Please share only those profiles who can join immediately or within 30 days.
Also, please share only 3-4 profiles in a batch as we are not looking for bulk profiles instead, we expect quality profiles to be shared with us for screening.
Proposed salary will be based on the interview feedback, and the level candidates will get selected.
Base Locations: Gurgaon, Pune, and Bengaluru (hybrid setup). Kindly ensure candidates are aware of this.
If any candidate's salary exceeds the defined salary bracket, you can still share the profile, with highlight.
Level Years of Experience (Relevant) Max CTC Manager 10-15 Years 30 LPA Senior Manager 15-20 Years 38 LPA Job Title: Technical Product Owner AI/ML or Cloud or Data Platforms Experience: 10-15 Years Location: [Bengaluru / Pune / Gurgaon] Employment Type: Full-time Role Overview We are seeking a Technical Product Owner (TPO) who combines strategic business ownership with strong technical understanding of AI/ML or data or cloud ecosystems You will define the vision, roadmap and measurable outcomes for data-driven/ Cloud and AI-powered products while also owning the backlog, technical decisions and delivery of platform capabilities. This role demands an ability to bridge business strategy and engineering execution ensuring every technical initiative drives tangible business impact and adheres to enterprise standards. Key Responsibilities A. Business Product Ownership (Strategic PO Responsibilities)
Define and communicate the product vision, roadmap and business outcomes for AI/ML/ Cloud or data platform initiatives.
Align the AI/ML product strategy with organizational OKRs, ROI goals and digital transformation objectives.
Partner with business leaders to translate high-level use cases (e.g., personalization, forecasting, anomaly detection) into actionable technical features.
Define value hypotheses, track business KPIs and report impact on efficiency, automation and customer experience.
Prioritize investments based on business value risk and readiness.
Champion Responsible AI and ethical data use as part of business governance.
B. Tactical / Technical Product Ownership (Execution-Level Responsibilities)
Own the backlog including epics, user stories, data pipelines, model lifecycle features and infrastructure capabilities.
Collaborate with data engineers, ML engineers and cloud architects to design scalable solutions for data ingestion, training and inference.
Define technical acceptance criteria for ML features, APIs and pipelines.
Ensure strong alignment between data availability, model readiness and deployment environments.
Partner with the MLOps team to standardize model deployment, monitoring and retraining processes.
Contribute to architecture discussions, data platform evolution and reusable component development.
Manage sprint ceremonies, backlog grooming and release planning with engineering teams.
Track progress via technical KPIs (e.g., model latency, data quality SLAs, deployment frequency).