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Email

zz337@cam.ac.uk

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Education CV

Lecturer (Assistant Professor) in Law, University of Essex, School of Law, 1/9/2023 - present

Jones Day Fellow, School of Law, Peking University, 21/8/2024 - present

Research Associate, University of Cambridge, Centre for Business Research 1/9/2023 - present

University of Cambridge, Faculty of Law, Doctor of Philosophy (PhD), 2019 - 2024 

Max Planck Institute for Comparative and Private International Law (Hamburg), Exchange Researcher, 07-09/2023

Harvard Law School, Visiting Scholar at the East Asian Legal Studies, 2019 

Harvard Law School, Master of Laws (LLM), 2017 - 2018                                 

Peking University, Law School, Master of Laws (LLM), 2016 - 2019                     

Renmin University of China, Bachelor of Law (LLB) & Bachelor of Business Administration (BA), 2012 - 2016  

 

Other professional experience

Trainee at the European Court of Human Rights, Research Division, Strasbourg, 2016

Legal intern at Clifford Chance LLP antiturst team, Beijing, 2015

 

 

Fields of research

Computational law

Algorithmic and data governance

Law and economics

Regulation and governance

Chinese law and society

 

Research centres and interest groups

 

Law v Algorithmic Governance: China's Social Credit Systems and other Data Experiments

Summary

This dissertation proposes an institutionalist framework and a ‘scaling and layering’ hypothesis to understand the emerging theoretical domain of algorithmic governance. More specifically, the dissertation is concerned with the debate on the relationship between ‘law’ and ‘code’, with law referring here to various accepted or well established forms of text-based legal governance, and code to emerging forms of algorithmic governance, using machine learning and other aspects of artificial intelligence (‘AI’). The dissertation uses China’s Social Credit System (SCS) and other data/code experiments as case studies to test the validity of the proposed framework and hypothesis. 

The contributions made by the dissertation are twofold: (1) theoretical and (2) empirical. Theoretically, the dissertation provides a rationale for viewing law and algorithmic governance as complements of, rather than substitutes for each other. This rationale is to be found in the inherent trade-off which exists between scaling and layering in complex forms of legal and algorithmic governance across extended geographies and populations. Empirically, the dissertation presents new evidence on China’s SCS, providing a more systematic and realistic picture of its development alongside various data experiments at both local and national level, and using the scaling-layering framework to revealing gains and problems from its mode of operation. 

Supervisors

Professor Simon Deakin

Representative Publications

Zuo, Z., (2024). Automated Law Enforcement: An assessment of China’s Social Credit System (SCS) using interview evidence from ShanghaiJournal of Cross-disciplinary Research in Computational Law. 2 (1)

Zuo, Z., (2023). China’s Data Strategies: institutionalisation, activation and layering. In: Global Data Strategies. Editors: Hennemann, C.H. Beck Hart Nomos, 119 - 160.

 

Start Date

Oct 2019

End date

Jul 2024