Author Archive

A new LITA webinar focused on Youth Programs:

Technology and Youth Services Programs: Early Literacy Apps and More

Tuesday May 20, 2015
1:00 pm – 2:00 pm Central Time
Register now for this webinar

A brand new LITA Webinar on youth and technology.

In this digital age it has become increasingly important for libraries to infuse technology into their programs and services. Youth services librarians are faced with many technology routes to consider and app options to evaluate and explore. Join Claire Moore from the Darien Public Library to discuss innovative and effective ways the library can create opportunities for children, parents and caregivers to explore new technologies.

Claire Moore

Education Market

16 Startups Poised to Disrupt the Education Market

Colleges and universities are facing new competition for customers–students and their parents–from startups delivering similar goods (knowledge, credentials, prestige) more affordably and efficiently. Here’s a rundown of some of those startups.

Related story on the IMS blog:

https://blog.stcloudstate.edu/ims/2014/01/12/cms-course-management-systemsoftware-alternatives/

In a new book, The End of College: Creating the Future of Learning and the University of Everywhere, author Kevin Carey distills a brave new world in which a myriad of lower-cost solutions–most in their infancy–threaten to upend the four-year, high-tuition business model by which colleges and universities have traditionally thrived.

1. Rafter

Using cloud-based e-textbooks and course materials, Rafter helps campus bookstores digitize their offerings and keep their prices low, allowing them to regain the market share they were losing to other stores and course-materials marketplaces.

2. Piazza

Piazza is an online study room where students can anonymously ask questions to teachers and other students. The best answers get pushed to the top through repeated user endorsement.

3. InsideTrack

As do the above two companies, InsideTrack sells its services to universities. It provides highly personalized coaching to students and it helps colleges assess whether their technology and processes are equipped to measure student progress. nsideTrack recently announced a partnership with Chegg, through which it will provide its coaching services directly to students.

4. USEED

If you attended a four-year school, then you know the feeling of receiving relentless requests for alumni donations. USEED is like Kickstarter for school fundraising:

5. Course Hero

One of Inc.‘s 30-Under-30 companies from 2013, Course Hero is an online source of study guides, class notes, past exams, flash cards, and tutoring services.

6. Quizlet

This is another site offering shared learning tools from students worldwide. Quizlet
according to Tony Wan’s superb story on EdSurge.

7. The Minerva Project

Other companies on this list provide services to schools or students. The Minerva Project is, literally, a new school.

8. Dev Bootcamp

In its own way, Dev Bootcamp is also a new school. Its program allows you to become a Web developer after a 19-week course costing under $14,000.

9. The UnCollege Movement

Founded by Thiel Fellow Dale Stephens (who took $100,000 from Peter Thiel to not go to college), The UnCollege Movement provides students with a 12-month Gap Year experience for $16,000.

10. Udacity

Founded by Stanford computer science professor Sebastian Thrun, Udacity creates online classes through which companies can train employees. AT&T, for example, paid Udacity $3 million to develop a series of courses, according to The Wall Street Journal.

11. Coursera

The tagline says it all: “Free online courses from top universities.” Indeed, Coursera’s partners include prestigious universities worldwide.

12. EdX

In a nonprofit joint venture, MIT and Harvard created their own organization offering free online courses from top universities. Several other schools now offer their courses through EdX, including Berkeley, Georgetown, and the University of Texas system.

13. Carnegie Mellon University’s Open Learning Initiative

CMU’s OLI is another example of a nonprofit startup founded by a school to ward off its own potential disruption.

14. Saylor.org

Founder Michael Saylor has been musing on how technology can scale education since he himself was an undergrad at MIT in the early ’80s. Anyone, anywhere, can take courses on Saylor.org for free.

15. Open Badges

Founded by Mozilla, Open Badges is an attempt to establish “a new online standard to recognize and verify learning.”

16. Accredible

Calling itself the “future of certificate management,” Accredible is the company that provides certification services for several of the online schools on this list, including Saylor.org and Udacity.

