mirror of https://github.com/InternLM/InternLM
				
				
				
			test(tests/test_training): add training e2e tests for loss spike and loss accuracy (#304)
* tests(test_training): add test case for loss accuracy * tests(test_training): update test cases * ci(.github/workflows/e2e_test.yaml): remove pull submodule * ci(.github/workflows/e2e_test.yaml): update ci env and remove useless env var * test(tests/test_training): add 16 GPUs test cases * test(tests/test_training): fix training_16GPU_8DP2PP test case error * test(tests/test_training): add new case for interleaved pp * test(tests/test_training): remove redundant code * test(tests/test_training): update ci job timeout minutes to 30m * feat(initialize/launch.py): check num_chunks and interleaved_overlap --------- Co-authored-by: huangting4201 <huangting3@sensetime.com>pull/322/head
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						commit
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			@ -0,0 +1,56 @@
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name: e2e-tests
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on: 
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  pull_request:
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    branches:
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      - "main"
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      - "develop"
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    paths-ignore:
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      - "doc/**"
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      - "**.md"
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env:
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  WORKSPACE_PREFIX: $(echo $GITHUB_WORKSPACE |cut -d '/' -f 1-4)
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  SLURM_PARTITION: llm
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jobs:
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  check-requirements:
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    runs-on: [lmtest]
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    steps:
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    - name: mask env
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      run: |
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        echo "::add-mask::${{env.WORKSPACE_PREFIX}}"
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    - uses: actions/checkout@v3
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      with:
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         fetch-depth: 2
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    - name: check-requirements
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      run: |
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        source activate internlm-env-test
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        changed_files=$(git diff --name-only -r HEAD^1 HEAD)
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        echo $changed_files
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        if [[ $changed_files =~ "runtime.txt" ]]; then
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          pip install -r requirements/runtime.txt
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        fi
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        if [[ $changed_files =~ "torch.txt"  ]]; then
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          pip install -r requirements/torch.txt
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        fi
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  e2e_tests:
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    if: ${{ always() }}
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    needs: check-requirements
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    runs-on: [lmtest]
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    timeout-minutes: 30
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    steps:
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    - name: mask env
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      run: |
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        echo "::add-mask::${{env.WORKSPACE_PREFIX}}"
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    - uses: actions/checkout@v3
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    - name: e2e-test
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      run: |
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        source activate internlm-env-test
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        srun -p ${SLURM_PARTITION} --job-name=${GITHUB_RUN_ID}-${GITHUB_JOB} -n8 --ntasks-per-node=8 --cpus-per-task=4 --gpus-per-task=1 pytest -s -v --color=yes -m "training_8GPU" ./tests/test_training
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        srun -p ${SLURM_PARTITION} --job-name=${GITHUB_RUN_ID}-${GITHUB_JOB} -n16 --ntasks-per-node=8 --cpus-per-task=4 --gpus-per-task=1 pytest -s -v --color=yes -m "training_16GPU_8DP2TP" ./tests/test_training
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        srun -p ${SLURM_PARTITION} --job-name=${GITHUB_RUN_ID}-${GITHUB_JOB} -n16 --ntasks-per-node=8 --cpus-per-task=4 --gpus-per-task=1 pytest -s -v --color=yes -m "training_16GPU_8DP2TPSP" ./tests/test_training
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        srun -p ${SLURM_PARTITION} --job-name=${GITHUB_RUN_ID}-${GITHUB_JOB} -n16 --ntasks-per-node=8 --cpus-per-task=4 --gpus-per-task=1 pytest -s -v --color=yes -m "training_16GPU_8DP2PP" ./tests/test_training
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        srun -p ${SLURM_PARTITION} --job-name=${GITHUB_RUN_ID}-${GITHUB_JOB} -n16 --ntasks-per-node=8 --cpus-per-task=4 --gpus-per-task=1 pytest -s -v --color=yes -m "training_16GPU_8DP2PP_InterleavedOverlap" ./tests/test_training
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| 
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			@ -147,6 +147,7 @@ tensor parallel: tensor parallel size, usually the number of GPUs per node.
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"""
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parallel = dict(
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    zero1=8,
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    tensor=1,
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    pipeline=dict(size=1, interleaved_overlap=True),
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    sequence_parallel=False,
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)
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| 
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			@ -261,6 +261,12 @@ def args_sanity_check():
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            gpc.config.parallel.sequence_parallel is True and gpc.config.model.use_flash_attn is False
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        ), "sequence parallel does not support use_flash_attn=False"
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    # currently only interleaved pipeline scheduler with overlap can guarantee loss accuracy
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    if hasattr(gpc.config.model, "num_chunks") and gpc.config.model.num_chunks > 1:
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        assert (
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            gpc.config.parallel["pipeline"].get("interleaved_overlap", False) is True
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        ), "only support interleaved pipeline scheduler with overlap"
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    # monitoring default config
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    monitor_default_config = {
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        "alert_address": None,  # compatible with old alert config
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| 
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			@ -0,0 +1,390 @@
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import math
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import subprocess
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import pytest
