625 research outputs found

    A Pattern Language for High-Performance Computing Resilience

    Full text link
    High-performance computing systems (HPC) provide powerful capabilities for modeling, simulation, and data analytics for a broad class of computational problems. They enable extreme performance of the order of quadrillion floating-point arithmetic calculations per second by aggregating the power of millions of compute, memory, networking and storage components. With the rapidly growing scale and complexity of HPC systems for achieving even greater performance, ensuring their reliable operation in the face of system degradations and failures is a critical challenge. System fault events often lead the scientific applications to produce incorrect results, or may even cause their untimely termination. The sheer number of components in modern extreme-scale HPC systems and the complex interactions and dependencies among the hardware and software components, the applications, and the physical environment makes the design of practical solutions that support fault resilience a complex undertaking. To manage this complexity, we developed a methodology for designing HPC resilience solutions using design patterns. We codified the well-known techniques for handling faults, errors and failures that have been devised, applied and improved upon over the past three decades in the form of design patterns. In this paper, we present a pattern language to enable a structured approach to the development of HPC resilience solutions. The pattern language reveals the relations among the resilience patterns and provides the means to explore alternative techniques for handling a specific fault model that may have different efficiency and complexity characteristics. Using the pattern language enables the design and implementation of comprehensive resilience solutions as a set of interconnected resilience patterns that can be instantiated across layers of the system stack.Comment: Proceedings of the 22nd European Conference on Pattern Languages of Program

    Review and Analysis of Failure Detection and Prevention Techniques in IT Infrastructure Monitoring

    Get PDF
    Maintaining the health of IT infrastructure components for improved reliability and availability is a research and innovation topic for many years. Identification and handling of failures are crucial and challenging due to the complexity of IT infrastructure. System logs are the primary source of information to diagnose and fix failures. In this work, we address three essential research dimensions about failures, such as the need for failure handling in IT infrastructure, understanding the contribution of system-generated log in failure detection and reactive & proactive approaches used to deal with failure situations. This study performs a comprehensive analysis of existing literature by considering three prominent aspects as log preprocessing, anomaly & failure detection, and failure prevention. With this coherent review, we (1) presume the need for IT infrastructure monitoring to avoid downtime, (2) examine the three types of approaches for anomaly and failure detection such as a rule-based, correlation method and classification, and (3) fabricate the recommendations for researchers on further research guidelines. As far as the authors\u27 knowledge, this is the first comprehensive literature review on IT infrastructure monitoring techniques. The review has been conducted with the help of meta-analysis and comparative study of machine learning and deep learning techniques. This work aims to outline significant research gaps in the area of IT infrastructure failure detection. This work will help future researchers understand the advantages and limitations of current methods and select an adequate approach to their problem

    Design of robust scheduling methodologies for high performance computing

    Get PDF
