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Regnology Extends Ascend Platform with Agentic AI to Operationalise Continuous Regulatory Intelligence

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Regnology has expanded its Ascend platform with an agentic AI layer and deeper integration of its Regnology Supervisory Hub (RSH), positioning the platform as a unified environment for both regulatory reporting and supervisory oversight. The update builds on Ascend’s initial rollout in late 2025, which focused on data governance, automation and workflow orchestration across regulatory reporting processes.

The latest iteration shifts the emphasis from workflow automation to adaptive, intelligence-led operations. By embedding AI agents directly into the platform, Regnology is aiming to move reporting processes away from periodic, rules-based execution towards continuous monitoring and decision support. These agents are designed to manage workflows, analyse regulatory data and generate context-specific insights on an ongoing basis, operating on the firm’s unified regulatory data (RGD) model.

This architecture is consistent with broader industry moves towards granular, data-centric regulatory reporting, where consistency of underlying data models becomes a prerequisite for automation at scale. In this context, Ascend’s reliance on a single data foundation is intended to support both institutional reporting and supervisory consumption without duplication or transformation across systems.

The integration of RSH into the Ascend platform extends this model to regulators. Workflow agents are applied across supervisory processes such as data collection, validation and examination, while analytics agents surface key risk indicators and interpret outputs ranging from granular data points to narrative reports. The result is a more continuous oversight approach, where supervisory activities are embedded into the same data and workflow infrastructure used by reporting firms.

Regnology frames this as a step towards its long-standing Straight-Through-Reporting (STR) vision, in which regulatory reporting becomes a largely automated, end-to-end process supported by standardised data, embedded controls and real-time analytics. The addition of agentic AI introduces a layer of orchestration that can dynamically adjust workflows and prioritise risk signals, rather than relying on static reporting cycles.

“Our position at the nexus of risk, regulation, and finance gives Regnology a unique vantage point to support the industry’s evolution,” said Rob Mackay, CEO of Regnology. “Our next-gen Ascend platform is the engine of a paradigm shift transforming compliance into a single strategic command centre where high-quality data, continuous insight, and intelligent orchestration converge.”

The emphasis on convergence between reporting and supervision is notable. By extending the same AI-enabled infrastructure to both sides of the regulatory relationship, the platform aligns with emerging supervisory expectations around data lineage, transparency and near real-time access to granular information. This mirrors regulatory initiatives globally that are moving away from template-based submissions towards direct consumption of firm-level data.

“Ascend was designed as the foundation for a new era of regulatory reporting —bringing automation, transparency, and intelligence to the core of the financial operating model,” said Linda Middleditch, Chief Product Officer at Regnology. “By extending agentic AI to both regulators and the regulated on a trusted RGD data backbone, we empower the industry to move from reactive reporting to continuous intelligence for faster decisions and more resilient oversight.”

Regnology said it will progressively migrate its broader solution set onto the Ascend platform, indicating a longer-term strategy to consolidate its regulatory reporting, risk and finance capabilities within a single, AI-enabled architecture. For firms, the practical implication is a continued shift towards platforms that combine data standardisation, workflow automation and supervisory alignment—reducing fragmentation across reporting regimes while increasing expectations around data quality and control.

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