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Research Data Services Maturity in Academic Libraries

机译:高校图书馆研究数据服务的成熟度

摘要

An ACRL white paper from 2012 reported that, at that time, only a small number of academic libraries in the United States and Canada offered research data services (RDS), but many were planning to do so within the next two years (Tenopir, Birch, and Allard, 2012). By 2013, 74% of the Association of Research Libraries (ARL) survey respondents offered RDS and an additional 23% were planning to do so (Fearon, Gunia, Pralle, Lake, and Sallans, 2013). The academic libraries recognize that the landscape of services changes quickly and that they need to support the changing needs of research and instruction.udIn their efforts to implement RDS, libraries often respond to pressures originating outside the library, such as national or funder mandates for data management planning and data sharing. To provide effective support for researchers and instructors, though, libraries must be proactive and develop new services that look forward and yet accommodate the existing human, technological, and intellectual capital accumulated over the decades. Setting the stage for data curation in libraries means to create visionary approaches that supersede institutional differences while still accommodating diversity in implementation. How do academic libraries work towards that?udThis chapter will combine an historical overview of RDS thinking and implementations based on the existing literature with an empirical analysis of ARL libraries’ current RDS goals and activities. The latter is based on the study we conducted in 2015 that included a content analysis of North American research library web pages and interviews of library leaders and administrators of ARL libraries. Using historical and our own data, we will synthesize the current state of RDS implementation across ARL libraries. Further, we will examine the models of research data management maturity (see, for example, Qin, Crowston and Flynn, 2014) and discuss how such models compare to our own three-level classification of services and activities offered at libraries - basic, intermediate, and advanced. Our analysis will conclude with a set of recommendations for next steps, i.e., actions and resources that a library might consider to expand their RDS to the next maturity level. udReferencesudFearon, D. Jr., Gunia, B., Pralle, B.E., Lake, S., Sallans, A.L. (2013). Research data management services. (ARL Spec Kit 334). Washington, D.C.: ARL. Retrieved from: http://publications.arl.org/Research-Data-Management-Services-SPEC-Kit-334/udTenopir, C., Birch, B., & Allard, S. (2012). Academic libraries and research data services: Current practices and plans for the future. ACRL. Retrieved from http://www.ala.org/acrl/sites/ala.org.acrl/files/content/publications/whitepapers/Tenopir_Birch_Allard.pdfudQin, J., Crowston, K., & Flynn, C. (2014). 1.1 Commitment to Perform. A Capability Maturity Model for Research Data Management. wiki. Retrieved http://rdm.ischool.syr.edu/xwiki/bin/view/CMM+for+RDM/WebHome
机译:2012年的ACRL白皮书报告说,当时,美国和加拿大只有极少数的大学图书馆提供研究数据服务(RDS),但许多图书馆计划在未来两年内这样做(Tenopir,Birch和Allard,2012年)。到2013年,研究图书馆协会(ARL)的调查受访者中有74%提供了RDS,另有23%的人计划提供RDS(Fearon,Gunia,Pralle,Lake和Sallans,2013)。高校图书馆认识到服务的格局正在迅速变化,它们需要支持不断变化的研究和教学需求。 ud在实施RDS的过程中,图书馆经常应对来自图书馆外部的压力,例如国家或资助方的要求。数据管理计划和数据共享。但是,要为研究人员和讲师提供有效的支持,图书馆必须积极主动并开发新的服务,以期能够容纳数十年来积累的现有人力,技术和知识资本。在图书馆中为数据策划打下基础,这意味着创造有远见的方法来取代机构的差异,同时仍然要适应实施中的多样性。 ud本章将结合现有文献对RDS的思想和实现进行历史回顾,并对ARL图书馆当前的RDS目标和活动进行实证分析。后者基于我们在2015年进行的研究,其中包括对北美研究图书馆网页的内容分析以及对图书馆负责人和ARL图书馆管理员的采访。使用历史数据和我们自己的数据,我们将跨ARL库综合RDS实施的当前状态。此外,我们将研究研究数据管理成熟度的模型(例如,参见Qin,Crowston和Flynn,2014年),并讨论这些模型如何与我们自己在图书馆提供的服务和活动的三级分类(基本,中级)进行比较和高级。我们的分析将为下一步提供一系列建议,即图书馆可能考虑将其RDS扩展到下一个成熟度级别的操作和资源。 udReferences udFearon,D.Jr.,Gunia,B.,Pralle,B.E.,Lake,S.,Sallans,A.L.(2013)。研究数据管理服务。 (ARL Spec Kit 334)。华盛顿特区:ARL。取自:http://publications.arl.org/Research-Data-Management-Services-SPEC-Kit-334/udTenopir,C.,Birch,B.,&Allard,S.(2012年)。高校图书馆和研究数据服务:当前的实践和未来的计划。 ACRL。取自http://www.ala.org/acrl/sites/ala.org.acrl/files/content/publications/whitepapers/Tenopir_Birch_Allard.pdfudQin,J.,Crowston,K.,&Flynn,C.( 2014)。 1.1履行承诺。研究数据管理的能力成熟度模型。维基。检索http://rdm.ischool.syr.edu/xwiki/bin/view/CMM+for+RDM/WebHome

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