Understanding Artificial Intelligence through Algorithmic Information Theory
Can we characterize intelligent behavior?
Are there theoretical foundations on which Artificial Intelligence can be grounded?
This course on Algorithmic Information will offer you such a theoretical framework.
- You will be able to see machine learning, reasoning, mathematics, and even human intelligence as abstract computations aiming at compressing information.
- This new power of yours will not only help you understand what AI does (or can’t do!) but also serve as a guide to design AI systems.
There is one session available:
1,929 already enrolled!
After a course session ends, it will be archivedOpens in a new tab.Starts Nov 21
Ends Dec 31
About this course
What you'll learn
Instructors
Frequently Asked Questions
Ways to take this course
edX For Business
Understanding Artificial Intelligence through Algorithmic Information Theory
Can we characterize intelligent behavior?
Are there theoretical foundations on which Artificial Intelligence can be grounded?
This course on Algorithmic Information will offer you such a theoretical framework.
- You will be able to see machine learning, reasoning, mathematics, and even human intelligence as abstract computations aiming at compressing information.
- This new power of yours will not only help you understand what AI does (or can’t do!) but also serve as a guide to design AI systems.
5 weeks
4–8 hours per week
Self-paced
Progress at your own speed
Free
Optional upgrade available
There is one session available:
After a course session ends, it will be archivedOpens in a new tab.
Starts Nov 21
Ends Dec 31
Understanding Artificial Intelligence through Algorithmic Information Theory
At a glance
- Institution: IMTx
- Subject: Computer Science
- Level: Advanced
- Prerequisites:
Examples of what you should know before embarking on this course
- what a convex curve looks like,
- that log(7^n) is n times log(7)
- that rational numbers have finite or periodic expansion,
- that rational numbers are countable, but that real numbers are not,
- that the probability of "A and B" is the probability of "A knowing B" times the probability of B,
- that 65 is 1000001 is in base 2 and 41 in base 16,
- how to compute the sum of a finite geometric series,
- that {'a':1, 'i':0} is a Python dictionary and why list('ab'*4)[::2] yields ['a','a','a','a'],
- that k-means is a clustering method,
- what Bayes’ theorem tells us,
- how Shannon’s information is related to probability,
- that what is called a Turing machine is NOT the machine that Alan Turing (Benedict Cumberbatch)
is using in the movie The imitation game.
- Language: English
- Video Transcript: English
About the instructors
Who can take this course?
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