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Acquiring Artificial Intelligence Systems: Development Challenges, Implementation Risks, and Cost/Benefits Opportunities

机译:获取人工智能系统:发展挑战,实施风险和成本/利益机会

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摘要

The acquisition of artificial intelligence (AI) systems is a relatively new challenge for the US. Department of Defense (DoD). Given the potential for high-risk failures of AI system acquisitions, it is critical for the acquisition community to examine new analytical and decision-making approaches to managing the acquisition of these systems in addition to the existing approaches (e.g., Earned Value Management, or EVM). Also, many of these systems reside in small start-up or relatively immature system development companies, further clouding the acquisition process due to their unique business processes when compared to the large defense contractors. This can lead to limited access to data, information, and processes that are required in the standard DoD acquisition approach (i.e., the 5000 series). The well-known recurring problems in acquiring information technology automation within the DoD will likely be exacerbated in acquiring complex and risky AI systems. Therefore, more robust, agile, and analytically driven acquisition methodologies will be required to help avoid costly disasters in acquiring these kinds of systems. This research identifies, reviews, and proposes advanced quantitative, analytically based methods within the integrated risk management (IRM) and knowledge value added (KVA) methodologies to complement the current EVM approach.
机译:收购人工智能(AI)系统对美国具有相对较新的挑战。国防部(国防部)。鉴于AI系统收购的高风险失败的潜力,除了现有方法外,收购界还对收购界进行了管理收购这些系统的新分析和决策方法(例如,赚取的价值管理,或EVM)。此外,许多这些系统驻留在小型启动或相对未成熟的系统开发公司中,与大型国防承包商相比,由于其独特的业务流程,进一步覆盖了收购过程。这可能导致在标准DOD获取方法(即5000系列)中所需的数据,信息和过程有限。在国防部内获取信息技术自动化的众所周知的重复问题可能会加剧获取复杂和风险的AI系统。因此,需要更强大,敏捷和分析驱动的采集方法,以帮助避免昂贵的灾害来获取这些系统。本研究标识了,并提出了在综合风险管理(IRM)和知识值内的高级定量,分析的方法,添加(KVA)方法,以补充当前的EVM方法。

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  • 来源
    《Naval engineers journal》 |2020年第2期|79-94|共16页
  • 作者单位

    Naval Postgrad Sch Monterey CA 93943 USA|Univ Appl Sci Luzern Switzerland|Univ Appl Sci Berlin Germany|Golden Gate Univ San Francisco CA USA|St Marys Coll Moraga CA 94575 USA|Amer Acad Financial Management Washington DC USA|Real Opt Valuat Inc Dublin CA USA|Crystal Ball Decisioneering Inc Washington DC USA|KPMG LLP Econ Consulting Serv Practice Amstelveen Netherlands;

    Naval Postgrad Sch Informat Sci Syst Dept Monterey CA USA|Univ Southern Calif Marshall Sch Business Los Angeles CA 90089 USA;

    Naval Postgrad Sch Grad Sch Def Management Monterey CA USA|Joint Tact Radio Syst JTRS Washington DC USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
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