Telemetry
The Llama Stack telemetry system provides comprehensive tracing, metrics, and logging capabilities. It supports multiple sink types including OpenTelemetry, SQLite, and Console output.
Events
The telemetry system supports three main types of events:
Unstructured Log Events: Free-form log messages with severity levels
unstructured_log_event = UnstructuredLogEvent(
message="This is a log message", severity=LogSeverity.INFO
)
Metric Events: Numerical measurements with units
metric_event = MetricEvent(metric="my_metric", value=10, unit="count")
Structured Log Events: System events like span start/end. Extensible to add more structured log types.
structured_log_event = SpanStartPayload(name="my_span", parent_span_id="parent_span_id")
Spans and Traces
Spans: Represent operations with timing and hierarchical relationships
Traces: Collection of related spans forming a complete request flow
Metrics
Llama Stack automatically generates metrics during inference operations. These metrics are aggregated at the inference request level and provide insights into token usage and model performance.
Available Metrics
The following metrics are automatically generated for each inference request:
Metric Name |
Type |
Unit |
Description |
Labels |
---|---|---|---|---|
|
Counter |
|
Number of tokens in the input prompt |
|
|
Counter |
|
Number of tokens in the generated response |
|
|
Counter |
|
Total tokens used (prompt + completion) |
|
Metric Generation Flow
Token Counting: During inference operations (chat completion, completion, etc.), the system counts tokens in both input prompts and generated responses
Metric Construction: For each request,
MetricEvent
objects are created with the token countsTelemetry Logging: Metrics are sent to the configured telemetry sinks
OpenTelemetry Export: When OpenTelemetry is enabled, metrics are exposed as standard OpenTelemetry counters
Metric Aggregation Level
All metrics are generated and aggregated at the inference request level. This means:
Each individual inference request generates its own set of metrics
Metrics are not pre-aggregated across multiple requests
Aggregation (sums, averages, etc.) can be performed by your observability tools (Prometheus, Grafana, etc.)
Each metric includes labels for
model_id
andprovider_id
to enable filtering and grouping
Example Metric Event
MetricEvent(
trace_id="1234567890abcdef",
span_id="abcdef1234567890",
metric="total_tokens",
value=150,
timestamp=1703123456.789,
unit="tokens",
attributes={"model_id": "meta-llama/Llama-3.2-3B-Instruct", "provider_id": "tgi"},
)
Querying Metrics
When using the OpenTelemetry sink, metrics are exposed in standard OpenTelemetry format and can be queried through:
Prometheus: Scrape metrics from the OpenTelemetry Collector’s metrics endpoint
Grafana: Create dashboards using Prometheus as a data source
OpenTelemetry Collector: Forward metrics to other observability systems
Example Prometheus queries:
# Total tokens used across all models
sum(llama_stack_tokens_total)
# Tokens per model
sum by (model_id) (llama_stack_tokens_total)
# Average tokens per request
rate(llama_stack_tokens_total[5m])
Sinks
OpenTelemetry: Send events to an OpenTelemetry Collector. This is useful for visualizing traces in a tool like Jaeger and collecting metrics for Prometheus.
SQLite: Store events in a local SQLite database. This is needed if you want to query the events later through the Llama Stack API.
Console: Print events to the console.
Providers
Meta-Reference Provider
Currently, only the meta-reference provider is implemented. It can be configured to send events to multiple sink types:
OpenTelemetry Collector (traces and metrics)
SQLite (traces only)
Console (all events)
Configuration
Here’s an example that sends telemetry signals to all sink types. Your configuration might use only one or a subset.
telemetry:
- provider_id: meta-reference
provider_type: inline::meta-reference
config:
service_name: "llama-stack-service"
sinks: ['console', 'sqlite', 'otel_trace', 'otel_metric']
otel_exporter_otlp_endpoint: "http://localhost:4318"
sqlite_db_path: "/path/to/telemetry.db"
Environment Variables:
OTEL_EXPORTER_OTLP_ENDPOINT
: OpenTelemetry Collector endpoint (default:http://localhost:4318
)OTEL_SERVICE_NAME
: Service name for telemetry (default: empty string)TELEMETRY_SINKS
: Comma-separated list of sinks (default:console,sqlite
)
Jaeger to visualize traces
The otel_trace
sink works with any service compatible with the OpenTelemetry collector. Traces and metrics use separate endpoints but can share the same collector.
Start a Jaeger instance with the OTLP HTTP endpoint at 4318 and the Jaeger UI at 16686 using the following command:
$ docker run --pull always --rm --name jaeger \
-p 16686:16686 -p 4318:4318 \
jaegertracing/jaeger:2.1.0
Once the Jaeger instance is running, you can visualize traces by navigating to http://localhost:16686/.
Querying Traces Stored in SQLite
The sqlite
sink allows you to query traces without an external system. Here are some example
queries. Refer to the notebook at Llama Stack Building AI
Applications for
more examples on how to query traces and spans.