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107. Kevin Hu - Data observability and why it matters

Towards Data Science

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Introduction

Data observability is the practice of tracking origins, transformations and characteristics of mission critical data to detect problems before they lead to downstream harms. This week on tortoisad asigns i'll be talking to kevan ho the co founder and co of metoplane. He has a very deep understanding of data pipe lines and the problems that can pop up if they aren't properly monitored. And enjoin me to talk about data observability, why it matters, and how it might just be connected to responsible a i on this episode of tors data science podcast.

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