Published online by Cambridge University Press: 31 October 2019
Big Data is now permeating environmental law and affecting its evolution. Data-driven innovation is highlighted as a means for major organizations to address social and global challenges. We present various contributions of Big Data technologies and show how they transform our knowledge and understanding of domains regulated by environmental law – environmental changes, socio-ecological systems, sustainable development issues – and of environmental law itself as a complex system. In particular, the mining of massive data sets makes it possible to undertake concrete actions dedicated to the elaboration, production, implementation, follow-up, and adaptation of the environmental targets defined at various levels of decision making (from the international to the subnational level).
This development calls into question the traditional approach to legal epistemology and ethics, as implementation and enforcement of rules take on new forms, such as regulation through smart environmental targets and securing legal compliance through the design of technological artefacts. The entry of Big Data therefore requires the development of a new and specific epistemology of environmental law.
This contribution is part of a collection of articles growing out of the conference ‘Global Environmental Law’, held at the Strathclyde Centre for Environmental Law and Governance (SCELG), University of Strathclyde, Glasgow (United Kingdom (UK)), 4–5 Sept. 2017.
We thank Elisa Morgera and Francesco Sindico for the invitation to join the conference ‘Global Environmental Law’, and for the invitation to participate in this Symposium Collection. We are grateful to the two TEL referees for their valuable suggestions, which greatly improved this paper.
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107 Hildebrandt & Koops, n. 92 above, p. 428. See also Leenes, R., ‘Framing Techno-Regulation: An Exploration of State and Non-State Regulation by Technology’ (2011) 5(2) Legisprudence, pp. 143–69CrossRefGoogle Scholar.
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110 Preliminary Draft Opinion dated 14 May 2008 of the European Economic and Social Committee (EESC) on ‘The Proactive Law Approach: A Further Step towards Better Regulation at EU Level’, EESC INT/415.
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