SlideShare una empresa de Scribd logo
1 de 26
Descargar para leer sin conexión
 
	
  
A	
  Mul&-­‐Decade	
  Case:	
  	
  
The	
  Evolu&on	
  of	
  Data	
  Products	
  	
  
and	
  Designated	
  Audiences	
  
	
  
	
  
NISO	
  2016	
  
Karen	
  S.	
  Baker	
  
Graduate	
  School	
  of	
  Informa<on	
  Sciences	
  
University	
  of	
  Illinois	
  Urbana-­‐Champaign	
  
1	
  
The	
  story	
  traces	
  the	
  evolu<on	
  of	
  a	
  set	
  of	
  data	
  products,	
  
asking	
  
•  How	
  is	
  knowledge	
  mobilized?	
  
•  What	
  are	
  the	
  data	
  products?	
  
•  Who	
  are	
  the	
  designated	
  communi<es?	
  
We	
  present	
  a	
  three	
  decade	
  data	
  story	
  	
  
•  Karen	
  Baker,	
  Ruth	
  Duerr,	
  and	
  Mark	
  Parsons,	
  
•  Scien<fic	
  Knowledge	
  Mobiliza<on:	
  Co-­‐evolu<on	
  of	
  Data	
  
Products	
  and	
  Designated	
  Communi<es	
  
•  Interna<onal	
  Journal	
  of	
  Digital	
  Cura<on	
  10(2),	
  2015	
  
A	
  Story	
  About	
  Data	
  Product	
  Development	
  
Note	
  on	
  coauthors:	
  
Ruth	
  Duerr	
  now	
  at	
  Ronin	
  Ins<tute	
  for	
  Independent	
  Scholarship	
  
Mark	
  Parsons	
  now	
  Secretary	
  General	
  of	
  the	
  Research	
  Data	
  Alliance	
  (RDA)	
  
2	
  
Where	
  the	
  Story	
  Takes	
  Place:	
  
Na<onal	
  Snow	
  and	
  Ice	
  Data	
  Center	
  (NSIDC):	
  
From	
  Baker	
  &	
  Duerr,	
  in	
  press,	
  Data	
  &	
  the	
  Diversity	
  of	
  Repositories.	
  	
  
In	
  Cura<ng	
  Research	
  Data:	
  A	
  Handbook	
  of	
  Current	
  Prac<ce	
  	
  	
  
NSIDC	
  
NSIDC	
  
3	
  
A	
  data	
  product	
  is	
  data	
  at	
  a	
  par<cular	
  stage	
  of	
  processing	
  that	
  
can	
  be	
  iden<fied	
  uniquely	
  and	
  described.	
  	
  	
  
Digital	
  Data	
  Products	
  
Kinds	
  of	
  data	
  products	
  
•  Ini<al	
  recorded	
  data	
  	
  
•  Calibrated	
  data	
  
•  Cleaned	
  data	
  
•  Gridded/Interpolated	
  data	
  
•  Interpreted	
  data	
  
•  Derived	
  data	
  
•  Transformed	
  data	
  
•  Synthesized	
  data	
  
Note:	
  Data	
  product	
  development	
  is	
  influenced	
  
by	
  the	
  intended	
  use	
  of	
  the	
  product.	
  
4	
  
Discussion	
  Points	
  
•  Data	
  Product	
  Descrip<on	
  
§  Collec<on	
  of	
  data	
  products	
  
§  Data	
  product	
  teams	
  
	
  
•  Data	
  Product	
  Development	
  
§  Mul<-­‐level	
  collec<on	
  
§  Mul<-­‐cycle	
  trajectory	
  	
  
•  Data	
  Product	
  Delivery	
  
§  Diverse	
  audiences	
  
§  Mul<-­‐mode	
  communica<on	
  
	
  	
  
5	
  
Collec<on	
  of	
  Sea	
  Ice	
  Data	
  Products	
  
Redrawn	
  circa	
  2010	
  from	
  original	
  work	
  by	
  Donna	
  Scoa,	
  	
  
who	
  manages	
  the	
  NSIDC	
  Passive	
  Microwave	
  Product	
  Team.	
  
Preliminary	
  –	
  gold	
  box	
  
Source	
  –	
  brown	
  box	
  	
  	
  	
  	
  	
  	
  
Final	
  –	
  green	
  hexagon	
  
Near	
  real-­‐<me	
  –	
  blue	
  oval	
  
Value	
  added	
  –	
  red	
  octagon	
  
6	
  
NSIDC-­‐0081	
  
	
  Near-­‐Real-­‐Time	
  DMSP	
  SSM/I	
  	
  	
  
Daily	
  Polar	
  Gridded	
  Sea	
  Ice	
  
Concentra<ons	
  
Remote	
  Sensing	
  Systems	
  
F17	
  Tbs	
  (Wentz)	
  
NSIDC-­‐001	
  
SSM/I	
  Polar	
  Gridded	
  Tbs	
  
NSIDC-­‐0051	
  	
  
Preliminary	
  Sea	
  Ice	
  
Concentra<ons	
  from	
  
Nimbus-­‐7	
  SSMR	
  and	
  DMSP	
  
SSM/I	
  
NSIDC-­‐0051	
  	
  
Sea	
  Ice	
  Concentra<ons	
  from	
  
Nimbus-­‐7	
  SSMR	
  and	
  DMSP	
  
SSM/I	
  
G02135	
  	
  
Sea	
  Ice	
  index	
  
Arc<c	
  Sea	
  Ice	
  	
  
News	
  and	
  Analysis	
  
From	
  the	
  Sea	
  Ice	
  Data	
  Products	
  Collec<on	
  
Preliminary	
  –	
  gold	
  box	
  
Source	
  –	
  brown	
  box	
  	
  	
  	
