An in-process TensorFlow server, for use in distributed training.
A Server
instance encapsulates a set of devices and a Session
target that can participate in distributed training. A server belongs to a cluster (specified by
a ClusterSpec
), and corresponds to a particular task in a named job. The server can
communicate with any other server in the same cluster. The server will not serve any requests
until start()
is invoked. The server will stop serving requests once stop()
or
close()
is invoked. Be aware that close()
method stops the server if it is
running.
WARNING: A Server
owns resources that must be explicitly freed by
invoking close()
.
Instances of a Server
are thread-safe.
Using example:
import org.tensorflow.Server;
import org.tensorflow.distruntime.ClusterDef;
import org.tensorflow.distruntime.JobDef;
import org.tensorflow.distruntime.ServerDef;
ClusterDef clusterDef = ClusterDef.newBuilder()
.addJob(JobDef.newBuilder()
.setName("worker")
.putTasks(0, "localhost:4321")
.build()
).build();
ServerDef serverDef = ServerDef.newBuilder()
.setCluster(clusterDef)
.setJobName("worker")
.setTaskIndex(0)
.setProtocol("grpc")
.build();
try (Server srv = new Server(serverDef)) {
srv.start();
srv.join();
}
Public Constructors
Public Methods
synchronized void |
close()
Destroy an in-process TensorFlow server, frees memory.
|
void |
join()
Blocks until the server has been successfully stopped.
|
synchronized void |
start()
Starts an in-process TensorFlow server.
|
synchronized void |
stop()
Stops an in-process TensorFlow server.
|
Inherited Methods
Public Constructors
Public Methods
public synchronized void close ()
Destroy an in-process TensorFlow server, frees memory.
Throws
InterruptedException |
---|
public void join ()
Blocks until the server has been successfully stopped.
public synchronized void start ()
Starts an in-process TensorFlow server.
public synchronized void stop ()
Stops an in-process TensorFlow server.