海角社区

News

Exploring Opportunities and Risks of Using Synthetic Data in the Training of AI Models

In a new policy brief, 海角社区 experts analyse the potential of synthetic data to attain sustainable development, especially in the Global South.

Date Published
8 Sep 2023

Exploring the potential of synthetic data to accelerate the achievement of the Sustainable Development Goals (SDGs) through Artificial Intelligence (AI) in the Global South while mitigating their important risks is the objective of a new policy brief authored by Prof. Tshilidzi Marwala, Rector of 海角社区, Dr. Eleonore Fournier-Tombs, Head of Anticipatory Action and Innovation at 海角社区 Centre for Policy Research (海角社区-CPR), and Dr. Serge Stinckwich, Head of Research at 海角社区 Macau. 

As the three experts point out, synthetic data – information created by computer simulations or algorithms that reproduce some structural and statistical properties of real-world data – “offer numerous opportunities, such as rebalancing biased datasets, protecting data privacy, and reducing the cost of data collection”. But the use of synthetic data, they note, also poses “many risks”, such as issues related to “data quality, cybersecurity, misuse, bias propagation, IP infringement, data pollution and data contamination”. 

Addressing such potential and concerns in the policy brief titled “The Use of Synthetic Data to Train AI Models: Opportunities and Risks for Sustainable Development”, Prof. Tshilidzi Marwala, Dr. Eleonore Fournier-Tombs and Dr. Serge Stinckwich propose “an early step in standardising the use of synthetic data”, by outlining technical standards to be adopted by software developers, as well as defining recommendations for policymakers. 

You can download the full policy brief here.

Related content

Media Coverage

AI agents in global governance: digital representation for unheard voices

Eduardo Albrecht explains how Artificial Intelligence is shaping multilateral decision-making in Columbia University's Multilateralism in Action blog.

17 May 2025

SeminarPapersICEGOV_EGOV

Seminar

Reviewing Papers for ICEGOV | Online Seminar

-