mirror of https://github.com/hpcaitech/ColossalAI
[fx] add balanced policy v2 (#1251)
* [CLI] add CLI launcher
* Revert "[CLI] add CLI launcher"
This reverts commit df7e6506d4
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* [fx] add balanced policy v2
* add unittest
pull/1325/head
parent
ca2d3f284f
commit
e8acf55e8b
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@ -10,7 +10,9 @@ def pipe_split():
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def balanced_split_pass(gm: torch.fx.GraphModule, pp_size: int):
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# TODO(lyl): balanced policy V2, split module by node size(weight+bias+output)
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"""
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In balanced_split_pass, we split module by the size of parameters(weights+bias).
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"""
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mod_graph = gm.graph
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total_param_amount = 0
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for param in mod_graph.owning_module.parameters():
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@ -39,6 +41,36 @@ def balanced_split_pass(gm: torch.fx.GraphModule, pp_size: int):
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return gm
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def balanced_split_pass_v2(gm: torch.fx.GraphModule, pp_size: int):
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"""
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In balanced_split_pass_v12, we split module by the size of nodes(weights+bias+outputs).
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"""
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mod_graph = gm.graph
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# To use balanced_split_pass_v2, we need run meta_info_prop interpreter first.
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# If nodes don't have meta info, this pass will fall back to normal balanced split pass.
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check_node = list(mod_graph.nodes)[0]
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if 'tensor_meta' not in check_node.meta:
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return balanced_split_pass(gm, pp_size)
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total_element_size = 0
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for node in mod_graph.nodes:
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total_element_size += node.node_size
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partition_size = total_element_size // pp_size
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accumulate_node_size = 0
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for node in mod_graph.nodes:
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if pp_size <= 1:
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break
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accumulate_node_size += node.node_size
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if accumulate_node_size >= partition_size:
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accumulate_node_size = 0
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pp_size -= 1
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with mod_graph.inserting_after(node):
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split_node = mod_graph.create_node('call_function', pipe_split)
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gm.recompile()
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return gm
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def uniform_split_pass(gm: torch.fx.GraphModule, pp_size: int):
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mod_graph = gm.graph
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valid_children_size = 0
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@ -67,7 +67,6 @@ class MetaInfoProp(torch.fx.Interpreter):
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def run_node(self, n: Node) -> Any:
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result = super().run_node(n)
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found_tensor = False
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def extract_tensor_meta(obj):
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@ -83,7 +82,25 @@ class MetaInfoProp(torch.fx.Interpreter):
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n.meta['tensor_meta'] = meta
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else:
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n.meta['tensor_meta'] = TensorMetadata(None, None, False, None, 0)
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# counting the total size of node outputs
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total_node_size = 0
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if isinstance(n.meta['tensor_meta'], TensorMetadata):
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total_node_size += n.meta['tensor_meta'].numel
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else:
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for element in n.meta['tensor_meta']:
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assert isinstance(
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element, TensorMetadata
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), f"``n.meta['tensor_meta']`` should be either TensorMetadata or a tuple of TensorMetadata."
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total_node_size += element.numel
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# counting the total size of parameters
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total_param_size = 0
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if n.op == 'call_module':
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target_module = n.graph.owning_module.get_submodule(n.target)
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for param in target_module.parameters():
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total_param_size += param.numel()
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total_node_size += total_param_size
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n.node_size = total_node_size
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n.meta['type'] = type(result)
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return result
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@ -4,7 +4,8 @@ import colossalai
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import colossalai.nn as col_nn
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from torch.fx import symbolic_trace
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from colossalai.fx.passes.adding_split_node_pass import split_with_split_nodes_pass, balanced_split_pass, \
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uniform_split_pass
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uniform_split_pass, balanced_split_pass_v2
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import pytest
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MODEL_DIM = 16
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@ -43,6 +44,7 @@ def test_pipeline_passes():
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model = MLP(MODEL_DIM)
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data = torch.rand(BATCH_SIZE, MODEL_DIM)
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pipeline_pass_test_helper(model, data, balanced_split_pass)
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pipeline_pass_test_helper(model, data, balanced_split_pass_v2)
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pipeline_pass_test_helper(model, data, uniform_split_pass)
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