/* * Copyright (C) 2018 The Android Open Source Project * * Licensed under the Apache License, Version 2.0 (the "License"); * you may not use this file except in compliance with the License. * You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ #include #include #include #include #include #include #include #include #include #include #include #include #include #include #include "NeuralNetworks.h" #include "NeuralNetworksOEM.h" #include "NeuralNetworksWrapper.h" using namespace android::nn::wrapper; namespace { static const int32_t kAvailableOperandCodes[] = {ANEURALNETWORKS_FLOAT32, ANEURALNETWORKS_INT32, ANEURALNETWORKS_UINT32, ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_INT32, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_BOOL, ANEURALNETWORKS_TENSOR_QUANT16_SYMM, ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_BOOL8, ANEURALNETWORKS_FLOAT16, ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_TENSOR_OEM_BYTE}; ANeuralNetworksOperandType getOpType(int32_t opcode, uint32_t dimCount = 0, uint32_t* dim = nullptr) { ANeuralNetworksOperandType opType = {.type = opcode, .dimensionCount = dimCount, .dimensions = dim, .scale = 0.0, .zeroPoint = 0}; if (opcode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM || opcode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED || opcode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM || opcode == ANEURALNETWORKS_TENSOR_QUANT16_ASYMM || opcode == ANEURALNETWORKS_TENSOR_QUANT16_SYMM) { opType.scale = 1. / 256.; } return opType; } struct OperandTypeWithExtraParams { OperandTypeWithExtraParams(const ANeuralNetworksOperandType& operandType) : operandType(operandType), channelQuant(std::nullopt) {} ANeuralNetworksOperandType operandType; std::optional channelQuant; bool operator==(const OperandTypeWithExtraParams& that) const { if (operandType.type != that.operandType.type || operandType.scale != that.operandType.scale || operandType.zeroPoint != that.operandType.zeroPoint || operandType.dimensionCount != that.operandType.dimensionCount) { return false; } if (channelQuant.has_value() != that.channelQuant.has_value() || (channelQuant.has_value() && (channelQuant->channelDim != that.channelQuant->channelDim || channelQuant->scaleCount != that.channelQuant->scaleCount))) { return false; } if (operandType.dimensions) { if (!that.operandType.dimensions) { return false; } if (!std::equal(operandType.dimensions, operandType.dimensions + operandType.dimensionCount, that.operandType.dimensions)) { return false; } } else { if (that.operandType.dimensions) { return false; } } if (channelQuant.has_value()) { if (channelQuant->scales) { return that.channelQuant->scales && std::equal(channelQuant->scales, channelQuant->scales + channelQuant->scaleCount, that.channelQuant->scales); } else { return that.channelQuant->scales == nullptr; } } return true; } bool operator!=(const OperandTypeWithExtraParams& that) const { return !(*this == that); } bool operator<(const OperandTypeWithExtraParams& that) const { if (operandType.type < that.operandType.type) return true; if (operandType.dimensionCount < that.operandType.dimensionCount) return true; return false; } }; // namespace // Generates valid and invalid mutations of given OperandTypeWithParams // instances. // It is also responsible of freeing the memory allocated when creating // mutations. // Mutations shouldn't outlive the generating TensorRankConstraint instance. class TensorRankConstraint { public: TensorRankConstraint(const TensorRankConstraint& copyFrom) { // ignoring the array of allocated dimension this->mRangeMax = copyFrom.mRangeMax; this->mRangeMin = copyFrom.mRangeMin; } TensorRankConstraint& operator=(const TensorRankConstraint& copyFrom) { // ignoring the array of allocated dimension this->mRangeMax = copyFrom.mRangeMax; this->mRangeMin = copyFrom.mRangeMin; return *this; } static TensorRankConstraint Exactly(uint32_t rank) { return TensorRankConstraint(std::optional(rank), std::optional(rank)); } static TensorRankConstraint AtLeast(uint32_t min) { return TensorRankConstraint(std::optional(min), std::nullopt); } static TensorRankConstraint UpTo(uint32_t max) { return TensorRankConstraint(std::nullopt, std::optional(max)); } static TensorRankConstraint Between(uint32_t min, uint32_t max) { if (min == 0) { return UpTo(max); } return TensorRankConstraint(std::optional(min), std::optional(max)); } std::set> MutationsWithValidRank( const std::vector& operandsTypeWithParams) { // can't be both nullopt if (!mRangeMin) { return {ModifyForRank(operandsTypeWithParams, 1), ModifyForRank(operandsTypeWithParams, *mRangeMax)}; } else if (!mRangeMax) { return {ModifyForRank(operandsTypeWithParams, *mRangeMin), ModifyForRank(operandsTypeWithParams, *mRangeMin + 1)}; } else if (mRangeMax == mRangeMin) { std::for_each(operandsTypeWithParams.begin(), operandsTypeWithParams.end(), [this](const OperandTypeWithExtraParams& op) { assert(op.operandType.dimensionCount == *mRangeMin); }); return {operandsTypeWithParams}; } else { return {ModifyForRank(operandsTypeWithParams, *mRangeMin), ModifyForRank(operandsTypeWithParams, *mRangeMax)}; } } std::set> MutationsWithInvalidRank( const std::vector& operandsTypeWithParams) { std::set> result; if (mRangeMax) { result.insert(ModifyForRank(operandsTypeWithParams, *mRangeMax + 1)); } if (mRangeMin.value_or(0) > 1) { result.insert(ModifyForRank(operandsTypeWithParams, *mRangeMin - 1)); } return result; } private: std::vector ModifyForRank( const std::vector& operandsTypeWithParams, uint_t newRank) { std::vector result; std::transform(operandsTypeWithParams.cbegin(), operandsTypeWithParams.cend(), std::back_inserter(result), [this, newRank](const OperandTypeWithExtraParams& operandTypeWithParams) { return ModifyForRank(operandTypeWithParams, newRank); }); return result; } OperandTypeWithExtraParams ModifyForRank( const OperandTypeWithExtraParams& operandTypeWithParams, uint_t newRank) { if (operandTypeWithParams.operandType.dimensionCount == newRank) { return operandTypeWithParams; } uint32_t* resultDimensions = nullptr; if (newRank != 0) { std::unique_ptr dimensions = std::make_unique(newRank); resultDimensions = dimensions.get(); mAllocatedDimensions.insert(std::move(dimensions)); std::fill(resultDimensions, resultDimensions + newRank, 1); const auto originDims = operandTypeWithParams.operandType.dimensions; if (originDims != nullptr) { const int dimsToCopy = std::min(operandTypeWithParams.operandType.dimensionCount, newRank); std::copy(originDims, originDims + dimsToCopy, resultDimensions); } } OperandTypeWithExtraParams result = operandTypeWithParams; result.operandType = { .type = operandTypeWithParams.operandType.type, .dimensionCount = newRank, .dimensions = resultDimensions, .scale = operandTypeWithParams.operandType.scale, .zeroPoint = operandTypeWithParams.operandType.zeroPoint, }; return result; } TensorRankConstraint(const std::optional& min, const std::optional& max) : mRangeMin(min), mRangeMax(max) { if (mRangeMax.has_value()) { assert(*mRangeMax >= mRangeMin.value_or(0)); } assert(mRangeMax.has_value() || mRangeMin.has_value()); } std::optional mRangeMin; std::optional mRangeMax; std::set> mAllocatedDimensions; }; // Mutates a set of inputs applying the same rank constraint. class TensorRankMutator { public: TensorRankMutator(const TensorRankConstraint& constraint, const std::set& applyToIndexes = {0}) : mApplyToIndexes(applyToIndexes.begin(), applyToIndexes.end()), mConstraint(constraint) {} std::set> ValidInputsMutations( const std::vector& validInputs) { return InputsMutations( validInputs, [this](const std::vector& inputsToMutate) { return mConstraint.MutationsWithValidRank(inputsToMutate); }); } std::set> InvalidInputsMutations( const std::vector& validInputs) { return InputsMutations( validInputs, [this](const std::vector& inputsToMutate) { return mConstraint.MutationsWithInvalidRank(inputsToMutate); }); } private: std::set> InputsMutations( const std::vector& validInputs, std::function>( const std::vector&)> operandMutator) { std::for_each(mApplyToIndexes.begin(), mApplyToIndexes.end(), [&validInputs](uint32_t index) { assert(index < validInputs.size()); }); std::vector toMutate; std::transform(mApplyToIndexes.begin(), mApplyToIndexes.end(), std::back_inserter(toMutate), [&validInputs](int input_index) { return validInputs[input_index]; }); // Get a series of mutation for the operands in toMutate std::set> mutatedOps = operandMutator(toMutate); // Generate a set of mutation by replacing the mutated ops in validInputs // with all the mutations in mutatedOps std::set> mutatedValidInputs; std::transform( mutatedOps.cbegin(), mutatedOps.cend(), std::inserter(mutatedValidInputs, mutatedValidInputs.begin()), [this, &validInputs](const std::vector& opsMutation) { std::vector currInputMutation(validInputs.begin(), validInputs.end()); for (size_t i = 0; i < mApplyToIndexes.size(); i++) { currInputMutation[mApplyToIndexes[i]] = opsMutation[i]; } return currInputMutation; }); return mutatedValidInputs; } std::vector mApplyToIndexes; TensorRankConstraint mConstraint; }; class OperationTestBase { public: OperationTestBase(ANeuralNetworksOperationType opCode, const std::vector& validInputs, const std::vector& validOutputs, const std::vector& inputRankMutators = {}) : mOpCode(opCode), mValidInputs(), mValidOutputs(), mInputRankMutators(inputRankMutators) { for (ANeuralNetworksOperandType input : validInputs) { mValidInputs.push_back(input); } for (ANeuralNetworksOperandType output : validOutputs) { mValidOutputs.push_back(output); } } void setInputSymmPerChannelQuantParams( int32_t index, const ANeuralNetworksSymmPerChannelQuantParams& channelQuant) { mValidInputs[index].channelQuant = channelQuant; } void setOutputSymmPerChannelQuantParams( int32_t index, const ANeuralNetworksSymmPerChannelQuantParams& channelQuant) { mValidOutputs[index].channelQuant = channelQuant; } // Add each operand separately and add the operation using these operands. // This function does not cover the cases that an operand is used mutiple times. int32_t addOperation(const std::vector& inputs, const std::vector& outputs) { ANeuralNetworksModel* model = nullptr; ANeuralNetworksModel_create(&model); uint32_t opIdx = 0; std::vector inputIds; std::vector outputIds; for (uint32_t i = 0; i < inputs.size(); i++) { ANeuralNetworksModel_addOperand(model, &inputs[i].operandType); if (inputs[i].channelQuant) { ANeuralNetworksModel_setOperandSymmPerChannelQuantParams( model, opIdx, &inputs[i].channelQuant.value()); } inputIds.push_back(opIdx++); } for (uint32_t i = 0; i < outputs.size(); i++) { ANeuralNetworksModel_addOperand(model, &outputs[i].operandType); if (outputs[i].channelQuant) { ANeuralNetworksModel_setOperandSymmPerChannelQuantParams( model, opIdx, &outputs[i].channelQuant.value()); } outputIds.push_back(opIdx++); } int32_t result = ANeuralNetworksModel_addOperation( model, mOpCode, static_cast(inputIds.size()), inputIds.data(), static_cast(outputIds.size()), outputIds.data()); ANeuralNetworksModel_free(model); return result; } void testOpsValidations() { EXPECT_TRUE(testSuccess()); EXPECT_TRUE(testMutatingInputOperandCode()); EXPECT_TRUE(testMutatingInputOperandCounts()); EXPECT_TRUE(testMutatingOutputOperandCode()); EXPECT_TRUE(testMutatingOutputOperandCounts()); EXPECT_TRUE(testMutatingInputRanks()); } void testFailure(int32_t expectedResult) { int32_t result = addOperation(mValidInputs, mValidOutputs); EXPECT_TRUE(expectedResult == result); } bool testSuccess() { int32_t result = addOperation(mValidInputs, mValidOutputs); return ANEURALNETWORKS_NO_ERROR == result; } bool testMutatingInputOperandCode() { for (uint32_t i = 0; i < mValidInputs.size(); i++) { // LSH_PROJECTION's second argument is allowed to have any type. // This is the only operation that currently has a type that can be // anything independent from any other type. Changing the operand // type to any other type will result in a valid model for // LSH_PROJECTION. If this is the case, skip the test. if (mOpCode == ANEURALNETWORKS_LSH_PROJECTION && i == 1) { continue; } // RANK can have input of any type. if (mOpCode == ANEURALNETWORKS_RANK) { continue; } OperandTypeWithExtraParams newType = mValidInputs[i]; int32_t originalOperandCode = mValidInputs[i].operandType.type; std::set operandTypesToSkip; // Transposed conv can have either fully quantized or per-channel // quantized filter for the quantized version of the op. if ((mOpCode == ANEURALNETWORKS_TRANSPOSE_CONV_2D || mOpCode == ANEURALNETWORKS_DEPTHWISE_CONV_2D) && i == 1) { if (originalOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM || originalOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED || originalOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } } // CAST accepts any of supported types for any of output types if (mOpCode == ANEURALNETWORKS_CAST && i == 0) { operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_FLOAT16); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_FLOAT32); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_INT32); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } // RANDOM_MULTINOMIAL's first input can be either of float16 or // float32 type while everything else has the same types. if (mOpCode == ANEURALNETWORKS_RANDOM_MULTINOMIAL && i == 0) { if (originalOperandCode == ANEURALNETWORKS_TENSOR_FLOAT16) { operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_FLOAT32); } else if (originalOperandCode == ANEURALNETWORKS_TENSOR_FLOAT32) { operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_FLOAT16); } } // DEQUANTIZE supports any of the inputs types below for any of the // output types. if (mOpCode == ANEURALNETWORKS_DEQUANTIZE && i == 0) { operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_SYMM); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } // AXIS_ALIGNED_BBOX_TRANSFORM's second input cab be either QUANT8_ASYMM or // QUANT8_ASYMM_SIGNED if (mOpCode == ANEURALNETWORKS_AXIS_ALIGNED_BBOX_TRANSFORM && i == 1) { operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); operandTypesToSkip.insert(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } for (int32_t newOperandCode : kAvailableOperandCodes) { if (newOperandCode == originalOperandCode || operandTypesToSkip.find(newOperandCode) != operandTypesToSkip.end()) { continue; } // Switch input 7 from bool to int for 10-input CONV_2d // switch between valid "implicit padding with layout param" // and valid "explicit padding without layout param" if (mOpCode == ANEURALNETWORKS_CONV_2D && i == 7 && mValidInputs.size() == 10) { if ((newOperandCode == ANEURALNETWORKS_INT32 && originalOperandCode == ANEURALNETWORKS_BOOL) || (newOperandCode == ANEURALNETWORKS_BOOL && originalOperandCode == ANEURALNETWORKS_INT32)) { continue; } } // QUANTIZE supports both types below and its output type does // not depend on the input type. if (mOpCode == ANEURALNETWORKS_QUANTIZE && i == 0 && (newOperandCode == ANEURALNETWORKS_TENSOR_FLOAT16 || newOperandCode == ANEURALNETWORKS_TENSOR_FLOAT32)) { continue; } // ARGMIN/MAX supports four input types and has a fixed output type. if ((mOpCode == ANEURALNETWORKS_ARGMIN || mOpCode == ANEURALNETWORKS_ARGMAX) && i == 0 && (newOperandCode == ANEURALNETWORKS_TENSOR_FLOAT16 || newOperandCode == ANEURALNETWORKS_TENSOR_FLOAT32 || newOperandCode == ANEURALNETWORKS_TENSOR_INT32 || newOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM || newOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED)) { continue; } // Switch input 8 from bool to int for 11-input DEPTHWISE_CONV_2D // switch between valid "implicit padding with layout param" // and valid "explicit padding without layout param" if (mOpCode == ANEURALNETWORKS_DEPTHWISE_CONV_2D && i == 8 && mValidInputs.size() == 11) { if ((newOperandCode == ANEURALNETWORKS_INT32 && originalOperandCode == ANEURALNETWORKS_BOOL) || (newOperandCode == ANEURALNETWORKS_BOOL && originalOperandCode == ANEURALNETWORKS_INT32)) { continue; } } newType.operandType.type = newOperandCode; std::vector inputs = mValidInputs; inputs[i] = newType; int32_t result = addOperation(inputs, mValidOutputs); if (ANEURALNETWORKS_NO_ERROR == result) { return false; } } } return true; } bool testMutatingOutputOperandCode() { for (uint32_t i = 0; i < mValidOutputs.size(); i++) { // LSH_PROJECTION's second argument is allowed to have any type. // This is the only operation that currently has a type that can be // anything independent from any other type. Changing the operand // type to any other type will result in a valid model for // LSH_PROJECTION. If this is the case, skip the test. if (mOpCode == ANEURALNETWORKS_LSH_PROJECTION && i == 1) { continue; } OperandTypeWithExtraParams newType = mValidOutputs[i].operandType; int32_t originalOperandCode = mValidOutputs[i].operandType.type; for (int32_t newOperandCode : kAvailableOperandCodes) { if (newOperandCode == originalOperandCode) { continue; } // DEQUANTIZE's output can be either TENSOR_FLOAT16 or TENSOR_FLOAT32. if (mOpCode == ANEURALNETWORKS_DEQUANTIZE && (newOperandCode == ANEURALNETWORKS_TENSOR_FLOAT16 || newOperandCode == ANEURALNETWORKS_TENSOR_FLOAT32)) { continue; } // QUANTIZE's output can be either TENSOR_QUANT8_ASYMM or // TENSOR_QUANT8_ASYMM_SIGNED. if (mOpCode == ANEURALNETWORKS_QUANTIZE && i == 0 && (newOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM || newOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED)) { continue; } // CAST accepts any of supported types for any of input types if (mOpCode == ANEURALNETWORKS_CAST && i == 0 && (newOperandCode == ANEURALNETWORKS_TENSOR_FLOAT16 || newOperandCode == ANEURALNETWORKS_TENSOR_FLOAT32 || newOperandCode == ANEURALNETWORKS_TENSOR_INT32 || newOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM)) { continue; } newType.operandType.type = newOperandCode; std::vector outputs = mValidOutputs; outputs[i] = newType; int32_t result = addOperation(mValidInputs, outputs); if (ANEURALNETWORKS_NO_ERROR == result) { return false; } } } return true; } bool testMutatingInputOperandCounts() { uint32_t numToAdd = 5; // LSTM since API 29 supports 23 and 27 outputs. if (mOpCode == ANEURALNETWORKS_LSTM) { numToAdd = 3; } std::vector inputs = mValidInputs; for (uint32_t i = 0; i < numToAdd; i++) { inputs.push_back(inputs[0]); if (ANEURALNETWORKS_NO_ERROR == addOperation(inputs, mValidOutputs)) { return false; } } return true; } bool testMutatingOutputOperandCounts() { // SPLIT's number of outputs depends on a value of one of its inputs and // are not checked during validation. if (mOpCode == ANEURALNETWORKS_SPLIT) { return true; } std::vector outputs = mValidOutputs; for (int i = 0; i < 6; i++) { outputs.push_back(outputs[0]); if (ANEURALNETWORKS_NO_ERROR == addOperation(mValidInputs, outputs)) { if (mOpCode == ANEURALNETWORKS_UNIDIRECTIONAL_SEQUENCE_RNN && i < 1) { continue; } if (mOpCode == ANEURALNETWORKS_UNIDIRECTIONAL_SEQUENCE_LSTM && i < 3) { continue; } if (mOpCode == ANEURALNETWORKS_BIDIRECTIONAL_SEQUENCE_RNN && i < 3) { continue; } if (mOpCode == ANEURALNETWORKS_BIDIRECTIONAL_SEQUENCE_LSTM && i < 5) { continue; } return false; } } return true; } bool testMutatingInputRanks() { for (auto& rankMutator : mInputRankMutators) { for (const auto& validMutation : rankMutator.ValidInputsMutations(mValidInputs)) { int32_t result = addOperation(validMutation, mValidOutputs); if (ANEURALNETWORKS_NO_ERROR != result) { return false; } } for (const auto& invalidMutation : rankMutator.InvalidInputsMutations(mValidInputs)) { int32_t result = addOperation(invalidMutation, mValidOutputs); if (ANEURALNETWORKS_NO_ERROR == result) { return false; } } } return true; } private: ANeuralNetworksOperationType mOpCode; // The dimensions in the ANeuralNetworksOperandType must outlive the test object. std::vector mValidInputs; std::vector mValidOutputs; std::vector mInputRankMutators; }; std::ostream& operator<<(std::ostream& os, const OperandTypeWithExtraParams& operand) { const auto& operandType = operand.operandType; os << "{ operand_type: { type: " << operandType.type << ", " << "dimensionCount: " << operandType.dimensionCount << ", dimensions: ["; std::for_each(operandType.dimensions, operandType.dimensions + operandType.dimensionCount, [&os](uint32_t dimension) { os << dimension << ", "; }); os << "], scale: " << operandType.scale << ", zeroPoint: " << operandType.zeroPoint << " }"; const auto& channelQuant = operand.channelQuant; if (channelQuant.has_value()) { os << ", channelQuant { channelDim: " << channelQuant->channelDim << ", scaleCount: " << channelQuant->scaleCount << ", scales: ["; std::for_each(channelQuant->scales, channelQuant->scales + channelQuant->scaleCount, [&os](float scale) { os << scale << ", "; }); os << "] }"; } else { os << ", channelQuant: nullopt"; } os << "}"; return os; } inline OperandTypeWithExtraParams MutationWithDimensions( const OperandTypeWithExtraParams& origin, const std::vector& expectedDims) { OperandTypeWithExtraParams expected = origin; expected.operandType.dimensionCount = expectedDims.size(); if (expectedDims.size() == 0) { expected.operandType.dimensions = nullptr; } else { expected.operandType.dimensions = expectedDims.data(); } return expected; } std::string DescribeMutationWithDimensions(const OperandTypeWithExtraParams& origin, const std::vector& expectedDims) { std::ostringstream osstream; osstream << MutationWithDimensions(origin, expectedDims); return osstream.str(); } MATCHER_P2(IsMutationWithDimensions, origin, expectedDims, DescribeMutationWithDimensions(origin, expectedDims)) { return arg == MutationWithDimensions(origin, expectedDims); } TEST(TensorRankConstraint, ExactlyWillReturnSameInputAsValidMutation) { uint32_t opDimensions[3] = {2, 2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 3, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::Exactly(3); auto validMutationSet = constraint.MutationsWithValidRank({operand}); ASSERT_EQ(validMutationSet.size(), 1u); auto validMutations = *validMutationSet.begin(); ASSERT_EQ(validMutations.size(), 1u); EXPECT_THAT(validMutations[0], IsMutationWithDimensions(operand, std::vector({2, 2, 2}))); }; TEST(TensorRankConstraint, ExactlyWillFailIfValidInputHasInvalidSize) { uint32_t opDimensions[2] = {2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 2, .dimensions = opDimensions, }}; EXPECT_DEATH(TensorRankConstraint::Exactly(3).MutationsWithValidRank({operand}), ".*assertion.+failed.*"); }; TEST(TensorRankConstraint, ExactlyWillReturnTwoInvalidMutationsWithLowerAndHigherRank) { uint32_t opDimensions[3] = {2, 2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 3, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::Exactly(3); auto invalidMutations = constraint.MutationsWithInvalidRank({operand}); ASSERT_EQ(invalidMutations.size(), 2u); std::for_each(invalidMutations.begin(), invalidMutations.end(), [&operand](const std::vector& mutations) { EXPECT_EQ(mutations.size(), 1u); if (mutations.size() == 1) { EXPECT_THAT( mutations[0], ::testing::AnyOf( IsMutationWithDimensions(operand, std::vector({2, 2})), IsMutationWithDimensions( operand, std::vector({2, 2, 2, 1})))); } }); }; TEST(TensorRankConstraint, AtLeastWillReturnTwoValidMutationsAboveThreshold) { uint32_t opDimensions[3] = {2, 2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 2, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::AtLeast(1); auto invalidMutations = constraint.MutationsWithValidRank({(OperandTypeWithExtraParams)operand}); ASSERT_EQ(invalidMutations.size(), 2u); std::for_each( invalidMutations.begin(), invalidMutations.end(), [&operand](const std::vector& mutations) { EXPECT_EQ(mutations.size(), 1u); if (mutations.size() == 1) { EXPECT_THAT(mutations[0], ::testing::AnyOf(IsMutationWithDimensions( operand, std::vector({2})), IsMutationWithDimensions( operand, std::vector({2, 2})))); } }); } TEST(TensorRankConstraint, AtLeastWillReturnOneInvalidMutationsBelowThreshold) { uint32_t opDimensions[2] = {2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 2, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::AtLeast(2); auto invalidMutations = constraint.MutationsWithInvalidRank({(OperandTypeWithExtraParams)operand}); ASSERT_EQ(invalidMutations.size(), 1u); auto invalidMutationVector = *invalidMutations.begin(); ASSERT_EQ(invalidMutationVector.size(), 1u); ASSERT_THAT(invalidMutationVector[0], IsMutationWithDimensions(operand, std::vector({2}))); } TEST(TensorRankConstraint, AtLeastWillReturnNoInvalidMutationsIfThresholdIs1) { uint32_t opDimensions[1] = {2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::AtLeast(1); auto invalidMutations = constraint.MutationsWithInvalidRank({(OperandTypeWithExtraParams)operand}); ASSERT_EQ(invalidMutations.size(), 0u); } TEST(TensorRankConstraint, UpToWillReturnUpToTwoValidMutationsBelowThreshold) { uint32_t opDimensions[3] = {2, 2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 2, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::UpTo(3); auto invalidMutations = constraint.MutationsWithValidRank({(OperandTypeWithExtraParams)operand}); auto expected = std::vector({7, 7}); ASSERT_EQ(invalidMutations.size(), 2u); std::for_each(invalidMutations.begin(), invalidMutations.end(), [&operand](const std::vector& mutations) { EXPECT_EQ(mutations.size(), 1u); if (mutations.size() == 1) { EXPECT_THAT(mutations[0], ::testing::AnyOf( IsMutationWithDimensions(operand, std::vector({2})), IsMutationWithDimensions( operand, std::vector({2, 2, 1})))); } }); } TEST(TensorRankConstraint, UpToWillReturnOneInvalidMutationsAboveThreshold) { uint32_t opDimensions[3] = {2, 2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 3, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::UpTo(3); auto invalidMutations = constraint.MutationsWithInvalidRank({(OperandTypeWithExtraParams)operand}); ASSERT_EQ(invalidMutations.size(), 1u); auto invalidMutationVector = *invalidMutations.begin(); ASSERT_EQ(invalidMutationVector.size(), 1u); ASSERT_THAT(invalidMutationVector[0], IsMutationWithDimensions(operand, std::vector({2, 2, 2, 1}))); } TEST(TensorRankConstraint, BetweenWillReturnTwoValidMutationsOnRangeBoundaries) { uint32_t opDimensions[3] = {2, 2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 3, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::Between(2, 4); auto validMutations = constraint.MutationsWithValidRank({(OperandTypeWithExtraParams)operand}); ASSERT_EQ(validMutations.size(), 2u); std::for_each(validMutations.begin(), validMutations.end(), [&operand](const std::vector& mutations) { EXPECT_EQ(mutations.size(), 1u); if (mutations.size() == 1) { EXPECT_THAT( mutations[0], ::testing::AnyOf( IsMutationWithDimensions(operand, std::vector({2, 2})), IsMutationWithDimensions( operand, std::vector({2, 2, 2, 1})))); } }); } TEST(TensorRankConstraint, BetweenWillReturnTwoInvValidMutationsAdjacentToRangeBoundaries) { uint32_t opDimensions[3] = {2, 2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 3, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::Between(2, 4); auto validMutations = constraint.MutationsWithInvalidRank({(OperandTypeWithExtraParams)operand}); ASSERT_EQ(validMutations.size(), 2u); std::for_each( validMutations.begin(), validMutations.end(), [&operand](const std::vector& mutations) { EXPECT_EQ(mutations.size(), 1u); if (mutations.size() == 1) { EXPECT_THAT( mutations[0], ::testing::AnyOf( IsMutationWithDimensions(operand, std::vector({2})), IsMutationWithDimensions( operand, std::vector({2, 2, 2, 1, 1})))); } }); } TEST(TensorRankConstraint, BetweenWillReturnOneInvalidMutationsOnlyIfLowerBoundIs1) { uint32_t opDimensions[3] = {2, 2, 2}; OperandTypeWithExtraParams operand{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 3, .dimensions = opDimensions, }}; auto constraint = TensorRankConstraint::Between(1, 4); auto invalidMutations = constraint.MutationsWithInvalidRank({(OperandTypeWithExtraParams)operand}); ASSERT_EQ(invalidMutations.size(), 1u); auto invalidMutationVector = *invalidMutations.begin(); ASSERT_EQ(invalidMutationVector.size(), 1u); ASSERT_THAT(invalidMutationVector[0], IsMutationWithDimensions(operand, std::vector({2, 2, 2, 1, 1}))); } TEST(TensorRankMutator, AppliesConstraintToInputsAtGivenInputsToGenerateValidMutations) { uint32_t opDimensions0[2] = {0, 0}; OperandTypeWithExtraParams operand0{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 2, .dimensions = opDimensions0, }}; uint32_t opDimensions1[1] = {1}; OperandTypeWithExtraParams operand1{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = opDimensions1, }}; uint32_t opDimensions2[2] = {2, 2}; OperandTypeWithExtraParams operand2{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 2, .dimensions = opDimensions2, }}; TensorRankMutator mutator{TensorRankConstraint::AtLeast(2), {0, 2}}; const auto mutationSet = mutator.ValidInputsMutations({operand0, operand1, operand2}); ASSERT_EQ(mutationSet.size(), 2u); std::for_each(mutationSet.begin(), mutationSet.end(), [&](const std::vector& mutatedInputs) { EXPECT_EQ(mutatedInputs.size(), 3u); if (mutatedInputs.size() == 3) { EXPECT_EQ(mutatedInputs[0].operandType.dimensionCount, mutatedInputs[2].operandType.dimensionCount); EXPECT_THAT(mutatedInputs[0], ::testing::AnyOf( IsMutationWithDimensions( operand0, std::vector({0, 0})), IsMutationWithDimensions( operand0, std::vector({0, 0, 1})))); EXPECT_EQ(mutatedInputs[1], operand1); EXPECT_THAT(mutatedInputs[2], ::testing::AnyOf( IsMutationWithDimensions( operand2, std::vector({2, 2})), IsMutationWithDimensions( operand2, std::vector({2, 2, 1})))); } }); } TEST(TensorRankMutator, AppliesConstraintToInputsAtGivenInputsToGenerateInvalidMutations) { uint32_t opDimensions0[2] = {0, 0}; OperandTypeWithExtraParams operand0{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 2, .dimensions = opDimensions0, }}; uint32_t opDimensions1[1] = {1}; OperandTypeWithExtraParams operand1{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = opDimensions1, }}; uint32_t opDimensions2[2] = {2, 2}; OperandTypeWithExtraParams operand2{ANeuralNetworksOperandType{ .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 2, .dimensions = opDimensions2, }}; TensorRankMutator mutator{TensorRankConstraint::AtLeast(2), {0, 2}}; const auto mutationSet = mutator.InvalidInputsMutations({operand0, operand1, operand2}); ASSERT_EQ(mutationSet.size(), 1u); std::for_each( mutationSet.begin(), mutationSet.end(), [&](const std::vector& mutatedInputs) { EXPECT_EQ(mutatedInputs.size(), 3u); if (mutatedInputs.size() == 3) { EXPECT_THAT(mutatedInputs[0], IsMutationWithDimensions(operand0, std::vector({0}))); EXPECT_EQ(mutatedInputs[1], operand1); EXPECT_THAT(mutatedInputs[2], IsMutationWithDimensions(operand2, std::vector({2}))); } }); } void argMinMaxTest(ANeuralNetworksOperationType operationCode, int32_t inputOperandType) { SCOPED_TRACE(inputOperandType); uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input0 = getOpType(inputOperandType, 4, inputDimensions); ANeuralNetworksOperandType axis = { .type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, }; uint32_t outputDimensions[3] = {2, 2, 2}; ANeuralNetworksOperandType output = { .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 3, .dimensions = outputDimensions, }; OperationTestBase test(operationCode, {input0, axis}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, ARGMIN) { argMinMaxTest(ANEURALNETWORKS_ARGMIN, ANEURALNETWORKS_TENSOR_FLOAT16); argMinMaxTest(ANEURALNETWORKS_ARGMIN, ANEURALNETWORKS_TENSOR_FLOAT32); argMinMaxTest(ANEURALNETWORKS_ARGMIN, ANEURALNETWORKS_TENSOR_INT32); argMinMaxTest(ANEURALNETWORKS_ARGMIN, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); argMinMaxTest(ANEURALNETWORKS_ARGMIN, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, ARGMAX) { argMinMaxTest(ANEURALNETWORKS_ARGMAX, ANEURALNETWORKS_TENSOR_FLOAT16); argMinMaxTest(ANEURALNETWORKS_ARGMAX, ANEURALNETWORKS_TENSOR_FLOAT32); argMinMaxTest(ANEURALNETWORKS_ARGMAX, ANEURALNETWORKS_TENSOR_INT32); argMinMaxTest(ANEURALNETWORKS_ARGMAX, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); argMinMaxTest(ANEURALNETWORKS_ARGMAX, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void dequantizeOpTest(int32_t inputOperandType, int32_t outputOperandType) { SCOPED_TRACE(testing::Message() << "inputType: " << inputOperandType << ", outputType: " << outputOperandType); uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(inputOperandType, 4, inputDimensions); ANeuralNetworksOperandType output = getOpType(outputOperandType, 4, inputDimensions); OperationTestBase dequantizeTest(ANEURALNETWORKS_DEQUANTIZE, {input}, {output}, {{TensorRankConstraint::UpTo(4)}}); dequantizeTest.testOpsValidations(); } TEST(OperationValidationTest, DEQUANTIZE) { dequantizeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_FLOAT16); dequantizeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_FLOAT32); dequantizeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_SYMM, ANEURALNETWORKS_TENSOR_FLOAT16); dequantizeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_SYMM, ANEURALNETWORKS_TENSOR_FLOAT32); dequantizeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL, ANEURALNETWORKS_TENSOR_FLOAT16); dequantizeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL, ANEURALNETWORKS_TENSOR_FLOAT32); dequantizeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_FLOAT16); dequantizeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_FLOAT32); } void expandDimsTest(int32_t inputOperandType) { SCOPED_TRACE(inputOperandType); uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input0 = getOpType(inputOperandType, 4, inputDimensions); ANeuralNetworksOperandType axis = { .type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, }; uint32_t outputDimensions[5] = {2, 2, 2, 2, 2}; ANeuralNetworksOperandType output = getOpType(inputOperandType, 5, outputDimensions); OperationTestBase test(ANEURALNETWORKS_EXPAND_DIMS, {input0, axis}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, EXPAND_DIMS) { expandDimsTest(ANEURALNETWORKS_TENSOR_FLOAT16); expandDimsTest(ANEURALNETWORKS_TENSOR_FLOAT32); expandDimsTest(ANEURALNETWORKS_TENSOR_INT32); expandDimsTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); expandDimsTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void gatherTest(int32_t inputOperandType) { SCOPED_TRACE(inputOperandType); uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input0 = getOpType(inputOperandType, 4, inputDimensions); ANeuralNetworksOperandType axis = { .type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, }; ANeuralNetworksOperandType input2 = { .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 4, .dimensions = inputDimensions, }; uint32_t outputDimensions[7] = {2, 2, 2, 2, 2, 2, 2}; ANeuralNetworksOperandType output = getOpType(inputOperandType, 7, outputDimensions); OperationTestBase test(ANEURALNETWORKS_GATHER, {input0, axis, input2}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, GATHER) { gatherTest(ANEURALNETWORKS_TENSOR_FLOAT16); gatherTest(ANEURALNETWORKS_TENSOR_FLOAT32); gatherTest(ANEURALNETWORKS_TENSOR_INT32); gatherTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); gatherTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void quantizeOpTest(int32_t inputOperandCode, int32_t outputOperandCode) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = { .type = inputOperandCode, .dimensionCount = 4, .dimensions = inputDimensions}; ANeuralNetworksOperandType output = {.type = outputOperandCode, .dimensionCount = 4, .dimensions = inputDimensions, .scale = 1.0f, .zeroPoint = 0}; OperationTestBase test(ANEURALNETWORKS_QUANTIZE, {input}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, QUANTIZE_float16) { quantizeOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); quantizeOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, QUANTIZE_float32) { quantizeOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); quantizeOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, QUANTIZED_16BIT_LSTM) { uint32_t oneDimensional[1] = {5}; uint32_t twoDimensional[2] = {5, 5}; ANeuralNetworksOperandType int32Tensor1D = { .