Dataset Identification:
Resource Abstract:
- Executive Summary: Artificial intelligence (AI) is a transformative technology that holds promise for tremendous societal
and economic benefit. AI has the potential to revolutionize how we live, work, learn, discover, and communicate. AI research
can further our national priorities, including increased economic prosperity, improved educational opportunities and quality
of life, and enhanced national and homeland security. Because of these potential benefits, the U.S. government has invested
in AI research for many years. Yet, as with any significant technology in which the Federal government has interest, there
are not only tremendous opportunities but also a number of considerations that must be taken into account in guiding the overall
direction of Federally-funded R&D in AI. On May 3, 2016,the Administration announced the formation of a new NSTC Subcommittee
on Machine Learning and Artificial intelligence, to help coordinate Federal activity in AI.1 This Subcommittee, on June 15,
2016, directed the Subcommittee on Networking and Information Technology Research and Development (NITRD) to create a National
Artificial Intelligence Research and Development Strategic Plan. A NITRD Task Force on Artificial Intelligence was then formed
to define the Federal strategic priorities for AI R&D, with particular attention on areas that industry is unlikely to address.
This National Artificial Intelligence R&D Strategic Plan establishes a set of objectives for Federallyfunded AI research,
both research occurring within the government as well as Federally-funded research occurring outside of government, such as
in academia. The ultimate goal of this research is to produce new AI knowledge and technologies that provide a range of positive
benefits to society, while minimizing the negative impacts. To achieve this goal, this AI R&D Strategic Plan identifies the
following priorities for Federally-funded AI research: Strategy 1: Make long-term investments in AI research. Prioritize investments
in the next generation of AI that will drive discovery and insight and enable the United States to remain a world leader in
AI. Strategy 2: Develop effective methods for human-AI collaboration. Rather than replace humans, most AI systems will collaborate
with humans to achieve optimal performance. Research is needed to create effective interactions between humans and AI systems.
Strategy 3: Understand and address the ethical, legal, and societal implications of AI. We expect AI technologies to behave
according to the formal and informal norms to which we hold our fellow humans. Research is needed to understand the ethical,
legal, and social implications of AI, and to develop methods for designing AI systems that align with ethical, legal, and
societal goals. Strategy 4: Ensure the safety and security of AI systems. Before AI systems are in widespread use, assurance
is needed that the systems will operate safely and securely, in a controlled, well-defined, and well-understood manner. Further
progress in research is needed to address this challenge of creating AI systems that are reliable, dependable, and trustworthy.
Strategy 5: Develop shared public datasets and environments for AI training and testing. The depth, quality, and accuracy
of training datasets and resources significantly affect AI performance. Researchers need to develop high quality datasets
and environments and enable responsible access to high-quality datasets as well as to testing and training resources. Strategy
6: Measure and evaluate AI technologies through standards and benchmarks. . Essential to advancements in AI are standards,
benchmarks, testbeds, and community engagement that guide and evaluate progress in AI. Additional research is needed to develop
a broad spectrum of evaluative techniques. Strategy 7: Better understand the national AI R&D workforce needs. Advances in
AI will require a strong community of AI researchers. An improved understanding of current and future R&D workforce demands
in AI is needed to help ensure that sufficient AI experts are available to address the strategic R&D areas outlined in this
plan. The AI R&D Strategic Plan closes with two recommendations: Recommendation 1: Develop an AI R&D implementation framework
to identify S&T opportunities and support effective coordination of AI R&D investments, consistent with Strategies 1-6 of
this plan. Recommendation 2: Study the national landscape for creating and sustaining a healthy AI R&D workforce, consistent
with Strategy 7 of this plan.
Citation
- Title The National Artificial Intelligence Research And Development Strategic Plan
-
- revision Date
2016-07-01
Theme keywords (theme):
NITRD Program
national
artificial intelligence
strategic
plan
research
development
NITRD
Resource language:
[u'en-US']
Constraints on resource usage:
-
- Constraints
-
- Use limitation statement:
- public
point of contact
-
publisher
- individual Name {u'hasEmail': u'mailto:biegel@nitrd.gov', u'@type': u'vcard:Contact', u'fn': u'Bryan Biegel'}
- organisation Name
{u'@type': u'org:Organization', u'name': u'NCO NITRD'}
-
- Contact information
-
-
- Address
-
- electronic Mail Address
Back to top:
Metadata data stamp:
2016-07-01
Metadata contact
-
publisher
Metadata scope code
dataset
Metadata standard for this record:
ISO 19115:2003 - Geographic information - Metadata
standard version:
ISO 19115:2003
Metadata record identifier:
000-000-066
Metadata record format is ISO19139 XML (MD_Metadata)