SlideShare une entreprise Scribd logo
1  sur  12
Sherry Lake




   July 31, 2012 University of Florida Data Management Workshop
Research Life Cycle
                      Data           Re-        Data                  Deposit
                      Discovery      Use
                                                Archive




Proposal   Project    Data               Data              Data           End of
Planning   Start Up   Collection         Analysis          Sharing        Project
Writing



                               Re-
                               Purpose
                                                    Data Life Cycle
Research Life Cycle
                                Support Within
                                Data Mining                                     Data Curation
                                                                                &
         Data                                                                   Preservation
         Search                 Data           Re-        Data                    Deposit
                                Discovery      Use
                                                          Archive




Proposal          Project       Data               Data              Data             End of
Planning          Start Up      Collection         Analysis          Sharing          Project
Writing

DMP               DM Planning                                        Data             Publication
Consulting                                                           Storage          Rights &
Grant Writing                            Re-                                          Restriction
& Planning                               Purpose                                      s
                                    Data Processing           Data Life Cycle
                                    HPC/Visualizatio
                                    n                            Metadata &
                                    Tool                         Documentatio
                                    Development                  n
Research Life Cycle
                                Outside Support
                                Data Mining                                     Data Curation
                                                                                &
         Data                                                                   Preservation
         Search                 Data           Re-        Data                    Deposit

                                        Policy
                                Discovery      Use
                                                          Archive




Proposal
Planning
                  Project       Infrastructure
                                Data      Data                       Data             End of
                  Start Up      Collection         Analysis          Sharing          Project
Writing

DMP               DM Planning                                        Data             Publication
Consulting
Grant Writing          Researcher Re-
                                  Code of Practice                   Storage          Rights &
                                                                                      Restriction
& Planning                               Purpose                                      s
                                    Data Processing           Data Life Cycle
                                    HPC/Visualizatio
                                    n                            Metadata &
                                    Tool                         Documentatio
                                    Development                  n

(Auckland, 2012)
9 skills gaps
                       
1. Ability to advise on preserving research
   outputs
2. Knowledge to advise on data management and
   curation
3. Knowledge on complying with funder
   mandates, including open access
4. Knowledge to advise on potential data
   manipulation tools
5. Knowledge to advise on data mining
                                    (Auckland, 2012)
9 skills gaps
                       
6. Knowledge to advocate, and advise on, the use
   of metadata
7. Ability to advise on the preservation of project
   records
8. Knowledge of sources of research funding
9. Skills to develop metadata schema



                                    (Auckland, 2012)
Research Life Cycle
                                Support Within
                                Data Mining                                     Data Curation
                                                                                &
         Data                                                                   Preservation
         Search                 Data           Re-        Data                    Deposit
                                Discovery      Use
                                                          Archive




Proposal          Project       Data               Data              Data             End of
Planning          Start Up      Collection         Analysis          Sharing          Project
Writing

DMP               DM Planning                                        Data             Publication
Consulting                                                           Storage          Rights &
Grant Writing                            Re-                                          Restriction
& Planning                               Purpose                                      s
                                    Data Processing           Data Life Cycle
                                    HPC/Visualizatio
                                    n                            Metadata &
                                    Tool                         Documentatio
                                    Development                  n
References

 Auckland, M (2012), Re-skilling for Research, Research Libraries UK (RLUK)
 report http://www.rluk.ac.uk/content/re-skilling-research

 Lyon, L. (2012). The Informatics Transform: Re-Engineering Libraries for the
 Data Decade. International Journal of Digital Curation, 7(1), 126–138.
 doi:10.2218/ijdc.v7i1.220

 Pryor, G., & Donnelly, M. (2009). Skilling Up to Do Data: Whose Role, Whose
 Responsibility, Whose Career? International Journal of Digital Curation, 4(2), 158–
 170. doi:10.2218/ijdc.v4i2.105

Contenu connexe

Similaire à Library support for life cycle

Managing the research life cycle
Managing the research life cycleManaging the research life cycle
Managing the research life cycleSherry Lake
 
Iassist 2012 dms public version
Iassist 2012 dms public versionIassist 2012 dms public version
Iassist 2012 dms public versionjhudms
 
