
Winners of the CA Technologies 2014 VIP Customer Awards were announced at CA World ‘14. The awards recognize customers that have achieved new levels of success using CA solutions in new and innovative ways to help meet the dynamic business needs of businesses in today’s application economy.
Winners using Application Performance Management and related products are listed below:
The Vision Award – for success in developing and demonstrating a clear vision to managing the overall success of an enterprise.
Winner: Garanti Teknoloji for leveraging integrated CA solutions for application development, software change management, application performance management, security, network management and database monitoring to grow their business while better controlling costs.
The Impact Award – for results from improved management, especially in terms of productivity, financial benefits, quality improvements or customer satisfaction.
Winner: TESCO for bringing development and operations teams closer by implementing CA Application Performance Management and CA Unified Infrastructure Management tools to reduce costs and safeguard availability tools to reduce costs, and CA Release Automation tools to cut release times from weeks to days.
The Progress Award – for implementation success or process improvements. Initiatives in this category, even if not complete, demonstrate excellent planning or communications and project success.
Winner: Molina Healthcare for using a wide range of CA solutions to better structure its DevOps organization to increase mean time to repair issues by 77 percent and reduce application release times by 75 percent.
“We are in the middle of a business revolution where consumers across the globe expect to interact with products, services and companies through software,” said John Michelsen, CTO, CA Technologies. “We are proud to recognize our customers who are pushing the envelope to invent new ways to grow their businesses and improve customer experiences.”
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