SlideShare una empresa de Scribd logo
1 de 6
Interviewing a researcher
May-15
Learning material produced by RDMRose
http://www.sheffield.ac.uk/is/research/projects/rdmrose
Research Data Management 2.6
Data profile interviews
• Witt and Carlson (2007) offer an overview of the research
data interview:
1. What is the story of the data?
2. What form and format are the data in?
3. What is the expected lifespan of the dataset?
4. How could the data be used, reused, and repurposed?
5. How large is the dataset, and what is its rate of growth?
6. Who are the potential audiences for the data?
7. Who owns the data?
8. Does the dataset include any sensitive information?
9. What publications or discoveries have resulted from the data?
10. How should the data be made accessible?
May-15
Learning material produced by RDMRose
http://www.sheffield.ac.uk/is/research/projects/rdmrose
Investigating a researcher
• Plan an investigation of a particular
researcher
• Topics for the investigation: their
research; what their data is; how they
analyse it; how they manage data.
• Resources: Witt & Carlson, 2007;
interview guides from the DAF
implementation guide.
• To plan:
– Who will you approach?
– What sort of themes and questions do you
want to explore?
– What preparatory work can be done?
• Work as a team
• Do an
investigation
online vs face to
face interview
May-15
Learning material produced by RDMRose
http://www.sheffield.ac.uk/is/research/projects/rdmrose
Investigating a researcher: an
alternative
• As an alternative to conducting an interview with a researcher using data
profiles or DAF interview guides, you could use the 5 case studies of
researchers and research projects available on the RDMRose website:
http://rdmrose.group.shef.ac.uk/?page_id=10#session-71-case-studies-of-
researchers-and-research-projects
• These are recorded interviews with researchers working in:
– Gastroenterology / oncology
– Electronic and electrical engineering
– Civil and structural engineering (international collaborative research)
– Psychology (longitudinal quantitative research)
– Sociology (longitudinal qualitative research)
• In each of these interviews, the researcher describes one of their research
projects, their research data management issues, how they resolved these
issues, how they handled metadata, and what they think of open data.
REFERENCES
May-15
Learning material produced by RDMRose
http://www.sheffield.ac.uk/is/research/projects/rdmrose
References
• Witt, M. and Carlson, J. R. (2007). "Conducting
a Data Interview" Libraries Research
Publications. Paper 81.
http://docs.lib.purdue.edu/lib_research/81.
May-15
Learning material produced by RDMRose
http://www.sheffield.ac.uk/is/research/projects/rdmrose

Más contenido relacionado

La actualidad más candente

Data Management for Undergraduate Research
Data Management for Undergraduate ResearchData Management for Undergraduate Research
Data Management for Undergraduate ResearchRebekah Cummings
 
Data Management for Undergraduate Researchers
Data Management for Undergraduate ResearchersData Management for Undergraduate Researchers
Data Management for Undergraduate ResearchersRebekah Cummings
 
Survey of Research Information Management Practices
Survey of Research Information Management PracticesSurvey of Research Information Management Practices
Survey of Research Information Management PracticesOCLC
 
PhD Projects Research Guide
PhD Projects Research GuidePhD Projects Research Guide
PhD Projects Research GuidePhD Services
 
PhD Projects Consultants in India
PhD Projects Consultants in IndiaPhD Projects Consultants in India
PhD Projects Consultants in IndiaPhD Services
 
PhD Projects Proposal Research Help
PhD Projects Proposal Research HelpPhD Projects Proposal Research Help
PhD Projects Proposal Research HelpPhD Services
 
Annotating research resources with rrid’s
Annotating research resources with rrid’sAnnotating research resources with rrid’s
Annotating research resources with rrid’sMaryann Martone
 
PhD Projects Dissertation Writing Help
PhD Projects Dissertation Writing HelpPhD Projects Dissertation Writing Help
PhD Projects Dissertation Writing HelpPhD Services
 
PhD Projects Guidance Research Help
PhD Projects Guidance Research HelpPhD Projects Guidance Research Help
PhD Projects Guidance Research HelpPhD Services
 
PhD Projects Research Guidance
PhD Projects Research GuidancePhD Projects Research Guidance
PhD Projects Research GuidancePhD Services
 
