Vanishing Gradients

Episode 32: Building Reliable and Robust ML/AI Pipelines

26 snips
Jul 27, 2024
Join Shreya Shankar, a UC Berkeley researcher specializing in human-centered data management systems, as she navigates the exciting world of large language models (LLMs). Discover her insights on the shift from traditional machine learning to LLMs and the importance of data quality over algorithm issues. Shreya shares her innovative SPaDE framework for improving AI evaluations and emphasizes the need for human oversight in AI development. Plus, explore the future of low-code tools and the fascinating concept of 'Habsburg AI' in recursive processes.
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INSIGHT

In-Context Learning

  • Providing specific few-shot examples makes LLMs more successful.
  • Assuming LLMs understand implicit preferences leads to errors and issues.
ANECDOTE

Local Model Use

  • Hugo anonymized sensitive data locally with Llama before sharing it with Claude.
  • This allowed him to verify his understanding of the situation.
INSIGHT

SPADE Project

  • The SPADE project aims to generate custom assertions for LLM pipelines.
  • It analyzes prompt changes to identify important constraints and create assertions.
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