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    {
      "title": "RDM Onboarding Checklist", 
      "status": 1, 
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      "modification_date": "2022-06-21T10:58:59Z", 
      "resource_modification_date": "1900-01-01T00:00:00Z", 
      "url": "https://datamanagement.hms.harvard.edu/plan/rdm-onboarding-checklist", 
      "access_cost": 0, 
      "submitter_name": "Zohreh Mehrabi", 
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          "givenName": "Julie", 
          "familyName": "Goldman", 
          "name_identifier": "", 
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          "givenName": "Sarah", 
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          "givenName": "Meghan", 
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      "author_names": [
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        "Sarah Hauserman", 
        "Meghan Kerr"
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        "name": "Harvard Medical School", 
        "name_identifier": "", 
        "name_identifier_type": ""
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      "contact": {
        "name": "", 
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      "abstract_data": "Research Data Management is essential for responsible research and should be introduced when starting a new project or joining a new lab.&nbsp;Managing data across a project and/ or a team allows for accurate communication about that project. This session will review the important steps for onboarding new employees/trainees to a lab or new projects. The key takeaway from this session will be how to incorporate these steps within your individual project or lab environment.&nbsp;While the principles are general, these documents&nbsp;focus on Harvard policies and resources.&nbsp;Internal and external links have been provided throughout the document as supplementary resources, including a glossary of terms.&nbsp;<br />\r\n<br />\r\nThere are 2 checklists as follow:&nbsp;<br />\r\n<strong>The RDM Onboarding Checklist: Abridged Version</strong>&nbsp;serves as a condensed version of the comprehensive checklist described above. This version is intended to be used as an actionable checklist, employed after reviewing the onboarding processes and resources provided in the comprehensive checklist.<br />\r\n<strong>The RDM Onboarding Checklist: Comprehensive Version</strong>&nbsp;serves as a general, research data management-focused guide to employee/trainee onboarding as they join a new lab or begin new projects (follow one or both of these as they apply to your situation). This comprehensive version is provided as an initial introduction to the onboarding process and to the breadth of available resources; this version is intended to be reviewed first, prior to utilizing the abridged version.<br />\r\n<br />\r\n<strong>&nbsp;Learning Objectives:</strong>\r\n<ul>\r\n\t<li>Become familiar with the research data lifecycle</li>\r\n\t<li>Understand the details and requirements at each stage of data management onboarding</li>\r\n\t<li>Engage with best practices to enhance your current and future research</li>\r\n\t<li>Receive resources and contacts for future help</li>\r\n</ul>\r\n", 
      "abstract_format": "filtered_html", 
      "subject": "", 
      "keywords": [
        "Data backup", 
        "Data communication", 
        "Data management", 
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        "Data research", 
        "Data sharing", 
        "Data storage", 
        "File naming", 
        "Metadata standards", 
        "Research lifecycle", 
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      "version": "", 
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    {
      "title": "What we wish we had learned in Graduate School - a data management training roadmap for graduate students", 
      "status": 1, 
      "pub_status": "published", 
      "modification_date": "2022-06-21T10:58:56Z", 
      "resource_modification_date": "1900-01-01T00:00:00Z", 
      "url": "https://doi.org/10.6084/m9.figshare.14384456.v1", 
      "access_cost": 0, 
      "submitter_name": "zohreh mehrabi", 
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      "authors": [
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          "givenName": "Ellie", 
          "familyName": "Davis Pierel", 
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          "name_identifier_type": ""
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        {
          "givenName": "Ben", 
          "familyName": "Roberts-Pierel", 
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          "name_identifier_type": ""
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          "givenName": "Yuhan", 
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      "author_names": [
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        "Ben Roberts-Pierel", 
