
Excalibur Data Systems announced a strategic partnership with AlertOps. This partnership will empower teams to manage major incidents and protect mission-critical services.
Chella Jamburajan, Founder of AlertOps, said: "Excalibur and AlertOps are equally dedicated to client success, and Excalibur is now uniquely positioned to be a leader in helping clients manage major incidents to keep mission-critical services up and running."
AlertOps' provides disruptive features that deliver on the biggest communication challenges that companies face today. This new partnership will help clients drastically improve operational efficiency. For example, 80% of companies are still using spreadsheets for on-call. AlertOps can easily help automate this to, releasing teams to tack more important work.
"We're looking forward to partnering with AlertOps on upcoming projects while continuing to offer best of breed solutions to our valued customers," said Mike Fuson, VP of Excalibur Data Systems.
As a Cherwell Premier Authorized Partner, Excalibur Data Systems has broad experience across verticals and proven success across North America and look forward to working with AlertOps to achieve further success.
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