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

"Open science" encompasses efforts on the part of scientists to improve reproducibility of original research. This includes publishing data sets, providing free and open access to resulting publications, and releasing code under open source licenses. Proprietary software and closely guarded datasets have given way to vibrant open source communities and open access journals. Applications in big data, however, have been uniquely challenging to incorporate into open science. These complications include datasets too large to host publicly, extensive codebases in highly customized compute platforms, and lack of available computing resources to efficiently replicate the original research environment.

征稿信息

征稿范围

This workshop will focus on the current practices of and future directions for democratizing big data analytics and improving reproducibility of research in big data. This includes, but is not limited to:

  • Core research in big data that uses open source frameworks

  • Open source tools and subprojects for specific big data use-cases such as neuroimaging or multimodal data integration (e.g. DL4J, thunder, Alluxio, Arrow)

  • Next-generation open source big data paradigms (e.g. Beam, Flink, Apex)

  • Creating, sharing, and maintaining large and open datasets (e.g. dat)

  • Open cloud resources for interacting with big data (e.g. Databricks Community Edition, mybinder)

  • Containerized and open source big data applications and environments (e.g. Docker)

  • Open science and big data in the classroom

  • Other open science use cases in big data analytics

留言
验证码 看不清楚,更换一张
全部留言
重要日期
  • 12月11日

    2017

    会议日期

  • 12月11日 2017

    注册截止日期

主办单位
IEEE 计算机学会
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