1,202 research outputs found
Adaptive runtime-assisted block prefetching on chip-multiprocessors
Memory stalls are a significant source of performance degradation in modern processors. Data prefetching is a widely adopted and well studied technique used to alleviate this problem. Prefetching can be performed by the hardware, or be initiated and controlled by software. Among software controlled prefetching we find a wide variety of schemes, including runtime-directed prefetching and more specifically runtime-directed block prefetching. This paper proposes a hybrid prefetching mechanism that integrates a software driven block prefetcher with existing hardware prefetching techniques. Our runtime-assisted software prefetcher brings large blocks of data on-chip with the support of a low cost hardware engine, and synergizes with existing hardware prefetchers that manage locality at a finer granularity. The runtime system that drives the prefetch engine dynamically selects which cache to prefetch to. Our evaluation on a set of scientific benchmarks obtains a maximum speed up of 32 and 10 % on average compared to a baseline with hardware prefetching only. As a result, we also achieve a reduction of up to 18 and 3 % on average in energy-to-solution.Peer ReviewedPostprint (author's final draft
Adaptive memory-side last-level GPU caching
Emerging GPU applications exhibit increasingly high computation demands which has led GPU manufacturers to build GPUs with an increasingly large number of streaming multiprocessors (SMs). Providing data to the SMs at high bandwidth puts significant pressure on the memory hierarchy and the Network-on-Chip (NoC). Current GPUs typically partition the memory-side last-level cache (LLC) in equally-sized slices that are shared by all SMs. Although a shared LLC typically results in a lower miss rate, we find that for workloads with high degrees of data sharing across SMs, a private LLC leads to a significant performance advantage because of increased bandwidth to replicated cache lines across different LLC slices.
In this paper, we propose adaptive memory-side last-level GPU caching to boost performance for sharing-intensive workloads that need high bandwidth to read-only shared data. Adaptive caching leverages a lightweight performance model that balances increased LLC bandwidth against increased miss rate under private caching. In addition to improving performance for sharing-intensive workloads, adaptive caching also saves energy in a (co-designed) hierarchical two-stage crossbar NoC by power-gating and bypassing the second stage if the LLC is configured as a private cache. Our experimental results using 17 GPU workloads show that adaptive caching improves performance by 28.1% on average (up to 38.1%) compared to a shared LLC for sharing-intensive workloads. In addition, adaptive caching reduces NoC energy by 26.6% on average (up to 29.7%) and total system energy by 6.1% on average (up to 27.2%) when configured as a private cache. Finally, we demonstrate through a GPU NoC design space exploration that a hierarchical two-stage crossbar is both more power- and area-efficient than full and concentrated crossbars with the same bisection bandwidth, thus providing a low-cost cooperative solution to exploit workload sharing behavior in memory-side last-level caches
Scalability of broadcast performance in wireless network-on-chip
Networks-on-Chip (NoCs) are currently the paradigm of choice to interconnect the cores of a chip multiprocessor. However, conventional NoCs may not suffice to fulfill the on-chip communication requirements of processors with hundreds or thousands of cores. The main reason is that the performance of such networks drops as the number of cores grows, especially in the presence of multicast and broadcast traffic. This not only limits the scalability of current multiprocessor architectures, but also sets a performance wall that prevents the development of architectures that generate moderate-to-high levels of multicast. In this paper, a Wireless Network-on-Chip (WNoC) where all cores share a single broadband channel is presented. Such design is conceived to provide low latency and ordered delivery for multicast/broadcast traffic, in an attempt to complement a wireline NoC that will transport the rest of communication flows. To assess the feasibility of this approach, the network performance of WNoC is analyzed as a function of the system size and the channel capacity, and then compared to that of wireline NoCs with embedded multicast support. Based on this evaluation, preliminary results on the potential performance of the proposed hybrid scheme are provided, together with guidelines for the design of MAC protocols for WNoC.Peer ReviewedPostprint (published version
Multithreading Aware Hardware Prefetching for Chip Multiprocessors
To take advantage of the processing power in the Chip Multiprocessors design,
applications must be divided into semi-independent processes that can run concur-
rently on multiple cores within a system. Therefore, programmers must insert thread
synchronization semantics (i.e. locks, barriers, and condition variables) to synchro-
nize data access between processes. Indeed, threads spend long time waiting to
acquire the lock of a critical section. In addition, a processor has to stall execution
to wait for load data accesses to complete. Furthermore, there are often independent instructions which include load instructions beyond synchronization semantics that could be executed in parallel while a thread waits on the synchronization semantics. The conveniences of the cache memories come with some extra cost in Chip Multiprocessors. Cache Coherence mechanisms address the Memory Consistency problem. However, Cache Coherence adds considerable overhead to memory accesses. Having aggressive prefetcher on different cores of a Chip Multiprocessor can definitely lead to significant system performance degradation when running multi-threaded applications. This result of prefetch-demand interference when a prefetcher in one core ends up pulling shared data from a producing core before it has been written, the cache block will end up transitioning back and forth between the cores and result in useless prefetch, saturating the memory bandwidth and substantially increase the latency to critical shared data.
