Once you've accumulated a pile of data through your web application, what do you do with it? In this insightful video course, bit.ly lead scientist Hilary Mason shows you how to solve data analysis problems using basic machine learning techniques and frameworks. You'll follow several examples through the entire process—from obtaining, cleaning, and exploring data to building a model and interpreting the results.
Examine several real-world analysis solutions, including supervised learning and classification, unsupervised learning and clustering, and building common machine learning applications such as recommendation systems. If you're a developer interested in the math and processes necessary to apply machine learning techniques to web data, this video course is for you.
This class is intended for developers who are interested in an introduction to the math and processes to apply machine learning techniques to web data.
- Title: Hilary Mason: An Introduction to Machine Learning with Web Data
- Release date: May 2011
- Publisher(s): O'Reilly Media, Inc.
- ISBN: 0636920017516
You might also like
Deep Learning with Python Video Edition
"The clearest explanation of deep learning I have come across...it was a joy to read." Richard …
Algorithms: 24-part Lecture Series
Algorithms, Deluxe Edition, Fourth Edition These Algorithms Video Lectures cover the essential information that every serious …
Data Science Fundamentals Part 2: Machine Learning and Statistical Analysis
21+ Hours of Video Instruction Data Science Fundamentals Part II teaches you the foundational concepts, theory, …
Just Enough Math
With the commercial successes of machine learning and cloud computing, many business people need just enough …