The Design Space of Recent AI-assisted Research Tools for Ideation, Sensemaking, and Scientific Creativity
This work addresses the design of AI tools for researchers to enhance creativity and reduce automation bias, though it is incremental as it synthesizes existing tools.
The paper surveyed recent AI-assisted research tools from HCI venues to analyze their capabilities and design spaces, identifying four design recommendations to foster cognitive engagement and shift from workflow replication to generative co-creation.
Generative AI (GenAI) tools are radically expanding the scope and capability of automation in knowledge work such as academic research. While promising for augmenting cognition and streamlining processes, AI-assisted research tools may also increase automation bias and hinder critical thinking. To examine recent developments, we surveyed publications from leading HCI venues over the past three years, closely analyzing thirteen tools to better understand the novel capabilities of these AI-assisted systems and the design spaces they enable: seven employing traditional AI or customized transformer-based approaches, and six integrating open-access large language models (LLMs). Our analysis characterizes the emerging design space, distinguishes between tools focused on workflow mimicry versus generative exploration, and yields four critical design recommendations to guide the development of future systems that foster meaningful cognitive engagement: providing user agency and control, differentiating divergent/convergent thinking support, ensuring adaptability, and prioritizing transparency/accuracy. This work discusses how these insights signal a shift from mere workflow replication towards generative co-creation, presenting new opportunities for the community to craft intuitive, AI-driven research interfaces and interactions.