U.S. Department of the Interior U.S. Geological Survey Data Management Training Modules: Value of Data Management “Data is a precious thing and will last.

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U.S. Department of the Interior U.S. Geological Survey Data Management Training Modules: Value of Data Management “Data is a precious thing and will last longer than the systems themselves.” - Tim Berners-Lee …. But only if that data is properly managed!

Module Objectives · Describe the various roles and responsibilities of data management. · Explain how data management relates to everyday work. · Emphasize the value of data management. From Flickr by cybrarian77

Terms and Definitions · Data Management (DM) – the development, execution and supervision of plans, policies, programs and practices that control, protect, deliver and enhance the value of data and information assets. 1 · Data Stewardship – taking responsibility for a set of data for the well being of the larger organization, and operating in service to, rather than in control of, those around us. 2 · Metadata – information that describes a dataset, such that a dataset can be understood, re-used, and integrated with other datasets. 2 1 DAMA Data Management Body of Knowledge (DAMA-DMBOK) 2 USGS Data Management Website

Data Realities We create massive amounts of data · Data is currently collected in many ways: from sensors, sensor networks, remote sensing, observations, and more - calls for increased attention to DM and stewardship. Data loss happens frequently and without warning · Natural disasters, hardware failures, human error…. Poor data management affects everyone! Photo from USGS

Data Management Roles Who is involved in data management, what are their concerns, and what roles do they have? · Scientists · Data Stewards · Managers Photo from USGS

Scientists · Often busy with their own research · Feel they don’t have the time or background to do DM. · “I’ll get to it later” – but later never happens. · Have concerns about releasing data and making it available for access/discovery. · Misuse of data (“Someone will misunderstand my results or use them incorrectly…”) · Getting scooped (“Someone will scoop my research … I want to publish it first …”) Photo from USGS

Scientists (cont.) What role do they play? · Know the data best, so they are the best people to document it. · Metadata, DM plans, file names, database fields. · Want to know what data is available and would like it documented. · If you keep your data managed, you and others will be able to find it. Photo from USGS

Data Stewards Data Stewards are those business subject matter experts, who manage another's facts or information to ensure that they can be used to draw conclusions or make decisions. 1 · May have some knowledge of DM, but maybe have learned bad habits, have outdated knowledge, or a limited background · Need more training, but no funds or no one to ask for help. Data Stewards help support scientists and practice good data management. 1 USGS Data Management Website Photo from USGS

Managers · Responsible for projects/programs. · Need to answer data calls, respond to compliance policies (i.e. OMB/OSTP memos). · Find ways to save money and create efficiencies. · Primary objective is supporting/funding science; DM comes later, if at all. Role to ensure DM practiced at all levels of the organization, right people available for support Photo from USGS

Why should you care? · Data are valuable assets · If DM done right in the beginning, more time and money become available for future activities · Data are expensive and time consuming to collect, and some results can’t be reproduced · DM saves time and therefore MONEY! · Research needs to be transparent · Transparent science to enable your data to be reproduced to confirm your findings · Data can be called into question in court or by other scientists. Must be able to defend and explain the data and the methods you used “Eighty percent of a scientist's effort is spent discovering, acquiring, documenting, transforming, and integrating data, whereas only 20 percent of the effort is devoted to more intellectually stimulating pursuits such as analysis, visualization, and making new discoveries.” - Bill Mitchner of DataONE

Why should you care? (cont.) · It’s required · Federal employees are subject to open data policies (OSTP, OMB, Information Quality Act, FOIA) and security requirements (Deepwater Horizon Oil Spill in the Gulf of Mexico). · Many funding agencies now require some level of data management (USGS Powell Center, NSF, publishers). · You’re part of a bigger picture · There is a bigger, more global perspective – requires big data. · Data-calls require good DM to find, understand, and integrate data. · Data can be re-used providing far more value and may lead to more co-authorship and credit. · Regardless of the archaic “Publish or Perish” mentality, your data are worth as much (or more) than the resulting publication.

Use Case: Whirling Disease · Whirling Disease · Rock Creek Project Photo by Dr. Thomas L. Wellborn Photo by USGS Western Fisheries Science Center Photo by M.E. Markiw

Use Case: Whirling Disease · Republish in Linked Open Data (LOD) “Linking Open Data cloud diagram, by Richard Cyganiak and Anja Jentzsch.

Challenges… · Data/Metadata Unavailable From Flickr by Sybren A. Stuvel

Unclear site names Lower Middle Fork Upper East Fork (at bridge) Bohrnsens’s Bridge E. Fk Rock Cr.- RCS RCS-4-99 (EAST FK. ROCK CR.) RCT-3-00(Mid FK. Rock Cr. Lower) RCT-2-00(E.Fk. Rock Cr) RCR-6-00(Boreson Ranch) 2001 RCT-3-01(Middle Fk Rock Cr.) RCT-2-01(E. Fk Rock Cr.) RCS-6-01(Boreson's Bridge) 2002? EFK02-2(FS rd 5106 x- ing) RCS02- 3(Bohrnson's brdg) 2003 RCT03-11 M. Fk. 1(org. lower), FS rd. #70 brdg x-ing RCT03-13 E. Fk. 3, org. USFS rd x-ing RCS03-8 Bohrnsen's Ranch

No exact GPS locations Drawing from Rock Creek Project

Data should be managed to: · Maximize the effective use and value of data and information assets. · Continually improve data quality including: data accuracy, integrity, integration, timeliness of data capture and presentation, relevance and usefulness. · Ensure appropriate use of data and information · Facilitate data sharing. · Ensure sustainability and accessibility in long-term for re-use in science. Photo from USGS

The Bottom Line · Data Management makes good sense · Saves time, money, effort by enabling transparency, reproducibility, knowledge transfer, preservation, and access. · Facilitates data sharing, archiving, and publishing data. · Enables the ability to reuse, reproduce, and integrate data.

Key Points · The increasing data deluge around us and the threat of data loss can be addressed with good data management · Data management relates directly to your roles and responsibilities. · Data is valuable and the cost of not performing data management can be very high. · Data management enables transparency for reproducibility of findings and for defense in litigation · Policies and requirements are addressing data. management in Federal and non-Federal organizations · Big data and data integration efforts require consistent management of data.

Data Management Modules developed by: · Viv Hutchison (USGS) · Thomas Burley (USGS) · Michelle Chang (USGS) · Thomas Chatfield (BLM) · Robert Cook (ORNL) · Heather Henkel (USGS) · Carly Strasser (California Digital Library) · Lisa Zolly (USGS) This effort was funded by the USGS Community for Data (CDI) Integration in 2013 in collaboration with the U.S. Geological Survey, Bureau of Land Management, California Digital Library, and the Oak Ridge National Laboratory. These modules were developed through the USGS Office of Organizational and Employee Development's (OED) Technology Enabled Learning (TEL) Program.