Unraveling the Complexities of Model Deployment in Dynamic Marketplaces - ML 151

Unraveling the Complexities of Model Deployment in Dynamic Marketplaces - ML 151

Deeksha Goyal is the Senior Machine Learning Engineer at Lyft and Michael Sun is the Staff Software Engineer at Lyft. They delve into the intricacies of machine learning and data-driven technology. In this episode, they explore the challenges and innovations in deploying models into production, particularly focusing on the real-world implications of ETA (Estimated Time of Arrival) modeling at Lyft. They share valuable insights, from the complexities of A/B testing and long-term impact assessment, to the dynamic nature of handling real-time data and addressing unpredictability in route predictions. Join them as they journey through the world of model deployment, bug identification, and career development within the fast-paced environment of Lyft's data-driven infrastructure.

Sponsors

Socials


Become a supporter of this podcast: https://www.spreaker.com/podcast/adventures-in-machine-learning--6102041/support.

Suosittua kategoriassa Liike-elämä ja talous

sijotuskasti
mimmit-sijoittaa
rss-rahapodi
psykopodiaa-podcast
ostan-asuntoja-podcast
oppimisen-psykologia
pomojen-suusta
taloudellinen-mielenrauha
rss-lahtijat
rss-rahamania
rahapuhetta
sijoituskaverit
sijoituspodi
rss-uskalla-yrittaa
rss-h-asselmoilanen
rss-turvacast
rss-yrittajan-mielenmatka
rss-merja-mahkan-rahat
rss-seuraava-potilas
rss-viisas-raha-podi