520N-MX PCIe Card with Intel Stratix 10 MX FPGA
PCIe FPGA Card 520N-MX Stratix 10 FPGA Board with 16GB HBM2 Powerful solution for accelerating memory-bound applications Need a Price Quote? Jump to Pricing Form
SNIA defines several components collectively called “computational storage.” For a typical IA-220-U2 deployment, the acceleration tasks are called CSS (computational storage services).
For example, the IA-220-U2’s Agilex FPGA can perform compression much faster than a CPU—even surpassing the transfer rate of the storage system for transparent compression.
CSPs (like the IA-220-U2) work alongside FLASH, providing accelerated computational storage services (CSS) by performing compute, such as compression or encryption. This lets users build out storage using standard SSDs instead of being locked into a single vendor’s FLASH storage.
What features make the IA-220-U2 a powerful CSP?
Built with the latest PCIe Gen4 interface, the IA-220-U2 can transfer up to twice the bandwidth of Gen3 devices.
NoLoad provides FPGA IP and host components. For the FPGA IP, you can see in the diagram the main components. More details are below:
As a complete solution, NoLoad provides host software with a choice of implementation:
The HRG gives you much more detail about the card such as block diagrams, tables and descriptions.
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PCIe FPGA Card 520N-MX Stratix 10 FPGA Board with 16GB HBM2 Powerful solution for accelerating memory-bound applications Need a Price Quote? Jump to Pricing Form
The New IA-220-U2 with PCIe Gen 4 FPGA Computational storage PROCESSOR (CSP) Gen 4 PCIe NVMe Eideticom NoLoad Support BittWare’s IA-220-U2 Accelerates NVMe FLASH SSDs
PCIe FPGA Card XUP-VVH UltraScale+ FPGA PCIe Board with Integrated HBM2 Memory 4x 100GbE Network Ports and VU37P FPGA Need a Price Quote? Jump to
White Paper FPGA Acceleration of Binary Weighted Neural Network Inference One of the features of YOLOv3 is multiple-object recognition in a single image. We used