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23 = Apache HBase Configuration
30 This chapter expands upon the <<getting_started>> chapter to further explain configuration of Apache HBase.
31 Please read this chapter carefully, especially the <<basic.prerequisites,Basic Prerequisites>>
32 to ensure that your HBase testing and deployment goes smoothly.
33 Familiarize yourself with <<hbase_supported_tested_definitions>> as well.
35 == Configuration Files
36 Apache HBase uses the same configuration system as Apache Hadoop.
37 All configuration files are located in the _conf/_ directory, which needs to be kept in sync for each node on your cluster.
39 .HBase Configuration File Descriptions
41 Not present by default.
42 A plain-text file which lists hosts on which the Master should start a backup Master process, one host per line.
44 _hadoop-metrics2-hbase.properties_::
45 Used to connect HBase Hadoop's Metrics2 framework.
46 See the link:https://wiki.apache.org/hadoop/HADOOP-6728-MetricsV2[Hadoop Wiki entry] for more information on Metrics2.
47 Contains only commented-out examples by default.
49 _hbase-env.cmd_ and _hbase-env.sh_::
50 Script for Windows and Linux / Unix environments to set up the working environment for HBase, including the location of Java, Java options, and other environment variables.
51 The file contains many commented-out examples to provide guidance.
54 The default policy configuration file used by RPC servers to make authorization decisions on client requests.
55 Only used if HBase <<security,security>> is enabled.
58 The main HBase configuration file.
59 This file specifies configuration options which override HBase's default configuration.
60 You can view (but do not edit) the default configuration file at _docs/hbase-default.xml_.
61 You can also view the entire effective configuration for your cluster (defaults and overrides) in the [label]#HBase Configuration# tab of the HBase Web UI.
64 Configuration file for HBase logging via `log4j`.
67 A plain-text file containing a list of hosts which should run a RegionServer in your HBase cluster.
68 By default this file contains the single entry `localhost`.
69 It should contain a list of hostnames or IP addresses, one per line, and should only contain `localhost` if each node in your cluster will run a RegionServer on its `localhost` interface.
71 .Checking XML Validity
74 When you edit XML, it is a good idea to use an XML-aware editor to be sure that your syntax is correct and your XML is well-formed.
75 You can also use the `xmllint` utility to check that your XML is well-formed.
76 By default, `xmllint` re-flows and prints the XML to standard output.
77 To check for well-formedness and only print output if errors exist, use the command `xmllint -noout filename.xml`.
79 .Keep Configuration In Sync Across the Cluster
82 When running in distributed mode, after you make an edit to an HBase configuration, make sure you copy the contents of the _conf/_ directory to all nodes of the cluster.
83 HBase will not do this for you.
84 Use `rsync`, `scp`, or another secure mechanism for copying the configuration files to your nodes.
85 For most configurations, a restart is needed for servers to pick up changes. Dynamic configuration is an exception to this, to be described later below.
88 [[basic.prerequisites]]
89 == Basic Prerequisites
91 This section lists required services and some required system configuration.
96 The following table summarizes the recommendation of the HBase community wrt deploying on various Java versions.
97 A icon:check-circle[role="green"] symbol is meant to indicate a base level of testing and willingness to help diagnose and address issues you might run into.
98 Similarly, an entry of icon:exclamation-circle[role="yellow"] or icon:times-circle[role="red"] generally means that should you run into an issue the community is likely to ask you to change the Java environment before proceeding to help.
99 In some cases, specific guidance on limitations (e.g. whether compiling / unit tests work, specific operational issues, etc) will also be noted.
101 .Long Term Support JDKs are recommended
104 HBase recommends downstream users rely on JDK releases that are marked as Long Term Supported (LTS) either from the OpenJDK project or vendors. As of March 2018 that means Java 8 is the only applicable version and that the next likely version to see testing will be Java 11 near Q3 2018.
107 .Java support by release line
108 [cols="6*^.^", options="header"]
118 |icon:times-circle[role="red"]
119 |icon:check-circle[role="green"]
120 v|icon:exclamation-circle[role="yellow"]
121 link:https://issues.apache.org/jira/browse/HBASE-20264[HBASE-20264]
122 v|icon:exclamation-circle[role="yellow"]
123 link:https://issues.apache.org/jira/browse/HBASE-20264[HBASE-20264]
124 v|icon:exclamation-circle[role="yellow"]
125 link:https://issues.apache.org/jira/browse/HBASE-21110[HBASE-21110]
128 |icon:check-circle[role="green"]
129 |icon:check-circle[role="green"]
130 v|icon:exclamation-circle[role="yellow"]
131 link:https://issues.apache.org/jira/browse/HBASE-20264[HBASE-20264]
132 v|icon:exclamation-circle[role="yellow"]
133 link:https://issues.apache.org/jira/browse/HBASE-20264[HBASE-20264]
134 v|icon:exclamation-circle[role="yellow"]
135 link:https://issues.apache.org/jira/browse/HBASE-21110[HBASE-21110]
139 NOTE: HBase will neither build nor run with Java 6.
141 NOTE: You must set `JAVA_HOME` on each node of your cluster. _hbase-env.sh_ provides a handy mechanism to do this.
144 .Operating System Utilities
146 HBase uses the Secure Shell (ssh) command and utilities extensively to communicate between cluster nodes. Each server in the cluster must be running `ssh` so that the Hadoop and HBase daemons can be managed. You must be able to connect to all nodes via SSH, including the local node, from the Master as well as any backup Master, using a shared key rather than a password. You can see the basic methodology for such a set-up in Linux or Unix systems at "<<passwordless.ssh.quickstart>>". If your cluster nodes use OS X, see the section, link:https://wiki.apache.org/hadoop/Running_Hadoop_On_OS_X_10.5_64-bit_%28Single-Node_Cluster%29[SSH: Setting up Remote Desktop and Enabling Self-Login] on the Hadoop wiki.
149 HBase uses the local hostname to self-report its IP address.
152 The clocks on cluster nodes should be synchronized. A small amount of variation is acceptable, but larger amounts of skew can cause erratic and unexpected behavior. Time synchronization is one of the first things to check if you see unexplained problems in your cluster. It is recommended that you run a Network Time Protocol (NTP) service, or another time-synchronization mechanism on your cluster and that all nodes look to the same service for time synchronization. See the link:http://www.tldp.org/LDP/sag/html/basic-ntp-config.html[Basic NTP Configuration] at [citetitle]_The Linux Documentation Project (TLDP)_ to set up NTP.
