All Posts

[Earley AI Podcast] Episode 13, Stephanie Lemieux

In this episode, Seth and Chris talk with Stephanie Lemieux, President of Dovecot Studio about the nuts and bolts of taxonomy and information architecture.

 

 

 

Highlights:

1:42 - Stephanie Lemieux background & Relationship with IA & Taxonomy

7:30 - Complexities & Foundational Problems

15:05 - Graph data and knowledge graphing

22:15 - Dynamic roles within an organization

37:27 - Leveraging weak signals and solutions

48:48 -What's the "excuse case"

50:59 - Value difference between large global and integrated organizations vs. a focused and niche organization

53:35 - Opinion on finding talent

Links:

Thanks to our sponsors:

Earley Information Science Team
Earley Information Science Team
We're passionate about enterprise data and love discussing industry knowledge, best practices, and insights. We look forward to hearing from you! Comment below to join the conversation.

Recent Posts

[Earley AI Podcast] Episode 31: Kirk Marple

It’s All About the Data Guest: Kirk Marple

[Earley AI Podcast] Episode 30: Alex Babin

The Holy Grail of AI Guest: Alex Babin

The Critical Element of Foundational Architecture

Recently I chaired the Artificial Intelligence Accelerator Institute Conference in San Jose – in the heart of Silicon Valley.  The event has brought together industry innovators from both large and small organizations, providing a wide range of perspectives. For example, the CEO of AI and ML testing startup of Kolena, Mohamed Elgendy and Srujana Kaddevarmuth, Senior Director, Data & ML Engineering, Customer Products, Walmart Global Tech discussed productization of AI solutions and ways to increase adoption. I especially liked the idea of a model catalogue from which data scientists can retrieve data sets and machine learning models that others have built rather than starting from scratch.