mirror of https://github.com/InternLM/InternLM
Merge upstream/develop into fix/add_zero_broadcast_sync
commit
950f2de833
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@ -0,0 +1,76 @@
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|||
name: unit-tests
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on:
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push:
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branches:
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- "develop"
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- "main"
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paths-ignore:
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- "cmds/**"
|
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- "**.md"
|
||||
pull_request:
|
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branches:
|
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- "develop"
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- "main"
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paths-ignore:
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- "cmds/**"
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- "**.md"
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env:
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WORKSPACE_PREFIX: $(echo $GITHUB_WORKSPACE |cut -d '/' -f 1-4)
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SLURM_PARTITION: llm_t
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|
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jobs:
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check-requirements:
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runs-on: [t_cluster]
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steps:
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- name: mask env
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run: |
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echo "::add-mask::${{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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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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|
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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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|
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unit_tests_core_pipeline:
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if: ${{ always() }}
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needs: check-requirements
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runs-on: [t_cluster]
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timeout-minutes: 20
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steps:
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- name: mask env
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run: |
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echo "::add-mask::${{env.WORKSPACE_PREFIX}}"
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- uses: actions/checkout@v3
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- name: core_pipeline
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run: |
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source /mnt/petrelfs/share_data/llm_env/env/llm-flash2.0
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export PYTHONPATH=$PWD:$PYTHONPATH
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srun -p ${SLURM_PARTITION} --job-name=internlm-ut-${GITHUB_RUN_ID}-${GITHUB_JOB} --quotatype=spot -N 1 -n 1 --gres=gpu:8 python -m pytest -s -v ./tests/test_core/test_pipeline.py
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unit_tests_utils_storage_manager:
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if: ${{ always() }}
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needs: check-requirements
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runs-on: [t_cluster]
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timeout-minutes: 20
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steps:
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- name: mask env
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run: |
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echo "::add-mask::${{env.WORKSPACE_PREFIX}}"
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- uses: actions/checkout@v3
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- name: utils_storage_manager
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run: |
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source /mnt/petrelfs/share_data/llm_env/env/llm-flash2.0
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export PYTHONPATH=$PWD:$PYTHONPATH
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srun -p ${SLURM_PARTITION} --job-name=internlm-ut-${GITHUB_RUN_ID}-${GITHUB_JOB} --quotatype=spot -N 1 -n 1 --gres=gpu:8 python -m pytest -s -v ./tests/test_utils/test_storage_manager.py
|
|
@ -1,4 +1,5 @@
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from .parallel_context import (
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IS_SEQUENCE_PARALLEL,
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IS_TENSOR_PARALLEL,
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Config,
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ParallelContext,
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|
@ -29,6 +30,7 @@ from .random import (
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__all__ = [
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"Config",
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"IS_TENSOR_PARALLEL",
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"IS_SEQUENCE_PARALLEL",
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"global_context",
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"ParallelContext",
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"ParallelMode",
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|
|
|
@ -25,6 +25,7 @@ from .process_group_initializer import ParallelMode
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from .random import add_seed, get_seeds, set_mode
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IS_TENSOR_PARALLEL = "is_tensor_parallel"
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IS_SEQUENCE_PARALLEL = "is_sequence_parallel"
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logger = get_logger(__file__)
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|
|
|
@ -9,7 +9,7 @@ from flash_attn.modules.embedding import ParallelGPT2Embeddings
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from flash_attn.modules.mlp import ParallelFusedMLP
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from torch import nn
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from internlm.core.context import IS_TENSOR_PARALLEL, ParallelMode
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from internlm.core.context import IS_SEQUENCE_PARALLEL, IS_TENSOR_PARALLEL, ParallelMode
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from internlm.core.context.parallel_context import global_context as gpc
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from internlm.initialize.initialize_tensor import normal_, scaled_init_method_normal
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from internlm.model.embedding import Embedding1D
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|
@ -134,6 +134,12 @@ class PackedFlashBaseLayer1D(nn.Module):
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for _, param in self.mlp.named_parameters():
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if gpc.get_world_size(ParallelMode.TENSOR) > 1:
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setattr(param, IS_TENSOR_PARALLEL, True)
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for param in self.norm1.parameters():
