会議情報
Bench 2024: BenchCouncil International Symposium on Benchmarking, Measuring and Optimizing
https://www.benchcouncil.org/bench2024/
提出日:
2024-08-05
通知日:
2024-09-30
会議日:
2024-12-04
場所:
Guangzhou, China
年:
16
閲覧: 8543   追跡: 2   出席: 1

論文募集
The Bench conference encompasses a wide range of topics in benchmarks, datasets, metrics, indexes, measurement, evaluation, optimization, supporting methods and tools, and other best practices in computer science, medicine, finance, education, management, etc. Bench's multidisciplinary and interdisciplinary emphasis provides an ideal environment for developers and researchers from different areas and communities to discuss practical and theoretical work. The topics of interest include, but are not limited to the following:

Topics

Benchmark science and engineering across multi-disciplines:

    The formulation of problems or challenges in emerging and future computing
    The benchmarks, datasets, and indexes in multidisciplinary applications, e.g., medical, finance, education, management, psychology, etc.
    Benchmark-based quantitative approaches to tackle multidisciplinary and interdisciplinary challenges, industry best practices

Benchmark and standard specifications, implementations, and validations:

    Big Data, Artificial intelligence (AI), High performance computing (HPC)
    Machine learning, Big scientific data, Datacenter, Cloud, Warehouse-scale computing
    Mobile robotics, Edge and fog computing, Internet of Things (IoT), Blockchain
    Data management and storage, Financial, Education, Medical or other application domains

Datasets:

    Detailed descriptions of research or industry datasets, including the methods used to collect the data and technical analyses supporting the quality of the measurements
    Analyses or meta-analyses of existing data and original articles on systems, technologies, and techniques that advance data sharing and reuse to support reproducible research
    Evaluating the rigor and quality of the experiments used to generate the data and the completeness of the data description
    Tools that can generate large-scale data while preserving their original characteristics

Workload characterization, quantitative measurement, design, and evaluation studies:

    Computer and communication networks, protocols and algorithms
    Wireless, mobile, ad-hoc and sensor networks, IoT applications
    Computer architectures, hardware accelerators, multi-core processors, memory systems and storage networks
    HPC systems; Operating systems, file systems and databases; Virtualization, data centers, distributed and cloud computing, fog and edge computing
    Mobile and personal computing systems, energy-efficient computing systems; real-time and fault-tolerant systems, security and privacy of computing and networked systems, software systems and services, and enterprise applications, social networks, multimedia systems, web services, cyber-physical systems, including the smart grid

Methodologies, metrics, abstractions, algorithms, and tools:

    Analytical modeling techniques and model validation
    Workload characterization and benchmarking
    Performance, scalability, power and reliability analysis
    Sustainability analysis and power management
    System measurement, performance monitoring and forecasting
    Anomaly detection, problem diagnosis and troubleshooting
    Capacity planning, resource allocation, run time management and scheduling
    Experimental design, statistical analysis, and simulation

Measurement and evaluation:

    Measurement standards, evaluation methodologies and metrics, testbed methodologies and systems
    Instrumentation, sampling, tracing and profiling of large-scale, real-world applications and systems
    Measurement-based modeling (e.g., workloads, scaling behavior, assessment of performance bottlenecks)
    Methods and tools to monitor and visualize measurement and evaluation data
    Systems and algorithms that build on measurement-based findings
    Advances in data collection, analysis and storage (e.g., anonymization, querying, sharing)
    Reappraisal of previous empirical measurements and measurement-based conclusions
    Descriptions of challenges and future directions that the measurement and evaluation community should pursue
最終更新 Dou Sun 2024-07-31
関連会議
関連仕訳帳
CCF完全な名前インパクト ・ ファクター出版社ISSN
International Journal of Reliability, Quality and Safety EngineeringWorld Scientific0218-5393
bDesigns, Codes and Cryptography1.400Springer0925-1022
Frontiers in Neurorobotics2.600Frontiers Media S.A.1662-5218
Electronic Journal of e-LearningAcademic Publishing Limited1479-4403
bAdvanced Engineering Informatics8.000Elsevier1474-0346
Computer Science & Engineering: An International Journal AIRCC2231-3583
cTheory and Practice of Logic Programming1.400Cambridge University Press1471-0684
The Photogrammetric Record2.100Wiley-Blackwell0031-868X
Computer Standards & Interfaces4.100Elsevier0920-5489
Design Studies3.200Elsevier0142-694X
完全な名前インパクト ・ ファクター出版社
International Journal of Reliability, Quality and Safety EngineeringWorld Scientific
Designs, Codes and Cryptography1.400Springer
Frontiers in Neurorobotics2.600Frontiers Media S.A.
Electronic Journal of e-LearningAcademic Publishing Limited
Advanced Engineering Informatics8.000Elsevier
Computer Science & Engineering: An International Journal AIRCC
Theory and Practice of Logic Programming1.400Cambridge University Press
The Photogrammetric Record2.100Wiley-Blackwell
Computer Standards & Interfaces4.100Elsevier
Design Studies3.200Elsevier
おすすめ