Projektlogo

SAIL: SustAInable Life-cycle of Intelligent Socio-Technical Systems

Overview

Current systems that incorporate AI technology mainly target the introduction phase, where a core component is training and adaptation of AI models based on given example data. SAIL’s focus on the full life-cycle moves the current emphasis towards sustainable long-term development in real life. The joint project SAIL addresses both basic research in the field of AI, its implications from the perspective of the humanities and social sciences, and concrete applications in the field of Industry 4.0 and Intelligent Healthcare. SAIL is an interdisciplinary and interinstitutional collaboration of Bielefeld UniversityPaderborn UniversityBielefeld University of Applied Sciences, and OWL University of Applied Sciences and Arts, funded by the MKW NRW.

Project headed by the DSE group: (Project R2.3) Human-centered continuous optimization

Manual workplaces involving both humans and technical machinery are usually optimized at design time. This ignores improvements due to human learning dur- ing long-term work. Therefore, we propose to study the application of Bayesian optimization and life-long learning with a human-centered focus, e.g., a suitable weighting of past and current data or a transfer between humans.

SAIL addresses the next stage of AI development by looking at the entire life cycle of AI systems and their technological and societal implications. Accordingly, SAIL is interdisciplinary in nature involving researchers from the core areas of AI, engineering, computer science, and the social sciences and humanities. The research program is divided into three research pillars and two application areas. Basic research will look at the interaction of AI and human partners in evaluating and coordinating errors and goals. In addition, mature AI systems are analyzed to model and mitigate their potentially undesirable long-term effects at the functional, cognitive, and societal levels. Finally, the entire AI lifecycle is considered in terms of efficiency to enable the practical deployment of AI systems with minimal energy, time, and storage requirements and low cognitive effort on the part of the human partner. The application areas of SAIL are intelligent industrial work environments and adaptive assistance systems for healthcare.

Funding program

Ministry of Culture and Science of North Rhine-Westphalia (MKW NRW), NW21-059D

Key Facts

Grant Number:
NW21-059D
Research profile areas:
Intelligent Technical Systems, Sustainable Materials, Processes and Products
Project type:
Research
Project duration:
08/2022 - 07/2026
Contribution to sustainability:
Industry, Innovation and Infrastructure
Funded by:
MKW NRW
Websites:
Homepage
Projektbeschreibung bei der FH Bielefeld
Current research projects
Projektbeschreibung bei JAII
Projektseite DICE

News

06.05.2024

In­ter­na­tion­al co­oper­a­tion on the top­ic of "sus­tain­able ar­ti­fi­cial in­tel­li­gence"

Read more
More news

More Information

Principal Investigators

contact-box image

Prof. Dr. Reinhold H?b-Umbach

Communications Engineering / Heinz Nixdorf Institute

About the person
contact-box image

Prof. Dr. Marco Platzner

Computer Engineering

About the person
contact-box image

Prof. Dr.-Ing. habil. Ansgar Tr?chtler

Regelungstechnik und Mechatronik / Heinz Nixdorf Institut

About the person
contact-box image

Prof. Dr. Christian Plessl

High-Performance Computing

About the person
contact-box image

Prof. Dr.-Ing. Roman Dumitrescu

Advanced Systems Engineering / Heinz Nixdorf Institut

About the person
contact-box image

Prof. Dr.-Ing. habil. Walter Sextro

Dynamics and Mechatronics (LDM)

About the person
contact-box image

Jun.-Prof. Dr. Sebastian Peitz

Data Science for Engineering

About the person
contact-box image

Prof. Dr. Katharina Rohlfing

Key research area Transformation and Education

About the person
contact-box image

Prof. Dr. Eric Bodden

Heinz Nixdorf Institute

About the person
contact-box image

Prof. Dr. Axel-Cyrille Ngonga Ngomo

Transregional Collaborative Research Centre 318

About the person
contact-box image

AOR. Dr. Ilona Horwath

Technik und Diversity

About the person
contact-box image

Jun. Prof. Dr. Suzana Alpsancar

Applied ethics with a focus on technology ethics in the digital world

About the person

Cooperating Institutions

Universit?t Bielefeld

Cooperating Institution

Hochschule Bielefeld – University of Applied Sciences and Arts

Cooperating Institution

Go to website

Technische Hochschule Ostwestfalen-Lippe (TH OWL)

Cooperating Institution

Go to website

Publications

EDGE: Evaluation Framework for Logical vs. Subgraph Explanations for Node Classifiers on Knowledge Graphs
R. Sapkota, D. K?hler, S. Heindorf, in: Proceedings of the 33rd ACM International Conference on Information and Knowledge Management (CIKM ’24), ACM, Boise, Idaho, USA, 2024.
LitCQD: Multi-Hop Reasoning in Incomplete Knowledge Graphs with Numeric Literals
C. Demir, M. Wiebesiek, R. Lu, A.-C. Ngonga Ngomo, S. Heindorf, ECML PKDD (2023).
Neural Class Expression Synthesis
N.J. KOUAGOU, S. Heindorf, C. Demir, A.-C. Ngonga Ngomo, in: C. Pesquita, E. Jimenez-Ruiz, J. McCusker, D. Faria, M. Dragoni, A. Dimou, R. Troncy, S. Hertling (Eds.), The Semantic Web - 20th Extended Semantic Web Conference (ESWC 2023), Springer International Publishing, 2023, pp. 209–226.
Neuro-Symbolic Class Expression Learning
C. Demir, A.-C. Ngonga Ngomo, International Joint Conference on Artificial Intelligence (2023).
Show all publications