CA Technologies announced “Day One” support for IBM’s new zEnterprise EC12 (zEC12) across its extensive line of next-generation mainframe management software solutions.
This support enables zEC12 customers to take full advantage of the increased capacity, scalability and efficiencies this latest IBM hybrid computing platform offers to secure and manage critical information.
“CA Technologies and IBM continue to collaborate and drive innovation for the mainframe to deliver the most efficient, secure and cost-effective computing platform for our mutual customers,” said Dayton Semerjian, general manager, Mainframe, CA Technologies. “Collectively, we see a clear movement toward hybrid computing, and our next-generation mainframe management solutions, combined with the highly secure zEC12 hybrid computing platform, will help customers to maximize the value of their investment as traditional mainframe and distributed computing come together to improve operational efficiencies.”
CA Technologies next-generation mainframe management software integrates application performance management, workload automation and process automation across mainframe and distributed systems to fully support the hybrid architecture of zEC12 with leading cross-platform, cross-enterprise management.
“CA's same-day support of the new IBM zEnterprise EC12 demonstrates the importance and exceptional value that the IBM mainframe delivers. The zEC12 provides the foundation for a secure cloud for data, enabling enterprises to improve service to their customers through greater performance, resiliency and security, with intelligence embedded in each transaction,” said Greg Lotko, vice president and business line executive for IBM System z. “With an ecosystem of software solutions, the zEC12 delivers additional value and extends its capabilities for the benefit of our mutual clients.”
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