I've been asked to recommend a resource (online, book or tutorial) to learn Algorithms (in the sense of of the MIT Intro to Algorithms) for nonCS or Math majors. Obviously the MIT book is way too involved and some of the lighter treatments (like OReilly's Algorithms in a Nutshell) still seem as if you would need to have some background in algorithmic analysis. Is there resource that presents the material in a way that developers who do not have a background in theoretical computer science will find useful?
I think the best way to learn algorithms are through the various competition sites.
As far as books, the best single intro I've seen for the nonmath specialist is Data Structures and Algorithms. It takes you through an algorithm line by line and shows you how it decomposes mathematically, something CLRS's otherwise excellent analysis section is a little less clear on. Skiena's Algorithm Design Manual is also excellent, as is his Programming Challenges, which is essentially a tutorial through the Valladolid Online Judge. Honestly, though, I think the single most helpful thing a beginner can do is to implement the various algorithms  merge sort, say, followed by Quicksort  and time them against variously sized inputs. Create a spreadsheet with a graph that shows their growth over time. Very few nonspecialists will have the patience or the knowhow to set up a recurrence relation and solve their way through it. But you must understand the effect of, say O n^2 growth over time, and there's no better way to learn this than to watch your own program blow through its memory stack. :) I say this as a nonCS, nonmath programmer who has spent a good couple of months wrapping my mind around algorithmic analysis. 


I'd go for the Algorithm Design Manual, by Steven Skiena. It's very readable and starts with the basics in an easytounderstand way. For example, it explains bigO notation very well. The emphasis is on practical application, which is a big bonus for beginners coming from a nontheoretical field. The second half of the book is a reference of common algorithm problems and practical approaches to their solutions. I found it invaluable as a learning aid, and now as a reference. 


I'm not sure which MIT book you're referring to, but the canonical text is CLRS. I don't think it really assumes any background besides high school math. Personally, I found doing TopCoder algorithm competitions over the course of the past few years to be the best way for me to learn common algorithms and put them into practice. Perhaps you should try the same. Whatever you do, I suggest that you spend a lot more handsonkeyboard time implementing things you learn than headinbook time, because that's the way to really internalize different techniques. 

