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Collaborative visual analysis with RCloud

机译:使用RCloud进行协作式视觉分析

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摘要

Consider the emerging role of data science teams embedded in larger organizations. Individual analysts work on loosely related problems, and must share their findings with each other and the organization at large, moving results from exploratory data analyses (EDA) into automated visualizations, diagnostics and reports deployed for wider consumption. There are two problems with the current practice. First, there are gaps in this workflow: EDA is performed with one set of tools, and automated reports and deployments with another. Second, these environments often assume a single-developer perspective, while data scientist teams could get much benefit from easier sharing of scripts and data feeds, experiments, annotations, and automated recommendations, which are well beyond what traditional version control systems provide. We contribute and justify the following three requirements for systems built to support current data science teams and users: discoverability, technology transfer, and coexistence. In addition, we contribute the design and implementation of RCloud, a system that supports the requirements of collaborative data analysis, visualization and web deployment. About 100 people used RCloud for two years. We report on interviews with some of these users, and discuss design decisions, tradeoffs and limitations in comparison to other approaches.
机译:考虑一下嵌入在大型组织中的数据科学团队的新兴角色。各个分析师致力于解决松散相关的问题,必须与彼此以及整个组织共享他们的发现,并将结果从探索性数据分析(EDA)转移到自动可视化,诊断和报告中,以供广泛使用。当前的实践存在两个问题。首先,此工作流程存在差距:EDA是使用一组工具执行的,而自动化报告和部署则是使用另一组工具的。其次,这些环境通常采用单一开发人员的观点,而数据科学家团队可以通过更轻松地共享脚本和数据提要,实验,注释和自动推荐来获得很多好处,而这远远超出了传统版本控制系统所提供的功能。对于为支持当前数据科学团队和用户而构建的系统,我们贡献并证明以下三个要求:可发现性,技术转让和共存。此外,我们为RCloud的设计和实现做出了贡献,RCloud是一个支持协作数据分析,可视化和Web部署需求的系统。大约100人使用RCloud已有两年时间。我们报告了对其中一些用户的采访,并讨论了与其他方法相比的设计决策,权衡和局限性。

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