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Badges and faculty development

Creating Digital Badges to Incentivize Participation in Faculty Development

November 7, 2018 | 1:00 – 2:00 p.m. EST

Creating Digital Badges to Incentivize Participation in Faculty Development

Badges are more than just participation trophies. Design them to commensurately represent the knowledge and skills gained.

While many institutions have used digital badges as an alternative way to recognize the skills and knowledge developed by students, some are also starting to use this approach in their in-house professional development programs – especially in faculty development programs.

By offering well-designed badges that accompany these programs, you can boost both participation and impact. Join us for this online training and learn how to design your badges to encourage deeper engagement that goes beyond “showing up”. Our instructor, Lindsay Doukopoulos, will share best practices for badging criteria at Auburn University, where 82% of participants chose to earn badges at annual professional development workshops.

indsay Doukopoulos Ph.D.

Assistant Director, Biggio Center for the Enhancement of Teaching and Learning, Auburn University

Lindsay’s teaching expertise includes experiential, active, and team-based learning in small and large lecture formats. Her research interests include instructional technologies and the use of digital artifacts (e.g., badging, ePortfolios, etc.) to assess and enhance integrated learning, gameful learning, and metacognition for students and faculty.

After a brief overview of our instructor’s faculty development badging program, we’ll walk through several badges Auburn has implemented for faculty.  For each badge collection, we’ll address the following:

  1. How was it designed, and what elements were considered in the design process?
  2. What are the criteria for earning the badges?  Why?
  3. Who has earned the badges to date?
  4. What impact did badge earners self-report?
  5. What kind of data or artifacts did faculty submit to earn this badge / badge constellation?  What did these show about how faculty were using what they learned?

We’ll close with a brief exercise that will let you start designing your own badge criteria for a program on your campus.

$525 through Oct 31$600

Live Webcast + Recording

  • Access to the live webcast: Invite your team!
  • Links to all presentation materials and resources
  • Permanent recording of the live webcast

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Connecting Credentials to Teaching: Badges and Faculty Development from James Willis, III

2015 nmc-presentation from txwescetl

Badges from The Sophisticated User

Making Faculty Training More Agile with Blackboard Badges from Kaitlin Walsh

Soft Skill Development Using Open Badges from Dan Randall

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more on badges in this IMS blog
https://blog.stcloudstate.edu/ims?s=badges

ELI 2018 Key Issues Teaching Learning

Key Issues in Teaching and Learning

https://www.educause.edu/eli/initiatives/key-issues-in-teaching-and-learning

A roster of results since 2011 is here.

ELI 2018 key issues

1. Academic Transformation

2. Accessibility and UDL

3. Faculty Development

4. Privacy and Security

5. Digital and Information Literacies

https://cdn.nmc.org/media/2017-nmc-strategic-brief-digital-literacy-in-higher-education-II.pdf
Three Models of Digital Literacy: Universal, Creative, Literacy Across Disciplines

United States digital literacy frameworks tend to focus on educational policy details and personal empowerment, the latter encouraging learners to become more effective students, better creators, smarter information consumers, and more influential members of their community.

National policies are vitally important in European digital literacy work, unsurprising for a continent well populated with nation-states and struggling to redefine itself, while still trying to grow economies in the wake of the 2008 financial crisis and subsequent financial pressures

African digital literacy is more business-oriented.

Middle Eastern nations offer yet another variation, with a strong focus on media literacy. As with other regions, this can be a response to countries with strong state influence or control over local media. It can also represent a drive to produce more locally-sourced content, as opposed to consuming material from abroad, which may elicit criticism of neocolonialism or religious challenges.

p. 14 Digital literacy for Humanities: What does it mean to be digitally literate in history, literature, or philosophy? Creativity in these disciplines often involves textuality, given the large role writing plays in them, as, for example, in the Folger Shakespeare Library’s instructor’s guide. In the digital realm, this can include web-based writing through social media, along with the creation of multimedia projects through posters, presentations, and video. Information literacy remains a key part of digital literacy in the humanities. The digital humanities movement has not seen much connection with digital literacy, unfortunately, but their alignment seems likely, given the turn toward using digital technologies to explore humanities questions. That development could then foster a spread of other technologies and approaches to the rest of the humanities, including mapping, data visualization, text mining, web-based digital archives, and “distant reading” (working with very large bodies of texts). The digital humanities’ emphasis on making projects may also increase

Digital Literacy for Business: Digital literacy in this world is focused on manipulation of data, from spreadsheets to more advanced modeling software, leading up to degrees in management information systems. Management classes unsurprisingly focus on how to organize people working on and with digital tools.

Digital Literacy for Computer Science: Naturally, coding appears as a central competency within this discipline. Other aspects of the digital world feature prominently, including hardware and network architecture. Some courses housed within the computer science discipline offer a deeper examination of the impact of computing on society and politics, along with how to use digital tools. Media production plays a minor role here, beyond publications (posters, videos), as many institutions assign multimedia to other departments. Looking forward to a future when automation has become both more widespread and powerful, developing artificial intelligence projects will potentially play a role in computer science literacy.

6. Integrated Planning and Advising Systems for Student Success (iPASS)

7. Instructional Design

8. Online and Blended Learning

In traditional instruction, students’ first contact with new ideas happens in class, usually through direct instruction from the professor; after exposure to the basics, students are turned out of the classroom to tackle the most difficult tasks in learning — those that involve application, analysis, synthesis, and creativity — in their individual spaces. Flipped learning reverses this, by moving first contact with new concepts to the individual space and using the newly-expanded time in class for students to pursue difficult, higher-level tasks together, with the instructor as a guide.

Let’s take a look at some of the myths about flipped learning and try to find the facts.

Myth: Flipped learning is predicated on recording videos for students to watch before class.

Fact: Flipped learning does not require video. Although many real-life implementations of flipped learning use video, there’s nothing that says video must be used. In fact, one of the earliest instances of flipped learning — Eric Mazur’s peer instruction concept, used in Harvard physics classes — uses no video but rather an online text outfitted with social annotation software. And one of the most successful public instances of flipped learning, an edX course on numerical methods designed by Lorena Barba of George Washington University, uses precisely one video. Video is simply not necessary for flipped learning, and many alternatives to video can lead to effective flipped learning environments [http://rtalbert.org/flipped-learning-without-video/].

Myth: Flipped learning replaces face-to-face teaching.

Fact: Flipped learning optimizes face-to-face teaching. Flipped learning may (but does not always) replace lectures in class, but this is not to say that it replaces teaching. Teaching and “telling” are not the same thing.

Myth: Flipped learning has no evidence to back up its effectiveness.

Fact: Flipped learning research is growing at an exponential pace and has been since at least 2014. That research — 131 peer-reviewed articles in the first half of 2017 alone — includes results from primary, secondary, and postsecondary education in nearly every discipline, most showing significant improvements in student learning, motivation, and critical thinking skills.

Myth: Flipped learning is a fad.

