Episode

Kathryn Hume — Financial Models, ML, and 17th-Century Philosophy

Podcast
Gradient Dissent: Conversations on AI
Published
Dec 16, 2021
Duration seconds
3128
Processing state
failed
Canonical source
https://wandb.ai/site/resources/podcast
Audio
https://podcasts.captivate.fm/media/cd16f063-d41a-49ff-8cfc-218b29fb6236/gd-kathryn-hume-v4.mp3
JSON
/v1/public/podcasts/gradient-dissent/episodes/kathryn-hume-financial-models-ml-and-17th-century-philosophy
Markdown
/podcast/gradient-dissent/kathryn-hume-financial-models-ml-and-17th-century-philosophy.md

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Summary

Kathryn Hume is Vice President Digital Investments Technology at the Royal Bank of Canada (RBC). At the time of recording, she was Interim Head of Borealis AI, RBC's research institute for machine learning. Kathryn and Lukas talk about ML applications in finance, from building a personal finance forecasting model to applying reinforcement learning to trade execution, and take a philosophical detour into the 17th century as they speculate on what Newton and Descartes would have thought about machine learning. The complete show notes (transcript and links) can be found here: http://wandb.me/gd-kathryn-hume --- Connect with Kathryn: 📍 Twitter: https://twitter.com/humekathryn 📍 Website: https://quamproxime.com/ --- Timestamps: 0:00 Intro 0:54 Building a personal finance forecasting model 10:54 Applying RL to trade execution 18:55 Transparent financial models and fairness 26:20 Semantic parsing and building a text-to-SQL interface 29:20 From comparative literature and math to product 37:33 What would Newton and Descartes think about ML? 44:15 On sentient AI and transporters 47:33 Why casual inference is under-appreciated 49:25 The challenges of integrating models into the business 51:45 Outro --- Subscribe and listen to our podcast today! 👉 Apple Podcasts: http://wandb.me/apple-podcasts​​ 👉 Google Podcasts: http://wandb.me/google-podcasts​ 👉 Spotify: http://wandb.me/spotify​