Data storytelling via augmented reality - Andy Hudson-Smith - Jisc Digital Festival 2014
Big Data for the Social Sciences - David De Roure - Jisc Digital Festival 2014
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Transcript of Big Data for the Social Sciences - David De Roure - Jisc Digital Festival 2014
Big Data for the Social SciencesDavid De Roure, Strategic Adviser for Data Resources @dder
Big Data doesn’t respect disciplinary boundaries
Digital Social Research
theODI.org
Mandy Chessell
The Big Picture
More people
More
mach
ines
Big DataBig Compute
Conventional Computation
“Big Social”Social Networks
e-infrastructure
onlineR&D
Big Data Production& Analytics
deeplyaboutsociety
The f
utu
re
RCUK and Big Data▶ ‘Big data is a term for a collection of datasets
so large and complex that it is beyond the ability of typical database software tools to capture, store, manage, and analyse them. ‘Big’ is not defined as being larger than a certain number of ‘bytes’ because as technology advances over time, the size of datasets that qualify as big data will also increase’ (RCUK)
▶But why do we want it?New forms of data enable us to
1. Answer existing research questions in new ways
2. Ask entirely new research questions
NERC Big Data
...as diverse as our science• From micro- to macro-scale• Many sources:
• Monitoring campaigns• Field sites & sensors• State-of-the-art laboratories• Ships & aircraft• Remote Sensing & EO• Regulator networks• Volunteers/citizen science• Model output
• Long-term and unique!
10µm
100 TB
Big data: time-based media including film, tv, cctv footage - retail data - geospatial data - email and social media - images and associated metadata - performance data including raw data of recordings, choreography, performance structure - open government data - music - large-scale digital scans - library, museum & gallery archives and metadata
Research benefits of new data▶Undertaking research on pressing policy-related
issues without the need for new data collection
• Food consumption, social background and obesity
• Energy consumption, housing type and climatic conditions
• Rural location, private/public transport alternatives and incomes
• School attainment, higher education participation, subject choices, student debt and later incomes
▶New data such as social media enable us to ask big questions, about big populations, and in real time – this is transformative
Big Data Network
Phase 1 and 2
E-i
nfr
ast
ruct
ure
Leaders
hip
C
ounci
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Mandy Chessell
F i r s t
Interdisciplinary and “in the wild” *
“in it” versus “on it”
Nigel Shadbolt et al
Real life is and must be full of all kinds of social constraint – the very processes from which society arises. Computers can help if we use them to create abstract social machines on the Web: processes in which the people do the creative work and the machine does the administration... The stage is set for an evolutionary growth of new social engines. The ability to create new forms of social process would be given to the world at large, and development would be rapid.
Berners-Lee, Weaving the Web, 1999 (pp. 172–175)
The Order of Social Machines
Some Social Machines
SOCIAM: The Theory and Practice of Social Machines is funded by the UK Engineering and Physical Sciences Research Council (EPSRC) under grant number EPJ017728/1 and comprises the Universities of Southampton, Oxford and Edinburgh. See sociam.org
Edwards, P. N., et al. (2013) Knowledge Infrastructures: Intellectual Frameworks and Research Challenges. Ann Arbor: Deep Blue. http://hdl.handle.net/2027.42/97552
Web as
lensWeb as artefact
Web as
infrastructure
Web Observatorieshttp://www.w3.org/community/webobservatory/
Big data elephant versus sense-making network?
The challenge is to foster the co-constituted socio-technical system on the right i.e. a computationally-enabled sense-making network of expertise, data, models and narratives.
Iain Buchan
Join the W3C Community Group www.w3.org/community/rosc
Jun Zhao
www.researchobject.org
Pip Willcox
Take homes
▶New forms of data enable us answer old questions in new ways and to answer entirely new questions
▶There are multiple shifts occurring:– Volumes of data– Realtime analytics– Computational infrastructure– Dataflows vs datasets (and curation
infrastructure)– Correlation vs causation– Increasing automation– Machine-to-Machine in Internet of Things
www.oerc.ox.ac.uk/people/dder
@dder
Slide and image credits: Fiona Armstrong, Christine Borgman, Iain Buchan, Mandy Chessell, Neil Chue Hong, Nigel Shadbolt, Pip Willcox, Jun Zhao, Guardian newspaper
www.oerc.ox.ac.uk
[email protected]@dder