  	
  	
  	
  
Final	
  –	
  green	
  hexagon	
  
Near	
  real-­‐<me	
  –	
  blue	
  oval	
  
Value	
  added	
  –	
  red	
  octagon	
  
Data	
  Product	
  Teams	
  
Roles	
  -­‐	
  Skill	
  Sets	
  
•  Data	
  managers	
  
•  Programmers	
  
•  Technical	
  writers	
  
•  Scien<sts	
  
•  Instrument	
  engineers	
  
•  Science	
  communicators	
  
•  Systems/Database	
  managers	
  	
  
•  User	
  support	
  specialists	
  
8	
  
Data	
  Product	
  Team	
  Intermediaries	
  
Roles	
  -­‐	
  Skill	
  Sets	
  
•  Data	
  managers	
  
•  Programmers	
  
•  Technical	
  writers	
  
•  Scien<sts	
  
•  Instrument	
  engineers	
  
•  Science	
  communicators	
  
•  Systems/Database	
  managers	
  	
  
•  User	
  support	
  specialists	
  
“This	
  ac<ve	
  human	
  element	
  of	
  data	
  management	
  is	
  not	
  always	
  	
  
recognized	
  by	
  funding	
  agencies,	
  nor	
  is	
  it	
  explicit	
  in	
  the	
  OAIS	
  
Reference	
  Model	
  …”	
  –	
  Parsons	
  and	
  Duerr,	
  2005	
  
Parsons,	
  M.	
  A.,	
  &	
  Duerr,	
  R.	
  (2005).	
  Designa<ng	
  user	
  communi<es	
  for	
  
scien<fic	
  data:	
  challenges	
  and	
  solu<ons.	
  Data	
  Science	
  Journal,	
  4,	
  31-­‐38.	
  	
  
Intermediaries
9	
  
OAIS	
  Reference	
  Model	
  
A	
  Narra<ve	
  Framework:	
  
Open	
  Archive	
  Informa<on	
  System	
  	
  
OAIS Archive
Ingest	
   Access
Archive
Data
Mgmt
Administration
Producer
Preservation Planning
Consumer
MANAGEMENT
SIP
AIP AIP
DIP
Descriptive
Information
Descriptive
Information
Func4onal	
  model	
  
CCSDS.	
  (2012).	
  Consulta<ve	
  Commiaee	
  for	
  Space	
  Data	
  Systems,	
  Reference	
  Model	
  for	
  an	
  Open	
  Archival	
  
Informa<on	
  System	
  (OAIS).	
  Washington	
  DC:	
  CCSDS	
  650.0-­‐M-­‐2,	
  Magenta	
  Book.	
  Issue	
  2.	
  June	
  2012.	
  
10	
  
OAIS	
  Reference	
  Model	
  
Informa4on	
  Package	
  Concepts	
  
CCSDS.	
  (2012).	
  Consulta<ve	
  Commiaee	
  for	
  Space	
  Data	
  Systems,	
  Reference	
  Model	
  for	
  an	
  Open	
  Archival	
  
Informa<on	
  System	
  (OAIS).	
  Washington	
  DC:	
  CCSDS	
  650.0-­‐M-­‐2,	
  Magenta	
  Book.	
  Issue	
  2.	
  June	
  2012.	
  
Submission	
  Informa<on	
  Package	
  
Preserva<on	
  Informa<on	
  Package	
  
Dissemina<on	
  Informa<on	
  Package	
  
SIP	
  
PIP	
  
DIP	
  
11	
  
OAIS	
  Reference	
  Model	
  
OAIS	
  Archive	
  Responsibili4es	
  
CCSDS.	
  (2012).	
  Consulta<ve	
  Commiaee	
  for	
  Space	
  Data	
  Systems,	
  Reference	
  Model	
  for	
  an	
  Open	
  Archival	
  
Informa<on	
  System	
  (OAIS).	
  Washington	
  DC:	
  CCSDS	
  650.0-­‐M-­‐2,	
  Magenta	
  Book.	
  Issue	
  2.	
  June	
  2012.	
  
•	
  Nego<ate	
  for	
  and	
  accept	
  informa<on	
  
•	
  Obtain	
  sufficient	
  control	
  to	
  ensure	
  long-­‐term	
  preserva<on	
  
•	
  Designate	
  one	
  or	
  more	
  communi<es	
  as	
  designated	
  audience	
  	
  
	
  who	
  should	
  be	
  able	
  to	
  understand	
  what	
  is	
  	
  
•	
  Ensure	
  that	
  the	
  informa<on	
  is	
  independently	
  understandable	
  to	
  them	
  
•	
  Follow	
  documented	
  procedures	
  and	
  policies	
  for	
  data	
  preserva<on	
  and	
  access	
  