Fact: Flipped learning has been with us in the form defined here for nearly 20 years.

Myth: People have been doing flipped learning for centuries.

Fact: Flipped learning is not just a rebranding of old techniques. The basic concept of students doing individually active work to encounter new ideas that are then built upon in class is almost as old as the university itself. So flipped learning is, in a real sense, a modern means of returning higher education to its roots. Even so, flipped learning is different from these time-honored techniques.

Myth: Students and professors prefer lecture over flipped learning.

Fact: Students and professors embrace flipped learning once they understand the benefits. It’s true that professors often enjoy their lectures, and students often enjoy being lectured to. But the question is not who “enjoys” what, but rather what helps students learn the best.They know what the research says about the effectiveness of active learning

Assertion: Flipped learning provides a platform for implementing active learning in a way that works powerfully for students.

9. Evaluating Technology-based Instructional Innovations

Transitioning to an ROI lens requires three fundamental shifts
What is the total cost of my innovation, including both new spending and the use of existing resources?

What’s the unit I should measure that connects cost with a change in performance?

How might the expected change in student performance also support a more sustainable financial model?

The Exposure Approach: we don’t provide a way for participants to determine if they learned anything new or now have the confidence or competence to apply what they learned.

The Exemplar Approach: from ‘show and tell’ for adults to show, tell, do and learn.

The Tutorial Approach: Getting a group that can meet at the same time and place can be challenging. That is why many faculty report a preference for self-paced professional development.build in simple self-assessment checks. We can add prompts that invite people to engage in some sort of follow up activity with a colleague. We can also add an elective option for faculty in a tutorial to actually create or do something with what they learned and then submit it for direct or narrative feedback.

The Course Approach: a non-credit format, these have the benefits of a more structured and lengthy learning experience, even if they are just three to five-week short courses that meet online or in-person once every week or two.involve badges, portfolios, peer assessment, self-assessment, or one-on-one feedback from a facilitator

The Academy Approach: like the course approach, is one that tends to be a deeper and more extended experience. People might gather in a cohort over a year or longer.Assessment through coaching and mentoring, the use of portfolios, peer feedback and much more can be easily incorporated to add a rich assessment element to such longer-term professional development programs.

The Mentoring Approach: The mentors often don’t set specific learning goals with the mentee. Instead, it is often a set of structured meetings, but also someone to whom mentees can turn with questions and tips along the way.

The Coaching Approach: A mentor tends to be a broader type of relationship with a person.A coaching relationship tends to be more focused upon specific goals, tasks or outcomes.

The Peer Approach:This can be done on a 1:1 basis or in small groups, where those who are teaching the same courses are able to compare notes on curricula and teaching models. They might give each other feedback on how to teach certain concepts, how to write syllabi, how to handle certain teaching and learning challenges, and much more. Faculty might sit in on each other’s courses, observe, and give feedback afterward.

The Self-Directed Approach:a self-assessment strategy such as setting goals and creating simple checklists and rubrics to monitor our progress. Or, we invite feedback from colleagues, often in a narrative and/or informal format. We might also create a portfolio of our work, or engage in some sort of learning journal that documents our thoughts, experiments, experiences, and learning along the way.

The Buffet Approach:

10. Open Education

Figure 1. A Model for Networked Education (Credit: Image by Catherine Cronin, building on
Interpretations of
Balancing Privacy and Openness (Credit: Image by Catherine Cronin. CC BY-SA)

11. Learning Analytics

12. Adaptive Teaching and Learning

13. Working with Emerging Technology

In 2014, administrators at Central Piedmont Community College (CPCC) in Charlotte, North Carolina, began talks with members of the North Carolina State Board of Community Colleges and North Carolina Community College System (NCCCS) leadership about starting a CBE program.

Building on an existing project at CPCC for identifying the elements of a digital learning environment (DLE), which was itself influenced by the EDUCAUSE publication The Next Generation Digital Learning Environment: A Report on Research,1 the committee reached consensus on a DLE concept and a shared lexicon: the “Digital Learning Environment Operational Definitions,

Figure 1. NC-CBE Digital Learning Environment

Digital Literacy for SPED 405

Digital Literacy for SPED 405. Behavior Theories and Practices in Special Education.

Instructor Mark Markell. mamarkell@stcloudstate.edu Mondays, 5:30 – 8:20 PM. SOE A235

Preliminary Plan for Monday, Sept 10, 5:45 PM to 8 PM

Introduction – who are the students in this class. About myself: http://web.stcloudstate.edu/pmiltenoff/faculty Contact info, “embedded” librarian idea – I am available to help during the semester with research and papers

about 40 min: Intro to the library: http://web.stcloudstate.edu/pmiltenoff/bi/
15 min for a Virtual Reality tours of the Library + quiz on how well they learned the library:
http://bit.ly/VRlib
and 360 degree video on BYOD:
Play a scavenger hunt IN THE LIBRARY: http://bit.ly/learnlib
The VR (virtual reality) and AR (augmented reality) component; why is it important?
why is this technology brought up to a SPED class?
https://blog.stcloudstate.edu/ims/2015/11/18/immersive-journalism/
autism: https://blog.stcloudstate.edu/ims/2018/09/10/sound-and-brain/
Social emotional learning
https://blog.stcloudstate.edu/ims/2018/05/31/vr-ar-sel-empathy/
(transition to the next topic – digital literacy)

about 50 min:

  1. Digital Literacy

How important is technology in our life? Profession?

https://blog.stcloudstate.edu/ims/2018/08/20/employee-evolution/

Do you think technology overlaps with the broad field of special education? How?
How do you define technology? What falls under “technology?”

What is “digital literacy?” Do we need to be literate in that sense? How does it differ from technology literacy?
https://blog.stcloudstate.edu/ims?s=digital+literacy

Additional readings on “digital literacy”
https://blog.stcloudstate.edu/ims/2017/08/23/nmc-digital-literacy/

Digital Citizenship: https://blog.stcloudstate.edu/ims/2015/10/19/digital-citizenship-info/
Play Kahoot: https://play.kahoot.it/#/k/e844253f-b5dd-4a91-b096-b6ff777e6dd7
Privacy and surveillance: how does these two issues affect your students? Does it affect them more? if so, how?  https://blog.stcloudstate.edu/ims/2018/08/21/ai-tracks-students-writings/

Social Media:
http://web.stcloudstate.edu/pmiltenoff/lib290/. if you want to survey the class, here is the FB group page: https://www.facebook.com/groups/LIB290/

Is Social Media part of digital literacy? Why? How SM can help us become more literate?