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if gpc.config.parallel.sequence_parallel is True:
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setattr(param, IS_SEQUENCE_PARALLEL, True)
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for param in self.norm2.parameters():
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if gpc.config.parallel.sequence_parallel is True:
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setattr(param, IS_SEQUENCE_PARALLEL, True)
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self.dropout2 = nn.Dropout(drop_rate)
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self.use_swiglu = use_swiglu
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|
@ -356,6 +362,10 @@ class PackedFlashInternLm1D(nn.Module):
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normal_(std=0.0052)(param)
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if gpc.get_world_size(ParallelMode.TENSOR) > 1:
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setattr(param, IS_TENSOR_PARALLEL, True)
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for param in self.norm.parameters():
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if gpc.config.parallel.sequence_parallel is True:
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setattr(param, IS_SEQUENCE_PARALLEL, True)
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self.parallel_output = parallel_output
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def forward(self, hidden_states=None, cu_seqlens=None, input_ids=None, indexes=None, inference_params=None):
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|
|
|
@ -8,7 +8,7 @@ import torch
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import torch.distributed as dist
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from torch.optim import Optimizer
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from internlm.core.context import Config, ParallelMode
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from internlm.core.context import IS_SEQUENCE_PARALLEL, Config, ParallelMode
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from internlm.core.context import global_context as gpc
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from internlm.monitor import send_alert_message
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from internlm.solver.optimizer.store import (
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|
@ -34,7 +34,7 @@ from internlm.utils.megatron_timers import megatron_timer as timer
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from internlm.utils.timeout import llm_timeout
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from .base_optimizer import BaseOptimizer
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from .utils import compute_norm
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from .utils import compute_layer_norm, compute_norm, compute_param_norm
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inf = math.inf
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logger = get_logger(__file__)
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|
@ -297,6 +297,15 @@ class HybridZeroOptimizer(BaseOptimizer):
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reduce_rank=reduce_rank,
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)
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def reduction_sp_func():
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handle = reduce_tensor(
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param.grad,
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dtype=None,
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dst_rank=reduce_rank,
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parallel_mode=ParallelMode.TENSOR,
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)
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handle.wait()
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# define hook
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# NOT IMPORTANT BUT GOOD TO KNOW:
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# args here is not grad, but allow_unreacable and accumulate_grad
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|
@ -304,6 +313,18 @@ class HybridZeroOptimizer(BaseOptimizer):
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if self.skip_grad_reduce is False:
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reduction_func()
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# define hook for sequence_parallel
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def reduce_grad_hook_sp(*args): # pylint: disable=W0613
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if self.skip_grad_reduce is False:
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reduction_sp_func()
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# if sequence_parallel is True,
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# the grad of norm should be all-reduce across the tp process group
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if gpc.config.parallel.sequence_parallel is True:
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if hasattr(param, IS_SEQUENCE_PARALLEL) and getattr(param, IS_SEQUENCE_PARALLEL) is True:
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accum_grad_obj_sp = get_grad_accumulate_object(param)
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accum_grad_obj_sp.register_hook(reduce_grad_hook_sp)
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accum_grad_obj.register_hook(reduce_grad_hook)
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_define_and_attach(param, reduce_rank)
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|
@ -520,6 +541,29 @@ class HybridZeroOptimizer(BaseOptimizer):
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return norm
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def _compute_param_norm_stage(
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self, group_id: int = 0, last_bucket: bool = False, last_stage: bool = False, previous_param_norms=None
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):
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# compute norm for gradients that have been reduced
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params, grads = self._param_store.get_reduced_param_for_compute_norm(group_id=group_id, last_bucket=last_bucket)
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total_param_norms = {}
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if len(params) == 0:
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dtype = self.param_groups[group_id]["dtype"]
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grads = [self.padding_grad.to(dtype)]
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params = [self.padding_tensor.to(dtype)]
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if self._clip_grad_norm > 0:
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total_param_norms = compute_param_norm(
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grads,
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params,
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last_stage=last_stage,
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previous_param_norms=previous_param_norms,
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zero_mode=self._broadcast_parallel_mode[group_id],
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is_moe_group=self._is_moe_group(self.optim.param_groups[group_id]),
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)
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return total_param_norms
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@llm_timeout(func_name="optim_step")
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def step(self, closure=None):
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"""Performs a single optimization step.
