The Dr. Data Show with Eric Siegel and Luba Gloukhova Podcast By Eric Siegel cover art

The Dr. Data Show with Eric Siegel and Luba Gloukhova

The Dr. Data Show with Eric Siegel and Luba Gloukhova

By: Eric Siegel
Listen for free

Eric Siegel and Luba Gloukhova cover why machine learning is the most important, most potent, and most misunderstood technology. And did we mention most important?

Yup, it’s the most important – yet most new ML projects fail to deliver value. This podcast will help you:

- Make sure machine learning is effective and valuable

- Catch common machine learning oversights

- Understand ethical pitfalls – concretely

- Sniff out all the ”artificial intelligence” malarky

This podcast is for both data scientists and business leaders of all kinds – such as executives, directors, line of business managers, and consultants – who are involved in or affected by the deployment of machine learning.

To get machine learning to work, both the tech and business sides must make an effort to reach across wide chasm.

About the host:

Eric Siegel, Ph.D., is a leading consultant and former Columbia University professor who helps companies deploy machine learning. He is the founder of the long-running Machine Learning Week conference series, the instructor of the acclaimed online course “Machine Learning Leadership and Practice – End-to-End Mastery,” executive editor of The Machine Learning Times, and a frequent keynote speaker. He wrote the bestselling ”Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die,” which has been used in courses at hundreds of universities, as well as ”The AI Playbook: Mastering the Rare Art of Machine Learning Deployment.” Eric’s interdisciplinary work bridges the stubborn technology/business gap. At Columbia, he won the Distinguished Faculty award when teaching the graduate *computer science* courses in ML and AI. Later, he served as a *business school* professor at UVA Darden. Eric has appeared on numerous media channels, including Bloomberg, National Geographic, and NPR, and has published in Newsweek, HBR, SciAm blog, WaPo, WSJ, and more.

https://www.machinelearningweek.com

http://www.bizML.com

http://www.machinelearning.courses

http://www.thepredictionbook.com

Copyright 2022 All rights reserved.
Economics
Episodes
  • The Doomer's Error: Why AGI Is An Incoherent Concept
    Mar 25 2026

    What's the strongest anti-AGI case, the argument that reveals the fallacies underlying the belief that AGI is a viable goal – as well as the AI doomerism that believing AGI will soon arrive often spawns? Princeton professor Arvind Narayanan recently made a statement that we feel deserves amplification: For real-world problems, machines face some of the same key fundamental limits and challenges that humans face.

    Listen to Luba and Eric unpack, explore, and expound. #noAGI

    Show more Show less
    48 mins
  • Predictive AI vs. GenAI: A Crucial, Unavoidable Comparison
    Mar 17 2026

    In this episode we cover:

    - Why predictive AI and generative AI are destined to remain inherently distinct

    - Why comparing them is unavoidable, even though they solve different problems

    - How they compare

    - How companies should balance investments between the two

    Show more Show less
    48 mins
  • Pushing the ultimate limits: helping genAI realize its promise of autonomy
    Mar 11 2026

    In this episode, we talk about real, truly deployed LLM-based systems that push the limits of autonomy. How can we "tame" LLMs to create feasible, practical solutions that are viable for deployment? What are their ultimate limitations?

    Show more Show less
    54 mins
No reviews yet