Binding Authority Account Manager - Data Analyst (Broker)

Bruin Financial & Professional Services
London
3 weeks ago
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Hybrid Account Manager / Analytical Storyteller

Insurance | Delegated Authority | Commercial Analytics

This role sits within a market lead Programmes team at one of London’s marquee Insurance broking houses. I am keen to speak with insurance professionals who have worked in Delegated / Binding Authority business who are client focused and detail orientated…

This is a Hybrid role, merging detailed Account Management and Analytical Storyteller sitting at the intersection of data, distribution, and commercial decision-making.

This role is designed for someone who enjoys working with data and people — turning complex performance information into clear, compelling narratives for insurers, partners, and senior stakeholders.

The Role

You’ll act as a commercially focused, account-facing analyst, responsible for interpreting performance data and shaping it into presentation-ready insights for a range of audiences, including:

• Insurers and capacity providers

• Clients and distribution partners

• Senior internal stakeholders, including executive leadership

This is not a pure data role and not a traditional account management role — it’s a true hybrid.

Key responsibilities include:

• Analysing portfolio and performance data and identifying meaningful trends

• Translating insight into clear stories, visuals, and presentations

• Suppor...

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