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Big Data Research at the University of Colorado Boulder

Submission Number: 311
Submission ID: 4738
Submission UUID: ec9574cc-34e1-43d8-b1e7-e67f0c82f769
Submission URI: /form/resource

Created: Wed, 08/21/2024 - 09:45
Completed: Wed, 08/21/2024 - 09:45
Changed: Thu, 08/29/2024 - 16:24

Remote IP address: 198.11.30.11
Submitted by: Andrew Monaghan
Language: English

Is draft: No
Yes
Big Data Research at the University of Colorado Boulder
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big-data
Beginner
Background: Big data, defined as having high volume, complexity or velocity, have the potential to greatly accelerate research discovery. Such data can be challenging to work with and require research support and training to address technical and ethical challenges surrounding big data collection, analysis, and publication.



Methods: The present study was conducted via a series of semi-structured interviews to assess big data methodologies employed by CU Boulder researchers across a broad sample of disciplines, with the goal of illuminating how they conduct their research; identifying challenges and needs; and providing recommendations for addressing them.



Findings: Key results and conclusions from the study indicate: gaps in awareness of existing big data services provided by CU Boulder; open questions surrounding big data ethics, security and privacy issues; a need for clarity on how to attribute credit for big data research; and a preference for a variety of training options to support big data research.