cx-telemetry-querying
Use this skill for any question involving telemetry data: "investigate an issue", "debug a problem", "find out why something is slow", "check error rates", "analyze user behavior", "understand a production incident", "query telemetry data", "look at logs", "search logs", "find errors", "find stack traces", "filter by severity", "check traces", "examine spans", "investigate request latency", "debug service-to-service calls", "look up a trace ID", "analyze RUM data", "check frontend performance", "frontend errors", "Core Web Vitals", "JavaScript exceptions", "query metrics", "check CPU usage", "run a PromQL query", "check error rate", "look up a metric", "check memory usage", "how do I write a DataPrime query", "DataPrime syntax", or wants to answer questions using observability data from logs, metrics, traces, RUM, or APM.
How do I install this agent skill?
npx skills add https://github.com/coralogix/cx-cli --skill cx-telemetry-queryingIs this agent skill safe to install?
- Gen Agent Trust Hubpass
This skill provides a detailed framework for querying and analyzing telemetry data using the Coralogix 'cx' CLI. It is a legitimate tool-integration skill authored by Coralogix and does not exhibit any malicious patterns. The identified attack surface for indirect prompt injection is inherent to the skill's primary function and is considered minimal risk.
- Socketpass
No alerts
- Snykpass
Risk: LOW · No issues
What does this agent skill do?
Telemetry Querying Skill
Use this skill as the entry point for any investigation, debugging, or data question that may be answered from telemetry data. It helps you decide where the relevant signal lives (metrics, logs, traces, RUM) and tells you which reference files to load before querying.
Loading References
Before querying, load the reference files for the chosen pillar:
| Pillar | Load these files |
|---|---|
| Logs | references/dataprime-reference.md + references/logs-querying.md |
| Spans / Traces | references/dataprime-reference.md + references/spans-querying.md |
| Metrics | references/promql-guidelines.md + references/metrics-querying.md |
| RUM (frontend) | references/dataprime-reference.md + references/logs-querying.md + references/rum-querying.md + references/rum-fields.md |
| DataPrime syntax only | references/dataprime-reference.md |
Safety
All query commands (cx logs, cx spans, cx metrics, cx dataprime, cx search-fields) are read-only and work in --read-only mode. They never modify data and can be run freely without --yes.
Quick Routing Guide
Use this table for obvious cases where one pillar is the clear first choice:
| Question Type | First Choice | Fallback |
|---|---|---|
| UI behavior, page load, frontend errors | RUM | Traces (if backend-related) |
| Endpoint latency, throughput, error rates | Metrics | Traces (for per-request detail) |
| Service-to-service dependencies, request flow | Traces | Logs (for debug output) |
| Specific error messages, stack traces | Logs | Traces (for request context) |
| Infrastructure health (CPU, memory, disk) | Metrics | - |
| Business events (purchases, signups) | Depends - see Discovery Workflow | - |
For ambiguous questions (e.g., "How much money did users spend last week?"), the signal could live in any pillar. Follow the Discovery Workflow below.
Discovery Workflow
When the answer could reside in multiple pillars, run discovery in parallel to find the best source.
Step 1: Search Metrics
Check if a relevant metric exists:
cx metrics search --name '*transaction*'
cx metrics search --name '*payment*'
cx metrics search --name '*revenue*'
cx metrics search --description "total purchase amount"
If a matching metric is found, load references/promql-guidelines.md + references/metrics-querying.md and continue.
Step 2: Search Log and Span Fields
Use semantic field search to find relevant DataPrime paths:
cx search-fields "transaction amount" --dataset logs
cx search-fields "payment total" --dataset spans
cx search-fields "purchase value" --dataset logs --limit 10
If you know a concrete value that should appear in the data but don't know which field holds it, use value search instead. It returns the matching field keys alongside sample values, which also lets you infer the field's type (string, numeric, enum, etc.):
cx search-fields "payment_failed" -s value --dataset logs
cx search-fields "grpc.status.UNAVAILABLE" -s value --dataset spans
cx search-fields "eu-west-1" -s value --dataset all
Requirements: cx search-fields needs a Coralogix API key or OAuth on the active profile. If credentials are missing, prompt the user to run cx profiles add <name>.
If matching fields are found:
- For logs: load
references/dataprime-reference.md+references/logs-querying.md - For spans: load
references/dataprime-reference.md+references/spans-querying.md
Step 3: Search the Codebase
When discovery results are ambiguous or you need to validate what a metric/field actually represents, search the codebase:
- Look for metric registration code (e.g.,
prometheus.NewCounter,metrics.record) - Look for log statements that emit the field (e.g.,
logger.info("transaction", ...)) - Look for span attributes (e.g.,
span.setAttribute("purchase.amount", ...))
