Open data ecosystems: what models to co-create service innovations in
smart cities?
- URL: http://arxiv.org/abs/2312.00060v1
- Date: Wed, 29 Nov 2023 16:26:39 GMT
- Title: Open data ecosystems: what models to co-create service innovations in
smart cities?
- Authors: Arthur Sarazin (UGA, CERAG)
- Abstract summary: What models can be imagined to stimulate the collective co-creation of services between smart cities' stakeholders acting as providers and users of open data?
What models for the municipalities such as Lisbon to lean on so as to drive this cutting-edge type of service innovation?
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: While smart cities are recently providing open data, how to organise the
collective creation of data, knowledge and related products and services
produced from this collective resource, still remains to be thought. This paper
aims at gathering the literature review on open data ecosystems to tackle the
following research question: what models can be imagined to stimulate the
collective co-creation of services between smart cities' stakeholders acting as
providers and users of open data? Such issue is currently at stake in many
municipalities such as Lisbon which decided to position itself as a platform
(O'Reilly, 2010) in the local digital ecosystem. With the implementation of its
City Operation Center (COI), Lisbon's municipality provides an Information
Infrastructure (Bowker et al., 2009) to many different types of actors such as
telecom companies, municipalities, energy utilities or transport companies.
Through this infrastructure, Lisbon encourages such actors to gather, integrate
and release heterogeneous datasets and tries to orchestrate synergies among
them so data-driven solution to urban problems can emerge (Carvalho and Vale,
2018). The remaining question being: what models for the municipalities such as
Lisbon to lean on so as to drive this cutting-edge type of service innovation?
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