undergo refinement in technology and process. Our
cloud-backed approach to research collaboration has
functioned effectively as well and continues to evolve
as we evaluate new technologies. We believe that both
approaches can already be used as starting points for
other departments and research groups.
Our social-networking-basedapproach to commu-
nity engagement has been well received and, accord-
ing to Google Analytics, drawn more traffic to the de-
partmental website. It has focused on connecting stu-
dents and alumni so far but needs to be extended to
include the various other aspects of this function.
The related work we have surveyed is either de-
scriptive (Lockyer and Patterson, 2008; Hung and
Yuen, 2010), focuses on one particular technol-
ogy (Selwyn, 2009; Roblyer et al., 2010; Ractham
and Firpo, 2011), or proposes to build an educational
social networking site from scratch (Conole and Cul-
ver, 2010). By contrast, our approach focuses on the
integration of existing, mature “best-of-breed” sites.
To understand how our observations relate to on-
going efforts by government agencies to broaden the
participation in computing, further data is needed on
social networking participation across other demo-
graphic aspects besides age, such as gender, ethnic-
ity, level of education. In addition, further data on
social networking participation across different coun-
tries (Mislove et al., 2007) would be useful for gener-
alization across national boundaries.
We conclude by observing that technology con-
tinues to evolve very rapidly. Requirements also tend
to evolve as the target users change with respect to
demographics and use of technology. Therefore in-
formation technology decision makers at the various
levels of an academic organization need to collabo-
rate closely on requirements and evaluate the avail-
able choices very carefully.
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