Expand description
Implements the API
component of OpenTelemetry.
§Getting Started with Traces
The trace
module includes types for tracking the progression of a single
request while it is handled by services that make up an application. A trace
is a tree of Span
s which are objects that represent the work being done
by individual services or components involved in a request as it flows
through a system.
use opentelemetry::{global, trace::{Span, Tracer}, KeyValue};
// get a tracer from a provider
let tracer = global::tracer("my_service");
// start a new span
let mut span = tracer.start("my_span");
// set some attributes
span.set_attribute(KeyValue::new("http.client_ip", "83.164.160.102"));
// perform some more work...
// end or drop the span to export
span.end();
See the examples directory for different integration patterns.
See the trace
module docs for more information on creating and managing
spans.
§Getting Started with Metrics
The metrics
module provides types for recording measurements about a
service at runtime. Below are the key steps to report measurements using
OpenTelemetry Metrics:
- Obtain a Meter: Get a
Meter
from aMeterProvider
. - Create Instruments: Use the
Meter
to create one or more instruments (e.g., counters, histograms). - Record Measurements: Use the instruments to record measurement values along with optional attributes.
§How Metrics work in OpenTelemetry
In OpenTelemetry, raw measurements recorded using instruments are
aggregated in memory to form metrics. These aggregated metrics are
periodically exported by the opentelemetry_sdk
at fixed intervals (e.g.,
every 60 seconds) via exporters such as opentelemetry-stdout
or
opentelemetry-otlp
. This reduces reporting overhead while ensuring
up-to-date data. The aggregation strategy and export interval can be
customized in the opentelemetry_sdk
based on your use case.
§Choosing the Right Instrument
Selecting the correct instrument is critical for accurately representing your metrics data:
- Use Counters for values that only increase, such as the number of requests served or errors encountered.
- Use UpDownCounters for values that can increase or decrease, such as the number of active connections, number of items in a queue etc.
- Gauges: Use for values that can go up or down and represent the current state, such as CPU usage, temperature etc.
- Use Histograms for measuring the distribution of a value, such as response times or payload sizes.
§Observable Instruments
Counters, UpDownCounters, and Gauges have Observable variants that allow values to be reported through a callback function. Observable instruments are ideal when the metric value is managed elsewhere and needs to be observed by OpenTelemetry instrumentation. The callbacks are automatically invoked by the OpenTelemetry SDK before every export (e.g., every 60 seconds).
For example:
- An ObservableCounter can monitor the number of page faults in a process as reported by the operating system.
- An ObservableUpDownCounter can monitor the size of an in-memory queue by reporting the size using queue’s len() method within the callback function.
- An ObservableGauge can monitor the CPU temperature by using temperature sensor APIs within the callback function.
For detailed guidance, refer to OpenTelemetry Metrics API - Instrumentation Guidance.
§Best Practices
- Re-use Instruments: Instruments are designed for reuse. Avoid creating new instruments repeatedly.
- Clone for Sharing: If the same instrument needs to be used across multiple parts of your code, you can safely clone it to share.
§Example Usage
use opentelemetry::{global, KeyValue};
// Get a meter from a provider.
let meter = global::meter("my_service");
// Create an instrument (in this case, a Counter).
let counter = meter.u64_counter("request.count").build();
// Record a measurement by passing the value and a set of attributes.
counter.add(1, &[KeyValue::new("http.client_ip", "83.164.160.102")]);
// Create an ObservableCounter and register a callback that reports the measurement.
let _observable_counter = meter
.u64_observable_counter("bytes_received")
.with_callback(|observer| {
observer.observe(
100,
&[
KeyValue::new("protocol", "udp"),
],
)
})
.build();
See the examples directory that show a runnable example with all type of instruments.
See the metrics
module docs for more information on creating and
managing instruments.
§Getting Started with Logs
The logs
module contains the Logs Bridge API. It is not intended to be
called by application developers directly. It is provided for logging
library authors to build log appenders, that bridges existing logging
systems with OpenTelemetry. Bridges for
log
and
tracing
libraries are provided via
the
opentelemetry-appender-log
and
opentelemetry-appender-tracing
crates.
§Crate Feature Flags
The following core crate feature flags are available:
trace
: Includes the trace API.metrics
: Includes the metrics API.logs
: Includes the logs bridge API.internal-logs
: Includes internal logging for the OpenTelemetry library viatracing
.
The default feature flags are [“trace”, “metrics”, “logs”, “internal-logs”].
The following feature flags provides additional configuration for logs
:
spec_unstable_logs_enabled
: Allow users to control the log level
The following feature flags enable APIs defined in OpenTelemetry specification that is in experimental phase:
otel_unstable
: Includes unstable APIs. There are no features behind this flag at the moment.
§Related Crates
In addition to opentelemetry
, the open-telemetry/opentelemetry-rust
repository contains several additional crates designed to be used with the
opentelemetry
ecosystem. This includes exporters, samplers, as well as
utility and adapter crates to assist in propagating context and
instrumenting applications.
In particular, the following crates are likely to be of interest:
opentelemetry_sdk
provides the OpenTelemetry SDK used to configure providers.opentelemetry-http
provides an interface for injecting and extracting trace information fromhttp
headers.opentelemetry-otlp
exporter for sending telemetry in the OTLP format.opentelemetry-stdout
provides ability to output telemetry to stdout, primarily used for learning/debugging purposes.opentelemetry-prometheus
provides a pipeline and exporter for sending metrics information toPrometheus
.opentelemetry-zipkin
provides a pipeline and exporter for sending trace information toZipkin
.
In addition, there are several other useful crates in the OTel Rust Contrib repo. A lot of crates maintained outside OpenTelemetry owned repos can be found in the OpenTelemetry Registry.
§Supported Rust Versions
OpenTelemetry is built against the latest stable release. The minimum supported version is 1.70. The current OpenTelemetry version is not guaranteed to build on Rust versions earlier than the minimum supported version.
The current stable Rust compiler and the three most recent minor versions before it will always be supported. For example, if the current stable compiler version is 1.49, the minimum supported version will not be increased past 1.46, three minor versions prior. Increasing the minimum supported compiler version is not considered a semver breaking change as long as doing so complies with this policy.
Modules§
- Primitives for sending name/value data across system boundaries.
- Utilities for working with global telemetry primitives
- logs
logs
OpenTelemetry Logs Bridge API - metrics
metrics
OpenTelemetry Metrics API - OpenTelemetry Propagator interface
- trace
trace
API for tracing applications and libraries.
Macros§
- Macro for logging debug messages in OpenTelemetry.
- Macro for logging error messages in OpenTelemetry.
- Note: These macros (
otel_info!
,otel_warn!
,otel_debug!
, andotel_error!
) are intended to be used internally within OpenTelemetry code or for custom exporters and processors. They are not designed for general application logging and should not be used for that purpose. - Macro for logging warning messages in OpenTelemetry.
Structs§
- An execution-scoped collection of values.
- A guard that resets the current context to the prior context when dropped.
- Information about a library or crate providing instrumentation.
- Configuration options for InstrumentationScope.
- The key part of attribute KeyValue pairs.
- A key-value pair describing an attribute.
- Wrapper for string-like values
Enums§
- A Value::Array containing homogeneous values.
- The value part of attribute KeyValue pairs.