•	
  Make	
  the	
  informa<on	
  available	
  with	
  evidence	
  suppor<ng	
  its	
  authen<city	
  
haps://public.ccsds.org	
  
12	
  
The	
  Data	
  Landscape:	
  In	
  Development	
  
Data	
  System	
  
Informa<on	
  System	
  Data	
  Repository	
  
Data	
  Archive	
  
Dataset	
  
Data	
  set	
  
Data	
  Package	
  
Metadata	
  
repositories	
  
web	
  of	
  
Data	
   Data	
  Element	
  &	
  
Interconnec<ons	
  
13	
  
Discussion	
  Points	
  
•  Data	
  Product	
  Descrip<on	
  
ü  Collec<on	
  of	
  data	
  products	
  
ü  Data	
  product	
  teams	
  
	
  
•  Data	
  Product	
  Development	
  
§  Mul<-­‐level	
  collec<on	
  
§  Mul<-­‐cycle	
  trajectory	
  	
  
•  Data	
  Product	
  Delivery	
  
§  Diverse	
  audiences	
  
§  Mul<-­‐mode	
  communica<on	
  
	
  	
  
14	
  
Sea	
  Ice	
  Data	
  Products:	
  Dependencies	
  &	
  Levels	
  
15	
  
Levels	
  of	
  Data	
  Products	
  
16	
  
Con<nuing	
  Development	
  of	
  Data	
  Products	
  
17	
  
Figure	
  2.	
  A	
  simplified	
  view	
  of	
  the	
  con<nuing	
  development	
  of	
  scien<fic	
  data	
  products.	
  Each	
  
cycle	
  is	
  ini<ated	
  by	
  one	
  or	
  more	
  events	
  that	
  create	
  a	
  new	
  audience	
  that	
  leads	
  to	
  genera<on	
  
of	
  a	
  new	
  data	
  product	
  in	
  response	
  to	
  the	
  needs	
  of	
  a	
  recently	
  iden<fied	
  designated	
  user	
  
community.	
  
Data	
  Products:	
  Mul<-­‐cycle	
  Trajectory	
  
18	
  
Discussion	
  Points	
  
•  Data	
  Product	
  Descrip<on	
  
ü  Collec<on	
  of	
  data	
  products	
  
ü  Data	
  product	
  teams	
  
	
  
•  Data	
  Product	
  Development	
  
ü  Mul<-­‐level	
  collec<on	
  
ü  Mul<-­‐cycle	
  trajectory	
  	
  
•  Data	
  Product	
  Delivery	
  
§  Diverse	
  audiences	
  
§  Mul<-­‐mode	
  communica<on	
  
19	
  
To	
  a	
  remote	
  sensing	
  community,	
  the	
  world	
  is:	
  
•  Large-­‐scale	
  earth	
  coverage	
  using	
  well-­‐defined	
  plaoorms	
  
•  A	
  series	
  of	
  images	
  with	
  gridded	
  pixels	
  that	
  can	
  be	
  manipulated	
  
computa<onally	
  
To	
  ecologists,	
  the	
  world	
  is:	
  
•  A	
  set	
  of	
  observa<ons/measurements	
  captured	
  as	
  parameters	
  such	
  as	
  
temperature	
  and	
  popula<on	
  counts	
  
•  A	
  system	
  of	
  interac<ng	
  systems	
  with	
  dependencies	
  among	
  the	
  
parameters	
  that	
  vary	
  con<nuously	
  
To	
  the	
  public,	
  the	
  world	
  is:	
  
•  The	
  place	
  within	
  which	
  their	
  neighborhood	
  resides	
  
•  A	
  place	
  where	
  decision-­‐making	
  is	
  increasing	
  in	
  complexity	
  due	
  to	
  the	
  
interdependencies	
  of	
  natural	
  systems	
  and	
  human	
  systems	
  
*	
  following	
  Mark	
  Parsons,	
  Ben	
  Domenico,	
  and	
  Stefano	
  Na<vi	
  
Who	
  is	
  the	
  audience?	
  	
  
	
   	
   	
   	
   	
  What	
  is	
  their	
  worldview?	
  
20	
  
Greenland	
  Ice	
  Sheet	
  Melt	
  Data	
  Products	
  
21	
  
Knowledge	
  Mobilized	
  via	
  Data	
  Product	
  Genera<on	
  
1.	
  Data	
  workforce	
  and	
  data	
  work	
  are	
  changing	
  
•  Data	
  product	
  descrip<on	
  
ü  Collec<on	
  of	
  data	
  products	
  
ü  Data	
  product	
  teams	
  
	
  
2.	
  Data	
  products	
  gain	
  value	
  curated	
  as	
  a	
  con<nuing	
  collec<on	
  
•  Data	
  product	
  development	
  
ü  Mul<-­‐level	
  collec<on	
  
ü  Mul<-­‐cycle	
  trajectory	
  
3.	
  Data	
  product	
  delivery	
  takes	
  many	
  forms	
  
•  Data	
  product	
  delivery	
  
ü  Diverse	
  audiences	
  
ü  Mul<-­‐mode	
  communica<on 	
  	
  
22	
  
Developing	
  the	
  Workforce	
  for	
  Data	
  
NRC	
  (2015).	
  Preparing	
  the	
  Workforce	
  for	
  Digital	
  Cura<on:	
  Commiaee	
  on	
  Future	
  Career	
  Opportuni<es	
  and	
  Educa<onal	
  
Requirements	
  for	
  Digital	
  Cura<on;	
  Board	
  on	
  Research	
  Data	
  and	
  Informa<on;	
  Policy	
  and	
  Global	
  Affairs.	
  
