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QA Data Science Engineer

30+ days ago 2026/07/15
Other Business Support Services
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Job description

Come work at a place where innovation and teamwork come together to support the most exciting missions in the world!


Job Description 



We are seeking a Data Science focused QA engineer to develop next-generation Security Analytics products. You will work closely with Data scientists,engineersand product managers to design andoptimizeAI driven security solutions. 



AsQAengineer, the ideal candidate has a strong background in Backend engineering, system integrations,ML,AIand data pipelines.



Responsibilities (QA Engineer – Data Science / ML)



  • Establish QA best practices for Traditional ML and Generative AI workflows, including:



  • Functional and regression testing of ML pipelines usingpytestand Airflow/Dagstertest utilitiesand API testing tools (e.g., Postman,pytest-httpx).



  • Validate data contracts, schemas, and API compatibility across services usingPandera, and custom validation rules.



  • Model behavior validation (input/output ranges, invariants, edge cases) using NumPy, SciPy, and statistical assertions



  • Runtime and performance testing for inference latency, throughput, and resource usage using Locust, k6, or custom load tests.



  • Integrate ML-specific tests into CI/CD pipelines using GitHub Actions, GitLab CI, or Jenkins, alongside containerized workflows (Docker, Kubernetes).



  • Implement LLM-specific testing, including:



  • Prompt and response validation, determinism checks, and regression testing usingLangSmith.



  • Evaluation of hallucinations, toxicity, and policy adherence using LLM-as-a-judge and/orrule-based checks.



  • Cost, token usage, and timeout monitoring for GenAI workflows



  • Verify logging, monitoring, and alerting for ML services using Prometheus, Grafana, and cloud-native observability tools.



Requirements:



  • BS or MS in Computer Science or a related field.



  • 2-5 years of experience in Dataor MachineLearning projects.



  • Familiarity and experienceof GenAI applicationsand tools -PyTorchLangChainvLLM etc.



  • Demonstrates a commitment to continuous learning in this rapidly evolving field.



  • Tools listed inthe responsibilitiessection.



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