cube - Cube: A system for time series visualization.

  •        167

A system for analyzing time series data using MongoDB and Node.

http://square.github.com/cube/
https://github.com/square/cube

Dependencies:

mongodb : ~1.3.18
node-static : 0.6.5
pegjs : 0.7.0
vows : 0.7.0
websocket : 1.0.8
websocket-server : 1.4.04

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