Hi All
This is Lokesh. I hope you are doing great
I have an urgent requirement of Data Scientist with my client located in TX
I am attaching the JD below and let me know if you have any questions
Job Title: Data Scientist – Model Governance, Validation & Monitoring
Location: San Antonio, TX (Onsite)
Experince: 12+ Years
Job Summary
We are looking for an experienced Data Scientist with a strong background in model governance, model validation, model monitoring, and statistical modeling. The ideal candidate should have hands-on experience building, validating, deploying, and monitoring machine learning models throughout their lifecycle while ensuring compliance with governance standards and regulatory requirements.
Key Responsibilities
- Build, develop, and enhance statistical and machine learning models for business use cases.
- Perform independent model validation to assess model accuracy, robustness, and regulatory compliance.
- Monitor model performance and identify output/result drift over time.
- Evaluate data drift, concept drift, and model degradation, and recommend corrective actions.
- Classify and manage models based on risk levels (High Risk, Medium Risk, and Low Risk).
- Develop and execute model governance frameworks, standards, and documentation.
- Establish model monitoring processes, KPIs, and regular validation schedules.
- Manage end-to-end model lifecycle including development, validation, deployment, monitoring, and retirement.
- Deploy machine learning models into production and monitor post-deployment performance.
- Conduct periodic model reviews and revalidation to ensure continued effectiveness.
- Collaborate with cross-functional teams including Data Engineering, Risk, Business, and Technology teams.
- Prepare comprehensive model documentation, validation reports, and governance artifacts.
Required Skills
- Strong experience in Data Science, Machine Learning, and Statistical Modeling.
- Hands-on experience with Model Governance and Model Risk Management.
- Experience in Independent Model Validation (IMV).
- Strong understanding of Model Monitoring, Output Drift, Data Drift, and Concept Drift.
- Experience working with High, Medium, and Low Risk Models.
- Knowledge of Model Deployment and MLOps best practices.
- Proficiency in Python, SQL, and machine learning libraries such as Scikit-learn, XGBoost, TensorFlow, or PyTorch.
- Strong analytical, problem-solving, and statistical skills.
- Experience with model documentation and regulatory compliance is highly preferred.
Preferred Qualifications
- Experience in Banking, Financial Services, Insurance, or other highly regulated industries.
- Familiarity with model governance frameworks and audit requirements.
- Master''s degree in Data Science, Statistics, Computer Science, Mathematics, or a related field.