Looking before we leap? Ethical review processes for AI and data science research

Hosted by the Ada Lovelace Institute

Research in the fields of artificial intelligence (AI) and data science is often quickly turned into products and services that affect the lives of people around the world. Research in these fields is used in the provision of public services like social care, determining which information is amplified on social media, what jobs or insurance people are offered, and even who is deemed a risk to the public by police and security services.

Since products and services built with AI and data science research can have substantial effects on people’s lives, it is essential that this research is conducted safely and responsibly, and with due consideration for the broader societal impacts it may have.

However, the traditional research governance mechanisms that are responsible for identifying and mitigating ethical and societal risks often do not address the challenges presented by AI and data science research.

Our recent report explores the role that academic and corporate RECs play in evaluating AI and data science research for ethical issues, and also investigates the kinds of common challenges these bodies face.

The report draws on two main sources of evidence: a review of existing literature on RECs and research ethics challenges, and a series of workshops and interviews with members of RECs and researchers who work on AI and data science ethics.

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