 

finding a job

per Mashable:

5 can’t-miss apps: LinkedIn Job Search, Launcher, ‘Mr. Jump’ and more

http://mashable.com/2015/03/21/cant-miss-apps-linkedin-job-search-launcher-mr-jump/

a free iOS / Android app: LinkedIn Job Search

Linkedin%20job%20seacrh

LinkedIn finally brought its job-finding app to Google Play this week. The app allows users to search through the network’s many job listings and apply for positions from within the app. When you find a position you’re interested in, you can easily view which of your connections also work at the company.

Keep an eye on: Notification settings — the app will alert you when a new position opens up in a field or company that interests you and will also let you know when a post is about to expire.

Pro-tip: The app’s recommendations improve over time as you search for more positions and view more open listings. It also take into account the experience and skills in your profile so make sure each section of your profile is up to date.

IPython notebook

Library Juice Academy

course_intro

I also encourage students to download and install Python on their own systems. Python is a
mature and robust language with a great many third party distributions and versions, such as Ipython.
One I recommend is Active State Python. Active State produces refined and well supported
distributions with easy to use installers. Their basic, individual distribution is free. You can find it at
http://www.activestate.com/activepython/downloads
https://host.lja-computing.net:8888/notebooks/profile_intro_programming_p1/Intro_Programming_Lesson1_pmiltenoff.ipynb
  • Integers: A signed or unsigned whole number running from -32,768 to 32,768 or from 0 to 65,535 if not signed. Integers are used anytime something needs to be counted.
  • Long Integer: Any whole number outside the above range. Python doesn’t distinguish between the two though many languages do. Practically, Python’s integers range from −2,147,483,648 to 2,147,483,648 or 0 to 0 to 4,294,967,295. Most of us will be very happy with this many whole numbers to choose from.
  • Real and Floating Point Numbers: Real numbers are signed or unsigned numbers including decimals. The numbers 2,3,4 are Integers and Real Numbers. The numbers 2.1, 2.9,3.9 are Real Numbers, but not Integers. Real Numbers can include representations of irrational numbers such as pi. Real numbers must be rational, that is a decimal number that terminates after a finite number of decimals. You will sometimes encounter the term Floating Point Numbers. This is a technical term referring to the way that large Real Numbers are represented in a computer. Python hides this detail from you so Real and Floating Point are used intercangeably in this language.
  • Binary Numbers: And Octal and Hexadecimal. These are numbers used internally by computers. You will run into these values fairly often. For instance, when you see color values in HTML such as “FFFFFF” or “0000FF”,
Hexadecimal and Octal are used because humans can read them without too much trouble and they are compromise between what computers process and what we can read. Any time you see something in Octal or Hexadecimal, you are looking at something that interfaces with the lower levels of a computer. You will most commonly use Hexadecimal numbers when dealing with Unicode character encodings. Python will interpret any number which begins with a leading zero as binary unless formatting commands have been used.
Numbers such as 7i are referred to as complex. They have a real part, the 7, and an imaginary part, i. Chance are you won’t use complex numbers unless you’re working with scientific data.
A String consists of a sequence of characters. The term String refers to how this data type is represented internally. You store text in Strings. Text can by anything, letters, words, sentences, paragraphs, numbers, just about anything.
Lists are close cousins to Strings, though you may never need to think of them that way. A list is just that, a list of things. Lists may contain any number of numbers or any number of strings. List may even contain any number of other lists. Lists are compared to arrays, but they are not the same thing. In most uses, the function the same so the difference, for our purposes, is moot. Strings are like lists in that, internally, the computer works with strings in an identical manner to lists. This is why the operations on Strings are so different from numbers.
The last main data type in the Python programming language is the dictionary. Dictionaries are map types, known in other languages as hashes, and in computer science as Associative Arrays. The best way to think of what the dictionary does is to consider a Library of Congress Call Number(something this audience is familiar with). The call number is what’s called a Key. It connects to a record which contains information about a book. The combination of keys and records, called values, comprises a dictionary. A single key will connect to a discrete group of values such as the items in this record. Dictionaries will be touched on in the next lesson in some detail in the next course. These are fairly advanced data structures and require a solid understanding a programming fundamentals in order to be used properly.