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 0.0000318, .zeroPoint = 0, }; ANeuralNetworksOperandType quant8Tensor2D = { .type = ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.00408021, .zeroPoint = 100, }; ANeuralNetworksOperandType quant16Tensor2D = { .type = ANEURALNETWORKS_TENSOR_QUANT16_SYMM, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 1.0 / 2048, .zeroPoint = 0, }; ANeuralNetworksOperandType input = quant8Tensor2D; ANeuralNetworksOperandType input_to_input_weights = quant8Tensor2D; ANeuralNetworksOperandType input_to_forget_weights = quant8Tensor2D; ANeuralNetworksOperandType input_to_cell_weights = quant8Tensor2D; ANeuralNetworksOperandType input_to_output_weights = quant8Tensor2D; ANeuralNetworksOperandType recurrent_to_input_weights = quant8Tensor2D; ANeuralNetworksOperandType recurrent_to_forget_weights = quant8Tensor2D; ANeuralNetworksOperandType recurrent_to_cell_weights = quant8Tensor2D; ANeuralNetworksOperandType recurrent_to_output_weights = quant8Tensor2D; ANeuralNetworksOperandType input_gate_bias = int32Tensor1D; ANeuralNetworksOperandType forget_gate_bias = int32Tensor1D; ANeuralNetworksOperandType cell_gate_bias = int32Tensor1D; ANeuralNetworksOperandType output_gate_bias = int32Tensor1D; ANeuralNetworksOperandType prev_cell_state = quant16Tensor2D; ANeuralNetworksOperandType prev_output = quant8Tensor2D; ANeuralNetworksOperandType cell_state_out = quant16Tensor2D; ANeuralNetworksOperandType output = quant8Tensor2D; OperationTestBase test( ANEURALNETWORKS_QUANTIZED_16BIT_LSTM, {input, input_to_input_weights, input_to_forget_weights, input_to_cell_weights, input_to_output_weights, recurrent_to_input_weights, recurrent_to_forget_weights, recurrent_to_cell_weights, recurrent_to_output_weights, input_gate_bias, forget_gate_bias, cell_gate_bias, output_gate_bias, prev_cell_state, prev_output}, {cell_state_out, output}); test.testOpsValidations(); } void splitTest(int32_t inputOperandType) { SCOPED_TRACE(inputOperandType); uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input0 = getOpType(inputOperandType, 4, inputDimensions); ANeuralNetworksOperandType axis = { .type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, }; ANeuralNetworksOperandType count = { .type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, }; uint32_t outputDimensions[2] = {2, 2}; ANeuralNetworksOperandType output0 = getOpType(inputOperandType, 2, outputDimensions); ANeuralNetworksOperandType output1 = getOpType(inputOperandType, 2, outputDimensions); OperationTestBase test(ANEURALNETWORKS_SPLIT, {input0, axis, count}, {output0, output1}); test.testOpsValidations(); } TEST(OperationValidationTest, SPLIT) { splitTest(ANEURALNETWORKS_TENSOR_FLOAT16); splitTest(ANEURALNETWORKS_TENSOR_FLOAT32); splitTest(ANEURALNETWORKS_TENSOR_INT32); splitTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); splitTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void tileTest(int32_t inputOperandType) { SCOPED_TRACE(inputOperandType); uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input0 = getOpType(inputOperandType, 4, inputDimensions); uint32_t multiplesDimensions[1] = {4}; ANeuralNetworksOperandType multiples = { .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = multiplesDimensions, }; uint32_t outputDimensions[8] = {2, 2, 2, 2, 2, 2, 2, 2}; ANeuralNetworksOperandType output0 = getOpType(inputOperandType, 8, outputDimensions); OperationTestBase test(ANEURALNETWORKS_TILE, {input0, multiples}, {output0}); test.testOpsValidations(); } TEST(OperationValidationTest, TILE) { tileTest(ANEURALNETWORKS_TENSOR_FLOAT16); tileTest(ANEURALNETWORKS_TENSOR_FLOAT32); tileTest(ANEURALNETWORKS_TENSOR_INT32); tileTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); tileTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void topkV2Test(int32_t inputOperandType) { SCOPED_TRACE(inputOperandType); uint32_t inputDimensions[4] = {4, 5, 6, 7}; ANeuralNetworksOperandType input = getOpType(inputOperandType, 4, inputDimensions); ANeuralNetworksOperandType k = getOpType(ANEURALNETWORKS_INT32); uint32_t outputDimensions[4] = {4, 5, 6, 3}; ANeuralNetworksOperandType outputValues = getOpType(inputOperandType, 4, outputDimensions); ANeuralNetworksOperandType outputIndices = getOpType(ANEURALNETWORKS_TENSOR_INT32, 4, outputDimensions); OperationTestBase test(ANEURALNETWORKS_TOPK_V2, {input, k}, {outputValues, outputIndices}); test.testOpsValidations(); } TEST(OperationValidationTest, TOPK_V2) { topkV2Test(ANEURALNETWORKS_TENSOR_FLOAT16); topkV2Test(ANEURALNETWORKS_TENSOR_FLOAT32); topkV2Test(ANEURALNETWORKS_TENSOR_INT32); topkV2Test(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); topkV2Test(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void simpleMathOpTest(ANeuralNetworksOperationType operationCode, int32_t operandCode) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input1 = getOpType(operandCode, 4, inputDimensions); ANeuralNetworksOperandType input2 = input1; ANeuralNetworksOperandType output = input1; ANeuralNetworksOperandType activation = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase simpleMathTest( operationCode, {input1, input2, activation}, {output}, {{TensorRankConstraint::UpTo(4), {0}}, {TensorRankConstraint::UpTo(4), {1}}}); simpleMathTest.testOpsValidations(); } TEST(OperationValidationTest, ADD_float16) { simpleMathOpTest(ANEURALNETWORKS_ADD, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, ADD_float32) { simpleMathOpTest(ANEURALNETWORKS_ADD, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, ADD_quant8) { simpleMathOpTest(ANEURALNETWORKS_ADD, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, ADD_quant8_signed) { simpleMathOpTest(ANEURALNETWORKS_ADD, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, ADD_int32) { simpleMathOpTest(ANEURALNETWORKS_ADD, ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, MUL_float16) { simpleMathOpTest(ANEURALNETWORKS_MUL, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, MUL_float32) { simpleMathOpTest(ANEURALNETWORKS_MUL, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, MUL_quant8) { simpleMathOpTest(ANEURALNETWORKS_MUL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, MUL_quant8_signed) { simpleMathOpTest(ANEURALNETWORKS_MUL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, MUL_int32) { simpleMathOpTest(ANEURALNETWORKS_MUL, ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, SUB_float16) { simpleMathOpTest(ANEURALNETWORKS_SUB, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, SUB_float32) { simpleMathOpTest(ANEURALNETWORKS_SUB, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, SUB_quant8) { simpleMathOpTest(ANEURALNETWORKS_SUB, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, SUB_quant8_signed) { simpleMathOpTest(ANEURALNETWORKS_SUB, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, SUB_int32) { simpleMathOpTest(ANEURALNETWORKS_SUB, ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, DIV_float16) { simpleMathOpTest(ANEURALNETWORKS_DIV, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, DIV_float32) { simpleMathOpTest(ANEURALNETWORKS_DIV, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, DIV_int32) { simpleMathOpTest(ANEURALNETWORKS_DIV, ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, MUL_quant8_bad_output_scale) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input1 = getOpType(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, 4, inputDimensions); ANeuralNetworksOperandType input2 = input1; ANeuralNetworksOperandType output = input1; input1.scale = 1.0f; input2.scale = 1.0f; output.scale = 0.5f; ANeuralNetworksOperandType activation = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase mulTest(ANEURALNETWORKS_MUL, {input1, input2, activation}, {output}); mulTest.testFailure(ANEURALNETWORKS_BAD_DATA); } void binaryOpTest(ANeuralNetworksOperationType operationCode, int32_t operandCode) { uint32_t inputDimensions[] = {2, 2, 2, 2, 2}; ANeuralNetworksOperandType input1 = getOpType(operandCode, 5, inputDimensions); ANeuralNetworksOperandType input2 = input1; ANeuralNetworksOperandType output = input1; OperationTestBase test(operationCode, {input1, input2}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, MAXIMUM_float16) { binaryOpTest(ANEURALNETWORKS_MAXIMUM, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, MAXIMUM_float32) { binaryOpTest(ANEURALNETWORKS_MAXIMUM, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, MAXIMUM_int32) { binaryOpTest(ANEURALNETWORKS_MAXIMUM, ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, MAXIMUM_quant8) { binaryOpTest(ANEURALNETWORKS_MAXIMUM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, MAXIMUM_quant8signed) { binaryOpTest(ANEURALNETWORKS_MAXIMUM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, MINIMUM_float16) { binaryOpTest(ANEURALNETWORKS_MINIMUM, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, MINIMUM_float32) { binaryOpTest(ANEURALNETWORKS_MINIMUM, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, MINIMUM_int32) { binaryOpTest(ANEURALNETWORKS_MINIMUM, ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, MINIMUM_quant8) { binaryOpTest(ANEURALNETWORKS_MINIMUM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, MINIMUM_quant8signed) { binaryOpTest(ANEURALNETWORKS_MINIMUM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void activationOpTest(ANeuralNetworksOperationType operationCode, int32_t operandCode) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(operandCode, 4, inputDimensions); ANeuralNetworksOperandType output = input; std::vector inputRankMutators; if (operationCode == ANEURALNETWORKS_FLOOR || operationCode == ANEURALNETWORKS_LOGISTIC || operationCode == ANEURALNETWORKS_RELU || operationCode == ANEURALNETWORKS_RELU1 || operationCode == ANEURALNETWORKS_RELU6 || operationCode == ANEURALNETWORKS_TANH) { inputRankMutators.push_back({TensorRankConstraint::UpTo(4)}); } OperationTestBase test(operationCode, {input}, {output}, inputRankMutators); test.testOpsValidations(); } TEST(OperationValidationTest, ABS_float16) { activationOpTest(ANEURALNETWORKS_ABS, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, ABS_float32) { activationOpTest(ANEURALNETWORKS_ABS, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, ABS_int32) { activationOpTest(ANEURALNETWORKS_ABS, ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, EXP_float16) { activationOpTest(ANEURALNETWORKS_EXP, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, EXP_float32) { activationOpTest(ANEURALNETWORKS_EXP, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, LOG_float16) { activationOpTest(ANEURALNETWORKS_LOG, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, LOG_float32) { activationOpTest(ANEURALNETWORKS_LOG, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, RSQRT_float16) { activationOpTest(ANEURALNETWORKS_RSQRT, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, RSQRT_float32) { activationOpTest(ANEURALNETWORKS_RSQRT, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, SIN_float16) { activationOpTest(ANEURALNETWORKS_SIN, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, SIN_float32) { activationOpTest(ANEURALNETWORKS_SIN, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, SQRT_float16) { activationOpTest(ANEURALNETWORKS_SQRT, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, SQRT_float32) { activationOpTest(ANEURALNETWORKS_SQRT, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, NEG_float16) { activationOpTest(ANEURALNETWORKS_NEG, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, NEG_float32) { activationOpTest(ANEURALNETWORKS_NEG, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, NEG_int32) { activationOpTest(ANEURALNETWORKS_NEG, ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, FLOOR_float16) { activationOpTest(ANEURALNETWORKS_FLOOR, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, FLOOR_float32) { activationOpTest(ANEURALNETWORKS_FLOOR, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, LOGICAL_NOT_bool) { activationOpTest(ANEURALNETWORKS_LOGICAL_NOT, ANEURALNETWORKS_TENSOR_BOOL8); } TEST(OperationValidationTest, TANH_float16) { activationOpTest(ANEURALNETWORKS_TANH, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, TANH_float32) { activationOpTest(ANEURALNETWORKS_TANH, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, TANH_quant8) { activationOpTest(ANEURALNETWORKS_TANH, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, TANH_quant8_signed) { activationOpTest(ANEURALNETWORKS_TANH, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, RELU_float16) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, RELU1_float16) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, RELU6_float16) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, RELU_float32) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, RELU1_float32) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, RELU6_float32) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, RELU_quant8) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, RELU1_quant8) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, RELU6_quant8) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, RELU_quant8_signed) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, RELU1_quant8_signed) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, RELU6_quant8_signed) { activationOpTest(ANEURALNETWORKS_RELU, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, LOGISTIC_float16) { activationOpTest(ANEURALNETWORKS_LOGISTIC, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, LOGISTIC_float32) { activationOpTest(ANEURALNETWORKS_LOGISTIC, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, LOGISTIC_quant8) { activationOpTest(ANEURALNETWORKS_LOGISTIC, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, LOGISTIC_quant8_signed) { activationOpTest(ANEURALNETWORKS_LOGISTIC, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, HARD_SWISH_float16) { activationOpTest(ANEURALNETWORKS_HARD_SWISH, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, HARD_SWISH_float32) { activationOpTest(ANEURALNETWORKS_HARD_SWISH, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, HARD_SWISH_quant8) { activationOpTest(ANEURALNETWORKS_HARD_SWISH, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, HARD_SWISH_quant8_signed) { activationOpTest(ANEURALNETWORKS_HARD_SWISH, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void eluOpTest(int32_t operandCode) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(operandCode, 4, inputDimensions); ANeuralNetworksOperandType alpha = (operandCode == ANEURALNETWORKS_TENSOR_FLOAT32) ? getOpType(ANEURALNETWORKS_FLOAT32) : getOpType(ANEURALNETWORKS_FLOAT16); ANeuralNetworksOperandType output = input; OperationTestBase test(ANEURALNETWORKS_ELU, {input, alpha}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, ELU_float16) { eluOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, ELU_float32) { eluOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } void reshapeOpTest(int32_t inputOperandCode) { SCOPED_TRACE(inputOperandCode); uint32_t inputDimensions[3] = {2, 3, 4}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 3, inputDimensions); uint32_t shapeDims[1] = {2}; ANeuralNetworksOperandType shape = getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, shapeDims); uint32_t outputDimensions[2] = {4, 6}; ANeuralNetworksOperandType output = getOpType(inputOperandCode, 2, outputDimensions); OperationTestBase test(ANEURALNETWORKS_RESHAPE, {input, shape}, {output}, {{TensorRankConstraint::UpTo(4)}}); test.testOpsValidations(); } TEST(OperationValidationTest, RESHAPE) { reshapeOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); reshapeOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); reshapeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); reshapeOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void logSoftmaxOpTest(int32_t inputOperandCode) { uint32_t inputDimensions[3] = {2, 2, 2}; ANeuralNetworksOperandType input = {.type = inputOperandCode, .dimensionCount = 3, .dimensions = inputDimensions, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType beta = {.type = (inputOperandCode == ANEURALNETWORKS_TENSOR_FLOAT32) ? ANEURALNETWORKS_FLOAT32 : ANEURALNETWORKS_FLOAT16, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType axis = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType output = {.type = inputOperandCode, .dimensionCount = 3, .dimensions = inputDimensions, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase test(ANEURALNETWORKS_LOG_SOFTMAX, {input, beta, axis}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, LOG_SOFTMAX_float16) { logSoftmaxOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, LOG_SOFTMAX_float32) { logSoftmaxOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } void meanOpTest(int32_t inputOperandCode) { uint32_t inputDimensions[3] = {2, 2, 2}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 3, inputDimensions); ANeuralNetworksOperandType dims = getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, inputDimensions); ANeuralNetworksOperandType keepDims = getOpType(ANEURALNETWORKS_INT32); ANeuralNetworksOperandType output = getOpType(inputOperandCode, 3, inputDimensions); OperationTestBase test(ANEURALNETWORKS_MEAN, {input, dims, keepDims}, {output}, {{TensorRankConstraint::UpTo(4)}}); test.testOpsValidations(); } TEST(OperationValidationTest, MEAN_float16) { meanOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, MEAN_float32) { meanOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, MEAN_quant8) { meanOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, MEAN_quant8_signed) { meanOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void padOpTest(int32_t inputOperandCode) { SCOPED_TRACE(inputOperandCode); uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 4, inputDimensions); uint32_t padSizeDimensions[1] = {4}; ANeuralNetworksOperandType padSize = getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, padSizeDimensions); uint32_t outputDimensions[4] = {4, 3, 4, 3}; ANeuralNetworksOperandType output = getOpType(inputOperandCode, 4, outputDimensions); OperationTestBase test(ANEURALNETWORKS_PAD, {input, padSize}, {output}, {{TensorRankConstraint::UpTo(4)}}); test.testOpsValidations(); } TEST(OperationValidationTest, PAD) { padOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); padOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); padOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); padOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void