709 lines
36 KiB
HTML
709 lines
36 KiB
HTML
<h1 id="awesome-artificial-intelligence-ai-awesome">Awesome Artificial
|
||
Intelligence (AI) <a href="https://github.com/sindresorhus/awesome"><img
|
||
src="https://cdn.rawgit.com/sindresorhus/awesome/d7305f38d29fed78fa85652e3a63e154dd8e8829/media/badge.svg"
|
||
alt="Awesome" /></a></h1>
|
||
<p>This is a curated list of Artificial Intelligence (AI) tools,
|
||
courses, books, lectures, and papers. AI, or Artificial Intelligence, is
|
||
a branch of computer science focused on creating machines that can
|
||
perform tasks requiring human-like intelligence. These tasks include
|
||
learning, reasoning, problem-solving, understanding natural language,
|
||
and recognizing patterns. AI aims to mimic human cognitive functions,
|
||
making machines capable of improving their performance based on
|
||
experience, adapting to new inputs, and performing human-like tasks.</p>
|
||
<p>Contributions are welcome. Connect on <a
|
||
href="https://www.linkedin.com/in/owainlewis82/">LinkedIn</a> or <a
|
||
href="https://twitter.com/owainlewis">X</a>.</p>
|
||
<p><img
|
||
src="https://media.giphy.com/media/jeAQYN9FfROX6/giphy.gif" /></p>
|
||
<h2 id="contents">Contents</h2>
|
||
<ol type="1">
|
||
<li><a href="#tools">Tools</a></li>
|
||
<li><a href="#courses">Courses</a></li>
|
||
<li><a href="#books">Books</a></li>
|
||
<li><a href="#programming">Programming</a></li>
|
||
<li><a href="#philosophy">Philosophy</a></li>
|
||
<li><a href="#free-content">Free Content</a></li>
|
||
<li><a href="#code">Code</a></li>
|
||
<li><a href="#videos">Videos</a></li>
|
||
<li><a href="#learning">Learning</a></li>
|
||
<li><a href="#organizations">Organizations</a></li>
|
||
<li><a href="#journals">Journals</a></li>
|
||
<li><a href="#competitions">Competitions</a></li>
|
||
<li><a href="#newsletters">Newsletters</a></li>
|
||
<li><a href="#misc">Misc</a></li>
|
||
</ol>
|
||
<h2 id="tools">Tools</h2>
|
||
<h3 id="chat">Chat</h3>
|
||
<ul>
|
||
<li><a href="https://chat.openai.com/">Chat GPT</a> ChatGPT is a
|
||
free-to-use AI system. It allows users to engage in conversations, gain
|
||
insights, automate tasks, and witness the future of AI all in one
|
||
place.</li>
|
||
<li><a href="https://gemini.google.com/">Gemini</a> Gemini gives you
|
||
direct access to Google AI. Get help with writing, planning, learning,
|
||
and more.</li>
|
||
<li><a href="https://www.anthropic.com/claude">Claude</a> Claude is a
|
||
family of foundational AI models that can be used in various
|
||
applications. You can talk directly with Claude at claude.ai to
|
||
brainstorm ideas, analyze images, and process long documents</li>
|
||
</ul>
|
||
<h3 id="images">Images</h3>
|
||
<ul>
|
||
<li><a href="https://www.midjourney.com/">Midjourney</a> AI image
|
||
generation</li>
|
||
<li><a href="https://openai.com/dall-e-3">DALL·E 2</a> DALL·E 3 is an AI
|
||
system that can create realistic images and art from a natural-language
|
||
description.</li>
|
||
</ul>
|
||
<h3 id="video">Video</h3>
|
||
<ul>
|
||
<li><a href="https://openai.com/sora">Sora</a> Sora is a text-to-video
|
||
AI model that can create realistic and imaginative scenes from text
|
||
instructions.</li>
|
||
<li><a href="https://runwayml.com/">Runway</a> AI video generation</li>
|
||
</ul>
|
||
<h3 id="commerical-tools">Commerical Tools</h3>
|
||
<ul>
|
||
<li><a href="https://www.taskade.com">Taskade</a> Build, train, and
|
||
deploy AI agents to automate tasks, research, and collaborate in
|
||
real-time</li>
|
||
</ul>
|
||
<h2 id="courses">Courses</h2>
|
||
<ul>
|
||
<li><a
|
||
href="https://www.notion.so/owainlewis/Introduction-to-Artificial-Intelligence-AI-ef59b363654542e597ba46a19d129882?pvs=4">Introduction
|
||
to Artificial Intelligence (AI)</a> - A high-level introduction to AI
|
||
from IBM on Coursera</li>
|
||
<li><a
|
||
href="https://www.coursera.org/learn/introduction-to-generative-ai">Introduction
|
||
to Generative AI</a> - A beginner-level introduction to Generative AI
|
||
from Google on Coursera</li>
|
||
<li><a href="https://cs50.harvard.edu/ai/2020">CS50’s Intro to
|
||
Artificial Intelligence</a> - This course explores the concepts and
|
||
algorithms at the foundation of modern artificial intelligence</li>
|
||
<li><a href="https://introtodeeplearning.com">MIT: Intro to Deep
|
||
Learning</a> - A seven-day bootcamp designed in MIT to introduce deep
|
||
learning methods and applications</li>
|
||
<li><a href="https://mithi.github.io/deep-blueberry">Deep Blueberry:
|
||
Deep Learning book</a> - A free five-weekend plan for self-learners to
|
||
learn the basics of deep-learning architectures like CNNs, LSTMs, RNNs,
|
||
VAEs, GANs, DQN, A3C and more</li>
|
||
<li><a href="https://spinningup.openai.com/">Spinning Up in Deep
|
||
