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83 lines
2.3 KiB
83 lines
2.3 KiB
import torch
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import torch.autograd as autograd
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from rpc_test_utils import RpcTestModel, parse_args, rpc_run
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from torch import nn
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from colossalai.legacy.pipeline.rpc import ChimeraPipelineEngine
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# global variable for model created
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feat_num = 100
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h = 100
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def partition(pp_rank: int, chunk: int, stage_num: int):
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torch.manual_seed(1024)
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partition = RpcTestModel(pp_rank, stage_num, feat_num, h)
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return partition
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def run_master(args):
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torch.manual_seed(100)
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args.epoch
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device = args.device
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stage_num = args.world_size
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chunk = 1
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num_microbatches = args.num_microbatches
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use_checkpoint = False
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sample_num = 1024
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batch_size = 1024
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assert sample_num % batch_size == 0
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engine = ChimeraPipelineEngine(
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partition_fn=partition,
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stage_num=stage_num,
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num_microbatches=num_microbatches,
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device=device,
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checkpoint=use_checkpoint,
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)
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engine.initialize_optimizer(torch.optim.Adam, lr=1e-3)
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input_sample = torch.randn((sample_num, feat_num), device=device)
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forward_result = engine.forward_backward(input_sample)
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cuda_rpc_result = []
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single_result = []
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actual_stage_num = engine._get_actual_stage_num()
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# compute forward result and backward grad of parameters in cuda rpc
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cuda_rpc_result.append(sum(forward_result[0]))
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grad = engine.remote_grad()
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for stage_id in range(actual_stage_num):
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for p in grad[stage_id]:
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cuda_rpc_result.append(p)
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# compute forward result and backward grad of parameters just in rank_0
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test_model = nn.Sequential(
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*[partition(pp_rank, chunk, actual_stage_num) for pp_rank in range(actual_stage_num)]
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).to(device)
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# input_sample = input_sample[len(input_sample) // 2:]
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input_sample = input_sample.requires_grad_()
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out_val = test_model(input_sample).sum()
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autograd.backward(out_val)
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single_result.append(out_val)
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for p in test_model.parameters():
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single_result.append(p.grad)
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# print("my")
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# print(cuda_rpc_result[1])
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# print("answer:")
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# print(single_result[1])
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# assert len(cuda_rpc_result) == len(single_result)
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# for r_c, r_s in zip(cuda_rpc_result, single_result):
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# assert_close(r_c, r_s, 0.001, 0.001)
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if __name__ == "__main__":
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args = parse_args()
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rpc_run(args, run_master)
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