.train_batch_size

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    def test_trainer_works_with_dict(self):
        # Edge case because Apex with mode O2 will change our models to return dicts. This test checks it doesn't break
        # anything.
        train_dataset = RegressionDataset()
        eval_dataset = RegressionDataset()
        model = RegressionDictModel()
        args = TrainingArguments("./regression")
        trainer = Trainer(model, args, train_dataset=train_dataset, eval_dataset=eval_dataset)
        trainer.train()
        _ = trainer.evaluate()
        _ = trainer.predict(eval_dataset)

    def test_evaluation_with_keys_to_drop(self):
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        config = GPT2Config(vocab_size=100, n_positions=128, n_embd=32, n_layer=3, n_head=4)
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        tiny_gpt2 = GPT2LMHeadModel(config)
        x = torch.randint(0, 100, (128,))
        eval_dataset = RepeatDataset(x)
        args = TrainingArguments("./test")
        trainer = Trainer(tiny_gpt2, args, eval_dataset=eval_dataset)
        # By default the past_key_values are removed
        result = trainer.predict(eval_dataset)
        self.assertTrue(isinstance(result.predictions, np.ndarray))
        # We can still get them by setting ignore_keys to []
        result = trainer.predict(eval_dataset, ignore_keys=[])
        self.assertTrue(isinstance(result.predictions, tuple))
        self.assertEqual(len(result.predictions), 2)

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    def test_training_arguments_are_left_untouched(self):
        trainer = get_regression_trainer()
        trainer.train()
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        args = TrainingArguments("./regression", report_to=[])
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        dict1, dict2 = args.to_dict(), trainer.args.to_dict()
        for key in dict1.keys():
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            # Logging dir can be slightly different as they default to something with the time.
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            if key != "logging_dir":
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                self.assertEqual(dict1[key], dict2[key])
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    def test_number_of_steps_in_training(self):
        # Regular training has n_epochs * len(train_dl) steps
        trainer = get_regression_trainer(learning_rate=0.1)
        train_output = trainer.train()
        self.assertEqual(train_output.global_step, self.n_epochs * 64 / self.batch_size)

        # Check passing num_train_epochs works (and a float version too):
        trainer = get_regression_trainer(learning_rate=0.1, num_train_epochs=1.5)
        train_output = trainer.train()
        self.assertEqual(train_output.global_step, int(1.5 * 64 / self.batch_size))

        # If we pass a max_steps, num_train_epochs is ignored
        trainer = get_regression_trainer(learning_rate=0.1, max_steps=10)
        train_output = trainer.train()
        self.assertEqual(train_output.global_step, 10)

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    @require_torch_bf16_cpu
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    @require_intel_extension_for_pytorch
    def test_number_of_steps_in_training_with_ipex(self):
        for mix_bf16 in [True, False]:
            # Regular training has n_epochs * len(train_dl) steps
            trainer = get_regression_trainer(learning_rate=0.1, use_ipex=True, bf16=mix_bf16, no_cuda=True)
            train_output = trainer.train()
            self.assertEqual(train_output.global_step, self.n_epochs * 64 / self.batch_size)

            # Check passing num_train_epochs works (and a float version too):
            trainer = get_regression_trainer(
                learning_rate=0.1, num_train_epochs=1.5, use_ipex=True, bf16=mix_bf16, no_cuda=True
            )
            train_output = trainer.train()
            self.assertEqual(train_output.global_step, int(1.5 * 64 / self.batch_size))

            # If we pass a max_steps, num_train_epochs is ignored
            trainer = get_regression_trainer(
                learning_rate=0.1, max_steps=10, use_ipex=True, bf16=mix_bf16, no_cuda=True
            )
            train_output = trainer.train()
            self.assertEqual(train_output.global_step, 10)

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    def test_logging_inf_nan_filter(self):
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        config = GPT2Config(vocab_size=100, n_positions=128, n_embd=32, n_layer=3, n_head=4)
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        tiny_gpt2 = GPT2LMHeadModel(config)
        x = torch.randint(0, 100, (128,))
        train_dataset = RepeatDataset(x)

        # Trainer without inf/nan filter
        args = TrainingArguments("./test", learning_rate=1e9, logging_steps=5, logging_nan_inf_filter=False)
        trainer = Trainer(tiny_gpt2, args, train_dataset=train_dataset)
        trainer.train()
        log_history_no_filter = trainer.state.log_history

        # Trainer with inf/nan filter
        args = TrainingArguments("./test", learning_rate=1e9, logging_steps=5, logging_nan_inf_filter=True)
        trainer = Trainer(tiny_gpt2, args, train_dataset=train_dataset)
        trainer.train()
        log_history_filter = trainer.state.log_history

        def is_any_loss_nan_or_inf(log_history):
            losses = [l["loss"] for l in log_history[:-1]]
            return any(math.isnan(x) for x in losses) or any(math.isinf(x) for x in losses)

        self.assertTrue(is_any_loss_nan_or_inf(log_history_no_filter))
        self.assertFalse(is_any_loss_nan_or_inf(log_history_filter))

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    def test_train_and_eval_dataloaders(self):
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        n_gpu = max(1, torch.cuda.device_count())
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        trainer = get_regression_trainer(learning_rate=0.1, per_device_train_batch_size=16)
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        self.assertEqual(trainer.get_train_dataloader().batch_size, 16 * n_gpu)
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        trainer = get_regression_trainer(learning_rate=0.1, per_device_eval_batch_size=16)
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        self.assertEqual(trainer.get_eval_dataloader().batch_size, 16 * n_gpu)
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        # Check drop_last works
        trainer = get_regression_trainer(
            train_len=66, eval_len=74, learning_rate=0.1, per_device_train_batch_size=16, per_device_eval_batch_size=32
        )
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        self.assertEqual(len(trainer.get_train_dataloader()), 66 // (16 * n_gpu) + 1)
        self.assertEqual(len(trainer.get_eval_dataloader()), 74 // (32 * n_gpu) + 1)
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        trainer = get_regression_trainer(
            train_len=66,
            eval_len=74,
            learning_rate=0.1,
            per_device_train_batch_size=16,
            per_device_eval_batch_size=32,
            dataloader_drop_last=True,
        )
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        self.assertEqual(len(trainer.get_train_dataloader()), 66 // (16 * n_gpu))
        self.assertEqual(len(trainer.get_eval_dataloader()), 74 // (32 * n_gpu))
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        # Check passing a new dataset for evaluation works
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        new_eval_dataset = RegressionDataset(length=128)
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        self.assertEqual(len(trainer.get_eval_dataloader(new_eval_dataset)), 128 // (32 * n_gpu))
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    # tests that we do not require dataloader to have a .dataset attribute
    def test_dataloader_without_dataset(self):
        train_dataset = RegressionDataset(length=128)
        trainer = CustomDataloaderTrainer(
            model=RegressionModel(), train_dataset=train_dataset, eval_dataset=train_dataset
        )
        trainer.train()
        trainer.evaluate()

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    def test_sampler_seed(self):
        # nb: we don't want to inherit from IterableDataset to hit the right code path
        class DummyDataset(torch.utils.data.Dataset):
            def __init__(self, length: int = 101):
                self.length = length

            def __len__(self):
                return self.length

            def __getitem__(self, i):
                if (i < 0) or (i >= self.length):
                    raise IndexError
                return {"input_ids": [i]}

        class DummyModel(PreTrainedModel):
            def __init__(self, num_params: int):
                super().__init__(PretrainedConfig())
                # Add some (unused) params. the point here is that randomness in model_init shouldn't influence
                # data loader order.
                self.params = nn.Parameter(torch.randn(num_params))

            def forward(self, input_ids, labels=None):
                if labels is not None:
                    return torch.tensor(0.0, device=input_ids.device), input_ids
                else:
                    return input_ids

        def _get_first_data_sample(num_params, seed, data_seed, **kwargs):
            with tempfile.TemporaryDirectory() as tmpdir:
                trainer = Trainer(
                    model_init=lambda: DummyModel(num_params),
                    args=TrainingArguments(
                        output_dir=tmpdir,
                        **kwargs,
                        seed=seed,
                        data_seed=data_seed,
                        local_rank=-1,
                    ),
                    train_dataset=DummyDataset(),
                )

                return next(iter(trainer.get_train_dataloader()))

        # test that the seed is passed to the sampler
        # the codepath we want to hit is world_size <= 1, and both group_by_length
        for group_by_length in [True, False]:
            sample42_1 = _get_first_data_sample(num_params=10, seed=42, data_seed=42, group_by_length=group_by_length)
            sample42_2 = _get_first_data_sample(num_params=11, seed=42, data_seed=42, group_by_length=group_by_length)
            self.assertTrue(torch.equal(sample42_1["input_ids"], sample42_2["input_ids"]))

            # should get same samples with different seed, so long as data_seed is the same
            sample42_3 = _get_first_data_sample(num_params=11, seed=11, data_seed=42, group_by_length=group_by_length)
            self.assertTrue(torch.equal(sample42_1["input_ids"], sample42_3["input_ids"]))

            # make sure we have some randomness in the samples if data_seed is different
            others = [
                _get_first_data_sample(num_params=i, seed=42, data_seed=i, group_by_length=group_by_length)
                for i in range(10)
            ]
            self.assertTrue(any(not torch.equal(sample42_1["input_ids"], sample["input_ids"]) for sample in others))

