Supermicro AOC-CTG-I2S

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Compact and Powerful Dual-port 10 Gigabit Ethernet Adapter

AOC-CTG-I2S

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Supermicro AOC-CTG-I2S

The AOC-CTG-i2S 10 Gigabit Ethernet Adapter is the most flexible and scalable Ethernet adapter for today’s demanding data center environments. Based on the Intel® 10GbE network controller 82599ES, the AOC-CTG-i2S addresses the demanding needs of the next-generation data center by providing features for virtualization, flexibility for LAN and SAN networking, and proven reliable performance. The AOC-CTG-i2S is designed in a small microLP form factor to fit Supermicro MicroCloud and Twin server systems.

 

Key Features

Dual SFP+ Connectors Intel® QuickData Technology VMDq, Next-Generation VMDq and PC-SIG SR-IOV for Virtualized Environments Load Balancing on Multiple CPUs iSCSI Remote Boot Support Fibre Channel over Ethernet (FCoE) Support Support for most Network Operating Systems (NOSs) Supports both DAC Twin Axial and LC Fiber-Optic Cables RoHS compliant 6/6 MicroLP Form Factor PCI Express 2.0 (up to 5GT/s)

 

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  • Form Factor

    MicroLP

  • Manufacturer

    Supermicro

  • Network Ports

    2

  • Regulatory

    RoHS

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