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174 lines
5.3 KiB
174 lines
5.3 KiB
/*
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* Copyright (C) 2017 The Android Open Source Project
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*
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* Licensed under the Apache License, Version 2.0 (the "License");
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* you may not use this file except in compliance with the License.
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* You may obtain a copy of the License at
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*
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* http://www.apache.org/licenses/LICENSE-2.0
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*
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* Unless required by applicable law or agreed to in writing, software
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* distributed under the License is distributed on an "AS IS" BASIS,
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* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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* See the License for the specific language governing permissions and
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* limitations under the License.
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*/
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#include <gmock/gmock.h>
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#include <gtest/gtest.h>
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#include <vector>
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#include "EmbeddingLookup.h"
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#include "NeuralNetworksWrapper.h"
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using ::testing::FloatNear;
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using ::testing::Matcher;
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namespace android {
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namespace nn {
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namespace wrapper {
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namespace {
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std::vector<Matcher<float>> ArrayFloatNear(const std::vector<float>& values,
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float max_abs_error = 1.e-6) {
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std::vector<Matcher<float>> matchers;
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matchers.reserve(values.size());
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for (const float& v : values) {
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matchers.emplace_back(FloatNear(v, max_abs_error));
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}
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return matchers;
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}
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} // namespace
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using ::testing::ElementsAreArray;
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#define FOR_ALL_INPUT_AND_WEIGHT_TENSORS(ACTION) \
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ACTION(Value, float) \
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ACTION(Lookup, int)
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// For all output and intermediate states
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#define FOR_ALL_OUTPUT_TENSORS(ACTION) ACTION(Output, float)
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class EmbeddingLookupOpModel {
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public:
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EmbeddingLookupOpModel(std::initializer_list<uint32_t> index_shape,
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std::initializer_list<uint32_t> weight_shape) {
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auto it = weight_shape.begin();
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rows_ = *it++;
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columns_ = *it++;
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features_ = *it;
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std::vector<uint32_t> inputs;
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OperandType LookupTy(Type::TENSOR_INT32, index_shape);
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inputs.push_back(model_.addOperand(&LookupTy));
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OperandType ValueTy(Type::TENSOR_FLOAT32, weight_shape);
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inputs.push_back(model_.addOperand(&ValueTy));
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std::vector<uint32_t> outputs;
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OperandType OutputOpndTy(Type::TENSOR_FLOAT32, weight_shape);
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outputs.push_back(model_.addOperand(&OutputOpndTy));
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auto multiAll = [](const std::vector<uint32_t>& dims) -> uint32_t {
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uint32_t sz = 1;
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for (uint32_t d : dims) {
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sz *= d;
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}
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return sz;
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};
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Value_.insert(Value_.end(), multiAll(weight_shape), 0.f);
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Output_.insert(Output_.end(), multiAll(weight_shape), 0.f);
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model_.addOperation(ANEURALNETWORKS_EMBEDDING_LOOKUP, inputs, outputs);
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model_.identifyInputsAndOutputs(inputs, outputs);
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model_.finish();
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}
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void Invoke() {
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ASSERT_TRUE(model_.isValid());
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Compilation compilation(&model_);
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compilation.finish();
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Execution execution(&compilation);
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#define SetInputOrWeight(X, T) \
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ASSERT_EQ(execution.setInput(EmbeddingLookup::k##X##Tensor, X##_.data(), \
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sizeof(T) * X##_.size()), \
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Result::NO_ERROR);
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FOR_ALL_INPUT_AND_WEIGHT_TENSORS(SetInputOrWeight);
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#undef SetInputOrWeight
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#define SetOutput(X, T) \
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ASSERT_EQ(execution.setOutput(EmbeddingLookup::k##X##Tensor, X##_.data(), \
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sizeof(T) * X##_.size()), \
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Result::NO_ERROR);
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FOR_ALL_OUTPUT_TENSORS(SetOutput);
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#undef SetOutput
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ASSERT_EQ(execution.compute(), Result::NO_ERROR);
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}
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#define DefineSetter(X, T) \
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void Set##X(const std::vector<T>& f) { X##_.insert(X##_.end(), f.begin(), f.end()); }
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FOR_ALL_INPUT_AND_WEIGHT_TENSORS(DefineSetter);
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#undef DefineSetter
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void Set3DWeightMatrix(const std::function<float(int, int, int)>& function) {
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for (uint32_t i = 0; i < rows_; i++) {
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for (uint32_t j = 0; j < columns_; j++) {
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for (uint32_t k = 0; k < features_; k++) {
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Value_[(i * columns_ + j) * features_ + k] = function(i, j, k);
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}
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}
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}
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}
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const std::vector<float>& GetOutput() const { return Output_; }
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private:
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Model model_;
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uint32_t rows_;
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uint32_t columns_;
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uint32_t features_;
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#define DefineTensor(X, T) std::vector<T> X##_;
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FOR_ALL_INPUT_AND_WEIGHT_TENSORS(DefineTensor);
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FOR_ALL_OUTPUT_TENSORS(DefineTensor);
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#undef DefineTensor
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};
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// TODO: write more tests that exercise the details of the op, such as
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// lookup errors and variable input shapes.
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TEST(EmbeddingLookupOpTest, SimpleTest) {
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EmbeddingLookupOpModel m({3}, {3, 2, 4});
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m.SetLookup({1, 0, 2});
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m.Set3DWeightMatrix([](int i, int j, int k) { return i + j / 10.0f + k / 100.0f; });
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m.Invoke();
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EXPECT_THAT(m.GetOutput(), ElementsAreArray(ArrayFloatNear({
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1.00, 1.01, 1.02, 1.03, 1.10, 1.11, 1.12, 1.13, // Row 1
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0.00, 0.01, 0.02, 0.03, 0.10, 0.11, 0.12, 0.13, // Row 0
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2.00, 2.01, 2.02, 2.03, 2.10, 2.11, 2.12, 2.13, // Row 2
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})));
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}
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} // namespace wrapper
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} // namespace nn
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} // namespace android
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