PhD Projects Research Help
PhD Projects Research HelpPhD Projects Research Help
PhD Projects Research HelpPhD Services
 
Capturing and Analyzing Publication, Citation and Usage Data for Contextual C...
Capturing and Analyzing Publication, Citation and Usage Data for Contextual C...Capturing and Analyzing Publication, Citation and Usage Data for Contextual C...
Capturing and Analyzing Publication, Citation and Usage Data for Contextual C...NASIG
 
RDAP14: Developing an RDM Educational Service Using the New England Collabora...
RDAP14: Developing an RDM Educational Service Using the New England Collabora...RDAP14: Developing an RDM Educational Service Using the New England Collabora...
RDAP14: Developing an RDM Educational Service Using the New England Collabora...ASIS&T
 
Searching beyond datasets in the Social Sciences
Searching beyond datasets in the Social SciencesSearching beyond datasets in the Social Sciences
Searching beyond datasets in the Social SciencesGESIS
 

La actualidad más candente (20)

Borchardt NISO Altmetrics Dec
Borchardt NISO Altmetrics Dec Borchardt NISO Altmetrics Dec
Borchardt NISO Altmetrics Dec
 
Broadbent Rozum Creating a Culture of Compliance
Broadbent Rozum Creating a Culture of ComplianceBroadbent Rozum Creating a Culture of Compliance
Broadbent Rozum Creating a Culture of Compliance
 
Data Management for Undergraduate Research
Data Management for Undergraduate ResearchData Management for Undergraduate Research
Data Management for Undergraduate Research
 
Data Management for Undergraduate Researchers
Data Management for Undergraduate ResearchersData Management for Undergraduate Researchers
Data Management for Undergraduate Researchers
 
Survey of Research Information Management Practices
Survey of Research Information Management PracticesSurvey of Research Information Management Practices
Survey of Research Information Management Practices
 
Bosman-Kramer Changing Research Workflows
Bosman-Kramer Changing Research WorkflowsBosman-Kramer Changing Research Workflows
Bosman-Kramer Changing Research Workflows
 
PhD Projects Research Guide
PhD Projects Research GuidePhD Projects Research Guide
PhD Projects Research Guide
 
PhD Projects Consultants in India
PhD Projects Consultants in IndiaPhD Projects Consultants in India
PhD Projects Consultants in India
 
PhD Projects Proposal Research Help
PhD Projects Proposal Research HelpPhD Projects Proposal Research Help
PhD Projects Proposal Research Help
 
Annotating research resources with rrid’s
Annotating research resources with rrid’sAnnotating research resources with rrid’s
Annotating research resources with rrid’s
 
Borchardt, How Can Libraries be Involved in Altmetrics?
Borchardt, How Can Libraries be Involved in Altmetrics?Borchardt, How Can Libraries be Involved in Altmetrics?
Borchardt, How Can Libraries be Involved in Altmetrics?
 
PhD Projects Dissertation Writing Help
PhD Projects Dissertation Writing HelpPhD Projects Dissertation Writing Help
PhD Projects Dissertation Writing Help
 
PhD Projects Guidance Research Help
PhD Projects Guidance Research HelpPhD Projects Guidance Research Help
PhD Projects Guidance Research Help
 
PhD Projects Research Guidance
PhD Projects Research GuidancePhD Projects Research Guidance
PhD Projects Research Guidance
 
Open University Data
Open University DataOpen University Data
Open University Data
 
PhD Projects Research Help
PhD Projects Research HelpPhD Projects Research Help
PhD Projects Research Help
 
Capturing and Analyzing Publication, Citation and Usage Data for Contextual C...
Capturing and Analyzing Publication, Citation and Usage Data for Contextual C...Capturing and Analyzing Publication, Citation and Usage Data for Contextual C...
Capturing and Analyzing Publication, Citation and Usage Data for Contextual C...
 
RDAP14: Developing an RDM Educational Service Using the New England Collabora...
RDAP14: Developing an RDM Educational Service Using the New England Collabora...RDAP14: Developing an RDM Educational Service Using the New England Collabora...
RDAP14: Developing an RDM Educational Service Using the New England Collabora...
 
