agent-swarm-issue
- Repo stars 54,444
- Author updated Live
- Author repo ruflo
- Domain
- AI
- Compatible agents
-
- Claude Code
- Cursor
- Cline
- Codex
- Windsurf
- Gemini CLI
- +20
- Trust score
- 88 / 100 · community maintained
- Author / version / license
- @ruvnet · no license declared
- Token usage
- Lean
- Setup complexity
- Guided setup
- External API key
- Not required
- Operating systems
- Linux
- Runtime requirements
- No special requirements
- Permissions
-
- Read-only
- Write / modify
- Shell exec
- Network behavior
- Local-only
- Install commands
- 26 variants
Profile is derived at build time from SKILL.md and install vectors. Subject to drift from author intent.
Heads up: 未限定 allowed-tools,默认拥有全部工具权限。
---
name: agent-swarm-issue
description: Agent skill for swarm-issue - invoke with $agent-swarm-issue name: swarm-issue description: GitH…
category: ai
runtime: no special runtime
---
# agent-swarm-issue output preview
## PART A: Task fit
- Use case: Agent skill for swarm-issue - invoke with $agent-swarm-issue name: swarm-issue description: GitHub issue-based swarm coordination agent that transforms issues into intelligent multi-agent tasks with automatic decomposition and progress tracking type: coordination color: "#FF6B35" Transform GitHub Issues into intelligent swarm tasks, enabling automatic tas….
- Inputs: target material, constraints, expected output, and acceptance criteria.
- Evidence boundary: follow “Overview / Core Features / 1. Issue-to-Swarm Conversion” and do not present inference as author intent.
## PART B: Execution result
- **01** The card summarizes the use case; runtime output centers on “Agent skill for swarm-issue - invoke with $agent-swarm-issue name: swarm-issue description: GitHub issue-based swarm coordination agent that transforms issues into intelligent multi-agent tasks with automatic decomposition and progress tracking type: coordination color: "#FF6B35" Transform GitHub Issues into intelligent swarm tasks, enabling automatic tas…”.
- **02** When the source has headings, the agent prioritizes “Overview / Core Features / 1. Issue-to-Swarm Conversion” so the result follows the author’s structure.
- **03** Typical output includes task judgment, concrete steps, required commands or file edits, validation, and follow-up options.
- **04** Risk context follows the fingerprint: read files, write/modify files, run shell commands; mostly runs locally; usually needs no extra API key.
## Running Rules
- read files, write/modify files, run shell commands; mostly runs locally; usually needs no extra API key.
- Validate with a small sample before expanding scope.
- Return the result, validation criteria, and next iteration options. The source does not require a stable slash command. After installation, invoke the skill by name and describe the task.
Name target files or source material, expected output, forbidden changes, and whether network or shell access is allowed. Permission fingerprint: read files, write/modify files, run shell commands.
Start with a small task and check whether the result follows “Overview / Core Features / 1. Issue-to-Swarm Conversion”. Inspect diffs, logs, previews, or tests before expanding scope.
Confirm the final output includes a concrete result, evidence, and next action. If it stays generic, tighten inputs, boundaries, and acceptance criteria.
---
name: agent-swarm-issue
description: Agent skill for swarm-issue - invoke with $agent-swarm-issue name: swarm-issue description: GitH…
category: ai
source: ruvnet/ruflo
---
# agent-swarm-issue
## When to use
- Agent skill for swarm-issue - invoke with $agent-swarm-issue name: swarm-issue description: GitHub issue-based swarm c…
- Use it when the task has clear inputs, repeatable steps, and validation criteria.
## What to provide
- Target material, scope, expected result, and forbidden changes.
- Whether network, commands, file writes, or external services are allowed.
## Execution rules
- Organize steps around “Overview / Core Features / 1. Issue-to-Swarm Conversion” and keep inference separate from source facts.
- read files, write/modify files, run shell commands; mostly runs locally; usually needs no extra API key.
- Validate with a small sample before expanding the task.
## Output requirements
- Return the deliverable, key evidence, validation method, and next action.
- Mark missing information as unknown; do not invent commands, platforms, or dependencies. The author source anchors workflow facts; repository files anchor sources and commands; Fluxly only adds fit, limitations, and quality judgment.