padV2OpTest(int32_t inputOperandCode) { SCOPED_TRACE(inputOperandCode); uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 4, inputDimensions); uint32_t padSizeDimensions[1] = {4}; ANeuralNetworksOperandType padSize = getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, padSizeDimensions); ANeuralNetworksOperandType padValue = getOpType(ANEURALNETWORKS_FLOAT32); if (inputOperandCode == ANEURALNETWORKS_TENSOR_FLOAT16) { padValue = getOpType(ANEURALNETWORKS_FLOAT16); } else if (inputOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM || inputOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED) { padValue = getOpType(ANEURALNETWORKS_INT32); } uint32_t outputDimensions[4] = {4, 3, 4, 3}; ANeuralNetworksOperandType output = getOpType(inputOperandCode, 4, outputDimensions); OperationTestBase test(ANEURALNETWORKS_PAD_V2, {input, padSize, padValue}, {output}, {{TensorRankConstraint::UpTo(4)}}); test.testOpsValidations(); } TEST(OperationValidationTest, PAD_V2) { padV2OpTest(ANEURALNETWORKS_TENSOR_FLOAT16); padV2OpTest(ANEURALNETWORKS_TENSOR_FLOAT32); padV2OpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); padV2OpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void softmaxOpTest(int32_t operandCode) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(operandCode, 4, inputDimensions); ANeuralNetworksOperandType output = input; ANeuralNetworksOperandType beta = getOpType(ANEURALNETWORKS_FLOAT32); if (operandCode == ANEURALNETWORKS_TENSOR_FLOAT16) { beta = getOpType(ANEURALNETWORKS_FLOAT16); } OperationTestBase softmaxTest(ANEURALNETWORKS_SOFTMAX, {input, beta}, {output}, {{TensorRankConstraint::UpTo(4)}}); softmaxTest.testOpsValidations(); ANeuralNetworksOperandType axis = getOpType(ANEURALNETWORKS_INT32); OperationTestBase softmaxAxisTest(ANEURALNETWORKS_SOFTMAX, {input, beta, axis}, {output}, {{TensorRankConstraint::UpTo(4)}}); softmaxAxisTest.testOpsValidations(); } TEST(OperationValidationTest, SOFTMAX_float16) { softmaxOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, SOFTMAX_float32) { softmaxOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, SOFTMAX_quant8) { softmaxOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, SOFTMAX_quant8_signed) { softmaxOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void poolingOpTest(ANeuralNetworksOperationType operationCode, int32_t operandCode) { uint32_t inputDimensions[4] = {2, 4, 4, 2}; ANeuralNetworksOperandType input = getOpType(operandCode, 4, inputDimensions); ANeuralNetworksOperandType output = input; ANeuralNetworksOperandType scalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType padLeft = scalar; ANeuralNetworksOperandType padRight = scalar; ANeuralNetworksOperandType padTop = scalar; ANeuralNetworksOperandType padBottom = scalar; ANeuralNetworksOperandType strideWidth = scalar; ANeuralNetworksOperandType strideHeight = scalar; ANeuralNetworksOperandType filterWidth = scalar; ANeuralNetworksOperandType filterHeight = scalar; ANeuralNetworksOperandType activation = scalar; OperationTestBase explicitPoolingTest(operationCode, {input, padLeft, padRight, padTop, padBottom, strideWidth, strideHeight, filterWidth, filterHeight, activation}, {output}); explicitPoolingTest.testOpsValidations(); ANeuralNetworksOperandType padImplicit = scalar; OperationTestBase implicitPoolingTest( operationCode, {input, padImplicit, strideWidth, strideHeight, filterWidth, filterHeight, activation}, {output}); implicitPoolingTest.testOpsValidations(); ANeuralNetworksOperandType layout = {.type = ANEURALNETWORKS_BOOL, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase explicitNchwPoolingTest( operationCode, {input, padLeft, padRight, padTop, padBottom, strideWidth, strideHeight, filterWidth, filterHeight, activation, layout}, {output}); explicitNchwPoolingTest.testOpsValidations(); OperationTestBase implicitNchwPoolingTest(operationCode, {input, padImplicit, strideWidth, strideHeight, filterWidth, filterHeight, activation, layout}, {output}); implicitNchwPoolingTest.testOpsValidations(); } TEST(OperationValidationTest, AVERAGE_POOL_2D_float16) { poolingOpTest(ANEURALNETWORKS_AVERAGE_POOL_2D, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, AVERAGE_POOL_2D_float32) { poolingOpTest(ANEURALNETWORKS_AVERAGE_POOL_2D, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, AVERAGE_POOL_2D_quant8) { poolingOpTest(ANEURALNETWORKS_AVERAGE_POOL_2D, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, AVERAGE_POOL_2D_quant8_signed) { poolingOpTest(ANEURALNETWORKS_AVERAGE_POOL_2D, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, MAX_POOL_2D_float32) { poolingOpTest(ANEURALNETWORKS_MAX_POOL_2D, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, MAX_POOL_2D_float16) { poolingOpTest(ANEURALNETWORKS_MAX_POOL_2D, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, MAX_POOL_2D_quant8) { poolingOpTest(ANEURALNETWORKS_MAX_POOL_2D, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, MAX_POOL_2D_quant8_signed) { poolingOpTest(ANEURALNETWORKS_MAX_POOL_2D, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, L2_POOL_2D_float16) { poolingOpTest(ANEURALNETWORKS_L2_POOL_2D, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, L2_POOL_2D_float32) { poolingOpTest(ANEURALNETWORKS_L2_POOL_2D, ANEURALNETWORKS_TENSOR_FLOAT32); } void spaceDepthOpTest(ANeuralNetworksOperationType operationCode, int32_t operandCode) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(operandCode, 4, inputDimensions); ANeuralNetworksOperandType block_size = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType output = input; OperationTestBase spaceDepthTest(operationCode, {input, block_size}, {output}); spaceDepthTest.testOpsValidations(); ANeuralNetworksOperandType layout = {.type = ANEURALNETWORKS_BOOL, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase spaceDepthNchwTest(operationCode, {input, block_size, layout}, {output}); spaceDepthNchwTest.testOpsValidations(); } TEST(OperationValidationTest, SPACE_TO_DEPTH_float16) { spaceDepthOpTest(ANEURALNETWORKS_SPACE_TO_DEPTH, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, DEPTH_TO_SPACE_float16) { spaceDepthOpTest(ANEURALNETWORKS_DEPTH_TO_SPACE, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, SPACE_TO_DEPTH_float32) { spaceDepthOpTest(ANEURALNETWORKS_SPACE_TO_DEPTH, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, DEPTH_TO_SPACE_float32) { spaceDepthOpTest(ANEURALNETWORKS_DEPTH_TO_SPACE, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, SPACE_TO_DEPTH_quant8) { spaceDepthOpTest(ANEURALNETWORKS_SPACE_TO_DEPTH, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, DEPTH_TO_SPACE_quant8) { spaceDepthOpTest(ANEURALNETWORKS_DEPTH_TO_SPACE, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, SPACE_TO_DEPTH_quant8signed) { spaceDepthOpTest(ANEURALNETWORKS_SPACE_TO_DEPTH, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, DEPTH_TO_SPACE_quant8signed) { spaceDepthOpTest(ANEURALNETWORKS_DEPTH_TO_SPACE, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void spaceBatchOpTest(ANeuralNetworksOperationType operationCode, int32_t operandCode) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(operandCode, 4, inputDimensions); uint32_t blockDimensions[1] = {2}; ANeuralNetworksOperandType blockShape = {.type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = blockDimensions, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType layout = {.type = ANEURALNETWORKS_BOOL, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType padding = blockShape; ANeuralNetworksOperandType output = input; if (operationCode == ANEURALNETWORKS_SPACE_TO_BATCH_ND) { OperationTestBase spaceBatchTest(operationCode, {input, blockShape, padding}, {output}); spaceBatchTest.testOpsValidations(); OperationTestBase spaceBatchNchwTest(operationCode, {input, blockShape, padding, layout}, {output}); spaceBatchNchwTest.testOpsValidations(); } else { OperationTestBase spaceBatchTest(operationCode, {input, blockShape}, {output}); spaceBatchTest.testOpsValidations(); OperationTestBase spaceBatchNchwTest(operationCode, {input, blockShape, layout}, {output}); spaceBatchNchwTest.testOpsValidations(); } } TEST(OperationValidationTest, SPACE_TO_BATCH_ND_float16) { spaceBatchOpTest(ANEURALNETWORKS_SPACE_TO_BATCH_ND, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, BATCH_TO_SPACE_ND_float16) { spaceBatchOpTest(ANEURALNETWORKS_BATCH_TO_SPACE_ND, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, SPACE_TO_BATCH_ND_float32) { spaceBatchOpTest(ANEURALNETWORKS_SPACE_TO_BATCH_ND, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, BATCH_TO_SPACE_ND_float32) { spaceBatchOpTest(ANEURALNETWORKS_BATCH_TO_SPACE_ND, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, SPACE_TO_BATCH_ND_quant8) { spaceBatchOpTest(ANEURALNETWORKS_SPACE_TO_BATCH_ND, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, BATCH_TO_SPACE_ND_quant8) { spaceBatchOpTest(ANEURALNETWORKS_BATCH_TO_SPACE_ND, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, SPACE_TO_BATCH_ND_quant8signed) { spaceBatchOpTest(ANEURALNETWORKS_SPACE_TO_BATCH_ND, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, BATCH_TO_SPACE_ND_quant8signed) { spaceBatchOpTest(ANEURALNETWORKS_BATCH_TO_SPACE_ND, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void transposeAndSqueezeOpTest(ANeuralNetworksOperationType operationCode, int32_t operandCode) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(operandCode, 4, inputDimensions); uint32_t blockDimensions[1] = {4}; ANeuralNetworksOperandType dims = {.type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = blockDimensions, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType output = input; OperationTestBase transposeAndSqueezeTest(operationCode, {input, dims}, {output}, {{TensorRankConstraint::UpTo(4)}}); transposeAndSqueezeTest.testOpsValidations(); } TEST(OperationValidationTest, TRANSPOSE_float16) { transposeAndSqueezeOpTest(ANEURALNETWORKS_TRANSPOSE, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, SQUEEZE_float16) { transposeAndSqueezeOpTest(ANEURALNETWORKS_SQUEEZE, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, TRANSPOSE_float32) { transposeAndSqueezeOpTest(ANEURALNETWORKS_TRANSPOSE, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, SQUEEZE_float32) { transposeAndSqueezeOpTest(ANEURALNETWORKS_SQUEEZE, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, TRANSPOSE_quant8) { transposeAndSqueezeOpTest(ANEURALNETWORKS_TRANSPOSE, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, TRANSPOSE_quant8signed) { transposeAndSqueezeOpTest(ANEURALNETWORKS_TRANSPOSE, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, SQUEEZE_quant8) { transposeAndSqueezeOpTest(ANEURALNETWORKS_SQUEEZE, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, SQUEEZE_quant8_signed) { transposeAndSqueezeOpTest(ANEURALNETWORKS_SQUEEZE, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void convOpTest(int32_t inputOperandCode, int32_t filterOperandCode) { uint32_t inputDimensions[4] = {2, 4, 4, 2}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 4, inputDimensions); ANeuralNetworksOperandType output = input; float filterScales[2] = {0.5f, 1.0f}; ANeuralNetworksOperandType filter = getOpType(filterOperandCode, 4, inputDimensions); ANeuralNetworksSymmPerChannelQuantParams filterChannelQuantParams = { .channelDim = 0, .scaleCount = 2, .scales = filterScales, }; uint32_t biasDimensions[1] = {2}; ANeuralNetworksOperandType bias = {.type = inputOperandCode, .dimensionCount = 1, .dimensions = biasDimensions, .scale = 0.0f, .zeroPoint = 0}; if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.25f; } if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.25f; } if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.0f; } ANeuralNetworksOperandType scalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType padLeft = scalar; ANeuralNetworksOperandType padRight = scalar; ANeuralNetworksOperandType padTop = scalar; ANeuralNetworksOperandType padBottom = scalar; ANeuralNetworksOperandType strideWidth = scalar; ANeuralNetworksOperandType strideHeight = scalar; ANeuralNetworksOperandType dilationHeightFactor = scalar; ANeuralNetworksOperandType dilationWidthFactor = scalar; ANeuralNetworksOperandType activation = scalar; OperationTestBase explicitConvTest(ANEURALNETWORKS_CONV_2D, {input, filter, bias, padLeft, padRight, padTop, padBottom, strideWidth, strideHeight, activation}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { explicitConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } explicitConvTest.testOpsValidations(); ANeuralNetworksOperandType padImplicit = scalar; OperationTestBase implicitConvTest( ANEURALNETWORKS_CONV_2D, {input, filter, bias, padImplicit, strideWidth, strideHeight, activation}, {output}, {{TensorRankConstraint::Exactly(4), {0, 1}}}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { implicitConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } implicitConvTest.testOpsValidations(); ANeuralNetworksOperandType layout = {.type = ANEURALNETWORKS_BOOL, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase explicitNchwConvTest( ANEURALNETWORKS_CONV_2D, {input, filter, bias, padLeft, padRight, padTop, padBottom, strideWidth, strideHeight, activation, layout}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { explicitNchwConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } explicitNchwConvTest.testOpsValidations(); OperationTestBase implicitNchwConvTest( ANEURALNETWORKS_CONV_2D, {input, filter, bias, padImplicit, strideWidth, strideHeight, activation, layout}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { implicitNchwConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } implicitNchwConvTest.testOpsValidations(); OperationTestBase explicitDilateConvTest( ANEURALNETWORKS_CONV_2D, {input, filter, bias, padLeft, padRight, padTop, padBottom, strideWidth, strideHeight, activation, layout, dilationWidthFactor, dilationHeightFactor}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { explicitDilateConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } explicitDilateConvTest.testOpsValidations(); OperationTestBase implicitDilateConvTest( ANEURALNETWORKS_CONV_2D, {input, filter, bias, padImplicit, strideWidth, strideHeight, activation, layout, dilationWidthFactor, dilationHeightFactor}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { implicitDilateConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } implicitDilateConvTest.testOpsValidations(); } TEST(OperationValidationTest, CONV_2D_float16) { convOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, CONV_2D_float32) { convOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, CONV_2D_quant8) { convOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, CONV_2D_quant8_per_channel) { convOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } TEST(OperationValidationTest, CONV_2D_quant8_signed) { convOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, CONV_2D_quant8_signed_per_channel) { convOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } void depthwiseConvOpTest(int32_t inputOperandCode, int32_t filterOperandCode) { uint32_t inputDimensions[4] = {1, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 4, inputDimensions); ANeuralNetworksOperandType output = input; float filterScales[2] = {0.5f, 1.0f}; ANeuralNetworksOperandType filter = getOpType(filterOperandCode, 4, inputDimensions); ANeuralNetworksSymmPerChannelQuantParams filterChannelQuantParams = { .channelDim = 3, .scaleCount = 2, .scales = filterScales, }; uint32_t biasDimensions[1] = {2}; ANeuralNetworksOperandType bias = {.type = inputOperandCode, .dimensionCount = 1, .dimensions = biasDimensions, .scale = 0.0f, .zeroPoint = 0}; if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM || filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.25f; } if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.0f; } ANeuralNetworksOperandType scalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType padLeft = scalar; ANeuralNetworksOperandType padRight = scalar; ANeuralNetworksOperandType padTop = scalar; ANeuralNetworksOperandType padBottom = scalar; ANeuralNetworksOperandType strideWidth = scalar; ANeuralNetworksOperandType strideHeight = scalar; ANeuralNetworksOperandType multiplier = scalar; ANeuralNetworksOperandType activation = scalar; OperationTestBase explicitDepthwiseConvTest( ANEURALNETWORKS_DEPTHWISE_CONV_2D, {input, filter, bias, padLeft, padRight, padTop, padBottom, strideWidth, strideHeight, multiplier, activation}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { explicitDepthwiseConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } explicitDepthwiseConvTest.testOpsValidations(); ANeuralNetworksOperandType padImplicit = scalar; OperationTestBase implicitDepthwiseConvTest( ANEURALNETWORKS_DEPTHWISE_CONV_2D, {input, filter, bias, padImplicit, strideWidth, strideHeight, multiplier, activation}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { implicitDepthwiseConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } implicitDepthwiseConvTest.testOpsValidations(); ANeuralNetworksOperandType layout = {.type = ANEURALNETWORKS_BOOL, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase explicitNchwDepthwiseConvTest( ANEURALNETWORKS_DEPTHWISE_CONV_2D, {input, filter, bias, padLeft, padRight, padTop, padBottom, strideWidth, strideHeight, multiplier, activation, layout}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { explicitNchwDepthwiseConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } explicitNchwDepthwiseConvTest.testOpsValidations(); OperationTestBase implicitNchwDepthwiseConvTest(ANEURALNETWORKS_DEPTHWISE_CONV_2D, {input, filter, bias, padImplicit, strideWidth, strideHeight, multiplier, activation, layout}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { implicitNchwDepthwiseConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } implicitNchwDepthwiseConvTest.testOpsValidations(); ANeuralNetworksOperandType dilationHeightFactor = scalar; ANeuralNetworksOperandType dilationWidthFactor = scalar; OperationTestBase explicitDilationDepthwiseConvTest( ANEURALNETWORKS_DEPTHWISE_CONV_2D, {input, filter, bias, padLeft, padRight, padTop, padBottom, strideWidth, strideHeight, multiplier, activation, layout, dilationWidthFactor, dilationHeightFactor}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { explicitDilationDepthwiseConvTest.setInputSymmPerChannelQuantParams( 1, filterChannelQuantParams); } explicitDilationDepthwiseConvTest.testOpsValidations(); OperationTestBase implicitDilationDepthwiseConvTest( ANEURALNETWORKS_DEPTHWISE_CONV_2D, {input, filter, bias, padImplicit, strideWidth, strideHeight, multiplier, activation, layout, dilationWidthFactor, dilationHeightFactor}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { implicitDilationDepthwiseConvTest.setInputSymmPerChannelQuantParams( 1, filterChannelQuantParams); } implicitDilationDepthwiseConvTest.testOpsValidations(); } TEST(OperationValidationTest, DEPTHWISE_CONV_2D_float32) { depthwiseConvOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, DEPTHWISE_CONV_2D_float16) { depthwiseConvOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, DEPTHWISE_CONV_2D_quant8) { depthwiseConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, DEPTHWISE_CONV_2D_quant8_per_channel) { depthwiseConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } TEST(OperationValidationTest, DEPTHWISE_CONV_2D_quant8_signed) { depthwiseConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, DEPTHWISE_CONV_2D_quant8_signed_per_channel) { depthwiseConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } void fullyConnectedOpTest(int32_t operandCode) { uint32_t inputDimensions[2] = {5, 5}; ANeuralNetworksOperandType input = getOpType(operandCode, 2, inputDimensions); ANeuralNetworksOperandType weights = input; ANeuralNetworksOperandType output = input; uint32_t biasDimensions[1] = {5}; ANeuralNetworksOperandType bias = {.type = operandCode, .dimensionCount = 1, .dimensions = biasDimensions, .scale = 0.0f, .zeroPoint = 0}; if (operandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM || operandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.25f; } ANeuralNetworksOperandType activation = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase fullyConnectedTest(ANEURALNETWORKS_FULLY_CONNECTED, {input, weights, bias, activation}, {output}, {{TensorRankConstraint::Between(2, 4), {0}}, {TensorRankConstraint::Exactly(2), {1}}, {TensorRankConstraint::Exactly(1), {2}}}); fullyConnectedTest.testOpsValidations(); } TEST(OperationValidationTest, FULLY_CONNECTED_float16) { fullyConnectedOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, FULLY_CONNECTED_float32) { fullyConnectedOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, FULLY_CONNECTED_quant8) { fullyConnectedOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, FULLY_CONNECTED_quant8_signed) { fullyConnectedOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void concatenationTest(int32_t operandCode) { uint32_t inputDimensions[2] = {5, 5}; ANeuralNetworksOperandType input1 = getOpType(operandCode, 2, inputDimensions); ANeuralNetworksOperandType input2 = input1; ANeuralNetworksOperandType output = input1; ANeuralNetworksOperandType activation = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase concat2Test(ANEURALNETWORKS_CONCATENATION, {input1, input2, activation}, {output}, {{TensorRankConstraint::UpTo(4), {0, 1}}}); concat2Test.testOpsValidations(); OperationTestBase concat1Test(ANEURALNETWORKS_CONCATENATION, {input1, activation}, {output}, {{TensorRankConstraint::UpTo(4)}}); concat1Test.testOpsValidations(); } TEST(OperationValidationTest, CONCATENATION_float16) { concatenationTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, CONCATENATION_float32) { concatenationTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, CONCATENATION_quant8) { concatenationTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, CONCATENATION_quant8_signed) { concatenationTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void resizeBilinearOpTest(int32_t inputOperandCode, int32_t scalarOperandCode) { SCOPED_TRACE(inputOperandCode); uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 4, inputDimensions); ANeuralNetworksOperandType height = getOpType(scalarOperandCode); ANeuralNetworksOperandType width = height; ANeuralNetworksOperandType output = input; OperationTestBase resizeTest(ANEURALNETWORKS_RESIZE_BILINEAR, {input, height, width}, {output}); resizeTest.testOpsValidations(); ANeuralNetworksOperandType layout = getOpType(ANEURALNETWORKS_BOOL); OperationTestBase resizeNchwTest(ANEURALNETWORKS_RESIZE_BILINEAR, {input, height, width, layout}, {output}); resizeNchwTest.testOpsValidations(); } TEST(OperationValidationTest, RESIZE_BILINEAR) { resizeBilinearOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_INT32); resizeBilinearOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_INT32); resizeBilinearOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_INT32); resizeBilinearOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_INT32); resizeBilinearOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_FLOAT16); resizeBilinearOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_FLOAT32); resizeBilinearOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_FLOAT32); resizeBilinearOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_FLOAT32); } void embeddingLookupTest(int32_t operandCode) { uint32_t lookupDimensions[1] = {5}; ANeuralNetworksOperandType lookup = {.type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = lookupDimensions, .scale = 0.0f, .zeroPoint = 0}; uint32_t inputDimensions[2] = {5, 5}; ANeuralNetworksOperandType input = getOpType(operandCode, 2, inputDimensions); ANeuralNetworksOperandType output = input; OperationTestBase embedLookupTest(ANEURALNETWORKS_EMBEDDING_LOOKUP, {lookup, input}, {output}); embedLookupTest.testOpsValidations(); } TEST(OperationValidationTest, EMBEDDING_LOOKUP_float32) { embeddingLookupTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, EMBEDDING_LOOKUP_int32) { embeddingLookupTest(ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, EMBEDDING_LOOKUP_quant8) { embeddingLookupTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, EMBEDDING_LOOKUP_quant8_signed) { embeddingLookupTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void hashtableLookupTest(int32_t operandCode) { uint32_t lookupDimensions[1] = {5}; ANeuralNetworksOperandType lookup = {.type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = lookupDimensions, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType keys = lookup; uint32_t valuesDimensions[2] = {5, 5}; ANeuralNetworksOperandType values = getOpType(operandCode, 2, valuesDimensions); ANeuralNetworksOperandType output = values; ANeuralNetworksOperandType hits = lookup; hits.type = ANEURALNETWORKS_TENSOR_QUANT8_ASYMM; hits.scale = 1.0f; OperationTestBase hashLookupTest(ANEURALNETWORKS_HASHTABLE_LOOKUP, {lookup, keys, values}, {output, hits}); hashLookupTest.testOpsValidations(); } TEST(OperationValidationTest, HASHTABLE_LOOKUP_float32) { hashtableLookupTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, HASHTABLE_LOOKUP_int32) { hashtableLookupTest(ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, HASHTABLE_LOOKUP_quant8) { hashtableLookupTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } void lshProjectionTest(int32_t operandCode, int32_t hashAndWeightOperandCode) { uint32_t inputDimensions[2] = {5, 5}; ANeuralNetworksOperandType hash = getOpType(hashAndWeightOperandCode, 2, inputDimensions); ANeuralNetworksOperandType input = getOpType(operandCode, 2, inputDimensions); uint32_t weightDimensions[1] = {5}; ANeuralNetworksOperandType weight = getOpType(hashAndWeightOperandCode, 1, weightDimensions); ANeuralNetworksOperandType type = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType output = weight; output.type = ANEURALNETWORKS_TENSOR_INT32; OperationTestBase lshProjTest(ANEURALNETWORKS_LSH_PROJECTION, {hash, input, weight, type}, {output}); lshProjTest.testOpsValidations(); } TEST(OperationValidationTest, LSH_PROJECTION_float16) { lshProjectionTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT32); lshProjectionTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, LSH_PROJECTION_float32) { lshProjectionTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32); lshProjectionTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, LSH_PROJECTION_quant8) { lshProjectionTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_FLOAT32); lshProjectionTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, LSH_PROJECTION_int32) { lshProjectionTest(ANEURALNETWORKS_TENSOR_INT32, ANEURALNETWORKS_TENSOR_FLOAT32); lshProjectionTest(ANEURALNETWORKS_TENSOR_INT32, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, LSTM_float32) { uint32_t oneDimensional[1] = {5}; uint32_t twoDimensional[2] = {5, 5}; ANeuralNetworksOperandType floatTensor1D = {.type = ANEURALNETWORKS_TENSOR_FLOAT32, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType floatTensor2D = {.type = ANEURALNETWORKS_TENSOR_FLOAT32, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType intScalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType floatScalar = {.type = ANEURALNETWORKS_FLOAT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType input = floatTensor2D; ANeuralNetworksOperandType inputToInput = floatTensor2D; ANeuralNetworksOperandType inputToForget = floatTensor2D; ANeuralNetworksOperandType inputToCell = floatTensor2D; ANeuralNetworksOperandType inputToOutput = floatTensor2D; ANeuralNetworksOperandType recurrentToInput = floatTensor2D; ANeuralNetworksOperandType recurrentToForget = floatTensor2D; ANeuralNetworksOperandType recurrentToCell = floatTensor2D; ANeuralNetworksOperandType recurrentToOutput = floatTensor2D; ANeuralNetworksOperandType cellToInput = floatTensor1D; ANeuralNetworksOperandType cellToForget = floatTensor1D; ANeuralNetworksOperandType cellToOutput = floatTensor1D; ANeuralNetworksOperandType inputGateBias = floatTensor1D; ANeuralNetworksOperandType forgetGateBias = floatTensor1D; ANeuralNetworksOperandType cellBias = floatTensor1D; ANeuralNetworksOperandType outputGateBias = floatTensor1D; ANeuralNetworksOperandType projWeights = floatTensor2D; ANeuralNetworksOperandType projBias = floatTensor1D; ANeuralNetworksOperandType outputStateIn = floatTensor2D; ANeuralNetworksOperandType cellStateIn = floatTensor2D; ANeuralNetworksOperandType activation = intScalar; ANeuralNetworksOperandType clipCellState = floatScalar; ANeuralNetworksOperandType clipProjLayer = floatScalar; ANeuralNetworksOperandType scratch = floatTensor2D; ANeuralNetworksOperandType outputStateOut = floatTensor2D; ANeuralNetworksOperandType cellStateOut = floatTensor2D; ANeuralNetworksOperandType output = floatTensor2D; OperationTestBase lstmTest(ANEURALNETWORKS_LSTM, {input, inputToInput, inputToForget, inputToCell, inputToOutput, recurrentToInput, recurrentToForget, recurrentToCell, recurrentToOutput, cellToInput, cellToForget, cellToOutput, inputGateBias, forgetGateBias, cellBias, outputGateBias, projWeights, projBias, outputStateIn, cellStateIn, activation, clipCellState, clipProjLayer}, {scratch, outputStateOut, cellStateOut, output}); lstmTest.testOpsValidations(); } void lstmTestV1_2(int32_t operandCode) { SCOPED_TRACE(operandCode); uint32_t oneDimensional[1] = {5}; uint32_t twoDimensional[2] = {5, 5}; ANeuralNetworksOperandType floatTensor1D = {.type = operandCode, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType floatTensor2D = {.type = operandCode, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType intScalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType floatScalar = { .type = (operandCode == ANEURALNETWORKS_TENSOR_FLOAT32) ? ANEURALNETWORKS_FLOAT32 : ANEURALNETWORKS_FLOAT16, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType input = floatTensor2D; ANeuralNetworksOperandType inputToInput = floatTensor2D; ANeuralNetworksOperandType inputToForget = floatTensor2D; ANeuralNetworksOperandType inputToCell = floatTensor2D; ANeuralNetworksOperandType inputToOutput = floatTensor2D; ANeuralNetworksOperandType recurrentToInput = floatTensor2D; ANeuralNetworksOperandType recurrentToForget = floatTensor2D; ANeuralNetworksOperandType recurrentToCell = floatTensor2D; ANeuralNetworksOperandType recurrentToOutput = floatTensor2D; ANeuralNetworksOperandType cellToInput = floatTensor1D; ANeuralNetworksOperandType cellToForget = floatTensor1D; ANeuralNetworksOperandType cellToOutput = floatTensor1D; ANeuralNetworksOperandType inputGateBias = floatTensor1D; ANeuralNetworksOperandType forgetGateBias = floatTensor1D; ANeuralNetworksOperandType cellBias = floatTensor1D; ANeuralNetworksOperandType outputGateBias = floatTensor1D; ANeuralNetworksOperandType projWeights = floatTensor2D; ANeuralNetworksOperandType projBias = floatTensor1D; ANeuralNetworksOperandType outputStateIn = floatTensor2D; ANeuralNetworksOperandType cellStateIn = floatTensor2D; ANeuralNetworksOperandType activation = intScalar; ANeuralNetworksOperandType clipCellState = floatScalar; ANeuralNetworksOperandType clipProjLayer = floatScalar; ANeuralNetworksOperandType inputLayerNormWeights = floatTensor1D; ANeuralNetworksOperandType forgetLayerNormWeights = floatTensor1D; ANeuralNetworksOperandType cellLayerNormWeights = floatTensor1D; ANeuralNetworksOperandType outputLayerNormWeights = floatTensor1D; ANeuralNetworksOperandType scratch = floatTensor2D; ANeuralNetworksOperandType outputStateOut = floatTensor2D; ANeuralNetworksOperandType cellStateOut = floatTensor2D; ANeuralNetworksOperandType output = floatTensor2D; OperationTestBase lstmTest(ANEURALNETWORKS_LSTM, {input, inputToInput, inputToForget, inputToCell, inputToOutput, recurrentToInput, recurrentToForget, recurrentToCell, recurrentToOutput, cellToInput, cellToForget, cellToOutput, inputGateBias, forgetGateBias, cellBias, outputGateBias, projWeights, projBias, outputStateIn, cellStateIn, activation, clipCellState, clipProjLayer, inputLayerNormWeights, forgetLayerNormWeights, cellLayerNormWeights, outputLayerNormWeights}, {scratch, outputStateOut, cellStateOut, output}); lstmTest.testOpsValidations(); } TEST(OperationValidationTest, LSTM_V1_2) { lstmTestV1_2(ANEURALNETWORKS_TENSOR_FLOAT32); lstmTestV1_2(ANEURALNETWORKS_TENSOR_FLOAT16); } void lstmBidirectionalSequence(int32_t operandCode) { uint32_t oneDimensional[1] = {5}; uint32_t twoDimensional[2] = {5, 5}; uint32_t threeDimensional[3] = {5, 5, 5}; ANeuralNetworksOperandType floatTensor1D = { .type = operandCode, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 0.0f, .zeroPoint = 0, }; ANeuralNetworksOperandType floatTensor2D = { .type = operandCode, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.0f, .zeroPoint = 0, }; ANeuralNetworksOperandType floatTensor3D = { .type = operandCode, .dimensionCount = 3, .dimensions = threeDimensional, .scale = 0.0f, .zeroPoint = 0, }; ANeuralNetworksOperandType intScalar = { .type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0, }; ANeuralNetworksOperandType floatScalar = { .type = operandCode == ANEURALNETWORKS_TENSOR_FLOAT32 ? ANEURALNETWORKS_FLOAT32 : ANEURALNETWORKS_FLOAT16, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0, }; ANeuralNetworksOperandType boolScalar = {.type = ANEURALNETWORKS_BOOL, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType input = floatTensor3D; ANeuralNetworksOperandType inputToInputFw = floatTensor2D; ANeuralNetworksOperandType inputToForgetFw = floatTensor2D; ANeuralNetworksOperandType inputToCellFw = floatTensor2D; ANeuralNetworksOperandType inputToOutputFw = floatTensor2D; ANeuralNetworksOperandType recurrentToInputFw = floatTensor2D; ANeuralNetworksOperandType recurrentToForgetFw = floatTensor2D; ANeuralNetworksOperandType recurrentToCellFw = floatTensor2D; ANeuralNetworksOperandType recurrentToOutputFw = floatTensor2D; ANeuralNetworksOperandType cellToInputFw = floatTensor1D; ANeuralNetworksOperandType cellToForgetFw = floatTensor1D; ANeuralNetworksOperandType cellToOutputFw = floatTensor1D; ANeuralNetworksOperandType inputGateBiasFw = floatTensor1D; ANeuralNetworksOperandType forgetGateBiasFw = floatTensor1D; ANeuralNetworksOperandType cellBiasFw = floatTensor1D; ANeuralNetworksOperandType outputGateBiasFw = floatTensor1D; ANeuralNetworksOperandType projWeightsFw = floatTensor2D; ANeuralNetworksOperandType projBiasFw = floatTensor1D; ANeuralNetworksOperandType outputStateInFw = floatTensor2D; ANeuralNetworksOperandType cellStateInFw = floatTensor2D; ANeuralNetworksOperandType inputToInputBw = floatTensor2D; ANeuralNetworksOperandType inputToForgetBw = floatTensor2D; ANeuralNetworksOperandType inputToCellBw = floatTensor2D; ANeuralNetworksOperandType inputToOutputBw = floatTensor2D; ANeuralNetworksOperandType recurrentToInputBw = floatTensor2D; ANeuralNetworksOperandType recurrentToForgetBw = floatTensor2D; ANeuralNetworksOperandType recurrentToCellBw = floatTensor2D; ANeuralNetworksOperandType recurrentToOutputBw = floatTensor2D; ANeuralNetworksOperandType cellToInputBw = floatTensor1D; ANeuralNetworksOperandType cellToForgetBw = floatTensor1D; ANeuralNetworksOperandType cellToOutputBw = floatTensor1D; ANeuralNetworksOperandType inputGateBiasBw = floatTensor1D; ANeuralNetworksOperandType forgetGateBiasBw = floatTensor1D; ANeuralNetworksOperandType cellBiasBw = floatTensor1D; ANeuralNetworksOperandType outputGateBiasBw = floatTensor1D; ANeuralNetworksOperandType projWeightsBw = floatTensor2D; ANeuralNetworksOperandType projBiasBw = floatTensor1D; ANeuralNetworksOperandType outputStateInBw = floatTensor2D; ANeuralNetworksOperandType cellStateInBw = floatTensor2D; ANeuralNetworksOperandType auxInput = floatTensor3D; ANeuralNetworksOperandType auxInputToInputFw = floatTensor2D; ANeuralNetworksOperandType auxInputToForgetFw = floatTensor2D; ANeuralNetworksOperandType auxInputToCellFw = floatTensor2D; ANeuralNetworksOperandType auxInputToOutputFw = floatTensor2D; ANeuralNetworksOperandType auxInputToInputBw = floatTensor2D; ANeuralNetworksOperandType