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onnxOpImporters.cpp
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onnxOpImporters.cpp
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/*
* SPDX-License-Identifier: Apache-2.0
*/
#if defined(_MSC_VER)
#define _USE_MATH_DEFINES
#endif
#include <cmath>
#include "ConditionalHelpers.hpp"
#include "LoopHelpers.hpp"
#include "ModelImporter.hpp"
#include "NvInfer.h"
#include "NvInferPlugin.h"
#include "NvInferRuntime.h"
#include "OnnxAttrs.hpp"
#include "RNNHelpers.hpp"
#include "ShapeTensor.hpp"
#include "bfloat16.hpp"
#include "errorHelpers.hpp"
#include "half.h"
#include "importerUtils.hpp"
#include "onnxOpImporters.hpp"
#include <algorithm> // For std::min, std::max
#include <array>
#include <cstring> // For std::memcpy, std::memset
#include <iostream>
#include <iterator>
#include <numeric> // For std::iota
#include <sstream>
#include <tuple>
#include <unordered_set>
namespace onnx2trt
{
StringMap<NodeImporter>& getBuiltinOpImporterMap()
{
static StringMap<NodeImporter> builtin_op_importers;
return builtin_op_importers;
}
namespace
{
using nvinfer1::DataType;
#define IGNORE_UNUSED_GLOBAL(x) \
static void _ignore_unused2_##x(); \
static void _ignore_unused1_##x() \
{ \
(void) _ignore_unused2_##x; \
(void) x; \
} \
static void _ignore_unused2_##x() \
{ \
(void) _ignore_unused1_##x; \
} \
struct SwallowSemicolon##x \
{ \
}
#define DECLARE_BUILTIN_OP_IMPORTER(op) \
NodeOutputs import##op(ImporterContext* ctx, ::ONNX_NAMESPACE::NodeProto const& node, size_t const nodeIdx, \
std::vector<TensorOrWeights>& inputs)
#define DEFINE_BUILTIN_OP_IMPORTER(op) \
NodeOutputs import##op(ImporterContext* ctx, ::ONNX_NAMESPACE::NodeProto const& node, size_t const nodeIdx, \
std::vector<TensorOrWeights>& inputs); \
static bool const op##_registered_builtin_op = registerBuiltinOpImporter(#op, import##op); \
IGNORE_UNUSED_GLOBAL(op##_registered_builtin_op); \
NodeOutputs import##op(ImporterContext* ctx, ::ONNX_NAMESPACE::NodeProto const& node, size_t const nodeIdx, \
std::vector<TensorOrWeights>& inputs)
#define RETURN_FIRST_OUTPUT(layer, node, nodeIdx) \
do \
{ \
nvinfer1::ILayer* layer_ptr = layer; \
ONNXTRT_CHECK_NODE(layer_ptr, "Input layer is null.", node, nodeIdx, ErrorCode::kINVALID_NODE); \
auto* output = N_CHECK(layer->getOutput(0)); \
return {{output}}; \
} while (0)
#define RETURN_IDENTITY(input, node, nodeIdx) \
do \
{ \
TensorOrWeights output = identity(ctx, input); \
ONNXTRT_CHECK_NODE(output, "Failed to add an identity layer.", node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE); \
return {{output}}; \
} while (0)
#define RETURN_ALL_OUTPUTS(layer, node, nodeIdx) \
do \
{ \
nvinfer1::ILayer* layer_ptr = layer; \
ONNXTRT_CHECK_NODE(layer_ptr, "The input layer is null.", node, nodeIdx, ErrorCode::kINVALID_NODE); \
std::vector<TensorOrWeights> outputs; \
for (int i = 0; i < layer_ptr->getNbOutputs(); ++i) \
outputs.push_back(N_CHECK(layer_ptr->getOutput(i))); \
return {outputs}; \
} while (0)
void assertIsWeights(TensorOrWeights const& input, std::string const& specificMsg)
{
if (!input.is_weights())
{
std::ostringstream msg;
msg << specificMsg;
msg << " Try applying constant folding on the model using Polygraphy: "
"https://github.com/NVIDIA/TensorRT/tree/master/tools/Polygraphy/examples/cli/surgeon/"
"02_folding_constants";
throw std::runtime_error(msg.str());
}
}
bool registerBuiltinOpImporter(std::string op, NodeImporter const& importer)
{
bool inserted = getBuiltinOpImporterMap().insert({op, importer}).second;
assert(inserted);
return inserted;
}
bool onlySupportInt32TRTPlugin(std::string const& pluginName)
{
// TRT plugins that doesn't support INT64 as inputs, but support INT32.
