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I am writing an application that interprets a time delayed stream of data. The data arrives at consistent intervals, and each data packet consists of 3 primitive values.

I need to process this stream to calculate a value every time a new packet arrives. The calculation includes the need to include 'look-back' values, hence it may only produce an output value after a given number of packets have arrived. The types of functions I apply to the buffered data include, SD, MEAN(OVER RANGE), MAX/MIN etc, all basic statistical functions.

I have coded this using buffers, but I am thinking - what I am basically building is a fixed function pipeline... this must have been done before in .net...

Is there some library that I can use to 'fluently' (preferably) construct my function pipeline, and then simply pump packets into it, and read out the various results that are generated?

Thanks

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3 Answers

up vote 2 down vote accepted

It sounds like Reactive Extensions (Rx) may be what you are looking for. Rx allows you to apply Linq (i.e. a "fluent" API) to a stream of data. It also allows you to define the length of your buffer if you for example wish to calculate a running average over a window of the latest 100 observations (what you call "look-back" values).

There are a couple of videos on Channel9 to get you started. This one shows how to do calculations based on "look-back" values.

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The Reactive Extensions library may be helpful for what you are trying to do, as it provides a way to use Linq operators over asynchronous data streams. You could use the Buffer operator to only return a value after a specified number of items have arrived, i.e:

var seq = Observable.Interval(TimeSpan.FromSeconds(1));
var bufSeq = seq.Buffer(5);
bufSeq.Subscribe(values => Console.WriteLine(values.Sum()));
Console.ReadKey();

There are more examples and information on the Reactive website:

Reactive Extensions

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Thanks Matthew - I have taken a look and this does indeed process my stream for me. My data-set arrives at the rate of 100Hz, and the full calculation will run every 200 samples, does RX incur any significant overhead? I was previously using simple ring-buffers (fixed length queues), and performance was extremely quick - are there any performance implications given RX is wrapping the primitive data items in 'observables'? –  Adam Jul 31 '11 at 6:54
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I've written a blog post on how you can decompose some of the common descriptive statistics (mean, standard deviation, range) so that you can calculate them on-line really efficiently. I've got a little experiment that compares a naive, calculate-mean-then-throw-it-away approach with an efficient, incremental update approach. There's also an example of how you can modify the class to deal with sliding windows.

Hope this helps!

http://www.redowlconsulting.com/Blog/post/2011/07/31/ScalableDescriptives.aspx

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