Litcius/Paper detail

Multi-agent AI

Simeon Allmendinger, Lukas Bonenberger, Kathrin Endres, Dominik Fetzer, Henner Gimpel, Niklas Kühl

2026Electronic Markets7 citationsDOIOpen Access PDF

Abstract

Abstract Multi-agent artificial intelligence (MAAI) represents a foundational shift in the automation of knowledge work, moving beyond static workflows toward adaptive systems of interacting AI-based agents. These agents perceive, reason, and coordinate in real time to address complex, context-rich tasks that traditionally require human expertise. Drawing on the conceptual roots of process automation, agentic information systems, and AI, this paper introduces a structured, five-component framework that conceptualizes MAAI as a layered architecture composed of foundation model, data-centric perception and action, dynamic orchestration, agent-integrated workflow, and interaction interface. This framework disentangles the technical, organizational, and human-facing dimensions of MAAI, offering researchers and practitioners a systematic lens to analyze and design agent-based AI automation. The framework further structures three research pathways focused on advancing technical capabilities, enabling organizational integration, and addressing socio-technical implications such as fairness, accountability, and labor transformation. Together, these contributions establish a foundation for interdisciplinary inquiry into how MAAI reshapes work, coordination, and digital value creation.

Topics & Concepts

WorkflowKnowledge managementComputer scienceFoundation (evidence)Conceptual frameworkProcess (computing)AutomationPerceptionValue (mathematics)Through-the-lens meteringArtificial intelligenceArchitectureData scienceHuman–computer interactionHuman intelligenceEngineeringKey (lock)Management scienceSociologyDimension (graph theory)Information systemRobotic Process Automation ApplicationsEthics and Social Impacts of AIInnovation, Sustainability, Human-Machine Systems