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Dispatching Parallel Agents

作者 lovemymobilewebsite-dotcom · GitHub ↗ · v0.1.0 · MIT-0
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在 OpenClaw 中安装
/install dispatching-parallel-agents-2
功能描述
Use when facing 2+ independent tasks that can be worked on without shared state or sequential dependencies
使用说明 (SKILL.md)

Dispatching Parallel Agents

Overview

You delegate tasks to specialized agents with isolated context. By precisely crafting their instructions and context, you ensure they stay focused and succeed at their task. They should never inherit your session's context or history — you construct exactly what they need. This also preserves your own context for coordination work.

When you have multiple unrelated failures (different test files, different subsystems, different bugs), investigating them sequentially wastes time. Each investigation is independent and can happen in parallel.

Core principle: Dispatch one agent per independent problem domain. Let them work concurrently.

When to Use

digraph when_to_use {
    "Multiple failures?" [shape=diamond];
    "Are they independent?" [shape=diamond];
    "Single agent investigates all" [shape=box];
    "One agent per problem domain" [shape=box];
    "Can they work in parallel?" [shape=diamond];
    "Sequential agents" [shape=box];
    "Parallel dispatch" [shape=box];

    "Multiple failures?" -> "Are they independent?" [label="yes"];
    "Are they independent?" -> "Single agent investigates all" [label="no - related"];
    "Are they independent?" -> "Can they work in parallel?" [label="yes"];
    "Can they work in parallel?" -> "Parallel dispatch" [label="yes"];
    "Can they work in parallel?" -> "Sequential agents" [label="no - shared state"];
}

Use when:

  • 3+ test files failing with different root causes
  • Multiple subsystems broken independently
  • Each problem can be understood without context from others
  • No shared state between investigations

Don't use when:

  • Failures are related (fix one might fix others)
  • Need to understand full system state
  • Agents would interfere with each other

The Pattern

1. Identify Independent Domains

Group failures by what's broken:

  • File A tests: Tool approval flow
  • File B tests: Batch completion behavior
  • File C tests: Abort functionality

Each domain is independent - fixing tool approval doesn't affect abort tests.

2. Create Focused Agent Tasks

Each agent gets:

  • Specific scope: One test file or subsystem
  • Clear goal: Make these tests pass
  • Constraints: Don't change other code
  • Expected output: Summary of what you found and fixed

3. Dispatch in Parallel

// In Claude Code / AI environment
Task("Fix agent-tool-abort.test.ts failures")
Task("Fix batch-completion-behavior.test.ts failures")
Task("Fix tool-approval-race-conditions.test.ts failures")
// All three run concurrently

4. Review and Integrate

When agents return:

  • Read each summary
  • Verify fixes don't conflict
  • Run full test suite
  • Integrate all changes

Agent Prompt Structure

Good agent prompts are:

  1. Focused - One clear problem domain
  2. Self-contained - All context needed to understand the problem
  3. Specific about output - What should the agent return?
Fix the 3 failing tests in src/agents/agent-tool-abort.test.ts:

1. "should abort tool with partial output capture" - expects 'interrupted at' in message
2. "should handle mixed completed and aborted tools" - fast tool aborted instead of completed
3. "should properly track pendingToolCount" - expects 3 results but gets 0

These are timing/race condition issues. Your task:

1. Read the test file and understand what each test verifies
2. Identify root cause - timing issues or actual bugs?
3. Fix by:
   - Replacing arbitrary timeouts with event-based waiting
   - Fixing bugs in abort implementation if found
   - Adjusting test expectations if testing changed behavior

Do NOT just increase timeouts - find the real issue.

Return: Summary of what you found and what you fixed.

Common Mistakes

❌ Too broad: "Fix all the tests" - agent gets lost ✅ Specific: "Fix agent-tool-abort.test.ts" - focused scope

❌ No context: "Fix the race condition" - agent doesn't know where ✅ Context: Paste the error messages and test names

❌ No constraints: Agent might refactor everything ✅ Constraints: "Do NOT change production code" or "Fix tests only"

❌ Vague output: "Fix it" - you don't know what changed ✅ Specific: "Return summary of root cause and changes"

When NOT to Use

Related failures: Fixing one might fix others - investigate together first Need full context: Understanding requires seeing entire system Exploratory debugging: You don't know what's broken yet Shared state: Agents would interfere (editing same files, using same resources)

Real Example from Session

Scenario: 6 test failures across 3 files after major refactoring

Failures:

  • agent-tool-abort.test.ts: 3 failures (timing issues)
  • batch-completion-behavior.test.ts: 2 failures (tools not executing)
  • tool-approval-race-conditions.test.ts: 1 failure (execution count = 0)

Decision: Independent domains - abort logic separate from batch completion separate from race conditions

