Creating Machine Learning Models

This course covers the important types of machine learning algorithms, solution techniques based on the specifics of the problem you are trying to solve, as well as the classic machine learning workflow.

4|Reviews (38)
Security+Learn the skills to keep up with tomorrow’s cybersecurity threats.
₹1,467/mo
Security+Learn the skills to keep up with tomorrow’s cybersecurity threats.
₹1,027

Why choose Core Tech?

check
Access to 7,000+ top courses and specializations
check
Unlimited certificates for every completed course
check
Learn offline by downloading course videos
check
Content from top institutions like Yale & Google
check
14-day money-back guarantee included
✓ Compare courses before making a decision
Check Latest Price →
Price may vary. Check latest price on provider site.

Course Insight

Suitable for intermediate learners. Works well as a continuation after mastering Data Science fundamentals. It bridges the gap toward advanced, production-level engineering.

Intermediate FriendlySelf-Paced Learning

SKILLS TO
MASTER

Analytics
Exploratory Data Analysis
ModelingTrending
Predictive Machine Learning
SQL Querying
Relational Data Management
Pandas
Matplotlib
Statistics
Tableau
ETL
Careers:Relevant for professionals pursuing roles within Data Science.

Quick Facts

Below sections are verified from last major sync. For real-time updates and today's latest lectures, Check official page here.

What You’ll Learn

As Machine Learning explodes in popularity, it is becoming ever more important to know precisely how to frame a machine learning model in a manner appropriate to the problem we are trying to solve, and the data that we have available.

In this course, Creating Machine Learning Models you will gain the ability to choose the right type of model for your problem, then build that model, and evaluate its performance.

First, you will learn how rule-based and ML-based systems differ and their strengths and weaknesses and how supervised and unsupervised learning models differ from each other.

Next, you will discover how to implement a range of techniques to solve the supervised learning problems of classification and regression. You will gain an intuitive understanding of the the model algorithms you can use for classification and regression. Finally, you will round out your knowledge by building clustering models using a couple of different algorithms, and validating the results.

When you're finished with this course, you will have the skills and knowledge to identify the correct machine learning problem setup, and the appropriate solution and evaluation techniques for your use-case.

See how this course curriculum compares with alternatives

Outcomes

  • Course Overview : 1min.
  • Understanding Approaches to Machine Learning : 41mins.
  • Understanding and Implementing Regression Models : 38mins.
  • Understanding and Implementing Classification Models : 42mins.
  • Understanding and Implementing Clustering Model : 39mins.
See side-by-side differences in learning outcomes

FAQs

Top Alternatives

Highly-rated courses worth your attention

Building Machine Learning Models in SQL Using BigQuery ML
5.0· 1 Hrs 27 minutes
Beginner
CORE TECH
₹880/mo
Building Machine Learning Models in Python with scikit-learn
4.0· 3 Hrs 13 minutes
Beginner
CORE TECH
₹880/mo
Practical Machine Learning for Data Scientists
4.6· 13.5 Hrs
Intermediate
₹449₹79944% OFF
Machine Learning & Data Science: The Complete Visual Guide
4.6· 9 Hrs
Advanced
₹489₹79939% OFF
Building Machine Learning Models in Spark 2
4.0· 3 - Hrs 27 minutes
Intermediate
CORE TECH
₹880/mo
Building Classification Models with scikit-learn
4.0· 2 Hrs 34 minutes
Beginner
CORE TECH
₹880/mo
Creating Machine Learning Models
4(38+ learners)