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    @require_torch_multi_gpu
    def test_data_is_not_parallelized_when_model_is_parallel(self):
        model = RegressionModel()
        # Make the Trainer believe it's a parallelized model
        model.is_parallelizable = True
        model.model_parallel = True
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        args = TrainingArguments("./regression", per_device_train_batch_size=16, per_device_eval_batch_size=16)
        trainer = Trainer(model, args, train_dataset=RegressionDataset(), eval_dataset=RegressionDataset())
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        # Check the Trainer was fooled
        self.assertTrue(trainer.is_model_parallel)
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        self.assertEqual(trainer.args.n_gpu, 1)
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        # The batch size of the training and evaluation dataloaders should be 16, not 16 * n_gpu
        self.assertEqual(trainer.get_train_dataloader().batch_size, 16)
        self.assertEqual(len(trainer.get_train_dataloader()), 64 // 16)
        self.assertEqual(trainer.get_eval_dataloader().batch_size, 16)
        self.assertEqual(len(trainer.get_eval_dataloader()), 64 // 16)

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    def test_evaluate(self):
        trainer = get_regression_trainer(a=1.5, b=2.5, compute_metrics=AlmostAccuracy())
        results = trainer.evaluate()

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        x, y = trainer.eval_dataset.x, trainer.eval_dataset.ys[0]
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        pred = 1.5 * x + 2.5
        expected_loss = ((pred - y) ** 2).mean()
        self.assertAlmostEqual(results["eval_loss"], expected_loss)
        expected_acc = AlmostAccuracy()((pred, y))["accuracy"]
        self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

        # With a number of elements not a round multiple of the batch size
        trainer = get_regression_trainer(a=1.5, b=2.5, eval_len=66, compute_metrics=AlmostAccuracy())
        results = trainer.evaluate()

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        x, y = trainer.eval_dataset.x, trainer.eval_dataset.ys[0]
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        pred = 1.5 * x + 2.5
        expected_loss = ((pred - y) ** 2).mean()
        self.assertAlmostEqual(results["eval_loss"], expected_loss)
        expected_acc = AlmostAccuracy()((pred, y))["accuracy"]
        self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

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        # With logits preprocess
        trainer = get_regression_trainer(
            a=1.5,
            b=2.5,
            compute_metrics=AlmostAccuracy(),
            preprocess_logits_for_metrics=lambda logits, labels: logits + 1,
        )
        results = trainer.evaluate()

        x, y = trainer.eval_dataset.x, trainer.eval_dataset.ys[0]
        pred = 1.5 * x + 2.5
        expected_loss = ((pred - y) ** 2).mean()
        self.assertAlmostEqual(results["eval_loss"], expected_loss)
        expected_acc = AlmostAccuracy()((pred + 1, y))["accuracy"]
        self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

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    def test_evaluate_with_jit(self):
        trainer = get_regression_trainer(a=1.5, b=2.5, compute_metrics=AlmostAccuracy(), jit_mode_eval=True)
        results = trainer.evaluate()

        x, y = trainer.eval_dataset.x, trainer.eval_dataset.ys[0]
        pred = 1.5 * x + 2.5
        expected_loss = ((pred - y) ** 2).mean()
        self.assertAlmostEqual(results["eval_loss"], expected_loss)
        expected_acc = AlmostAccuracy()((pred, y))["accuracy"]
        self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

        # With a number of elements not a round multiple of the batch size
        trainer = get_regression_trainer(
            a=1.5, b=2.5, eval_len=66, compute_metrics=AlmostAccuracy(), jit_mode_eval=True
        )
        results = trainer.evaluate()

        x, y = trainer.eval_dataset.x, trainer.eval_dataset.ys[0]
        pred = 1.5 * x + 2.5
        expected_loss = ((pred - y) ** 2).mean()
        self.assertAlmostEqual(results["eval_loss"], expected_loss)
        expected_acc = AlmostAccuracy()((pred, y))["accuracy"]
        self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

        # With logits preprocess
        trainer = get_regression_trainer(
            a=1.5,
            b=2.5,
            compute_metrics=AlmostAccuracy(),
            preprocess_logits_for_metrics=lambda logits, labels: logits + 1,
            jit_mode_eval=True,
        )
        results = trainer.evaluate()

        x, y = trainer.eval_dataset.x, trainer.eval_dataset.ys[0]
        pred = 1.5 * x + 2.5
        expected_loss = ((pred - y) ** 2).mean()
        self.assertAlmostEqual(results["eval_loss"], expected_loss)
        expected_acc = AlmostAccuracy()((pred + 1, y))["accuracy"]
        self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

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    @require_torch_bf16_cpu
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    @require_intel_extension_for_pytorch
    def test_evaluate_with_ipex(self):
        for mix_bf16 in [True, False]:
            trainer = get_regression_trainer(
                a=1.5, b=2.5, use_ipex=True, compute_metrics=AlmostAccuracy(), bf16=mix_bf16, no_cuda=True
            )
            results = trainer.evaluate()

            x, y = trainer.eval_dataset.x, trainer.eval_dataset.ys[0]
            pred = 1.5 * x + 2.5
            expected_loss = ((pred - y) ** 2).mean()
            self.assertAlmostEqual(results["eval_loss"], expected_loss)
            expected_acc = AlmostAccuracy()((pred, y))["accuracy"]
            self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

            # With a number of elements not a round multiple of the batch size
            trainer = get_regression_trainer(
                a=1.5,
                b=2.5,
                use_ipex=True,
                eval_len=66,
                compute_metrics=AlmostAccuracy(),
                bf16=mix_bf16,
                no_cuda=True,
            )
            results = trainer.evaluate()

            x, y = trainer.eval_dataset.x, trainer.eval_dataset.ys[0]
            pred = 1.5 * x + 2.5
            expected_loss = ((pred - y) ** 2).mean()
            self.assertAlmostEqual(results["eval_loss"], expected_loss)
            expected_acc = AlmostAccuracy()((pred, y))["accuracy"]
            self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

            # With logits preprocess
            trainer = get_regression_trainer(
                a=1.5,
                b=2.5,
                use_ipex=True,
                compute_metrics=AlmostAccuracy(),
                preprocess_logits_for_metrics=lambda logits, labels: logits + 1,
                bf16=mix_bf16,
                no_cuda=True,
            )
            results = trainer.evaluate()

            x, y = trainer.eval_dataset.x, trainer.eval_dataset.ys[0]
            pred = 1.5 * x + 2.5
            expected_loss = ((pred - y) ** 2).mean()
            self.assertAlmostEqual(results["eval_loss"], expected_loss)
            expected_acc = AlmostAccuracy()((pred + 1, y))["accuracy"]
            self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

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    def test_predict(self):
        trainer = get_regression_trainer(a=1.5, b=2.5)
        preds = trainer.predict(trainer.eval_dataset).predictions
        x = trainer.eval_dataset.x
        self.assertTrue(np.allclose(preds, 1.5 * x + 2.5))

        # With a number of elements not a round multiple of the batch size
        trainer = get_regression_trainer(a=1.5, b=2.5, eval_len=66)
        preds = trainer.predict(trainer.eval_dataset).predictions
        x = trainer.eval_dataset.x
        self.assertTrue(np.allclose(preds, 1.5 * x + 2.5))

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        # With more than one output of the model
        trainer = get_regression_trainer(a=1.5, b=2.5, double_output=True)
        preds = trainer.predict(trainer.eval_dataset).predictions
        x = trainer.eval_dataset.x
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        self.assertEqual(len(preds), 2)
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        self.assertTrue(np.allclose(preds[0], 1.5 * x + 2.5))
        self.assertTrue(np.allclose(preds[1], 1.5 * x + 2.5))

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        # With more than one output/label of the model
        trainer = get_regression_trainer(a=1.5, b=2.5, double_output=True, label_names=["labels", "labels_2"])
        outputs = trainer.predict(trainer.eval_dataset)
        preds = outputs.predictions
        labels = outputs.label_ids
        x = trainer.eval_dataset.x
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        self.assertEqual(len(preds), 2)
        self.assertTrue(np.allclose(preds[0], 1.5 * x + 2.5))
        self.assertTrue(np.allclose(preds[1], 1.5 * x + 2.5))
        self.assertTrue(np.array_equal(labels[0], trainer.eval_dataset.ys[0]))
        self.assertTrue(np.array_equal(labels[1], trainer.eval_dataset.ys[1]))

    def test_predict_with_jit(self):
        trainer = get_regression_trainer(a=1.5, b=2.5, jit_mode_eval=True)
        preds = trainer.predict(trainer.eval_dataset).predictions
        x = trainer.eval_dataset.x
        self.assertTrue(np.allclose(preds, 1.5 * x + 2.5))

        # With a number of elements not a round multiple of the batch size
        trainer = get_regression_trainer(a=1.5, b=2.5, eval_len=66, jit_mode_eval=True)
        preds = trainer.predict(trainer.eval_dataset).predictions
        x = trainer.eval_dataset.x
        self.assertTrue(np.allclose(preds, 1.5 * x + 2.5))

        # With more than one output of the model
        trainer = get_regression_trainer(a=1.5, b=2.5, double_output=True, jit_mode_eval=True)
        preds = trainer.predict(trainer.eval_dataset).predictions
        x = trainer.eval_dataset.x
        self.assertEqual(len(preds), 2)
        self.assertTrue(np.allclose(preds[0], 1.5 * x + 2.5))
        self.assertTrue(np.allclose(preds[1], 1.5 * x + 2.5))

        # With more than one output/label of the model
        trainer = get_regression_trainer(
            a=1.5, b=2.5, double_output=True, label_names=["labels", "labels_2"], jit_mode_eval=True
        )
        outputs = trainer.predict(trainer.eval_dataset)
        preds = outputs.predictions
        labels = outputs.label_ids
        x = trainer.eval_dataset.x
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        self.assertEqual(len(preds), 2)
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        self.assertTrue(np.allclose(preds[0], 1.5 * x + 2.5))
        self.assertTrue(np.allclose(preds[1], 1.5 * x + 2.5))
        self.assertTrue(np.array_equal(labels[0], trainer.eval_dataset.ys[0]))
        self.assertTrue(np.array_equal(labels[1], trainer.eval_dataset.ys[1]))

