AI (QA) Automation Engineer

Harnham - Data and Analytics Recruitment
London, United Kingdom
2 weeks ago
£50,000 – £65,000 pa

Salary

£50,000 – £65,000 pa

Job Type
Permanent
Work Location
Hybrid
Seniority
Mid
Education
Degree
Posted
11 May 2026 (2 weeks ago)

Benefits

Competitive salary Comprehensive benefits package Hybrid working Opportunity to shape QA strategy Exposure to modern AI-assisted practices Technical ownership and progression

AI (QA) Automation Engineer

Location: London (2 days in office)

Salary: Up to £65,000 + benefits

This role stands out for its genuine focus on AI-native quality engineering. You will join a team that is actively redesigning how QA works in a world of fast development cycles, complex data, and increasing automation, with AI tools like Claude, GitHub Copilot and similar assistants embedded into daily workflows rather than treated as add-ons.

The Company

They are a technology-led business operating in a highly data-driven financial environment, building a modern web platform that aggregates and analyses complex information to deliver clear, actionable insights for users. Working in small, cross-functional squads, they value thoughtful engineering, clean architecture and continuous improvement. The organisation is scaling its desktop web platform to match and extend existing mobile capabilities, creating an exciting phase of platform growth.

The Role

You will play a central role in shaping an automation-first, AI-assisted QA function within a product squad.

Key responsibilities include:

  • Designing and building automated test coverage for a desktop web platform and its supporting backend services.
  • Creating and evolving an automation framework from the ground up, with scalability and maintainability in mind.
  • Using AI tools such as Claude, GitHub Copilot and IDE-native assistants to accelerate test creation, refactoring and coverage.
  • Exploring agentic QA concepts, including autonomous test generation and execution with human review and policy setting.
  • Testing APIs, integrations and data pipelines in a complex, data-heavy environment.
  • Running regression and change-impact testing across core systems and third-party integrations.
  • Improving data quality assurance and confidence as new features are released.

Your Skills & Experience

  • Strong commercial experience in QA automation across web, API and backend systems.
  • A clear automation-first mindset, with a track record of reducing manual testing.
  • Hands-on experience with modern automation tools such as Selenium or Playwright and testing frameworks like JUnit.
  • Good understanding of web technologies including HTML, CSS, JavaScript and modern frontend frameworks.
  • Experience working with CI/CD pipelines, Jira and agile delivery teams.
  • Active use of AI tools in your engineering workflow, beyond basic code completion, for example test generation, synthetic data creation, debugging or log analysis.
  • Interest in, or exposure to, agentic or autonomous testing workflows where AI handles execution and humans focus on oversight and quality policy.

What They Offer

  • Competitive salary and comprehensive benefits package.
  • Hybrid working with regular collaboration in a London office.
  • The opportunity to shape QA strategy and architecture in a growing platform.
  • Exposure to modern AI-assisted and agentic engineering practices.
  • Clear scope for technical ownership and progression as the platform scales.

How to Apply

If you are excited by AI-native QA and want to help redefine how quality is delivered in modern engineering teams, apply now to learn more.

Related Jobs

View all jobs

AI Application/Big Data Engineer

ARM London, United Kingdom
Hybrid

AI Engineer - FDE (Forward Deployed Engineer)

Databricks United Kingdom
Remote

AI Platform Engineer (DevOps / MLOps Focus)

The Portfolio Group London, United Kingdom
£80,000 pa On-site

AI Agentic Engineer X 3

Adria Solutions Manchester, United Kingdom
£50,000 – £85,000 pa Hybrid

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Where to Advertise Data Engineering Jobs in the UK (2026 Guide)

Where to advertise data engineering jobs UK in 2026: the specialist boards and channels that reach Spark, dbt, Snowflake and platform engineering talent. Data engineers occupy a distinct discipline that sits between software engineering, data science and cloud infrastructure — and the strongest candidates identify firmly with the data engineering community rather than with adjacent roles. General job boards consistently conflate data engineering with data analysis, data science and BI development, producing high application volumes but low candidate quality for specialist pipeline and platform roles. This guide, published by DataEngineeringJobs.co.uk, covers where to advertise data engineering roles in the UK in 2026, how the main platforms compare, what employers should expect to pay, and what the data says about hiring across different role types.

Data Engineering Jobs UK 2026: What to Expect Over the Next 3 Years

Data Engineering Jobs UK 2026: roles, salaries and the trends shaping UK data engineering hiring over the next three years — Spark, dbt, lakehouse and AI. Data engineering has become one of the most strategically important disciplines in the entire technology sector — and one of the most reliably in-demand. Every organisation that wants to use data to make decisions, train AI models, personalise products, manage risk, or understand its customers depends on data engineers to build the infrastructure that makes any of that possible. Without well-designed, reliable data pipelines, the most sophisticated machine learning model is worthless and the most ambitious analytics strategy is undeliverable. That foundational importance has made data engineering hiring remarkably resilient through the technology market corrections of the past few years. Where headcount reductions fell heavily on some engineering disciplines, demand for data engineers held firm — because the work of building and maintaining data infrastructure cannot be deferred in the way that some product development can. The data keeps coming. The pipelines need to work. But the data engineering jobs market of 2026 is not simply a stable version of what it was three years ago. The discipline has undergone a series of architectural shifts — from batch to streaming, from on-premise data warehouses to cloud-native lakehouses, from hand-rolled pipelines to declarative transformation frameworks, and most recently toward AI-augmented data engineering workflows that are beginning to reshape what the role looks like in practice. The employers hiring data engineers today are asking for a meaningfully different skill set than those hiring three years ago. The candidates who will thrive over the next three years are those who understand where the discipline is heading — which architectural patterns are becoming standard, which technologies are defining the modern data stack, and how the definition of a data engineering career is evolving toward a richer intersection of infrastructure, analytics, and AI enablement. This article breaks down what the UK data engineering jobs market is likely to look like through to 2028 — covering the titles emerging right now, the technologies driving employer demand, the skills that will matter most, and how to position your career ahead of the curve.