CallableOptionsOrBuilder

رابط عمومی CallableOptionsOrBuilder
زیر کلاس های غیر مستقیم شناخته شده

روش های عمومی

بولی انتزاعی
containFeedDevices (کلید رشته)
 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
بولی انتزاعی
حاوی FetchDevices (کلید رشته)
map<string, string> fetch_devices = 7;
رشته انتزاعی
getFeed (شاخص int)
 Tensors to be fed in the callable.
چکیده com.google.protobuf.ByteString
getFeedBytes (شاخص int)
 Tensors to be fed in the callable.
انتزاعی
getFeedCount ()
 Tensors to be fed in the callable.
نقشه انتزاعی<String, String>
getFeedDevices ()
به جای آن از getFeedDevicesMap() استفاده کنید.
انتزاعی
getFeedDevicesCount ()
 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
نقشه انتزاعی<String, String>
getFeedDevicesMap ()
 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
رشته انتزاعی
getFeedDevicesOrDefault (کلید رشته، مقدار پیش فرض رشته)
 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
رشته انتزاعی
getFeedDevicesOrThrow (کلید رشته)
 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
فهرست انتزاعی<String>
getFeedList ()
 Tensors to be fed in the callable.
رشته انتزاعی
getFetch (شاخص int)
 Fetches.
چکیده com.google.protobuf.ByteString
getFetchBytes (شاخص int)
 Fetches.
انتزاعی
getFetchCount ()
 Fetches.
نقشه انتزاعی<String, String>
getFetchDevices ()
به جای آن getFetchDevicesMap() استفاده کنید.
انتزاعی
getFetchDevicesCount ()
map<string, string> fetch_devices = 7;
نقشه انتزاعی<String, String>
getFetchDevicesMap ()
map<string, string> fetch_devices = 7;
رشته انتزاعی
getFetchDevicesOrDefault (کلید رشته، مقدار پیش‌فرض رشته)
map<string, string> fetch_devices = 7;
رشته انتزاعی
getFetchDevicesOrThrow (کلید رشته)
map<string, string> fetch_devices = 7;
فهرست انتزاعی<String>
getFetchList ()
 Fetches.
بولی انتزاعی
getFetchSkipSync ()
 By default, RunCallable() will synchronize the GPU stream before returning
 fetched tensors on a GPU device, to ensure that the values in those tensors
 have been produced.
انتزاعی RunOptions
getRunOptions ()
 Options that will be applied to each run.
چکیده RunOptionsOrBuilder
getRunOptionsOrBuilder ()
 Options that will be applied to each run.
رشته انتزاعی
getTarget (شاخص int)
 Target Nodes.
چکیده com.google.protobuf.ByteString
getTargetBytes (شاخص int)
 Target Nodes.
انتزاعی
getTargetCount ()
 Target Nodes.
فهرست انتزاعی<String>
getTargetList ()
 Target Nodes.
انتزاعی TensorConnection
getTensorConnection (شاخص int)
 Tensors to be connected in the callable.
انتزاعی
getTensorConnectionCount ()
 Tensors to be connected in the callable.
فهرست انتزاعی< TensorConnection >
getTensorConnectionList ()
 Tensors to be connected in the callable.
TensorConnectionOrBuilder انتزاعی
getTensorConnectionOrBuilder (شاخص int)
 Tensors to be connected in the callable.
فهرست چکیده <? TensorConnectionOrBuilder را گسترش می دهد
getTensorConnectionOrBuilderList ()
 Tensors to be connected in the callable.
بولی انتزاعی
hasRunOptions ()
 Options that will be applied to each run.

روش های عمومی

بولی انتزاعی عمومی حاویFeedDevices (کلید رشته)

 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
 The options below allow changing that - feeding tensors backed by
 device memory, or returning tensors that are backed by device memory.
 The maps below map the name of a feed/fetch tensor (which appears in
 'feed' or 'fetch' fields above), to the fully qualified name of the device
 owning the memory backing the contents of the tensor.
 For example, creating a callable with the following options:
 CallableOptions {
   feed: "a:0"
   feed: "b:0"
   fetch: "x:0"
   fetch: "y:0"
   feed_devices: {
     "a:0": "/job:localhost/replica:0/task:0/device:GPU:0"
   }
   fetch_devices: {
     "y:0": "/job:localhost/replica:0/task:0/device:GPU:0"
  }
 }
 means that the Callable expects:
 - The first argument ("a:0") is a Tensor backed by GPU memory.
 - The second argument ("b:0") is a Tensor backed by host memory.
 and of its return values:
 - The first output ("x:0") will be backed by host memory.
 - The second output ("y:0") will be backed by GPU memory.
 FEEDS:
 It is the responsibility of the caller to ensure that the memory of the fed
 tensors will be correctly initialized and synchronized before it is
 accessed by operations executed during the call to Session::RunCallable().
 This is typically ensured by using the TensorFlow memory allocators
 (Device::GetAllocator()) to create the Tensor to be fed.
 Alternatively, for CUDA-enabled GPU devices, this typically means that the
 operation that produced the contents of the tensor has completed, i.e., the
 CUDA stream has been synchronized (e.g., via cuCtxSynchronize() or
 cuStreamSynchronize()).
 