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import torch
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import torch.distributed as dist
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import internlm
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from internlm.core.context import ParallelMode
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from internlm.core.context import global_context as gpc
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from internlm.core.scheduler import SchedulerMetricHook
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from internlm.core.trainer import TrainState
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from internlm.initialize import initialize_distributed_env
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from internlm.model.loss import FlashGPTLMLoss
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from internlm.model.metrics import AccPerplex
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from internlm.train import (
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    get_train_data_loader,
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    initialize_model,
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    initialize_optimizer,
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    load_new_batch,
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)
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from internlm.utils.common import BatchSkipper, launch_time
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from internlm.utils.gputest import empty_cache_and_diag
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from internlm.utils.megatron_timers import megatron_timer as timer
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from internlm.utils.model_checkpoint import CheckpointManager
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CONFIG_FILE_PATH = "./configs/7B_sft.py"
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TOTAL_STEPS = 10
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LOSS_SPIKE_LIMIT = 1.5
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LOSS_DEVIATION_LIMIT = 0.2
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BASELINE_LOSS_LIST = [
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    11.64188003540039,
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    7.9205322265625,
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    6.944362163543701,
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    6.147305488586426,
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    6.060564994812012,
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    5.660439491271973,
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    5.19430685043335,
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    5.157323837280273,
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    4.769168376922607,
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    4.449280738830566,
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]
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cur_loss_list = []
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def train():
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    # initialize distributed environment
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    initialize_distributed_env(config=CONFIG_FILE_PATH)
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    assert hasattr(gpc, "config") and gpc.config is not None
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    # init setting
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    gpc.config.data.total_steps = TOTAL_STEPS
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    gpc.config.lr_scheduler.total_steps = TOTAL_STEPS
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    total_steps = gpc.config.data.total_steps
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    skip_batches = gpc.config.data.skip_batches
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    label_smoothing = gpc.config.loss.label_smoothing
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    # get and broadcast current time
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    current_time = launch_time()
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    objs = [current_time]
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    dist.broadcast_object_list(objs, src=0)
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    current_time = objs[0]
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    # initialize model
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    model = initialize_model()
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    # initialize loss function
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    criterion = FlashGPTLMLoss(parallel_output=True, label_smoothing=label_smoothing)
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    # initialize the train data loader
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    train_dl, dataset_types = get_train_data_loader(num_worker=4)
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    # initialize and resume train state
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    train_state = TrainState(gpc.config, train_dl.batch_sampler)
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    optimizer, beta2_scheduler, lr_scheduler = initialize_optimizer(model=model)
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    with open(CONFIG_FILE_PATH, "r") as f:
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        config_lines = f.readlines()
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    ckpt_manager = CheckpointManager(
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        ckpt_config=gpc.config.ckpt,
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        model=model,
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        optimizer=optimizer,
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        lr_scheduler=lr_scheduler,
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        train_dl=train_dl,
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        model_config=gpc.config.model,
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        model_config_file="".join(config_lines),
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        feishu_address=gpc.config.monitor.alert.feishu_alert_address,
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    )
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    # Loading other persistent training states.
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    ckpt_manager.try_resume_training(train_state, current_time)
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    # initialize metric for calculating accuracy and perplexity
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    metric = AccPerplex(
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        device=torch.cuda.current_device(),
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        tp_pg=gpc.get_group(ParallelMode.TENSOR),
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        dp_pg=gpc.get_group(ParallelMode.DATA),
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        dataset_types=dataset_types,
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    )
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    # initialize trainer
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    scheduler_hooks = [
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        SchedulerMetricHook(
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            metric=metric,
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            skip=(
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                gpc.is_using_pp()
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                and hasattr(gpc.config.model, "num_chunks")
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                and gpc.config.model.num_chunks > 1
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                and gpc.config.parallel["pipeline"].get("interleaved_overlap", False)
