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azure-resource-visualizer AI Agent Skill

Quellcode ansehen: microsoft/azure-skills

Critical

Installation

npx skills add microsoft/azure-skills --skill azure-resource-visualizer

197.3K

Installationen

Azure Resource Visualizer - Architecture Diagram Generator

A user may ask for help understanding how individual resources fit together, or to create a diagram showing their relationships. Your mission is to examine Azure resource groups, understand their structure and relationships, and generate comprehensive Mermaid diagrams that clearly illustrate the architecture.

Core Responsibilities

  1. Resource Group Discovery: List available resource groups when not specified
  2. Deep Resource Analysis: Examine all resources, their configurations, and interdependencies
  3. Relationship Mapping: Identify and document all connections between resources
  4. Diagram Generation: Create detailed, accurate Mermaid diagrams
  5. Documentation Creation: Produce clear markdown files with embedded diagrams

Workflow Process

Step 1: Resource Group Selection

If the user hasn't specified a resource group:

  1. Use your tools to query available resource groups. If you do not have a tool for this, use az.
  2. Present a numbered list of resource groups with their locations
  3. Ask the user to select one by number or name
  4. Wait for user response before proceeding

If a resource group is specified, validate it exists and proceed.

Step 2: Resource Discovery & Analysis

For bulk resource discovery across subscriptions, use Azure Resource Graph queries. See Azure Resource Graph Queries for cross-subscription inventory and relationship discovery patterns.

Once you have the resource group:

  1. Query all resources in the resource group using Azure MCP tools or az.

  2. Analyze each resource type and capture:

    • Resource name and type
    • SKU/tier information
    • Location/region
    • Key configuration properties
    • Network settings (VNets, subnets, private endpoints)
    • Identity and access (Managed Identity, RBAC)
    • Dependencies and connections
  3. Map relationships by identifying:

    • Network connections: VNet peering, subnet assignments, NSG rules, private endpoints
    • Data flow: Apps → Databases, Functions → Storage, API Management → Backends
    • Identity: Managed identities connecting to resources
    • Configuration: App Settings pointing to Key Vaults, connection strings
    • Dependencies: Parent-child relationships, required resources

Step 3: Diagram Construction

Create a detailed Mermaid diagram using the graph TB (top-to-bottom) or graph LR (left-to-right) format.

See example-diagram.md for a complete sample architecture diagram.

Key Diagram Requirements:

  • Group by layer or purpose: Network, Compute, Data, Security, Monitoring
  • Include details: SKUs, tiers, important settings in node labels (use <br/> for line breaks)
  • Label all connections: Describe what flows between resources (data, identity, network)
  • Use meaningful node IDs: Abbreviations that make sense (APP, FUNC, SQL, KV)
  • Visual hierarchy: Subgraphs for logical grouping
  • Connection types:
    • --> for data flow or dependencies
    • -.-> for optional/conditional connections
    • ==> for critical/primary paths

Resource Type Examples:

  • App Service: Include plan tier (B1, S1, P1v2)
  • Functions: Include runtime (.NET, Python, Node)
  • Databases: Include tier (Basic, Standard, Premium)
  • Storage: Include redundancy (LRS, GRS, ZRS)
  • VNets: Include address space
  • Subnets: Include address range

Step 4: File Creation

Use template-architecture.md as a template and create a markdown file named [resource-group-name]-architecture.md with:

  1. Header: Resource group name, subscription, region
  2. Summary: Brief overview of the architecture (2-3 paragraphs)
  3. Resource Inventory: Table listing all resources with types and key properties
  4. Architecture Diagram: The complete Mermaid diagram
  5. Relationship Details: Explanation of key connections and data flows
  6. Notes: Any important observations, potential issues, or recommendations

Operating Guidelines

Quality Standards

  • Accuracy: Verify all resource details before including in diagram
  • Completeness: Don't omit resources; include everything in the resource group
  • Clarity: Use clear, descriptive labels and logical grouping
  • Detail Level: Include configuration details that matter for architecture understanding
  • Relationships: Show ALL significant connections, not just obvious ones

Tool Usage Patterns

  1. Azure MCP Search:

    • Use intent="list resource groups" to discover resource groups
    • Use intent="list resources in group" with group name to get all resources
    • Use intent="get resource details" for individual resource analysis
    • Use command parameter when you need specific Azure operations
  2. File Creation:

    • Always create in workspace root or a docs/ folder if it exists
    • Use clear, descriptive filenames: [rg-name]-architecture.md
    • Ensure Mermaid syntax is valid (test syntax mentally before output)
  3. Terminal (when needed):

    • Use Azure CLI for complex queries not available via MCP
    • Example: az resource list --resource-group <name> --output json
    • Example: az network vnet show --resource-group <name> --name <vnet-name>

Constraints & Boundaries

Always Do:

  • ✅ List resource groups if not specified
  • ✅ Wait for user selection before proceeding
  • ✅ Analyze ALL resources in the group
  • ✅ Create detailed, accurate diagrams
  • ✅ Include configuration details in node labels
  • ✅ Group resources logically with subgraphs
  • ✅ Label all connections descriptively
  • ✅ Create a complete markdown file with diagram

Never Do:

  • ❌ Skip resources because they seem unimportant
  • ❌ Make assumptions about resource relationships without verification
  • ❌ Create incomplete or placeholder diagrams
  • ❌ Omit configuration details that affect architecture
  • ❌ Proceed without confirming resource group selection
  • ❌ Generate invalid Mermaid syntax
  • ❌ Modify or delete Azure resources (read-only analysis)

Edge Cases & Error Handling

  • No resources found: Inform user and verify resource group name
  • Permission issues: Explain what's missing and suggest checking RBAC
  • Complex architectures (50+ resources): Consider creating multiple diagrams by layer
  • Cross-resource-group dependencies: Note external dependencies in diagram notes
  • Resources without clear relationships: Group in "Other Resources" section

Output Format Specifications

Mermaid Diagram Syntax

  • Use graph TB (top-to-bottom) for vertical layouts
  • Use graph LR (left-to-right) for horizontal layouts (better for wide architectures)
  • Subgraph syntax: subgraph "Descriptive Name"
  • Node syntax: ID["Display Name<br/>Details"]
  • Connection syntax: SOURCE -->|"Label"| TARGET

Markdown Structure

  • Use H1 for main title
  • Use H2 for major sections
  • Use H3 for subsections
  • Use tables for resource inventories
  • Use bullet lists for notes and recommendations
  • Use code blocks with mermaid language tag for diagrams

Success Criteria

A successful analysis includes:

  • ✅ Valid resource group identified
  • ✅ All resources discovered and analyzed
  • ✅ All significant relationships mapped
  • ✅ Detailed Mermaid diagram with proper grouping
  • ✅ Complete markdown file created
  • ✅ Clear, actionable documentation
  • ✅ Valid Mermaid syntax that renders correctly
  • ✅ Professional, architect-level output

Your goal is to provide clarity and insight into Azure architectures, making complex resource relationships easy to understand through excellent visualization.

Installationen

Installationen 197.3K
Globales Ranking #18 von 600

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So verwenden Sie diesen Skill

1

Install azure-resource-visualizer by running npx skills add microsoft/azure-skills --skill azure-resource-visualizer in your project directory. Führen Sie den obigen Installationsbefehl in Ihrem Projektverzeichnis aus. Die Skill-Datei wird von GitHub heruntergeladen und in Ihrem Projekt platziert.

2

Keine Konfiguration erforderlich. Ihr KI-Agent (Claude Code, Cursor, Windsurf usw.) erkennt installierte Skills automatisch und nutzt sie als Kontext bei der Code-Generierung.

3

Der Skill verbessert das Verständnis Ihres Agenten für azure-resource-visualizer, und hilft ihm, etablierte Muster zu befolgen, häufige Fehler zu vermeiden und produktionsreifen Code zu erzeugen.

Was Sie erhalten

Skills sind Klartext-Anweisungsdateien — kein ausführbarer Code. Sie kodieren Expertenwissen über Frameworks, Sprachen oder Tools, das Ihr KI-Agent liest, um seine Ausgabe zu verbessern. Das bedeutet null Laufzeit-Overhead, keine Abhängigkeitskonflikte und volle Transparenz: Sie können jede Anweisung vor der Installation lesen und prüfen.

Kompatibilität

Dieser Skill funktioniert mit jedem KI-Coding-Agenten, der das skills.sh-Format unterstützt, einschließlich Claude Code (Anthropic), Cursor, Windsurf, Cline, Aider und anderen Tools, die projektbezogene Kontextdateien lesen. Skills sind auf Transportebene framework-agnostisch — der Inhalt bestimmt, für welche Sprache oder welches Framework er gilt.

Data sourced from the skills.sh registry and GitHub. Install counts and security audits are updated regularly.

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