23	
  
Developing	
  Workforce	
  for	
  Data	
  Work	
  
Making the time to tell the story
… to multiple audiences
… in multiple formats
… with multiple intermediaries
24	
  
Karen	
  Baker	
  
karensbaker@gmail.com	
  
25	
  
Karen	
  Baker	
  
karensbaker@gmail.com	
  
Acknowledgement:	
  Data	
  Cura<on	
  Educa<on	
  in	
  Research	
  Centers	
  (DCERC)	
  	
  
project,	
  funded	
  by	
  the	
  Ins<tute	
  of	
  Museum	
  and	
  Library	
  Services	
  (RE-­‐02-­‐10-­‐0004-­‐10),	
  
co-­‐led	
  by	
  Carole	
  Palmer.	
  Par<cipants	
  at	
  the	
  Na<onal	
  Snow	
  and	
  Ice	
  Data	
  Center	
  
including	
  Donna	
  Scoa	
  who	
  manages	
  the	
  NSIDC	
  Passive	
  Microwave	
  Product	
  Team.	
  
26	
  

Más contenido relacionado

La actualidad más candente

University of Northumbria Research
University of Northumbria ResearchUniversity of Northumbria Research
University of Northumbria Research
Kevin Ashley
 

La actualidad más candente (20)

Manage your online profile: Maximize the visibility of your work and make an ...
Manage your online profile: Maximize the visibility of your work and make an ...Manage your online profile: Maximize the visibility of your work and make an ...
Manage your online profile: Maximize the visibility of your work and make an ...
 
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...
 
NISO Working Group Connection Live! Research Data Metrics Landscape: An Updat...
NISO Working Group Connection Live! Research Data Metrics Landscape: An Updat...NISO Working Group Connection Live! Research Data Metrics Landscape: An Updat...
NISO Working Group Connection Live! Research Data Metrics Landscape: An Updat...
 
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...
 
NISO Training Thursday Crafting a Scientific Data Management Plan
NISO Training Thursday Crafting a Scientific Data Management PlanNISO Training Thursday Crafting a Scientific Data Management Plan
NISO Training Thursday Crafting a Scientific Data Management Plan
 
NISO Two Part Webinar: Is Granularity the Next Discovery Frontier? Part 1: ...
NISO Two Part Webinar:   Is Granularity the Next Discovery Frontier? Part 1: ...NISO Two Part Webinar:   Is Granularity the Next Discovery Frontier? Part 1: ...
NISO Two Part Webinar: Is Granularity the Next Discovery Frontier? Part 1: ...
 
University of Northumbria Research
University of Northumbria ResearchUniversity of Northumbria Research
University of Northumbria Research
 
Valen Metadata and the [Data] Repository
Valen Metadata and the [Data] RepositoryValen Metadata and the [Data] Repository
Valen Metadata and the [Data] Repository
 
Research data spring: giving researchers credit for their data
Research data spring: giving researchers credit for their dataResearch data spring: giving researchers credit for their data
Research data spring: giving researchers credit for their data
 
The UC Curation Center (UC3): Developing Tools & Services for Managing Research
The UC Curation Center (UC3): Developing Tools & Services for Managing ResearchThe UC Curation Center (UC3): Developing Tools & Services for Managing Research
The UC Curation Center (UC3): Developing Tools & Services for Managing Research
 
RDAP 16: Sustainability of data infrastructure: The history of science scienc...
RDAP 16: Sustainability of data infrastructure: The history of science scienc...RDAP 16: Sustainability of data infrastructure: The history of science scienc...
RDAP 16: Sustainability of data infrastructure: The history of science scienc...
 
ESIP Federation: Community-Driven, Collaborative Governance - Carol Beaton Me...
ESIP Federation: Community-Driven, Collaborative Governance - Carol Beaton Me...ESIP Federation: Community-Driven, Collaborative Governance - Carol Beaton Me...
ESIP Federation: Community-Driven, Collaborative Governance - Carol Beaton Me...
 
Tijerina-RDA-NISO-Task Groups-sept11
Tijerina-RDA-NISO-Task Groups-sept11Tijerina-RDA-NISO-Task Groups-sept11
Tijerina-RDA-NISO-Task Groups-sept11
 
Hoffman and Rajan "Metadata: The Importance of Interoperability, and Factors ...
Hoffman and Rajan "Metadata: The Importance of Interoperability, and Factors ...Hoffman and Rajan "Metadata: The Importance of Interoperability, and Factors ...
Hoffman and Rajan "Metadata: The Importance of Interoperability, and Factors ...
 
Borgman - Privacy, Policy and Data Governance in the University
Borgman - Privacy, Policy and Data Governance in the UniversityBorgman - Privacy, Policy and Data Governance in the University
Borgman - Privacy, Policy and Data Governance in the University
 
Gold, silver, bronze - research data network
Gold, silver, bronze - research data networkGold, silver, bronze - research data network
Gold, silver, bronze - research data network
 
Engaging the Researcher in RDM
Engaging the Researcher in RDMEngaging the Researcher in RDM
Engaging the Researcher in RDM
 
NIH BD2K DataMed metadata model - Force11, 2016
NIH BD2K DataMed metadata model - Force11, 2016NIH BD2K DataMed metadata model - Force11, 2016
NIH BD2K DataMed metadata model - Force11, 2016
 
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...
 
