×

Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure

Add to wishlistAdded to wishlistRemoved from wishlist 0
Add to compare+
Duration

2h 19m

level

Beginner

Course Creator

Ravikiran Srinivasulu

Last Updated

16-Dec-19

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.

Add your review

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.
Author Name: Ravikiran Srinivasulu
Author Description:
Ravikiran is an independent cloud consultant and author focused on developing solutions in Microsoft Azure. His interests include everything in the cloud space, DevOps and Machine Learning with contributions in domains like Healthcare, Banking and Web Analytics. He is very passionate about the latest and futuristic technologies and constantly updates himself with the current technology trends. He works at the intersection of education and technology. In spare time, he likes going on long road tr… more

Table of Contents

  • Course Overview
    1min
  • Getting Started with Azure Machine Learning
    21mins
  • Differentiating Data, Features, Targets, and Models
    17mins
  • Preparing Input Data for Machine Learning Models
    25mins
  • Handling Missing Data
    17mins
  • Role of Feature Engineering in Machine Learning
    19mins
  • Split a Data Set into Training and Testing Subsets
    21mins
  • Identify Data-level Issues In Machine Learning Models
    14mins

User Reviews

0.0 out of 5
0
0
0
0
0
Write a review

There are no reviews yet.

Be the first to review “Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure”

Your email address will not be published. Required fields are marked *

Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure
Preparing Data for Feature Engineering and Machine Learning in Microsoft Azure
Edcroma
Logo
Compare items
  • Total (0)
Compare
0
https://login.stikeselisabethmedan.ac.id/produtcs/
https://hakim.pa-bangil.go.id/
https://lowongan.mpi-indonesia.co.id/toto-slot/
https://cctv.sikkakab.go.id/
https://hakim.pa-bangil.go.id/products/
https://penerimaan.uinbanten.ac.id/
https://ssip.undar.ac.id/
https://putusan.pta-jakarta.go.id/
https://tekno88s.com/
https://majalah4dl.com/
https://nana16.shop/
https://thamuz12.shop/
https://dprd.sumbatimurkab.go.id/slot777/
https://dprd.sumbatimurkab.go.id/
https://cctv.sikkakab.go.id/slot-777/
https://hakim.pa-kuningan.go.id/
https://hakim.pa-kuningan.go.id/slot-gacor/
https://thamuz11.shop/
https://thamuz15.shop/
https://thamuz14.shop/
https://ppdb.smtimakassar.sch.id/
https://ppdb.smtimakassar.sch.id/slot-gacor/
slot777
slot dana
majalah4d
slot thailand
slot dana
rtp slot
toto slot
slot toto
toto4d
slot gacor
slot toto
toto slot
toto4d
slot gacor
tekno88
https://lowongan.mpi-indonesia.co.id/
https://thamuz13.shop/
https://www.alpha13.shop/
https://perpustakaan.smkpgri1mejayan.sch.id/
https://perpustakaan.smkpgri1mejayan.sch.id/toto-slot/
https://nana44.shop/
https://sadps.pa-negara.go.id/
https://sadps.pa-negara.go.id/slot-777/
https://peng.pn-baturaja.go.id/
https://portalkan.undar.ac.id/
https://portalkan.undar.ac.id/toto-slot/
https://penerimaan.ieu.ac.id/
https://sid.stikesbcm.ac.id/