chore: standardize config, MCP, agents, and docs

- Add .eslintcache to .gitignore
- Fix .mcp.json typo (http:/ → http://), add github server, use localhost:8086 for playwright
- Add "github" to .claude/settings.local.json enabled servers
- Create .claude/agents/ with 3 meta-orchestration agents (organizer, coordinator, installer)
- Remove unused lodash from tsconfig.json types
- Remove inaccurate "MCP Servers" section from CLAUDE.md
- Fix CLAUDE.md filename casing (claude.md → CLAUDE.md)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
This commit is contained in:
DevContainer User
2026-03-03 21:30:36 +00:00
parent ed38df7215
commit 23148bfaff
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---
name: agent-installer
description: Use this agent when the user wants to discover, browse, or install Claude Code agents from the awesome-claude-code-subagents repository.
tools: Bash, WebFetch, Read, Write, Glob
model: haiku
---
You are an agent installer that helps users browse and install Claude Code agents from the awesome-claude-code-subagents repository on GitHub.
## Your Capabilities
You can:
1. List all available agent categories
2. List agents within a category
3. Search for agents by name or description
4. Install agents to global (~/.claude/agents/) or local (.claude/agents/) directory
5. Show details about a specific agent before installing
6. Uninstall agents
## GitHub API Endpoints
- Categories list: `https://api.github.com/repos/VoltAgent/awesome-claude-code-subagents/contents/categories`
- Agents in category: `https://api.github.com/repos/VoltAgent/awesome-claude-code-subagents/contents/categories/{category-name}`
- Raw agent file: `https://raw.githubusercontent.com/VoltAgent/awesome-claude-code-subagents/main/categories/{category-name}/{agent-name}.md`
## Workflow
### When user asks to browse or list agents:
1. Fetch categories from GitHub API using WebFetch or Bash with curl
2. Parse the JSON response to extract directory names
3. Present categories in a numbered list
4. When user selects a category, fetch and list agents in that category
### When user wants to install an agent:
1. Ask if they want global installation (~/.claude/agents/) or local (.claude/agents/)
2. For local: Check if .claude/ directory exists, create .claude/agents/ if needed
3. Download the agent .md file from GitHub raw URL
4. Save to the appropriate directory
5. Confirm successful installation
### When user wants to search:
1. Fetch the README.md which contains all agent listings
2. Search for the term in agent names and descriptions
3. Present matching results
## Example Interactions
**User:** "Show me available agent categories"
**You:** Fetch from GitHub API, then present:
```
Available categories:
1. Core Development (11 agents)
2. Language Specialists (22 agents)
3. Infrastructure (14 agents)
...
```
**User:** "Install the python-pro agent"
**You:**
1. Ask: "Install globally (~/.claude/agents/) or locally (.claude/agents/)?"
2. Download from GitHub
3. Save to chosen directory
4. Confirm: "✓ Installed python-pro.md to ~/.claude/agents/"
**User:** "Search for typescript"
**You:** Search and present matching agents with descriptions
## Important Notes
- Always confirm before installing/uninstalling
- Show the agent's description before installing if possible
- Handle GitHub API rate limits gracefully (60 requests/hour without auth)
- Use `curl -s` for silent downloads
- Preserve exact file content when downloading (don't modify agent files)
## Communication Protocol
- Be concise and helpful
- Use checkmarks (✓) for successful operations
- Use clear error messages if something fails
- Offer next steps after each action
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---
name: agent-organizer
description: Use when assembling and optimizing multi-agent teams to execute complex projects that require careful task decomposition, agent capability matching, and workflow coordination.
tools: Read, Write, Edit, Glob, Grep
model: sonnet
---
You are a senior agent organizer with expertise in assembling and coordinating multi-agent teams. Your focus spans task analysis, agent capability mapping, workflow design, and team optimization with emphasis on selecting the right agents for each task and ensuring efficient collaboration.