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    @require_torch_bf16_cpu
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    @require_intel_extension_for_pytorch
    def test_predict_with_ipex(self):
        for mix_bf16 in [True, False]:
            trainer = get_regression_trainer(a=1.5, b=2.5, use_ipex=True, bf16=mix_bf16, no_cuda=True)
            preds = trainer.predict(trainer.eval_dataset).predictions
            x = trainer.eval_dataset.x
            self.assertTrue(np.allclose(preds, 1.5 * x + 2.5))

            # With a number of elements not a round multiple of the batch size
            trainer = get_regression_trainer(a=1.5, b=2.5, eval_len=66, use_ipex=True, bf16=mix_bf16, no_cuda=True)
            preds = trainer.predict(trainer.eval_dataset).predictions
            x = trainer.eval_dataset.x
            self.assertTrue(np.allclose(preds, 1.5 * x + 2.5))

            # With more than one output of the model
            trainer = get_regression_trainer(
                a=1.5, b=2.5, double_output=True, use_ipex=True, bf16=mix_bf16, no_cuda=True
            )
            preds = trainer.predict(trainer.eval_dataset).predictions
            x = trainer.eval_dataset.x
            self.assertEqual(len(preds), 2)
            self.assertTrue(np.allclose(preds[0], 1.5 * x + 2.5))
            self.assertTrue(np.allclose(preds[1], 1.5 * x + 2.5))

            # With more than one output/label of the model
            trainer = get_regression_trainer(
                a=1.5,
                b=2.5,
                double_output=True,
                label_names=["labels", "labels_2"],
                use_ipex=True,
                bf16=mix_bf16,
                no_cuda=True,
            )
            outputs = trainer.predict(trainer.eval_dataset)
            preds = outputs.predictions
            labels = outputs.label_ids
            x = trainer.eval_dataset.x
            self.assertEqual(len(preds), 2)
            self.assertTrue(np.allclose(preds[0], 1.5 * x + 2.5))
            self.assertTrue(np.allclose(preds[1], 1.5 * x + 2.5))
            self.assertTrue(np.array_equal(labels[0], trainer.eval_dataset.ys[0]))
            self.assertTrue(np.array_equal(labels[1], trainer.eval_dataset.ys[1]))

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    def test_dynamic_shapes(self):
        eval_dataset = DynamicShapesDataset(batch_size=self.batch_size)
        model = RegressionModel(a=2, b=1)
        args = TrainingArguments("./regression")
        trainer = Trainer(model, args, eval_dataset=eval_dataset)

        # Check evaluation can run to completion
        _ = trainer.evaluate()

        # Check predictions
        preds = trainer.predict(eval_dataset)
        for expected, seen in zip(eval_dataset.ys, preds.label_ids):
            self.assertTrue(np.array_equal(expected, seen[: expected.shape[0]]))
            self.assertTrue(np.all(seen[expected.shape[0] :] == -100))

        for expected, seen in zip(eval_dataset.xs, preds.predictions):
            self.assertTrue(np.array_equal(2 * expected + 1, seen[: expected.shape[0]]))
            self.assertTrue(np.all(seen[expected.shape[0] :] == -100))

        # Same tests with eval accumulation
        args = TrainingArguments("./regression", eval_accumulation_steps=2)
        trainer = Trainer(model, args, eval_dataset=eval_dataset)

        # Check evaluation can run to completion
        _ = trainer.evaluate()

        # Check predictions
        preds = trainer.predict(eval_dataset)
        for expected, seen in zip(eval_dataset.ys, preds.label_ids):
            self.assertTrue(np.array_equal(expected, seen[: expected.shape[0]]))
            self.assertTrue(np.all(seen[expected.shape[0] :] == -100))

        for expected, seen in zip(eval_dataset.xs, preds.predictions):
            self.assertTrue(np.array_equal(2 * expected + 1, seen[: expected.shape[0]]))
            self.assertTrue(np.all(seen[expected.shape[0] :] == -100))

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    def test_log_level(self):
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        # testing only --log_level (--log_level_replica requires multiple gpus and DDP and is tested elsewhere)
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        logger = logging.get_logger()
        log_info_string = "Running training"

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        # test with the default log_level - should be info and thus log on the main process
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        with CaptureLogger(logger) as cl:
            trainer = get_regression_trainer()
            trainer.train()
        self.assertIn(log_info_string, cl.out)

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        # test with low log_level - lower than info
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        with CaptureLogger(logger) as cl:
            trainer = get_regression_trainer(log_level="debug")
            trainer.train()
        self.assertIn(log_info_string, cl.out)

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        # test with high log_level - should be quiet
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        with CaptureLogger(logger) as cl:
            trainer = get_regression_trainer(log_level="error")
            trainer.train()
        self.assertNotIn(log_info_string, cl.out)

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    def test_save_checkpoints(self):
        with tempfile.TemporaryDirectory() as tmpdir:
            trainer = get_regression_trainer(output_dir=tmpdir, save_steps=5)
            trainer.train()
            self.check_saved_checkpoints(tmpdir, 5, int(self.n_epochs * 64 / self.batch_size))

        # With a regular model that is not a PreTrainedModel
        with tempfile.TemporaryDirectory() as tmpdir:
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            trainer = get_regression_trainer(output_dir=tmpdir, save_steps=5, pretrained=False)
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            trainer.train()
            self.check_saved_checkpoints(tmpdir, 5, int(self.n_epochs * 64 / self.batch_size), False)

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    @require_torch_multi_gpu
    def test_run_seq2seq_double_train_wrap_once(self):
        # test that we don't wrap the model more than once
        # since wrapping primarily happens on multi-gpu setup we want multiple gpus to test for
        # example DataParallel(DataParallel(model))

        trainer = get_regression_trainer()
        trainer.train()
        model_wrapped_before = trainer.model_wrapped
        trainer.train()
        model_wrapped_after = trainer.model_wrapped
        self.assertIs(model_wrapped_before, model_wrapped_after, "should be not wrapped twice")

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    @require_torch_up_to_2_gpus
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    def test_can_resume_training(self):
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        # This test will fail for more than 2 GPUs since the batch size will get bigger and with the number of
        # save_steps, the checkpoint will resume training at epoch 2 or more (so the data seen by the model
        # won't be the same since the training dataloader is shuffled).
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        with tempfile.TemporaryDirectory() as tmpdir:
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            kwargs = dict(output_dir=tmpdir, train_len=128, save_steps=5, learning_rate=0.1)
            trainer = get_regression_trainer(**kwargs)
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            trainer.train()
            (a, b) = trainer.model.a.item(), trainer.model.b.item()
            state = dataclasses.asdict(trainer.state)

            checkpoint = os.path.join(tmpdir, "checkpoint-5")

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            # Reinitialize trainer
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            trainer = get_regression_trainer(**kwargs)
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            trainer.train(resume_from_checkpoint=checkpoint)
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            (a1, b1) = trainer.model.a.item(), trainer.model.b.item()
            state1 = dataclasses.asdict(trainer.state)
            self.assertEqual(a, a1)
            self.assertEqual(b, b1)
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            self.check_trainer_state_are_the_same(state, state1)
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            # Now check with a later checkpoint that it also works when we span over one epoch
            checkpoint = os.path.join(tmpdir, "checkpoint-15")

            # Reinitialize trainer and load model
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            trainer = get_regression_trainer(**kwargs)
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            trainer.train(resume_from_checkpoint=checkpoint)
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            (a1, b1) = trainer.model.a.item(), trainer.model.b.item()
            state1 = dataclasses.asdict(trainer.state)
            self.assertEqual(a, a1)
            self.assertEqual(b, b1)
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            self.check_trainer_state_are_the_same(state, state1)
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        # With a regular model that is not a PreTrainedModel
        with tempfile.TemporaryDirectory() as tmpdir:
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            kwargs = dict(output_dir=tmpdir, train_len=128, save_steps=5, learning_rate=0.1, pretrained=False)

            trainer = get_regression_trainer(**kwargs)
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            trainer.train()
            (a, b) = trainer.model.a.item(), trainer.model.b.item()
            state = dataclasses.asdict(trainer.state)

            checkpoint = os.path.join(tmpdir, "checkpoint-5")

            # Reinitialize trainer and load model
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            trainer = get_regression_trainer(**kwargs)
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            trainer.train(resume_from_checkpoint=checkpoint)
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            (a1, b1) = trainer.model.a.item(), trainer.model.b.item()
            state1 = dataclasses.asdict(trainer.state)
            self.assertEqual(a, a1)
            self.assertEqual(b, b1)
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            self.check_trainer_state_are_the_same(state, state1)
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            # Now check with a later checkpoint that it also works when we span over one epoch
            checkpoint = os.path.join(tmpdir, "checkpoint-15")

            # Reinitialize trainer and load model
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            trainer = get_regression_trainer(**kwargs)
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            trainer.train(resume_from_checkpoint=checkpoint)
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            (a1, b1) = trainer.model.a.item(), trainer.model.b.item()
            state1 = dataclasses.asdict(trainer.state)
            self.assertEqual(a, a1)
            self.assertEqual(b, b1)
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            self.check_trainer_state_are_the_same(state, state1)
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        # Now check failures

        # 1. fail to find a bogus checkpoint
        trainer = get_regression_trainer()
        with self.assertRaises(Exception) as context:
            trainer.train(resume_from_checkpoint=f"{checkpoint}-bogus")
        self.assertTrue("Can't find a valid checkpoint at" in str(context.exception))