auxInputToForgetBw = floatTensor2D; ANeuralNetworksOperandType auxInputToCellBw = floatTensor2D; ANeuralNetworksOperandType auxInputToOutputBw = floatTensor2D; ANeuralNetworksOperandType activation = intScalar; ANeuralNetworksOperandType clipCellState = floatScalar; ANeuralNetworksOperandType clipProjLayer = floatScalar; ANeuralNetworksOperandType mergeOutputs = boolScalar; ANeuralNetworksOperandType timeMajor = boolScalar; ANeuralNetworksOperandType inputLayerNormWeightsFw = floatTensor1D; ANeuralNetworksOperandType forgetLayerNormWeightsFw = floatTensor1D; ANeuralNetworksOperandType cellLayerNormWeightsFw = floatTensor1D; ANeuralNetworksOperandType outputLayerNormWeightsFw = floatTensor1D; ANeuralNetworksOperandType inputLayerNormWeightsBw = floatTensor1D; ANeuralNetworksOperandType forgetLayerNormWeightsBw = floatTensor1D; ANeuralNetworksOperandType cellLayerNormWeightsBw = floatTensor1D; ANeuralNetworksOperandType outputLayerNormWeightsBw = floatTensor1D; ANeuralNetworksOperandType outputFw = floatTensor2D; ANeuralNetworksOperandType outputBw = floatTensor2D; OperationTestBase lstmTest(ANEURALNETWORKS_BIDIRECTIONAL_SEQUENCE_LSTM, { input, inputToInputFw, inputToForgetFw, inputToCellFw, inputToOutputFw, recurrentToInputFw, recurrentToForgetFw, recurrentToCellFw, recurrentToOutputFw, cellToInputFw, cellToForgetFw, cellToOutputFw, inputGateBiasFw, forgetGateBiasFw, cellBiasFw, outputGateBiasFw, projWeightsFw, projBiasFw, outputStateInFw, cellStateInFw, inputToInputBw, inputToForgetBw, inputToCellBw, inputToOutputBw, recurrentToInputBw, recurrentToForgetBw, recurrentToCellBw, recurrentToOutputBw, cellToInputBw, cellToForgetBw, cellToOutputBw, inputGateBiasBw, forgetGateBiasBw, cellBiasBw, outputGateBiasBw, projWeightsBw, projBiasBw, outputStateInBw, cellStateInBw, auxInput, auxInputToInputFw, auxInputToForgetFw, auxInputToCellFw, auxInputToOutputFw, auxInputToInputBw, auxInputToForgetBw, auxInputToCellBw, auxInputToOutputBw, activation, clipCellState, clipProjLayer, mergeOutputs, timeMajor, inputLayerNormWeightsFw, forgetLayerNormWeightsFw, cellLayerNormWeightsFw, outputLayerNormWeightsFw, inputLayerNormWeightsBw, forgetLayerNormWeightsBw, cellLayerNormWeightsBw, outputLayerNormWeightsBw, }, { outputFw, outputBw, }); lstmTest.testOpsValidations(); } TEST(OperationValidationTest, LSTM_BIDIRECTIONAL_SEQUENCE) { lstmBidirectionalSequence(ANEURALNETWORKS_TENSOR_FLOAT32); lstmBidirectionalSequence(ANEURALNETWORKS_TENSOR_FLOAT16); } void randomMultinomialOpTest(int32_t operandCode) { uint32_t inputDims[2] = {5, 5}; ANeuralNetworksOperandType input = {.type = operandCode, .dimensionCount = 2, .dimensions = inputDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType sample_count = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; uint32_t seedDims[1] = {2}; ANeuralNetworksOperandType seed = {.type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = seedDims, .scale = 0.0f, .zeroPoint = 0}; uint32_t outputDims[2] = {5, 7}; ANeuralNetworksOperandType output = {.type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 2, .dimensions = outputDims, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase multinomialTest(ANEURALNETWORKS_RANDOM_MULTINOMIAL, {input, sample_count, seed}, {output}); multinomialTest.testOpsValidations(); } TEST(OperationValidationTest, RANDOM_MULTINOMIAL_float16) { randomMultinomialOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, RANDOM_MULTINOMIAL_float32) { randomMultinomialOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, RNN_float16) { uint32_t oneDimensional[1] = {5}; uint32_t twoDimensional[2] = {5, 5}; ANeuralNetworksOperandType floatTensor1D = {.type = ANEURALNETWORKS_TENSOR_FLOAT16, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType floatTensor2D = {.type = ANEURALNETWORKS_TENSOR_FLOAT16, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType intScalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType input = floatTensor2D; ANeuralNetworksOperandType weights = floatTensor2D; ANeuralNetworksOperandType recurrentWeights = floatTensor2D; ANeuralNetworksOperandType bias = floatTensor1D; ANeuralNetworksOperandType hiddenStateIn = floatTensor2D; ANeuralNetworksOperandType activation = intScalar; ANeuralNetworksOperandType hiddenStateOut = floatTensor2D; ANeuralNetworksOperandType output = floatTensor2D; OperationTestBase rnnTest(ANEURALNETWORKS_RNN, {input, weights, recurrentWeights, bias, hiddenStateIn, activation}, {hiddenStateOut, output}); rnnTest.testOpsValidations(); } TEST(OperationValidationTest, RNN_float32) { uint32_t oneDimensional[1] = {5}; uint32_t twoDimensional[2] = {5, 5}; ANeuralNetworksOperandType floatTensor1D = {.type = ANEURALNETWORKS_TENSOR_FLOAT32, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType floatTensor2D = {.type = ANEURALNETWORKS_TENSOR_FLOAT32, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType intScalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType input = floatTensor2D; ANeuralNetworksOperandType weights = floatTensor2D; ANeuralNetworksOperandType recurrentWeights = floatTensor2D; ANeuralNetworksOperandType bias = floatTensor1D; ANeuralNetworksOperandType hiddenStateIn = floatTensor2D; ANeuralNetworksOperandType activation = intScalar; ANeuralNetworksOperandType hiddenStateOut = floatTensor2D; ANeuralNetworksOperandType output = floatTensor2D; OperationTestBase rnnTest(ANEURALNETWORKS_RNN, {input, weights, recurrentWeights, bias, hiddenStateIn, activation}, {hiddenStateOut, output}); rnnTest.testOpsValidations(); } TEST(OperationValidationTest, SVDF_float32) { uint32_t oneDimensional[1] = {5}; uint32_t twoDimensional[2] = {5, 5}; ANeuralNetworksOperandType floatTensor1D = {.type = ANEURALNETWORKS_TENSOR_FLOAT32, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType floatTensor2D = {.type = ANEURALNETWORKS_TENSOR_FLOAT32, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType intScalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType input = floatTensor2D; ANeuralNetworksOperandType weightsFeature = floatTensor2D; ANeuralNetworksOperandType weightsTime = floatTensor2D; ANeuralNetworksOperandType bias = floatTensor1D; ANeuralNetworksOperandType stateIn = floatTensor2D; ANeuralNetworksOperandType rank = intScalar; ANeuralNetworksOperandType activation = intScalar; ANeuralNetworksOperandType stateOut = floatTensor2D; ANeuralNetworksOperandType output = floatTensor2D; OperationTestBase svdfTest( ANEURALNETWORKS_SVDF, {input, weightsFeature, weightsTime, bias, stateIn, rank, activation}, {stateOut, output}); svdfTest.testOpsValidations(); } TEST(OperationValidationTest, SVDF_float16) { uint32_t oneDimensional[1] = {5}; uint32_t twoDimensional[2] = {5, 5}; ANeuralNetworksOperandType floatTensor1D = {.type = ANEURALNETWORKS_TENSOR_FLOAT16, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType floatTensor2D = {.type = ANEURALNETWORKS_TENSOR_FLOAT16, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType intScalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType input = floatTensor2D; ANeuralNetworksOperandType weightsFeature = floatTensor2D; ANeuralNetworksOperandType weightsTime = floatTensor2D; ANeuralNetworksOperandType bias = floatTensor1D; ANeuralNetworksOperandType stateIn = floatTensor2D; ANeuralNetworksOperandType rank = intScalar; ANeuralNetworksOperandType activation = intScalar; ANeuralNetworksOperandType stateOut = floatTensor2D; ANeuralNetworksOperandType output = floatTensor2D; OperationTestBase svdfTest( ANEURALNETWORKS_SVDF, {input, weightsFeature, weightsTime, bias, stateIn, rank, activation}, {stateOut, output}); svdfTest.testOpsValidations(); } void stridedSliceOpTest(int32_t operandCode) { uint32_t inputDimensions[2] = {5, 5}; ANeuralNetworksOperandType input = getOpType(operandCode, 2, inputDimensions); ANeuralNetworksOperandType output = input; uint32_t beginsDimensions[1] = {2}; ANeuralNetworksOperandType begins = {.type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = beginsDimensions, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType ends = begins; ANeuralNetworksOperandType strides = begins; ANeuralNetworksOperandType beginMask = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType endMask = beginMask; ANeuralNetworksOperandType shrinkAxisMask = beginMask; OperationTestBase stridedSliceTest( ANEURALNETWORKS_STRIDED_SLICE, {input, begins, ends, strides, beginMask, endMask, shrinkAxisMask}, {output}, {{TensorRankConstraint::UpTo(4)}}); stridedSliceTest.testOpsValidations(); } TEST(OperationValidationTest, STRIDED_SLICE_float32) { stridedSliceOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, STRIDED_SLICE_float16) { stridedSliceOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, STRIDED_SLICE_quant8) { stridedSliceOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, STRIDED_SLICE_quant8_signed) { stridedSliceOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void roiAlignOpTest(int32_t inputOperandCode, int32_t roiOperandCode, int32_t scalarOperandCode) { uint32_t inDim[] = {1, 4, 4, 1}, roiDim[] = {4, 4}, batchSplitDim[] = {1}; uint32_t outDim[] = {4, 2, 2, 1}; OperationTestBase roiAlignTest( ANEURALNETWORKS_ROI_ALIGN, {getOpType(inputOperandCode, 4, inDim), getOpType(roiOperandCode, 2, roiDim), getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, batchSplitDim), getOpType(ANEURALNETWORKS_INT32), getOpType(ANEURALNETWORKS_INT32), getOpType(scalarOperandCode), getOpType(scalarOperandCode), getOpType(ANEURALNETWORKS_INT32), getOpType(ANEURALNETWORKS_INT32), getOpType(ANEURALNETWORKS_BOOL)}, {getOpType(inputOperandCode, 4, outDim)}); roiAlignTest.testOpsValidations(); } TEST(OperationValidationTest, ROI_ALIGN_float16) { roiAlignOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_FLOAT16); } TEST(OperationValidationTest, ROI_ALIGN_float32) { roiAlignOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, ROI_ALIGN_quant8) { roiAlignOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, ROI_ALIGN_quant8signed) { roiAlignOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_FLOAT32); } void roiPoolingOpTest(int32_t inputOperandCode, int32_t roiOperandCode, int32_t scalarOperandCode) { uint32_t inDim[] = {1, 4, 4, 1}, roiDim[] = {4, 4}, batchSplitDim[] = {1}; uint32_t outDim[] = {4, 2, 2, 1}; OperationTestBase roiPoolingTest( ANEURALNETWORKS_ROI_POOLING, {getOpType(inputOperandCode, 4, inDim), getOpType(roiOperandCode, 2, roiDim), getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, batchSplitDim), getOpType(ANEURALNETWORKS_INT32), getOpType(ANEURALNETWORKS_INT32), getOpType(scalarOperandCode), getOpType(scalarOperandCode), getOpType(ANEURALNETWORKS_BOOL)}, {getOpType(inputOperandCode, 4, outDim)}); roiPoolingTest.testOpsValidations(); } TEST(OperationValidationTest, ROI_POOLING_float16) { roiPoolingOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_FLOAT16); } TEST(OperationValidationTest, ROI_POOLING_float32) { roiPoolingOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, ROI_POOLING_quant8) { roiPoolingOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, ROI_POOLING_quant8signed) { roiPoolingOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_FLOAT32); } void heatmapMaxKeypointOpTest(int32_t heatmapOperandCode, int32_t roiOperandCode) { uint32_t heatmapDim[] = {6, 4, 4, 1}, boxDim[] = {6, 4}, outScoreDim[] = {6, 1}, outKeypointDim[] = {6, 1, 2}; OperationTestBase heatmapMaxKeypointTest( ANEURALNETWORKS_HEATMAP_MAX_KEYPOINT, {getOpType(heatmapOperandCode, 4, heatmapDim), getOpType(roiOperandCode, 2, boxDim), getOpType(ANEURALNETWORKS_BOOL)}, {getOpType(heatmapOperandCode, 2, outScoreDim), getOpType(roiOperandCode, 3, outKeypointDim)}); heatmapMaxKeypointTest.testOpsValidations(); } TEST(OperationValidationTest, HEATMAP_MAX_KEYPOINT_float16) { heatmapMaxKeypointOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, HEATMAP_MAX_KEYPOINT_float32) { heatmapMaxKeypointOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, HEATMAP_MAX_KEYPOINT_quant) { heatmapMaxKeypointOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM); } TEST(OperationValidationTest, HEATMAP_MAX_KEYPOINT_quant_signed) { heatmapMaxKeypointOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM); } void instanceNormalizationOpTest(int32_t inputOperandType) { SCOPED_TRACE(inputOperandType); uint32_t inputDims[4] = {4, 4, 4, 4}; ANeuralNetworksOperandType input = getOpType(inputOperandType, 4, inputDims); ANeuralNetworksOperandType floatScalar = getOpType(ANEURALNETWORKS_FLOAT32); if (inputOperandType == ANEURALNETWORKS_TENSOR_FLOAT16) { floatScalar = getOpType(ANEURALNETWORKS_FLOAT16); } ANeuralNetworksOperandType gamma = floatScalar; ANeuralNetworksOperandType beta = floatScalar; ANeuralNetworksOperandType epsilon = floatScalar; ANeuralNetworksOperandType isNCHW = getOpType(ANEURALNETWORKS_BOOL); ANeuralNetworksOperandType output = input; OperationTestBase test(ANEURALNETWORKS_INSTANCE_NORMALIZATION, {input, gamma, beta, epsilon, isNCHW}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, INSTANCE_NORMALIZATION) { instanceNormalizationOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); instanceNormalizationOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } void groupedConvOpTest(int32_t inputOperandCode, int32_t filterOperandCode) { uint32_t inDim[] = {1, 3, 3, 2}, filterDim[] = {2, 2, 2, 1}, biasDim[] = {2}; uint32_t outDim[] = {1, 2, 2, 2}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 4, inDim); float filterScales[2] = {0.5f, 1.0f}; ANeuralNetworksOperandType filter = getOpType(filterOperandCode, 4, filterDim); ANeuralNetworksSymmPerChannelQuantParams filterChannelQuantParams = { .channelDim = 0, .scaleCount = 2, .scales = filterScales, }; ANeuralNetworksOperandType bias = getOpType(inputOperandCode, 1, biasDim); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM || filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.25f; } if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.0f; } ANeuralNetworksOperandType scalar = getOpType(ANEURALNETWORKS_INT32); ANeuralNetworksOperandType layout = getOpType(ANEURALNETWORKS_BOOL); ANeuralNetworksOperandType output = getOpType(inputOperandCode, 4, outDim); OperationTestBase explicitGroupedConvTest(ANEURALNETWORKS_GROUPED_CONV_2D, {input, filter, bias, scalar, scalar, scalar, scalar, scalar, scalar, scalar, scalar, layout}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { explicitGroupedConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } explicitGroupedConvTest.testOpsValidations(); OperationTestBase implicitGroupedConvTest( ANEURALNETWORKS_GROUPED_CONV_2D, {input, filter, bias, scalar, scalar, scalar, scalar, scalar, layout}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { implicitGroupedConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } implicitGroupedConvTest.testOpsValidations(); } TEST(OperationValidationTest, GROUPED_CONV_2D_float16) { groupedConvOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, GROUPED_CONV_2D_float32) { groupedConvOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, GROUPED_CONV_2D_quant8) { groupedConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, GROUPED_CONV_2D_quant8_per_channel) { groupedConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } TEST(OperationValidationTest, GROUPED_CONV_2D_quant8signed) { groupedConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, GROUPED_CONV_2D_quant8signed_per_channel) { groupedConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } void transposeConvOpTest(int32_t inputOperandCode, int32_t filterOperandCode) { uint32_t inDim[] = {1, 2, 2, 2}, filterDim[] = {2, 3, 3, 1}, biasDim[] = {2}; uint32_t outDim[] = {1, 5, 5, 2}, outShapeDim[] = {4}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 4, inDim); ANeuralNetworksOperandType filter = getOpType(filterOperandCode, 4, filterDim); float filterScales[2] = {0.5f, 1.0f}; ANeuralNetworksSymmPerChannelQuantParams filterChannelQuantParams = { .channelDim = 0, .scaleCount = 2, .scales = filterScales, }; ANeuralNetworksOperandType bias = getOpType(inputOperandCode, 1, biasDim); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM || filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.25f; } if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { bias.type = ANEURALNETWORKS_TENSOR_INT32; bias.scale = 0.0f; } ANeuralNetworksOperandType scalar = getOpType(ANEURALNETWORKS_INT32); ANeuralNetworksOperandType layout = getOpType(ANEURALNETWORKS_BOOL); ANeuralNetworksOperandType output = getOpType(inputOperandCode, 4, outDim); OperationTestBase explicitTransposeConvTest( ANEURALNETWORKS_TRANSPOSE_CONV_2D, {input, filter, bias, scalar, scalar, scalar, scalar, scalar, scalar, scalar, layout}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { explicitTransposeConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } explicitTransposeConvTest.testOpsValidations(); OperationTestBase implicitTransposeConvTest( ANEURALNETWORKS_TRANSPOSE_CONV_2D, {input, filter, bias, getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, outShapeDim), scalar, scalar, scalar, scalar, layout}, {output}); if (filterOperandCode == ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL) { implicitTransposeConvTest.setInputSymmPerChannelQuantParams(1, filterChannelQuantParams); } implicitTransposeConvTest.testOpsValidations(); } TEST(OperationValidationTest, TRANSPOSE_CONV_2D_float16) { transposeConvOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, TRANSPOSE_CONV_2D_float32) { transposeConvOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, TRANSPOSE_CONV_2D_quant8) { transposeConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, TRANSPOSE_CONV_2D_quant8_per_channel) { transposeConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } TEST(OperationValidationTest, TRANSPOSE_CONV_2D_quant8_signed) { transposeConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, TRANSPOSE_CONV_2D_quant8_signed_per_channel) { transposeConvOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL); } void channelShuffleOpTest(int32_t operandCode) { uint32_t inoutDim[] = {2, 2, 3, 12}; OperationTestBase channelShuffleTest( ANEURALNETWORKS_CHANNEL_SHUFFLE, {getOpType(operandCode, 