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            ),
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        ),
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    ]
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    trainer, train_dl, _, _ = internlm.initialize_trainer(
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        model=model,
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        optimizer=optimizer,
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        criterion=criterion,
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        train_dataloader=train_dl,
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        lr_scheduler=lr_scheduler,
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        beta2_scheduler=beta2_scheduler,
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        scheduler_hooks=scheduler_hooks,
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    )
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    # initialize the batch skipper
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    batch_skipper = BatchSkipper(skip_batches)
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    trainer.train()
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    # transfer the train data loader into train data iterator
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    train_iter = iter(train_dl)
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    # start iterating the train data and begin training
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    for batch_count in range(train_state.batch_count, total_steps):
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        empty_cache_and_diag(batch_count, interval=gpc.config.data.empty_cache_and_diag_interval)
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        timer("one-batch").start()
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        # load batch data
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        batch, train_iter = load_new_batch(train_dl=train_dl, train_iter=train_iter, train_state=train_state)
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        # record the consumed samples in training
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        train_state.batch_count = batch_count
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        train_state.num_consumed_samples_in_epoch += len(batch[1])
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        if batch_skipper(batch_count):  # skip this batch
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            if gpc.is_rank_for_log():
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                print(f"Skip batch count:`{batch_count}`...")
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            timer("one-batch").stop()
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            continue
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        # zero the grads of parameters
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        trainer.zero_grad()
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        # process data
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        if batch[0].get("type_ids", None) is not None:
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            metric.set_current_type_ids(type_ids=batch[0].pop("type_ids", None))
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        # do forward and backward
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        timer("fwd-bwd").start()
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        _, _, loss = trainer.execute_schedule(batch, forward_only=False, return_loss=True, return_output_label=False)
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        if gpc.is_rank_for_log():
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            assert loss is not None and not math.isnan(loss.item())
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            global cur_loss_list
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            cur_loss_list.append(loss.item())
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        timer("fwd-bwd").stop()
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        # update parameters, and returns (success_update, grad_norm)
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        trainer_result = trainer.step()
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        assert trainer_result is not None
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        success_update, _ = trainer_result
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        assert success_update, "Error: grad norm inf or nan occurs!"
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        if success_update:  # update parameters successfully
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            train_state.step_count += 1
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        else:
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            train_state.inf_nan_skip_batches += 1  # record the amount of updating parameters unsuccessfully.
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        timer("one-batch").stop()
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def check_loss_spike():
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    if gpc.is_rank_for_log():
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        for step in range(1, TOTAL_STEPS):
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            assert (
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                cur_loss_list[step] < cur_loss_list[step - 1] * LOSS_SPIKE_LIMIT
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            ), f"The loss spike occurs, {cur_loss_list[step - 1]}->{cur_loss_list[step]}, please check it!"
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def check_loss_accuracy():
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    if gpc.is_rank_for_log():
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        for cur, target in zip(cur_loss_list, BASELINE_LOSS_LIST):
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            assert (
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                abs(cur - target) < LOSS_DEVIATION_LIMIT
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            ), f"The loss accuracy is abnormal, {target}->{cur}, please check it!"
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class TestCaseTrain8GPU:
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    """
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    Test cases for Model Training with 8 GPUs.
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    Parallel Config:
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        data parallel size = 8.
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    """
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    @staticmethod
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    def setup_class():
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        # model training
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        train()
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        # print loss value
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        print(f"cur_loss_list: {cur_loss_list}", flush=True)
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    @staticmethod
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    @pytest.mark.training_8GPU
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    def test_loss_spike_with_dp8():
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        check_loss_spike()
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    @staticmethod
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    @pytest.mark.training_8GPU
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    def test_loss_accuracy_with_dp8():
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        check_loss_accuracy()
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class TestCaseTrain16GPUWith8DP2TP:
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    """
 | 
			
