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首页> 外文期刊>Journal of Physics: Conference Series >Cross-architecture Kalman filter benchmarks on modern hardware platforms
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Cross-architecture Kalman filter benchmarks on modern hardware platforms

机译:现代硬件平台上的跨体系结构卡尔曼滤波器基准

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摘要

The 2020 upgrade of the LHCb detector will vastly increase the rate of collisions the online system needs to process in software in order to filter events in real-time. 30 million collisions per second will pass through a selection chain where each step is executed conditional to its prior acceptance. The Kalman filter is a process of the event reconstruction that, due to its time characteristics and early execution in the selection chain, consumes 40% of the whole reconstruction time in the current trigger software. This makes it a time-critical component as the LHCb trigger evolves into a full software trigger in the upgrade. The algorithm Cross Kalman allows performance tests across a variety of architectures, including multi and many-core platforms, and has been successfully integrated and validated in the LHCb codebase. Since its inception, new hardware architectures have become available exposing features that require fine-grained tuning in order to fully utilize their resources. In this paper we present performance benchmarks and explore the IntelSUP?/SUP Skylake and IntelSUP?/SUP Knights Landing architectures in depth. We determine the performance gain over previous architectures and show that the efficiency of our implementation is close to the maximum attainable given the mathematical formulation of our problem.
机译:LHCb检测器的2020年升级将极大提高在线系统需要实时处理事件以在线过滤事件的碰撞率。每秒3000万次碰撞将通过一个选择链,在此选择链中,每个步骤的执行均取决于其事先接受的条件。卡尔曼滤波器是事件重构的过程,由于其时间特性和选择链中的早期执行,它会消耗当前触发软件中整个重构时间的40%。随着LHCb触发器在升级过程中演变为完整的软件触发器,这使其成为时间紧迫的组件。 Cross Kalman算法允许跨多种架构(包括多核和多核平台)进行性能测试,并且已经在LHCb代码库中成功集成和验证。自成立以来,新的硬件体系结构已面世,其暴露的功能要求进行细粒度的调整才能充分利用其资源。在本文中,我们介绍了性能基准,并深入研究了Intel Skylake和Intel Knights Landing架构。我们确定了与以前的体系结构相比的性能提升,并表明在给出问题的数学公式后,我们的实现效率接近可达到的最大效率。

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