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google/cloud-monitoring-metric-selection

google

cloud-monitoring-metric-selection

Retrieve, query, and identify relevant Google Cloud Monitoring metric descriptors for a GCP service or resource (such as Compute Engine, Spanner, BigQuery, Cloud Run, Cloud SQL, Pub/Sub, Cloud Storage, etc.). Use when asked to find, list, search, or discover GCP metric types, names, kind/value schemas, or descriptors.

global
Allowed Tools
list_metric_descriptorssearch_web
New~2.1k
v1.0Saved Jul 17, 2026

Metric Selection (Service Query & Local Keyword Filtering)

Use this skill to identify the most relevant Google Cloud Monitoring metric descriptors. It queries all metric descriptors for a target service from the API and filters them locally inside the agent's context using keyword matching.

CRITICAL RULES

  • Always Query Live APIs: You MUST always retrieve the most up-to-date metric descriptors dynamically by calling the list_metric_descriptors MCP tool.

Workflow

Step 1: Verify & Auto-Configure MCP

  1. Check if any tool matching list_metric_descriptors (e.g. google-cloud-monitoring:list_metric_descriptors, mcp_google-cloud-monitoring_list_metric_descriptors, or a similar pattern) is available in your active toolset.

  2. Verify via Unique URL: To ensure you are calling the correct Google Cloud Monitoring tool, confirm that the underlying MCP server configuration points to: https://monitoring.googleapis.com/mcp.

  3. If the tool is missing:

    • Locate the MCP configuration file for the user's environment. Check common paths:

      • ~/.gemini/config/mcp_config.json
      • ~/.codeium/windsurf/mcp_config.json
      • cline_mcp_settings.json
      • claude_desktop_config.json
    • Directly update/merge the configuration file with the following server configuration. CRITICAL: Merge the JSON object to preserve any existing MCP servers in mcpServers. Do not overwrite the file.

      "google-cloud-monitoring": {
        "url": "https://monitoring.googleapis.com/mcp",
        "authProviderType": "google_credentials",
        "enabledTools": [
          "list_metric_descriptors"
        ]
      }
      
    • Print a clear message notifying the user that the google-cloud-monitoring MCP server has been configured, and request them to restart or start a new chat session to refresh tools. Stop calling further tools and end the turn.

Step 2: Analyze Request & Extract Keywords

  1. Identify the target GCP service prefix (e.g. compute, spanner, bigquery, storage) and the project ID from the resource URI.
  2. Extract target metric concepts from the user's prompt (e.g., "CPU", "memory", "bytes scanned", "latency", "connections").
  3. Map these concepts to standard Google Cloud Monitoring metric substrings (e.g., cpu, mem, scanned_bytes, latenc, connections).

Example Query Analysis:

  • User Prompt: "Check Cloud Storage bucket write throughput and request count"
  • Resource URI: //storage.googleapis.com/projects/my-project/buckets/my-bucket
  • Service Prefix: storage (mapped to storage.googleapis.com)
  • Metric Keywords: write, throughput, request, count
  • Mapped Substrings: write, throughput, request_count, count

Step 3: Query Metric Descriptors via list_metric_descriptors Tool

Query all metric descriptors for each identified service prefix using the list_metric_descriptors MCP tool (using pageSize: 200). Because Google Cloud Monitoring filters do not allow combining multiple metric.type restrictions with OR, you must initiate a separate query for each identified service prefix (either sequentially or in parallel).

If any response includes a nextPageToken, you MUST make consecutive follow-up calls passing pageToken until all remaining descriptors for that prefix are retrieved before filtering.

Filter Pattern Construction: Map the target service domain to its appropriate prefix style:

  1. Standard Google Cloud Services: starts_with("<service_prefix>.googleapis.com/") (e.g., bigquery.googleapis.com/, redis.googleapis.com/).
  2. Ops Agent (Guest OS): starts_with("agent.googleapis.com/") (for guest OS memory/disk metrics).
  3. Kubernetes / GKE Native: starts_with("kubernetes.io/")
  4. Istio Service Mesh: starts_with("istio.io/")
  5. Knative Serving / Autoscaler: starts_with("knative.dev/")
  6. Custom / External Metrics: Use starts_with("custom.googleapis.com/") or starts_with("external.googleapis.com/").

Example Tool Call Payload: If both Spanner and Compute Engine are targeted in the request, execute these two tool calls:

  1. Spanner query:
{
  "name": "projects/my-project-id",
  "filter": "metric.type = starts_with(\"spanner.googleapis.com/\")",
  "pageSize": 200
}
  1. Compute Engine query:
{
  "name": "projects/my-project-id",
  "filter": "metric.type = starts_with(\"compute.googleapis.com/\")",
  "pageSize": 200
}

Call the list_metric_descriptors tool with these payloads.

Step 4: Local Filtering & Fallback Protocol

Aggregate all descriptors returned from Step 3, and filter them locally inside your LLM context:

  1. Keyword Filtering: Filter the list by matching your target metric keywords (e.g. "cpu", "latency") against the type, displayName, and description fields of the descriptors.
  2. Resource Alignment: Check if the metric contains labels matching the target resource granularity (e.g., checking for a database label if targeting a database resource). Do not attempt to dynamically match resource type strings directly, as Google Cloud Monitoring resource mappings (like Spanner databases mapping to spanner_instance) can be counter-intuitive.

