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Audio Abet

Episode 12 : Will AutoML Make Data Science Jobs Obsolete?

17 min · 13 de dic de 2024
portada del episodio Episode 12 : Will AutoML Make Data Science Jobs Obsolete?

Descripción

In this episode, we dive deep into the evolving landscape of data science and the rise of Automated Machine Learning (AutoML). Will these tools revolutionize the field or threaten the role of data scientists? Join us as we explore the capabilities and limitations of AutoML, discuss its impact on the data science job market, and uncover how professionals can adapt and thrive in this rapidly changing domain. Whether you're a seasoned data scientist, a tech enthusiast, or just curious about the future of AI, this episode offers valuable insights and thought-provoking perspectives.

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Episode 15 - World of MCP (Model Context Protocol)

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