21 research outputs found

    ARCHITECTING EMERGING MEMORY TECHNOLOGIES FOR ENERGY-EFFICIENT COMPUTING IN MODERN PROCESSORS

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    Ph.DDOCTOR OF PHILOSOPH

    New Techniques for On-line Testing and Fault Mitigation in GPUs

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    L'abstract è presente nell'allegato / the abstract is in the attachmen

    High Performance On-Chip Interconnects Design for Future Many-Core Architectures

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    Switch-based Network-on-Chip (NoC) is a widely accepted inter-core communication infrastructure for Chip Multiprocessors (CMPs). With the continued advance of CMOS technology, the number of cores on a single chip keeps increasing at a rapid pace. It is highly expected that many-core architectures with more than hundreds of processor cores will be commercialized in the near future. In such a large scale CMP system, NoC overheads are more dominant than computation power in determining overall system performance. Also, for modern computational workloads requiring abundant thread level parallelism (TLP), NoC design for highly-parallel, many-core accelerators such as General Purpose Graphics Processing Units (GPGPUs) is of primary importance in harnessing the potential of massive thread- and data-level parallelism. In these contexts, it is critical that NoC provides both low latency and high bandwidth within limited on-chip power and area budgets. In this dissertation, we explore various design issues inherent in future many-core architectures, CMPs and GPGPUs, to achieve both high performance and power efficiency. First, we deal with issues in using a promising next generation memory technology, Spin-Transfer Torque Magnetic RAM (STT-MRAM), for NoC input buffers in CMPs. Using a high density and low leakage memory offers more buffer capacities with the same die footprint, thus helping increase network throughput in NoC routers. However, its long latency and high power consumption in write operations still need to be addressed. Thus, we propose a hybrid design of input buffers using both SRAM and STT-MRAM to hide the long write latency efficiently. Considering that simple data migration in the hybrid buffer consumes more dynamic power compared to SRAM, we provide a lazy migration scheme that reduces the dynamic power consumption of the hybrid buffer. Second, we propose the first NoC router design that uses only STT-MRAM, providing much larger buffer space with less power consumption, while preserving data integrity. To hide the multicycle writes, we employ a multibank STT-MRAM buffer, a virtual channel with multiple banks where every incoming flit is seamlessly pipelined to each bank alternately. Our STT-MRAM design has aggressively reduced the retention time, resulting in a significant reduction in the latency and power overheads of write operations. To ensure data integrity against inadvertent bit flips from the thermal fluctuation during the given retention time, we propose a cost-efficient dynamic buffer refresh scheme combined with Error Correcting Codes (ECC) to detect and correct data corruption. Third, we present schemes for bandwidth-efficient on-chip interconnects in GPGPUs. GPGPUs place a heavy demand on the on-chip interconnect between the many cores and a few memory controllers (MCs). Thus, traffic is highly asymmetric, impacting on-chip resource utilization and system performance. Here, we analyze the communication demands of typical GPGPU applications, and propose efficient NoC designs to meet those demands

    A survey of near-data processing architectures for neural networks

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    Data-intensive workloads and applications, such as machine learning (ML), are fundamentally limited by traditional computing systems based on the von-Neumann architecture. As data movement operations and energy consumption become key bottlenecks in the design of computing systems, the interest in unconventional approaches such as Near-Data Processing (NDP), machine learning, and especially neural network (NN)-based accelerators has grown significantly. Emerging memory technologies, such as ReRAM and 3D-stacked, are promising for efficiently architecting NDP-based accelerators for NN due to their capabilities to work as both high-density/low-energy storage and in/near-memory computation/search engine. In this paper, we present a survey of techniques for designing NDP architectures for NN. By classifying the techniques based on the memory technology employed, we underscore their similarities and differences. Finally, we discuss open challenges and future perspectives that need to be explored in order to improve and extend the adoption of NDP architectures for future computing platforms. This paper will be valuable for computer architects, chip designers, and researchers in the area of machine learning.This work has been supported by the CoCoUnit ERC Advanced Grant of the EU’s Horizon 2020 program (grant No 833057), the Spanish State Research Agency (MCIN/AEI) under grant PID2020-113172RB-I00, and the ICREA Academia program.Peer ReviewedPostprint (published version

