AVST, Mirapoint Team Up To Provide Unified Messaging

Applied Voice & Speech Technologies (AVST) and Mirapoint announced they've formed a strategic partnership to deliver a unified messaging solution that addresses the needs of both the enterprise and education sectors.

According to the companies, the partnership will focus on the integration of AVST's CallXpress Unified Communications platform and Mirapoint's Message Server. The combination will provide a scalable, secure unified messaging solution that takes advantage of an organization's existing infrastructure, helping to reduce costs associated with the replacement of legacy systems.

AVST boasts more than 40,000 deployments worldwide, while Mirapoint's Message Server has more than 120 million mailbox deployments to its credit.

About the Author

Chris Riedel is a freelance writer based in Illinois. He can be reached here.

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