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											2019-04-17 10:49:11 +08:00
										 |  |  | //
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							|  |  |  | //  CPUQuantizedLogistic.cpp
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							|  |  |  | //  MNN
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							|  |  |  | //
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							|  |  |  | //  Created by MNN on 2018/12/12.
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							|  |  |  | //  Copyright © 2018, Alibaba Group Holding Limited
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							|  |  |  | //
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							| 
									
										
											  
											
												- build:
	- unify schema building in core and converter;
	- add more build script for android;
	- add linux build script for python;
- ops impl:
	- add floor mod support in binary;
	- use eltwise impl in add/max/sub/mul binary for optimization;
	- remove fake double support in cast;
	- fix 5d support for concat;
	- add adjX and adjY support for batch matmul;
	- optimize conv2d back prop filter;
	- add pad mode support for conv3d;
	- fix bug in conv2d & conv depthwise with very small feature map;
	- optimize binary without broacast;
	- add data types support for gather;
	- add gather ND support;
	- use uint8 data type in gather v2;
	- add transpose support for matmul;
	- add matrix band part;
	- add dim != 4 support for padding, reshape & tensor convert;
	- add pad type support for pool3d;
	- make ops based on TensorFlow Lite quantization optional;
	- add all & any support for reduction;
	- use type in parameter as output type in reduction;
	- add int support for unary;
	- add variable weight support for conv2d;
	- fix conv2d depthwise weights initialization;
	- fix type support for transpose;
	- fix grad outputs count for  reduce grad and reshape grad;
	- fix priorbox & detection output;
	- fix metal softmax error;
- python:
	- add runSessionWithCallBackInfo interface;
	- add max nodes limit (1400) for visualization tool;
	- fix save error in python3;
	- align default dim;
- convert:
	- add extra design for optimization;
	- add more post converting optimizers;
	- add caffe v1 weights blob support;
	- add cast, unary, conv transpose support for onnx model;
	- optimize batchnorm, conv with variable weights, prelu, reshape, slice, upsample for onnx model;
	- add cos/sin/atan/tan support for unary for tensorflow model;
	- add any/all support for reduction for tensorflow model;
	- add elu, conv3d, pool3d support for tensorflow model;
	- optimize argmax, batchnorm, concat, batch to space, conv with variable weights, prelu, slice for tensorflow model;
- others:
	- fix size computer lock;
	- fix thread pool deadlock;
	- add express & parameters in express;
	- rewrite blitter chooser without static map;
	- add tests for expr;
											
										 
											2019-10-29 13:37:26 +08:00
										 |  |  | #ifdef MNN_SUPPORT_TFLITE_QUAN
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							| 
									
										
										
										
											2019-12-27 22:16:57 +08:00
										 |  |  | #include "backend/cpu/CPUQuantizedLogistic.hpp"
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							|  |  |  | #include "backend/cpu/CPUBackend.hpp"
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							|  |  |  | #include "backend/cpu/CPUFixedPoint.hpp"
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							|  |  |  | #include "backend/cpu/CPUQuantizationUtils.hpp"
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							|  |  |  | #include "core/Macro.h"
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							|  |  |  | #include "backend/cpu/compute/OptimizedComputer.hpp"
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							| 
									
										
										
										
											2019-04-17 10:49:11 +08:00
										 |  |  | 
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							|  |  |  | namespace MNN { | 
					
						
							|  |  |  | 
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							|  |  |  | CPUQuantizedLogistic::CPUQuantizedLogistic(Backend *backend, const Op *op) : Execution(backend) { | 
					
						
							|  |  |  |     mLogisticParam = op->main_as_QuantizedLogistic(); | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | ErrorCode CPUQuantizedLogistic::onResize(const std::vector<Tensor *> &inputs, const std::vector<Tensor *> &outputs) { | 
					
						
							|  |  |  |     MNN_ASSERT(1 == inputs.size() && 1 == outputs.size()); | 
					
						
							|  |  |  |     MNN_ASSERT(0 == mLogisticParam->outputQuantizedParam()->zeroPoint() && | 
					
						
							|  |  |  |                1. / 256 == mLogisticParam->outputQuantizedParam()->scale()); | 
					
						
							|  |  |  | 
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							|  |  |  |     static constexpr int kInputIntegerBits = 4; | 
					
						
							|  |  |  |     const double inputRealMultiplier = | 
					
						
							|  |  |  |         mLogisticParam->inputQuantizedParam()->scale() * static_cast<double>(1 << (31 - kInputIntegerBits)); | 
					
						
							|  |  |  |     QuantizeMultiplierGreaterThanOne(inputRealMultiplier, &mInputMultiplier, &mInputLeftShift); | 
					
						
							| 
									
										
										
