Jan. 31, 2024, 3 p.m. | Ben Lorica

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Generative AI offers promising new capabilities,  but it also poses unique challenges for design and ethical implementation. A new paper from IBM, “Design Principles for Generative AI Applications”, tackles these issues head-on by outlining actionable strategies rooted in rigorous research. As companies race to capitalize on generative AI, these design principles serve as indispensable guidesContinue reading "Designing for the Future: Key Principles for Generative AI Applications"


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