155 Limits on Number of Files and Processes (ulimit)::
156 Apache HBase is a database. It requires the ability to open a large number of files at once. Many Linux distributions limit the number of files a single user is allowed to open to `1024` (or `256` on older versions of OS X). You can check this limit on your servers by running the command `ulimit -n` when logged in as the user which runs HBase. See <<trouble.rs.runtime.filehandles,the Troubleshooting section>> for some of the problems you may experience if the limit is too low. You may also notice errors such as the following:
159 2010-04-06 03:04:37,542 INFO org.apache.hadoop.hdfs.DFSClient: Exception increateBlockOutputStream java.io.EOFException
160 2010-04-06 03:04:37,542 INFO org.apache.hadoop.hdfs.DFSClient: Abandoning block blk_-6935524980745310745_1391901
163 It is recommended to raise the ulimit to at least 10,000, but more likely 10,240, because the value is usually expressed in multiples of 1024. Each ColumnFamily has at least one StoreFile, and possibly more than six StoreFiles if the region is under load. The number of open files required depends upon the number of ColumnFamilies and the number of regions. The following is a rough formula for calculating the potential number of open files on a RegionServer.
165 .Calculate the Potential Number of Open Files
167 (StoreFiles per ColumnFamily) x (regions per RegionServer)
170 For example, assuming that a schema had 3 ColumnFamilies per region with an average of 3 StoreFiles per ColumnFamily, and there are 100 regions per RegionServer, the JVM will open `3 * 3 * 100 = 900` file descriptors, not counting open JAR files, configuration files, and others. Opening a file does not take many resources, and the risk of allowing a user to open too many files is minimal.
172 Another related setting is the number of processes a user is allowed to run at once. In Linux and Unix, the number of processes is set using the `ulimit -u` command. This should not be confused with the `nproc` command, which controls the number of CPUs available to a given user. Under load, a `ulimit -u` that is too low can cause OutOfMemoryError exceptions.
174 Configuring the maximum number of file descriptors and processes for the user who is running the HBase process is an operating system configuration, rather than an HBase configuration. It is also important to be sure that the settings are changed for the user that actually runs HBase. To see which user started HBase, and that user's ulimit configuration, look at the first line of the HBase log for that instance.
176 .`ulimit` Settings on Ubuntu
178 To configure ulimit settings on Ubuntu, edit _/etc/security/limits.conf_, which is a space-delimited file with four columns. Refer to the man page for _limits.conf_ for details about the format of this file. In the following example, the first line sets both soft and hard limits for the number of open files (nofile) to 32768 for the operating system user with the username hadoop. The second line sets the number of processes to 32000 for the same user.
180 hadoop - nofile 32768
183 The settings are only applied if the Pluggable Authentication Module (PAM) environment is directed to use them. To configure PAM to use these limits, be sure that the _/etc/pam.d/common-session_ file contains the following line:
185 session required pam_limits.so
190 All of the shell scripts that come with HBase rely on the link:http://www.gnu.org/software/bash[GNU Bash] shell.
193 Running production systems on Windows machines is not recommended.
197 === link:https://hadoop.apache.org[Hadoop](((Hadoop)))
199 The following table summarizes the versions of Hadoop supported with each version of HBase. Older versions not appearing in this table are considered unsupported and likely missing necessary features, while newer versions are untested but may be suitable.
201 Based on the version of HBase, you should select the most appropriate version of Hadoop.
202 You can use Apache Hadoop, or a vendor's distribution of Hadoop.
203 No distinction is made here.
204 See link:https://wiki.apache.org/hadoop/Distributions%20and%20Commercial%20Support[the Hadoop wiki] for information about vendors of Hadoop.
206 .Hadoop 2.x is recommended.
209 Hadoop 2.x is faster and includes features, such as short-circuit reads (see <<perf.hdfs.configs.localread>>),
210 which will help improve your HBase random read profile.
211 Hadoop 2.x also includes important bug fixes that will improve your overall HBase experience. HBase does not support running with
212 earlier versions of Hadoop. See the table below for requirements specific to different HBase versions.
214 Hadoop 3.x is still in early access releases and has not yet been sufficiently tested by the HBase community for production use cases.
217 Use the following legend to interpret this table:
219 .Hadoop version support matrix
221 * icon:check-circle[role="green"] = Tested to be fully-functional
222 * icon:times-circle[role="red"] = Known to not be fully-functional, or there are link:https://hadoop.apache.org/cve_list.html[CVEs] so we drop the support in newer minor releases
223 * icon:exclamation-circle[role="yellow"] = Not tested, may/may-not function
225 [cols="1,6*^.^", options="header"]
227 | | HBase-1.2.x, HBase-1.3.x | HBase-1.4.x | HBase-1.5.x | HBase-2.0.x | HBase-2.1.x | HBase-2.2.x
228 |Hadoop-2.4.x | icon:check-circle[role="green"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"]
229 |Hadoop-2.5.x | icon:check-circle[role="green"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"]
230 |Hadoop-2.6.0 | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"]
231 |Hadoop-2.6.1+ | icon:check-circle[role="green"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:check-circle[role="green"] | icon:times-circle[role="red"] | icon:times-circle[role="red"]
232 |Hadoop-2.7.0 | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"]
233 |Hadoop-2.7.1+ | icon:check-circle[role="green"] | icon:check-circle[role="green"] | icon:times-circle[role="red"] | icon:check-circle[role="green"] | icon:check-circle[role="green"] | icon:times-circle[role="red"]
234 |Hadoop-2.8.[0-2] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"]
235 |Hadoop-2.8.[3-4] | icon:exclamation-circle[role="yellow"] | icon:exclamation-circle[role="yellow"] | icon:times-circle[role="red"] | icon:check-circle[role="green"] | icon:check-circle[role="green"] | icon:times-circle[role="red"]
236 |Hadoop-2.8.5+ | icon:exclamation-circle[role="yellow"] | icon:exclamation-circle[role="yellow"] | icon:check-circle[role="green"] | icon:check-circle[role="green"] | icon:check-circle[role="green"] | icon:check-circle[role="green"]
237 |Hadoop-2.9.[0-1] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"]
238 |Hadoop-2.9.2+ | icon:exclamation-circle[role="yellow"] | icon:exclamation-circle[role="yellow"] | icon:check-circle[role="green"] | icon:exclamation-circle[role="yellow"] | icon:exclamation-circle[role="yellow"] | icon:check-circle[role="green"]
239 |Hadoop-3.0.[0-2] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"]
240 |Hadoop-3.0.3+ | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:check-circle[role="green"] | icon:check-circle[role="green"] | icon:times-circle[role="red"]
241 |Hadoop-3.1.0 | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"]
242 |Hadoop-3.1.1+ | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:times-circle[role="red"] | icon:check-circle[role="green"] | icon:check-circle[role="green"] | icon:check-circle[role="green"]
245 .Hadoop Pre-2.6.1 and JDK 1.8 Kerberos
248 When using pre-2.6.1 Hadoop versions and JDK 1.8 in a Kerberos environment, HBase server can fail
249 and abort due to Kerberos keytab relogin error. Late version of JDK 1.7 (1.7.0_80) has the problem too.
