Myths and Facts on How to Learn Technology (AI & ML)

#AI #ML #IEEE
Share

How to get start your career in Analytics and Data Science


What to learn - when to learn - how to learn is always a challenge and especially with new digital era courses. For example, what to learn in data science which can give job and secure for next 15 years is a big? for fresher to experience, this is not the right way to think about a new technology



  Date and Time

  Location

  Hosts

  Registration



  • Add_To_Calendar_icon Add Event to Calendar
  • Computer Society of India - Office 302
  • Archana Arcade, 10-3-190, St. Johns Road, Opposite Railway Reservation Complex, Old Lancer Lines, Railway Colony, Chilakalguda
  • Secunderabad, Andhra Pradesh
  • India 500025
  • Room Number: Flat 302
  • Click here for Map

  • Contact Event Host
  • Bala.peddigari@ieee.org

  • Co-sponsored by CSI Hyderabad


  Speakers

Madhu Vadlamani

Topic:

Myths and Facts on How to Learn Technology

Abstract: What to learn - when to learn - how to learn is always a challenge and especially with new digital era courses. For example, what to learn in data science which can give job and secure for next 15 years is a big? for fresher to experience, this is not the right way to think about a new technology
 
Proposing: Where to start your technology journey.? This session targets people who are students / mid career game changes and also professors and intellectuals

Biography:

Madhu Vadlamani has vast experience in Analytics(Web/Digital Analytics & Big Data Analytics) in Ecommerce platforms - Banking Industry - Building statistical model, designing strategies, providing analytical solutions to businesses, reporting etc. Currently he is working with Kony Labs as Senior Web Analyst

Linkedin: https://www.linkedin.com/in/madhuvad/

Email:





Agenda

Social Networking :   10.15 AM - 10.30 AM

Session :   10.30 AM - 12.00 PM

1. How to initiate and think about new technologies
2. What are the do/don'ts before you choose a technology/field
3. Are you fit for data science? if yes do you have??
4. What are the other major areas which can help your mid career transition?
5. What to learn and where to learn



Technology Myths and Facts - IEEE & CSI Joint Collaboration