        "Yuhan Rao"
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      "abstract_data": "<div class=\"rtejustify\">This Road Map is a dynamic guide to help graduate students wade through the ocean of data resources. This guide will help identify what data management practices graduate students should be considering at different graduate school milestones.<br />\r\n<br />\r\nData management training for graduate students is a very important but often undervalued area of graduate school education. Many graduate students will go on and become professionals who are using, producing, and/or managing data that have tremendous benefits for both the research community and society. However, our personal experiences as graduate students show that data lifecycle and data management training are not part of the core curriculum in graduate school. As Earth Science Information Partners (ESIP) Community Fellows, we understand that data management is a critical skill in earth science and we all wished we had an opportunity to integrate it from the beginning in our graduate school experience. To the issue of lack of formal data management training in graduate education, we convened a working session during the 2020 ESIP Summer Meeting called &ldquo;What we wish we had learned in Graduate School?&rdquo; The session was initially planned as a working session for early career professionals to share resources and lessons learned during our own graduate school experiences. The session has sparked broad interests from the Earth science data community and attracted participants across different career stages and with different levels of expertise. The outcome of the session has been summarized as a roadmap that follows the DataONE Data Lifecycle. This roadmap projects the data lifecycle into the traditional graduate school timeline and highlights the benefits and resources of data management training for each component in the data lifecycle. This roadmap for graduate data management training will be distributed via ESIP and be continued as part of the ESIP Community Program in the future to promote data management training for graduate students in Earth sciences and beyond.<br />\r\n<br />\r\nAlso available as a webinar from DataONE:&nbsp;&nbsp;https://vimeo.com/481534921&nbsp;</div>\r\n", 
      "abstract_format": "filtered_html", 
      "subject": "", 
      "keywords": [
        "Data collection", 
        "Data lifecycle", 
        "Data management"
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      "license": "Creative Commons Attribution 4.0 International - CC BY 4.0", 
      "usage_info": "", 
      "citation": "Roberts-Pierel, Ben; Davis, Eleanor; Rao, Yuhan (2021): A Graduate Student's Road Map to Data Management Training. ESIP. Educational resource. https://doi.org/10.6084/m9.figshare.14384456.v1 ", 
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      "version": "", 
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      "purpose": "Professional Development - increasing knowledge and capabilities related to managing the data produced, used or re-used, curated and/or archived.", 
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    }, 
    {
      "title": "Content-based Identifiers for Iterative Forecasts: A Proposal", 
      "status": 1, 
      "pub_status": "published", 
      "modification_date": "2022-06-21T10:58:55Z", 
      "resource_modification_date": "1900-01-01T00:00:00Z", 
      "url": "https://www.dataone.org/webinars/iterative-forecasts/", 
      "access_cost": 0, 
      "submitter_name": "zohreh Mehrabi", 
      "submitter_email": "zmehrabi@unm.edu", 
      "authors": [
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          "givenName": "Carl", 
          "familyName": "Boettiger", 
          "name_identifier": "", 
          "name_identifier_type": ""
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      ], 
      "author_names": [
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      "author_org": {
        "name": "University of California, Berkeley", 
        "name_identifier": "", 
        "name_identifier_type": ""
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      "abstract_data": "Iterative forecasts pose particular challenges for archival data storage and retrieval. In an iterative forecast, data about the past and present must be downloaded and fed into an algorithm that will output a forecast data product. Previous forecasts must also be scored against the realized values in the latest observations. Content-based identifiers provide a convenient way to consistently identify input and outputs and associated scripts. These identifiers are:<br />\r\n(1) location-agnostic &ndash; they don&rsquo;t depend on a URL or other location-based authority (like DOI)<br />\r\n(2) reproducible &ndash; the same data file always has the same identifier<br />\r\n(3) frictionless &ndash; cheap and easy to generate with widely available software, no authentication or network connection<br />\r\n(4) sticky &ndash; the identifier cannot become unstuck or separated from the content<br />\r\n(5) compatible &ndash; most existing infrastructure, including DataONE, can quite readily use these identifiers.<br />\r\n<br />\r\nIn this webinar, the speaker will illustrate an example iterative forecasting workflow. In the process, he will highlight some newly developed R packages for making this easier.", 
