test_checkpointing.py 16.2 KB
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import torch
import deepspeed
from deepspeed.pt.deepspeed_zero_optimizer import FP16_DeepSpeedZeroOptimizer
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from deepspeed.pt.zero_optimizer_stage1 import FP16_DeepSpeedZeroOptimizer_Stage1
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from deepspeed.pt.fp16_optimizer import FP16_Optimizer
from deepspeed.pt.fp16_unfused_optimizer import FP16_UnfusedOptimizer

import argparse
import pytest
import json
import os
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import numbers
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from common import distributed_test
from simple_model import SimpleModel, random_dataloader, args_from_dict


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def compare_deepspeed_states(saved_model, loaded_model):
    # These are compared in more depth in other places
    assert hasattr(loaded_model, 'module')

    assert saved_model.csr_tensor_module_names == loaded_model.csr_tensor_module_names
    assert saved_model.skipped_steps == loaded_model.skipped_steps
    assert saved_model.global_steps == loaded_model.global_steps


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def compare_model_states(saved_model, loaded_model):
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    compare_deepspeed_states(saved_model, loaded_model)

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    for p0, p1 in zip(saved_model.module.parameters(), loaded_model.module.parameters()):
        assert torch.allclose(p0,p1,atol=1e-07), f"FP16 model state {p0} is not equal to {p1}"

    if isinstance(saved_model.optimizer, FP16_DeepSpeedZeroOptimizer):
        for p0, p1 in zip(saved_model.optimizer.single_partition_of_fp32_groups, loaded_model.optimizer.single_partition_of_fp32_groups):
            assert torch.allclose(p0,p1,atol=1e-07), f"Fp32 model states {p0} is not equal to {p1}"

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    elif isinstance(saved_model.optimizer, FP16_DeepSpeedZeroOptimizer_Stage1):
        for partition0, partition1 in zip(saved_model.optimizer.local_sub_partitions_of_fp32_groups, loaded_model.optimizer.local_sub_partitions_of_fp32_groups):
            for p0, p1 in zip(partition0, partition1):
                assert torch.allclose(p0,p1,atol=1e-07), f"Fp32 model states {p0} is not equal to {p1}"

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    elif isinstance(saved_model.optimizer, FP16_Optimizer):
        for p0, p1 in zip(saved_model.optimizer.fp32_groups_flat, loaded_model.optimizer.fp32_groups_flat):
            assert torch.allclose(p0,p1,atol=1e-07), f"FP32 model states {p0} is not equal to {p1}"

    elif isinstance(saved_model.optimizer, FP16_UnfusedOptimizer):
        for params0, params1 in zip(saved_model.optimizer.fp32_groups, loaded_model.optimizer.fp32_groups):
            for p0, p1 in zip(params0, params1):
                assert torch.allclose(p0,p1,atol=1e-07), f"FP32 model states {p0} is not equal to {p1}"
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    elif isinstance(saved_model.optimizer, torch.optim.Optimizer):
        pass
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    else:
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        assert False, f'Unexpected Optimizer Type: {saved_model.optimizer}'

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def compare_optimizer_states(saved_model, loaded_model, hidden_dim, fp16=True):
    saved_optimizer = saved_model.optimizer.optimizer if fp16 else saved_model.optimizer
    loaded_optimizer = loaded_model.optimizer.optimizer if fp16 else loaded_model.optimizer
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    for state0, state1 in zip(saved_optimizer.state.values(),
                              loaded_optimizer.state.values()):
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        for s0, s1 in zip(state0.values(), state1.values()):
            if isinstance(s0, torch.Tensor) and isinstance(s1, torch.Tensor):
                assert torch.equal(s0, s1)
            else:
                assert s0 == s1


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def compare_lr_scheduler_states(saved_model, loaded_model):
    assert hasattr(saved_model, 'lr_scheduler')
    assert hasattr(loaded_model, 'lr_scheduler')

    saved_scheduler = saved_model.lr_scheduler
    loaded_scheduler = loaded_model.lr_scheduler

    assert hasattr(saved_scheduler, 'state_dict')
    assert hasattr(loaded_scheduler, 'state_dict')

    saved_sd = saved_scheduler.state_dict()
    loaded_sd = loaded_scheduler.state_dict()

    print(f"saved_sd = {saved_sd}")
    print(f"loaded_sd = {loaded_sd}")

    assert saved_sd.keys() == loaded_sd.keys()

    for state0, state1 in zip(saved_sd.values(), loaded_sd.values()):
        if isinstance(state0, numbers.Number) and isinstance(state1, numbers.Number):
            assert state0 == state1


def checkpoint_correctness_verification(args,
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                                        model,
                                        hidden_dim,
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                                        tmpdir,
                                        load_optimizer_states=False,
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                                        load_lr_scheduler_states=False,
                                        fp16=True):
    dtype = torch.half if fp16 else torch.float32
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    ds_model, _, _,_ = deepspeed.initialize(args=args,
                                            model=model,
                                            model_parameters=model.parameters())
    data_loader = random_dataloader(model=ds_model,
                                    total_samples=50,
                                    hidden_dim=hidden_dim,
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                                    device=ds_model.device,
                                    dtype=dtype)
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    for n, batch in enumerate(data_loader):
        loss = ds_model(batch[0], batch[1])
        ds_model.backward(loss)
        ds_model.step()

