What Happens When The Abstractions Leak On Your Data

What Happens When The Abstractions Leak On Yo...

Up next

Maximizing GPU Utilization: Heterogeneous Pipelines with Ray and Kubernetes

SummaryIn this episode Robert Nishihara, co-founder of Anyscale and co-creator of Ray, talks about maximizing hardware utilization for AI and data-intensive workloads. He explores Ray’s evolution alongside Kubernetes and PyTorch, and why consolidation at these layers has enabled ...  Show more

The AI-First Data Engineer: 10–50x Productivity and What Changes Next

Summary In this episode, I sit down with Gleb Mezhanskiy, CEO and co-founder of Datafold, to explore how agentic AI is reshaping data engineering. We unpack the leap from chat-assisted coding to truly agentic workflows where AI not only writes SQL and dbt models but also executes ...  Show more

Recommended Episodes

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 an ...

  Show more

Bayesian Machine Learning with Ravin Kumar (Ep. 191)
Data Science at Home

This is one episode where passion for math, statistics and computers are merged. I have a very interesting conversation with Ravin,  data scientist at Google where he uses data to inform decisions.

He has previously worked at Sweetgreen, designing systems that would b ...

  Show more

#628: Data on EKS
AWS Podcast

Organizations use their data to make better decisions and build innovative experiences for their customers. With the exponential growth in data, and the rapid pace of innovation in machine learning (ML), there is a growing need to build modern data applications that are agile and ...  Show more

#454: Data Pipelines with Dagster
Talk Python To Me

See the full show notes for this episode on the website at talkpython.fm/454