Xilinx claims it provides the fastest path to realize 40x better compute efficiency with Xilinx FPGAs compared to x86 server CPUs and up to six times the compute efficiency over competitive FPGAs.
Using dynamic reconfiguration, Xilinx enables silicon optimization for the broadest set of performance-demanding workloads including machine learning, data analytics, and video transcoding.
These workload optimizations can be done in milliseconds by swapping in the most optimal design bitstream.
Today Xilinx FPGAs enable hyperscale data centers to achieve 2-6x the compute efficiency in machine learning inference because DSP architectural advantages for limited precision data types, superior on-chip memory resources, and greater than one year technology lead over FPGA competition.
The Xilinx Reconfigurable Acceleration Stack includes math libraries designed for cloud computing workloads, application libraries integrated with major frameworks, such as Caffe for machine learning, a PCIe-based development board and reference design for high density servers, and an OpenStack support package making Xilinx FPGA-based accelerators easy to provision and manage.