Digital Storytelling:
http://web.stcloudstate.edu/pmiltenoff/lib490/

How is digital storytelling essential in digital literacy?

about 50 min:

  1. Fake News and Research

Syllabus: Teaching Media Manipulation: https://datasociety.net/pubs/oh/DataAndSociety_Syllabus-MediaManipulationAndDisinformationOnline.pdf

#FakeNews is a very timely and controversial issue. in 2-3 min choose your best source on this issue. 1. Mind the prevalence of resources in the 21st century 2. Mind the necessity to evaluate a) the veracity of your courses b) the quality of your sources (the fact that they are “true” does not mean that they are the best). Be prepared to name your source and defend its quality.
How do you determine your sources? How do you decide the reliability of your sources? Are you sure you can distinguish “good” from “bad?”
Compare this entry https://en.wikipedia.org/wiki/List_of_fake_news_websites
to this entry: https://docs.google.com/document/d/10eA5-mCZLSS4MQY5QGb5ewC3VAL6pLkT53V_81ZyitM/preview to understand the scope

Do you know any fact checking sites? Can you identify spot sponsored content? Do you understand syndication? What do you understand under “media literacy,” “news literacy,” “information literacy.”  https://blog.stcloudstate.edu/ims/2017/03/28/fake-news-resources/

Why do we need to explore the “fake news” phenomenon? Do you find it relevant to your professional development?

Let’s watch another video and play this Kahoot: https://play.kahoot.it/#/k/21379a63-b67c-4897-a2cd-66e7d1c83027

So, how do we do academic research? Let’s play another Kahoot: https://play.kahoot.it/#/k/5e09bb66-4d87-44a5-af21-c8f3d7ce23de
If you to structure this Kahoot, what are the questions, you will ask? What are the main steps in achieving successful research for your paper?

  • Research using social media

what is social media (examples). why is called SM? why is so popular? what makes it so popular?

use SM tools for your research and education:

– Determining your topic. How to?
Digg http://digg.com/, Reddit https://www.reddit.com/ , Quora https://www.quora.com
Facebook, Twitter – hashtags (class assignment 2-3 min to search)
LinkedIn Groups
YouTube and Slideshare (class assignment 2-3 min to search)
Flickr, Instagram, Pinterest for visual aids (like YouTube they are media repositories)

Academia.com (https://www.academia.edu/Academia.edu, a paper-sharing social network that has been informally dubbed “Facebook for academics,” https://www.academia.edu/31942069_Facebook_for_Academics_The_Convergence_of_Self-Branding_and_Social_Media_Logic_on_Academia.edu

ResearchGate: https://www.researchgate.net/

– collecting and managing your resources:
Delicious https://del.icio.us/
Diigo: https://www.diigo.com/
Evernote: evernote.com OneNote (Microsoft)

blogs and wikis for collecting data and collaborating

– Managing and sharing your information:
Refworks,
Zotero https://www.zotero.org/,
Mendeley, https://www.mendeley.com/

– Testing your work against your peers (globally):

Wikipedia:
First step:Using Wikipedia.Second step: Contributing to Wikipedia (editing a page). Third step: Contributing to Wikipedia (creating a page)  https://www.evernote.com/shard/s101/sh/ef743d1a-4516-47fe-bc5b-408f29a9dcb9/52d79bfa20ee087900764eb6a407ec86

– presenting your information


please use this form to cast your feedback. Please feel free to fill out only the relevant questions:
http://bit.ly/imseval

digital literacy ENGL 101

English 101 materials for discussion on digital literacy.

Jamie Heiman.

All materials on #DigitalLiteracy in the IMS blog here: https://blog.stcloudstate.edu/ims?s=digital+literacy

Scenario for digital literacy in English classes:

What do virtual reality, BuzzFeed quizzes and essay writing have in common?

https://www.educationdive.com/news/what-do-virtual-reality-buzzfeed-quizzes-and-essay-writing-have-in-common/527868/

July 18, 2018

high school students now create infographics, BuzzFeed-like quizzes and even virtual reality (VR) experiences to illustrate how they can research, write and express their thoughts.

technology — using sites like CoSpaces Edu and content learning system Schoology (my note: the equivalnet of D2L at SCSU) — to engage and empower her students.

Thinklink, during a session called “Virtually Not an Essay: Technological Alternatives to a standard essay assignment.” (see this blog materials on ThingLink and like here: https://blog.stcloudstate.edu/ims?s=thinglink. The author made typo by calling the app “ThinKlink, instead of ThinGlink. Also, to use Thinglink’s Video 360 editor, the free account is not sufficient and the $125/month upgrade is needed. Not a good solution for education)

Jamie: I would love to discuss with you #infographics and #Thinglink for use in your courses and the Departmental course.

Digital literacy (DL): options, ideas, possibilities

Fake news materials for Engl 101

English 101 materials for discussion on fake news.

Jamie Heiman.

All materials on #FakeNews in the IMS blog: https://blog.stcloudstate.edu/ims?s=fake+news

this topic is developed in conjunction with digital literacy discussions.

from psychological perspective: https://blog.stcloudstate.edu/ims/2018/03/29/psychology-fake-news/

from legal/ethical perspective: https://blog.stcloudstate.edu/ims/2018/03/26/prison-time-for-fake-news/

definition:
https://blog.stcloudstate.edu/ims/2018/02/18/fake-news-disinformation-propaganda/

mechanics:
https://blog.stcloudstate.edu/ims/2017/11/22/bots-trolls-and-fake-news/

https://blog.stcloudstate.edu/ims/2017/07/15/fake-news-and-video/

https://blog.stcloudstate.edu/ims/2018/04/09/automated-twitter-bots/

https://blog.stcloudstate.edu/ims/2018/03/25/data-misuse/

https://blog.stcloudstate.edu/ims/2018/02/10/bots-big-data-future/

https://blog.stcloudstate.edu/ims/2017/09/19/social-media-algorithms/

exercises in detecting fake news:
(why should we) :

fake news


https://blog.stcloudstate.edu/ims/2016/12/09/immune-to-info-overload/

https://blog.stcloudstate.edu/ims/2017/08/13/library-spot-fake-news/

https://blog.stcloudstate.edu/ims/2016/11/23/fake-news/

https://blog.stcloudstate.edu/ims/2016/12/14/fake-news-2/

https://blog.stcloudstate.edu/ims/2017/06/26/fake-news-real-news/

https://blog.stcloudstate.edu/ims/2017/03/28/fake-news-resources/

https://blog.stcloudstate.edu/ims/2017/03/15/fake-news-bib/

News literacy education (see digital literacy): https://blog.stcloudstate.edu/ims/2018/06/23/digital-forensics-and-news-literacy-education/

https://blog.stcloudstate.edu/ims/2017/07/21/unfiltered-news/

https://blog.stcloudstate.edu/ims/2017/03/13/types-of-misinformation/

Additional ideas and readings:

https://blog.stcloudstate.edu/ims/2017/11/30/rt-hybrid-war/

https://blog.stcloudstate.edu/ims/2017/08/23/nmc-digital-literacy/

 

 

SOE workshop gamification

School of Education workshop on gaming and gamification

shortlink: http://bit.ly/soegaming

Join us for a LIVE broadcast:

Live broadcast on Adobe Connect:
https://webmeeting.minnstate.edu/scsuteched
Live broadcast on Facebook:
https://www.facebook.com/events/1803394496351600

 

Outline:
The Gamification of the educations process is not a new concept. The advent of educational technologies, however, makes the idea timely and pertinent. In short 60 min, we will introduce the concept of gamification of the educational process and discuss real-live examples.