skill "agent-swarm-issue" {
input -> user goal + target files + boundaries + acceptance criteria
context -> Overview / Core Features / 1. Issue-to-Swarm Conversion
rules -> SKILL.md triggers / order / output contract
runtime -> no special runtime | read files, write/modify files, run shell commands | mostly runs locally
guardrails -> usually needs no extra API key + small-sample validation + diff/log review
output -> copyable result + checklist + next iteration
} name: swarm-issue description: GitHub issue-based swarm coordination agent that transforms issues into intelligent multi-agent tasks with automatic decomposition and progress tracking type: coordination color: "#FF6B35" tools:
- mcp__github__get_issue
- mcp__github__create_issue
- mcp__github__update_issue
- mcp__github__list_issues
- mcp__github__create_issue_comment
- mcp__claude-flow__swarm_init
- mcp__claude-flow__agent_spawn
- mcp__claude-flow__task_orchestrate
- mcp__claude-flow__memory_usage
- TodoWrite
- TodoRead
- Bash
- Grep
- Read
- Write
hooks:
pre:
- "Initialize swarm coordination system for GitHub issue management"
- "Analyze issue context and determine optimal swarm topology"
- "Store issue metadata in swarm memory for cross-agent access" post:
- "Update issue with swarm progress and agent assignments"
- "Create follow-up tasks based on swarm analysis results"
- "Generate comprehensive swarm coordination report"
Swarm Issue - Issue-Based Swarm Coordination
Overview
Transform GitHub Issues into intelligent swarm tasks, enabling automatic task decomposition and agent coordination with advanced multi-agent orchestration.
Core Features
1. Issue-to-Swarm Conversion
# Create swarm from issue using gh CLI
# Get issue details
ISSUE_DATA=$(gh issue view 456 --json title,body,labels,assignees,comments)
# Create swarm from issue
npx ruv-swarm github issue-to-swarm 456 \
--issue-data "$ISSUE_DATA" \
--auto-decompose \
--assign-agents
# Batch process multiple issues
ISSUES=$(gh issue list --label "swarm-ready" --json number,title,body,labels)
npx ruv-swarm github issues-batch \
--issues "$ISSUES" \
--parallel
# Update issues with swarm status
echo "$ISSUES" | jq -r '.[].number' | while read -r num; do
gh issue edit $num --add-label "swarm-processing"
done
2. Issue Comment Commands
Execute swarm operations via issue comments:
<!-- In issue comment -->
$swarm analyze
$swarm decompose 5
$swarm assign @agent-coder
$swarm estimate
$swarm start
3. Issue Templates for Swarms
<!-- .github/ISSUE_TEMPLATE$swarm-task.yml -->
name: Swarm Task
description: Create a task for AI swarm processing
body:
- type: dropdown
id: topology
attributes:
label: Swarm Topology
options:
- mesh
- hierarchical
- ring
- star
- type: input
id: agents
attributes:
label: Required Agents
placeholder: "coder, tester, analyst"
- type: textarea
id: tasks
attributes:
label: Task Breakdown
placeholder: |
1. Task one description
2. Task two description
Issue Label Automation
Auto-Label Based on Content
// .github$swarm-labels.json
{
"rules": [
{
"keywords": ["bug", "error", "broken"],
"labels": ["bug", "swarm-debugger"],
"agents": ["debugger", "tester"]
},
{
"keywords": ["feature", "implement", "add"],
"labels": ["enhancement", "swarm-feature"],
"agents": ["architect", "coder", "tester"]
},
{
"keywords": ["slow", "performance", "optimize"],
"labels": ["performance", "swarm-optimizer"],
"agents": ["analyst", "optimizer"]
}
]
}
Dynamic Agent Assignment
# Assign agents based on issue content
npx ruv-swarm github issue-analyze 456 \
--suggest-agents \
--estimate-complexity \
--create-subtasks
Issue Swarm Commands
Initialize from Issue
# Create swarm with full issue context using gh CLI
# Get complete issue data
ISSUE=$(gh issue view 456 --json title,body,labels,assignees,comments,projectItems)
# Get referenced issues and PRs
REFERENCES=$(gh issue view 456 --json body --jq '.body' | \
grep -oE '#[0-9]+' | while read -r ref; do
NUM=${ref#\#}
gh issue view $NUM --json number,title,state 2>$dev$null || \
gh pr view $NUM --json number,title,state 2>$dev$null
done | jq -s '.')
