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I have zero to many bookings per day, and I need some measure of how uniformly these bookings are distributed throughout my time period. Bookings can be half day or full day bookings.

The time period I am considering in this case is one month.

My data has lots of gaps: in a month I may only have up to 25-50% of days booked.

I need an algorithm which will give me a number (arbitrary units, I don't care: I will just be comparing many permutations and picking the most uniform) which represents the uniformity of the bookings.

Most importantly, I need it to be quite fast as I will be running it many hundreds of times.

I have looked at Anderson-Darling tests, Cramer-con-Mises, and Kolmogorov-Smirnov tests, but these all check whether data fits any distribution. I'm sure there is a faster algorithm to determine if data is purely uniform.

I'm coding in C#

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If you only care about the relative ordering of "uniformity" you could find the RMS of the gaps in between bookings. A truly uniform distribution should have the lowest RMS (assuming fixed number of bookings over fixed amount of time). –  bdares Jul 7 '11 at 2:46

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I hope I am not grossly oversimplifying your question but I believe all you really want to know is the variance of your gaps. There are a set of algorithms for calculating variance, each with their own properties and all of which are pretty fast.

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Yes, this is the method I am currently using. I was hoping there was an algorithm which uses some mathematical property which allows us to rapidly move through the data points computing the gaps and variances in a single loop. –  Ozzah Jul 7 '11 at 4:14

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