Senior Software Development Test Engineer - AI
Quick Summary
About Tekion: Positively disrupting an industry that has not seen any innovation in over 50 years,
Positively disrupting an industry that has not seen any innovation in over 50 years, Tekion has challenged the paradigm with the first and fastest cloud-native automotive platform that includes the revolutionary Automotive Retail Cloud (ARC) for retailers, Automotive Enterprise Cloud (AEC) for manufacturers and other large automotive enterprises and Automotive Partner Cloud (APC) for technology and industry partners. Tekion connects the entire spectrum of the automotive retail ecosystem through one seamless platform. The transformative platform uses cutting-edge technology, big data, machine learning, and AI to seamlessly bring together OEMs, retailers/dealers and consumers. With its highly configurable integration and greater customer engagement capabilities, Tekion is enabling the best automotive retail experiences ever. Tekion employs close to 3,000 people across North America, Asia and Europe.
About the Role
~2 min read- Develop a deep understanding of Tekion’s AI agents, ML models, business domains, and the data that feeds them.
- Own end-to-end quality for the ML models, AI agents, and AI-powered features shipped by the ML Engineering team.
- Design and implement automated testing frameworks for model inference, prompt pipelines, agentic workflows, RAG/retrieval systems, and the APIs that serve them.
- Validate model correctness, accuracy, latency, and behavioral consistency across model versions, prompt changes, and upgrades.
- Define and execute evaluation strategies for AI/LLM-powered capabilities by:
- Creating and curating evaluation datasets (evals) and ground-truth sets
- Measuring response accuracy, relevance, and consistency
- Identifying hallucinations, unsafe outputs, and edge cases
- Building LLM-as-judge and automated scoring pipelines
- Continuously improving evaluation coverage as models and agents evolve
- Use AI/LLMs to accelerate quality engineering — generating test cases, synthetic test data,and automation scaffolding.
- Build regression suites that detect quality drift when models, prompts, embeddings, or training data change.
- Validate integration of ML models and agents into ARC products, including end-to-end flows and fallback behavior.
- Drive root cause analysis for production model and behavioral issues, and partner with ML Engineers on preventive improvements.
- Define quality metrics, guardrails, and automated monitoring to detect model degradation before it impacts customers.
- Champion quality and evaluation engineering best practices across the ML Engineering organization.
- 5–8 years in SDET, quality engineering, or software engineering, with a strong track recordof building test automation frameworks.
- Strong programming skills in Python (preferred for ML tooling) and/or Java, with the ability to write production-quality automation code.
- Hands-on experience testing data-intensive or ML/AI systems — or a strong softwaretesting background with demonstrated ML/LLM fluency.
- Solid understanding of ML concepts: model training and inference, evaluation metrics (precision/recall, F1, etc.), and the non-deterministic nature of model outputs.
- Experience designing evaluation frameworks, or working with eval datasets, benchmarks, or LLM-as-judge approaches.
- Familiarity with LLM/agent concepts — prompting, RAG, embeddings, vector search — and generative failure modes (hallucination, drift, prompt sensitivity).
- Experience with CI/CD, test orchestration, and API/integration testing.
- Strong analytical and debugging skills; comfortable performing root cause analysis across model, data, and code layers.
- Excellent collaboration and communication skills to partner across ML, data, and product teams.
Nice to Have
~1 min read- Experience with ML/eval tooling such as MLflow, Weights & Biases, LangSmith, Ragas, DeepEval, or provider eval suites.
- Experience with cloud platforms (AWS/GCP/Azure) and containerized environments (Docker, Kubernetes).
- Exposure to model observability, drift detection, and production ML monitoring.
- Experience testing agentic systems, tool use, or multi-step LLM workflows.
- Prior experience in a high-scale SaaS or data platform environment.
Tekion is proud to be an Equal Employment Opportunity employer. We do not discriminate based upon race, religion, color, national origin, gender (including pregnancy, childbirth, or related medical conditions), sexual orientation, gender identity, gender expression, age, status as a protected veteran, status as an individual with a disability, victim of violence or having a family member who is a victim of violence, the intersectionality of two or more protected categories, or other applicable legally protected characteristics.
For more information on our privacy practices, please refer to our Applicant Privacy Notice here.
Location & Eligibility
Listing Details
- Posted
- July 9, 2026
- First seen
- July 9, 2026
- Last seen
- July 9, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 67%
- Scored at
- July 9, 2026
Signal breakdown

Tekion Corp is a cloud technology company focused on transforming the automotive retail experience through innovative software solutions.
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