Libby Bishop, Ethics Of Data Sharing Ncess Jun 09 Final
Libby Bishop, Ethics Of Data Sharing Ncess Jun 09 FinalLibby Bishop, Ethics Of Data Sharing Ncess Jun 09 Final
Libby Bishop, Ethics Of Data Sharing Ncess Jun 09 Finala.carusi
 
SEAD Datanet and Sustainability Science
SEAD Datanet and Sustainability Science SEAD Datanet and Sustainability Science
SEAD Datanet and Sustainability Science Robert H. McDonald
 
Simon Hodson
Simon HodsonSimon Hodson
Simon HodsonEduserv
 
Data mining - GDi Techno Solutions
Data mining - GDi Techno SolutionsData mining - GDi Techno Solutions
Data mining - GDi Techno SolutionsGDi Techno Solutions
 
What is the Point of Hadoop
What is the Point of HadoopWhat is the Point of Hadoop
What is the Point of HadoopDataWorks Summit
 
Data Management for Librarians: An Introduction
Data Management for Librarians: An IntroductionData Management for Librarians: An Introduction
Data Management for Librarians: An IntroductionGarethKnight
 
CNI Fall 2011 Meeting Presentation Margaret Hedstrom & Robert McDonald (Dec. ...
CNI Fall 2011 Meeting Presentation Margaret Hedstrom & Robert McDonald (Dec. ...CNI Fall 2011 Meeting Presentation Margaret Hedstrom & Robert McDonald (Dec. ...
CNI Fall 2011 Meeting Presentation Margaret Hedstrom & Robert McDonald (Dec. ...SEAD
 
Research Data Management for Researchers: Module 1: Intro to Data, Metadata a...
Research Data Management for Researchers: Module 1: Intro to Data, Metadata a...Research Data Management for Researchers: Module 1: Intro to Data, Metadata a...
Research Data Management for Researchers: Module 1: Intro to Data, Metadata a...Glen Newton
 
THE Jisc Supplement 25 Nov 2009
THE Jisc Supplement 25 Nov 2009THE Jisc Supplement 25 Nov 2009
THE Jisc Supplement 25 Nov 2009Fiona Salvage
 
Big Data For Investment Research Management
Big Data For Investment Research ManagementBig Data For Investment Research Management
Big Data For Investment Research ManagementIDT Partners
 

Similaire à Library support for life cycle (20)

Managing the research life cycle
Managing the research life cycleManaging the research life cycle
Managing the research life cycle
 
Iassist 2012 dms public version
Iassist 2012 dms public versionIassist 2012 dms public version
Iassist 2012 dms public version
 
MANTRA Research Data Lifecycle
MANTRA Research Data LifecycleMANTRA Research Data Lifecycle
MANTRA Research Data Lifecycle
 
Dbm630_lecture01
Dbm630_lecture01Dbm630_lecture01
Dbm630_lecture01
 
Dbm630 Lecture01
Dbm630 Lecture01Dbm630 Lecture01
Dbm630 Lecture01
 
Libby Bishop, Ethics Of Data Sharing Ncess Jun 09 Final
Libby Bishop, Ethics Of Data Sharing Ncess Jun 09 FinalLibby Bishop, Ethics Of Data Sharing Ncess Jun 09 Final
Libby Bishop, Ethics Of Data Sharing Ncess Jun 09 Final
 
Data mining
Data miningData mining
Data mining
 
SEAD Datanet and Sustainability Science
SEAD Datanet and Sustainability Science SEAD Datanet and Sustainability Science
SEAD Datanet and Sustainability Science
 
Simon Hodson
Simon HodsonSimon Hodson
Simon Hodson
 
Data mining - GDi Techno Solutions
Data mining - GDi Techno SolutionsData mining - GDi Techno Solutions
Data mining - GDi Techno Solutions
 
15 19
15 1915 19
15 19
 
Forrester
ForresterForrester
Forrester
 
What is the Point of Hadoop
What is the Point of HadoopWhat is the Point of Hadoop
What is the Point of Hadoop
 
Data Management for Librarians: An Introduction
Data Management for Librarians: An IntroductionData Management for Librarians: An Introduction
Data Management for Librarians: An Introduction
 
Hi2413031309
Hi2413031309Hi2413031309
Hi2413031309
 
CNI Fall 2011 Meeting Presentation Margaret Hedstrom & Robert McDonald (Dec. ...
CNI Fall 2011 Meeting Presentation Margaret Hedstrom & Robert McDonald (Dec. ...CNI Fall 2011 Meeting Presentation Margaret Hedstrom & Robert McDonald (Dec. ...
CNI Fall 2011 Meeting Presentation Margaret Hedstrom & Robert McDonald (Dec. ...
 
