Deployment
See also:
The main Jaeger backend components are released as Docker images on Docker Hub:
Component | Repository |
---|---|
jaeger-agent | hub.docker.com/r/jaegertracing/jaeger-agent/ |
jaeger-collector | hub.docker.com/r/jaegertracing/jaeger-collector/ |
jaeger-query | hub.docker.com/r/jaegertracing/jaeger-query/ |
jaeger-ingester | hub.docker.com/r/jaegertracing/jaeger-ingester/ |
There are orchestration templates for running Jaeger with:
- Kubernetes: github.com/jaegertracing/jaeger-kubernetes ,
- OpenShift: github.com/jaegertracing/jaeger-openshift .
Configuration Options
Jaeger binaries can be configured in a number of ways (in the order of decreasing priority):
- command line arguments,
- environment variables,
- configuration files in JSON, TOML, YAML, HCL, or Java properties formats.
To see the complete list of options, run the binary with help
command or refer to the CLI Flags page for more information. Options that are specific to a certain storage backend are only listed if the storage type is selected. For example, to see all available options in the Collector with Cassandra storage:
$ docker run --rm \
-e SPAN_STORAGE_TYPE=cassandra \
jaegertracing/jaeger-collector:1.18.0 \
help
In order to provide configuration parameters via environment variables, find the respective command line option and convert its name to UPPER_SNAKE_CASE, for example:
Command line option | Environment variable |
---|---|
--cassandra.connections-per-host | CASSANDRA_CONNECTIONS_PER_HOST |
--metrics-backend | METRICS_BACKEND |
Agent
Jaeger client libraries expect jaeger-agent process to run locally on each host. The agent exposes the following ports:
Port | Protocol | Function |
---|---|---|
6831 | UDP | accept jaeger.thrift in compact Thrift protocol used by most current Jaeger clients |
6832 | UDP | accept jaeger.thrift in binary Thrift protocol used by Node.js Jaeger client (because thriftrw npm package does not support compact protocol) |
5778 | HTTP | serve configs, sampling strategies |
5775 | UDP | accept zipkin.thrift in compact Thrift protocol (deprecated; only used by very old Jaeger clients, circa 2016) |
14271 | HTTP | admin port: health check at / and metrics at /metrics |
It can be executed directly on the host or via Docker, as follows:
## make sure to expose only the ports you use in your deployment scenario!
docker run \
--rm \
-p6831:6831/udp \
-p6832:6832/udp \
-p5778:5778/tcp \
-p5775:5775/udp \
jaegertracing/jaeger-agent:1.18.0
Discovery System Integration
The agents can connect point to point to a single collector address, which could be load balanced by another infrastructure component (e.g. DNS) across multiple collectors. The agent can also be configured with a static list of collector addresses.
On Docker, a command like the following can be used:
docker run \
--rm \
-p5775:5775/udp \
-p6831:6831/udp \
-p6832:6832/udp \
-p5778:5778/tcp \
jaegertracing/jaeger-agent:1.18.0 \
--reporter.grpc.host-port=jaeger-collector.jaeger-infra.svc:14250
When using gRPC, you have several options for load balancing and name resolution:
- Single connection and no load balancing. This is the default if you specify a single
host:port
. (example:--reporter.grpc.host-port=jaeger-collector.jaeger-infra.svc:14250
) - Static list of hostnames and round-robin load balancing. This is what you get with a comma-separated list of addresses. (example:
reporter.grpc.host-port=jaeger-collector1:14250,jaeger-collector2:14250,jaeger-collector3:14250
) - Dynamic DNS resolution and round-robin load balancing. To get this behavior, prefix the address with
dns:///
and gRPC will attempt to resolve the hostname using SRV records (for external load balancing ), TXT records (for service configs ), and A records. Refer to the gRPC Name Resolution docs and the dns_resolver.go implementation for more info. (example:--reporter.grpc.host-port=dns:///jaeger-collector.jaeger-infra.svc:14250
)
Agent level tags
Jaeger supports agent level tags, that can be added to the process tags of all spans passing through the agent. This is supported through the command line flag --agent.tags=key1=value1,key2=value2,...,keyn=valuen
. Tags can also be set through an environment flag like so - --agent.tags=key=${envFlag:defaultValue}
- The tag value will be set to the value of the envFlag
environment key and defaultValue
if not set.
Collectors
The collectors are stateless and thus many instances of jaeger-collector can be run in parallel.
