This documentation is for an out-of-date version of Apache Flink. We recommend you use the latest stable version.
Queryable State #
The client APIs for queryable state are currently in an evolving state and there are no guarantees made about stability of the provided interfaces. It is likely that there will be breaking API changes on the client side in the upcoming Flink versions.
In a nutshell, this feature exposes Flink’s managed keyed (partitioned) state (see Working with State) to the outside world and allows the user to query a job’s state from outside Flink. For some scenarios, queryable state eliminates the need for distributed operations/transactions with external systems such as key-value stores which are often the bottleneck in practice. In addition, this feature may be particularly useful for debugging purposes.
When querying a state object, that object is accessed from a concurrent thread without any synchronization or copying. This is a design choice, as any of the above would lead to increased job latency, which we wanted to avoid. Since any state backend using Java heap space, e.g.HashMapStateBackend
, does not work with copies when retrieving values but instead directly references the stored values, read-modify-write patterns are unsafe and may cause the queryable state server to fail due to concurrent modifications. TheEmbeddedRocksDBStateBackend
is safe from these issues.
Architecture #
Before showing how to use the Queryable State, it is useful to briefly describe the entities that compose it. The Queryable State feature consists of three main entities:
- the
QueryableStateClient
, which (potentially) runs outside the Flink cluster and submits the user queries, - the
QueryableStateClientProxy
, which runs on eachTaskManager
(i.e. inside the Flink cluster) and is responsible for receiving the client’s queries, fetching the requested state from the responsible Task Manager on his behalf, and returning it to the client, and - the
QueryableStateServer
which runs on eachTaskManager
and is responsible for serving the locally stored state.
The client connects to one of the proxies and sends a request for the state associated with a specific
key, k
. As stated in Working with State, keyed state is organized in
Key Groups, and each TaskManager
is assigned a number of these key groups. To discover which TaskManager
is
responsible for the key group holding k
, the proxy will ask the JobManager
. Based on the answer, the proxy will
then query the QueryableStateServer
running on that TaskManager
for the state associated with k
, and forward the
response back to the client.
Activating Queryable State #
To enable queryable state on your Flink cluster, you need to do the following:
- copy the
flink-queryable-state-runtime_2.11-1.13.6.jar
from theopt/
folder of your Flink distribution, to thelib/
folder. - set the property
queryable-state.enable
totrue
. See the Configuration documentation for details and additional parameters.
To verify that your cluster is running with queryable state enabled, check the logs of any
task manager for the line: "Started the Queryable State Proxy Server @ ..."
.
Making State Queryable #
Now that you have activated queryable state on your cluster, it is time to see how to use it. In order for a state to be visible to the outside world, it needs to be explicitly made queryable by using:
- either a
QueryableStateStream
, a convenience object which acts as a sink and offers its incoming values as queryable state, or - the
stateDescriptor.setQueryable(String queryableStateName)
method, which makes the keyed state represented by the state descriptor, queryable.
The following sections explain the use of these two approaches.
Queryable State Stream #
Calling .asQueryableState(stateName, stateDescriptor)
on a KeyedStream
returns a QueryableStateStream
which offers
its values as queryable state. Depending on the type of state, there are the following variants of the asQueryableState()
method:
// ValueState
QueryableStateStream asQueryableState(
String queryableStateName,
ValueStateDescriptor stateDescriptor)
// Shortcut for explicit ValueStateDescriptor variant
QueryableStateStream asQueryableState(String queryableStateName)
// ReducingState
QueryableStateStream asQueryableState(
String queryableStateName,
ReducingStateDescriptor stateDescriptor)
ListState
sink as it would result in an ever-growing
list which may not be cleaned up and thus will eventually consume too much memory.
The returned QueryableStateStream
can be seen as a sink and cannot be further transformed. Internally, a
QueryableStateStream
gets translated to an operator which uses all incoming records to update the queryable state
instance. The updating logic is implied by the type of the StateDescriptor
provided in the asQueryableState
call.
In a program like the following, all records of the keyed stream will be used to update the state instance via the
ValueState.update(value)
:
stream.keyBy(value -> value.f0).asQueryableState("query-name")
This acts like the Scala API’s flatMapWithState
.
Managed Keyed State #
Managed keyed state of an operator
(see Using Managed Keyed State)
can be made queryable by making the appropriate state descriptor queryable via
StateDescriptor.setQueryable(String queryableStateName)
, as in the example below:
ValueStateDescriptor<Tuple2<Long, Long>> descriptor =
new ValueStateDescriptor<>(
"average", // the state name
TypeInformation.of(new TypeHint<Tuple2<Long, Long>>() {})); // type information
descriptor.setQueryable("query-name"); // queryable state name
queryableStateName
parameter may be chosen arbitrarily and is only
used for queries. It does not have to be identical to the state's own name.
This variant has no limitations as to which type of state can be made queryable. This means that this can be used for
any ValueState
, ReduceState
, ListState
, MapState
, and AggregatingState
.
Querying State #
So far, you have set up your cluster to run with queryable state and you have declared (some of) your state as queryable. Now it is time to see how to query this state.
For this you can use the QueryableStateClient
helper class. This is available in the flink-queryable-state-client
jar which must be explicitly included as a dependency in the pom.xml
of your project along with flink-core
, as shown below:
<dependency>
<groupId>org.apache.flink</groupId>
<artifactId>flink-core</artifactId>
<version>1.13.6</version>
</dependency>
<dependency>
<groupId>org.apache.flink</groupId>
<artifactId>flink-queryable-state-client-java</artifactId>
<version>1.13.6</version>
</dependency>
For more on this, you can check how to set up a Flink program.
