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Predictive Analytics World for Workforce 2017 San Francisco

When & Where

Monday, May 15, 2017 @ 09:00
(PST Pacific Standard Time GMT-8:00)

San Francisco, CA


Premier Predictive Event for Workforce and HR Data Scientists
The Predictive Analytics World for Workforce Conference (PAW Workforce), May 14-18, 2017, in San Francisco (, is the premier predictive analytics conference for workforce data scientists, HR analysts and business leaders. This global, cross-industry event highlights predictive tools being used to solve today's greatest workforce challenges.

Learn How to Apply Predictive Approaches and Tools Used in Other Domains
Until recently, predictive analytics tools were primarily used to drive enterprise performance by predicting customer, voter, debtor, and other human outcomes. Today, predictive analytics is similarly being applied to drive performance and lifetime value of an organization’s workforce. Predictive workforce analytics can help answer questions such as; who will accelerate, who will terminate, who has the greatest lifetime value, and more.
Early Registration Discounts:
Register by January 27, 2017, and save up to $600.00:

Bring the Team Offer
Each additional attendee from the same company, registered at the same time, receives an extra $200 off the All Access, Two Day or Combo Passes. [Discounts may not be combined.]
For more information:

For inquiries e-mail or call 717-798-3495.

More Details

Starts 5/15/2017 @ 09:00
(PST Pacific Standard Time GMT-8:00)
Ends 5/18/2017 @ 17:00
(PST Pacific Standard Time GMT-8:00)
San Francisco Marriott Marquis
780 Mission Street, San Francisco, CA 94103

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