static std::vector<std::string> const names = {
"CustomQKVToContextPluginDynamic",
"EfficientNMS_TRT",
"EfficientNMS_ONNX_TRT",
"EfficientNMS_Implicit_TF_TRT",
"EfficientNMS_Explicit_TF_TRT",
"VoxelGeneratorPlugin",
"ScatterND",
"ROIAlign_TRT",
"PillarScatterPlugin",
"MultiscaleDeformableAttnPlugin_TRT",
"CustomEmbLayerNormPluginDynamic",
};
return std::find(names.begin(), names.end(), pluginName) != names.end();
}
DEFINE_BUILTIN_OP_IMPORTER(Abs)
{
return unaryHelper(ctx, node, nodeIdx, inputs.at(0), nvinfer1::UnaryOperation::kABS);
}
DEFINE_BUILTIN_OP_IMPORTER(Acos)
{
return unaryHelper(ctx, node, nodeIdx, inputs.at(0), nvinfer1::UnaryOperation::kACOS);
}
DEFINE_BUILTIN_OP_IMPORTER(Acosh)
{
return unaryHelper(ctx, node, nodeIdx, inputs.at(0), nvinfer1::UnaryOperation::kACOSH);
}
DEFINE_BUILTIN_OP_IMPORTER(And)
{
return elementwiseHelper(ctx, node, nodeIdx, inputs, nvinfer1::ElementWiseOperation::kAND);
}
DEFINE_BUILTIN_OP_IMPORTER(Asin)
{
return unaryHelper(ctx, node, nodeIdx, inputs.at(0), nvinfer1::UnaryOperation::kASIN);
}
DEFINE_BUILTIN_OP_IMPORTER(Asinh)
{
return unaryHelper(ctx, node, nodeIdx, inputs.at(0), nvinfer1::UnaryOperation::kASINH);
}
DEFINE_BUILTIN_OP_IMPORTER(Atan)
{
return unaryHelper(ctx, node, nodeIdx, inputs.at(0), nvinfer1::UnaryOperation::kATAN);
}
DEFINE_BUILTIN_OP_IMPORTER(Atanh)
{
return unaryHelper(ctx, node, nodeIdx, inputs.at(0), nvinfer1::UnaryOperation::kATANH);
}
DEFINE_BUILTIN_OP_IMPORTER(Add)
{
return elementwiseHelper(ctx, node, nodeIdx, inputs, nvinfer1::ElementWiseOperation::kSUM);
}
DEFINE_BUILTIN_OP_IMPORTER(ArgMax)
{
return argMinMaxHelper(ctx, node, nodeIdx, inputs, nvinfer1::TopKOperation::kMAX);
}
DEFINE_BUILTIN_OP_IMPORTER(ArgMin)
{
return argMinMaxHelper(ctx, node, nodeIdx, inputs, nvinfer1::TopKOperation::kMIN);
}
DEFINE_BUILTIN_OP_IMPORTER(AveragePool)
{
return poolingHelper(ctx, node, nodeIdx, inputs, nvinfer1::PoolingType::kAVERAGE);
}
NodeOutputs batchnormFallback(
ImporterContext* ctx, ::ONNX_NAMESPACE::NodeProto const& node, size_t nodeIdx, std::vector<TensorOrWeights>& inputs)
{
using eOp = nvinfer1::ElementWiseOperation;
using uOp = nvinfer1::UnaryOperation;
nvinfer1::ITensor& input = convertToTensor(inputs.at(0), ctx);
int32_t const rank = input.getDimensions().nbDims;
std::array<nvinfer1::ITensor*, 4> tensors = {
&convertToTensor(inputs.at(1), ctx),
&convertToTensor(inputs.at(2), ctx),
&convertToTensor(inputs.at(3), ctx),
&convertToTensor(inputs.at(4), ctx),
};
// Alias tensors for convenience
auto& [scale, bias, mean, variance] = tensors;
// Reshape batchnorm weights from [C] to [N, C, ...] for elementwise operations.
bool const needsExpandDims = rank > 1;
if (needsExpandDims)
{
std::vector<int32_t> axes(rank - 1);
axes[0] = 0;
std::iota(axes.begin() + 1, axes.end(), 2);
for (auto*& t : tensors)
{
t = unsqueezeTensor(ctx, *t, axes);
}
}
OnnxAttrs attrs(node, ctx);
float eps = attrs.get<float>("epsilon", 1e-5F);
nvinfer1::Dims scalarShape{rank};
std::fill(scalarShape.d, scalarShape.d + scalarShape.nbDims, 1);
auto varType = variance->getType();
nvinfer1::IConstantLayer* epsLayer;
if (varType == DataType::kHALF)
{
epsLayer = addConstantScalar(
ctx, static_cast<half_float::half>(eps), ::ONNX_NAMESPACE::TensorProto::FLOAT16, scalarShape);
}
else if (varType == DataType::kBF16)
{
epsLayer
= addConstantScalar(ctx, static_cast<BFloat16>(eps), ::ONNX_NAMESPACE::TensorProto::BFLOAT16, scalarShape);
}
else
{
epsLayer = addConstantScalar(ctx, eps, ::ONNX_NAMESPACE::TensorProto::FLOAT, scalarShape);
}
nvinfer1::ITensor* epsilon = N_CHECK(epsLayer->getOutput(0));
// For stronglyTyped networks, cast BatchNormalization parameters to the same type as the input type.
if (ctx->isStronglyTyped())
{
LOG_VERBOSE("Casting BatchNormalization parameters to the same type as input for StronglyTyped networks.");
for (auto*& t : tensors)
{
t = castHelper(ctx, t, input.getType());
}
epsilon = castHelper(ctx, epsilon, input.getType());
}
// batchnorm = scale * (input - mean) / sqrt(variance + epsilon) + bias
// The WAR is split the single c++ code line into 3 to avoid the sequence swap by compiler.
nvinfer1::ITensor* divisor
= getUnaryResult(ctx, *getElementWiseResult(ctx, *variance, *epsilon, eOp::kSUM), uOp::kSQRT);
nvinfer1::ITensor* dividend = getElementWiseResult(ctx, input, *mean, eOp::kSUB);
auto intermediateResult
= getElementWiseResult(ctx, *scale, *getElementWiseResult(ctx, *dividend, *divisor, eOp::kDIV), eOp::kPROD);
nvinfer1::IElementWiseLayer* layer = N_CHECK(ctx->network()->addElementWise(*intermediateResult, *bias, eOp::kSUM));
ctx->registerLayer(layer, node);
RETURN_FIRST_OUTPUT(layer, node, nodeIdx);
}
template <typename T>
NodeOutputs batchnormWeightHelper(
ImporterContext* ctx, ::ONNX_NAMESPACE::NodeProto const& node, size_t nodeIdx, std::vector<TensorOrWeights>& inputs)
{
auto const scale = inputs.at(1).weights();
auto const bias = inputs.at(2).weights();
auto const mean = inputs.at(3).weights();
auto const variance = inputs.at(4).weights();
T const* scaleValues = static_cast<T*>(scale.values);
T const* biasValues = static_cast<T*>(bias.values);
T const* meanValues = static_cast<T*>(mean.values);
T const* varianceValues = static_cast<T*>(variance.values);
nvinfer1::ITensor* tensorPtr = &convertToTensor(inputs.at(0), ctx);
OnnxAttrs attrs(node, ctx);
T eps = static_cast<T>(attrs.get<float>("epsilon", 1e-5f));
// Fold the weights together into a single bias and scale
int32_t const nbChannels = scale.shape.d[0];
ShapedWeights::DataType weightType = typeid(T).hash_code() == typeid(BFloat16).hash_code()
? ::ONNX_NAMESPACE::TensorProto::BFLOAT16
: (typeid(T).hash_code() == typeid(half_float::half).hash_code() ? ::ONNX_NAMESPACE::TensorProto::FLOAT16
: ::ONNX_NAMESPACE::TensorProto::FLOAT);
auto combinedScale = ctx->createNamedTempWeights(weightType, scale.shape, /*batchNormNode=*/true);
auto combinedBias = ctx->createNamedTempWeights(weightType, bias.shape, /*batchNormNode=*/true);
// Validate that all the weights have the same amount of values
bool allSame = scale.count() == bias.count() && mean.count() == scale.count() && variance.count() == scale.count()
&& combinedScale.count() == scale.count() && combinedBias.count() == scale.count();
ONNXTRT_CHECK_NODE(
allSame, "Inputs to BatchNormalization must have the same shape!", node, nodeIdx, ErrorCode::kINVALID_NODE);
for (int32_t i = 0; i < nbChannels; ++i)
{
combinedScale.at<T>(i) = scaleValues[i] / sqrtf(varianceValues[i] + eps);
combinedBias.at<T>(i) = biasValues[i] - meanValues[i] * combinedScale.at<T>(i);
}
return scaleHelper(ctx, node, nodeIdx, *tensorPtr, nvinfer1::ScaleMode::kCHANNEL, combinedBias, combinedScale,
ShapedWeights::empty(weightType), combinedBias.getName(), combinedScale.getName());
}
DEFINE_BUILTIN_OP_IMPORTER(BatchNormalization)
{
ONNXTRT_CHECK_NODE((inputs.at(1).shape().nbDims == 1), "The shape of the scale input must be (C, )", node, nodeIdx,
ErrorCode::kINVALID_NODE);
ONNXTRT_CHECK_NODE((inputs.at(2).shape().nbDims == 1), "The shape of the bias input must be (C, )", node, nodeIdx,
ErrorCode::kINVALID_NODE);
ONNXTRT_CHECK_NODE((inputs.at(3).shape().nbDims == 1), "The shape of the mean input must be (C, )", node, nodeIdx,
ErrorCode::kINVALID_NODE);
ONNXTRT_CHECK_NODE((inputs.at(4).shape().nbDims == 1), "The shape of the var input must be (C, )", node, nodeIdx,
ErrorCode::kINVALID_NODE);
OnnxAttrs attrs(node, ctx);
bool const allInputsWeights = inputs.at(1).is_weights() && inputs.at(2).is_weights() && inputs.at(3).is_weights()
&& inputs.at(4).is_weights();
// If any input is not an initializer, use fallback method implementing batchnorm as a combination of elementwise
// layers.
if (!allInputsWeights)
{
LOG_VERBOSE("Found BatchNormalization node with non-initializer inputs, using Elementwise fallback");
return batchnormFallback(ctx, node, nodeIdx, inputs);
}
// If all inputs are weights of the same type, then combine the weights into a single scale layer.
auto tensorType = inputs.at(0).getType();
bool allWeightsSameType = tensorType == inputs.at(1).getType() && tensorType == inputs.at(2).getType()
&& tensorType == inputs.at(3).getType() && tensorType == inputs.at(4).getType();
if (allWeightsSameType)
{
LOG_VERBOSE(
"Found BatchNormalization node with conforming initializer types. Combining into a single scale node.");
if (tensorType == "FLOAT")
{
return batchnormWeightHelper<float>(ctx, node, nodeIdx, inputs);
}
if (tensorType == "HALF")
{
return batchnormWeightHelper<half_float::half>(ctx, node, nodeIdx, inputs);
}
if (tensorType == "BF16")
{
return batchnormWeightHelper<BFloat16>(ctx, node, nodeIdx, inputs);
}
ONNXTRT_CHECK_NODE(false, "Invalid data type provided for BatchNormalization", node, nodeIdx,
ErrorCode::kUNSUPPORTED_NODE_DATATYPE);
}
// With weights of different types, use fallback method to cast weights to the input type for stronglyTyped
// networks.
else if (ctx->isStronglyTyped())
{
return batchnormFallback(ctx, node, nodeIdx, inputs);
}
// For weakly-typed networks, cast everything to FP32 for consistency.