Statements, an Overview

Programs consist of statements. A statement is a unit of executable code. Think of a statement like a sentence. In a nutshell, statements are how you do things in a program. Writing a program consists of breaking down a problem you want to solve into smaller pieces that you can represent as mathematical propositions and then solve. The statement is where this process gets played out. Statements themselves consist of some number of expressions involving data. Let’s see how this works.

An expression would be something like 2+2=4. This expression, however is not a complete statements. Ask Python to evaluate it and you will get the error “SyntaxError: can’t assign to operator”. What’s going on here? Basically we didn’t provide a complete statement. If we want to see the sum of 2+2 we have to write a complete statement that tells the interpreter what to do and what to do it with. The verb here is ‘print’ and the object is ‘2+2’. Ask Python to evaluate ‘print 2+2’ and it will show ‘4’. We could also throw in subject and do something a bit more detailed: ‘Sum=2+2’. In this case we are assigning the value of 2+2 to the variable, Sum. We can then do all sorts of things with Sum. We can print it. We can add other numbers to it, hand it off to a function and so on. For instance, might want to know the root of Sum. In which case we might write something like ‘print sqrt(sum)’ which will display ‘2’.

A shell is essentially a user interface that provides you access to a system’s features. Normally, this means access to an Operating System. In cases like this, the shell provides you access to the Python programming environment.

Anything preceed by a “#” is not interpreted or executed by the programming shell. Comments are used widely to document programs. One school of programming holds that code should be so clear that comments are uncessary.

Operations on Numbers

Expressions are discrete statements in programming that do something. They typically occupy one line of code, though programmers will sometimes squeeze more in. This is generally bad form and can really make your program a mess. Expressions consist of operations and data or rather data and operations on them. So, what can you do with numbers? Here is a concise list of the basic operations for integers and real numbers of all types:

Arithemetic:

  • Addition: z= x + y
  • Subtraction: z = x – y
  • Multiplication: z = x * y. Here the asterisk serves as the ‘X’ multiplication symbol from grade school.
  • Division: z = x/y. Division.
  • Exponents: z = x ** y or xy, x to the y power.

Operations have an order of precedence which follows the algebraic order of precedence. The order can be remembered by the old Algebra mnenomic, Please Excuse My Dear Aunt Sally which is remeinds you that the order of operations is:

  1. Parentheses
  2. Exponents
  3. Multiplication
  4. Division
  5. Addition
  6. Subtraction

Operations on Strings

Strings are strange creatures as I’ve noted before. They have their own operations and the arithmetic operations you saw earlier don’t behave the same way with strings.

Putting Expressions Together to Make Statements

As I noted earlier, all computer languages, and natural languages, possess pragmatics, larger scale structures which reduce ambiguity by providing context. This is a fancy way of saying just as sentences posses rules of syntax to make able to be comprehended, larger documents have similar rules. Computer Programs are no different. Here’s a break down of the structure of programs in Python, in a general sense.

  1. Programs consist of one or more modules.
  2. Modules consist of one or more statements.
  3. Statements consist of one or more expressions.
  4. Expressions create and/or manipulate objects(and variables of all kinds).

Modules and Programs are for the next class in the series, though we will survey these larger structures next lesson. For now, we’ll focus on statements and expressions. Actually, we’ve already started with expressions above. In Python, statements can do three things.