Research Data Management for Researchers: Module 1: Intro to Data, Metadata a...
Research Data Management for Researchers: Module 1: Intro to Data, Metadata a...Research Data Management for Researchers: Module 1: Intro to Data, Metadata a...
Research Data Management for Researchers: Module 1: Intro to Data, Metadata a...
 
THE Jisc Supplement 25 Nov 2009
THE Jisc Supplement 25 Nov 2009THE Jisc Supplement 25 Nov 2009
THE Jisc Supplement 25 Nov 2009
 
What is-rdm
What is-rdmWhat is-rdm
What is-rdm
 
Big Data For Investment Research Management
Big Data For Investment Research ManagementBig Data For Investment Research Management
Big Data For Investment Research Management
 

Plus de Sherry Lake

Planning for Libra Data
Planning for Libra DataPlanning for Libra Data
Planning for Libra DataSherry Lake
 
Virginia Data Management Bootcamp: Building the Research Data Community of Pr...
Virginia Data Management Bootcamp: Building the Research Data Community of Pr...Virginia Data Management Bootcamp: Building the Research Data Community of Pr...
Virginia Data Management Bootcamp: Building the Research Data Community of Pr...Sherry Lake
 
Best practices data management
Best practices data managementBest practices data management
Best practices data managementSherry Lake
 
Using a Case Study to Teach Data Management to Librarians
Using a Case Study to Teach Data Management to LibrariansUsing a Case Study to Teach Data Management to Librarians
Using a Case Study to Teach Data Management to LibrariansSherry Lake
 
Documentation and Metdata - VA DM Bootcamp
Documentation and Metdata - VA DM BootcampDocumentation and Metdata - VA DM Bootcamp
Documentation and Metdata - VA DM BootcampSherry Lake
 
DMTool-ASERL-Webinar
DMTool-ASERL-WebinarDMTool-ASERL-Webinar
DMTool-ASERL-WebinarSherry Lake
 
DMPTool Workshop University of Georgia
DMPTool Workshop University of GeorgiaDMPTool Workshop University of Georgia
DMPTool Workshop University of GeorgiaSherry Lake
 
Federal funder mandates
Federal funder mandatesFederal funder mandates
Federal funder mandatesSherry Lake
 
DMPTool2 demo for DMPTool-DMPonline Workshop IDCC 2014
DMPTool2 demo for DMPTool-DMPonline Workshop IDCC 2014DMPTool2 demo for DMPTool-DMPonline Workshop IDCC 2014
DMPTool2 demo for DMPTool-DMPonline Workshop IDCC 2014Sherry Lake
 
Data Management Planning for Engineers
Data Management Planning for EngineersData Management Planning for Engineers
Data Management Planning for EngineersSherry Lake
 
DMPTool Webinar Environmental Scan
DMPTool Webinar Environmental ScanDMPTool Webinar Environmental Scan
DMPTool Webinar Environmental ScanSherry Lake
 
Lake dmp tool_i_conference
Lake dmp tool_i_conferenceLake dmp tool_i_conference
Lake dmp tool_i_conferenceSherry Lake
 
Lake us-canada policesupdate
Lake us-canada policesupdateLake us-canada policesupdate
Lake us-canada policesupdateSherry Lake
 
Re tooling for data management-support
Re tooling for data management-supportRe tooling for data management-support
Re tooling for data management-supportSherry Lake
 
Best practices data collection
Best practices data collectionBest practices data collection
Best practices data collectionSherry Lake
 
Dmp tool presentation
Dmp tool presentationDmp tool presentation
Dmp tool presentationSherry Lake
 
Funder requirements for Data Management Plans
Funder requirements for Data Management PlansFunder requirements for Data Management Plans
Funder requirements for Data Management PlansSherry Lake
 

Plus de Sherry Lake (20)

Planning for Libra Data
Planning for Libra DataPlanning for Libra Data
Planning for Libra Data
 
Virginia Data Management Bootcamp: Building the Research Data Community of Pr...
Virginia Data Management Bootcamp: Building the Research Data Community of Pr...Virginia Data Management Bootcamp: Building the Research Data Community of Pr...
Virginia Data Management Bootcamp: Building the Research Data Community of Pr...
 
