The k-nearest neighbours classifier is a classic machine learning algorithm. We'll use functional languages to implement a classifier, then use it with real-world public data sets to solve classification problems.
A suggested worksheet is available at github.com
Once you've implemented and explored the algorithm, there are many details you can dive deeper on. How does your algorithm perform on larger data sets, and can you speed it up? How about plugging in different distance functions? If you're already an ML expert, you can look at a more advanced algorithm and compare performance with the kNN implementations.
Code of Conduct:
confcodeofconduct.com
More details: defshef.github.io
Tickets: www.eventbrite.co.uk
Attending: 1 person.
About (def shef)
Functional Programming meetup in Sheffield, taking place on the 2nd Tuesday of every month.
Seats 16, wall TV provided