Data Analyst

The Fuel Store
Birmingham
2 weeks ago
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We are seeking a highly skilled and innovative Data Analyst / AI Engineer with deep expertise in Generative AI, Large Language Models (LLMs) and Business Intelligence. The ideal candidate will have a proven track record of designing, collating and deploying data models to create financial value and opportunities for our business. The ideal candidate brings 5+ years of experience delivering end to end data analyst solutions across enterprise technology environments‑to‑end data science solutions across enterprise technology environments


What We’re Looking For

  • A candidate who brings a strong blend of engineering discipline and research-driven innovation
  • A problem-solver who turns complex datasets into insightful business outcomes.
  • An individual comfortable leading AI projects end-to-end from ideation to deployment

Key Responsibilities

  • Analyse large structured and unstructured datasets to extract insights, trends, and business value.
  • Design, build, and optimise AI pipelines, including LLM-powered applications, RAG systems, fine‑tuning workflows.
  • Develop scalable production systems using Python, SQL, NoSQL, APIs for cloud infrastructure (Azure).
  • Develop AI Assistants and automation tools that enhance operational efficiency.

Education & Certifications

Degree Qualified or demonstratable Azure environment experience.


Key Skills & Technologies

Location: Birmingham City Centre


Working arrangement: 4 days a week in the office and 1 day at home


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