SlideShare a Scribd company logo
1 of 23
Data as a Library Acquisition
Collection Development Policies for Data @ MSU Libraries
Hailey Mooney
Piloting Infrastructure for Data Collections @ MSU Libraries
Aaron Collie
RDM CAFÉ Nov. 23, 2015
http://is.gd/collecting_data
Collection Development Policies
• Guide the purchase or acceptance of materials
into the Library by specialist Librarians
• Multiple collection development policies
– Subject areas
– Formats
• http://www.lib.msu.edu/about/collections/po
licy/
Data in Collection Development
Policies
• Data specifically addressed:
– Digital Research Data
• Produced by MSU researchers, distinct from data that is
purchased, produced, owned, or curated by third parties.
– Data Services (Numeric Data)
• Numeric information includes both data sets and statistical tables
– Digital Text
• Text that is amenable to computational analysis
– Maps/Geography
• Digital data sets for use with Geographic Information Systems
• As of 2015, subject area policies undergoing update to
include data
Digital Research Data Collection
Development Policy
• New (drafted July 2014)
• Developed under auspices of MSUL Research
Data Management Guidance team
• Provides scope and criteria for collections
• http://libguides.lib.msu.edu/c.php?g=139267
Purpose
• House unique digital data materials produced
by MSU researchers across disciplinary areas
• Provides a service to MSU researchers in need
of data sharing mechanisms
• Caveat: does not unnecessarily replicate data
available elsewhere or replicate the data
curation services available by disciplinary data
repositories
“Data”
• Digital data is defined as the primary source
materials used in the process of conducting
research, in electronic form. Digital data takes
a variety of specific formats including numeric,
textual, geospatial, audiovisual/multimedia,
and more.
Selection Responsibility
• Subject specialist/Liaison Librarians
– Relevance, collection fit
• Digital/Format specialist Librarians
– Technical and metadata requirements
Criteria: Format
• Larger, complex, and heterogeneous data file
collections are more resource-intensive and will
require careful consideration of available
resources
• Data must be complete and ready for distribution
in its final or most useful form
• Preserved in the fidelity received
• Files may be reformatted for access
– Processing of outdated file formats may incur
additional costs which impact selection feasibility.
Criteria: Authorship and Intellectual
Property
• authored by at least one MSU researcher
• author must hold the copyright
• Depositor Agreement
– Affirm ownership
– Warrant no identifiable/sensitive data
– Grants MSUL non-exclusive rights to distribute, reproduce,
and retain
– Location, retention, cataloging, preservation, and
disposition of the deposited work by the MSUL will be
conducted in its sole discretion
• Availability of author to assist MSUL with processing as
needed
Criteria: Documentation and Data
Quality
• meet general quality standards established by
disciplinary norms, including provision of
adequate documentation and metadata
• accompanied by documentation necessary for
interpretation and re-use
– completed “readme” file may be requested of data
authors
• include a bibliography of related publications
• MSUL does not provide editorial or peer review
of the data
Criteria: Access
• Data are intended for public open access
• No confidential and sensitive information
• Immediate access preferred
– Embargoes may be considered
Collection Management Issues:
Preservation and Cost to Libraries
• Part of the Libraries’ active and ongoing
collection management activities
• Initial commitment to preservation for digital
data is for a period of 10 years, after which
active collection management and review
policies will be applied
Piloting Infrastructure for Data Collections
Step 1: Data as an Asset
Step 2: Data as an Object
Step 3: Data in a Collection
Step 4: Data in a Collection of Objects
Step 5: Data in a Repository of Collections
Step 1: Data as an Asset
• A source of information
• Made accessible
• For use
Step 1: Data as an Asset
Does it go here? What about here?
Getting closer? Is this… even..?
Step 1: Data as an Asset
Here it is!
• It’s “in” the library
• On our servers
• For you to use
Step 2: Data as an Object
But librarians love books!
Love, operationalized:
• Acquiring
• Processing
• Cataloging
• Curating
• Circulating
• Conserving
• Referencing
• Consulting
• … AKA… org chart
Step 2: Data as an Object
We’re pretty big into
systems.
So.. Now, where does that data
go again…?https://blog.library.gsu.edu/2012/02/02/interli
brary-loan-is-fast-furious/
Step 2: Data as an Object
Step 2: Data as an Object
Step 3: Data as a Collection
etd.lib.msu.edu
• 3000+ dissertations from 2010-present
• 500 – 600 per year
On the way:
• Data (supplemental files)
• Non-PDF dissertations
Step 4: Data as a Collection of Objects
Knowledge from the Margins
• 1 event
• 60 papers (conference
proceedings)
• Video
• Photos
• Artwork
Step 5: Data as a Repository of
Collections
• A place for:
– Collections Data
– Humanities/Textual Data
– ETD Supporting Data
– Faculty Research Data

