Senior Data Engineer

LT Harper - Cyber Security Recruitment
Sheffield
1 day ago
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Overview

Senior Data Platform Engineer (Azure | Terraform Expert)


Location: Remote / London Office if preferred


Type: Contract £750 a day (Inside IR35) - Initial 3 month


About the Role


We are seeking a Senior Data Platform Engineer with deep, hands-on Terraform expertise to design and build enterprise-grade Azure infrastructure using Infrastructure as Code as a core discipline.


This role is not a generalist cloud engineering position — it requires someone who can lead Terraform design, create highly reusable modules, manage complex state and environments, and embed security, governance, and observability directly into code. You will be a key technical authority for Terraform across our Azure Data and AI platforms.


What You’ll Be Doing

In this role, you will:



  • Own and lead Terraform-based infrastructure design for Azure, ensuring scalability, security, and compliance by default.
  • Develop and maintain advanced Terraform modules, standards, and patterns used across multiple teams and environments.
  • Automate Azure platform deployments using Terraform, including:

    • Azure Data Factory
    • Synapse Analytics
    • Data Lake & Storage
    • Key Vault
    • Azure networking and AI/ML services


  • Implement and manage Terraform state, backends, workspaces, and strategies for drift detection and remediation.
  • Build and maintain CI/CD pipelines (Azure DevOps, GitHub Actions) with Terraform plan/apply workflows, approvals, and policy enforcement.
  • Embed observability (monitoring, logging, alerting) directly into infrastructure code.
  • Design and implement secure-by-design architectures, including:

    • Private Endpoints and private networking
    • Managed identities and Key Vault integration
    • Application Gateways and network security controls


  • Act as a Terraform subject-matter expert, supporting and mentoring engineers and influencing platform standards.
  • Work closely with data engineers, architects, and stakeholders to enable reliable Azure data and AI platforms.

What We’re Looking For

Essential Experience (Must-Have):



  • 5+ years in Platform or Cloud Engineering, with a strong focus on Azure.
  • Expert-level Terraform experience, including:

    • Advanced HCL usage and module authoring
    • Remote state management and backends
    • Environment and workspace strategy
    • Lifecycle management and dependency orchestration
    • Handling large, multi-environment Terraform estates


  • Proven experience deploying Azure Data Platform services using Terraform:

    • Azure Data Factory
    • Data Lake / Storage
    • Synapse Analytics
    • AI / ML services


  • Strong experience building Terraform-driven CI/CD pipelines using Azure DevOps, GitHub Actions, or similar.
  • Proficiency in PowerShell, Bash, or Python for automation and tooling.
  • Deep understanding of Azure networking, IAM, and security, including private endpoints and app gateways.
  • Experience implementing governance, security controls, and observability through code.
  • Strong communication skills and confidence operating in a senior, stakeholder-facing role.

Desirable Certifications

  • HashiCorp Terraform Associate (004) or Terraform Professional
  • AZ-400 (Azure DevOps Engineer)
  • Azure certifications such as:

    • Azure Solutions Architect
    • Azure Administrator



For more information on this role, please apply online with your CV.


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