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|
@ -547,8 +591,11 @@ class HybridZeroOptimizer(BaseOptimizer):
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# compute norm for gradients in the before bucket
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groups_norms = []
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groups_param_norms = []
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for group_id in range(self.num_param_groups):
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groups_norms.append(self._compute_norm_with_stage(group_id=group_id))
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if gpc.config.get("grad_norm_profiling", False):
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groups_param_norms.append(self._compute_param_norm_stage(group_id=group_id))
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# clear reduced grads
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# grads in the last bucket is reduced
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|
@ -561,6 +608,8 @@ class HybridZeroOptimizer(BaseOptimizer):
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# compute norm for gradients in the last bucket
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total_norms = {}
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total_param_norms = {}
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total_layer_norms = {}
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for group_id in range(self.num_param_groups):
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group_name = self.param_groups[group_id]["name"] if "name" in self.param_groups[group_id] else "default"
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group_name = f"{group_id}_{group_name}"
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|
@ -570,6 +619,16 @@ class HybridZeroOptimizer(BaseOptimizer):
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last_stage=True,
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previous_norm=groups_norms[group_id],
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)
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if gpc.config.get("grad_norm_profiling", False):
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param_norms = self._compute_param_norm_stage(
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group_id=group_id,
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last_bucket=True,
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last_stage=True,
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previous_param_norms=groups_param_norms[group_id],
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)
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total_layer_norms[group_name], total_param_norms[group_name] = compute_layer_norm(
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param_norms=param_norms, loss_scale=self.loss_scale.item()
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)
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# Need to allreduce(avg) the norms across different ranks because moe params will not be synced
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# during allreduce
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|
@ -585,7 +644,12 @@ class HybridZeroOptimizer(BaseOptimizer):
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self._sync_grad()
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timer("sync_grad").stop()
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|
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return self._step(closure=closure, norms=total_norms)
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state, global_norms = self._step(closure=closure, norms=total_norms)
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if gpc.config.get("grad_norm_profiling", False):
|
||||
global_norms["layer_norms"] = total_layer_norms
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global_norms["param_norms"] = total_param_norms
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return state, global_norms
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||||
|
||||
def _step(self, closure=None, norms=None):
|
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assert closure is None, "closure is not supported by step()"
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|
@ -748,6 +812,8 @@ class HybridZeroOptimizer(BaseOptimizer):
|
|||
for handle in handles:
|
||||
handle.wait()
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|
||||
torch.cuda.synchronize()
|
||||
|
||||
##################
|
||||
# FP16 Utilities #
|
||||
##################
|
||||
|
|
|