    Scientific applications are often large, complex, computationally-intensive, and irregular. Loops are often an abundant source of parallelism in scientific applications. Due to the ever-increasing computational needs of scientific applications, high performance computing (HPC) systems have become larger and more complex, offering increased parallelism at multiple hardware levels. Load imbalance, caused by irregular computational load per task and unpredictable computing system characteristics (system variability), often degrades the performance of applications. Besides, perturbations, such as reduced computing power, network latency availability, or failures, can severely impact the performance of the applications. System variability and perturbations are only expected to increase in future extreme-scale computing systems. Extrapolating the current failure rate to Exascale would result in a failure every 20 minutes. Such failure rate and perturbations would render the computing systems unusable. This doctoral thesis improves the performance of computationally-intensive scientific applications on HPC systems via robust load balancing. Robust scheduling ensures and maintains improved load balanced execution under unpredictable application and system characteristics. A number of dynamic loop self-scheduling (DLS) techniques have been introduced and successfully used in scientific applications between the 1980s and 2000s. These DLS techniques are not fault-tolerant as they were originally introduced. In this thesis, we identify three major research questions to achieve robust scheduling (1) How to ensure that the DLS techniques employed in scientific applications today adhere to their original design goals and specifications? (2) How to select a DLS technique that will achieve improved performance under perturbations? (3) How to tolerate perturbations during execution and maintain a load balanced execution on HPC systems? To answer the first question, we reproduced the original experiments that introduced the DLS techniques to verify their present implementation. Simulation is used to reproduce experiments on systems from the past. Realistic simulation induces a similar analysis and conclusions to the analysis of the native results. To this end, we devised an approach for bridging the native and simulative executions of parallel applications on HPC systems. This simulation approach is used to reproduce scheduling experiments on past and present systems to verify the implementation of DLS techniques. Given the multiple levels of parallelism offered by the present HPC systems, we analyzed the load imbalance in scientific applications, from computer vision, astrophysics, and mathematical kernels, at both thread and process levels. This analysis revealed a significant interplay between thread level and process level load balancing. We found that dynamic load balancing at the thread level propagates to the process level and vice versa. However, the best application performance is only achieved by two-level dynamic load balancing. Next, we examined the performance of applications under perturbations. We found that the most robust DLS technique does not deliver the best performance under various perturbations. The most efficient DLS technique changes by changing the application, the system, or perturbations during execution. This signifies the algorithm selection problem in the DLS. We leveraged realistic simulations to address the algorithm selection problem of scheduling under perturbations via a simulation assisted approach (SimAS), which answers the second question. SimAS dynamically selects DLS techniques that improve the performance depending on the application, system, and perturbations during the execution. To answer the third question, we introduced a robust dynamic load balancing (rDLB) approach for the robust self-scheduling of scientific applications under failures (question 3). rDLB proactively reschedules already allocated tasks and requires no detection of perturbations. rDLB tolerates up to P −1 processor failures (P is the number of processors allocated to the application) and boosts the flexibility of applications against nonfatal perturbations, such as reduced availability of resources. This thesis is the first to provide insights into the interplay between thread and process level dynamic load balancing in scientific applications. Verified DLS techniques, SimAS, and rDLB are integrated into an MPI-based dynamic load balancing library (DLS4LB), which supports thirteen DLS techniques, for robust dynamic load balancing of scientific applications on HPC systems. Using the methods devised in this thesis, we improved the performance of scientific applications by up to 21% via two-level dynamic load balancing. Under perturbations, we enhanced their performance by a factor of 7 and their flexibility by a factor of 30. This thesis opens up the horizons into understanding the interplay of load balancing between various levels of software parallelism and lays the ground for robust multilevel scheduling for the upcoming Exascale HPC systems and beyond

