Microsoft Future Ready: Using Python Programming to Explore the Principles of Machine Learning
Offered By: Cloudswyft via FutureLearn
Course Description
Overview
This course is part of the Advanced and Applied AI on Microsoft Azure ExpertTrack, helping you develop AI and machine learning skills and prepare you for the relevant Microsoft Microcredentials.
Take your knowledge of machine learning and Python programming to the next level with this course offering both theoretical and practical experience.
During this data science course, you’ll gain a strong understanding of the theories of machine learning before enhancing your practical knowledge by building, validating and deploying machine learning models.
You’ll also learn how to use Python programming and Azure Notebooks to help you build and derive insights.
Delve into AI concepts and basic machine learning
Build your understanding of relationships in complex data through basic machine learning and AI concepts.
You’ll learn the theories which drive AI technology today as well as the core principles of machine learning categories including regression techniques and how algorithms behave and learn in machines.
Learn how to deploy machine learning models
This course will help bridge the gap between IT and data science in putting a model into production, teaching you how to effectively deploy machine learning models.
Gain practical experience using Python programming and Azure Notebooks
You’ll understand the importance of evaluating your data before developing algorithms and also get hands-on experience of using Python and Azure Notebooks to evaluate data. These powerful tools will help you gather insights from machine learning models once they have been deployed.
During the course, you’ll learn how to clean data sets, collect output data, request rates, responses, failure rates and more with Python and Azure Notebooks.
This course is for anyone looking to build their understanding of AI and machine learning.
Syllabus
- Introduction to Course and Machine Learning
- Course Introduction
- Introduction to Machine Learning
- Exploratory Data Analysis for Regression
- Visualisation for High Dimensions
- Wrapping Up the Week
- Data Exploration & Preparation
- Exploratory Data Analysis for Classification
- Data Cleaning
- Data Preparation
- Data Preparation and Cleaning using Python
- Feature Engineering
- Weekly Wrap-Up
- Regression & Classification
- Regression
- Putting Regression Concepts Into Practice
- Classification
- RoC Curves
- Putting Classification Concepts Into Practice
- Weekly Wrap-Up
- Principles & Techniques of Model Improvement
- Principles of Model Improvement
- Techniques for Improving Models
- Cross Validation
- Dimensionality Reduction
- Introduction to Decision Trees
- Ensemble Methods: Boosting
- Weekly Wrap-Up
- Machine Learning Algorithms & Unsupervised Learning
- Ensemble Methods: Descent & Decision Forests
- Advanced Machine Learning Algorithm: Neural Networks
- Advanced Machine Learning Algorithm: SVMs
- Advanced Machine Learning Algorithm: Naive Bayes Models
- Unsupervised Machine Learning
- Unsupervised Machine Learning Labs
- Wrapping up the Course
Taught by
Daniela Piedrahita
Related Courses
4.0 Shades of Digitalisation for the Chemical and Process IndustriesUniversity of Padova via FutureLearn A Day in the Life of a Data Engineer
Amazon Web Services via AWS Skill Builder FinTech for Finance and Business Leaders
ACCA via edX Accounting Data Analytics
University of Illinois at Urbana-Champaign via Coursera Accounting Data Analytics
Coursera