Troubleshooting & API Fallbacks

If any tool call fails, times out, or returns empty results, use these strategies:

  • Case A: API Syntax Error: Examine the error message, correct the filter syntax, and retry.
  • Case B: Timeout / Rate Limits: Retry the call once with a smaller page size (e.g., pageSize: 20).
  • Case C: Unrecoverable Failure / Empty List:
    1. Verify if the target service is enabled in the project.
    2. Search Google Cloud public documentation to verify standard metrics for the service.
    3. Notify the user of the failure and ask for clarification.

Step 5: Output Selected Metrics

For each service domain, return only the 5-15 key metrics directly relevant to the user's intent.

You MUST report the selected metrics in clean Markdown tables, grouped by service (i.e., one table per service prefix). The table MUST include the following columns: "Metric Type", "Display Name", "Description", "Metric Kind", "Value Type", and "Monitored Resource Types". Map the fields from the Google Cloud Monitoring list_metric_descriptors tool call response objects directly to the table columns:

  • Metric Type: Map to the type field (e.g., spanner.googleapis.com/instance/cpu/utilization).
  • Display Name: Map to the displayName field.
  • Description: Map to the description field.
  • Metric Kind: Map to the metricKind field (e.g., GAUGE, DELTA, CUMULATIVE).
  • Value Type: Map to the valueType field (e.g., INT64, DOUBLE, DISTRIBUTION, BOOL).
  • Monitored Resource Types: Map to the monitoredResourceTypes list field (e.g., ["spanner_instance"]).

Example Output Table:

Metric Type Display Name Description Metric Kind Value Type Monitored Resource Types
spanner.googleapis.com/instance/cpu/utilization Instance CPU Utilization Fraction of allocated CPU currently in use. GAUGE DOUBLE ["spanner_instance"]
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Overall Score

83/100

Grade

B

Good

Safety

82

Quality

87

Clarity

84

Completeness

78

Summary

This skill guides agents to retrieve and filter Google Cloud Monitoring metric descriptors for GCP services (Compute Engine, Spanner, BigQuery, Cloud Run, etc.). It queries the live Google Cloud Monitoring API dynamically, performs local keyword filtering on the results, and outputs relevant metrics in structured Markdown tables. The skill includes MCP tool verification, configuration fallback logic, and troubleshooting guidance for API failures.

Detected Capabilities

google cloud api query (list_metric_descriptors)MCP tool invocationLocal data filtering and aggregationMarkdown table generationWeb search (search_web tool)Configuration file detection and merging (JSON)Error handling and retry logic

Trigger Keywords

Phrases that MCP clients use to match this skill to user intent.

gcp metrics discoverycloud monitoring metricsfind metric descriptorsmetric selection gcpcloud resource monitoringmetric type lookup

Risk Signals

WARNING

MCP configuration file modification - skill instructs updating ~/.gemini/config/mcp_config.json, ~/.codeium/windsurf/mcp_config.json, cline_mcp_settings.json, and claude_desktop_config.json

Step 1: Verify & Auto-Configure MCP
WARNING

JSON file merge operation without explicit atomic write safeguards - instructs to 'merge the JSON object to preserve any existing MCP servers' but does not specify how to prevent corruption during concurrent writes or partial failures

Step 1: Verify & Auto-Configure MCP
INFO

Network access to Google Cloud APIs (monitoring.googleapis.com) - required for metric descriptor queries, but scoped to authorized GCP projects only

Step 3: Query Metric Descriptors via list_metric_descriptors Tool
INFO

Dynamic filter string construction from user input - Step 2 extracts keywords from user prompt and maps them to metric substrings used in API filter syntax

Step 2: Analyze Request & Extract Keywords

Referenced Domains

External domains referenced in skill content, detected by static analysis.

cloud.google.comdocs.cloud.google.commonitoring.googleapis.comwww.apache.org

Use Cases

  • Discover available metrics for a specific GCP service
  • Find CPU, memory, latency, or throughput metrics for a GCP resource
  • Identify metric descriptors before setting up monitoring alerts
  • Query Cloud Storage, Cloud SQL, BigQuery, or Pub/Sub metrics
  • Troubleshoot metric availability when dashboard configuration fails
  • Verify metric types and schemas for API-based monitoring integrations

Quality Notes

  • Excellent documentation structure with clear workflow steps (1-5) that guide agent behavior methodically
  • Comprehensive mapping of GCP service prefixes to metric filter patterns (Standard Google Cloud Services, Ops Agent, Kubernetes, Istio, Knative, Custom)
  • Strong error handling guidance with fallback protocols for API failures (Case A: Syntax, Case B: Timeout/Rate Limits, Case C: Unrecoverable)
  • Example payloads are concrete and executable, showing both single-service and multi-service query patterns
  • Output format is well-specified: Markdown tables with exact column mapping (type → Metric Type, displayName → Display Name, etc.)
  • Pagination handling is documented (pageToken follow-up calls until all descriptors retrieved)
  • MCP tool verification includes both tool name pattern matching and URL verification (monitoring.googleapis.com/mcp)
  • Critical rules section explicitly states 'Always Query Live APIs' to prevent stale data
  • Resource alignment guidance is practical (e.g., checking for database labels rather than dynamic resource type matching)
  • Appropriate use of reference documentation links (though some URLs point to cloud.google.com domains)
  • Step 4 local filtering approach is agent-friendly: keyword matching against type/displayName/description fields
Model: claude-haiku-4-5-20251001Analyzed: Jul 17, 2026

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