Completed
Topics
Army senior tactical leaders often work in austere environments with limited connectivity and incomplete information, and must trust the machine learning and other artificial intelligence ML/AI algorithms that aid in their decision-making. This workshop will explore how to improve the robustness of ML/AI technologies to better enable their successful implementation in Command and Control operations and investigate opportunities for the Army to improve security, reliability, and transparency to foster soldier trust in ML/AI systems.
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Workshop_in_brief
·2023
On September 28-30, 2022, the National Academies of Sciences, Engineering, and Medicine Board on Army Research and Development convened a workshop focused on Artificial Intelligence and Justified Confidence in the Army. The workshop was structured to explore how industry and other branches of the m...
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Description
At the request of the Deputy Assistant Secretary of the Army for Research and Technology (DASA(RT)), the National Academies of Sciences, Engineering, and Medicine, under the Board on Army Research and Development (BOARD), will appoint a workshop planning committee. The planning committee will develop a workshop to explore how to improve the robustness of machine learning and other artificial intelligence (ML/AI) technologies to better enable their successful implementation in Command and Control (C2) operations. Senior tactical leaders (e.g., Battalion Commanders and their staffs) often work in austere environments with limited connectivity and incomplete information, and must trust the ML/AI algorithms that aid in their decision-making. The workshop will investigate opportunities for the Army to improve security, reliability, and transparency to foster soldier trust in ML/AI systems.
Workshop participants will be asked to comment on vulnerabilities and limitations of ML/AI systems and identify opportunities for both materiel (R&D investments) and non-materiel (Doctrine, Organization, Training, and Policy) solutions. The workshop will also explore opportunities to use AI tools in C2, training considerations, limitations and vulnerabilities. The workshop planning committee will organize a workshop consisting of a 2-day unclassified meeting and a 2-day classified meeting centered on the following framing topics:
1. Examples of how industry and other branches of the military have successfully integrated ML/AI tools into a C2 architecture, particularly in a Multi-Domain Operations (MDO) environment.
2. How does the Army define success? How does it measure progress in these areas? What gaps exist in the Army achieving success?
3. What obstacles exist to achieving success and how might the Army overcome them?
A classified proceedings of the presentations and discussions at the workshop will be prepared in accordance with NASEM institutional guidelines. An unclassified summary of the classified workshop will be prepared consistent with security review.
Contributors
Committee
Co-Chair
Co-Chair
Member
Member
Member
Member
Member
Member
Member
Nia D. Johnson
Staff Officer
Sponsors
Department of Defense
Staff
Nia D. Johnson
Lead
Travon James
Major units and sub-units
Division on Engineering and Physical Sciences
Lead
Center for Advancing Science and Technology
Lead
Computer Science and Telecommunications Board
Lead
Board on Army Research and Development
Lead
Physical Sciences, Systems, and Infrastructure Program Area
Lead
Computing Research, Technologies, and Systems Program Area
Lead