Data Pre-Processing in Python: How I learned to love parallelized applies with Dask and Numba If you’re comfortable with using Pandas to transform data, create features, and perform cleaning, you can easily parallelize your workflow with Dask and Numba.In pure speed: Dask beats Python, Numba beats Dask, Numba+Dask beats ’em allInstead of using a Pandas apply, separate out numerical calculations in
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