Flowers

DataHour: Model Guesstimation (MLOps)

Online 27-09-2022 07:00 PM to 27-09-2022 08:00 PM
  • 11380

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  • Knowledge and Learning

    Prizes

DataHour Recording

About the DataHour:

The data and model included a great deal of information that needed to be presented to the user for better comprehension prior to successful implementation. These are essential goals for a machine learning system to achieve. By analyzing these reports, you may determine whether or not the selected model is suitable for deployment, or if it is only a designed use case and model that cannot be deployed and productionized.

In this DataHour, Tushit will explain in detail the process of model guesstimation,  its need and its various applications in real life. 

Prerequisites: Basic understanding of Python programming, data analysis and machine learning and curiosity of learning Data Science.


Who is this DataHour for?

  • Students & Freshers who want to build a career in the Data-tech domain.
  • Working professionals who want to transition to the Data-tech domain.
  • Data science professionals who want to accelerate their career growth


Speaker:

Tushit Dave

Lead Data Scientist at HCL technologies

Tushit is currently working as a Lead Data Scientist at HCL Technologies with 10+ years of experience in the field of AI Product Development and Research in the AI field. He has worked with various reputed companies including Emerson, Endress+ Hauser, Danaher , INSOFE etc. 

He is an impactful keynote speaker, author and content creator also. 

Connect with Tushit at:https://www.linkedin.com/in/tushitdave/

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