More Related Content

What's hot

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
 
Staffing Research Data Services at University of Edinburgh
Staffing Research Data Services at University of EdinburghStaffing Research Data Services at University of Edinburgh
Staffing Research Data Services at University of EdinburghRobin Rice
 
Instructional Data Sets from Q-step Launch Event (Univ of Exeter) 3-20-2014
Instructional Data Sets from Q-step Launch Event (Univ of Exeter) 3-20-2014Instructional Data Sets from Q-step Launch Event (Univ of Exeter) 3-20-2014
Instructional Data Sets from Q-step Launch Event (Univ of Exeter) 3-20-2014ICPSR
 
Data Sharing with ICPSR: Fueling the Cycle of Science through Discovery, Acce...
Data Sharing with ICPSR: Fueling the Cycle of Science through Discovery, Acce...Data Sharing with ICPSR: Fueling the Cycle of Science through Discovery, Acce...
Data Sharing with ICPSR: Fueling the Cycle of Science through Discovery, Acce...ICPSR
 
RDAP14: University-wide Research Data Management Policy
RDAP14: University-wide Research Data Management PolicyRDAP14: University-wide Research Data Management Policy
RDAP14: University-wide Research Data Management PolicyASIS&T
 
RDAP14: Comparing disciplinary repositories: tDAR vs. Open Context
RDAP14: Comparing disciplinary repositories: tDAR vs. Open ContextRDAP14: Comparing disciplinary repositories: tDAR vs. Open Context
RDAP14: Comparing disciplinary repositories: tDAR vs. Open ContextASIS&T
 
IASSIST40: Data management & curation workshop
IASSIST40: Data management & curation workshopIASSIST40: Data management & curation workshop
IASSIST40: Data management & curation workshopRobin Rice
 
Research Data Management in practice, RIA Data Management Workshop Brisbane 2017
Research Data Management in practice, RIA Data Management Workshop Brisbane 2017Research Data Management in practice, RIA Data Management Workshop Brisbane 2017
Research Data Management in practice, RIA Data Management Workshop Brisbane 2017ARDC
 
Open Repositories and Interoperability Challenges in UK
Open Repositories and Interoperability Challenges in UKOpen Repositories and Interoperability Challenges in UK
Open Repositories and Interoperability Challenges in UKEDINA, University of Edinburgh
 
Practical and Conceptual Considerations of Research Object Preservation
Practical and Conceptual Considerations of Research Object PreservationPractical and Conceptual Considerations of Research Object Preservation
Practical and Conceptual Considerations of Research Object PreservationSEAD
 

What's hot (20)

Engaging the Researcher in RDM
Engaging the Researcher in RDMEngaging the Researcher in RDM
Engaging the Researcher in RDM
 
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
 
NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...
NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...
NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...
 
Praetzellis "Data Management Planning and Tools"
Praetzellis "Data Management Planning and Tools"Praetzellis "Data Management Planning and Tools"
Praetzellis "Data Management Planning and Tools"
 
NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...
NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...
NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...
 
