Product Manager (AI Platform)
AryaXAI View all jobs
- Mumbai, Maharashtra
- Permanent
- Full-time
- Own product requirements and execution for AI/ML and platform-heavy features from problem definition to production rollout.
- Translate complex AI behavior into precise, testable product specifications and acceptance criteria.
- Work deeply with AI Researchers to collect the details of the components created and AI engineers and SDEs to ensure implementations match intended algorithms, assumptions, and constraints.
- Define what “correct” means for each feature, including metrics, evaluation logic, edge cases, and failure modes.
- Work with QA and testing teams to design meaningful test strategies that reflect real ML behavior, not just happy paths.
- Break down ambiguous product roadmaps or experimental ideas into shippable, scalable product increments.
- Prioritize features and technical debt based on user impact, system risk, and long-term platform scalability.
- Act as the quality bar-raiser by catching conceptual gaps early and preventing flawed features from shipping.
- Prior experience as an ML engineer, data scientist, or research engineer.
- Experience building developer platforms, ML tooling, or infra-heavy products.
- Strong foundation in Deep Learning, LLMs, machine learning or data science with hands-on experience building or deploying AI systems.
- Familiarity with testing strategies for ML systems, including offline evaluation, simulation, and monitoring.
- Experience working closely with AI engineers on model behavior, evaluation, and performance trade-offs for multiple modalities - LLMs, Tabular, Text and Agentic systems
- Ability to reason about ML correctness, limitations, and failure modes, not just UX or timelines.
- Experience owning product features end-to-end, either formally as a PM or informally as a technical lead.
- Comfortable writing precise specs, acceptance criteria, and evaluation plans that engineers and testers can execute against.
- Strong communication skills across research, engineering, QA, and leadership without dilution of technical meaning.
- Exposure to interpretability, alignment, model observability, or AI safety work.
- Startup experience where product ambiguity and technical depth coexist.
- Features ship with clear intent, correct behavior, and well-defined evaluation criteria.
- QA and testing teams understand what they are testing and why it matters.
- Engineering rework drops because specs capture real constraints upfront.
- Product velocity increases without sacrificing correctness or trust.