Summary
In this chapter, we’ve explored use cases of networks in more depth, wrangled a spatial market dataset into a network based on regional connectivity and millet price correlation in igraph, and constructed a survey-based social network in NetworkX. Now that we have the basic tools needed to construct networks in Python from real data sources, in the next chapter, we can turn our attention to some real-world applications of network science, where we not only construct a network but analyze it for insights that solve important problems in science today.