Reinforcement Learning</a> - A free deep reinforcement learning course
|
||
by OpenAI</li>
|
||
<li><a
|
||
href="http://ocw.mit.edu/courses/electrical-engineering-and-computer-science/6-034-artificial-intelligence-fall-2010/lecture-videos">MIT
|
||
Artificial Intelligence Videos</a> - MIT AI Course</li>
|
||
<li><a
|
||
href="https://www.manning.com/livevideo/grokking-deep-learning-in-motion?a_aid=algmotion&a_bid=5d7bc0ba">Grokking
|
||
Deep Learning in Motion</a> - Beginner’s course to learn deep learning
|
||
and neural networks without frameworks.</li>
|
||
<li><a href="https://www.udacity.com/course/cs271">Intro to Artificial
|
||
Intelligence</a> - Learn the Fundamentals of AI. Course run by Peter
|
||
Norvig</li>
|
||
<li><a
|
||
href="https://www.edx.org/course/artificial-intelligence-uc-berkeleyx-cs188-1x-0#.VMeIsmSsVkg">EdX
|
||
Artificial Intelligence</a> - The course will introduce the basic ideas
|
||
and techniques underlying the design of intelligent computer
|
||
systems</li>
|
||
<li><a
|
||
href="https://www.class-central.com/mooc/319/udacity-artificial-intelligence-for-robotics">Artificial
|
||
Intelligence For Robotics</a> - This class will teach you basic methods
|
||
in Artificial Intelligence, including probabilistic inference, planning
|
||
and search, localization, tracking and control, all with a focus on
|
||
robotics</li>
|
||
<li><a href="https://class.coursera.org/ml-008">Machine Learning</a> -
|
||
Basic machine learning algorithms for supervised and unsupervised
|
||
learning</li>
|
||
<li><a
|
||
href="https://www.udacity.com/course/intro-to-tensorflow-for-deep-learning--ud187">Deep
|
||
Learning</a> - An Introductory course to Deep Learning using
|
||
TensorFlow.</li>
|
||
<li><a
|
||
href="http://online.stanford.edu/course/statistical-learning-winter-2014">Stanford
|
||
Statistical Learning</a> - Introductory course on machine learning
|
||
focusing on linear and polynomial regression, logistic regression and
|
||
linear discriminant analysis; cross-validation and the bootstrap, model
|
||
selection and regularization methods (ridge and lasso); nonlinear
|
||
models, splines and generalized additive models; tree-based methods,
|
||
random forests and boosting; support-vector machines.</li>
|
||
<li><a
|
||
href="https://www.udacity.com/course/knowledge-based-ai-cognitive-systems--ud409">Knowledge
|
||
Based Artificial Intelligence</a> - Georgia Tech’s course on Artificial
|
||
Intelligence focussing on Symbolic AI.</li>
|
||
<li><a
|
||
href="https://sites.google.com/view/deep-rl-bootcamp/lectures">Deep RL
|
||
Bootcamp Lectures</a> - Deep Reinforcement Bootcamp Lectures - August
|
||
2017</li>
|
||
<li><a
|
||
href="https://developers.google.com/machine-learning/crash-course/ml-intro">Machine
|
||
Learning Crash Course By Google</a> Machine Learning Crash Course
|
||
features a series of lessons with video lectures, real-world case
|
||
studies, and hands-on practice exercises.</li>
|
||
<li><a href="https://developers.google.com/edu/python/">Python Class By
|
||
Google</a> This is a free class for people with a little bit of
|
||
programming experience who want to learn Python. The class includes
|
||
written materials, lecture videos, and lots of code exercises to
|
||
practice Python coding.</li>
|
||
<li><a
|
||
href="https://www.manning.com/livevideo/deep-learning-crash-course">Deep
|
||
Learning Crash Course</a> In this liveVideo course, machine learning
|
||
expert Oliver Zeigermann teaches you the basics of deep learning.</li>
|
||
<li><a
|
||
href="http://www.amazon.com/Artificial-Intelligence-Modern-Approach-3rd/dp/0136042597">Artificial
|
||
Intelligence: A Modern Approach</a> - Stuart Russell & Peter Norvig
|
||
<ul>
|
||
<li>Also consider browsing the <a
|
||
href="http://aima.cs.berkeley.edu/books.html">list of recommended
|
||
reading</a>, divided by each chapter in “Artificial Intelligence: A
|
||
Modern Approach”.</li>
|
||
</ul></li>
|
||
<li><a
|
||
href="http://www.amazon.com/exec/obidos/ASIN/1558601910">Paradigms Of
|
||
Artificial Intelligence Programming: Case Studies in Common Lisp</a> -
|
||
Paradigms of AI Programming is the first text to teach advanced Common
|
||
Lisp techniques in the context of building major AI systems</li>
|
||
<li><a
|
||
href="http://www.freetechbooks.com/reinforcement-learning-an-introduction-second-edition-draft-t1282.html">Reinforcement
|
||
Learning: An Introduction</a> - This introductory textbook on
|
||
reinforcement learning is targeted toward engineers and scientists in
|
||
artificial intelligence, operations research, neural networks, and
|
||
control systems, and we hope it will also be of interest to
|
||
psychologists and neuroscientists.</li>
|
||
<li><a
|
||
href="http://www.amazon.com/Cambridge-Handbook-Artificial-Intelligence/dp/0521691915">The
