News
It, too, is a library for distributed parallel computing in Python, with a built-in task ... machine-learning tasks or a particular data-processing framework. Pandaral·lel, as the name implies ...
I'm running some simulations using the joblib library. For that, I have some number of parameter combinations, each of which I run 100,000 times. I'd now like to write the result of each ...
The head node is connected to a workstation via USB 1.1 allowing the system to be controlled with a Python script. It turns out that the work of distributing the data dwarfs the compute by three ...
From these low-level interfaces emerged higher-level parallel processing libraries, such as concurrent.futures, joblib and loky (used by dask and scikit-learn) These libraries make it easy for Python ...
Also, there is no 64-bit binary; you’ll need to install the 32-bit edition of Python to use it. Finally, NLTK is not the fastest library either, but it can be sped up with parallel processing.
I'm wondering if anyone has any recommendations for good resources to learn parallel/concurrent/multicore ... I've been a semi-professional Python programmer for about 5 years (semi-professional ...
Parallel processing is an idea that will be familiar to most readers. Few of you will not be reading this on a device with only one processor core, and quite a few of you will have experimented ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results