April 02 to 04 2018, Santa Clara, USA.

Speakers

Speaker "Karpagam Narayanan" Details

Name :
karpagam narayanan
Company :
Title :
Founder
Topic :

Maximize ROI - Prescriptive Machine Learning

Abstract :

Prescriptive Analytics is the area of Machine Learning dedicated to finding the best course of action for a given situation.  Prescriptive Analytics Inform And Evolve Decision Logic Whether To Act (not not act) And What Action To Take.  In this session, we will understand Prescriptive Analytics, its components and methods.  You will also learn how to go beyond just knowing in Predictive Maintenance into Prescriptive Service to deliver immediate ROI. 

Profile :

Karpagam Narayanan is a co-founder of eKryp, an Intelligent Service application.  eKryp, provides ML based predictions and prescriptive actionson Assets, People and Parts by continuously learning from your service data and is delivered as a SaaS product.  Manufacturers and Service Providers can reduce service costs by over 30%, and parts inventory by 10% by predicting failure, and parts demand.   

Prior to eKryp, Karpagam is a co-founder and President of Paloras Corporation, an install base analytics company till successful exit in 2016. The San Francisco Business Times recognized Paloras as a Top 100 software company in 2014 and 2013. Karpagam believes in AI being inclusive of people with various attitudes and aptitudes. She is now a board member of TiE Silicon Valley, an organization that focuses on advising and mentoring technology startups.She has been a leader, mentor and volunteer for Girl Scouts for 14 years, raising awareness of STEM, especially among girls. She started advanced math clubs at elementary schools and was a mentor in the Maker Faire, Bay Area Science Festival, FIRST robotics, and Western Regional Robotics programs in the Bay area. 

Twitter - @karpagamn
Linkedin - https://www.linkedin.com/in/karpagam/

x

Get latest updates of Global Predictive Analytics Conference
sent to your inbox.

Weekly insight from industry insiders.
Plus exclusive content and offers.