# Initialize swarm
npx ruv-swarm github issue-init 456 \
--issue-data "$ISSUE" \
--references "$REFERENCES" \
--load-comments \
--analyze-references \
--auto-topology
# Add swarm initialization comment
gh issue comment 456 --body "🐝 Swarm initialized for this issue"
Task Decomposition
# Break down issue into subtasks with gh CLI
# Get issue body
ISSUE_BODY=$(gh issue view 456 --json body --jq '.body')
# Decompose into subtasks
SUBTASKS=$(npx ruv-swarm github issue-decompose 456 \
--body "$ISSUE_BODY" \
--max-subtasks 10 \
--assign-priorities)
# Update issue with checklist
CHECKLIST=$(echo "$SUBTASKS" | jq -r '.tasks[] | "- [ ] " + .description')
UPDATED_BODY="$ISSUE_BODY
## Subtasks
$CHECKLIST"
gh issue edit 456 --body "$UPDATED_BODY"
# Create linked issues for major subtasks
echo "$SUBTASKS" | jq -r '.tasks[] | select(.priority == "high")' | while read -r task; do
TITLE=$(echo "$task" | jq -r '.title')
BODY=$(echo "$task" | jq -r '.description')
gh issue create \
--title "$TITLE" \
--body "$BODY
Parent issue: #456" \
--label "subtask"
done
Progress Tracking
# Update issue with swarm progress using gh CLI
# Get current issue state
CURRENT=$(gh issue view 456 --json body,labels)
# Get swarm progress
PROGRESS=$(npx ruv-swarm github issue-progress 456)
# Update checklist in issue body
UPDATED_BODY=$(echo "$CURRENT" | jq -r '.body' | \
npx ruv-swarm github update-checklist --progress "$PROGRESS")
# Edit issue with updated body
gh issue edit 456 --body "$UPDATED_BODY"
# Post progress summary as comment
SUMMARY=$(echo "$PROGRESS" | jq -r '
"## 📊 Progress Update
**Completion**: \(.completion)%
**ETA**: \(.eta)
### Completed Tasks
\(.completed | map("- ✅ " + .) | join("\n"))
### In Progress
\(.in_progress | map("- 🔄 " + .) | join("\n"))
### Remaining
\(.remaining | map("- ⏳ " + .) | join("\n"))
---
🤖 Automated update by swarm agent"')
gh issue comment 456 --body "$SUMMARY"
# Update labels based on progress
if [[ $(echo "$PROGRESS" | jq -r '.completion') -eq 100 ]]; then
gh issue edit 456 --add-label "ready-for-review" --remove-label "in-progress"
fi
Advanced Features
1. Issue Dependencies
# Handle issue dependencies
npx ruv-swarm github issue-deps 456 \
--resolve-order \
--parallel-safe \
--update-blocking
2. Epic Management
# Coordinate epic-level swarms
npx ruv-swarm github epic-swarm \
--epic 123 \
--child-issues "456,457,458" \
--orchestrate
3. Issue Templates
# Generate issue from swarm analysis
npx ruv-swarm github create-issues \
--from-analysis \
--template "bug-report" \
--auto-assign
Workflow Integration
GitHub Actions for Issues
# .github$workflows$issue-swarm.yml
name: Issue Swarm Handler
on:
issues:
types: [opened, labeled, commented]
jobs:
swarm-process:
runs-on: ubuntu-latest
steps:
- name: Process Issue
uses: ruvnet$swarm-action@v1
with:
command: |
if [[ "${{ github.event.label.name }}" == "swarm-ready" ]]; then
npx ruv-swarm github issue-init ${{ github.event.issue.number }}
fi
Issue Board Integration
# Sync with project board
npx ruv-swarm github issue-board-sync \
--project "Development" \
--column-mapping '{
"To Do": "pending",
"In Progress": "active",
"Done": "completed"
}'
Issue Types & Strategies
Bug Reports
# Specialized bug handling
npx ruv-swarm github bug-swarm 456 \
--reproduce \
--isolate \
--fix \
--test
Feature Requests
# Feature implementation swarm
npx ruv-swarm github feature-swarm 456 \
--design \
--implement \
--document \
--demo
Technical Debt
# Refactoring swarm
npx ruv-swarm github debt-swarm 456 \
--analyze-impact \
--plan-migration \
--execute \
--validate
Automation Examples
Auto-Close Stale Issues
# Process stale issues with swarm using gh CLI
# Find stale issues
STALE_DATE=$(date -d '30 days ago' --iso-8601)
STALE_ISSUES=$(gh issue list --state open --json number,title,updatedAt,labels \
--jq ".[] | select(.updatedAt < \"$STALE_DATE\")")
# Analyze each stale issue
echo "$STALE_ISSUES" | jq -r '.number' | while read -r num; do
# Get full issue context
ISSUE=$(gh issue view $num --json title,body,comments,labels)
# Analyze with swarm
ACTION=$(npx ruv-swarm github analyze-stale \
--issue "$ISSUE" \
--suggest-action)
case "$ACTION" in
"close")
# Add stale label and warning comment
gh issue comment $num --body "This issue has been inactive for 30 days and will be closed in 7 days if there's no further activity."
gh issue edit $num --add-label "stale"
;;
"keep")
# Remove stale label if present
gh issue edit $num --remove-label "stale" 2>$dev$null || true
;;
"needs-info")
# Request more information
gh issue comment $num --body "This issue needs more information. Please provide additional context or it may be closed as stale."
gh issue edit $num --add-label "needs-info"
;;
esac
done
# Close issues that have been stale for 37+ days
gh issue list --label stale --state open --json number,updatedAt \
--jq ".[] | select(.updatedAt < \"$(date -d '37 days ago' --iso-8601)\") | .number" | \
while read -r num; do
gh issue close $num --comment "Closing due to inactivity. Feel free to reopen if this is still relevant."
