Python started out as a general purpose language when it was created in 1991 by Guido van Rossum. It was embraced early on by Google founders Sergei Brin and Larry Page (“Python where we can, C++ where we must” was reputedly their mantra).
In 2006, van Rossum (right) went to work at Google, where he was permitted to spend half his time on further development of Python (he now works at Dropbox). It is no surprise, therefore, that Python now stands as a popular software environment for analytics.
Python is typically used in a deployment setting when speed and performance are essential, and also when powerful data handling capabilities are needed (R, by contrast, offers more in the way of statistical modeling tools, and is often preferred in the model development phase). Here at Statistics.com we use Python in a number of our more advanced courses – Text Mining, Anomaly Detection, Deep Learning, and more. If you have some programming experience (e.g. with R) and you’d like to add Python to your tool set, you’ll be interested in: