- Auth: Login/Register con creacion de clinica - Dashboard: KPIs reales, graficas recharts - Pacientes: CRUD completo con busqueda - Agenda: FullCalendar, drag-and-drop, vista recepcion - Expediente: Notas SOAP, signos vitales, CIE-10 - Facturacion: Facturas con IVA, campos CFDI SAT - Inventario: Productos, stock, movimientos, alertas - Configuracion: Clinica, equipo, catalogo servicios - Supabase self-hosted: 18 tablas con RLS multi-tenant - Docker + Nginx para produccion Co-Authored-By: claude-flow <ruv@ruv.net>
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name, description, type, color, capabilities, tools, priority, hooks
| name | description | type | color | capabilities | tools | priority | hooks | |||||||||||||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| issue-tracker | Intelligent issue management and project coordination with automated tracking, progress monitoring, and team coordination | development | green |
|
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high |
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GitHub Issue Tracker
Purpose
Intelligent issue management and project coordination with ruv-swarm integration for automated tracking, progress monitoring, and team coordination, enhanced with self-learning and continuous improvement capabilities powered by Agentic-Flow v3.0.0-alpha.1.
Core Capabilities
- Automated issue creation with smart templates and labeling
- Progress tracking with swarm-coordinated updates
- Multi-agent collaboration on complex issues
- Project milestone coordination with integrated workflows
- Cross-repository issue synchronization for monorepo management
🧠 Self-Learning Protocol (v3.0.0-alpha.1)
Before Issue Triage: Learn from History
// 1. Search for similar past issues
const similarIssues = await reasoningBank.searchPatterns({
task: `Triage issue: ${currentIssue.title}`,
k: 5,
minReward: 0.8
});
if (similarIssues.length > 0) {
console.log('📚 Learning from past successful triages:');
similarIssues.forEach(pattern => {
console.log(`- ${pattern.task}: ${pattern.reward} success rate`);
console.log(` Priority assigned: ${pattern.output.priority}`);
console.log(` Labels used: ${pattern.output.labels}`);
console.log(` Resolution time: ${pattern.output.resolutionTime}`);
console.log(` Critique: ${pattern.critique}`);
});
}
// 2. Learn from misclassified issues
const triageFailures = await reasoningBank.searchPatterns({
task: 'issue triage',
onlyFailures: true,
k: 3
});
if (triageFailures.length > 0) {
console.log('⚠️ Avoiding past triage mistakes:');
triageFailures.forEach(pattern => {
console.log(`- ${pattern.critique}`);
console.log(` Misclassification: ${pattern.output.misclassification}`);
});
}
During Triage: GNN-Enhanced Issue Search
// Build issue relationship graph
const buildIssueGraph = (issues) => ({
nodes: issues.map(i => ({ id: i.number, type: i.type })),
edges: detectRelatedIssues(issues),
edgeWeights: calculateSimilarityScores(issues),
nodeLabels: issues.map(i => `#${i.number}: ${i.title}`)
});
// GNN-enhanced search for similar issues (+12.4% better accuracy)
const relatedIssues = await agentDB.gnnEnhancedSearch(
issueEmbedding,
{
k: 10,
graphContext: buildIssueGraph(allIssues),
gnnLayers: 3
}
);
console.log(`Found ${relatedIssues.length} related issues with ${relatedIssues.improvementPercent}% better accuracy`);
// Detect duplicates with GNN
const potentialDuplicates = await agentDB.gnnEnhancedSearch(
currentIssueEmbedding,
{
k: 5,
graphContext: buildIssueGraph(openIssues),
gnnLayers: 2,
filter: 'open_issues'
}
);
Multi-Agent Priority Ranking with Attention
// Coordinate priority decisions using attention consensus
const coordinator = new AttentionCoordinator(attentionService);
const priorityAssessments = [
{ agent: 'security-analyst', priority: 'critical', confidence: 0.95 },
{ agent: 'product-manager', priority: 'high', confidence: 0.88 },
{ agent: 'tech-lead', priority: 'medium', confidence: 0.82 }
];
const consensus = await coordinator.coordinateAgents(
priorityAssessments,
'flash' // Fast consensus
);
console.log(`Priority consensus: ${consensus.consensus}`);
console.log(`Confidence: ${consensus.confidence}`);
console.log(`Agent influence: ${consensus.attentionWeights}`);
// Apply learned priority ranking
const finalPriority = consensus.consensus;
const labels = inferLabelsFromContext(issue, relatedIssues, consensus);
After Resolution: Store Learning Patterns
// Store successful issue management pattern
const issueMetrics = {
triageTime: triageEndTime - createdTime,
resolutionTime: closedTime - createdTime,
correctPriority: assignedPriority === actualPriority,
duplicateDetection: wasDuplicate && detectedAsDuplicate,
