Episode Summary

Generative AI isn’t magic. You can’t just sprinkle it like pixie dust over an existing project or dataset and expect wonderful things to happen automatically. In fact, just to use the data you already have, you have to you may have to invest a lot in the new infrastructure and tools needed to train a generative model. And that’s the part of the puzzle Harry focuses on in today's interview with David Buniatyan. He’s the founder of a company called ActiveLoop, which is trying to address the need for infrastructure capable of handling large-scale data for AI applications. He has a background in neuroscience from Princeton University, where he was part of a team working on reconstructing neural connectivity in mouse brains using petabyte-scale imaging data. At ActiveLoop, David has led the development of Deep Lake, a database optimized for AI and deep learning models trained on equally large datasets. He says the company’s goal is to take over the boring stuff. That means removing the burden of data management from scientists and engineers, so they can focus on the bigger questions—like making sure their models are training on the right data—and ultimately innovate faster.

Pod
Cast

The content above was previously recorded. The views herein were made at the time of this recording and are not updated to reflect changes in economic or financial circumstances. The opinions are those of the contributor and not Scientia Ventures, LLC, its affiliates, officers, or employees. Nothing herein constitutes a recommendation, solicitation, or offer to purchase securities or private funds, which can only be made through the relevant offering documents.