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    Oreilly - Data Science at the Command Line

    Posted By: Max-X
    Oreilly - Data Science at the Command Line

    Oreilly - Data Science at the Command Line
    English | .MP4 | h264, yuv420p, 1280x720, 29.97 fps(r) | aac, 44100 Hz, mono | 392 MB
    Genre: E-learning

    We data scientists love to create exciting data visualizations and insightful statistical models. However, before we get to that point, usually much effort goes into obtaining, scrubbing, and exploring the required data.
    The command line, although invented decades ago, is an amazing environment for performing such data science tasks. By combining small, yet powerful, command-line tools you can quickly explore your data and hack together prototypes. New tools such as GNU Parallel, jq, and Drake allow you to use the command line for today's data challenges. Even if you're already comfortable processing data with, for example, R or Python, being able to also leverage the power of the command line can make you a more efficient data scientist.

    We will make use of the Data Science Toolbox, which is a free, open-source virtual environment that allows everybody to get started with data science in minutes. The Data Science Toolbox runs not only on Linux, but also on Mac OS X and Microsoft Windows, so everybody can participate with this hands-on webcast. In about two hours we will cover the following subjects:

    Essential concepts of the *nix command line;
    Setting up the Data Science Toolbox;
    Integrating the command line with IPython and R;
    Filters such as cut, grep, sed, and awk;
    Scraping websites using curl, scrape, xml2json, and jq;
    Managing your data science workflow using Drake;
    Parallelizing and distributing data-intensive pipelines using GNU Parallel;
    Turning existing Python, R and Java code into reusable command-line tools; and
    Creating data visualizations and statistical models.


    Oreilly - Data Science at the Command Line