LOG_VERBOSE(
"Found BatchNormalization node with non-conforming initializer types. Casting parameters to FP32 and combining "
"into a single scale node.");
auto const scale = inputs.at(1).weights();
auto const bias = inputs.at(2).weights();
auto const mean = inputs.at(3).weights();
auto const variance = inputs.at(4).weights();
// In the case of mixed precision, cast all values to FLOAT.
float const* scaleValues = ctx->getWeightsContext().getFP32Values(scale);
float const* biasValues = ctx->getWeightsContext().getFP32Values(bias);
float const* meanValues = ctx->getWeightsContext().getFP32Values(mean);
float const* varianceValues = ctx->getWeightsContext().getFP32Values(variance);
nvinfer1::ITensor* tensorPtr = &convertToTensor(inputs.at(0), ctx);
float eps = attrs.get<float>("epsilon", 1e-5f);
// Fold the weights together into a single bias and scale
int32_t const nbChannels = scale.shape.d[0];
auto combinedScale
= ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto::FLOAT, scale.shape, /*batchNormNode=*/true);
auto combinedBias
= ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto::FLOAT, bias.shape, /*batchNormNode=*/true);
// Validate that all the weights have the same amount of values
bool allSame = scale.count() == bias.count() && mean.count() == scale.count() && variance.count() == scale.count()
&& combinedScale.count() == scale.count() && combinedBias.count() == scale.count();
ONNXTRT_CHECK_NODE(
allSame, "Inputs to BatchNormalization must have the same shape!", node, nodeIdx, ErrorCode::kINVALID_NODE);
for (int32_t i = 0; i < nbChannels; ++i)
{
combinedScale.at<float>(i) = scaleValues[i] / sqrtf(varianceValues[i] + eps);
combinedBias.at<float>(i) = biasValues[i] - meanValues[i] * combinedScale.at<float>(i);
}
return scaleHelper(ctx, node, nodeIdx, *tensorPtr, nvinfer1::ScaleMode::kCHANNEL, combinedBias, combinedScale,
ShapedWeights::empty(::ONNX_NAMESPACE::TensorProto::FLOAT), combinedBias.getName(), combinedScale.getName());
}
DEFINE_BUILTIN_OP_IMPORTER(BlackmanWindow)
{
/***
Operation returns a window vector, where
Y[n] = 0.42 - 0.5cos(2pi*n / N) + 0.08cos(4pi*n / N)
Where N is the window length, and n is each element in the window.
Note that if `periodic == 0`, the denominator becomes N - 1.
This can be represented by creating a range 'n' from 0 -> N, and performing the operations elementwise.
***/
OnnxAttrs attrs(node, ctx);
int32_t outputDtype = attrs.get<int32_t>("output_datatype", 1);
int32_t periodic = attrs.get<int32_t>("periodic", 1);
ONNXTRT_CHECK_NODE(outputDtype == 1, "Output must be float32-type!", node, nodeIdx, ErrorCode::kINVALID_NODE);
constexpr float alpha = 0.42F;
constexpr float beta = 0.5F;
constexpr float gamma = 0.08F;
auto* N = &convertToTensor(inputs.at(0), ctx);
ONNXTRT_CHECK_NODE(
N->getDimensions().nbDims == 0, "Window length must be a scalar!", node, nodeIdx, ErrorCode::kINVALID_NODE);
auto* window = generateWindow(ctx, N);
auto lhsCosOutput = windowHelper(ctx, 2.F * M_PI, window, N, nvinfer1::UnaryOperation::kCOS, periodic);
auto betaTensor = N_CHECK(addConstantScalar(ctx, beta, ::ONNX_NAMESPACE::TensorProto_DataType_FLOAT,
nvinfer1::Dims{1, {1}})->getOutput(0));
auto betaLayer
= N_CHECK(ctx->network()->addElementWise(*betaTensor, *lhsCosOutput, nvinfer1::ElementWiseOperation::kPROD));
auto betaOutput = N_CHECK(betaLayer->getOutput(0));
auto rhsCosOutput = windowHelper(ctx, 4.F * M_PI, window, N, nvinfer1::UnaryOperation::kCOS, periodic);
auto gammaTensor = N_CHECK(addConstantScalar(ctx, gamma, ::ONNX_NAMESPACE::TensorProto_DataType_FLOAT,
nvinfer1::Dims{1, {1}})->getOutput(0));
auto gammaLayer
= N_CHECK(ctx->network()->addElementWise(*gammaTensor, *rhsCosOutput, nvinfer1::ElementWiseOperation::kPROD));
auto gammaOutput = N_CHECK(gammaLayer->getOutput(0));
auto alphaTensor = N_CHECK(addConstantScalar(ctx, alpha, ::ONNX_NAMESPACE::TensorProto_DataType_FLOAT,
nvinfer1::Dims{1, {1}})->getOutput(0));
auto alphaMinusBeta
= N_CHECK(ctx->network()->addElementWise(*alphaTensor, *betaOutput, nvinfer1::ElementWiseOperation::kSUB));
auto alphaMinusBetaTensor = N_CHECK(alphaMinusBeta->getOutput(0));
auto plusGamma = N_CHECK(
ctx->network()->addElementWise(*alphaMinusBetaTensor, *gammaOutput, nvinfer1::ElementWiseOperation::kSUM));
RETURN_FIRST_OUTPUT(plusGamma, node, nodeIdx);
}
DEFINE_BUILTIN_OP_IMPORTER(Cast)
{
// Get input node.
nvinfer1::ITensor& tensor = convertToTensor(inputs.at(0), ctx);
OnnxAttrs attrs(node, ctx);
// Get data type to cast to. Ignore "saturate" attribute as TRT will reject casts to FP8.
auto onnxType = attrs.get<int32_t>("to");
DataType newType{DataType::kFLOAT};
LOG_VERBOSE("Casting to type: " << newType);
ONNXTRT_CHECK_NODE(convertDtype(onnxType, &newType), "Unsupported cast!", node, nodeIdx, ErrorCode::kINVALID_NODE);
// Add the layer.
nvinfer1::ICastLayer* layer = N_CHECK(ctx->network()->addCast(tensor, newType));
ctx->registerLayer(layer, node);
RETURN_FIRST_OUTPUT(layer, node, nodeIdx);
}
DEFINE_BUILTIN_OP_IMPORTER(CastLike)
{
// Get input tensor to cast
nvinfer1::ITensor& tensor = convertToTensor(inputs.at(0), ctx);
// Get datatype to cast to, extracted from the second input tensor. Ignore "saturate" attribute as TRT will reject
// casts to FP8.