|
||
Cambridge Handbook Of Artificial Intelligence</a> - Written for
|
||
non-specialists, it covers the discipline’s foundations, major theories,
|
||
and principal research areas, plus related topics such as artificial
|
||
life</li>
|
||
<li><a href="http://www.amazon.com/gp/product/0743276647">The Emotion
|
||
Machine: Commonsense Thinking, Artificial Intelligence, and the Future
|
||
of the Human Mind</a> - In this mind-expanding book, scientific pioneer
|
||
Marvin Minsky continues his groundbreaking research, offering a
|
||
fascinating new model for how our minds work</li>
|
||
<li><a
|
||
href="http://www.amazon.com/Artificial-Intelligence-Synthesis-Nils-Nilsson/dp/1558604677">Artificial
|
||
Intelligence: A New Synthesis</a> - Beginning with elementary reactive
|
||
agents, Nilsson gradually increases their cognitive horsepower to
|
||
illustrate the most important and lasting ideas in AI</li>
|
||
<li><a
|
||
href="http://www.amazon.com/Jeff-Hawkins/e/B001KHNZ7C/ref=sr_ntt_srch_lnk_11?qid=1435480927&sr=8-11">On
|
||
Intelligence</a> - Hawkins develops a powerful theory of how the human
|
||
brain works, explaining why computers are not intelligent and how, based
|
||
on this new theory, we can finally build intelligent machines. Also
|
||
audio version available from audible.com</li>
|
||
<li><a
|
||
href="http://www.amazon.com/How-Create-Mind-Thought-Revealed/dp/0143124048/ref=pd_sim_14_3?ie=UTF8&refRID=0QY72H7NGRYH79R7S3K7">How
|
||
To Create A Mind</a> - Kurzweil discusses how the brain works, how the
|
||
mind emerges, brain-computer interfaces, and the implications of vastly
|
||
increasing the powers of our intelligence to address the world’s
|
||
problems</li>
|
||
<li><a href="http://www.deeplearningbook.org/">Deep Learning</a> -
|
||
Goodfellow, Bengio and Courville’s introduction to a broad range of
|
||
topics in deep learning, covering mathematical and conceptual
|
||
background, deep learning techniques used in industry, and research
|
||
perspectives.</li>
|
||
<li><a href="https://web.stanford.edu/~hastie/ElemStatLearn/">The
|
||
Elements of Statistical Learning: Data Mining, Inference, and
|
||
Prediction</a> - Hastie and Tibshirani cover a broad range of topics,
|
||
from supervised learning (prediction) to unsupervised learning including
|
||
neural networks, support vector machines, classification trees and
|
||
boosting—the first comprehensive treatment of this topic in any
|
||
book.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/deep-learning-and-the-game-of-go">Deep
|
||
Learning and the Game of Go</a> - Deep Learning and the Game of Go
|
||
teaches you how to apply the power of deep learning to complex
|
||
human-flavored reasoning tasks by building a Go-playing AI. After
|
||
exposing you to the foundations of machine and deep learning, you’ll use
|
||
Python to build a bot and then teach it the rules of the game.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/deep-learning-for-search">Deep
|
||
Learning for Search</a> - Deep Learning for Search teaches you how to
|
||
leverage neural networks, NLP, and deep learning techniques to improve
|
||
search performance.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/deep-learning-with-pytorch">Deep
|
||
Learning with PyTorch</a> - PyTorch puts these superpowers in your
|
||
hands, providing a comfortable Python experience that gets you started
|
||
quickly and then grows with you as you—and your deep learning
|
||
skills—become more sophisticated. Deep Learning with PyTorch will make
|
||
that journey engaging and fun.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/deep-reinforcement-learning-in-action">Deep
|
||
Reinforcement Learning in Action</a> - Deep Reinforcement Learning in
|
||
Action teaches you the fundamental concepts and terminology of deep
|
||
reinforcement learning, along with the practical skills and techniques
|
||
you’ll need to implement it into your own projects.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/grokking-deep-reinforcement-learning">Grokking
|
||
Deep Reinforcement Learning</a> - Grokking Deep Reinforcement Learning
|
||
introduces this powerful machine learning approach, using examples,
|
||
illustrations, exercises, and crystal-clear teaching.</li>
|
||
<li><a href="https://www.manning.com/books/fusion-in-action">Fusion in
|
||
Action</a> - Fusion in Action teaches you to build a full-featured data
|
||
analytics pipeline, including document and data search and distributed
|
||
data clustering.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/real-world-natural-language-processing">Real-World
|
||
Natural Language Processing</a> - Early access book on how to create
|
||
practical NLP applications using Python.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/grokking-machine-learning">Grokking
