Responsible AI for Developers: Privacy & Safety
Offered By: Google via Google Cloud Skills Boost
Course Description
Overview
This course introduces important topics of AI privacy and safety. It explores practical methods and tools to implement AI privacy and safety recommended practices through the use of Google Cloud products and open-source tools.
Syllabus
- Course Introduction
- Course Introduction
- AI Privacy
- Overview of AI Privacy
- Privacy in Training Data: De-identification techniques
- Privacy in Training Data: Randomization techniques
- Privacy in Machine Learning Training: DP-SGD
- Privacy in Machine Learning Training: Federated Learning
- System Security on Google Cloud
- System Security on Gen AI
- Lab: Differential Privacy in Machine Learning with TensorFlow Privacy
- Differential Privacy in Machine Learning with TensorFlow Privacy
- Module 1: Quiz
- AI Safety
- Overview of AI Safety
- Safety Evaluation
- Harms Prevention
- Model Traing for Safety: Instruction Fine-tuning
- Model Traing for Safety: RLHF
- Safety in Google Cloud GenAI
- Lab: Safeguarding with Vertex AI Gemini API
- Safeguarding with Vertex AI Gemini API
- Module 2: Quiz
- Course Summary
- Course Summary
- Reading
- Course Resources
- Module 0: Course Introduction
- Module 1: AI Privacy
- Module 2: AI Safety
- Module 3: Course Summary
- Your Next Steps
- Course Badge
Tags
Related Courses
Statistical Machine LearningCarnegie Mellon University via Independent Secure and Private AI
Facebook via Udacity Data Privacy and Anonymization in R
DataCamp Build and operate machine learning solutions with Azure Machine Learning
Microsoft via Microsoft Learn Data Privacy and Anonymization in Python
DataCamp