256 research outputs found

    Enabling HW-based task scheduling in large multicore architectures

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    Dynamic Task Scheduling is an enticing programming model aiming to ease the development of parallel programs with intrinsically irregular or data-dependent parallelism. The performance of such solutions relies on the ability of the Task Scheduling HW/SW stack to efficiently evaluate dependencies at runtime and schedule work to available cores. Traditional SW-only systems implicate scheduling overheads of around 30K processor cycles per task, which severely limit the ( core count , task granularity ) combinations that they might adequately handle. Previous work on HW-accelerated Task Scheduling has shown that such systems might support high performance scheduling on processors with up to eight cores, but questions remained regarding the viability of such solutions to support the greater number of cores now frequently found in high-end SMP systems. The present work presents an FPGA-proven, tightly-integrated, Linux-capable, 30-core RISC-V system with hardware accelerated Task Scheduling. We use this implementation to show that HW Task Scheduling can still offer competitive performance at such high core count, and describe how this organization includes hardware and software optimizations that make it even more scalable than previous solutions. Finally, we outline ways in which this architecture could be augmented to overcome inter-core communication bottlenecks, mitigating the cache-degradation effects usually involved in the parallelization of highly optimized serial code.This work is supported by the TEXTAROSSA project G.A. n.956831, as part of the EuroHPC initiative, by the Spanish Government (grants PCI2021-121964, TEXTAROSSA; PDC2022-133323-I00, Multi-Ka; PID2019-107255GB-C21 MCIN/AEI/10.13039/501100011033; and CEX2021-001148-S), by Generalitat de Catalunya (2021 SGR 01007), and FAPESP (grant 2019/26702-8).Peer ReviewedPostprint (published version