map<string, string> feed_devices = 6;

بولی انتزاعی عمومی شامل FetchDevices (کلید رشته)

map<string, string> fetch_devices = 7;

رشته انتزاعی عمومی getFeed (شاخص int)

 Tensors to be fed in the callable. Each feed is the name of a tensor.
 
repeated string feed = 1;

چکیده عمومی com.google.protobuf.ByteString getFeedBytes (int index)

 Tensors to be fed in the callable. Each feed is the name of a tensor.
 
repeated string feed = 1;

انتزاع عمومی int getFeedCount ()

 Tensors to be fed in the callable. Each feed is the name of a tensor.
 
repeated string feed = 1;

نقشه انتزاعی عمومی<String, String> getFeedDevices ()

به جای آن از getFeedDevicesMap() استفاده کنید.

انتزاعی عمومی int getFeedDevicesCount ()

 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
 The options below allow changing that - feeding tensors backed by
 device memory, or returning tensors that are backed by device memory.
 The maps below map the name of a feed/fetch tensor (which appears in
 'feed' or 'fetch' fields above), to the fully qualified name of the device
 owning the memory backing the contents of the tensor.
 For example, creating a callable with the following options:
 CallableOptions {
   feed: "a:0"
   feed: "b:0"
   fetch: "x:0"
   fetch: "y:0"
   feed_devices: {
     "a:0": "/job:localhost/replica:0/task:0/device:GPU:0"
   }
   fetch_devices: {
     "y:0": "/job:localhost/replica:0/task:0/device:GPU:0"
  }
 }
 means that the Callable expects:
 - The first argument ("a:0") is a Tensor backed by GPU memory.
 - The second argument ("b:0") is a Tensor backed by host memory.
 and of its return values:
 - The first output ("x:0") will be backed by host memory.
 - The second output ("y:0") will be backed by GPU memory.
 FEEDS:
 It is the responsibility of the caller to ensure that the memory of the fed
 tensors will be correctly initialized and synchronized before it is
 accessed by operations executed during the call to Session::RunCallable().
 This is typically ensured by using the TensorFlow memory allocators
 (Device::GetAllocator()) to create the Tensor to be fed.
 Alternatively, for CUDA-enabled GPU devices, this typically means that the
 operation that produced the contents of the tensor has completed, i.e., the
 CUDA stream has been synchronized (e.g., via cuCtxSynchronize() or
 cuStreamSynchronize()).
 
map<string, string> feed_devices = 6;

نقشه انتزاعی عمومی<String, String> getFeedDevicesMap ()

 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
 The options below allow changing that - feeding tensors backed by
 device memory, or returning tensors that are backed by device memory.
 The maps below map the name of a feed/fetch tensor (which appears in
 'feed' or 'fetch' fields above), to the fully qualified name of the device
 owning the memory backing the contents of the tensor.
 For example, creating a callable with the following options:
 CallableOptions {
   feed: "a:0"
   feed: "b:0"
   fetch: "x:0"
   fetch: "y:0"
   feed_devices: {
     "a:0": "/job:localhost/replica:0/task:0/device:GPU:0"
   }
   fetch_devices: {
     "y:0": "/job:localhost/replica:0/task:0/device:GPU:0"
  }
 }
 means that the Callable expects:
 - The first argument ("a:0") is a Tensor backed by GPU memory.
 - The second argument ("b:0") is a Tensor backed by host memory.
 and of its return values:
 - The first output ("x:0") will be backed by host memory.
 - The second output ("y:0") will be backed by GPU memory.
 FEEDS:
 It is the responsibility of the caller to ensure that the memory of the fed
 tensors will be correctly initialized and synchronized before it is
 accessed by operations executed during the call to Session::RunCallable().
 This is typically ensured by using the TensorFlow memory allocators
 (Device::GetAllocator()) to create the Tensor to be fed.
 Alternatively, for CUDA-enabled GPU devices, this typically means that the
 operation that produced the contents of the tensor has completed, i.e., the
 CUDA stream has been synchronized (e.g., via cuCtxSynchronize() or
 cuStreamSynchronize()).
 
