- Level Foundation
- المدة 16 ساعات hours
- الطبع بواسطة Duke University
-
Offered by
عن
In this first course of the AI Product Management Specialization offered by Duke University's Pratt School of Engineering, you will build a foundational understanding of what machine learning is, how it works and when and why it is applied. To successfully manage an AI team or product and work collaboratively with data scientists, software engineers, and customers you need to understand the basics of machine learning technology. This course provides a non-coding introduction to machine learning, with focus on the process of developing models, ML model evaluation and interpretation, and the intuition behind common ML and deep learning algorithms. The course will conclude with a hands-on project in which you will have a chance to train and optimize a machine learning model on a simple real-world problem. At the conclusion of this course, you should be able to: 1) Explain how machine learning works and the types of machine learning 2) Describe the challenges of modeling and strategies to overcome them 3) Identify the primary algorithms used for common ML tasks and their use cases 4) Explain deep learning and its strengths and challenges relative to other forms of machine learning 5) Implement best practices in evaluating and interpreting ML modelsالوحدات
Course Overview
3
Videos
- Specialization Overview
- Instructor Introduction
- Course Overiew
3
Readings
- About the Course
- Important Reminder
- Module 1 Slides
Introduction to Machine Learning
6
Videos
- Module 1 Introduction & Objectives
- Introduction to Machine Learning
- Data Terminology
- What is a Model?
- Types of Machine Learning
- What ML Can and Cannot Do
Review
1
Assignment
- Module 1 Quiz
1
Videos
- Module Wrap-up
Building a Model
4
Videos
- Introduction and Objectives
- Building a Model
- Feature Selection
- Algorithm Selection
1
Readings
- Download Module Slides
Model Selection
3
Videos
- Bias-Variance Tradeoff
- Test and Validation Sets
- Cross Validation
Review
1
Assignment
- Module 2 Quiz
1
Videos
- Module Wrap-up
Metrics in ML Projects
3
Videos
- Introduction and Objectives
- Outcomes vs Outputs
- Model Output Metrics
1
Readings
- Download Module Slides
Regression and Classification Metrics
3
Videos
- Regression Error Metrics
- Classification Error Metrics: Confusion Matrix
- Classification Error Metrics: ROC and PR Curves
Review
1
Assignment
- Module 3 Quiz
1
Discussions
- Outcomes & Output Metrics
2
Videos
- Troubleshooting Model Performance
- Module Wrap-up
Linear Regression & Regularization
3
Videos
- Introduction and Objectives
- Linear Regression
- Regularization
1
Readings
- Download Module Slides
Logistic Regression
2
Videos
- Logistic Regression
- Softmax Regression
Review
1
Assignment
- Module 4 Quiz
1
Videos
- Module Wrap-up
Tree and Ensemble Models
4
Videos
- Introduction and Objectives
- Tree Models
- Ensemble Models
- Random Forest
1
Readings
- Download Module Slides
Clustering
2
Videos
- Clustering
- K-Means Clustering
Review
1
Assignment
- Module 5 Quiz
1
Videos
- Module Wrap-up
Neural Networks
5
Videos
- Introduction and Objectives
- Introduction to Deep Learning
- Artificial Neurons
- From Neurons to Neural Networks
- Training Neural Networks
1
Readings
- Download Module Slides
Applications of Deep Learning
2
Videos
- Computer Vision
- Natural Language Processing
Review
1
Assignment
- Module 6 Quiz
1
Videos
- Module Wrap-up
Course Wrap Up
1
Peer Review
- Course Project
1
Videos
- Course Wrap-up
1
Readings
- Course Project Modeling Options
Auto Summary
The "Machine Learning Foundations for Product Managers" course, offered by Duke University's Pratt School of Engineering on Coursera, provides a non-coding introduction to machine learning. Aimed at product managers and those collaborating with AI teams, the course covers ML fundamentals, model development, evaluation, and interpretation. It includes a hands-on project to train and optimize a ML model. With a duration of 960 minutes, the course is part of the AI Product Management Specialization and is available through a Starter subscription.

Jon Reifschneider