Lead Technical Product Manager - Agentic AI
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Lead Technical Product Manager - Agentic AI is an impactful individual contributor who transforms strategic agentic AI initiatives and product vision into executable backlog items the team can deliver. This role bridges product strategy and tactical delivery, owning agile execution of autonomous, multi-step AI workflows that prepare tax returns and complete complex professional tasks end-to-end. Reporting to the Director of Innovation, you will partner daily with Product Managers, Engineers, and UX to decompose epics into features and INVEST-compliant user stories, ensuring development teams have clear, prioritized work that delivers customer value incrementally. This position requires deep technical understanding of agentic AI systems - including planning, tool use, and human-in-the-loop orchestration - combined with exceptional agile product ownership skills to drive rapid iteration and continuous customer feedback cycles. You will advise management on release readiness and risk and bring the voice of the customer into the team to ship outcomes that solve real problems for tax and accounting professionals. About InnovateHub & Agentic Tax InnovateHub operates as Wolters Kluwer's internal innovation accelerator within TAA North America Professional Business Unit, functioning like a startup across the division. We co-design with customers, run lean experiments, and ship high-value capabilities quickly through rapid validation cycles. Our approach emphasizes customer obsession, build-measure-learn iterations, and fast value delivery to transform how tax and accounting professionals work. Essential Duties and Responsibilities Backlog Ownership & Agile Execution (30%) Lead the integrated plan for work that spans multiple modules and agentic workflow components; align product, engineering, and UX to support rapid GTM Transform epics into clear, INVEST features and user stories with precise acceptance criteria and Definition of Ready/Done Ensure voice of customer and market data flows into sprint planning and backlog prioritization; translate customer feedback into actionable user stories Maintain a prioritized backlog in Azure DevOps Boards with 2-3 sprints of refined, ready work, visible dependencies, and unblocked paths to delivery Apply lightweight prioritization methods (value, risk, effort, sequencing, cost of delay) with documented rationale Lead backlog refinement sessions, sprint planning, and story elaboration with development teams Partner with Engineering on slicing, technical feasibility, release planning, feature flags, and canary rollouts Collaborate with Scrum Master to optimize team flow metrics, maintain predictable delivery, and remove impediments Apply eXtreme Programming (XP) practices where appropriate, including test-driven development support Agentic AI Product Development (25%) Specify product requirements for autonomous, multi-step agent workflows, including planning behavior, tool selection, action sequencing, and human-in-the-loop checkpoints Understand tax preparation workflows and jobs-to-be-done deeply enough to decompose them into agent tasks; identify where autonomous execution delivers value vs. where human review is required Define agent capabilities and constraints: which tools agents can call, what actions require user confirmation, and how state is managed across multi-step interactions Collaborate on retrieval and grounding requirements where agents draw on authoritative tax content (IRS publications, prior-year returns, client documents) Define agent-specific acceptance criteria and SLOs: task completion rate, decision accuracy at branch points, intervention rate, recovery from failure, latency budgets, and cost per workflow Coordinate prompts, agent instructions, model change control, and safety guardrails so demos, pilots, and production remain predictable Specify integration requirements for Microsoft 365 and Copilot environments, including declarative agent definitions for the Agent Store Work with engineering to define fallback strategies, error handling, and graceful degradation when agents encounter ambiguity Lean Innovation & Experimentation (25%) Run short build-measure-learn loops with focus on validated outcomes, not output volume Design and execute rapid validation experiments to test hypotheses about user trust in autonomous workflows and where human oversight is essential Define problem-solution fit and product-market fit for agentic capabilities that maximize learning with minimal development effort Convert discovery signals and pilot feedback into backlog updates quickly; retire low-value items and reduce WIP Track innovation metrics including time-to-validation, experiment velocity, and learning rate Support A/B testing and feature flagging strategies for controlled rollouts of autonomous behaviors Apply lean startup principles to reduce waste and accelerate validated learning Discovery & Cross-Functional Collaboration (10%) Coordinate with Product team f