Best practices data management
Best practices data managementBest practices data management
Best practices data management
 
Using a Case Study to Teach Data Management to Librarians
Using a Case Study to Teach Data Management to LibrariansUsing a Case Study to Teach Data Management to Librarians
Using a Case Study to Teach Data Management to Librarians
 
Documentation and Metdata - VA DM Bootcamp
Documentation and Metdata - VA DM BootcampDocumentation and Metdata - VA DM Bootcamp
Documentation and Metdata - VA DM Bootcamp
 
Creating dmp
Creating dmpCreating dmp
Creating dmp
 
DMTool-ASERL-Webinar
DMTool-ASERL-WebinarDMTool-ASERL-Webinar
DMTool-ASERL-Webinar
 
DMPTool Workshop University of Georgia
DMPTool Workshop University of GeorgiaDMPTool Workshop University of Georgia
DMPTool Workshop University of Georgia
 
Federal funder mandates
Federal funder mandatesFederal funder mandates
Federal funder mandates
 
DMPTool2 demo for DMPTool-DMPonline Workshop IDCC 2014
DMPTool2 demo for DMPTool-DMPonline Workshop IDCC 2014DMPTool2 demo for DMPTool-DMPonline Workshop IDCC 2014
DMPTool2 demo for DMPTool-DMPonline Workshop IDCC 2014
 
Data Management Planning for Engineers
Data Management Planning for EngineersData Management Planning for Engineers
Data Management Planning for Engineers
 
DMPTool Webinar Environmental Scan
DMPTool Webinar Environmental ScanDMPTool Webinar Environmental Scan
DMPTool Webinar Environmental Scan
 
Lake dmp tool_i_conference
Lake dmp tool_i_conferenceLake dmp tool_i_conference
Lake dmp tool_i_conference
 
Lake us-canada policesupdate
Lake us-canada policesupdateLake us-canada policesupdate
Lake us-canada policesupdate
 
Why managedata
Why managedataWhy managedata
Why managedata
 
Re tooling for data management-support
Re tooling for data management-supportRe tooling for data management-support
Re tooling for data management-support
 
Web links
Web linksWeb links
Web links
 
Best practices data collection
Best practices data collectionBest practices data collection
Best practices data collection
 
Dmp tool presentation
Dmp tool presentationDmp tool presentation
Dmp tool presentation
 
Funder requirements for Data Management Plans
Funder requirements for Data Management PlansFunder requirements for Data Management Plans
Funder requirements for Data Management Plans
 

Dernier

Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
Unraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptxUnraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptx
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptxDhatriParmar
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxlancelewisportillo
 
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)lakshayb543
 
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptxBIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptxSayali Powar
 
Measures of Position DECILES for ungrouped data
Measures of Position DECILES for ungrouped dataMeasures of Position DECILES for ungrouped data
Measures of Position DECILES for ungrouped dataBabyAnnMotar
 
Oppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and FilmOppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and FilmStan Meyer
 
Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4JOYLYNSAMANIEGO
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management systemChristalin Nelson
 
Multi Domain Alias In the Odoo 17 ERP Module
Multi Domain Alias In the Odoo 17 ERP ModuleMulti Domain Alias In the Odoo 17 ERP Module
Multi Domain Alias In the Odoo 17 ERP ModuleCeline George
 
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQ-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQuiz Club NITW
 
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnvESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnvRicaMaeCastro1
 
ICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfVanessa Camilleri
 
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...Nguyen Thanh Tu Collection
 
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...DhatriParmar
 
4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptx4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptxmary850239
 
Mental Health Awareness - a toolkit for supporting young minds
Mental Health Awareness - a toolkit for supporting young mindsMental Health Awareness - a toolkit for supporting young minds
Mental Health Awareness - a toolkit for supporting young mindsPooky Knightsmith
 
Mythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWMythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWQuiz Club NITW
 

Dernier (20)

Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
Unraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptxUnraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptx
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
 
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
 
Paradigm shift in nursing research by RS MEHTA
Paradigm shift in nursing research by RS MEHTAParadigm shift in nursing research by RS MEHTA
Paradigm shift in nursing research by RS MEHTA
 
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptxBIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
 
Measures of Position DECILES for ungrouped data
Measures of Position DECILES for ungrouped dataMeasures of Position DECILES for ungrouped data
Measures of Position DECILES for ungrouped data
 
Oppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and FilmOppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and Film
 
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of EngineeringFaculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
 
Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management system
 
Multi Domain Alias In the Odoo 17 ERP Module
Multi Domain Alias In the Odoo 17 ERP ModuleMulti Domain Alias In the Odoo 17 ERP Module
Multi Domain Alias In the Odoo 17 ERP Module
 
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQ-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
 
Mattingly "AI & Prompt Design: Large Language Models"
Mattingly "AI & Prompt Design: Large Language Models"Mattingly "AI & Prompt Design: Large Language Models"
Mattingly "AI & Prompt Design: Large Language Models"
 
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnvESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
 
ICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdf
 
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
 
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
 
4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptx4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptx
 
Mental Health Awareness - a toolkit for supporting young minds
Mental Health Awareness - a toolkit for supporting young mindsMental Health Awareness - a toolkit for supporting young minds
Mental Health Awareness - a toolkit for supporting young minds
 
Mythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWMythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITW
 

Library support for life cycle

  • 1. Sherry Lake July 31, 2012 University of Florida Data Management Workshop
  • 2. Research Life Cycle Data Re- Data Deposit Discovery Use Archive Proposal Project Data Data Data End of Planning Start Up Collection Analysis Sharing Project Writing Re- Purpose Data Life Cycle
  • 3.
  • 4. Research Life Cycle Support Within Data Mining Data Curation & Data Preservation Search Data Re- Data Deposit Discovery Use Archive Proposal Project Data Data Data End of Planning Start Up Collection Analysis Sharing Project Writing DMP DM Planning Data Publication Consulting Storage Rights & Grant Writing Re- Restriction & Planning Purpose s Data Processing Data Life Cycle HPC/Visualizatio n Metadata & Tool Documentatio Development n
  • 5. Research Life Cycle Outside Support Data Mining Data Curation & Data Preservation Search Data Re- Data Deposit Policy Discovery Use Archive Proposal Planning Project Infrastructure Data Data Data End of Start Up Collection Analysis Sharing Project Writing DMP DM Planning Data Publication Consulting Grant Writing Researcher Re- Code of Practice Storage Rights & Restriction & Planning Purpose s Data Processing Data Life Cycle HPC/Visualizatio n Metadata & Tool Documentatio Development n
  • 6.
  • 7.
  • 9. 9 skills gaps  1. Ability to advise on preserving research outputs 2. Knowledge to advise on data management and curation 3. Knowledge on complying with funder mandates, including open access 4. Knowledge to advise on potential data manipulation tools 5. Knowledge to advise on data mining (Auckland, 2012)
  • 10. 9 skills gaps  6. Knowledge to advocate, and advise on, the use of metadata 7. Ability to advise on the preservation of project records 8. Knowledge of sources of research funding 9. Skills to develop metadata schema (Auckland, 2012)
  • 11. Research Life Cycle Support Within Data Mining Data Curation & Data Preservation Search Data Re- Data Deposit Discovery Use Archive Proposal Project Data Data Data End of Planning Start Up Collection Analysis Sharing Project Writing DMP DM Planning Data Publication Consulting Storage Rights & Grant Writing Re- Restriction & Planning Purpose s Data Processing Data Life Cycle HPC/Visualizatio n Metadata & Tool Documentatio Development n
  • 12. References Auckland, M (2012), Re-skilling for Research, Research Libraries UK (RLUK) report http://www.rluk.ac.uk/content/re-skilling-research Lyon, L. (2012). The Informatics Transform: Re-Engineering Libraries for the Data Decade. International Journal of Digital Curation, 7(1), 126–138. doi:10.2218/ijdc.v7i1.220 Pryor, G., & Donnelly, M. (2009). Skilling Up to Do Data: Whose Role, Whose Responsibility, Whose Career? International Journal of Digital Curation, 4(2), 158– 170. doi:10.2218/ijdc.v4i2.105