250 Refer to link:https://issues.apache.org/jira/browse/HADOOP-10786[HADOOP-10786] for additional details.
251 Consider upgrading to Hadoop 2.6.1+ in this case.
257 Hadoop distributions based on the 2.6.x line *must* have
258 link:https://issues.apache.org/jira/browse/HADOOP-11710[HADOOP-11710] applied if you plan to run
259 HBase on top of an HDFS Encryption Zone. Failure to do so will result in cluster failure and
260 data loss. This patch is present in Apache Hadoop releases 2.6.1+.
263 .Hadoop 2.y.0 Releases
266 Starting around the time of Hadoop version 2.7.0, the Hadoop PMC got into the habit of calling out new minor releases on their major version 2 release line as not stable / production ready. As such, HBase expressly advises downstream users to avoid running on top of these releases. Note that additionally the 2.8.1 release was given the same caveat by the Hadoop PMC. For reference, see the release announcements for link:https://s.apache.org/hadoop-2.7.0-announcement[Apache Hadoop 2.7.0], link:https://s.apache.org/hadoop-2.8.0-announcement[Apache Hadoop 2.8.0], link:https://s.apache.org/hadoop-2.8.1-announcement[Apache Hadoop 2.8.1], and link:https://s.apache.org/hadoop-2.9.0-announcement[Apache Hadoop 2.9.0].
269 .Hadoop 3.0.x Releases
272 Hadoop distributions that include the Application Timeline Service feature may cause unexpected versions of HBase classes to be present in the application classpath. Users planning on running MapReduce applications with HBase should make sure that link:https://issues.apache.org/jira/browse/YARN-7190[YARN-7190] is present in their YARN service (currently fixed in 2.9.1+ and 3.1.0+).
275 .Hadoop 3.1.0 Release
278 The Hadoop PMC called out the 3.1.0 release as not stable / production ready. As such, HBase expressly advises downstream users to avoid running on top of this release. For reference, see the link:https://s.apache.org/hadoop-3.1.0-announcement[release announcement for Hadoop 3.1.0].
281 .Replace the Hadoop Bundled With HBase!
284 Because HBase depends on Hadoop, it bundles Hadoop jars under its _lib_ directory.
285 The bundled jars are ONLY for use in standalone mode.
286 In distributed mode, it is _critical_ that the version of Hadoop that is out on your cluster match what is under HBase.
287 Replace the hadoop jars found in the HBase lib directory with the equivalent hadoop jars from the version you are running
288 on your cluster to avoid version mismatch issues.
289 Make sure you replace the jars under HBase across your whole cluster.
290 Hadoop version mismatch issues have various manifestations. Check for mismatch if
294 [[dfs.datanode.max.transfer.threads]]
295 ==== `dfs.datanode.max.transfer.threads` (((dfs.datanode.max.transfer.threads)))
297 An HDFS DataNode has an upper bound on the number of files that it will serve at any one time.
298 Before doing any loading, make sure you have configured Hadoop's _conf/hdfs-site.xml_, setting the `dfs.datanode.max.transfer.threads` value to at least the following:
304 <name>dfs.datanode.max.transfer.threads</name>
309 Be sure to restart your HDFS after making the above configuration.
311 Not having this configuration in place makes for strange-looking failures.
312 One manifestation is a complaint about missing blocks.
316 10/12/08 20:10:31 INFO hdfs.DFSClient: Could not obtain block
317 blk_XXXXXXXXXXXXXXXXXXXXXX_YYYYYYYY from any node: java.io.IOException: No live nodes
318 contain current block. Will get new block locations from namenode and retry...
321 See also <<casestudies.max.transfer.threads,casestudies.max.transfer.threads>> and note that this property was previously known as `dfs.datanode.max.xcievers` (e.g. link:http://ccgtech.blogspot.com/2010/02/hadoop-hdfs-deceived-by-xciever.html[Hadoop HDFS: Deceived by Xciever]).
323 [[zookeeper.requirements]]
324 === ZooKeeper Requirements
326 ZooKeeper 3.4.x is required.
329 == HBase run modes: Standalone and Distributed
331 HBase has two run modes: <<standalone,standalone>> and <<distributed,distributed>>.
332 Out of the box, HBase runs in standalone mode.
333 Whatever your mode, you will need to configure HBase by editing files in the HBase _conf_ directory.
334 At a minimum, you must edit [code]+conf/hbase-env.sh+ to tell HBase which +java+ to use.
335 In this file you set HBase environment variables such as the heapsize and other options for the `JVM`, the preferred location for log files, etc.
336 Set [var]+JAVA_HOME+ to point at the root of your +java+ install.
341 This is the default mode.
342 Standalone mode is what is described in the <<quickstart,quickstart>> section.
343 In standalone mode, HBase does not use HDFS -- it uses the local filesystem instead -- and it runs all HBase daemons and a local ZooKeeper all up in the same JVM.
344 ZooKeeper binds to a well known port so clients may talk to HBase.
346 [[standalone.over.hdfs]]
347 ==== Standalone HBase over HDFS
348 A sometimes useful variation on standalone hbase has all daemons running inside the
349 one JVM but rather than persist to the local filesystem, instead
350 they persist to an HDFS instance.
352 You might consider this profile when you are intent on
353 a simple deploy profile, the loading is light, but the
354 data must persist across node comings and goings. Writing to
355 HDFS where data is replicated ensures the latter.
357 To configure this standalone variant, edit your _hbase-site.xml_
358 setting _hbase.rootdir_ to point at a directory in your
359 HDFS instance but then set _hbase.cluster.distributed_
360 to _false_. For example:
366 <name>hbase.rootdir</name>
367 <value>hdfs://namenode.example.org:8020/hbase</value>
370 <name>hbase.cluster.distributed</name>
379 Distributed mode can be subdivided into distributed but all daemons run on a single node -- a.k.a. _pseudo-distributed_ -- and _fully-distributed_ where the daemons are spread across all nodes in the cluster.
380 The _pseudo-distributed_ vs. _fully-distributed_ nomenclature comes from Hadoop.
382 Pseudo-distributed mode can run against the local filesystem or it can run against an instance of the _Hadoop Distributed File System_ (HDFS). Fully-distributed mode can ONLY run on HDFS.
383 See the Hadoop link:https://hadoop.apache.org/docs/current/[documentation] for how to set up HDFS.
384 A good walk-through for setting up HDFS on Hadoop 2 can be found at http://www.alexjf.net/blog/distributed-systems/hadoop-yarn-installation-definitive-guide.