    Predictive Reliability and Fault Management in Exascale Systems: State of the Art and Perspectives

    Get PDF
    © ACM, 2020. This is the author's version of the work. It is posted here by permission of ACM for your personal use. Not for redistribution. The definitive version was published in ACM Computing Surveys, Vol. 53, No. 5, Article 95. Publication date: September 2020. https://doi.org/10.1145/3403956[EN] Performance and power constraints come together with Complementary Metal Oxide Semiconductor technology scaling in future Exascale systems. Technology scaling makes each individual transistor more prone to faults and, due to the exponential increase in the number of devices per chip, to higher system fault rates. Consequently, High-performance Computing (HPC) systems need to integrate prediction, detection, and recovery mechanisms to cope with faults efficiently. This article reviews fault detection, fault prediction, and recovery techniques in HPC systems, from electronics to system level. We analyze their strengths and limitations. Finally, we identify the promising paths to meet the reliability levels of Exascale systems.This work has received funding from the European Union's Horizon 2020 (H2020) research and innovation program under the FET-HPC Grant Agreement No. 801137 (RECIPE). Jaume Abella was also partially supported by the Ministry of Economy and Competitiveness of Spain under Contract No. TIN2015-65316-P and under Ramon y Cajal Postdoctoral Fellowship No. RYC-2013-14717, as well as by the HiPEAC Network of Excellence. Ramon Canal is partially supported by the Generalitat de Catalunya under Contract No. 2017SGR0962.Canal, R.; Hernández Luz, C.; Tornero-Gavilá, R.; Cilardo, A.; Massari, G.; Reghenzani, F.; Fornaciari, W.... (2020). Predictive Reliability and Fault Management in Exascale Systems: State of the Art and Perspectives. ACM Computing Surveys. 53(5):1-32. https://doi.org/10.1145/3403956S132535Abella, J., Hernandez, C., Quinones, E., Cazorla, F. J., Conmy, P. R., Azkarate-askasua, M., … Vardanega, T. (2015). WCET analysis methods: Pitfalls and challenges on their trustworthiness. 10th IEEE International Symposium on Industrial Embedded Systems (SIES). doi:10.1109/sies.2015.7185039E. Agullo L. Giraud A. Guermouche J. Roman and M. Zounon. 2013. Towards resilient parallel linear Krylov solvers: Recover-restart strategies. INRIA Research Report RR-8324. E. Agullo L. Giraud A. Guermouche J. Roman and M. Zounon. 2013. Towards resilient parallel linear Krylov solvers: Recover-restart strategies. INRIA Research Report RR-8324.Agullo, E., Giraud, L., Salas, P., & Zounon, M. (2016). Interpolation-Restart Strategies for Resilient Eigensolvers. SIAM Journal on Scientific Computing, 38(5), C560-C583. doi:10.1137/15m1042115Al-Qawasmeh, A. M., Pasricha, S., Maciejewski, A. A., & Siegel, H. J. (2015). Power and Thermal-Aware Workload Allocation in Heterogeneous Data Centers. IEEE Transactions on Computers, 64(2), 477-491. doi:10.1109/tc.2013.116ARM. 2017. ARM Reliability Availability and Serviceability (RAS) Specification—ARMv8 for the ARMv8-A Architecture Profile. White paper. Retrieved from https://developer.arm.com/docs/ddi0587/latest. ARM. 2017. ARM Reliability Availability and Serviceability (RAS) Specification—ARMv8 for the ARMv8-A Architecture Profile. White paper. Retrieved from https://developer.arm.com/docs/ddi0587/latest.Avizienis, A., Laprie, J.-C., Randell, B., & Landwehr, C. (2004). Basic concepts and taxonomy of dependable and secure computing. IEEE Transactions on Dependable and Secure Computing, 1(1), 11-33. doi:10.1109/tdsc.2004.2Bautista-Gomez, L., Zyulkyarov, F., Unsal, O., & McIntosh-Smith, S. (2016). Unprotected Computing: A Large-Scale Study of DRAM Raw Error Rate on a Supercomputer. SC16: International Conference for High Performance Computing, Networking, Storage and Analysis. doi:10.1109/sc.2016.54Berrocal, E., Bautista-Gomez, L., Di, S., Lan, Z., & Cappello, F. (2017). Toward General Software Level Silent Data Corruption Detection for Parallel Applications. IEEE Transactions on Parallel and Distributed Systems, 28(12), 3642-3655. doi:10.1109/tpds.2017.2735971M.