# Algorithm to reduce a large data set into a smaller set?

I have a large data set (10's of billions) of data points (doubles) that I need to display on a chart. Since displaying all of the data at once is not useful, I was looking for an algorithm that will help me pick the best N points from the whole set.

I am currently doing Systematic Sampling to reduce the dataset. Any suggestions on how to improve on it? Thanks.

Update: The data is 16 bit signed numbers signifying the amplitude of a waveform. So they can range in value from -32,768 to 32,767. I want to capture the peaks and valley so that the N points picked to display from the whole set give an approximation of the entire set.

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Data is data, charts are charts... without context they don't mean much. What information about the data are you trying to display? You need to define what makes one data point 'better' than another to find the 'best N' points –  corsiKa Mar 1 '11 at 23:55
Agreed with glowcoder, you'd need to define how you determine a data point to be "better" than another one. How much does the data vary from one point to the next? –  Argote Mar 1 '11 at 23:59
The data is 16 bit signed numbers signifying the amplitude of a waveform. So they can range in value from -32,768 to 32,767. I want to capture the peaks and valley so that the N points picked to display from the whole set give an approximation of the entire set. –  rahul Mar 30 '11 at 21:41