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Kevin Shea joins Interactive Supercomputing

Kevin Shea has joined Interactive Supercomputing (ISC) as vice president of engineering, where he will lead product development of Star-P.

'My goal is to deliver technologies that bring the power of parallel processing and clusters to the desktop. That's what got me so excited to join ISC,' said Shea. 'Making supercomputing simple for the world's greatest scientists, engineers and analysts has the potential to unleash a tsunami of new breakthrough discoveries. I want to help make it happen.'

Shea brings to ISC more than 15 years of senior executive experience heading up product development efforts for enterprise computing, networking and software companies.

Most recently, Shea was vice president of engineering at Ibrix, a developer of high-performance file server software designed to run on parallel clusters. Earlier positions include vice president of engineering at Giant Loop Network, as well as vice president of product development at Praxis/Lakeview Technology and Computer Corp. of America.

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