What is ConvNetJS?

ConvNetJS is a JavaScript library crafted for the purpose of training deep learning models, particularly neural networks, right within your web browser. You can initiate the training process with just a simple tab open, eliminating the need for any software installations, compilers, or GPU resources, making it incredibly user-friendly. The library empowers users to construct and deploy neural networks utilizing JavaScript and was originally created by @karpathy; however, it has been significantly improved thanks to contributions from the community, which are highly welcomed. For those seeking a straightforward method to access the library without diving into development intricacies, a minified version can be downloaded via the link to convnet-min.js. Alternatively, users have the option to acquire the latest iteration from GitHub, where you would typically look for the file build/convnet-min.js, which comprises the entire library. To kick things off, you just need to set up a basic index.html file in a chosen folder and ensure that build/convnet-min.js is placed in the same directory, allowing you to start exploring deep learning within your browser seamlessly. This easy-to-follow approach opens the door for anyone, regardless of their level of technical expertise, to interact with neural networks with minimal effort and maximum enjoyment.

Integrations

Offers API?:
Yes, ConvNetJS provides an API

Screenshots and Video

ConvNetJS Screenshot 1

Company Facts

Company Name:
ConvNetJS
Company Website:
cs.stanford.edu/people/karpathy/convnetjs/

Product Details

Deployment
SaaS
Training Options
Documentation Hub
Support
Web-Based Support

Product Details

Target Company Sizes
Individual
1-10
11-50
51-200
201-500
501-1000
1001-5000
5001-10000
10001+
Target Organization Types
Mid Size Business
Small Business
Enterprise
Freelance
Nonprofit
Government
Startup
Supported Languages
English

ConvNetJS Categories and Features

Deep Learning Software

Convolutional Neural Networks
Document Classification
Image Segmentation
ML Algorithm Library
Model Training
Neural Network Modeling
Self-Learning
Visualization