征稿已开启

查看我的稿件

注册已开启

查看我的门票

已截止
活动简介

The objective of this one-day workshop is to investigate opportunities in accelerating data management systems and workloads (which include traditional OLTP, data warehousing/OLAP, ETL, Streaming/Real-time, Business Analytics, and XML/RDF Processing) using processors (e.g., commodity and specialized Multi-core, GPUs, FPGAs, and ASICs), storage systems (e.g., Storage-class Memories like SSDs and Phase-change Memory), and programming models like MapReduce, Spark, CUDA, OpenCL, and OpenACC.

The current data management scenario is characterized by the following trends: traditional OLTP and OLAP/data warehousing systems are being used for increasing complex workloads (e.g., Petabyte of data, complex queries under real-time constraints, etc.); applications are becoming far more distributed, often consisting of different data processing components; non-traditional domains such as bio-informatics, social networking, mobile computing, sensor applications, gaming are generating growing quantities of data of different types; economical and energy constraints are leading to greater consolidation and virtualization of resources; and analyzing vast quantities of complex data is becoming more important than traditional transactional processing.

征稿信息

重要日期

2017-06-12
初稿截稿日期
2017-06-26
初稿录用日期

征稿范围

The suggested topics of interest include, but are not restricted to:

  • Hardware and System Issues in Domain-specific Accelerators

  • New Programming Methodologies for Data Management Problems on Modern Hardware

  • Query Processing for Hybrid Architectures

  • Large-scale I/O-intensive (Big Data) Applications

  • Parallelizing/Accelerating Analytical (e.g., Data Mining) Workloads

  • Autonomic Tuning for Data Management Workloads on Hybrid Architectures

  • Algorithms for Accelerating Multi-modal Multi-tiered Systems

  • Energy Efficient Software-Hardware Co-design for Data Management Workloads

  • Parallelizing non-traditional (e.g., graph mining) workloads

  • Algorithms and Performance Models for modern Storage Sub-systems

  • Exploitation of specialized ASICs

  • Novel Applications of Low-Power Processors and FPGAs

  • Exploitation of Transactional Memory for Database Workloads

  • Exploitation of Active Technologies (e.g., Active Memory, Active Storage, and Networking)

  • New Benchmarking Methodologies for Storage-class Memories

  • Applications of HPC Techniques for Data Management Workloads

  • Acceleration in the Cloud Environments

留言
验证码 看不清楚,更换一张
全部留言
重要日期
  • 09月01日

    2017

    会议日期

  • 06月12日 2017

    初稿截稿日期

  • 06月26日 2017

    初稿录用通知日期

  • 09月01日 2017

    注册截止日期

移动端
在手机上打开
小程序
打开微信小程序
客服
扫码或点此咨询