I was always fascinated by the topic of Machine learning until I decided to teach myself how to do it. So I came through a course provided by Stanford published online. However I was shocked of the amount of math it contained. So what is the mathematical background I should have to be able to understand the algorithms of machine learning? Are there any libraries that abstracts all the maths and focuses on actually designing a software capable of learning?



Much like 99% (don't quote me on the number) of the computerscience related topics, the theoretical foundation of Machine Learning often involves a lot of math... nonetheless, it shouldn't be that difficult to pick up on some basic ML algorithms even without in depth knowledge of calculus. There are various machine learning libraries out there: I would say that you should start by trying to build your own simple ML algorithm: maybe a Neural Network or a Genetic Algorithm. Successfully building one will make quite a difference in your understanding... especially since given a specific problem, you might have to customize the ML algorithm quite a bit. Knowing how it works, from the ground up, is going to allow you to make any modifications that you deem necessary. 


Programming Collective Intelligence: Building Smart Web 2.0 Applications by Toby Segaran is an AWESOME book! Toby builds simple implementations of alltimes Machine Learning classics: Neural networks, support vector machines, genetic algorithms, clustering. All that with simple explanations on how and why they work. As a bonus, all the examples are in Python! But even if you don't know Python you'll understand the book. I highly recommend it 


See here for some background texts on machine learning: http://bumphunting.blogspot.com/2009/07/whataregoodprequisitetextbooksfor.html 


Here's an episode of .NET Rocks! talking about machine learning, and a small library to play around with 


Linear algebra and (basic) statistics. 

