/* Copyright 2018 The TensorFlow Authors. All Rights Reserved. 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 "tensorflow/lite/kernels/internal/reference/maximum_minimum.h" #include #include "Eigen/Core" #include "tensorflow/lite/core/c/common.h" #include "tensorflow/lite/kernels/internal/compatibility.h" #include "tensorflow/lite/kernels/internal/optimized/optimized_ops.h" #include "tensorflow/lite/kernels/internal/reference/process_broadcast_shapes.h" #include "tensorflow/lite/kernels/internal/reference/reference_ops.h" #include "tensorflow/lite/kernels/internal/tensor.h" #include "tensorflow/lite/kernels/internal/tensor_ctypes.h" #include "tensorflow/lite/kernels/internal/types.h" #include "tensorflow/lite/kernels/kernel_util.h" namespace tflite { namespace ops { namespace builtin { namespace maximum_minimum { // This file has a reference implementation of TFMaximum/TFMinimum. enum KernelType { kReference, kGenericOptimized, }; constexpr int kInputTensor1 = 0; constexpr int kInputTensor2 = 1; constexpr int kOutputTensor = 0; struct OpContext { OpContext(TfLiteContext* context, TfLiteNode* node) { input1 = GetInput(context, node, kInputTensor1); input2 = GetInput(context, node, kInputTensor2); output = GetOutput(context, node, kOutputTensor); } const TfLiteTensor* input1; const TfLiteTensor* input2; TfLiteTensor* output; }; TfLiteStatus Prepare(TfLiteContext* context, TfLiteNode* node) { TF_LITE_ENSURE_EQ(context, NumInputs(node), 2); TF_LITE_ENSURE_EQ(context, NumOutputs(node), 1); OpContext op_context(context, node); TF_LITE_ENSURE(context, op_context.input1 != nullptr); TF_LITE_ENSURE(context, op_context.input2 != nullptr); TF_LITE_ENSURE_TYPES_EQ(context, op_context.input1->type, op_context.input2->type); op_context.output->type = op_context.input1->type; bool requires_broadcast = !HaveSameShapes(op_context.input1, op_context.input2); TfLiteIntArray* output_size = nullptr; if (requires_broadcast) { TF_LITE_ENSURE_OK( context, CalculateShapeForBroadcast(context, op_context.input1, op_context.input2, &output_size)); } else { output_size = TfLiteIntArrayCopy(op_context.input1->dims); } return context->ResizeTensor(context, op_context.output, output_size); } struct MaximumOp { template static data_type op(data_type el1, data_type el2) { return el1 > el2 ? el1 : el2; } }; struct MinimumOp { template static data_type op(data_type el1, data_type el2) { return el1 < el2 ? el1 : el2; } }; template void TFLiteOperation(TfLiteContext* context, TfLiteNode* node, const OpContext& op_context) { reference_ops::MaximumMinimumBroadcastSlow( GetTensorShape(op_context.input1), GetTensorData(op_context.input1), GetTensorShape(op_context.input2), GetTensorData(op_context.input2), GetTensorShape(op_context.output), GetTensorData(op_context.output), op_type::template op); } // Maximum generic opt int8. template <> void TFLiteOperation( TfLiteContext* context, TfLiteNode* node, const OpContext& op_context) { tflite::ArithmeticParams op_params; const bool need_broadcast = optimized_ops::ProcessBroadcastShapes( GetTensorShape(op_context.input1), GetTensorShape(op_context.input2), &op_params); if (need_broadcast) { optimized_ops::BroadcastMaximumDispatch( op_params, GetTensorShape(op_context.input1), GetTensorData(op_context.input1), GetTensorShape(op_context.input2), GetTensorData(op_context.input2), GetTensorShape(op_context.output), GetTensorData(op_context.output), MaximumOp::template op); return; } reference_ops::MaximumMinimumBroadcastSlow( GetTensorShape(op_context.input1), GetTensorData(op_context.input1), GetTensorShape(op_context.input2), GetTensorData(op_context.input2), GetTensorShape(op_context.output), GetTensorData(op_context.output), MaximumOp::template op); } // Minimum generic opt int8. template <> void TFLiteOperation( TfLiteContext* context, TfLiteNode* node, const OpContext& op_context) { tflite::ArithmeticParams op_params; const bool need_broadcast = optimized_ops::ProcessBroadcastShapes( GetTensorShape(op_context.input1), GetTensorShape(op_context.input2), &op_params); if (need_broadcast) { optimized_ops::BroadcastMinimumDispatch( op_params, GetTensorShape(op_context.input1), GetTensorData(op_context.input1), GetTensorShape(op_context.input2), GetTensorData(op_context.input2), GetTensorShape(op_context.output), GetTensorData(op_context.output), MinimumOp::template op); return; } reference_ops::MaximumMinimumBroadcastSlow( GetTensorShape(op_context.input1), GetTensorData(op_context.input1), GetTensorShape(op_context.input2), GetTensorData(op_context.input2), GetTensorShape(op_context.output), GetTensorData(op_context.output), MinimumOp::template op); } template TfLiteStatus Eval(TfLiteContext* context, TfLiteNode* node) { OpContext op_context(context, node); // If inputs have no element, shortcircuit. if (NumElements(op_context.input1) == 0 || NumElements(op_context.input2) == 0) { return kTfLiteOk; } switch (op_context.output->type) { case kTfLiteFloat32: { TFLiteOperation(context, node, op_context); break; } case kTfLiteUInt8: TFLiteOperation(context, node, op_context); break; case kTfLiteInt8: TFLiteOperation(context, node, op_context); break; case kTfLiteInt32: TFLiteOperation(context, node, op_context); break; case kTfLiteInt64: TFLiteOperation(context, node, op_context); break; case kTfLiteInt16: TFLiteOperation(context, node, op_context); break; case kTfLiteFloat16: TFLiteOperation(context, node, op_context); break; case kTfLiteBFloat16: TFLiteOperation(context, node, op_context); break; default: TF_LITE_KERNEL_LOG(context, "Type %d is currently not supported by Maximum.", op_context.output->type); return kTfLiteError; } return kTfLiteOk; } } // namespace maximum_minimum TfLiteRegistration* Register_MAXIMUM_REF() { static TfLiteRegistration r = { nullptr, nullptr, maximum_minimum::Prepare, maximum_minimum::Eval}; return &r; } TfLiteRegistration* Register_MAXIMUM_GENERIC_OPT() { static TfLiteRegistration r = { nullptr, nullptr, maximum_minimum::Prepare, maximum_minimum::Eval}; return &r; } TfLiteRegistration* Register_MINIMUM_REF() { static TfLiteRegistration r = { nullptr, nullptr, maximum_minimum::Prepare, maximum_minimum::Eval}; return &r; } TfLiteRegistration* Register_MINIMUM_GENERIC_OPT() { static TfLiteRegistration r = { nullptr, nullptr, maximum_minimum::Prepare, maximum_minimum::Eval}; return &r; } TfLiteRegistration* Register_MAXIMUM() { return Register_MAXIMUM_GENERIC_OPT(); } TfLiteRegistration* Register_MINIMUM() { return Register_MINIMUM_GENERIC_OPT(); } } // namespace builtin } // namespace ops } // namespace tflite