Delegated Authority Data Governance & Bordereaux Manager

Insight Select
London
3 weeks ago
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Delegated Authority Data Governance & Bordereaux Manager (6-month contract) | £600 - £750 per day (umbrella) | London (Hybrid)
 
A leading insurance organisation is seeking an experienced Delegated Authority professional to lead bordereaux governance, and control uplift during a period of significant volume increase and heightened oversight requirements.
 
Responsibilities

Manage end‑to‑end bordereaux operations, including intake, validation, mapping, reconciliation, and SLA adherence
Strengthen and maintain controls, ensuring audit‑ready governance, accurate documentation, and effective issue/remediation tracking
Oversee renewals and capacity planning, ensuring smooth rollover of mappings, updated data specs, and resource forecasting
Act as the key escalation point for Underwriting, DA Management, Claims, Finance, Compliance, and external partners
Drive process improvement and automation, standardising processes and collaborating with Data/IT to enhance efficiency and data quality 
Skills & Experience

Strong background in Delegated Authority operations, with hands‑on experience managing bordereaux across premium, risk, and claims
Proven ability to implement and enhance control frameworks, including audit preparation and remediation management
Experience managing high‑volume, high‑complexity DA portfolios (including lead accounts)
Skilled in stakeholder management across Underwriting, Operations, Claims, Compliance, Finance, and external partners
Strong data governance experience with the ability to review mapping logic, data transformations, and reconciliation controls 
Package

£600 - £750 per day (umbrella)
12 months minimum
Hybrid working model (3 days office / 2 days WFH)

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