  • Assign a variable
  • Change a variable
  • Take an action

Variable Names and Reserved Words

Now that we’ve seen some variable assignments, let’s talk about best practices. First off, aside from reserved words, variable names can be almost any combination of letters, numbers and punctuation marks. You, however, should never ever, use the following punctuation marks in variable names:

      • +
      • !
      • @
      • ^
      • %
      • (
      • )
      • .
      • ?
      • /
      • :
      • ;

*

These punctuation marks tends to be operators and characters that have special meanings in most computer languages. The other issue is reserved words. What are “reserved words”? They are words that Python interprets as commands. Pythons reservers the following words.:

  • True: A special value set aside for boolean values
  • False: The other special value set aside for boolean vaules
  • None: The logical equivalent of 0
  • and: a way of combining logical conditions
  • as: describes how modules are imported
  • assert: a way of forcing something to take on a certain value. Used in debugging of large programs
  • break: breaks out of a loop and goes on with the rest of the program
  • class: declares a class for object oriented design. For now, just remember not to use this variable name
  • continue: returns to the top of the loop and keeps on going again
  • def: declares functions which allow you to modularize your code.
  • elif: else if, a cotnrol structure we’ll see next lesson
  • else: as above
  • except: another control structure
  • finally: a loop control structure
  • for: a loop control structure
  • from: used to import modules
  • global: a scoping statement
  • if: a control structure/li>
  • in: used in for each loops
  • is: a logical operator
  • lamda: like def, but weird. It defines a function in a single line. I will not teach this becuase it is icky. If you ever learn Perl you will see this sort of thing a lot and you will hate it, but that’s just my personal opinion.
  • nonlocal: a scoping command
  • not: a logical operator
  • or: another logical operator
  • pass: does nothing. Used as placeholder
  • raise: raises an error. This is used to write custom error messages. Your programs may have conditions which would be considered invalid based on our business situation. The interpreter may not consider them errors, but you might not want your user to do something so you ‘raise’ an exception and stop the program.
  • return: tells a function to return a value
  • try: this is part of an error testing statement
  • while: starts a while loop
  • with: a context manager. This will be covered in the course after the next one in this series
  • yield: works like return
Variable names should be meaningful. Let’s say I have to track a person’s driver license number. explanatory names like ‘driverLicenseNumber’.

  • Use case to make your variable names readable. Python is case sensitive, meaning a variable named ‘cat’ is different from named ‘Cat’. If you use more than one word to name variable, start of lower case the change case on the second word. For instance “bigCats = [‘Tiger’,’Lion’,’Cougar’, ‘Desmond’]”. The common practice used by programmers in many settings is that variables start with lowercase and functions(methods and so on) start with upper case. This is called “Camel Case” for its lumpy, the humpy appearance. Now, as it happens, there is something of a religious debate over this. Many Python programmers prefer to keep everything lower case and join words in a name by underscores such as “big_cats”. Use whichever is easiest or looks the nicest to you.
  • Variable names should be unique. Do not reuse names. This will cause confusion later on.
  • Python conventions. Python, as with any other programming language, has culture built up around it. That means there are some conventions surrounding variable naming. Two leading underscores, __X, denote system variables which have special meaning to the interpreter. So avoid using this for your own variables. There may be a time and place, but that’s for an advanced prorgramming course. A single underscore _X indicates to other programmers that this a fundamental variable and that they mess with it at their own peril.
  • Avoid starting variable names with a number. This may or may not return an error. It can also mislead anyone reading your program.
  • “A foolish consistency is the hobgoblin of little minds”. But not to programming minds. Consistency helps the readability of code a great deal. Once you start a system, stick with it.

Statement Syntax

Putting together valid statements can be a little hard at first. There’s a grammar to them. Thus far, we’ve mainly been workign with expressions such as “x = x+1”. You can think of expression as nouns. We’ve clearly defined x, but how do we look inside? For that we need to give it a verb, the print command. We would then write “print x”. However we can skip the middle statement and print an expression such as “print x + 1”. The interpreter evaluates this per the order of operations I laid out earlier. However, once that expression is evaluated, it then applies the verb, “print”, to that expression.