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    Test cases for Model Training with 16 GPUs.
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    Parallel Config:
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        data parallel size = 8.
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        tensor parallel size = 2.
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    """
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    @staticmethod
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    def setup_class():
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        # update config tensor parallel size
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        command = f"sed -i 's/^.*tensor=.*/    tensor=2,/' {CONFIG_FILE_PATH}"
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        subprocess.run(command, shell=True, check=True)
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        # model training
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        train()
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        # print loss value
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        print(f"cur_loss_list: {cur_loss_list}", flush=True)
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    @staticmethod
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    @pytest.mark.training_16GPU_8DP2TP
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    def test_loss_spike_with_dp8_tp2():
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        check_loss_spike()
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 | 
			
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    @staticmethod
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    @pytest.mark.training_16GPU_8DP2TP
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    def test_loss_accuracy_with_dp8_tp2():
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        check_loss_accuracy()
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 | 
			
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 | 
			
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class TestCaseTrain16GPUWith8DP2TPSP:
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    """
 | 
			
		||||
    Test cases for Model Training with 16 GPUs.
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    Parallel Config:
 | 
			
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        data parallel size = 8.
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        tensor parallel size = 2.
 | 
			
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        sequence parallel = True.
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    """
 | 
			
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 | 
			
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    @staticmethod
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    def setup_class():
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        # update config tensor parallel size and sequence parallel
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		||||
        command = f"sed -i 's/^.*tensor=.*/    tensor=2,/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=True)
 | 
			
		||||
        command = f"sed -i 's/^.*sequence_parallel=.*/    sequence_parallel=True,/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=True)
 | 
			
		||||
 | 
			
		||||
        # model training
 | 
			
		||||
        train()
 | 
			
		||||
 | 
			
		||||
        # print loss value
 | 
			
		||||
        print(f"cur_loss_list: {cur_loss_list}", flush=True)
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    @pytest.mark.training_16GPU_8DP2TPSP
 | 
			
		||||
    def test_loss_spike_with_dp8_tp2_sp():
 | 
			
		||||
        check_loss_spike()
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    @pytest.mark.training_16GPU_8DP2TPSP
 | 
			
		||||
    def test_loss_accuracy_with_dp8_tp2_sp():
 | 
			
		||||
        check_loss_accuracy()
 | 
			
		||||
 | 
			
		||||
 | 
			
		||||
class TestCaseTrain16GPUWith8DP2PP:
 | 
			
		||||
    """
 | 
			
		||||
    Test cases for Model Training with 16 GPUs.
 | 
			
		||||
    Parallel Config:
 | 
			
		||||
        data parallel size = 8.
 | 
			
		||||
        pipeline parallel size = 2.
 | 
			
		||||
    """
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    def setup_class():
 | 
			
		||||
        # update config pipeline parallel size
 | 
			
		||||
        command = f"sed -i 's/^.*pipeline=.*/    pipeline=dict(size=2),/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=True)
 | 
			
		||||
        command = f"sed -i 's/^.*tensor=.*/    tensor=1,/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=True)
 | 
			
		||||
 | 
			
		||||
        # model training
 | 
			
		||||
        train()
 | 
			
		||||
 | 
			
		||||
        # print loss value
 | 
			
		||||
        print(f"cur_loss_list: {cur_loss_list}", flush=True)
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    @pytest.mark.training_16GPU_8DP2PP
 | 
			
