What Does It Really Mean To Do MLOps And What Is The Data Engineer's Role?

What Does It Really Mean To Do MLOps And What...

Up next

Holding Kafka Right: Product-Friendly Streaming with TypeStream

Summary In this episode Jevin Maltais talks about the practical realities of building reliable, product-focused streaming systems with Kafka. Jevin shares lessons from roles at Zapier, Humi, and Clio, where real-time synchronization, customer data unification, and document sync a ...  Show more

Text to Data Products: Kaarvi’s End-to-End AI for Ingestion, Quality, and Dashboards

Summary In this episode Shravan Gunda, founder and CEO of Kaarvi AI, talks about building an AI-native, agent-driven data platform designed to eliminate the janitorial work that consumes most data teams. He explores Kaarvi’s multi-agent architecture that runs queries across seven ...  Show more

Recommended Episodes

LLM Security and Privacy
The Enterprise AI Show

Sean Falconer (@seanfalconer, Head of Dev Relations @SkyflowAPI, Host @software_daily) talks about security and privacy of LLMs and how to prevent PII (personally identifiable information) from leaking out

SHOW: 807

CLOUD NEWS OF THE WEEK -
<a href='http: ...

  Show more

From DevOps to Platform Engineering
Software Engineering Unlocked

Earn additional income by sharing your opinion on userinterviews.com!Episode Resources:What is platform engineering?What is an internal developer platform?What is Dynamic Configuration Management?Salesman tricks for the Platform EngineerPlatform Engineering communityPlatformCon 2 ...  Show more

Mining the Golden Age of Data with Tableau’s CEO & President Mark Nelson
IT Visionaries

Mark Nelson is the President and CEO of Tableau, a company dedicated to democratizing analytics and putting data back in the hands of consumers. But while this digital pioneer ma ...

  Show more

Shorten the distance between production data and insight
The Stack Overflow Podcast

Modern networked applications generate a lot of data, and every business wants to make the most of that data. Most of the time, that means moving production data through some transformation process to get it ready for the analytics process. But what if you could have in-app analy ...  Show more