Print is a function that comes with the Python distribution. There are many more and you can create your own. We’ll cover that a bit in next lesson. Let’s look at little more at the grammar of a statement. Consider:

x = sin(b)

Assume that b has been defined elsewhere. x is the subject, b is the object and sin is the verb. Python will go to the right side of the equal sign first. It will then go to the inside of the function and evaluate what’s there first. It then evaluates the value of the function and finishes by setting x to that value. What about something like this?

x=sin(x+3/y)

Python evaluates from the inside out according to the rules of operation. Very complex statements can be built up this way.

x = sin(log((x + 3)/(e**2)))
Regardless of what this expression evaluates to (I don’t actually know), Python starts with the innermost parentheses, then works through the value of e squared then adds 3 to x and divides the result by e squared. With that worked out, it takes the logarithm of the result and takessthe sine of that before setting x to the final result.What you cannot do is execute more than one statement on a line. No more than one verb on a line. In this context, a verb is an assignment, or a command acting on an expression
markdown cell
code cell

Call up your copy of Think Python or go to the website at http://www.greenteapress.com/thinkpython/html/. Read Chapter 2. This will reiterate much of what I’ve presnted here, but this will help cement the content into you minds. Skip section 2.6 because IPython treats everything as script mode. IPyton provides you with the illusion of interactive, but everything happens asynchronously. This means that any action you type in will not instantaneously resolve as it would if you were running Python interactively on your computer. You will have to use print statements to see the results of your work.

Your assignment consists of the following:

  • Exercise 1 from Chapter 2 of Think Python. If you type an integer with a leading zero, you might get a confusing error:
    <<< zipcode = 02492

    SyntaxError: invalid token
    Other numbers seem to work, but the results are bizarre:
    <<< zipcode = 02132
    <<< zipcode
    1114
    Can you figure out what is going on? Hint: display the values 01, 010, 0100 and 01000.

  • Exercise 3 from Chapter 2 of Think Python.Assume that we execute the following assignment statements:
    width = 17
    height = 12.0
    delimiter = ‘.’
    For each of the following expressions, write the value of the expression and the type (of the value of the expression).

    width/2
    width/2.0
    height/3
    1 + 2 5
    delimiter
    5

  • Exercise 4 from Capter 2 of Think Python. Practice using the Python interpreter as a calculator:
    1. The volume of a sphere with radius r is 4/3 π r3. What is the volume of a sphere with radius 5? Hint: 392.7 is wrong!
    2. Suppose the cover price of a book is $24.95, but bookstores get a 40% discount. Shipping costs $3 for the first copy and 75 cents for each additional copy. What is the total wholesale cost for 60 copies?
    3/ If I leave my house at 6:52 am and run 1 mile at an easy pace (8:15 per mile), then 3 miles at tempo (7:12 per mile) and 1 mile at easy pace again, what time do I get home for breakfast?

In your IPython notebook Create a markdown cell and write up your exercise in there. Just copy it from the textbook or from the above write up. Next ceate a code cell and do your work in there. Please, comment your work thoroughly. You cannot provide too many comments. Use print statements to see the outcome of your work.

Ontology of “ePortfolio”

Ontology of “ePortfolio”

http://www.aaeebl.org/blogpost/1008436/Batson-Blog

Is it a genre, or a set of practices, or a showcase, or a technology?  Or all four and other descriptions?  What we see most commonly is a definition of the technology affordances that, as I have argued in a previous blog, tend to be minimalist and therefore misleading.

