Elasticsearch is a free and open project and we love to receive contributions from our community — you! There are many ways to contribute, from writing tutorials or blog posts, improving the documentation, submitting bug reports and feature requests or writing code which can be incorporated into Elasticsearch itself.
If you want to be rewarded for your contributions, sign up for the Elastic Contributor Program. Each time you make a valid contribution, you’ll earn points that increase your chances of winning prizes and being recognized as a top contributor.
If you think you have found a bug in Elasticsearch, first make sure that you are testing against the latest version of Elasticsearch - your issue may already have been fixed. If not, search our issues list on GitHub in case a similar issue has already been opened.
It is very helpful if you can prepare a reproduction of the bug. In other words, provide a small test case which we can run to confirm your bug. It makes it easier to find the problem and to fix it. Test cases should be provided as curl
commands which we can copy and paste into a terminal to run it locally, for example:
# delete the index
curl -XDELETE localhost:9200/test
# insert a document
curl -XPUT localhost:9200/test/test/1 -d '{
"title": "test document"
}'
# this should return XXXX but instead returns YYY
curl ....
Provide as much information as you can. You may think that the problem lies with your query, when actually it depends on how your data is indexed. The easier it is for us to recreate your problem, the faster it is likely to be fixed.
If you find yourself wishing for a feature that doesn't exist in Elasticsearch, you are probably not alone. There are bound to be others out there with similar needs. Many of the features that Elasticsearch has today have been added because our users saw the need. Open an issue on our issues list on GitHub which describes the feature you would like to see, why you need it, and how it should work.
If you would like to contribute a new feature or a bug fix to Elasticsearch, please discuss your idea first on the GitHub issue. If there is no GitHub issue for your idea, please open one. It may be that somebody is already working on it, or that there are particular complexities that you should know about before starting the implementation. There are often a number of ways to fix a problem and it is important to find the right approach before spending time on a PR that cannot be merged.
We add the help wanted
label to existing GitHub issues for which community
contributions are particularly welcome, and we use the good first issue
label
to mark issues that we think will be suitable for new contributors.
The process for contributing to any of the Elastic repositories is similar. Details for individual projects can be found below.
You will need to fork the main Elasticsearch code or documentation repository and clone it to your local machine. See GitHub help page for help.
Further instructions for specific projects are given below.
Following these tips prior to raising a pull request will speed up the review cycle.
- Add appropriate unit tests (details on writing tests can be found in the TESTING file)
- Add integration tests, if applicable
- Make sure the code you add follows the formatting guidelines
- Lines that are not part of your change should not be edited (e.g. don't format unchanged lines, don't reorder existing imports)
- Add the appropriate license headers to any new files
- For contributions involving the Elasticsearch build you can find details about the build setup in the BUILDING file
Once your changes and tests are ready to submit for review:
-
Test your changes
Run the test suite to make sure that nothing is broken. See the TESTING file for help running tests.
-
Sign the Contributor License Agreement
Please make sure you have signed our Contributor License Agreement. We are not asking you to assign copyright to us, but to give us the right to distribute your code without restriction. We ask this of all contributors in order to assure our users of the origin and continuing existence of the code. You only need to sign the CLA once.
-
Rebase your changes
Update your local repository with the most recent code from the main Elasticsearch repository, and rebase your branch on top of the latest main branch. We prefer your initial changes to be squashed into a single commit. Later, if we ask you to make changes, add them as separate commits. This makes them easier to review. As a final step before merging we will either ask you to squash all commits yourself or we'll do it for you.
-
Submit a pull request
Push your local changes to your forked copy of the repository and submit a pull request. In the pull request, choose a title which sums up the changes that you have made, and in the body provide more details about what your changes do. Also mention the number of the issue where discussion has taken place, eg "Closes #123".
Then sit back and wait. There will probably be discussion about the pull request and, if any changes are needed, we would love to work with you to get your pull request merged into Elasticsearch. A yaml changelog entry will be automatically created, there is no need for external contributors to manually edit it, unless requested by the reviewer.
Please adhere to the general guideline that you should never force push to a publicly shared branch. Once you have opened your pull request, you should consider your branch publicly shared. Instead of force pushing you can just add incremental commits; this is generally easier on your reviewers. If you need to pick up changes from main, you can merge main into your branch. A reviewer might ask you to rebase a long-running pull request in which case force pushing is okay for that request. Note that squashing at the end of the review process should also not be done, that can be done when the pull request is integrated via GitHub.
Repository: https://github.com/elastic/elasticsearch
JDK 17 is required to build Elasticsearch. You must have a JDK 17 installation
with the environment variable JAVA_HOME
referencing the path to Java home for
your JDK 17 installation.
