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@ -58,17 +58,8 @@ def exam_zero_1_2_grad_acc():
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assert torch.equal(zero1_output, zero2_output) |
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# zero-dp backward |
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no_sync = number == 0 |
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with conditional_context(zero1_optimizer.no_sync(), no_sync): |
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zero1_optimizer.backward(zero1_output.sum().float()) |
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with conditional_context(zero2_optimizer.no_sync(), no_sync): |
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zero2_optimizer.backward(zero2_output.sum().float()) |
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if check_flag: |
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for (n, z1p), z2p in zip(zero1_model.named_parameters(), zero2_model.parameters()): |
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if z2p.grad is not None: |
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# print(local_rank, n, z1p.shape, torch.max(z2p.grad), torch.max(torch.abs(z1p.grad - z2p.grad))) |
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assert torch.equal(z1p.grad, z2p.grad) |
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zero1_optimizer.backward(zero1_output.sum().float()) |
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zero2_optimizer.backward(zero2_output.sum().float()) |
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fwd_bwd_func(0, input_data1, True) |
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fwd_bwd_func(1, input_data2, False) |
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@ -82,7 +73,7 @@ def exam_zero_1_2_grad_acc():
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assert torch.equal(z1p.data, z2p.data) |
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def exam_zero_1_grad_acc(): |
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def exam_zero_1_grad_acc(sync): |
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local_rank = torch.distributed.get_rank() |
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seed_all(2008) |
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@ -112,9 +103,8 @@ def exam_zero_1_grad_acc():
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input_data1 = torch.randn(32, 128).cuda() |
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input_data2 = torch.randn(32, 128).cuda() |
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def fwd_bwd_func(number, cur_data, check_flag): |
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def fwd_bwd_func(no_sync, cur_data, check_flag): |
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no_sync = number == 0 |
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# zero1 fwd and bwd |
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with conditional_context(zero_optimizer.no_sync(), no_sync): |
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zero_output = zero_model(cur_data) |
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@ -131,8 +121,8 @@ def exam_zero_1_grad_acc():
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for (n, p), z1p in zip(torch_model.named_parameters(), zero_model.parameters()): |
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assert torch.equal(p.grad, z1p.grad) |
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fwd_bwd_func(0, input_data1, True) |
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fwd_bwd_func(1, input_data2, False) |
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fwd_bwd_func(sync, input_data1, sync) |
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fwd_bwd_func(False, input_data2, False) |
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zero_optimizer.step() |
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torch.nn.utils.clip_grad_norm_(torch_model.parameters(), 1.0) |
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@ -147,9 +137,9 @@ def exam_zero_1_grad_acc():
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def run_dist(rank, world_size, port): |
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colossalai.launch(config=dict(), rank=rank, world_size=world_size, port=port, host='localhost') |
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exam_zero_1_grad_acc() |
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# gradient accumulation is not compatible with ZeRO-2 |
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# exam_zero_1_2_grad_acc() |
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exam_zero_1_grad_acc(sync=True) |
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exam_zero_1_grad_acc(sync=False) |
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exam_zero_1_2_grad_acc() |
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@pytest.mark.dist |
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