CUDA-Guide VS spikingjelly

Compare CUDA-Guide vs spikingjelly and see what are their differences.

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CUDA-Guide spikingjelly
2 1
47 1,164
- -
4.0 8.7
5 months ago 6 days ago
Cuda Python
- GNU General Public License v3.0 or later
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CUDA-Guide

Posts with mentions or reviews of CUDA-Guide. We have used some of these posts to build our list of alternatives and similar projects.

spikingjelly

Posts with mentions or reviews of spikingjelly. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2022-04-04.
  • Has anyone used Spiking Neural Networks (SNNs) for image processing?
    2 projects | /r/computervision | 4 Apr 2022
    Surrogate gradient learning w/ backpropagation: for short, you can use backpropagation with SNNs (by a little trick during the backward pass). Super easy to implement, super efficient. You have a deep SNN trained via backprop with any type of input you want. Personally, that is completely my jam. Maybe you can use such paradigm to easily train an SNN in your biomed image dataset. Good repos: SnnTorch comes with the best tutorials to explain SNNs and surrogate gradient learning. This is the fastest way to understand the field and begin to implement you solution. Nevertheless, spikingjelly remains a better option when it comes to implement your ideas (better memory efficiency, etc). Good mention to lava-dl, with which you can train a neural network and directly transfer it into neuromorphic hardware (Intel Loihi) if you have access to this kind of chip.

What are some alternatives?

When comparing CUDA-Guide and spikingjelly you can also consider the following projects:

instant-ngp - Instant neural graphics primitives: lightning fast NeRF and more

snntorch - Deep and online learning with spiking neural networks in Python

cub - [ARCHIVED] Cooperative primitives for CUDA C++. See https://github.com/NVIDIA/cccl

norse - Deep learning with spiking neural networks (SNNs) in PyTorch.

DOKSparse - sparse DOK tensors on GPU, pytorch

lava-dl - Deep Learning library for Lava

LSQR-CUDA - This is a LSQR-CUDA implementation written by Lawrence Ayers under the supervision of Stefan Guthe of the GRIS institute at the Technische Universität Darmstadt. The LSQR library was authored Chris Paige and Michael Saunders.

bindsnet - Simulation of spiking neural networks (SNNs) using PyTorch.

cudnnxx - cuDNN C++ wrapper.

norse - Deep learning for spiking neural networks

FirstCollisionTimestepRarefiedGasSimulator - This simulator computes all possible intersections for a very small timestep for a particle model

caer - High-performance Vision library in Python. Scale your research, not boilerplate.