Elasticsearch uses the Gradle wrapper for its build. You can execute Gradle
using the wrapper via the gradlew
script on Unix systems or gradlew.bat
script on Windows in the root of the repository. The examples below show the
usage on Unix.
We support development in IntelliJ IDEA versions 2020.1 and onwards.
Docker is required for building some Elasticsearch artifacts and executing certain test suites. You can run Elasticsearch without building all the artifacts with:
./gradlew :run
That'll spend a while building Elasticsearch and then it'll start Elasticsearch, writing its log above Gradle's status message. We log a lot of stuff on startup, specifically these lines tell you that Elasticsearch is ready:
[2020-05-29T14:50:35,167][INFO ][o.e.h.AbstractHttpServerTransport] [runTask-0] publish_address {127.0.0.1:9200}, bound_addresses {[::1]:9200}, {127.0.0.1:9200}
[2020-05-29T14:50:35,169][INFO ][o.e.n.Node ] [runTask-0] started
But to be honest it's typically easier to wait until the console stops scrolling
and then run curl
in another window like this:
curl -u elastic:password localhost:9200
To send requests to this Elasticsearch instance, either use the built-in elastic
user and password as above or use the pre-configured elastic-admin
user:
curl -u elastic-admin:elastic-password localhost:9200
Security can also be disabled altogether:
./gradlew :run -Dtests.es.xpack.security.enabled=false
The definition of this Elasticsearch cluster can be found here.
The minimum IntelliJ IDEA version required to import the Elasticsearch project is 2020.1. Elasticsearch builds using Java 17. When importing into IntelliJ you will need to define an appropriate SDK. The convention is that this SDK should be named "17" so that the project import will detect it automatically. For more details on defining an SDK in IntelliJ please refer to their documentation. SDK definitions are global, so you can add the JDK from any project, or after project import. Importing with a missing JDK will still work, IntelliJ will simply report a problem and will refuse to build until resolved.
You can import the Elasticsearch project into IntelliJ IDEA via:
- Select File > Open
- In the subsequent dialog navigate to the root
build.gradle
file - In the subsequent dialog select Open as Project
If you have the Checkstyle plugin installed, you can configure IntelliJ to
check the Elasticsearch code. However, the Checkstyle configuration file does
not work by default with the IntelliJ plugin, so instead an IDE-specific config
file is generated automatically after IntelliJ finishes syncing. You can
manually generate the file with ./gradlew configureIdeCheckstyle
in case
it is removed due to a ./gradlew clean
or other action.
IntelliJ should be automatically configured to use the generated rules after
import via the .idea/checkstyle-idea.xml
configuration file. No further
action is required.
Elasticsearch code is automatically formatted with Spotless, backed by the
Eclipse formatter. You can do the same in IntelliJ with the
Eclipse Code Formatter so that you can apply the correct formatting directly in
your IDE. The configuration for the plugin is held in
.idea/eclipseCodeFormatter.xml
and should be automatically applied, but manual
instructions are below in case you need them.
- Open Preferences > Other Settings > Eclipse Code Formatter
- Click "Use the Eclipse Code Formatter"
- Under "Eclipse formatter config", select "Eclipse workspace/project folder or config file"
- Click "Browse", and navigate to the file
build-conventions/formatterConfig.xml
- IMPORTANT - make sure "Optimize Imports" is NOT selected.
- Click "OK"
- Optional: If you like to format code changes on save automatically, open Preferences > Tools > Actions on Save and check "Reformat Code", making sure to configure Java files.
Alternative manual steps for IntelliJ.
- Open File > Settings/Preferences > Code Style > Java
- Gear icon > Import Scheme > Eclipse XML Profile
- Navigate to the file
build-conventions/formatterConfig.xml
- Click "OK"
Elasticsearch typically uses singular nouns rather than plurals in URLs. For example:
/_ingest/pipeline
/_ingest/pipeline/{id}
but not:
/_ingest/pipelines
/_ingest/pipelines/{id}
You may find counterexamples, but new endpoints should use the singular form.
Java files in the Elasticsearch codebase are automatically formatted using
the Spotless Gradle plugin. All new projects are automatically formatted,
while existing projects are gradually being opted-in. The formatting check
is run automatically via the precommit
task, but it can be run explicitly with:
./gradlew spotlessJavaCheck
It is usually more useful, and just as fast, to just reformat the project. You can do this with:
./gradlew spotlessApply
These tasks can also be run for specific subprojects, e.g.
