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Hybrid Macro/Micro Level Backpropagation for SNNs

This repo is the CUDA implementation of SNNs trained the hybrid macro/micro level backpropagation, modified based on zhxfl for spiking neuron networks.

The paper Hybrid Macro/Micro Level Backpropagation for Training Deep Spiking Neural Networks is accepted by NeurIPS 2018.

Contact [email protected] if you have any questions or concerns.

Dependencies and Libraries

  • opencv
  • cuda (suggest cuda 8.0)

You can compile the code on windows or linux.

SDK include path(-I)
  • linux: /usr/local/cuda/samples/common/inc/ (For include file "helper_cuda"); /usr/local/include/opencv/ (Depend on situation)
  • windows: X:/Program Files (x86) /NVIDIA Corporation/CUDA Samples/v6.5/common/inc (For include file "helper_cuda"); X:/Program Files/opencv/vs2010/install/include (Depend on situation)
Library search path(-L)
  • linux: /usr/local/lib/
  • windows: X:/Program Files/opencv/vs2010/install/x86/cv10/lib (Depend on situation)
libraries(-l)
  • opencv_core
  • opencv_highgui
  • opencv_imgproc
  • opencv_imgcodecs (need for opencv3.0)
  • cublas
  • curand
  • cudadevrt

Installation

The repo requires CUDA 8.0+ to run.

Please install the opencv and cuda before hand.

Install CMake and OpenCV

$ sudo apt-get install cmake libopencv-dev 

Checkout and compile the code:

$ git clone https://github.com/jinyyy666/mm-bp-snn.git
$ cd mm-bp-snn
$ mkdir build
$ cd build
$ cmake ..
$ make -j
GPU compute compatibility
  • capability 6.0 for Titan XP, which is used for the authors.

Get Dataset

Get the MNIST dataset:

$ cd mm-bp-snn/mnist/
$ ./get_mnist.sh

Get the N-MNIST dataset by the link. Then unzip the ''Test.zip'' and ''Train.zip''.

Run the matlab code: NMNIST_Converter.m in nmnist/

Run the code

  • MNIST
$ cd mm-bp-snn
$ ./build/CUDA-SNN 6 1
  • N-MNIST
$ cd mm-bp-snn
$ ./build/CUDA-SNN 7 1
  • For Spiking-CNN, you need to enable the #define SPIKING_CNN in main.cpp, and recompile.
$ cd mm-bp-snn
$ ./build/CUDA-SNN 6 1
For Window user

Do the following to set up compilation environment.

  • Install Visual Stidio and OpenCV.
  • When you create a new project using VS, You can find NVIDIA-CUDA project template, create a cuda-project.
  • View-> Property Pages-> Configuration Properties-> CUDA C/C++ -> Device-> Code Generation-> compute_60,sm_60
  • View-> Property Pages-> Configuration Properties-> CUDA C/C++ -> Common-> Generate Relocatable Device Code-> Yes(-rdc=true)
  • View-> Property Pages-> Configuration Properties-> Linker-> Input-> Additional Dependencies-> libraries(-l)
  • View-> Property Pages-> Configuration Properties-> VC++ Directories-> General-> Library search path(-L)
  • View-> Property Pages-> Configuration Properties-> VC++ Directories-> General-> Include Directories(-I)

Notes

  • The SNNs are implemented in terms of layers. User can config the SNNs by using configuration files in Config/
  • The program will save the best test result and save the network weight in the file "Result/checkPoint.txt", If the program exit accidentally, you can continue the program form this checkpoint.
  • The log for the reported performance of the three datasets and the correspoding checkout point files can be found in Result folder.
Open Source Agenda is not affiliated with "Mm Bp Snn" Project. README Source: jinyyy666/mm-bp-snn
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