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Adr Decision Extraction

Use when you need to mine a conversation, session transcript, or design discussion for architectural decisions before writing ADRs. Identifies problem-soluti...
用于在撰写架构决策记录(ADR)前,从对话、会议记录或设计讨论中挖掘架构决策,识别问题‑解决方案对及决策点。
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概述

ADR Decision Extraction

Extract architectural decisions from conversation context for ADR generation.

Detection Signals

Signal TypeExamples
-----------------------
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:

ConfidenceCriteria
----------------------
highClear statement of choice with rationale
mediumImplied decision from action taken
lowContextual inference, may need verification

Output Format

{
  "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

FieldRequiredDescription
------------------------------
titleYesConcise decision summary
problemYesProblem or context driving the decision
chosen_optionYesThe selected solution or approach
alternatives_discussedNoOther options mentioned (empty array if none)
driversNoFactors influencing the decision
confidenceYeshigh, medium, or low
source_contextNoBrief 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

Hard gates

Run these in order after the workflow above and before returning output. Each step has an objective pass condition.

  1. Explicit [ADR] inventory — Capture every [ADR] segment from the full source (verbatim in working notes). Pass: a second pass over the same source adds no new [ADR] blocks.
  2. De-duplicate — Merge or drop inferred rows that repeat an explicit [ADR] decision (see Merge Related Decisions). Pass: at most one row per distinct decision.
  3. Schema validity — Serialized JSON matches Output Format and Field Definitions. Pass: parse succeeds; every decisions[] item has non-empty title, problem, chosen_option; confidence ∈ {high,medium,low}; alternatives_discussed is an array (use [] if none); other optional fields per table.
  4. Low-confidence audit — For any confidence: "low", source_context states what was missing, weak, or contradictory. Pass: a reader can see why the rating is not higher.

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 tools

版本历史

共 2 个版本

  • v1.0.2 当前
    2026-05-03 05:41 安全 安全
  • v1.0.0
    2026-03-31 00:21 安全 安全

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