Here's a somewhat simplified example of what I am trying to do. Suppose I have a formula that computes credit points, but the formula has no constraints (for example, the score might be 1 to 5000). And a score is assigned to 100 people.

Now, I want to assign a "normalized" score between 200 and 800 to each person, based on a bell curve. So for example, if one guy has 5000 points, he might get an 800 on the new scale. The people with the middle of my point range will get a score near 500. In other words, 500 is the median?

A similar example might be the old scenario of "grading on the curve", where a the bulk of the students perhaps get a C or C+.

I'm not asking for the code, either a library, an algorithm book or a website to refer to.... I'll probably be writing this in Python (but C# is of some interest as well). There is NO need to graph the bell curve. My data will probably be in a database and I may have even a million people to which to assign this score, so scalability is an issue.

Thanks.

allkinds of input data before you can find an algorithm to perform the transformation. If you want toassumenormality of the input data, just find its mean and variance and then scale it - but you might not get what you want... – AakashM Dec 30 '10 at 9:44