Dispatch:

Agent 1 → Fix agent-tool-abort.test.ts
Agent 2 → Fix batch-completion-behavior.test.ts
Agent 3 → Fix tool-approval-race-conditions.test.ts

Results:

  • Agent 1: Replaced timeouts with event-based waiting
  • Agent 2: Fixed event structure bug (threadId in wrong place)
  • Agent 3: Added wait for async tool execution to complete

Integration: All fixes independent, no conflicts, full suite green

Time saved: 3 problems solved in parallel vs sequentially

Key Benefits

  1. Parallelization - Multiple investigations happen simultaneously
  2. Focus - Each agent has narrow scope, less context to track
  3. Independence - Agents don't interfere with each other
  4. Speed - 3 problems solved in time of 1

Verification

After agents return:

  1. Review each summary - Understand what changed
  2. Check for conflicts - Did agents edit same code?
  3. Run full suite - Verify all fixes work together
  4. Spot check - Agents can make systematic errors

Real-World Impact

From debugging session (2025-10-03):

  • 6 failures across 3 files
  • 3 agents dispatched in parallel
  • All investigations completed concurrently
  • All fixes integrated successfully
  • Zero conflicts between agent changes
安全使用建议
This is a coherent, low-risk instruction template for running independent agents in parallel. Before using it, ensure you intentionally grant the agent(s) access to the repository/test runner (read/write) only if you want them to modify code. Add guardrails: require human approval for commits or merges, run CI/full test suite after agent changes, and use locks or a coordinator to avoid conflicting concurrent edits. If you don't want agents to make changes autonomously, disable autonomous model actions or require explicit confirmation for any write operations.
功能分析
Type: OpenClaw Skill Name: dispatching-parallel-agents-2 Version: 0.1.0 The skill bundle provides a workflow pattern and documentation for an AI agent to delegate independent tasks to parallel sub-agents. The content in SKILL.md is purely instructional, focusing on task isolation and efficient debugging, with no evidence of malicious code, data exfiltration, or harmful prompt injection.
能力评估
Purpose & Capability
The name/description (dispatch parallel agents for independent tasks) matches the SKILL.md instructions (how to identify independent domains, craft focused prompts, dispatch agents, review results). There are no unrelated environment variables, binaries, or installs requested. One implicit dependency is that the agent using this pattern will need access to the codebase/tests and a test runner to follow the examples — that assumption is reasonable for the stated purpose but is not explicitly declared.
Instruction Scope
Instructions remain within the stated purpose: create self-contained prompts, run separate agents, and review their outputs. The examples explicitly ask agents to read test files, run/modify tests, and make fixes — which is appropriate for debugging workflows but implies filesystem and repository access and the ability to edit code. This is expected but worth noting: the skill does not provide guardrails around concurrent edits or repository permissions, so callers must ensure agents have only the intended access and that changes are reviewed.
Install Mechanism
Instruction-only skill with no install spec, no code files, and no downloads — minimal surface area and no install-time risk.
Credentials
The skill requests no environment variables or credentials. That is proportionate for an instruction template. The SKILL.md does assume the operational environment will allow reading and editing tests and running the test suite; if those capabilities require credentials or tools in your environment, grant them deliberately.
Persistence & Privilege
always:false and default autonomous invocation are set (normal). The skill does not request persistent presence or claim to modify other skills or system-wide settings. However, because it encourages dispatching agents that may make commits/edits, consider reviewing change approvals and CI policies before allowing autonomous write actions.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install dispatching-parallel-agents-2
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /dispatching-parallel-agents-2 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v0.1.0
- Initial release of dispatching-parallel-agents skill. - Enables efficient delegation of 2+ independent tasks to parallel agents with isolated context. - Offers clear guidelines and patterns for parallel investigation and problem-solving, especially for unrelated test or subsystem failures. - Provides detailed best practices for constructing focused agent prompts and avoiding common mistakes. - Includes real-world example demonstrating significant time savings through parallel dispatching.
元数据
Slug dispatching-parallel-agents-2
版本 0.1.0
许可证 MIT-0
累计安装 0
当前安装数 0
历史版本数 1
常见问题

Dispatching Parallel Agents 是什么?

Use when facing 2+ independent tasks that can be worked on without shared state or sequential dependencies. 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 129 次。

如何安装 Dispatching Parallel Agents?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install dispatching-parallel-agents-2」即可一键安装,无需额外配置。

Dispatching Parallel Agents 是免费的吗?

是的,Dispatching Parallel Agents 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Dispatching Parallel Agents 支持哪些平台?

Dispatching Parallel Agents 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Dispatching Parallel Agents?

由 lovemymobilewebsite-dotcom(@lovemymobilewebsite-dotcom)开发并维护,当前版本 v0.1.0。

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