|
||
Machine Learning</a> - Early access book that introduces the most
|
||
valuable machine learning techniques.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/succeeding-with-ai">Succeeding with
|
||
AI</a> - An introduction to managing successful AI projects and applying
|
||
AI to real-life situations.</li>
|
||
<li><a href="https://www.elementsofai.com/">Elements of AI (Part 1) -
|
||
Reaktor/University of Helsinki</a> - An Introduction to AI is a free
|
||
online course for everyone interested in learning what AI is, what is
|
||
possible (and not possible) with AI, and how it affects our lives – with
|
||
no complicated math or programming required.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/essential-natural-language-processing">Essential
|
||
Natural Language Processing</a> - A hands-on guide to NLP with practical
|
||
techniques, numerous Python-based examples and real-world case
|
||
studies.</li>
|
||
<li><a href="https://www.kaggle.com/learn/overview">Kaggle’s micro
|
||
courses</a> - A series of micro courses by offering practical and
|
||
hands-on knowledge ranging from Python to Deep Learning.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/transfer-learning-for-natural-language-processing?utm_source=github&utm_medium=organic&utm_campaign=book_azunre_transfer_3_10_20">Transfer
|
||
Learning for Natural Language Processing</a> - A book that gets you up
|
||
to speed with the relevant ML concepts and then dives into transfer
|
||
learning for NLP.</li>
|
||
<li>(Stanford Deep Learning
|
||
Series][https://www.youtube.com/playlist?list=PLoROMvodv4rOABXSygHTsbvUz4G_YQhOb]</li>
|
||
<li><a
|
||
href="https://docs.aws.amazon.com/machine-learning/latest/dg/machinelearning-dg.pdf">Amazon
|
||
Machine Learning Developer Guide</a> - A book for ML developers which
|
||
introduces the ML concepts & strategies with lots of practical
|
||
usages.</li>
|
||
<li><a href="https://arize.com/blog-course/">Machine Learning
|
||
Observability Course</a> - Self-guided course covers the intuition,
|
||
math, and best practices for effective machine learning
|
||
observability.</li>
|
||
<li><a
|
||
href="https://medium.com/machine-learning-for-humans/why-machine-learning-matters-6164faf1df12">Machine
|
||
Learning for Humans</a> - A series of simple, plain-English explanations
|
||
accompanied by math, code, and real-world examples.</li>
|
||
</ul>
|
||
<h2 id="books">Books</h2>
|
||
<ul>
|
||
<li><a
|
||
href="https://www.manning.com/books/machine-learning-for-mortals-mere-and-otherwise">Machine
|
||
Learning for Mortals (Mere and Otherwise)</a> - Early access book that
|
||
provides basics of machine learning and using R programming
|
||
language.</li>
|
||
<li><a
|
||
href="https://livebook.manning.com/book/how-machine-learning-works/welcome/v-5">How
|
||
Machine Learning Works</a> - Mostafa Samir. Early access book that
|
||
introduces machine learning from both practical and theoretical aspects
|
||
in a non-threatening way.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/machine-learning-with-tensorflow-second-edition">MachineLearningWithTensorFlow2ed</a>
|
||
is a book on general-purpose machine learning techniques, including
|
||
regression, classification, unsupervised clustering, reinforcement
|
||
learning, autoencoders, convolutional neural networks, RNNs, and LSTMs,
|
||
using TensorFlow 1.14.1.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/serverless-machine-learning-in-action">Serverless
|
||
Machine Learning</a> - 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.</li>
|
||
<li><a href="http://themlbook.com/">The Hundred-Page Machine Learning
|
||
Book</a> - 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.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/trust-in-machine-learning">Trust in
|
||
Machine Learning</a> - 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.</li>
|
||
<li><a
|
||
href="https://www.manning.com/books/generative-ai-in-action">Generative
|
||
AI in Action</a> - A book that shows exactly how to add generative AI
|
||
tools for text, images, and code, and more into your organization’s
|
||
strategies and projects..</li>
|
||
</ul>
|
||
<h2 id="programming">Programming</h2>
|
||
<ul>
|
||
<li><a
|
||
href="http://www.amazon.com/Programming-Artificial-Intelligence-International-Computer/dp/0321417461">Prolog
|
||
Programming For Artificial Intelligence</a> - This best-selling guide to
|
||
Prolog and Artificial Intelligence concentrates on the art of using the
|
||
basic mechanisms of Prolog to solve interesting AI problems.</li>
|
||
<li><a
|
||
href="http://www.amazon.co.uk/Algorithms-Data-Structures-Idioms-Prolog/dp/0136070477">AI
|
||
Algorithms, Data Structures and Idioms in Prolog, Lisp and Java</a> - <a
|
||
