mirror of https://github.com/open-mmlab/mmcv.git
183 lines
6.5 KiB
Python
183 lines
6.5 KiB
Python
# Copyright (c) OpenMMLab. All rights reserved.
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import pytest
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import torch
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from mmcv.ops.multi_scale_deform_attn import (
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MultiScaleDeformableAttention, MultiScaleDeformableAttnFunction,
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multi_scale_deformable_attn_pytorch)
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_USING_PARROTS = True
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try:
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from parrots.autograd import gradcheck
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except ImportError:
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from torch.autograd import gradcheck
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_USING_PARROTS = False
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@pytest.mark.parametrize('device_type', [
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'cpu',
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pytest.param(
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'cuda:0',
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marks=pytest.mark.skipif(
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not torch.cuda.is_available(), reason='requires CUDA support'))
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])
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def test_multiscale_deformable_attention(device_type):
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with pytest.raises(ValueError):
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# embed_dims must be divisible by num_heads,
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MultiScaleDeformableAttention(
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embed_dims=256,
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num_heads=7,
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)
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device = torch.device(device_type)
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msda = MultiScaleDeformableAttention(
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embed_dims=3, num_levels=2, num_heads=3)
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msda.init_weights()
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num_query = 5
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bs = 1
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embed_dims = 3
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query = torch.rand(num_query, bs, embed_dims).to(device)
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key = torch.rand(num_query, bs, embed_dims).to(device)
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spatial_shapes = torch.Tensor([[2, 2], [1, 1]]).long().to(device)
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level_start_index = torch.Tensor([0, 4]).long().to(device)
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reference_points = torch.rand(bs, num_query, 2, 2).to(device)
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msda.to(device)
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msda(
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query,
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key,
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key,
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reference_points=reference_points,
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spatial_shapes=spatial_shapes,
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level_start_index=level_start_index)
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def test_forward_multi_scale_deformable_attn_pytorch():
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N, M, D = 1, 2, 2
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Lq, L, P = 2, 2, 2
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shapes = torch.as_tensor([(6, 4), (3, 2)], dtype=torch.long)
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S = sum((H * W).item() for H, W in shapes)
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torch.manual_seed(3)
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value = torch.rand(N, S, M, D) * 0.01
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sampling_locations = torch.rand(N, Lq, M, L, P, 2)
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attention_weights = torch.rand(N, Lq, M, L, P) + 1e-5
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attention_weights /= attention_weights.sum(
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-1, keepdim=True).sum(
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-2, keepdim=True)
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multi_scale_deformable_attn_pytorch(value.double(), shapes,
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sampling_locations.double(),
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attention_weights.double()).detach()
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@pytest.mark.skipif(
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not torch.cuda.is_available(), reason='requires CUDA support')
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def test_forward_equal_with_pytorch_double():
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N, M, D = 1, 2, 2
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Lq, L, P = 2, 2, 2
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shapes = torch.as_tensor([(6, 4), (3, 2)], dtype=torch.long).cuda()
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level_start_index = torch.cat((shapes.new_zeros(
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(1, )), shapes.prod(1).cumsum(0)[:-1]))
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S = sum((H * W).item() for H, W in shapes)
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torch.manual_seed(3)
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value = torch.rand(N, S, M, D).cuda() * 0.01
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sampling_locations = torch.rand(N, Lq, M, L, P, 2).cuda()
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attention_weights = torch.rand(N, Lq, M, L, P).cuda() + 1e-5
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attention_weights /= attention_weights.sum(
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-1, keepdim=True).sum(
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-2, keepdim=True)
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im2col_step = 2
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output_pytorch = multi_scale_deformable_attn_pytorch(
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value.double(), shapes, sampling_locations.double(),
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attention_weights.double()).detach().cpu()
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output_cuda = MultiScaleDeformableAttnFunction.apply(
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value.double(), shapes, level_start_index, sampling_locations.double(),
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attention_weights.double(), im2col_step).detach().cpu()
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assert torch.allclose(output_cuda, output_pytorch)
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max_abs_err = (output_cuda - output_pytorch).abs().max()
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max_rel_err = ((output_cuda - output_pytorch).abs() /
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output_pytorch.abs()).max()
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assert max_abs_err < 1e-18
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assert max_rel_err < 1e-15
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@pytest.mark.skipif(
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not torch.cuda.is_available(), reason='requires CUDA support')
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def test_forward_equal_with_pytorch_float():
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N, M, D = 1, 2, 2
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Lq, L, P = 2, 2, 2
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shapes = torch.as_tensor([(6, 4), (3, 2)], dtype=torch.long).cuda()
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level_start_index = torch.cat((shapes.new_zeros(
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(1, )), shapes.prod(1).cumsum(0)[:-1]))
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S = sum((H * W).item() for H, W in shapes)
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torch.manual_seed(3)
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value = torch.rand(N, S, M, D).cuda() * 0.01
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sampling_locations = torch.rand(N, Lq, M, L, P, 2).cuda()
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attention_weights = torch.rand(N, Lq, M, L, P).cuda() + 1e-5
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attention_weights /= attention_weights.sum(
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-1, keepdim=True).sum(
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-2, keepdim=True)
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im2col_step = 2
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output_pytorch = multi_scale_deformable_attn_pytorch(
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value, shapes, sampling_locations, attention_weights).detach().cpu()
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output_cuda = MultiScaleDeformableAttnFunction.apply(
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value, shapes, level_start_index, sampling_locations,
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attention_weights, im2col_step).detach().cpu()
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assert torch.allclose(output_cuda, output_pytorch, rtol=1e-2, atol=1e-3)
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max_abs_err = (output_cuda - output_pytorch).abs().max()
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max_rel_err = ((output_cuda - output_pytorch).abs() /
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output_pytorch.abs()).max()
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assert max_abs_err < 1e-9
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assert max_rel_err < 1e-6
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@pytest.mark.skipif(
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not torch.cuda.is_available(), reason='requires CUDA support')
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@pytest.mark.parametrize('channels', [
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4,
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30,
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32,
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64,
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71,
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1025,
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])
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def test_gradient_numerical(channels,
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grad_value=True,
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grad_sampling_loc=True,
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grad_attn_weight=True):
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N, M, _ = 1, 2, 2
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Lq, L, P = 2, 2, 2
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shapes = torch.as_tensor([(3, 2), (2, 1)], dtype=torch.long).cuda()
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level_start_index = torch.cat((shapes.new_zeros(
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(1, )), shapes.prod(1).cumsum(0)[:-1]))
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S = sum((H * W).item() for H, W in shapes)
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value = torch.rand(N, S, M, channels).cuda() * 0.01
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sampling_locations = torch.rand(N, Lq, M, L, P, 2).cuda()
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attention_weights = torch.rand(N, Lq, M, L, P).cuda() + 1e-5
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attention_weights /= attention_weights.sum(
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-1, keepdim=True).sum(
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-2, keepdim=True)
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im2col_step = 2
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func = MultiScaleDeformableAttnFunction.apply
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value.requires_grad = grad_value
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sampling_locations.requires_grad = grad_sampling_loc
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attention_weights.requires_grad = grad_attn_weight
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if _USING_PARROTS:
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assert gradcheck(
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func, (value.double(), shapes, level_start_index,
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sampling_locations.double(), attention_weights.double(),
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im2col_step),
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no_grads=[shapes, level_start_index])
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else:
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assert gradcheck(func, (value.double(), shapes, level_start_index,
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sampling_locations.double(),
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attention_weights.double(), im2col_step))
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