otel-ottlद्वारा dash0hq

OpenTelemetry Transformation Language (OTTL) expert. Use when writing or debugging OTTL expressions for any OpenTelemetry Collector component that supports…

npx skills add https://github.com/dash0hq/agent-skills --skill otel-ottl

OpenTelemetry Transformation Language (OTTL)

Components that use OTTL

OTTL is not limited to the transform and filter processors. Processors (transform, filter, attributes, span, tailsampling, cumulativetodelta, logdedup, lookup), connectors (routing, count, sum, signaltometrics), and the hostmetrics receiver all accept OTTL expressions. See components for the full list with use cases.

OTTL syntax

Path expressions

Navigate telemetry data using dot notation:

span.name
span.attributes["http.method"]
resource.attributes["service.name"]

Contexts (first path segment): resource, scope, span, spanevent, metric, datapoint, log.

Enumerations

Use int64 constants for enumeration fields:

span.status.code == STATUS_CODE_ERROR
span.kind == SPAN_KIND_SERVER

Operators

Assignment: = — Comparison: ==, !=, >, <, >=, <= — Logical: and, or, not

Functions

Converters (uppercase, return values):

ToUpperCase(span.attributes["http.request.method"])
Substring(log.body.string, 0, 1024)
Concat(["prefix", span.attributes["request.id"]], "-")
IsMatch(metric.name, "^k8s\\..*$")

Editors (lowercase, modify data in-place):

set(span.attributes["region"], "us-east-1")
delete_key(resource.attributes, "internal.key")
limit(log.attributes, 10, [])

See function-reference for the full list of editors and converters.

Conditional statements

Use where to apply transformations conditionally:

span.attributes["db.statement"] = "REDACTED" where resource.attributes["service.name"] == "accounting"

Nil checks

Use nil for absence checking (not null):

resource.attributes["service.name"] != nil

Validation workflow

  1. Validate config syntax — run otelcol validate --config=config.yaml to catch compilation errors before starting the Collector.
  2. Test with the debug exporter — route transformed telemetry to a debug exporter and inspect the output:
exporters:
  debug:
    verbosity: detailed

service:
  pipelines:
    traces:
      receivers: [otlp]
      processors: [transform, batch]
      exporters: [debug]   # swap in production exporter once validated
  1. Set error_mode: ignore in production — see Error handling.
  2. Promote to production exporters — replace debug with the production exporter.

Common patterns

Error handling

Compilation errors

Occur during processor initialization and prevent Collector startup:

  • Invalid syntax (missing quotes)
  • Unknown functions
  • Invalid path expressions
  • Type mismatches

Runtime errors

Occur during telemetry processing:

  • Accessing non-existent attributes
  • Type conversion failures
  • Function execution errors

Error mode configuration

Always set error_mode explicitly.

ModeBehaviorWhen to use
propagate (default)Stops processing current itemDevelopment and strict environments where you want to catch every error
ignoreLogs error, continues processingProduction — set this unless you have a specific reason not to
silentIgnores errors without loggingHigh-volume pipelines with known-safe transforms where error logs are noise
processors:
  transform:
    error_mode: ignore
    trace_statements:
      - context: span
        statements:
          - set(span.attributes["parsed"], ParseJSON(span.attributes["json_body"]))

Performance

Use where clauses to skip items early.

# BAD — runs replace_pattern on every span
replace_pattern(span.attributes["url.path"], "/\\d+", "/{id}")

# GOOD — skips spans that lack the attribute
replace_pattern(span.attributes["url.path"], "/\\d+", "/{id}") where span.attributes["url.path"] != nil

References

NotebookLM Web Importer

एक क्लिक में वेब पेज और YouTube वीडियो NotebookLM में आयात करें। 200,000+ उपयोगकर्ताओं द्वारा विश्वसनीय।

Chrome एक्सटेंशन इंस्टॉल करें