Searching beyond datasets in the Social Sciences
Searching beyond datasets in the Social SciencesSearching beyond datasets in the Social Sciences
Searching beyond datasets in the Social Sciences
 
Walters "Preprints, the Institutional Repository and the Impact on the Resear...
Walters "Preprints, the Institutional Repository and the Impact on the Resear...Walters "Preprints, the Institutional Repository and the Impact on the Resear...
Walters "Preprints, the Institutional Repository and the Impact on the Resear...
 

Similar a RDMRose 2.6 Interviewing a researcher

RDMRose 1.1 The basics
RDMRose 1.1 The basicsRDMRose 1.1 The basics
RDMRose 1.1 The basicsRDMRose
 
RDMRose 4.4 Resources for further study
RDMRose 4.4 Resources for further studyRDMRose 4.4 Resources for further study
RDMRose 4.4 Resources for further studyRDMRose
 
Why should I care about information literacy?
Why should I care about information literacy? Why should I care about information literacy?
Why should I care about information literacy? nmjb
 
RDMRose 1.2 Research and researchers
RDMRose 1.2 Research and researchersRDMRose 1.2 Research and researchers
RDMRose 1.2 Research and researchersRDMRose
 
Open Access to Research Data: Challenges and Solutions
Open Access to Research Data: Challenges and SolutionsOpen Access to Research Data: Challenges and Solutions
Open Access to Research Data: Challenges and SolutionsMartin Donnelly
 
E research africa presentation (19 nov 2014)
E research africa presentation (19 nov 2014)E research africa presentation (19 nov 2014)
E research africa presentation (19 nov 2014)Isak Van der Walt
 
Going Full Circle: Research Data Management @ University of Pretoria
Going Full Circle: Research Data Management @ University of PretoriaGoing Full Circle: Research Data Management @ University of Pretoria
Going Full Circle: Research Data Management @ University of PretoriaJohann van Wyk
 
Open Data - strategies for research data management & impact of best practices
Open Data - strategies for research data management & impact of best practicesOpen Data - strategies for research data management & impact of best practices
Open Data - strategies for research data management & impact of best practicesMartin Donnelly
 
Immersive informatics - research data management at Pitt iSchool and Carnegie...
Immersive informatics - research data management at Pitt iSchool and Carnegie...Immersive informatics - research data management at Pitt iSchool and Carnegie...
Immersive informatics - research data management at Pitt iSchool and Carnegie...Keith Webster
 
RDMRose 3.1 Data Asset Framewok surveys
RDMRose 3.1 Data Asset Framewok surveysRDMRose 3.1 Data Asset Framewok surveys
RDMRose 3.1 Data Asset Framewok surveysRDMRose
 
Introduction to Research Data Management at Lancaster University
Introduction to Research Data Management at Lancaster UniversityIntroduction to Research Data Management at Lancaster University
Introduction to Research Data Management at Lancaster UniversityLancaster University Library
 
Services, policy, guidance and training: Improving research data management a...
Services, policy, guidance and training: Improving research data management a...Services, policy, guidance and training: Improving research data management a...
Services, policy, guidance and training: Improving research data management a...Robin Rice
 
DMPTool Webinar 8: Data Curation Profiles and the DMPTool (presented by Jake ...
DMPTool Webinar 8: Data Curation Profiles and the DMPTool (presented by Jake ...DMPTool Webinar 8: Data Curation Profiles and the DMPTool (presented by Jake ...
DMPTool Webinar 8: Data Curation Profiles and the DMPTool (presented by Jake ...University of California Curation Center
 
Rdm rose v3-slides-4.1-an-institutional-case-study
Rdm rose v3-slides-4.1-an-institutional-case-studyRdm rose v3-slides-4.1-an-institutional-case-study
Rdm rose v3-slides-4.1-an-institutional-case-studyRDMRose
 
Martin Donnelly - Digital Data Curation at the Digital Curation Centre (DH2016)
Martin Donnelly - Digital Data Curation at the Digital Curation Centre (DH2016)Martin Donnelly - Digital Data Curation at the Digital Curation Centre (DH2016)
Martin Donnelly - Digital Data Curation at the Digital Curation Centre (DH2016)dri_ireland
 
Harmonising Research between South and North: Results from ROER4D’s Question ...
Harmonising Research between South and North: Results from ROER4D’s Question ...Harmonising Research between South and North: Results from ROER4D’s Question ...
Harmonising Research between South and North: Results from ROER4D’s Question ...Open Education Consortium
 
