May 2017
Intermediate to advanced
270 pages
6h 18m
English
In the last chapter, we introduced the concept of parallel processing and learned how to leverage multicore processors and GPUs. Now, we can step up our game a bit and turn our attention on distributed processing, which involves executing tasks across multiple machines to solve a certain problem.
In this chapter, we will illustrate the challenges, use cases, and examples of how to run code on a cluster of computers. Python offers easy-to-use and reliable packages for distribute processing, which will allow us to implement scalable and fault-tolerant code with relative ease.
The list of topics for this chapter is as follows:
Read now
Unlock full access