22min chapter

"Turpentine VC" | Venture Capital and Investing  cover image

E70: Martin Casado of a16z on AI Innovation and AGI

"Turpentine VC" | Venture Capital and Investing

CHAPTER

Navigating AI: Opportunities and Regulatory Challenges

This chapter explores the transformative potential of advanced AI models in biology, particularly in understanding complex biological interactions and aiding in drug discovery. It discusses the challenges of regulating AI technologies, drawing comparisons to historical regulatory frameworks in other industries, and stresses the need for a balanced approach to governance. The speakers also reflect on the unpredictability of trained models and the historical context of technological advancement, emphasizing the importance of learning from past experiences.

00:00
Speaker 2
So what is the thing that's controversial why would why do people not think that
Speaker 1
that should be part of the algebra. So a lot of people so one of the things that we we spent a lot of time doing was optimizing for this ability to transpose and to kind of treat rows and columns interchangeably we actually built a system that could handle hundreds of billions of columns and there just aren't that many systems in the world that can handle that many columns just because like you have to have metadata for all of your columns in most systems and we had a way basically of kind of having the metadata be inferred at runtime which is which is another another key aspect of the data frames but having these kind of like short but really really fat or wide tables is not something that's extremely common in the kind of world of databases and so that's that's kind of why it ended up being like okay the controversial if you would find this image you would find
Speaker 2
this machine learning though 100%
Speaker 1
yeah 100% yes it's extremely common in machine learning but databases don't like that's changing these days because databases are starting to do a lot more but databases have historically not been well optimized for doing machine learning workloads and so this idea of the transpose and the same world I think is yeah I mean databases would just crash if you try to throw throw a hundred billion columns into them and
Speaker 2
you

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