map<string, string> feed_devices = 6;

رشته انتزاعی عمومی getFeedDevicesOrDefault (کلید رشته، مقدار پیش فرض رشته)

 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
 The options below allow changing that - feeding tensors backed by
 device memory, or returning tensors that are backed by device memory.
 The maps below map the name of a feed/fetch tensor (which appears in
 'feed' or 'fetch' fields above), to the fully qualified name of the device
 owning the memory backing the contents of the tensor.
 For example, creating a callable with the following options:
 CallableOptions {
   feed: "a:0"
   feed: "b:0"
   fetch: "x:0"
   fetch: "y:0"
   feed_devices: {
     "a:0": "/job:localhost/replica:0/task:0/device:GPU:0"
   }
   fetch_devices: {
     "y:0": "/job:localhost/replica:0/task:0/device:GPU:0"
  }
 }
 means that the Callable expects:
 - The first argument ("a:0") is a Tensor backed by GPU memory.
 - The second argument ("b:0") is a Tensor backed by host memory.
 and of its return values:
 - The first output ("x:0") will be backed by host memory.
 - The second output ("y:0") will be backed by GPU memory.
 FEEDS:
 It is the responsibility of the caller to ensure that the memory of the fed
 tensors will be correctly initialized and synchronized before it is
 accessed by operations executed during the call to Session::RunCallable().
 This is typically ensured by using the TensorFlow memory allocators
 (Device::GetAllocator()) to create the Tensor to be fed.
 Alternatively, for CUDA-enabled GPU devices, this typically means that the
 operation that produced the contents of the tensor has completed, i.e., the
 CUDA stream has been synchronized (e.g., via cuCtxSynchronize() or
 cuStreamSynchronize()).
 
map<string, string> feed_devices = 6;

رشته انتزاعی عمومی getFeedDevicesOrThrow (کلید رشته)

 The Tensor objects fed in the callable and fetched from the callable
 are expected to be backed by host (CPU) memory by default.
 The options below allow changing that - feeding tensors backed by
 device memory, or returning tensors that are backed by device memory.
 The maps below map the name of a feed/fetch tensor (which appears in
 'feed' or 'fetch' fields above), to the fully qualified name of the device
 owning the memory backing the contents of the tensor.
 For example, creating a callable with the following options:
 CallableOptions {
   feed: "a:0"
   feed: "b:0"
   fetch: "x:0"
   fetch: "y:0"
   feed_devices: {
     "a:0": "/job:localhost/replica:0/task:0/device:GPU:0"
   }
   fetch_devices: {
     "y:0": "/job:localhost/replica:0/task:0/device:GPU:0"
  }
 }
 means that the Callable expects:
 - The first argument ("a:0") is a Tensor backed by GPU memory.
 - The second argument ("b:0") is a Tensor backed by host memory.
 and of its return values:
 - The first output ("x:0") will be backed by host memory.
 - The second output ("y:0") will be backed by GPU memory.
 FEEDS:
 It is the responsibility of the caller to ensure that the memory of the fed
 tensors will be correctly initialized and synchronized before it is
 accessed by operations executed during the call to Session::RunCallable().
 This is typically ensured by using the TensorFlow memory allocators
 (Device::GetAllocator()) to create the Tensor to be fed.
 Alternatively, for CUDA-enabled GPU devices, this typically means that the
 operation that produced the contents of the tensor has completed, i.e., the
 CUDA stream has been synchronized (e.g., via cuCtxSynchronize() or
 cuStreamSynchronize()).
 
map<string, string> feed_devices = 6;

فهرست انتزاعی عمومی<String> getFeedList ()

 Tensors to be fed in the callable. Each feed is the name of a tensor.
 
repeated string feed = 1;

دریافت واکشی رشته انتزاعی عمومی (شاخص int)

 Fetches. A list of tensor names. The caller of the callable expects a
 tensor to be returned for each fetch[i] (see RunStepResponse.tensor). The
 order of specified fetches does not change the execution order.
 
repeated string fetch = 2;

عمومی انتزاعی com.google.protobuf.ByteString getFetchBytes (int index)

 Fetches. A list of tensor names. The caller of the callable expects a
 tensor to be returned for each fetch[i] (see RunStepResponse.tensor). The
 order of specified fetches does not change the execution order.
 
repeated string fetch = 2;

انتزاع عمومی int getFetchCount ()

 Fetches. A list of tensor names. The caller of the callable expects a
 tensor to be returned for each fetch[i] (see RunStepResponse.tensor). The
 order of specified fetches does not change the execution order.
 
repeated string fetch = 2;

نقشه انتزاعی عمومی<String, String> getFetchDevices ()

به جای آن getFetchDevicesMap() استفاده کنید.