Learning Outcomes:

  • at the end of the session, participants will have an idea about gaming and gamification in education and will be able to discriminate between those two powerful concepts in education
  • at the end of this session, participants will be able search and select VIdeo 360 movies for their class lessons
  • at the end of the session, participants will be able to understand the difference between VR, AR and MR.

if you are interested in setting up a makerspace and/or similar gaming space at your school, please contact me after this workshop for more information.

  1. Gaming in education
    Minecraft.edu
    https://blog.stcloudstate.edu/ims/2017/10/26/pedagogically-sound-minecraft-examples/
    Simcity.com

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Here some online games suitable for educators:
http://www.onlinecolleges.net/50-great-sites-for-serious-educational-games/

https://www.learn4good.com/games/for-high-school-students.htm

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Let’s learn more about gaming and education with Kahoot (please click on Kahoot):

https://play.kahoot.it/#/k/78e64d54-3607-48fa-a0d3-42ff557e29b1

Let’s take a quiz together:

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  1. Gamification in education
    1. How would you define gamification of the educational process?
    2. Gaming and Gamification in academic and library settings (paper)
      Short URL: http://scsu.mn/1F008Re
      Gamification takes game elements (such as points, badges, leaderboards, competition, achievements) and applies them to a non-game setting. It has the potential to turn routine, mundane tasks into refreshing, motivating experiences (What is GBL (Game-Based Learning)?, n.d.).
      Gamification is defined as the process of applying game mechanics and game thinking to the real world to solve problems and engage users (Phetteplace & Felker, 2014, p. 19; Becker, 2013, p. 199; Kapp, 2012). Gamification requires three sets of principles: 1. Empowered Learners, 2. Problem Solving, 3. Understanding (Gee, 2005).
    3. Apply gamification tactics to existing learning task
      split in groups and develop a plan to gamify existing learning task
    4. gamification with and without technology
      https://www.thespruce.com/board-games-for-college-kids-3570593

+++ hands-on ++++++++++++++++ hands-on ++++++++++++++++ hands-on ++++++

  1. Video 360 in the classroom (proposed book chapter)
    1. the importance of Video 360
      p. 46 Virtual Reality
      https://blog.stcloudstate.edu/ims/2017/08/30/nmc-horizon-report-2017-k12/
      p. 47 Google is bringing VR to UK kids
      http://www.wired.co.uk/article/google-digital-skills-vr-pledge
      Video 360 movies for education:
      http://virtualrealityforeducation.com/google-cardboard-vr-videos/science-vr-apps/
      Watch this movie on the big screen:

      from the web page above, choose a movie or click on this lin
      k:
      https://youtu.be/nOHM8gnin8Y (to watch a black hole in video 360)
      Open the link on your phone and insert the phone in Google Cardboard. Watch the video using Google Cardboard. 
    2. Discuss the difference between in your experience watching the movie on the big screen and using Google Cardboard. What are the advantages of using goggles, such as Google Cardboard?
      Enter your findings here:
      https://docs.google.com/document/d/1Nz42T6CaYsx8qVl9ee_IC25EyqS0A8aZcQdX2F6RMjg/edit?usp=sharing

Let’s learn more about gaming and education with Kahoot (please click on Kahoot):

https://play.kahoot.it/#/k/6c9e7368-f830-4a9c-8f5a-df1899e96665

  1. VR, AR, MR and Video 360.
    1. discuss your ideas to apply VR/AR/MR and Video 360 in real life and your profession
      https://docs.google.com/document/d/1Cq6zDXJ9xkN7h81RpiLkdflbAuX8y_my2VrbO3mZ5mM/edit?usp=sharing
  2. Creating your own games:
    https://blog.stcloudstate.edu/ims/2018/02/19/unity/

++++++ RESOURCES ++++++++++ RESOURCES ++++++++++ RESOURCES +++++++

https://blog.stcloudstate.edu/ims?s=games

https://blog.stcloudstate.edu/ims?s=gamification

https://blog.stcloudstate.edu/ims?s=virtual+reality

https://blog.stcloudstate.edu/ims?s=video+360

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For further information about Information Media:

IM Facebook Group https://www.facebook.com/groups/326983293392/
IM Facebook Page http://www.facebook.com/Informationmedia
IM Blog blog.stcloudstate.edu/im
IM LinkedIn https://www.linkedin.com/in/information-media-department-31360b28/
Twitter https://twitter.com/IM_SCSU
Youtube https://www.youtube.com/channel/UCIluhVNJLJYEJ7983VmhF8w

International Conference on Learning Athens Greece

Twenty-fifth International Conference on Learning

2018 Special Focus: Education in a Time of Austerity and Social Turbulence  21–23 June 2018 University of Athens, Athens, Greece http://thelearner.com/2018-conference

Theme 8: Technologies in Learning

  • Technology and human values: learning through and about technology
  • Crossing the digital divide: access to learning in, and about, the digital world
  • New tools for learning: online digitally mediated learning
  • Virtual worlds, virtual classrooms: interactive, self-paced and autonomous learning
  • Ubiquitous learning: using the affordances of the new mediaDistance learning: reducing the distance

Theme 9: Literacies Learning

  • Defining new literacies
  • Languages of power: literacy’s role in social access
  • Instructional responses to individual differences in literacy learning
  • The visual and the verbal: Multiliteracies and multimodal communications
  • Literacy in learning: language in learning across the subject areas
  • The changing role of libraries in literacies learning
  • Languages education and second language learning
  • Multilingual learning for a multicultural world
  • The arts and design in multimodal learning
  • The computer, internet, and digital media: educational challenges and responses

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PROPOSAL: Paper presentation in a Themed Session

Title

Virtual Reality and Gamification in the Educational Process: The Experience from an Academic Library

short description

VR, AR and Mixed Reality, as well as gaming and gamification are proposed as sandbox opportunity to transition from a lecture-type instruction to constructivist-based methods.

long description

The NMC New Horizon Report 2017 predicts a rapid application of Video360 in K12. Millennials are leaving college, Gen Z students are our next patrons. Higher Education needs to meet its new students on “their playground.” A collaboration by a librarian and VR specialist is testing the opportunities to apply 360 degree movies and VR in academic library orientation. The team seeks to bank on the inheriting interest of young patrons toward these technologies and their inextricable part of a rapidly becoming traditional gaming environment. A “low-end,” inexpensive and more mobile Google Cardboard solution was preferred to HTC Vive, Microsoft HoloLens or comparable hi-end VR, AR and mixed reality products.

