Projects per year
Organization profile
Data Engineering, Science and Systems (DESS) is one of four research groups in Department of Computer Science, Aalborg University.
DESS encompasses up-and-coming scientists as well as experienced scientists, all with strong records of excellence and contributions in data engineering, data science, and data systems that span up to 30 years. Embracing the opportunities enabled by the ongoing, sweeping digitalization of societal, industrial, and scientific processes, we collaborate with our partners to conduct research that aims to advance value creation from data.
VALUE CREATION FROM DATA
Targeting value creation from data, the research is generally constructive in nature, meaning that the research concerns:
- The invention of purposeful artifacts, such as frameworks, algorithms, data structures, indexes, languages, and techniques, as well as tools, systems, and solutions based on such components.
- The construction of prototype software, typically either for proof-of-concept or for the purpose of conducting empirical studies.
SCOPE
The research spans foundational topics as well as advanced applications and aims to take advantage of opportunities for cross-fertilization between foundational and applied research activities. The research also embraces a data science approach, where solutions to specific domain challenges are invented.
DATA
The research focuses on spatio-temporal, multidimensional, timeseries, sensor and metric data, but also contributes in relation to graph, text, and IoT, and electroencephalogram (EEG) data.
TOPICS
The research concerns data management and analytics, including query processing, data mining, and machine learning. Examples include:
- Data management: data integration and data lakes, data warehousing, and indexing
- Analytics: prediction and forecasting, pattern and outlier detection, similarity search, advanced routing, transfer learning, greenhouse gas emissions estimation, spatial keyword querying, clustering, why-not querying
APPLICATIONS
While key applications are in the general areas of intelligent transportation and digital energy, the group covers a wider range of data-intensive applications. Example applications include:
- Flexible energy grids that enable the ongoing transformation of the electricity grid and society-wide electrification.
- Smart services for energy efficient buildings
- IoT data-based diagnostics and prediction in the renewable energy sector
- Adaptability and failure prediction in power electronics
- Learning of travel times and travel-time based routing in dynamic and uncertain road networks
- Advanced spatial crowdsourcing in transportation and beyond
- Maritime analytics, including energy efficient routing and speed recommendation
- Personal data retention and GDPR compliance
- EGG based data analysis pipelines for neurorehabilitation, motion intent detection, and emotion and activity recognition
- Analysis of complex microbial community interactions
For more information see
Fingerprint
Network
Profiles
-
Abduvoris Abduvakhobov
- The Technical Faculty of IT and Design - PhD Fellow
- Department of Computer Science - PhD Fellow
- Data Engineering, Science and Systems - PhD Fellow
Person: VIP
-
Frederik Agneborn
- The Technical Faculty of IT and Design - Assistant, Student assistent
- Department of Computer Science - Assistant, Student assistent
- Data Engineering, Science and Systems - Assistant, Student assistent
Person: TAP
-
Esben Rask Bach
- The Technical Faculty of IT and Design - Student Teacher
- Department of Computer Science - Student Teacher
- Data Engineering, Science and Systems - Student Teacher
Person: VIP
-
PREDICTION-ENABLED DYNAMIC SCHEDULING OF HOUSEHOLD ELECTRICITY USAGE
01/01/2023 → 01/07/2023
Project: Research
-
Explainable AI for Complex Microbial Community Interactions and Predictions
Nielsen, P. H., Guo, C., Hove Hansen, S. & Andersen, K. S.
01/01/2021 → 31/12/2023
Project: Research
Research output
-
Adversarial Autoencoder for Unsupervised Time Series Anomaly Detection and Interpretation
Chen, X., Deng, L., Zhao, Y. & Zheng, K., 2023, WSDM 2023.Research output: Contribution to book/anthology/report/conference proceeding › Article in proceeding › Research › peer-review
-
CityCross: Transferring Attention-based Knowledge for Location-based Advertising Recommendation
Qiu, D., Wang, Y., Zhao, Y., Deng, L. & Zheng, K., 2023, MDM 2022.Research output: Contribution to book/anthology/report/conference proceeding › Article in proceeding › Research › peer-review
-
Efficient and Effective Similar Subtrajectory Search: A Spatial-aware Comprehension Approach
Deng, L., Sun, H., Sun, R., Zhao, Y. & Su, H., 2023, In: ACM Transactions on Intelligent Systems and Technology (TIST). 13, 3, p. 1 22 p., 35.Research output: Contribution to journal › Journal article › Research › peer-review
Datasets
-
Tutorial for the 2022 ACM SIGMOD Conference: Spatial Data Quality in the IoT Era: Management and Exploitation
Li, H. (Creator), Tang, B. (Creator), Lu, H. (Creator), Cheema, M. A. (Creator) & Jensen, C. S. (Creator), Zenodo, 2022
DOI: 10.5281/zenodo.7053915, https://zenodo.org/record/7053915
Dataset
-
Automatically Extracted SHACL Shapes for WikiData, DBpedia, YAGO-4, and LUBM & Associated Coverage Statistics
Rabbani, K. (Creator), Lissandrini, M. (Creator) & Hose, K. (Creator), Zenodo, 2022
DOI: 10.5281/zenodo.6798849, https://zenodo.org/record/6798849
Dataset
-
DBpedia RDF2Vec Graph Embeddings
Christensen, M. P. (Creator), Lissandrini, M. (Creator) & Hose, K. (Creator), Zenodo, 2022
DOI: 10.5281/zenodo.6384728, https://zenodo.org/record/6384728
Dataset
Prizes
-
Honorary Doctorate at TU Dresden
Pedersen, Torben Bach (Recipient), 29 Sep 2021
Prize: Honorary prizes and appointments
-
SSTD 2021 Best Paper Candidate
Chan, Harry Kai Ho (Recipient), Liu, Tiantian (Recipient), Li, Huan (Recipient) & Lu, Hua (Recipient), 2021
Prize: Conference prizes
-
Best Paper Award Runner-Up
Isaj, Suela (Recipient), Zimányi, Esteban (Recipient) & Pedersen, Torben Bach (Recipient), 20 Aug 2019
Prize: Conference prizes
File
Activities
-
Norwegian Research Center for AI Innovation (External organisation)
Christian S. Jensen (Chairperson)
2020 → …Activity: Memberships › Board duties in companies, associations, or public organisations
-
University of Stuttgart
Tobias Skovgaard Jepsen (Visiting researcher)
29 Sep 2019 → 21 Dec 2019Activity: Visiting another research institution
-
Bonsai Hackathon 2019
Massimo Pizzol (Participant), Agneta Ghose (Participant), Bo Pedersen Weidema (Participant) & Matteo Lissandrini (Participant)
25 Mar 2019 → 29 Mar 2019Activity: Attending an event › Organisation or participation in workshops, courses, or seminars
Press/Media
-
-
-
Big data skal forbedre søkort
10/01/2023 → 13/01/2023
6 items of Media coverage
Press/Media: Press / Media