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Cohesive Networks

Cloud network security platform for multicloud VPN, firewall, and encryption

Product
Network Security
Cloud Security
Zero Trust
Data Protection
MCP

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Cohesive Networks Description

Cohesive Networks develops the VNS3 Network Platform, a software-based network controller designed for cloud and multicloud environments. The platform provides network security and connectivity functions including IPsec VPN, firewall, NAT, and network segmentation capabilities that can be deployed across various cloud providers such as AWS, Azure, and Google Cloud Platform. The VNS3 platform addresses several network architecture challenges in cloud environments. It enables organizations to create encrypted network overlays, establish site-to-site VPN connections between datacenters and cloud environments, and implement network segmentation across multiple cloud providers. The solution includes features for full network encryption in-transit, which addresses data protection requirements for organizations handling sensitive information across cloud regions and between different network locations. Cohesive Networks offers function-specific cloud controllers that can be deployed for targeted use cases such as cloud VPN, cloud firewall, cloud NAT, and cloud WAN. The platform also supports network edge plugins for extended functionality. The company provides solutions for various deployment scenarios including multicloud networking, datacenter connectivity, transit network gateway functions, and zero trust networking implementations. The company serves multiple industries including healthcare, finance, insurance, energy, telecommunications, media, government, and service providers. Their approach focuses on providing network security and connectivity tools that work across different cloud platforms without requiring agent-based deployments on individual workloads.