This is the Java Client library which is only compatible with InfluxDB 0.9 and higher. Maintained by @majst01.
To connect to InfluxDB 0.8.x you need to use influxdb-java version 1.6.
This implementation is meant as a Java rewrite of the influxdb-go package. All low level REST Api calls are available.
This is a recommended approach to write data points into InfluxDB. The influxdb-java client is storing your writes into an internal buffer and flushes them asynchronously to InfluxDB at a fixed flush interval to achieve good performance on both client and server side. This requires influxdb-java v2.7 or newer.
If you want to write data points immediately into InfluxDB and synchronously process resulting errors see this section.
InfluxDB influxDB = InfluxDBFactory.connect("http://172.17.0.2:8086", "root", "root");
String dbName = "aTimeSeries";
influxDB.createDatabase(dbName);
influxDB.setDatabase(dbName);
String rpName = "aRetentionPolicy";
influxDB.createRetentionPolicy(rpName, dbName, "30d", "30m", 2, true);
influxDB.setRetentionPolicy(rpName);
influxDB.enableBatch(BatchOptions.DEFAULTS);
influxDB.write(Point.measurement("cpu")
.time(System.currentTimeMillis(), TimeUnit.MILLISECONDS)
.addField("idle", 90L)
.addField("user", 9L)
.addField("system", 1L)
.build());
influxDB.write(Point.measurement("disk")
.time(System.currentTimeMillis(), TimeUnit.MILLISECONDS)
.addField("used", 80L)
.addField("free", 1L)
.build());
Query query = new Query("SELECT idle FROM cpu", dbName);
influxDB.query(query);
influxDB.dropRetentionPolicy(rpName, dbName);
influxDB.deleteDatabase(dbName);
influxDB.close();
Any errors that happen during the batch flush won't leak into the caller of the write
method. By default, any kind of errors will be just logged with "SEVERE" level.
If you need to be notified and do some custom logic when such asynchronous errors happen, you can add an error handler with a BiConsumer<Iterable<Point>, Throwable>
using the overloaded enableBatch
method:
influxDB.enableBatch(BatchOptions.DEFAULTS.exceptionHandler(
(failedPoints, throwable) -> { /* custom error handling here */ })
);
With batching enabled the client provides two strategies how to deal with errors thrown by the InfluxDB server.
- 'One shot' write - on failed write request to InfluxDB server an error is reported to the client using the means mentioned above.
- 'Retry on error' write (used by default) - on failed write the request by the client is repeated after batchInterval elapses
(if there is a chance the write will succeed - the error was caused by overloading the server, a network error etc.)
When new data points are written before the previous (failed) points are successfully written, those are queued inside the client
and wait until older data points are successfully written.
Size of this queue is limited and configured by
BatchOptions.bufferLimit
property. When the limit is reached, the oldest points in the queue are dropped. 'Retry on error' strategy is used when individual write batch size defined byBatchOptions.actions
is lower thanBatchOptions.bufferLimit
.