./gradlew server:spotlessJavaCheck
Please follow these formatting guidelines:
- Java indent is 4 spaces
- Line width is 140 characters
- Lines of code surrounded by
// tag::NAME
and// end::NAME
comments are included in the documentation and should only be 76 characters wide not counting leading indentation. Such regions of code are not formatted automatically as it is not possible to change the line length rule of the formatter for part of a file. Please format such sections sympathetically with the rest of the code, while keeping lines to maximum length of 76 characters. - Wildcard imports (
import foo.bar.baz.*
) are forbidden and will cause the build to fail. - If absolutely necessary, you can disable formatting for regions of code
with the
// tag::noformat
and// end::noformat
directives, but only do this where the benefit clearly outweighs the decrease in formatting consistency. - Note that Javadoc and block comments i.e.
/* ... */
are not formatted, but line comments i.e.// ...
are. - Negative boolean expressions must use the form
foo == false
instead of!foo
for better readability of the code. This is enforced via Checkstyle. Conversely, you should not write e.g.if (foo == true)
, but justif (foo)
.
IntelliJ IDEs can import the same settings file, and / or use the Eclipse Code Formatter plugin.
You can also tell Spotless to format a specific file from the command line.
Good Javadoc can help with navigating and understanding code. Elasticsearch has some guidelines around when to write Javadoc and when not to, but note that we don't want to be overly prescriptive. The intent of these guidelines is to be helpful, not to turn writing code into a chore.
- Always add Javadoc to new code.
- Add Javadoc to existing code if you can.
- Document the "why", not the "how", unless that's important to the "why".
- Don't document anything trivial or obvious (e.g. getters and setters). In other words, the Javadoc should add some value.
- If you add a new Java package, please also add package-level Javadoc that explains what the package is for. This can just be a reference to a more foundational / parent package if appropriate. An example would be a package hierarchy for a new feature or plugin - the package docs could explain the purpose of the feature, any caveats, and possibly some examples of configuration and usage.
- New classes and interfaces must have class-level Javadoc that describes their purpose. There are a lot of classes in the Elasticsearch repository, and it's easier to navigate when you can quickly find out what is the purpose of a class. This doesn't apply to inner classes or interfaces, unless you expect them to be explicitly used outside their parent class.
- New public methods must have Javadoc, because they form part of the contract between the class and its consumers. Similarly, new abstract methods must have Javadoc because they are part of the contract between a class and its subclasses. It's important that contributors know why they need to implement a method, and the Javadoc should make this clear. You don't need to document a method if it's overriding an abstract method (either from an abstract superclass or an interface), unless your implementation is doing something "unexpected" e.g. deviating from the intent of the original method.
- Following on from the above point, please add docs to existing public methods if you are editing them, or to abstract methods if you can.
- Non-public, non-abstract methods don't require Javadoc, but if you feel that adding some would make it easier for other developers to understand the code, or why it's written in a particular way, then please do so.
- Properties don't need to have Javadoc, but please add some if there's something useful to say.
- Javadoc should not go into low-level implementation details unless this is critical to understanding the code e.g. documenting the subtleties of the implementation of a private method. The point here is that implementations will change over time, and the Javadoc is less likely to become out-of-date if it only talks about the purpose of the code, not what it does.
- Examples in Javadoc can be very useful, so feel free to add some if you can reasonably do so i.e. if it takes a whole page of code to set up an example, then Javadoc probably isn't the right place for it. Longer or more elaborate examples are probably better suited to the package docs.
- Test methods are a good place to add Javadoc, because you can use it to succinctly describe e.g. preconditions, actions and expectations of the test, more easily that just using the test name alone. Please consider documenting your tests in this way.
- Sometimes you shouldn't add Javadoc:
- Where it adds no value, for example where a method's implementation is trivial such as with getters and setters, or a method just delegates to another object.
- However, you should still add Javadoc if there are caveats around calling a method that are not immediately obvious from reading the method's implementation in isolation.
- You can omit Javadoc for simple classes, e.g. where they are a simple container for some data. However, please consider whether a reader might still benefit from some additional background, for example about why the class exists at all.
- Not all comments need to be Javadoc. Sometimes it will make more
sense to add comments in a method's body, for example due to important
implementation decisions or "gotchas". As a general guide, if some
information forms part of the contract between a method and its callers,
then it should go in the Javadoc, otherwise you might consider using
regular comments in the code. Remember as well that Elasticsearch
has extensive user documentation, and it is not the role
of Javadoc to replace that.
- If a method's performance is "unexpected" then it's good to call that out in the Javadoc. This is especially helpful if the method is usually fast but sometimes very slow (shakes fist at caching).
