mirror of https://github.com/hpcaitech/ColossalAI
133 lines
7.3 KiB
Python
133 lines
7.3 KiB
Python
from typing import Callable, Dict, List, Tuple, Union
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import torch
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from colossalai.auto_parallel.tensor_shard.sharding_strategy import (
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MemoryCost,
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OperationData,
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OperationDataType,
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ShardingStrategy,
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StrategiesVector,
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TrainCycleItem,
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)
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from colossalai.fx.profiler.memory_utils import activation_size
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from colossalai.fx.profiler.opcount import flop_mapping
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from colossalai.tensor.sharding_spec import ShardingSpec
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from ..registry import meta_register
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__all__ = ['convnd_meta_info']
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@meta_register.register(torch.nn.Conv1d)
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@meta_register.register(torch.nn.Conv2d)
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@meta_register.register(torch.nn.Conv3d)
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@meta_register.register(torch.nn.functional.conv1d)
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@meta_register.register(torch.nn.functional.conv2d)
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@meta_register.register(torch.nn.functional.conv3d)
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def convnd_meta_info(*args, **kwargs) -> Tuple[TrainCycleItem, TrainCycleItem, List[torch.Tensor]]:
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"""torch.nn.Conv1d, torch.nn.Conv2d, torch.nn.Conv3d meta info generator
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The atens graph of torch.nn.Convnd with bias is
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graph():
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%input_2 : [#users=2] = placeholder[target=placeholder](default=)
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%convolution_default : [#users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%input_2, None, None, [None, None, None], [None, None, None], [None, None, None], None, [None, None, None], None), kwargs = {})
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%zeros_like_default : [#users=1] = call_function[target=torch.ops.aten.zeros_like.default](args = (%convolution_default,), kwargs = {dtype: None, layout: None, device: None, pin_memory: None})
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%detach_default : [#users=1] = call_function[target=torch.ops.aten.detach.default](args = (%input_2,), kwargs = {})
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%convolution_backward_default : [#users=3] = call_function[target=torch.ops.aten.convolution_backward.default](args = (%zeros_like_default, %detach_default, None, [None], [None, None, None], [None, None, None], [None, None, None], None, [None, None, None], None, [None, None, None]), kwargs = {})
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%detach_default_1 : [#users=1] = call_function[target=torch.ops.aten.detach.default](args = (%convolution_backward_default,), kwargs = {})
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%detach_default_2 : [#users=0] = call_function[target=torch.ops.aten.detach.default](args = (%detach_default_1,), kwargs = {})
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%detach_default_3 : [#users=1] = call_function[target=torch.ops.aten.detach.default](args = (%convolution_backward_default,), kwargs = {})
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%detach_default_4 : [#users=0] = call_function[target=torch.ops.aten.detach.default](args = (%detach_default_3,), kwargs = {})
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%detach_default_5 : [#users=1] = call_function[target=torch.ops.aten.detach.default](args = (%convolution_backward_default,), kwargs = {})
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%detach_default_6 : [#users=0] = call_function[target=torch.ops.aten.detach.default](args = (%detach_default_5,), kwargs = {})
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The atens graph of torch.nn.Convnd without bias is
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graph():
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%input_2 : [#users=2] = placeholder[target=placeholder](default=)
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%convolution_default : [#users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%input_2, None, None, [None, None], [None, None], [None, None], None, [None, None], None), kwargs = {})
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%zeros_like_default : [#users=1] = call_function[target=torch.ops.aten.zeros_like.default](args = (%convolution_default,), kwargs = {dtype: None, layout: None, device: None, pin_memory: None})
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%detach_default : [#users=1] = call_function[target=torch.ops.aten.detach.default](args = (%input_2,), kwargs = {})
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%convolution_backward_default : [#users=2] = call_function[target=torch.ops.aten.convolution_backward.default](args = (%zeros_like_default, %detach_default, None, [None], [None, None], [None, None], [None, None], None, [None, None], None, [None, None, None]), kwargs = {})
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%detach_default_1 : [#users=1] = call_function[target=torch.ops.aten.detach.default](args = (%convolution_backward_default,), kwargs = {})
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%detach_default_2 : [#users=0] = call_function[target=torch.ops.aten.detach.default](args = (%detach_default_1,), kwargs = {})
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%detach_default_3 : [#users=1] = call_function[target=torch.ops.aten.detach.default](args = (%convolution_backward_default,), kwargs = {})
