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Synthetic Data Anti-Money Laundering Detection Project Report

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Summary

The FCA, in collaboration with the Alan Turing Institute and Plenitude Consulting, has published a research note on a synthetic dataset designed to foster innovation in anti-money laundering detection. The dataset combines real UK retail banking data with synthetic money laundering scenarios. The FCA will make this dataset available through its Digital Sandbox as part of a Synthetic Data AML Solution Sprint, with applications closing on 26 April 2026.

What changed

The FCA has published a research note on a synthetic dataset for AML detection, developed jointly with the Alan Turing Institute and Plenitude Consulting. The dataset combines real UK retail banking data with synthetic money laundering scenarios. This is an informational research publication describing the project and inviting participation.

Affected parties including financial institutions and technology firms may apply to participate in the upcoming Synthetic Data AML Solutions Sprint, where they will use the synthetic dataset to demonstrate how AI and new technologies can support financial crime detection. Applications close on 26 April 2026.

What to do next

  1. Monitor FCA Digital Sandbox for dataset availability
  2. Apply for Synthetic Data AML Solutions Sprint by 26 April 2026

Archived snapshot

Apr 15, 2026

GovPing captured this document from the original source. If the source has since changed or been removed, this is the text as it existed at that time.


- Financial crime

Research Note: Synthetic Data and Anti-Money Laundering – Project Report

Research notes First published:

15/04/2026

Last updated: 15/04/2026
This report summarises the work we have done, jointly with the Turing Institute and Plenitude Consulting, to generate a synthetic data set that will be used to foster innovation in the detection of money laundering.


Read the research note (PDF)

Progress in combatting money laundering depends on access to detailed financial data, yet legal and privacy constraints often restrict sharing of such information.

This project aims to tackle these challenges by collaborating with the Alan Turing Institute, Plenitude, and Napier AI to create a fully synthetic dataset created using real data from UK retail banking, enhanced with realistic synthetic money laundering scenarios observed in financial markets.

We hope this project will show that synthetic data can help regulators and firms work together, supporting beneficial innovation in the detection of money laundering.

Next steps

The FCA will make this dataset available through the Digital Sandbox as part of the upcoming Synthetic Data AML Solution Sprint, inviting firms to take part to demonstrate how new technologies such as AI can help in the fight against money laundering. Participants will use the data throughout the sprint and reconvene to share insights on how synthetic data can support innovation in the fight against financial crime.

Further details for firms that wish to apply for the Data Sprint can be found here – applications close on 26 April 2026.

Authors

Leo Gosland, Henrike Mueller, Olivia Kearney, Stratis Limnios, Paul Mclear.

Disclaimer

Research notes contribute to the work of the FCA by providing rigorous research results and stimulating debate. While they may not necessarily represent the position of the FCA, they are one source of evidence that the FCA may use while discharging its functions and to inform its views. The FCA endeavours to ensure that research outputs are correct, through checks including independent referee reports, but the nature of such research and choice of research methods is a matter for the authors using their expert judgement. To the extent that research notes contain any errors or omissions, they should be attributed to the individual authors, rather than to the FCA.

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Financial crime Financial Crime Information Network (FIN-NET) Office for Professional Body Anti-Money Laundering Supervision (OPBAS)

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Last updated

Classification

Agency
FCA
Published
April 15th, 2026
Instrument
Notice
Legal weight
Non-binding
Stage
Final
Change scope
Minor

Who this affects

Applies to
Banks Technology companies Financial advisers
Industry sector
5221 Commercial Banking 5222 Fintech & Digital Payments 5112 Software & Technology
Activity scope
AML detection Synthetic data research Financial crime innovation
Geographic scope
United Kingdom GB

Taxonomy

Primary area
Anti-Money Laundering
Operational domain
Compliance
Compliance frameworks
BSA/AML
Topics
Data Privacy Financial Services Cybersecurity

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