- Please still try to make class, method or variable names as descriptive and concise as possible, as opposed to relying solely on Javadoc to describe something.
- Use
@link
to add references to related resources in the codebase. Or outside the code base.@see
is much more limited than@link
. You can use it but most of the time@link
flows better.
- If you need help writing Javadoc, just ask!
Finally, use your judgement! Base your decisions on what will help other developers - including yourself, when you come back to some code 3 months in the future, having forgotten how it works.
We require license headers on all Java files. With the exception of the
top-level x-pack
directory, all contributed code should have the following
license header unless instructed otherwise:
/*
* Copyright Elasticsearch B.V. and/or licensed to Elasticsearch B.V. under one
* or more contributor license agreements. Licensed under the Elastic License
* 2.0 and the Server Side Public License, v 1; you may not use this file except
* in compliance with, at your election, the Elastic License 2.0 or the Server
* Side Public License, v 1.
*/
The top-level x-pack
directory contains code covered by the Elastic
license. Community contributions to this code are
welcome, and should have the following license header unless instructed
otherwise:
/*
* Copyright Elasticsearch B.V. and/or licensed to Elasticsearch B.V. under one
* or more contributor license agreements. Licensed under the Elastic License
* 2.0; you may not use this file except in compliance with the Elastic License
* 2.0.
*/
It is important that the only code covered by the Elastic licence is contained
within the top-level x-pack
directory. The build will fail its pre-commit
checks if contributed code does not have the appropriate license headers.
NOTE: If you have imported the project into IntelliJ IDEA the project will be automatically configured to add the correct license header to new source files based on the source location.
You should try to write code that does not require suppressing any warnings from
the compiler, e.g. suppressing type-checking, raw generics, and so on. However,
this isn't always possible or practical. In such cases, you should use the
@SuppressWarnings
annotations to silence the compiler warning, trying to keep
the scope of the suppression as small as possible. Where a piece of code
requires a lot of suppressions, it may be better to apply a single suppression
at a higher level e.g. at the method or even class level. Use your judgement.
There are also cases where the compiler simply refuses to accept an assignment
or cast of any kind, because it lacks the information to know that the types are
OK. In such cases, you can use
the Types.forciblyCast
utility method. As the name suggests, you can coerce any type to any other type,
so please use it as a last resort.
The Elasticsearch server logs are vitally useful for diagnosing problems in a running cluster. You should make sure that your contribution uses logging appropriately: log enough detail to inform users about key events and help them understand what happened when things go wrong without logging so much detail that the logs fill up with noise and the useful signal is lost.
Elasticsearch uses Log4J for logging. In most cases you should log via a
Logger
named after the class that is writing the log messages, which you can
do by declaring a static field of the class. For example:
class Foo {
private static final Logger logger = LogManager.getLogger(Foo.class);
}
In rare situations you may want to configure your Logger
slightly
differently, perhaps specifying a different class or maybe using one of the
methods on org.elasticsearch.common.logging.Loggers
instead.
If the log message includes values from your code then you must use
placeholders rather than constructing the string yourself using simple
concatenation. Consider wrapping the values in [...]
to help distinguish them
from the static part of the message:
logger.debug("operation failed [{}] times in [{}]ms", failureCount, elapsedMillis);
You can also pass in an exception to log it including its stack trace, and any causes and their causes, as well as any suppressed exceptions and so on:
logger.debug("operation failed", exception);
If you wish to use placeholders and an exception at the same time, construct a
Supplier<String>
and use org.elasticsearch.core.Strings.format
-
note java.util.Formatter syntax
logger.debug(() -> Strings.format("failed at offset [%s]", offset), exception);
You can also use a java.util.Supplier<String>
to avoid constructing
expensive messages that will usually be discarded:
logger.debug(() -> "rarely seen output [" + expensiveMethod() + "]");
Logging is an important behaviour of the system and sometimes deserves its own
unit tests, especially if there is complex logic for computing what is logged
and when to log it. You can use a org.elasticsearch.test.MockLogAppender
to
make assertions about the logs that are being emitted.
Logging is a powerful diagnostic technique, but it is not the only possibility. You should also consider exposing some information about your component via an API instead of in logs. For instance, you can implement APIs to report its current status, various statistics, and maybe even details of recent failures.
Each log message is written at a particular level. By default, Elasticsearch
will suppress messages at the two most verbose levels, TRACE
and DEBUG
, and
will output messages at all other levels. Users can configure which levels of
message are written by each logger at runtime, but you should expect everyone
to run with the default configuration almost all the time and choose your
levels accordingly.
The guidance in this section is subjective in some areas. When in doubt, discuss your choices with reviewers.
