YoVDO

Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure

Offered By: Pluralsight

Tags

Machine Learning Courses Data Cleaning Courses Data Preparation Courses Data Preprocessing Courses Feature Engineering Courses Azure Machine Learning Courses

Course Description

Overview

In this course, you'll learn how to prepare, clean up, and engineer new features from the data with Azure Machine Learning, so the dataset can be represented in a form that's easy for the learning algorithm to learn the patterns.

Data comes from many different sources. So when you join them, they are naturally inconsistent. In this course, Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure, you will be taken on a journey where you begin with data that's unsuitable for machine learning and use different modules in Azure Machine Learning to clean and preprocess the data. First, you will learn how to set up the data and workspace in Azure Machine Learning. Next, you will discover the role of feature engineering in machine learning. Finally, you will explore how to Identify specific data-level issues for machine learning models. When you’re finished with this course, you will have a clean dataset processed with azure machine learning modules that’s ready to build production-ready machine learning models.

Taught by

Ravikiran Srinivasulu

Related Courses

Data Wrangling with MongoDB
MongoDB via Udacity
Getting and Cleaning Data
Johns Hopkins University via Coursera
软件包在流行病学研究中的应用 Using software apps in epidemiological research
Peking University via Coursera
Creating an Analytical Dataset
Udacity
Implementing ETL with SQL Server Integration Services
Microsoft via edX