Collectors require almost no configuration, except for the location of Cassandra cluster,
via --cassandra.keyspace
and --cassandra.servers
options, or the location of Elasticsearch cluster, via
--es.server-urls
, depending on which storage is specified. To see all command line options run
go run ./cmd/collector/main.go -h
or, if you don’t have the source code
docker run -it --rm jaegertracing/jaeger-collector:1.18.0 -h
At default settings the collector exposes the following ports:
Port | Protocol | Function |
---|---|---|
14250 | gRPC | used by jaeger-agent to send spans in model.proto format |
14268 | HTTP | can accept spans directly from clients in jaeger.thrift format over binary thrift protocol |
9411 | HTTP | can accept Zipkin spans in Thrift, JSON and Proto (disabled by default) |
14269 | HTTP | admin port: health check at / and metrics at /metrics |
Storage Backends
Collectors require a persistent storage backend. Cassandra and Elasticsearch are the primary supported storage backends. Additional backends are discussed here .
The storage type can be passed via SPAN_STORAGE_TYPE
environment variable. Valid values are cassandra
, elasticsearch
, kafka
(only as a buffer), grpc-plugin
, badger
(only with all-in-one) and memory
(only with all-in-one).
As of version 1.6.0, it’s possible to use multiple storage types at the same time by providing a comma-separated list of valid types to the SPAN_STORAGE_TYPE
environment variable. It’s important to note that all listed storage types are used for writing, but only the first type in the list will be used for reading and archiving.
For large scale production deployment the Jaeger team recommends Elasticsearch backend over Cassandra.
Memory
The in-memory storage is not intended for production workloads. It’s intended as a simple solution to get started quickly and data will be lost once the process is gone.
By default, there’s no limit in the amount of traces stored in memory but a limit can be established by passing an
integer value via --memory.max-traces
.
Badger - local storage
Experimental since Jaeger 1.9
Badger is an embedded local storage, only available
with all-in-one distribution. By default it acts as an ephemeral storage using a temporary filesystem.
This can be overridden by using the --badger.ephemeral=false
option.
docker run \
-e SPAN_STORAGE_TYPE=badger \
-e BADGER_EPHEMERAL=false \
-e BADGER_DIRECTORY_VALUE=/badger/data \
-e BADGER_DIRECTORY_KEY=/badger/key \
-v <storage_dir_on_host>:/badger \
-p 16686:16686 \
jaegertracing/all-in-one:1.18.0
Cassandra
Supported versions: 3.4+
Deploying Cassandra itself is out of scope for our documentation. One good source of documentation is the Apache Cassandra Docs .
Configuration
Minimal
docker run \
-e SPAN_STORAGE_TYPE=cassandra \
-e CASSANDRA_SERVERS=<...> \
jaegertracing/jaeger-collector:1.18.0
All options
To view the full list of configuration options, you can run the following command:
docker run \
-e SPAN_STORAGE_TYPE=cassandra \
jaegertracing/jaeger-collector:1.18.0 \
--help
Schema script
A script is provided to initialize Cassandra keyspace and schema
using Cassandra’s interactive shell cqlsh
:
MODE=test sh ./plugin/storage/cassandra/schema/create.sh | cqlsh
For production deployment, pass MODE=prod DATACENTER={datacenter}
arguments to the script,
where {datacenter}
is the name used in the Cassandra configuration / network topology.
The script also allows overriding TTL, keyspace name, replication factor, etc. Run the script without arguments to see the full list of recognized parameters.
TLS support
Jaeger supports TLS client to node connections as long as you’ve configured
your Cassandra cluster correctly. After verifying with e.g. cqlsh
, you can
configure the collector and query like so:
docker run \
-e CASSANDRA_SERVERS=<...> \
-e CASSANDRA_TLS=true \
-e CASSANDRA_TLS_SERVER_NAME="CN-in-certificate" \
-e CASSANDRA_TLS_KEY=<path to client key file> \
-e CASSANDRA_TLS_CERT=<path to client cert file> \
-e CASSANDRA_TLS_CA=<path to your CA cert file> \
jaegertracing/jaeger-collector:1.18.0
The schema tool also supports TLS. You need to make a custom cqlshrc file like so:
# Creating schema in a cassandra cluster requiring client TLS certificates.
#
# Create a volume for the schema docker container containing four files:
# cqlshrc: this file
# ca-cert: the cert authority for your keys
# client-key: the keyfile for your client
# client-cert: the cert file matching client-key
#
# if there is any sort of DNS mismatch and you want to ignore server validation
# issues, then uncomment validate = false below.
#
# When running the container, map this volume to /root/.cassandra and set the
# environment variable CQLSH_SSL=--ssl
[ssl]
certfile = ~/.cassandra/ca-cert
userkey = ~/.cassandra/client-key
usercert = ~/.cassandra/client-cert
# validate = false
Elasticsearch
Supported in Jaeger since 0.6.0 Supported versions: 5.x, 6.x, 7.x
Elasticsearch version is automatically retrieved from root/ping endpoint.