Staffing Research Data Services at University of Edinburgh
Staffing Research Data Services at University of EdinburghStaffing Research Data Services at University of Edinburgh
Staffing Research Data Services at University of Edinburgh
 
Instructional Data Sets from Q-step Launch Event (Univ of Exeter) 3-20-2014
Instructional Data Sets from Q-step Launch Event (Univ of Exeter) 3-20-2014Instructional Data Sets from Q-step Launch Event (Univ of Exeter) 3-20-2014
Instructional Data Sets from Q-step Launch Event (Univ of Exeter) 3-20-2014
 
Data Sharing with ICPSR: Fueling the Cycle of Science through Discovery, Acce...
Data Sharing with ICPSR: Fueling the Cycle of Science through Discovery, Acce...Data Sharing with ICPSR: Fueling the Cycle of Science through Discovery, Acce...
Data Sharing with ICPSR: Fueling the Cycle of Science through Discovery, Acce...
 
Valen Metadata and the [Data] Repository
Valen Metadata and the [Data] RepositoryValen Metadata and the [Data] Repository
Valen Metadata and the [Data] Repository
 
RDAP14: University-wide Research Data Management Policy
RDAP14: University-wide Research Data Management PolicyRDAP14: University-wide Research Data Management Policy
RDAP14: University-wide Research Data Management Policy
 
RDAP14: Comparing disciplinary repositories: tDAR vs. Open Context
RDAP14: Comparing disciplinary repositories: tDAR vs. Open ContextRDAP14: Comparing disciplinary repositories: tDAR vs. Open Context
RDAP14: Comparing disciplinary repositories: tDAR vs. Open Context
 
IASSIST40: Data management & curation workshop
IASSIST40: Data management & curation workshopIASSIST40: Data management & curation workshop
IASSIST40: Data management & curation workshop
 
Research Data Management in practice, RIA Data Management Workshop Brisbane 2017
Research Data Management in practice, RIA Data Management Workshop Brisbane 2017Research Data Management in practice, RIA Data Management Workshop Brisbane 2017
Research Data Management in practice, RIA Data Management Workshop Brisbane 2017
 
NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...
NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...
NISO Virtual Conference Scientific Data Management: Caring for Your Instituti...
 
Why managedata
Why managedataWhy managedata
Why managedata
 
Open Repositories and Interoperability Challenges in UK
Open Repositories and Interoperability Challenges in UKOpen Repositories and Interoperability Challenges in UK
Open Repositories and Interoperability Challenges in UK
 
Practical and Conceptual Considerations of Research Object Preservation
Practical and Conceptual Considerations of Research Object PreservationPractical and Conceptual Considerations of Research Object Preservation
Practical and Conceptual Considerations of Research Object Preservation
 
Lee "Supporting Research Data is a Group Effort"
Lee "Supporting Research Data is a Group Effort"Lee "Supporting Research Data is a Group Effort"
Lee "Supporting Research Data is a Group Effort"
 
Hawkins "Implementation of the CONSER Standard Record"
Hawkins "Implementation of the CONSER Standard Record"Hawkins "Implementation of the CONSER Standard Record"
Hawkins "Implementation of the CONSER Standard Record"
 
Strasser "Effective data management and its role in open research"
Strasser "Effective data management and its role in open research"Strasser "Effective data management and its role in open research"
Strasser "Effective data management and its role in open research"
 

Viewers also liked

Role confusion, change transfusions and standards intrusion in the digital re...
Role confusion, change transfusions and standards intrusion in the digital re...Role confusion, change transfusions and standards intrusion in the digital re...
Role confusion, change transfusions and standards intrusion in the digital re...aaroncollie
 
Data Management for Research (New Faculty Orientation)
Data Management for Research (New Faculty Orientation)Data Management for Research (New Faculty Orientation)
Data Management for Research (New Faculty Orientation)aaroncollie
 
Islandora & Archivematica combined NDSA RAG poster for LITA
Islandora & Archivematica combined NDSA RAG poster for LITAIslandora & Archivematica combined NDSA RAG poster for LITA
Islandora & Archivematica combined NDSA RAG poster for LITAaaroncollie
 
Archivematica integration handshaking towards comprehensive digital preserva...
Archivematica integration  handshaking towards comprehensive digital preserva...Archivematica integration  handshaking towards comprehensive digital preserva...
Archivematica integration handshaking towards comprehensive digital preserva...Artefactual Systems - Archivematica
 
Getting started in digital preservation
Getting started in digital preservationGetting started in digital preservation
Getting started in digital preservationSarah Jones
 
Data acquisition system (DAS)
Data acquisition system (DAS)Data acquisition system (DAS)
Data acquisition system (DAS)Sumeet Patel
 

Viewers also liked (8)

Role confusion, change transfusions and standards intrusion in the digital re...
Role confusion, change transfusions and standards intrusion in the digital re...Role confusion, change transfusions and standards intrusion in the digital re...
Role confusion, change transfusions and standards intrusion in the digital re...
 
