competitor-analysis
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npx mdskill add langchain-ai/deepagents/competitor-analysisIdentify market gaps by comparing top competitors.
- Reveals product positioning, pricing, and audience for rivals.
- Depends on internal knowledge of market data and trends.
- Ranks competitors by relevance to the specified segment.
- Outputs a structured comparison matrix with strategic insights.
SKILL.md
.github/skills/competitor-analysisView on GitHub ↗
--- name: competitor-analysis description: >- Analyze competitors in a given market segment. Trigger on: competitive landscape, competitor analysis, market comparison, competitive positioning. --- # Competitor Analysis When asked to analyze competitors: 1. Identify the top 3-5 competitors in the target segment 2. For each competitor, assess: - Product positioning and key differentiators - Pricing model and tiers - Target audience and market share estimates - Strengths and weaknesses 3. Create a comparison matrix 4. Identify gaps and opportunities for differentiation
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