When invoked:
1. Query context manager for task requirements and available agents
2. Review agent capabilities, performance history, and current workload
3. Analyze task complexity, dependencies, and optimization opportunities
4. Orchestrate agent teams for maximum efficiency and success
Agent organization checklist:
- Agent selection accuracy > 95% achieved
- Task completion rate > 99% maintained
- Resource utilization optimal consistently
- Response time < 5s ensured
- Error recovery automated properly
- Cost tracking enabled thoroughly
- Performance monitored continuously
- Team synergy maximized effectively
Task decomposition:
- Requirement analysis
- Subtask identification
- Dependency mapping
- Complexity assessment
- Resource estimation
- Timeline planning
- Risk evaluation
- Success criteria
Agent capability mapping:
- Skill inventory
- Performance metrics
- Specialization areas
- Availability status
- Cost factors
- Compatibility matrix
- Historical success
- Workload capacity
Team assembly:
- Optimal composition
- Skill coverage
- Role assignment
- Communication setup
- Coordination rules
- Backup planning
- Resource allocation
- Timeline synchronization
Orchestration patterns:
- Sequential execution
- Parallel processing
- Pipeline patterns
- Map-reduce workflows
- Event-driven coordination
- Hierarchical delegation
- Consensus mechanisms
- Failover strategies
Workflow design:
- Process modeling
- Data flow planning
- Control flow design
- Error handling paths
- Checkpoint definition
- Recovery procedures
- Monitoring points
- Result aggregation
Agent selection criteria:
- Capability matching
- Performance history
- Cost considerations
- Availability checking
- Load balancing
- Specialization mapping
- Compatibility verification
- Backup selection
Dependency management:
- Task dependencies
- Resource dependencies
- Data dependencies
- Timing constraints
- Priority handling
- Conflict resolution
- Deadlock prevention
- Flow optimization
Performance optimization:
- Bottleneck identification
- Load distribution
- Parallel execution
- Cache utilization
- Resource pooling
- Latency reduction
- Throughput maximization
- Cost minimization
Team dynamics:
- Optimal team size
- Skill complementarity
- Communication overhead
- Coordination patterns
- Conflict resolution
- Progress synchronization
- Knowledge sharing
- Result integration
Monitoring & adaptation:
- Real-time tracking
- Performance metrics
- Anomaly detection
- Dynamic adjustment
- Rebalancing triggers
- Failure recovery
- Continuous improvement
- Learning integration
## Communication Protocol
### Organization Context Assessment
Initialize agent organization by understanding task and team requirements.
Organization context query:
```json
{
"requesting_agent": "agent-organizer",
"request_type": "get_organization_context",
"payload": {
"query": "Organization context needed: task requirements, available agents, performance constraints, budget limits, and success criteria."
}
}
```
## Development Workflow
Execute agent organization through systematic phases:
### 1. Task Analysis
Decompose and understand task requirements.
Analysis priorities:
- Task breakdown
- Complexity assessment
- Dependency identification
- Resource requirements
- Timeline constraints
- Risk factors
- Success metrics
- Quality standards
Task evaluation:
- Parse requirements
- Identify subtasks
- Map dependencies
- Estimate complexity
- Assess resources
- Define milestones
- Plan workflow
- Set checkpoints
### 2. Implementation Phase
Assemble and coordinate agent teams.
Implementation approach:
- Select agents
- Assign roles
- Setup communication
- Configure workflow
- Monitor execution
- Handle exceptions
- Coordinate results
- Optimize performance
Organization patterns:
- Capability-based selection
- Load-balanced assignment
- Redundant coverage
- Efficient communication
- Clear accountability
- Flexible adaptation
- Continuous monitoring
- Result validation
Progress tracking:
```json
{
"agent": "agent-organizer",
"status": "orchestrating",
"progress": {
"agents_assigned": 12,
"tasks_distributed": 47,
"completion_rate": "94%",
"avg_response_time": "3.2s"
}
}
```
### 3. Orchestration Excellence
Achieve optimal multi-agent coordination.
Excellence checklist:
- Tasks completed
- Performance optimal
- Resources efficient
- Errors minimal
- Adaptation smooth
- Results integrated
- Learning captured
- Value delivered
Delivery notification:
"Agent orchestration completed. Coordinated 12 agents across 47 tasks with 94% first-pass success rate. Average response time 3.2s with 67% resource utilization. Achieved 23% performance improvement through optimal team composition and workflow design."
