
661: Designing Machine Learning Systems
Super Data Science: ML & AI Podcast with Jon Krohn
00:00
Challenges and Benefits of Real-Time Machine Learning
The chapter explores the challenges of obtaining labeled data for machine learning, the concept of weak supervision, and the importance of feature engineering. It also delves into the significance of real-time machine learning in tasks like fraud detection and email takeover prevention, discussing the startup Claypot AI and its focus on online predictions. The conversation touches on transitioning from batch to streaming features, productivity tips, and how to follow the guest for book recommendations and guidance on real-time ML systems.
Play episode from 50:44
Transcript