387 ==== Pseudo-distributed
389 .Pseudo-Distributed Quickstart
392 A quickstart has been added to the <<quickstart,quickstart>> chapter.
393 See <<quickstart_pseudo,quickstart-pseudo>>.
394 Some of the information that was originally in this section has been moved there.
397 A pseudo-distributed mode is simply a fully-distributed mode run on a single host.
398 Use this HBase configuration for testing and prototyping purposes only.
399 Do not use this configuration for production or for performance evaluation.
402 === Fully-distributed
404 By default, HBase runs in standalone mode.
405 Both standalone mode and pseudo-distributed mode are provided for the purposes of small-scale testing.
406 For a production environment, distributed mode is advised.
407 In distributed mode, multiple instances of HBase daemons run on multiple servers in the cluster.
409 Just as in pseudo-distributed mode, a fully distributed configuration requires that you set the `hbase.cluster.distributed` property to `true`.
410 Typically, the `hbase.rootdir` is configured to point to a highly-available HDFS filesystem.
412 In addition, the cluster is configured so that multiple cluster nodes enlist as RegionServers, ZooKeeper QuorumPeers, and backup HMaster servers.
413 These configuration basics are all demonstrated in <<quickstart_fully_distributed,quickstart-fully-distributed>>.
415 .Distributed RegionServers
416 Typically, your cluster will contain multiple RegionServers all running on different servers, as well as primary and backup Master and ZooKeeper daemons.
417 The _conf/regionservers_ file on the master server contains a list of hosts whose RegionServers are associated with this cluster.
418 Each host is on a separate line.
419 All hosts listed in this file will have their RegionServer processes started and stopped when the master server starts or stops.
422 See the <<zookeeper,ZooKeeper>> section for ZooKeeper setup instructions for HBase.
424 .Example Distributed HBase Cluster
426 This is a bare-bones _conf/hbase-site.xml_ for a distributed HBase cluster.
427 A cluster that is used for real-world work would contain more custom configuration parameters.
428 Most HBase configuration directives have default values, which are used unless the value is overridden in the _hbase-site.xml_.
429 See "<<config.files,Configuration Files>>" for more information.
436 <name>hbase.rootdir</name>
437 <value>hdfs://namenode.example.org:8020/hbase</value>
440 <name>hbase.cluster.distributed</name>
444 <name>hbase.zookeeper.quorum</name>
445 <value>node-a.example.com,node-b.example.com,node-c.example.com</value>
450 This is an example _conf/regionservers_ file, which contains a list of nodes that should run a RegionServer in the cluster.
451 These nodes need HBase installed and they need to use the same contents of the _conf/_ directory as the Master server
461 This is an example _conf/backup-masters_ file, which contains a list of each node that should run a backup Master instance.
462 The backup Master instances will sit idle unless the main Master becomes unavailable.
472 .Distributed HBase Quickstart
473 See <<quickstart_fully_distributed,quickstart-fully-distributed>> for a walk-through of a simple three-node cluster configuration with multiple ZooKeeper, backup HMaster, and RegionServer instances.
475 .Procedure: HDFS Client Configuration
476 . Of note, if you have made HDFS client configuration changes on your Hadoop cluster, such as configuration directives for HDFS clients, as opposed to server-side configurations, you must use one of the following methods to enable HBase to see and use these configuration changes:
478 a. Add a pointer to your `HADOOP_CONF_DIR` to the `HBASE_CLASSPATH` environment variable in _hbase-env.sh_.
479 b. Add a copy of _hdfs-site.xml_ (or _hadoop-site.xml_) or, better, symlinks, under _${HBASE_HOME}/conf_, or
480 c. if only a small set of HDFS client configurations, add them to _hbase-site.xml_.
483 An example of such an HDFS client configuration is `dfs.replication`.
484 If for example, you want to run with a replication factor of 5, HBase will create files with the default of 3 unless you do the above to make the configuration available to HBase.
487 == Running and Confirming Your Installation
489 Make sure HDFS is running first.
490 Start and stop the Hadoop HDFS daemons by running _bin/start-hdfs.sh_ over in the `HADOOP_HOME` directory.
491 You can ensure it started properly by testing the `put` and `get` of files into the Hadoop filesystem.
492 HBase does not normally use the MapReduce or YARN daemons. These do not need to be started.
494 _If_ you are managing your own ZooKeeper, start it and confirm it's running, else HBase will start up ZooKeeper for you as part of its start process.
496 Start HBase with the following command:
502 Run the above from the `HBASE_HOME` directory.
504 You should now have a running HBase instance.
505 HBase logs can be found in the _logs_ subdirectory.
506 Check them out especially if HBase had trouble starting.
508 HBase also puts up a UI listing vital attributes.
509 By default it's deployed on the Master host at port 16010 (HBase RegionServers listen on port 16020 by default and put up an informational HTTP server at port 16030). If the Master is running on a host named `master.example.org` on the default port, point your browser at pass:[http://master.example.org:16010] to see the web interface.
511 Once HBase has started, see the <<shell_exercises,shell exercises>> section for how to create tables, add data, scan your insertions, and finally disable and drop your tables.
513 To stop HBase after exiting the HBase shell enter
516 $ ./bin/stop-hbase.sh
517 stopping hbase...............
520 Shutdown can take a moment to complete.
521 It can take longer if your cluster is comprised of many machines.
522 If you are running a distributed operation, be sure to wait until HBase has shut down completely before stopping the Hadoop daemons.
525 == Default Configuration
528 === _hbase-site.xml_ and _hbase-default.xml_
530 Just as in Hadoop where you add site-specific HDFS configuration to the _hdfs-site.xml_ file, for HBase, site specific customizations go into the file _conf/hbase-site.xml_.
531 For the list of configurable properties, see <<hbase_default_configurations,hbase default configurations>> below or view the raw _hbase-default.xml_ source file in the HBase source code at _src/main/resources_.
533 Not all configuration options make it out to _hbase-default.xml_.
534 Some configurations would only appear in source code; the only way to identify these changes are through code review.
536 Currently, changes here will require a cluster restart for HBase to notice the change.
537 // hbase/src/main/asciidoc
539 include::{docdir}/../../../target/asciidoc/hbase-default.adoc[]
545 Set HBase environment variables in this file.
546 Examples include options to pass the JVM on start of an HBase daemon such as heap size and garbage collector configs.
547 You can also set configurations for HBase configuration, log directories, niceness, ssh options, where to locate process pid files, etc.
548 Open the file at _conf/hbase-env.sh_ and peruse its content.
549 Each option is fairly well documented.
550 Add your own environment variables here if you want them read by HBase daemons on startup.
552 Changes here will require a cluster restart for HBase to notice the change.
555 === _log4j.properties_
557 Edit this file to change rate at which HBase files are rolled and to change the level at which HBase logs messages.
559 Changes here will require a cluster restart for HBase to notice the change though log levels can be changed for particular daemons via the HBase UI.
561 [[client_dependencies]]
562 === Client configuration and dependencies connecting to an HBase cluster
564 If you are running HBase in standalone mode, you don't need to configure anything for your client to work provided that they are all on the same machine.
