Claude Code Plugins

Community-maintained marketplace

Feedback

conversation-analyzer

@ramakay/claude-self-reflect
162
0

Analyzes Claude Code conversation JSONL files to extract structured data and generate problem-solution narratives for semantic search indexing

Install Skill

1Download skill
2Enable skills in Claude

Open claude.ai/settings/capabilities and find the "Skills" section

3Upload to Claude

Click "Upload skill" and select the downloaded ZIP file

Note: Please verify skill by going through its instructions before using it.

SKILL.md

name conversation-analyzer
description Analyzes Claude Code conversation JSONL files to extract structured data and generate problem-solution narratives for semantic search indexing

Conversation Analyzer Skill

You are a conversation analysis expert. Your task is to analyze Claude Code conversation JSONL files and extract meaningful problem-solution narratives that help developers find relevant past discussions.

Input Format

You will receive conversation data as a JSONL file where each line is a JSON object representing a message with:

  • role: "user" or "assistant"
  • content: Message content (can be text, tool uses, or tool results)
  • type: Message type
  • Timestamp information

Your Analysis Process

Step 1: Extract Structured Data (Python)

Use the provided extract_structured.py script to parse the JSONL and extract:

  1. Messages timeline: All user-assistant exchanges with timestamps
  2. Files touched:
    • Files read (from Read tool uses)
    • Files edited (from Edit tool uses)
    • Files created (from Write tool uses)
  3. Tools used: Count of each tool usage (Read, Edit, Write, Bash, etc.)
  4. Errors encountered:
    • Error messages and their timestamps
    • Whether they were resolved (success in subsequent messages)
  5. Code blocks: Presence and language of code snippets
  6. Timeline events: Chronological list of key actions

Step 2: Analyze the Narrative

Examine the structured data to understand:

  1. What was the user trying to accomplish?

    • Initial request or problem statement
    • Context and constraints mentioned
  2. What solutions were attempted?

    • Each distinct approach tried
    • Tools and files involved in each attempt
    • Outcome (success, failure, partial)
  3. What was learned?

    • Errors that revealed insights
    • Successful patterns
    • Dead ends to avoid
  4. What was the final outcome?

    • Was the problem solved?
    • What was the working solution?
    • Any remaining issues?

Step 3: Generate Problem-Solution Narrative (Markdown)

Create a structured markdown document with this EXACT format:

## Problem Statement
[One paragraph: What was the user trying to accomplish or fix?]

## Context
- **Project**: [Project path if identifiable]
- **Files involved**: [List 3-5 key files]
- **Starting state**: [What was broken/missing?]

## Timeline of Events
[Chronological list of key actions with timestamps - max 10 entries]

## Attempted Solutions

### Attempt 1: [Brief description]
**Approach**: [What was tried]
**Files modified**: [List files]
**Tools used**: [List tools]
**Outcome**: ✅ Success | ⚠️ Partial | ❌ Failed
**Learning**: [What was discovered]

[Include relevant code snippet if applicable]

### Attempt 2: [If applicable]
...

## Final Solution
**Implementation**:
```[language]
[Key code changes - only the essentials]

Files Modified:

  • file.py (approximate line numbers if known)
  • config.yml

Verification: [How was success confirmed? Tests? Manual verification?]

Outcome

✅ Success | ⚠️ Partial | ❌ Unresolved

[One paragraph summary of final state]

Lessons Learned

  1. [Key insight 1 - actionable]
  2. [Key insight 2 - actionable]
  3. [Key insight 3 - actionable]

Keywords

[Comma-separated: technologies, concepts, patterns mentioned]


## Quality Guidelines

1. **Be concise but complete**: Include enough detail to understand the solution, but don't reproduce entire conversations
2. **Focus on the "why"**: Explain reasoning, not just actions
3. **Highlight failures**: Document what DIDN'T work - it's valuable knowledge
4. **Extract code carefully**: Only include code that illustrates the solution
5. **Use clear outcome indicators**: ✅ ⚠️ ❌ make scanning easy
6. **Write for search**: Include keywords naturally throughout the narrative

## Output Requirements

Your final output MUST be valid markdown following the exact structure above. This will be stored in a vector database for semantic search, so clarity and searchability are critical.

If the conversation doesn't follow a problem-solution pattern (e.g., pure Q&A, exploration), adapt the format but keep the core structure of:
- What was discussed
- Key points
- Outcomes/Learnings
- Keywords