Ebook Bookmarks
Bookmarks on Ebooks
Ebook
- Top Hacker News Books of All Time
- Introduction to Information Retrieval
- Plagiarism Checker | Graduateway
- Ebookee: Free Download eBooks Search Engine!
- hypertextbook
Free Ebook
Free Book on Neural Network (Artificial Intelligence)
- Neural Nets, Kevin Gurney
- An Introduction to Artificial Neural Networks, C.A.L. Bailer-Jones berg, R. Gupta, H.P. Singh
- Neural Networks, Genevieve Orr
-
Machine Learning, Neural and Statistical Classification, D. Michie, D.J. Spiegelhalter, C.C. Taylor
-
Planning Algorithms, Steven M. LaValle
-
Introduction to Machine Learning, Nils J. Nilsson
-
Reinforcement Learning: An Introduction, Richard S. Sutton and Andrew G. Barto
-
An Introduction to Neural Networks Ben Krose, Patrick van der Smagt
-
Neural Networks - A Systematic Introduction, Raul Rojas
-
Neural Networks, Christos Stergiou and Dimitrios Siganos
-
Dynamics of Complex Systems, Yaneer Bar-Yam
-
Convex Optimization, Stephen Boyd and Lieven Vandenberghe
-
Reinforcement Learning:An Introduction, Richard S. Sutton, Andrew G. Barto
-
Computing and the Brain, Dr Bruce Graham
-
A Genetic Algorithm Tutorial, Darrell Whitley
-
Artificial Intelligence through Prolog, Neil C. Rowe
-
Brief Introduction to Educational Implications of Artificial Intelligenc, David Moursund
-
Gaussian Processes for Machine Learning, Carl Edward Rasmussen and Christopher K. I. Williams
-
Global Optimization Algorithms - Theory and Application, Thomas Weise
-
Introduction to Neural Networks with Java, Jeff Heaton
-
Practical Artificial Intelligence Programming in Java, Mark Watson
-
Prolog and Natural-Language Analysis, Fernando C. N. Pereira, Stuart M. Shieber
Free Books on Information Theory and Communication System
- Fundamentals of Wireless Communication, David Tse and Pramod Viswanath
- An Introduction to Wireless Technology, IBM
- Information Theory, Inference and Learning Algorithms, David J. C. MacKay
- Entropy and Information Theory****, R.M. Gray
- Complexity Issues in Coding Theory, Alexander Barg
- Network Coding Theory, Raymond W. Yeung, Shuo-Yen Robert Li, Ning Cai and Zhen Zhang
- Notes on Coding Theory, Jonathan I. Hall
- Theory of Codes, Jean Berstel, Dominique Perrin, C. Reutenauer
- Codes and Automata, Jean Berstel, Dominique Perrin, C. Reutenauer
- A Short Course in Information Theory, David J.C. MacKay
- Information, Randomness and Incompleteness, G J Chaitin, IBM Research
- A Discipline Independent Definition of Information, Robert M. Losee
- A Mathematical Theory of Communication, Claude E. Shannon
- The Limits of Mathematics: A Course on Information Theory and the Limits of Formal Reasoning , G J Chaitin
- UWB Communication Systems—A Comprehensive Overview, Edited by: Maria-Gabriella Di Benedetto, Thomas Kaiser, Andreas F.Molisch, Ian Oppermann, Christian Politano, and Domenico Porcino
- Introduction to Data Communications, by Eugene Blanchard
- Understanding Optical Communications
- Asterisk: The Future of Telephony, Jim Van Meggelen/Jared Smith/Leif Madsen
- Primer on Information Theory, Thomas Schneider
- A Discipline Independent Definition of Information, Robert M. Losee
- High-Speed Communication Circuits and Systems, Prof. Michael Perrott
- Communication System Design, Prof. Vladimir Stojanovic
- Essential Coding Theory, Prof. Madhu Sudan
- Speech Communication, Prof. Kenneth Steven
- Quantum Optical Communication, Prof. Jeffrey H. Shapiro
- Principles of Wireless Communications, Prof. Lizhong Zheng
- Principles of Digital Communications I, Prof. Robert Gallager, Prof. Lizhong Zheng
- Principles of Digital Communication II, Prof. David Forney
- Quantum Information Science, Prof. Issac Chuang, Prof. Peter Shor
- Transmission of Information, Prof. Muriel Medard, Prof. Lizhong Zheng
- Data Communication Networks, Prof. Eytan Modiano
- Stochastic Processes, Detection, and Estimation, Prof. Alan Willsky, Prof. Gregory Wornell
- Primer on Information Theory by Thomas Schneider
- Stochastic Processes, Detection and Estimation-A. S. Willsky and G. W. Wornell
eBook
- Learn Python the Hard Way
- 22 Free Data Science Books
- Welcome · Advanced R.
- PH525x series - Biomedical Data Science
- Neural networks and deep learning
- Mining of Massive Datasets
- NLTK Book
- Data Journalism Handbook 2 – Online beta access to the first 21 chapters
- Select Star SQL – A book that is also a walk-through interactive tutorial for learning SQL
- Dive Into Deep Learning – A very detailed and up-to-date book on Deep Learning; used at Berkeley. It also includes Jupyter notebooks.
- R for Data Science – Just like the title says, learn to use R for data science.
- Advanced R – A work in progress for the second edition of the book.
- Foundations of Data Science – Free Book by Avrim Blum, John Hopcroft, and Ravindran Kannan wrote the book, Foundations of Data Science (PDF download).
- Introduction to Probability by Joseph Blitzstein and Jessica Hwang is available as a free PDF on Google Docs.
- Elements of Data Science – A free Jupyter Notebook Textbook Elements of Data Science by Allen Downey is a freely available textbook.
- Free Reinforcement Learning Textbook. Reinforcement Learning: An Introduction by Rich Sutton and Andrew Barto. The full text is available on a Google Drive at Reinforcement Learning.
- Pablo Casas has published a book freely available online, Data Science Live Book.
-
- Model-Based Machine Learning – Chapters of this book become available as they are being written. It introduces machine learning via case studies instead of just focusing on the algorithms.
- Foundations of Data Science – This is a much more academic-focused book which could be used at the undergraduate or graduate level. It covers many of the topics one would expect: machine learning, streaming, clustering and more.
- Deep Learning Book – This book was previously available only in HTML form and not complete. Now, it is free and downloadable.
- Professor Norm Matloff from the University of California, Davis has published From Algorithms to Z-Scores: Probabilistic and Statistical Modeling in Computer Science which is an open textbook.
- Understanding Machine Learning: From Theory to Algorithms by Shai Shalev-Shwartz, Associate Professor at the School of Computer Science and Engineering at The Hebrew University, Israel.
- Hal Daumé III, Assistant Professor of Computer Science at the University of Maryland, has placed the contents of his book online. The book is titled A Course in Machine Learning.
Feedback
Was this page helpful?
Glad to hear it! Please tell us how we can improve.
Sorry to hear that. Please tell us how we can improve.