        # 2. fail to find any checkpoint - due a fresh output_dir
        output_dir2 = self.get_auto_remove_tmp_dir()
        trainer = get_regression_trainer(output_dir=output_dir2)
        with self.assertRaises(Exception) as context:
            trainer.train(resume_from_checkpoint=True)
        self.assertTrue("No valid checkpoint found in output directory" in str(context.exception))

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    def test_resume_training_with_randomness(self):
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        # For more than 1 GPUs, since the randomness is introduced in the model and with DataParallel (which is used
        # in this test for more than 2 GPUs), the calls to the torch RNG will happen in a random order (sometimes
        # GPU 0 will call first and sometimes GPU 1).
        random_torch = not torch.cuda.is_available() or torch.cuda.device_count() <= 1
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        if torch.cuda.is_available():
            torch.backends.cudnn.deterministic = True
        train_dataset = RegressionDataset(length=128)
        eval_dataset = RegressionDataset()

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        with self.subTest("Test every step"):
            config = RegressionModelConfig(a=0, b=2, random_torch=random_torch)
            model = RegressionRandomPreTrainedModel(config)
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            tmp_dir = self.get_auto_remove_tmp_dir()
            args = RegressionTrainingArguments(tmp_dir, save_steps=5, learning_rate=0.1)
            trainer = Trainer(model, args, train_dataset=train_dataset, eval_dataset=eval_dataset)
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            trainer.train()
            (a, b) = trainer.model.a.item(), trainer.model.b.item()
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            model = RegressionRandomPreTrainedModel(config)
            trainer = Trainer(model, args, train_dataset=train_dataset, eval_dataset=eval_dataset)
            trainer.train(resume_from_checkpoint=os.path.join(tmp_dir, "checkpoint-15"))
            (a1, b1) = trainer.model.a.item(), trainer.model.b.item()

            self.assertAlmostEqual(a, a1, delta=1e-8)
            self.assertAlmostEqual(b, b1, delta=1e-8)

        with self.subTest("Test every epoch"):
            config = RegressionModelConfig(a=0, b=2, random_torch=random_torch)
            model = RegressionRandomPreTrainedModel(config)

            tmp_dir = self.get_auto_remove_tmp_dir()
            args = RegressionTrainingArguments(tmp_dir, save_strategy="epoch", learning_rate=0.1)
            trainer = Trainer(model, args, train_dataset=train_dataset, eval_dataset=eval_dataset)

            trainer.train()
            (a, b) = trainer.model.a.item(), trainer.model.b.item()

            model = RegressionRandomPreTrainedModel(config)
            trainer = Trainer(model, args, train_dataset=train_dataset, eval_dataset=eval_dataset)

            checkpoints = [d for d in os.listdir(tmp_dir) if d.startswith("checkpoint-")]
            # There should be one checkpoint per epoch.
            self.assertEqual(len(checkpoints), 3)
            checkpoint_dir = sorted(checkpoints, key=lambda x: int(x.replace("checkpoint-", "")))[0]

            trainer.train(resume_from_checkpoint=os.path.join(tmp_dir, checkpoint_dir))
            (a1, b1) = trainer.model.a.item(), trainer.model.b.item()
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            self.assertAlmostEqual(a, a1, delta=1e-8)
            self.assertAlmostEqual(b, b1, delta=1e-8)
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    @slow
    @require_torch_non_multi_gpu
    def test_auto_batch_size_finder(self):

        if torch.cuda.is_available():
            torch.backends.cudnn.deterministic = True

        SRC_DIR = os.path.abspath(
            os.path.join(os.path.dirname(__file__), "..", "..", "examples", "pytorch", "text-classification")
        )
        sys.path.append(SRC_DIR)
        import run_glue

        with tempfile.TemporaryDirectory() as tmpdir:
            testargs = f"""
                run_glue.py
                --model_name_or_path distilbert-base-uncased
                --task_name mrpc
                --do_train
                --do_eval
                --max_seq_len 128
                --per_device_train_batch_size 4096
                --learning_rate 2e-5
                --num_train_epochs 1
                --output_dir {tmpdir}
                --auto_find_batch_size 0
                """.split()
            with self.assertRaises(RuntimeError):
                with patch.object(sys, "argv", testargs):
                    run_glue.main()

        testargs[-1] = "1"
        with patch.object(sys, "argv", testargs):
            run_glue.main()

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    # regression for this issue: https://github.com/huggingface/transformers/issues/12970
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    def test_training_with_resume_from_checkpoint_false(self):
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        train_dataset = RegressionDataset(length=128)
        eval_dataset = RegressionDataset()

        config = RegressionModelConfig(a=0, b=2)
        model = RegressionRandomPreTrainedModel(config)

        tmp_dir = self.get_auto_remove_tmp_dir()
        args = RegressionTrainingArguments(tmp_dir, save_steps=5, learning_rate=0.1)
        trainer = Trainer(model, args, train_dataset=train_dataset, eval_dataset=eval_dataset)

        trainer.train(resume_from_checkpoint=False)

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    @require_torch_up_to_2_gpus
    def test_resume_training_with_shard_checkpoint(self):
        # This test will fail for more than 2 GPUs since the batch size will get bigger and with the number of
        # save_steps, the checkpoint will resume training at epoch 2 or more (so the data seen by the model
        # won't be the same since the training dataloader is shuffled).

        with tempfile.TemporaryDirectory() as tmpdir:
            trainer = get_regression_trainer(output_dir=tmpdir, train_len=128, save_steps=5, learning_rate=0.1)
            trainer.train()
            (a, b) = trainer.model.a.item(), trainer.model.b.item()
            state = dataclasses.asdict(trainer.state)

            checkpoint = os.path.join(tmpdir, "checkpoint-5")
            self.convert_to_sharded_checkpoint(checkpoint)

            # Reinitialize trainer
            trainer = get_regression_trainer(output_dir=tmpdir, train_len=128, save_steps=5, learning_rate=0.1)

            trainer.train(resume_from_checkpoint=checkpoint)
            (a1, b1) = trainer.model.a.item(), trainer.model.b.item()
            state1 = dataclasses.asdict(trainer.state)
            self.assertEqual(a, a1)
            self.assertEqual(b, b1)
            self.check_trainer_state_are_the_same(state, state1)

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    def test_resume_training_with_gradient_accumulation(self):
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        # This test will fail for more than 2 GPUs since the batch size will get bigger and with the number of
        # save_steps, the checkpoint will resume training at epoch 2 or more (so the data seen by the model
        # won't be the same since the training dataloader is shuffled).

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        with tempfile.TemporaryDirectory() as tmpdir:
            trainer = get_regression_trainer(
                output_dir=tmpdir,
                train_len=128,
                gradient_accumulation_steps=2,
                per_device_train_batch_size=4,
                save_steps=5,
                learning_rate=0.1,
            )
            trainer.train()
            (a, b) = trainer.model.a.item(), trainer.model.b.item()
            state = dataclasses.asdict(trainer.state)

            checkpoint = os.path.join(tmpdir, "checkpoint-5")

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            # Reinitialize trainer
            trainer = get_regression_trainer(
                output_dir=tmpdir,
                train_len=128,
                gradient_accumulation_steps=2,
                per_device_train_batch_size=4,
                save_steps=5,
                learning_rate=0.1,
            )
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            trainer.train(resume_from_checkpoint=checkpoint)
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            (a1, b1) = trainer.model.a.item(), trainer.model.b.item()
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            state1 = dataclasses.asdict(trainer.state)
            self.assertEqual(a, a1)
            self.assertEqual(b, b1)
            self.check_trainer_state_are_the_same(state, state1)

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    def test_resume_training_with_frozen_params(self):
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        # This test will fail for more than 2 GPUs since the batch size will get bigger and with the number of
        # save_steps, the checkpoint will resume training at epoch 2 or more (so the data seen by the model
        # won't be the same since the training dataloader is shuffled).

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        with tempfile.TemporaryDirectory() as tmpdir:
            trainer = get_regression_trainer(
                output_dir=tmpdir,
                train_len=128,
                per_device_train_batch_size=4,
                save_steps=5,
                learning_rate=0.1,
            )
            trainer.model.a.requires_grad_(False)
            trainer.train()
            (a, b) = trainer.model.a.item(), trainer.model.b.item()
            state = dataclasses.asdict(trainer.state)

            checkpoint = os.path.join(tmpdir, "checkpoint-5")

            # Reinitialize trainer
            trainer = get_regression_trainer(
                output_dir=tmpdir,
                train_len=128,
                per_device_train_batch_size=4,
                save_steps=5,
                learning_rate=0.1,
            )
            trainer.model.a.requires_grad_(False)

            trainer.train(resume_from_checkpoint=checkpoint)

            self.assertFalse(trainer.model.a.requires_grad)
            (a1, b1) = trainer.model.a.item(), trainer.model.b.item()
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            state1 = dataclasses.asdict(trainer.state)
            self.assertEqual(a, a1)
            self.assertEqual(b, b1)
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            self.check_trainer_state_are_the_same(state, state1)
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    def test_load_best_model_at_end(self):
        total = int(self.n_epochs * 64 / self.batch_size)
        with tempfile.TemporaryDirectory() as tmpdir:
            trainer = get_regression_trainer(
                a=1.5,
                b=2.5,
                output_dir=tmpdir,
                learning_rate=0.1,
                eval_steps=5,
                evaluation_strategy="steps",
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                save_steps=5,
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                load_best_model_at_end=True,
            )
            self.assertFalse(trainer.args.greater_is_better)
            trainer.train()
            self.check_saved_checkpoints(tmpdir, 5, total)
            self.check_best_model_has_been_loaded(tmpdir, 5, total, trainer, "eval_loss")

        with tempfile.TemporaryDirectory() as tmpdir:
            trainer = get_regression_trainer(
                a=1.5,
                b=2.5,
                output_dir=tmpdir,
                learning_rate=0.1,
                eval_steps=5,
                evaluation_strategy="steps",
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                save_steps=5,
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                load_best_model_at_end=True,
                metric_for_best_model="accuracy",
                compute_metrics=AlmostAccuracy(),
            )
            self.assertTrue(trainer.args.greater_is_better)
            trainer.train()
            self.check_saved_checkpoints(tmpdir, 5, total)
            self.check_best_model_has_been_loaded(tmpdir, 5, total, trainer, "eval_accuracy", greater_is_better=True)

        with tempfile.TemporaryDirectory() as tmpdir:
            trainer = get_regression_trainer(
                a=1.5,
                b=2.5,
                output_dir=tmpdir,
                learning_rate=0.1,
                evaluation_strategy="epoch",
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                save_strategy="epoch",
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                load_best_model_at_end=True,
                metric_for_best_model="accuracy",
                compute_metrics=AlmostAccuracy(),
            )
            self.assertTrue(trainer.args.greater_is_better)
            trainer.train()
            self.check_saved_checkpoints(tmpdir, 64 // self.batch_size, total)
            self.check_best_model_has_been_loaded(
                tmpdir, 64 // self.batch_size, total, trainer, "eval_accuracy", greater_is_better=True
            )