auto type = convertToTensor(inputs.at(1), ctx).getType();
nvinfer1::ICastLayer* layer = N_CHECK(ctx->network()->addCast(tensor, type));
ctx->registerLayer(layer, node);
RETURN_FIRST_OUTPUT(layer, node, nodeIdx);
}
DEFINE_BUILTIN_OP_IMPORTER(Ceil)
{
return unaryHelper(ctx, node, nodeIdx, inputs.at(0), nvinfer1::UnaryOperation::kCEIL);
}
DEFINE_BUILTIN_OP_IMPORTER(Celu)
{
using eOp = nvinfer1::ElementWiseOperation;
using uOp = nvinfer1::UnaryOperation;
using eOpInstuctor = std::tuple<int, int, const nvinfer1::ElementWiseOperation>;
ONNXTRT_CHECK_NODE((!inputs.empty()), "Inputs vector is empty.", node, nodeIdx, ErrorCode::kINVALID_NODE);
OnnxAttrs attrs(node, ctx);
TensorOrWeights input = inputs.at(0);
float alpha = attrs.get<float>("alpha", 1.0);
TensorOrWeights weightsOfZero = ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto::FLOAT, {0, {}});
ShapedWeights weightsOfOnes = ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto::FLOAT, {0, {}});
std::vector<float> ones{1};
std::memcpy(weightsOfOnes.values, ones.data(), weightsOfOnes.count() * sizeof(float));
ShapedWeights weightsOfAlpha = ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto::FLOAT, {0, {}});
std::vector<float> alphas{alpha};
std::memcpy(weightsOfAlpha.values, alphas.data(), weightsOfAlpha.count() * sizeof(float));
// Variable name -> index in inputTensors
// x -> 0
// 0 -> 1
// 1 -> 2
// alpha -> 3
std::vector<TensorOrWeights> newInputs{input, weightsOfZero, weightsOfOnes, weightsOfAlpha};
std::vector<nvinfer1::ITensor*> inputTensors;
int32_t maxNbDims = -1;
for (auto i : newInputs)
{
maxNbDims = std::max(maxNbDims, i.shape().nbDims);
}
for (auto i : newInputs)
{
auto* tensor_ptr = &convertToTensor(i, ctx);
// Broadcast all input tensors to size of maxNbDims
broadcastTensor(ctx, tensor_ptr, maxNbDims);
ONNXTRT_CHECK_NODE(tensor_ptr->getDimensions().nbDims == maxNbDims, "Failed to broadcast tensors elementwise!",
node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE);
inputTensors.push_back(tensor_ptr);
}
// Calculate (x/alpha)
std::vector<TensorOrWeights> tempInputs{newInputs[0], newInputs[3]};
elementwiseCheck(tempInputs, eOp::kDIV, node, nodeIdx);
nvinfer1::ITensor* combined = inputTensors.at(0);
auto* divLayer = N_CHECK(ctx->network()->addElementWise(*combined, *inputTensors.at(3), eOp::kDIV));
ctx->registerLayer(divLayer, node);
combined = N_CHECK(divLayer->getOutput(0));
// Calculate exp(x/alpha) -> 4
nvinfer1::IUnaryLayer* uLayer = N_CHECK(ctx->network()->addUnary(*combined, uOp::kEXP));
ctx->registerLayer(uLayer, node);
combined = N_CHECK(uLayer->getOutput(0));
inputTensors.push_back(combined);
std::vector<eOpInstuctor> operations{
// max(0,x) -> 5
eOpInstuctor(0, 1, eOp::kMAX),
// (exp(x/alpha)-1)) -> 6
eOpInstuctor(4, 2, eOp::kSUB),
// alpha*(exp(x/alpha)-1) -> 7
eOpInstuctor(3, 6, eOp::kPROD),
// min(0,alpha*(exp(x/alpha)-1)) -> 8
eOpInstuctor(1, 7, eOp::kMIN),
// max(0,x) + min(0,alpha*(exp(x/alpha)-1)) -> 9
eOpInstuctor(5, 8, eOp::kSUM),
};
for (auto it : operations)
{
nvinfer1::ITensor* firstTensor = inputTensors.at(std::get<0>(it));
nvinfer1::ITensor* secondTensor = inputTensors.at(std::get<1>(it));
eOp const op = std::get<2>(it);
tempInputs = {firstTensor, secondTensor};
elementwiseCheck(tempInputs, op, node, nodeIdx);
ONNXTRT_CHECK_NODE((firstTensor->getDimensions().nbDims == secondTensor->getDimensions().nbDims),
"The rank of operands should be the same adding inputs. First tensor rank is "
<< firstTensor->getDimensions().nbDims << ", but second tensor rank is "
<< secondTensor->getDimensions().nbDims << ".",
node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE);
auto* layer = N_CHECK(ctx->network()->addElementWise(*firstTensor, *secondTensor, op));
ctx->registerLayer(layer, node);
inputTensors.push_back(N_CHECK(layer->getOutput(0)));
}
return {{inputTensors.back()}};
}
// Helper function to perform clip through elementwise operations
template <typename ScalarType>
NodeOutputs elementwiseClipHelper(ImporterContext* ctx, ::ONNX_NAMESPACE::NodeProto const& node,
std::vector<TensorOrWeights>& inputs, size_t numInputs, int32_t onnxType)
{
OnnxAttrs attrs(node, ctx);
auto* input = &convertToTensor(inputs.at(0), ctx);
nvinfer1::ITensor* alphaT{nullptr};
nvinfer1::ITensor* betaT{nullptr};
ScalarType alpha = std::numeric_limits<ScalarType>::lowest();
ScalarType beta = std::numeric_limits<ScalarType>::max();
if (numInputs == 1)
{
alphaT = N_CHECK(addConstantScalar(ctx, alpha, onnxType)->getOutput(0));
betaT = N_CHECK(addConstantScalar(ctx, beta, onnxType)->getOutput(0));
}
else if (numInputs == 2)
{
alphaT = &convertToTensor(inputs.at(1), ctx);