    On the co-design of scientific applications and long vector architectures

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    The landscape of High Performance Computing (HPC) system architectures keeps expanding with new technologies and increased complexity. To improve the efficiency of next-generation compute devices, architects are looking for solutions beyond the commodity CPU approach. In 2021, the five most powerful supercomputers in the world use either GP-GPU (General-purpose computing on graphics processing units) accelerators or a customized CPU specially designed to target HPC applications. This trend is only expected to grow in the next years motivated by the compute demands of science and industry. As architectures evolve, the ecosystem of tools and applications must follow. The choices in the number of cores in a socket, the floating point-units per core and the bandwidth through the memory hierarchy among others, have a large impact in the power consumption and compute capabilities of the devices. To balance CPU and accelerators, designers require accurate tools for analyzing and predicting the impact of new architectural features on the performance of complex scientific applications at scale. In such a large design space, capturing and modeling with simulators the complex interactions between the system software and hardware components is a defying challenge. Moreover, applications must be able to exploit those designs with aggressive compute capabilities and memory bandwidth configurations. Algorithms and data structures will need to be redesigned accordingly to expose a high degree of data-level parallelism allowing them to scale in large systems. Therefore, next-generation computing devices will be the result of a co-design effort in hardware and applications supported by advanced simulation tools. In this thesis, we focus our work on the co-design of scientific applications and long vector architectures. We significantly extend a multi-scale simulation toolchain enabling accurate performance and power estimations of large-scale HPC systems. Through simulation, we explore the large design space in current HPC trends over a wide range of applications. We extract speedup and energy consumption figures analyzing the trade-offs and optimal configurations for each of the applications. We describe in detail the optimization process of two challenging applications on real vector accelerators, achieving outstanding operation performance and full memory bandwidth utilization. Overall, we provide evidence-based architectural and programming recommendations that will serve as hardware and software co-design guidelines for the next generation of specialized compute devices.El panorama de las arquitecturas de los sistemas para la Computación de Alto Rendimiento (HPC, de sus siglas en inglés) sigue expandiéndose con nuevas tecnologías y complejidad adicional. Para mejorar la eficiencia de la próxima generación de dispositivos de computación, los arquitectos están buscando soluciones más allá de las CPUs. En 2021, los cinco supercomputadores más potentes del mundo utilizan aceleradores gráficos aplicados a propósito general (GP-GPU, de sus siglas en inglés) o CPUs diseñadas especialmente para aplicaciones HPC. En los próximos años, se espera que esta tendencia siga creciendo motivada por las demandas de más potencia de computación de la ciencia y la industria. A medida que las arquitecturas evolucionan, el ecosistema de herramientas y aplicaciones les debe seguir. Las decisiones eligiendo el número de núcleos por zócalo, las unidades de coma flotante por núcleo y el ancho de banda a través de la jerarquía de memoría entre otros, tienen un gran impacto en el consumo de energía y las capacidades de cómputo de los dispositivos. Para equilibrar las CPUs y los aceleradores, los diseñadores deben utilizar herramientas precisas para analizar y predecir el impacto de nuevas características de la arquitectura en el rendimiento de complejas aplicaciones científicas a gran escala. Dado semejante espacio de diseño, capturar y modelar con simuladores las complejas interacciones entre el software de sistema y los componentes de hardware es un reto desafiante. Además, las aplicaciones deben ser capaces de explotar tales diseños con agresivas capacidades de cómputo y ancho de banda de memoria. Los algoritmos y estructuras de datos deberán ser rediseñadas para exponer un alto grado de paralelismo de datos permitiendo así escalarlos en grandes sistemas. Por lo tanto, la siguiente generación de dispósitivos de cálculo será el resultado de un esfuerzo de codiseño tanto en hardware como en aplicaciones y soportado por avanzadas herramientas de simulación. En esta tesis, centramos nuestro trabajo en el codiseño de aplicaciones científicas y arquitecturas vectoriales largas. Extendemos significativamente una serie de herramientas para la simulación multiescala permitiendo así obtener estimaciones de rendimiento y potencia de sistemas HPC de gran escala. A través de simulaciones, exploramos el gran espacio de diseño de las tendencias actuales en HPC sobre un amplio rango de aplicaciones. Extraemos datos sobre la mejora y el consumo energético analizando las contrapartidas y las configuraciones óptimas para cada una de las aplicaciones. Describimos en detalle el proceso de optimización de dos aplicaciones en aceleradores vectoriales, obteniendo un rendimiento extraordinario a nivel de operaciones y completa utilización del ancho de memoria disponible. Con todo, ofrecemos recomendaciones empíricas a nivel de arquitectura y programación que servirán como instrucciones para diseñar mejor hardware y software para la siguiente generación de dispositivos de cálculo especializados.Postprint (published version

    Applying Hypervisor-Based Fault Tolerance Techniques to Safety-Critical Embedded Systems

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    This document details the work conducted through the development of this thesis, and it is structured as follows: • Chapter 1, Introduction, has briefly presented the motivation, objectives, and contributions of this thesis. • Chapter 2, Fundamentals, exposes a series of concepts that are necessary to correctly understand the information presented in the rest of the thesis, such as the concepts of virtualization, hypervisors, or software-based fault tolerance. In addition, this chapter includes an exhaustive review and comparison between the different hypervisors used in scientific studies dealing with safety-critical systems, and a brief review of some works that try to improve fault tolerance in the hypervisor itself, an area of research that is outside the scope of this work, but that complements the mechanism presented and could be established as a line of future work. • Chapter 3, Problem Statement and Related Work, explains the main reasons why the concept of Hypervisor-Based Fault Tolerance was born and reviews the main articles and research papers on the subject. This review includes both papers related to safety-critical embedded systems (such as the research carried out in this thesis) and papers related to cloud servers and cluster computing that, although not directly applicable to embedded systems, may raise useful concepts that make our solution more complete or allow us to establish future lines of work. • Chapter 4, Proposed Solution, begins with a brief comparison of the work presented in Chapter 3 to establish the requirements that our solution must meet in order to be as complete and innovative as possible. It then sets out the architecture of the proposed solution and explains in detail the two main elements of the solution: the Voter and the Health Monitoring partition. • Chapter 5, Prototype, explains in detail the prototyping of the proposed solution, including the choice of the hypervisor, the processing board, and the critical functionality to be redundant. With respect to the voter, it includes prototypes for both the software version (the voter is implemented in a virtual machine) and the hardware version (the voter is implemented as IP cores on the FPGA). • Chapter 6, Evaluation, includes the evaluation of the prototype developed in Chapter 5. As a preliminary step and given that there is no evidence in this regard, an exercise is carried out to measure the overhead involved in using the XtratuM hypervisor versus not using it. Subsequently, qualitative tests are carried out to check that Health Monitoring is working as expected and a fault injection campaign is carried out to check the error detection and correction rate of our solution. Finally, a comparison is made between the performance of the hardware and software versions of Voter. • Chapter 7, Conclusions and Future Work, is dedicated to collect the conclusions obtained and the contributions made during the research (in the form of articles in journals, conferences and contributions to projects and proposals in the industry). In addition, it establishes some lines of future work that could complete and extend the research carried out during this doctoral thesis.Programa de Doctorado en Ciencia y Tecnología Informática por la Universidad Carlos III de MadridPresidente: Katzalin Olcoz Herrero.- Secretario: Félix García Carballeira.- Vocal: Santiago Rodríguez de la Fuent