We present a hardware prefetcher that enables large performance improvements
from prefetching in Chip Multiprocessors by significantly reducing prefetch-demand
interference. Furthermore, it will utilize the time that a thread spends waiting on syn-
chronization semantics to run ahead of the critical section to speculate and prefetch independent load instruction data beyond the synchronization semantics
Analysis and Approximation of Optimal Co-Scheduling on CMP
In recent years, the increasing design complexity and the problems of power and heat dissipation have caused a shift in processor technology to favor Chip Multiprocessors. In Chip Multiprocessors (CMP) architecture, it is common that multiple cores share some on-chip cache. The sharing may cause cache thrashing and contention among co-running jobs. Job co-scheduling is an approach to tackling the problem by assigning jobs to cores appropriately so that the contention and consequent performance degradations are minimized. This dissertation aims to tackle two of the most prominent challenges in job co-scheduling.;The first challenge is in the computational complexity for determining optimal job co-schedules. This dissertation presents one of the first systematic analyses on the complexity of job co-scheduling. Besides proving the NP completeness of job co-scheduling, it introduces a set of algorithms, based on graph theory and Integer/Linear Programming, for computing optimal co-schedules or their lower bounds in scenarios with or without job migrations. For complex cases, it empirically demonstrates the feasibility for approximating the optimal schedules effectively by proposing several heuristics-based algorithms. These discoveries facilitate the assessment of job co-schedulers by providing necessary baselines, and shed insights to the development of practical co-scheduling systems.;The second challenge resides in the prediction of the performance of processes co-running on a shared cache. This dissertation explores the influence on co-run performance prediction imposed by co-runners, program inputs, and cache configurations. Through a sequence of formal analysis, we derive an analytical co-run locality model, uncovering the inherent statistical connections between the data references of programs single-runs and their co-run locality. The model offers theoretical insights on co-run locality analysis and leads to a lightweight approach for fast prediction of shared cache performance. We demonstrate the effectiveness of the model in enabling proactive job co-scheduling.;Together, the two-dimensional findings open up many new opportunities for cache management on modern CMP by laying the foundation for job co-scheduling, and enhancing the understanding to data locality and cache sharing significantly
Speculative Segmented Sum for Sparse Matrix-Vector Multiplication on Heterogeneous Processors
Sparse matrix-vector multiplication (SpMV) is a central building block for
scientific software and graph applications. Recently, heterogeneous processors
composed of different types of cores attracted much attention because of their
flexible core configuration and high energy efficiency. In this paper, we
propose a compressed sparse row (CSR) format based SpMV algorithm utilizing
both types of cores in a CPU-GPU heterogeneous processor. We first
speculatively execute segmented sum operations on the GPU part of a
heterogeneous processor and generate a possibly incorrect results. Then the CPU
part of the same chip is triggered to re-arrange the predicted partial sums for
a correct resulting vector. On three heterogeneous processors from Intel, AMD
and nVidia, using 20 sparse matrices as a benchmark suite, the experimental
results show that our method obtains significant performance improvement over
the best existing CSR-based SpMV algorithms. The source code of this work is
downloadable at https://github.com/bhSPARSE/Benchmark_SpMV_using_CSRComment: 22 pages, 8 figures, Published at Parallel Computing (PARCO
TriCheck: Memory Model Verification at the Trisection of Software, Hardware, and ISA
Memory consistency models (MCMs) which govern inter-module interactions in a
shared memory system, are a significant, yet often under-appreciated, aspect of
system design. MCMs are defined at the various layers of the hardware-software
stack, requiring thoroughly verified specifications, compilers, and
implementations at the interfaces between layers. Current verification
techniques evaluate segments of the system stack in isolation, such as proving
compiler mappings from a high-level language (HLL) to an ISA or proving
validity of a microarchitectural implementation of an ISA.
This paper makes a case for full-stack MCM verification and provides a
toolflow, TriCheck, capable of verifying that the HLL, compiler, ISA, and
implementation collectively uphold MCM requirements. The work showcases
TriCheck's ability to evaluate a proposed ISA MCM in order to ensure that each
layer and each mapping is correct and complete. Specifically, we apply TriCheck
to the open source RISC-V ISA, seeking to verify accurate, efficient, and legal
compilations from C11. We uncover under-specifications and potential
inefficiencies in the current RISC-V ISA documentation and identify possible
solutions for each. As an example, we find that a RISC-V-compliant
microarchitecture allows 144 outcomes forbidden by C11 to be observed out of
1,701 litmus tests examined. Overall, this paper demonstrates the necessity of
full-stack verification for detecting MCM-related bugs in the hardware-software
stack.Comment: Proceedings of the Twenty-Second International Conference on
Architectural Support for Programming Languages and Operating System
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