Note:
- Batching functionality creates an internal thread pool that needs to be shutdown explicitly as part of a graceful application shut-down, or the application will not shut down properly. To do so simply call:
influxDB.close()
InfluxDB.enableBatch(BatchOptions)
is available since version 2.9. Prior versions useInfluxDB.enableBatch(actions, flushInterval, timeUnit)
or similar based on the configuration parameters you want to set.- APIs to create and drop retention policies are supported only in versions > 2.7
- If you are using influxdb < 2.8, you should use retention policy: 'autogen'
- If you are using influxdb < 1.0.0, you should use 'default' instead of 'autogen'
If your points are written into different databases and retention policies, the more complex InfluxDB.write() methods can be used:
InfluxDB influxDB = InfluxDBFactory.connect("http://172.17.0.2:8086", "root", "root");
String dbName = "aTimeSeries";
influxDB.createDatabase(dbName);
String rpName = "aRetentionPolicy";
influxDB.createRetentionPolicy(rpName, dbName, "30d", "30m", 2, true);
// Flush every 2000 Points, at least every 100ms
influxDB.enableBatch(BatchOptions.DEFAULTS.actions(2000).flushDuration(100));
Point point1 = Point.measurement("cpu")
.time(System.currentTimeMillis(), TimeUnit.MILLISECONDS)
.addField("idle", 90L)
.addField("user", 9L)
.addField("system", 1L)
.build();
Point point2 = Point.measurement("disk")
.time(System.currentTimeMillis(), TimeUnit.MILLISECONDS)
.addField("used", 80L)
.addField("free", 1L)
.build();
influxDB.write(dbName, rpName, point1);
influxDB.write(dbName, rpName, point2);
Query query = new Query("SELECT idle FROM cpu", dbName);
influxDB.query(query);
influxDB.dropRetentionPolicy(rpName, dbName);
influxDB.deleteDatabase(dbName);
influxDB.close();
If you want to write the data points immediately to InfluxDB (and handle the errors as well) without any delays see the following example:
InfluxDB influxDB = InfluxDBFactory.connect("http://172.17.0.2:8086", "root", "root");
String dbName = "aTimeSeries";
influxDB.createDatabase(dbName);
String rpName = "aRetentionPolicy";
influxDB.createRetentionPolicy(rpName, dbName, "30d", "30m", 2, true);
BatchPoints batchPoints = BatchPoints
.database(dbName)
.tag("async", "true")
.retentionPolicy(rpName)
.consistency(ConsistencyLevel.ALL)
.build();
Point point1 = Point.measurement("cpu")
.time(System.currentTimeMillis(), TimeUnit.MILLISECONDS)
.addField("idle", 90L)
.addField("user", 9L)
.addField("system", 1L)
.build();
Point point2 = Point.measurement("disk")
.time(System.currentTimeMillis(), TimeUnit.MILLISECONDS)
.addField("used", 80L)
.addField("free", 1L)
.build();
batchPoints.point(point1);
batchPoints.point(point2);
influxDB.write(batchPoints);
Query query = new Query("SELECT idle FROM cpu", dbName);
influxDB.query(query);
influxDB.dropRetentionPolicy(rpName, dbName);
influxDB.deleteDatabase(dbName);
influxdb-java client doesn't enable gzip compress for http request body by default. If you want to enable gzip to reduce transfer data's size , you can call:
influxDB.enableGzip()
influxdb-java client support udp protocol now. you can call following methods directly to write through UDP.
public void write(final int udpPort, final String records);
public void write(final int udpPort, final List<String> records);
public void write(final int udpPort, final Point point);
note: make sure write content's total size should not > UDP protocol's limit(64K), or you should use http instead of udp.
influxdb-java client now supports influxdb chunking. The following example uses a chunkSize of 20 and invokes the specified Consumer (e.g. System.out.println) for each received QueryResult
Query query = new Query("SELECT idle FROM cpu", dbName);
influxDB.query(query, 20, queryResult -> System.out.println(queryResult));
An alternative way to handle the QueryResult object is now available. Supposing that you have a measurement CPU:
> INSERT cpu,host=serverA,region=us_west idle=0.64,happydevop=false,uptimesecs=123456789i
>
> select * from cpu
name: cpu
time happydevop host idle region uptimesecs
---- ---------- ---- ---- ------ ----------
2017-06-20T15:32:46.202829088Z false serverA 0.64 us_west 123456789
And the following tag keys:
> show tag keys from cpu
name: cpu
tagKey
------
host
region
- Create a POJO to represent your measurement. For example:
public class Cpu {
private Instant time;
private String hostname;
private String region;
private Double idle;
private Boolean happydevop;