This is the most verbose level, disabled by default, and it is acceptable if it
generates a very high volume of logs. The target audience of TRACE
logs
comprises developers who are trying to deeply understand some unusual runtime
behaviour of a system. For instance TRACE
logs may be useful when
understanding an unexpected interleaving of concurrent actions or some
unexpected consequences of a delayed response from a remote node.
TRACE
logs will normally only make sense when read alongside the code, and
typically they will be read as a whole sequence of messages rather than in
isolation. For example, the InternalClusterInfoService
uses TRACE
logs to
record certain key events in its periodic refresh process:
logger.trace("starting async refresh");
// ...
logger.trace("received node stats response");
// ...
logger.trace("received indices stats response");
// ...
logger.trace("stats all received, computing cluster info and notifying listeners");
// ...
logger.trace("notifying [{}] of new cluster info", listener);
Even though TRACE
logs may be very verbose, you should still exercise some
judgement when deciding when to use them. In many cases it will be easier to
understand the behaviour of the system using tests or by analysing the code
itself rather than by trawling through hundreds of trivial log messages.
It may not be easy, or even possible, to obtain TRACE
logs from a production
system. Therefore they are not appropriate for information that you would
normally expect to be useful in diagnosing problems in production.
This is the next least verbose level and is also disabled by default. The target audience of this level typically comprises users or developers who are trying to diagnose an unexpected problem in a production system, perhaps to help determine whether a fault lies within Elasticsearch or elsewhere.
Users should expect to be able to enable DEBUG
logging on their production
systems for a whole subsystem for an extended period of time without
overwhelming the system or filling up their disks with logs, so it is important
to limit the volume of messages logged at this level. On the other hand, these
messages must still provide enough detail to diagnose the sorts of problems
that you expect Elasticsearch to encounter. In some cases it works well to
collect information over a period of time and then log a complete summary,
rather than recording every step of a process in its own message.
For example, the Coordinator
uses DEBUG
logs to record a change in mode,
including various internal details for context, because this event is fairly
rare but not important enough to notify users by default:
logger.debug(
"{}: coordinator becoming CANDIDATE in term {} (was {}, lastKnownLeader was [{}])",
method,
getCurrentTerm(),
mode,
lastKnownLeader
);
It's possible that the reader of DEBUG
logs is also reading the code, but
that is less likely than for TRACE
logs. Strive to avoid terminology that
only makes sense when reading the code, and also aim for messages at this level
to be self-contained rather than intending them to be read as a sequence.
It's often useful to log exceptions and other deviations from the "happy path"
at DEBUG
level. Exceptions logged at DEBUG
should generally include the
complete stack trace.
This is the next least verbose level, and the first level that is enabled by
default. It is appropriate for recording important events in the life of the
cluster, such as an index being created or deleted or a snapshot starting or
completing. Users will mostly ignore log messages at INFO
level, but may use
these messages to construct a high-level timeline of events leading up to an
incident.
For example, the MetadataIndexTemplateService
uses INFO
logs to record when
an index template is created or updated:
logger.info(
"{} index template [{}] for index patterns {}",
existing == null ? "adding" : "updating",
name,
template.indexPatterns()
);
INFO
-level logging is enabled by default so its target audience is the
general population of users and administrators. You should use user-facing
terminology and ensure that messages at this level are self-contained. In
general, you shouldn't log unusual events, particularly exceptions with stack
traces, at INFO
level. If the event is relatively benign then use DEBUG
,
whereas if the user should be notified then use WARN
.
Bear in mind that users will be reading the logs when they're trying to
determine why their node is not behaving the way they expect. If a log message
sounds like an error then some users will interpret it as one, even if it is
logged at INFO
level. Where possible, INFO
messages should prefer factual
over judgemental language, for instance saying Did not find ...
rather than
Failed to find ...
.
This is the next least verbose level, and is also enabled by default. Ideally a
healthy cluster will emit no WARN
-level logs, but this is the appropriate
level for recording events that the cluster administrator should investigate,
or which indicate a bug. Some production environments require the cluster to
emit no WARN
-level logs during acceptance testing, so you must ensure that
any logs at this level really do indicate a problem that needs addressing.
As with the INFO
level, you should use user-facing terminology at the WARN
level, and also ensure that messages are self-contained. Strive to make them
actionable too since you should be logging at this level when the user should
take some investigative action.