      "abstract_format": "filtered_html", 
      "subject": "Physical Sciences and Mathematics: Environmental Sciences", 
      "keywords": [
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        "Data skills education", 
        "Data storage", 
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      "purpose": "Professional Development - increasing knowledge and capabilities related to managing the data produced, used or re-used, curated and/or archived.", 
      "completion_time": "Up to 1 hour", 
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    {
      "title": "Remote Sensing for Conservation & Biodiversity [Introductory]", 
      "status": 1, 
      "pub_status": "published", 
      "modification_date": "2022-06-21T10:58:50Z", 
      "resource_modification_date": "1900-01-01T00:00:00Z", 
      "url": "https://appliedsciences.nasa.gov/what-we-do/capacity-building/arset", 
      "access_cost": 0, 
      "submitter_name": "zohreh mehrabi", 
      "submitter_email": "zmehrabi@unm.edu", 
      "authors": [
        {
          "givenName": "Cindy", 
          "familyName": "Schmidt", 
          "name_identifier": "", 
          "name_identifier_type": ""
        }, 
        {
          "givenName": "Amber", 
          "familyName": "McCullum", 
          "name_identifier": "", 
          "name_identifier_type": ""
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      ], 
      "author_names": [
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        "Amber McCullum"
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      "author_org": {
        "name": "NASA Applied Remote Sensing Training Program (ARSET)", 
        "name_identifier": "", 
        "name_identifier_type": ""
      }, 
      "contact": {
        "name": "Brock Blevins", 
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        "email": ""
      }, 
      "abstract_data": "The United Nations Millennium Ecosystem Assessment states: \u0093ecosystems are critical to human well-being - to our health, our prosperity, our security, and to our social and cultural identity.\u0094 Conservation and biodiversity management play important roles in maintaining healthy ecosystems. Earth observations can help with these efforts. This online webinar series introduces participants to the\u00a0use of satellite data for\u00a0conservation\u00a0and biodiversity\u00a0applications. The series will\u00a0highlight\u00a0specific projects that\u00a0have successfully used\u00a0satellite data. Examples include:&#13;\n<ul>&#13;\n\t<li>monitoring chimpanzee habitat loss</li>&#13;\n\t<li>decreasing whale mortality</li>&#13;\n\t<li>detecting penguins</li>&#13;\n\t<li>monitoring wildfires</li>&#13;\n\t<li>biodiversity observation networks</li>&#13;\n</ul>&#13;\n<strong>Learning Objectives:</strong>\u00a0By the end of this training, attendees will:\u00a0&#13;\n&#13;\n<ul>&#13;\n\t<li>be able to outline uses of remote sensing for habitat suitability, species population dynamics, and monitoring wildfires</li>&#13;\n\t<li>learn about the Group on Earth Observations Biodiversity Observation Network (GEOBON), Marine Biodiversity Observation Network (MBON), and essential biodiversity variables</li>&#13;\n</ul>&#13;\n<strong>Course Format:</strong>\u00a0&#13;\n&#13;\n<ul>&#13;\n\t<li>Two, one hour sessions</li>&#13;\n\t<li>The same session will be broadcast at both times, both in English</li>&#13;\n</ul>&#13;\n<strong>Prerequisites:</strong>\u00a0Fundamentals of\u00a0Remote Sensing\u00a0or equivalent knowledge<br />&#13;\nIf you do\u00a0not complete the prerequisite, you may not be adequately prepared for the pace of the training.<br />&#13;\n<br />&#13;\nSession One: Remote Sensing for Conservation\u00a0<br />&#13;\nThis session will focus on remote sensing for habitat suitability, species population dynamics, and monitoring wildfires.<br />&#13;\n<br />&#13;\nSession Two: Remote Sensing for Biodiversity\u00a0<br />&#13;\nThis session will focus on the Group on Earth Observations Biodiversity Observation Network (GEOBON), Marine Biodiversity Observation Network (MBON), and essential biodiversity variables.<br />&#13;\n<br />&#13;\nEach part of 2 includes links to the recordings, presentation slides, exercises, and Question &amp; Answer Transcripts, in English and in Spanish.\u00a0 There is no link to a landing page in Spanish for this resource.\u00a0 \u00a0", 
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      "subject": "Education: Science and Mathematics Education", 
      "keywords": [
