Lecture on "Clustering"

#Machine #Learning #Clustering #VNRVJIET
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Mrs. Y. Padma Sai (Head of the Dept., ECE, VNRVJIET) was the resource
person of the day and she delivered a lecture on the topic – “Clustering”. This
helps the students to detect patterns when they don't recognize anything
manually.


The speaker has started the discussion with the introduction of the topic
Mahine Learing and explained different Machine Learning algorithms.
 Then, the topic-”UnSupervised Learning” was explained saying that it
was a method dealt with the data without any specific labels.
 Major clustering approaches like Partitioning approach, Hierarchieal
approach and Density based approach were discussed and methods to
implement those approaches were also stated.
 Different Clustering Applications in practical scenario were also
discussed and this kind of practical approach seems very intersting to the
participants.



  Date and Time

  Location

  Hosts

  Registration



  • Date: 01 Jul 2020
  • Time: 02:00 PM to 04:00 PM
  • All times are (GMT+05:30) Asia/Calcutta
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  • Hyderabad, Andhra Pradesh
  • India

  • Contact Event Host


  Speakers

Y. Padma Sai of Dept. Electronics and Communication Engineering, VNR VJIET

Topic:

Clustering in machine learning.

Biography:

Mrs. Y. Padma Sai has a teaching experience of more than 20 years and research
experience of 11 years. She is also an industry-oriented person of experience
over 5 years.





Agenda

The lecture was aimed at making the participants understand the method of
Unsupervised learning which involves the process of clustering. With the idea
of this clustering, one can detect the patterns of data without any labels.



About 35 people have attended the Webinar. It was a wonderful session with
sufficient idea of topics dealt within this short duration. The speaker has
explained every clustering approach along with the realtime examples. That was
a good interactive and informative session



  Media

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