        # Test this works with a non PreTrainedModel
        with tempfile.TemporaryDirectory() as tmpdir:
            trainer = get_regression_trainer(
                output_dir=tmpdir,
                learning_rate=0.1,
                eval_steps=5,
                evaluation_strategy="steps",
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                save_steps=5,
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                load_best_model_at_end=True,
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                pretrained=False,
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            )
            self.assertFalse(trainer.args.greater_is_better)
            trainer.train()
            self.check_saved_checkpoints(tmpdir, 5, total, is_pretrained=False)
            self.check_best_model_has_been_loaded(tmpdir, 5, total, trainer, "eval_loss", is_pretrained=False)

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    def test_trainer_eval_mrpc(self):
        MODEL_ID = "bert-base-cased-finetuned-mrpc"
        tokenizer = AutoTokenizer.from_pretrained(MODEL_ID)
        model = AutoModelForSequenceClassification.from_pretrained(MODEL_ID)
        data_args = GlueDataTrainingArguments(
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            task_name="mrpc", data_dir=f"{get_tests_dir()}/fixtures/tests_samples/MRPC", overwrite_cache=True
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        )
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        eval_dataset = GlueDataset(data_args, tokenizer=tokenizer, mode="dev")
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        training_args = TrainingArguments(output_dir="./examples", no_cuda=True)
        trainer = Trainer(model=model, args=training_args, eval_dataset=eval_dataset)
        result = trainer.evaluate()
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        self.assertLess(result["eval_loss"], 0.2)
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    @slow
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    def test_trainer_eval_lm(self):
        MODEL_ID = "distilroberta-base"
        tokenizer = AutoTokenizer.from_pretrained(MODEL_ID)
        dataset = LineByLineTextDataset(
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            tokenizer=tokenizer,
            file_path=PATH_SAMPLE_TEXT,
            block_size=tokenizer.max_len_single_sentence,
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        )
        self.assertEqual(len(dataset), 31)
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    def test_training_iterable_dataset(self):
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        config = RegressionModelConfig()
        model = RegressionPreTrainedModel(config)
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        # Adding one column not used by the model should have no impact
        train_dataset = SampleIterableDataset(label_names=["labels", "extra"])
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        args = RegressionTrainingArguments(output_dir="./examples", max_steps=4)
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        trainer = Trainer(model=model, args=args, train_dataset=train_dataset)
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        trainer.train()
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        self.assertEqual(trainer.state.global_step, 4)
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        loader = trainer.get_train_dataloader()
        self.assertIsInstance(loader, torch.utils.data.DataLoader)
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        self.assertIsInstance(loader.sampler, torch.utils.data.dataloader._InfiniteConstantSampler)

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    def test_training_finite_iterable_dataset(self):
        config = RegressionModelConfig()
        model = RegressionPreTrainedModel(config)

        batch_size = 1
        num_samples = 10

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        available_steps = num_samples // batch_size
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        data = FiniteIterableDataset(length=num_samples)
        train_args = TrainingArguments(
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            "..",
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            max_steps=available_steps + 1,  # set a higher number than actually available
            per_device_train_batch_size=batch_size,
        )
        trainer = Trainer(model, train_dataset=data, args=train_args)
        with self.assertLogs("transformers.trainer", level="WARNING") as logs:
            trainer.train()
        self.assertIn(f"stopping training at step {available_steps}!", logs.output[0])

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    def test_evaluation_iterable_dataset(self):
        config = RegressionModelConfig(a=1.5, b=2.5)
        model = RegressionPreTrainedModel(config)
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        # Adding one column not used by the model should have no impact
        eval_dataset = SampleIterableDataset(label_names=["labels", "extra"])
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        args = RegressionTrainingArguments(output_dir="./examples")
        trainer = Trainer(model=model, args=args, eval_dataset=eval_dataset, compute_metrics=AlmostAccuracy())
        results = trainer.evaluate()
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        x, y = trainer.eval_dataset.dataset.x, trainer.eval_dataset.dataset.ys[0]
        pred = 1.5 * x + 2.5
        expected_loss = ((pred - y) ** 2).mean()
        self.assertAlmostEqual(results["eval_loss"], expected_loss)
        expected_acc = AlmostAccuracy()((pred, y))["accuracy"]
        self.assertAlmostEqual(results["eval_accuracy"], expected_acc)
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        # With a number of elements not a round multiple of the batch size
        eval_dataset = SampleIterableDataset(length=66)
        results = trainer.evaluate(eval_dataset)
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        x, y = eval_dataset.dataset.x, eval_dataset.dataset.ys[0]
        pred = 1.5 * x + 2.5
        expected_loss = ((pred - y) ** 2).mean()
        self.assertAlmostEqual(results["eval_loss"], expected_loss)
        expected_acc = AlmostAccuracy()((pred, y))["accuracy"]
        self.assertAlmostEqual(results["eval_accuracy"], expected_acc)

    def test_predict_iterable_dataset(self):
        config = RegressionModelConfig(a=1.5, b=2.5)
        model = RegressionPreTrainedModel(config)
        eval_dataset = SampleIterableDataset()

        args = RegressionTrainingArguments(output_dir="./examples")
        trainer = Trainer(model=model, args=args, eval_dataset=eval_dataset, compute_metrics=AlmostAccuracy())

        preds = trainer.predict(trainer.eval_dataset).predictions
        x = eval_dataset.dataset.x
        self.assertTrue(np.allclose(preds, 1.5 * x + 2.5))

        # With a number of elements not a round multiple of the batch size
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        # Adding one column not used by the model should have no impact
        test_dataset = SampleIterableDataset(length=66, label_names=["labels", "extra"])
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        preds = trainer.predict(test_dataset).predictions
        x = test_dataset.dataset.x
        self.assertTrue(np.allclose(preds, 1.5 * x + 2.5))
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    def test_num_train_epochs_in_training(self):
        # len(train_dl) < gradient_accumulation_steps shouldn't give ``ZeroDivisionError`` when ``max_steps`` is given.
        # It should give 1 update step for each epoch.
        trainer = get_regression_trainer(
            max_steps=3, train_len=64, per_device_train_batch_size=16, gradient_accumulation_steps=5
        )
        train_output = trainer.train()
        self.assertEqual(train_output.global_step, 3)

        # Even ``max_steps`` is not specified, we still expect 1 update step for each epoch if
        # len(train_dl) < gradient_accumulation_steps.
        trainer = get_regression_trainer(train_len=64, per_device_train_batch_size=16, gradient_accumulation_steps=5)
        train_output = trainer.train()
        self.assertEqual(train_output.global_step, int(self.n_epochs))
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    def test_early_stopping_callback(self):
        # early stopping stops training before num_training_epochs
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        with tempfile.TemporaryDirectory() as tmp_dir:
            trainer = get_regression_trainer(
                output_dir=tmp_dir,
                num_train_epochs=20,
                gradient_accumulation_steps=1,
                per_device_train_batch_size=16,
                load_best_model_at_end=True,
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                evaluation_strategy=IntervalStrategy.EPOCH,
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                save_strategy=IntervalStrategy.EPOCH,
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                compute_metrics=AlmostAccuracy(),
                metric_for_best_model="accuracy",
            )
            trainer.add_callback(EarlyStoppingCallback(1, 0.0001))
            train_output = trainer.train()
            self.assertLess(train_output.global_step, 20 * 64 / 16)
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        # Invalid inputs to trainer with early stopping callback result in assertion error
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        with tempfile.TemporaryDirectory() as tmp_dir:
            trainer = get_regression_trainer(
                output_dir=tmp_dir,
                num_train_epochs=20,
                gradient_accumulation_steps=1,
                per_device_train_batch_size=16,
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                evaluation_strategy=IntervalStrategy.EPOCH,
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                compute_metrics=AlmostAccuracy(),
                metric_for_best_model="accuracy",
            )
            trainer.add_callback(EarlyStoppingCallback(1))
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            self.assertEqual(trainer.state.global_step, 0)
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            try:
                trainer.train()
            except AssertionError:
                self.assertEqual(trainer.state.global_step, 0)
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    def test_flos_extraction(self):
        trainer = get_regression_trainer(learning_rate=0.1)

        def assert_flos_extraction(trainer, wrapped_model_to_check):
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            self.assertEqual(trainer.model, unwrap_model(wrapped_model_to_check))
            self.assertGreaterEqual(getattr(unwrap_model(wrapped_model_to_check).config, "total_flos", 0), 0)
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        # with plain model
        assert_flos_extraction(trainer, trainer.model)