private Long uptimeSecs;
// getters (and setters if you need)
}
- Add @Measurement and @Column annotations:
@Measurement(name = "cpu")
public class Cpu {
@Column(name = "time")
private Instant time;
@Column(name = "host", tag = true)
private String hostname;
@Column(name = "region", tag = true)
private String region;
@Column(name = "idle")
private Double idle;
@Column(name = "happydevop")
private Boolean happydevop;
@Column(name = "uptimesecs")
private Long uptimeSecs;
// getters (and setters if you need)
}
- Call InfluxDBResultMapper.toPOJO(...) to map the QueryResult to your POJO:
InfluxDB influxDB = InfluxDBFactory.connect("http://localhost:8086", "root", "root");
String dbName = "myTimeseries";
QueryResult queryResult = influxDB.query(new Query("SELECT * FROM cpu", dbName));
InfluxDBResultMapper resultMapper = new InfluxDBResultMapper(); // thread-safe - can be reused
List<Cpu> cpuList = resultMapper.toPOJO(queryResult, Cpu.class);
QueryResult mapper limitations
- If your InfluxDB query contains multiple SELECT clauses, you will have to call InfluxResultMapper#toPOJO() multiple times to map every measurement returned by QueryResult to the respective POJO;
- If your InfluxDB query contains multiple SELECT clauses for the same measurement, InfluxResultMapper will process all results because there is no way to distinguish which one should be mapped to your POJO. It may result in an invalid collection being returned;
- A Class field annotated with @Column(..., tag = true) (i.e. a InfluxDB Tag) must be declared as String. -- Note: With the current released version (2.7), InfluxDBResultMapper does not support QueryResult created by queries using the "GROUP BY" clause. This was fixed by PR #345.
influxdb-java now supports returning results of a query via callbacks. Only one of the following consumers are going to be called once :
this.influxDB.query(new Query("SELECT idle FROM cpu", dbName), queryResult -> {
// Do something with the result...
}, throwable -> {
// Do something with the error...
});
If your Query is based on user input, it is good practice to use parameter binding to avoid injection attacks. You can create queries with parameter binding with the help of the QueryBuilder:
Query query = QueryBuilder.newQuery("SELECT * FROM cpu WHERE idle > $idle AND system > $system")
.forDatabase(dbName)
.bind("idle", 90)
.bind("system", 5)
.create();
QueryResult results = influxDB.query(query);
The values of the bind() calls are bound to the placeholders in the query ($idle, $system).
When using large number of influxdb-java clients against a single server it may happen that all the clients
will submit their buffered points at the same time and possibly overloading the server. This is usually happening
when all the clients are started at once - for instance as members of cloud hosted large cluster networks.
If all the clients have the same flushDuration set this situation will repeat periodically.
To solve this situation the influxdb-java offers an option to offset the flushDuration by a random interval so that the clients will flush their buffers in different intervals:
influxDB.enableBatch(BatchOptions.DEFAULTS.jitterDuration(500);
For additional usage examples have a look at InfluxDBTest.java
The latest version for maven dependence:
<dependency>
<groupId>org.influxdb</groupId>
<artifactId>influxdb-java</artifactId>
<version>2.10</version>
</dependency>
Or when using with gradle:
compile 'org.influxdb:influxdb-java:2.10'
For version change history have a look at ChangeLog.
- Java 1.8+ (tested with jdk8 and jdk9)
- Maven 3.0+ (tested with maven 3.5.0)
- Docker daemon running
Then you can build influxdb-java with all tests with:
$ mvn clean install
If you don't have Docker running locally, you can skip tests with -DskipTests flag set to true:
$ mvn clean install -DskipTests=true
If you have Docker running, but it is not at localhost (e.g. you are on a Mac and using docker-machine
) you can set an optional environment variable INFLUXDB_IP
to point to the correct IP address:
$ export INFLUXDB_IP=192.168.99.100
$ mvn test
For convenience we provide a small shell script which starts a influxdb server locally and executes mvn clean install
with all tests inside docker containers.
$ ./compile-and-test.sh
This is a link to the sonatype oss guide to publishing. I'll update this section once the jira ticket is closed and I'm able to upload artifacts to the sonatype repositories.
This is a FAQ list for influxdb-java.