All Projects → owainlewis → Awesome Artificial Intelligence

owainlewis / Awesome Artificial Intelligence

A curated list of Artificial Intelligence (AI) courses, books, video lectures and papers.

Projects that are alternatives of or similar to Awesome Artificial Intelligence

Free Ai Resources
🚀 FREE AI Resources - 🎓 Courses, 👷 Jobs, 📝 Blogs, 🔬 AI Research, and many more - for everyone!
Stars: ✭ 192 (-97.05%)
Mutual labels:  artificial-intelligence, ai, reinforcement-learning, unsupervised-learning
Pygame Learning Environment
PyGame Learning Environment (PLE) -- Reinforcement Learning Environment in Python.
Stars: ✭ 828 (-87.29%)
Mutual labels:  artificial-intelligence, ai, reinforcement-learning
Awesome Ai Books
Some awesome AI related books and pdfs for learning and downloading, also apply some playground models for learning
Stars: ✭ 855 (-86.88%)
Mutual labels:  artificial-intelligence, ai, reinforcement-learning
Flappy Es
Flappy Bird AI using Evolution Strategies
Stars: ✭ 140 (-97.85%)
Mutual labels:  artificial-intelligence, reinforcement-learning, unsupervised-learning
Basic reinforcement learning
An introductory series to Reinforcement Learning (RL) with comprehensive step-by-step tutorials.
Stars: ✭ 826 (-87.32%)
Mutual labels:  artificial-intelligence, ai, reinforcement-learning
Dynamics
A Compositional Object-Based Approach to Learning Physical Dynamics
Stars: ✭ 159 (-97.56%)
Mutual labels:  artificial-intelligence, ai, unsupervised-learning
Machine Learning Flappy Bird
Machine Learning for Flappy Bird using Neural Network and Genetic Algorithm
Stars: ✭ 1,683 (-74.17%)
Mutual labels:  artificial-intelligence, ai, machine-intelligence
He4o
和(he for objective-c) —— “信息熵减机系统”
Stars: ✭ 284 (-95.64%)
Mutual labels:  artificial-intelligence, reinforcement-learning, unsupervised-learning
Evostra
A fast Evolution Strategy implementation in Python
Stars: ✭ 227 (-96.52%)
Mutual labels:  artificial-intelligence, ai, reinforcement-learning
Atari
AI research environment for the Atari 2600 games 🤖.
Stars: ✭ 174 (-97.33%)
Mutual labels:  artificial-intelligence, ai, reinforcement-learning
Polyaxon
Machine Learning Platform for Kubernetes (MLOps tools for experimentation and automation)
Stars: ✭ 2,966 (-54.48%)
Mutual labels:  artificial-intelligence, ai, reinforcement-learning
Text summurization abstractive methods
Multiple implementations for abstractive text summurization , using google colab
Stars: ✭ 359 (-94.49%)
Mutual labels:  artificial-intelligence, ai, reinforcement-learning
Holodeck
High Fidelity Simulator for Reinforcement Learning and Robotics Research.
Stars: ✭ 513 (-92.13%)
Mutual labels:  ai, reinforcement-learning
Ai Toolbox
A C++ framework for MDPs and POMDPs with Python bindings
Stars: ✭ 500 (-92.33%)
Mutual labels:  artificial-intelligence, reinforcement-learning
Gym Starcraft
StarCraft environment for OpenAI Gym, based on Facebook's TorchCraft. (In progress)
Stars: ✭ 514 (-92.11%)
Mutual labels:  artificial-intelligence, reinforcement-learning
Mycroft Core
Mycroft Core, the Mycroft Artificial Intelligence platform.
Stars: ✭ 5,489 (-15.76%)
Mutual labels:  artificial-intelligence, ai
Reaver
Reaver: Modular Deep Reinforcement Learning Framework. Focused on StarCraft II. Supports Gym, Atari, and MuJoCo.
Stars: ✭ 499 (-92.34%)
Mutual labels:  artificial-intelligence, reinforcement-learning
Animalai Olympics
Code repository for the Animal AI Olympics competition
Stars: ✭ 544 (-91.65%)
Mutual labels:  ai, reinforcement-learning
Fairlearn
A Python package to assess and improve fairness of machine learning models.
Stars: ✭ 723 (-88.9%)
Mutual labels:  artificial-intelligence, ai
Habitat Lab
A modular high-level library to train embodied AI agents across a variety of tasks, environments, and simulators.
Stars: ✭ 587 (-90.99%)
Mutual labels:  ai, reinforcement-learning

Awesome Artificial Intelligence (AI) Awesome

A curated list of Artificial Intelligence (AI) courses, books, video lectures and papers.