Based on this version Jaeger uses compatible index mappings and Elasticsearch REST API.
The version can be explicitly provided via --es.version=
flag.
Elasticsearch does not require initialization other than installing and running Elasticsearch . Once it is running, pass the correct configuration values to the Jaeger collector and query service.
Configuration
Minimal
docker run \
-e SPAN_STORAGE_TYPE=elasticsearch \
-e ES_SERVER_URLS=<...> \
jaegertracing/jaeger-collector:1.18.0
All options
To view the full list of configuration options, you can run the following command:
docker run \
-e SPAN_STORAGE_TYPE=elasticsearch \
jaegertracing/jaeger-collector:1.18.0 \
--help
Shards and Replicas for Elasticsearch indices
Shards and replicas are some configuration values to take special attention to, because this is decided upon index creation. This article goes into more information about choosing how many shards should be chosen for optimization.
Elasticsearch Rollover
Elasticsearch rollover is an index management strategy that optimizes use of resources allocated to indices.
For example, indices that do not contain any data still allocate shards, and conversely, a single index might contain significantly more data than the others.
Jaeger by default stores data in daily indices which might not optimally utilize resources. Rollover feature can be enabled by --es.use-aliases=true
.
Rollover lets you configure when to roll over to a new index based on one or more of the following criteria:
max_age
- the maximum age of the index. It uses time units :d
,h
,m
.max_docs
- the maximum documents in the index.max_size
- the maximum estimated size of primary shards (since Elasticsearch 6.x). It uses byte size unitstb
,gb
,mb
.
Rollover index management strategy is more complex than using the default daily indices and it requires an initialization job to prepare the storage and two cron jobs to manage indices.
To learn more about rollover index management in Jaeger refer to this article .
Initialize
The following command prepares Elasticsearch for rollover deployment by creating index aliases, indices, and index templates:
docker run -it --rm --net=host jaegertracing/jaeger-es-rollover:latest init http://localhost:9200 # <1>
If you need to initialize archive storage, add -e ARCHIVE=true
.
After the initialization Jaeger can be deployed with --es.use-aliases=true
.
Rolling over to a new index
The next step is to periodically execute the rollover API which rolls the write alias to a new index based on supplied conditions. The command also adds a new index to the read alias to make new data available for search.
docker run -it --rm --net=host -e CONDITIONS='{"max_age": "2d"}' jaegertracing/jaeger-es-rollover:latest rollover http://localhost:9200 # <1>
<1> The command rolls the alias over to a new index if the age of the current write index is older than 2 days. For more conditions see Elasticsearch docs .
The next step is to remove old indices from read aliases. It means that old data will not be available for search. This imitates the behavior of --es.max-span-age
flag used in the default index-per-day deployment. This step could be optional and old indices could be simply removed by index cleaner in the next step.
docker run -it --rm --net=host -e UNIT=days -e UNIT_COUNT=7 jaegertracing/jaeger-es-rollover:latest lookback http://localhost:9200 # <1>
<1> Removes indices older than 7 days from read alias.
Remove old data
The historical data can be removed with the jaeger-es-index-cleaner
that is also used for daily indices.
docker run -it --rm --net=host -e ROLLOVER=true jaegertracing/jaeger-es-index-cleaner:latest 14 http://localhost:9200 # <1>
<1> Remove indices older than 14 days.
Upgrade Elasticsearch version
Elasticsearch defines wire and index compatibility versions. The index compatibility defines the minimal version a node can read data from. For example Elasticsearch 7 can read indices created by Elasticsearch 6, however it cannot read indices created by Elasticsearch 5 even though they use the same index mappings. Therefore upgrade from Elasticsearch 6 to 7 does not require any data migration. However, upgrade from Elasticsearch 5 to 7 has to be done through Elasticsearch 6 and wait until indices created by ES 5.x are removed or explicitly reindexed.
Refer to the Elasticsearch documentation for wire and index compatibility versions. Generally this information can be retrieved from root/ping REST endpoint.
Reindex
Manual reindexing can be used when upgrading from Elasticsearch 5 to 7 (through Elasticsearch 6) without waiting until indices created by Elasticsearch 5 are removed.