    High Performance Embedded Computing

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    Nowadays, the prevalence of computing systems in our lives is so ubiquitous that we live in a cyber-physical world dominated by computer systems, from pacemakers to cars and airplanes. These systems demand for more computational performance to process large amounts of data from multiple data sources with guaranteed processing times. Actuating outside of the required timing bounds may cause the failure of the system, being vital for systems like planes, cars, business monitoring, e-trading, etc. High-Performance and Time-Predictable Embedded Computing presents recent advances in software architecture and tools to support such complex systems, enabling the design of embedded computing devices which are able to deliver high-performance whilst guaranteeing the application required timing bounds. Technical topics discussed in the book include: Parallel embedded platforms Programming models Mapping and scheduling of parallel computations Timing and schedulability analysis Runtimes and operating systemsThe work reflected in this book was done in the scope of the European project P SOCRATES, funded under the FP7 framework program of the European Commission. High-performance and time-predictable embedded computing is ideal for personnel in computer/communication/embedded industries as well as academic staff and master/research students in computer science, embedded systems, cyber-physical systems and internet-of-things

    High-Performance and Time-Predictable Embedded Computing

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    Nowadays, the prevalence of computing systems in our lives is so ubiquitous that we live in a cyber-physical world dominated by computer systems, from pacemakers to cars and airplanes. These systems demand for more computational performance to process large amounts of data from multiple data sources with guaranteed processing times. Actuating outside of the required timing bounds may cause the failure of the system, being vital for systems like planes, cars, business monitoring, e-trading, etc. High-Performance and Time-Predictable Embedded Computing presents recent advances in software architecture and tools to support such complex systems, enabling the design of embedded computing devices which are able to deliver high-performance whilst guaranteeing the application required timing bounds. Technical topics discussed in the book include: Parallel embedded platforms Programming models Mapping and scheduling of parallel computations Timing and schedulability analysis Runtimes and operating systems The work reflected in this book was done in the scope of the European project P SOCRATES, funded under the FP7 framework program of the European Commission. High-performance and time-predictable embedded computing is ideal for personnel in computer/communication/embedded industries as well as academic staff and master/research students in computer science, embedded systems, cyber-physical systems and internet-of-things.info:eu-repo/semantics/publishedVersio

    Evaluation of the parallel computational capabilities of embedded platforms for critical systems

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    Modern critical systems need higher performance which cannot be delivered by the simple architectures used so far. Latest embedded architectures feature multi-cores and GPUs, which can be used to satisfy this need. In this thesis we parallelise relevant applications from multiple critical domains represented in the GPU4S benchmark suite, and perform a comparison of the parallel capabilities of candidate platforms for use in critical systems. In particular, we port the open source GPU4S Bench benchmarking suite in the OpenMP programming model, and we benchmark the candidate embedded heterogeneous multi-core platforms of the H2020 UP2DATE project, NVIDIA TX2, NVIDIA Xavier and Xilinx Zynq Ultrascale+, in order to drive the selection of the research platform which will be used in the next phases of the project. Our result indicate that in terms of CPU and GPU performance, the NVIDIA Xavier is the highest performing platform

