Gen AI Data Analyst

Vallum Associates
London
3 weeks ago
Applications closed

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The Role: Gen AI Data Analyst

Location: London (or) Edinburgh, UK

Position Type: Contract Inside IR35

Remote work option Available: Hybrid (2 Days onsite in a week)

Job Description:

Your responsibilities:

  • Deliver end‑to‑end data analysis using SQL and Python to generate insights, automate processes, and support strategic decision‑making.

  • Build interactive dashboards and visualizations that drive performance tracking and business insights.

  • Develop, finetune, benchmark, and evaluate GenAI/LLM models, including RAG pipelines and robust evaluation frameworks.

  • Design scalable data pipelines, enforce data quality, and implement strong governance aligned to commercial and institutional requirements.

  • Collaborate with business stakeholders to translate business needs into analytical solutions and AI capabilities that deliver measurable value.

    Your Profile

    Essential skills/knowledge/experience:

  • Strong experience in data analysis using Python (Pandas, NumPy) and SQL

  • Good understanding of Generative AI concepts (LLMs, embeddings, prompt engineering)

  • Experience working with structured and unstructured data (text, logs, transaction data)

  • Knowledge of financial crime domains (AML, KYC, transaction monitoring, fraud)

  • Familiarity with AWS data & AI services (Azure OpenAI, Databricks preferred)

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