-A. Breuer and A. D. Friedman. 1976. Diagnosis 8 Reliable Design of Digital Systems. Springer. M.-A. Breuer and A. D. Friedman. 1976. Diagnosis 8 Reliable Design of Digital Systems. Springer.P. Bridges K. Ferreira M. Heroux and M. Hoemmen. 2012. Fault-tolerant linear solvers via selective reliability. ArXiv e-prints June 2012. arXiv:1206.1390 [math.NA]. P. Bridges K. Ferreira M. Heroux and M. Hoemmen. 2012. Fault-tolerant linear solvers via selective reliability. ArXiv e-prints June 2012. arXiv:1206.1390 [math.NA].F. Cappello A. Geist W. Gropp S. Kale B. Kramer and M. Snir. 2014. Toward exascale resilience: 2014 update. Supercomput. Front. Innovat. 1 1 (2014). http://superfri.org/superfri/article/view/14. F. Cappello A. Geist W. Gropp S. Kale B. Kramer and M. Snir. 2014. Toward exascale resilience: 2014 update. Supercomput. Front. Innovat. 1 1 (2014). http://superfri.org/superfri/article/view/14.F. J. Cazorla L. Kosmidis E. Mezzetti C. Hernandez J. Abella and T. Vardanega. 2019. Probabilistic worst-case timing analysis: Taxonomy and comprehensive survey. ACM Comput. Surv. 52 1 Article 14 (Feb. 2019) 35 pages. DOI:https://doi.org/10.1145/3301283 F. J. Cazorla L. Kosmidis E. Mezzetti C. Hernandez J. Abella and T. Vardanega. 2019. Probabilistic worst-case timing analysis: Taxonomy and comprehensive survey. ACM Comput. Surv. 52 1 Article 14 (Feb. 2019) 35 pages. DOI:https://doi.org/10.1145/3301283Chan, C. S., Pan, B., Gross, K., Vaidyanathan, K., & Rosing, T. Š. (2014). Correcting vibration-induced performance degradation in enterprise servers. ACM SIGMETRICS Performance Evaluation Review, 41(3), 83-88. doi:10.1145/2567529.2567555Chantem, T., Hu, X. S., & Dick, R. P. (2011). Temperature-Aware Scheduling and Assignment for Hard Real-Time Applications on MPSoCs. IEEE Transactions on Very Large Scale Integration (VLSI) Systems, 19(10), 1884-1897. doi:10.1109/tvlsi.2010.2058873Chen, M. Y., Kiciman, E., Fratkin, E., Fox, A., & Brewer, E. (s. f.). Pinpoint: problem determination in large, dynamic Internet services. Proceedings International Conference on Dependable Systems and Networks. doi:10.1109/dsn.2002.1029005Chen, Z. (2011). Algorithm-based recovery for iterative methods without checkpointing. Proceedings of the 20th international symposium on High performance distributed computing - HPDC ’11. doi:10.1145/1996130.1996142Chen, Z. (2013). Online-ABFT. Proceedings of the 18th ACM SIGPLAN symposium on Principles and practice of parallel programming - PPoPP ’13. doi:10.1145/2442516.2442533Coskun, A. K., Rosing, T. S., Mihic, K., De Micheli, G., & Leblebici, Y. (2006). Analysis and Optimization of MPSoC Reliability. Journal of Low Power Electronics, 2(1), 56-69. doi:10.1166/jolpe.2006.007G. Da Costa A. Oleksiak W. Piatek J. Salom and L. Sisó. 2015. Minimization of costs and energy consumption in a data center by a workload-based capacity management. In Energy Efficient Data Centers S. Klingert M. Chinnici and M. Rey Porto (Eds.). Springer International Publishing Cham 102--119. G. Da Costa A. Oleksiak W. Piatek J. Salom and L. Sisó. 2015. Minimization of costs and energy consumption in a data center by a workload-based capacity management. In Energy Efficient Data Centers S. Klingert M. Chinnici and M. Rey Porto (Eds.). Springer International Publishing Cham 102--119.Cupertino, L., Da Costa, G., Oleksiak, A., Pia¸tek, W., Pierson, J.-M., Salom, J., … Zilio, T. (2015). Energy-efficient, thermal-aware modeling and simulation of data centers: The CoolEmAll approach and evaluation results. Ad Hoc Networks, 25, 535-553. doi:10.1016/j.adhoc.2014.11.002Dally, W. J. (1991). Express cubes: improving the performance of k-ary n-cube interconnection networks. IEEE Transactions on Computers, 40(9), 1016-1023. doi:10.1109/12.83652Dauwe, D., Pasricha, S., Maciejewski, A. A., & Siegel, H. J. (2018). Resilience-Aware Resource Management for Exascale Computing Systems. IEEE Transactions on Sustainable Computing, 3(4), 332-345. doi:10.1109/tsusc.2018.2797890R. I. Davis and A. Burns. 