@ -15,7 +15,7 @@ from torch._utils import _flatten_dense_tensors, _unflatten_dense_tensors
|
|||
from internlm.core.context import ParallelMode
|
||||
from internlm.core.context import global_context as gpc
|
||||
from internlm.core.naive_amp import NaiveAMPModel
|
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from internlm.utils.common import get_tensor_norm, move_norm_to_cuda
|
||||
from internlm.utils.common import get_current_device, get_tensor_norm, move_norm_to_cuda
|
||||
from internlm.utils.logger import get_logger
|
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from internlm.utils.parallel import is_model_parallel_parameter
|
||||
|
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|
@ -209,6 +209,49 @@ def calc_lp(grads, norm_type):
|
|||
return norm
|
||||
|
||||
|
||||
def reduce_grads(gradients, parameters, fine_grained=False):
|
||||
parallel_grads = []
|
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if fine_grained:
|
||||
parallel_grads = {}
|
||||
|
||||
def append_grad(g, p):
|
||||
if fine_grained:
|
||||
param_name = p.param_name if hasattr(p, "param_name") else "unknown-padding"
|
||||
if param_name not in parallel_grads:
|
||||
parallel_grads[param_name] = []
|
||||
parallel_grads[param_name].append(g.data.float())
|
||||
else:
|
||||
parallel_grads.append(g.data.float())
|
||||
|
||||
for g, p in zip(gradients, parameters):
|
||||
# TODO: consider the pipeline shared parameter
|
||||
if (
|
||||
gpc.is_initialized(ParallelMode.PIPELINE)
|
||||
and hasattr(p, "pipeline_shared_module_pg")
|
||||
and dist.get_rank(p.pipeline_shared_module_pg) == 0
|
||||
): # if shared between different pipe, only count o
|
||||
append_grad(g, p)
|
||||
elif (
|
||||
gpc.is_initialized(ParallelMode.PIPELINE)
|
||||
and hasattr(p, "pipeline_shared_module_pg")
|
||||
and dist.get_rank(p.pipeline_shared_module_pg) != 0
|
||||
):
|
||||
continue
|
||||
elif (
|
||||
gpc.is_initialized(ParallelMode.TENSOR)
|
||||
and not is_model_parallel_parameter(p)
|
||||
and gpc.get_local_rank(ParallelMode.TENSOR) == 0
|
||||
): # if not used in each chunk, such as layernorm
|
||||
append_grad(g, p)
|
||||
elif is_model_parallel_parameter(p):
|
||||
append_grad(g, p)
|
||||
elif gpc.get_local_rank(ParallelMode.TENSOR) != 0:
|
||||
continue
|
||||
else:
|
||||
raise RuntimeError("Should not arrive here")
|
||||
return parallel_grads
|
||||
|
||||
|
||||
def compute_norm(
|
||||
gradients, parameters, last_stage=False, previous_norm=None, norm_type=2, zero_mode=ParallelMode.ZERO1
|
||||
):
|
||||
|
@ -247,33 +290,7 @@ def compute_norm(
|
|||
)
|
||||
total_norm = total_norm_cuda[0].item()
|
||||
else:
|
||||
tensor_parallel_grads = []
|
||||
for g, p in zip(gradients, parameters):
|
||||
# TODO: consider the pipeline shared parameter
|
||||
if (
|
||||
gpc.is_initialized(ParallelMode.PIPELINE)
|
||||
and hasattr(p, "pipeline_shared_module_pg")
|
||||
and dist.get_rank(p.pipeline_shared_module_pg) == 0
|
||||
): # if shared between different pipe, only count o
|
||||
tensor_parallel_grads.append(g.data.float())
|
||||
elif (
|
||||
gpc.is_initialized(ParallelMode.PIPELINE)
|
||||
and hasattr(p, "pipeline_shared_module_pg")
|
||||
and dist.get_rank(p.pipeline_shared_module_pg) != 0
|
||||
):
|
||||
continue
|
||||
elif (
|
||||
gpc.is_initialized(ParallelMode.TENSOR)
|
||||
and not is_model_parallel_parameter(p)
|
||||
and gpc.get_local_rank(ParallelMode.TENSOR) == 0
|
||||
): # if not used in each chunk, such as layernorm
|
||||
tensor_parallel_grads.append(g.data.float())
|
||||
elif is_model_parallel_parameter(p):
|
||||
tensor_parallel_grads.append(g.data.float())
|
||||
elif gpc.get_local_rank(ParallelMode.TENSOR) != 0:
|
||||
continue
|
||||
else:
|
||||
raise RuntimeError("Should not arrive here")
|
||||
tensor_parallel_grads = reduce_grads(gradients, parameters)
|
||||
|
||||
if norm_type == 2.0 and enable_cuda_kernels:
|
||||
tensor_parallel_norm = calc_l2_norm(tensor_parallel_grads) ** norm_type
|
||||
|
@ -319,6 +336,124 @@ def compute_norm(
|
|||
return total_norm
|
||||
|
||||
|
||||
def compute_param_norm(
|
||||
gradients,
|
||||
parameters,
|
||||
last_stage=False,
|
||||
previous_param_norms=None,
|
||||
norm_type=2,
|
||||
zero_mode=ParallelMode.ZERO1,
|
||||
is_moe_group=False,
|
||||
):
|
||||
"""Get the norm of params
|
||||
Arguments:
|
||||
gradients (Iterable[Tensor]): The gradient value.
|
||||
parameters (Iterable[Tensor]): The parameter each gradient corresponds to.
|
||||
norm_type (float or int): type of the used p-norm. Can be ``'inf'`` for
|
||||
infinity norm.
|
||||
|
||||
Returns:
|
||||
The norm of the parameters.
|
||||
"""
|
||||
enable_cuda_kernels = gradients[0].device.type == "cuda"
