Summary
With this chapter, we end the series of chapters focused on performance improvements. Let's first summarize what you learned in this chapter. We started with a basic introduction to the NumPy library and saw how to leverage it to further speed up the Gold Hunt application. In particular, we used the array (numpy.ndarray) data structure and other functionalities, such as numpy.random.uniform and numpy.einsum to achieve the speedup. The final optimization pass involved parallelizing the code. The chapter briefly introduced you to the basics of parallel processing. We used functionality from Python's multiprocessing.Pool class to further trim down the application runtime.
Finally, let's summarize the three performance chapters together. We ...
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