• ESRI
  • NAVTEQ
  • Veriplace
  • AT&T Interactive
  • DigitalGlobe
  • Google
  • Yahoo! Inc.
  • ZoomAtlas
  • Digital Map Products
  • Pitney Bowes Business Insight
  • NAVTEQ

Sponsorship Opportunities

For information on exhibition and sponsorship opportunities at the conference, contact Yvonne Romaine at [email protected]

Media Partner Opportunities

For media partnerships, contact mediapartners@ oreilly.com or download the Media & Promotional Partner Brochure (PDF)

Press and Media

For media-related inquiries, contact Maureen Jennings at [email protected]

Where 2.0 Newsletter

To stay abreast of conference news and to receive email notification when registration opens, please sign up for the Where 2.0 Conference newsletter (login required)

Where 2.0 Ideas

Have an idea for Where to share? [email protected]

Contact Us

View a complete list of Where 2.0 contacts

Peter Skomoroch

Peter Skomoroch
Sr. Research Scientist, LinkedIn

Website | @peteskomoroch | Attendee Directory Profile

Pete Skomoroch is a Research Scientist at LinkedIn, focusing on building data driven products. For the past several years, he has been a consultant at Data Wrangling in Washington, DC, working on projects involving search, finance, and recommendation systems. Before joining LinkedIn, he was the Director of Advanced at Juice and a Sr. Research Engineer at AOL Search. He spent the previous 6 years in Boston implementing pattern detection algorithms for streaming sensor data at MIT Lincoln Laboratory and constructing predictive models for large retail datasets at Profitlogic. Pete has a B.S. in Mathematics and Physics from Brandeis University.

Sessions

General
Location: Ballroom IV
Peter Skomoroch (LinkedIn), Kevin Weil (Twitter, Inc.), Sean Gorman (FortiusOne)
This workshop will focus on uncovering patterns and generating actionable insights from large datasets using spatial . We will explore combining open government data with other location based information sources like Twitter. Participants will be guided through examples that use Hadoop and Amazon EC2 for scalable processing of location data. Read more.