Contributions most welcome.

Contents

  1. Courses
  2. Books
  3. Programming
  4. Philosophy
  5. Free Content
  6. Code
  7. Videos
  8. Learning
  9. Organizations
  10. Journals
  11. Competitions
  12. Newsletters
  13. Misc

Courses

Books

  • Machine Learning for Mortals (Mere and Otherwise) - Early access book that provides basics of machine learning and using R programming language.
  • How Machine Learning Works - Mostafa Samir. Early access book that introduces machine learning from both practical and theoretical aspects in a non-threating way.
  • MachineLearningWithTensorFlow2ed - a book on general purpose machine learning techniques regression, classification, unsupervised clustering, reinforcement learning, auto encoders, convolutional neural networks, RNNs, LSTMs, using TensorFlow 1.14.1.
  • Serverless Machine Learning - a book for machine learning engineers on how to train and deploy machine learning systems on public clouds like AWS, Azure, and GCP, using a code-oriented approach.
  • The Hundred-Page Machine Learning Book - all you need to know about Machine Learning in a hundred pages, supervised and unsupervised learning, SVM, neural networks, ensemble methods, gradient descent, cluster analysis and dimensionality reduction, autoencoders and transfer learning, feature engineering and hyperparameter tuning.
  • Trust in Machine Learning - a book for experienced data scientists and machine learning engineers on how to make your AI a trustworthy partner. Build machine learning systems that are explainable, robust, transparent, and optimized for fairness.

Programming

Philosophy

  • Super Intelligence - Superintelligence asks the questions: What happens when machines surpass humans in general intelligence. A really great book.
  • Our Final Invention: Artificial Intelligence And The End Of The Human Era - Our Final Invention explores the perils of the heedless pursuit of advanced AI. Until now, human intelligence has had no rival. Can we coexist with beings whose intelligence dwarfs our own? And will they allow us to?
  • How to Create a Mind: The Secret of Human Thought Revealed - Ray Kurzweil, director of engineering at Google, explored the process of reverse-engineering the brain to understand precisely how it works, then applies that knowledge to create vastly intelligent machines.
  • Minds, Brains, And Programs - The 1980 paper by philospher John Searle that contains the famous 'Chinese Room' thought experiment. Probably the most famous attack on the notion of a Strong AI possessing a 'mind' or a 'consciousness', and interesting reading for those interested in the intersection of AI and philosophy of mind.
  • Gödel, Escher, Bach: An Eternal Golden Braid - Written by Douglas Hofstadter and taglined "a metaphorical fugue on minds and machines in the spirit of Lewis Carroll", this wonderful journey into the the fundamental concepts of mathematics,symmetry and intelligence won a Pulitzer Price for Non-Fiction in 1979. A major theme throughout is the emergence of meaning from seemingly 'meaningless' elements, like 1's and 0's, arranged in special patterns.
  • Life 3.0: Being Human in the Age of Artificial Intelligence - Max Tegmark, professor of Physics at MIT, discusses how Artificial Intelligence may affect crime, war, justice, jobs, society and our very sense of being human both in the near and far future.

Free Content

Code

  • ExplainX- ExplainX is a fast, light-weight, and scalable explainable AI framework for data scientists to explain any black-box model to business stakeholders.
  • AIMACode - Source code for "Artificial Intelligence: A Modern Approach" in Common Lisp, Java, Python. More to come.
  • FANN - Fast Artificial Neural Network Library, native for C
  • FARGonautica - Source code of Douglas Hosftadter's Fluid Concepts and Creative Analogies Ph.D. projects.

Videos

Learning

Organizations

Journals

Competitions

Newsletters

  • AI Digest. A weekly newsletter to keep up to date with AI, machine learning, and data science. Archive.

Misc

License

CC0

To the extent possible under law, Owain Lewis has waived all copyright and related or neighboring rights to this work.

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].