betaT = N_CHECK(addConstantScalar(ctx, beta, onnxType)->getOutput(0));
}
else if (numInputs == 3)
{
// "min" can be optional if "max" is specified. Check for this case here
if (!inputs.at(1).isNullTensor())
{
alphaT = &convertToTensor(inputs.at(1), ctx);
}
else
{
alphaT = N_CHECK(addConstantScalar(ctx, alpha, onnxType)->getOutput(0));
}
if (!inputs.at(2).isNullTensor())
{
betaT = &convertToTensor(inputs.at(2), ctx);
}
else
{
betaT = N_CHECK(addConstantScalar(ctx, beta, onnxType)->getOutput(0));
}
}
// Now that we have alphaT and betaT, do the elementwise calculation
using eOp = nvinfer1::ElementWiseOperation;
broadcastTensors(ctx, input, alphaT);
broadcastTensors(ctx, input, betaT);
auto* lowerClipLayer = N_CHECK(ctx->network()->addElementWise(*input, *alphaT, eOp::kMAX));
auto* lowerClip = N_CHECK(lowerClipLayer->getOutput(0));
auto* upperClipLayer = N_CHECK(ctx->network()->addElementWise(*lowerClip, *betaT, eOp::kMIN));
auto* upperClip = N_CHECK(upperClipLayer->getOutput(0));
return {{upperClip}};
}
DEFINE_BUILTIN_OP_IMPORTER(Clip)
{
checkNotInvalidType(inputs.at(0), {"UINT8"}, node, nodeIdx);
// For INT32 and multi-input clips, use elementwise operators instead.
size_t numInputs = inputs.size();
bool elementwiseClip = inputs.at(0).isInt32() || inputs.at(0).isInt64();
for (size_t i = 1; i < numInputs; i++)
{
elementwiseClip |= inputs.at(i).is_tensor();
}
if (elementwiseClip)
{
auto type = convertToTensor(inputs.at(0), ctx).getType();
ONNXTRT_CHECK_NODE((type == DataType::kFLOAT || type == DataType::kHALF || type == DataType::kBF16
|| type == DataType::kINT32 || type == DataType::kINT64),
"This version of TensorRT only supports floating-point, INT32, or INT64 inputs for Clip! The current input "
"type is "
+ getTrtDtypeName(type) + ".",
node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE);
if (type == DataType::kHALF)
{
return elementwiseClipHelper<half_float::half>(
ctx, node, inputs, numInputs, ::ONNX_NAMESPACE::TensorProto::FLOAT16);
}
if (type == DataType::kBF16)
{
return elementwiseClipHelper<BFloat16>(
ctx, node, inputs, numInputs, ::ONNX_NAMESPACE::TensorProto::BFLOAT16);
}
if (type == DataType::kFLOAT)
{
return elementwiseClipHelper<float>(ctx, node, inputs, numInputs, ::ONNX_NAMESPACE::TensorProto::FLOAT);
}
if (type == DataType::kINT64)
{
return elementwiseClipHelper<int64_t>(ctx, node, inputs, numInputs, ::ONNX_NAMESPACE::TensorProto::INT64);
}
return elementwiseClipHelper<int32_t>(ctx, node, inputs, numInputs, ::ONNX_NAMESPACE::TensorProto::INT32);
}
// Activation path only supports float/half initializers
OnnxAttrs attrs(node, ctx);
// beta is the upper bound
float alpha = std::numeric_limits<float>::lowest();
float beta = std::numeric_limits<float>::max();
if (ctx->getOpsetVersion() >= 11)
{
// Handle "min" node input.
if (numInputs == 2)
{
ONNXTRT_CHECK_NODE(inputs.at(1).is_weights(), "Clip min value must be an initializer!", node, nodeIdx,
ErrorCode::kINVALID_NODE);
auto min = inputs.at(1).weights();
alpha = getSingleValueAsFloat(min);
}
// Handle both "min" and "max" node inputs
else if (numInputs == 3)
{
// "min" can be optional if "max" is specified. Check for this case here
if (!inputs.at(1).isNullTensor())
{
ONNXTRT_CHECK_NODE(inputs.at(1).is_weights(), "Clip min value must be an initializer!", node, nodeIdx,
ErrorCode::kINVALID_NODE);
auto min = inputs.at(1).weights();
alpha = getSingleValueAsFloat(min);
}
if (!inputs.at(2).isNullTensor())
{
ONNXTRT_CHECK_NODE(inputs.at(2).is_weights(), "Clip max value must be an initializer!", node, nodeIdx,
ErrorCode::kINVALID_NODE);
auto max = inputs.at(2).weights();
beta = getSingleValueAsFloat(max);
}
}
}
else
{
alpha = attrs.get("min", std::numeric_limits<float>::lowest());
beta = attrs.get("max", std::numeric_limits<float>::max());
}
return activationHelper(ctx, node, nodeIdx, inputs, nvinfer1::ActivationType::kCLIP, &alpha, &beta);
}
DEFINE_BUILTIN_OP_IMPORTER(Concat)
{
checkNotInvalidType(inputs.at(0), {"UINT8"}, node, nodeIdx);
std::vector<nvinfer1::ITensor*> tensors;
for (auto& input : inputs)
{
auto* tensorPtr = &convertToTensor(input, ctx);
tensors.push_back(tensorPtr);
}
OnnxAttrs attrs(node, ctx);
int32_t axis = attrs.get<int32_t>("axis");
int32_t nbDims = inputs.at(0).shape().nbDims;
convertAxis(axis, nbDims, node, nodeIdx);
auto* layer = N_CHECK(ctx->network()->addConcatenation(tensors.data(), tensors.size()));
ctx->registerLayer(layer, node);
layer->setAxis(axis);
RETURN_FIRST_OUTPUT(layer, node, nodeIdx);
}
DEFINE_BUILTIN_OP_IMPORTER(Constant)
{
OnnxAttrs attrs(node, ctx);
// Having the trt_outputs_range_min attributes means it's from
// serialized iNetworkDefinition.
