|By Business Wire||
|May 12, 2014 04:10 PM EDT||
Dealertrack Technologies, Inc. (NASDAQ: TRAK), today announced the company will present at two upcoming investor conferences in Boston and New York.
The J.P. Morgan Technology, Media, & Telecom Conference, Boston
May 19, 2014; 1:40 p.m. ET
Dealertrack Speakers: Mark O’Neil, Chairman, President and Chief Executive Officer, and Eric Jacobs, Chief Financial Officer
The Cowen and Company Technology, Media and Telecom Conference, New
May 28, 2014; 3:30 p.m. ET
Dealertrack Speaker: Mark O’Neil, Chairman, President and Chief Executive Officer
Each presentation will be webcast live and available in the Investor Information section of the Company’s website under “Investor Events” or by clicking here. All times listed are local.
About Dealertrack Technologies, Inc. (www.dealertrack.com)
Dealertrack Technologies' intuitive and high-value web-based software solutions and services enhance efficiency and profitability for all major segments of the automotive retail industry, including dealers, lenders, OEMs, third-party retailers, agents and aftermarket providers. In addition to the industry's largest online credit application network, connecting more than 20,000 dealers with more than 1,400 lenders, Dealertrack Technologies delivers the industry's most comprehensive solution set for automotive retailers, including Dealer Management System (DMS), Inventory, Sales and F&I, Digital Marketing and Registration and Titling solutions. For more information visit www.dealertrack.com.
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