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data-service-landscape-scan's Introduction

About Us

Research Engagement (RE) helps UA faculty, researchers, and students with every stage of their research. We have three functional units:

  1. Research Incubator
  2. Data Cooperative
  3. Scholarly Communications

Members of the Data Cooperative:

GitHub Name Role/Title
Jeff Oliver Jeff Oliver Data Science Specialist
Fernando Rios Fernando Rios Data Management Specialist
Kiri Carini Kiri Carini GIS Specialist
Jonathan Ratliff Jonathan Ratliff Research Data Repository Assistant

Experience

Specialty Tools/Resources
Data Science R langPython Software Carpentry
Data Management & Publishing Data Management (DMPTool)Open Science FrameworkFigshare
GIS GISESRI

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data-service-landscape-scan's Issues

Test clustered servces

Perform pairwise correlations on presence/absence of all services. Will need to collapse services across modalities (consult, workshop, web) where appropriate.

Calculate frequencies of delivery modalities

How are institutions providing services for various types of data services - is it primarily through consultation, workshop/training or written documentation? Of the three modes (consult, instruction, web) which is most often provided? Which is least often provided?

Rank services from least common to most common

What services are ubiquitous across libraries (i.e. in 95% or more of the institutions we looked at)? What areas do most/all libraries support? What areas are least supported? What services are rare in libraries (i.e. in 5% or fewer of the institutions)? For assessing which services, will need to collapse across modes for individual services; e.g. a library is considered providing support for data management plans if we found a URL for at least one of the following modes: consult, instruction, web.

Test number of services vs spending

  • Create a composite score of the total amount of services provided, and regress that against library funding
  • Should be able to get good spending data from (IPEDS)[https://nces.ed.gov/ipeds/use-the-data] (use "Compare Institutions" option)

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