RailsConf 2017: Predicting Titanic Survivors with Machine Learning by Ju Liu

Channel:
Subscribers:
42,400
Published on ● Video Link: https://www.youtube.com/watch?v=4l-aB_Sk41Y



Duration: 39:03
875 views
13


RailsConf 2017: Predicting Titanic Survivors with Machine Learning by Ju Liu

What's a better way to understand machine learning than a practical example? And who hasn't watched the 1997 classic with Jack and Rose? In this talk we will first take a look at some real historical data of the event. Then we will use amazing Python libraries to live code several of the most well known algorithms. This will help us understand some fundamental concepts of how machine learning works. When we're done, you should have a good mental framework to make sense of it in the modern world.




Other Videos By Confreaks


2017-05-17RailsConf 2017: A Clear-Eyed Look at Distributed Teams by Glenn Vanderburg & Maria Gutierrez
2017-05-17RailsConf 2017: How to Write Better Code Using Mutation Testing by John Backus
2017-05-17RailsConf 2017: Syntax Isn't Everything: NLP for Rubyists by Aja Hammerly
2017-05-17RailsConf 2017: 5 Years of Rails Scaling to 80k RPS by Simon Eskildsen
2017-05-17RailsConf 2017: Keynote: Gen Z and the Future of Technology by Pamela Pavliscak
2017-05-16RailsConf 2017: Keynote by Marco Rogers
2017-05-16RailsConf 2017: Inventing Friends: ActionCable + AVS = 3 by Jonan Scheffler & Julian Cheal
2017-05-16RailsConf 2017: Whose turn is it anyway? Augmented reality board games. by Dave Tapley
2017-05-16RailsConf 2017: Goldilocks And The Three Code Reviews by Vaidehi Joshi
2017-05-16RailsConf 2017: Accessibility (when you don't have time to read the manual) by Katie Walsh
2017-05-16RailsConf 2017: Predicting Titanic Survivors with Machine Learning by Ju Liu
2017-05-16RailsConf 2017: Is it Food? An Introduction to Machine Learning by Matthew Mongeau
2017-05-16RailsConf 2017: Bayes is BAE by Richard Schneeman
2017-05-15RailsConf 2017: Panel: Performance... performance
2017-05-15RailsConf 2017: High Performance Political Revolutions by Braulio Carreno
2017-05-15RailsConf 2017: Processing Streaming Data at a Large Scale with Kafka by Thijs Cadier
2017-05-15RailsConf 2017: Panel: Ruby's Killer Feature: The Community
2017-05-15RailsConf 2017: Panel: Becoming an engineering leader
2017-05-15RailsConf 2017: It's Dangerous to go Alone: Building Teams like an Organizer by Colin Fleming
2017-05-15RailsConf 2017: Supporting Mental Health as an Effective Leader by Jesse James
2017-05-12RailsConf 2017: Bebop to the Top - The Jazz Band As A Guide To Leadership by Michael Cain