566 Since the HBase Master may move around, clients bootstrap by looking to ZooKeeper for current critical locations.
567 ZooKeeper is where all these values are kept.
568 Thus clients require the location of the ZooKeeper ensemble before they can do anything else.
569 Usually this ensemble location is kept out in the _hbase-site.xml_ and is picked up by the client from the `CLASSPATH`.
571 If you are configuring an IDE to run an HBase client, you should include the _conf/_ directory on your classpath so _hbase-site.xml_ settings can be found (or add _src/test/resources_ to pick up the hbase-site.xml used by tests).
573 For Java applications using Maven, including the hbase-shaded-client module is the recommended dependency when connecting to a cluster:
577 <groupId>org.apache.hbase</groupId>
578 <artifactId>hbase-shaded-client</artifactId>
579 <version>2.0.0</version>
583 A basic example _hbase-site.xml_ for client only may look as follows:
586 <?xml version="1.0"?>
587 <?xml-stylesheet type="text/xsl" href="configuration.xsl"?>
590 <name>hbase.zookeeper.quorum</name>
591 <value>example1,example2,example3</value>
592 <description>The directory shared by region servers.
598 [[java.client.config]]
599 ==== Java client configuration
601 The configuration used by a Java client is kept in an link:https://hbase.apache.org/apidocs/org/apache/hadoop/hbase/HBaseConfiguration[HBaseConfiguration] instance.
603 The factory method on HBaseConfiguration, `HBaseConfiguration.create();`, on invocation, will read in the content of the first _hbase-site.xml_ found on the client's `CLASSPATH`, if one is present (Invocation will also factor in any _hbase-default.xml_ found; an _hbase-default.xml_ ships inside the _hbase.X.X.X.jar_). It is also possible to specify configuration directly without having to read from a _hbase-site.xml_.
604 For example, to set the ZooKeeper ensemble for the cluster programmatically do as follows:
608 Configuration config = HBaseConfiguration.create();
609 config.set("hbase.zookeeper.quorum", "localhost"); // Here we are running zookeeper locally
612 If multiple ZooKeeper instances make up your ZooKeeper ensemble, they may be specified in a comma-separated list (just as in the _hbase-site.xml_ file). This populated `Configuration` instance can then be passed to an link:https://hbase.apache.org/apidocs/org/apache/hadoop/hbase/client/Table.html[Table], and so on.
617 HBase provides a wide variety of timeout settings to limit the execution time of various remote operations.
620 * hbase.rpc.read.timeout
621 * hbase.rpc.write.timeout
622 * hbase.client.operation.timeout
623 * hbase.client.meta.operation.timeout
624 * hbase.client.scanner.timeout.period
626 The `hbase.rpc.timeout` property limits how long a single RPC call can run before timing out.
627 To fine tune read or write related RPC timeouts set `hbase.rpc.read.timeout` and `hbase.rpc.write.timeout` configuration properties.
628 In the absence of these properties `hbase.rpc.timeout` will be used.
630 A higher-level timeout is `hbase.client.operation.timeout` which is valid for each client call.
631 When an RPC call fails for instance for a timeout due to `hbase.rpc.timeout` it will be retried until `hbase.client.operation.timeout` is reached.
632 Client operation timeout for system tables can be fine tuned by setting `hbase.client.meta.operation.timeout` configuration value.
633 When this is not set its value will use `hbase.client.operation.timeout`.
635 Timeout for scan operations is controlled differently. Use `hbase.client.scanner.timeout.period` property to set this timeout.
638 == Example Configurations
640 === Basic Distributed HBase Install
642 Here is a basic configuration example for a distributed ten node cluster:
643 * The nodes are named `example0`, `example1`, etc., through node `example9` in this example.
644 * The HBase Master and the HDFS NameNode are running on the node `example0`.
645 * RegionServers run on nodes `example1`-`example9`.
646 * A 3-node ZooKeeper ensemble runs on `example1`, `example2`, and `example3` on the default ports.
647 * ZooKeeper data is persisted to the directory _/export/zookeeper_.
649 Below we show what the main configuration files -- _hbase-site.xml_, _regionservers_, and _hbase-env.sh_ -- found in the HBase _conf_ directory might look like.
652 ==== _hbase-site.xml_
656 <?xml version="1.0"?>
657 <?xml-stylesheet type="text/xsl" href="configuration.xsl"?>
660 <name>hbase.zookeeper.quorum</name>
661 <value>example1,example2,example3</value>
662 <description>The directory shared by RegionServers.
666 <name>hbase.zookeeper.property.dataDir</name>
667 <value>/export/zookeeper</value>
668 <description>Property from ZooKeeper config zoo.cfg.
669 The directory where the snapshot is stored.
673 <name>hbase.rootdir</name>
674 <value>hdfs://example0:8020/hbase</value>
675 <description>The directory shared by RegionServers.
679 <name>hbase.cluster.distributed</name>
681 <description>The mode the cluster will be in. Possible values are
682 false: standalone and pseudo-distributed setups with managed ZooKeeper
683 true: fully-distributed with unmanaged ZooKeeper Quorum (see hbase-env.sh)
692 In this file you list the nodes that will run RegionServers.
693 In our case, these nodes are `example1`-`example9`.
711 The following lines in the _hbase-env.sh_ file show how to set the `JAVA_HOME` environment variable (required for HBase) and set the heap to 4 GB (rather than the default value of 1 GB). If you copy and paste this example, be sure to adjust the `JAVA_HOME` to suit your environment.
714 # The java implementation to use.
715 export JAVA_HOME=/usr/java/jdk1.8.0/
717 # The maximum amount of heap to use. Default is left to JVM default.
718 export HBASE_HEAPSIZE=4G
721 Use +rsync+ to copy the content of the _conf_ directory to all nodes of the cluster.
723 [[important_configurations]]
724 == The Important Configurations
726 Below we list some _important_ configurations.
727 We've divided this section into required configuration and worth-a-look recommended configs.
729 [[required_configuration]]
730 === Required Configurations
732 Review the <<os,os>> and <<hadoop,hadoop>> sections.
734 [[big.cluster.config]]
735 ==== Big Cluster Configurations
737 If you have a cluster with a lot of regions, it is possible that a Regionserver checks in briefly after the Master starts while all the remaining RegionServers lag behind. This first server to check in will be assigned all regions which is not optimal.
738 To prevent the above scenario from happening, up the `hbase.master.wait.on.regionservers.mintostart` property from its default value of 1.
739 See link:https://issues.apache.org/jira/browse/HBASE-6389[HBASE-6389 Modify the
740 conditions to ensure that Master waits for sufficient number of Region Servers before
741 starting region assignments] for more detail.
743 [[recommended_configurations]]
744 === Recommended Configurations
746 [[recommended_configurations.zk]]
747 ==== ZooKeeper Configuration
749 [[sect.zookeeper.session.timeout]]
750 ===== `zookeeper.session.timeout`
752 The default timeout is three minutes (specified in milliseconds). This means that if a server crashes, it will be three minutes before the Master notices the crash and starts recovery.
