L149 Machine Learning Capabilities for Applications

Philip Koopman · Intermediate ·🧠 Large Language Models ·1y ago
Summary: Discuss capabilities rather than mechanisms - Machine Learning-based AI (ML) useful capabilities - - Classification, End-to-End ML - - Generative AI, Large Language Models - Challenges to using ML - - “Bias,” “Hallucinations,” validation - Practical ML issues - - Edge cases, accountability, autonowashing - - AI Safety
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