Data Analyst - AWS

Test Yantra
Southminster
6 days ago
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Overview

Role: Data Analyst


Employment: Contract - Inside IR35


Location: West Drayton, Waterside, UK


Key Responsibilities

  • Analyse, transform, and validate large datasets to support business intelligence, analytics, and AI-driven use cases.
  • Develop and optimise lightweight data pipelines for data ingestion, transformation, and reporting, with a focus on analytics readiness rather than heavy engineering.
  • Ensure high standards of data quality, consistency, integrity, and security across analytical datasets.
  • Collaborate closely with Data Scientists, business analysts, and client stakeholders to enable advanced analytics and reporting.
  • Design and maintain analytical data models that support reporting, dashboards, and downstream consumption.
  • Leverage AWS services to support scalable, secure, and high-performing analytics solutions.
  • Support integration of MRO AI solutions into client operational workflows by preparing, validating, and analysing relevant datasets.
  • Contribute to data architecture designs that enable multi-OpCo deployments with modular, reusable analytical components.

Required Skills & Experience

  • Strong hands-on experience in Data Analysis, with at least 70% of recent work focused on analytics, reporting, and insights rather than pure data engineering.
  • Advanced proficiency in SQL for data analysis, validation, and performance optimisation.
  • Strong programming experience in Python for data analysis, transformation, and automation.
  • Excellent hands-on experience with AWS, particularly services used for analytics and data processing (e.g., S3, Athena, Glue, Redshift, Lambda, EMR).
  • Solid understanding of data modelling for analytics, including fact/dimension design and reporting-friendly schemas.
  • Experience integrating and consuming data via APIs and external data sources.
  • Proven experience delivering production-grade data and analytics solutions, beyond proof-of-concept stages.
  • Ability to quickly onboard into new teams and deliver value in fast-paced environments.


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