
cPacket Networks is working with Amazon Web Services (AWS) to simplify cloud observability by integrating AWS’s Gateway Load Balancer Endpoint (GWLBe) as an additional supported target for Virtual Private Cloud (VPC) traffic mirroring and centralized observability.
cPacket and AWS customers can now forward mirrored traffic from their cloud instances to cPacket observability nodes deployed behind GWLB for centralized observability and analysis. The observability can be deployed within a customer’s account or a provider account hosted by a managed service provider (MSP).
“Today, our customers deploy and maintain cPacket observability nodes independently in each VPC and subnet. Customers are looking for a simpler and centralized model where observability can be deployed in a scalable manner without introducing complexity. The cPacket’s Intelligent Observability Platform enables them to do so,” said Iain Kenney, Sr. Director Product Management at cPacket Networks.
All cPacket hybrid-cloud observability products are orderable and deployable in AWS and in production across many customer environments.
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