262 research outputs found
Adaptive Resource Allocation for Virtualized Base Stations in O-RAN with Online Learning
Open Radio Access Network systems, with their virtualized base stations
(vBSs), offer operators the benefits of increased flexibility, reduced costs,
vendor diversity, and interoperability. Optimizing the allocation of resources
in a vBS is challenging since it requires knowledge of the environment, (i.e.,
"external'' information), such as traffic demands and channel quality, which is
difficult to acquire precisely over short intervals of a few seconds. To tackle
this problem, we propose an online learning algorithm that balances the
effective throughput and vBS energy consumption, even under unforeseeable and
"challenging'' environments; for instance, non-stationary or adversarial
traffic demands. We also develop a meta-learning scheme, which leverages the
power of other algorithmic approaches, tailored for more "easy'' environments,
and dynamically chooses the best performing one, thus enhancing the overall
system's versatility and effectiveness. We prove the proposed solutions achieve
sub-linear regret, providing zero average optimality gap even in challenging
environments. The performance of the algorithms is evaluated with real-world
data and various trace-driven evaluations, indicating savings of up to 64.5% in
the power consumption of a vBS compared with state-of-the-art benchmarks
Bayesian online learning for energy-aware resource orchestration in virtualized RANs
Proceedings of: IEEE International Conference on Computer Communications, 10-13 May 2021, Vancouver, BC, Canada.Radio Access Network Virtualization (vRAN) will spearhead the quest towards supple radio stacks that adapt to heterogeneous infrastructure: from energy-constrained platforms deploying cells-on-wheels (e.g., drones) or battery-powered cells to green edge clouds. We perform an in-depth experimental analysis of the energy consumption of virtualized Base Stations (vBSs) and render two conclusions: (i) characterizing performance and power consumption is intricate as it depends on human behavior such as network load or user mobility; and (ii) there are many control policies and some of them have non-linear and monotonic relations with power and throughput. Driven by our experimental insights, we argue that machine learning holds the key for vBS control. We formulate two problems and two algorithms: (i) BP-vRAN, which uses Bayesian online learning to balance performance and energy consumption, and (ii) SBP-vRAN, which augments our Bayesian optimization approach with safe controls that maximize performance while respecting hard power constraints. We show that our approaches are data-efficient and have provably performance, which is paramount for carrier-grade vRANs. We demonstrate the convergence and flexibility of our approach and assess its performance using an experimental prototype.This work was supported by the European Commission through Grant No. 856709 (5Growth) and Grant No. 101017109 (DAEMON); and by SFI through Grant No. SFI 17/CDA/4760
Application of Market Models to Network Equilibrium Problems
We present a general two-side market model with divisible commodities and
price functions of participants. A general existence result on unbounded sets
is obtained from its variational inequality re-formulation. We describe an
extension of the network flow equilibrium problem with elastic demands and a
new equilibrium type model for resource allocation problems in wireless
communication networks, which appear to be particular cases of the general
market model. This enables us to obtain new existence results for these models
as some adjustments of that for the market model. Under certain additional
conditions the general market model can be reduced to a decomposable
optimization problem where the goal function is the sum of two functions and
one of them is convex separable, whereas the feasible set is the corresponding
Cartesian product. We discuss some versions of the partial linearization
method, which can be applied to these network equilibrium problems.Comment: 18 pages, 3 table
Orchestrating energy-efficient vRANs: Bayesian learning and experimental results
Virtualized base stations (vBS) can be implemented in diverse commodity platforms and are expected to bring unprecedented operational flexibility and cost efficiency to the next generation of cellular networks. However, their widespread adoption is hampered by their complex configuration options that affect in a non-traditional fashion both their performance and their power consumption requirements. Following an in-depth experimental analysis in a bespoke testbed, we characterize the vBS power cost profile and reveal previously unknown couplings between their various control knobs. Motivated by these findings, we develop a Bayesian learning framework for the orchestration of vBSs and design two novel algorithms: (i) BP-vRAN, which employs online learning to balance the vBS performance and energy consumption, and (ii) SBP-vRAN, which augments our optimization approach with safe controls that maximize performance while respecting hard power constraints. We show that our approaches are data-efficient, i.e., converge an order of magnitude faster than state-of-the-art Deep Reinforcement Learning methods, and achieve optimal performance. We demonstrate the efficacy of these solutions in an experimental prototype using real traffic traces.This work has been supported by the European Commission through Grant No. 101017109 (DAEMON project), and the CERCA Programme/Generalitat de Catalunya
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Greek ERT: State or Public Service Broadcaster?
The chapter examines the state of public service broadcasting in Greece. While most Southern European public broadcasting systems are to some degree subject to political influence and dependence, in the case of Greece, public broadcaster ERT is, after four decades of deregulation and the break-up of its broadcasting monopoly, still considered by many as ‘state’ rather than a ‘public’ broadcaster. This wide public perception stems from ERT’s one-time role as a mouthpiece of government propaganda. As both radio and TV broadcasting were launched under dictatorships (the late 1930s Metaxas dictatorship and the mid-1960s Colonels rule respectively), they have been regarded as ‘arms of the state.’ Post-dictatorship politics and the restoration of Parliament in 1974 saw the Conservatives (New Democracy) and Socialists (PASOK) dominating the political scene, accusing each other of exercising too much government control over state broadcasting media. Today’s left-wing SYRIZA government also attempts to influence ERT’s output, which is at odds with the digital, deregulated electronic media landscape and consequent abundance of channels. This situation has arisen largely from the political tensions in Greek society since the Second World War. These tensions, combined with the absence of a strong civil society and the market, have made the state an autonomous and dominant factor in Greek society that has to take on additional politico-ideological function. The state plays an active role in the formation of the Greek economy and policy and it is relatively autonomous from society. This makes the system less self-regulatory than countries with developed capitalism, such as northern EU states, Britain or the US. Lack of self-regulation spurs the state to intervene in the politico-ideological sphere and thus diffuse its repressive mechanisms. It is in this context that the chapter explains the rise of power of the media, and the decline of power of journalists and, of course, of ERT itself
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