基于网络的生物计算路线图

IF 2.5 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
F. van Delft, A. Månsson, H. Kugler, T. Korten, C. Reuther, Jingyuan Zhu, R. Lyttleton, T. Blaudeck, C. Meinecke, Danny Reuter, S. Diez, H. Linke
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引用次数: 6

摘要

基于网络的生物计算(NBC)是一种替代的并行计算方法,它可以以比电子处理器低得多的能耗解决技术上重要的组合问题。在NBC中,一个组合问题被编码到一个物理的、纳米制造的网络中。生物制剂(如分子马达驱动的细胞骨架丝)以大规模并行和高效能的方式探索通过网络的所有可能途径,从而解决了这个问题。尽管目前NBC在原理验证实验中可以解决的问题的规模和类型都有了快速发展,但在扩大NBC的规模以填补技术空白并达到制造业的工业水平之前,仍需要克服重大挑战。在这里,我们提供了一个确定关键科学和技术需求的路线图。具体而言,我们确定了需要达到或克服的技术基准,以及如何实现这一目标的可能解决方案。其中包括大规模生产纳米级物理网络的方法、动态改变这些网络中的路径的方法、将信息编码到生物制剂上的方法、单分子读出技术的方法,以及将这些方法中的每一种集成到大规模生产中的方法。我们还介绍了有助于分析各种类型的NBC网络的可扩展性的优缺点,并使用这些优缺点来评估NBC的主要技术影响场景。NBC的一个重要里程碑将是将并行化提高到能够超越当前电子处理器运行时间的水平。如果能够实现这一点,NBC将在能耗降低几个数量级方面提供巨大优势。此外,与传统电子计算机相比,NBC的架构有着根本的不同,这可能使使用NBC来解决某些类型的问题和易于并行化的实例变得更加有利。为了实现这些目标,本路线图的目的是确定竞争前的研究领域,实现行业、研究所和大学之间的合作,以共享研发工作,降低开发成本和时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Roadmap for network-based biocomputation
Network-based biocomputation (NBC) is an alternative, parallel computation approach that can potentially solve technologically important, combinatorial problems with much lower energy consumption than electronic processors. In NBC, a combinatorial problem is encoded into a physical, nanofabricated network. The problem is solved by biological agents (such as cytoskeletal filaments driven by molecular motors) that explore all possible pathways through the network in a massively parallel and highly energy-efficient manner. Whereas there is currently a rapid development in the size and types of problems that can be solved by NBC in proof-of-principle experiments, significant challenges still need to be overcome before NBC can be scaled up to fill a technological niche and reach an industrial level of manufacturing. Here, we provide a roadmap that identifies key scientific and technological needs. Specifically, we identify technology benchmarks that need to be reached or overcome, as well as possible solutions for how to achieve this. These include methods for large-scale production of nanoscale physical networks, for dynamically changing pathways in these networks, for encoding information onto biological agents, for single-molecule readout technology, as well as the integration of each of these approaches in large-scale production. We also introduce figures of merit that help analyze the scalability of various types of NBC networks and we use these to evaluate scenarios for major technological impact of NBC. A major milestone for NBC will be to increase parallelization to a point where the technology is able to outperform the current run time of electronic processors. If this can be achieved, NBC would offer a drastic advantage in terms of orders of magnitude lower energy consumption. In addition, the fundamentally different architecture of NBC compared to conventional electronic computers may make it more advantageous to use NBC to solve certain types of problems and instances that are easy to parallelize. To achieve these objectives, the purpose of this roadmap is to identify pre-competitive research domains, enabling cooperation between industry, institutes, and universities for sharing research and development efforts and reducing development cost and time.
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来源期刊
Nano Futures
Nano Futures Chemistry-General Chemistry
CiteScore
4.30
自引率
0.00%
发文量
35
期刊介绍: Nano Futures mission is to reflect the diverse and multidisciplinary field of nanoscience and nanotechnology that now brings together researchers from across physics, chemistry, biomedicine, materials science, engineering and industry.
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