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Book Overview & Buying
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Table Of Contents
Mastering Python Data Visualization
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This chapter illustrates the examples of networks and bioinformatics and the choice of Python packages to be able to plot the results. We looked at a brief introduction to graphs and multigraphs and used the sparse matrix and distance graphs to illustrate how you can store and display graphs with several different packages, such as NetworkX, igraph (from igraph.org), and graph-tool.
The clustering coefficient and centrality of graphs demonstrates how you can compute clustering coefficients so that they are able to know how significant a node or vertex is in the graph. We also looked at the analysis of social network data with an illustration of Twitter friends and followers visually, using the Python-Twitter package and the NetworkX library.
You also learned about genetic programming samples with a demonstration of how you can see codons in a DNA sequence and how to compute GC ratio with the bio package. In addition to this, we demonstrated how to display the structures of DNA, RNA...
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