IACAI will address (i) algorithmic and computing, (ii) human-computer interaction, as well as (iii) social and ethical considerations regarding a future, agent-centric AI.
To overcome major algorithmic, computational and implementation impediments for (generative) AI in collaborative agent scenarios our research will include work on foundations of efficient data transfer and management across actors, improving the computational efficiency of AI models, and boosting the reasoning capabilities of AI models.
To overcome issues of productivity when humans use AI in complex tasks, partially due to the unresolved question of how humans can understand decisions in multi-stakeholder networks, we will investigate how to improve human-AI synergetic task performance via interaction designs that use explicit domain knowledge and will develop algorithms and interfaces for traceability of AI decisions in multi-agent environments.
To inform socially responsible and ethical technology design, we will model actors, interaction and agency to analyse, on theoretical and empirical levels, how interactions and interfaces in agent-centric AI shape the notions of responsibility and trust, and will develop algorithms to ensure fairness and diversity in resource distribution and decision-making in the future agent-centric AI that we are envisioning.