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Storing, processing, and computing with graphs

Marko Rodriguez is on the roll with yet another fantastic article about graphs:

To the adept, graph computing is not only a set of technologies, but a way of thinking about the world in terms of graphs and the processes therein in terms of traversals. As data is becoming more accessible, it is easier to build richer models of the environment. What is becoming more difficult is storing that data in a form that can be conveniently and efficiently processed by different computing systems. There are many situations in which graphs are a natural foundation for modeling. When a model is a graph, then the numerous graph computing technologies can be applied to it.

✚ If you missed it, the other recent article I’m referring to is “Knowledge representation and reasoning with graph databases

Original title and link: Storing, processing, and computing with graphs (NoSQL database©myNoSQL)

via: http://www.javacodegeeks.com/2014/06/on-graph-computing.html