The team relies on the constructivist theory of assisting students in building their knowledge in their own pace and on their own terms, rather than being lectured and/or being guided by a librarian during a traditional library orientation tour. Using inexpensive Google Cardboard goggles, students can explore a realistic set up of the actual library and familiarize themselves with its services. Students were polled on the effectiveness of such approach as well as on their inclination to entertain more comprehensive version of library orientation. Based on the lessons from this experiment, the team intends to pursue also a standardized approach to introducing VR to other campus services, thus bringing down further the cost of VR projects on campus. The project is considered a sandbox for academic instruction across campus. The same concept can be applied for [e.g., Chemistry, Physics, Biology) lab tours; for classes, which anticipate preliminary orientation process.

Following the VR orientation, the traditional students’ library instruction, usually conducted in a room, is replaced by a dynamic gamified library instruction. Students are split in groups of three and conduct a “scavenger hunt”; students use a jQuery-generated Web site on their mobile devices to advance through “hoops” of standard information literacy test. E.g., they need to walk to the Reference Desk, collect specific information and log their findings in the Web site. The idea follows the strong interest in the educational world toward gaming and gamification of the educational process. This library orientation approach applies the three principles for gamification: empowers learners; teaches problem solving and increases understanding.
Similarly to the experience with VR for library orientation, this library instruction process is used as a sandbox and has been successfully replicated by other instructors in their classes.

Keywords

academic library

literacies learning

digitally mediated learning

 

IRDL proposal

Applications for the 2018 Institute will be accepted between December 1, 2017 and January 27, 2018. Scholars accepted to the program will be notified in early March 2018.

Title:

Learning to Harness Big Data in an Academic Library

Abstract (200)

Research on Big Data per se, as well as on the importance and organization of the process of Big Data collection and analysis, is well underway. The complexity of the process comprising “Big Data,” however, deprives organizations of ubiquitous “blue print.” The planning, structuring, administration and execution of the process of adopting Big Data in an organization, being that a corporate one or an educational one, remains an elusive one. No less elusive is the adoption of the Big Data practices among libraries themselves. Seeking the commonalities and differences in the adoption of Big Data practices among libraries may be a suitable start to help libraries transition to the adoption of Big Data and restructuring organizational and daily activities based on Big Data decisions.
Introduction to the problem. Limitations

The redefinition of humanities scholarship has received major attention in higher education. The advent of digital humanities challenges aspects of academic librarianship. Data literacy is a critical need for digital humanities in academia. The March 2016 Library Juice Academy Webinar led by John Russel exemplifies the efforts to help librarians become versed in obtaining programming skills, and respectively, handling data. Those are first steps on a rather long path of building a robust infrastructure to collect, analyze, and interpret data intelligently, so it can be utilized to restructure daily and strategic activities. Since the phenomenon of Big Data is young, there is a lack of blueprints on the organization of such infrastructure. A collection and sharing of best practices is an efficient approach to establishing a feasible plan for setting a library infrastructure for collection, analysis, and implementation of Big Data.
Limitations. This research can only organize the results from the responses of librarians and research into how libraries present themselves to the world in this arena. It may be able to make some rudimentary recommendations. However, based on each library’s specific goals and tasks, further research and work will be needed.

 

 

Research Literature

“Big data is like teenage sex: everyone talks about it, nobody really knows how to do it, everyone thinks everyone else is doing it, so everyone claims they are doing it…”
– Dan Ariely, 2013  https://www.asist.org/publications/bulletin/aprilmay-2017/big-datas-impact-on-privacy-for-librarians-and-information-professionals/

Big Data is becoming an omnipresent term. It is widespread among different disciplines in academia (De Mauro, Greco, & Grimaldi, 2016). This leads to “inconsistency in meanings and necessity for formal definitions” (De Mauro et al, 2016, p. 122). Similarly, to De Mauro et al (2016), Hashem, Yaqoob, Anuar, Mokhtar, Gani and Ullah Khan (2015) seek standardization of definitions. The main connected “themes” of this phenomenon must be identified and the connections to Library Science must be sought. A prerequisite for a comprehensive definition is the identification of Big Data methods. Bughin, Chui, Manyika (2011), Chen et al. (2012) and De Mauro et al (2015) single out the methods to complete the process of building a comprehensive definition.

In conjunction with identifying the methods, volume, velocity, and variety, as defined by Laney (2001), are the three properties of Big Data accepted across the literature. Daniel (2015) defines three stages in big data: collection, analysis, and visualization. According to Daniel, (2015), Big Data in higher education “connotes the interpretation of a wide range of administrative and operational data” (p. 910) and according to Hilbert (2013), as cited in Daniel (2015), Big Data “delivers a cost-effective prospect to improve decision making” (p. 911).

The importance of understanding the process of Big Data analytics is well understood in academic libraries. An example of such “administrative and operational” use for cost-effective improvement of decision making are the Finch & Flenner (2016) and Eaton (2017) case studies of the use of data visualization to assess an academic library collection and restructure the acquisition process. Sugimoto, Ding & Thelwall (2012) call for the discussion of Big Data for libraries. According to the 2017 NMC Horizon Report “Big Data has become a major focus of academic and research libraries due to the rapid evolution of data mining technologies and the proliferation of data sources like mobile devices and social media” (Adams, Becker, et al., 2017, p. 38).

Power (2014) elaborates on the complexity of Big Data in regard to decision-making and offers ideas for organizations on building a system to deal with Big Data. As explained by Boyd and Crawford (2012) and cited in De Mauro et al (2016), there is a danger of a new digital divide among organizations with different access and ability to process data. Moreover, Big Data impacts current organizational entities in their ability to reconsider their structure and organization. The complexity of institutions’ performance under the impact of Big Data is further complicated by the change of human behavior, because, arguably, Big Data affects human behavior itself (Schroeder, 2014).

De Mauro et al (2015) touch on the impact of Dig Data on libraries. The reorganization of academic libraries considering Big Data and the handling of Big Data by libraries is in a close conjunction with the reorganization of the entire campus and the handling of Big Data by the educational institution. In additional to the disruption posed by the Big Data phenomenon, higher education is facing global changes of economic, technological, social, and educational character. Daniel (2015) uses a chart to illustrate the complexity of these global trends. Parallel to the Big Data developments in America and Asia, the European Union is offering access to an EU open data portal (https://data.europa.eu/euodp/home ). Moreover, the Association of European Research Libraries expects under the H2020 program to increase “the digitization of cultural heritage, digital preservation, research data sharing, open access policies and the interoperability of research infrastructures” (Reilly, 2013).