Zucca "Technology & Systems"
Zucca "Technology & Systems"Zucca "Technology & Systems"
Zucca "Technology & Systems"
 

Similar a Baker - Evolution of Data Products and Designated Audiences

Changing the Curation Equation: A Data Lifecycle Approach to Lowering Costs a...
Changing the Curation Equation: A Data Lifecycle Approach to Lowering Costs a...Changing the Curation Equation: A Data Lifecycle Approach to Lowering Costs a...
Changing the Curation Equation: A Data Lifecycle Approach to Lowering Costs a...
SEAD
 

Similar a Baker - Evolution of Data Products and Designated Audiences (20)

Big Data Europe SC6 WS 3: Ron Dekker, Director CESSDA European Open Science A...
Big Data Europe SC6 WS 3: Ron Dekker, Director CESSDA European Open Science A...Big Data Europe SC6 WS 3: Ron Dekker, Director CESSDA European Open Science A...
Big Data Europe SC6 WS 3: Ron Dekker, Director CESSDA European Open Science A...
 
2013 DataCite Summer Meeting - DOIs and Supercomputing (Terry Jones - Oak Rid...
2013 DataCite Summer Meeting - DOIs and Supercomputing (Terry Jones - Oak Rid...2013 DataCite Summer Meeting - DOIs and Supercomputing (Terry Jones - Oak Rid...
2013 DataCite Summer Meeting - DOIs and Supercomputing (Terry Jones - Oak Rid...
 
Changing the Curation Equation: A Data Lifecycle Approach to Lowering Costs a...
Changing the Curation Equation: A Data Lifecycle Approach to Lowering Costs a...Changing the Curation Equation: A Data Lifecycle Approach to Lowering Costs a...
Changing the Curation Equation: A Data Lifecycle Approach to Lowering Costs a...
 
Rdm slides march 2014
Rdm slides march 2014Rdm slides march 2014
Rdm slides march 2014
 
Meeting Federal Research Requirements for Data Management Plans, Public Acces...
Meeting Federal Research Requirements for Data Management Plans, Public Acces...Meeting Federal Research Requirements for Data Management Plans, Public Acces...
Meeting Federal Research Requirements for Data Management Plans, Public Acces...
 
DBMS
DBMSDBMS
DBMS
 
Scottish Digital Library Consortium Meeting: Edinburgh DataShare
Scottish Digital Library Consortium Meeting: Edinburgh DataShareScottish Digital Library Consortium Meeting: Edinburgh DataShare
Scottish Digital Library Consortium Meeting: Edinburgh DataShare
 
Managing, Sharing and Curating Your Research Data in a Digital Environment
Managing, Sharing and Curating Your Research Data in a Digital EnvironmentManaging, Sharing and Curating Your Research Data in a Digital Environment
Managing, Sharing and Curating Your Research Data in a Digital Environment
 
Data Management Planning - 02/21/13
Data Management Planning - 02/21/13Data Management Planning - 02/21/13
Data Management Planning - 02/21/13
 
20160414 23 Research Data Things
20160414 23 Research Data Things20160414 23 Research Data Things
20160414 23 Research Data Things
 
Introduction to Data Management Planning at Alien Challenge COST workshop
Introduction to Data Management Planning at Alien Challenge COST workshopIntroduction to Data Management Planning at Alien Challenge COST workshop
Introduction to Data Management Planning at Alien Challenge COST workshop
 
The Economics of Data Sharing
The Economics of Data SharingThe Economics of Data Sharing
The Economics of Data Sharing
 
Data Science BD2K Update for NIH
Data Science BD2K Update for NIH Data Science BD2K Update for NIH
Data Science BD2K Update for NIH
 
jamstec-rew.ppt
jamstec-rew.pptjamstec-rew.ppt
jamstec-rew.ppt
 
From Data Sharing to Data Stewardship
From Data Sharing to Data StewardshipFrom Data Sharing to Data Stewardship
From Data Sharing to Data Stewardship
 
Crowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data MeetupCrowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
Crowdsourcing Approaches to Big Data Curation - Rio Big Data Meetup
 
Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...
Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...
Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...
 
Opportunities and Challenges for International Cooperation Around Big Data
Opportunities and Challenges for International Cooperation Around Big DataOpportunities and Challenges for International Cooperation Around Big Data
Opportunities and Challenges for International Cooperation Around Big Data
 
How to overcome obstacles to data publication: Issues, requirements, and good...
How to overcome obstacles to data publication: Issues, requirements, and good...How to overcome obstacles to data publication: Issues, requirements, and good...
How to overcome obstacles to data publication: Issues, requirements, and good...
 
