Tutorials :

Data Cleaning in Python for Analytics & Machine Learning

      Author: Baturi   |   29 July 2022   |   comments: 0

Data Cleaning in Python for Analytics & Machine Learning
Published 07/2022
Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: AAC, 48.0 KHz
Language: English | Size: 776 MB | Duration: 31 lectures • 1h 34m
Learn how to resolve Data Quality issues in Machine Learning & Data Science using Data Cleaning in Python Pandas.


What you'll learn
You will learn how to detect and impute missing values in the data.
How to detect and rectify incorrect data types.
How to deal with Categorical Columns.
How to detect and replace incorrect values with correct ones.
How to use Apply Lambda method for using advanced cleaning functions.
How to group the dataset by a particular column.
How to detect and remove outliers.
How to perform feature scaling.
How to clean and preprocess textual data for NLP.
Requirements
Basic knowledge of Python.
Description
More often than not, real world data is messy and can rarely be used directly. It needs a lot of cleaning and preprocessing before it can be used in Analytics, Machine Learning or other application. Data Cleaning be a dirty job, which often requires lots of effort and advanced technical skills like familiarity with Pandas and other libraries.
For most of the data cleaning, all you need is data manipulation skills in Python. In this course you will learn just that. This course has lectures, quizzes and Jupyter notebooks, which will teach you to deal with real world raw data. The course contains tutorials on a range of data cleaning techniques, like imputing missing values, feature scaling and fixing data types issues etc.
In this you course you will learn
How to detect and deal with missing values in the data.
How to detect and rectify incorrect data types.
How to deal with Categorical Columns.
How to detect and replace incorrect values with correct ones.
How to use Apply Lambda method for using advanced cleaning functions.
How to group the dataset by a particular column.
How to detect and remove outliers.
How to perform feature scaling.
How to clean and preprocess textual data for NLP.
Who this course is for
Data Analysts, Data Engineers, Machine Learning Engineers and Data Sicentists.

Homepage
https://www.udemy.com/course/data-cleaning-in-python-for-analytics-machine-learning/




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