Full Job Description
Mid-Level AI Software Test Engineer | Ann Arbor, Michigan, United States
Mid-Level AI Software Test Engineer
Position Summary
We are seeking a Mid-Level AI Software Test Engineer to lead the quality assurance, validation, and automation efforts for AI-powered applications, machine learning systems, AI agents, copilots, and generative AI solutions. This role combines traditional software quality engineering practices with emerging AI testing methodologies to ensure AI systems are accurate, reliable, secure, scalable, and production-ready.
The ideal candidate has a strong foundation in software testing and automation, along with experience or exposure to AI technologies such as Large Language Models (LLMs), Retrieval-Augmented Generation (RAG), AI agents, Model Context Protocol (MCP) integrations, and machine learning platforms. This role plays a critical part in establishing AI quality standards, evaluation frameworks, governance controls, and automated testing capabilities across the AI development lifecycle.
Professional Experience:
3-6 years of software quality engineering, QA automation, or software testing experience.
1-3 years of experience or practical exposure to AI, machine learning, or generative AI technologies preferred
Work Style:
This role is expected to operate with moderate independence, owning AI testing initiatives from planning through execution while collaborating closely with engineers, architects, product teams, and stakeholders to deliver high-quality AI solutions.
Mid-Level AI Software Test Engineer
(Also known as: AI Quality Engineer, Generative AI Test Engineer, AI Automation Engineer, AI Validation Engineer, SDET-AI)
Key Responsibilities
AI Quality Engineering
Develop and execute comprehensive testing strategies for AI applications, platforms, and services.
Validate AI-generated outputs for accuracy, consistency, relevance, reliability, and safety.
Design and perform functional, integration, end-to-end, regression, and performance testing for AI-powered solutions.
Create and maintain test cases for prompt-driven applications, AI agents, RAG systems, and workflow orchestration platforms.
Validate AI guardrails, business rules, permissions models, compliance requirements, and governance controls.
Conduct adversarial, negative, and edge-case testing to identify hallucinations, unsafe behavior, model drift, and failure scenarios.
Establish quality benchmarks and acceptance criteria for AI solutions.
Test Automation & Evaluation
Design, build, and maintain automated test frameworks for AI applications and services.
Develop automated evaluation pipelines to assess AI responses, workflows, and model behavior.
Integrate AI testing processes into CI/CD pipelines.
Implement automated quality scoring, benchmarking, and regression detection capabilities.
Create reusable test datasets, simulators, mocks, and validation frameworks to support scalable testing.
Platform & Integration Testing
Test AI agents, copilots, APIs, workflow engines, MCP integrations, and tool-calling capabilities.
Validate integrations with enterprise systems, external APIs, databases, and knowledge repositories.
Verify performance, reliability, scalability, resiliency, and availability of AI workloads.
Execute load, stress, and performance testing for AI applications and services.
Identify, document, and troubleshoot defects across application, infrastructure, model, and integration layers.
Collaboration & Continuous Improvement
Partner closely with software engineers, AI engineers, solution architects, product owners, and security teams.
Participate in solution design reviews and provide quality-related recommendations early in the development lifecycle.
Contribute to testing standards, methodologies, best practices, and AI quality frameworks.
Support production readiness reviews, defect triage, root cause analysis, and continuous improvement initiatives.
Promote responsible AI practices and help ensure alignment with organizational governance, privacy, risk, and compliance requirements.
Required Qualifications
Bachelor's degree in Computer Science, Software Engineering, Information Systems, or a related technical field.
3-6 years of experience in software testing, quality assurance, quality engineering, or test automation.
Experience developing automated testing solutions using one or more of the following:
Python
Java
JavaScript / TypeScript
C#
Experience with API testing and automation frameworks.
Strong understanding of:
Test automation methodologies
Software Development Lifecycle (SDLC)
Agile development practices
CI/CD pipelines and DevOps principles
Experience testing distributed systems, web applications, APIs, and enterprise platforms.
Strong analytical, troubleshooting, and problem-solving skills.
Excellent verbal and written communication skills.
Preferred Qualifications
Experience testing:
Generative AI applications
LLM-based systems
AI agents and autonomous workflows
Retrieval-Augmented Generation (RAG) solutions
MCP-based integrations
Familiarity with leading AI platforms and models, including:
OpenAI
Azure OpenAI
Anthropic Claude
Google Gemini
Experience developing AI evaluation, benchmarking, and validation frameworks.
Experience testing cloud-native applications on:
Microsoft Azure
Amazon Web Services (AWS)
Google Cloud Platform (GCP)
Knowledge of:
Responsible AI principles
AI governance frameworks
AI risk management and compliance practices
Privacy and security considerations for AI systems
Required Skills : • Experience testing: o Generative AI applications o LLM-based systems o AI agents o RAG applications o MCP-based integrations • Familiarity with: o OpenAI o Claude o Gemini o Azure OpenAI • Experience building evaluation and benchmarking frameworks for AI solutions. • Experience testing cloud-native applications on Azure, AWS, or GCP. • Knowledge of responsible AI, AI governance, and AI risk management practices. AI initiatives are typically expected to align with enterprise governance, risk, privacy, and compliance requirements. Technical Skills
Basic Qualification :
Additional Skills :
Background Check : Yes
Drug Screen : No
Notes :
Selling points for candidate :
Project Verification Info :
Exclusive to Client :Yes
Face to face interview required :No
Candidate must be local :No
Candidate must be authorized to work without sponsorship :Yes
Interview times set :Yes
Type of project :
Master Job Title :
Branch Code :