        "Biodiversity data", 
        "Climate data", 
        "Conservation", 
        "Environmental change records", 
        "Environmental management", 
        "Land management", 
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    {
      "title": "An Inside Look at how NASA Measures Air Pollution [Introductory]", 
      "status": 1, 
      "pub_status": "published", 
      "modification_date": "2022-06-21T10:58:48Z", 
      "resource_modification_date": "1900-01-01T00:00:00Z", 
      "url": "https://appliedsciences.nasa.gov/what-we-do/capacity-building/arset", 
      "access_cost": 0, 
      "submitter_name": "zohreh mehrabi", 
      "submitter_email": "zmehrabi@unm.edu", 
      "authors": [
        {
          "givenName": "Melanie", 
          "familyName": "Follette-Cook", 
          "name_identifier": "", 
          "name_identifier_type": ""
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        {
          "givenName": "Ana", 
          "familyName": "Prados", 
          "name_identifier": "", 
          "name_identifier_type": ""
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          "givenName": "Pawan", 
          "familyName": "Gupta", 
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          "name_identifier_type": ""
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      ], 
      "author_names": [
        "Melanie Follette-Cook", 
        "Ana Prados", 
        "Pawan Gupta"
      ], 
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        "name_identifier": "", 
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      "contact": {
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      "abstract_data": "Would you like to learn how to access and visualize NASA satellite imagery? With the world\u0092s eyes and media coverage turned to recent global changes in air pollution from the economic downturn, this two-part webinar series provides a primer for the novice and a good refresher course for all others. You will learn which pollutants can be measured from space, how satellites make these measurements, the do\u0092s and don\u0092ts in interpreting satellite data, and how to download and create your own visualizations.<br />&#13;\n<br />&#13;\n<strong>Learning Objectives</strong>:\u00a0By the end of this training, attendees will be able to:&#13;\n<ul>&#13;\n\t<li>List the pollutants that can be observed by NASA satellites</li>&#13;\n\t<li>Find and download imagery for NO2\u00a0and aerosols/particles</li>&#13;\n\t<li>Describe the capabilities and limitations of NASA NO2\u00a0and aerosol measurements</li>&#13;\n</ul>&#13;\n<br />&#13;\n<strong>Prerequisites:</strong>\u00a0<a href=\"https://appliedsciences.nasa.gov/what-we-do/capacity-building/arset\">Fundamentals of Remote Sensing</a>\u00a0(recommended but not required)<br />&#13;\n<br />&#13;\nPart One: Nitrogen Dioxide (NO2)<br />&#13;\n\u0095 What is NO2?<br />&#13;\n\u0095 NASA Remote Sensing Basics<br />&#13;\n\u0095 Interpreting NO2 Imagery: Dos and Don\u0092ts<br />&#13;\n\u0095 Downloading Data and Creating Imagery<br />&#13;\n<br />&#13;\nPart Two: Particulate Matter (Aerosols)<br />&#13;\n\u0095 What are Aerosols?<br />&#13;\n\u0095 Interpreting Aerosol Imagery: Dos and Don\u0092ts<br />&#13;\n\u0095 A Tour of NASA Resources for Generating Your Own Visualizations<br />&#13;\n<br />&#13;\nEach part of 2 includes links to the recordings, presentation slides,\u00a0 and Question &amp; Answer Transcripts.", 
      "abstract_format": "filtered_html", 
      "subject": "Education: Science and Mathematics Education", 
      "keywords": [
        "Air quality data", 
        "Climate data", 
        "Data analysis", 
        "Environmental change records", 
        "Environmental management", 
        "Geospatial data", 
        "Remote sensing", 
        "Satellite imagery", 
        "User guides for Earth science data"
      ], 
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      "purpose": "Professional Development - increasing knowledge and capabilities related to managing the data produced, used or re-used, curated and/or archived.", 
      "completion_time": "More than 1 hour (but less than 1 day)", 
      "media_type": "Presentation - representation of the particular way in which an author shows, describes or explains one or more concepts, e.g., a set of Powerpoint slides.", 
      "lr_type": "Lesson - detailed description of an element of instruction in a course, [could be] contained in a unit of one or more lessons, and used by a teacher to guide class instruction.  Example: presentation slides on a topic.", 
      "creator": "zmehrabi", 
      "md_record_id": "", 
      "ratings": [], 
      "rating": 0.0, 
      "id": "db85a104-81cd-3ad3-880c-07650aec6fc1", 
      "contributors": [], 
      "contributor_orgs": [], 
      "score": 1.3991992, 
      "accesibility_summary": [], 
      "country_of_origin": null, 
      "credential_status": null, 
      "notes": []
    }
  ]
}