Software for the Hydrographic ocean
Software for the Hydrographic oceanSoftware for the Hydrographic ocean
Software for the Hydrographic ocean
 

Más de National Information Standards Organization (NISO)

Más de National Information Standards Organization (NISO) (20)

Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
Mattingly "AI & Prompt Design: Structured Data, Assistants, & RAG"
 
Mattingly "AI & Prompt Design: The Basics of Prompt Design"
Mattingly "AI & Prompt Design: The Basics of Prompt Design"Mattingly "AI & Prompt Design: The Basics of Prompt Design"
Mattingly "AI & Prompt Design: The Basics of Prompt Design"
 
Bazargan "NISO Webinar, Sustainability in Publishing"
Bazargan "NISO Webinar, Sustainability in Publishing"Bazargan "NISO Webinar, Sustainability in Publishing"
Bazargan "NISO Webinar, Sustainability in Publishing"
 
Rapple "Scholarly Communications and the Sustainable Development Goals"
Rapple "Scholarly Communications and the Sustainable Development Goals"Rapple "Scholarly Communications and the Sustainable Development Goals"
Rapple "Scholarly Communications and the Sustainable Development Goals"
 
Compton "NISO Webinar, Sustainability in Publishing"
Compton "NISO Webinar, Sustainability in Publishing"Compton "NISO Webinar, Sustainability in Publishing"
Compton "NISO Webinar, Sustainability in Publishing"
 
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"
 
Hazen, Morse, and Varnum "Spring 2024 ODI Conformance Statement Workshop for ...
Hazen, Morse, and Varnum "Spring 2024 ODI Conformance Statement Workshop for ...Hazen, Morse, and Varnum "Spring 2024 ODI Conformance Statement Workshop for ...
Hazen, Morse, and Varnum "Spring 2024 ODI Conformance Statement Workshop for ...
 
Mattingly "AI & Prompt Design" - Introduction to Machine Learning"
Mattingly "AI & Prompt Design" - Introduction to Machine Learning"Mattingly "AI & Prompt Design" - Introduction to Machine Learning"
Mattingly "AI & Prompt Design" - Introduction to Machine Learning"
 
Mattingly "Text and Data Mining: Building Data Driven Applications"
Mattingly "Text and Data Mining: Building Data Driven Applications"Mattingly "Text and Data Mining: Building Data Driven Applications"
Mattingly "Text and Data Mining: Building Data Driven Applications"
 
Mattingly "Text and Data Mining: Searching Vectors"
Mattingly "Text and Data Mining: Searching Vectors"Mattingly "Text and Data Mining: Searching Vectors"
Mattingly "Text and Data Mining: Searching Vectors"
 
Mattingly "Text Mining Techniques"
Mattingly "Text Mining Techniques"Mattingly "Text Mining Techniques"
Mattingly "Text Mining Techniques"
 
Mattingly "Text Processing for Library Data: Representing Text as Data"
Mattingly "Text Processing for Library Data: Representing Text as Data"Mattingly "Text Processing for Library Data: Representing Text as Data"
Mattingly "Text Processing for Library Data: Representing Text as Data"
 
Carpenter "Designing NISO's New Strategic Plan: 2023-2026"
Carpenter "Designing NISO's New Strategic Plan: 2023-2026"Carpenter "Designing NISO's New Strategic Plan: 2023-2026"
Carpenter "Designing NISO's New Strategic Plan: 2023-2026"
 
Ross and Clark "Strategic Planning"
Ross and Clark "Strategic Planning"Ross and Clark "Strategic Planning"
Ross and Clark "Strategic Planning"
 
Mattingly "Data Mining Techniques: Classification and Clustering"
Mattingly "Data Mining Techniques: Classification and Clustering"Mattingly "Data Mining Techniques: Classification and Clustering"
Mattingly "Data Mining Techniques: Classification and Clustering"
 
Straza "Global collaboration towards equitable and open science: UNESCO Recom...
Straza "Global collaboration towards equitable and open science: UNESCO Recom...Straza "Global collaboration towards equitable and open science: UNESCO Recom...
Straza "Global collaboration towards equitable and open science: UNESCO Recom...
 
Lippincott "Beyond access: Accelerating discovery and increasing trust throug...
Lippincott "Beyond access: Accelerating discovery and increasing trust throug...Lippincott "Beyond access: Accelerating discovery and increasing trust throug...
Lippincott "Beyond access: Accelerating discovery and increasing trust throug...
 
Kriegsman "Integrating Open and Equitable Research into Open Science"
Kriegsman "Integrating Open and Equitable Research into Open Science"Kriegsman "Integrating Open and Equitable Research into Open Science"
Kriegsman "Integrating Open and Equitable Research into Open Science"
 
Mattingly "Ethics and Cleaning Data"
Mattingly "Ethics and Cleaning Data"Mattingly "Ethics and Cleaning Data"
Mattingly "Ethics and Cleaning Data"
 
Mercado-Lara "Open & Equitable Program"
Mercado-Lara "Open & Equitable Program"Mercado-Lara "Open & Equitable Program"
Mercado-Lara "Open & Equitable Program"
 

Último

Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
ciinovamais
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
QucHHunhnh
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
heathfieldcps1
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Krashi Coaching
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global Impact
PECB
 

Último (20)

Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activity
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
APM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across SectorsAPM Welcome, APM North West Network Conference, Synergies Across Sectors
APM Welcome, APM North West Network Conference, Synergies Across Sectors
 
Sanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdfSanyam Choudhary Chemistry practical.pdf
Sanyam Choudhary Chemistry practical.pdf
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdf
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13
 
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptxINDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy Reform
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global Impact
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajan
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
 
Introduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The BasicsIntroduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The Basics
 

