Revolutionizing Engineering: A Framework for Generative AI Development | Briefing

 June 14, 2023

The emergence of generative AI tools like ChatGPT has the potential to revolutionize the work of software developers, enabling higher productivity and empowering individuals with coding capabilities. However, it is crucial for IT leaders and engineers to establish guidelines and best practices to ensure that business interests are not compromised.

Join Eric Jones, David Lowe, and Kevyn Gandaho from WWT as they delve into the development of a framework for generative AI. This framework centers around four key pillars: security, responsibility, accountability, and rigorous experimentation. The speakers will showcase live demonstrations of applications built on large language models (LLMs) and explore how tools such as ChatGPT can expedite future development efforts.

Don’t miss this opportunity to gain insights into harnessing the potential of generative AI while maintaining a strong foundation of security, responsibility, accountability, and effective experimentation.

Aihub Team

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