Flag job

Report

AI Product Manager

Min Experience

10 years

Location

Chennai, Tamil Nadu, India

JobType

full-time

About the job

Info This job is sourced from a job board

About the role

Overview: We are seeking a highly detail-oriented AI Product Manager – Ops to own and drive operational excellence in data testing, validation, and monitoring of AI models in production environments. This role sits at the intersection of product, data science, engineering, and operations. Responsible for ensuring that AI-driven features perform reliably, safely, and responsibly at scale, while continuously improving product quality and customer experience. Responsibilities: Reduction in production incidents caused by data/model issues. Establishment of reliable and scalable monitoring systems for AI products. Faster resolution time for data and model testing failures. Qualifications: Data Quality & Validation: Design and manage frameworks for data testing in production, ensuring high-quality, unbiased, and consistent datasets feed into AI models. Production Monitoring: Establish and monitor key health metrics (e.g., drift detection, anomaly detection, precision/recall, latency, and fairness) for AI systems in live environments. Testing Strategy: Develop and operationalize A/B testing and canary release strategies for model updates to mitigate risk. Incident Management: Lead root cause analysis and resolution of data-related production issues in collaboration with engineering, ML, and data science teams. Tooling & Automation: Drive requirements for automated testing pipelines, monitoring dashboards, and alerting systems. Cross-functional Collaboration: Work closely with product managers, ML engineers, data scientists, SREs, and compliance teams to ensure responsible AI deployment. Governance & Compliance: Ensure adherence to AI risk management, regulatory guidelines, and internal governance frameworks. Feedback Loop: Build mechanisms to capture customer and system feedback for continuous model improvement.

Skills

data quality
data validation
production monitoring
testing strategy
incident management
tooling
automation
cross-functional collaboration
governance
compliance
feedback loop