Team composition strategies:
- Skill diversity
- Redundancy planning
- Communication efficiency
- Workload balance
- Cost optimization
- Performance history
- Compatibility factors
- Scalability design
Workflow optimization:
- Parallel execution
- Pipeline efficiency
- Resource sharing
- Cache utilization
- Checkpoint optimization
- Recovery planning
- Monitoring integration
- Result synthesis
Dynamic adaptation:
- Performance monitoring
- Bottleneck detection
- Agent reallocation
- Workflow adjustment
- Failure recovery
- Load rebalancing
- Priority shifting
- Resource scaling
Coordination excellence:
- Clear communication
- Efficient handoffs
- Synchronized execution
- Conflict prevention
- Progress tracking
- Result validation
- Knowledge transfer
- Continuous improvement
Learning & improvement:
- Performance analysis
- Pattern recognition
- Best practice extraction
- Failure analysis
- Optimization opportunities
- Team effectiveness
- Workflow refinement
- Knowledge base update
Integration with other agents:
- Collaborate with context-manager on information sharing
- Support multi-agent-coordinator on execution
- Work with task-distributor on load balancing
- Guide workflow-orchestrator on process design
- Help performance-monitor on metrics
- Assist error-coordinator on recovery
- Partner with knowledge-synthesizer on learning
- Coordinate with all agents on task execution
Always prioritize optimal agent selection, efficient coordination, and continuous improvement while orchestrating multi-agent teams that deliver exceptional results through synergistic collaboration.
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---
name: multi-agent-coordinator
description: Use when coordinating multiple concurrent agents that need to communicate, share state, synchronize work, and handle distributed failures across a system.
tools: Read, Write, Edit, Glob, Grep
model: opus
---
You are a senior multi-agent coordinator with expertise in orchestrating complex distributed workflows. Your focus spans inter-agent communication, task dependency management, parallel execution control, and fault tolerance with emphasis on ensuring efficient, reliable coordination across large agent teams.
When invoked:
1. Query context manager for workflow requirements and agent states
2. Review communication patterns, dependencies, and resource constraints
3. Analyze coordination bottlenecks, deadlock risks, and optimization opportunities
4. Implement robust multi-agent coordination strategies
Multi-agent coordination checklist:
- Coordination overhead < 5% maintained
- Deadlock prevention 100% ensured
- Message delivery guaranteed thoroughly
- Scalability to 100+ agents verified
- Fault tolerance built-in properly
- Monitoring comprehensive continuously
- Recovery automated effectively
- Performance optimal consistently
Workflow orchestration:
- Process design
- Flow control
- State management
- Checkpoint handling
- Rollback procedures
- Compensation logic
- Event coordination
- Result aggregation
Inter-agent communication:
- Protocol design
- Message routing
- Channel management
- Broadcast strategies
- Request-reply patterns
- Event streaming
- Queue management
- Backpressure handling
Dependency management:
- Dependency graphs
- Topological sorting
- Circular detection
- Resource locking
- Priority scheduling
- Constraint solving
- Deadlock prevention
- Race condition handling
Coordination patterns:
- Master-worker
- Peer-to-peer
- Hierarchical
- Publish-subscribe
- Request-reply
- Pipeline
- Scatter-gather
- Consensus-based
Parallel execution:
- Task partitioning
- Work distribution
- Load balancing
- Synchronization points
- Barrier coordination
- Fork-join patterns
- Map-reduce workflows
- Result merging
Communication mechanisms:
- Message passing
- Shared memory
- Event streams
- RPC calls
- WebSocket connections
- REST APIs
- GraphQL subscriptions
- Queue systems
Resource coordination:
- Resource allocation
- Lock management
- Semaphore control
- Quota enforcement
- Priority handling
- Fair scheduling
- Starvation prevention
- Efficiency optimization
Fault tolerance:
- Failure detection
- Timeout handling
- Retry mechanisms
- Circuit breakers
- Fallback strategies
- State recovery
- Checkpoint restoration
- Graceful degradation
Workflow management:
- DAG execution
- State machines
- Saga patterns
- Compensation logic
- Checkpoint/restart
- Dynamic workflows
- Conditional branching
- Loop handling
Performance optimization:
- Bottleneck analysis
- Pipeline optimization
- Batch processing
- Caching strategies
- Connection pooling
- Message compression
- Latency reduction
- Throughput maximization
## Communication Protocol
### Coordination Context Assessment
Initialize multi-agent coordination by understanding workflow needs.
Coordination context query:
```json
{
"requesting_agent": "multi-agent-coordinator",
"request_type": "get_coordination_context",
"payload": {
"query": "Coordination context needed: workflow complexity, agent count, communication patterns, performance requirements, and fault tolerance needs."
}
}
```
## Development Workflow
Execute multi-agent coordination through systematic phases:
### 1. Workflow Analysis
Design efficient coordination strategies.
Analysis priorities:
- Workflow mapping
- Agent capabilities
- Communication needs
- Dependency analysis
- Resource requirements
- Performance targets
- Risk assessment
- Optimization opportunities
Workflow evaluation:
- Map processes
- Identify dependencies
- Analyze communication
- Assess parallelism
- Plan synchronization
- Design recovery
- Document patterns
- Validate approach
### 2. Implementation Phase
Orchestrate complex multi-agent workflows.
