XC6VLX365T-3F...

  • 2022-09-24 14:42:51

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On the other hand, AMD and Xilinx have been working closely together for a long time. A series of storage system-oriented IPs such as NVMe HA, NVMe TC and Embedded RDMA previously provided for AMD EPYC (Xiaolong) data center processors can help AMD build low latency The high-efficiency data path, thus realizing the efficient storage acceleration function of FPGA. In fact, a similar plot was staged as early as 2015, when Intel (Intel) acquired FPGA manufacturer Altera for $16.7 billion, and Altera also followed the trend for Intel's follow-up "CPU+xPU (GPU+FPGA+ASIC+ eASIC)” strategy provides the most solid foundation.

In particular, the Ryzen and Xiaolong processors have achieved fruitful results from notebooks to desktops to data centers. "AMD Yes" is the biggest comment by netizens on AMD's gradual entry into a high-profile moment. Since October 2014, Su Zifeng has been promoted to president and CEO. Su Zifeng, who has a strong and friendly style, is also affectionately called by fans. "Mom Su". In terms of graphics cards, it has also fought with NVIDIA, and has won the favor of Sony, Microsoft consoles and Samsung mobile phones.

XC6VLX365T-3FF11759C_XC4VLX25-10SF363C

XC6VLX195T-L1FFG784I

Plus case (uppercase/lowercase/full small/small case), italic (Italian/Roman), scale (horizontal scale), weight, specified size (display/text), squiggly, serif (Generally divided into serifs and sans-serifs), this number can scale to millions, making text recognition an exciting professional discipline in the field of machine learning. As human language writing forms have evolved, thousands of unique character systems have developed. .

A variety of power-driven design techniques are used in the design of FPGAs. Taking the Xilinx Virtex series as an example, because the configuration memory cells can occupy 1/3 of the number of transistors in the FPGA, a low leakage current "midox" transistor is used in this series to reduce the leakage current of the memory cells. The power consumption of the multipliers in the DSP block is less than 20% of the power consumption of the multipliers built in the FPGA fabric. Given the wide range of leakage current distributions that can result from manufacturing variations, low leakage current devices can be screened to effectively provide devices with core leakage power consumption below 60%. The dynamic power problem is solved with low-capacitance circuits and custom modules. To reduce static power dissipation, longer-channel and higher-threshold transistors are also used across the board.

Image pre-processing/post-processing is implemented by Vivado using HLS, while Vitis's role is to perform inference using Connected Text Proposal Network (CTPN). It runs on the processing side (PS) using the N2Cube software. Ultimately, Softnautics uses the solution for real-time scene text detection in video pipelines and uses a robust dataset to refine the model. Softnautics took the Xilinx Vitis AI stack and used the software to provide acceleration to develop hybrid applications while implementing LSTM functionality for efficient sequence prediction by porting/migrating TensorFlow-lite to ARM.

For example, an image may need to be decompressed and scaled to meet the data input requirements of an AI model. Similar to AI inference implementations, non-AI preprocessing and postprocessing functions begin to require some form of acceleration. There is also a third challenge, and this is a lesser known one, which arises because AI inference cannot be deployed on its own. True AI deployments often require non-AI processing, either before or after AI capabilities. These traditional processing functions must run at the same throughput as the AI functions, with the same high performance and low power consumption.

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XC6VLX365T-3FF11759C_XC4VLX25-10SF363C

The company's dominant brands: XILINX, ALTERA, SAMSUNG, MICRON, HYNIX, NANYA, ISSI, INTEL, TI, MAXIM, ADI, POWER, DAVICOM, PLX, CYPRESS, MARVELL, AOS, ON, ST, NXP, IR, FREESCALE, NS, AVAGO, TOSHIBA, DIODES, RENESAS, ATMEL, etc...predominant brands. Introduction to Xilinx Agent After more than ten years of unremitting efforts, Aerospace Military Semiconductor Co., Ltd. has established good business relations with many well-known IC manufacturers and agents and OEMs in the United States, Britain, Germany, Japan, South Korea, and China. , Acting for the distribution of many well-known brand IC products in the world and domestic, customers all over the world.

As the current chip manufacturing process becomes more and more complex, the chip design becomes more and more complex, the cost of chip designers soars, and the risk of chip streaming is further increased. The need to reduce chip cost, reduce chip risk and shorten time to market will further surge.