IU Internationale Hochschule
Abstract visualization of glowing AI data streams – AI Research Institute at IU

Research Institute
AI Research Institute

Our Thesis

AI is not the bottleneck. The human who doesn't know how to collaborate with AI is. This is not a technology gap — it is a competence gap. And competence gaps can be taught, measured, and closed.

About the Institute

Close-up of a modern facade symbolizing AI research at IU

Our Research

AI systems are transforming how people learn, work, and make decisions. Yet the most consequential questions are not about the technology itself — they are about the humans using it. How does a nurse, a marketing analyst, or a student decide when to involve AI, how far to trust its output, and when to take back control? How do expert judgement, problem-solving ability, and professional identity develop, or erode, as AI use becomes sustained and routine?

This long-term operational dimension of human-AI collaboration remains underresearched. The AI Research Institute at IU exists to change that.

Interwoven golden lines representing human-AI collaboration

Our Positioning

We research at the intersection of human and AI with the people who practice it daily.

As a university of applied sciences, our approach is by design: our research is born in real learning and working environments, not in controlled laboratory conditions. What positions us uniquely is direct access to over 100,000 students already operating in an AI-saturated academic environment. This enables what few institutes can offer: longitudinal study of competence development and human-AI collaboration under real conditions — producing evidence that is relevant to both education and professional practice.

Snow-covered mountain peak symbolizing competence development

Our Drivers

The decisive factor in successful human-AI collaboration is not the technology, it is the human capacity to decide, situationally, when and how to involve AI, and how to orchestrate that collaboration well. This capacity can be taught, measured, and developed. That is our research mandate.

Our Projects

"KI-Reflex"

The project investigates the use of a self-developed AI chatbot to encourage professional self-reflection among distance learning students at IU International University. It focuses both on the scientific analysis of user experience and interaction patterns with the chatbot, as well as the didactic integration of the chatbot into teaching and learning in distance learning settings at university level. The project builds on existing research about AI in higher education and the importance of self-reflective skills for professional pedagogical development. Empirical findings will be collected to help improve the design of reflection processes supported by chatbots.

Fairgrade

This project develops a web-based tool that automatically verifies whether cited claims in student submissions are actually supported by the referenced sources—a capability not provided by existing systems. The tool runs on university infrastructure in a privacy-preserving manner and is designed as a triage instrument for lecturers to efficiently identify potentially problematic citations. The project aims for institution-wide deployment as part of a broader effort to safeguard academic integrity and support scalable quality assurance in teaching.

Adaptive Learning

This project investigates how individual personality traits influence interactions with AI-based learning environments and how these insights can be used to improve learning outcomes. Building on the Big Five personality model, the project systematically analyzes how different personality dimensions affect engagement, satisfaction, and learning success when interacting with LLM-based systems. Based on these insights, the project explores the design of personality-adaptive chatbot interactions that dynamically adjust to users’ interaction styles. The goal is to develop more personalized and effective AI-supported learning experiences that enhance both user experience and educational outcomes.

Research methods

We pursue an explicitly interdisciplinary approach — bringing together pedagogy, sociology, data science, organizational science, and AI. Not as loose collaboration, but as methodological necessity.

Our toolkit: mixed-methods designs combining quantitative measurement with qualitative insight; experimental and quasi-experimental studies in real settings; longitudinal studies tracking competence development over time; participatory research with partners from education and industry.

Visual representing the institute's interdisciplinary research methods
Image illustrating data ethics and GDPR-compliant AI research

Ethics and Data Sensitivity

We operate within GDPR and EU AI Act requirements as a baseline, not an afterthought. Handling student and employee data transparently and ethically is both a legal obligation and a scientific one.

Further information

Awards, accreditations and certifications

WR Wissenschaftsrat
ZFU