Data Engineer

Insight International (UK) Ltd
Bournemouth
1 month ago
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Data Engineer – AIML, LLM & Python – Bournemouth, UK

Location: Bournemouth, UK
Working arrangement: 5 days in client office
Employment type: Full‑time, FTE/FTC (not contractor)
Start: ASAP


Responsibilities

  • Develop and implement AIML solutions for test automation in the securities processing domain, including test generation, test prioritization, defect triage/reporting, code coverage, and framework migration/setup.
  • Design and deploy solutions using large language models (GPT, Claude) and Retrieval Augmented Generation techniques.
  • Create production‑grade solutions with Docker and Kubernetes; optionally build front‑end components in React.
  • Utilize GitHub Copilot and Python libraries (NLTK, NumPy, Scikit‑learn, Pandas) for model building, training, fine‑tuning, and integration.
  • Apply machine‑learning algorithms (regression, classification, decision trees, KNN, K‑means) to improve testing processes.

Qualifications

  • Bachelor’s degree in Computer Science or related field, or equivalent experience, with demonstrated Data Science & AIML focus on quality assurance.
  • Strong proficiency in Python and large‑language‑model technologies.
  • Hands‑on experience with GitHub Copilot, Docker, Kubernetes, and React builds.
  • Knowledge of AIML algorithms and experience building, training, and fine‑tuning models.
  • Understanding of software‑testing lifecycles, automation frameworks, and SQL.
  • Experience working in Agile environments (sprint planning, backlog refinement, retrospectives).
  • Excellent verbal and written communication skills, able to convey technical concepts to business stakeholders.

Seniority Level

Mid‑Senior


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