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https://github.com/zebrajr/pytorch.git
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Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/27038 Test Plan: Imported from OSS Differential Revision: D17682405 Pulled By: pbelevich fbshipit-source-id: f65e76696e0041c3518f56da94f2e3b800305234
330 lines
11 KiB
C++
330 lines
11 KiB
C++
#include <gtest/gtest.h>
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#include <torch/torch.h>
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#include <test/cpp/api/support.h>
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namespace F = torch::nn::functional;
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using namespace torch::nn;
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struct FunctionalTest : torch::test::SeedingFixture {};
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TEST_F(FunctionalTest, MaxPool1d) {
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auto x = torch::ones({1, 1, 5});
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auto y = F::max_pool1d(x, MaxPool1dOptions(3).stride(2));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(y, torch::ones({1, 1, 2})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({1, 1, 2}));
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}
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TEST_F(FunctionalTest, MaxPool2d) {
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auto x = torch::ones({2, 5, 5});
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auto y = F::max_pool2d(x, MaxPool2dOptions(3).stride(2));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(y, torch::ones({2, 2, 2})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({2, 2, 2}));
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}
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TEST_F(FunctionalTest, MaxPool3d) {
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auto x = torch::ones({2, 5, 5, 5});
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auto y = F::max_pool3d(x, MaxPool3dOptions(3).stride(2));
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ASSERT_EQ(y.ndimension(), 4);
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ASSERT_TRUE(torch::allclose(y, torch::ones({2, 2, 2, 2})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({2, 2, 2, 2}));
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}
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TEST_F(FunctionalTest, AvgPool1d) {
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auto x = torch::ones({1, 1, 5});
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auto y = F::avg_pool1d(x, AvgPool1dOptions(3).stride(2));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(y, torch::ones({1, 1, 2})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({1, 1, 2}));
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}
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TEST_F(FunctionalTest, AvgPool2d) {
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auto x = torch::ones({2, 5, 5});
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auto y = F::avg_pool2d(x, AvgPool2dOptions(3).stride(2));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(y, torch::ones({2, 2, 2})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({2, 2, 2}));
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}
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TEST_F(FunctionalTest, AvgPool3d) {
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auto x = torch::ones({2, 5, 5, 5});
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auto y = F::avg_pool3d(x, AvgPool3dOptions(3).stride(2));
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ASSERT_EQ(y.ndimension(), 4);
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ASSERT_TRUE(torch::allclose(y, torch::ones({2, 2, 2, 2})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({2, 2, 2, 2}));
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}
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TEST_F(FunctionalTest, CosineSimilarity) {
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auto input1 = torch::tensor({{1, 2, 3}, {4, 5, 6}}, torch::kFloat);
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auto input2 = torch::tensor({{1, 8, 3}, {2, 1, 6}}, torch::kFloat);
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auto output =
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F::cosine_similarity(input1, input2, CosineSimilarityOptions().dim(1));
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auto expected = torch::tensor({0.8078, 0.8721}, torch::kFloat);
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ASSERT_TRUE(output.allclose(expected, 1e-04));
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}
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TEST_F(FunctionalTest, PairwiseDistance) {
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auto input1 = torch::tensor({{1, 2, 3}, {4, 5, 6}}, torch::kFloat);
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auto input2 = torch::tensor({{1, 8, 3}, {2, 1, 6}}, torch::kFloat);
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auto output =
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F::pairwise_distance(input1, input2, PairwiseDistanceOptions(1));
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auto expected = torch::tensor({6, 6}, torch::kFloat);
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ASSERT_TRUE(output.allclose(expected));
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}
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TEST_F(FunctionalTest, PDist) {
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{
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auto input = torch::tensor({{-1.0, -5.0, -1.0}, {2.0, 4.0, 6.0}});
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auto output = F::pdist(input);
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auto expected = torch::tensor({11.7898});
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ASSERT_TRUE(output.allclose(expected));
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}
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{
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auto input = torch::tensor({{1.0, -1.0}, {1.0, 3.0}, {3.0, 3.0}});
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auto output = F::pdist(input, 1.5);
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auto expected = torch::tensor({4.0, 4.8945, 2.0});
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ASSERT_TRUE(output.allclose(expected));
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}
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}
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TEST_F(FunctionalTest, AdaptiveMaxPool1d) {
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auto x = torch::ones({1, 1, 5});
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auto y = F::adaptive_max_pool1d(x, AdaptiveMaxPool1dOptions(3));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(y, torch::ones({1, 1, 3})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({1, 1, 3}));
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}
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TEST_F(FunctionalTest, AdaptiveMaxPool2d) {
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auto x = torch::ones({2, 5, 5});