href="https://pdfs.semanticscholar.org/f5c3/d7dbe4c47e310569a14d2338d0cb3d70a1bb.pdf">PDF
|
||
here</a></li>
|
||
<li><a
|
||
href="https://www.cbinsights.com/blog/python-tools-machine-learning/">Python
|
||
Tools for Machine Learning</a></li>
|
||
<li><a
|
||
href="https://wiki.python.org/moin/PythonForArtificialIntelligence">Python
|
||
for Artificial Intelligence</a></li>
|
||
</ul>
|
||
<h2 id="philosophy">Philosophy</h2>
|
||
<ul>
|
||
<li><a
|
||
href="http://www.audible.co.uk/pd/Non-fiction/Superintelligence-Audiobook/B00LPMA33G">Super
|
||
Intelligence</a> - Superintelligence asks the question: What happens
|
||
when machines surpass humans in general intelligence?</li>
|
||
<li><a
|
||
href="http://www.audible.co.uk/pd/Non-fiction/Our-Final-Invention-Audiobook/B00KLJMDH8">Our
|
||
Final Invention: Artificial Intelligence And The End Of The Human
|
||
Era</a> - 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?</li>
|
||
<li><a
|
||
href="http://www.audible.com/pd/Science-Technology/How-to-Create-a-Mind-Audiobook/B009S7OKJS/ref=a_search_c4_1_1_srTtl?qid=1422483493&sr=1-1">How
|
||
to Create a Mind: The Secret of Human Thought Revealed</a> - 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.</li>
|
||
<li><a href="http://cogprints.org/7150/1/10.1.1.83.5248.pdf">Minds,
|
||
Brains, And Programs</a> - The 1980 paper by philosopher John Searle
|
||
that contains the famous ‘Chinese Room’ thought experiment. It is
|
||
probably the most famous attack on the notion of a Strong AI possessing
|
||
a ‘mind’ or a ‘consciousness’, and it is an interesting reading for
|
||
those interested in the intersection of AI and philosophy of mind.</li>
|
||
<li><a
|
||
href="http://www.amazon.com/G%C3%B6del-Escher-Bach-Eternal-Golden/dp/0465026567">Gödel,
|
||
Escher, Bach: An Eternal Golden Braid</a> - Written by Douglas
|
||
Hofstadter and taglined “a metaphorical fugue on minds and machines in
|
||
the spirit of Lewis Carroll”, this incredible journey into the
|
||
fundamental concepts of mathematics, symmetry and intelligence won a
|
||
Pulitzer Prize 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.</li>
|
||
<li><a href="https://www.goodreads.com/book/show/34272565-life-3-0">Life
|
||
3.0: Being Human in the Age of Artificial Intelligence</a> - 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.</li>
|
||
</ul>
|
||
<h2 id="free-content">Free Content</h2>
|
||
<ul>
|
||
<li><a href="http://artint.info/html/ArtInt.html">Foundations Of
|
||
Computational Agents</a> - This book is published by Cambridge
|
||
University Press</li>
|
||
<li><a href="http://ai.stanford.edu/~nilsson/QAI/qai.pdf">The Quest For
|
||
Artificial Intelligence</a> - This book traces the history of the
|
||
subject, from the early dreams of eighteenth-century (and earlier)
|
||
pioneers to the more successful work of today’s AI engineers.</li>
|
||
<li><a href="https://see.stanford.edu/Course/CS229">Stanford CS229 -
|
||
Machine Learning</a> - This course provides a broad introduction to
|
||
machine learning and statistical pattern recognition.</li>
|
||
<li><a
|
||
href="http://www.cs.bham.ac.uk/research/projects/poplog/computers-and-thought/">Computers
|
||
and Thought: A practical Introduction to Artificial Intelligence</a> -
|
||
The book covers computer simulation of human activities, such as
|
||
problem-solving and natural language understanding; computer vision; AI
|
||
tools and techniques; an introduction to AI programming; symbolic and
|
||
neural network models of cognition; the nature of mind and intelligence;
|
||
and the social implications of AI and cognitive science.</li>
|
||
<li><a href="http://aurellem.org/society-of-mind/index.html">Society of
|
||
Mind</a> - Marvin Minsky’s seminal work on how our mind works. Lot of
|
||
Symbolic AI concepts have been derived from this basis.</li>
|
||
<li><a
|
||
href="https://web.archive.org/web/20060627060706/http://www.biosino.org/mirror/www.aaai.org/Press/Books/Hunter/hunter-contents.html">Artificial
|
||
Intelligence and Molecular Biology</a> - The current volume is an effort
|
||
to bridge that range of exploration, from nucleotide to abstract
|
||
concept, in contemporary AI/MB research.</li>
|
||
<li><a
|
||
href="http://pages.uoregon.edu/moursund/Books/AIBook/index.htm">Brief
|
||
Introduction To Educational Implications Of Artificial Intelligence</a>
|
||
- This book is designed to help preservice and inservice teachers learn
|
||
about some of the educational implications of current uses of Artificial
|
||
Intelligence as an aid to solving problems and accomplishing tasks.</li>
|
||
<li><a
|
||
href="http://www.scholarpedia.org/article/Encyclopedia:Computational_intelligence">Encyclopedia:
|
||
Computational intelligence</a> - Scholarpedia is a peer-reviewed
|
||
