CHAI-DT: A Framework for Prompting Conversational Generative AI Agents
to Actively Participate in Co-Creation
- URL: http://arxiv.org/abs/2305.03852v1
- Date: Fri, 5 May 2023 21:25:35 GMT
- Title: CHAI-DT: A Framework for Prompting Conversational Generative AI Agents
to Actively Participate in Co-Creation
- Authors: Brandon Harwood
- Abstract summary: This paper explores the potential for utilizing generative AI models in group-focused co-creative frameworks to enhance problem solving and ideation.
We propose a novel prompting technique for conversational generative AI agents which employ methods inspired by traditional 'human-to-human' facilitation and instruction.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This paper explores the potential for utilizing generative AI models in
group-focused co-creative frameworks to enhance problem solving and ideation in
business innovation and co-creation contexts, and proposes a novel prompting
technique for conversational generative AI agents which employ methods inspired
by traditional 'human-to-human' facilitation and instruction to enable active
contribution to Design Thinking, a co-creative framework. Through experiments
using this prompting technique, we gather evidence that conversational
generative transformers (i.e. ChatGPT) have the capability to contribute
context-specific, useful, and creative input into Design Thinking activities.
We also discuss the potential benefits, limitations, and risks associated with
using generative AI models in co-creative ideation and provide recommendations
for future research.
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