PluralSight – Preparing Data For Machine Learning

PluralSight – Preparing Data For Machine Learning-REBAR
English | Size: 370.10 MB
Category: Tutorial


However well designed and well implemented a machine learning model is, if the data fed in is poorly engineered, the model’s predictions will be disappointing.

In this course, Preparing Data for Feature Engineering and Machine Learning, you will gain the ability to appropriately pre-process your data — in effect engineer it — so that you can get the best out of your ML models.

First, you will learn how feature selection techniques can be used to find predictors that contain the most information. Feature selection can be broadly grouped into three categories known as filter, wrapper, and embedded techniques and we will understand and implement all of these.

Next, you will discover how feature extraction differs from feature selection, in that data is substantially re-expressed, sometimes in forms that are hard to interpret. You will then understand techniques for feature extraction from image and text data.

Finally, you will round out your knowledge by understanding how to leverage powerful Python libraries for working with images, text, dates, and geo-spatial data.

When you’re finished with this course, you will have the skills and knowledge to identify the correct feature engineering techniques, and the appropriate solutions for your use-case.

Buy Long-term Premium Accounts To Support Me & Max Speed

DOWNLOAD:



https://rapidgator.net/file/9d23f34b82f8d48f00923e356764fc4f/Pluralsight.Preparing.Data.For.Machine.Learning-REBAR.rar.html


https://nitroflare.com/view/6A7C7FD01DA3DFA/Pluralsight.Preparing.Data.For.Machine.Learning-REBAR.rar

If any links die or problem unrar, send request to goo.gl/aUHSZc
About WoW Team

I'm WoW Team , I love to share all the video tutorials. If you have a video tutorial, please send me, I'll post on my website. Because knowledge is not limited to, irrespective of qualifications, people join hands to help me.

Speak Your Mind

This site uses Akismet to reduce spam. Learn how your comment data is processed.