2011. A survey of hard real-time scheduling for multiprocessor systems. ACM Comput. Surv. 43 4 Article 35 (Oct. 2011) 44 pages. DOI:https://doi.org/10.1145/1978802.1978814 R. I. Davis and A. Burns. 2011. A survey of hard real-time scheduling for multiprocessor systems. ACM Comput. Surv. 43 4 Article 35 (Oct. 2011) 44 pages. DOI:https://doi.org/10.1145/1978802.1978814Di, S., & Cappello, F. (2016). Adaptive Impact-Driven Detection of Silent Data Corruption for HPC Applications. IEEE Transactions on Parallel and Distributed Systems, 27(10), 2809-2823. doi:10.1109/tpds.2016.2517639Di, S., Guo, H., Gupta, R., Pershey, E. R., Snir, M., & Cappello, F. (2019). Exploring Properties and Correlations of Fatal Events in a Large-Scale HPC System. IEEE Transactions on Parallel and Distributed Systems, 30(2), 361-374. doi:10.1109/tpds.2018.2864184Di, S., Robert, Y., Vivien, F., & Cappello, F. (2017). Toward an Optimal Online Checkpoint Solution under a Two-Level HPC Checkpoint Model. IEEE Transactions on Parallel and Distributed Systems, 28(1), 244-259. doi:10.1109/tpds.2016.2546248J. Dongarra T. Herault and Y. Robert. 2015. Fault Tolerance Techniques for High-Performance Computing. Springer. J. Dongarra T. Herault and Y. Robert. 2015. Fault Tolerance Techniques for High-Performance Computing. Springer.DOWNING, S., & SOCIE, D. (1982). Simple rainflow counting algorithms. International Journal of Fatigue, 4(1), 31-40. doi:10.1016/0142-1123(82)90018-4Eghbalkhah, B., Kamal, M., Afzali-Kusha, H., Afzali-Kusha, A., Ghaznavi-Ghoushchi, M. B., & Pedram, M. (2015). Workload and temperature dependent evaluation of BTI-induced lifetime degradation in digital circuits. Microelectronics Reliability, 55(8), 1152-1162. doi:10.1016/j.microrel.2015.06.004Gottscho, M., Shoaib, M., Govindan, S., Sharma, B., Wang, D., & Gupta, P. (2017). Measuring the Impact of Memory Errors on Application  Performance. IEEE Computer Architecture Letters, 16(1), 51-55. doi:10.1109/lca.2016.2599513Greenberg, A., Hamilton, J. R., Jain, N., Kandula, S., Kim, C., Lahiri, P., … Sengupta, S. (2011). VL2. Communications of the ACM, 54(3), 95-104. doi:10.1145/1897852.1897877Heroux, M. A., Bartlett, R. A., Howle, V. E., Hoekstra, R. J., Hu, J. J., Kolda, T. G., … Stanley, K. S. (2005). An overview of the Trilinos project. ACM Transactions on Mathematical Software, 31(3), 397-423. doi:10.1145/1089014.1089021Hoffmann, G. A., Trivedi, K. S., & Malek, M. (2007). A Best Practice Guide to Resource Forecasting for Computing Systems. IEEE Transactions on Reliability, 56(4), 615-628. doi:10.1109/tr.2007.909764Hsiao, M. Y., Carter, W. C., Thomas, J. W., & Stringfellow, W. R. (1981). Reliability, Availability, and Serviceability of IBM Computer Systems: A Quarter Century of Progress. IBM Journal of Research and Development, 25(5), 453-468. doi:10.1147/rd.255.0453Hughes, G. F., Murray, J. F., Kreutz-Delgado, K., & Elkan, C. (2002). Improved disk-drive failure warnings. IEEE Transactions on Reliability, 51(3), 350-357. doi:10.1109/tr.2002.802886S. Hukerikar and C. Engelmann. 2017. Resilience design patterns: A structured approach to resilience at extreme scale. Supercomput. Front. Innov. 4 3 (2017). DOI:https://doi.org/10.14529/jsfi170301 S. Hukerikar and C. Engelmann. 2017. Resilience design patterns: A structured approach to resilience at extreme scale. Supercomput. Front. Innov. 4 3 (2017). DOI:https://doi.org/10.14529/jsfi170301Hussain, H., Malik, S. U. R., Hameed, A., Khan, S. U., Bickler, G., Min-Allah, N., … Rayes, A. (2013). A survey on resource allocation in high performance distributed computing systems. Parallel Computing, 39(11), 709-736. doi:10.1016/j.parco.2013.09.009Intel Corporation. [n.d.]. Intel Xeon Processor E7 Family: Reliability Availability and Serviceability. White paper. https://www.intel.com/content/www/us/en/processors/xeon/xeon-e7-family-ras-server-paper.html. Intel Corporation. [n.d.]. Intel Xeon Processor E7 Family: Reliability Availability and Serviceability. White paper. https://www.intel.com/content/www/us/en/processors/xeon/xeon-e7-family-ras-server-paper.html.Jha, S., Formicola, V., Martino, C. D., Dalton, M., Kramer, W. T., Kalbarczyk, Z., & Iyer, R. K. (2018). Resiliency of HPC Interconnects: A Case Study of Interconnect Failures and Recovery in Blue Waters. IEEE Transactions on Dependable and Secure Computing, 15(6), 915-930. doi:10.1109/tdsc.2017.2737537Kiciman, E., & Fox, A. (2005). Detecting Application-Level Failures in Component-Based Internet Services. IEEE Transactions on Neural Networks, 16(5), 1027-1041. doi:10.1109/tnn.2005.853411Kim, T., Sun, Z., Cook, C., Zhao, H., Li, R., Wong, D., & Tan, S. X.