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MLOps: Overcoming the Pitfalls of Applied AI

Organizations typically focus on the benefits and potential for improvement in business when they begin their journey towards deploying machine learning, in short, the bright side of life. As is often the case, there is also a dark side, where critical situations need to be managed, and the functionality and reliability of ML models need to be ensured. These arduous tasks come with a lot of responsibility and cannot be taken lightly.

In this webinar, BARC Analyst and Data Scientist Alexander Rode illustrates how MLOps can help you tackle these tasks and why you should start thinking about ways to lighten the dark side from an early stage.
Recorded May 13 2021 26 mins
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Presented by
Alexander Rode, Analyst Data and Analytics, BARC
Presentation preview: MLOps: Overcoming the Pitfalls of Applied AI

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