{"title":"hmOS:面向任务的人机计算可扩展平台","authors":"Hui Wang;Zhiwen Yu;Yao Zhang;Yanfei Wang;Fan Yang;Liang Wang;Jiaqi Liu;Bin Guo","doi":"10.1109/THMS.2024.3414432","DOIUrl":null,"url":null,"abstract":"With rapid advancements in artificial intelligence (AI) technologies, AI-powered machines are increasingly capable of collaborating with humans to enhance decision-making in various human–machine collaboration scenarios, e.g., medical diagnosis, criminal justice, and autonomous driving. As a result, human–machine computing (HMC) has emerged as a promising computing paradigm that integrates the expertise of humans with the reliable data processing capabilities of machines. Using HMC to facilitate the processing of domain-specific tasks has a lot of potential, but is limited in system-level scalability, i.e., there is no one common easy-to-use interface. In this article, we present human-machine operating system \n<monospace>(hmOS)</monospace>\n, an open extensible platform for researchers to experiment with HMC for investigating system-centric human–machine collaboration problems. \n<monospace>hmOS</monospace>\n supports flexible human–machine collaboration on the strength of the quality-aware task decomposition and allocation. To achieve that, the underlying system architecture and runtime environment are first developed to build a foundational abstraction for the kernel of \n<monospace>hmOS</monospace>\n. Second, \n<monospace>hmOS</monospace>\n facilitates flexible human–machine collaboration through a suitability-based task allocation mechanism, quality estimation guided by fuzzy rules, and iterative feedback on result tuning. We implement the newly proposed \n<monospace>hmOS</monospace>\n in a prototype featuring interactive interfaces. Finally, we conduct extensive and realistic experiments to validate the effectiveness of our platform across diverse tasks, showcasing the broad feasibility of \n<monospace>hmOS</monospace>\n.","PeriodicalId":48916,"journal":{"name":"IEEE Transactions on Human-Machine Systems","volume":null,"pages":null},"PeriodicalIF":3.5000,"publicationDate":"2024-07-02","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"hmOS: An Extensible Platform for Task-Oriented Human–Machine Computing\",\"authors\":\"Hui Wang;Zhiwen Yu;Yao Zhang;Yanfei Wang;Fan Yang;Liang Wang;Jiaqi Liu;Bin Guo\",\"doi\":\"10.1109/THMS.2024.3414432\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"With rapid advancements in artificial intelligence (AI) technologies, AI-powered machines are increasingly capable of collaborating with humans to enhance decision-making in various human–machine collaboration scenarios, e.g., medical diagnosis, criminal justice, and autonomous driving. As a result, human–machine computing (HMC) has emerged as a promising computing paradigm that integrates the expertise of humans with the reliable data processing capabilities of machines. Using HMC to facilitate the processing of domain-specific tasks has a lot of potential, but is limited in system-level scalability, i.e., there is no one common easy-to-use interface. In this article, we present human-machine operating system \\n<monospace>(hmOS)</monospace>\\n, an open extensible platform for researchers to experiment with HMC for investigating system-centric human–machine collaboration problems. \\n<monospace>hmOS</monospace>\\n supports flexible human–machine collaboration on the strength of the quality-aware task decomposition and allocation. To achieve that, the underlying system architecture and runtime environment are first developed to build a foundational abstraction for the kernel of \\n<monospace>hmOS</monospace>\\n. Second, \\n<monospace>hmOS</monospace>\\n facilitates flexible human–machine collaboration through a suitability-based task allocation mechanism, quality estimation guided by fuzzy rules, and iterative feedback on result tuning. We implement the newly proposed \\n<monospace>hmOS</monospace>\\n in a prototype featuring interactive interfaces. 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hmOS: An Extensible Platform for Task-Oriented Human–Machine Computing
With rapid advancements in artificial intelligence (AI) technologies, AI-powered machines are increasingly capable of collaborating with humans to enhance decision-making in various human–machine collaboration scenarios, e.g., medical diagnosis, criminal justice, and autonomous driving. As a result, human–machine computing (HMC) has emerged as a promising computing paradigm that integrates the expertise of humans with the reliable data processing capabilities of machines. Using HMC to facilitate the processing of domain-specific tasks has a lot of potential, but is limited in system-level scalability, i.e., there is no one common easy-to-use interface. In this article, we present human-machine operating system
(hmOS)
, an open extensible platform for researchers to experiment with HMC for investigating system-centric human–machine collaboration problems.
hmOS
supports flexible human–machine collaboration on the strength of the quality-aware task decomposition and allocation. To achieve that, the underlying system architecture and runtime environment are first developed to build a foundational abstraction for the kernel of
hmOS
. Second,
hmOS
facilitates flexible human–machine collaboration through a suitability-based task allocation mechanism, quality estimation guided by fuzzy rules, and iterative feedback on result tuning. We implement the newly proposed
hmOS
in a prototype featuring interactive interfaces. Finally, we conduct extensive and realistic experiments to validate the effectiveness of our platform across diverse tasks, showcasing the broad feasibility of
hmOS
.
期刊介绍:
The scope of the IEEE Transactions on Human-Machine Systems includes the fields of human machine systems. It covers human systems and human organizational interactions including cognitive ergonomics, system test and evaluation, and human information processing concerns in systems and organizations.