Hey!

Welcome to Blip, home of the best original web series! When you’re done watching this episode, checkout some of our top shows or learn more about us!

×

Clojure

Chas Emerick: "Modeling the world probabilistically using Bayesian networks in Clojure"

Other Sharing Options

×
Embed
The embed code has been copied to your clipboard
Share
About this episode
Some of the most challenging problems that programs can face include classification, prediction, and making decisions in the face of messy or incomp...
Some of the most challenging problems that programs can face include classification, prediction, and making decisions in the face of messy or incomplete observations, data, or understanding. Bayesian networks provide a basis for implementing solutions to many of these sorts of problems, and Clojure offers excellent raw materials for building them. This talk will briefly introduce the concepts of Bayesian probability and networks, demonstrate the usage of an open source generalized Bayesian network modeling library, and discuss its implementation - highlighting the Clojure facilities that made it possible. Less
28:53 How To
Discover the best in original web series.© 2012 Blip Networks, Inc. All Rights Reserved.