.build/codex/skills/conversation-content-pipeline/SKILL.md
Transform AI conversations and chat transcripts into publishable content including blog posts, documentation, tutorials, and knowledge base entries. Covers extraction, restructuring, and editorial refinement. Triggers on conversation-to-content, transcript processing, or chat-to-doc requests.
npx skillsauth add organvm-iv-taxis/a-i--skills conversation-content-pipelineInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Extract publishable content from AI conversations, chat transcripts, and session logs.
Raw Conversation → Extract → Restructure → Refine → Format → Publish
│ │ │ │ │
│ │ │ │ └─ Markdown, HTML, PDF
│ │ │ └─ Editorial polish, voice consistency
│ │ └─ Organize by topic, add structure
│ └─ Identify key insights, decisions, code
└─ Chat logs, transcripts, session files
| Content Type | Signal | Output | |-------------|--------|--------| | Tutorial | Step-by-step problem solving | How-to article | | Decision record | Evaluating options, choosing approach | ADR or technical note | | Code walkthrough | Explaining code, reviewing changes | Documentation | | Insight | Novel observation, unexpected finding | Blog post or essay | | Q&A | Repeated questions and answers | FAQ or knowledge base | | Debug log | Troubleshooting process | Incident report |
KEY_MOMENT_SIGNALS = {
"insight": ["I realized", "The key insight is", "This means that", "Interesting —"],
"decision": ["Let's go with", "The best approach", "I chose", "Decision:"],
"learning": ["TIL", "I didn't know", "Turns out", "The important thing is"],
"warning": ["Watch out for", "Don't forget", "Common mistake", "Anti-pattern"],
"summary": ["In summary", "To recap", "The main takeaway", "Key points"],
}
def identify_key_moments(messages: list[dict]) -> list[dict]:
moments = []
for msg in messages:
for moment_type, signals in KEY_MOMENT_SIGNALS.items():
if any(signal.lower() in msg["content"].lower() for signal in signals):
moments.append({
"type": moment_type,
"content": msg["content"],
"role": msg["role"],
"index": msg.get("index"),
})
return moments
## From Conversation:
- User asks about circuit breakers
- Agent explains the concept
- User asks about implementation
- Agent provides code
- User asks about testing
- Agent explains test strategy
- User confirms understanding
## To Article:
1. Introduction (from the question context)
2. What is a Circuit Breaker? (from explanation)
3. Implementation (from code example)
4. Testing Strategy (from testing discussion)
5. Key Takeaways (from summary moments)
def extract_code_blocks(conversation: list[dict]) -> list[dict]:
blocks = []
for msg in conversation:
# Find fenced code blocks
in_block = False
current_block = {"language": "", "code": "", "context": ""}
for line in msg["content"].split("\n"):
if line.startswith("```"):
if in_block:
blocks.append(current_block)
current_block = {"language": "", "code": "", "context": ""}
in_block = False
else:
current_block["language"] = line[3:].strip()
in_block = True
elif in_block:
current_block["code"] += line + "\n"
# Context is the text before the code block
if blocks:
blocks[-1]["context"] = extract_preceding_text(msg["content"], blocks[-1]["code"])
return blocks
Conversations mix casual chat with technical content. Normalize to a consistent editorial voice:
| Conversation | Published | |-------------|-----------| | "So basically what happens is..." | "The process works as follows:" | | "Yeah, that's the key thing" | "This is the critical consideration." | | "Let me try another approach" | (remove — process artifact) | | "Oh wait, I was wrong about that" | (keep the correction, remove the error) |
---
title: "{Derived from conversation topic}"
date: {date}
tags: [{extracted-topics}]
source_session: "{session_id}"
---
# {Title}
{Hook paragraph derived from the initial question}
## {Section 1: Context/Problem}
{Restructured from early conversation}
## {Section 2: Solution/Approach}
{Code and explanations from the middle}
## {Section 3: Key Insights}
{Extracted insights and decisions}
## Conclusion
{Synthesized from final exchanges}
# {Topic}
**Last updated:** {date}
**Source:** Conversation {session_id}
## Quick Answer
{The TL;DR from the conversation}
## Detailed Explanation
{Restructured explanation}
## Examples
{Extracted code blocks with context}
## See Also
- {Related topics from the conversation}
async def process_session_archive(sessions_dir: str, output_dir: str):
for session_file in Path(sessions_dir).glob("*.jsonl"):
messages = load_session(session_file)
moments = identify_key_moments(messages)
if not moments:
continue # Skip sessions with no extractable content
content_type = classify_content(moments)
article = restructure(messages, moments, content_type)
refined = refine(article)
output = Path(output_dir) / f"{session_file.stem}.md"
output.write_text(format_article(refined))
development
Optimize resumes and CVs for impact, ATS compatibility, and audience targeting. Supports multiple formats (chronological, functional, hybrid), accomplishment framing (STAR/XYZ), and tailoring for specific roles. Triggers on resume review, CV update, job application prep, or career document requests.
testing
Transfer context between AI agent sessions with structured handoff protocols, state serialization, and decision log preservation. Covers multi-agent coordination, context compression, and continuity patterns. Triggers on agent handoff, session transfer, or multi-agent continuity requests.
tools
Craft compelling fiction and creative nonfiction with attention to structure, voice, prose style, and revision. Supports short stories, novel chapters, essays, and hybrid forms. Triggers on creative writing, fiction writing, story craft, prose style, or literary technique requests.
devops
Transform AI conversations and chat transcripts into publishable content including blog posts, documentation, tutorials, and knowledge base entries. Covers extraction, restructuring, and editorial refinement. Triggers on conversation-to-content, transcript processing, or chat-to-doc requests.