This confirms the semantic meaning and helps you choose the right pillar.
Step 4: Choose and Query
Based on discovery results, pick the pillar with the clearest signal, load its reference files (see Loading References), then query.
Fallback and Pivoting
If your initial route yields no results, pivot to another pillar.
Example pivot paths:
- Metrics empty → try traces (per-request data) or logs (event records)
- Logs empty → try traces (structured span attributes) or metrics (aggregated counters)
- Traces empty → try logs (text-based debug output)
Do not stop after one failed attempt. Try at least two pillars before concluding the data does not exist.
CLI Commands Reference
| Command | Purpose | When to Use |
|---|---|---|
cx schema | Output the full command tree as JSON | Discover all available commands and their flags |
cx metrics search --name <pattern> | Find metrics by name | First step for metrics discovery |
cx metrics search --description <text> | Semantic metric search | When you know what you want but not the name |
cx search-fields "<text>" --dataset logs | Find log fields by description | Discovery for log-based questions |
cx search-fields "<text>" --dataset spans | Find span fields by description | Discovery for trace-based questions |
cx search-fields "<value>" -s value --dataset logs | Find log fields that contain a known value | When you know a value but not which log field holds it — also reveals field type from the returned values |
cx search-fields "<value>" -s value --dataset spans | Find span fields that contain a known value | When you know a value but not which span attribute holds it |
cx search-fields "<value>" -s value --dataset all | Same, across logs and spans | When you want to search across both logs and spans at once |
cx spans "filter $l.serviceName == '<service>'" --limit 10 | Search spans by service | When investigating a specific service |
cx dataprime list | List DataPrime commands/functions | When building log or span queries |
cx dashboards search "<description>" | Find existing dashboards by natural-language description | Before creating a new dashboard — check if one already exists |
cx dashboards query-search --description "<text>" | Find dashboard widgets whose queries cover a topic | Discover how a topic is already being monitored |
cx dashboards query-search --field "<field-path>" | Find widgets that reference a specific field | Reuse existing PromQL/DataPrime patterns for a known field |
Examples
Example 1: Business Question (Ambiguous Source)
Question: "How much money did people spend on the platform last week?"
Approach:
- Search metrics:
cx metrics search --name '*revenue*'andcx metrics search --name '*transaction*' - Search log fields:
cx search-fields "transaction amount" --dataset logs - Search span fields:
cx search-fields "payment total" --dataset spans - If a metric like
payment_total_usdexists, load metrics references and run a range query - If only logs have the data, load logs references and use DataPrime aggregation
- If traces have
purchase.amountattribute, load spans references
Example 2: Latency Question (Clear First Choice)
Question: "What's the average latency of the checkout route?"
Approach:
- First try metrics:
cx metrics search --name '*checkout*latency*'orcx metrics search --name '*http*duration*' - If a histogram metric exists, load metrics references and use
histogram_quantile - If no metric, fall back to traces: load spans references and aggregate span durations
Example 3: Frontend Performance (RUM)
Question: "Why is the dashboard page loading slowly for users?"
Approach:
- This is clearly a RUM question - load
references/rum-querying.md+references/rum-fields.md+references/logs-querying.md+references/dataprime-reference.md - Query web vitals and page load times
- If RUM shows backend calls are slow, pivot to spans references for the API calls
Example 4: Error Investigation (Logs + Traces)
Question: "Why are users getting 500 errors on the payment endpoint?"
Approach:
- Check error rate metrics → load metrics references
- Search for error logs → load logs references
- Get traces for failed requests → load spans references
- Cross-reference: find trace IDs in logs, then fetch full traces for root cause
Beyond Investigation
Not every question is answered by querying data. If the user's intent is operational rather than investigative, route to the appropriate workflow skill:
| User Intent | Route To |
|---|---|
| Reducing costs, checking usage, TCO policies | cx-cost-optimization |
| Triaging a case, who got paged, case timeline | cx-cases |
| SLO status, error budget, service-level targets | cx-slos |
| Setting up monitoring, webhooks, notifications | cx-observability-setup |
| Configuring parsing rules, enrichments, E2M | cx-data-pipeline |
| Access audit, API keys, user management | cx-platform-admin |
| Creating or managing dashboards | cx-dashboards |
| Finding or searching existing dashboards | cx-search-dashboard |
Key Principles
- Load references before querying: check the Loading References table first
- Discover before querying: always run search/discovery to find the right source
- Parallel discovery: for ambiguous questions, search metrics, logs, and spans concurrently
- Validate with code: when unsure what a metric or field represents, check the codebase
- Pivot on failure: if one pillar is empty, try another before giving up
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/coralogix/cx-cli/cx-telemetry-querying">View cx-telemetry-querying on skillZs</a>