Data Analyst

Spencer - Richardson
Winsford
1 week ago
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Job Title: Data Analyst


Location: Winsford, Cheshire, UK


About

Spencer Richardson is working with a leading technology company delivering AI-powered safety solutions that help prevent collisions, reduce risk, and improve operational safety across industries such as construction, mining, waste and infrastructure. Their solutions combine real-time data capture, advanced analytics and intuitive reporting tools that empower customers to make safety-critical decisions with confidence.


Role Overview

They are looking for a motivated Data Analyst to join their growing data team. You will be instrumental in transforming raw data into meaningful insights that support our safety products, dashboards, operational decision-making and customer reporting. Your work will help deepen their understanding of safety trends, drive product improvements, and deliver measurable value to customers.


Key Responsibilities

  • Collect, clean and validate data from multiple sources (IoT sensors, databases, logs, third-party systems) to ensure accuracy and completeness.
  • Analyse datasets to uncover trends, patterns and insights related to safety performance, system usage, asset behaviour and incident indicators.
  • Develop and maintain dashboards, visualisations and reports using tools such as Tableau, Power BI, Looker or similar.
  • Collaborate with engineering, product and customer success teams to translate data insights into actionable recommendations.
  • Respond to ad-hoc analytical requests and support internal stakeholders with business-critical analysis.
  • Document analytical methods, maintain data dictionaries and ensure reproducible analysis.
  • Present findings to technical and non-technical audiences in a clear, compelling way.

Required Qualifications

  • Bachelor’s degree in Data Science, Statistics, Mathematics, Economics, Computer Science or related field.
  • 2+ years of experience in a data analysis, business intelligence or related role.
  • Strong proficiency with SQL for data querying and manipulation.
  • Experience with data visualisation tools (e.g., Power BI, Tableau, Looker).
  • Solid analytical and problem-solving skills, with an ability to turn data into insights and recommendations.
  • Comfortable working in cross-functional teams and managing multiple priorities.

Preferred Skills

  • Experience working with large datasets, time-series data or telemetry from IoT systems.
  • Familiarity with Python or R for data analysis, scripting and automation.
  • Understanding of statistical methods and A/B testing principles.
  • Previous experience in safety, industrial technology, logistics or related sectors.

If you think this is you, please reach out to for more information.


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