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Big Leap – Fast forward with Data Science with Machine Learning

HomeEventsWebinarsBig Leap – Fast forward with Data Science with Machine Learning
Date
18th Sep, 2020
Time
9:30 AM - 11:00 AM EDT
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This session will cover the following topics:

  • Why Python is more useful in Machine Learning field
  • What makes Python so popular?
  • Major differences between Python and R and why Python is preferred over R
  • Industry trends in Machine Learning
  • How ML can add values in different sectors of business
  • How data science and machine learning fit with the organization’s existing analytics?
  • How organization operationalize models driven by data science and machine learning.
  • Types of Machine Learning  (Supervised Learning/ Unsupervised Learning/ Reinforcement Learning)
  • Use cases of Machine learning (BFSI, Automotive Industry, Health Care, Manufacturing, Telecom, Retail)
  • What neural networks and how they are trained and deployed in practice
  • Some popular deep learning frameworks like TensorFlow, Caffe, PyTorch, Keras
  • How GPUs are used in training deep learning models

Every participant who attends the complete webinar would get a Certificate of Participation from Cognixia.




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Exclusive Invite-Only Workshop

Participation in this event is by invitation only.
For more details or to request an invite, please reach out to us at events@cognixia.com
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