The challenges posed by Big Data to human and social behavior (Schroeder, 2014) are no less significant to the impact of Big Data on learning. Cohen, Dolan, Dunlap, Hellerstein, & Welton (2009) propose a road map for “more conservative organizations” (p. 1492) to overcome their reservations and/or inability to handle Big Data and adopt a practical approach to the complexity of Big Data. Two Chinese researchers assert deep learning as the “set of machine learning techniques that learn multiple levels of representation in deep architectures (Chen & Lin, 2014, p. 515). Deep learning requires “new ways of thinking and transformative solutions (Chen & Lin, 2014, p. 523). Another pair of researchers from China present a broad overview of the various societal, business and administrative applications of Big Data, including a detailed account and definitions of the processes and tools accompanying Big Data analytics.  The American counterparts of these Chinese researchers are of the same opinion when it comes to “think about the core principles and concepts that underline the techniques, and also the systematic thinking” (Provost and Fawcett, 2013, p. 58). De Mauro, Greco, and Grimaldi (2016), similarly to Provost and Fawcett (2013) draw attention to the urgent necessity to train new types of specialists to work with such data. As early as 2012, Davenport and Patil (2012), as cited in Mauro et al (2016), envisioned hybrid specialists able to manage both technological knowledge and academic research. Similarly, Provost and Fawcett (2013) mention the efforts of “academic institutions scrambling to put together programs to train data scientists” (p. 51). Further, Asomoah, Sharda, Zadeh & Kalgotra (2017) share a specific plan on the design and delivery of a big data analytics course. At the same time, librarians working with data acknowledge the shortcomings in the profession, since librarians “are practitioners first and generally do not view usability as a primary job responsibility, usually lack the depth of research skills needed to carry out a fully valid” data-based research (Emanuel, 2013, p. 207).

Borgman (2015) devotes an entire book to data and scholarly research and goes beyond the already well-established facts regarding the importance of Big Data, the implications of Big Data and the technical, societal, and educational impact and complications posed by Big Data. Borgman elucidates the importance of knowledge infrastructure and the necessity to understand the importance and complexity of building such infrastructure, in order to be able to take advantage of Big Data. In a similar fashion, a team of Chinese scholars draws attention to the complexity of data mining and Big Data and the necessity to approach the issue in an organized fashion (Wu, Xhu, Wu, Ding, 2014).

Bruns (2013) shifts the conversation from the “macro” architecture of Big Data, as focused by Borgman (2015) and Wu et al (2014) and ponders over the influx and unprecedented opportunities for humanities in academia with the advent of Big Data. Does the seemingly ubiquitous omnipresence of Big Data mean for humanities a “railroading” into “scientificity”? How will research and publishing change with the advent of Big Data across academic disciplines?

Reyes (2015) shares her “skinny” approach to Big Data in education. She presents a comprehensive structure for educational institutions to shift “traditional” analytics to “learner-centered” analytics (p. 75) and identifies the participants in the Big Data process in the organization. The model is applicable for library use.

Being a new and unchartered territory, Big Data and Big Data analytics can pose ethical issues. Willis (2013) focusses on Big Data application in education, namely the ethical questions for higher education administrators and the expectations of Big Data analytics to predict students’ success.  Daries, Reich, Waldo, Young, and Whittinghill (2014) discuss rather similar issues regarding the balance between data and student privacy regulations. The privacy issues accompanying data are also discussed by Tene and Polonetsky, (2013).

Privacy issues are habitually connected to security and surveillance issues. Andrejevic and Gates (2014) point out in a decision making “generated by data mining, the focus is not on particular individuals but on aggregate outcomes” (p. 195). Van Dijck (2014) goes into further details regarding the perils posed by metadata and data to the society, in particular to the privacy of citizens. Bail (2014) addresses the same issue regarding the impact of Big Data on societal issues, but underlines the leading roles of cultural sociologists and their theories for the correct application of Big Data.

Library organizations have been traditional proponents of core democratic values such as protection of privacy and elucidation of related ethical questions (Miltenoff & Hauptman, 2005). In recent books about Big Data and libraries, ethical issues are important part of the discussion (Weiss, 2018). Library blogs also discuss these issues (Harper & Oltmann, 2017). An academic library’s role is to educate its patrons about those values. Sugimoto et al (2012) reflect on the need for discussion about Big Data in Library and Information Science. They clearly draw attention to the library “tradition of organizing, managing, retrieving, collecting, describing, and preserving information” (p.1) as well as library and information science being “a historically interdisciplinary and collaborative field, absorbing the knowledge of multiple domains and bringing the tools, techniques, and theories” (p. 1). Sugimoto et al (2012) sought a wide discussion among the library profession regarding the implications of Big Data on the profession, no differently from the activities in other fields (e.g., Wixom, Ariyachandra, Douglas, Goul, Gupta, Iyer, Kulkami, Mooney, Phillips-Wren, Turetken, 2014). A current Andrew Mellon Foundation grant for Visualizing Digital Scholarship in Libraries seeks an opportunity to view “both macro and micro perspectives, multi-user collaboration and real-time data interaction, and a limitless number of visualization possibilities – critical capabilities for rapidly understanding today’s large data sets (Hwangbo, 2014).

The importance of the library with its traditional roles, as described by Sugimoto et al (2012) may continue, considering the Big Data platform proposed by Wu, Wu, Khabsa, Williams, Chen, Huang, Tuarob, Choudhury, Ororbia, Mitra, & Giles (2014). Such platforms will continue to emerge and be improved, with librarians as the ultimate drivers of such platforms and as the mediators between the patrons and the data generated by such platforms.

Every library needs to find its place in the large organization and in society in regard to this very new and very powerful phenomenon called Big Data. Libraries might not have the trained staff to become a leader in the process of organizing and building the complex mechanism of this new knowledge architecture, but librarians must educate and train themselves to be worthy participants in this new establishment.

 

Method

 

The study will be cleared by the SCSU IRB.
The survey will collect responses from library population and it readiness to use and use of Big Data.  Send survey URL to (academic?) libraries around the world.

Data will be processed through SPSS. Open ended results will be processed manually. The preliminary research design presupposes a mixed method approach.

The study will include the use of closed-ended survey response questions and open-ended questions.  The first part of the study (close ended, quantitative questions) will be completed online through online survey. Participants will be asked to complete the survey using a link they receive through e-mail.

Mixed methods research was defined by Johnson and Onwuegbuzie (2004) as “the class of research where the researcher mixes or combines quantitative and qualitative research techniques, methods, approaches, concepts, or language into a single study” (Johnson & Onwuegbuzie, 2004 , p. 17).  Quantitative and qualitative methods can be combined, if used to complement each other because the methods can measure different aspects of the research questions (Sale, Lohfeld, & Brazil, 2002).

 

Sampling design

 

  • Online survey of 10-15 question, with 3-5 demographic and the rest regarding the use of tools.
  • 1-2 open-ended questions at the end of the survey to probe for follow-up mixed method approach (an opportunity for qualitative study)
  • data analysis techniques: survey results will be exported to SPSS and analyzed accordingly. The final survey design will determine the appropriate statistical approach.

 

Project Schedule

 

Complete literature review and identify areas of interest – two months

Prepare and test instrument (survey) – month

IRB and other details – month

Generate a list of potential libraries to distribute survey – month

Contact libraries. Follow up and contact again, if necessary (low turnaround) – month

Collect, analyze data – two months

Write out data findings – month

Complete manuscript – month

Proofreading and other details – month

 

Significance of the work 

While it has been widely acknowledged that Big Data (and its handling) is changing higher education (https://blog.stcloudstate.edu/ims?s=big+data) as well as academic libraries (https://blog.stcloudstate.edu/ims/2016/03/29/analytics-in-education/), it remains nebulous how Big Data is handled in the academic library and, respectively, how it is related to the handling of Big Data on campus. Moreover, the visualization of Big Data between units on campus remains in progress, along with any policymaking based on the analysis of such data (hence the need for comprehensive visualization).