For example, the DiskThresholdMonitor
uses WARN
logs to record that a disk
threshold has been breached:
logger.warn(
"flood stage disk watermark [{}] exceeded on {}, all indices on this node will be marked read-only",
diskThresholdSettings.describeFloodStageThreshold(total, false),
usage
);
Unlike at the INFO
level, it is often appropriate to log an exception,
complete with stack trace, at WARN
level. Although the stack trace may not be
useful to the user, it may contain information that is vital for a developer to
fully understand the problem and its wider context.
In a situation where occasional transient failures are expected and handled,
but a persistent failure requires the user's attention, consider implementing a
mechanism to detect that a failure is unacceptably persistent and emit a
corresponding WARN
log. For example, it may be helpful to log every tenth
consecutive failure at WARN
level, or log at WARN
if an operation has not
completed within a certain time limit. This is much more user-friendly than
failing persistently and silently by default and requiring the user to enable
DEBUG
logging to investigate the problem.
If an exception occurs as a direct result of a request received from a client
then it should only be logged as a WARN
if the server administrator is the
right person to address it. In most cases the server administrator cannot do
anything about faulty client requests, and the person running the client is
often unable to see the server logs, so you should include the exception in the
response back to the client and not log a warning. Bear in mind that clients
may submit requests at a high rate, so any per-request logging can easily flood
the logs.
This is the next least verbose level after WARN
. In theory, it is possible for
users to suppress messages at WARN
and below, believing this to help them
focus on the most important ERROR
messages, but in practice in Elasticsearch
this will hide so much useful information that the resulting logs will be
useless, so we do not expect users to do this kind of filtering.
On the other hand, users may be familiar with the ERROR
level from elsewhere.
Log4J for instance documents this level as meaning "an error in the
application, possibly recoverable". The implication here is that the error is
possibly not recoverable too, and we do encounter users that get very worried
by logs at ERROR
level for this reason.
Therefore you should try and avoid logging at ERROR
level unless the error
really does indicate that Elasticsearch is now running in a degraded state from
which it will not recover. For instance, the FsHealthService
uses ERROR
logs to record that the data path failed some basic health checks and hence the
node cannot continue to operate as a member of the cluster:
logger.error(() -> "health check of [" + path + "] failed", ex);
Errors like this should be very rare. When in doubt, prefer WARN
to ERROR
.
Starting in 8.8.0, we have separated out the version number representations
of various aspects of Elasticsearch into their own classes, using their own
numbering scheme separate to release version. The main ones are
TransportVersion
and IndexVersion
, representing the version of the
inter-node binary protocol and index data + metadata respectively.
Separated version numbers are comprised of an integer number. The semantic
meaning of a version number are defined within each *Version
class. There
is no direct mapping between separated version numbers and the release version.
The versions used by any particular instance of Elasticsearch can be obtained
by querying /_nodes/info
on the node.
Whenever a change is made to a component versioned using a separated version number, there are a few rules that need to be followed:
- Each version number represents a specific modification to that component,
and should not be modified once it is defined. Each version is immutable
once merged into
main
. - To create a new component version, add a new constant to the respective class
with a descriptive name of the change being made. Increment the integer
number according to the particular
*Version
class.
If your pull request has a conflict around your new version constant,
you need to update your PR from main
and change your PR to use the next
available version number.
As part of developing a new feature or change, you might need to determine
if all nodes in a cluster have been upgraded to support your new feature.
This can be done using FeatureService
. To define and check for a new
feature in a cluster:
- Define a new
NodeFeature
constant with a unique id for the feature in a class related to the change you're doing. - Return that constant from an instance of
FeatureSpecification.getFeatures
, either an existing implementation or a new implementation. Make sure the implementation is added as an SPI implementation inmodule-info.java
andMETA-INF/services
. - To check if all nodes in the cluster support the new feature, call
FeatureService.clusterHasFeature(ClusterState, NodeFeature)
Run all build commands from within the root directory:
cd elasticsearch/
To build a darwin-tar distribution, run this command:
./gradlew -p distribution/archives/darwin-tar assemble
You will find the distribution under:
./distribution/archives/darwin-tar/build/distributions/
To create all build artifacts (e.g., plugins and Javadocs) as well as distributions in all formats, run this command:
./gradlew assemble
NOTE: Running the task above will fail if you don't have an available Docker installation.
The package distributions (Debian and RPM) can be found under:
./distribution/packages/(deb|rpm|oss-deb|oss-rpm)/build/distributions/
The archive distributions (tar and zip) can be found under:
./distribution/archives/(darwin-tar|linux-tar|windows-zip|oss-darwin-tar|oss-linux-tar|oss-windows-zip)/build/distributions/
Before submitting your changes, run the test suite to make sure that nothing is broken, with:
./gradlew check
If your changes affect only the documentation, run:
./gradlew -p docs check
For more information about testing code examples in the documentation, see https://github.com/elastic/elasticsearch/blob/main/docs/README.asciidoc
When you open your pull-request it may be approved for review. If so, the full
test suite is run within Elasticsearch's CI environment. If a test fails,
you can see how to run that particular test by searching for the REPRODUCE
string in the CI's console output.