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%detach_default_4 : [#users=0] = call_function[target=torch.ops.aten.detach.default](args = (%detach_default_3,), kwargs = {})
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Returns:
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Tuple[TrainCycleItem, TrainCycleItem, List[torch.Tensor]]: compute cost, memory cost and forward inputs
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"""
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has_bias: bool = False
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input_tensor = next(filter(lambda x: x.type == OperationDataType.ARG, args)).data
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output_tensor = next(filter(lambda x: x.type == OperationDataType.OUTPUT, args)).data
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weight_tensors = [x.data for x in args if x.type == OperationDataType.PARAM]
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# check if conv has bias
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if len(weight_tensors) > 1:
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has_bias = True
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# bias tensor's shape only has one dimension
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if len(weight_tensors[0].shape) == 1:
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bias_tensor, weight_tensor = weight_tensors
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else:
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weight_tensor, bias_tensor = weight_tensors
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else:
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weight_tensor = weight_tensors[0]
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# construct input args for forward
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fwd_args = [None] * 9
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# weight and input
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fwd_args[0] = input_tensor
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fwd_args[1] = weight_tensor
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fwd_args[2] = bias_tensor if has_bias else None
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# transpose indicator should be set to False
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fwd_args[6] = False
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# construct input args for backward
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bwd_args = [None] * 11
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# weight and input
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bwd_args[0] = output_tensor
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bwd_args[1] = input_tensor
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bwd_args[2] = weight_tensor
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bwd_args[-1] = [True, True, True] if has_bias else [True, True, False]
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# calculate cost
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# the fwd op with compute cost is convolution.default
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# the bwd op with compute cost is convolution_backward.default
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# calculate compute cost
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fwd_compute_cost = flop_mapping[torch.ops.aten.convolution.default](fwd_args, (output_tensor,))
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bwd_compute_cost = flop_mapping[torch.ops.aten.convolution_backward.default](bwd_args, (input_tensor, weight_tensor, bias_tensor)) if has_bias else \
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flop_mapping[torch.ops.aten.convolution_backward.default](bwd_args, (input_tensor, weight_tensor))
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compute_cost = TrainCycleItem(fwd=fwd_compute_cost, bwd=bwd_compute_cost, total=fwd_compute_cost + bwd_compute_cost)
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# calculate memory cost
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# TODO: use profiler to check conv temp memory
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# NOTE: currently in SPMD solver we always believe that there will be a new tensor created in forward
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fwd_memory_cost = MemoryCost(
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activation=activation_size([input_tensor, output_tensor]),
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parameter=activation_size([weight_tensor, bias_tensor]) if has_bias else activation_size(weight_tensor),
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temp=0,
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buffer=0)
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bwd_memory_cost = MemoryCost(
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activation=activation_size([input_tensor, weight_tensor, bias_tensor])
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if has_bias else activation_size([input_tensor, weight_tensor]),
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parameter=activation_size([weight_tensor, bias_tensor]) if has_bias else activation_size(weight_tensor),
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temp=0,
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buffer=0)
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# total cost is the sum of forward and backward cost
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total_cost = MemoryCost(activation=fwd_memory_cost.activation + bwd_memory_cost.activation,
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parameter=fwd_memory_cost.parameter + bwd_memory_cost.parameter)
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memory_cost = TrainCycleItem(fwd=fwd_memory_cost, bwd=bwd_memory_cost, total=total_cost)
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# store fwd_in
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fwd_in = [input_tensor]
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return compute_cost, memory_cost, fwd_in
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