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auto y = F::adaptive_max_pool2d(x, AdaptiveMaxPool2dOptions(3));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(y, torch::ones({2, 3, 3})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({2, 3, 3}));
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}
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TEST_F(FunctionalTest, AdaptiveMaxPool3d) {
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auto x = torch::ones({2, 5, 5, 5});
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auto y = F::adaptive_max_pool3d(x, AdaptiveMaxPool3dOptions(3));
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ASSERT_EQ(y.ndimension(), 4);
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ASSERT_TRUE(torch::allclose(y, torch::ones({2, 3, 3, 3})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({2, 3, 3, 3}));
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}
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TEST_F(FunctionalTest, AdaptiveAvgPool1d) {
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auto x = torch::ones({1, 1, 5});
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auto y = F::adaptive_avg_pool1d(x, AdaptiveAvgPool1dOptions(3));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(y, torch::ones({1, 1, 3})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({1, 1, 3}));
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}
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TEST_F(FunctionalTest, AdaptiveAvgPool2d) {
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auto x = torch::ones({2, 5, 5});
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auto y = F::adaptive_avg_pool2d(x, AdaptiveAvgPool2dOptions(3));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(y, torch::ones({2, 3, 3})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({2, 3, 3}));
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}
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TEST_F(FunctionalTest, AdaptiveAvgPool3d) {
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auto x = torch::ones({2, 5, 5, 5});
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auto y = F::adaptive_avg_pool3d(x, AdaptiveAvgPool3dOptions(3));
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ASSERT_EQ(y.ndimension(), 4);
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ASSERT_TRUE(torch::allclose(y, torch::ones({2, 3, 3, 3})));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({2, 3, 3, 3}));
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}
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TEST_F(FunctionalTest, HingeEmbeddingLoss) {
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auto input = torch::tensor({{2, 22, 4}, {20, 10, 0}}, torch::kFloat);
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auto target = torch::tensor({{2, 6, 4}, {1, 10, 0}}, torch::kFloat);
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auto output = F::hinge_embedding_loss(
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input, target, HingeEmbeddingLossOptions().margin(2));
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auto expected = torch::tensor({10}, torch::kFloat);
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ASSERT_TRUE(output.allclose(expected));
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}
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TEST_F(FunctionalTest, MaxUnpool1d) {
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auto x = torch::tensor({{{2, 4, 5}}}, torch::requires_grad());
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auto indices = torch::tensor({{{1, 3, 4}}}, torch::kLong);
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auto y = F::max_unpool1d(x, indices, MaxUnpool1dOptions(3));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(
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y, torch::tensor({{{0, 2, 0, 4, 5, 0, 0, 0, 0}}}, torch::kFloat)));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({1, 1, 9}));
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x = torch::tensor({{{2, 4, 5}}}, torch::requires_grad());
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indices = torch::tensor({{{1, 3, 4}}}, torch::kLong);
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y = F::max_unpool1d(
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x, indices, MaxUnpool1dOptions(3), c10::IntArrayRef({1, 1, 9}));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(
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y, torch::tensor({{{0, 2, 0, 4, 5, 0, 0, 0, 0}}}, torch::kFloat)));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({1, 1, 9}));
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x = torch::tensor({{{2, 4, 5}}}, torch::requires_grad());
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indices = torch::tensor({{{1, 3, 4}}}, torch::kLong);
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y = F::max_unpool1d(x, indices, MaxUnpool1dOptions(3).stride(2).padding(1));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(
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torch::allclose(y, torch::tensor({{{0, 2, 0, 4, 5}}}, torch::kFloat)));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({1, 1, 5}));
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}
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TEST_F(FunctionalTest, MaxUnpool2d) {
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auto indices = torch::tensor({
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{{{ 6, 8, 9},
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{16, 18, 19},
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{21, 23, 24}}},
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{{{ 6, 8, 9},
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{16, 18, 19},
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{21, 23, 24}}}}, torch::kLong);
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auto x = torch::tensor({
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{{{ 6, 8, 9},
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{16, 18, 19},
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{21, 23, 24}}},
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{{{31, 33, 34},
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{41, 43, 44},
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{46, 48, 49}}}}, torch::requires_grad());
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auto y = F::max_unpool2d(x, indices, MaxUnpool2dOptions(3).stride(2).padding(1));
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ASSERT_EQ(y.dim(), 4);
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ASSERT_TRUE(torch::allclose(y, torch::tensor(
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{{{{ 0, 0, 0, 0, 0},
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{ 0, 6, 0, 8, 9},
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{ 0, 0, 0, 0, 0},
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{ 0, 16, 0, 18, 19},
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{ 0, 21, 0, 23, 24}}},
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{{{ 0, 0, 0, 0, 0},
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{ 0, 31, 0, 33, 34},
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{ 0, 0, 0, 0, 0},
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{ 0, 41, 0, 43, 44},
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{ 0, 46, 0, 48, 49}}}} , torch::kFloat)));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({2, 1, 5, 5}));