2, inoutDim), getOpType(ANEURALNETWORKS_INT32), getOpType(ANEURALNETWORKS_INT32)}, {getOpType(operandCode, 2, inoutDim)}, {{TensorRankConstraint::UpTo(4)}}); channelShuffleTest.testOpsValidations(); } TEST(OperationValidationTest, CHANNEL_SHUFFLE_float16) { channelShuffleOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, CHANNEL_SHUFFLE_float32) { channelShuffleOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, CHANNEL_SHUFFLE_quant8) { channelShuffleOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, CHANNEL_SHUFFLE_quant8signed) { channelShuffleOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void detectionPostprocessingOpTest(int32_t inputOperandCode) { SCOPED_TRACE(inputOperandCode); const int numBatches = 2; const int numAnchors = 10; const int numClasses = 5; const int lengthBoxEncoding = 4; uint32_t inputDims[3] = {numBatches, numAnchors, numClasses}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 3, inputDims); uint32_t deltasDims[3] = {numBatches, numAnchors, lengthBoxEncoding}; ANeuralNetworksOperandType deltas = getOpType(inputOperandCode, 3, deltasDims); uint32_t anchorsDims[2] = {numAnchors, 4}; ANeuralNetworksOperandType anchors = getOpType(inputOperandCode, 2, anchorsDims); ANeuralNetworksOperandType scaleScalar = getOpType(ANEURALNETWORKS_FLOAT32); if (inputOperandCode == ANEURALNETWORKS_TENSOR_FLOAT16) { scaleScalar = getOpType(ANEURALNETWORKS_FLOAT16); } ANeuralNetworksOperandType isRegularNMS = getOpType(ANEURALNETWORKS_BOOL); ANeuralNetworksOperandType maxNumDetections = getOpType(ANEURALNETWORKS_INT32); ANeuralNetworksOperandType numOfClassesPerDetection = maxNumDetections; ANeuralNetworksOperandType numOfDetections = numOfClassesPerDetection; ANeuralNetworksOperandType scoreThreshold = scaleScalar; ANeuralNetworksOperandType iouThreshold = scaleScalar; ANeuralNetworksOperandType includeBackground = getOpType(ANEURALNETWORKS_BOOL); // Outputs const int maxNumDetectionsValue = 5; uint32_t outputScoreDims[2] = {numBatches, maxNumDetectionsValue}; ANeuralNetworksOperandType outputScore = getOpType(inputOperandCode, 2, outputScoreDims); uint32_t boundingBoxesDims[3] = {numBatches, maxNumDetectionsValue, 4}; ANeuralNetworksOperandType boundingBoxes = getOpType(inputOperandCode, 3, boundingBoxesDims); ANeuralNetworksOperandType classLabel = getOpType(ANEURALNETWORKS_TENSOR_INT32, 2, outputScoreDims); uint32_t numValidDims[1] = {numBatches}; ANeuralNetworksOperandType numValid = getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, numValidDims); OperationTestBase test(ANEURALNETWORKS_DETECTION_POSTPROCESSING, {input, deltas, anchors, scaleScalar, scaleScalar, scaleScalar, scaleScalar, isRegularNMS, maxNumDetections, numOfClassesPerDetection, numOfDetections, scoreThreshold, iouThreshold, includeBackground}, {outputScore, boundingBoxes, classLabel, numValid}); test.testOpsValidations(); } TEST(OperationValidationTest, DETECTION_POSTPROCESSING) { detectionPostprocessingOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); detectionPostprocessingOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } void preluOpTest(int32_t operandCode) { uint32_t inoutDim[] = {1, 2, 2, 3}, alphaDim[] = {1, 1, 3}; OperationTestBase preluTest( ANEURALNETWORKS_PRELU, {getOpType(operandCode, 4, inoutDim), getOpType(operandCode, 3, alphaDim)}, {getOpType(operandCode, 4, inoutDim)}); preluTest.testOpsValidations(); } TEST(OperationValidationTest, PRELU_float16) { preluOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, PRELU_float32) { preluOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, PRELU_quant8) { preluOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, PRELU_quant8signed) { preluOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void normalizationOpTest(ANeuralNetworksOperationType operationCode, int32_t operandCode) { uint32_t inputDim[] = {2, 2, 2, 2}; OperationTestBase normalizationTest(operationCode, {getOpType(operandCode, 4, inputDim)}, {getOpType(operandCode, 4, inputDim)}); normalizationTest.testOpsValidations(); OperationTestBase normalizationAxisTest( operationCode, {getOpType(operandCode, 4, inputDim), getOpType(ANEURALNETWORKS_INT32)}, {getOpType(operandCode, 4, inputDim)}, {{TensorRankConstraint::UpTo(4)}}); normalizationAxisTest.testOpsValidations(); } TEST(OperationValidationTest, L2_NORMALIZATION_float16) { normalizationOpTest(ANEURALNETWORKS_L2_NORMALIZATION, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, L2_NORMALIZATION_float32) { normalizationOpTest(ANEURALNETWORKS_L2_NORMALIZATION, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, L2_NORMALIZATION_quant8) { normalizationOpTest(ANEURALNETWORKS_L2_NORMALIZATION, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, L2_NORMALIZATION_quant8_signed) { normalizationOpTest(ANEURALNETWORKS_L2_NORMALIZATION, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void localResponseNormOpTest(int32_t operandCode) { int32_t floatScalarType = (operandCode == ANEURALNETWORKS_TENSOR_FLOAT32) ? ANEURALNETWORKS_FLOAT32 : ANEURALNETWORKS_FLOAT16; uint32_t inputDim[] = {2, 2, 2, 6}; OperationTestBase lrnTest( ANEURALNETWORKS_LOCAL_RESPONSE_NORMALIZATION, {getOpType(operandCode, 4, inputDim), getOpType(ANEURALNETWORKS_INT32), getOpType(floatScalarType), getOpType(floatScalarType), getOpType(floatScalarType)}, {getOpType(operandCode, 4, inputDim)}, {{TensorRankConstraint::UpTo(4), {0}}}); lrnTest.testOpsValidations(); OperationTestBase lrnAxisTest( ANEURALNETWORKS_LOCAL_RESPONSE_NORMALIZATION, {getOpType(operandCode, 4, inputDim), getOpType(ANEURALNETWORKS_INT32), getOpType(floatScalarType), getOpType(floatScalarType), getOpType(floatScalarType), getOpType(ANEURALNETWORKS_INT32)}, {getOpType(operandCode, 4, inputDim)}, {{TensorRankConstraint::UpTo(4), {0}}}); lrnAxisTest.testOpsValidations(); } TEST(OperationValidationTest, LOCAL_RESPONSE_NORMALIZATION_float16) { localResponseNormOpTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, LOCAL_RESPONSE_NORMALIZATION_float32) { localResponseNormOpTest(ANEURALNETWORKS_TENSOR_FLOAT32); } void axisAlignedBBoxTransformOpTest(int32_t roiOperandCode, int32_t deltaOperandCode) { uint32_t roiDim[] = {5, 4}, deltaDim[] = {5, 8}, bsDim[] = {5}, imageDim[] = {5, 2}; uint32_t outDim[] = {5, 8}; OperationTestBase axisAlignedBBoxTransformTest( ANEURALNETWORKS_AXIS_ALIGNED_BBOX_TRANSFORM, {getOpType(roiOperandCode, 2, roiDim), getOpType(deltaOperandCode, 2, deltaDim), getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, bsDim), getOpType(roiOperandCode, 2, imageDim)}, {getOpType(roiOperandCode, 2, outDim)}); axisAlignedBBoxTransformTest.testOpsValidations(); } TEST(OperationValidationTest, AXIS_ALIGNED_BBOX_TRANSFORM_float16) { axisAlignedBBoxTransformOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, AXIS_ALIGNED_BBOX_TRANSFORM_float32) { axisAlignedBBoxTransformOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, AXIS_ALIGNED_BBOX_TRANSFORM_quant) { axisAlignedBBoxTransformOpTest(ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, AXIS_ALIGNED_BBOX_TRANSFORM_quant_signed) { axisAlignedBBoxTransformOpTest(ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void sliceTest(int32_t operandCode) { uint32_t inputDim[] = {3, 3, 3}; uint32_t startDim[] = {3}; uint32_t sizeDim[] = {3}; uint32_t outputDim[] = {1, 2, 3}; OperationTestBase sliceTest(ANEURALNETWORKS_SLICE, {getOpType(operandCode, 3, inputDim), getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, startDim), getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, sizeDim)}, {getOpType(operandCode, 3, outputDim)}); sliceTest.testOpsValidations(); } TEST(OperationValidationTest, SLICE_float32) { sliceTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, SLICE_int32) { sliceTest(ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, SLICE_uint8) { sliceTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, SLICE_int8) { sliceTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, SLICE_float16) { sliceTest(ANEURALNETWORKS_TENSOR_FLOAT16); } void logicalTest(ANeuralNetworksOperationType operationCode) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input1 = {.type = ANEURALNETWORKS_TENSOR_BOOL8, .dimensionCount = 4, .dimensions = inputDimensions, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType input2 = input1; ANeuralNetworksOperandType output = input1; OperationTestBase test(operationCode, {input1, input2}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, LOGICAL_AND) { logicalTest(ANEURALNETWORKS_LOGICAL_AND); } TEST(OperationValidationTest, LOGICAL_OR) { logicalTest(ANEURALNETWORKS_LOGICAL_OR); } void comparisonTest(ANeuralNetworksOperationType operationCode, int32_t inputOperandType) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input1 = getOpType(inputOperandType, 4, inputDimensions); ANeuralNetworksOperandType input2 = input1; ANeuralNetworksOperandType output = {.type = ANEURALNETWORKS_TENSOR_BOOL8, .dimensionCount = 4, .dimensions = inputDimensions, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase test(operationCode, {input1, input2}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, LESS) { comparisonTest(ANEURALNETWORKS_LESS, ANEURALNETWORKS_TENSOR_BOOL8); comparisonTest(ANEURALNETWORKS_LESS, ANEURALNETWORKS_TENSOR_FLOAT16); comparisonTest(ANEURALNETWORKS_LESS, ANEURALNETWORKS_TENSOR_FLOAT32); comparisonTest(ANEURALNETWORKS_LESS, ANEURALNETWORKS_TENSOR_INT32); comparisonTest(ANEURALNETWORKS_LESS, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); comparisonTest(ANEURALNETWORKS_LESS, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, LESS_EQUAL) { comparisonTest(ANEURALNETWORKS_LESS_EQUAL, ANEURALNETWORKS_TENSOR_BOOL8); comparisonTest(ANEURALNETWORKS_LESS_EQUAL, ANEURALNETWORKS_TENSOR_FLOAT16); comparisonTest(ANEURALNETWORKS_LESS_EQUAL, ANEURALNETWORKS_TENSOR_FLOAT32); comparisonTest(ANEURALNETWORKS_LESS_EQUAL, ANEURALNETWORKS_TENSOR_INT32); comparisonTest(ANEURALNETWORKS_LESS_EQUAL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); comparisonTest(ANEURALNETWORKS_LESS_EQUAL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, EQUAL) { comparisonTest(ANEURALNETWORKS_EQUAL, ANEURALNETWORKS_TENSOR_BOOL8); comparisonTest(ANEURALNETWORKS_EQUAL, ANEURALNETWORKS_TENSOR_FLOAT16); comparisonTest(ANEURALNETWORKS_EQUAL, ANEURALNETWORKS_TENSOR_FLOAT32); comparisonTest(ANEURALNETWORKS_EQUAL, ANEURALNETWORKS_TENSOR_INT32); comparisonTest(ANEURALNETWORKS_EQUAL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); comparisonTest(ANEURALNETWORKS_EQUAL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, NOT_EQUAL) { comparisonTest(ANEURALNETWORKS_NOT_EQUAL, ANEURALNETWORKS_TENSOR_BOOL8); comparisonTest(ANEURALNETWORKS_NOT_EQUAL, ANEURALNETWORKS_TENSOR_FLOAT16); comparisonTest(ANEURALNETWORKS_NOT_EQUAL, ANEURALNETWORKS_TENSOR_FLOAT32); comparisonTest(ANEURALNETWORKS_NOT_EQUAL, ANEURALNETWORKS_TENSOR_INT32); comparisonTest(ANEURALNETWORKS_NOT_EQUAL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); comparisonTest(ANEURALNETWORKS_NOT_EQUAL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, GREATER) { comparisonTest(ANEURALNETWORKS_GREATER, ANEURALNETWORKS_TENSOR_BOOL8); comparisonTest(ANEURALNETWORKS_GREATER, ANEURALNETWORKS_TENSOR_FLOAT16); comparisonTest(ANEURALNETWORKS_GREATER, ANEURALNETWORKS_TENSOR_FLOAT32); comparisonTest(ANEURALNETWORKS_GREATER, ANEURALNETWORKS_TENSOR_INT32); comparisonTest(ANEURALNETWORKS_GREATER, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); comparisonTest(ANEURALNETWORKS_GREATER, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, GREATER_EQUAL) { comparisonTest(ANEURALNETWORKS_GREATER_EQUAL, ANEURALNETWORKS_TENSOR_BOOL8); comparisonTest(ANEURALNETWORKS_GREATER_EQUAL, ANEURALNETWORKS_TENSOR_FLOAT16); comparisonTest(ANEURALNETWORKS_GREATER_EQUAL, ANEURALNETWORKS_TENSOR_FLOAT32); comparisonTest(ANEURALNETWORKS_GREATER_EQUAL, ANEURALNETWORKS_TENSOR_INT32); comparisonTest(ANEURALNETWORKS_GREATER_EQUAL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); comparisonTest(ANEURALNETWORKS_GREATER_EQUAL, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void reduceOpTest(ANeuralNetworksOperationType operationCode, int32_t inputOperandType) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input1 = getOpType(inputOperandType, 4, inputDimensions); uint32_t axesDimensions[1] = {2}; ANeuralNetworksOperandType input2 = getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, axesDimensions); ANeuralNetworksOperandType input3 = getOpType(ANEURALNETWORKS_BOOL, 0); ANeuralNetworksOperandType output = getOpType(inputOperandType, 4, inputDimensions); OperationTestBase test(operationCode, {input1, input2, input3}, {output}, {{TensorRankConstraint::UpTo(4)}}); test.testOpsValidations(); } TEST(OperationValidationTest, REDUCE_PROD) { reduceOpTest(ANEURALNETWORKS_REDUCE_PROD, ANEURALNETWORKS_TENSOR_FLOAT16); reduceOpTest(ANEURALNETWORKS_REDUCE_PROD, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, REDUCE_SUM) { reduceOpTest(ANEURALNETWORKS_REDUCE_SUM, ANEURALNETWORKS_TENSOR_FLOAT16); reduceOpTest(ANEURALNETWORKS_REDUCE_SUM, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, REDUCE_MAX) { reduceOpTest(ANEURALNETWORKS_REDUCE_MAX, ANEURALNETWORKS_TENSOR_FLOAT16); reduceOpTest(ANEURALNETWORKS_REDUCE_MAX, ANEURALNETWORKS_TENSOR_FLOAT32); reduceOpTest(ANEURALNETWORKS_REDUCE_MAX, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); reduceOpTest(ANEURALNETWORKS_REDUCE_MAX, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, REDUCE_MIN) { reduceOpTest(ANEURALNETWORKS_REDUCE_MIN, ANEURALNETWORKS_TENSOR_FLOAT16); reduceOpTest(ANEURALNETWORKS_REDUCE_MIN, ANEURALNETWORKS_TENSOR_FLOAT32); reduceOpTest(ANEURALNETWORKS_REDUCE_MIN, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); reduceOpTest(ANEURALNETWORKS_REDUCE_MIN, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } TEST(OperationValidationTest, REDUCE_ANY) { reduceOpTest(ANEURALNETWORKS_REDUCE_ANY, ANEURALNETWORKS_TENSOR_BOOL8); } TEST(OperationValidationTest, REDUCE_ALL) { reduceOpTest(ANEURALNETWORKS_REDUCE_ALL, ANEURALNETWORKS_TENSOR_BOOL8); } void selectTest(ANeuralNetworksOperationType operationCode, int32_t inputOperandType) { uint32_t inputDimensions[4] = {2, 2, 2, 2}; ANeuralNetworksOperandType input0 = getOpType(ANEURALNETWORKS_TENSOR_BOOL8, 4, inputDimensions); ANeuralNetworksOperandType input1 = getOpType(inputOperandType, 4, inputDimensions); ANeuralNetworksOperandType input2 = input1; ANeuralNetworksOperandType output = input1; OperationTestBase test(operationCode, {input0, input1, input2}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, SELECT) { selectTest(ANEURALNETWORKS_SELECT, ANEURALNETWORKS_TENSOR_FLOAT16); selectTest(ANEURALNETWORKS_SELECT, ANEURALNETWORKS_TENSOR_FLOAT32); selectTest(ANEURALNETWORKS_SELECT, ANEURALNETWORKS_TENSOR_INT32); selectTest(ANEURALNETWORKS_SELECT, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); selectTest(ANEURALNETWORKS_SELECT, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } void powTest(int32_t inputOperandType) { const uint32_t inputDimensions[] = {3, 3}; ANeuralNetworksOperandType inputType = {.type = inputOperandType, .dimensionCount = 2, .dimensions = inputDimensions, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase test(ANEURALNETWORKS_POW, {inputType, inputType}, {inputType}); test.testOpsValidations(); } TEST(OperationValidationTest, POW) { powTest(ANEURALNETWORKS_TENSOR_FLOAT16); powTest(ANEURALNETWORKS_TENSOR_FLOAT32); } void boxWithNmsLimitOpTest(int32_t scoreOperandCode, int32_t roiOperandCode, int32_t scalarOperandCode) { uint32_t scoreDim[] = {19, 3}, roiDim[] = {19, 12}, splitDim[] = {2}; uint32_t outScoreDim[] = {12}, outRoiDim[] = {12, 4}, outClassDim[] = {12}, outSplitDim[] = {2}; OperationTestBase boxWithNmsLimitTest( ANEURALNETWORKS_BOX_WITH_NMS_LIMIT, {getOpType(scoreOperandCode, 2, scoreDim), getOpType(roiOperandCode, 2, roiDim), getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, splitDim), getOpType(scalarOperandCode), getOpType(ANEURALNETWORKS_INT32), getOpType(ANEURALNETWORKS_INT32), getOpType(scalarOperandCode), getOpType(scalarOperandCode), getOpType(scalarOperandCode)}, {getOpType(scoreOperandCode, 1, outScoreDim), getOpType(roiOperandCode, 2, outRoiDim), getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, outClassDim), getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, outSplitDim)}); boxWithNmsLimitTest.testOpsValidations(); } TEST(OperationValidationTest, BOX_WITH_NMS_LIMIT_float16) { boxWithNmsLimitOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_FLOAT16); } TEST(OperationValidationTest, BOX_WITH_NMS_LIMIT_float32) { boxWithNmsLimitOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, BOX_WITH_NMS_LIMIT_quant) { boxWithNmsLimitOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, BOX_WITH_NMS_LIMIT_quant_signed) { boxWithNmsLimitOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_FLOAT32); } void castOpTest(int32_t inputOperandCode, int32_t outputOperandCode) { SCOPED_TRACE(testing::Message() << "inputType: " << inputOperandCode << ", outputType: " << outputOperandCode); uint32_t inputDimensions[3] = {2, 2, 2}; ANeuralNetworksOperandType input = getOpType(inputOperandCode, 3, inputDimensions); ANeuralNetworksOperandType output = getOpType(outputOperandCode, 3, inputDimensions); OperationTestBase test(ANEURALNETWORKS_CAST, {input}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, CAST) { std::vector inputTypes = {ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_INT32, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}; std::vector outputTypes = inputTypes; for (auto inputType : inputTypes) { for (auto outputType : outputTypes) { castOpTest(inputType, outputType); } } } TEST(OperationValidationTest, CAST_identity) { std::vector inputTypes = { ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_INT32, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT16_SYMM, ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_BOOL8, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_SYMM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, }; for (auto inputType : inputTypes) { castOpTest(inputType, inputType); } } void bidirectionlSequenceRNNTest(int32_t inputOperandCode) { const uint32_t batchSize = 2; const uint32_t maxTime = 3; const uint32_t inputSize = 4; const uint32_t numUnits = 5; uint32_t inputDims[3] = {maxTime, batchSize, inputSize}; uint32_t weightsDims[2] = {inputSize, numUnits}; uint32_t recurrentWeightsDims[2] = {numUnits, numUnits}; uint32_t biasDims[1] = {numUnits}; uint32_t hiddenStateDims[2] = {batchSize, numUnits}; uint32_t outputDims[2] = {batchSize, numUnits}; ANeuralNetworksOperandType input = {.type = inputOperandCode, .dimensionCount = 3, .dimensions = inputDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType fwWeights = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = weightsDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType bwWeights = fwWeights; ANeuralNetworksOperandType fwRecurrentWeights = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = recurrentWeightsDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType bwRecurrentWeights = fwRecurrentWeights; ANeuralNetworksOperandType fwBias = {.type = inputOperandCode, .dimensionCount = 1, .dimensions = biasDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType bwBias = fwBias; ANeuralNetworksOperandType fwHiddenState = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = hiddenStateDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType bwHiddenState = fwHiddenState; ANeuralNetworksOperandType output = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = outputDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType activation = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType boolScalar = {.type = ANEURALNETWORKS_BOOL, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType timeMajor = boolScalar; ANeuralNetworksOperandType mergeOutputs = boolScalar; OperationTestBase rnnTest(ANEURALNETWORKS_BIDIRECTIONAL_SEQUENCE_RNN, {input, fwWeights, fwRecurrentWeights, fwBias, fwHiddenState, bwWeights, bwRecurrentWeights, bwBias, bwHiddenState, input, fwWeights, bwWeights, activation, timeMajor, mergeOutputs}, {output, output}); rnnTest.testOpsValidations(); } TEST(OperationValidationTest, BIDIRECTIONAL_SEQUENCE_RNN_float32) { bidirectionlSequenceRNNTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, BIDIRECTIONAL_SEQUENCE_RNN_float16) { bidirectionlSequenceRNNTest(ANEURALNETWORKS_TENSOR_FLOAT16); } void unidirectionlSequenceRNNTest(int32_t inputOperandCode) { const uint32_t batchSize = 2; const uint32_t maxTime = 3; const uint32_t inputSize = 4; const uint32_t numUnits = 5; uint32_t inputDims[3] = {maxTime, batchSize, inputSize}; uint32_t weightsDims[2] = {inputSize, numUnits}; uint32_t recurrentWeightsDims[2] = {numUnits, numUnits}; uint32_t biasDims[1] = {numUnits}; uint32_t hiddenStateDims[2] = {batchSize, numUnits}; uint32_t outputDims[2] = {batchSize, numUnits}; ANeuralNetworksOperandType input = {.type = inputOperandCode, .dimensionCount = 3, .dimensions = inputDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType weights = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = weightsDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType recurrentWeights = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = recurrentWeightsDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType bias = {.type = inputOperandCode, .dimensionCount = 1, .dimensions = biasDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType hiddenState = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = hiddenStateDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType output = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = outputDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType intScalar = {.type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType activation = intScalar; ANeuralNetworksOperandType timeMajor = intScalar; OperationTestBase rnnTest( ANEURALNETWORKS_UNIDIRECTIONAL_SEQUENCE_RNN, {input, weights, recurrentWeights, bias, hiddenState, activation, timeMajor}, {output}); rnnTest.testOpsValidations(); } TEST(OperationValidationTest, UNIDIRECTIONAL_SEQUENCE_RNN_float32) { unidirectionlSequenceRNNTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, UNIDIRECTIONAL_SEQUENCE_RNN_float16) { unidirectionlSequenceRNNTest(ANEURALNETWORKS_TENSOR_FLOAT16); } void unidirectionalSequenceLSTMTest(int32_t inputOperandCode) { const uint32_t maxTime = 2; const uint32_t batchSize = 3; const uint32_t numUnits = 4; const uint32_t inputSize = 5; const uint32_t outputSize = 6; uint32_t inputDims[3] = {maxTime, batchSize, inputSize}; uint32_t inputWeightsDims[2] = {numUnits, inputSize}; uint32_t recurrentWeightsDims[2] = {numUnits, outputSize}; uint32_t diagonalDims[1] = {numUnits}; uint32_t projectionDims[2] = {outputSize, numUnits}; uint32_t projectionBiasDims[1] = {outputSize}; uint32_t outputStateDims[2] = {batchSize, outputSize}; uint32_t cellStateDims[2] = {batchSize, numUnits}; uint32_t outputDims[3] = {maxTime, batchSize, outputSize}; ANeuralNetworksOperandType input = {.type = inputOperandCode, .dimensionCount = 3, .dimensions = inputDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType inputToInputWeights = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = inputWeightsDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType inputToForgetWeights = inputToInputWeights; ANeuralNetworksOperandType inputToCellWeights = inputToInputWeights; ANeuralNetworksOperandType inputToOutputWeights = inputToInputWeights; ANeuralNetworksOperandType recurrentToInputWeights = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = recurrentWeightsDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType recurrentToForgetWeights = recurrentToInputWeights; ANeuralNetworksOperandType recurrentToCellWeights = recurrentToInputWeights; ANeuralNetworksOperandType recurrentToOutputWeights = recurrentToInputWeights; ANeuralNetworksOperandType cellToInputWeights = {.type = inputOperandCode, .dimensionCount = 1, .dimensions = diagonalDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType cellToForgetWeights = cellToInputWeights; ANeuralNetworksOperandType cellToOutputWeights = cellToInputWeights; ANeuralNetworksOperandType inputGateBias = {.type = inputOperandCode, .dimensionCount = 1, .dimensions = diagonalDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType forgetGateBias = inputGateBias; ANeuralNetworksOperandType cellGateBias = inputGateBias; ANeuralNetworksOperandType outputGateBias = inputGateBias; ANeuralNetworksOperandType projectionWeights = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = projectionDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType projectionBias = {.type = inputOperandCode, .dimensionCount = 1, .dimensions = projectionBiasDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType outputStateIn = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = outputStateDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType cellStateIn = {.type = inputOperandCode, .dimensionCount = 2, .dimensions = cellStateDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType intScalar = { .type = ANEURALNETWORKS_INT32, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0, }; ANeuralNetworksOperandType activation = intScalar; ANeuralNetworksOperandType floatScalar = { .type = inputOperandCode == ANEURALNETWORKS_TENSOR_FLOAT32 ? ANEURALNETWORKS_FLOAT32 : ANEURALNETWORKS_FLOAT16, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0, }; ANeuralNetworksOperandType cellClip = floatScalar; ANeuralNetworksOperandType projClip = floatScalar; ANeuralNetworksOperandType boolScalar = { .type = ANEURALNETWORKS_BOOL, .dimensionCount = 0, .dimensions = nullptr, .scale = 0.0f, .zeroPoint = 0, }; ANeuralNetworksOperandType timeMajor = boolScalar; ANeuralNetworksOperandType inputLayerNormWeights = {.type = inputOperandCode, .dimensionCount = 1, .dimensions = diagonalDims, .scale = 0.0f, .zeroPoint = 0}; ANeuralNetworksOperandType forgetLayerNormWeights = inputLayerNormWeights; ANeuralNetworksOperandType cellLayerNormWeights = inputLayerNormWeights; ANeuralNetworksOperandType outputLayerNormWeights = inputLayerNormWeights; ANeuralNetworksOperandType output = {.type = inputOperandCode, .dimensionCount = 3, .dimensions = outputDims, .scale = 0.0f, .zeroPoint = 0}; OperationTestBase ulstmTest(ANEURALNETWORKS_UNIDIRECTIONAL_SEQUENCE_LSTM, {input, inputToInputWeights, inputToForgetWeights, inputToCellWeights, inputToOutputWeights, recurrentToInputWeights, recurrentToForgetWeights, recurrentToCellWeights, recurrentToOutputWeights, cellToInputWeights, cellToForgetWeights, cellToOutputWeights, inputGateBias, forgetGateBias, cellGateBias, outputGateBias, projectionWeights, projectionBias, outputStateIn, cellStateIn, activation, cellClip, projClip, timeMajor, inputLayerNormWeights, forgetLayerNormWeights, cellLayerNormWeights, outputLayerNormWeights}, {output}); ulstmTest.testOpsValidations(); } TEST(OperationValidationTest, UNIDIRECTIONAL_SEQUENCE_LSTM_float32) { unidirectionalSequenceLSTMTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, UNIDIRECTIONAL_SEQUENCE_LSTM_float16) { unidirectionalSequenceLSTMTest(ANEURALNETWORKS_TENSOR_FLOAT16); } void generateProposalsOpTest(int32_t scoreOperandCode, int32_t deltaOperandCode, int32_t anchorOperandCode, int32_t roiOperandCode, int32_t scalarOperandCode) { uint32_t scoreDim[] = {1, 2, 2, 2}, deltaDim[] = {1, 2, 2, 8}, anchorDim[] = {2, 4}, imageInfoDim[] = {1, 2}; uint32_t outScoreDim[] = {4}, outRoiDim[] = {4, 4}, outSplitDim[] = {1}; OperationTestBase generateProposalsTest( ANEURALNETWORKS_GENERATE_PROPOSALS, {getOpType(scoreOperandCode, 4, scoreDim), getOpType(deltaOperandCode, 4, deltaDim), getOpType(anchorOperandCode, 2, anchorDim), getOpType(roiOperandCode, 2, imageInfoDim), getOpType(scalarOperandCode), getOpType(scalarOperandCode), getOpType(ANEURALNETWORKS_INT32), getOpType(ANEURALNETWORKS_INT32), getOpType(scalarOperandCode), getOpType(scalarOperandCode), getOpType(ANEURALNETWORKS_BOOL)}, {getOpType(scoreOperandCode, 1, outScoreDim), getOpType(roiOperandCode, 2, outRoiDim), getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, outSplitDim)}); generateProposalsTest.testOpsValidations(); } TEST(OperationValidationTest, GENERATE_PROPOSALS_float16) { generateProposalsOpTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_FLOAT16); } TEST(OperationValidationTest, GENERATE_PROPOSALS_float32) { generateProposalsOpTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, GENERATE_PROPOSALS_quant) { generateProposalsOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_TENSOR_QUANT16_SYMM, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, GENERATE_PROPOSALS_quant_signed) { generateProposalsOpTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_TENSOR_QUANT16_SYMM, ANEURALNETWORKS_TENSOR_QUANT16_ASYMM, ANEURALNETWORKS_FLOAT32); } void resizeNearestNeighborTest(int32_t inputCode, int32_t scalarCode) { uint32_t inputDim[] = {1, 2, 2, 1}, outputDim[] = {1, 1, 1, 1}; OperationTestBase resizeImageOpTest(ANEURALNETWORKS_RESIZE_NEAREST_NEIGHBOR, {getOpType(inputCode, 4, inputDim), getOpType(scalarCode), getOpType(scalarCode), getOpType(ANEURALNETWORKS_BOOL)}, {getOpType(inputCode, 4, outputDim)}); resizeImageOpTest.testOpsValidations(); } TEST(OperationValidationTest, RESIZE_NEAREST_NEIGHBOR) { resizeNearestNeighborTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_INT32); resizeNearestNeighborTest(ANEURALNETWORKS_TENSOR_FLOAT32, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, RESIZE_NEAREST_NEIGHBOR_float16) { resizeNearestNeighborTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_INT32); resizeNearestNeighborTest(ANEURALNETWORKS_TENSOR_FLOAT16, ANEURALNETWORKS_FLOAT16); } TEST(OperationValidationTest, RESIZE_NEAREST_NEIGHBOR_quant8) { resizeNearestNeighborTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_INT32); resizeNearestNeighborTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, RESIZE_NEAREST_NEIGHBOR_quant8_signed) { resizeNearestNeighborTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_INT32); resizeNearestNeighborTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, ANEURALNETWORKS_FLOAT32); } TEST(OperationValidationTest, QUANTIZED_LSTM) { uint32_t oneDimensional[1] = {5}; uint32_t twoDimensional[2] = {5, 5}; ANeuralNetworksOperandType quant8AsymSignedTensor2D = { .type = ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.0078125, .zeroPoint = 0, }; ANeuralNetworksOperandType quant8SymTensor2D = { .type = ANEURALNETWORKS_TENSOR_QUANT8_SYMM, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 0.0078125, .zeroPoint = 0, }; ANeuralNetworksOperandType quant16SymTensor1D = { .type = ANEURALNETWORKS_TENSOR_QUANT16_SYMM, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 1.0, .zeroPoint = 0, }; ANeuralNetworksOperandType quant16SymTensor2D = { .type = ANEURALNETWORKS_TENSOR_QUANT16_SYMM, .dimensionCount = 2, .dimensions = twoDimensional, .scale = 1.0, .zeroPoint = 0, }; ANeuralNetworksOperandType int32Tensor1D = { .type = ANEURALNETWORKS_TENSOR_INT32, .dimensionCount = 1, .dimensions = oneDimensional, .scale = 4.65661e-08, .zeroPoint = 0, }; ANeuralNetworksOperandType int32Scalar = { .type = ANEURALNETWORKS_INT32, }; ANeuralNetworksOperandType float32Scalar = { .type = ANEURALNETWORKS_FLOAT32, }; ANeuralNetworksOperandType input = quant8AsymSignedTensor2D; ANeuralNetworksOperandType input_to_input_weights = quant8SymTensor2D; ANeuralNetworksOperandType input_to_forget_weights = quant8SymTensor2D; ANeuralNetworksOperandType input_to_cell_weights = quant8SymTensor2D; ANeuralNetworksOperandType input_to_output_weights = quant8SymTensor2D; ANeuralNetworksOperandType recurrent_to_input_weights = quant8SymTensor2D; ANeuralNetworksOperandType recurrent_to_forget_weights = quant8SymTensor2D; ANeuralNetworksOperandType recurrent_to_cell_weights = quant8SymTensor2D; ANeuralNetworksOperandType recurrent_to_output_weights = quant8SymTensor2D; ANeuralNetworksOperandType cell_to_input_weights = quant16SymTensor2D; ANeuralNetworksOperandType cell_to_forget_weights = quant16SymTensor2D; ANeuralNetworksOperandType cell_to_output_weights = quant16SymTensor2D; ANeuralNetworksOperandType input_gate_bias = int32Tensor1D; ANeuralNetworksOperandType forget_gate_bias = int32Tensor1D; ANeuralNetworksOperandType cell_gate_bias = int32Tensor1D; ANeuralNetworksOperandType output_gate_bias = int32Tensor1D; ANeuralNetworksOperandType projection_weights = quant8SymTensor2D; ANeuralNetworksOperandType projection_bias = int32Tensor1D; ANeuralNetworksOperandType output_state_in = quant8AsymSignedTensor2D; ANeuralNetworksOperandType cell_state_in = quant16SymTensor2D; ANeuralNetworksOperandType input_layer_norm_weights = quant16SymTensor1D; ANeuralNetworksOperandType forget_layer_norm_weights = quant16SymTensor1D; ANeuralNetworksOperandType cell_layer_norm_weights = quant16SymTensor1D; ANeuralNetworksOperandType output_layer_norm_weights = quant16SymTensor1D; ANeuralNetworksOperandType cell_clip = float32Scalar; ANeuralNetworksOperandType projection_clip = float32Scalar; ANeuralNetworksOperandType input_intermediate_scale = float32Scalar; ANeuralNetworksOperandType forget_intermediate_scale = float32Scalar; ANeuralNetworksOperandType cell_intermediate_scale = float32Scalar; ANeuralNetworksOperandType output_intermediate_scale = float32Scalar; ANeuralNetworksOperandType hidden_state_zero_point = int32Scalar; ANeuralNetworksOperandType hidden_state_scale = float32Scalar; ANeuralNetworksOperandType output_state_out = quant8AsymSignedTensor2D; ANeuralNetworksOperandType cell_state_out = quant16SymTensor2D; ANeuralNetworksOperandType output = quant8AsymSignedTensor2D; OperationTestBase test(ANEURALNETWORKS_QUANTIZED_LSTM, {input, input_to_input_weights, input_to_forget_weights, input_to_cell_weights, input_to_output_weights, recurrent_to_input_weights, recurrent_to_forget_weights, recurrent_to_cell_weights, recurrent_to_output_weights, cell_to_input_weights, cell_to_forget_weights, cell_to_output_weights, input_gate_bias, forget_gate_bias, cell_gate_bias, output_gate_bias, projection_weights, projection_bias, output_state_in, cell_state_in, input_layer_norm_weights, forget_layer_norm_weights, cell_layer_norm_weights, output_layer_norm_weights, cell_clip, projection_clip, input_intermediate_scale, forget_intermediate_scale, cell_intermediate_scale, output_intermediate_scale, hidden_state_zero_point, hidden_state_scale}, {output_state_out, cell_state_out, output}); test.testOpsValidations(); } void fillTest(int32_t valueOperandType, int32_t outputOperandType) { uint32_t inputDimensions[1] = {3}; ANeuralNetworksOperandType input0 = getOpType(ANEURALNETWORKS_TENSOR_INT32, 1, inputDimensions); ANeuralNetworksOperandType input1 = getOpType(valueOperandType); uint32_t outputDimensions[3] = {3, 4, 5}; ANeuralNetworksOperandType output = getOpType(outputOperandType, 3, outputDimensions); OperationTestBase test(ANEURALNETWORKS_FILL, {input0, input1}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, FILL_float16) { fillTest(ANEURALNETWORKS_FLOAT16, ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, FILL_float32) { fillTest(ANEURALNETWORKS_FLOAT32, ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, FILL_int32) { fillTest(ANEURALNETWORKS_INT32, ANEURALNETWORKS_TENSOR_INT32); } void rankTest(int32_t inputOperandType) { uint32_t inputDimensions[3] = {3, 4, 5}; ANeuralNetworksOperandType input = getOpType(inputOperandType, 3, inputDimensions); ANeuralNetworksOperandType output = getOpType(ANEURALNETWORKS_INT32); OperationTestBase test(ANEURALNETWORKS_RANK, {input}, {output}); test.testOpsValidations(); } TEST(OperationValidationTest, RANK_float16) { rankTest(ANEURALNETWORKS_TENSOR_FLOAT16); } TEST(OperationValidationTest, RANK_float32) { rankTest(ANEURALNETWORKS_TENSOR_FLOAT32); } TEST(OperationValidationTest, RANK_int32) { rankTest(ANEURALNETWORKS_TENSOR_INT32); } TEST(OperationValidationTest, RANK_quant8) { rankTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM); } TEST(OperationValidationTest, RANK_quant8_signed) { rankTest(ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED); } } // end namespace