<p><p>One of the most challenging issues for the intelligent decision systems is to effectively manage the large-scale complex distributed environments such as computational clouds, grids, ad hoc and P2P networks, under the different types of users, their relations, and real-world uncertainties. In
The Distributed Classroom (Learning in Large-Scale Environments)
โ Scribed by David Joyner, Charles Isbell
- Publisher
- MIT Press
- Year
- 2021
- Tongue
- English
- Leaves
- 361
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
A vision of the future of education in which the classroom experience is distributed across space and time without compromising learning. What if there were a model for learning in which the classroom experience was distributed across space and time--and students could still have the benefits of the traditional classroom, even if they can\x27t be present physically or learn synchronously? In this book, two experts in online learning envision a future in which education from kindergarten through graduate school need not be tethered to a single physical classroom. The distributed classroom would neither sacrifice students\x27 social learning experience nor require massive development resources. It goes beyond hybrid learning, so ubiquitous during the COVID-19 pandemic, and MOOCs, so trendy a few years ago, to reimagine the classroom itself.
David Joyner and Charles Isbell, both of Georgia Tech, explain how recent developments, including distance learning and learning management systems, have paved the way for the distributed classroom. They propose that we dispense with the dichotomy between online and traditional education, and the assumption that online learning is necessarily inferior. They describe the distributed classroom\x27s various delivery modes for in-person students, remote synchronous students, and remote asynchronous students; the goal would be a symmetry of experiences, with both students and teachers able to move from one mode to another. With The Distributed Classroom, Joyner and Isbell offer an optimistic, learner-centric view of the future of education, in which every person on earth is turned into a potential learner as barriers of cost, geography, and synchronicity disappear.
โฆ Table of Contents
Contents
Series Foreword
Preface on COVID-19
I: WHERE WE ARE NOW
1: The Classic Dichotomy
The Distributed Classroom
Arenโt These Just Hybrid Classrooms?
Arenโt These Just MOOCs?
Toward a Spectrum
Structure of this Book
Who This Book Is For
What This Book Is Not
2: Place and Time
The Time/Space Matrix
Expanding the Matrix
3: Progress So Far
Traditional Distance Learning
Learning Management Systems
Shareable Classes
Distributed Co-Location
Emergency Remote Classrooms
The Distributed Model
II: WHAT WE DO NEXT
4: The Distributed Classroom Matrix
The Expanded Time/Space Matrix
Distributed Classroom Scenarios
Asynchronous Co-Locatedness?
5: Symmetry
A Fully Distributed Classroom
Symmetry in the Distributed Classroom Matrix
The Distributed Church
6: Practical Considerations
Technology
Staff
Applicability
III: THE PLACES WEโLL GO
7: From Stopgap to Snowball
PostโCOVID-19
Place Barriers
Cost Barriers
Time Barriers
8: The Distributed Campus
The Remote Campus
The Online Campus
The Connected Campus
9: Fears, Risks, and Other Scary Words
Teacher Employment
The Mega-University
Centralization, Standardization, and Imperialism
Reichโs Intractable Dilemmas
10: Lifelong Learning for All
Goals
Methods
Outcomes
Acknowledgments
Notes
Preface
Chapter 1
Chapter 2
Chapter 3
Chapter 4
Chapter 5
Chapter 6
Chapter 7
Chapter 8
Chapter 9
Index
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