Elasticsearch's testing suite takes advantage of randomized testing. Consequently,
a test that passes locally, may actually fail later due to random settings
or data input. To make tests repeatable, a REPRODUCE
line in CI will also include
the -Dtests.seed
parameter.
When running locally, Gradle does its best to take advantage of cached results.
So, if the code is unchanged, running the same test with the same -Dtests.seed
repeatedly may not actually run the test if it has passed with that seed
in the previous execution. A way around this is to pass a separate parameter
to adjust the command options seen by Gradle.
A simple option may be to add the parameter -Dtests.timestamp=$(date +%s)
which will give the current time stamp as a parameter, thus making the parameters
sent to Gradle unique and bypassing the cache.
This repository is split into many top level directories. The most important ones are:
Documentation for the project.
Builds our tar and zip archives and our rpm and deb packages.
Libraries used to build other parts of the project. These are meant to be internal rather than general purpose. We have no plans to semver their APIs or accept feature requests for them. We publish them to Maven Central because they are dependencies of our plugin test framework, high level rest client, and jdbc driver, but they really aren't general purpose enough to belong in Maven Central. We're still working out what to do here.
Features that are shipped with Elasticsearch by default but are not built in to the server. We typically separate features from the server because they require permissions that we don't believe all of Elasticsearch should have or because they depend on libraries that we don't believe all of Elasticsearch should depend on.
For example, reindex requires the connect
permission so it can perform
reindex-from-remote, but we don't believe that the all of Elasticsearch should
have the "connect". For another example, Painless is implemented using antlr4
and asm and we don't believe that all of Elasticsearch should have access to
them.
Officially supported plugins to Elasticsearch. We decide that a feature should be a plugin rather than shipped as a module because we feel that it is only important to a subset of users, especially if it requires extra dependencies.
The canonical example of this is the ICU analysis plugin. It is important for folks who want the fairly language neutral ICU analyzer but the library to implement the analyzer is 11MB so we don't ship it with Elasticsearch by default.
Another example is the discovery-gce
plugin. It is vital to folks running
in GCP but useless otherwise and it depends on a
dozen extra jars.
Honestly this is kind of in flux and we're not 100% sure where we'll end up. Right now the directory contains
- Tests that require multiple modules or plugins to work
- Tests that form a cluster made up of multiple versions of Elasticsearch like full cluster restart, rolling restarts, and mixed version tests
- Tests that test the Elasticsearch clients in "interesting" places like the
wildfly
project. - Tests that test Elasticsearch in funny configurations like with ingest disabled
- Tests that need to do strange things like install plugins that thrown
uncaught
Throwable
s or add a shutdown hook But we're not convinced that all of these things belong in the qa directory. We're fairly sure that tests that require multiple modules or plugins to work should just pick a "home" plugin. We're fairly sure that the multi-version tests do belong in qa. Beyond that, we're not sure. If you want to add a new qa project, open a PR and be ready to discuss options.
The server component of Elasticsearch that contains all of the modules and plugins. Right now things like the high level rest client depend on the server, but we'd like to fix that in the future.
Our test framework and test fixtures. We use the test framework for testing the server, the plugins, and modules, and pretty much everything else. We publish the test framework so folks who develop Elasticsearch plugins can use it to test the plugins. The test fixtures are external processes that we start before running specific tests that rely on them.
For example, we have an hdfs test that uses mini-hdfs to test our repository-hdfs plugin.
Commercially licensed code that integrates with the rest of Elasticsearch. The
docs
subdirectory functions just like the top level docs
subdirectory and
the qa
subdirectory functions just like the top level qa
subdirectory. The
plugin
subdirectory contains the x-pack module which runs inside the
Elasticsearch process.
We use Gradle to build Elasticsearch because it is flexible enough to not only build and package Elasticsearch, but also orchestrate all of the ways that we have to test Elasticsearch.
Gradle organizes dependencies and build artifacts into "configurations" and allows you to use these configurations arbitrarily. Here are some of the most common configurations in our build and how we use them:
- `implementation`
- Dependencies that are used by the project at compile and runtime but are not exposed as a compile dependency to other dependent projects. Dependencies added to the `implementation` configuration are considered an implementation detail that can be changed at a later date without affecting any dependent projects.
