Abstract

Grids allow users flexible on-demand usage of computing resources through remote communication networks. A remarkable example of a Grid in High Energy Physics (HEP) research is used in the ALICE experiment at European Organization for Nuclear Research CERN. Physicists can submit jobs used to process the huge amount of particle collision data produced by the Large Hadron Collider (LHC). Grids face complex security challenges. They are interesting targets for attackers seeking for huge computational resources. Since users can execute arbitrary code in the worker nodes on the Grid sites, special care should be put in this environment. Automatic tools to harden and monitor this scenario are required. Currently, there is no integrated solution for such requirement. This paper describes a new security framework to allow execution of job payloads in a sandboxed context. It also allows process behavior monitoring to detect intrusions, even when new attack methods or zero day vulnerabilities are exploited, by a Machine Learning approach. We plan to implement the proposed framework as a software prototype that will be tested as a component of the ALICE Grid middleware.

Highlights

  • ALICE (A Large Ion Collider Experiment) is a dedicated Pb-Pb detector designed to exploit the physics potential of nucleus-nucleus interactions at the Large Hadron Collider at CERN [1, 2]

  • Through ALICE production environment (AliEn), the computer centers that participate in ALICE can be seen and used as a single entity - any available node executes jobs and file access is transparent to the user, wherever in the world a file might be[3]

  • Computing Grids allow the submission of user developed jobs composed by code and data. They interface with Internet and other communication networks, with storage systems and experiment infrastructure

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Summary

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- A model for anomaly classification in intrusion detection systems V O Ferreira, V V Galhardi, L B L Gonçalves et al. - Large Igneous Provinces and Their MaficUltramafic Intrusions R E Ernst, S M Jowitt, J A Blanchard et al. - Local flux intrusion in HTS annuli during pulsed field magnetization V S Korotkov, E P Krasnoperov and A A Kartamyshev. This content was downloaded from IP address 131.169.5.251 on 26/12/2018 at 22:51. 21st International Conference on Computing in High Energy and Nuclear Physics (CHEP2015) IOP Publishing. Journal of Physics: Conference Series 664 (2015) 062017 doi:10.1088/1742-6596/664/6/062017

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