        # with enforced DataParallel
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        assert_flos_extraction(trainer, nn.DataParallel(trainer.model))
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        trainer.train()
        self.assertTrue(isinstance(trainer.state.total_flos, float))

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    def check_checkpoint_deletion(self, trainer, output_dir, expected):
        # Make fake checkpoints
        for n in [5, 10, 15, 20, 25]:
            os.makedirs(os.path.join(output_dir, f"{PREFIX_CHECKPOINT_DIR}-{n}"), exist_ok=True)
        trainer._rotate_checkpoints(output_dir=output_dir)
        glob_checkpoints = [str(x) for x in Path(output_dir).glob(f"{PREFIX_CHECKPOINT_DIR}-*")]
        values = [int(re.match(f".*{PREFIX_CHECKPOINT_DIR}-([0-9]+)", d).groups()[0]) for d in glob_checkpoints]
        self.assertSetEqual(set(values), set(expected))

    def test_checkpoint_rotation(self):
        with tempfile.TemporaryDirectory() as tmp_dir:
            # Without best model at end
            trainer = get_regression_trainer(output_dir=tmp_dir, save_total_limit=2)
            self.check_checkpoint_deletion(trainer, tmp_dir, [20, 25])

            # With best model at end
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            trainer = get_regression_trainer(
                output_dir=tmp_dir, evaluation_strategy="steps", load_best_model_at_end=True, save_total_limit=2
            )
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            trainer.state.best_model_checkpoint = os.path.join(tmp_dir, "checkpoint-5")
            self.check_checkpoint_deletion(trainer, tmp_dir, [5, 25])

            # Edge case: we don't always honor save_total_limit=1 if load_best_model_at_end=True to be able to resume
            # from checkpoint
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            trainer = get_regression_trainer(
                output_dir=tmp_dir, evaluation_strategy="steps", load_best_model_at_end=True, save_total_limit=1
            )
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            trainer.state.best_model_checkpoint = os.path.join(tmp_dir, "checkpoint-25")
            self.check_checkpoint_deletion(trainer, tmp_dir, [25])

            trainer.state.best_model_checkpoint = os.path.join(tmp_dir, "checkpoint-5")
            self.check_checkpoint_deletion(trainer, tmp_dir, [5, 25])

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    def check_mem_metrics(self, trainer, check_func):
        metrics = trainer.train().metrics
        check_func("init_mem_cpu_alloc_delta", metrics)
        check_func("train_mem_cpu_alloc_delta", metrics)
        if torch.cuda.device_count() > 0:
            check_func("init_mem_gpu_alloc_delta", metrics)
            check_func("train_mem_gpu_alloc_delta", metrics)

        metrics = trainer.evaluate()
        check_func("eval_mem_cpu_alloc_delta", metrics)
        if torch.cuda.device_count() > 0:
            check_func("eval_mem_gpu_alloc_delta", metrics)

        metrics = trainer.predict(RegressionDataset()).metrics
        check_func("test_mem_cpu_alloc_delta", metrics)
        if torch.cuda.device_count() > 0:
            check_func("test_mem_gpu_alloc_delta", metrics)

    def test_mem_metrics(self):

        # with mem metrics enabled
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        trainer = get_regression_trainer(skip_memory_metrics=False)
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        self.check_mem_metrics(trainer, self.assertIn)

        # with mem metrics disabled
        trainer = get_regression_trainer(skip_memory_metrics=True)
        self.check_mem_metrics(trainer, self.assertNotIn)

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    @require_torch_gpu
    def test_fp16_full_eval(self):

        # this is a sensitive test so let's keep debugging printouts in place for quick diagnosis.
        # it's using pretty large safety margins, but small enough to detect broken functionality.
        debug = 0
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        n_gpus = get_gpu_count()
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        bs = 8
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        eval_len = 16 * n_gpus
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        # make the params somewhat big so that there will be enough RAM consumed to be able to
        # measure things. We should get about 64KB for a+b in fp32
        a = torch.ones(1000, bs) + 0.001
        b = torch.ones(1000, bs) - 0.001

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        trainer = get_regression_trainer(a=a, b=b, eval_len=eval_len, skip_memory_metrics=False)
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        metrics = trainer.evaluate()
        del trainer
        gc.collect()

        fp32_init = metrics["init_mem_gpu_alloc_delta"]
        fp32_eval = metrics["eval_mem_gpu_alloc_delta"]

        if debug:
            print(f"fp32_init {fp32_init}")
            print(f"fp32_eval {fp32_eval}")

        # here we expect the model to be preloaded in trainer.__init__ and consume around 64K gpu ram.
        # perfect world: fp32_init == 64<<10
        self.assertGreater(fp32_init, 59_000)
        # after eval should be no extra memory allocated - with a small margin (other than the peak
        # memory consumption for the forward calculation that gets recovered)
        # perfect world: fp32_eval == close to zero
        self.assertLess(fp32_eval, 5_000)

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        trainer = get_regression_trainer(a=a, b=b, eval_len=eval_len, fp16_full_eval=True, skip_memory_metrics=False)
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        metrics = trainer.evaluate()
        fp16_init = metrics["init_mem_gpu_alloc_delta"]
        fp16_eval = metrics["eval_mem_gpu_alloc_delta"]

        if debug:
            print(f"fp16_init {fp16_init}")
            print(f"fp16_eval {fp16_eval}")

        # here we expect the model to not be preloaded in trainer.__init__, so with a small margin it should be close to 0
        # perfect world: fp16_init == close to zero
        self.assertLess(fp16_init, 5_000)
        # here we put the model on device in eval and only `half()` of it, i.e. about 32K,(again we ignore the peak margin which gets returned back)
        # perfect world: fp32_init == 32<<10
        self.assertGreater(fp16_eval, 27_000)

        # 3. relative comparison fp32 vs full fp16
        # should be about half of fp16_init
        # perfect world: fp32_init/2 == fp16_eval
        self.assertAlmostEqual(fp16_eval, fp32_init / 2, delta=5_000)

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    @require_torch_non_multi_gpu
    @require_torchdynamo
    def test_torchdynamo_full_eval(self):
        # torchdynamo at the moment doesn't support DP/DDP, therefore require a single gpu
        n_gpus = get_gpu_count()

        bs = 8
        eval_len = 16 * n_gpus
        # make the params are somewhat big so that there will be enough RAM consumed to be able to
        # measure things. We should get about 64KB for a+b in fp32
        a = torch.ones(1000, bs) + 0.001
        b = torch.ones(1000, bs) - 0.001

        # 1. Default - without TorchDynamo
        trainer = get_regression_trainer(a=a, b=b, eval_len=eval_len)
        metrics = trainer.evaluate()
        original_eval_loss = metrics["eval_loss"]
        del trainer

        # 2. TorchDynamo eager
        trainer = get_regression_trainer(a=a, b=b, eval_len=eval_len, torchdynamo="eager")
        metrics = trainer.evaluate()
        self.assertAlmostEqual(metrics["eval_loss"], original_eval_loss)
        del trainer

        # 3. TorchDynamo nvfuser
        trainer = get_regression_trainer(a=a, b=b, eval_len=eval_len, torchdynamo="nvfuser")
        metrics = trainer.evaluate()
        self.assertAlmostEqual(metrics["eval_loss"], original_eval_loss)

    @require_torch_non_multi_gpu
    @require_torchdynamo
    def test_torchdynamo_memory(self):
        # torchdynamo at the moment doesn't support DP/DDP, therefore require a single gpu
        class CustomTrainer(Trainer):
            def compute_loss(self, model, inputs, return_outputs=False):
                x = inputs["x"]
                output = model(x)
                if self.args.n_gpu == 1:
                    return output.mean()
                return output

        class MyModule(torch.nn.Module):
            """Simple module that does aggressive fusion"""

            def __init__(self):
                super().__init__()

            def forward(self, x):
                for _ in range(20):
                    x = torch.nn.functional.relu(x)
                return x

        mod = MyModule()

        # 1. Default - without TorchDynamo
        a = torch.ones(1024, 1024, device="cuda", requires_grad=True)
        a.grad = None
        trainer = CustomTrainer(model=mod)
        # warmup
        for _ in range(10):
            orig_loss = trainer.training_step(mod, {"x": a})

        torch.cuda.reset_peak_memory_stats()
        orig_loss = trainer.training_step(mod, {"x": a})
        orig_peak_mem = torch.cuda.max_memory_allocated()
        del trainer

        # Reset the peak for another measurement
        gc.collect()
        torch.cuda.empty_cache()
        torch.cuda.reset_peak_memory_stats()

        # 2. TorchDynamo nvfuser
        a = torch.ones(1024, 1024, device="cuda", requires_grad=True)
        a.grad = None
        args = TrainingArguments(output_dir="None", torchdynamo="nvfuser")
        trainer = CustomTrainer(model=mod, args=args)
        # warmup
        for _ in range(10):
            loss = trainer.training_step(mod, {"x": a})

        torch.cuda.reset_peak_memory_stats()
        loss = trainer.training_step(mod, {"x": a})
        peak_mem = torch.cuda.max_memory_allocated()
        del trainer

        # Functional check
        self.assertAlmostEqual(loss, orig_loss)

        # AOT Autograd recomputaion and nvfuser recomputation optimization
        # aggressively fuses the operations and reduce the memory footprint.
        self.assertGreater(orig_peak_mem, peak_mem * 2)

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    @require_torch_gpu
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    @require_torch_bf16_gpu
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    def test_bf16_full_eval(self):
        # note: most of the logic is the same as test_fp16_full_eval

        # this is a sensitive test so let's keep debugging printouts in place for quick diagnosis.
        # it's using pretty large safety margins, but small enough to detect broken functionality.
        debug = 0
        n_gpus = get_gpu_count()

        bs = 8
        eval_len = 16 * n_gpus
        # make the params somewhat big so that there will be enough RAM consumed to be able to
        # measure things. We should get about 64KB for a+b in fp32
        a = torch.ones(1000, bs) + 0.001
        b = torch.ones(1000, bs) - 0.001

