National Academies Press: OpenBook
« Previous: Appendix B: Workshop Agenda
Suggested Citation:"Appendix C: Workshop Statement of Task." National Academies of Sciences, Engineering, and Medicine. 2017. Challenges in Machine Generation of Analytic Products from Multi-Source Data: Proceedings of a Workshop. Washington, DC: The National Academies Press. doi: 10.17226/24900.
×

C

Workshop Statement of Task

The objective of this effort is to provide insights from world-class experts and technologists familiar with the extensive range of issues associated with the application of artificial intelligence to the Intelligence Community (IC) analytic tradecraft. Existing and emerging capabilities, technical implications, cultural, regulatory, policy, and legal issues are all of interest. This effort will require arranging and running a two-day workshop involving a wide range of technical disciplines in industry, academia, and government to investigate issues around the application of artificial intelligence techniques to IC analytic tradecraft. This unclassified workshop will address the following research challenges: (1) Machine-based methods for generating analytic products, and (2) Machine-based methods for automating the evaluation of analytic products. The workshop will explore the state-of-the-art and security implications of existing and emerging technologies pertinent to these topics. A workshop proceedings will be delivered after the workshop. The following tasks are anticipated:

Task 1: Form an ad hoc planning committee of experts to be approved by the leadership of the National Academies. The committee will include world-class experts and technologists familiar with the broad range of issues germane to the application of artificial intelligence techniques to IC analytic tradecraft. When developing the agenda for the workshop, the committee will consider the following research questions:

  • What are the technical objectives and metrics needed for success?
  • What are the primary issues?
  • What are the current and “next level” key performance metrics? What is the “level after next” of expected research and development performance?
  • What is the research knowledge base?
  • How can the government best prepare the scientific workforce to enhance discovery in this area?

Task 2: Arrange and execute a workshop of at least two days duration. This includes securing a venue, organizing and managing the workshop, and providing adequate facilitators and note takers to ensure that prepared materials and insights from the workshop are saved.

Task 3: Prepare a workshop proceedings, including presenters’ materials, that records the experts’ key arguments, information, and insights presented during the course of the workshop. The final reviewed draft proceedings will undergo sponsor security review before posting or otherwise publishing in whole or in part.

Suggested Citation:"Appendix C: Workshop Statement of Task." National Academies of Sciences, Engineering, and Medicine. 2017. Challenges in Machine Generation of Analytic Products from Multi-Source Data: Proceedings of a Workshop. Washington, DC: The National Academies Press. doi: 10.17226/24900.
×
Page 52
Next: Appendix D: Capability Technology Tables »
Challenges in Machine Generation of Analytic Products from Multi-Source Data: Proceedings of a Workshop Get This Book
×
 Challenges in Machine Generation of Analytic Products from Multi-Source Data: Proceedings of a Workshop
Buy Paperback | $55.00 Buy Ebook | $44.99
MyNAP members save 10% online.
Login or Register to save!
Download Free PDF

The Intelligence Community Studies Board of the National Academies of Sciences, Engineering, and Medicine convened a workshop on August 9-10, 2017 to examine challenges in machine generation of analytic products from multi-source data. Workshop speakers and participants discussed research challenges related to machine-based methods for generating analytic products and for automating the evaluation of these products, with special attention to learning from small data, using multi-source data, adversarial learning, and understanding the human-machine relationship. This publication summarizes the presentations and discussions from the workshop.

READ FREE ONLINE

  1. ×

    Welcome to OpenBook!

    You're looking at OpenBook, NAP.edu's online reading room since 1999. Based on feedback from you, our users, we've made some improvements that make it easier than ever to read thousands of publications on our website.

    Do you want to take a quick tour of the OpenBook's features?

    No Thanks Take a Tour »
  2. ×

    Show this book's table of contents, where you can jump to any chapter by name.

    « Back Next »
  3. ×

    ...or use these buttons to go back to the previous chapter or skip to the next one.

    « Back Next »
  4. ×

    Jump up to the previous page or down to the next one. Also, you can type in a page number and press Enter to go directly to that page in the book.

    « Back Next »
  5. ×

    Switch between the Original Pages, where you can read the report as it appeared in print, and Text Pages for the web version, where you can highlight and search the text.

    « Back Next »
  6. ×

    To search the entire text of this book, type in your search term here and press Enter.

    « Back Next »
  7. ×

    Share a link to this book page on your preferred social network or via email.

    « Back Next »
  8. ×

    View our suggested citation for this chapter.

    « Back Next »
  9. ×

    Ready to take your reading offline? Click here to buy this book in print or download it as a free PDF, if available.

    « Back Next »
Stay Connected!