    Toward Reliable, Secure, and Energy-Efficient Multi-Core System Design

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    Computer hardware researchers have perennially focussed on improving the performance of computers while stipulating the energy consumption under a strict budget. While several innovations over the years have led to high performance and energy efficient computers, more challenges have also emerged as a fallout. For example, smaller transistor devices in modern multi-core systems are afflicted with several reliability and security concerns, which were inconceivable even a decade ago. Tackling these bottlenecks happens to negatively impact the power and performance of the computers. This dissertation explores novel techniques to gracefully solve some of the pressing challenges of the modern computer design. Specifically, the proposed techniques improve the reliability of on-chip communication fabric under a high power supply noise, increase the energy-efficiency of low-power graphics processing units, and demonstrate an unprecedented security loophole of the low-power computing paradigm through rigorous hardware-based experiments

    Exploiting heterogeneity in Chip-Multiprocessor Design

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    In the past decade, semiconductor manufacturers are persistent in building faster and smaller transistors in order to boost the processor performance as projected by Moore’s Law. Recently, as we enter the deep submicron regime, continuing the same processor development pace becomes an increasingly difficult issue due to constraints on power, temperature, and the scalability of transistors. To overcome these challenges, researchers propose several innovations at both architecture and device levels that are able to partially solve the problems. These diversities in processor architecture and manufacturing materials provide solutions to continuing Moore’s Law by effectively exploiting the heterogeneity, however, they also introduce a set of unprecedented challenges that have been rarely addressed in prior works. In this dissertation, we present a series of in-depth studies to comprehensively investigate the design and optimization of future multi-core and many-core platforms through exploiting heteroge-neities. First, we explore a large design space of heterogeneous chip multiprocessors by exploiting the architectural- and device-level heterogeneities, aiming to identify the optimal design patterns leading to attractive energy- and cost-efficiencies in the pre-silicon stage. After this high-level study, we pay specific attention to the architectural asymmetry, aiming at developing a heterogeneity-aware task scheduler to optimize the energy-efficiency on a given single-ISA heterogeneous multi-processor. An advanced statistical tool is employed to facilitate the algorithm development. In the third study, we shift our concentration to the device-level heterogeneity and propose to effectively leverage the advantages provided by different materials to solve the increasingly important reliability issue for future processors

    Dependable Embedded Systems

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    This Open Access book introduces readers to many new techniques for enhancing and optimizing reliability in embedded systems, which have emerged particularly within the last five years. This book introduces the most prominent reliability concerns from today’s points of view and roughly recapitulates the progress in the community so far. Unlike other books that focus on a single abstraction level such circuit level or system level alone, the focus of this book is to deal with the different reliability challenges across different levels starting from the physical level all the way to the system level (cross-layer approaches). The book aims at demonstrating how new hardware/software co-design solution can be proposed to ef-fectively mitigate reliability degradation such as transistor aging, processor variation, temperature effects, soft errors, etc. Provides readers with latest insights into novel, cross-layer methods and models with respect to dependability of embedded systems; Describes cross-layer approaches that can leverage reliability through techniques that are pro-actively designed with respect to techniques at other layers; Explains run-time adaptation and concepts/means of self-organization, in order to achieve error resiliency in complex, future many core systems

    Understanding Quantum Technologies 2022

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    Understanding Quantum Technologies 2022 is a creative-commons ebook that provides a unique 360 degrees overview of quantum technologies from science and technology to geopolitical and societal issues. It covers quantum physics history, quantum physics 101, gate-based quantum computing, quantum computing engineering (including quantum error corrections and quantum computing energetics), quantum computing hardware (all qubit types, including quantum annealing and quantum simulation paradigms, history, science, research, implementation and vendors), quantum enabling technologies (cryogenics, control electronics, photonics, components fabs, raw materials), quantum computing algorithms, software development tools and use cases, unconventional computing (potential alternatives to quantum and classical computing), quantum telecommunications and cryptography, quantum sensing, quantum technologies around the world, quantum technologies societal impact and even quantum fake sciences. The main audience are computer science engineers, developers and IT specialists as well as quantum scientists and students who want to acquire a global view of how quantum technologies work, and particularly quantum computing. This version is an extensive update to the 2021 edition published in October 2021.Comment: 1132 pages, 920 figures, Letter forma

    Energy Efficient Servers

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    Computer scienc

    Energy Efficient Servers

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    Computer scienc
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