-D. (2016). Invited - Cross-layer modeling and optimization for electromigration induced reliability. Proceedings of the 53rd Annual Design Automation Conference. doi:10.1145/2897937.2905010Kurowski, K., Oleksiak, A., Piątek, W., Piontek, T., Przybyszewski, A., & Węglarz, J. (2013). DCworms – A tool for simulation of energy efficiency in distributed computing infrastructures. Simulation Modelling Practice and Theory, 39, 135-151. doi:10.1016/j.simpat.2013.08.007Langou, J., Chen, Z., Bosilca, G., & Dongarra, J. (2008). Recovery Patterns for Iterative Methods in a Parallel Unstable Environment. SIAM Journal on Scientific Computing, 30(1), 102-116. doi:10.1137/040620394J. C. Laprie (Ed.). 1995. Dependability—Its Attributes Impairments and Means. Springer-Verlag Berlin. J. C. Laprie (Ed.). 1995. Dependability—Its Attributes Impairments and Means. Springer-Verlag Berlin.Laprie, J.-C. (s. f.). DEPENDABLE COMPUTING AND FAULT TOLERANCE : CONCEPTS AND TERMINOLOGY. Twenty-Fifth International Symposium on Fault-Tolerant Computing, 1995, ’ Highlights from Twenty-Five Years’. doi:10.1109/ftcsh.1995.532603Lasance, C. J. M. (2003). Thermally driven reliability issues in microelectronic systems: status-quo and challenges. Microelectronics Reliability, 43(12), 1969-1974. doi:10.1016/s0026-2714(03)00183-5Yinglung Liang, Yanyong Zhang, Sivasubramaniam, A., Jette, M., & Sahoo, R. (s. f.). BlueGene/L Failure Analysis and Prediction Models. International Conference on Dependable Systems and Networks (DSN’06). doi:10.1109/dsn.2006.18Lin, T.-T. Y., & Siewiorek, D. P. (1990). Error log analysis: statistical modeling and heuristic trend analysis. IEEE Transactions on Reliability, 39(4), 419-432. doi:10.1109/24.58720Losada, N., González, P., Martín, M. J., Bosilca, G., Bouteiller, A., & Teranishi, K. (2020). Fault tolerance of MPI applications in exascale systems: The ULFM solution. Future Generation Computer Systems, 106, 467-481. doi:10.1016/j.future.2020.01.026Lyons, R. E., & Vanderkulk, W. (1962). The Use of Triple-Modular Redundancy to Improve Computer Reliability. IBM Journal of Research and Development, 6(2), 200-209. doi:10.1147/rd.62.0200M. Médard and S. S. Lumetta. 2003. Network Reliability and Fault Tolerance. American Cancer Society. Retrieved from arXiv:https://onlinelibrary.wiley.com/doi/pdf/10.1002/0471219282.eot281. M. Médard and S. S. Lumetta. 2003. Network Reliability and Fault Tolerance. American Cancer Society. Retrieved from arXiv:https://onlinelibrary.wiley.com/doi/pdf/10.1002/0471219282.eot281.Moody, A., Bronevetsky, G., Mohror, K., & de Supinski, B. (2010). Detailed Modeling, Design, and Evaluation of a Scalable Multi-level Checkpointing System. doi:10.2172/984082Moor Insights 8 Strategy. 2017. AMD EPYC Brings New RAS Capability. White paper. Retrieved from https://www.amd.com/system/files/2017-06/AMD-EPYC-Brings-New-RAS-Capability.pdf. Moor Insights 8 Strategy. 2017. AMD EPYC Brings New RAS Capability. White paper. Retrieved from https://www.amd.com/system/files/2017-06/AMD-EPYC-Brings-New-RAS-Capability.pdf.Mulas, F., Atienza, D., Acquaviva, A., Carta, S., Benini, L., & De Micheli, G. (2009). Thermal Balancing Policy for Multiprocessor Stream Computing Platforms. IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems, 28(12), 1870-1882. doi:10.1109/tcad.2009.2032372Oleksiak, A., Kierzynka, M., Piatek, W., Agosta, G., Barenghi, A., Brandolese, C., … Janssen, U. (2017). M2DC – Modular Microserver DataCentre with heterogeneous hardware. Microprocessors and Microsystems, 52, 117-130. doi:10.1016/j.micpro.2017.05.019Oxley, M. A., Jonardi, E., Pasricha, S., Maciejewski, A. A., Siegel, H. J., Burns, P. J., & Koenig, G. A. (2018). Rate-based thermal, power, and co-location aware resource management for heterogeneous data centers. Journal of Parallel and Distributed Computing, 112, 126-139. doi:10.1016/j.jpdc.2017.04.015K. O’brien I. Pietri R. Reddy A. Lastovetsky and R. Sakellariou. 