Litcius/Paper detail

The Online Knapsack Problem with Departures

Bo Sun, Lin Yang, Mohammad Hajiesmaili, Adam Wierman, John C. S. Lui, Don Towsley, Danny H. K. Tsang

2022Proceedings of the ACM on Measurement and Analysis of Computing Systems20 citationsDOI

Abstract

The online knapsack problem is a classic online resource allocation problem in networking and operations research. Its basic version studies how to pack online arriving items of different sizes and values into a capacity-limited knapsack. In this paper, we study a general version that includes item departures, while also considering multiple knapsacks and multi-dimensional item sizes. We design a threshold-based online algorithm and prove that the algorithm can achieve order-optimal competitive ratios. Beyond worst-case performance guarantees, we also aim to achieve near-optimal average performance under typical instances. Towards this goal, we propose a data-driven online algorithm that learns within a policy-class that guarantees a worst-case performance bound. In trace-driven experiments, we show that our data-driven algorithm outperforms other benchmark algorithms in an application of online knapsack to job scheduling for cloud computing.

Topics & Concepts

Knapsack problemBenchmark (surveying)Computer scienceOnline algorithmCompetitive analysisContinuous knapsack problemScheduling (production processes)Mathematical optimizationCloud computingChange-making problemUpper and lower boundsAlgorithmMathematicsOperating systemMathematical analysisGeographyGeodesyOptimization and Search ProblemsAuction Theory and ApplicationsAdvanced Bandit Algorithms Research