Managing Ireland's Research Data - 3 Research Methods
Managing Ireland's Research Data - 3 Research MethodsManaging Ireland's Research Data - 3 Research Methods
Managing Ireland's Research Data - 3 Research MethodsRebecca Grant
 
What are we doing about data? Emerging roles in data librarianship and Tales ...
What are we doing about data? Emerging roles in data librarianship and Tales ...What are we doing about data? Emerging roles in data librarianship and Tales ...
What are we doing about data? Emerging roles in data librarianship and Tales ...Donna Kafel
 

Similar a RDMRose 2.6 Interviewing a researcher (20)

RDMRose 1.1 The basics
RDMRose 1.1 The basicsRDMRose 1.1 The basics
RDMRose 1.1 The basics
 
RDMRose 4.4 Resources for further study
RDMRose 4.4 Resources for further studyRDMRose 4.4 Resources for further study
RDMRose 4.4 Resources for further study
 
Why should I care about information literacy?
Why should I care about information literacy? Why should I care about information literacy?
Why should I care about information literacy?
 
RDMRose 1.2 Research and researchers
RDMRose 1.2 Research and researchersRDMRose 1.2 Research and researchers
RDMRose 1.2 Research and researchers
 
Open Access to Research Data: Challenges and Solutions
Open Access to Research Data: Challenges and SolutionsOpen Access to Research Data: Challenges and Solutions
Open Access to Research Data: Challenges and Solutions
 
E research africa presentation (19 nov 2014)
E research africa presentation (19 nov 2014)E research africa presentation (19 nov 2014)
E research africa presentation (19 nov 2014)
 
Going Full Circle: Research Data Management @ University of Pretoria
Going Full Circle: Research Data Management @ University of PretoriaGoing Full Circle: Research Data Management @ University of Pretoria
Going Full Circle: Research Data Management @ University of Pretoria
 
Open Data - strategies for research data management & impact of best practices
Open Data - strategies for research data management & impact of best practicesOpen Data - strategies for research data management & impact of best practices
Open Data - strategies for research data management & impact of best practices
 
Immersive informatics - research data management at Pitt iSchool and Carnegie...
Immersive informatics - research data management at Pitt iSchool and Carnegie...Immersive informatics - research data management at Pitt iSchool and Carnegie...
Immersive informatics - research data management at Pitt iSchool and Carnegie...
 
RDMRose 3.1 Data Asset Framewok surveys
RDMRose 3.1 Data Asset Framewok surveysRDMRose 3.1 Data Asset Framewok surveys
RDMRose 3.1 Data Asset Framewok surveys
 
Introduction to Research Data Management at Lancaster University
Introduction to Research Data Management at Lancaster UniversityIntroduction to Research Data Management at Lancaster University
Introduction to Research Data Management at Lancaster University
 
Services, policy, guidance and training: Improving research data management a...
Services, policy, guidance and training: Improving research data management a...Services, policy, guidance and training: Improving research data management a...
Services, policy, guidance and training: Improving research data management a...
 
Ps rwebinar january2019final
Ps rwebinar january2019finalPs rwebinar january2019final
Ps rwebinar january2019final
 
DMPTool Webinar 8: Data Curation Profiles and the DMPTool (presented by Jake ...
DMPTool Webinar 8: Data Curation Profiles and the DMPTool (presented by Jake ...DMPTool Webinar 8: Data Curation Profiles and the DMPTool (presented by Jake ...
DMPTool Webinar 8: Data Curation Profiles and the DMPTool (presented by Jake ...
 