753 You might need to tune the timeout down to a minute or even less so the Master notices failures sooner.
754 Before changing this value, be sure you have your JVM garbage collection configuration under control, otherwise, a long garbage collection that lasts beyond the ZooKeeper session timeout will take out your RegionServer. (You might be fine with this -- you probably want recovery to start on the server if a RegionServer has been in GC for a long period of time).
756 To change this configuration, edit _hbase-site.xml_, copy the changed file across the cluster and restart.
758 We set this value high to save our having to field questions up on the mailing lists asking why a RegionServer went down during a massive import.
759 The usual cause is that their JVM is untuned and they are running into long GC pauses.
760 Our thinking is that while users are getting familiar with HBase, we'd save them having to know all of its intricacies.
761 Later when they've built some confidence, then they can play with configuration such as this.
763 [[zookeeper.instances]]
764 ===== Number of ZooKeeper Instances
766 See <<zookeeper,zookeeper>>.
768 [[recommended.configurations.hdfs]]
769 ==== HDFS Configurations
771 [[dfs.datanode.failed.volumes.tolerated]]
772 ===== `dfs.datanode.failed.volumes.tolerated`
774 This is the "...number of volumes that are allowed to fail before a DataNode stops offering service.
775 By default any volume failure will cause a datanode to shutdown" from the _hdfs-default.xml_ description.
776 You might want to set this to about half the amount of your available disks.
778 [[hbase.regionserver.handler.count]]
779 ===== `hbase.regionserver.handler.count`
781 This setting defines the number of threads that are kept open to answer incoming requests to user tables.
782 The rule of thumb is to keep this number low when the payload per request approaches the MB (big puts, scans using a large cache) and high when the payload is small (gets, small puts, ICVs, deletes). The total size of the queries in progress is limited by the setting `hbase.ipc.server.max.callqueue.size`.
784 It is safe to set that number to the maximum number of incoming clients if their payload is small, the typical example being a cluster that serves a website since puts aren't typically buffered and most of the operations are gets.
786 The reason why it is dangerous to keep this setting high is that the aggregate size of all the puts that are currently happening in a region server may impose too much pressure on its memory, or even trigger an OutOfMemoryError.
787 A RegionServer running on low memory will trigger its JVM's garbage collector to run more frequently up to a point where GC pauses become noticeable (the reason being that all the memory used to keep all the requests' payloads cannot be trashed, no matter how hard the garbage collector tries). After some time, the overall cluster throughput is affected since every request that hits that RegionServer will take longer, which exacerbates the problem even more.
789 You can get a sense of whether you have too little or too many handlers by <<rpc.logging,rpc.logging>> on an individual RegionServer then tailing its logs (Queued requests consume memory).
792 ==== Configuration for large memory machines
794 HBase ships with a reasonable, conservative configuration that will work on nearly all machine types that people might want to test with.
795 If you have larger machines -- HBase has 8G and larger heap -- you might find the following configuration options helpful.
798 [[config.compression]]
801 You should consider enabling ColumnFamily compression.
802 There are several options that are near-frictionless and in most all cases boost performance by reducing the size of StoreFiles and thus reducing I/O.
804 See <<compression,compression>> for more information.
807 ==== Configuring the size and number of WAL files
809 HBase uses <<wal,wal>> to recover the memstore data that has not been flushed to disk in case of an RS failure.
810 These WAL files should be configured to be slightly smaller than HDFS block (by default a HDFS block is 64Mb and a WAL file is ~60Mb).
812 HBase also has a limit on the number of WAL files, designed to ensure there's never too much data that needs to be replayed during recovery.
813 This limit needs to be set according to memstore configuration, so that all the necessary data would fit.
814 It is recommended to allocate enough WAL files to store at least that much data (when all memstores are close to full). For example, with 16Gb RS heap, default memstore settings (0.4), and default WAL file size (~60Mb), 16Gb*0.4/60, the starting point for WAL file count is ~109.
815 However, as all memstores are not expected to be full all the time, less WAL files can be allocated.
817 [[disable.splitting]]
818 ==== Managed Splitting
820 HBase generally handles splitting of your regions based upon the settings in your _hbase-default.xml_ and _hbase-site.xml_ configuration files.
821 Important settings include `hbase.regionserver.region.split.policy`, `hbase.hregion.max.filesize`, `hbase.regionserver.regionSplitLimit`.
822 A simplistic view of splitting is that when a region grows to `hbase.hregion.max.filesize`, it is split.
823 For most usage patterns, you should use automatic splitting.
824 See <<manual_region_splitting_decisions,manual region splitting decisions>> for more information about manual region splitting.
826 Instead of allowing HBase to split your regions automatically, you can choose to manage the splitting yourself.
827 Manually managing splits works if you know your keyspace well, otherwise let HBase figure where to split for you.
828 Manual splitting can mitigate region creation and movement under load.
829 It also makes it so region boundaries are known and invariant (if you disable region splitting). If you use manual splits, it is easier doing staggered, time-based major compactions to spread out your network IO load.
831 .Disable Automatic Splitting
832 To disable automatic splitting, you can set region split policy in either cluster configuration or table configuration to be `org.apache.hadoop.hbase.regionserver.DisabledRegionSplitPolicy`
834 .Automatic Splitting Is Recommended
837 If you disable automatic splits to diagnose a problem or during a period of fast data growth, it is recommended to re-enable them when your situation becomes more stable.
838 The potential benefits of managing region splits yourself are not undisputed.
841 .Determine the Optimal Number of Pre-Split Regions
842 The optimal number of pre-split regions depends on your application and environment.
843 A good rule of thumb is to start with 10 pre-split regions per server and watch as data grows over time.
844 It is better to err on the side of too few regions and perform rolling splits later.
845 The optimal number of regions depends upon the largest StoreFile in your region.
846 The size of the largest StoreFile will increase with time if the amount of data grows.
847 The goal is for the largest region to be just large enough that the compaction selection algorithm only compacts it during a timed major compaction.
848 Otherwise, the cluster can be prone to compaction storms with a large number of regions under compaction at the same time.
849 It is important to understand that the data growth causes compaction storms and not the manual split decision.
851 If the regions are split into too many large regions, you can increase the major compaction interval by configuring `HConstants.MAJOR_COMPACTION_PERIOD`.
852 The `org.apache.hadoop.hbase.util.RegionSplitter` utility also provides a network-IO-safe rolling split of all regions.
854 [[managed.compactions]]
855 ==== Managed Compactions
857 By default, major compactions are scheduled to run once in a 7-day period.
859 If you need to control exactly when and how often major compaction runs, you can disable managed major compactions.
860 See the entry for `hbase.hregion.majorcompaction` in the <<compaction.parameters,compaction.parameters>> table for details.
