Latent Space: The AI Engineer Podcast

Grounded Research: From Google Brain to MLOps to LLMOps — with Shreya Shankar of UC Berkeley

5 snips
Mar 29, 2023
In this engaging conversation, Shreya Shankar, a talented ML Engineer with a rich background at Facebook and Google Brain, shares her path to becoming a PhD candidate at UC Berkeley. She dives into the complexities of MLOps, highlighting crucial aspects like velocity, validation, and risks such as data leakage. Shreya emphasizes the importance of supporting underrepresented minorities in tech and discusses innovative AI tools that enhance creativity. Her insights into the evolving landscape of AI and data management spark excitement about the future of technology.
Ask episode
AI Snips
Chapters
Transcript
Episode notes
INSIGHT

Three Vs of ML Development

  • ML development is highly experimental, even in mature organizations.
  • Experimentation velocity, validation, and versioning are crucial.
INSIGHT

Bridging the Gap

  • Development and production environments differ significantly in ML.
  • This leads to integration bugs when deploying models.
ADVICE

Preventing Data Leakage

  • Implement guardrails against data leakage during development.
  • Seemingly harmless actions like df.summary can introduce leakage.
Get the Snipd Podcast app to discover more snips from this episode
Get the app