    Building Computing-As-A-Service Mobile Cloud System

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    The last five years have witnessed the proliferation of smart mobile devices, the explosion of various mobile applications and the rapid adoption of cloud computing in business, governmental and educational IT deployment. There is also a growing trends of combining mobile computing and cloud computing as a new popular computing paradigm nowadays. This thesis envisions the future of mobile computing which is primarily affected by following three trends: First, servers in cloud equipped with high speed multi-core technology have been the main stream today. Meanwhile, ARM processor powered servers is growingly became popular recently and the virtualization on ARM systems is also gaining wide ranges of attentions recently. Second, high-speed internet has been pervasive and highly available. Mobile devices are able to connect to cloud anytime and anywhere. Third, cloud computing is reshaping the way of using computing resources. The classic pay/scale-as-you-go model allows hardware resources to be optimally allocated and well-managed. These three trends lend credence to a new mobile computing model with the combination of resource-rich cloud and less powerful mobile devices. In this model, mobile devices run the core virtualization hypervisor with virtualized phone instances, allowing for pervasive access to more powerful, highly-available virtual phone clones in the cloud. The centralized cloud, powered by rich computing and memory recourses, hosts virtual phone clones and repeatedly synchronize the data changes with virtual phone instances running on mobile devices. Users can flexibly isolate different computing environments. In this dissertation, we explored the opportunity of leveraging cloud resources for mobile computing for the purpose of energy saving, performance augmentation as well as secure computing enviroment isolation. We proposed a framework that allows mo- bile users to seamlessly leverage cloud to augment the computing capability of mobile devices and also makes it simpler for application developers to run their smartphone applications in the cloud without tedious application partitioning. This framework was built with virtualization on both server side and mobile devices. It has three building blocks including agile virtual machine deployment, efficient virtual resource management, and seamless mobile augmentation. We presented the design, imple- mentation and evaluation of these three components and demonstrated the feasibility of the proposed mobile cloud model

    Low power processor architecture and multicore approach for embedded systems

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    13301甲第4319号博士(工学)金沢大学博士論文本文Full 以下に掲載:1.IEICE Transactions Vol. E98-C(7) pp.544-549 2015. IEICE. 共著者: S. Otani, H. Kondo. /2.Reuse 許可エビデンス送

    ControlPULP: A RISC-V On-Chip Parallel Power Controller for Many-Core HPC Processors with FPGA-Based Hardware-In-The-Loop Power and Thermal Emulation

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    High-Performance Computing (HPC) processors are nowadays integrated Cyber-Physical Systems demanding complex and high-bandwidth closed-loop power and thermal control strategies. To efficiently satisfy real-time multi-input multi-output (MIMO) optimal power requirements, high-end processors integrate an on-die power controller system (PCS). While traditional PCSs are based on a simple microcontroller (MCU)-class core, more scalable and flexible PCS architectures are required to support advanced MIMO control algorithms for managing the ever-increasing number of cores, power states, and process, voltage, and temperature variability. This paper presents ControlPULP, an open-source, HW/SW RISC-V parallel PCS platform consisting of a single-core MCU with fast interrupt handling coupled with a scalable multi-core programmable cluster accelerator and a specialized DMA engine for the parallel acceleration of real-time power management policies. ControlPULP relies on FreeRTOS to schedule a reactive power control firmware (PCF) application layer. We demonstrate ControlPULP in a power management use-case targeting a next-generation 72-core HPC processor. We first show that the multi-core cluster accelerates the PCF, achieving 4.9x speedup compared to single-core execution, enabling more advanced power management algorithms within the control hyper-period at a shallow area overhead, about 0.1% the area of a modern HPC CPU die. We then assess the PCS and PCF by designing an FPGA-based, closed-loop emulation framework that leverages the heterogeneous SoCs paradigm, achieving DVFS tracking with a mean deviation within 3% the plant's thermal design power (TDP) against a software-equivalent model-in-the-loop approach. Finally, we show that the proposed PCF compares favorably with an industry-grade control algorithm under computational-intensive workloads.Comment: 33 pages, 11 figure
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