 

This research will aim to gain an understanding on: a. how librarians are handling Big Data; b. how are they relating their Big Data output to the campus output of Big Data and c. how librarians in particular and campus administration in general are tuning their practices based on the analysis.

Based on the survey returns (if there is a statistically significant return), this research might consider juxtaposing the practices from academic libraries, to practices from special libraries (especially corporate libraries), public and school libraries.

 

 

References:

 

Adams Becker, S., Cummins M, Davis, A., Freeman, A., Giesinger Hall, C., Ananthanarayanan, V., … Wolfson, N. (2017). NMC Horizon Report: 2017 Library Edition.

Andrejevic, M., & Gates, K. (2014). Big Data Surveillance: Introduction. Surveillance & Society, 12(2), 185–196.

Asamoah, D. A., Sharda, R., Hassan Zadeh, A., & Kalgotra, P. (2017). Preparing a Data Scientist: A Pedagogic Experience in Designing a Big Data Analytics Course. Decision Sciences Journal of Innovative Education, 15(2), 161–190. https://doi.org/10.1111/dsji.12125

Bail, C. A. (2014). The cultural environment: measuring culture with big data. Theory and Society, 43(3–4), 465–482. https://doi.org/10.1007/s11186-014-9216-5

Borgman, C. L. (2015). Big Data, Little Data, No Data: Scholarship in the Networked World. MIT Press.

Bruns, A. (2013). Faster than the speed of print: Reconciling ‘big data’ social media analysis and academic scholarship. First Monday, 18(10). Retrieved from http://firstmonday.org/ojs/index.php/fm/article/view/4879

Bughin, J., Chui, M., & Manyika, J. (2010). Clouds, big data, and smart assets: Ten tech-enabled business trends to watch. McKinsey Quarterly, 56(1), 75–86.

Chen, X. W., & Lin, X. (2014). Big Data Deep Learning: Challenges and Perspectives. IEEE Access, 2, 514–525. https://doi.org/10.1109/ACCESS.2014.2325029

Cohen, J., Dolan, B., Dunlap, M., Hellerstein, J. M., & Welton, C. (2009). MAD Skills: New Analysis Practices for Big Data. Proc. VLDB Endow., 2(2), 1481–1492. https://doi.org/10.14778/1687553.1687576

Daniel, B. (2015). Big Data and analytics in higher education: Opportunities and challenges. British Journal of Educational Technology, 46(5), 904–920. https://doi.org/10.1111/bjet.12230

Daries, J. P., Reich, J., Waldo, J., Young, E. M., Whittinghill, J., Ho, A. D., … Chuang, I. (2014). Privacy, Anonymity, and Big Data in the Social Sciences. Commun. ACM, 57(9), 56–63. https://doi.org/10.1145/2643132

De Mauro, A. D., Greco, M., & Grimaldi, M. (2016). A formal definition of Big Data based on its essential features. Library Review, 65(3), 122–135. https://doi.org/10.1108/LR-06-2015-0061

De Mauro, A., Greco, M., & Grimaldi, M. (2015). What is big data? A consensual definition and a review of key research topics. AIP Conference Proceedings, 1644(1), 97–104. https://doi.org/10.1063/1.4907823

Dumbill, E. (2012). Making Sense of Big Data. Big Data, 1(1), 1–2. https://doi.org/10.1089/big.2012.1503

Eaton, M. (2017). Seeing Library Data: A Prototype Data Visualization Application for Librarians. Publications and Research. Retrieved from http://academicworks.cuny.edu/kb_pubs/115

Emanuel, J. (2013). Usability testing in libraries: methods, limitations, and implications. OCLC Systems & Services: International Digital Library Perspectives, 29(4), 204–217. https://doi.org/10.1108/OCLC-02-2013-0009

Graham, M., & Shelton, T. (2013). Geography and the future of big data, big data and the future of geography. Dialogues in Human Geography, 3(3), 255–261. https://doi.org/10.1177/2043820613513121

Harper, L., & Oltmann, S. (2017, April 2). Big Data’s Impact on Privacy for Librarians and Information Professionals. Retrieved November 7, 2017, from https://www.asist.org/publications/bulletin/aprilmay-2017/big-datas-impact-on-privacy-for-librarians-and-information-professionals/

Hashem, I. A. T., Yaqoob, I., Anuar, N. B., Mokhtar, S., Gani, A., & Ullah Khan, S. (2015). The rise of “big data” on cloud computing: Review and open research issues. Information Systems, 47(Supplement C), 98–115. https://doi.org/10.1016/j.is.2014.07.006

Hwangbo, H. (2014, October 22). The future of collaboration: Large-scale visualization. Retrieved November 7, 2017, from http://usblogs.pwc.com/emerging-technology/the-future-of-collaboration-large-scale-visualization/

Laney, D. (2001, February 6). 3D Data Management: Controlling Data Volume, Velocity, and Variety.

Miltenoff, P., & Hauptman, R. (2005). Ethical dilemmas in libraries: an international perspective. The Electronic Library, 23(6), 664–670. https://doi.org/10.1108/02640470510635746

Philip Chen, C. L., & Zhang, C.-Y. (2014). Data-intensive applications, challenges, techniques and technologies: A survey on Big Data. Information Sciences, 275(Supplement C), 314–347. https://doi.org/10.1016/j.ins.2014.01.015

Power, D. J. (2014). Using ‘Big Data’ for analytics and decision support. Journal of Decision Systems, 23(2), 222–228. https://doi.org/10.1080/12460125.2014.888848

Provost, F., & Fawcett, T. (2013). Data Science and its Relationship to Big Data and Data-Driven Decision Making. Big Data, 1(1), 51–59. https://doi.org/10.1089/big.2013.1508

Reilly, S. (2013, December 12). What does Horizon 2020 mean for research libraries? Retrieved November 7, 2017, from http://libereurope.eu/blog/2013/12/12/what-does-horizon-2020-mean-for-research-libraries/

Reyes, J. (2015). The skinny on big data in education: Learning analytics simplified. TechTrends: Linking Research & Practice to Improve Learning, 59(2), 75–80. https://doi.org/10.1007/s11528-015-0842-1

Schroeder, R. (2014). Big Data and the brave new world of social media research. Big Data & Society, 1(2), 2053951714563194. https://doi.org/10.1177/2053951714563194

Sugimoto, C. R., Ding, Y., & Thelwall, M. (2012). Library and information science in the big data era: Funding, projects, and future [a panel proposal]. Proceedings of the American Society for Information Science and Technology, 49(1), 1–3. https://doi.org/10.1002/meet.14504901187

Tene, O., & Polonetsky, J. (2012). Big Data for All: Privacy and User Control in the Age of Analytics. Northwestern Journal of Technology and Intellectual Property, 11, [xxvii]-274.

van Dijck, J. (2014). Datafication, dataism and dataveillance: Big Data between scientific paradigm and ideology. Surveillance & Society; Newcastle upon Tyne, 12(2), 197–208.