    trained_model = ds_model

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    save_folder = os.path.join(tmpdir, 'saved_checkpoint')
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    save_tag = '1'

    trained_model.save_checkpoint(save_folder, save_tag)

    loaded_model, _, _,_ = deepspeed.initialize(args=args,
                                            model=model,
                                            model_parameters=model.parameters())

    loaded_model.load_checkpoint(save_folder,
                                 save_tag,
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                                 load_optimizer_states=load_optimizer_states,
                                 load_lr_scheduler_states=load_lr_scheduler_states)
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    compare_model_states(trained_model, loaded_model)
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    if load_optimizer_states:
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        compare_optimizer_states(trained_model, loaded_model, hidden_dim, fp16)
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    if load_lr_scheduler_states:
        compare_lr_scheduler_states(trained_model, loaded_model)
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def test_checkpoint_unfused_optimizer(tmpdir):
    config_dict = {
        "train_batch_size": 2,
        "steps_per_print": 1,
        "optimizer": {
            "type": "Lamb",
            "params": {
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                "lr": 0.00015
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            }
        },
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        "gradient_clipping": 1.0,
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        "fp16": {
            "enabled": True
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        },
        "scheduler": {
            "type": "OneCycle",
            "params": {
                "cycle_first_step_size": 1000,
                "cycle_first_stair_count": 500,
                "cycle_second_step_size": 1000,
                "cycle_second_stair_count": 500,
                "decay_step_size": 1000,
                "cycle_min_lr": 0.0001,
                "cycle_max_lr": 0.0010,
                "decay_lr_rate": 0.001,
                "cycle_min_mom": 0.85,
                "cycle_max_mom": 0.99,
                "decay_mom_rate": 0.0
            }
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        }
    }

    args = args_from_dict(tmpdir, config_dict)
    hidden_dim = 10

    model = SimpleModel(hidden_dim, empty_grad=False)

    @distributed_test(world_size=[2])
    def _test_checkpoint_unfused_optimizer(args,
                                           model,
                                           hidden_dim,
                                           load_optimizer_states):
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        checkpoint_correctness_verification(args,
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                                            model,
                                            hidden_dim,
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                                            tmpdir,
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                                            load_optimizer_states=load_optimizer_states)

    _test_checkpoint_unfused_optimizer(args=args,
                                       model=model,
                                       hidden_dim=hidden_dim,
                                       load_optimizer_states=True)
    _test_checkpoint_unfused_optimizer(args=args,
                                       model=model,
                                       hidden_dim=hidden_dim,
                                       load_optimizer_states=False)


def test_checkpoint_fused_optimizer(tmpdir):
    config_dict = {
        "train_batch_size": 2,
        "steps_per_print": 1,
        "optimizer": {
            "type": "Adam",
            "params": {
                "lr": 0.00015,
                "betas": [0.8,
                          0.999],
                "eps": 1e-8,
                "weight_decay": 3e-7
            }
        },
        "fp16": {
            "enabled": True
        }
    }

    args = args_from_dict(tmpdir, config_dict)
    hidden_dim = 10

    model = SimpleModel(hidden_dim, empty_grad=False)

    @distributed_test(world_size=[2])
    def _test_checkpoint_fused_optimizer(args, model, hidden_dim, load_optimizer_states):
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        checkpoint_correctness_verification(args,
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                                            model,
                                            hidden_dim,
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                                            tmpdir,
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                                            load_optimizer_states=load_optimizer_states)

    _test_checkpoint_fused_optimizer(args=args,
                                     model=model,
                                     hidden_dim=hidden_dim,
                                     load_optimizer_states=True)
    _test_checkpoint_fused_optimizer(args=args,
                                     model=model,
                                     hidden_dim=hidden_dim,
                                     load_optimizer_states=False)


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@pytest.mark.parametrize("zero_stage", [1, 2])
def test_checkpoint_zero_optimizer(tmpdir, zero_stage):
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    config_dict = {
        "train_batch_size": 2,
        "steps_per_print": 1,
        "optimizer": {
            "type": "Adam",
            "params": {
                "lr": 0.00015,
                "betas": [0.8,
                          0.999],
                "eps": 1e-8,
                "weight_decay": 3e-7
            }
        },
        "fp16": {
            "enabled": True
        },
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        "zero_optimization": {
            "stage": zero_stage
        },
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    }
    args = args_from_dict(tmpdir, config_dict)
    hidden_dim = 10

    model = SimpleModel(hidden_dim, empty_grad=False)

    @distributed_test(world_size=[2])
    def _test_checkpoint_zero_optimizer(args, model, hidden_dim, load_optimizer_states):
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        checkpoint_correctness_verification(args,
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                                            model,
                                            hidden_dim,
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                                            tmpdir,
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                                            load_optimizer_states=load_optimizer_states)