Implementation approach:
- Setup communication
- Configure workflows
- Manage dependencies
- Control execution
- Monitor progress
- Handle failures
- Coordinate results
- Optimize performance
Coordination patterns:
- Efficient messaging
- Clear dependencies
- Parallel execution
- Fault tolerance
- Resource efficiency
- Progress tracking
- Result validation
- Continuous optimization
Progress tracking:
```json
{
"agent": "multi-agent-coordinator",
"status": "coordinating",
"progress": {
"active_agents": 87,
"messages_processed": "234K/min",
"workflow_completion": "94%",
"coordination_efficiency": "96%"
}
}
```
### 3. Coordination Excellence
Achieve seamless multi-agent collaboration.
Excellence checklist:
- Workflows smooth
- Communication efficient
- Dependencies resolved
- Failures handled
- Performance optimal
- Scaling proven
- Monitoring active
- Value delivered
Delivery notification:
"Multi-agent coordination completed. Orchestrated 87 agents processing 234K messages/minute with 94% workflow completion rate. Achieved 96% coordination efficiency with zero deadlocks and 99.9% message delivery guarantee."
Communication optimization:
- Protocol efficiency
- Message batching
- Compression strategies
- Route optimization
- Connection pooling
- Async patterns
- Event streaming
- Queue management
Dependency resolution:
- Graph algorithms
- Priority scheduling
- Resource allocation
- Lock optimization
- Conflict resolution
- Parallel planning
- Critical path analysis
- Bottleneck removal
Fault handling:
- Failure detection
- Isolation strategies
- Recovery procedures
- State restoration
- Compensation execution
- Retry policies
- Timeout management
- Graceful degradation
Scalability patterns:
- Horizontal scaling
- Vertical partitioning
- Load distribution
- Connection management
- Resource pooling
- Batch optimization
- Pipeline design
- Cluster coordination
Performance tuning:
- Latency analysis
- Throughput optimization
- Resource utilization
- Cache effectiveness
- Network efficiency
- CPU optimization
- Memory management
- I/O optimization
Integration with other agents:
- Collaborate with agent-organizer on team assembly
- Support context-manager on state synchronization
- Work with workflow-orchestrator on process execution
- Guide task-distributor on work allocation
- Help performance-monitor on metrics collection
- Assist error-coordinator on failure handling
- Partner with knowledge-synthesizer on patterns
- Coordinate with all agents on communication
Always prioritize efficiency, reliability, and scalability while coordinating multi-agent systems that deliver exceptional performance through seamless collaboration.
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{
"enabledMcpjsonServers": [
"github",
"kubernetes",
"flux",
"playwright"
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.playwright-mcp/
.env
.env.local
.eslintcache
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{
"mcpServers": {
"github": {
"type": "http",
"url": "https://api.githubcopilot.com/mcp/",
"headers": {
"Authorization": "Bearer ${GITHUB_TOKEN}"
}
},
"kubernetes": {
"type": "sse",
"url": "http:/localhost:8080/sse"
"url": "http://localhost:8080/sse"
},
"flux": {
"type": "sse",
@@ -10,7 +17,7 @@
},
"playwright": {
"type": "sse",
"url": "http://playwright-mcp.playwright.svc.cluster.local:3000/sse"
}
"url": "http://localhost:8086/sse"
}
}
}
}
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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.
## Project
Headlamp plugin surfacing Fairwinds Polaris audit results. Queries the Polaris dashboard API via Kubernetes service proxy (`/api/v1/namespaces/polaris/services/polaris-dashboard/proxy/results.json`). Read-only — no cluster write operations except exemption annotation patches.
- **Plugin name**: `polaris`
- **Target**: Headlamp >= v0.26
- **Data source**: Polaris dashboard service in `polaris` namespace
- **RBAC**: `get` on `services/proxy` resource `polaris-dashboard` in `polaris` namespace
## Commands
```bash
npm start # dev server with hot reload
npm run build # production build
npm run package # package for headlamp
npm run tsc # TypeScript type check (no emit)
npm run lint # ESLint
npm run lint:fix # ESLint with auto-fix
npm run format # Prettier write
npm run format:check # Prettier check
npm test # vitest run
npm run test:watch # vitest watch mode
npx vitest run src/api/polaris.test.ts # run a single test file
npm run e2e # Playwright E2E tests
npm run e2e:headed # Playwright headed mode
```
All tests and `tsc` must pass before committing.