Baker - Evolution of Data Products and Designated Audiences

  • 1.     A  Mul&-­‐Decade  Case:     The  Evolu&on  of  Data  Products     and  Designated  Audiences       NISO  2016   Karen  S.  Baker   Graduate  School  of  Informa<on  Sciences   University  of  Illinois  Urbana-­‐Champaign   1  
  • 2. The  story  traces  the  evolu<on  of  a  set  of  data  products,   asking   •  How  is  knowledge  mobilized?   •  What  are  the  data  products?   •  Who  are  the  designated  communi<es?   We  present  a  three  decade  data  story     •  Karen  Baker,  Ruth  Duerr,  and  Mark  Parsons,   •  Scien<fic  Knowledge  Mobiliza<on:  Co-­‐evolu<on  of  Data   Products  and  Designated  Communi<es   •  Interna<onal  Journal  of  Digital  Cura<on  10(2),  2015   A  Story  About  Data  Product  Development   Note  on  coauthors:   Ruth  Duerr  now  at  Ronin  Ins<tute  for  Independent  Scholarship   Mark  Parsons  now  Secretary  General  of  the  Research  Data  Alliance  (RDA)   2  
  • 3. Where  the  Story  Takes  Place:   Na<onal  Snow  and  Ice  Data  Center  (NSIDC):   From  Baker  &  Duerr,  in  press,  Data  &  the  Diversity  of  Repositories.     In  Cura<ng  Research  Data:  A  Handbook  of  Current  Prac<ce       NSIDC   NSIDC   3  
  • 4. A  data  product  is  data  at  a  par<cular  stage  of  processing  that   can  be  iden<fied  uniquely  and  described.       Digital  Data  Products   Kinds  of  data  products   •  Ini<al  recorded  data     •  Calibrated  data   •  Cleaned  data   •  Gridded/Interpolated  data   •  Interpreted  data   •  Derived  data   •  Transformed  data   •  Synthesized  data   Note:  Data  product  development  is  influenced   by  the  intended  use  of  the  product.   4  
  • 5. Discussion  Points   •  Data  Product  Descrip<on   §  Collec<on  of  data  products   §  Data  product  teams     •  Data  Product  Development   §  Mul<-­‐level  collec<on   §  Mul<-­‐cycle  trajectory     •  Data  Product  Delivery   §  Diverse  audiences   §  Mul<-­‐mode  communica<on       5  
  • 6. Collec<on  of  Sea  Ice  Data  Products   Redrawn  circa  2010  from  original  work  by  Donna  Scoa,     who  manages  the  NSIDC  Passive  Microwave  Product  Team.   Preliminary  –  gold  box   Source  –  brown  box               Final  –  green  hexagon   Near  real-­‐<me  –  blue  oval   Value  added  –  red  octagon   6  
  • 7. NSIDC-­‐0081    Near-­‐Real-­‐Time  DMSP  SSM/I       Daily  Polar  Gridded  Sea  Ice   Concentra<ons   Remote  Sensing  Systems   F17  Tbs  (Wentz)   NSIDC-­‐001   SSM/I  Polar  Gridded  Tbs   NSIDC-­‐0051     Preliminary  Sea  Ice   Concentra<ons  from   Nimbus-­‐7  SSMR  and  DMSP   SSM/I   NSIDC-­‐0051     Sea  Ice  Concentra<ons  from   Nimbus-­‐7  SSMR  and  DMSP   SSM/I   G02135     Sea  Ice  index   Arc<c  Sea  Ice     News  and  Analysis   From  the  Sea  Ice  Data  Products  Collec<on   Preliminary  –  gold  box   Source  –  brown  box               Final  –  green  hexagon   Near  real-­‐<me  –  blue  oval   Value  added  –  red  octagon  
  • 8. Data  Product  Teams   Roles  -­‐  Skill  Sets   •  Data  managers   •  Programmers   •  Technical  writers   •  Scien<sts   •  Instrument  engineers   •  Science  communicators   •  Systems/Database  managers     •  User  support  specialists   8  
  • 9. Data  Product  Team  Intermediaries   Roles  -­‐  Skill  Sets   •  Data  managers   •  Programmers   •  Technical  writers   •  Scien<sts   •  Instrument  engineers   •  Science  communicators   •  Systems/Database  managers     •  User  support  specialists   “This  ac<ve  human  element  of  data  management  is  not  always     recognized  by  funding  agencies,  nor  is  it  explicit  in  the  OAIS   Reference  Model  …”  –  Parsons  and  Duerr,  2005   Parsons,  M.  A.,  &  Duerr,  R.  (2005).  Designa<ng  user  communi<es  for   scien<fic  data:  challenges  and  solu<ons.  Data  Science  Journal,  4,  31-­‐38.     Intermediaries 9  
  • 10. OAIS  Reference  Model   A  Narra<ve  Framework:   Open  Archive  Informa<on  System     OAIS Archive Ingest   Access Archive Data Mgmt Administration Producer Preservation Planning Consumer MANAGEMENT SIP AIP AIP DIP Descriptive Information Descriptive Information Func4onal  model   CCSDS.  (2012).  Consulta<ve  Commiaee  for  Space  Data  Systems,  Reference  Model  for  an  Open  Archival   Informa<on  System  (OAIS).  Washington  DC:  CCSDS  650.0-­‐M-­‐2,  Magenta  Book.  Issue  2.  June  2012.   10  
  • 11. OAIS  Reference  Model   Informa4on  Package  Concepts   CCSDS.  (2012).  Consulta<ve  Commiaee  for  Space  Data  Systems,  Reference  Model  for  an  Open  Archival   Informa<on  System  (OAIS).  Washington  DC:  CCSDS  650.0-­‐M-­‐2,  Magenta  Book.  Issue  2.  June  2012.   Submission  Informa<on  Package   Preserva<on  Informa<on  Package   Dissemina<on  Informa<on  Package   SIP   PIP   DIP   11  
