Data Engineer

AECOM
Bridgwater
1 day ago
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Overview

Work with Us. Change the World. At AECOM, we're delivering a better world. We are the world’s trusted infrastructure consulting firm, partnering with clients to solve complex challenges and build legacies for future generations. With accelerating infrastructure investment worldwide, our services are in great demand. We invite you to bring bold ideas and join a global team delivering projects that create a positive and tangible impact around the world.


AECOM is seeking an experienced Data Engineer to play a key role in designing, delivering, and optimising data platforms and solutions across a wide range of projects. You will deliver components of the data solution lifecycle, ensure solutions adhere to standard quality metrics (scalability, security, resilience, etc.), and design data-driven architectures that deliver insights and value. Your work will support AECOM’s mission to deliver innovative and sustainable solutions to clients. You will work closely with Data Analysts, Data Scientists, and cross‑functional digital teams, supporting analytics use cases and occasionally contributing to light data-science activities such as feature engineering, exploratory analysis, or model operationalisation.


Key Responsibilities

  • Develop concepts through the solution lifecycle, ensuring scalability and optimisation while considering cost.
  • Oversee end-to-end data processes such as ingestion, transformation, modelling, and integration across multiple external, facing projects.
  • Demonstrate that solutions have met client performance, quality, security, and governance expectations.
  • Collaborate with cross-functional data teams to gather client requirements.

Quality, Governance & Operational Excellence

  • Work closely with Data Analysts and Data Scientists to support analytical projects, including feature engineering and big data analysis activities.
  • Collaborate with project managers, architects, and technical teams to ensure seamless integration of data solutions within wider digital ecosystems.
  • Uphold data engineering best practices including code quality, testing, CI/CD, and documentation standards.
  • Adhere to project data governance controls, including metadata management, access controls, data lineage, PII protection, and compliance with organisational and regulatory requirements.
  • Develop monitoring and alerting strategies for data solutions, maintaining high availability, performance, and reliability.
  • Troubleshoot complex issues across infrastructure, data solutions, and custom analytical products.

Innovation, Prototyping & Continuous Improvement

  • Continuously explore new cloud capabilities, data platforms, and modern data stack tools to drive innovation within the team.
  • Foster a culture of knowledge-sharing, standardisation, and collaborative team practices.

Qualifications

Minimum requirements:



  • Bachelor’s degree in Computer Science, Engineering, Mathematics, or a related field (or equivalent professional experience).
  • 3+ years of experience in data engineering or data science fields, preferably in infrastructure, environmental, or urban development sectors.
  • Professional experience designing and delivering cloud-based data engineering solutions at scale.
  • Advanced proficiency in at least one programming language commonly used in data engineering (Python preferred; Scala, Java, or C# also beneficial).
  • Strong SQL skills and deep understanding of relational databases, non-relational stores, and data warehouse principles.
  • Solid experience with data modelling methodologies (dimensional modelling, star/snowflake schemas, data vault, etc.).
  • Strong grounding in analytical workflows and support for data-science activities (feature engineering, data preparation, exploratory analysis).
  • Experience designing and operating ETL/ELT pipelines and modern workflow orchestration tools (e.g., Apache Airflow, Azure Data Factory, Azure Functions).
  • Practical experience with CI/CD, version control (Git), testing frameworks, and DevOps practices.
  • Understanding of APIs, REST principles, and data integration patterns.
  • Experience implementing data quality, validation, and observability frameworks.

Preferred qualifications:



  • Professional certifications in cloud platforms (AWS, Azure, or GCP).
  • Experience with cloud-native data services (Databricks, Synapse Analytics, BigQuery, Redshift, Snowflake) and distributed processing frameworks (Apache Spark, Kafka, Flink).
  • Familiarity with data visualisation and BI requirements to support downstream consumers.
  • Exposure to advanced analytics frameworks (scikit-learn, MLflow).
  • Proficiency in containerisation and IaC (Docker, Kubernetes, Terraform, Bicep).

Soft Skills

  • Good communication skills with the ability to simplify technical concepts for non-technical audiences.
  • Strong analytical mindset, with the ability to identify issues, propose solutions, and make architecture recommendations.
  • A proactive, experimental, and continuous learning approach to emerging technologies.
  • Strong organisational skills and the ability to manage multiple tasks in parallel.

Additional Information

Note: For this position we are not able to provide visa sponsorship. The selected candidate must be able to obtain security clearance. We are an Equal Opportunity Employer. We provide a wide array of compensation, benefits and well-being programs to meet the diverse needs of our employees and their families. All information will be kept confidential according to EEO guidelines.



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