2017. A survey of power and energy predictive models in HPC systems and applications. ACM Comput. Surv. 50 3 Article 37 (June 2017) 38 pages. DOI:https://doi.org/10.1145/3078811 K. O’brien I. Pietri R. Reddy A. Lastovetsky and R. Sakellariou. 2017. A survey of power and energy predictive models in HPC systems and applications. ACM Comput. Surv. 50 3 Article 37 (June 2017) 38 pages. DOI:https://doi.org/10.1145/3078811Park, S.-M., & Humphrey, M. (2011). Predictable High-Performance Computing Using Feedback Control and Admission Control. IEEE Transactions on Parallel and Distributed Systems, 22(3), 396-411. doi:10.1109/tpds.2010.100Pfefferman, J. D., & Cernuschi-Frias, B. (2002). A nonparametric nonstationary procedure for failure prediction. IEEE Transactions on Reliability, 51(4), 434-442. doi:10.1109/tr.2002.804733Rangan, K. K., Wei, G.-Y., & Brooks, D. (2009). Thread motion. ACM SIGARCH Computer Architecture News, 37(3), 302-313. doi:10.1145/1555815.1555793Paolo Rech. [n.d.]. Reliability Issues in Current and Future Supercomputers. Retrieved from http://energysfe.ufsc.br/slides/Paolo-Rech-260917.pdf. Paolo Rech. [n.d.]. Reliability Issues in Current and Future Supercomputers. Retrieved from http://energysfe.ufsc.br/slides/Paolo-Rech-260917.pdf.F. Reghenzani G. Massari and W. Fornaciari. 2019. The real-time Linux kernel: A survey on PREEMPT_RT. Comput. Surveys 52 1 Article 18 (Feb. 2019) 36 pages. DOI:https://doi.org/10.1145/3297714 F. Reghenzani G. Massari and W. Fornaciari. 2019. The real-time Linux kernel: A survey on PREEMPT_RT. Comput. Surveys 52 1 Article 18 (Feb. 2019) 36 pages. DOI:https://doi.org/10.1145/3297714F. Salfner M. Lenk and M. Malek. 2010. A survey of online failure prediction methods. ACM Comput. Surv. 42 3 Article 10 (March 2010) 42 pages. DOI:https://doi.org/10.1145/1670679.1670680 F. Salfner M. Lenk and M. Malek. 2010. A survey of online failure prediction methods. ACM Comput. Surv. 42 3 Article 10 (March 2010) 42 pages. DOI:https://doi.org/10.1145/1670679.1670680Salfner, F., Schieschke, M., & Malek, M. (2006). Predicting failures of computer systems: a case study for a telecommunication system. Proceedings 20th IEEE International Parallel & Distributed Processing Symposium. doi:10.1109/ipdps.2006.1639672Shi, L., Chen, H., Sun, J., & Li, K. (2012). vCUDA: GPU-Accelerated High-Performance Computing in Virtual Machines. IEEE Transactions on Computers, 61(6), 804-816. doi:10.1109/tc.2011.112D. P. Siewiorek and R. S. Swarz. 1998. Reliable Computer Systems 3rd ed. A. K. Peters Ltd. D. P. Siewiorek and R. S. Swarz. 1998. Reliable Computer Systems 3rd ed. A. K. Peters Ltd.Singh, S., & Chana, I. (2016). A Survey on Resource Scheduling in Cloud Computing: Issues and Challenges. Journal of Grid Computing, 14(2), 217-264. doi:10.1007/s10723-015-9359-2Slegel, T. J., Averill, R. M., Check, M. A., Giamei, B. C., Krumm, B. W., Krygowski, C. A., … Webb, C. F. (1999). IBM’s S/390 G5 microprocessor design. IEEE Micro, 19(2), 12-23. doi:10.1109/40.755464Sridhar, A., Sabry, M. M., & Atienza, D. (2014). A Semi-Analytical Thermal Modeling Framework for Liquid-Cooled ICs. IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems, 33(8), 1145-1158. doi:10.1109/tcad.2014.2323194Sridharan, V., DeBardeleben, N., Blanchard, S., Ferreira, K. B., Stearley, J., Shalf, J., & Gurumurthi, S. (2015). Memory Errors in Modern Systems. ACM SIGARCH Computer Architecture News, 43(1), 297-310. doi:10.1145/2786763.2694348Stathis, J. H. (2018). The physics of NBTI: What do we really know? 2018 IEEE International Reliability Physics Symposium (IRPS). doi:10.1109/irps.2018.8353539Stellner, G. (s. f.). CoCheck: checkpointing and process migration for MPI. Proceedings of International Conference on Parallel Processing. doi:10.1109/ipps.1996.508106Stone, J. E., Gohara, D., & Shi, G. (2010). OpenCL: A Parallel Programming Standard for Heterogeneous Computing Systems. Computing in Science & Engineering, 12(3), 66-73. doi:10.1109/mcse.2010.69Subasi, O., Di, S., Bautista-Gomez, L., Balaprakash, P., Unsal, O., Labarta, J., … Cappello, F. (2018). Exploring the capabilities of support vector machines in detecting silent data corruptions. Sustainable Computing: Informatics and Systems, 19, 277-290. doi:10.1016/j.suscom.2018.01.004Tang, D., & Iyer, R. K. (1993). Dependability measurement and modeling of a multicomputer system. IEEE Transactions on Computers, 42(1), 62-75. doi:10.1109/12.192214D. Turnbull and N. Alldrin. 