find-traces

oleh axiomhq

Menganalisis jejak terdistribusi OpenTelemetry dari Axiom. Gunakan saat menyelidiki ID jejak, menemukan jejak berdasarkan kriteria (kesalahan, latensi, layanan), atau men-debug…

npx skills add https://github.com/axiomhq/cli --skill find-traces

Trace Analysis

Analyze OpenTelemetry distributed traces to identify errors, latency issues, and root causes.

Arguments

When invoked with a trace ID (e.g., /find-traces abc123...), it's available as $ARGUMENTS.

Trace Dataset Discovery

First, find trace datasets:

axiom dataset list -f json

Look for datasets containing trace data (often named *traces*, *spans*, or otel-*).

Schema Discovery

Always verify field names first:

axiom query "['<trace-dataset>'] | getschema" --start-time -1h

Common Operations

Get Trace by ID

axiom query "['<dataset>']
| where trace_id == '<TRACE_ID>'
| sort by _time asc
| limit 100" --start-time -1h -f json

Find Error Traces

axiom query "['<dataset>']
| where _time >= ago(1h)
| where error == true
| extend error = coalesce(ensure_field(\"error\", typeof(bool)), false)
| summarize
    start_time = min(_time),
    total_duration = max(duration),
    span_count = count(),
    error_count = countif(error),
    services = make_set(['service.name']),
    root_operation = arg_min(_time, name)
  by trace_id
| sort by start_time desc
| limit 20" --start-time -1h -f json

Find Slow Traces

axiom query "['<dataset>']
| where _time >= ago(1h)
| where duration >= 1000000000
| summarize
    start_time = min(_time),
    total_duration = max(duration),
    span_count = count(),
    services = make_set(['service.name'])
  by trace_id
| sort by total_duration desc
| limit 20" --start-time -1h -f json

Find Traces by Service

axiom query "['<dataset>']
| where _time >= ago(1h)
| where ['service.name'] == '<SERVICE>'
| summarize
    start_time = min(_time),
    total_duration = max(duration),
    span_count = count(),
    error_count = countif(error == true)
  by trace_id
| sort by start_time desc
| limit 20" --start-time -1h -f json

Error Spans in Trace

axiom query "['<dataset>']
| where trace_id == '<TRACE_ID>'
| where error == true
| project _time, ['service.name'], name, duration, ['status.message']" --start-time -1h -f json

Critical Path Analysis

axiom query "['<dataset>']
| where trace_id == '<TRACE_ID>'
| project span_id, parent_span_id, ['service.name'], name, duration, error
| sort by duration desc" --start-time -1h -f json

OTel Field Reference

FieldBracket?Description
trace_idNo32-char trace identifier
span_idNo16-char span identifier
parent_span_idNoParent span (empty for root)
nameNoOperation name
durationNoDuration in nanoseconds
kindNoCLIENT, SERVER, INTERNAL, PRODUCER, CONSUMER
errorNoBoolean error flag
['service.name']YesService identifier
['status.code']YesOK, ERROR, or nil
['status.message']YesError description
['scope.name']YesInstrumentation library

Duration Conversion

OTel durations are in nanoseconds:

HumanNanosecondsFilter
1 ms1,000,000duration >= 1000000
100 ms100,000,000duration >= 100000000
1 s1,000,000,000duration >= 1000000000

Convert for display:

| extend duration_ms = duration / 1000000.0

Custom Attributes

Non-standard span attributes are stored in attributes.custom map:

// Filter by custom attribute
| where ['attributes.custom']['user_id'] == "123"

// Aggregation requires explicit cast
| summarize count() by tostring(['attributes.custom']['tenant'])

Without tostring(), aggregations fail with "grouping by field of type unknown".

Codebase Correlation

When working in a repository that matches the traced service, correlate trace data with source code to identify root causes.

Mapping Trace Data to Code

  1. Extract package/module path from ['scope.name']

    • Contains the instrumentation library or package path
    • Strip the module prefix to get the local path
    • Example: github.com/org/repo/pkg/authpkg/auth
  2. Find code from operation name

    • The name field often contains function names or HTTP routes
    • Search the codebase for matching handlers, functions, or endpoints
  3. Trace the call chain

    • Follow parent-child span relationships
    • Map each span to its corresponding code location
    • Identify where errors originate and propagate

Note: Codebase correlation is optional. Proceed with trace-only analysis if code is unavailable or doesn't match the traced services.

Output Format

When analyzing a trace, provide:

## Trace Summary
- **Trace ID:** <id>
- **Duration:** <human-readable>
- **Services:** <list>
- **Outcome:** success/failure

## Sequence of Events
1. <Service> - <operation> (<duration>)
2. <Service> - <operation> (<duration>) ⚠️ ERROR
...

## Error Analysis
<What failed, when, why>

## Root Cause
<Deepest error and explanation>

## Codebase Locations (if applicable)
- **Service:** <service.name>
- **Package:** <scope.name>
- **Files:** <specific files to investigate>

## Recommended Actions
1. <Specific action>
2. <What to investigate next>

When NOT to Use

  • Metrics analysis: Traces are for request flow; use logs/metrics skills for aggregated performance data
  • Non-OTel data: This skill assumes OpenTelemetry field conventions (trace_id, span_id, etc.)
  • Known trace structure: If you already have the query, run it directly without invoking this skill
  • Alerting on trace patterns: Use Axiom Monitors for continuous alerting

APL Reference

For query syntax, invoke the axiom-apl skill which provides trace analysis patterns and duration unit guidance.

Lebih banyak skill dari axiomhq

axiom-apl
axiomhq
Referensi bahasa kueri APL untuk Axiom. Menyediakan operator, fungsi, pola, dan penggunaan CLI. Dipanggil secara otomatis oleh skill Axiom khusus saat menulis atau…
official
detect-anomalies
axiomhq
Mendeteksi anomali dalam dataset Axiom menggunakan analisis statistik. Gunakan saat mencari pola tidak biasa, lonjakan volume, pencilan, atau jenis kesalahan baru di…
official
explore-dataset
axiomhq
Jelajahi dataset Axiom untuk memahami skema, bidang, volume, dan polanya. Gunakan saat menemukan dataset baru, menyelidiki struktur data, atau…
official
gilfoyle
axiomhq
Agen SRE yang melakukan apa yang tidak bisa Anda lakukan. Melakukan kueri pada tumpukan observabilitas Anda. Menemukan akar penyebab. Tidak panik. Tidak menebak-nebak. Tidak peduli dengan perasaan Anda. Gunakan…
official
axiom-sre
axiomhq
Penyelidik SRE ahli untuk insiden dan debugging. Menggunakan metodologi berbasis hipotesis dan triase sistematis. Dapat melakukan kueri observabilitas Axiom jika tersedia.…
official
building-dashboards
axiomhq
Mendesain dan membangun dasbor Axiom melalui API. Mencakup jenis grafik, pola kueri APL dan metrik/MPL, SmartFilters, tata letak, serta opsi konfigurasi. Gunakan ketika…
official
controlling-costs
axiomhq
Menganalisis pola kueri Axiom untuk menemukan data yang tidak digunakan, lalu membuat dasbor dan pemantau untuk optimalisasi biaya. Gunakan saat diminta untuk mengurangi biaya Axiom, menemukan data yang tidak digunakan…
official
query-metrics
axiomhq
Menjalankan kueri metrik terhadap Axiom MetricsDB melalui skrip. Menemukan metrik, tag, dan nilai tag yang tersedia. Gunakan saat diminta untuk menanyakan metrik, menjelajahi metrik…
official