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SPONSORED CONTENT FROM Hitachi

Moving Generative AI from Experimentation to Operation

April 14, 2025
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Successfully moving generative AI (gen AI) projects into business operations—a process Stamford, Conn.-based technology research and consulting firm Gartner refers to as operationalization—can generate significant business benefits in terms of improving efficiency, effecting cost savings, and creating new revenue streams and business opportunities. Gen AI systems can even support new business processes by combining data sets and language models that simply weren’t possible before.

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Copyright ©   Harvard Business School Publishing. All rights reserved. Harvard Business Publishing is an affiliate of Harvard Business School.