		||||
    def test_loss_spike_with_dp8_pp2():
 | 
			
		||||
        check_loss_spike()
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    @pytest.mark.training_16GPU_8DP2PP
 | 
			
		||||
    def test_loss_accuracy_with_dp8_pp2():
 | 
			
		||||
        check_loss_accuracy()
 | 
			
		||||
 | 
			
		||||
 | 
			
		||||
class TestCaseTrain16GPUWith8DP2PPInterleaved:
 | 
			
		||||
    """
 | 
			
		||||
    Test cases for Model Training with 16 GPUs.
 | 
			
		||||
    Parallel Config:
 | 
			
		||||
        data parallel size = 8.
 | 
			
		||||
        pipeline parallel size = 2.
 | 
			
		||||
        interleaved scheduler = True.
 | 
			
		||||
    """
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    def setup_class():
 | 
			
		||||
        # update config pipeline parallel size
 | 
			
		||||
        command = f"sed -i 's/^.*pipeline=.*/    pipeline=dict(size=2),/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=True)
 | 
			
		||||
        command = f"sed -i 's/^.*num_chunks=.*/    num_chunks=2,/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=True)
 | 
			
		||||
        command = f"sed -i 's/^.*tensor=.*/    tensor=1,/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=False)
 | 
			
		||||
 | 
			
		||||
        # model training
 | 
			
		||||
        train()
 | 
			
		||||
 | 
			
		||||
        # print loss value
 | 
			
		||||
        print(f"cur_loss_list: {cur_loss_list}", flush=True)
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    @pytest.mark.training_16GPU_8DP2PP_Interleaved
 | 
			
		||||
    def test_loss_spike_with_dp8_pp2_interleaved():
 | 
			
		||||
        check_loss_spike()
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    @pytest.mark.training_16GPU_8DP2PP_Interleaved
 | 
			
		||||
    def test_loss_accuracy_with_dp8_pp2_interleaved():
 | 
			
		||||
        check_loss_accuracy()
 | 
			
		||||
 | 
			
		||||
 | 
			
		||||
class TestCaseTrain16GPUWith8DP2PPInterleavedOverlap:
 | 
			
		||||
    """
 | 
			
		||||
    Test cases for Model Training with 16 GPUs.
 | 
			
		||||
    Parallel Config:
 | 
			
		||||
        data parallel size = 8.
 | 
			
		||||
        pipeline parallel size = 2.
 | 
			
		||||
        interleaved scheduler = True.
 | 
			
		||||
        interleaved overlap = True.
 | 
			
		||||
    """
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    def setup_class():
 | 
			
		||||
        # update config pipeline parallel size
 | 
			
		||||
        command = f"sed -i 's/^.*pipeline=.*/    pipeline=dict(size=2, interleaved_overlap=True),/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=True)
 | 
			
		||||
        command = f"sed -i 's/^.*num_chunks=.*/    num_chunks=2,/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=True)
 | 
			
		||||
        command = f"sed -i 's/^.*tensor=.*/    tensor=1,/' {CONFIG_FILE_PATH}"
 | 
			
		||||
        subprocess.run(command, shell=True, check=True)
 | 
			
		||||
 | 
			
		||||
        # model training
 | 
			
		||||
        train()
 | 
			
		||||
 | 
			
		||||
        # print loss value
 | 
			
		||||
        print(f"cur_loss_list: {cur_loss_list}", flush=True)
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    @pytest.mark.training_16GPU_8DP2PP_InterleavedOverlap
 | 
			
		||||
    def test_loss_spike_with_dp8_pp2_interleaved_overlap():
 | 
			
		||||
        check_loss_spike()
 | 
			
		||||
 | 
			
		||||
    @staticmethod
 | 
			
		||||
    @pytest.mark.training_16GPU_8DP2PP_InterleavedOverlap
 | 
			
		||||
    def test_loss_accuracy_with_dp8_pp2_interleaved_overlap():
 | 
			
		||||
        check_loss_accuracy()
 | 
			
		||||
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		Reference in New Issue