Rdm rose v3-slides-4.1-an-institutional-case-study
Rdm rose v3-slides-4.1-an-institutional-case-studyRdm rose v3-slides-4.1-an-institutional-case-study
Rdm rose v3-slides-4.1-an-institutional-case-study
 
Martin Donnelly - Digital Data Curation at the Digital Curation Centre (DH2016)
Martin Donnelly - Digital Data Curation at the Digital Curation Centre (DH2016)Martin Donnelly - Digital Data Curation at the Digital Curation Centre (DH2016)
Martin Donnelly - Digital Data Curation at the Digital Curation Centre (DH2016)
 
INCLUSION OF DATA ARCHIVES IN DATA MANAGEMENT PLAN
INCLUSION OF DATA ARCHIVES IN DATA MANAGEMENT PLANINCLUSION OF DATA ARCHIVES IN DATA MANAGEMENT PLAN
INCLUSION OF DATA ARCHIVES IN DATA MANAGEMENT PLAN
 
Harmonising Research between South and North: Results from ROER4D’s Question ...
Harmonising Research between South and North: Results from ROER4D’s Question ...Harmonising Research between South and North: Results from ROER4D’s Question ...
Harmonising Research between South and North: Results from ROER4D’s Question ...
 
Managing Ireland's Research Data - 3 Research Methods
Managing Ireland's Research Data - 3 Research MethodsManaging Ireland's Research Data - 3 Research Methods
Managing Ireland's Research Data - 3 Research Methods
 
What are we doing about data? Emerging roles in data librarianship and Tales ...
What are we doing about data? Emerging roles in data librarianship and Tales ...What are we doing about data? Emerging roles in data librarianship and Tales ...
What are we doing about data? Emerging roles in data librarianship and Tales ...
 

Más de RDMRose

RDMRose introduction
RDMRose introductionRDMRose introduction
RDMRose introductionRDMRose
 
RDMRose 3.2 Advocacy role cards
RDMRose 3.2 Advocacy role cardsRDMRose 3.2 Advocacy role cards
RDMRose 3.2 Advocacy role cardsRDMRose
 
RDMRose 4.1 Handout institutional case study
RDMRose 4.1 Handout institutional case studyRDMRose 4.1 Handout institutional case study
RDMRose 4.1 Handout institutional case studyRDMRose
 
RDMRose 0.0 Introduction to the course
RDMRose 0.0 Introduction to the courseRDMRose 0.0 Introduction to the course
RDMRose 0.0 Introduction to the courseRDMRose
 
RDMRose 1.4 The research data lifecycle
RDMRose 1.4 The research data lifecycleRDMRose 1.4 The research data lifecycle
RDMRose 1.4 The research data lifecycleRDMRose
 
RDMRose 1.5 Data management and sharing plans
RDMRose 1.5 Data management and sharing plansRDMRose 1.5 Data management and sharing plans
RDMRose 1.5 Data management and sharing plansRDMRose
 
RDMRose 1.6 Research data services
RDMRose 1.6 Research data servicesRDMRose 1.6 Research data services
RDMRose 1.6 Research data servicesRDMRose
 
RDMRose 2.1 Research data services
RDMRose 2.1 Research data servicesRDMRose 2.1 Research data services
RDMRose 2.1 Research data servicesRDMRose
 
RDMRose 2.2 Practical data management
RDMRose 2.2 Practical data managementRDMRose 2.2 Practical data management
RDMRose 2.2 Practical data managementRDMRose
 
RDMRose 2.3 Institutional data repository policies
RDMRose 2.3 Institutional data repository policiesRDMRose 2.3 Institutional data repository policies
RDMRose 2.3 Institutional data repository policiesRDMRose
 
RDMRose 2.4 Designing library webpages
RDMRose 2.4 Designing library webpagesRDMRose 2.4 Designing library webpages
RDMRose 2.4 Designing library webpagesRDMRose
 
RDMRose 2.5 Metadata and data citation
RDMRose 2.5 Metadata and data citationRDMRose 2.5 Metadata and data citation
RDMRose 2.5 Metadata and data citationRDMRose
 
RDMRose 3.2 Advocacy
RDMRose 3.2 AdvocacyRDMRose 3.2 Advocacy
RDMRose 3.2 AdvocacyRDMRose
 
RDMRose 3.3 Training researchers
RDMRose 3.3 Training researchersRDMRose 3.3 Training researchers
RDMRose 3.3 Training researchersRDMRose
 
RDMRose 4.2 RDM as a wicked problem
RDMRose 4.2 RDM as a wicked problemRDMRose 4.2 RDM as a wicked problem
RDMRose 4.2 RDM as a wicked problemRDMRose
 
RDMRose 4.3 Review of the workshops
RDMRose 4.3 Review of the workshopsRDMRose 4.3 Review of the workshops
RDMRose 4.3 Review of the workshopsRDMRose
 