										
											2020-07-02 17:46:16 +08:00
										 |  |  |     mInputZeroPoint = mLogisticParam->inputQuantizedParam()->zeroPoint(); | 
					
						
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											2019-04-17 10:49:11 +08:00
										 |  |  |     mInputRangeRadius = CalculateInputRadius(kInputIntegerBits, mInputLeftShift); | 
					
						
							|  |  |  |     return NO_ERROR; | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | ErrorCode CPUQuantizedLogistic::onExecute(const std::vector<MNN::Tensor *> &inputs, | 
					
						
							|  |  |  |                                           const std::vector<MNN::Tensor *> &outputs) { | 
					
						
							|  |  |  |     auto input = inputs[0], output = outputs[0]; | 
					
						
							|  |  |  |     std::vector<int> inputDims, outputDims; | 
					
						
							|  |  |  |     for (int i = 0; i < input->buffer().dimensions; i++) { | 
					
						
							|  |  |  |         inputDims.push_back(input->buffer().dim[i].extent); | 
					
						
							|  |  |  |     } | 
					
						
							|  |  |  |     for (int i = 0; i < output->buffer().dimensions; i++) { | 
					
						
							|  |  |  |         outputDims.push_back(output->buffer().dim[i].extent); | 
					
						
							|  |  |  |     } | 
					
						
							|  |  |  | 
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							| 
									
										
										
										
											2020-07-02 17:46:16 +08:00
										 |  |  |     Optimized::Logistic(input->host<uint8_t>(), inputDims, mInputZeroPoint, | 
					
						
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											2019-04-17 10:49:11 +08:00
										 |  |  |                         mInputRangeRadius, mInputMultiplier, mInputLeftShift, output->host<uint8_t>(), outputDims); | 
					
						
							|  |  |  | 
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							|  |  |  |     return NO_ERROR; | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | class CPUQuantizedLogisticCreator : public CPUBackend::Creator { | 
					
						
							|  |  |  | public: | 
					
						
							|  |  |  |     virtual Execution *onCreate(const std::vector<Tensor *> &inputs, const std::vector<Tensor *> &outputs, | 
					
						
							|  |  |  |                                 const MNN::Op *op, Backend *backend) const { | 
					
						
							|  |  |  |         return new CPUQuantizedLogistic(backend, op); | 
					
						
							|  |  |  |     } | 
					
						
							|  |  |  | }; | 
					
						
							|  |  |  | REGISTER_CPU_OP_CREATOR(CPUQuantizedLogisticCreator, OpType_QuantizedLogistic); | 
					
						
							|  |  |  | } // namespace MNN
 | 
					
						
							| 
									
										
											  
											
												- build:
	- unify schema building in core and converter;
	- add more build script for android;
	- add linux build script for python;
- ops impl:
	- add floor mod support in binary;
	- use eltwise impl in add/max/sub/mul binary for optimization;
	- remove fake double support in cast;
	- fix 5d support for concat;
	- add adjX and adjY support for batch matmul;
	- optimize conv2d back prop filter;
	- add pad mode support for conv3d;
	- fix bug in conv2d & conv depthwise with very small feature map;
	- optimize binary without broacast;
	- add data types support for gather;
	- add gather ND support;
	- use uint8 data type in gather v2;
	- add transpose support for matmul;
	- add matrix band part;
	- add dim != 4 support for padding, reshape & tensor convert;
	- add pad type support for pool3d;
	- make ops based on TensorFlow Lite quantization optional;
	- add all & any support for reduction;
	- use type in parameter as output type in reduction;
	- add int support for unary;
	- add variable weight support for conv2d;
	- fix conv2d depthwise weights initialization;
	- fix type support for transpose;
	- fix grad outputs count for  reduce grad and reshape grad;
	- fix priorbox & detection output;
	- fix metal softmax error;
- python:
	- add runSessionWithCallBackInfo interface;
	- add max nodes limit (1400) for visualization tool;
	- fix save error in python3;
	- align default dim;
- convert:
	- add extra design for optimization;
	- add more post converting optimizers;
	- add caffe v1 weights blob support;
	- add cast, unary, conv transpose support for onnx model;
	- optimize batchnorm, conv with variable weights, prelu, reshape, slice, upsample for onnx model;
	- add cos/sin/atan/tan support for unary for tensorflow model;
	- add any/all support for reduction for tensorflow model;
	- add elu, conv3d, pool3d support for tensorflow model;
	- optimize argmax, batchnorm, concat, batch to space, conv with variable weights, prelu, slice for tensorflow model;
- others:
	- fix size computer lock;
	- fix thread pool deadlock;
	- add express & parameters in express;
	- rewrite blitter chooser without static map;
	- add tests for expr;
											
										 
											2019-10-29 13:37:26 +08:00
										 |  |  | #endif
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