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parallel-debugging

by @wshobsonv
4.4(20)

DevOpsの並行デバッグに特化し、インテリジェントな自動化とマルチエージェントオーケストレーションを活用して、複雑なシステムの問題を効率的に特定・解決し、開発効率を向上させます。

debuggingdistributed-systemsconcurrencyperformance-monitoringlog-analysisGitHub
インストール方法
npx skills add wshobson/agents --skill parallel-debugging
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Before / After 効果比較

1
使用前

従来のデバッグは時間と効率が悪く、特に複雑なシステムでは並列問題の特定が困難です。チームはデバッグのボトルネックにより、開発サイクルが長期化することがよくあります。

使用後

スマートな自動化により並列デバッグが実現され、マルチエージェントによる協調分析が行われます。コードの欠陥を迅速に特定し修正することで、デバッグ時間を大幅に短縮し、開発効率を向上させます。

SKILL.md

parallel-debugging

Parallel Debugging

Framework for debugging complex issues using the Analysis of Competing Hypotheses (ACH) methodology with parallel agent investigation.

When to Use This Skill

  • Bug has multiple plausible root causes

  • Initial debugging attempts haven't identified the issue

  • Issue spans multiple modules or components

  • Need systematic root cause analysis with evidence

  • Want to avoid confirmation bias in debugging

Hypothesis Generation Framework

Generate hypotheses across 6 failure mode categories:

1. Logic Error

  • Incorrect conditional logic (wrong operator, missing case)

  • Off-by-one errors in loops or array access

  • Missing edge case handling

  • Incorrect algorithm implementation

2. Data Issue

  • Invalid or unexpected input data

  • Type mismatch or coercion error

  • Null/undefined/None where value expected

  • Encoding or serialization problem

  • Data truncation or overflow

3. State Problem

  • Race condition between concurrent operations

  • Stale cache returning outdated data

  • Incorrect initialization or default values

  • Unintended mutation of shared state

  • State machine transition error

4. Integration Failure

  • API contract violation (request/response mismatch)

  • Version incompatibility between components

  • Configuration mismatch between environments

  • Missing or incorrect environment variables

  • Network timeout or connection failure

5. Resource Issue

  • Memory leak causing gradual degradation

  • Connection pool exhaustion

  • File descriptor or handle leak

  • Disk space or quota exceeded

  • CPU saturation from inefficient processing

6. Environment

  • Missing runtime dependency

  • Wrong library or framework version

  • Platform-specific behavior difference

  • Permission or access control issue

  • Timezone or locale-related behavior

Evidence Collection Standards

What Constitutes Evidence

Evidence Type Strength Example

Direct Strong Code at file.ts:42 shows if (x > 0) should be if (x >= 0)

Correlational Medium Error rate increased after commit abc123

Testimonial Weak "It works on my machine"

Absence Variable No null check found in the code path

Citation Format

Always cite evidence with file:line references:

**Evidence**: The validation function at `src/validators/user.ts:87`
does not check for empty strings, only null/undefined. This allows
empty email addresses to pass validation.

Confidence Levels

Level Criteria

High (>80%) Multiple direct evidence pieces, clear causal chain, no contradicting evidence

Medium (50-80%) Some direct evidence, plausible causal chain, minor ambiguities

Low (<50%) Mostly correlational evidence, incomplete causal chain, some contradicting evidence

Result Arbitration Protocol

After all investigators report:

Step 1: Categorize Results

  • Confirmed: High confidence, strong evidence, clear causal chain

  • Plausible: Medium confidence, some evidence, reasonable causal chain

  • Falsified: Evidence contradicts the hypothesis

  • Inconclusive: Insufficient evidence to confirm or falsify

Step 2: Compare Confirmed Hypotheses

If multiple hypotheses are confirmed, rank by:

  • Confidence level

  • Number of supporting evidence pieces

  • Strength of causal chain

  • Absence of contradicting evidence

Step 3: Determine Root Cause

  • If one hypothesis clearly dominates: declare as root cause

  • If multiple hypotheses are equally likely: may be compound issue (multiple contributing causes)

  • If no hypotheses confirmed: generate new hypotheses based on evidence gathered

Step 4: Validate Fix

Before declaring the bug fixed:

  • Fix addresses the identified root cause

  • Fix doesn't introduce new issues

  • Original reproduction case no longer fails

  • Related edge cases are covered

  • Relevant tests are added or updated

Weekly Installs2.1KRepositorywshobson/agentsGitHub Stars31.5KFirst SeenFeb 5, 2026Security AuditsGen Agent Trust HubPassSocketPassSnykPassInstalled ongemini-cli1.7Kopencode1.7Kcodex1.7Kclaude-code1.6Kcursor1.6Kgithub-copilot1.5K

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統計データ

インストール数5.7K
評価4.4 / 5.0
バージョン
更新日2026年5月22日
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ユーザー評価

4.4(20)
5
25%
4
55%
3
20%
2
0%
1
0%

この Skill を評価

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対応プラットフォーム

🔧Claude Code
🔧OpenClaw
🔧OpenCode
🔧Codex
🔧Gemini CLI
🔧GitHub Copilot
🔧Amp
🔧Kimi CLI

タイムライン

作成2026年3月17日
最終更新2026年5月22日