Artificial Intelligence with an introduction to Machine Learning second edition – Richar E. Neapolitan & Xia Jiang

Over the years, my view of an artificial intelligence (AI) course has changed significantly. I used to view it as a course that should discuss our efforts to develop an artificial entity that can learn and make decisions in a complex, changing environment, affect that environment, and communicate its knowledge and choices to humans; that is, an entity that can think. I would therefore cover the weak AI methods that failed to scale up. However, as strong methods that solved challenging problems in limited domains became more predominant, my course increasingly concerned these methods. I would cover backward chaining, forward chaining, planning, inference in Bayesian networks, normative decision analysis, evolutionary
computation, decision tree learning, Bayesian network learning, supervised and unsupervised learning, and reinforcement learning. I would show useful applications of these methods.

These techniques have come to be as important to a computer science student’s repertoire as techniques such as divide-and-conquer, greedy methods, branch-and-bound, etc. Yet a student would not see them unless the student took an AI course. So my AI course evolved into a course that undergraduate students would take either concurrently or following an
analysis of algorithms course, and would cover what I viewed as important problem-solving strategies that have emerged from the field of AI. I feel such a course should be a standard component of every computer science curriculum just like data structures and analysis of algorithms.

Related posts:

Deep Learning with Hadoop - Dipayan Dev
Deep Learning and Neural Networks - Jeff Heaton
Artificial Intelligence by example - Denis Rothman
Applied Text Analysis with Python - Benjamin Benfort & Rebecca Bibro & Tony Ojeda
Natural Language Processing Recipes - Akshay Kulkni & Adarsha Shivananda
Python Data Analytics with Pandas, NumPy and Matplotlib - Fabio Nelli
Coding Theory - Algorithms, Architectures and Application
Practical computer vision applications using Deep Learning with CNNs - Ahmed Fawzy Gad
Python Data Structures and Algorithms - Benjamin Baka
Python Machine Learning - Sebastian Raschka
Scikit-learn Cookbook Second Edition over 80 recipes for machine learning - Julian Avila & Trent Hau...
Deep Learning dummies second edition - John Paul Mueller & Luca Massaronf
Java Deep Learning Essentials - Yusuke Sugomori
Learning scikit-learn Machine Learning in Python - Raul Garreta & Guillermo Moncecchi
Learn Keras for Deep Neural Networks - Jojo Moolayil
Introduction to Scientific Programming with Python - Joakim Sundnes
Deep Learning - Ian Goodfellow & Yoshua Bengio & Aaron Courville
Machine Learning - The art and science of alhorithms that make sense of data - Peter Flach
Python Machine Learning Third Edition - Sebastian Raschka & Vahid Mirjalili
Introducing Data Science - Davy Cielen & Arno D.B.Meysman & Mohamed Ali
Deep Learning in Python - LazyProgrammer
Deep Learning with PyTorch - Vishnu Subramanian
Pro Deep Learning with TensorFlow - Santunu Pattanayak
Python 3 for Absolute Beginners - Tim Hall & J.P Stacey
Machine Learning Applications Using Python - Cases studies form Healthcare, Retail, and Finance - Pu...
Amazon Machine Learning Developer Guild Version Latest
Statistical Methods for Machine Learning - Disconver how to Transform data into Knowledge with Pytho...
Neural Networks and Deep Learning - Charu C.Aggarwal
Python Artificial Intelligence Project for Beginners - Joshua Eckroth
Fundamentals of Deep Learning - Nikhil Bubuma
Deep Learning with Keras - Antonio Gulli & Sujit Pal
Deep Learning with Python - Francois Cholletf