ML Integration Challenges // Aaron Maurer & Katrina Ni // MLOps Podcast # 157
MLOps Coffee Sessions #157 with Katrina Ni & Aaron Maurer, MLOps Build or Buy, Startup vs. Enterprise? co-hosted by Jake Noble.
This episode is sponsored by tecton.ai - check out their feature store to get your real time ML journey started.
In this podcast clip, Aaron Maurer and Katrina Ni from Slack discuss the challenges of implementing MLOps tools in a company's existing engineering framework. They highlight the difficulties of integrating experimentation platforms with production and data metrics, as well as the importance of strong and simple API boundaries to facilitate easy integration. The speakers also touch on the appeal of Open AI's Text API, which simplifies complexity by offering a simple API for users to send and receive text. Overall, this clip sheds light on the challenges of integrating MLOps tools in a company's existing engineering framework and the importance of API boundaries for seamless integration.
// Abstract
There are a bunch of challenges with building useful machine learning at a B2B software company like Slack, but we've built some cool use cases over the years, particularly around recommendations. One of the key challenges is how to train powerful models while being prudent stewards of our clients' essential business data, and how to do so while respecting the increasingly complex landscape of international data regulation.
// Bio
Katrina Ni
Katrina is a Machine Learning Engineer in Slack ML Services Team where they build ML platforms and integrate ML, e.g. Recommend API, Spam Detection, across product functionalities. Prior to Slack, she is a Software Engineer in Tableau Explain Data Team where they build tools that utilize statistical models and propose possible explanations to help users inspect, uncover, and dig deeper into the viz.
Aaron Maurer
Aaron is a senior engineering manager in the infra organization at Slack, managing both the machine learning team and the real-time services team. In six years at Slack, most of which
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