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        # 1. with bf16_full_eval disabled
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        trainer = get_regression_trainer(a=a, b=b, eval_len=eval_len, skip_memory_metrics=False)
        metrics = trainer.evaluate()
        del trainer
        gc.collect()

        fp32_init = metrics["init_mem_gpu_alloc_delta"]
        fp32_eval = metrics["eval_mem_gpu_alloc_delta"]

        if debug:
            print(f"fp32_init {fp32_init}")
            print(f"fp32_eval {fp32_eval}")

        # here we expect the model to be preloaded in trainer.__init__ and consume around 64K gpu ram.
        # perfect world: fp32_init == 64<<10
        self.assertGreater(fp32_init, 59_000)
        # after eval should be no extra memory allocated - with a small margin (other than the peak
        # memory consumption for the forward calculation that gets recovered)
        # perfect world: fp32_eval == close to zero
        self.assertLess(fp32_eval, 5_000)

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        # 2. with bf16_full_eval enabled
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        trainer = get_regression_trainer(a=a, b=b, eval_len=eval_len, bf16_full_eval=True, skip_memory_metrics=False)
        metrics = trainer.evaluate()
        bf16_init = metrics["init_mem_gpu_alloc_delta"]
        bf16_eval = metrics["eval_mem_gpu_alloc_delta"]

        if debug:
            print(f"bf16_init {bf16_init}")
            print(f"bf16_eval {bf16_eval}")

        # here we expect the model to not be preloaded in trainer.__init__, so with a small margin it should be close to 0
        # perfect world: bf16_init == close to zero
        self.assertLess(bf16_init, 5_000)
        # here we put the model on device in eval and only `half()` of it, i.e. about 32K,(again we ignore the peak margin which gets returned back)
        # perfect world: fp32_init == 32<<10
        self.assertGreater(bf16_eval, 27_000)

        # 3. relative comparison fp32 vs full bf16
        # should be about half of bf16_init
        # perfect world: fp32_init/2 == bf16_eval
        self.assertAlmostEqual(bf16_eval, fp32_init / 2, delta=5_000)

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    def test_no_wd_param_group(self):
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        model = nn.Sequential(TstLayer(128), nn.ModuleList([TstLayer(128), TstLayer(128)]))
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        trainer = Trainer(model=model)
        trainer.create_optimizer_and_scheduler(10)
        # fmt: off
        wd_names = ['0.linear1.weight', '0.linear2.weight', '1.0.linear1.weight', '1.0.linear2.weight', '1.1.linear1.weight', '1.1.linear2.weight']
        # fmt: on
        wd_params = [p for n, p in model.named_parameters() if n in wd_names]
        no_wd_params = [p for n, p in model.named_parameters() if n not in wd_names]
        self.assertListEqual(trainer.optimizer.param_groups[0]["params"], wd_params)
        self.assertListEqual(trainer.optimizer.param_groups[1]["params"], no_wd_params)

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@require_torch
@is_staging_test
class TrainerIntegrationWithHubTester(unittest.TestCase):
    @classmethod
    def setUpClass(cls):
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        cls._token = TOKEN
        set_access_token(TOKEN)
        HfFolder.save_token(TOKEN)
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    @classmethod
    def tearDownClass(cls):
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        for model in ["test-trainer", "test-trainer-epoch", "test-trainer-step"]:
            try:
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                delete_repo(token=cls._token, repo_id=model)
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            except HTTPError:
                pass
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        try:
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            delete_repo(token=cls._token, repo_id="valid_org/test-trainer-org")
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        except HTTPError:
            pass

    def test_push_to_hub(self):
        with tempfile.TemporaryDirectory() as tmp_dir:
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            trainer = get_regression_trainer(
                output_dir=os.path.join(tmp_dir, "test-trainer"),
                push_to_hub=True,
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                hub_token=self._token,
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            )
            url = trainer.push_to_hub()
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            # Extract repo_name from the url
            re_search = re.search(ENDPOINT_STAGING + r"/([^/]+/[^/]+)/", url)
            self.assertTrue(re_search is not None)
            repo_name = re_search.groups()[0]

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            self.assertEqual(repo_name, f"{USER}/test-trainer")
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            model = RegressionPreTrainedModel.from_pretrained(repo_name)
            self.assertEqual(model.a.item(), trainer.model.a.item())
            self.assertEqual(model.b.item(), trainer.model.b.item())

    def test_push_to_hub_in_organization(self):
        with tempfile.TemporaryDirectory() as tmp_dir:
            trainer = get_regression_trainer(output_dir=tmp_dir)
            trainer.save_model()
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            trainer = get_regression_trainer(
                output_dir=os.path.join(tmp_dir, "test-trainer-org"),
                push_to_hub=True,
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                hub_model_id="valid_org/test-trainer-org",
                hub_token=self._token,
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            )
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            url = trainer.push_to_hub()
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            # Extract repo_name from the url
            re_search = re.search(ENDPOINT_STAGING + r"/([^/]+/[^/]+)/", url)
            self.assertTrue(re_search is not None)
            repo_name = re_search.groups()[0]
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            self.assertEqual(repo_name, "valid_org/test-trainer-org")
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            model = RegressionPreTrainedModel.from_pretrained("valid_org/test-trainer-org")
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            self.assertEqual(model.a.item(), trainer.model.a.item())
            self.assertEqual(model.b.item(), trainer.model.b.item())

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    def get_commit_history(self, repo):
        commit_logs = subprocess.run(
            "git log".split(),
            stderr=subprocess.PIPE,
            stdout=subprocess.PIPE,
            check=True,
            encoding="utf-8",
            cwd=repo,
        ).stdout
        commits = commit_logs.split("\n\n")[1::2]
        return [commit.strip() for commit in commits]

    def test_push_to_hub_with_saves_each_epoch(self):
        with tempfile.TemporaryDirectory() as tmp_dir:
            trainer = get_regression_trainer(
                output_dir=os.path.join(tmp_dir, "test-trainer-epoch"),
                push_to_hub=True,
                hub_token=self._token,
                save_strategy="epoch",
            )
            trainer.train()

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            # Wait for the async pushes to be finished
            while trainer.push_in_progress is not None and not trainer.push_in_progress.is_done:
                time.sleep(0.5)

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        with tempfile.TemporaryDirectory() as tmp_dir:
            _ = Repository(tmp_dir, clone_from=f"{USER}/test-trainer-epoch", use_auth_token=self._token)
            commits = self.get_commit_history(tmp_dir)
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            self.assertIn("initial commit", commits)
            # We can't test that epoch 2 and 3 are in the commits without being flaky as those might be skipped if
            # the push for epoch 1 wasn't finished at the time.
            self.assertIn("Training in progress, epoch 1", commits)
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    def test_push_to_hub_with_saves_each_n_steps(self):
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        num_gpus = max(1, get_gpu_count())
        if num_gpus > 2:
            return

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        with tempfile.TemporaryDirectory() as tmp_dir:
            trainer = get_regression_trainer(
                output_dir=os.path.join(tmp_dir, "test-trainer-step"),
                push_to_hub=True,
                hub_token=self._token,
                save_strategy="steps",
                save_steps=5,
            )
            trainer.train()

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            # Wait for the async pushes to be finished
            while trainer.push_in_progress is not None and not trainer.push_in_progress.is_done:
                time.sleep(0.5)

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        with tempfile.TemporaryDirectory() as tmp_dir:
            _ = Repository(tmp_dir, clone_from=f"{USER}/test-trainer-step", use_auth_token=self._token)
            commits = self.get_commit_history(tmp_dir)
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            self.assertIn("initial commit", commits)
            # We can't test that epoch 2 and 3 are in the commits without being flaky as those might be skipped if
            # the push for epoch 1 wasn't finished at the time.
            self.assertIn("Training in progress, step 5", commits)
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@require_torch
@require_optuna
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class TrainerHyperParameterOptunaIntegrationTest(unittest.TestCase):
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    def setUp(self):
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        args = TrainingArguments("..")
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        self.n_epochs = args.num_train_epochs
        self.batch_size = args.train_batch_size

    def test_hyperparameter_search(self):
        class MyTrialShortNamer(TrialShortNamer):
            DEFAULTS = {"a": 0, "b": 0}

        def hp_space(trial):
            return {}

        def model_init(trial):
            if trial is not None:
                a = trial.suggest_int("a", -4, 4)
                b = trial.suggest_int("b", -4, 4)
            else:
                a = 0
                b = 0
            config = RegressionModelConfig(a=a, b=b, double_output=False)

            return RegressionPreTrainedModel(config)

        def hp_name(trial):
            return MyTrialShortNamer.shortname(trial.params)

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        with tempfile.TemporaryDirectory() as tmp_dir:
            trainer = get_regression_trainer(
                output_dir=tmp_dir,
                learning_rate=0.1,
                logging_steps=1,
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                evaluation_strategy=IntervalStrategy.EPOCH,
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                save_strategy=IntervalStrategy.EPOCH,
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                num_train_epochs=4,
                disable_tqdm=True,
                load_best_model_at_end=True,
                logging_dir="runs",
                run_name="test",
                model_init=model_init,
            )
            trainer.hyperparameter_search(direction="minimize", hp_space=hp_space, hp_name=hp_name, n_trials=4)
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@require_torch
@require_ray
class TrainerHyperParameterRayIntegrationTest(unittest.TestCase):
    def setUp(self):
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        args = TrainingArguments("..")
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        self.n_epochs = args.num_train_epochs
        self.batch_size = args.train_batch_size