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}
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TEST_F(FunctionalTest, ELU) {
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const auto size = 3;
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for (const auto inplace : {false, true}) {
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for (const auto alpha : {0.0, 0.42, 1.0, 4.2, 42.42}) {
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auto x = torch::linspace(-10.0, 10.0, size * size * size);
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x.resize_({size, size, size});
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auto y_exp = torch::max(torch::zeros_like(x), x) +
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torch::min(torch::zeros_like(x), alpha * (torch::exp(x) - 1.0));
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auto y = F::elu(x, ELUOptions().alpha(alpha).inplace(inplace));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({size, size, size}));
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ASSERT_TRUE(torch::allclose(y, y_exp));
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if (inplace) {
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ASSERT_TRUE(torch::allclose(x, y_exp));
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}
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}
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}
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}
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TEST_F(FunctionalTest, Hardshrink) {
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const auto size = 3;
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for (const auto lambda : {-4.2, -1.0, -0.42, 0.0, 0.42, 1.0, 4.2, 42.42}) {
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auto x = torch::linspace(-10.0, 10.0, size * size * size);
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x.resize_({size, size, size}).set_requires_grad(true);
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auto y = F::hardshrink(x, HardshrinkOptions().lambda(lambda));
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torch::Tensor s = y.sum();
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s.backward();
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ASSERT_EQ(s.ndimension(), 0);
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({size, size, size}));
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auto y_exp = (x.abs() > lambda) * x;
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ASSERT_TRUE(torch::allclose(y, y_exp));
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}
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}
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TEST_F(FunctionalTest, OneHot) {
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{ // Test #1
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auto x = torch::arange(0, 5, torch::kLong);
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auto y = F::one_hot(x % 3);
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auto expected = torch::tensor(
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{{1, 0, 0}, {0, 1, 0}, {0, 0, 1}, {1, 0, 0}, {0, 1, 0}}, torch::kLong);
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ASSERT_EQ(y.ndimension(), 2);
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ASSERT_TRUE(torch::allclose(y, expected));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({5, 3}));
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}
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{ // Test #2
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auto x = torch::arange(0, 5, torch::kLong);
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auto y = F::one_hot(x % 3, 5);
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auto expected = torch::tensor(
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{{1, 0, 0, 0, 0},
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{0, 1, 0, 0, 0},
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{0, 0, 1, 0, 0},
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{1, 0, 0, 0, 0},
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{0, 1, 0, 0, 0}},
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torch::kLong);
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ASSERT_EQ(y.ndimension(), 2);
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ASSERT_TRUE(torch::allclose(y, expected));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({5, 5}));
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}
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{ // Test #3
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auto x = torch::arange(0, 6, torch::kLong);
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auto y = F::one_hot(x.view(torch::IntArrayRef({3, 2})) % 3);
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auto expected = torch::tensor(
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{{{1, 0, 0}, {0, 1, 0}},
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{{0, 0, 1}, {1, 0, 0}},
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{{0, 1, 0}, {0, 0, 1}}},
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torch::kLong);
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_TRUE(torch::allclose(y, expected));
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({3, 2, 3}));
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}
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}
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TEST_F(FunctionalTest, Hardtanh) {
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const auto size = 3;
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for (const auto min_val : {-4.2, -1.0, -0.42, 0.0}) {
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for (const auto max_val : {0.0, 0.42, 1.0, 4.2}) {
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for (const auto inplace : {false, true}) {
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auto x = torch::linspace(-10.0, 10.0, size * size * size);
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x.resize_({size, size, size});
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auto y_exp = (x < min_val) * min_val +
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((x >= min_val) * (x <= max_val)) * x +
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(x > max_val) * max_val;
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auto y = F::hardtanh(x,HardtanhOptions().min_val(min_val)
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.max_val(max_val).inplace(inplace));
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ASSERT_EQ(y.ndimension(), 3);
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ASSERT_EQ(y.sizes(), torch::IntArrayRef({size, size, size}));
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ASSERT_TRUE(torch::allclose(y, y_exp));
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if (inplace) {
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ASSERT_TRUE(torch::allclose(x, y_exp));
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}
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}
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}
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}
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}
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