
CA Technologies was recognized as one of the Achievers 50 Most Engaged Workplaces in North America. This annual award recognizes top employers that display leadership and innovation in engaging their workplaces.
“We’re honored to be selected as one of the country’s most engaged workplaces by Achievers,” said Beth Conway, VP of Human Resources at CA Technologies. “As a leading provider of information management software, CA knows just how valuable customer and partner engagement is to producing great results. Employee engagement is fundamental to our success and we are continuously searching for innovative and valued ways to engage our 12,000 employees.”
The Achievers 50 Most Engaged Workplaces panel of judges evaluated each applicant based on the Eight Elements of Employee Engagement: Communication, Leadership, Culture, Rewards & Recognition, Professional & Personal Growth, Accountability & Performance, Vision & Values and Corporate Social Responsibility. The panel of judges included various academics and thought leaders on employee engagement, and included representation from organizations such as the Society for Human Resource Management (SHRM), Human Capital Institute, and Human Resource Executive.
“This marks our fifth year recognizing incredible, employee‐focused companies that are changing the way the world works, and we’re excited to honor them with this award,” said Cheryl Kerrigan, Vice President of Employee Success at Achievers. “These companies are setting the benchmark for standards in employee engagement by making engaging, aligning, and recognizing employees a top priority, which sets them apart from their competition.”
CA Technologies will be honored alongside other recipients of the Achievers 50 Most Engaged Workplaces Award at the awards gala on March 11, 2015 at the Bellagio Las Vegas.
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