Perfecto Mobile announced the appointment of George Kadifa to its Board of Directors.
As a Board member, Kadifa will expand Perfecto Mobile’s vision towards enterprise digital engagement and accelerate the momentum with Agile and DevOps teams.
Kadifa has extensive expertise in growing and managing technology businesses, having held leadership positions at HP, IBM, Silver Lake Partners, Corio, Oracle, and Booz-Allen & Hamilton. As Operating Partner at Silver Lake Partners, Kadifa was responsible for driving the growth of a 24-company enterprise portfolio from the firm’s large-cap investment fund. Most recently, Kadifa served as Executive Vice President of HP Software and Strategic Relationships, where he led HP’s multi-billion dollar software portfolio under the direction of HP’s CEO.
“We are delighted to welcome George Kadifa to Perfecto Mobile’s Board of Directors,” said David Reichman, Chairman of the Board at Perfecto Mobile. “His extensive leadership experience at the top global technology companies, paired with his deep operational knowledge, will add a valuable dimension to the Board as he supports Perfecto Mobile’s vision into the next phase of digital engagement.”
Kadifa is currently the Managing Director at Sumeru Equity Partners, Director at Velocity Technology Solutions and serves as a trustee for the University of Chicago Booth School of Business.
"As someone with first-hand experience leading both a new breed of companies as well as some of the largest technology organizations in the world, I have come across many companies who set out to change an industry,” said Mr. Kadifa. “It is quite rare to find a company such as Perfecto Mobile, with superior technology, a vast market to penetrate, and a visionary executive team. In addition, they offer a highly disruptive business that is transforming legacy tools and waterfall methodologies to an open and continuous approach, matching the way DevOps, Agile and Mobile teams work. I am excited to work with CEO Eran Yaniv, the Perfecto Mobile executive team and the Board to support Perfecto Mobile's explosive growth and becoming standard in the mobile and digital quality market.”
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