Senior Data Engineer

Avensys Consulting
Kilmarnock
5 days ago
Create job alert
Overview

Candidates needs to travel to Europe once in a month (European country). Duration: Initially 6 months.

MRO AI Solutions Role Purpose: The Data Engineer / Data Analyst will design, build, and maintain robust data pipelines and architectures to enable AI-driven solutions, ensuring frameworks can scale across all OpCos. This role demands consultancy-level technical depth combined with strong delivery discipline.

Key Responsibilities
  • Discover, connect to, and process data from various sources: relational databases, flat files (CSV, YML, XLS), etc.
  • Identify and remediate data quality/completeness issues.
  • Challenge data provenance and assumptions in legacy data sets compared to current needs.
  • Translate business needs for data presentation and narrative into non-technical KPIs, charts, and dashboards.
  • Create metadata/documentation for all derived outputs.
  • Collaborate with Data Scientists and Visualization specialists to enable advanced analytics.
  • Support integration of MRO AI Solutions operational workflows.
  • Develop and optimize data pipelines for ingestion, transformation, and storage.
  • Ensure data quality, integrity, and security across systems.
  • Implement best practices for scalability and performance in cloud environments.
  • Design data architectures and pipelines that support multi-OpCo deployment, ensuring modularity and interoperability.
Required Skills & Experience
  • Experience in data/business analysis in a product setting.
  • Strong skills in data visualization (PowerBI, Tableau, and/or other dashboarding tools).
  • Strong experience in data processing workflows/tools (SQL, Pandas, etc).
  • Proven ability to understand legacy datasets/pipelines and to evaluate their fitness for new use cases.
  • Comfortable working independently and communicating with non-technical stakeholders.
  • Strong knowledge of data modelling and API integration.
  • Proven experience in developing, testing, and deploying data solutions into production environments, ensuring reliability, scalability, and maintainability beyond proof-of-concept or prototype stages.
  • (Preferred) Expertise in Python, SQL, and modern ETL frameworks.
  • (Preferred) Hands-on experience with cloud platforms (AWS preferred).
  • Familiarity with airline or logistics data domains is a plus.
  • Significant experience in similar roles, with a proven ability to integrate quickly into new teams and deliver immediate value.
  • Candidates must also be prepared to travel internationally during later stages to facilitate group-wide deployment.
Preferred Consulting-Level Competencies
  • Ability to design enterprise-grade data solutions under tight timelines.
  • Strong stakeholder engagement and solution-oriented mindset.
  • Experience in advisory or consulting roles for data engineering projects.
  • Track record of creating high-impact outcomes and driving stakeholder satisfaction from day one.
  • Ability to implement standards and frameworks for scalable data solutions across multiple operating companies.


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