Data Analyst - Consumer Insights

Searchability®
Birmingham
2 days ago
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DATA ANALYST – CONSUMER INSIGHTS


  • Opportunity for a Data Analyst to join an exciting Media and Telecommunications organisation in the Birmingham / Staffordshire area
  • Salary up to £45,000 + some fantastic benefits including hybrid working, a collaborative environment and the Opportunity to grow with the analytics function
  • Apply online or contact Chelsea Hackett via


WHO WE ARE?

Due to continued growth, we’re supporting an established consumer technology business operating a high-volume, data-driven competition platform. The organisation is focused on using data to better understand customer behaviour, improve engagement, and support commercial decision-making as the platform scales.


THE BENEFITS

  • Hybrid and Flexible working model
  • Opportunity to shape analytics tooling and reporting processes
  • Direct exposure to product, marketing, and partner stakeholders
  • Private Healthcare
  • Pension contribution
  • Opportunity to work in a great team environment with complete autonomy
  • A data-rich environment with clear commercial outcomes


THE DATA ANALYST ROLE:

This role sits within a growing analytics function and focuses on building insight into consumer behaviour, purchasing patterns, and customer segmentation. You’ll work hands-on with PostgreSQL databases and external JSON feeds, producing dashboards and bespoke reports for both internal stakeholders and external partners.


You’ll collaborate closely with developers to understand existing data structures, improve data quality, and influence additional tracking where required. The role also involves handling ad-hoc analytical requests, translating business questions into clear, accurate, and commercially meaningful outputs.


This position suits someone with solid hands-on experience who enjoys problem-solving, takes ownership of analysis, and is comfortable working in an environment where analytics tooling is still evolving.


DATA ANALYST ESSENTIAL SKILLS

  • 2–4+ years’ experience in a Data Analyst or similar role
  • Strong SQL skills, with experience using PostgreSQL
  • Experience working with consumer or transactional data
  • Comfortable analysing semi-structured data, including JSON
  • Experience building dashboards and recurring reports
  • Ability to explain analytical findings to non-technical stakeholders
  • High attention to detail and confidence sharing externally facing data


TO BE CONSIDERED:

Please either apply through this advert or email me directly via .


For further information, please call me on 01244 820 457 / 07719 051 923.

By applying for this role, you give express consent for us to process and submit (subject to required skills) your application to our client in conjunction with this vacancy only.


KEY SKILLS

Data Analysis, SQL, PostgreSQL, Consumer Analytics, Customer Segmentation, BI Reporting, Dashboards, JSON, Funnel Analysis, Cohort Analysis

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