open-access encyclopedia written and maintained by scholarly experts
|
||
from around the world.</li>
|
||
<li><a href="http://arxiv.org/abs/1411.1373">Ethical Artificial
|
||
Intelligence</a> - a book by Bill Hibbard that combines several
|
||
peer-reviewed papers and new material to analyze the issues of ethical
|
||
artificial intelligence.</li>
|
||
<li><a
|
||
href="https://golden.com/wiki/Cluster%3A_Artificial_intelligence">Golden
|
||
Artificial Intelligence</a> - a cluster of pages on artificial
|
||
intelligence and machine learning.</li>
|
||
<li><a href="http://www.r2d3.us/">R2D3</a> - A website with explanations
|
||
on topics from Machine Learning to Statistics. All helped with
|
||
beautifully animated infographics and real-life examples. Available in
|
||
various languages.</li>
|
||
<li><a href="https://agentmodels.org/">Modeling Agents with
|
||
Probabilistic Programs</a> - This book describes and implements models
|
||
of rational agents for (PO)MDPs and Reinforcement Learning.</li>
|
||
</ul>
|
||
<h2 id="code">Code</h2>
|
||
<ul>
|
||
<li><a href="https://github.com/explainX/explainx">ExplainX</a>-
|
||
ExplainX is a fast, lightweight, and scalable explainable AI framework
|
||
for data scientists to explain any black-box model to business
|
||
stakeholders.</li>
|
||
<li><a href="https://github.com/aimacode">AIMACode</a> - Source code for
|
||
“Artificial Intelligence: A Modern Approach” in Common Lisp, Java, and
|
||
Python. More to come.</li>
|
||
<li><a href="http://leenissen.dk/fann/wp/">FANN</a> - Fast Artificial
|
||
Neural Network Library, native for C</li>
|
||
<li><a
|
||
href="https://github.com/Alex-Linhares/FARGonautica">FARGonautica</a> -
|
||
Source code of Douglas Hosftadter’s Fluid Concepts and Creative
|
||
Analogies Ph.D. projects.</li>
|
||
</ul>
|
||
<h2 id="videos">Videos</h2>
|
||
<ul>
|
||
<li><a href="http://videolectures.net/jul09_hinton_deeplearn">A tutorial
|
||
on Deep Learning</a></li>
|
||
<li><a
|
||
href="http://videolectures.net/rldm2015_littman_computational_reinforcement">Basics
|
||
of Computational Reinforcement Learning</a></li>
|
||
<li><a
|
||
href="http://videolectures.net/rldm2015_silver_reinforcement_learning">Deep
|
||
Reinforcement Learning</a></li>
|
||
<li><a href="https://youtu.be/7o2GzSj86e8?t=3457">Intelligent agents and
|
||
paradigms for AI</a></li>
|
||
<li><a href="https://www.youtube.com/watch?v=sc-KbuZqGkI">The
|
||
Unreasonable Effectiveness Of Deep Learning</a> - The Director of
|
||
Facebook’s AI Research, Dr. Yann LeCun gives a talk on deep
|
||
convolutional neural networks and their applications to machine learning
|
||
and computer vision</li>
|
||
<li><a
|
||
href="https://www.manning.com/livevideo/aws-machine-learning-in-motion">AWS
|
||
Machine Learning in Motion</a>—This interactive live video course gives
|
||
you a crash course in using AWS for machine learning and teaches you how
|
||
to build a fully working predictive algorithm.</li>
|
||
<li><a
|
||
href="https://www.manning.com/livevideo/deep-learning-with-r-in-motion">Deep
|
||
Learning with R in Motion</a>-Deep Learning with R in Motion teaches you
|
||
to apply deep learning to text and images using the powerful Keras
|
||
library and its R language interface.</li>
|
||
<li><a
|
||
href="https://www.manning.com/livevideo/grokking-deep-learning-in-motion">Grokking
|
||
Deep Learning in Motion</a>-Grokking Deep Learning in Motion will not
|
||
just teach you how to use a single library or framework. You’ll discover
|
||
how to build these algorithms from scratch!</li>
|
||
<li><a
|
||
href="https://www.manning.com/livevideo/reinforcement-learning-in-motion">Reinforcement
|
||
Learning in Motion</a> - This live-video breaks down critical concepts
|
||
like how RL systems learn, how to sense and process environmental data,
|
||
and how to build and train AI agents.</li>
|
||
</ul>
|
||
<h2 id="learning">Learning</h2>
|
||
<ul>
|
||
<li><a
|
||
href="http://research.microsoft.com/pubs/209355/DeepLearning-NowPublishing-Vol7-SIG-039.pdf">Deep
|
||
Learning. Methods And Applications</a> Free book from Microsoft
|
||
Research</li>
|
||
<li><a href="http://neuralnetworksanddeeplearning.com">Neural Networks
|
||
And Deep Learning</a> - Neural networks and deep learning currently
|
||
provide the best solutions to many problems in image recognition, speech
|
||
recognition, and natural language processing. This book will teach you
|
||
the core concepts behind neural networks and deep learning</li>
|
||
<li><a
|
||
href="http://www.amazon.com/Machine-Learning-Probabilistic-Perspective-Computation/dp/0262018020">Machine
|
||
Learning: A Probabilistic Perspective</a> - This textbook offers a
|
||
comprehensive and self-contained introduction to the field of machine
|
||
learning, based on a unified, probabilistic approach</li>