Data Management for Research (New Faculty Orientation)
Data Management for Research (New Faculty Orientation)Data Management for Research (New Faculty Orientation)
Data Management for Research (New Faculty Orientation)
 
Islandora & Archivematica combined NDSA RAG poster for LITA
Islandora & Archivematica combined NDSA RAG poster for LITAIslandora & Archivematica combined NDSA RAG poster for LITA
Islandora & Archivematica combined NDSA RAG poster for LITA
 
Archivematica integration handshaking towards comprehensive digital preserva...
Archivematica integration  handshaking towards comprehensive digital preserva...Archivematica integration  handshaking towards comprehensive digital preserva...
Archivematica integration handshaking towards comprehensive digital preserva...
 
Data aquisition unit iii final
Data aquisition unit iii finalData aquisition unit iii final
Data aquisition unit iii final
 
Getting started in digital preservation
Getting started in digital preservationGetting started in digital preservation
Getting started in digital preservation
 
Data Acquisition System
Data Acquisition SystemData Acquisition System
Data Acquisition System
 
Data acquisition system (DAS)
Data acquisition system (DAS)Data acquisition system (DAS)
Data acquisition system (DAS)
 

Similar to Data as a Library Aquisition

21 07 14 rdm swansea_whelf_copy
21 07 14 rdm swansea_whelf_copy21 07 14 rdm swansea_whelf_copy
21 07 14 rdm swansea_whelf_copyrachaelwhitfield
 
Research Data Mangagement Essentials, 5th July 2017
Research Data Mangagement Essentials, 5th July 2017Research Data Mangagement Essentials, 5th July 2017
Research Data Mangagement Essentials, 5th July 2017Research Data Leeds
 
Engaging with students and researchers: the case of the social sciences
Engaging with students and researchers: the case of the social sciencesEngaging with students and researchers: the case of the social sciences
Engaging with students and researchers: the case of the social sciencesLouise Corti
 
Open data and research data management at the University of Edinburgh: polici...
Open data and research data management at the University of Edinburgh: polici...Open data and research data management at the University of Edinburgh: polici...
Open data and research data management at the University of Edinburgh: polici...Robin Rice
 
Addressing Institutional Research Data Management - University of Edinburgh R...
Addressing Institutional Research Data Management - University of Edinburgh R...Addressing Institutional Research Data Management - University of Edinburgh R...
Addressing Institutional Research Data Management - University of Edinburgh R...EDINA, University of Edinburgh
 
RDAP 16: Engaging Liaisons
RDAP 16: Engaging LiaisonsRDAP 16: Engaging Liaisons
RDAP 16: Engaging LiaisonsASIS&T
 
Building research data management services at the University of Edinburgh: a ...
Building research data management services at the University of Edinburgh: a ...Building research data management services at the University of Edinburgh: a ...
Building research data management services at the University of Edinburgh: a ...Robin Rice
 
Supporting the Research data management process- a guide for Librarians. .
Supporting the Research data management process- a guide for Librarians. .Supporting the Research data management process- a guide for Librarians. .
Supporting the Research data management process- a guide for Librarians. .ALISS
 
Educause 2015 RDM Maturity
Educause 2015 RDM Maturity Educause 2015 RDM Maturity
Educause 2015 RDM Maturity ResearchSpace
 
On being a cog rather than inventing the wheel: Edinburgh DataShare as a key ...
On being a cog rather than inventing the wheel: Edinburgh DataShare as a key ...On being a cog rather than inventing the wheel: Edinburgh DataShare as a key ...
On being a cog rather than inventing the wheel: Edinburgh DataShare as a key ...EDINA, University of Edinburgh
 