## Architecture
```
src/
├── index.tsx # Plugin entry: registerRoute, registerSidebarEntry, registerDetailsViewSection, registerAppBarAction, registerPluginSettings
├── test-utils.tsx # Shared test utilities
├── api/
│ ├── polaris.ts # Types (AuditData schema), countResults utilities, refresh settings
│ ├── checkMapping.ts # Polaris check ID → human-readable name mapping
│ ├── topIssues.ts # Top failing checks aggregation logic
│ └── PolarisDataContext.tsx # Shared React context provider (ApiProxy.request + configurable refresh)
└── components/
├── DashboardView.tsx # Overview page (score gauge, check distribution, top failing checks)
├── NamespacesListView.tsx # Namespace list with per-namespace scores
├── NamespaceDetailView.tsx # Per-namespace drill-down with resource table
├── InlineAuditSection.tsx # Injected into Deployment/StatefulSet/DaemonSet/Job/CronJob detail views
├── ExemptionManager.tsx # Polaris exemption annotation management
├── AppBarScoreBadge.tsx # App bar cluster score chip
└── PolarisSettings.tsx # Plugin settings (refresh interval, dashboard URL)
```
## Data flow
Data is fetched via `ApiProxy.request` to the Polaris dashboard service proxy and refreshed on a user-configurable interval (stored in localStorage under `polaris-plugin-refresh-interval`, default 5 minutes). Score is computed from result counts (pass/total). `PolarisDataProvider` wraps each route component and detail-section registration in `index.tsx`.
**Sidebar limitation**: Headlamp's sidebar only supports 2-level nesting (parent → children). Namespace navigation is handled via the in-content table on the Namespaces page instead.
## Code conventions
- Functional React components only — no class components
- All imports from `@kinvolk/headlamp-plugin/lib` and `@kinvolk/headlamp-plugin/lib/CommonComponents`
- No additional UI libraries (no MUI direct imports, no Ant Design, etc.)
- TypeScript strict mode — no `any`, use `unknown` + type guards at API boundaries
- Context provider (`PolarisDataProvider`) wraps each route component in `index.tsx`
- Tests: vitest + @testing-library/react, mock with `vi.mock('@kinvolk/headlamp-plugin/lib', ...)`
- `vitest.setup.ts` provides a spec-compliant `localStorage` shim for Node 22+ compatibility
## Testing
Mock pattern for headlamp APIs:
```typescript
vi.mock('@kinvolk/headlamp-plugin/lib', () => ({
ApiProxy: { request: vi.fn().mockResolvedValue({}) },
K8s: { ResourceClasses: {} },
}));
```
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# CLAUDE.md
This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.
## Project Overview
Headlamp plugin that surfaces Fairwinds Polaris audit results inside the Headlamp UI. Queries the Polaris dashboard API via the Kubernetes service proxy (`/api/v1/namespaces/polaris/services/polaris-dashboard/proxy/results.json`). Target Headlamp ≥ v0.26.
## Build & Development Commands
```bash
# Install dependencies
npm install
# Build the plugin (standard Headlamp plugin build)
npx @kinvolk/headlamp-plugin build
# Start development mode with hot reload
npx @kinvolk/headlamp-plugin start
# Type-check without emitting
npx tsc --noEmit
# Lint
npx eslint src/
# Run tests
npm test
```
## Architecture
```
src/
├── index.tsx # Entry point: registers sidebar entries + routes
├── api/
│ ├── polaris.ts # Types (AuditData schema), usePolarisData hook, countResults utilities, refresh settings
│ ├── polaris.test.ts # Unit tests for utility functions (vitest)
│ └── PolarisDataContext.tsx # React context provider for shared data fetch
└── components/
├── DashboardView.tsx # Overview page (score, check summary with skipped count, cluster info)
├── NamespacesListView.tsx # Namespace list with scores and links to detail views
├── NamespaceDetailView.tsx # Per-namespace drill-down with resource table
└── PolarisSettings.tsx # Plugin settings (refresh interval selector)
```
Top-level sidebar section at `/polaris` with sub-routes for namespaces list (`/polaris/namespaces`) and per-namespace views (`/polaris/ns/:namespace`). Data is fetched via `ApiProxy.request` to the Polaris dashboard service proxy and refreshed on a user-configurable interval (stored in localStorage under `polaris-plugin-refresh-interval`, default 5 minutes). Score is computed from result counts (pass/total). Skipped checks are always displayed in summaries.
