Recent advances in artificial intelligence have demonstrated that the future of work will be defined by collaborative human-machine teams. In order to be effective, human-machine teams will rely on context-aware systems to enable collaboration. In this paper, we present three lessons learned from the past five years of developing context-aware systems that we believe will improve future system design. First, that semantic activity must captured, modeled, and analyzed to enable reasoning across missions, actors, and content. Second, that context-aware systems require multiple, federated data stores to optimize system and team performance. Finally, that real-time inter-actor communications are the essential feature enabling adaptation. We close with a discussion of the influences and implications that these lessons have on human-machine teaming, and outline future research activities that will be necessary before operationalizing these systems.
CITATION STYLE
Mullins, R., Fouse, A., Ganberg, G., & Schurr, N. (2020). Practice makes perfect: Lesson learned from five years of trial and error building context-aware systems. In Proceedings of the Annual Hawaii International Conference on System Sciences (Vol. 2020-January, pp. 279–288). IEEE Computer Society. https://doi.org/10.24251/hicss.2020.035
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