The Distributed Systems (DSY) research group focuses on scalable and reliable implementation of sophisticated IT-based services. We address questions such as:
- What architecture best suits your specific cloud application?
- Which service model (IaaS, CaaS, PaaS, FaaS, ...) ensures optimal implementation of an application?
- Which tools are needed for development, operation and monitoring of the services?
- How to offer applications "as a service" (SaaS)?
- How to monetize modern IT services?
- How to integrate the "physical world" into complex IT services?
The research group is engaged in international projects within the EU research framework and works closely with partners from the private sector on innovative products within Innosuisse funded or directly financed projects.
The knowledge gained from applied research and development is transferred to students of computer science courses in the following modules:
The Init Cloud Computing Lab (ICCLAB) is dedicated to the automated deployment, operation and usage of configurable, highly scalable and resilient IT resources on a pay-per-use basis. In addition to infrastructure virtualization, this includes platform services for automated application delivery, scalable back-end, and monitoring of services and applications.
The Service Prototyping Lab (SPLAB) addresses the implementation and validation of complex services in cloud or post-cloud environments. In addition to the migration of existing services to the cloud, the main focus is on modern application architectures (Cloud Native Applications, Microservices, Serverless), the provisioning of tools for optimal implementation, the experimental validation of concepts and their monetization (Cloud Accounting and Billing).
The Init Cloud Comupting Lab (ICCLAB) also addresses the integration of robotic applications into complex networked services. The usage of elastic cloud services allows to extend the capabilities of robots (computing power, context information, artificial intelligence, ...) as well as to manage and coordinate them. Programming frameworks and automation services enable developers to integrate robots into services without having in-depth knowledge at device level.
Digital Mobility/Logistics Hub
In this project, a «Digital Mobility/Logistics Hub» with different traffic modalities will be realised in robotic model format and combined with cameras and digital components (simulators, device models, cloud platforms, real-time injection of open data, reservation system, application scenarios). A logistics ...
GitOps for Kubernetes Platform
GitOps is an innovative technique that blends version control technology with declarative application configuration specifications such as Infrastructure as Code (IaC). It removes the chance of errors and security issues by removing the reliance on human operators or scripts to perform deployment tasks. Implementing ...
ADDSA - Advanced Diagnostics Data and Service Architecture
In the ADDSA project, an advanced Data and Service Architecture is being developed to meet the industrial needs in equipment insights.
Braschler, Martin; Stadelmann, Thilo; Stockinger, Kurt, eds.,
Applied data science : lessons learned for the data-driven business.
Available from: https://doi.org/10.1007/978-3-030-11821-1_4
Zhou, Yu; Yan, Xin; Chen, Taolue; Panichella, Sebastiano; Gall, Harald,
ICSE '19 proceedings of the 41st international conference on software engineering : companion proceedings.
International Conference on Software Engineering (ICSE 2019), Montreal, Canada, 25-31 May 2019.
Available from: https://doi.org/10.21256/zhaw-3220
Di Sorbo, Andrea; Panichella, Sebastiano; Visaggio, Corrado Aaron; Di Penta, Massimiliano; Canfora, Gerardo; Gall, Harald C.,
IEEE Transactions on Software Engineering.
Available from: https://doi.org/10.1109/TSE.2019.2930519
2019 19th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing (CCGRID).
CCGrid 2019, Nicosia, Cyprus, 14-17 May 2019.
Available from: https://doi.org/10.1109/CCGRID.2019.00087
Panichella, Sebastiano; Palomba, Fabio; Lorenz, David; Nagappan, Meiyappan,
Empirical Software Engineering.
24(6), pp. 3249-3254.
Available from: https://doi.org/10.1007/s10664-019-09776-9