Job Description
Ensuring that AI and machine learning models are robust, reliable, fair, and fit for purpose throughout their lifecycle.
Role Description
The AI Validation & Model Assurance role is responsible for ensuring that AI and machine learning models are robust, reliable, fair, and fit for purpose throughout their lifecycle. This role provides independent assurance that models meet defined performance, fairness, and stability standards before and after deployment, and that appropriate human oversight is embedded in AI-assisted decision-making.
The AI Validation & Model Assurance function establishes and enforces model validation standards across the AI lifecycle, from development and testing through deployment and ongoing monitoring. Working closely with data science, engineering, business, and risk stakeholders, the role designs and executes validation activities to assess model accuracy, bias, robustness, and long-term performance stability.
This role plays a critical gatekeeping function by reviewing validation evidence, approving model promotion into production, and requiring remediation actions where models fail to meet defined thresholds. It also ensures that Human-in-the-Loop (HITL) and human oversight controls are appropriately designed and applied to support accountable and trustworthy AI use.
Key Responsibilites
Define and maintain model validation and testing standards across the AI lifecycle
Design and execute pre-deployment and post-deployment validation activities
Assess and document model bias, fairness, accuracy, robustness, and performance stability
Monitor and evaluate model drift (data drift, concept drift, performance drift)
Define and enforce Human-in-the-Loop (HITL) and human oversight controls for AI-assisted decisions
Review validation evidence and gate model promotion from pre-production to production
Require remediation, retraining, or rollback where models fail to meet defined thresholds
Bias & Fairness Assessment Reports
Monitoring & retraining criteria
Requirements
Required Knowledge & Skills
Strong understanding of end-to-end AI/ML model development lifecycle, including problem framing, data preparation, feature engineering, model training, evaluation, deployment, and monitoring
Knowledge of bias and fairness assessment techniques and limitations
Experience with model performance metrics, stress testing, and robustness testing
Understanding of explainability and transparency methods appropriate to risk level
Ability to define control thresholds, acceptance criteria, and approval conditions
Ability to operate independently from model developers to provide objective assurance
Experience working with model documentation (model cards, validation reports, testing logs)
Familiarity with model approval committees and formal sign-off processes
Experience
3–7+ years of experience in model validation, model risk management, AI assurance, or data science governance
Experience validating ML and/or Generative AI models in production environments preferred
Exposure to regulated or high-risk decision systems is an advantage
Strong analytical and critical-thinking skills
Detail-oriented with a strong quality and control mindset
Confident in challenging model readiness and deployment decisions
Clear communicator with technical and non-technical stakeholders
Email Group Legal & Corporate
corporate.secretary@ioh.co.id
Email Investor Communication:
investor@ioh.co.id
#J-18808-Ljbffr
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Job Details
Posted Date:
February 21, 2026
Job Type:
Technology
Location:
Indonesia
Company:
Indosat
Ready to Apply?
Don't miss this opportunity! Apply now and join our team.