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Agivant Technologies • pune, Maharashtra, India
Role & seniority: QA Engineer AI Engineering (Model Validation & Automation); description inconsistently lists 26 years of experience, while mandatory qualifications cite 2–6 years QA/testing experience.
Programming & automation: Python (hands-on), PyTest, Postman, Robot Framework (or equivalent)
AI/ML context: basic ML/LLM/NLP/CV understanding and evaluation metrics
Testing & CI/CD: API testing, UI testing, CI/CD integration
Performance: load testing tools (JMeter, Locust)
MLOps/ML tooling (preferred): MLflow, Airflow; LLM testing frameworks (Evals, Ragas, LangSmith)
Other: vector databases; major cloud platforms (AWS, GCP, Azure)
Validate AI/ML models for accuracy, fairness, drift; ensure data integrity across datasets and pipelines
Create/execute automated test scripts for APIs, UI, and model inference; perform performance and reliability testing (latency, throughput)
Collaborate with ML engineers, data scientists, and product teams; manage test plans, defects, and quality documentation; integrate tests into CI/CD
2–6 years QA/testing experience (note: text also states 26 years)
Python-based automation; experience with PyTest, Postman, Robot Framework
API testing and CI/CD integration
Foundational ML/LLM/NLP/CV understanding and evaluation metrics
Strong analytical, communication, and problem-solving abilities
Description
Role: QA Engineer AI Engineering (Model Validation & Automation)
Role Overview
The QA Engineer AI Engineering is a specialized technical role requiring 26 years of experience in software testing, with a dedicated focus on validating complex AI/ML models, data pipelines, and AI-driven applications.
This role demands strong automation skills (Python preferred), a good foundational understanding of ML workflows, and expertise in ensuring the quality, performance, and ethical compliance of AI systems.
Job Summary
We are seeking a proactive QA Engineer (26 years experience) with mandatory hands-on experience in automated testing and Python scripting to specialize in AI quality assurance.
The ideal candidate will be responsible for testing AI/ML models for critical factors like accuracy, consistency, and fairness, while also validating associated data pipelines and model outputs.
Key responsibilities include creating and executing automated test scripts for APIs and UI, performing rigorous performance and reliability testing of AI services (latency, throughput), and collaborating directly with ML engineers and data scientists to define robust test scenarios.
Key Responsibilities And Technical Deliverables
Test AI/ML models for critical quality attributes including accuracy, consistency, fairness (bias detection), model drift, and overall production quality. Validate large datasets, data pipelines, and raw/transformed model outputs to ensure data integrity, completeness, and suitability for model training and inference. Apply Basic understanding of ML models, LLMs, NLP/CV systems, and relevant evaluation metrics (e.g., F1-score, perplexity, AUC).
Automation And Performance Testing
Create and execute automated test scripts (Python preferred) for validating API endpoints, user interfaces (UI), and model inference services. Utilize Hands-on experience with Python, automated testing, and QA tools such as PyTest, Postman, Robot Framework, or equivalent. Perform performance and reliability testing of AI services, rigorously measuring critical metrics like latency, throughput, and scalability under load. Implement API testing strategies and integrate automated tests within the CI/CD pipeline for continuous quality assurance.
Collaboration And Quality Management
Work closely with ML engineers, data scientists, and product teams to understand complex requirements and define comprehensive, domain-specific test scenarios. Identify defects, report issues with clear reproduction steps, and collaborate cross-functionally to drive quality improvements and root cause analysis. Maintain and manage detailed test plans, test cases, and quality documentation throughout the software and model development lifecycle. Demonstrate Strong analytical, communication, and problem-solving skills to manage quality gates effectively.
Mandatory Skills & Qualifications
Experience: 2 to 6 years of QA/testing experience.
Automation: Hands-on experience with Python, automated testing, and QA tools (PyTest, Postman, Robot Framework, etc.).
AI Fundamentals: Basic understanding of ML models, LLMs, NLP/CV systems, and model evaluation metrics.
Integration: Experience in API testing and CI/CD integration.
Analytical: Strong analytical, communication, and problem-solving skills.
Preferred Skills
Experience with MLOps tools such as MLflow or Airflow for workflow management. Knowledge of LLM testing frameworks (e.g., Evals, Ragas, LangSmith) for Generative AI validation. Exposure to vector databases or major cloud platforms (AWS, GCP, Azure). Experience with load testing tools (e.g., JMeter, Locust) for performance verification.
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