Definitions do tend to be minimalist so that all can agree, at least, on the definition as a starting point.  But, a starting point is not sufficient to convey the cultural and historical significance of “eportfolio.”

from the Association of Authentic, Experiential and Evidence-Based Learning

Webinar, April 17 registration at https://aaeebl.site-ym.com/store/ViewProduct.aspx?id=4259880

LMS as a concept under scrutiny

A Blend-Online listserv thread regarding the choice of LMS and the future of LMS

Schoology HEd – Digital Learning Ecosystem (March 2015) (PDF document)

From: The EDUCAUSE Blended and Online Learning Constituent Group Listserv [mailto:BLEND-ONLINE@LISTSERV.EDUCAUSE.EDU] On Behalf Of Robert Tousignant
Sent: Thursday, April 9, 2015 1:41 PM
To: BLEND-ONLINE@LISTSERV.EDUCAUSE.EDU
Subject: Re: [BLEND-ONLINE] Faculty Involvement in LMS Selection

I’ve been reviewing this thread and thought I’d introduce a new player… Schoology is getting the attention of the analyst community and gobbling up the SIIA Codie awards for best learning platform the last couple of years.  (Please note, I am not an impartial observer and I do a horse in the race)

The attached document includes information that will explain a new paradigm for evaluating an LMS that we see being adopted more and more  – a move from a focus on utility (features and functions) to one focused standards, interoperability and the user experience (UI/UX).

Feel free to reach out directly if I can be of assistance.

Robert Tousignant

Sr. Director

Schoology Higher Education

O:  (212)213-8333 x69

M: (617)838-1366

rtousignant@schoology.com

Colorado State University’s Global Campus Announces Strategic Partnership with Schoology

From: Edward Garay <garay@UIC.EDU>
Reply-To: The EDUCAUSE Blended and Online Learning Constituent Group Listserv <BLEND-ONLINE@LISTSERV.EDUCAUSE.EDU>
Date: Thursday, April 9, 2015 at 2:27 PM
To: BLEND-ONLINE@LISTSERV.EDUCAUSE.EDU” <BLEND-ONLINE@LISTSERV.EDUCAUSE.EDU>
Subject: Re: [BLEND-ONLINE] Faculty Involvement in LMS Selection

These days, I tend to favor LMS Review/Selection initiatives that take one to two years to complete, but as always, it depends on the institution, its readiness to spec the needs of their faculty/students and evaluate viable options, as well as the campus resources available to nurture a possible smooth LMS platform transition. I like pointing out to the well-executed recent LMS selection initiatives carried out by UCF, Northwestern, Indiana, Harvard and Dartmouth, although there are many others.

I am also fond of Educause Review 2014 article on Selecting a Learning Management System: Advice from an Academic Perspective available at http://www.educause.edu/ero/article/selecting-learning-management-system-advice-academic-perspective

 


— Ed Garay
University of Illinois at Chicago
UIC School of Public Health
http://www.twitter.com/garay

*** Attend the FACULTY SUMMER INSTITUTE :: Wed-Fri May 27-29 at Urbana-Champaign
#pedagogy #BlendedLearning #classroom #teaching #OnlineLearning #EdTech
http://go.illinois.edu/facultysummerinstitute

 

_____________________________
From: Hap Aziz <hapaziz@gmail.com>
Sent: Thursday, April 9, 2015 12:30 PM
Subject: Re: [BLEND-ONLINE] Faculty Involvement in LMS Selection
To: <blend-online@listserv.educause.edu>
That’s sounds like a similar timeframe to what we had at UB when we moved from Blackboard to Canvas. While LTI didn’t not play a large role in the decision-making process as we changed our LMS, it is now a central consideration as we look to acquire any new app functionality for our learning environment.

 

I’m setting up an area in the IMS forum area for LTI policy discussion. I’ll share that location with the group shortly so we can take some of the in-the-weeds discussion offline here.

 

Hap Aziz

Associate Vice President

University of Bridgeport

http://bridgeport.edu

 

Connected Learning Innovation Community

IMS Global Learning Consortium

http://imsglobal.org

 

On Wed, Apr 8, 2015 at 3:25 PM, Sam Bachert <BachertS@sanjuancollege.edu> wrote:

Hap,

 

The selection process started in January of 2013 and the task force voted at the end of May of 2013 unanimously for Canvas so about 5 months.  By October we started training faculty in preparation for the Spring 2014 semester what was amazing about our transition to Canvas was that we had everyone moved out of ANGEL by start of Summer 14 so we only had 1 semester where we were supporting both ANGEL and Canvas.  The use of LTI integrations and Canvas makes our jobs a lot easier to support the various tools that faculty are adopting for their classes – it also makes it a lot easier for faculty to integrate other technologies and keep them in the LMS or have single sign on so it is more seamless for students.