  • 12. OAIS  Reference  Model   OAIS  Archive  Responsibili4es   CCSDS.  (2012).  Consulta<ve  Commiaee  for  Space  Data  Systems,  Reference  Model  for  an  Open  Archival   Informa<on  System  (OAIS).  Washington  DC:  CCSDS  650.0-­‐M-­‐2,  Magenta  Book.  Issue  2.  June  2012.   •  Nego<ate  for  and  accept  informa<on   •  Obtain  sufficient  control  to  ensure  long-­‐term  preserva<on   •  Designate  one  or  more  communi<es  as  designated  audience      who  should  be  able  to  understand  what  is     •  Ensure  that  the  informa<on  is  independently  understandable  to  them   •  Follow  documented  procedures  and  policies  for  data  preserva<on  and  access   •  Make  the  informa<on  available  with  evidence  suppor<ng  its  authen<city   haps://public.ccsds.org   12  
  • 13. The  Data  Landscape:  In  Development   Data  System   Informa<on  System  Data  Repository   Data  Archive   Dataset   Data  set   Data  Package   Metadata   repositories   web  of   Data   Data  Element  &   Interconnec<ons   13  
  • 14. Discussion  Points   •  Data  Product  Descrip<on   ü  Collec<on  of  data  products   ü  Data  product  teams     •  Data  Product  Development   §  Mul<-­‐level  collec<on   §  Mul<-­‐cycle  trajectory     •  Data  Product  Delivery   §  Diverse  audiences   §  Mul<-­‐mode  communica<on       14  
  • 15. Sea  Ice  Data  Products:  Dependencies  &  Levels   15  
  • 16. Levels  of  Data  Products   16  
  • 17. Con<nuing  Development  of  Data  Products   17  
  • 18. Figure  2.  A  simplified  view  of  the  con<nuing  development  of  scien<fic  data  products.  Each   cycle  is  ini<ated  by  one  or  more  events  that  create  a  new  audience  that  leads  to  genera<on   of  a  new  data  product  in  response  to  the  needs  of  a  recently  iden<fied  designated  user   community.   Data  Products:  Mul<-­‐cycle  Trajectory   18  
  • 19. Discussion  Points   •  Data  Product  Descrip<on   ü  Collec<on  of  data  products   ü  Data  product  teams     •  Data  Product  Development   ü  Mul<-­‐level  collec<on   ü  Mul<-­‐cycle  trajectory     •  Data  Product  Delivery   §  Diverse  audiences   §  Mul<-­‐mode  communica<on   19  
  • 20. To  a  remote  sensing  community,  the  world  is:   •  Large-­‐scale  earth  coverage  using  well-­‐defined  plaoorms   •  A  series  of  images  with  gridded  pixels  that  can  be  manipulated   computa<onally   To  ecologists,  the  world  is:   •  A  set  of  observa<ons/measurements  captured  as  parameters  such  as   temperature  and  popula<on  counts   •  A  system  of  interac<ng  systems  with  dependencies  among  the   parameters  that  vary  con<nuously   To  the  public,  the  world  is:   •  The  place  within  which  their  neighborhood  resides   •  A  place  where  decision-­‐making  is  increasing  in  complexity  due  to  the   interdependencies  of  natural  systems  and  human  systems   *  following  Mark  Parsons,  Ben  Domenico,  and  Stefano  Na<vi   Who  is  the  audience?              What  is  their  worldview?   20  
  • 21. Greenland  Ice  Sheet  Melt  Data  Products   21  
  • 22. Knowledge  Mobilized  via  Data  Product  Genera<on   1.  Data  workforce  and  data  work  are  changing   •  Data  product  descrip<on   ü  Collec<on  of  data  products   ü  Data  product  teams     2.  Data  products  gain  value  curated  as  a  con<nuing  collec<on   •  Data  product  development   ü  Mul<-­‐level  collec<on   ü  Mul<-­‐cycle  trajectory   3.  Data  product  delivery  takes  many  forms   •  Data  product  delivery   ü  Diverse  audiences   ü  Mul<-­‐mode  communica<on     22  
  • 23. Developing  the  Workforce  for  Data   NRC  (2015).  Preparing  the  Workforce  for  Digital  Cura<on:  Commiaee  on  Future  Career  Opportuni<es  and  Educa<onal   Requirements  for  Digital  Cura<on;  Board  on  Research  Data  and  Informa<on;  Policy  and  Global  Affairs.   23  
  • 24. Developing  Workforce  for  Data  Work   Making the time to tell the story … to multiple audiences … in multiple formats … with multiple intermediaries 24  
  • 26. Karen  Baker   karensbaker@gmail.com   Acknowledgement:  Data  Cura<on  Educa<on  in  Research  Centers  (DCERC)     project,  funded  by  the  Ins<tute  of  Museum  and  Library  Services  (RE-­‐02-­‐10-­‐0004-­‐10),   co-­‐led  by  Carole  Palmer.  Par<cipants  at  the  Na<onal  Snow  and  Ice  Data  Center   including  Donna  Scoa  who  manages  the  NSIDC  Passive  Microwave  Product  Team.   26