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ai-product-manager-playbook

A comprehensive operating system for AI Product Management. Use this skill when planning, prototyping, evaluating, or launching AI-native products. It provid...
一套全面的AI产品管理操作系统。适用于规划、原型设计、评估或发布AI原生产品时使用。它提供...
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概述

AI PM Playbook

Overview

The ai-pm-playbook skill operationalizes the best practices of AI Product Management into executable, agentic workflows. It is designed to help product managers transition from traditional, process-heavy roles to the "builder mentality" required in the AI era.

This skill provides a structured approach to the entire AI product lifecycle, ensuring that products are built rapidly, evaluated rigorously, and deployed responsibly.

Use this skill when:

  • Prototyping a new AI feature or product.
  • Planning a product roadmap in a rapidly changing AI landscape.
  • Designing and running evaluations (Evals) for an AI model.
  • Structuring a cross-functional AI product team.
  • Developing a Go-To-Market (GTM) strategy for an AI product.
  • Implementing ethical guardrails and red teaming for responsible AI.

The AI PM Operating System

This skill is built on the premise that AI automates low-value PM tasks (like writing detailed PRDs) and elevates the need for strategic vision, judgment, and technical fluency. The workflows below are designed to augment these higher-order skills.

Core Workflows

Choose the appropriate workflow based on your current product development phase:

1. Prototyping and Rapid Experimentation

Move from static PRDs to interactive, "production-ready" prototypes.

  • Action: Decompose features, plan with AI, and build interactive prototypes.
  • Reference: See references/prototyping_workflow.md for the step-by-step guide.

2. Roadmap Planning Under Uncertainty

Shift from feature-based roadmaps to outcome-oriented planning.

  • Action: Define desired behaviors, use the Now/Next/Later framework, and apply the U.S.I.D.O. model.
  • Reference: See references/roadmap_uncertainty.md for the planning framework.
  • Template: Use templates/outcome_roadmap.md to structure your plan.

3. AI Evaluation and Metrics (Evals)

Move beyond basic accuracy to measure user experience, safety, and reliability.

  • Action: Define evaluator roles, supply context, set goals, and establish scoring rubrics.
  • Reference: See references/evaluation_metrics.md for the evaluation framework.
  • Template: Use templates/ai_eval_rubric.md to design your evals.

4. Cross-Functional Collaboration

Structure your team for success in the complex world of AI development.

  • Action: Implement a hybrid team structure, prioritize data readiness, and foster psychological safety.
  • Reference: See references/cross_functional.md for organizational best practices.

5. Go-To-Market Strategy and Trust

Launch AI products that meet evolving customer expectations and build trust.

  • Action: Define the 7 GTM pillars and prioritize transparency in data usage.
  • Reference: See references/gtm_strategy.md for the launch framework.

6. Ethics, Safety, and Responsible Deployment

Ensure your AI products are safe, trustworthy, and aligned with human values.

  • Action: Implement multi-layered guardrails and conduct rigorous red teaming.
  • Reference: See references/responsible_ai.md for the safety framework.
  • Template: Use templates/red_teaming_plan.md to structure your testing.

Self-Improving Loop

This skill incorporates a self-improving feedback loop to continuously refine your PM processes based on real-world execution data.

  1. Collect Telemetry: After completing a major PM activity (e.g., a prototype sprint, an eval run, or a product launch), gather the outcomes, friction points, and user feedback.
  2. Run the Loop: Execute scripts/pm_feedback_loop.py with the collected data.
  3. Analyze and Adapt: The script will analyze the systemic friction and suggest updates to your templates, workflows, or evaluation rubrics to improve future performance.

Resources

  • scripts/pm_feedback_loop.py: The engine for continuous improvement of PM processes.
  • references/: Detailed guides for each of the 6 core workflows.
  • templates/: Standardized formats for roadmaps, evals, and red teaming plans.

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-05-07 15:55 安全 安全

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