|
||
<li><a href="https://www.deeplearningbook.org">Deep Learning</a> -
|
||
Yoshua Bengio, Ian Goodfellow and Aaron Courville put together this
|
||
currently free (and draft version) book on deep learning. The book is
|
||
kept up-to-date and covers a wide range of topics in depth (up to and
|
||
including sequence-to-sequence learning).</li>
|
||
<li><a
|
||
href="http://www.pyimagesearch.com/2014/09/22/getting-started-deep-learning-python/">Getting
|
||
Started with Deep Learning and Python</a></li>
|
||
<li><a href="http://machinelearningmastery.com/">Machine Learning
|
||
Mastery</a></li>
|
||
<li><a
|
||
href="https://web.archive.org/web/20201114013453/http://deeplearning.net/">Deep
|
||
Learning.net</a> - Aggregation site for DL resources</li>
|
||
<li><a
|
||
href="https://github.com/josephmisiti/awesome-machine-learning">Awesome
|
||
Machine Learning</a> - Like this Github, but ML-focused</li>
|
||
<li><a href="http://fastml.com/">FastML</a></li>
|
||
<li><a
|
||
href="https://github.com/guillaume-chevalier/awesome-deep-learning-resources">Awesome
|
||
Deep Learning Resources</a> - Rough list of learning resources for Deep
|
||
Learning</li>
|
||
<li><a
|
||
href="https://freecoursesite.com/?s=Machine+Learning+Data+Science">Professional
|
||
and In-Depth Machine Learning Video Courses</a> - A collection of free
|
||
professional and in-depth Machine Learning and Data Science video
|
||
tutorials and courses</li>
|
||
<li><a
|
||
href="https://freecoursesite.com/?s=Artificial+Intelligence">Professional
|
||
and In-Depth Artificial Intelligence Video Courses</a> - A collection of
|
||
free professional and in-depth Artificial Intelligence video tutorials
|
||
and courses</li>
|
||
<li><a href="https://freecoursesite.com/?s=Deep+Learning">Professional
|
||
and In-Depth Deep Learning Video Courses</a> - A collection of free
|
||
professional and in-depth Deep Learning video tutorials and courses</li>
|
||
<li><a
|
||
href="https://developers.google.com/machine-learning/crash-course/ml-intro">Introduction
|
||
to Machine Learning</a> - Introductory level machine learning crash
|
||
course</li>
|
||
<li><a
|
||
href="https://github.com/benedekrozemberczki/awesome-graph-classification">Awesome
|
||
Graph Classification</a> - Learning from graph structured data</li>
|
||
<li><a
|
||
href="https://github.com/benedekrozemberczki/awesome-community-detection">Awesome
|
||
Community Detection</a> - Clustering graph structured data</li>
|
||
<li><a
|
||
href="https://github.com/benedekrozemberczki/awesome-decision-tree-papers">Awesome
|
||
Decision Tree Papers</a> - Decision tree papers from machine learning
|
||
conferences</li>
|
||
<li><a
|
||
href="https://github.com/benedekrozemberczki/awesome-gradient-boosting-papers">Awesome
|
||
Gradient Boosting Papers</a> - Gradient boosting papers from machine
|
||
learning conferences</li>
|
||
<li><a
|
||
href="https://github.com/benedekrozemberczki/awesome-fraud-detection-papers">Awesome
|
||
Fraud Detection Papers</a> - Fraud detection papers from machine
|
||
learning conferences</li>
|
||
<li><a href="https://github.com/crypdick/awesome-neural-art">Awesome
|
||
Neural Art</a> - Creating art and manipulating images using deep neural
|
||
networks.</li>
|
||
</ul>
|
||
<h2 id="organizations">Organizations</h2>
|
||
<ul>
|
||
<li><a href="http://cis.ieee.org/">IEEE Computational Intelligence
|
||
Society</a></li>
|
||
<li><a href="https://intelligence.org/research-guide/">Machine
|
||
Intelligence Research Institute</a></li>
|
||
<li><a href="https://openai.com/about/">OpenAI</a></li>
|
||
<li><a href="http://www.aaai.org/home.html">Association For The
|
||
Advancement of Artificial Intelligence</a></li>
|
||
<li><a href="https://deepmind.com/research/">Google DeepMind
|
||
Research</a></li>
|
||
<li><a href="https://developer.nvidia.com/deep-learning">Nvidia Deep
|
||
Learning</a></li>
|
||
<li><a href="https://ai.google/">AI Google</a></li>
|
||
<li><a href="https://ai.facebook.com">Facebook AI</a></li>
|
||
<li><a href="https://www.research.ibm.com/artificial-intelligence">IBM
|
||
Research</a></li>
|
||
<li><a
|
||
href="https://www.microsoft.com/en-us/research/research-area/artificial-intelligence/">Microsoft
|
||
Research</a></li>
|
||
</ul>
|
||
<h2 id="journals">Journals</h2>
|
||
<ul>
|
||
<li><a href="http://www.springer.com/journal/146">AI &
|
||
Society</a></li>
|
||
<li><a
|
||
href="http://iospress.metapress.com/openurl.asp?genre=journal&issn=0921-7126">AI
|
||
Communications</a></li>
|
||
<li><a href="http://www.aaai.org/Magazine/magazine.php">AI
|
||
Magazine</a></li>
|
||
<li><a href="http://www.springer.com/journal/10472">Annals of
|
||
Mathematics and Artificial Intelligence</a></li>
|
||
<li><a href="http://www.springer.com/journal/200">Applicable Algebra in