Libraries and Research Data Management – What Works? Summary of a Pre-Survey.
Libraries and Research Data Management – What Works? Summary of a Pre-Survey.Libraries and Research Data Management – What Works? Summary of a Pre-Survey.
Libraries and Research Data Management – What Works? Summary of a Pre-Survey.LIBER Europe
 
Building Research Data Management Services - Robin Rice
Building Research Data Management Services - Robin RiceBuilding Research Data Management Services - Robin Rice
Building Research Data Management Services - Robin RiceIncisive_Events
 
Love Your Data Locally
Love Your Data LocallyLove Your Data Locally
Love Your Data LocallyErin D. Foster
 
Data Management Planning for Engineers
Data Management Planning for EngineersData Management Planning for Engineers
Data Management Planning for EngineersSherry Lake
 
MetadataTheory: Learning Repositories Technologies (9th of 10)
MetadataTheory: Learning Repositories Technologies (9th of 10)MetadataTheory: Learning Repositories Technologies (9th of 10)
MetadataTheory: Learning Repositories Technologies (9th of 10)Nikos Palavitsinis, PhD
 
Curation Service Models - Michael Witt - RDAP12
Curation Service Models - Michael Witt - RDAP12Curation Service Models - Michael Witt - RDAP12
Curation Service Models - Michael Witt - RDAP12ASIS&T
 

Similar to Data as a Library Aquisition (20)

21 07 14 rdm swansea_whelf_copy
21 07 14 rdm swansea_whelf_copy21 07 14 rdm swansea_whelf_copy
21 07 14 rdm swansea_whelf_copy
 
Research Data Mangagement Essentials, 5th July 2017
Research Data Mangagement Essentials, 5th July 2017Research Data Mangagement Essentials, 5th July 2017
Research Data Mangagement Essentials, 5th July 2017
 
Engaging with students and researchers: the case of the social sciences
Engaging with students and researchers: the case of the social sciencesEngaging with students and researchers: the case of the social sciences
Engaging with students and researchers: the case of the social sciences
 
Open data and research data management at the University of Edinburgh: polici...
Open data and research data management at the University of Edinburgh: polici...Open data and research data management at the University of Edinburgh: polici...
Open data and research data management at the University of Edinburgh: polici...
 
Addressing Institutional Research Data Management - University of Edinburgh R...
Addressing Institutional Research Data Management - University of Edinburgh R...Addressing Institutional Research Data Management - University of Edinburgh R...
Addressing Institutional Research Data Management - University of Edinburgh R...
 
Liaison panelrdap2016
Liaison panelrdap2016Liaison panelrdap2016
Liaison panelrdap2016
 
RDAP 16: Engaging Liaisons
RDAP 16: Engaging LiaisonsRDAP 16: Engaging Liaisons
RDAP 16: Engaging Liaisons
 
Building research data management services at the University of Edinburgh: a ...
Building research data management services at the University of Edinburgh: a ...Building research data management services at the University of Edinburgh: a ...
Building research data management services at the University of Edinburgh: a ...
 
Supporting the Research data management process- a guide for Librarians. .
Supporting the Research data management process- a guide for Librarians. .Supporting the Research data management process- a guide for Librarians. .
Supporting the Research data management process- a guide for Librarians. .
 
Educause 2015 RDM Maturity
Educause 2015 RDM Maturity Educause 2015 RDM Maturity
Educause 2015 RDM Maturity
 
On being a cog rather than inventing the wheel: Edinburgh DataShare as a key ...
On being a cog rather than inventing the wheel: Edinburgh DataShare as a key ...On being a cog rather than inventing the wheel: Edinburgh DataShare as a key ...
On being a cog rather than inventing the wheel: Edinburgh DataShare as a key ...
 
Libraries and Research Data Management – What Works? Summary of a Pre-Survey.
Libraries and Research Data Management – What Works? Summary of a Pre-Survey.Libraries and Research Data Management – What Works? Summary of a Pre-Survey.
Libraries and Research Data Management – What Works? Summary of a Pre-Survey.
 
