Showing 1 - 12 results of 12 for search '"Partnership on AI"', query time: 0.32s Refine Results
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    Corporate Governance of Artificial Intelligence in the Public Interest by Peter Cihon, Jonas Schuett, Seth D. Baum

    Published 2021-07-01
    “…Department of Defense Project Maven; the publication of potentially harmful AI research by OpenAI, with input from the Partnership on AI; and the sale of facial recognition technology to law enforcement by corporations including Amazon, IBM, and Microsoft. …”
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    Benchmarking, ethical alignment, and evaluation framework for conversational AI: Advancing responsible development of ChatGPT by Partha Pratim Ray

    Published 2023-09-01
    “…This paper also scrutinizes the existing standards set by OpenAI, IEEE’s Ethically Aligned Design, the Montreal Declaration, and Partnership on AI’s Tenets, investigating their relevance to ChatGPT. …”
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    Algorithmically-driven writing and academic integrity: exploring educators' practices, perceptions, and policies in AI era by Leah Gustilo, Ethel Ong, Minie Rose Lapinid

    Published 2024-03-01
    “…However, AI in education, particularly ADWTs, demands critical awareness of ethical protocols and entails collaboration and empowerment of all stakeholders by introducing innovations that showcase human intelligence over AI or partnership with AI.…”
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    How AI developers can assure algorithmic fairness by Khensani Xivuri, Hosanna Twinomurinzi

    Published 2023-07-01
    “…Responsible organisations need to take deliberate actions to ensure that their AI developers adhere to fair processes when developing AI; AI developers must prioritise ethical considerations and consider the impact their models may have on society; partnerships between AI developers, AI stakeholders, and society that might be impacted by AI models should be established; and AI developers need to prioritise transparency and explainability in their models while ensuring adequate testing for bias and corrective measures before deployment. …”
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