
The module aims to give an introduction and overview of artificial intelligence. The focus is on basic and important components of AI: problem solving, neural network, AI techniques such as search and machine learning as well as consequences of AI on society.
These are the teamchers you'll work with on the challenge.
Explain the principles of some supervised classification methods.
Explain what a neural network is and where they are being successfully used.
Explain why machine learning techniques are used.
Distinguish between unsupervised and supervised machine learning scenarios.
Formulate a simple real-world problem as a search problem.
Express some basic philosophical problems related to AI.
Understand the difficulty in predicting the future and be able to better evaluate the claims made about AI.
Distinguish between realistic and unrealistic AI (science fiction vs. real life).
Understand the technical methods that underpin neural networks.
Apply the Bayes rule to infer risks in simple scenarios.
Explain the base-rate fallacy and how to avoid it by applying Bayesian reasoning.
Identify some of the major societal implications of AI.
Take our motivation scan to find learning opportunities that will help you reach your potential goal and growth.