    _test_checkpoint_zero_optimizer(args=args,
                                    model=model,
                                    hidden_dim=hidden_dim,
                                    load_optimizer_states=True)
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@pytest.mark.parametrize("zero_stage", [1, 2])
def test_checkpoint_zero_no_optimizer(tmpdir, zero_stage):
    config_dict = {
        "train_batch_size": 2,
        "steps_per_print": 1,
        "optimizer": {
            "type": "Adam",
            "params": {
                "lr": 0.00015,
                "betas": [0.8,
                          0.999],
                "eps": 1e-8,
                "weight_decay": 3e-7
            }
        },
        "fp16": {
            "enabled": True
        },
        "zero_optimization": {
            "stage": zero_stage
        },
    }
    args = args_from_dict(tmpdir, config_dict)
    hidden_dim = 10

    model = SimpleModel(hidden_dim, empty_grad=False)

    @distributed_test(world_size=[2])
    def _test_checkpoint_zero_no_optimizer(args,
                                           model,
                                           hidden_dim,
                                           load_optimizer_states):
        checkpoint_correctness_verification(args,
                                            model,
                                            hidden_dim,
                                            tmpdir,
                                            load_optimizer_states=load_optimizer_states)

    _test_checkpoint_zero_no_optimizer(args=args,
                                       model=model,
                                       hidden_dim=hidden_dim,
                                       load_optimizer_states=False)


@pytest.mark.parametrize("zero_stage", [0, 1, 2])
def test_checkpoint_lr_scheduler(tmpdir, zero_stage):
    config_dict = {
        "train_batch_size": 2,
        "steps_per_print": 1,
        "optimizer": {
            "type": "Adam",
            "params": {
                "lr": 0.00015,
                "betas": [0.8,
                          0.999],
                "eps": 1e-8,
                "weight_decay": 3e-7
            }
        },
        "fp16": {
            "enabled": True
        },
        "zero_optimization": {
            "stage": zero_stage
        },
        "scheduler": {
            "type": "WarmupLR",
            "params": {
                "warmup_min_lr": 0,
                "warmup_max_lr": 0.001,
                "warmup_num_steps": 1000
            }
        }
    }
    args = args_from_dict(tmpdir, config_dict)
    hidden_dim = 10

    model = SimpleModel(hidden_dim, empty_grad=False)

    @distributed_test(world_size=[2])
    def _test_checkpoint_lr_scheduler(args,
                                      model,
                                      hidden_dim,
                                      load_optimizer_states,
                                      load_lr_scheduler_states):
        checkpoint_correctness_verification(
            args,
            model,
            hidden_dim,
            tmpdir,
            load_optimizer_states=load_optimizer_states,
            load_lr_scheduler_states=load_lr_scheduler_states)

    _test_checkpoint_lr_scheduler(args=args,
                                  model=model,
                                  hidden_dim=hidden_dim,
                                  load_optimizer_states=False,
                                  load_lr_scheduler_states=True)


@pytest.mark.parametrize("zero_stage", [0, 1, 2])
def test_checkpoint_no_lr_scheduler(tmpdir, zero_stage):
    config_dict = {
        "train_batch_size": 2,
        "steps_per_print": 1,
        "optimizer": {
            "type": "Adam",
            "params": {
                "lr": 1e-5
            }
        },
        "fp16": {
            "enabled": True
        },
        "zero_optimization": {
            "stage": zero_stage
        },
        "scheduler": {
            "type": "WarmupLR",
            "params": {
                "warmup_min_lr": 0,
                "warmup_max_lr": 0.001,
                "warmup_num_steps": 1000
            }
        }
    }
    args = args_from_dict(tmpdir, config_dict)
    hidden_dim = 10

    model = SimpleModel(hidden_dim, empty_grad=False)

    @distributed_test(world_size=[2])
    def _test_checkpoint_no_lr_scheduler(args,
                                         model,
                                         hidden_dim,
                                         load_optimizer_states,
                                         load_lr_scheduler_states):
        checkpoint_correctness_verification(
            args,
            model,
            hidden_dim,
            tmpdir,
            load_optimizer_states=load_optimizer_states,
            load_lr_scheduler_states=load_lr_scheduler_states)

    _test_checkpoint_no_lr_scheduler(args=args,
                                     model=model,
                                     hidden_dim=hidden_dim,
                                     load_optimizer_states=False,
                                     load_lr_scheduler_states=False)
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def test_checkpoint_fp32_optimizer(tmpdir):
    config_dict = {
        "train_batch_size": 2,
        "steps_per_print": 1,
        "optimizer": {
            "type": "Adam",
            "params": {
                "lr": 0.00015,
                "betas": [0.8,
                          0.999],
                "eps": 1e-8,
                "weight_decay": 3e-7
            }
        },
        "fp16": {
            "enabled": False
        }
    }

    args = args_from_dict(tmpdir, config_dict)
    hidden_dim = 10

    model = SimpleModel(hidden_dim, empty_grad=False)

    @distributed_test(world_size=[2])
    def _test_checkpoint_fp32_optimizer(args, model, hidden_dim):
        checkpoint_correctness_verification(args, model, hidden_dim, tmpdir, fp16=False)

    _test_checkpoint_fp32_optimizer(args=args, model=model, hidden_dim=hidden_dim)