awesome-javascript-learning - A tiny list limited to the best JavaScript Learning Resources

  •        20

This list is mainly about JavaScript – the language. Not about APIs, tooling, frameworks or other aspects of todays JavaScript ecosystem.Please read the contribution guidelines before contributing.

https://github.com/micromata/awesome-javascript-learning

Tags
Implementation
License
Platform

   




Related Projects

Awesome-Deep-Learning-Resources - Rough list of my favorite deep learning resources, useful for revisiting topics or for reference

  •    

This is a rough list of my favorite deep learning resources. It has been useful to me for learning how to do deep learning, I use it for revisiting topics or for reference. I (Guillaume Chevalier) have built this list and got through all of the content listed here, carefully. You might also want to look at Andrej Karpathy's new post about trends in Machine Learning research.

Machine-Learning-Tutorials - machine learning and deep learning tutorials, articles and other resources

  •    

This repository contains a topic-wise curated list of Machine Learning and Deep Learning tutorials, articles and other resources. Other awesome lists can be found in this list. If you want to contribute to this list, please read Contributing Guidelines.

awesome-deep-learning-music - List of articles related to deep learning applied to music

  •    TeX

By Yann Bayle (Website, GitHub) from LaBRI (Website, Twitter), Univ. Bordeaux (Website, Twitter), CNRS (Website, Twitter) and SCRIME (Website). The role of this curated list is to gather scientific articles, thesis and reports that use deep learning approaches applied to music. The list is currently under construction but feel free to contribute to the missing fields and to add other resources! To do so, please refer to the How To Contribute section. The resources provided here come from my review of the state-of-the-art for my PhD Thesis for which an article is being written. There are already surveys on deep learning for music generation, speech separation and speaker identification. However, these surveys do not cover music information retrieval tasks that are included in this repository.

awesome-transfer-learning - Best transfer learning and domain adaptation resources (papers, tutorials, datasets, etc

  •    

A list of awesome papers and cool resources on transfer learning, domain adaptation and domain-to-domain translation in general! As you will notice, this list is currently mostly focused on domain adaptation (DA), but don't hesitate to suggest resources in other subfields of transfer learning. I accept pull requests. Papers are ordered by theme and inside each theme by publication date (submission date for arXiv papers). If the network or algorithm is given a name in a paper, this one is written in bold before the paper's name.


awesome-deep-learning-papers - The most cited deep learning papers

  •    TeX

We believe that there exist classic deep learning papers which are worth reading regardless of their application domain. Rather than providing overwhelming amount of papers, We would like to provide a curated list of the awesome deep learning papers which are considered as must-reads in certain research domains. Before this list, there exist other awesome deep learning lists, for example, Deep Vision and Awesome Recurrent Neural Networks. Also, after this list comes out, another awesome list for deep learning beginners, called Deep Learning Papers Reading Roadmap, has been created and loved by many deep learning researchers.

machine-learning-with-ruby - Curated list: Resources for machine learning in Ruby.

  •    Ruby

Machine Learning is a field of Computational Science - often nested under AI research - with many practical applications due to the ability of resulting algorithms to systematically implement a specific solution without explicit programmer's instructions. Obviously many algorithms need a definition of features to look at or a biggish training set of data to derive the solution from. This curated list comprises awesome libraries, data sources, tutorials and presentations about Machine Learning utilizing the Ruby programming language.

awesome-adversarial-machine-learning - A curated list of awesome adversarial machine learning resources

  •    

A curated list of awesome adversarial machine learning resources, inspired by awesome-computer-vision.

awesome-webgl - A curated list of awesome WebGL libraries, resources and much more

  •    

This is a curated list of awesome WebGL libraries, resources and much more. WebGL (Web Graphics Library) is a JavaScript API for rendering interactive 3D computer graphics and 2D graphics within any compatible web browser without the use of plug-ins. WebGL is integrated completely into all the web standards of the browser allowing GPU accelerated usage of physics and image processing and effects as part of the web page canvas.

awesome-ml-for-cybersecurity - :octocat: Machine Learning for Cyber Security

  •    

A curated list of amazingly awesome tools and resources related to the use of machine learning for cyber security. Please read CONTRIBUTING if you wish to add tools or resources.

nlp-with-ruby - Practical Natural Language Processing done in Ruby.

  •    Ruby

This curated list comprises awesome resources, libraries, information sources about computational processing of texts in human languages with the Ruby programming language. That field is often referred to as NLP, Computational Linguistics, HLT (Human Language Technology) and can be brought in conjunction with Artificial Intelligence, Machine Learning, Information Retrieval, Text Mining, Knowledge Extraction and other related disciplines. This list comes from our day to day work on Language Models and NLP Tools. Read why this list is awesome. Our FAQ describes the important decisions and useful answers you may be interested in.

awesome-compilers - :sunglasses: Curated list of awesome resources on Compilers, Interpreters and Runtimes

  •    

A curated list of awesome resources, learning materials, tools, frameworks, platforms, technologies and source code projects in the field of Compilers, Interpreters and Runtimes. This list has a bias towards education.This section aims at listing code projects of Compilers, Interpreters, Translators, Runtimes, Virtual Machines and the like.

awesome-writing - An awesome list of information to help developers write better, kinder, more helpful documentation and learning materials

  •    

An awesome list of information to help developers write better, kinder, more helpful documentation and learning materials

awesome-deep-vision - A curated list of deep learning resources for computer vision

  •    

A curated list of deep learning resources for computer vision, inspired by awesome-php and awesome-computer-vision. We are looking for a maintainer! Let me know (jiwon@alum.mit.edu) if interested.

awesome-fp-js - :sunglasses: A curated list of awesome functional programming stuff in js

  •    

This is a curated list of awesome functional programming code and learning resources for JavaScript. As a multi-paradigm programming language, JavaScript can be written in many styles. With these resources we want to help you to make better use of JavaScript’s support for writing programs in a functional way. Functional programming is a style of programming which models computations as the evaluation of expressions. Contrast this with imperative programming where programs are composed of statements which change global state when executed. Functional programming typically avoids using mutable state and favors side-effect free functions and immutable data instead. This encourages writing composable and declarative programs that are easy to reason about.

awesome-machine-learning - A curated list of awesome Machine Learning frameworks, libraries and software

  •    Python

A curated list of awesome machine learning frameworks, libraries and software (by language). Inspired by awesome-php. For a list of free machine learning books available for download, go here.





We have large collection of open source products. Follow the tags from Tag Cloud >>


Open source products are scattered around the web. Please provide information about the open source projects you own / you use. Add Projects.