Big Data Challenges for e-Science Infrastructure
نویسندگان
چکیده
This paper discusses the challenges that are imposed by the Big Data Science on the modern and future Scientific Data Infrastructure (SDI). The paper refers to different scientific communities to define requirements on data management, access control and security. The paper introduces the Scientific Data Lifecycle Management (SDLM) model that includes all the major stages and reflects specifics in data management in modern e-Science. The paper proposes the SDI generic architecture model that provides a basis for building interoperable data or project centric SDI using modern technologies and best practices. The paper explains how the proposed models SDLM and SDI can be naturally implemented using modern cloud based infrastructure services provisioning model. The paper also addresses issues with the federated access control to the SDI resources that provides a flexible access control and identity management model for scientific and research communities.
منابع مشابه
A Weight-Analysis Technique of Existing Research on E-Government Implementation Challenges in Developing Countries
The e-government application may enhance government facilities for its shareholders. Nevertheless, implementing such system faces many difficulties and obstacles. The considerable debacle of e-government inspires studies on those obstacles, especially in developing countries around the world. To examine the e-government implementation challenges more accurately, we have collected more tha...
متن کاملe-Science for Digital Development:“ICT4ICT4D”: Development Informatics Working Paper no.60
..................................................................................................................... 1 A. Two Digital Research Legs: Empirical Induction and Deductive Models ..... 2 B. Big Data for Development ........................................................................ 4 B1. CHARACTERISTICS OF BIG DATA...................................................................
متن کاملCrossing Analytics Systems: A Case for Integrated Provenance in Data Lakes [Preprint, eScience 2016]
The volumes of data in Big Data, their variety and unstructured nature, have had researchers looking beyond the data warehouse. The data warehouse, among other features, requires mapping data to a schema upon ingest, an approach seen as inflexible for the massive variety of Big Data. The Data Lake is emerging as an alternate solution for storing data of widely divergent types and scales. Design...
متن کاملperfSONAR: On-board Diagnostics for Big Data
Big science data necessitates the requirement to incorporate state-of-the-art technologies and processes into science workflows. When transferring “big data”, the network infrastructure connects sites for storage, analysis and data transfer. A component that is often overlooked within the network is a robust measurement and testing infrastructure that verifies all network components are functio...
متن کاملThe impact of big data on M&S: do we need to get "big"?
Driven by innovations such as mass customisation, complex supply chains, smart cities and emerging cyber-physical and Internet of Things systems, Big Data is presenting a fascinating range of challenges to Analytics. New fields are emerging such as Big Data Analytics and Data Science. Modeling & Simulation (M&S) is core to Analytics. Arguably, contemporary M&S practices cannot deal with the dem...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2012