ASTROLABE: A Rigorous Approach for System-Level Performance Modeling and Analysis

Abstract : Building abstract system-level models that faithfully capture performance and functional behavior for embedded systems design is challenging. Unlike functional aspects, performance details are rarely available during the early design phases, and no clear method is known to characterize them. Moreover, once such models are built, they are inherently complex as they mix software models, hardware constraints, and environment abstractions. Their analysis by using traditional performance evaluation methods is reaching the limit. In this article, we present a systematic approach for building stochastic abstract performance models using statistical inference and model calibration, and we propose statistical model checking as a scalable performance evaluation technique for them.
Type de document :
Article dans une revue
ACM Transactions on Embedded Computing Systems (TECS), ACM, 2016, 〈10.1145/2885498〉
Liste complète des métadonnées

Littérature citée [43 références]  Voir  Masquer  Télécharger

https://hal.inria.fr/hal-01406474
Contributeur : Nisrine Jafri <>
Soumis le : jeudi 1 décembre 2016 - 14:31:40
Dernière modification le : mercredi 16 mai 2018 - 11:24:11

Identifiants

Citation

Ayoub Nouri, Marius Bozga, Anca Molnos, Axel Legay, Saddek Bensalem. ASTROLABE: A Rigorous Approach for System-Level Performance Modeling and Analysis. ACM Transactions on Embedded Computing Systems (TECS), ACM, 2016, 〈10.1145/2885498〉. 〈hal-01406474〉

Partager

Métriques

Consultations de la notice

645