Building Research Data Management Services - Robin Rice
Building Research Data Management Services - Robin RiceBuilding Research Data Management Services - Robin Rice
Building Research Data Management Services - Robin Rice
 
Love Your Data Locally
Love Your Data LocallyLove Your Data Locally
Love Your Data Locally
 
Data Management Planning for Engineers
Data Management Planning for EngineersData Management Planning for Engineers
Data Management Planning for Engineers
 
MetadataTheory: Learning Repositories Technologies (9th of 10)
MetadataTheory: Learning Repositories Technologies (9th of 10)MetadataTheory: Learning Repositories Technologies (9th of 10)
MetadataTheory: Learning Repositories Technologies (9th of 10)
 
Research Data Management at The University of Edinburgh
Research Data Management at The University of EdinburghResearch Data Management at The University of Edinburgh
Research Data Management at The University of Edinburgh
 
RDM@Edinburgh
RDM@EdinburghRDM@Edinburgh
RDM@Edinburgh
 
Curation Service Models - Michael Witt - RDAP12
Curation Service Models - Michael Witt - RDAP12Curation Service Models - Michael Witt - RDAP12
Curation Service Models - Michael Witt - RDAP12
 
RDM@Edinburgh
RDM@EdinburghRDM@Edinburgh
RDM@Edinburgh
 

Recently uploaded

原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档208367051
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdfHuman37
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfJohn Sterrett
 
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
 
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...GQ Research
 
Multiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdfMultiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdfchwongval
 
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort servicejennyeacort
 
Identifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanIdentifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanMYRABACSAFRA2
 
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改yuu sss
 
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024Timothy Spann
 
Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxMike Bennett
 
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
 
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
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxaleedritatuxx
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.natarajan8993
 
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
 
Real-Time AI Streaming - AI Max Princeton
Real-Time AI  Streaming - AI Max PrincetonReal-Time AI  Streaming - AI Max Princeton
Real-Time AI Streaming - AI Max PrincetonTimothy Spann
 
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
 
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...ssuserf63bd7
 
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)jennyeacort
 

Recently uploaded (20)

原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
原版1:1定制南十字星大学毕业证(SCU毕业证)#文凭成绩单#真实留信学历认证永久存档
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdf
 
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
 
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
Biometric Authentication: The Evolution, Applications, Benefits and Challenge...
 
Multiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdfMultiple time frame trading analysis -brianshannon.pdf
Multiple time frame trading analysis -brianshannon.pdf
 
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
 
Identifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population MeanIdentifying Appropriate Test Statistics Involving Population Mean
Identifying Appropriate Test Statistics Involving Population Mean
 
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
专业一比一美国俄亥俄大学毕业证成绩单pdf电子版制作修改
 
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
April 2024 - NLIT Cloudera Real-Time LLM Streaming 2024
 
Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptx
 
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
 
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
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.
 
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...
 
Real-Time AI Streaming - AI Max Princeton
Real-Time AI  Streaming - AI Max PrincetonReal-Time AI  Streaming - AI Max Princeton
Real-Time AI Streaming - AI Max Princeton
 
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...
 
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
Statistics, Data Analysis, and Decision Modeling, 5th edition by James R. Eva...
 
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
Call Us ➥97111√47426🤳Call Girls in Aerocity (Delhi NCR)
 

