Data Analyst

Jackson Hogg Ltd
Durham
2 months ago
Applications closed

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Temp Data Analyst – Healthcare Competitor Analysis

Fully Remote | Immediate Start | 4–8 weeks

We need a hands-on data analyst to deliver a focused healthcare competitor analysis project. This is a short-term, fully remote role for someone who can quickly research, analyse and turn findings into clear insight and recommendations.

What you’ll do



Research healthcare competitors: offerings, pricing, USPs, locations, staffing and market presence

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Mine external sources and extract insights from internal data

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Analyse competitor positioning, messaging, value propositions and brand strength

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Review customer journeys and conversion routes, including enquiry/referral touchpoints where possible

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Assess marketing presence across websites, social media and other channels

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Identify target audiences (self-pay, NHS, insurers, solicitors, etc.) and how messaging is tailored

What you’ll need

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Experience in data analysis, market or competitor research

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Healthcare/medical terminology experience strongly preferred

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Strong desk research and synthesis skills

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Able to work independently and move fast

Contract: Temp (4–8 weeks)
Location: Fully remote
Start: Immediate

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