Job Overview
            
                
                
                
                    Category
                    Information Technology
                 
                
             
            
            
         
        
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            Job Description
            
                About the Role
We are looking for a  QA Engineer experienced in validating traditional AI/ML models  to ensure the reliability, accuracy, and performance of predictive systems.
The ideal candidate will collaborate closely with data scientists, MLOps engineers, and product teams to design comprehensive testing frameworks for AI models — ensuring correctness, consistency, and reproducibility across multiple datasets and environments.
Key Responsibilities
Validate and verify  machine learning models  (Regression, Classification, Clustering, NLP, etc.) across different stages of development and deployment.
Develop and execute  test plans ,  test cases , and  validation strategies  for AI/ML pipelines.
Ensure model outputs meet defined  accuracy, precision, recall, and F1-score  benchmarks.
Perform  data quality checks , detect anomalies, and validate preprocessing pipelines.
Validate  feature engineering steps , ensuring data leakage and bias-free inputs.
Conduct  A/B testing ,  cross-validation , and  reproducibility checks.
Collaborate with Data Science teams to define  acceptance criteria  for models.
Validate  model retraining ,  version control , and  drift detection  processes.
Document findings and prepare detailed  QA reports  for model performance and compliance.
Automate regression testing and pipeline validation using CI/CD and MLOps frameworks.
Required Skills & Experience
Strong understanding of  machine learning lifecycle  (training, validation, inference).
Experience validating  supervised and unsupervised learning models.
Hands-on skills in  Python  and ML libraries such as  scikit-learn ,  Tensor Flow , or  Py Torch.
Familiarity with  data validation frameworks  (e.g., Great Expectations, Deequ).
Experience with  ML experiment tracking tools  (MLflow, Weights & Biases, or Kubeflow).
Working knowledge of  SQL  and  data visualization  for validation analysis.
Understanding of  MLOps ,  CI/CD pipelines , and model deployment tools (e.g.,  Docker, Jenkins, Git Hub Actions ).
Familiarity with  statistics  and  data drift analysis  (Kolmogorov–Smirnov test, PSI, etc.).
Strong analytical mindset and ability to identify subtle inconsistencies in model performance.
            
         
  
  
  
        
        
        
        
        
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                Volga Infotech is actively hiring for this Qa engineer – ai/ml model validation position
            
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