SDET - Test Automation AI (Agentic & LLM Systems) - Perm - Circa 85K - 2 days a week in Glasgow
** DUE TO BACKGROUND CHECKS WE CAN ONLY ACCEPT APPLICANTS WHO HAS 3 YEARS UK ADDRESS HISTORY **
Role Overview
We are seeking an SDET - Test Automation AI (Agentic & LLM Systems) to define and implement assurance approaches for AI-enabled systems.
The role focuses on ensuring that AI solutions are reliable robust explainable secure and fit for purpose across their full lifecycle.
The AI Assurance Engineer will assure both:
- Probabilistic components (data models and AI outputs)
- Deterministic components (software integrations and infrastructure)
and will embed assurance into automated end-to-end delivery pipelines.
This role requires a strong understanding of how to assure AI systems holistically rather than deep specialism in a single discipline.
Key Responsibilities
AI Assurance Strategy
- Define and implement an AI assurance approach aligned to business risk and regulatory expectations.
- Provide assurance coverage across the full AI system lifecycle (design build deploy operate).
- Work with engineering data and product teams to embed quality and risk controls early.
Probabilistic Component Assurance
- Design validation approaches for:
- Data quality and bias
- Model and prompt behaviour
- Output accuracy relevance and consistency
- Implement evaluation methods for:
- Drift and instability
- Hallucination and error patterns
- Support human-in-the-loop review where required.
Deterministic Component Assurance
- Assure non-AI system elements including:
- Application logic and workflows
- APIs and integrations
- Security and access controls
- Design and execute:
- Functional testing
- Non-functional testing (performance resilience scalability)
- Security and data protection validation
Automation & E2E Assurance
- Design & build automated assurance for AI systems.
- Integrate assurance into CI/CD and deployment pipelines.
- Implement regression and quality gates across data models and orchestration workflows.
- Maintain an end-to-end assurance pipeline from input data through to system outputs.
Operational AI & Observability
- Support monitoring and observability for AI-enabled systems in production.
- Analyse operational signals such as:
- Latency and failures
- Behaviour changes
- Performance degradation
- Contribute to incident analysis and continuous improvement of AI services.
Governance Risk & Reporting
- Define and track AI quality and risk metrics (accuracy robustness explainability).
- Support compliance with:
- Data protection and privacy requirements
- Responsible AI principles
- Produce clear assurance evidence for technical and non-technical stakeholders.
Required Skills & Experience
Core
- Strong software engineering background (Python or similar).
- Experience building automated test or validation frameworks.
- Experience working with complex distributed or cloud-based systems.
AI & Probabilistic Systems
- Understanding of:
- Data quality and bias
- Model behaviour and non-deterministic outputs
- Prompt-based or agent-based systems
- Experience validating correctness consistency and relevance of AI outputs.
Deterministic Systems & Non-Functional Testing
- Experience testing:
- APIs and workflows
- Cloud services
- Knowledge of:
- Performance testing
- Security testing
- Resilience and failure handling
Operational AI (MLOps / AIOps Awareness)
- Familiarity with:
- Model lifecycle management
- CI/CD for AI systems
- Monitoring and drift detection
- Understanding of production risks associated with AI systems.
Remote Work :
No
Employment Type :
Full-time
SDET - Test Automation AI (Agentic & LLM Systems) - Perm - Circa 85K - 2 days a week in Glasgow** DUE TO BACKGROUND CHECKS WE CAN ONLY ACCEPT APPLICANTS WHO HAS 3 YEARS UK ADDRESS HISTORY **Role OverviewWe are seeking an SDET - Test Automation AI (Agentic & LLM Systems) to define and implement assur...
SDET - Test Automation AI (Agentic & LLM Systems) - Perm - Circa 85K - 2 days a week in Glasgow
** DUE TO BACKGROUND CHECKS WE CAN ONLY ACCEPT APPLICANTS WHO HAS 3 YEARS UK ADDRESS HISTORY **
Role Overview
We are seeking an SDET - Test Automation AI (Agentic & LLM Systems) to define and implement assurance approaches for AI-enabled systems.
The role focuses on ensuring that AI solutions are reliable robust explainable secure and fit for purpose across their full lifecycle.
The AI Assurance Engineer will assure both:
- Probabilistic components (data models and AI outputs)
- Deterministic components (software integrations and infrastructure)
and will embed assurance into automated end-to-end delivery pipelines.
This role requires a strong understanding of how to assure AI systems holistically rather than deep specialism in a single discipline.
Key Responsibilities
AI Assurance Strategy
- Define and implement an AI assurance approach aligned to business risk and regulatory expectations.
- Provide assurance coverage across the full AI system lifecycle (design build deploy operate).
- Work with engineering data and product teams to embed quality and risk controls early.
Probabilistic Component Assurance
- Design validation approaches for:
- Data quality and bias
- Model and prompt behaviour
- Output accuracy relevance and consistency
- Implement evaluation methods for:
- Drift and instability
- Hallucination and error patterns
- Support human-in-the-loop review where required.
Deterministic Component Assurance
- Assure non-AI system elements including:
- Application logic and workflows
- APIs and integrations
- Security and access controls
- Design and execute:
- Functional testing
- Non-functional testing (performance resilience scalability)
- Security and data protection validation
Automation & E2E Assurance
- Design & build automated assurance for AI systems.
- Integrate assurance into CI/CD and deployment pipelines.
- Implement regression and quality gates across data models and orchestration workflows.
- Maintain an end-to-end assurance pipeline from input data through to system outputs.
Operational AI & Observability
- Support monitoring and observability for AI-enabled systems in production.
- Analyse operational signals such as:
- Latency and failures
- Behaviour changes
- Performance degradation
- Contribute to incident analysis and continuous improvement of AI services.
Governance Risk & Reporting
- Define and track AI quality and risk metrics (accuracy robustness explainability).
- Support compliance with:
- Data protection and privacy requirements
- Responsible AI principles
- Produce clear assurance evidence for technical and non-technical stakeholders.
Required Skills & Experience
Core
- Strong software engineering background (Python or similar).
- Experience building automated test or validation frameworks.
- Experience working with complex distributed or cloud-based systems.
AI & Probabilistic Systems
- Understanding of:
- Data quality and bias
- Model behaviour and non-deterministic outputs
- Prompt-based or agent-based systems
- Experience validating correctness consistency and relevance of AI outputs.
Deterministic Systems & Non-Functional Testing
- Experience testing:
- APIs and workflows
- Cloud services
- Knowledge of:
- Performance testing
- Security testing
- Resilience and failure handling
Operational AI (MLOps / AIOps Awareness)
- Familiarity with:
- Model lifecycle management
- CI/CD for AI systems
- Monitoring and drift detection
- Understanding of production risks associated with AI systems.
Remote Work :
No
Employment Type :
Full-time
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