首页> 外文会议>IEEE International Conference on Big Data >HDMF: Hierarchical Data Modeling Framework for Modern Science Data Standards
【24h】

HDMF: Hierarchical Data Modeling Framework for Modern Science Data Standards

机译:HDMF:现代科学数据标准的分层数据建模框架

获取原文

摘要

A ubiquitous problem in aggregating data across different experimental and observational data sources is a lack of software infrastructure that enables flexible and extensible standardization of data and metadata. To address this challenge, we developed HDMF, a hierarchical data modeling framework for modern science data standards. With HDMF, we separate the process of data standardization into three main components: (1) data modeling and specification, (2) data I/O and storage, and (3) data interaction and data APIs. To enable standards to support the complex requirements and varying use cases throughout the data life cycle, HDMF provides object mapping infrastructure to insulate and integrate these various components. This approach supports the flexible development of data standards and extensions, optimized storage backends, and data APIs, while allowing the other components of the data standards ecosystem to remain stable. To meet the demands of modern, large-scale science data, HDMF provides advanced data I/O functionality for iterative data write, lazy data load, and parallel I/O. It also supports optimization of data storage via support for chunking, compression, linking, and modular data storage. We demonstrate the application of HDMF in practice to design NWB 2.0 [13], a modern data standard for collaborative science across the neurophysiology community.
机译:跨不同实验和观察数据源汇总数据时普遍存在的问题是缺乏可灵活,可扩展地标准化数据和元数据的软件基础架构。为了应对这一挑战,我们开发了HDMF,这是一种用于现代科学数据标准的分层数据建模框架。使用HDMF,我们将数据标准化过程分为三个主要部分:(1)数据建模和规范,(2)数据I / O和存储以及(3)数据交互和数据API。为了使标准能够在整个数据生命周期中支持复杂的需求和变化的用例,HDMF提供了对象映射基础结构来隔离和集成这些不同的组件。这种方法支持灵活地开发数据标准和扩展,优化的存储后端以及数据API,同时允许数据标准生态系统的其他组件保持稳定。为了满足现代大规模科学数据的需求,HDMF为迭代数据写入,惰性数据加载和并行I / O提供了高级数据I / O功能。它还通过支持分块,压缩,链接和模块化数据存储来支持数据存储的优化。我们演示了HDMF在实践中设计NWB 2.0 [13]的应用,NWB 2.0是跨神经生理学社区进行协作科学的现代数据标准。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号