|
||||
# Norm parameters.
|
||||
norm_type = float(norm_type)
|
||||
total_param_norms = {}
|
||||
|
||||
param_grads = reduce_grads(gradients, parameters, fine_grained=True)
|
||||
|
||||
param_norms = {}
|
||||
for param_name, grads in param_grads.items():
|
||||
if norm_type == inf:
|
||||
param_norm = max(g.data.abs().max() for g in grads)
|
||||
elif norm_type == 2.0 and enable_cuda_kernels:
|
||||
param_norm = calc_l2_norm(grads) ** norm_type
|
||||
else:
|
||||
param_norm = calc_lp(grads, norm_type)
|
||||
param_norms[param_name] = param_norm.item() if torch.is_tensor(param_norm) else param_norm
|
||||
|
||||
if last_stage is False:
|
||||
return param_norms
|
||||
|
||||
if previous_param_norms is not None:
|
||||
for key, value in previous_param_norms.items():
|
||||
if key not in param_norms:
|
||||
param_norms[key] = value
|
||||
continue
|
||||
|
||||
if norm_type == inf:
|
||||
param_norms[key] = max(param_norms[key], value)
|
||||
else:
|
||||
param_norms[key] += value
|
||||
|
||||
# model parallel
|
||||
model_parallel_param_norms = {}
|
||||
if gpc.is_initialized(ParallelMode.MODEL):
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parallel_param_norms = [None for _ in range(gpc.get_world_size(ParallelMode.MODEL))]
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dist.all_gather_object(parallel_param_norms, param_norms, group=gpc.get_group(ParallelMode.MODEL))
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for local_param_norm in parallel_param_norms:
|
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for param_name, param_norm in local_param_norm.items():
|
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if param_name not in model_parallel_param_norms:
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model_parallel_param_norms[param_name] = 0.0
|
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if norm_type == inf:
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model_parallel_param_norms[param_name] = max(model_parallel_param_norms[param_name], param_norm)
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else:
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model_parallel_param_norms[param_name] += param_norm
|
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|
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# zero parallel
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zero_param_norms = [None for _ in range(gpc.get_world_size(zero_mode))]
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dist.all_gather_object(zero_param_norms, model_parallel_param_norms, group=gpc.get_group(zero_mode))
|
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for local_param_norm in zero_param_norms:
|
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for param_name, param_norm in local_param_norm.items():
|
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if param_name not in total_param_norms:
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||||
total_param_norms[param_name] = 0.0
|
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if norm_type == inf:
|
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total_param_norms[param_name] = max(total_param_norms[param_name], param_norm)
|
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else:
|
||||
total_param_norms[param_name] += param_norm
|
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|
||||
# moe
|
||||
if is_moe_group:
|
||||
pg = gpc.get_group(ParallelMode.EXPERT)
|
||||
scaled_param_norm = torch.cuda.FloatTensor(list(total_param_norms.values()), device=get_current_device())
|
||||
scaled_param_norm = scaled_param_norm / float(gpc.get_world_size(ParallelMode.EXPERT))
|
||||
dist.all_reduce(scaled_param_norm, group=pg)
|
||||
for i, param_name in enumerate(total_param_norms.keys()):
|
||||
total_param_norms[param_name] = scaled_param_norm[i].item()
|
||||
|
||||
# scale
|
||||
for param_name, param_norm in total_param_norms.items():
|
||||
if param_norm in (inf, -inf):
|
||||
total_param_norms[param_name] = -1
|
||||
elif math.isnan(param_norm):
|
||||
total_param_norms[param_name] = -2
|
||||
|
||||
return total_param_norms
|
||||
|
||||
|
||||
def compute_layer_norm(param_norms, loss_scale):
|
||||
"""
|
||||
compute layer norm by parameter norms
|
||||
"""
|
||||
param_norms_groupby_layer = {}
|
||||
layer_norms = {}
|
||||
|
||||
for param_name, param_norm in param_norms.items():
|
||||
layer_name, param_key = param_name.split("-")
|
||||
if layer_name not in param_norms_groupby_layer:
|
||||
param_norms_groupby_layer[layer_name] = {}
|
||||
if layer_name not in layer_norms:
|
||||
layer_norms[layer_name] = 0.0
|
||||
|
||||
if param_norm not in (-1, -2):
|
||||
param_norm = param_norm**0.5 / loss_scale
|
||||
|
||||
param_norms_groupby_layer[layer_name][param_key] = param_norm
|
||||
layer_norms[layer_name] += param_norm
|
||||
|
||||
return layer_norms, param_norms_groupby_layer
|
||||
|
||||
|
||||
class BaseGradScaler(ABC):
|
||||
"""A base class for the gradient scaler.
|
||||
|
||||
|
|
|
@ -1,6 +1,7 @@
|
|||
#!/usr/bin/env python
|
||||
# -*- encoding: utf-8 -*-
|
||||
|
||||
import copy
|
||||
import functools
|
||||
import time
|
||||
from functools import partial
|
||||
|
@ -52,7 +53,11 @@ from internlm.train.utils import create_param_groups
|
|||
from internlm.utils.common import DummyProfile
|
||||
from internlm.utils.logger import get_logger
|
||||
from internlm.utils.megatron_timers import megatron_timer as timer
|
||||
from internlm.utils.parallel import sync_model_param, sync_model_param_within_tp
|
||||
from internlm.utils.parallel import (
|
||||
set_model_params_layer_name,
|
||||
sync_model_param,
|
||||
sync_model_param_within_tp,
|
||||
)
|
||||
from internlm.utils.registry import MODEL_INITIALIZER
|
||||
from internlm.utils.timeout import llm_timeout
|
||||
|
||||
|
@ -154,6 +159,10 @@ def initialize_optimizer(model: Union[nn.Module, nn.ModuleList]):
|
|||
Returns:
|
||||
A tuple of (optimizer, beta2_scheduler, lr_scheduler).
