2024-04-18 gouvernance des données et IA

Date de récolte : 2024-04-18-jeudi

Interwoven Realms: Data Governance as the Bedrock for AI Governance

Mon avis :

Stefaan G. Verhulst et Friederike Schüür soulignent dans cet article l'importance cruciale de la gouvernance des données comme fondement de la gouvernance de l'intelligence artificielle. Les auteurs soulignet que la gouvernance efficace de l'IA ne peut exister sans une gouvernance robuste des données, car cette dernière couvre l'ensemble du cycle de vie des données, sur lequel l'IA s'appuie fortement. Ils fournissent six raisons principales pour étayer leur point de vue :

  1. La gouvernance des données englobe tout le cycle de vie des données, partie intégrante de l'IA.
  2. Elle permet le développement de systèmes d'IA responsables et adaptés.
  3. Elle aborde les problèmes que les systèmes d'IA pourraient autrement hériter.
  4. Elle est nécessaire pour établir une licence sociale pour les systèmes d'IA.
  5. Elle est technologiquement agnostique, offrant ainsi une approche plus holistique.
  6. L'implémentation, la normalisation et la codification de la gouvernance des données fournissent des leçons précieuses pour la gouvernance de l'IA.

Les auteurs concluent que la gouvernance des données et la gouvernance de l'IA sont étroitement liées, et que l'échec à intégrer la gouvernance des données dans les discussions sur la gouvernance de l'IA peut ralentir le développement d'une gouvernance significative de l'IA, réduire notre capacité à tirer parti des protections existantes, et contribuer à l'aggravation des inégalités. Ils appellent à renforcer la gouvernance et l'intendance des données pour soutenir et façonner efficacement la gouvernance de l'IA, en soulignant que des mécanismes de gouvernance des données plus forts garantissent une gestion des données responsable, éthique et transparente, essentielle pour le développement de systèmes d'IA dignes de confiance et alignés sur les valeurs sociétales.

Texte complet :

By Stefaan G. Verhulst and Friederike Schüür

In a world increasingly captivated by the opportunities and challenges of artificial intelligence (AI), there has been a surge in the establishment of committees, forums, and summits dedicated to AI governance. These platforms, while crucial, often overlook a fundamental pillar: the role of data governance. As we navigate through a plethora of discussions and debates on AI, this essay seeks to illuminate the often-ignored yet indispensable link between AI governance and robust data governance.

The current focus on AI governance, with its myriad ethical, legal, and societal implications, tends to sidestep the fact that effective AI governance is, at its core, reliant on the principles and practices of data governance. This oversight has resulted in a fragmented approach, leading to a scenario where the data and AI communities operate in isolation, often unaware of the essential synergy that should exist between them.

This essay delves into the intertwined nature of these two realms. It provides six reasons why AI governance is unattainable without a comprehensive and robust framework of data governance. In addressing this intersection, the essay aims to shed light on the necessity of integrating data governance more prominently into the conversation on AI, thereby fostering a more cohesive and effective approach to the governance of this transformative technology.

Six reasons why Data Governance is the bedrock for AI Governance.

1. Data governance covers the full data lifecycle, of which Artificial Intelligence is a part

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2. Data governance enables the development of responsible, fit-for-purpose AI systems.

3. Data governance takes care of issues that AI systems would otherwise inherit.

4. Data governance is required to establish a social license for AI systems.

5. Data governance is technology-agnostic, and thus more holistic in nature

6. The implementation, standardization and codification of data governance provide valuable lessons for AI governance

Conclusion

In summary, effective AI governance cannot exist without robust data governance. Data governance not only provides the necessary infrastructure and guidelines for effective data management but also ensures that these data practices align with ethical standards, legal requirements, and societal expectations. This becomes increasingly important as organizations leverage data for AI and other advanced analytical purposes.

Data governance and AI governance are interwoven. Yet, in public discourse on AI governance, we note a frequent failure to link data to AI governance. This failure may slow the pace of the development of meaningful governance of AI (which some participants in the public discourse on AI governance may have an interest in). It reduces our ability to effectively leverage protections that are already in place, such as national or regional data protection laws and regulations, to address AI risks and potential harms. It puts at risk the development of responsible, fit-for-purpose AI systems. It may contribute to widening inequality; AI system development critically depends on data availability, which is highly asymmetric today.

A more integrated approach, which combines the broad principles of data governance with the specific requirements of individual technologies like AI, IoT, etc., offers a more balanced and effective governance structure. This integrated approach would ensure that while the unique aspects of each technology are addressed, there is also a consistent and overarching framework guiding data-related practices and decisions across all technologies.

Post Script: A call to strengthen Data Governance and Stewardship

Understanding the intrinsic dependence of AI governance on robust data governance, it becomes imperative to amplify global efforts in strengthening data governance frameworks and enhancing the practice of data stewardship. This realization is not just a call to action but a clarion call for a concerted, worldwide initiative to elevate data governance to a level where it can effectively support and shape AI governance. Stronger data governance mechanisms ensure that data, the lifeblood of AI systems, is managed responsibly, ethically, and transparently, thereby laying a foundation for AI systems that are trustworthy and aligned with societal values. Improving data stewardship involves cultivating a culture where data is not only seen as a resource but also as a responsibility, with a focus on its ethical use, protection, and equitable access. As we embrace this interconnectedness, our efforts in fortifying data governance and stewardship will not only benefit AI systems but will also contribute to a more resilient and ethical digital ecosystem, essential for the sustainable progress of technology in society.

About the authors

Dr. Stefaan G. Verhulst is Editor-in-Chief of Data & Policy. In addition, he is co-founder of The GovLab (New York) and The DataTank (Brussels). He is also a Research Professor at New York University.

Dr. Friederike Schüür is Chief of Data Strategy and Data Governance at UNICEF, where she lead efforts to guide the use of data and data technologies to advance human and child rights across UNICEF representation in over 190 countries, including global data strategy and policy development, workforce development for the digital and data future, and advocacy.


This is the blog for Data & Policy (cambridge.org/dap), a peer-reviewed open access journal exploring the interface of data science and governance. Read on for five ways to contribute to Data & Policy.

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