 

Thanks, Sam

 

Samuel R. Bachert

Manager, Online Services

 

ellucian®

San Juan College

4601 College Boulevard

Farmington, NM 87402

Voice: 505.566.3310 Mobile: 505.609.0573 Fax: 505.566.3570

bacherts@sanjuancollege.edu * samuel.bachert@ellucian.com

http://www.ellucian.com

Follow us:

CONFIDENTIALITY: This email (including any attachments) may contain confidential, proprietary and privileged information, and unauthorized disclosure or use is prohibited. If you received this email in error, please notify the sender and delete this email from your system. Thank you.

From: The EDUCAUSE Blended and Online Learning Constituent Group Listserv [mailto:BLEND-ONLINE@LISTSERV.EDUCAUSE.EDU] On Behalf Of Hap Aziz
Sent: Tuesday, April 07, 2015 7:09 PM
To: BLEND-ONLINE@LISTSERV.EDUCAUSE.EDU
Subject: Re: [BLEND-ONLINE] Faculty Involvement in LMS Selection

Hey, Sam, long time no see! Do you know about how long your whole selection process took? Also, does LTI conformance make your job with academic technology more straightforward to deal with?

Hap Aziz

Associate Vice President

University of Bridgeport

http://bridgeport.edu

Connected Learning Innovation Community

IMS Global Learning Consortium

http://imsglobal.org

On Thu, Apr 2, 2015 at 1:27 PM, Sam Bachert <BachertS@sanjuancollege.edu> wrote:

JeJe,

I am at San Juan College and we also recently went through the selection process for a new LMS and like others who have commented switched to Canvas (from ANGEL).  We ended up with a selection team that was primarily faculty, a couple students, and a handful of technology staff that reviewed the various LMSs and then made our final decision.  If you would like I can get you the contact information for the faculty who assisted on the selection team.

Thanks,

Sam

Samuel R. Bachert

Director of Academic Technology

ellucian®

San Juan College

4601 College Boulevard

Farmington, NM 87402

Voice: 505.566.3310 Mobile: 505.609.0573 Fax: 505.566.3570

bacherts@sanjuancollege.edu * samuel.bachert@ellucian.com

http://www.ellucian.com

Follow us:

CONFIDENTIALITY: This email (including any attachments) may contain confidential, proprietary and privileged information, and unauthorized disclosure or use is prohibited. If you received this email in error, please notify the sender and delete this email from your system. Thank you.

From: The EDUCAUSE Blended and Online Learning Constituent Group Listserv [mailto:BLEND-ONLINE@LISTSERV.EDUCAUSE.EDU] On Behalf Of Noval, JeJe (LLU)
Sent: Wednesday, April 01, 2015 9:25 PM
To: BLEND-ONLINE@LISTSERV.EDUCAUSE.EDU
Subject: [BLEND-ONLINE] Faculty Involvement in LMS Selection

 

Hello Colleagues,

Were any of you, faculty members, involved in the learning management selection process of your educational institution?  If so, would it be possible to interview you in the future for a research study?

Best,

JeJe Noval, MS, RD
Assistant Professor
Loma Linda University

 

LMS and Social Media

Presentation for the the 2015 MN D2L Ignite Conference.
Please take the survey. Please share your ideas, suggestions, recommendations, corrections

http://www.brightspace.com/events/regional/minnesota/

LMS (D2L) and Social Media: friends or foes? from Plamen Miltenoff

Social_Media_in_LMS from Georgia Southern University

Using Facebook and Twitter as an LMS from jcritten

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