tag

product

55 indexed skills · max 10 per page

skills (55)

product

boshu2/agentops · Productivity

0

Purpose: Guide the user through creating a PRODUCT.md that unlocks product-aware reviews in /pre-mortem and /vibe, including the default quick-mode inline paths.

product-strategist

davila7/claude-code-templates · Productivity

0

Strategic product leadership toolkit for OKR cascading, market analysis, and organizational design. \n \n Generates cascading OKRs from company level down to product and team levels, with alignment scoring and contribution tracking across five strategy types (growth, retention, revenue, innovation, operational) \n Covers market and competitive analysis, product vision frameworks, and KPI definition for comprehensive strategic planning \n Includes team scaling and organizational design capabiliti

product-analytics

daffy0208/ai-dev-standards · Productivity

0

Measure what matters and make data-driven decisions.

ai-wrapper-product

sickn33/antigravity-awesome-skills · AI/ML

0

Build profitable AI products that solve specific problems, not generic ChatGPT clones. \n \n Covers AI product architecture, prompt engineering for production, model selection, and cost management strategies to balance quality with unit economics \n Includes patterns for input validation, structured output parsing, quality control, and fallback handling to ensure reliable AI responses \n Provides token economics tracking, usage metering, and cost reduction techniques (cheaper models, caching, ba

product-skills

alirezarezvani/claude-skills · Productivity

0

8 production-ready product skills covering product management, UX/UI design, and SaaS development.

ai-product

sickn33/antigravity-awesome-skills · AI/ML

0

Production-ready LLM integration patterns, from prompt versioning to safety validation and cost optimization. \n \n Covers structured output with schema validation, streaming responses for reduced latency, and prompt versioning with regression testing \n Identifies eight critical sharp edges including output validation, prompt injection risks, context window limits, and API failure handling \n Emphasizes treating prompts as code, validating all LLM outputs, and never trusting responses blindly i

product-requirements

cexll/myclaude · Frontend

0

Interactive requirements gathering and professional PRD generation through quality-scored dialogue. \n \n Systematically assesses requirements across five dimensions (business value, functional specs, UX, technical constraints, scope) using a 100-point quality scale, iterating until 90+ threshold before document generation \n Gathers project context by reading existing README and configuration files, then asks targeted clarification questions focused on the lowest-scoring requirement areas \n Ge

product-operations

refoundai/lenny-skills · Productivity

0

Frameworks for building and scaling product operations functions across growing teams. \n \n Bridges product and operations by creating systems that enable PMs to focus on strategy rather than operational overhead like release management, enablement, and cross-functional coordination \n Standardizes processes, tooling, and insights across product teams while preserving PM decision-making authority; product ops informs, not decides \n Addresses common scaling challenges: surfacing user research a

product-led-sales

refoundai/lenny-skills · Productivity

0

Guide users through transitioning from pure product-led growth to sales-assisted expansion using product usage signals. \n \n Helps define Product Qualified Leads (PQLs) and Product Qualified Accounts (PQAs) based on actual product engagement rather than marketing metrics \n Covers the complete handoff workflow: identifying usage signals that trigger sales outreach, designing smooth transitions from self-serve to sales-assisted, and aligning product and sales team incentives \n Emphasizes person

product-taste-intuition

refoundai/lenny-skills · Frontend

0

Develop product taste and intuition using frameworks from 10 product leaders. \n \n Grounded in core principles: intuition as hypothesis generation, taste as a learnable skill built through exposure hours, and deliberate self-observation of your own product reactions \n Guides users to identify gaps in their judgment, suggest targeted practice activities, and know when to trust gut instinct versus data \n Includes diagnostic questions to surface what products users analyze regularly, how they no

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