Four Key Tools for Robust Enterprise NLP with Yunyao Li – #537

Today we’re joined by Yunyao Li, a senior research manager at IBM Research.

Yunyao is in a somewhat unique position at IBM, addressing the challenges of enterprise NLP in a traditional research environment, while also having customer engagement responsibilities. In our conversation with Yunyao, we explore the challenges associated with productizing NLP in the enterprise, and if she focuses on solving these problems independent of one another, or through a more unified approach.

We then ground the conversation with real-world examples of these enterprise challenges, including enabling level document discovery at scale using combinations of techniques like deep neural networks and supervised and/or unsupervised learning, and entity extraction and semantic parsing to identify text. Finally, we talk through data augmentation in the context of NLP, and how we enable the humans in-the-loop to generate high-quality data.

The complete show notes for this episode can be found at https://twimlai.com/go/537

Subscribe:

Apple Podcasts:
https://tinyurl.com/twimlapplepodcast
Spotify:
https://tinyurl.com/twimlspotify
Google Podcasts:
https://podcasts.google.com/?feed=aHR0cHM6Ly90d2ltbGFpLmxpYnN5bi5jb20vcnNz
RSS:
https://twimlai.libsyn.com/rss
Full episodes playlist:

Subscribe to our Youtube Channel:
https://www.youtube.com/channel/UC7kjWIK1H8tfmFlzZO-wHMw?sub_confirmation=1

Podcast website:


Sign up for our newsletter:

Newsletter Sign-Up


Check out our blog:

Blog


Follow us on Twitter:

Follow us on Facebook:
https://facebook.com/twimlai
Follow us on Instagram:
https://instagram.com/twimlai

YouTube Source for this AI Video

AI video(s) you might be interested in …