862 .Do Not Disable Major Compactions
865 Major compactions are absolutely necessary for StoreFile clean-up.
866 Do not disable them altogether.
867 You can run major compactions manually via the HBase shell or via the link:https://hbase.apache.org/apidocs/org/apache/hadoop/hbase/client/Admin.html#majorCompact-org.apache.hadoop.hbase.TableName-[Admin API].
870 For more information about compactions and the compaction file selection process, see <<compaction,compaction>>
873 ==== Speculative Execution
875 Speculative Execution of MapReduce tasks is on by default, and for HBase clusters it is generally advised to turn off Speculative Execution at a system-level unless you need it for a specific case, where it can be configured per-job.
876 Set the properties `mapreduce.map.speculative` and `mapreduce.reduce.speculative` to false.
878 [[other_configuration]]
879 === Other Configurations
884 The balancer is a periodic operation which is run on the master to redistribute regions on the cluster.
885 It is configured via `hbase.balancer.period` and defaults to 300000 (5 minutes).
887 See <<master.processes.loadbalancer,master.processes.loadbalancer>> for more information on the LoadBalancer.
889 [[disabling.blockcache]]
890 ==== Disabling Blockcache
892 Do not turn off block cache (You'd do it by setting `hfile.block.cache.size` to zero). Currently we do not do well if you do this because the RegionServer will spend all its time loading HFile indices over and over again.
893 If your working set is such that block cache does you no good, at least size the block cache such that HFile indices will stay up in the cache (you can get a rough idea on the size you need by surveying RegionServer UIs; you'll see index block size accounted near the top of the webpage).
896 ==== link:http://en.wikipedia.org/wiki/Nagle's_algorithm[Nagle's] or the small package problem
898 If a big 40ms or so occasional delay is seen in operations against HBase, try the Nagles' setting.
899 For example, see the user mailing list thread, link:http://search-hadoop.com/m/pduLg2fydtE/Inconsistent+scan+performance+with+caching+set+&subj=Re+Inconsistent+scan+performance+with+caching+set+to+1[Inconsistent scan performance with caching set to 1] and the issue cited therein where setting `notcpdelay` improved scan speeds.
900 You might also see the graphs on the tail of link:https://issues.apache.org/jira/browse/HBASE-7008[HBASE-7008 Set scanner caching to a better default] where our Lars Hofhansl tries various data sizes w/ Nagle's on and off measuring the effect.
903 ==== Better Mean Time to Recover (MTTR)
905 This section is about configurations that will make servers come back faster after a fail.
906 See the Deveraj Das and Nicolas Liochon blog post link:http://hortonworks.com/blog/introduction-to-hbase-mean-time-to-recover-mttr/[Introduction to HBase Mean Time to Recover (MTTR)] for a brief introduction.
908 The issue link:https://issues.apache.org/jira/browse/HBASE-8389[HBASE-8354 forces Namenode into loop with lease recovery requests] is messy but has a bunch of good discussion toward the end on low timeouts and how to cause faster recovery including citation of fixes added to HDFS. Read the Varun Sharma comments.
909 The below suggested configurations are Varun's suggestions distilled and tested.
910 Make sure you are running on a late-version HDFS so you have the fixes he refers to and himself adds to HDFS that help HBase MTTR (e.g.
911 HDFS-3703, HDFS-3712, and HDFS-4791 -- Hadoop 2 for sure has them and late Hadoop 1 has some). Set the following in the RegionServer.
916 <name>hbase.lease.recovery.dfs.timeout</name>
918 <description>How much time we allow elapse between calls to recover lease.
919 Should be larger than the dfs timeout.</description>
922 <name>dfs.client.socket-timeout</name>
924 <description>Down the DFS timeout from 60 to 10 seconds.</description>
928 And on the NameNode/DataNode side, set the following to enable 'staleness' introduced in HDFS-3703, HDFS-3912.
933 <name>dfs.client.socket-timeout</name>
935 <description>Down the DFS timeout from 60 to 10 seconds.</description>
938 <name>dfs.datanode.socket.write.timeout</name>
940 <description>Down the DFS timeout from 8 * 60 to 10 seconds.</description>
943 <name>ipc.client.connect.timeout</name>
945 <description>Down from 60 seconds to 3.</description>
948 <name>ipc.client.connect.max.retries.on.timeouts</name>
950 <description>Down from 45 seconds to 3 (2 == 3 retries).</description>
953 <name>dfs.namenode.avoid.read.stale.datanode</name>
955 <description>Enable stale state in hdfs</description>
958 <name>dfs.namenode.stale.datanode.interval</name>
960 <description>Down from default 30 seconds</description>
963 <name>dfs.namenode.avoid.write.stale.datanode</name>
965 <description>Enable stale state in hdfs</description>
972 JMX (Java Management Extensions) provides built-in instrumentation that enables you to monitor and manage the Java VM.
973 To enable monitoring and management from remote systems, you need to set system property `com.sun.management.jmxremote.port` (the port number through which you want to enable JMX RMI connections) when you start the Java VM.
974 See the link:http://docs.oracle.com/javase/8/docs/technotes/guides/management/agent.html[official documentation] for more information.
975 Historically, besides above port mentioned, JMX opens two additional random TCP listening ports, which could lead to port conflict problem. (See link:https://issues.apache.org/jira/browse/HBASE-10289[HBASE-10289] for details)
977 As an alternative, you can use the coprocessor-based JMX implementation provided by HBase.
978 To enable it, add below property in _hbase-site.xml_:
983 <name>hbase.coprocessor.regionserver.classes</name>
984 <value>org.apache.hadoop.hbase.JMXListener</value>
988 NOTE: DO NOT set `com.sun.management.jmxremote.port` for Java VM at the same time.
990 Currently it supports Master and RegionServer Java VM.
991 By default, the JMX listens on TCP port 10102, you can further configure the port using below properties:
996 <name>regionserver.rmi.registry.port</name>
1000 <name>regionserver.rmi.connector.port</name>
1001 <value>61140</value>
1005 The registry port can be shared with connector port in most cases, so you only need to configure regionserver.rmi.registry.port.