Notes de l'éditeur

  1. Research Data Services are defined as services that address the full data lifecycle, including the data management plan, digital curation (selection, preservation, maintenance, and archiving) and metadata creation and conversion.
  2. Here are 4 roles that are involved directly in the day-to-day DM. The bubbles are the “skills” needed.If I am proposing that the Librarian be involved in the whole data lifecycle, then there are sResearchers: what skills should a librarian have? What services does UF already have? Should library fill the gaps?Pryor, G., & Donnelly, M. (2009). Skilling Up to Do Data: Whose Role, Whose Responsibility, Whose Career? International Journal of Digital Curation, 4(2), 158–170. doi:10.2218/ijdc.v4i2.105
  3. Let’s look more closely at the skills needed along our Research Life Cycle.Then there are over-arching skills: marketing, raising awareness and user trainingOther more detailed services such as data format conversion & transformationData Search – like Lit serarch
  4. Library and researcher can’t do this along.What is needed across the whole life cycle… across all of research are policies (funders, institution, discipline) and codes of practice (Open Data, Open Access)In addition to infrastructure and training.
  5. There are other partners at every instutitioin who have roles in data management – policy, IT, VPR, Office of Grant awards.Libraries shouldn’t have to do it all. Look around your institution to see who else provides the “services” that are needed to support the research lifecycle.Lyon, L. (2012). The Informatics Transform: Re-Engineering Libraries for the Data Decade. International Journal of Digital Curation, 7(1), 126–138. doi:10.2218/ijdc.v7i1.220Pg 131Part 1 of Table 1. Research data management, the library and institutional stakeholders. Partnership approach – Library & institutional stakeholders 7 roles, responsibilities, requirements, relationshipsDirector (Leadership)Data Librarian (Advocacy)Repo managers (discovery)IT/ computing (Storage)
  6. Lyon, L. (2012). The Informatics Transform: Re-Engineering Libraries for the Data Decade. International Journal of Digital Curation, 7(1), 126–138. doi:10.2218/ijdc.v7i1.220Pg 132Part 2 of Table 1. Research data management, the library and institutional stakeholders. Research and development (CRIS)Faculty training centers (training)PVC Research (policy)
  7. According to Auckland, even if we narrow down the skills to those that are related to the “traditional” roles of librarians, there are still gaps that need to be addressed to truly support data management.2012 Re-skilling for Research report identified a skills gapRe-skilling for Research In January 2012 in the UK RLUK (Research Libraries UK) published a major report by Mary Auckland on the changing needs of researchers and the effect on the subject/liaison role within libraries.  Research practices and activities are changing and evolving, research support provided by libraries must evolve with them. In terms of what libraries are currently offering the, Re-skilling for Research report found a Skills gap 9 areas: 
  8. The 9 areas identified as having potentially the most significant skills gap are: The Ability to advise on preserving research outputsKnowledge to advise on data management and curation, including ingest, discovery, access, dissemination, preservation, and portability Knowledge to support researchers in complying with the various mandates of funders, including open access requirementsKnowledge to advise on potential data manipulation tools used in the disciplineKnowledge to advise on data miningKnowledge to advocate, and advise on, the use of metadata Ability to advise on the preservation of project records e.g. Knowledge of sources of research funding to assist researchers to identify potential funders Skills to develop metadata schema, and advise on discipline/subject standards and practices, for individual research projects Auckland, M (2012), Re-skilling for Research, Research Libraries UK (RLUK) report http://www.rluk.ac.uk/content/re-skilling-research
  9. Auckland, M (2012), Re-skilling for Research, Research Libraries UK (RLUK) report http://www.rluk.ac.uk/content/re-skilling-research
  10. Let’s look more closely at the skills needed along our Research Life Cycle.Then there are over-arching skills: marketing, raising awareness and user trainingOther more detailed services such as data format conversion & transformationData Search – like Lit serarch