<?xml version="1.0" encoding="utf-8"?><mads xmlns="http://www.loc.gov/mads/" xmlns:mods="http://www.loc.gov/mods/v3" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.loc.gov/mads/
	mads.xsd"><authority><topic authority="http://www2.bui.haw-hamburg.de/tematres/vocab/">data literacy</topic></authority><related type="narrower"><topic>critical data literacy</topic></related><related type="other"><topic>statistical literacy</topic></related><related type="other"><topic>data information literacy</topic></related><related type="other"><topic>data</topic></related><related type="other"><topic>information literacy</topic></related><related type="other"><topic>digital literacy</topic></related><related type="broader"><topic>literacy</topic></related><variant type="other"><topic>Datenkompetenz</topic></variant><variant type="other"><topic>adat-írástudás</topic></variant><variant type="other"><topic>alfabetización de datos</topic></variant><variant type="other"><topic>datageletterdheid</topic></variant> <note xml:lang="en-GB"><![CDATA[ <p><strong>Data literacy in this glossary describes the understanding of data literacy in an academic and sciences context with a focus on generic competencies.</strong></p>
<p>In this context data literacy refers to <strong>knowledge and skills involved in collecting, processing, managing, evaluating, and using data for scientific inquiry. It focusses on the functional ability in data collection, processing, management, evaluation, and use.</strong> This coincides with the academic practice of producing, and using digital datasets during scientific research.  Data literacy serves as a ‚boundary concept‘ (Bowker/Star) partly shared between different research traditions and communities, weakly structured in common use however imposing stronger structures in the individual tailored use of a community of practice.</p>
<p>Taking up a term coined by Pedersen and Caviglia (2019) data literacy is described as a compound competence ascribed to a community of practice rather than an individual consisting of some level of competence in metadata-management, statistics, data visualization and more generic competencies in problem-solving and reflexivity using different data. As such data literacy is closely related to data science but differs in the level of competence and the focus. While data science is a specific domain for trained specialists focussed on data analysis, data literacy <strong>is the set of competencies and apt to bridge between communities of practice and provide interfaces</strong>. This understanding calls for interdisciplinary collaboration that integrates different competencies and levels of skill. (DaLiCo 2022).</p> ]]></note> <note xml:lang="en-GB"><![CDATA[ <p><strong>Data literacy in this glossary describes the understanding of data literacy in an academic and sciences context with a focus on generic competencies.</strong></p>
<p>In this context data literacy refers to <strong>knowledge and skills involved in collecting, processing, managing, evaluating, and using data for scientific inquiry. It focusses on the functional ability in data collection, processing, management, evaluation, and use.</strong> This coincides with the academic practice of producing, and using digital datasets during scientific research.  Data literacy serves as a ‚boundary concept‘ (Bowker/Star) partly shared between different research traditions and communities, weakly structured in common use however imposing stronger structures in the individual tailored use of a community of practice.</p>
<p>Taking up a term coined by Pedersen and Caviglia (2019) data literacy is described as a compound competence ascribed to a community of practice rather than an individual consisting of some level of competence in metadata-management, statistics, data visualization and more generic competencies in problem-solving and reflexivity using different data. As such data literacy is closely related to data science but differs in the level of competence and the focus. While data science is a specific domain for trained specialists focussed on data analysis, data literacy <strong>is the set of competencies and apt to bridge between communities of practice and provide interfaces</strong>. This understanding calls for interdisciplinary collaboration that integrates different competencies and levels of skill. (DaLiCo 2022).</p> ]]></note></mads>