RLSLOG is for sale
Warning! Do not download before hiding your IP with a VPN!
Your IP Address is .   Location is
Your Internet Provider can see what you are downloading!  Hide your IP ADDRESS with a VPN!
We strongly recommend using a reliable VPN client to hide yourself on the Internet. It's FREE!
Hide me now!
Releaselog

Machine Learning Using Python by Abhishek Chhibber-P2P

These videos cover the basics of machine learning, using Python. We explain machine learning and its many uses, and then continue with creating models and predicting data using several supervised learning algorithms. You will master: Concepts of machine learning, including the types of machine learning models such as Linear Regression, Decision Tree, and Nearest-Neighbors. Start-to-end Machine Learning, including loading raw data from external sources, cleaning and converting data into desired formats, slicing the data into features and labels, slicing the data into training and testing datasets, instantiating machine learning models, fitting and transforming data into the models, testing the models against testing data, predicting values for new data, checking accuracy of the models, understanding and testing precision and recall, tuning the models, exporting fitted models, and importing them in other files. Programming language, data structures and libraries, including Python 3+, Pandas, and Scikit-Learn.

Machine Learning Using Python by Abhishek Chhibber-P2P
MP4 | Video: AVC 1280×720 | Audio: AAC 44KHz 2ch | Duration: 2 Hours 40M | 516,74 MB
Genre: eLearning | Language: English
Download: UPLOADEDFILEFACTORYNTi

Comments

Feel free to post your Machine Learning Using Python by Abhishek Chhibber-P2P torrent, subtitles, samples, free download, quality, NFO, rapidshare, depositfiles, uploaded.net, rapidgator, filefactory, netload, crack, serial, keygen, requirements or whatever-related comments here. Don't be rude (permban), use only English, don't go offtopic and read FAQ before asking a question. Owners of this website aren't responsible for content of comments.
  1. wineo
    April 9th, 2017 | 12:51

Leave a reply