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Join Eric Siegel, founder of Predictive Analytics World, for an eye-opening executive breakfast — witness an accessible, concrete overview of how predictive analytics drives actionable value.

**Date:** Tuesday, April 5, 2016

**Location:** Marriott Marquis, San Francisco

**Info:** http://www.pawcon.com/patimes/executive-breakfast

This Breakfast event will include a keynote presentation from Eric Siegel, founder of Predictive Analytics World, **Predictive Analytics: Five Ways It Generates Value**

*The excitement over “big data” has grown dramatically. But what is the value, the function, the purpose? The most actionable win to be gained from data is prediction. This is achieved by analytically learning from data how to render predictions for each individual. Such predictions drive more effectively the millions of operational decisions that organizations make every day. In this keynote, Predictive Analytics World founder and* Predictive Analytics *author Eric Siegel reveals how predictive analytics works, and covers five ways in which it delivers value to organizations across industry sectors.*

Attendees receive a complimentary copy of Eric Siegel’s acclaimed book, *Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die**.*

**Who Should Attend?**

Executives and senior leaders responsible for making value from data.

**Why Attend?**

To discover how predictive analytics works and the ways in which it delivers value to organizations across industry sectors. To build relationships with peers, leverage their insights, follow their progress and share your predictive analytics story.

The Predictive Analytics Times Executive Breakfast is being held simultaneously with Predictive Analytics World San Francisco 2016, and Predictive Analytics World for Workforce and includes complementary access to these events’ exposition hall.

**SUBMIT REQUEST TO ATTEND NOW:**

Be among the first to participate in this inaugural event and spend a morning gathering valuable insight to enhance your predictive analytics efforts. **Attendance is FREE for qualified professionals**, including those at VP-level or above. Space is limited, so submit your request to attend today.

Request to attend today: http://www.pawcon.com/patimes/executive-breakfast

**OTHER UPCOMING PREDICTIVE ANLYTICS EVENTS:**

Predictive Analytics World San Francisco - April 3-7, 2016 - http://www.predictiveanalyticsworld.com/sanfrancisco/2016/

Predictive Analytics Times Executive Breakfast – April 5, 2016 - http://www.predictiveanalyticsworld.com/patimes/executive-breakfast/

Predictive Analytics World for Workforce – April 3-6, 2016 - http://www.predictiveanalyticsworld.com/workforce/2016/

Predictive Analytics World Chicago – June 20-23, 2016 – http://www.predictiveanalyticsworld.com/chicago/

Predictive Analytics World Manufacturing Chicago – June 21-22, 2016 - http://www.predictiveanalyticsworld.com/mfg/

Predictive Analytics World New York – Oct 24-27, 2016 – http://www.predictiveanalyticsworld.com

Predictive Analytics World for Healthcare – Oct 24-27, 2016 - http://www.predictiveanalyticsworld.com/health/

Text Analytics World New York – Oct 24-27, 2016 – http://www.textanalyticsworld.com

PAW Videos: Available on-demand – www.pawcon.com/video

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