done
Issue Triage
# Automated triage system
npx ruv-swarm github triage \
--unlabeled \
--analyze-content \
--suggest-labels \
--assign-priority
Duplicate Detection
# Find duplicate issues
npx ruv-swarm github find-duplicates \
--threshold 0.8 \
--link-related \
--close-duplicates
Integration Patterns
1. Issue-PR Linking
# Link issues to PRs automatically
npx ruv-swarm github link-pr \
--issue 456 \
--pr 789 \
--update-both
2. Milestone Coordination
# Coordinate milestone swarms
npx ruv-swarm github milestone-swarm \
--milestone "v2.0" \
--parallel-issues \
--track-progress
3. Cross-Repo Issues
# Handle issues across repositories
npx ruv-swarm github cross-repo \
--issue "org$repo#456" \
--related "org$other-repo#123" \
--coordinate
Metrics & Analytics
Issue Resolution Time
# Analyze swarm performance
npx ruv-swarm github issue-metrics \
--issue 456 \
--metrics "time-to-close,agent-efficiency,subtask-completion"
Swarm Effectiveness
# Generate effectiveness report
npx ruv-swarm github effectiveness \
--issues "closed:>2024-01-01" \
--compare "with-swarm,without-swarm"
Best Practices
1. Issue Templates
- Include swarm configuration options
- Provide task breakdown structure
- Set clear acceptance criteria
- Include complexity estimates
2. Label Strategy
- Use consistent swarm-related labels
- Map labels to agent types
- Priority indicators for swarm
- Status tracking labels
3. Comment Etiquette
- Clear command syntax
- Progress updates in threads
- Summary comments for decisions
- Link to relevant PRs
Security & Permissions
- Command Authorization: Validate user permissions before executing commands
- Rate Limiting: Prevent spam and abuse of issue commands
- Audit Logging: Track all swarm operations on issues
- Data Privacy: Respect private repository settings
Examples
Complex Bug Investigation
# Issue #789: Memory leak in production
npx ruv-swarm github issue-init 789 \
--topology hierarchical \
--agents "debugger,analyst,tester,monitor" \
--priority critical \
--reproduce-steps
Feature Implementation
# Issue #234: Add OAuth integration
npx ruv-swarm github issue-init 234 \
--topology mesh \
--agents "architect,coder,security,tester" \
--create-design-doc \
--estimate-effort
Documentation Update
# Issue #567: Update API documentation
npx ruv-swarm github issue-init 567 \
--topology ring \
--agents "researcher,writer,reviewer" \
--check-links \
--validate-examples
Swarm Coordination Features
Multi-Agent Issue Processing
# Initialize issue-specific swarm with optimal topology
mcp__claude-flow__swarm_init { topology: "hierarchical", maxAgents: 8 }
mcp__claude-flow__agent_spawn { type: "coordinator", name: "Issue Coordinator" }
mcp__claude-flow__agent_spawn { type: "analyst", name: "Issue Analyzer" }
mcp__claude-flow__agent_spawn { type: "coder", name: "Solution Developer" }
mcp__claude-flow__agent_spawn { type: "tester", name: "Validation Engineer" }
# Store issue context in swarm memory
mcp__claude-flow__memory_usage {
action: "store",
key: "issue/#{issue_number}$context",
value: { title: "issue_title", labels: ["labels"], complexity: "high" }
}
# Orchestrate issue resolution workflow
mcp__claude-flow__task_orchestrate {
task: "Coordinate multi-agent issue resolution with progress tracking",
strategy: "adaptive",
priority: "high"
}
Automated Swarm Hooks Integration
// Pre-hook: Issue Analysis and Swarm Setup
const preHook = async (issue) => {
// Initialize swarm with issue-specific topology
const topology = determineTopology(issue.complexity);
await mcp__claude_flow__swarm_init({ topology, maxAgents: 6 });
// Store issue context for swarm agents
await mcp__claude_flow__memory_usage({
action: "store",
key: `issue/${issue.number}$metadata`,
value: { issue, analysis: await analyzeIssue(issue) }
});
};
// Post-hook: Progress Updates and Coordination
const postHook = async (results) => {
// Update issue with swarm progress
await updateIssueProgress(results);
// Generate follow-up tasks
await createFollowupTasks(results.remainingWork);
// Store completion metrics
await mcp__claude_flow__memory_usage({
action: "store",
key: `issue/${issue.number}$completion`,
value: { metrics: results.metrics, timestamp: Date.now() }
});
};
See also: swarm-pr.md, sync-coordinator.md, workflow-automation.md
Decide Fit First
Design Intent
How To Use It
Boundaries And Review