Artificial intelligence for the public sector: opportunities and challenges of cross-sector collaboration

Author:

Mikhaylov Slava Jankin1ORCID,Esteve Marc23,Campion Averill3

Affiliation:

1. Institute for Analytics and Data Science, School of Computer Science and Electronic Engineering, and Department of Government, University of Essex, Colchester CO4 3AD, UK

2. School of Public Policy, University College London, London WC1E 6BT, UK

3. Department of Strategy and General Management, ESADE, Ramon Llull University, 08022 Barcelona, Spain

Abstract

Public sector organizations are increasingly interested in using data science and artificial intelligence capabilities to deliver policy and generate efficiencies in high-uncertainty environments. The long-term success of data science and artificial intelligence (AI) in the public sector relies on effectively embedding it into delivery solutions for policy implementation. However, governments cannot do this integration of AI into public service delivery on their own. The UK Government Industrial Strategy is clear that delivering on the AI grand challenge requires collaboration between universities and the public and private sectors. This cross-sectoral collaborative approach is the norm in applied AI centres of excellence around the world. Despite their popularity, cross-sector collaborations entail serious management challenges that hinder their success. In this article we discuss the opportunities for and challenges of AI for the public sector. Finally, we propose a series of strategies to successfully manage these cross-sectoral collaborations. This article is part of a discussion meeting issue ‘The growing ubiquity of algorithms in society: implications, impacts and innovations’.

Funder

HEFCE Catalyst Fund #E10, and the MINECO

Publisher

The Royal Society

Subject

General Physics and Astronomy,General Engineering,General Mathematics

Reference74 articles.

1. HM Government. 2017 Industrial strategy: building a Britain fit for the future . Industrial Strategy Artificial Intelligence Sector Deal. White Paper. See https://www.gov.uk/government/publications/artificial-intelligence-sector-deal/ai-sector-deal.

2. Mazoni J. 2018 Civil service transformation. [Speech] London School of Economics. 24 January 2018.

3. Society TR. 2017 Machine learning: the power and promise of computers that learn by example (April 2017). See https://royalsociety.org/~/media/policy/projects/machine-learning/publications/machine-learning-report.pdf (accessed 20 May 2018).

4. An organizational perspective to funding science: Collaborator novelty at DARPA

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