The Future of Enterprise Content in the Era of AI

As enterprise companies increasingly adopt AI generative tools to optimize their content operations and drive efficiency, the importance of proper governance cannot be overstated. Without robust governance measures, organizations may inadvertently publish content that deviates from their brand, fails to comply with regulations, or even contains offensive material.

In the era of generative AI, content governance has become more critical than ever. Join our panel of experts as we delve into the realm of ChatGPT, AI, and NLP technologies to explore their impact on content creation and management. This unique opportunity will allow you to strike the right balance between innovation and governance in the digital age.

During this session, you will gain insights on:

  • The functioning of generative AI and its capabilities
  • The potential opportunities and pitfalls associated with AI-generated content
  • The role of generative AI in the content supply chain
  • The necessity of content quality assurance (QA) and governance in the context of generative AI

Aihub Team

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