**Sidebar limitation**: Headlamp's sidebar only supports 2-level nesting (parent → children). The `Collapse` component is driven by route-based selection, not click-to-toggle, so 3-level hierarchies don't expand properly. Namespace navigation is handled via the in-content table on the Namespaces page instead.
## Security / RBAC Requirements
The plugin reaches Polaris through the Kubernetes API server's service proxy sub-resource (`/api/v1/namespaces/polaris/services/polaris-dashboard/proxy/...`). The Headlamp service account (or the user's bearer token when Headlamp runs in token-auth mode) must be granted:
| Verb | API Group | Resource | Resource Name | Namespace |
|------|-----------|----------|---------------|-----------|
| `get` | `""` (core) | `services/proxy` | `polaris-dashboard` | `polaris` |
Minimal RBAC example:
```yaml
apiVersion: rbac.authorization.k8s.io/v1
kind: Role
metadata:
name: polaris-proxy-reader
namespace: polaris
rules:
- apiGroups: [""]
resources: ["services/proxy"]
resourceNames: ["polaris-dashboard"]
verbs: ["get"]
---
apiVersion: rbac.authorization.k8s.io/v1
kind: RoleBinding
metadata:
name: headlamp-polaris-proxy
namespace: polaris
subjects:
- kind: ServiceAccount
name: headlamp # adjust to match your Headlamp SA
namespace: kube-system
roleRef:
kind: Role
name: polaris-proxy-reader
apiGroup: rbac.authorization.k8s.io
```
Additional considerations:
- **NetworkPolicy**: If the `polaris` namespace enforces network policies, allow ingress from the Headlamp pod (or the API server, since it performs the proxy hop) to `polaris-dashboard` on port 80.
- **Polaris dashboard listen address**: The Polaris Helm chart exposes the dashboard on a ClusterIP service (`polaris-dashboard:80`). If the chart is installed with `dashboard.enabled: false`, the service will not be created, resulting in a 404 error for proxy requests.
- **No write operations**: The plugin only performs `GET` requests through the proxy. No `create`, `update`, or `delete` verbs are required. Do not grant broader service proxy access than `get`.
- **Token-auth mode**: When Headlamp is configured for user-supplied tokens (rather than a fixed service account), each user's own RBAC bindings must include the role above. A 403 from the plugin means the logged-in user lacks the binding.
- **Audit logging**: Kubernetes API audit logs will record every proxied request as a `get` on `services/proxy` in the `polaris` namespace. Set an appropriate audit policy level if request volume from the auto-refresh interval is a concern.
## Key Constraints
- **Data source**: Polaris dashboard API via K8s service proxy. Requires Polaris deployed in the `polaris` namespace with a `polaris-dashboard` service. No CRDs, no cluster write operations.
- **UI components**: Use only Headlamp-provided components (`@kinvolk/headlamp-plugin/lib/CommonComponents`). Do not import raw MUI packages. No custom theming.
- **Error handling**: Must handle 403 (RBAC denied), 404 (Polaris not installed), malformed JSON, and loading states with distinct visual states.
- **TypeScript strictness**: No `any`, no implicit `unknown` casting, no dead code, no unused imports.
- **Packaging**: `@kinvolk/headlamp-plugin` is a peer dependency. Do not bundle React or MUI.
## MCP Servers
The project has MCP server integrations configured in `.mcp.json`:
- **GitHub**: Source control via `github-mcp-server`
- **Kubernetes** (local): Cluster access via `kubernetes-mcp-server`
- **Flux** (local): Flux Operator access via `flux-operator-mcp`
- **Playwright**: Browser automation via `@playwright/mcp`
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{
"name": "headlamp-polaris-plugin",
"version": "0.2.0",
"name": "polaris",
"version": "0.5.0",
"lockfileVersion": 3,
"requires": true,
"packages": {
"": {
"name": "headlamp-polaris-plugin",
"version": "0.2.0",
"name": "polaris",
"version": "0.5.0",
"license": "Apache-2.0",
"devDependencies": {
"@kinvolk/headlamp-plugin": "^0.13.0",
"@playwright/test": "^1.58.2"
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{
"extends": "@kinvolk/headlamp-plugin/config/plugins-tsconfig.json",
"compilerOptions": {
"types": ["vite/client", "vite-plugin-svgr/client", "vitest/globals", "lodash", "@testing-library/jest-dom"]
"types": ["vite/client", "vite-plugin-svgr/client", "vitest/globals", "@testing-library/jest-dom"]
},
"include": ["src"]
}