Accolade introduced the ANIC-40Ku, a quad 10GbE application acceleration network adapter/NIC.
The ANIC-40Ku leverages Xilinx’s State of Art Ultrascale technology to offer scalable application acceleration feature sets within a cost-optimized FPGA platform all delivered within a low power budget. The ANIC-40Ku enables OEM customers to focus on software innovation that maximizes product differentiation and accelerates time-to-market in network monitoring and security solutions.
Key Benefits of the ANIC-40Ku:
- Offers advanced feature sets: flow classification, flow tracking, advanced transmit.
- Sets a new standard for value per 10GbE port.
- Xilinx UltraScale technology enables the ANIC-40Ku to satisfy the most stringent appliance power budgets.
- Increased FPGA gate capacity, optimum routing enables lower latency, next generation packet processing features.
- Unique, high-performance Flow Table RAM design enables handling of 16 million flows and very granular packet filtering.
“Due to the proliferation of complex, ever evolving network monitoring and cyber security threats our OEM customers are demanding the most advanced packet capture and acceleration feature sets,” said Robbie Dhillon, CEO of Accolade Technology. “The ANIC-40Ku satisfies our customer’s needs by delivering breakthrough mission critical features such as flow classification, a fast look-up table all in an optimum low-power package.”
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