1006 However if you want to use SSL communication, the 2 ports must be configured to different values.
1008 By default the password authentication and SSL communication is disabled.
1009 To enable password authentication, you need to update _hbase-env.sh_ like below:
1012 export HBASE_JMX_BASE="-Dcom.sun.management.jmxremote.authenticate=true \
1013 -Dcom.sun.management.jmxremote.password.file=your_password_file \
1014 -Dcom.sun.management.jmxremote.access.file=your_access_file"
1016 export HBASE_MASTER_OPTS="$HBASE_MASTER_OPTS $HBASE_JMX_BASE "
1017 export HBASE_REGIONSERVER_OPTS="$HBASE_REGIONSERVER_OPTS $HBASE_JMX_BASE "
1020 See example password/access file under _$JRE_HOME/lib/management_.
1022 To enable SSL communication with password authentication, follow below steps:
1026 #1. generate a key pair, stored in myKeyStore
1027 keytool -genkey -alias jconsole -keystore myKeyStore
1029 #2. export it to file jconsole.cert
1030 keytool -export -alias jconsole -keystore myKeyStore -file jconsole.cert
1032 #3. copy jconsole.cert to jconsole client machine, import it to jconsoleKeyStore
1033 keytool -import -alias jconsole -keystore jconsoleKeyStore -file jconsole.cert
1036 And then update _hbase-env.sh_ like below:
1040 export HBASE_JMX_BASE="-Dcom.sun.management.jmxremote.ssl=true \
1041 -Djavax.net.ssl.keyStore=/home/tianq/myKeyStore \
1042 -Djavax.net.ssl.keyStorePassword=your_password_in_step_1 \
1043 -Dcom.sun.management.jmxremote.authenticate=true \
1044 -Dcom.sun.management.jmxremote.password.file=your_password file \
1045 -Dcom.sun.management.jmxremote.access.file=your_access_file"
1047 export HBASE_MASTER_OPTS="$HBASE_MASTER_OPTS $HBASE_JMX_BASE "
1048 export HBASE_REGIONSERVER_OPTS="$HBASE_REGIONSERVER_OPTS $HBASE_JMX_BASE "
1051 Finally start `jconsole` on the client using the key store:
1055 jconsole -J-Djavax.net.ssl.trustStore=/home/tianq/jconsoleKeyStore
1058 NOTE: To enable the HBase JMX implementation on Master, you also need to add below property in _hbase-site.xml_:
1063 <name>hbase.coprocessor.master.classes</name>
1064 <value>org.apache.hadoop.hbase.JMXListener</value>
1068 The corresponding properties for port configuration are `master.rmi.registry.port` (by default 10101) and `master.rmi.connector.port` (by default the same as registry.port)
1071 == Dynamic Configuration
1073 It is possible to change a subset of the configuration without requiring a server restart.
1074 In the HBase shell, the operations `update_config` and `update_all_config` will prompt a server or all servers to reload configuration.
1076 Only a subset of all configurations can currently be changed in the running server.
1077 Here are those configurations:
1079 .Configurations support dynamically change
1080 [cols="1",options="header"]
1083 | hbase.ipc.server.fallback-to-simple-auth-allowed
1084 | hbase.cleaner.scan.dir.concurrent.size
1085 | hbase.regionserver.thread.compaction.large
1086 | hbase.regionserver.thread.compaction.small
1087 | hbase.regionserver.thread.split
1088 | hbase.regionserver.throughput.controller
1089 | hbase.regionserver.thread.hfilecleaner.throttle
1090 | hbase.regionserver.hfilecleaner.large.queue.size
1091 | hbase.regionserver.hfilecleaner.small.queue.size
1092 | hbase.regionserver.hfilecleaner.large.thread.count
1093 | hbase.regionserver.hfilecleaner.small.thread.count
1094 | hbase.regionserver.hfilecleaner.thread.timeout.msec
1095 | hbase.regionserver.hfilecleaner.thread.check.interval.msec
1096 | hbase.regionserver.flush.throughput.controller
1097 | hbase.hstore.compaction.max.size
1098 | hbase.hstore.compaction.max.size.offpeak
1099 | hbase.hstore.compaction.min.size
1100 | hbase.hstore.compaction.min
1101 | hbase.hstore.compaction.max
1102 | hbase.hstore.compaction.ratio
1103 | hbase.hstore.compaction.ratio.offpeak
1104 | hbase.regionserver.thread.compaction.throttle
1105 | hbase.hregion.majorcompaction
1106 | hbase.hregion.majorcompaction.jitter
1107 | hbase.hstore.min.locality.to.skip.major.compact
1108 | hbase.hstore.compaction.date.tiered.max.storefile.age.millis
1109 | hbase.hstore.compaction.date.tiered.incoming.window.min
1110 | hbase.hstore.compaction.date.tiered.window.policy.class
1111 | hbase.hstore.compaction.date.tiered.single.output.for.minor.compaction
1112 | hbase.hstore.compaction.date.tiered.window.factory.class
1113 | hbase.offpeak.start.hour
1114 | hbase.offpeak.end.hour
1115 | hbase.oldwals.cleaner.thread.size
1116 | hbase.oldwals.cleaner.thread.timeout.msec
1117 | hbase.oldwals.cleaner.thread.check.interval.msec
1118 | hbase.procedure.worker.keep.alive.time.msec
1119 | hbase.procedure.worker.add.stuck.percentage
1120 | hbase.procedure.worker.monitor.interval.msec
1121 | hbase.procedure.worker.stuck.threshold.msec
1122 | hbase.regions.slop
1123 | hbase.regions.overallSlop
1124 | hbase.balancer.tablesOnMaster
1125 | hbase.balancer.tablesOnMaster.systemTablesOnly
1126 | hbase.util.ip.to.rack.determiner
1127 | hbase.ipc.server.max.callqueue.length
1128 | hbase.ipc.server.priority.max.callqueue.length
1129 | hbase.ipc.server.callqueue.type
1130 | hbase.ipc.server.callqueue.codel.target.delay
1131 | hbase.ipc.server.callqueue.codel.interval
1132 | hbase.ipc.server.callqueue.codel.lifo.threshold
1133 | hbase.master.balancer.stochastic.maxSteps
1134 | hbase.master.balancer.stochastic.stepsPerRegion
1135 | hbase.master.balancer.stochastic.maxRunningTime
1136 | hbase.master.balancer.stochastic.runMaxSteps
1137 | hbase.master.balancer.stochastic.numRegionLoadsToRemember
1138 | hbase.master.loadbalance.bytable
1139 | hbase.master.balancer.stochastic.minCostNeedBalance
1140 | hbase.master.balancer.stochastic.localityCost
1141 | hbase.master.balancer.stochastic.rackLocalityCost
1142 | hbase.master.balancer.stochastic.readRequestCost
1143 | hbase.master.balancer.stochastic.writeRequestCost
1144 | hbase.master.balancer.stochastic.memstoreSizeCost
1145 | hbase.master.balancer.stochastic.storefileSizeCost
1146 | hbase.master.balancer.stochastic.regionReplicaHostCostKey
1147 | hbase.master.balancer.stochastic.regionReplicaRackCostKey
1148 | hbase.master.balancer.stochastic.regionCountCost
1149 | hbase.master.balancer.stochastic.primaryRegionCountCost
1150 | hbase.master.balancer.stochastic.moveCost
1151 | hbase.master.balancer.stochastic.maxMovePercent
1152 | hbase.master.balancer.stochastic.tableSkewCost
1155 ifdef::backend-docbook[]
1158 // Generated automatically by the DocBook toolchain.
1159 endif::backend-docbook[]