Responsible AI for Developers: Interpretability & Transparency
Offered By: Google via Google Cloud Skills Boost
Course Description
Overview
This course introduces concepts of AI interpretability and transparency. It discusses the importance of AI transparency for developers and engineers. It explores practical methods and tools to help achieve interpretability and transparency in both data and AI models.
Syllabus
- Course Introduction
- Course Introduction
- AI Interpretability & Transparency
- Overview of interpretability and transparency
- Overview of interpretability techniques
- Feature based explanations: Model agnostic
- Feature based explanations: Model specific
- Concept-based and example-based explanations
- Tools for interpretability
- Data and Model Transparency
- Lab: Vertex Explainable AI
- Explaining an Image Classification Model with Vertex Explainable AI
- Quiz
- Course Summary
- Course Summary
- Reading
- Course Resources
- Module 0: Course Introduction
- Module 1: AI Interpretability & Transparency
- Module 2: Course Summary
- Your Next Steps
- Course Badge
Tags
Related Courses
Explainable AI: Scene Classification and GradCam VisualizationCoursera Project Network via Coursera Artificial Intelligence Privacy and Convenience
LearnQuest via Coursera Natural Language Processing and Capstone Assignment
University of California, Irvine via Coursera Modern Artificial Intelligence Masterclass: Build 6 Projects
Udemy Data Science for Business
DataCamp