Lead Data Analyst - Geospatial

Fruition Group
Leeds
8 months ago
Applications closed

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Lead Data Analyst - Geospatial
Leeds, West Yorkshire
Hybrid Working - 3 days onsite per week

An innovative and insight-led organisation with a growing data function is seeking a talented Lead Data Analyst - Geospatial to drive spatial analytics and insight across a range of commercial, retail, and strategic initiatives.

The Lead Data Analyst - Geospatial will be responsible for delivering high-impact location-based insights, managing one analyst, and shaping the use of spatial data across the business. You'll work closely with senior stakeholders to support decisions around network optimisation, marketing strategy, customer insight, and business transformation.

Alongside overseeing spatial analytics projects, you'll take a hands-on role in delivering ad hoc analysis and data science work, building geospatial models, and ensuring insight is clearly communicated and commercially relevant.

Lead Data Analyst - Geospatial - Key Requirements:

* Proven experience in a geospatial, spatial analytics, or location insight role
* Strong skills in SQL and / or Python
* Experience with GIS / Geospatial tools such as Esri ArcGIS or similar
* Track record of applying geospatial analysis in commercial or strategic environments
* Ability to engage and influence senior, non-technical stakeholders
* Comfortable scoping and owning insight projects from end to end
* Some experience leading, mentoring or supporting junior team members

Lead Data Analyst - Geospatial - Benefits:

* Highly competitive basic salary
* Company car / car allowance - circa £6k
* 12% company bonus
* Enhanced contributory pension
* Flexible working location and hours
* Private medical scheme
* 25 days holiday
* Free onsite parking
* Additional flexible perks

If you're a commercially-minded data or analytics professional with a strong grasp of geospatial concepts and looking to step up into a Lead Data Analyst role with real business impact, this could be the ideal next move.

We are an equal opportunities employer and welcome applications from all suitably qualified persons regardless of their race, sex, disability, religion/belief, sexual orientation, or age.

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