Compliance
Compliance Corner: Monetary Authority Of Singapore Explores AI Agents' Impact

The latest compliance news: regulatory developments, punishments, guidance, permissions and authorisations for new product and service offerings.
Monetary Authority of Singapore
Along with a group of financial institutions and fintechs, the
Monetary
Authority of Singapore has published an industry white
paper setting out how AI agents deployed in financial services
can be kept within safe operating bounds as they take on more
autonomous tasks.
The paper, entitled Safeguards for Agentic Finance at
Runtime (SAFR), sets out an industry-developed framework
for allowing AI agents to carry out financial tasks safely,
securely and reliably, MAS said in a recent statement.
The framework was developed under MAS' BuildFin.ai initiative,
which supports responsible development and deployment of AI in
the financial sector.
The publication is the latest sign of how seriously Singapore's
regulator and the Asian city-state's wealth and banking
industry treat the shift from AI as a decision-support tool to AI
as an active, autonomous participant in financial workflows. This
change is particularly relevant for wealth managers and private
banks, which handle sensitive client data and are subject to
strict fiduciary and compliance obligations.
MAS said that as AI agents increasingly carry out tasks
autonomously and at a speed beyond practical human intervention,
financial institutions need real-time safeguards to ensure that
agents' behaviour stays within the mandates, policies and risk
boundaries that firms set for them. The SAFR framework proposes a
set of governance checkpoints that verify and record an AI
agent's proposed actions before it executes a task.
MAS said the framework builds on the AI risk management toolkit
produced under MAS' Project Mindforge. However, it focuses
specifically on how safeguards can be operationalised at the
point where an agent acts, rather than only at the design or
review stage.
Industry participants have already tested the framework across
several use cases, MAS said. These include agent-assisted
payments and treasury operations, where autonomous agents execute
routine transactions within set mandates to cut operational
friction; wealth management and advisory workflows, where AI
agents review documents and produce structured assessments within
narrowly-defined task boundaries to support faster, more
consistent compliance review; and client engagement, where agents
draft client insights and materials within approved content
boundaries, freeing relationship managers and advisors to focus
on higher-value client interaction.
MAS is inviting interested industry partners to join the
BuildFin.ai work group to help shape future iterations of SAFR.
The regulator's recently-announced Future of Finance Institute is
expected to support adoption of the framework by facilitating
industry pilots and sandbox experimentation, giving financial
institutions a route to test and deploy SAFR-aligned solutions
before wider rollout.
Apart from issues such as governance and safeguards in AI,
another topic is the intersection of a client’s data privacy and
AI – and how this is managed.