
CA Technologies has been named Innovation Partner of the Year by Red Hat.
The award is part of the annual Red Hat North American Partner Awards, which were announced at the Red Hat North American Partner Conference in Orlando, FL.
CA was honored for its ability to successfully deliver innovative open source solutions to customers – and specifically, for our collaboration with Red Hat around the CA Software-as-a-Service (SaaS) platform, which leverages Red Hat Openshift's cloud computing and container technology to power new CA enterprise SaaS solutions.
“This award validates our ongoing commitment to providing our customers with the best open source solutions to truly meet their needs,” said Alyssa Fitzpatrick, SVP, Global Partner Organization, CA Technologies. “It’s also a validation of our successful relationship with our valued partner, Red Hat. We’re honored that they have chosen us as an Innovative Partner of the Year.”
Red Hat North American Partner Award winners were selected for their work in the commercial and public sector channels and were chosen based on their ability to successfully deliver innovative open source solutions to customers. Honorees were recognized for outstanding performance in 2014 across several categories, including Partner of the Year; Distribution Partner of the Year; High Volume Partner of the Year; System Integrator Partner of the Year; Cloud Partner of the Year; Catalyst Partner of the Year; Middleware Partner of the Year; Rising Star Partner of the Year; and Innovation Partner of the Year.
“CA Technologies is one of our most valued channel partners, and we’re thrilled to recognize them with this award,” said Mark Enzweiler, SVP, Global Channel Sales, Red Hat. “Red Hat’s success is based largely on contributions from our partners, and CA Technologies has been an important part of that effort. We look forward to continued success with them in the future.”
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