Más de RDMRose (16)

RDMRose introduction
RDMRose introductionRDMRose introduction
RDMRose introduction
 
RDMRose 3.2 Advocacy role cards
RDMRose 3.2 Advocacy role cardsRDMRose 3.2 Advocacy role cards
RDMRose 3.2 Advocacy role cards
 
RDMRose 4.1 Handout institutional case study
RDMRose 4.1 Handout institutional case studyRDMRose 4.1 Handout institutional case study
RDMRose 4.1 Handout institutional case study
 
RDMRose 0.0 Introduction to the course
RDMRose 0.0 Introduction to the courseRDMRose 0.0 Introduction to the course
RDMRose 0.0 Introduction to the course
 
RDMRose 1.4 The research data lifecycle
RDMRose 1.4 The research data lifecycleRDMRose 1.4 The research data lifecycle
RDMRose 1.4 The research data lifecycle
 
RDMRose 1.5 Data management and sharing plans
RDMRose 1.5 Data management and sharing plansRDMRose 1.5 Data management and sharing plans
RDMRose 1.5 Data management and sharing plans
 
RDMRose 1.6 Research data services
RDMRose 1.6 Research data servicesRDMRose 1.6 Research data services
RDMRose 1.6 Research data services
 
RDMRose 2.1 Research data services
RDMRose 2.1 Research data servicesRDMRose 2.1 Research data services
RDMRose 2.1 Research data services
 
RDMRose 2.2 Practical data management
RDMRose 2.2 Practical data managementRDMRose 2.2 Practical data management
RDMRose 2.2 Practical data management
 
RDMRose 2.3 Institutional data repository policies
RDMRose 2.3 Institutional data repository policiesRDMRose 2.3 Institutional data repository policies
RDMRose 2.3 Institutional data repository policies
 
RDMRose 2.4 Designing library webpages
RDMRose 2.4 Designing library webpagesRDMRose 2.4 Designing library webpages
RDMRose 2.4 Designing library webpages
 
RDMRose 2.5 Metadata and data citation
RDMRose 2.5 Metadata and data citationRDMRose 2.5 Metadata and data citation
RDMRose 2.5 Metadata and data citation
 
RDMRose 3.2 Advocacy
RDMRose 3.2 AdvocacyRDMRose 3.2 Advocacy
RDMRose 3.2 Advocacy
 
RDMRose 3.3 Training researchers
RDMRose 3.3 Training researchersRDMRose 3.3 Training researchers
RDMRose 3.3 Training researchers
 
RDMRose 4.2 RDM as a wicked problem
RDMRose 4.2 RDM as a wicked problemRDMRose 4.2 RDM as a wicked problem
RDMRose 4.2 RDM as a wicked problem
 
RDMRose 4.3 Review of the workshops
RDMRose 4.3 Review of the workshopsRDMRose 4.3 Review of the workshops
RDMRose 4.3 Review of the workshops
 

Último

Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...Boston Institute of Analytics
 
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024Susanna-Assunta Sansone
 
Learn How Data Science Changes Our World
Learn How Data Science Changes Our WorldLearn How Data Science Changes Our World
Learn How Data Science Changes Our WorldEduminds Learning
 
Bank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis ProjectBank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis ProjectBoston Institute of Analytics
 
Conf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
Conf42-LLM_Adding Generative AI to Real-Time Streaming PipelinesConf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
Conf42-LLM_Adding Generative AI to Real-Time Streaming PipelinesTimothy Spann
 
Decoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectDecoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectBoston Institute of Analytics
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Seán Kennedy
 
SMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptxSMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptxHaritikaChhatwal1
 
Cyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataCyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataTecnoIncentive
 
INTRODUCTION TO Natural language processing
INTRODUCTION TO Natural language processingINTRODUCTION TO Natural language processing
INTRODUCTION TO Natural language processingsocarem879
 
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default  Presentation : Data Analysis Project PPTPredictive Analysis for Loan Default  Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPTBoston Institute of Analytics
 
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfEnglish-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfblazblazml
 
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...Amil Baba Dawood bangali
 
convolutional neural network and its applications.pdf
convolutional neural network and its applications.pdfconvolutional neural network and its applications.pdf
convolutional neural network and its applications.pdfSubhamKumar3239
 
