adr-decision-extraction
Extract architectural decisions from conversations. Identifies problem-solution pairs, trade-off discussions, and explicit choices. Use when analyzing session transcripts for ADR generation.
Best use case
adr-decision-extraction is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Extract architectural decisions from conversations. Identifies problem-solution pairs, trade-off discussions, and explicit choices. Use when analyzing session transcripts for ADR generation.
Teams using adr-decision-extraction should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/adr-decision-extraction/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How adr-decision-extraction Compares
| Feature / Agent | adr-decision-extraction | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Extract architectural decisions from conversations. Identifies problem-solution pairs, trade-off discussions, and explicit choices. Use when analyzing session transcripts for ADR generation.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# ADR Decision Extraction
Extract architectural decisions from conversation context for ADR generation.
## Detection Signals
| Signal Type | Examples |
|-------------|----------|
| Explicit markers | `[ADR]`, "decided:", "the decision is" |
| Choice patterns | "let's go with X", "we'll use Y", "choosing Z" |
| Trade-off discussions | "X vs Y", "pros/cons", "considering alternatives" |
| Problem-solution pairs | "the problem is... so we'll..." |
## Extraction Rules
### Explicit Tags (Guaranteed Inclusion)
Text marked with `[ADR]` is always extracted:
```
[ADR] Using PostgreSQL for user data storage due to ACID requirements
```
These receive `confidence: "high"` automatically.
### AI-Detected Decisions
Patterns detected without explicit tags require confidence assessment:
| Confidence | Criteria |
|------------|----------|
| **high** | Clear statement of choice with rationale |
| **medium** | Implied decision from action taken |
| **low** | Contextual inference, may need verification |
## Output Format
```json
{
"decisions": [
{
"title": "Use PostgreSQL for user data",
"problem": "Need ACID transactions for financial records",
"chosen_option": "PostgreSQL",
"alternatives_discussed": ["MongoDB", "SQLite"],
"drivers": ["ACID compliance", "team familiarity"],
"confidence": "high",
"source_context": "Discussion about database selection in planning phase"
}
]
}
```
### Field Definitions
| Field | Required | Description |
|-------|----------|-------------|
| `title` | Yes | Concise decision summary |
| `problem` | Yes | Problem or context driving the decision |
| `chosen_option` | Yes | The selected solution or approach |
| `alternatives_discussed` | No | Other options mentioned (empty array if none) |
| `drivers` | No | Factors influencing the decision |
| `confidence` | Yes | `high`, `medium`, or `low` |
| `source_context` | No | Brief description of where decision appeared |
## Extraction Workflow
1. **Scan for explicit markers** - Find all `[ADR]` tagged content
2. **Identify choice patterns** - Look for decision language
3. **Extract trade-off discussions** - Capture alternatives and reasoning
4. **Assess confidence** - Rate each non-explicit decision
5. **Capture context** - Note surrounding discussion for ADR writer
## Pattern Examples
### High Confidence
```
"We decided to use Redis for caching because of its sub-millisecond latency
and native TTL support. Memcached was considered but lacks persistence."
```
Extracts:
- Title: Use Redis for caching
- Problem: Need fast caching with TTL
- Chosen: Redis
- Alternatives: Memcached
- Drivers: sub-millisecond latency, native TTL, persistence
- Confidence: high
### Medium Confidence
```
"Let's go with TypeScript for the frontend since we're already using it
in the backend."
```
Extracts:
- Title: Use TypeScript for frontend
- Problem: Language choice for frontend
- Chosen: TypeScript
- Alternatives: (none stated)
- Drivers: consistency with backend
- Confidence: medium
### Low Confidence
```
"The API seems to be working well with REST endpoints."
```
Extracts:
- Title: REST API architecture
- Problem: API design approach
- Chosen: REST
- Alternatives: (none stated)
- Drivers: (none stated)
- Confidence: low
## Best Practices
### Context Capture
Always capture sufficient context for the ADR writer:
- What was the discussion about?
- Who was involved (if known)?
- What prompted the decision?
### Merge Related Decisions
If multiple statements relate to the same decision, consolidate them:
- Combine alternatives from different mentions
- Aggregate drivers
- Use highest confidence level
### Flag Ambiguity
When decisions are unclear or contradictory:
- Note the ambiguity in `source_context`
- Set confidence to `low`
- Include all interpretations if multiple exist
## When to Use This Skill
- Analyzing session transcripts for ADR generation
- Reviewing conversation history for documentation
- Extracting decisions from design discussions
- Preparing input for ADR writing toolsRelated Skills
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