|
||
Engineering, Communication and Computing</a></li>
|
||
<li><a href="https://www.tandfonline.com/toc/uaai20/current">Applied
|
||
Artificial Intelligence</a></li>
|
||
<li><a href="http://www.springer.com/journal/10489">Applied
|
||
Intelligence</a></li>
|
||
<li><a
|
||
href="http://journals.cambridge.org/action/displayJournal?jid=AIE">Artificial
|
||
Intelligence for Engineering Design, Analysis and Manufacturing</a></li>
|
||
<li><a href="http://www.springer.com/journal/10462">Artificial
|
||
Intelligence Review</a></li>
|
||
<li><a href="http://www.elsevier.com/locate/artint">Artificial
|
||
Intelligence</a></li>
|
||
<li><a href="http://www.springer.com/journal/10515">Automated Software
|
||
Engineering</a></li>
|
||
<li><a href="http://www.springer.com/journal/10458">Autonomous Agents
|
||
and Multi-Agent Systems</a></li>
|
||
<li><a href="http://www.springer.com/journal/10588">Computational and
|
||
Mathematical Organization Theory</a></li>
|
||
<li><a
|
||
href="http://www.blackwellpublishing.com/content/BPL_Images/New_Journal_Samples/coin0824-7935~17~4/C.PDF">Computational
|
||
Intelligence</a></li>
|
||
<li><a href="https://dblp.org/db/journals/etai/index.html">Electronic
|
||
Transactions on Artificial Intelligence</a></li>
|
||
<li><a href="http://www.springer.com/journal/12065">Evolutionary
|
||
Intelligence</a></li>
|
||
<li><a
|
||
href="http://ieeexplore.ieee.org/servlet/opac?punumber=9670">EXPERT—IEEE
|
||
Intelligent Systems</a></li>
|
||
<li><a href="http://www.ieee-ras.org/publications/t-ase">IEEE
|
||
Transactions Automation Science and Engineering</a></li>
|
||
<li><a
|
||
href="http://www.springer.com/engineering/robotics/journal/40903">Intelligent
|
||
Industrial Systems</a></li>
|
||
<li><a
|
||
href="https://onlinelibrary.wiley.com/journal/1098111x">International
|
||
Journal of Intelligent Systems</a></li>
|
||
<li><a
|
||
href="https://www.worldscientific.com/worldscinet/ijait">International
|
||
Journal on Artificial Intelligence Tools</a></li>
|
||
<li><a href="http://www.cs.washington.edu/research/">Journal of
|
||
Artificial Intelligence Research</a></li>
|
||
<li><a href="http://www.springer.com/journal/10817">Journal of Automated
|
||
Reasoning</a></li>
|
||
<li><a href="https://www.tandfonline.com/toc/teta20/current">Journal of
|
||
Experimental and Theoretical Artificial Intelligence</a></li>
|
||
<li><a href="http://www.springer.com/journal/10844">Journal of
|
||
Intelligent Information Systems</a></li>
|
||
<li><a href="http://www.springer.com/journal/13740">Journal on Data
|
||
Semantics</a></li>
|
||
<li><a
|
||
href="http://journals.cambridge.org/action/displayJournal?jid=KER">Knowledge
|
||
Engineering Review</a></li>
|
||
<li><a href="http://www.springer.com/journal/11023">Minds and
|
||
Machines</a></li>
|
||
<li><a href="http://www.springer.com/journal/13748">Progress in
|
||
Artificial Intelligence</a></li>
|
||
</ul>
|
||
<h2 id="competitions">Competitions</h2>
|
||
<ul>
|
||
<li><a href="https://www.battlecode.org/">MIT Battlecode</a></li>
|
||
<li><a href="http://aichallenge.org">AI Challenge</a></li>
|
||
<li><a href="http://theaigames.com">AI Games</a></li>
|
||
</ul>
|
||
<h2 id="newsletters">Newsletters</h2>
|
||
<ul>
|
||
<li><a href="https://www.superhuman.ai/">Superhuman.ai</a> A daily AI
|
||
newsletter</li>
|
||
<li><a href="https://alphasignal.ai/">Alpasignal.ai</a> AI newsletter
|
||
for developers</li>
|
||
<li><a href="https://www.therundown.ai/">Therundown.ai</a> Get the
|
||
latest AI news, understand why it matters, and learn how to apply it in
|
||
your work.</li>
|
||
</ul>
|
||
<h2 id="misc">Misc</h2>
|
||
<ul>
|
||
<li><a href="http://wiki.opencog.org/w/The_Open_Cognition_Project">Open
|
||
Cognition Project</a> - We’re undertaking a serious effort to build a
|
||
thinking machine</li>
|
||
<li><a href="http://aitopics.org/">AITopics</a> - Large aggregation of
|
||
AI resources</li>
|
||
<li><a href="http://airesources.org/">AIResources</a> - Directory of
|
||
open source software and open access data for the AI research
|
||
community</li>
|
||
<li><a href="https://www.reddit.com/r/artificial/">Artificial
|
||
Intelligence Subreddit</a></li>
|
||
<li><a href="https://experiments.withgoogle.com/collection/ai">AI
|
||
Experiments with Google</a></li>
|
||
</ul>
|
||
<h2 id="license">License</h2>
|
||
<p><a href="http://creativecommons.org/publicdomain/zero/1.0/"><img
|
||
src="http://i.creativecommons.org/p/zero/1.0/88x31.png"
|
||
alt="CC0" /></a></p>
|
||
<p>To the extent possible under law, <a
|
||
href="http://owainlewis.com">Owain Lewis</a> has waived all copyright
|
||
and related or neighbouring rights to this work.</p>
|
||
<p><a
|
||
href="https://github.com/owainlewis/awesome-artificial-intelligence">artificialintelligence.md
|
||
Github</a></p>
|