[] Technical details behind getting the most recent information integrated into the models
7
[] Embedding Vector Search action occurrence
8
[] Meaning of "Real-time" Features and Inference
9
[] Are "Real-time" Features always worth that effort and always helpful?
10
[] Importance of model application
11
[] Challenges in "Real-time" Features
12
[] System design review on Pinterest
13
[] Successes of real-time features
14
[] Learnings to share
15
[] Branching for Machine Learning
16
[] Not so talked about discussion of "Real-time"
17
[] Wrap up
Description:
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Explore the intricacies of real-time machine learning in this 52-minute podcast episode featuring Sasha Ovsankin and Rupesh Gupta, tech leaders from LinkedIn. Delve into the challenges and benefits of transitioning from batch to near real-time ML, covering topics such as real-time inference, feature engineering, and the tools and steps required for implementation. Gain insights on when to make this transition, the importance of feedback loops, and the technical details behind integrating recent information into models. Learn about embedding vector search, the true meaning of "real-time" in ML contexts, and the scenarios where real-time features are most beneficial. Discover the successes and learnings from implementing real-time features at LinkedIn, and understand the often-overlooked aspects of real-time ML. This comprehensive discussion provides valuable knowledge for ML practitioners looking to enhance their systems' responsiveness and effectiveness.
Real-Time Machine Learning: Features and Inference - MLOps Podcast #135