Fast, flexible and fun neural networks.

Overview

Brainstorm

Discontinuation Notice
Brainstorm is no longer being maintained, so we recommend using one of the many other,available frameworks, such as Tensorflow or Chainer. These and similar large projects are supported much more actively by a larger number of contributors. They provide, or plan to provide many available and planned features of brainstorm, and have several advantages, particularly in speed. In order to avoid fragmentation and waste of effort, we have decided to discontinue the brainstorm project and contribute to other frameworks and related projects such as Sacred instead. Many thanks to everyone who contributed! For us it has been a thoroughly enjoyable and educational experience.

Documentation Status PyPi Version MIT license Python Versions

Brainstorm makes working with neural networks fast, flexible and fun.

Combining lessons from previous projects with new design elements, and written entirely in Python, Brainstorm has been designed to work on multiple platforms with multiple computing backends.

Getting Started

A good point to start is the brief walkthrough of the cifar10_cnn.py example.
More documentation is in progress, and hosted on ReadTheDocs. If you wish, you can also run the data preparation scripts (data directory) and look at some basic examples (examples directory).

Status

Brainstorm is discontinued.

The currently available feature set includes recurrent (simple, LSTM, Clockwork), 2D convolution/pooling, Highway and batch normalization layers. API documentation is fairly complete and we are currently working on tutorials and usage guides.

Brainstorm abstracts computations via handlers with a consistent API. Currently, two handlers are provided: NumpyHandler for computations on the CPU (through Numpy/Cython) and PyCudaHandler for the GPU (through PyCUDA and scikit-cuda).

Installation

Here are some quick instructions for installing the latest master branch on Ubuntu.

# Install pre-requisites
sudo apt-get update
sudo apt-get install python-dev libhdf5-dev git python-pip
# Get brainstorm
git clone https://github.com/IDSIA/brainstorm
# Install
cd brainstorm
[sudo] pip install -r requirements.txt
[sudo] python setup.py install
# Build local documentation (optional)
sudo apt-get install python-sphinx
make docs
# Install visualization dependencies (optional)
sudo apt-get install graphviz libgraphviz-dev pkg-config
[sudo] pip install pygraphviz --install-option="--include-path=/usr/include/graphviz" --install-option="--library-path=/usr/lib/graphviz/"

To use your CUDA installation with brainstorm:

$ [sudo] pip install -r pycuda_requirements.txt

Set location for storing datasets:

echo "export BRAINSTORM_DATA_DIR=/home/my_data_dir/" >> ~/.bashrc

Help and Support

If you have any suggestions or questions, please post to the Google group.

If you encounter any errors or problems, please let us know by opening an issue.

License

MIT License. Please see the LICENSE file.

Acknowledgements and Citation

Klaus Greff and Rupesh Srivastava would like to thank Jürgen Schmidhuber for his continuous supervision and encouragement. Funding from EU projects NASCENCE (FP7-ICT-317662) and WAY (FP7-ICT-288551) was instrumental during the development of this project. We also thank Nvidia Corporation for their donation of GPUs.

If you use Brainstorm in your research, please cite us as follows:

Klaus Greff, Rupesh Kumar Srivastava and Jürgen Schmidhuber. 2016. Brainstorm: Fast, Flexible and Fun Neural Networks, Version 0.5. https://github.com/IDSIA/brainstorm

Bibtex:

@misc{brainstorm2015,
  author = {Klaus Greff and Rupesh Kumar Srivastava and Jürgen Schmidhuber},
  title = {{Brainstorm: Fast, Flexible and Fun Neural Networks, Version 0.5}},
  year = {2015},
  url = {https://github.com/IDSIA/brainstorm}
}
Owner
IDSIA
Istituto Dalle Molle di studi sull'intelligenza artificiale
IDSIA
Keeper for Ricochet Protocol, implemented with Apache Airflow

Ricochet Keeper This repository contains Apache Airflow DAGs for executing keeper operations for Ricochet Exchange. Usage You will need to run this us

Ricochet Exchange 5 May 24, 2022
Code For TDEER: An Efficient Translating Decoding Schema for Joint Extraction of Entities and Relations (EMNLP2021)

TDEER (WIP) Code For TDEER: An Efficient Translating Decoding Schema for Joint Extraction of Entities and Relations (EMNLP2021) Overview TDEER is an e

Alipay 6 Dec 17, 2022
Code for our TKDE paper "Understanding WeChat User Preferences and “Wow” Diffusion"

wechat-wow-analysis Understanding WeChat User Preferences and “Wow” Diffusion. Fanjin Zhang, Jie Tang, Xueyi Liu, Zhenyu Hou, Yuxiao Dong, Jing Zhang,

18 Sep 16, 2022
Development Kit for the SoccerNet Challenge

SoccerNetv2-DevKit Welcome to the SoccerNet-V2 Development Kit for the SoccerNet Benchmark and Challenge. This kit is meant as a help to get started w

Silvio Giancola 117 Dec 30, 2022
Image augmentation library in Python for machine learning.

