DataHour: Demystifying RCNN Family for Object Detection

Online 23-02-2023 07:00 PM to 23-02-2023 08:00 PM
  • 4109


  • Knowledge and Learning.


DataHour Recording

About the DataHour:

CNN or RCNN, stands for Region-Based Convolutional Neural Network, it is a type of machine learning model which is used for computer vision tasks, specifically for object detection.

In this DataHour, Jaiyesh will explain the progression of RCNNs, starting from RCNN to Fast RCNN and, finally, the state-of-the-art Faster RCNN, followed by a walkthrough of the Faster RCNN pipeline in python for training on a custom dataset.

Basic understanding of computer vision and zeal 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

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.


Jaiyesh Chahar

Data Scientist at Siemens

Jaiyesh is a data scientist at Siemens, and also a Community mentor for Python and Data Science for the Oil and Gas Industry.  Co-Founder of Petroleum from Scratch: Venture focused on mentoring the community with core Petroleum Concepts as well as Data Analytics Skills that helps students as well as professionals to acquire the skills needed for Industry 4.0.

Connect with Jiyesh on linkedin


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