
CA Technologies and Science Applications International Corp. signed an agreement to develop service offerings that will help customers simplify and solve their most challenging information technology (IT) problems.
Under the agreement, CA will provide SAIC with all of the enhanced technology, marketing and sales benefits attributed to a CA Premier level partner. SAICs IT Managed Services offerings and services will, in turn, extend CA’s presence within the U.S. market with a focus on the Public Sector. Together, CA Technologies and SAIC will deliver innovative management solutions and IT services to speed product and service delivery.
SAIC will use CA Unified Infrastructure Management (CA UIM), a powerful platform that IT organizations and service providers around the world use to manage and optimize their most critical systems and services, to deliver SAIC IT Service Management. With CA UIM, SAIC customers can create a holistic view of critical systems and services by consolidating multiple IT monitoring tools into a unified, easy-to-manage platform.
“Our world is being reshaped. At CA, we are rewriting the landscape with our partners to create innovative uses of our technology,” said Alyssa Fitzpatrick, SVP, Global Partner Organization, CA Technologies. “And we look forward to formalizing these efforts with SAIC to deliver the solutions that will ultimately drive more value for customers.”
“By leveraging CA Technologies’ industry-leading solutions with SAIC’s fully-managed services, we are positioned to expand our competitive enterprise network monitoring and management services,” said Terry Hicks, SAIC VP of IT Managed Services. “Together, SAIC and CA will provide an integrated solution that will meet and exceed customers’ enterprise requirements."
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