Flowers

DataHour: Unlocking the Power of Embeddings

Online 24-02-2023 07:00 PM to 24-02-2023 08:00 PM
  • 7182

    Registered

  • Knowledge and Learning.

    Prizes

About the DataHour:

Embeddings are dense numerical representations of real-world objects and relationships, expressed as a vector. In this webinar we will go through what an embedding is, how it encodes semantic relations, how to use and train meaningful embeddings.

In this DataHour, Priya will explain all about embedding including the following topics:

  • What is an embedding?
  • How does it encode semantic relations?
  • How to use and train meaningful embeddings.


Prerequisites:
 Interest in learning Data Science and Deep Learning. 


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


Note:
E-certificates will be provided within 24 - 48 hours of the session only to those who have attended the entire webinar. Please make sure to join the zoom webinar with your correct name and email address to ensure that your certificate is properly credited to you.


Speaker:

Priya Ghetia

Data Scientist at Honeywell

Priya Ghetia is currently working as Data Scientist with Honeywell where she is responsible for building AI based products. She has 6+ years of work experience in Data Science with big data technologies. She is a skilled professional with 6+ years of demonstrated experience in Data Science with big data technologies. She is also experienced in developing end-to-end Data Science solutions for enterprise analytics engagements as well as analytics products using Deep Learning and Machine Learning Algorithms for both supervised and unsupervised use cases.

Connect with Priya on linkedin

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