Data as a Library Aquisition

  • 1. Data as a Library Acquisition Collection Development Policies for Data @ MSU Libraries Hailey Mooney Piloting Infrastructure for Data Collections @ MSU Libraries Aaron Collie RDM CAFÉ Nov. 23, 2015 http://is.gd/collecting_data
  • 2. Collection Development Policies • Guide the purchase or acceptance of materials into the Library by specialist Librarians • Multiple collection development policies – Subject areas – Formats • http://www.lib.msu.edu/about/collections/po licy/
  • 3. Data in Collection Development Policies • Data specifically addressed: – Digital Research Data • Produced by MSU researchers, distinct from data that is purchased, produced, owned, or curated by third parties. – Data Services (Numeric Data) • Numeric information includes both data sets and statistical tables – Digital Text • Text that is amenable to computational analysis – Maps/Geography • Digital data sets for use with Geographic Information Systems • As of 2015, subject area policies undergoing update to include data
  • 4. Digital Research Data Collection Development Policy • New (drafted July 2014) • Developed under auspices of MSUL Research Data Management Guidance team • Provides scope and criteria for collections • http://libguides.lib.msu.edu/c.php?g=139267
  • 5. Purpose • House unique digital data materials produced by MSU researchers across disciplinary areas • Provides a service to MSU researchers in need of data sharing mechanisms • Caveat: does not unnecessarily replicate data available elsewhere or replicate the data curation services available by disciplinary data repositories
  • 6. “Data” • Digital data is defined as the primary source materials used in the process of conducting research, in electronic form. Digital data takes a variety of specific formats including numeric, textual, geospatial, audiovisual/multimedia, and more.
  • 7. Selection Responsibility • Subject specialist/Liaison Librarians – Relevance, collection fit • Digital/Format specialist Librarians – Technical and metadata requirements
  • 8. Criteria: Format • Larger, complex, and heterogeneous data file collections are more resource-intensive and will require careful consideration of available resources • Data must be complete and ready for distribution in its final or most useful form • Preserved in the fidelity received • Files may be reformatted for access – Processing of outdated file formats may incur additional costs which impact selection feasibility.
  • 9. Criteria: Authorship and Intellectual Property • authored by at least one MSU researcher • author must hold the copyright • Depositor Agreement – Affirm ownership – Warrant no identifiable/sensitive data – Grants MSUL non-exclusive rights to distribute, reproduce, and retain – Location, retention, cataloging, preservation, and disposition of the deposited work by the MSUL will be conducted in its sole discretion • Availability of author to assist MSUL with processing as needed
  • 10. Criteria: Documentation and Data Quality • meet general quality standards established by disciplinary norms, including provision of adequate documentation and metadata • accompanied by documentation necessary for interpretation and re-use – completed “readme” file may be requested of data authors • include a bibliography of related publications • MSUL does not provide editorial or peer review of the data
  • 11. Criteria: Access • Data are intended for public open access • No confidential and sensitive information • Immediate access preferred – Embargoes may be considered
  • 12. Collection Management Issues: Preservation and Cost to Libraries • Part of the Libraries’ active and ongoing collection management activities • Initial commitment to preservation for digital data is for a period of 10 years, after which active collection management and review policies will be applied
  • 13. Piloting Infrastructure for Data Collections Step 1: Data as an Asset Step 2: Data as an Object Step 3: Data in a Collection Step 4: Data in a Collection of Objects Step 5: Data in a Repository of Collections
  • 14. Step 1: Data as an Asset • A source of information • Made accessible • For use
  • 15. Step 1: Data as an Asset Does it go here? What about here? Getting closer? Is this… even..?
  • 16. Step 1: Data as an Asset Here it is! • It’s “in” the library • On our servers • For you to use
  • 17. Step 2: Data as an Object But librarians love books! Love, operationalized: • Acquiring • Processing • Cataloging • Curating • Circulating • Conserving • Referencing • Consulting • … AKA… org chart
  • 18. Step 2: Data as an Object We’re pretty big into systems. So.. Now, where does that data go again…?https://blog.library.gsu.edu/2012/02/02/interli brary-loan-is-fast-furious/
  • 19. Step 2: Data as an Object
  • 20. Step 2: Data as an Object
  • 21. Step 3: Data as a Collection etd.lib.msu.edu • 3000+ dissertations from 2010-present • 500 – 600 per year On the way: • Data (supplemental files) • Non-PDF dissertations
  • 22. Step 4: Data as a Collection of Objects Knowledge from the Margins • 1 event • 60 papers (conference proceedings) • Video • Photos • Artwork
  • 23. Step 5: Data as a Repository of Collections • A place for: – Collections Data – Humanities/Textual Data – ETD Supporting Data – Faculty Research Data

Editor's Notes

  1. Data Services, Digital Text, Maps/Geography = all written with commercially purchased data in mind