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...Dr Arash Najmaei ( Phd., MBA, BSc)
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsVICTOR MAESTRE RAMIREZ
 
Networking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxNetworking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxHimangsuNath
 
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptxThe Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptxTasha Penwell
 
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...Boston Institute of Analytics
 

Último (20)

Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
 
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
 
Learn How Data Science Changes Our World
Learn How Data Science Changes Our WorldLearn How Data Science Changes Our World
Learn How Data Science Changes Our World
 
Bank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis ProjectBank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis Project
 
Conf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
Conf42-LLM_Adding Generative AI to Real-Time Streaming PipelinesConf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
Conf42-LLM_Adding Generative AI to Real-Time Streaming Pipelines
 
Decoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectDecoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis Project
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...
 
SMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptxSMOTE and K-Fold Cross Validation-Presentation.pptx
SMOTE and K-Fold Cross Validation-Presentation.pptx
 
Cyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataCyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded data
 
INTRODUCTION TO Natural language processing
INTRODUCTION TO Natural language processingINTRODUCTION TO Natural language processing
INTRODUCTION TO Natural language processing
 
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default  Presentation : Data Analysis Project PPTPredictive Analysis for Loan Default  Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
 
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfEnglish-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
 
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
 
convolutional neural network and its applications.pdf
convolutional neural network and its applications.pdfconvolutional neural network and its applications.pdf
convolutional neural network and its applications.pdf
 
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
 
Data Analysis Project: Stroke Prediction
Data Analysis Project: Stroke PredictionData Analysis Project: Stroke Prediction
Data Analysis Project: Stroke Prediction
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business Professionals
 
Networking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxNetworking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptx
 
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptxThe Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
 
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
Data Analysis Project : Targeting the Right Customers, Presentation on Bank M...
 

RDMRose 2.6 Interviewing a researcher

  • 1. Interviewing a researcher May-15 Learning material produced by RDMRose http://www.sheffield.ac.uk/is/research/projects/rdmrose Research Data Management 2.6
  • 2. Data profile interviews • Witt and Carlson (2007) offer an overview of the research data interview: 1. What is the story of the data? 2. What form and format are the data in? 3. What is the expected lifespan of the dataset? 4. How could the data be used, reused, and repurposed? 5. How large is the dataset, and what is its rate of growth? 6. Who are the potential audiences for the data? 7. Who owns the data? 8. Does the dataset include any sensitive information? 9. What publications or discoveries have resulted from the data? 10. How should the data be made accessible? May-15 Learning material produced by RDMRose http://www.sheffield.ac.uk/is/research/projects/rdmrose
  • 3. Investigating a researcher • Plan an investigation of a particular researcher • Topics for the investigation: their research; what their data is; how they analyse it; how they manage data. • Resources: Witt & Carlson, 2007; interview guides from the DAF implementation guide. • To plan: – Who will you approach? – What sort of themes and questions do you want to explore? – What preparatory work can be done? • Work as a team • Do an investigation online vs face to face interview May-15 Learning material produced by RDMRose http://www.sheffield.ac.uk/is/research/projects/rdmrose
  • 4. Investigating a researcher: an alternative • As an alternative to conducting an interview with a researcher using data profiles or DAF interview guides, you could use the 5 case studies of researchers and research projects available on the RDMRose website: http://rdmrose.group.shef.ac.uk/?page_id=10#session-71-case-studies-of- researchers-and-research-projects • These are recorded interviews with researchers working in: – Gastroenterology / oncology – Electronic and electrical engineering – Civil and structural engineering (international collaborative research) – Psychology (longitudinal quantitative research) – Sociology (longitudinal qualitative research) • In each of these interviews, the researcher describes one of their research projects, their research data management issues, how they resolved these issues, how they handled metadata, and what they think of open data.
  • 5. REFERENCES May-15 Learning material produced by RDMRose http://www.sheffield.ac.uk/is/research/projects/rdmrose
  • 6. References • Witt, M. and Carlson, J. R. (2007). "Conducting a Data Interview" Libraries Research Publications. Paper 81. http://docs.lib.purdue.edu/lib_research/81. May-15 Learning material produced by RDMRose http://www.sheffield.ac.uk/is/research/projects/rdmrose