2003. Failure Prediction in Hardware Systems. Tech. rep. University of California San Diego CA. Retrieved from http://www.cs.ucsd.edu/ dturnbul/Papers/ServerPrediction.pdf. D. Turnbull and N. Alldrin. 2003. Failure Prediction in Hardware Systems. Tech. rep. University of California San Diego CA. Retrieved from http://www.cs.ucsd.edu/ dturnbul/Papers/ServerPrediction.pdf.Vilalta, R., Apte, C. V., Hellerstein, J. L., Ma, S., & Weiss, S. M. (2002). Predictive algorithms in the management of computer systems. IBM Systems Journal, 41(3), 461-474. doi:10.1147/sj.413.0461Vinoski, S. (2007). Reliability with Erlang. IEEE Internet Com

    Sentiment Analysis based Error Detection for Large-Scale Systems

    Get PDF
    Today’s large-scale systems such as High Performance Computing (HPC) Systems are designed/utilized towards exascale computing, inevitably decreasing its reliability due to the increasing design complexity. HPC systems conduct extensive logging of their execution behaviour. In this paper, we leverage the inherent meaning behind the log messages and propose a novel sentiment analysis-based approach for the error detection in large-scale systems, by automatically mining the sentiments in the log messages. Our contributions are four-fold. (1) We develop a machine learning (ML) based approach to automatically build a sentiment lexicon, based on the system log message templates. (2) Using the sentiment lexicon, we develop an algorithm to detect system errors. (3) We develop an algorithm to identify the nodes and components with erroneous behaviors, based on sentiment polarity scores. (4) We evaluate our solution vs. other state-of-the-art machine/deep learning algorithms based on three representative supercomputers’ system logs. Experiments show that our error detection algorithm can identify error messages with an average MCC score and f-score of 91% and 96% respectively, while state of the art ML/deep learning model (LSTM) obtains only 67% and 84%. To the best of our knowledge, this is the first work leveraging the sentiments embedded in log entries of large-scale systems for system health analysis

    The terminator : an AI-based framework to handle dependability threats in large-scale distributed systems

    Get PDF
    With the advent of resource-hungry applications such as scientific simulations and artificial intelligence (AI), the need for high-performance computing (HPC) infrastructure is becoming more pressing. HPC systems are typically characterised by the scale of the resources they possess, containing a large number of sophisticated HW components that are tightly integrated. This scale and design complexity inherently contribute to sources of uncertainties, i.e., there are dependability threats that perturb the system during application execution. During system execution, these HPC systems generate a massive amount of log messages that capture the health status of the various components. Several previous works have leveraged those systems’ logs for dependability purposes, such as failure prediction, with varying results. In this work, three novel AI-based techniques are proposed to address two major dependability problems, those of (i) error detection and (ii) failure prediction. The proposed error detection technique leverages the sentiments embedded in log messages in a novel way, making the approach HPC system-independent, i.e., the technique can be used to detect errors in any HPC system. On the other hand, two novel self-supervised transformer neural networks are developed for failure prediction, thereby obviating the need for labels, which are notoriously difficult to obtain in HPC systems. The first transformer technique, called Clairvoyant, accurately predicts the location of the failure, while the second technique, called Time Machine, extends Clairvoyant by also accurately predicting the lead time to failure (LTTF). Time Machine addresses the typical regression problem of LTTF as a novel multi-class classification problem, using a novel oversampling method for online time-based task training. Results from six real-world HPC clusters’ datasets show that our approaches significantly outperform the state-of-the-art methods on various metrics
    • …
    corecore