Reindex all span indices to new indices with suffix
-1
:curl -ivX POST -H "Content-Type: application/json" http://localhost:9200/_reindex -d @reindex.json { "source": { "index": "jaeger-span-*" }, "dest": { "index": "jaeger-span" }, "script": { "lang": "painless", "source": "ctx._index = 'jaeger-span-' + (ctx._index.substring('jaeger-span-'.length(), ctx._index.length())) + '-1'" } }
Delete indices with old mapping:
curl -ivX DELETE -H "Content-Type: application/json" http://localhost:9200/jaeger-span-\*,-\*-1
Create indices without
-1
suffix:curl -ivX POST -H "Content-Type: application/json" http://localhost:9200/_reindex -d @reindex.json { "source": { "index": "jaeger-span-*" }, "dest": { "index": "jaeger-span" }, "script": { "lang": "painless", "source": "ctx._index = 'jaeger-span-' + (ctx._index.substring('jaeger-span-'.length(), ctx._index.length() - 2))" } }
Remove suffixed indices:
curl -ivX DELETE -H "Content-Type: application/json" http://localhost:9200/jaeger-span-\*-1
Run the commands analogically for other Jaeger indices.
There might exist more effective migration procedure. Please share with the community any findings.
Kafka
Supported in Jaeger since 1.6.0 Supported Kafka versions: 0.9+
Kafka can be used as an intermediary buffer between collector and an actual storage.
The collector is configured with SPAN_STORAGE_TYPE=kafka
that makes it write all received spans
into a Kafka topic. A new component Ingester, added in version 1.7.0, is used to read from
Kafka and store spans in another storage backend (Elasticsearch or Cassandra).
Writing to Kafka is particularly useful for building post-processing data pipelines.
Configuration
Minimal
docker run \
-e SPAN_STORAGE_TYPE=kafka \
-e KAFKA_PRODUCER_BROKERS=<...> \
-e KAFKA_TOPIC=<...> \
jaegertracing/jaeger-collector:1.18.0
All options
To view the full list of configuration options, you can run the following command:
docker run \
-e SPAN_STORAGE_TYPE=kafka \
jaegertracing/jaeger-collector:1.18.0 \
--help
Topic & partitions
Unless your Kafka cluster is configured to automatically create topics, you will need to create it ahead of time. You can refer to the Kafka quickstart documentation to learn how.
You can find more information about topics and partitions in general in the official documentation . This article provide more details about how to choose the number of partitions.
Storage plugin
Jaeger supports gRPC based storage plugins. For more information refer to jaeger/plugin/storage/grpc
Available plugins:
docker run \
-e SPAN_STORAGE_TYPE=grpc-plugin \
-e GRPC_STORAGE_PLUGIN_BINARY=<...> \
-e GRPC_STORAGE_PLUGIN_CONFIGURATION_FILE=<...> \
jaegertracing/all-in-one:1.18.0
Ingester
jaeger-ingester is a service which reads span data from Kafka topic and writes it to another storage backend (Elasticsearch or Cassandra).
Port | Protocol | Function |
---|---|---|
14270 | HTTP | admin port: health check at / and metrics at /metrics |
To view all exposed configuration options run the following command:
docker run \
-e SPAN_STORAGE_TYPE=cassandra \
jaegertracing/jaeger-ingester:1.18.0
--help
Query Service & UI
jaeger-query serves the API endpoints and a React/Javascript UI. The service is stateless and is typically run behind a load balancer, such as NGINX .
At default settings the query service exposes the following port(s):
Port | Protocol | Function |
---|---|---|
16686 | HTTP | /api/* endpoints and Jaeger UI at / |
16687 | HTTP | admin port: health check at / and metrics at /metrics |
Minimal deployment example (Elasticsearch backend):
docker run -d --rm \
-p 16686:16686 \
-p 16687:16687 \
-e SPAN_STORAGE_TYPE=elasticsearch \
-e ES_SERVER_URLS=http://<ES_SERVER_IP>:<ES_SERVER_PORT> \
jaegertracing/jaeger-query:1.18.0
UI Base Path
The base path for all jaeger-query HTTP routes can be set to a non-root value, e.g. /jaeger
would cause all UI URLs to start with /jaeger
. This can be useful when running jaeger-query behind a reverse proxy.
The base path can be configured via the --query.base-path
command line parameter or the QUERY_BASE_PATH
environment variable.
UI Customization and Embedding
Please refer to the dedicated Frontend/UI page.
Aggregation Jobs for Service Dependencies
Production deployments need an external process which aggregates data and creates dependency links between services. Project spark-dependencies is a Spark job which derives dependency links and stores them directly to the storage.