Cloudyn announced support for Microsoft Azure.
Available immediately, Cloudyn’s Azure offering provides performance and cost as well as monitoring and optimization. With Cloudyn, companies that have adopted Azure or are interested in doing so, have a means to monitor, compare and rightsize all of their cloud deployments and assets from a single pane of glass.
By adding Azure, Cloudyn has enriched their offering to support public, hybrid and multi-cloud environments in a single solution.
Additionally, managed service providers (MSPs), system integrators, cloud resellers and distributors are now able to use Cloudyn’s MSP offering to manage all clients in a single solution, optimize their profit margins by implementing purchasing recommendations, and gain a competitive edge by providing their customers with Cloudyn-powered value added services.
With today’s announcement, Cloudyn continues its support of a broad array of cloud computing platforms, including Azure, AWS, GCP and OpenStack.
“We’re thrilled to add Microsoft Azure to our set of supported cloud platforms. Our customers’ interests in Azure adoption have grown rapidly. From the onset, we’ve been committed to helping our customers ease into the multi-cloud model as well as successfully manage it. Now we’ll be able to further help customers cut down on cloud spend while avoiding cloud sprawl,” stated Sharon Wagner, Co-founder and CEO of Cloudyn.
“Azure is pleased to add Cloudyn to our ever-growing catalog of enterprise ready solutions,” stated Vibhor Kapoor, Director of Product Marketing, Microsoft Azure. “A company like Cloudyn that specializes in hybrid cloud deployments will help us transition our IT customers into the new landscape of bursting workloads within the public cloud.”
Using Cloudyn, IT managers, Devops, CIOs, and CFOs have access to critical, ongoing analytics so they can proactively identify unnecessary spending, unused resources, or over-provisioned services. With this level of prescriptive insights, businesses can improve their control of cloud expenditures by applying Cloudyn’s comprehensive recommendations to continuously optimize wildly fluctuating deployment configurations and resulting pricing plans. Cloudyn’s new product for Azure enables businesses to compare and then use the most cost effective way to support their deployment requirements.
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