22 December 2020 | Published by : Baturi | Views: 68 | Category: Tutorials


Udemy - Feature Engineering Case Study in Python
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + .srt | Duration: 29 lectures (1h 41m) | Size: 380.3 MB
A Complete Introduction to Feature Engineering


What you'll learn:
You'll define what feature engineering is and it's importance in machine learning.
You'll walk through an end to end case study on featuring engineering.
You'll learn data imputation and advanced data cleansing techniques.
You'll learn how to compare and contrast various cleansed datasets.
Requirements
You'll need to have a solid foundation in Python to get the most out of this course.
You'll need to have a solid foundation in machine learning to get the most out of this course.
You'll need to have some applied statistics for machine learning engineers to get the most out of this class.
Description
Course Overview
The quality of the predictions coming out of your machine learning model is a direct reflection of the data you feed it during training. Feature engineering helps you extract every last bit of value out of data. This course provides the tools to take a data set, tease out the signal, and throw out the noise in order to optimize your models.
The concepts generalize to nearly any kind of machine learning algorithm. In the course you'll explore continuous and categorical features and shows how to clean, normalize, and alter them. Learn how to address missing values, remove outliers, transform data, create indicators, and convert features. In the final sections, you'll to prepare features for modeling and provides four variations for comparison, so you can evaluate the impact of cleaning, transforming, and creating features through the lens of model performance.
What You'll Learn
What is feature engineering?
Exploring the data
Descriptionting features
Cleaning existing features
Creating new features
Standardizing features
Comparing the impacts on model performance
This course is a hands on-guide. It is a playbook and a workbook intended for you to learn by doing and then apply your new understanding to the feature engineering in Python. To get the most out of the course, I would recommend working through all the examples in each tutorial. If you watch this course like a movie you'll get little out of it.
In the applied space machine learning is programming and programming is a hands on-sport.
Thank you for your interest in Feature Engineering Case Study in Python.
Let's get started!
Who this course is for
If you want to become a machine learning engineer then this course is for you
If you want something beyond the typical lecture style course then this course is for you
If you want learn how to get the most out of your models, this course is for you.
Homepage
https://www.udemy.com/course/feature-engineering-case-study-in-python/

Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me


Links are Interchangeable - No Password - Single Extraction

Views: 68    Comments (0)  

free Udemy - Feature Engineering Case Study in Python, Downloads Udemy - Feature Engineering Case Study in Python, RapidShare Udemy - Feature Engineering Case Study in Python, Megaupload Udemy - Feature Engineering Case Study in Python, Mediafire Udemy - Feature Engineering Case Study in Python, DepositFiles Udemy - Feature Engineering Case Study in Python, HotFile Udemy - Feature Engineering Case Study in Python, Uploading Udemy - Feature Engineering Case Study in Python, Easy-Share Udemy - Feature Engineering Case Study in Python, FileFactory Udemy - Feature Engineering Case Study in Python, Vip-File Udemy - Feature Engineering Case Study in Python, Shared Udemy - Feature Engineering Case Study in Python,  Please feel free to post your Udemy - Feature Engineering Case Study in Python Download, Movie, Game, Software, Mp3, video, subtitle, sample, torrent, NFO, Crack, uploaded, putlocker, Rapidgator, mediafire, Netload, Zippyshare, Extabit, 4shared, Serial, keygen, Watch online, requirements or whatever-related comments here.

Related Downloads :

{related-news}


Recent

Searches