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ppt-research
Deep multi-dimensional research for PPT topic. Use when preparing factual basis before designing a presentation.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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Deep multi-dimensional research for PPT topic. Use when preparing factual basis before designing a presentation.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
Visual style decision-making for PPT based on research and audience context. Use after research phase to select archetype, tokens, and layout strategy.
Top-tier PPT structure architect using Pyramid Principle. Use after research and style decision to generate a logically rigorous outline.
Compose high-quality Slidev slides from outline and style plan. Use after outline is approved to write the final slides markdown.
Review a generated Slidev deck for visual, structural, and interaction issues. Use when user triggers /ppt-review or when completing the ppt-creator pipeline.
Create and present web-based slidedecks for developers using Slidev with Markdown, Vue components, code highlighting, animations, and interactive features. Use when building technical presentations, conference talks, code walkthroughs, teaching materials, or developer decks.
Top-tier PPT structure architect using Pyramid Principle. Use after research and style decision to generate a logically rigorous outline.
| name | ppt-research |
| description | Deep multi-dimensional research for PPT topic. Use when preparing factual basis before designing a presentation. |
Before designing any PPT, conduct thorough research on the topic to gather facts, trends, risks, and opposing viewpoints.
You MUST search across at least 3 of these dimensions:
research-report.mdWrite the report to the artifacts directory. It MUST include:
Prioritize higher-tier sources. Every research report MUST include at least one Tier 1 or Tier 2 source.
| Tier | Examples | Trust Level |
|---|---|---|
| Tier 1 (highest) | Academic papers, official documentation, government statistics | Cite directly; no hedging needed |
| Tier 2 | Industry reports (Gartner, McKinsey, Forrester), established media (Reuters, Bloomberg, WSJ) | Cite directly; note report date |
| Tier 3 | Tech blogs from recognized authors, company engineering blogs (Netflix Tech Blog, Uber Engineering) | Cite with author attribution; cross-reference when possible |
| Tier 4 (lowest) | Forums, social media, anonymous posts, AI-generated summaries | Use only as supplementary signal; never as sole evidence |
Rule: If a finding relies solely on Tier 3-4 sources, mark its confidence as low regardless of other factors.
For each dimension, use these query patterns. Replace [topic], [audience], and [competitor] with actual values. Always add time and locale qualifiers to avoid stale results.
"[topic] market size 2025-2026""[topic] industry trend site:mckinsey.com OR site:gartner.com""[topic] adoption rate enterprise 2026""[topic] alternatives comparison 2026""[topic] vs [competitor] benchmark""[topic] competitive landscape analysis""[audience role] challenges [topic] 2026""what [audience] need to know about [topic]""[audience role] survey [topic] pain points""[topic] criticism""[topic] limitations risks""why [topic] fails" OR "[topic] drawbacks""[topic] production experience""[topic] case study real-world""[topic] post-mortem lessons learned"Assign one of these levels to every finding:
When aggregating findings into the recommendation section, weight high-confidence findings most heavily. Flag any recommendation that rests primarily on low-confidence findings with [WEAK_EVIDENCE].
When user-provided materials contradict search results:
[CONFLICT] in the report.[DISPUTED] and list both sources.Every finding MUST have a unique ID following this format:
- **F1** [dimension:market] Insight text here (source: URL, confidence: high)
- **F2** [dimension:competitor] Insight text here (source: URL, confidence: medium)
- **F3** [dimension:audience] Insight text here (source: user-material, confidence: high)
Rules:
F1, F2, F3, ...outline.json (evidence_refs) and by the reviewer (fact-checking).The final research-report.md output MUST conform to the structure defined in schemas/research-report.schema.json.
Before finalizing the report, cross-check: