FPGA Acceleration of Convolutional Neural Networks (CNNs)
White Paper FPGA Acceleration of Convolutional Neural Networks Overview Convolutional Neural Networks (CNNs) have been shown to be extremely effective at complex image recognition problems.
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Directions: Take I-93 to Concord, New Hampshire and take Exit 13 towards downtown. Our building has a Gibson’s bookstore on the ground level, with the elevator lobby toward the north end of the building. Click here for a Google Maps link to the building.
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White Paper FPGA Acceleration of Convolutional Neural Networks Overview Convolutional Neural Networks (CNNs) have been shown to be extremely effective at complex image recognition problems.
Explore using oneAPI with our 2D FFT demo on the 520N-MX card featuring HBM2. Be sure to request the code download at the bottom of the page!
IA-860m Massive Memory Bandwidth Next-Gen PCIe 5.0 + CXL M-Series Agilex Featuring HBM2e The Intel Agilex M-Series FPGAs are optimized for applications that are throughput-
White Paper FPGA-Accelerated NVMe Storage Solutions Using the BittWare 250 series accelerators Overview In recent years, the migration towards NAND flash-based storage and the introduction