186 research outputs found
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Accurate modeling of core and memory locality for proxy generation targeting emerging applications and architectures
Designing optimal computer systems for improved performance and energy efficiency requires architects and designers to have a deep understanding of the end-user workloads. However, many end-users (e.g., large corporations, banks, defense organizations, etc.) are apprehensive to share their applications with designers due to the confidential nature of software code and data. In addition, emerging applications pose significant challenges to early design space exploration due to their long-running nature and the highly complex nature of their software stack that cannot be supported on many early performance models.
The above challenges can be overcome by using a proxy benchmark. A miniaturized proxy benchmark can be used as a substitute of the original workload to perform early computer performance evaluation. The process of generating a proxy benchmark consists of extracting a set of key statistics to summarize the behavior of end-user applications through profiling and using the collected statistics to synthesize a representative proxy benchmark. Using such proxy benchmarks can help designers to understand the behavior of end-user’s workloads in a reasonable time without the users having to disclose sensitive information about their workloads.
Prior proxy benchmarking schemes leverage micro-architecture independent metrics, derived from detailed simulation tools, to generate proxy benchmarks. However, many emerging workloads do not work reliably with many profiling or simulation tools, in which case it becomes impossible to apply prior proxy generation techniques to generate proxy benchmarks for such complex applications. Furthermore, these techniques model instruction pipeline-level locality in great detail, but abstract out memory locality modeling using simple stride-based models. This results in poor cloning accuracy especially for emerging applications, which have larger memory footprints and complex access patterns. A few detailed cache and memory locality modeling techniques have also been proposed in literature. However, these techniques either model limited locality metrics and suffer from poor cloning accuracy or are fairly accurate, but at the expense of significant metadata overhead. Finally, none of the prior proxy benchmarking techniques model both core and memory locality with high accuracy. As a result, they are not useful for studying system-level performance behavior. Keeping the above key limitations and shortcomings of prior work in mind, this dissertation presents several techniques that expand the frontiers of workload proxy benchmarking, thereby enabling computer designers to gain a better and faster understanding of end-user application behavior without compromising the privileged nature of software or data.
This dissertation first presents a core-level proxy benchmark generation methodology that leverages performance metrics derived from hardware performance counter measurements to create miniature proxy benchmarks targeting emerging big-data applications. The presented performance counter based characterization and associated extrapolation into generic parameters for proxy generation enables faster analysis (runs almost at native hardware speeds, unlike prior workload cloning proposals) and proxy generation for emerging applications that do not work with simulators or profiling tools. The generated proxy benchmarks are representative of the performance of the real-world big-data applications, including operating system and run-time effects, and yet converge to results quickly without needing any complex software stack support.
Next, to improve upon the accuracy and efficiency of prior memory proxy benchmarking techniques, this dissertation presents a novel memory locality modeling technique that leverages localized pattern detection to create miniature memory proxy benchmarks. The presented technique models memory reference locality by decomposing an application’s memory accesses into a set of independent streams (localized by using address region based localization property), tracking fine-grained patterns within the localized streams and, finally, chaining or interleaving accesses from different localized memory streams to create an ordered proxy memory access sequence. This dissertation further extends the workload cloning approach to Graphics Processing Units (GPUs) and presents a novel proxy generation methodology to model the inherent memory access locality of GPU applications, while also accounting for the GPU’s parallel execution model. The generated memory proxy benchmarks help to enable fast and efficient design space exploration of futuristic memory hierarchies.
Finally, this dissertation presents a novel technique to integrate accurate core and memory locality models to create system-level proxy benchmarks targeting emerging applications. This is a new capability that can facilitate efficient overall system (core, cache and memory subsystem) design-space exploration. This dissertation further presents a novel methodology that exploits the synthetic benchmark generation framework to create hypothetical workloads with performance behavior that does not currently exist. Such proxies can be generated to cover anticipated code trends and can represent futuristic workloads before the workloads even exist.Electrical and Computer Engineerin
Accurate Energy and Performance Prediction for Frequency-Scaled GPU Kernels
Energy optimization is an increasingly important aspect of today’s high-performance computing applications. In particular, dynamic voltage and frequency scaling (DVFS) has become a widely adopted solution to balance performance and energy consumption, and hardware vendors provide management libraries that allow the programmer to change both memory and core frequencies manually to minimize energy consumption while maximizing performance. This article focuses on modeling the energy consumption and speedup of GPU applications while using different frequency configurations. The task is not straightforward, because of the large set of possible and uniformly distributed configurations and because of the multi-objective nature of the problem, which minimizes energy consumption and maximizes performance. This article proposes a machine learning-based method to predict the best core and memory frequency configurations on GPUs for an input OpenCL kernel. The method is based on two models for speedup and normalized energy predictions over the default frequency configuration. Those are later combined into a multi-objective approach that predicts a Pareto-set of frequency configurations. Results show that our approach is very accurate at predicting extema and the Pareto set, and finds frequency configurations that dominate the default configuration in either energy or performance.DFG, 360291326, CELERITY: Innovative Modellierung für Skalierbare Verteilte Laufzeitsystem
Computing server power modeling in a data center: survey,taxonomy and performance evaluation
Data centers are large scale, energy-hungry infrastructure serving the
increasing computational demands as the world is becoming more connected in
smart cities. The emergence of advanced technologies such as cloud-based
services, internet of things (IoT) and big data analytics has augmented the
growth of global data centers, leading to high energy consumption. This upsurge
in energy consumption of the data centers not only incurs the issue of surging
high cost (operational and maintenance) but also has an adverse effect on the
environment. Dynamic power management in a data center environment requires the
cognizance of the correlation between the system and hardware level performance
counters and the power consumption. Power consumption modeling exhibits this
correlation and is crucial in designing energy-efficient optimization
strategies based on resource utilization. Several works in power modeling are
proposed and used in the literature. However, these power models have been
evaluated using different benchmarking applications, power measurement
techniques and error calculation formula on different machines. In this work,
we present a taxonomy and evaluation of 24 software-based power models using a
unified environment, benchmarking applications, power measurement technique and
error formula, with the aim of achieving an objective comparison. We use
different servers architectures to assess the impact of heterogeneity on the
models' comparison. The performance analysis of these models is elaborated in
the paper
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