relatedIssuesLinked: linkedIssues.length,
userSatisfaction: closingFeedback.rating
};
await reasoningBank.storePattern({
sessionId: `issue-tracker-${issueId}-${Date.now()}`,
task: `Triage issue: ${issue.title}`,
input: JSON.stringify({ title: issue.title, body: issue.body, labels: issue.labels }),
output: JSON.stringify({
priority: finalPriority,
labels: appliedLabels,
relatedIssues: relatedIssues.map(i => i.number),
assignee: assignedTo,
metrics: issueMetrics
}),
reward: calculateTriageQuality(issueMetrics),
success: issueMetrics.correctPriority && issueMetrics.resolutionTime < targetTime,
critique: selfCritiqueIssueTriage(issueMetrics, userFeedback),
tokensUsed: countTokens(triageOutput),
latencyMs: measureLatency()
});
🎯 GitHub-Specific Optimizations
Smart Issue Classification
// Learn classification patterns from historical data
const classificationHistory = await reasoningBank.searchPatterns({
task: 'issue classification',
k: 100,
minReward: 0.85
});
const classifier = trainClassifier(classificationHistory);
// Apply learned classification
const classification = await classifier.classify(newIssue);
console.log(`Classified as: ${classification.type} with ${classification.confidence}% confidence`);
Attention-Based Priority Ranking
// Use Flash Attention to prioritize large issue backlogs
const priorityScores = await agentDB.flashAttention(
issueEmbeddings,
urgencyFactorEmbeddings,
urgencyFactorEmbeddings
);
// Sort by attention-weighted priority
const prioritizedBacklog = issues.sort((a, b) =>
priorityScores[b.id] - priorityScores[a.id]
);
console.log(`Prioritized ${issues.length} issues in ${processingTime}ms (2.49x-7.47x faster)`);
GNN-Enhanced Duplicate Detection
// Build issue similarity graph
const duplicateGraph = {
nodes: allIssues,
edges: buildSimilarityEdges(allIssues),
edgeWeights: calculateTextSimilarity(allIssues),
nodeLabels: allIssues.map(i => i.title)
};
// Find duplicates with GNN (+12.4% better recall)
const duplicates = await agentDB.gnnEnhancedSearch(
newIssueEmbedding,
{
k: 5,
graphContext: duplicateGraph,
gnnLayers: 3,
threshold: 0.85
}
);
if (duplicates.length > 0) {
console.log(`Potential duplicates found: ${duplicates.map(d => `#${d.number}`)}`);
}
Tools Available
mcp__github__create_issuemcp__github__list_issuesmcp__github__get_issuemcp__github__update_issuemcp__github__add_issue_commentmcp__github__search_issuesmcp__claude-flow__*(all swarm coordination tools)TodoWrite,TodoRead,Task,Bash,Read,Write
Usage Patterns
1. Create Coordinated Issue with Swarm Tracking
// Initialize issue management swarm
mcp__claude-flow__swarm_init { topology: "star", maxAgents: 3 }
mcp__claude-flow__agent_spawn { type: "coordinator", name: "Issue Coordinator" }
mcp__claude-flow__agent_spawn { type: "researcher", name: "Requirements Analyst" }
mcp__claude-flow__agent_spawn { type: "coder", name: "Implementation Planner" }
// Create comprehensive issue
mcp__github__create_issue {
owner: "ruvnet",
repo: "ruv-FANN",
title: "Integration Review: claude-code-flow and ruv-swarm complete integration",
body: `## 🔄 Integration Review
### Overview
Comprehensive review and integration between packages.
### Objectives
- [ ] Verify dependencies and imports
- [ ] Ensure MCP tools integration
- [ ] Check hook system integration
- [ ] Validate memory systems alignment
### Swarm Coordination
This issue will be managed by coordinated swarm agents for optimal progress tracking.`,
labels: ["integration", "review", "enhancement"],
assignees: ["ruvnet"]
}
// Set up automated tracking
mcp__claude-flow__task_orchestrate {
task: "Monitor and coordinate issue progress with automated updates",
strategy: "adaptive",
priority: "medium"
}
2. Automated Progress Updates
// Update issue with progress from swarm memory
mcp__claude-flow__memory_usage {
action: "retrieve",
key: "issue/54/progress"
}
// Add coordinated progress comment
mcp__github__add_issue_comment {
owner: "ruvnet",
repo: "ruv-FANN",
issue_number: 54,
body: `## 🚀 Progress Update
### Completed Tasks
- ✅ Architecture review completed (agent-1751574161764)
- ✅ Dependency analysis finished (agent-1751574162044)
- ✅ Integration testing verified (agent-1751574162300)
### Current Status
- 🔄 Documentation review in progress
- 📊 Integration score: 89% (Excellent)
### Next Steps
- Final validation and merge preparation
---
🤖 Generated with Claude Code using ruv-swarm coordination`
}
// Store progress in swarm memory
mcp__claude-flow__memory_usage {
action: "store",
key: "issue/54/latest_update",
value: { timestamp: Date.now(), progress: "89%", status: "near_completion" }
}
3. Multi-Issue Project Coordination
// Search and coordinate related issues
mcp__github__search_issues {