if (!attrs.get<std::vector<float>>("trt_outputs_range_min", {}).empty())
{
// just create a constant layer here for 1-1 mapping during network deserialization
auto weights = attrs.get<ShapedWeights>("value");
auto* layer = N_CHECK(ctx->network()->addConstant(weights.shape, weights));
ctx->network()->setWeightsName(weights, weights.getName());
RETURN_FIRST_OUTPUT(layer, node, nodeIdx);
}
if (ctx->getOpsetVersion() >= 12)
{
if (attrs.count("value_float"))
{
ShapedWeights convertedWeights = ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto::FLOAT, {0, {}});
float value = attrs.get<float>("value_float");
std::memcpy(convertedWeights.values, &value, convertedWeights.count() * sizeof(float));
return {{convertedWeights}};
}
if (attrs.count("value_floats"))
{
std::vector<float> values = attrs.get<std::vector<float>>("value_floats");
int32_t valueSize = values.size();
ShapedWeights convertedWeights
= ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto::FLOAT, {1, {valueSize}});
std::memcpy(convertedWeights.values, values.data(), convertedWeights.count() * sizeof(float));
return {{convertedWeights}};
}
if (attrs.count("value_int"))
{
ShapedWeights convertedWeights = ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto::INT64, {0, {}});
int64_t value = attrs.get<int64_t>("value_int");
std::memcpy(convertedWeights.values, &value, convertedWeights.count() * sizeof(int64_t));
return {{convertedWeights}};
}
if (attrs.count("value_ints"))
{
std::vector<int64_t> values = attrs.get<std::vector<int64_t>>("value_ints");
int32_t valueSize = values.size();
ShapedWeights convertedWeights
= ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto::INT64, {1, {valueSize}});
std::memcpy(convertedWeights.values, values.data(), convertedWeights.count() * sizeof(int64_t));
return {{convertedWeights}};
}
}
attrs.get<ShapedWeights>("value");
return {{attrs.get<ShapedWeights>("value")}};
}
DEFINE_BUILTIN_OP_IMPORTER(ConstantOfShape)
{
OnnxAttrs attrs(node, ctx);
nvinfer1::ITensor* shape = &convertToTensor(inputs.at(0), ctx);
ShapedWeights zeroWeights
= ctx->createNamedTempWeights(::ONNX_NAMESPACE::TensorProto_DataType_FLOAT, nvinfer1::Dims{1, {1}});
static_cast<float*>(zeroWeights.values)[0] = 0.f;
auto valueWeights = TensorOrWeights{attrs.get("value", zeroWeights)};
nvinfer1::ITensor* value = &convertToTensor(valueWeights, ctx);
return {{constantOfShape(ctx, value, shape)}};
}
DEFINE_BUILTIN_OP_IMPORTER(Conv)
{
if (inputs.at(1).is_tensor() || (inputs.size() > 2 && inputs.at(2).is_tensor()))
{
// Handle dynamic weights convolution
return convMultiInput(ctx, node, nodeIdx, inputs);
}
nvinfer1::ITensor* tensorPtr = &convertToTensor(inputs.at(0), ctx);
auto kernelWeights = inputs.at(1).weights();
nvinfer1::Dims dims = tensorPtr->getDimensions();
LOG_VERBOSE("Convolution input dimensions: " << dims);
ONNXTRT_CHECK_NODE(dims.nbDims >= 0, "TensorRT could not compute output dimensions of Conv", node, nodeIdx,
ErrorCode::kUNSUPPORTED_NODE);
bool const needToExpandDims = (dims.nbDims == 3);
if (needToExpandDims)
{
// Expand spatial dims from 1D to 2D
std::vector<int32_t> axes{3};
tensorPtr = unsqueezeTensor(ctx, *tensorPtr, axes);
ONNXTRT_CHECK_NODE(tensorPtr, "Failed to unsqueeze tensor.", node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE);
dims = tensorPtr->getDimensions();
}
if (kernelWeights.shape.nbDims == 3)
{
kernelWeights.shape.nbDims = 4;
kernelWeights.shape.d[3] = 1;
}
int32_t const nbSpatialDims = dims.nbDims - 2;
// Check that the number of spatial dimensions and the kernel shape matches up.