انتزاعی عمومی int getFetchDevicesCount ()

map<string, string> fetch_devices = 7;

نقشه انتزاعی عمومی<String, String> getFetchDevicesMap ()

map<string, string> fetch_devices = 7;

رشته انتزاعی عمومی getFetchDevicesOrDefault (کلید رشته، مقدار پیش فرض رشته)

map<string, string> fetch_devices = 7;

رشته انتزاعی عمومی getFetchDevicesOrThrow (کلید رشته)

map<string, string> fetch_devices = 7;

فهرست انتزاعی عمومی<String> getFetchList ()

 Fetches. A list of tensor names. The caller of the callable expects a
 tensor to be returned for each fetch[i] (see RunStepResponse.tensor). The
 order of specified fetches does not change the execution order.
 
repeated string fetch = 2;

انتزاع عمومی بولی getFetchSkipSync ()

 By default, RunCallable() will synchronize the GPU stream before returning
 fetched tensors on a GPU device, to ensure that the values in those tensors
 have been produced. This simplifies interacting with the tensors, but
 potentially incurs a performance hit.
 If this options is set to true, the caller is responsible for ensuring
 that the values in the fetched tensors have been produced before they are
 used. The caller can do this by invoking `Device::Sync()` on the underlying
 device(s), or by feeding the tensors back to the same Session using
 `feed_devices` with the same corresponding device name.
 
bool fetch_skip_sync = 8;

چکیده عمومی RunOptions getRunOptions ()

 Options that will be applied to each run.
 
.tensorflow.RunOptions run_options = 4;

چکیده عمومی RunOptionsOrBuilder getRunOptionsOrBuilder ()

 Options that will be applied to each run.
 
.tensorflow.RunOptions run_options = 4;

رشته انتزاعی عمومی getTarget (شاخص int)

 Target Nodes. A list of node names. The named nodes will be run by the
 callable but their outputs will not be returned.
 
repeated string target = 3;

چکیده عمومی com.google.protobuf.ByteString getTargetBytes (int index)

 Target Nodes. A list of node names. The named nodes will be run by the
 callable but their outputs will not be returned.
 
repeated string target = 3;

انتزاعی عمومی int getTargetCount ()

 Target Nodes. A list of node names. The named nodes will be run by the
 callable but their outputs will not be returned.
 
repeated string target = 3;

فهرست انتزاعی عمومی<String> getTargetList ()

 Target Nodes. A list of node names. The named nodes will be run by the
 callable but their outputs will not be returned.
 
repeated string target = 3;

چکیده عمومی TensorConnection getTensorConnection (int index)

 Tensors to be connected in the callable. Each TensorConnection denotes
 a pair of tensors in the graph, between which an edge will be created
 in the callable.
 
repeated .tensorflow.TensorConnection tensor_connection = 5;

انتزاعی عمومی int getTensorConnectionCount ()

 Tensors to be connected in the callable. Each TensorConnection denotes
 a pair of tensors in the graph, between which an edge will be created
 in the callable.
 
repeated .tensorflow.TensorConnection tensor_connection = 5;

فهرست انتزاعی عمومی< TensorConnection > getTensorConnectionList ()

 Tensors to be connected in the callable. Each TensorConnection denotes
 a pair of tensors in the graph, between which an edge will be created
 in the callable.
 
repeated .tensorflow.TensorConnection tensor_connection = 5;

چکیده عمومی TensorConnectionOrBuilder getTensorConnectionOrBuilder (شاخص int)

 Tensors to be connected in the callable. Each TensorConnection denotes
 a pair of tensors in the graph, between which an edge will be created
 in the callable.
 
repeated .tensorflow.TensorConnection tensor_connection = 5;

فهرست چکیده عمومی<? گسترش TensorConnectionOrBuilder > getTensorConnectionOrBuilderList ()

 Tensors to be connected in the callable. Each TensorConnection denotes
 a pair of tensors in the graph, between which an edge will be created
 in the callable.
 
repeated .tensorflow.TensorConnection tensor_connection = 5;

hasRunOptions بولی انتزاعی عمومی ()

 Options that will be applied to each run.
 
.tensorflow.RunOptions run_options = 4;