AVP/VP, AI/ML Model Validation Engineer, Data Management Office - SMBC
Singapore Full-time
Responsibilities
- Define and execute comprehensive test strategies covering statistical, ML, LLM and agentic AI models.
- Perform functional, regression and scenario
- based testing of model behaviours and workflows.
- Conduct AI/ML evaluations including accuracy checks, bias/fairness assessment, robustness analysis and drift detection.
- Assess end
- to - end model workflows including data inputs, feature transformations, task completion, tool
- use accuracy and multi
- step reasoning.
- Desig
- Define and execute comprehensive test strategies covering statistical, ML, LLM and agentic AI models.
- Perform functional, regression and scenario
- based testing of model behaviours and workflows.
- Conduct AI/ML evaluations including accuracy checks, bias/fairness assessment, robustness analysis and drift detection.
- Assess end
- to - end model workflows including data inputs, feature transformations, task completion, tool
- use accuracy and multi
- step reasoning.
- Design and maintain automated test and evaluation pipelines, including benchmarking and regression frameworks.
- Validate API and tool
- integration behaviour in production
- like environments, identifying dependency or orchestration issues.
- Diagnose issues using observability, logging, tracing and debugging tooling, and document findings clearly.
- Collaborate with data scientists across departments to understand modelling intent, feature logic and expected behaviours.
- Perform data
- management tasks to support AI/ML model testing, including maintaining metadata, documenting key datasets and ensuring clarity of data inputs.
- Contribute to AI/ML proof
- of - concept (POC) initiatives to strengthen evaluation methodologies and support innovation.
- Support data-management/analytics initiatives such as the Analytics Workbench and contribute to AI/ML/data analytics enablement.
- Minimum 4 years of relevant experience in model testing, QA/QC, AI/ML evaluation, CI/CD, MLOps, data engineering, or related technical roles.
- Proficiency in Python (especially PySpark, MLlib, pytest), R and SQL; knowledge of Scala, Rust, Java, JS or C++ is a plus.
- Experience designing and executing test strategies for ML/AI models, including automated pipelines and regression frameworks.
- Ability to evaluate statistical, ML and LLM models using performance, bias, robustness and drift metrics.
- Strong ability to assess feature engineering logic, dataset integrity, workflow reliability and tool
- integration behaviours.
- Experience troubleshooting using logs, traces and debugging tools to identify root
- cause issues.
- Strong documentation and communication skills to articulate findings, risks and remediation requirements.
- Ability to collaborate effectively with data science, engineering, IT and governance functions.
- Understanding of Responsible AI concepts and quality expectations for production
- ready AI/ML systems.
Sumitomo Mitsui Banking CorporationSingapore
and maintain automated test and evaluation pipelines, including benchmarking and regression frameworks.
• Validate API and tool
• integration behaviour in production
• like environments, identifying dependency or orchestration issues.
• Diagnose issues using...
Sumitomo Mitsui Banking CorporationSingapore
such as SHAP, LIME and other interpretability techniques.
• Produce comprehensive, well-reasoned Model Validation Reports.
• Evaluate AI/ML models, LLMs, retrieval-augmented systems, agentic workflows, and prompt-engineering methods.
• Ensure validation...
Ethos BeathChapmanSingapore
and pipeline stability to ensure efficiency and reliability
• Apply data governance, security controls, and validation checks to maintain data quality and compliance
• Collaborate with engineers, analysts, and stakeholders to deliver agreed project outcomes...