处理后摩尔时代工作负载的可扩展系统和硅架构

I. Bolsens
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引用次数: 1

摘要

摩尔定律的终结已经在很多场合被宣布过,我们现在可能会安全地说,我们正处于后摩尔时代。但目前还没有人准备放慢脚步。我们可以把戈登·摩尔对晶体管致密化的观察看作是长期潜在技术趋势的一个方面——库兹韦尔阐述的加速回报定律。可以说,在摩尔时代,公司变得有些自满,乐于满足于每个新流程节点带来的收益。尽管我们可以预期规模会继续扩大,尽管速度会放缓,但摩尔定律的终结为推动其他技术进步趋势提供了更强的动力。一些令人兴奋的新技术正在出现,如多芯片3D集成和新技术的引入,如存储级存储器和硅光子学。此外,我们也正在进入计算机架构创新的黄金时代。正如图灵奖得主John Hennessy和David Patterson所宣称的那样,其中一个关键驱动因素是对特定领域架构的追求。赛灵思的AI引擎就是一个很好的例子,它是Versal的重要功能之一。ACAP (adaptive compute acceleration platform)[1]。如今,人工智能工作负载的爆炸式增长是最强大的驱动因素之一,它将我们的注意力转移到寻找更快的方式来将数据移入、跨出加速器。诸如大规模并行处理元件、特定领域加速器的使用、分布式片上存储器和处理元件之间的密集互连等特性,都是芯片制造商超越扩展以实现下一代性能提升的方法的例子。其次,向外扩展的超大规模数据中心应用程序不断增长的需求推动了许多新架构的开发。考虑到调用大量计算和数据移动的工作负载的高度多样化,数据中心体系结构正在远离严格的以cpu为中心的结构,而是优先考虑适应性和可配置性,以优化分配给单个工作负载的内存和加速器连接等资源。不再有单一的价值标准。这不仅仅是关于Tera-OPS。当需求变得更加实时时,其他指标(如每秒传输数和延迟)也会脱颖而出;自动驾驶汽车就是一个明显而重要的例子。此外,向5G的过渡将产生跨越云和边缘以及嵌入式平台之间传统边界的解决方案,这些解决方案显然具有功耗意识和成本敏感性。未来的工作负载将需要灵活的软件流,以适应跨边缘和云的功能扩展。另一个将推动技术需求的行业大趋势是区块链,尤其是在加密、数据存储和通信方面。对一些人来说,比特币可能已经名声不佳,因为它与加密货币的无政府状态有关,但它的相关性将比我们许多人意识到的更为广泛。当阿帕网作为分布式计算和发送电子邮件的简单平台首次出现时,谁能预见到今天互联网的发展?通过开源的超级账本等项目,区块链技术可以作为在互联网上执行的交易中建立信任的平台,改变游戏规则。我们可能很快就会谈论可信互联网。摩尔定律的可预测性可能已经变得过于安逸和缓慢了。未来需要最大限度地提高新技术的灵活性、敏捷性和效率。随着摩尔定律的逐渐消失,新的可适应和可扩展的架构将使我们能够进一步从技术中获得指数级的回报,从而创造一个更具适应性和智能的世界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable System and Silicon Architectures to Handle the Workloads of the Post-Moore Era
The end of Moore's law has been proclaimed on many occasions and it's probably safe to say that we are now working in the post-Moore era. But no one is ready to slow down just yet. We can view Gordon Moore's observation on transistor densification as just one aspect of a longer-term underlying technological trend - the Law of Accelerating Returns articulated by Kurzweil. Arguably, companies became somewhat complacent in the Moore era, happy to settle for the gains brought by each new process node. Although we can expect scaling to continue, albeit at a slower pace, the end of Moore's Law delivers a stronger incentive to push other trends of technology progress harder. Some exciting new technologies are now emerging such as multi-chip 3D integration and the introduction of new technologies such as storage-class memory and silicon photonics. Moreover, we are also entering a golden age of computer architecture innovation. One of the key drivers is the pursuit of domain-specific architectures as proclaimed by Turing award winners John Hennessy and David Patterson. A good example is the Xilinx's AI Engine, one of the important features of the Versal? ACAP (adaptive compute acceleration platform) [1]. Today, the explosion of AI workloads is one of the most powerful drivers shifting our attention to find faster ways of moving data into, across, and out of accelerators. Features such as massive parallel processing elements, the use of domain specific accelerators, the dense interconnect between distributed on-chip memories and processing elements, are examples of the ways chip makers are looking beyond scaling to achieve next-generation performance gains. Next, the growing demands of scaling-out hyperscale datacenter applications drive much of the new architecture developments. Given a high diversification of workloads that invoke massive compute and data movement, datacenter architectures are moving away from rigid CPU-centric structures and instead prioritize adaptability and configurability to optimize resources such as memory and connectivity of accelerators assigned to individual workloads. There is no longer a single figure of merit. It's not all about Tera-OPS. Other metrics such as transfers-per-second and latency come to the fore as demands become more real-time; autonomous vehicles being an obvious and important example. Moreover, the transition to 5G will result in solutions that operate across the traditional boundaries between the cloud and edge and embedded platforms that are obviously power-conscious and cost-sensitive. Future workloads will require agile software flows that accommodate the spread of functions across edge and cloud. Another industry megatrend that will drive technology requirements especially in encryption, data storage and communication, is Blockchain. To some, it may already have a bad reputation, tarnished by association with the anarchy of cryptocurrency, but it will be more widely relevant than many of us realize. Who could have foreseen the development of today's Internet when ARPANET first appeared as a simple platform for distributed computing and sending email? Through projects such as the open-source Hyperledger, Blockchain technology could be game-changing as a platform for building trust in transactions executed over the Internet. We may soon be talking in terms of the Trusted Internet. The predictability of Moore's law may have become rather too comfortable and slow. The future requires maximizing the flexibility, agility, and efficiency of new technologies. With Moore's Law now mostly behind us, new adaptable and scalable architectures will allow us to further provide exponential return from technology in order to create a more adaptable and intelligent world.
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