Periodic Reporting for period 3 - AdjustNet (Self-Adjusting Networks)
Okres sprawozdawczy: 2022-11-01 do 2024-04-30
The AdjustNet project pursues a radically different perspective, envisioning demand-aware networks which can dynamically adapt their topology to the workload they currently serve. Such self-adjusting networks hence allow to exploit structure in the demand, and thereby reach higher levels of efficiency and performance. The AdjustNet project is timely and enabled by recent innovations in optical communication technologies which allow to flexibly reconfigure the physical network topology.
With the AdjustNet project we aim to lay the theoretical foundations for self-adjusting networks. To this end, our goal is to identify metrics that serve as yardstick of what be achieved in a self-adjusting network for a given demand and to devise efficient algorithms for online network adaption. We further aim to understand to which extent network operations in general can be automated, which requires giving away control, similar to self-driving cars. We also aim to complement our foundational research with case studies, exploring novel datacenter architectures.
If successful, self-adjusting networks can have a large impact on society. In particular, the project can enable our digital society’s backbone networks to serve the next generation’s data-intensive workloads, at unprecedented levels of efficiency, performance, and reliability. Forecasts predict a fast growth of annual energy consumption and global CO2 emission due to cloud computing, up to 1/5th of the Earth’s power consumption by 2025. Thus, already a small improvement in utilization, as achieved with self-adjusting networks, may reduce costs and energy consumption significantly. Furthermore, the ground-breaking concepts and techniques developed in this project may also lead to insights which can in turn influence technological developments. Given that the community is currently re-architecting the networking stack anyway, we believe that now is the time we can have the most impact by bridging the gap between theory and practice.