blob: cd0dc5d40f3bd2fbe0f5d5a07d608cedbe728b11 [file] [log] [blame]
//
// Copyright © 2017 Arm Ltd. All rights reserved.
// SPDX-License-Identifier: MIT
//
#pragma once
#include "BaseIterator.hpp"
#include <armnnUtils/FloatingPointConverter.hpp>
#include <armnnUtils/TensorUtils.hpp>
#include <armnn/utility/Assert.hpp>
namespace armnn
{
namespace
{
inline std::unique_ptr<Decoder<float>> MakeSigned32PerAxisDecoder(const TensorInfo& info, const void* data)
{
return std::make_unique<ScaledInt32PerAxisDecoder>(static_cast<const int32_t*>(data), info);
}
inline std::unique_ptr<Decoder<float>> MakeSigned32Decoder(const TensorInfo& info, const void* data)
{
if(info.HasMultipleQuantizationScales())
{
// NOTE: If we have multiple quantization scales, we create a ScaledInt32PerAxisDecoder.
// This will be used to decode per-axis quantized convolution biases.
return MakeSigned32PerAxisDecoder(info, data);
}
else
{
if (info.GetQuantizationDim().has_value())
{
// NOTE: Even though we only have a single quantization scale, if the quantization
// dimension is set, the tensor has per-axis quantization and we need to create a
// ScaledInt32PerAxisDecoder
return MakeSigned32PerAxisDecoder(info, data);
}
const float scale = info.GetQuantizationScale();
if (scale == 0.f)
{
// NOTE:: If no quantization scale is set, we create an Int32Decoder, which simply
// casts the int value to float. This will be used for any INT32 data other than
// convolution biases.
return std::make_unique<Int32Decoder>(static_cast<const int32_t*>(data));
}
// NOTE: If we only have a single (non-zero) quantization scale and no quantization
// dimension is specified, we need to create a ScaledInt32Decoder. This will be used
// to decode per-tensor quantized convolution biases.
return std::make_unique<ScaledInt32Decoder>(static_cast<const int32_t*>(data), scale);
}
}
} // anonymous namespace
template<typename T>
inline std::unique_ptr<Decoder<T>> MakeDecoder(const TensorInfo& info, const void* data = nullptr);
template<>
inline std::unique_ptr<Decoder<float>> MakeDecoder(const TensorInfo& info, const void* data)
{
switch(info.GetDataType())
{
ARMNN_NO_DEPRECATE_WARN_BEGIN
case armnn::DataType::QuantizedSymm8PerAxis:
{
std::pair<unsigned int, std::vector<float>> params = armnnUtils::GetPerAxisParams(info);
return std::make_unique<QSymm8PerAxisDecoder>(static_cast<const int8_t*>(data), info);
}
ARMNN_NO_DEPRECATE_WARN_END
case DataType::QAsymmS8:
{
return std::make_unique<QASymmS8Decoder>(
static_cast<const int8_t*>(data),
info.GetQuantizationScale(),
info.GetQuantizationOffset());
}
case DataType::QAsymmU8:
{
return std::make_unique<QASymm8Decoder>(
static_cast<const uint8_t*>(data),
info.GetQuantizationScale(),
info.GetQuantizationOffset());
}
case DataType::QSymmS16:
{
return std::make_unique<QSymm16Decoder>(
static_cast<const int16_t*>(data),
info.GetQuantizationScale(),
info.GetQuantizationOffset());
}
case DataType::BFloat16:
{
return std::make_unique<BFloat16Decoder>(static_cast<const BFloat16*>(data));
}
case DataType::Float16:
{
return std::make_unique<Float16Decoder>(static_cast<const Half*>(data));
}
case DataType::Float32:
{
return std::make_unique<Float32Decoder>(static_cast<const float*>(data));
}
case DataType::Signed32:
{
return MakeSigned32Decoder(info, data);
}
case DataType::QSymmS8:
{
if (info.HasPerAxisQuantization())
{
std::pair<unsigned int, std::vector<float>> params = armnnUtils::GetPerAxisParams(info);
return std::make_unique<QSymm8PerAxisDecoder>(static_cast<const int8_t*>(data), info);
}
else
{
return std::make_unique<QSymmS8Decoder>(
static_cast<const int8_t*>(data),
info.GetQuantizationScale(),
info.GetQuantizationOffset());
}
}
case armnn::DataType::Boolean:
{
return std::make_unique<BooleanDecoder>(static_cast<const uint8_t*>(data));
}
default:
{
ARMNN_ASSERT_MSG(false, "Unsupported Data Type!");
break;
}
}
return nullptr;
}
template<>
inline std::unique_ptr<Decoder<bool>> MakeDecoder(const TensorInfo& info, const void* data)
{
switch(info.GetDataType())
{
case DataType::Boolean:
{
return std::make_unique<BooleanDecoderBool>(static_cast<const uint8_t*>(data));
}
default:
{
ARMNN_ASSERT_MSG(false, "Unsupported Data Type!");
break;
}
}
return nullptr;
}
template<>
inline std::unique_ptr<Decoder<int32_t>> MakeDecoder(const TensorInfo& info, const void* data)
{
switch(info.GetDataType())
{
case DataType::Signed32:
{
return std::make_unique<Int32ToInt32tDecoder>(static_cast<const int32_t*>(data));
}
default:
{
ARMNN_ASSERT_MSG(false, "Unsupported Data Type!");
break;
}
}
return nullptr;
}
} //namespace armnn