|
||||
"""
|
||||
if gpc.config.get("grad_norm_profiling", False):
|
||||
# set the layer name as an attribute of the model parameters
|
||||
set_model_params_layer_name(model)
|
||||
|
||||
if gpc.config.hybrid_zero_optimizer.overlap_sync_param:
|
||||
param_bcast_sync_handler = ParamBcastSyncHandler(model)
|
||||
else:
|
||||
|
@ -518,6 +527,21 @@ def record_current_batch_training_metrics(
|
|||
for key, value in acc_perplex.items():
|
||||
infos[key] = value
|
||||
|
||||
if gpc.config.get("grad_norm_profiling", False):
|
||||
layer_norms = copy.deepcopy(grad_norm["layer_norms"])
|
||||
param_norms = copy.deepcopy(grad_norm["param_norms"])
|
||||
for group_name, value in layer_norms.items():
|
||||
if value:
|
||||
title = f"laye_norm_group_{group_name}"
|
||||
writer.add_scalars(key=title, value=value, step=train_state.step_count)
|
||||
for group_name, layer_group in param_norms.items():
|
||||
if layer_group:
|
||||
for layer_name, param_group in layer_group.items():
|
||||
title = f"param_norm_{layer_name}_{group_name}"
|
||||
writer.add_scalars(key=title, value=param_group, step=train_state.step_count)
|
||||
del grad_norm["layer_norms"]
|
||||
del grad_norm["param_norms"]
|
||||
|
||||
line = ""
|
||||
for key, value in infos.items():
|
||||
line += f"{key}={value} "
|
||||
|
|
|
@ -2,9 +2,11 @@
|
|||
# -*- encoding: utf-8 -*-
|
||||
|
||||
import torch.distributed as dist
|
||||
from torch import nn
|
||||
|
||||
from internlm.core.context import IS_TENSOR_PARALLEL, ParallelMode
|
||||
from internlm.core.context import global_context as gpc
|
||||
from internlm.core.naive_amp import NaiveAMPModel
|
||||
|
||||
|
||||
def is_model_parallel_parameter(p):
|
||||
|
@ -61,3 +63,31 @@ def get_parallel_log_file_name():
|
|||
f"tp={gpc.get_local_rank(ParallelMode.TENSOR)}_pp={gpc.get_local_rank(ParallelMode.PIPELINE)}"
|
||||
)
|
||||
return log_file_name
|
||||
|
||||
|
||||
def set_model_params_layer_name(model):
|
||||
r"""Set the layer name as an attribute of the model parameters.
|
||||
Args:
|
||||
model (:class:`torch.nn.Module`): A pyTorch model on whose parameters you check the consistency.
|
||||
"""
|
||||
if not isinstance(model, nn.ModuleList):
|
||||
model = [model]
|
||||
|
||||
for _chunk in model:
|
||||
if isinstance(_chunk, NaiveAMPModel):
|
||||
_chunk = _chunk.model
|
||||
# Create a unique layer name based on the block's class name and index
|
||||
for _, children in _chunk.named_children():
|
||||
if isinstance(children, nn.ModuleList):
|
||||
for idx, block in enumerate(children):
|
||||
for param_name, param in block.named_parameters():
|
||||
layer_name = f"{block.__class__.__name__}Block{idx}"
|
||||
layer_param_name = f"{layer_name}-{param_name}"
|
||||
param.__setattr__("layer_name", layer_name)
|
||||
param.__setattr__("param_name", layer_param_name)
|
||||
else:
|
||||
for param_name, param in children.named_parameters():
|
||||
layer_name = f"{children.__class__.__name__}"
|
||||
layer_param_name = f"{layer_name}-{param_name}"
|
||||
param.__setattr__("layer_name", layer_name)
|
||||
param.__setattr__("param_name", f"{layer_name}-{param_name}")
|
||||
|
|
Loading…
Reference in New Issue