- `api`
- Dependencies that are used as compile and runtime dependencies of a project and are considered part of the external api of the project.
- `runtimeOnly`
- Dependencies that not on the classpath at compile time but are on the classpath at runtime. We mostly use this configuration to make sure that we do not accidentally compile against dependencies of our dependencies also known as "transitive" dependencies".
- `compileOnly`
- Code that is on the classpath at compile time but that should not be shipped with the project because it is "provided" by the runtime somehow. Elasticsearch plugins use this configuration to include dependencies that are bundled with Elasticsearch's server.
- `testImplementation`
- Code that is on the classpath for compiling tests that are part of this project but not production code. The canonical example of this is `junit`.
We review every contribution carefully to ensure that the change is of high quality and fits well with the rest of the Elasticsearch codebase. If accepted, we will merge your change and usually take care of backporting it to appropriate branches ourselves.
We really appreciate everyone who is interested in contributing to Elasticsearch and regret that we sometimes have to reject contributions even when they might appear to make genuine improvements to the system. Reviewing contributions can be a very time-consuming task, yet the team is small and our time is very limited. In some cases the time we would need to spend on reviews would outweigh the benefits of a change by preventing us from working on other more beneficial changes instead.
Please discuss your change in a GitHub issue before spending much time on its implementation. We sometimes have to reject contributions that duplicate other efforts, take the wrong approach to solving a problem, or solve a problem which does not need solving. An up-front discussion often saves a good deal of wasted time in these cases.
We normally immediately reject isolated PRs that only perform simple refactorings or otherwise "tidy up" certain aspects of the code. We think the benefits of this kind of change are very small, and in our experience it is not worth investing the substantial effort needed to review them. This especially includes changes suggested by tools.
We normally immediately reject PRs which target platforms or system configurations that are not in the official support matrix. We choose to support particular platforms with care because we must work to ensure that every Elasticsearch release works completely on every platform, and we must spend time investigating test failures and performance regressions there too. We cannot determine whether PRs which target unsupported platforms or configurations meet our quality standards, nor can we guarantee that the change they introduce will continue to work in future releases. We do not want Elasticsearch to suddenly stop working on a particular platform after an upgrade.
We sometimes reject contributions due to the low quality of the submission since low-quality submissions tend to take unreasonable effort to review properly. Quality is rather subjective so it is hard to describe exactly how to avoid this, but there are some basic steps you can take to reduce the chances of rejection. Follow the guidelines listed above when preparing your changes. You should add tests that correspond with your changes, and your PR should pass affected test suites too. It makes it much easier to review if your code is formatted correctly and does not include unnecessary extra changes.
We sometimes reject contributions if we find ourselves performing many review iterations without making enough progress. Some iteration is expected, particularly on technically complicated changes, and there's no fixed limit on the acceptable number of review cycles since it depends so much on the nature of the change. You can help to reduce the number of iterations by reviewing your contribution yourself or in your own team before asking us for a review. You may be surprised how many comments you can anticipate and address by taking a short break and then carefully looking over your changes again.
We expect you to follow up on review comments somewhat promptly, but recognise that everyone has many priorities for their time and may not be able to respond for several days. We will understand if you find yourself without the time to complete your contribution, but please let us know that you have stopped working on it. We will try to send you a reminder if we haven't heard from you in a while, but may end up closing your PR if you do not respond for too long.
If your contribution is rejected we will close the pull request with a comment explaining why. This decision isn't always final: if you feel we have misunderstood your intended change or otherwise think that we should reconsider then please continue the conversation with a comment on the pull request and we'll do our best to address any further points you raise.
In general Elasticsearch is happy to accept contributions that were created as part of a class but strongly advise against making the contribution as part of the class. So if you have code you wrote for a class feel free to submit it.
Please, please, please do not assign contributing to Elasticsearch as part of a class. If you really want to assign writing code for Elasticsearch as an assignment then the code contributions should be made to your private clone and opening PRs against the primary Elasticsearch clone must be optional, fully voluntary, not for a grade, and without any deadlines.
Because:
- While the code review process is likely very educational, it can take wildly varying amounts of time depending on who is available, where the change is, and how deep the change is. There is no way to predict how long it will take unless we rush.
- We do not rush reviews without a very, very good reason. Class deadlines aren't a good enough reason for us to rush reviews.
- We deeply discourage opening a PR you don't intend to work through the entire code review process because it wastes our time.
- We don't have the capacity to absorb an entire class full of new contributors, especially when they are unlikely to become long time contributors.
Finally, we require that you run ./gradlew check
before submitting a
non-documentation contribution. This is mentioned above, but it is worth
repeating in this section because it has come up in this context.