ONNXTRT_CHECK_NODE((nbSpatialDims == kernelWeights.shape.nbDims - 2),
"The number of spatial dimensions and the kernel shape doesn't match up for the Conv operator. Number of "
"spatial dimensions = "
<< nbSpatialDims << ", number of kernel dimensions = " << kernelWeights.shape.nbDims << ".",
node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE);
nvinfer1::Weights biasWeights;
if (inputs.size() == 3)
{
assertIsWeights(inputs.at(2), "The bias tensor is required to be an initializer for the Conv operator.");
auto shapedBiasWeights = inputs.at(2).weights();
// Unsqueeze scalar weights to 1D
if (shapedBiasWeights.shape.nbDims == 0)
{
shapedBiasWeights.shape = {1, {1}};
}
ONNXTRT_CHECK_NODE((shapedBiasWeights.shape.nbDims == 1), "The bias tensor is required to be 1D.", node,
nodeIdx, ErrorCode::kINVALID_NODE);
ONNXTRT_CHECK_NODE((shapedBiasWeights.shape.d[0] == kernelWeights.shape.d[0]),
"The shape of the bias tensor misaligns with the weight tensor. Shape of bias weights = "
<< shapedBiasWeights.shape.d[0] << ", shape of kernel weights = " << kernelWeights.shape.d[0] << ".",
node, nodeIdx, ErrorCode::kINVALID_NODE);
biasWeights = shapedBiasWeights;
}
else
{
biasWeights = ShapedWeights::empty(kernelWeights.type);
}
nvinfer1::Dims kernelSize;
kernelSize.nbDims = nbSpatialDims;
for (int32_t i = 1; i <= nbSpatialDims; ++i)
{
kernelSize.d[nbSpatialDims - i] = kernelWeights.shape.d[kernelWeights.shape.nbDims - i];
}
nvinfer1::Dims strides = makeDims(nbSpatialDims, 1);
nvinfer1::Dims begPadding = makeDims(nbSpatialDims, 0);
nvinfer1::Dims endPadding = makeDims(nbSpatialDims, 0);
nvinfer1::Dims dilations = makeDims(nbSpatialDims, 1);
nvinfer1::PaddingMode paddingMode;
bool excludePadding;
getKernelParams(
ctx, node, &kernelSize, &strides, &begPadding, &endPadding, paddingMode, excludePadding, &dilations);
for (int32_t i = 1; i <= nbSpatialDims; ++i)
{
ONNXTRT_CHECK_NODE((kernelSize.d[nbSpatialDims - i] == kernelWeights.shape.d[kernelWeights.shape.nbDims - i]),
"The size of spatial dimension and the size of kernel shape are not equal for the Conv operator. "
"Size of spatial dimensions = "
<< kernelSize.d[nbSpatialDims - i]
<< ", size of kernel dimensions = " << kernelWeights.shape.d[kernelWeights.shape.nbDims - i] << ".",
node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE);
}
int32_t nchan = dims.d[1];
int32_t noutput = kernelWeights.shape.d[0];
nvinfer1::IConvolutionLayer* layer
= N_CHECK(ctx->network()->addConvolutionNd(*tensorPtr, noutput, kernelSize, kernelWeights, biasWeights));
layer->setStrideNd(strides);
layer->setPaddingMode(paddingMode);
layer->setPrePadding(begPadding);
layer->setPostPadding(endPadding);
layer->setDilationNd(dilations);
OnnxAttrs attrs(node, ctx);
int32_t ngroup = attrs.get("group", 1);
ONNXTRT_CHECK_NODE((nchan == -1 || kernelWeights.shape.d[1] * ngroup == nchan),
"Kernel weight dimension failed to broadcast to input.", node, nodeIdx, ErrorCode::kINVALID_NODE);
layer->setNbGroups(ngroup);
// Register layer name as well as kernel weights and bias weights (if any)
ctx->registerLayer(layer, node);
ctx->network()->setWeightsName(kernelWeights, inputs.at(1).weights().getName());
if (inputs.size() == 3)
{
ctx->network()->setWeightsName(biasWeights, inputs.at(2).weights().getName());
}
tensorPtr = N_CHECK(layer->getOutput(0));
dims = tensorPtr->getDimensions();
if (needToExpandDims)
{
// Un-expand spatial dims back to 1D
std::vector<int32_t> axes{3};
tensorPtr = squeezeTensor(ctx, *tensorPtr, axes);
ONNXTRT_CHECK_NODE(tensorPtr, "Failed to squeeze tensor.", node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE);
}
LOG_VERBOSE("Using kernel: " << kernelSize << ", strides: " << strides << ", prepadding: " << begPadding
<< ", postpadding: " << endPadding << ", dilations: " << dilations
<< ", numOutputs: " << noutput << ", nbGroups: " << ngroup);
LOG_VERBOSE("Convolution output dimensions: " << dims);
return {{tensorPtr}};
}
// TRT only supports 2D or 3D deconvolutions (Layout: [N,C,D1,D2,(D3)])
// Inputs should be of dimension 4 or 5.
// When input.nbDims = 3, we expand it to 4D
DEFINE_BUILTIN_OP_IMPORTER(ConvTranspose)
{
// Expand spatial dims from 1D to 2D, return true if reshaped activation
auto const NCWtoNCHW = [&ctx, &node](nvinfer1::ITensor*& tensor, nvinfer1::Dims& tensorShape) {
if (tensor && tensor->getDimensions().nbDims == 3)
{
std::vector<int32_t> const axes{3};
tensor = unsqueezeTensor(ctx, *tensor, axes);
tensorShape = tensor->getDimensions();
return true;
}
// for initializer, just change the shape by appending 1
if (tensorShape.nbDims == 3)
{
tensorShape.nbDims = 4;
tensorShape.d[3] = 1;
}
return false;
};
ONNXTRT_CHECK_NODE(
inputs.size() >= 2, "deconvolution require at least 2 inputs.", node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE);
nvinfer1::ITensor* tensorPtr = &convertToTensor(inputs.at(0), ctx);
auto inputType = tensorPtr->getType();
nvinfer1::ITensor* kernelTensorPtr = inputs.at(1).is_tensor() ? &convertToTensor(inputs.at(1), ctx) : nullptr;
nvinfer1::ITensor* biasTensorPtr
= inputs.size() > 2 && inputs.at(2).is_tensor() ? &convertToTensor(inputs.at(2), ctx) : nullptr;
nvinfer1::Dims dims = tensorPtr->getDimensions();
// Deconvolution input must be at least 3D and at most 5D.
ONNXTRT_CHECK_NODE(dims.nbDims >= 3 && dims.nbDims <= 5,
"Deconvolution input must be at least 3D and at most 5D! The current input is rank " << dims.nbDims << ".",
node, nodeIdx, ErrorCode::kUNSUPPORTED_NODE);
// Kernel weights have layout [C, M/group, k1, k2, (k3)]