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Python multiprocess parallel selenium web scraping with improved performance
How to run this
(output as of September 29, 2023)
$ python scraper.py
Does flying slower actually save fuel?
Is non-consented video recording admissable evidence in a civil trial in Maryland?
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The dplyr package in R makes data wrangling significantly easier.
The beauty of dplyr is that, by design, the options available are limited.
Specifically, a set of key verbs form the core of the package.
Using these verbs you can solve a wide range of data problems effectively in a shorter timeframe.
Whilse transitioning to Python I have greatly missed the ease with which I can think through and solve problems using dplyr in R.
The purpose of this document is to demonstrate how to execute the key dplyr verbs when manipulating data using Python (with the pandas package).