Waller, M. A., & Fawcett, S. E. (2013). Data Science, Predictive Analytics, and Big Data: A Revolution That Will Transform Supply Chain Design and Management. Journal of Business Logistics, 34(2), 77–84. https://doi.org/10.1111/jbl.12010

Weiss, A. (2018). Big-Data-Shocks-An-Introduction-to-Big-Data-for-Librarians-and-Information-Professionals. Rowman & Littlefield Publishers. Retrieved from https://rowman.com/ISBN/9781538103227/Big-Data-Shocks-An-Introduction-to-Big-Data-for-Librarians-and-Information-Professionals

West, D. M. (2012). Big data for education: Data mining, data analytics, and web dashboards. Governance Studies at Brookings, 4, 1–0.

Willis, J. (2013). Ethics, Big Data, and Analytics: A Model for Application. Educause Review Online. Retrieved from https://docs.lib.purdue.edu/idcpubs/1

Wixom, B., Ariyachandra, T., Douglas, D. E., Goul, M., Gupta, B., Iyer, L. S., … Turetken, O. (2014). The current state of business intelligence in academia: The arrival of big data. CAIS, 34, 1.

Wu, X., Zhu, X., Wu, G. Q., & Ding, W. (2014). Data mining with big data. IEEE Transactions on Knowledge and Data Engineering, 26(1), 97–107. https://doi.org/10.1109/TKDE.2013.109

Wu, Z., Wu, J., Khabsa, M., Williams, K., Chen, H. H., Huang, W., … Giles, C. L. (2014). Towards building a scholarly big data platform: Challenges, lessons and opportunities. In IEEE/ACM Joint Conference on Digital Libraries (pp. 117–126). https://doi.org/10.1109/JCDL.2014.6970157

 

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more on big data





evaluate IT in K12

New Ways to Evaluate School Technologies to Save Money & Boost Efficiencies

https://event.on24.com/wcc/r/1483433/3117E1766D64897841ED782BEEFC3C83?mode=login&email=pmiltenoff@stcloudstate.edu

Please join me September 20 for a free webinar where Dr. Sheryl Abshire, CTO of Calcasieu Parish SD and a recognized leader in K-12 technology, shares her insights on the top strategies, best practices and most valuable ideas that can reduce IT departmental costs and increase efficiencies.

What: New Ways to Measure & Leverage the Value of IT
When: 09/20 @ 2:00 PM ET | 11:00 AM PT

Register Now

Listen in and learn how to:
·         Use data you already collect to justify needs and resources
·         Create a new value proposition for IT
·         Measure the strategic use of IT in the district
·         Determine if your current technology is making the difference you expected

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My notes from the webinar:
Gartner: K12 technology ; http://www.gartner.com/technology/research/content/education.jsp

https://www.schooldude.com/ Tech support costs in K12 increased by 50% in the last four years from 14% to 21% of the technology budget. One half of the school technology leaders said that their school board understands that technology relates to district oveall goals , it is not as supportive financially. Worse, 8% felt that the school board does not believe technology is important to their district overall goals

Harvard Business Report Driving Digital Transformation. 2015 surveyed digital leaders. Driving innovation most important role breaking down internal silos

https://hbr.org/resources/pdfs/comm/RedHat/RedHatReportMay2015.pdf

  • align technology with educational mission of the school district
  • show value
  • eliminate silos
  • look for cost savings
  • other investments with long-term savings
  • transformational strategies
  • engage community – bond issues, levies, and other funding

consortium for school networking: 10 concepts http://www.nmc.org/organization/cosn/

virtualization; data deluge; energy and green IT; complex resource tracking; consumerization and social software; unified communications; mobile and wireless; system density; mashups and portals; cloud computing

what is a quick recovery?

Action plan: 1. Focus on virtualization and green IT for immediate cost and flexibility benefits. 2. Look at storage virtualization, deduplication and thin provisioning. 3. Evaluate web social software to transform interactions 4. exploit mashups and cloud-based services to address immediate user needs. 5. link UC to collaboration and enterprise applications to support growth initiatives. 6. begin to track weak signals and subtle patterns – from everywhere.


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SchoolDude – Josh Green, Application Engineer, josh.green@schooldude.com

  • lack of budget and staff
  • managing upkeep and replacement of growing number of devices
  • time
  • perception gap (what we are doing)

tool: Insight
agentless network discovery mechanism. scanning of devices on the network. optimize hard software usage, improve planning and budgeting process with status reporting.

MDM (mobile device management). supports both BYOD and school devices. control app distribution across the network, supervise device usage, remotely manage device policy

Helpdesk: complete ticket to close helpdesk solution

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Q&A time

technology facilitators: spend time at assigned schools; talk to teacher and try to figure out what teachers know about technology and then work the principal to customize workshops (PLCs) to build the skills based on their skills set. versus technology facilitator at every school. Help them grow their own.

certificate of attendance-Plamen Miltenoff

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more on digital literacy for EDAD in this IMS blog
https://blog.stcloudstate.edu/ims?s=digital+literacy+edad

writing first draft

Writing the First Draft: The No-Nonsense Guide for Authors

  • I go to a quiet room, office, library or coffee shop.
  • Depending on where I am, I brew/order a cup of coffee.
  • I disconnect my computer from the internet.
  • I put my phone in airplane mode.
  • I open up Scrivener.
  • I arrange the outline for the chapter in question.
  • I set a timer for 30 minutes.
  • I write, keep my fingers moving and avoid stopping to edit myself (this is harder than it sounds).
  • When the buzzer sounds, I stand up and take a two-minute break.
  • After this break, I review my outline and notes.

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25 Things About Writing

by Justin McLachlan  http://www.justinmclachlan.com/1670/25-things-writing/

also in: http://pin.it/HwXSc4n

  • Real writing is actually a lot of rewriting.
  • Your friends won’t be as impressed the second time around. Don’t let it stop you.
  • Grammar, punctuation, spelling — it’s okay if all these things come last.
  • First drafts universally suck.
  • Avoid the advice of those who tell you otherwise of #5.
  • Trying to edit while writing is like trying to chop down a tree while you’re climbing it
  • Writing can be lonely. Very, very lonely.
  • Inspiration will never strike when you need it to. Just write. Do the work.
  • Complex construction doesn’t equal complex though. Simplify.
  • Deadlines. Goals. Set them, and stick to them.

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more on proofreading in this IMS blog
https://blog.stcloudstate.edu/ims?s=proofreading
more proofreading techniques for the EDAD doctoral cohort on Pinterest
https://www.pinterest.com/aidedza/doctoral-cohort/

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