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Harnessing AI is a useful way to advance modernization goals, but AI governance—including ethical considerations, data security, and compliance with federal regulations—must remain a top priority. And increased AI implementation demand that organizations rethink how they staff, develop, and run their day-to-day operations. .”
Perhaps surprisingly, the biggest developments do not concern the regulation of AI under the devolved model described in the ‘pro-innovation’ whitepaper, but its displacement outside existing regulatory regimes—both in terms of funding, and practical power. Twitter announcements vs whitepaper? Comments welcome!
To do so successfully, leaders in critical sectors like healthcare, finance, and federal government must develop ethical policies for using data securely in AI. CART (communication access realtime translation) provides instant accessibility for all participants by delivering the spoken word as a realtime stream of text.
To do so successfully, leaders in critical sectors like healthcare, finance, and federal government must develop ethical policies for using data securely in AI. CART (communication access realtime translation) provides instant accessibility for all participants by delivering the spoken word as a realtime stream of text.
Participants expressed a range of views as to which risks should be prioritised, noting that addressing frontier risks is not mutually exclusive from addressing existing AI risks and harms.’ Multiple participants suggested that existing voluntary commitments would need to be put on a legal or regulatory footing in due course.
Swimming against the tide, and seeking to diverge from the EU’s regulatory agenda and the EU AI Act , the UK announced a light-touch ‘pro-innovation approach’ in its July 2022 AI regulation policy paper. What is the place and role of the Office for AI and the Centre for Data Ethics and Innovation in all this?
We look forward to your participation! This opportunity allows industry to submit whitepapers at any time that are aligned with one of the DPA’s areas of focus, including sustaining critical production, commercializing research and development investments, and scaling emerging technologies.
CART (communication access realtime translation) provides instant accessibility for all participants by delivering the spoken word as a realtime stream of text. Certificates will be e-mailed to registrants. In accordance with the standards of the National Registry of CPE Sponsors, 50 minutes equals 1 CPE. Live Captioning CART What is CART?
They emphasized a strategic, ethical, and well-managed approach to AI deployment in federal agencies. For FedInsider, he has written many articles and whitepapers and acted as the moderator for over 20 interviews featuring federal, state and local officials discussing technology, policy and governmental issues.
Luke Keller, Chief Innovation Officer at US Census bureau, highlighted using NIST guidelines, including bias reduction frameworks, to ensure ethical and accurate AI deployment. Risk Mitigation: Risks vary by application. High-quality, diverse datasets are essential. Use Cases: Start small with proofs of concept to test limitations and risks.
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