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DataHour: MLOps—DevOps for Machine Learning

Online 22-08-2022 07:00 PM to 22-08-2022 08:00 PM
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DataHour Recording

Find the resources used in the DataHour HERE.

About the DataHour:

Join this DataHour to learn how to manage the complete machine learning lifecycle with MLOps—DevOps for machine learning— including simple deployment from the Movie Genre Prediction.

In this session you will learn to:

  • Build, train, and deploy machine learning models.
  • Manage production workflows to get to production faster.
  • Automate the machine learning lifecycle to update, test, and continuously roll out new models.

Prerequisites:  Enthusiasm for learning Data Science and sign-up for Katonic MLOps Platform(if you wish to do hands-on along with the speaker)


Who is this DataHour for?

  • Students and professionals looking to expand their data science knowledge base.
  • Data science professionals who want to accelerate their career growth.


Speaker:

Meghana Veerannagari

Data Scientist at Katonic.ai

Meghana is a Data Scientist at Katonic.ai. She has done M-tech in Advance Computing from NIT Bhopal and has 5 years of experience working as a Data Scientist. She has experience building use cases in different domains like banking, real estate, energy sector and deploying them into production. She has also implemented dashboards and apps that help end users to consume the outcomes of the Machine learning models to make better business decisions.

You can follow her on Linkedin.

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