The Senior Data Scientist will be responsible for translating business problems into data-driven and AI-enabled solutions. The role requires strong expertise in data analysis, machine learning, data engineering, and stakeholder engagement, while working closely with data engineering, AI platform, and observability teams.

Key Responsibilities

  • Translate business problems into data-driven and AI-enabled solutions
  • Perform exploratory data analysis to uncover patterns, issues, and opportunities
  • Design, build, and maintain data pipelines to support analytics and modelling use cases
  • Develop, train, evaluate, and iterate on machine learning and AI models
  • Apply appropriate model evaluation techniques and define success metrics
  • Support operational data workflows and resolve day-to-day data processing issues when required
  • Produce clear dashboards, reports, and visualisations for stakeholders
  • Communicate insights, model behaviour, and recommendations to both technical and business audiences
  • Collaborate closely with data engineering, AI platform, and observability teams to productionise solutions
  • Contribute to best practices around data quality, governance, and responsible use of AI

RequirementsEssential Skills

  • Excel, SQL, PowerBI, AWS and quicksight
  • Data analysis, exploration, and feature engineering (EDA)
  • Strong applied statistics and machine learning foundations
  • Python-based data science and ML stack (e.g. pandas, NumPy, scikit-learn, PyTorch / TensorFlow)
  • Data engineering skills: ETL design, batch and streaming data processing
  • Experience with distributed data systems (e.g. Kafka, Spark or equivalent)
  • SQL and structured / semi-structured data querying
  • Experiment design, model evaluation, and validation techniques
  • Dashboarding, reporting, and data visualisation
  • Business problem translation and requirements understanding
  • Version control and collaborative development (Git)

Advantageous Skills

  • MLOps practices (model packaging, deployment pipelines, monitoring awareness)
  • Data governance principles (data quality, lineage, ownership, compliance awareness)
  • Model evaluation, performance tracking, and drift detection concepts
  • Cloud-based data and ML environments (Azure / AWS)
  • Generative AI and LLM-based solution experience
  • AI agent or advanced prompting familiarity
  • Experience collaborating with observability and platform engineering teams
  • Domain-specific knowledge aligned to business use cases

Desired Skills:

  • Excel
  • SQL
  • PowerBI
  • AWS
  • Quicksight

Desired Qualification Level:

  • Degree

About The Employer:


Learn more/Apply for this position