The QueryableStateClient
will submit your query to the internal proxy, which will then process your query and return
the final result. The only requirement to initialize the client is to provide a valid TaskManager
hostname (remember
that there is a queryable state proxy running on each task manager) and the port where the proxy listens. More on how
to configure the proxy and state server port(s) in the Configuration Section.
QueryableStateClient client = new QueryableStateClient(tmHostname, proxyPort);
With the client ready, to query a state of type V
, associated with a key of type K
, you can use the method:
CompletableFuture<S> getKvState(
JobID jobId,
String queryableStateName,
K key,
TypeInformation<K> keyTypeInfo,
StateDescriptor<S, V> stateDescriptor)
The above returns a CompletableFuture
eventually holding the state value for the queryable state instance identified
by queryableStateName
of the job with ID jobID
. The key
is the key whose state you are interested in and the
keyTypeInfo
will tell Flink how to serialize/deserialize it. Finally, the stateDescriptor
contains the necessary
information about the requested state, namely its type (Value
, Reduce
, etc) and the necessary information on how
to serialize/deserialize it.
The careful reader will notice that the returned future contains a value of type S
, i.e. a State
object containing
the actual value. This can be any of the state types supported by Flink: ValueState
, ReduceState
, ListState
, MapState
,
and AggregatingState
.
valueState.get()
, or iterate over
the contained
entries, e.g. using the mapState.entries()
, but you cannot
modify them. As an example, calling the add()
method on a returned list state will throw an
UnsupportedOperationException
.
QueryableStateClient.shutdown()
when unused in order to free
resources.
Example #
The following example extends the CountWindowAverage
example
(see Using Managed Keyed State)
by making it queryable and shows how to query this value:
public class CountWindowAverage extends RichFlatMapFunction<Tuple2<Long, Long>, Tuple2<Long, Long>> {
private transient ValueState<Tuple2<Long, Long>> sum; // a tuple containing the count and the sum
@Override
public void flatMap(Tuple2<Long, Long> input, Collector<Tuple2<Long, Long>> out) throws Exception {
Tuple2<Long, Long> currentSum = sum.value();
currentSum.f0 += 1;
currentSum.f1 += input.f1;
sum.update(currentSum);
if (currentSum.f0 >= 2) {
out.collect(new Tuple2<>(input.f0, currentSum.f1 / currentSum.f0));
sum.clear();
}
}
@Override
public void open(Configuration config) {
ValueStateDescriptor<Tuple2<Long, Long>> descriptor =
new ValueStateDescriptor<>(
"average", // the state name
TypeInformation.of(new TypeHint<Tuple2<Long, Long>>() {})); // type information
descriptor.setQueryable("query-name");
sum = getRuntimeContext().getState(descriptor);
}
}
Once used in a job, you can retrieve the job ID and then query any key’s current state from this operator:
QueryableStateClient client = new QueryableStateClient(tmHostname, proxyPort);
// the state descriptor of the state to be fetched.
ValueStateDescriptor<Tuple2<Long, Long>> descriptor =
new ValueStateDescriptor<>(
"average",
TypeInformation.of(new TypeHint<Tuple2<Long, Long>>() {}));
CompletableFuture<ValueState<Tuple2<Long, Long>>> resultFuture =
client.getKvState(jobId, "query-name", key, BasicTypeInfo.LONG_TYPE_INFO, descriptor);
// now handle the returned value
resultFuture.thenAccept(response -> {
try {
Tuple2<Long, Long> res = response.get();
} catch (Exception e) {
e.printStackTrace();
}
});
Configuration #
The following configuration parameters influence the behaviour of the queryable state server and client.
They are defined in QueryableStateOptions
.
State Server #
queryable-state.server.ports
: the server port range of the queryable state server. This is useful to avoid port clashes if more than 1 task managers run on the same machine. The specified range can be: a port: “9123”, a range of ports: “50100-50200”, or a list of ranges and or points: “50100-50200,50300-50400,51234”. The default port is 9067.queryable-state.server.network-threads
: number of network (event loop) threads receiving incoming requests for the state server (0 => #slots)queryable-state.server.query-threads
: number of threads handling/serving incoming requests for the state server (0 => #slots).
Proxy #
queryable-state.proxy.ports
: the server port range of the queryable state proxy. This is useful to avoid port clashes if more than 1 task managers run on the same machine. The specified range can be: a port: “9123”, a range of ports: “50100-50200”, or a list of ranges and or points: “50100-50200,50300-50400,51234”. The default port is 9069.queryable-state.proxy.network-threads
: number of network (event loop) threads receiving incoming requests for the client proxy (0 => #slots)queryable-state.proxy.query-threads
: number of threads handling/serving incoming requests for the client proxy (0 => #slots).
Limitations #
- The queryable state life-cycle is bound to the life-cycle of the job, e.g. tasks register queryable state on startup and unregister it on disposal. In future versions, it is desirable to decouple this in order to allow queries after a task finishes, and to speed up recovery via state replication.
- Notifications about available KvState happen via a simple tell. In the future this should be improved to be more robust with asks and acknowledgements.
- The server and client keep track of statistics for queries. These are currently disabled by default as they would not be exposed anywhere. As soon as there is better support to publish these numbers via the Metrics system, we should enable the stats.