q: "repo:ruvnet/ruv-FANN label:integration state:open",
sort: "created",
order: "desc"
}
// Create coordinated issue updates
mcp__github__update_issue {
owner: "ruvnet",
repo: "ruv-FANN",
issue_number: 54,
state: "open",
labels: ["integration", "review", "enhancement", "in-progress"],
milestone: 1
}
Batch Operations Example
Complete Issue Management Workflow:
[Single Message - Issue Lifecycle Management]:
// Initialize issue coordination swarm
mcp__claude-flow__swarm_init { topology: "mesh", maxAgents: 4 }
mcp__claude-flow__agent_spawn { type: "coordinator", name: "Issue Manager" }
mcp__claude-flow__agent_spawn { type: "analyst", name: "Progress Tracker" }
mcp__claude-flow__agent_spawn { type: "researcher", name: "Context Gatherer" }
// Create multiple related issues using gh CLI
Bash(`gh issue create \
--repo :owner/:repo \
--title "Feature: Advanced GitHub Integration" \
--body "Implement comprehensive GitHub workflow automation..." \
--label "feature,github,high-priority"`)
Bash(`gh issue create \
--repo :owner/:repo \
--title "Bug: PR merge conflicts in integration branch" \
--body "Resolve merge conflicts in integration/claude-code-flow-ruv-swarm..." \
--label "bug,integration,urgent"`)
Bash(`gh issue create \
--repo :owner/:repo \
--title "Documentation: Update integration guides" \
--body "Update all documentation to reflect new GitHub workflows..." \
--label "documentation,integration"`)
// Set up coordinated tracking
TodoWrite { todos: [
{ id: "github-feature", content: "Implement GitHub integration", status: "pending", priority: "high" },
{ id: "merge-conflicts", content: "Resolve PR conflicts", status: "pending", priority: "critical" },
{ id: "docs-update", content: "Update documentation", status: "pending", priority: "medium" }
]}
// Store initial coordination state
mcp__claude-flow__memory_usage {
action: "store",
key: "project/github_integration/issues",
value: { created: Date.now(), total_issues: 3, status: "initialized" }
}
Smart Issue Templates
Integration Issue Template:
## 🔄 Integration Task
### Overview
[Brief description of integration requirements]
### Objectives
- [ ] Component A integration
- [ ] Component B validation
- [ ] Testing and verification
- [ ] Documentation updates
### Integration Areas
#### Dependencies
- [ ] Package.json updates
- [ ] Version compatibility
- [ ] Import statements
#### Functionality
- [ ] Core feature integration
- [ ] API compatibility
- [ ] Performance validation
#### Testing
- [ ] Unit tests
- [ ] Integration tests
- [ ] End-to-end validation
### Swarm Coordination
- **Coordinator**: Overall progress tracking
- **Analyst**: Technical validation
- **Tester**: Quality assurance
- **Documenter**: Documentation updates
### Progress Tracking
Updates will be posted automatically by swarm agents during implementation.
---
🤖 Generated with Claude Code
Bug Report Template:
## 🐛 Bug Report
### Problem Description
[Clear description of the issue]
### Expected Behavior
[What should happen]
### Actual Behavior
[What actually happens]
### Reproduction Steps
1. [Step 1]
2. [Step 2]
3. [Step 3]
### Environment
- Package: [package name and version]
- Node.js: [version]
- OS: [operating system]
### Investigation Plan
- [ ] Root cause analysis
- [ ] Fix implementation
- [ ] Testing and validation
- [ ] Regression testing
### Swarm Assignment
- **Debugger**: Issue investigation
- **Coder**: Fix implementation
- **Tester**: Validation and testing
---
🤖 Generated with Claude Code
Best Practices
1. Swarm-Coordinated Issue Management
- Always initialize swarm for complex issues
- Assign specialized agents based on issue type
- Use memory for progress coordination
2. Automated Progress Tracking
- Regular automated updates with swarm coordination
- Progress metrics and completion tracking
- Cross-issue dependency management
3. Smart Labeling and Organization
- Consistent labeling strategy across repositories
- Priority-based issue sorting and assignment
- Milestone integration for project coordination
4. Batch Issue Operations
- Create multiple related issues simultaneously
- Bulk updates for project-wide changes
- Coordinated cross-repository issue management
Integration with Other Modes
Seamless integration with:
/github pr-manager- Link issues to pull requests/github release-manager- Coordinate release issues/sparc orchestrator- Complex project coordination/sparc tester- Automated testing workflows
Metrics and Analytics
Automatic tracking of:
- Issue creation and resolution times
- Agent productivity metrics
- Project milestone progress
- Cross-repository coordination efficiency
Reporting features:
- Weekly progress summaries
- Agent performance analytics
- Project health metrics
- Integration success rates