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2022-09-24 14:42:51
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XCS30XL-4PQ144C_XQ2V1000-4FG456N Introduction
AMD's stock price has risen 89% this year, and its current market value exceeds $100 billion, thanks to the new crown epidemic working from home to increase market demand for PCs, game consoles and other devices that use AMD chips. Xilinx, which has a market value of about $26 billion, has gained about 9 percent this year, slightly ahead of the S&P 500's 7 percent gain. .
Advanced Micro Devices (AMD) is in advanced talks to buy chipmaker Xilinx in a deal that could be worth more than $30 billion. . The deal could be finalized as soon as next week, people familiar with the matter said.
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Judging from the official comparison data, the new generation of Ryzen 5000 series processors is much stronger than the tenth-generation products of competitors: Ryzen 9 5900X is 13% higher than i9-10900K in single thread and 23% higher in multi-thread. %, 3% better gaming performance at 1080p. Compared with the i7-10700K, the Ryzen 7 5800X is 9% higher in single thread, 11% higher in multi-thread, and the 1080p game performance is the same. Compared with the i5-10600K, the Ryzen 5 5600X is 19% higher in single thread, 20% higher in multi-threading, and 13% higher in 1080p gaming performance. Among them, the Ryzen 9 5900X processor has been praised by AMD as "the best gaming CPU in the world" - this title has always been in the hands of Intel. The brand new architecture, the strongest game processor should come, and so on, the party has not waited in vain.
According to the report data released by IC Insights, a third-party analysis agency on September 29, the total value of global semiconductor mergers and acquisitions soared to US$63.1 billion in the first nine months of 2020, of which the two transactions of Nvidia-Arm and ADI-Maxim accounted for about 97% of total M&A in 2020. These two transactions have made the global semiconductor landscape go through a new round of mergers and acquisitions and reshuffles. If AMD reaches an acquisition agreement with Xilinx, the value of semiconductor M&A transactions in 2020 may also rise to $93.1 billion, making it the third largest merger and acquisition year in the history of the semiconductor industry. In the first quarter of this year, the value of semiconductor M&A transactions was $1.8 billion, and it only reached $165 million in the second quarter. In fact, 2020 was supposed to be a sluggish year for mergers and acquisitions in the semiconductor market, affected by the new crown epidemic and Sino-US relations. However, in the third quarter, the demand for the semiconductor market has recovered significantly, and the cost expenditure has increased, and a new wave of mergers and acquisitions has emerged.
Xilinx will provide a C++ framework to create Graphs from the kernel. In order to fully grasp the kernel location, there will be a series of methods available to constrain the layout (kernels, caches, system memory, etc.). This frame contains Graph nodes and connection declarations. The Graph will instantiate and wire the kernels together using caches and data streams. These nodes can be contained within an AI engine array or within programmable logic (HLS cores). It will also describe the bidirectional data transfer between the AI engine array and other ACAP devices (PL or DDR).
AI Engine Array Programming AI Engine tiles are arrayed in units of 10 or 100. Creating a single program that embeds multiple instructions to specify parallelism would be a tedious and near-impossible task. So the commonality between AI engine array model programming and Kahn Process Networks is that autonomous computing processes are interconnected with each other through the communication edge, resulting in a processing network.
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Intel's 10nm is still delayed, allowing Xilinx to dominate the FPGA market after acquiring Altera, in addition to the cloud market that Intel is focusing on. However, at 7nm, FPGA speed and density are greatly increased, and power consumption is also lower, so this competitive landscape may change, especially for ASICs and FPGAs. Especially in the era of artificial intelligence, Xilinx also hopes to realize the future of Intel and Nvidia through this advantage. The introduction of ACAP will help Xilinx compete with higher-level competitors in new markets. Split the SoC prototyping and emulation market. Apparently this applies to Intel and Nvidia. Flexibility and adaptability are the main selling points of ACAP. The competition between FPGAs and ASICs will continue.
In openCV, the CvMat and IplImage types are more focused on "images", especially with a certain degree of optimization for image operations in them. However, CvMat is more abstract, and its element data types are not limited to basic data types, but can be any predefined data types, such as RGB or other multi-channel data. OpenCV does not have a data structure for vectors, but when we want to represent vectors, we need to represent them with matrix data.
