• The Dr. Data Show with Eric Siegel

  • De: Eric Siegel
  • Podcast

The Dr. Data Show with Eric Siegel

De: Eric Siegel
  • Resumen

  • Eric Siegel covers why machine learning is the most important, most potent, and most misunderstood technology. And did I 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 and its new sister, Generative AI Applications Summit, 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.
    Más Menos
Episodios
  • Predictive AI Only Works If Stakeholders Tune This Dial (article)
    Apr 14 2025
    In this episode, listen to a narration of Eric Siegel's article in Forbes: Predictive AI Only Works If Stakeholders Tune This Dial Machine learning models can drive business operations to great benefit. But, to get there, stakeholders must determine how model probabilities trigger actions. Access the original article here: https://www.forbes.com/sites/ericsiegel/2024/11/25/predictive-ai-only-works-if-stakeholders-tune-this-dial/
    Más Menos
    4 m
  • AI Drives Alphabet’s Moonshot To Save The World’s Electrical Grid (article)
    Mar 31 2025

    In this episode, listen to a narration of Eric Siegel's article in Forbes:

    AI Drives Alphabet’s Moonshot To Save The World’s Electrical Grid

    AI is pivotal as global utilities tackle a looming crisis with the electrical grid. Here's how Alphabet uses AI to help the world keep the lights on.

    Access the original article here: https://www.forbes.com/sites/ericsiegel/2024/10/07/why-we-need-ai-alphabets-moonshot-to-save-the-worlds-electrical-grid/

    Más Menos
    7 m
  • To Deploy Predictive AI, You Must Navigate These Tradeoffs (article)
    Mar 24 2025

    In this episode, listen to a narration of Eric Siegel's article in Forbes:

    To Deploy Predictive AI, You Must Navigate These Tradeoffs

    Before deploying predictive AI, you must strike a balance between competing business factors. Here's how.

    Access the original article here: https://www.forbes.com/sites/ericsiegel/2024/08/27/to-deploy-predictive-ai-you-must-navigate-these-tradeoffs/

    Más Menos
    4 m
adbl_web_global_use_to_activate_webcro768_stickypopup

Lo que los oyentes dicen sobre The Dr. Data Show with Eric Siegel

Calificaciones medias de los clientes

Reseñas - Selecciona las pestañas a continuación para cambiar el origen de las reseñas.