TU Berlin

Department of Telecommunication SystemsAdaptive Resource Management

Page Content

to Navigation

Adaptive Resource Management (ARM)

Lupe

One of the areas we work on in the DOS group is adaptive resource management for data-intensive distributed applications, aiming at systems that automatically adapt to workloads and environments. Learn more...

Research

Aiming to make it easier to run data-intensive applications efficiently on distributed computing infrastructures from small devices to large-scale clusters, we work on adaptive resource management, following an iterative systems research approach.

Current research directions include:

Recent Publications

Behnke, Ilja and Thamsen, Lauritz and Kao, Odej (2019). Héctor: A Framework for Testing IoT Applications Across Heterogeneous Edge and Cloud Testbeds. 12th IEEE/ACM International Conference on Utility and Cloud Computing Companion. ACM, 15–20.


Geldenhuys, Morgan K. and Thamsen, Lauritz and Gontarska, Kain Kordian and Lorenz, Felix and Kao, Odej (2019). Effectively Testing System Configurations of Critical IoT Analytics Pipelines. 2019 IEEE International Conference on Big Data. IEEE, 4157–4162.


Lauritz Thamsen, Jossekin Beilharz, Vinh Thuy Tran, Sasho Nedelkoski, and Odej Kao (2020). Mary, Hugo, and Hugo*: Learning to Schedule Distributed Data-Parallel Processing Jobs on Shared Clusters. Concurrency and Computation: Practice and Experience. Wiley, e5823.


Navigation

Quick Access

Schnellnavigation zur Seite über Nummerneingabe