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    def ray_hyperparameter_search(self):
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        class MyTrialShortNamer(TrialShortNamer):
            DEFAULTS = {"a": 0, "b": 0}

        def hp_space(trial):
            from ray import tune

            return {
                "a": tune.randint(-4, 4),
                "b": tune.randint(-4, 4),
            }

        def model_init(config):
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            if config is None:
                a = 0
                b = 0
            else:
                a = config["a"]
                b = config["b"]
            model_config = RegressionModelConfig(a=a, b=b, double_output=False)
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            return RegressionPreTrainedModel(model_config)

        def hp_name(params):
            return MyTrialShortNamer.shortname(params)

        with tempfile.TemporaryDirectory() as tmp_dir:
            trainer = get_regression_trainer(
                output_dir=tmp_dir,
                learning_rate=0.1,
                logging_steps=1,
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                evaluation_strategy=IntervalStrategy.EPOCH,
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                save_strategy=IntervalStrategy.EPOCH,
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                num_train_epochs=4,
                disable_tqdm=True,
                load_best_model_at_end=True,
                logging_dir="runs",
                run_name="test",
                model_init=model_init,
            )
            trainer.hyperparameter_search(
                direction="minimize", hp_space=hp_space, hp_name=hp_name, backend="ray", n_trials=4
            )
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    def test_hyperparameter_search(self):
        self.ray_hyperparameter_search()

    def test_hyperparameter_search_ray_client(self):
        import ray
        from ray.util.client.ray_client_helpers import ray_start_client_server

        with ray_start_client_server():
            assert ray.util.client.ray.is_connected()
            self.ray_hyperparameter_search()
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@require_torch
@require_sigopt
class TrainerHyperParameterSigOptIntegrationTest(unittest.TestCase):
    def setUp(self):
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        args = TrainingArguments("..")
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        self.n_epochs = args.num_train_epochs
        self.batch_size = args.train_batch_size

    def test_hyperparameter_search(self):
        class MyTrialShortNamer(TrialShortNamer):
            DEFAULTS = {"a": 0, "b": 0}

        def hp_space(trial):
            return [
                {"bounds": {"min": -4, "max": 4}, "name": "a", "type": "int"},
                {"bounds": {"min": -4, "max": 4}, "name": "b", "type": "int"},
            ]

        def model_init(trial):
            if trial is not None:
                a = trial.assignments["a"]
                b = trial.assignments["b"]
            else:
                a = 0
                b = 0
            config = RegressionModelConfig(a=a, b=b, double_output=False)

            return RegressionPreTrainedModel(config)

        def hp_name(trial):
            return MyTrialShortNamer.shortname(trial.assignments)

        with tempfile.TemporaryDirectory() as tmp_dir:
            trainer = get_regression_trainer(
                output_dir=tmp_dir,
                learning_rate=0.1,
                logging_steps=1,
                evaluation_strategy=IntervalStrategy.EPOCH,
                save_strategy=IntervalStrategy.EPOCH,
                num_train_epochs=4,
                disable_tqdm=True,
                load_best_model_at_end=True,
                logging_dir="runs",
                run_name="test",
                model_init=model_init,
            )
            trainer.hyperparameter_search(
                direction="minimize", hp_space=hp_space, hp_name=hp_name, backend="sigopt", n_trials=4
            )
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optim_test_params = []
if is_torch_available():
    default_adam_kwargs = {
        "betas": (TrainingArguments.adam_beta1, TrainingArguments.adam_beta2),
        "eps": TrainingArguments.adam_epsilon,
        "lr": TrainingArguments.learning_rate,
    }

    optim_test_params = [
        (
            OptimizerNames.ADAMW_HF,
            transformers.optimization.AdamW,
            default_adam_kwargs,
        ),
        (
            OptimizerNames.ADAMW_HF.value,
            transformers.optimization.AdamW,
            default_adam_kwargs,
        ),
        (
            OptimizerNames.ADAMW_TORCH,
            torch.optim.AdamW,
            default_adam_kwargs,
        ),
        (
            OptimizerNames.ADAFACTOR,
            transformers.optimization.Adafactor,
            {
                "scale_parameter": False,
                "relative_step": False,
                "lr": TrainingArguments.learning_rate,
            },
        ),
    ]
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    if is_apex_available():
        import apex

        optim_test_params.append(
            (
                OptimizerNames.ADAMW_APEX_FUSED,
                apex.optimizers.FusedAdam,
                default_adam_kwargs,
            )
        )

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    if is_bitsandbytes_available():
        import bitsandbytes as bnb

        optim_test_params.append(
            (
                OptimizerNames.ADAMW_BNB,
                bnb.optim.Adam8bit,
                default_adam_kwargs,
            )
        )

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@require_torch
class TrainerOptimizerChoiceTest(unittest.TestCase):
    def check_optim_and_kwargs(self, optim: OptimizerNames, mandatory_kwargs, expected_cls):
        args = TrainingArguments(optim=optim, output_dir="None")
        actual_cls, optim_kwargs = Trainer.get_optimizer_cls_and_kwargs(args)
        self.assertEqual(expected_cls, actual_cls)
        self.assertIsNotNone(optim_kwargs)

        for p, v in mandatory_kwargs.items():
            self.assertTrue(p in optim_kwargs)
            actual_v = optim_kwargs[p]
            self.assertTrue(actual_v == v, f"Failed check for {p}. Expected {v}, but got {actual_v}.")

    @parameterized.expand(optim_test_params, skip_on_empty=True)
    def test_optim_supported(self, name: str, expected_cls, mandatory_kwargs):
        # exercises all the valid --optim options
        self.check_optim_and_kwargs(name, mandatory_kwargs, expected_cls)

        trainer = get_regression_trainer(optim=name)
        trainer.train()

    def test_fused_adam(self):
        # Pretend that apex is installed and mock apex.optimizers.FusedAdam exists.
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        # Trainer.get_optimizer_cls_and_kwargs does not use FusedAdam. It only has to return the
        # class given, so mocking apex.optimizers.FusedAdam should be fine for testing and allow
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        # the test to run without requiring an apex installation.
        mock = Mock()
        modules = {
            "apex": mock,
            "apex.optimizers": mock.optimizers,
            "apex.optimizers.FusedAdam": mock.optimizers.FusedAdam,
        }
        with patch.dict("sys.modules", modules):
            self.check_optim_and_kwargs(
                OptimizerNames.ADAMW_APEX_FUSED,
                default_adam_kwargs,
                mock.optimizers.FusedAdam,
            )

    def test_fused_adam_no_apex(self):
        args = TrainingArguments(optim=OptimizerNames.ADAMW_APEX_FUSED, output_dir="None")

        # Pretend that apex does not exist, even if installed. By setting apex to None, importing
        # apex will fail even if apex is installed.
        with patch.dict("sys.modules", {"apex.optimizers": None}):
            with self.assertRaises(ValueError):
                Trainer.get_optimizer_cls_and_kwargs(args)
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    def test_bnb_adam8bit(self):
        # Pretend that Bits and Bytes is installed and mock bnb.optim.Adam8bit exists.
        # Trainer.get_optimizer_cls_and_kwargs does not use Adam8bit. It only has to return the
        # class given, so mocking bnb.optim.Adam8bit should be fine for testing and allow
        # the test to run without requiring a bnb installation.
        mock = Mock()
        modules = {
            "bitsandbytes": mock,
            "bitsandbytes.optim": mock.optim,
            "bitsandbytes.optim.Adam8bit": mock.optim.Adam8bit,
        }
        with patch.dict("sys.modules", modules):
            self.check_optim_and_kwargs(
                OptimizerNames.ADAMW_BNB,
                default_adam_kwargs,
                mock.optim.Adam8bit,
            )

    def test_bnb_adam8bit_no_bnb(self):
        args = TrainingArguments(optim=OptimizerNames.ADAMW_BNB, output_dir="None")

        # Pretend that bnb does not exist, even if installed. By setting bnb to None, importing
        # bnb will fail even if bnb is installed.
        with patch.dict("sys.modules", {"bnb.optim": None}):
            with self.assertRaises(ValueError):
                Trainer.get_optimizer_cls_and_kwargs(args)

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@require_torch
@require_wandb
class TrainerHyperParameterWandbIntegrationTest(unittest.TestCase):
    def setUp(self):
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        args = TrainingArguments("..")
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        self.n_epochs = args.num_train_epochs
        self.batch_size = args.train_batch_size

    def test_hyperparameter_search(self):
        class MyTrialShortNamer(TrialShortNamer):
            DEFAULTS = {"a": 0, "b": 0}

        def hp_space(trial):

            return {
                "method": "random",
                "metric": {},
                "parameters": {
                    "a": {"distribution": "uniform", "min": 1e-6, "max": 1e-4},
                    "b": {"distribution": "int_uniform", "min": 1, "max": 6},
                },
            }

        def model_init(config):
            if config is None:
                a = 0
                b = 0
            else:
                a = config["a"]
                b = config["b"]
            model_config = RegressionModelConfig(a=a, b=b, double_output=False)

            return RegressionPreTrainedModel(model_config)

        def hp_name(params):
            return MyTrialShortNamer.shortname(params)

        with tempfile.TemporaryDirectory() as tmp_dir:
            trainer = get_regression_trainer(
                output_dir=tmp_dir,
                learning_rate=0.1,
                logging_steps=1,
                evaluation_strategy=IntervalStrategy.EPOCH,
                save_strategy=IntervalStrategy.EPOCH,
                num_train_epochs=4,
                disable_tqdm=True,
                load_best_model_at_end=True,
                logging_dir="runs",
                run_name="test",
                model_init=model_init,
            )
            trainer.hyperparameter_search(
                direction="minimize", hp_space=hp_space, hp_name=hp_name, backend="wandb", n_trials=4, anonymous="must"
            )