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skeleton-of-thought
Parallel generation through skeleton-first approach for 2x speedup
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
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Parallel generation through skeleton-first approach for 2x speedup
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
SOC 직업 분류 기준
Apple Search Ads (ASA) deep analysis for mobile app advertisers. Evaluates campaign structure, bid health, Creative Sets, MMP attribution, budget pacing, TAP coverage (Today/Search/Product Pages), and goal CPA benchmarks by country. Triggers on: "Apple Search Ads", "ASA", "App Store ads", "Apple ads", "Search Ads", "iOS app ads"
Full multi-platform paid advertising audit with parallel subagent delegation. Analyzes Google Ads, Meta Ads, LinkedIn Ads, TikTok Ads, and Microsoft Ads accounts. Generates health score per platform and aggregate score. Triggers on: "audit", "full ad check", "analyze my ads", "account health check", "PPC audit", "ad account audit"
Budget allocation and bidding strategy review across all ad platforms. Evaluates spend distribution, bidding strategy appropriateness, scaling readiness, and identifies campaigns to kill or scale. Uses 70/20/10 rule, 3x Kill Rule, and 20% scaling rule. Triggers on: "budget allocation", "bidding strategy", "ad spend", "ROAS target", "media budget", "scaling", "kill list"
Competitor ad intelligence analysis across Google, Meta, LinkedIn, TikTok, and Microsoft. Analyzes competitor ad copy, creative strategy, keyword targeting, estimated spend, and identifies competitive gaps and opportunities. Triggers on: "competitor ads", "ad spy", "competitive analysis", "competitor PPC", "ad intelligence", "competitor research"
Campaign concept and copy brief generator for paid advertising. Reads brand-profile.json and optional audit results to produce structured campaign concepts, messaging pillars, and copy briefs. Outputs campaign-brief.md. Run after /ads dna and before /ads generate. Triggers on: "create campaign", "campaign brief", "ad concepts", "write ad copy", "campaign strategy", "ad messaging", "creative brief", "generate concepts"
Cross-platform creative quality audit covering ad copy, video, image, and format diversity across all platforms. Detects creative fatigue, evaluates platform-native compliance, and provides production priorities. Triggers on: "creative audit", "ad creative", "creative fatigue", "ad copy review", "ad design", "creative review", "creative health"
| name | skeleton-of-thought |
| description | Parallel generation through skeleton-first approach for 2x speedup |
| trigger | keyword |
| keywords | ["fast","parallel generate","speed up","quick response"] |
| priority | 4 |
Achieves up to 2x speedup through parallel content generation.
Instead of sequential generation, SoT:
Given question, generate ONLY the skeleton outline:
- Point 1: [brief description]
- Point 2: [brief description]
- Point 3: [brief description]
...
Do NOT expand. Just the skeleton.
Launch parallel expansions for each point:
Point 1 → Agent 1 → Expanded content
Point 2 → Agent 2 → Expanded content
Point 3 → Agent 3 → Expanded content
(all run simultaneously)
Combine expanded points with transitions:
[Introduction]
[Point 1 expanded]
[Transition]
[Point 2 expanded]
[Transition]
[Point 3 expanded]
[Conclusion]
# Skeleton generation prompt
SKELETON_PROMPT = """
For the question: {question}
Generate ONLY a skeleton outline with 3-8 key points.
Format:
1. [Point]: [5-10 word description]
2. [Point]: [5-10 word description]
...
Do NOT expand the points. ONLY the skeleton.
"""
# Point expansion prompt
EXPAND_PROMPT = """
Context: Answering "{question}"
Skeleton: {skeleton}
Expand ONLY point {point_number}: "{point_description}"
Write 2-4 sentences expanding this point.
Do not include other points.
"""
| Query Type | Sequential Time | SoT Time | Speedup |
|---|---|---|---|
| Tutorial | 10s | 5s | 2.0x |
| Explanation | 8s | 4.5s | 1.8x |
| List-based | 12s | 6s | 2.0x |
| Analysis | 15s | 9s | 1.7x |
Reference: "Skeleton-of-Thought: Large Language Models Can Do Parallel Decoding" (2023)