Artificial Intelligence Algorithms Models and Limitations
Offered By: LearnQuest via Coursera
Course Description
Overview
We live in an age increasingly dominated by algorithms. As machine learning models begin making important decisions based on massive datasets, we need to be aware of their limitations in the real world. Whether it's making loan decisions or re-routing traffic, machine learning models need to accurately reflect our shared values. In this course, we will explore the rise of algorithms, from the most basic to the fully-autonomous, and discuss how to make them more ethically sound.
Syllabus
- Getting Started: Algorithms
- Welcome to the course! We're going to get started with an overview of the course structure as well as an introductory look at the world of algorithms
- AI and Model Outcomes
- This week, we are going to dive into predictive modeling the core differences in theory and practice
- Rules for AI: training and constraints
- This week we are going to focus on machine learning accuracy and training guidelines in the quest for more accurate and ethical models
- Ethical AI: Cause and Effect
- In our final week, we're going to ask some big questions about where all this predictive intelligence leads. We will discuss the trajectory of artificial intelligence and the broader implications for society as well
Taught by
Brent Summers and Sabrina Moore
Related Courses
Artificial Intelligence Data Fairness and BiasLearnQuest via Coursera Get Smart with Salesforce Einstein
Salesforce via Trailhead Identifying Bias in Mortgage Data using Cloud AI Platform and the What-if Tool
Google Cloud via Coursera Human Factors in AI
Duke University via Coursera Identify principles and practices for responsible AI
Microsoft via Microsoft Learn