Engineering Production NLP Systems at T-Mobile with Heather Nolis
EPISODE 600
|
NOVEMBER
21,
2022
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About this Episode
Today we’re joined by Heather Nolis, a principal machine learning engineer at T-Mobile. In our conversation with Heather, we explored her machine learning journey at T-Mobile, including their initial proof of concept project, which held the goal of putting their first real-time deep learning model into production. We discuss the use case, which aimed to build a model customer intent model that would pull relevant information about a customer during conversations with customer support. This process has now become widely known as blank assist. We also discuss the decision to use supervised learning to solve this problem and the challenges they faced when developing a taxonomy. Finally, we explore the idea of using small models vs uber-large models, the hardware being used to stand up their infrastructure, and how Heather thinks about the age-old question of build vs buy.
About the Guest
Heather Nolis
T-Mobile
Resources
- Advancing Your Data Science Career During the Pandemic with Ana Maria Echeverri, Caroline Chavier, Hilary Mason, Jacqueline Nolis
- Dask and Data Science Careers with Jacqueline Nolis
- (Blog) Retraining is the Only Constant, or, The [Machine] Learning is Never Done
- If you’re interested in enterprise machine learning at scale, check out the On-Demand videos for our recent TWIMLcon: AI Platforms conference.