Augmentor is an image augmentation library in Python for machine learning. It aims to be a standalone library that is platform and framework independe

Marcus D. Bloice 4.8k Jan 07, 2023
ONNX Runtime: cross-platform, high performance ML inferencing and training accelerator

ONNX Runtime is a cross-platform inference and training machine-learning accelerator. ONNX Runtime inference can enable faster customer experiences an

Microsoft 8k Jan 04, 2023
VISNOTATE: An Opensource tool for Gaze-based Annotation of WSI Data

VISNOTATE: An Opensource tool for Gaze-based Annotation of WSI Data Introduction Requirements Installation and Setup Supported Hardware and Software R

SigmaLab 1 Jun 14, 2022
Official code of paper: MovingFashion: a Benchmark for the Video-to-Shop Challenge

SEAM Match-RCNN Official code of MovingFashion: a Benchmark for the Video-to-Shop Challenge paper Installation Requirements: Pytorch 1.5.1 or more rec

HumaticsLAB 31 Oct 10, 2022
TensorFlow implementation for Bayesian Modeling and Uncertainty Quantification for Learning to Optimize: What, Why, and How

Bayesian Modeling and Uncertainty Quantification for Learning to Optimize: What, Why, and How TensorFlow implementation for Bayesian Modeling and Unce

Shen Lab at Texas A&M University 8 Sep 02, 2022
Most popular metrics used to evaluate object detection algorithms.

Most popular metrics used to evaluate object detection algorithms.

Rafael Padilla 4.4k Dec 25, 2022
A project that uses optical flow and machine learning to detect aimhacking in video clips.

waldo-anticheat A project that aims to use optical flow and machine learning to visually detect cheating or hacking in video clips from fps games. Che

waldo.vision 542 Dec 03, 2022
JUSTICE: A Benchmark Dataset for Supreme Court’s Judgment Prediction

JUSTICE: A Benchmark Dataset for Supreme Court’s Judgment Prediction CSCI 544 Final Project done by: Mohammed Alsayed, Shaayan Syed, Mohammad Alali, S

Smit Patel 3 Dec 28, 2022
Code for Understanding Pooling in Graph Neural Networks

Select, Reduce, Connect This repository contains the code used for the experiments of: "Understanding Pooling in Graph Neural Networks" Setup Install

Daniele Grattarola 37 Dec 13, 2022
YOLOX-Paddle - A reproduction of YOLOX by PaddlePaddle

YOLOX-Paddle A reproduction of YOLOX by PaddlePaddle 数据集准备 下载COCO数据集,准备为如下路径 /ho

QuanHao Guo 6 Dec 18, 2022
SuperSDR: multiplatform KiwiSDR + CAT transceiver integrator

SuperSDR SuperSDR integrates a realtime spectrum waterfall and audio receive from any KiwiSDR around the world, together with a local (or remote) cont

Marco Cogoni 30 Nov 29, 2022
Continuous Diffusion Graph Neural Network

We present Graph Neural Diffusion (GRAND) that approaches deep learning on graphs as a continuous diffusion process and treats Graph Neural Networks (GNNs) as discretisations of an underlying PDE.

Twitter Research 227 Jan 05, 2023
python 93% acc. CNN Dogs Vs Cats ( Pytorch )

English | 简体中文(测试中...敬请期待) Cnn-Classification-Dog-Vs-Cat 猫狗辨别 (pytorch版本) CNN Resnet18 的猫狗分类器,基于ResNet及其变体网路系列,对于一般的图像识别任务表现优异,模型精准度高达93%(小型样本)。 项目制作于

apple ye 1 May 22, 2022
A toy project using OpenCV and PyMunk

A toy project using OpenCV, PyMunk and Mediapipe the source code for my LindkedIn post It's just a toy project and I didn't write a documentation yet,

Amirabbas Asadi 82 Oct 28, 2022
Code for SIMMC 2.0: A Task-oriented Dialog Dataset for Immersive Multimodal Conversations

The Second Situated Interactive MultiModal Conversations (SIMMC 2.0) Challenge 2021 Welcome to the Second Situated Interactive Multimodal Conversation

Facebook Research 81 Nov 22, 2022
Zero-Cost Proxies for Lightweight NAS

Zero-Cost-NAS Companion code for the ICLR2021 paper: Zero-Cost Proxies for Lightweight NAS tl;dr A single minibatch of data is used to score neural ne

SamsungLabs 108 Dec 20, 2022