Class CollectionDef.Builder

  • All Implemented Interfaces:
    Cloneable, org.nd4j.shade.protobuf.Message.Builder, org.nd4j.shade.protobuf.MessageLite.Builder, org.nd4j.shade.protobuf.MessageLiteOrBuilder, org.nd4j.shade.protobuf.MessageOrBuilder, CollectionDefOrBuilder
    Enclosing class:
    CollectionDef

    public static final class CollectionDef.Builder
    extends org.nd4j.shade.protobuf.GeneratedMessageV3.Builder<CollectionDef.Builder>
    implements CollectionDefOrBuilder
     CollectionDef should cover most collections.
     To add a user-defined collection, do one of the following:
     1. For simple data types, such as string, int, float:
          tf.add_to_collection("your_collection_name", your_simple_value)
        strings will be stored as bytes_list.
     2. For Protobuf types, there are three ways to add them:
        1) tf.add_to_collection("your_collection_name",
             your_proto.SerializeToString())
           collection_def {
             key: "user_defined_bytes_collection"
             value {
               bytes_list {
                 value: "queue_name: \"test_queue\"\n"
               }
             }
           }
      or
        2) tf.add_to_collection("your_collection_name", str(your_proto))
           collection_def {
             key: "user_defined_string_collection"
             value {
              bytes_list {
                 value: "\n\ntest_queue"
               }
             }
           }
      or
        3) any_buf = any_pb2.Any()
           tf.add_to_collection("your_collection_name",
             any_buf.Pack(your_proto))
           collection_def {
             key: "user_defined_any_collection"
             value {
               any_list {
                 value {
                   type_url: "type.googleapis.com/tensorflow.QueueRunnerDef"
                   value: "\n\ntest_queue"
                 }
               }
             }
           }
     3. For Python objects, implement to_proto() and from_proto(), and register
        them in the following manner:
        ops.register_proto_function("your_collection_name",
                                    proto_type,
                                    to_proto=YourPythonObject.to_proto,
                                    from_proto=YourPythonObject.from_proto)
        These functions will be invoked to serialize and de-serialize the
        collection. For example,
        ops.register_proto_function(ops.GraphKeys.GLOBAL_VARIABLES,
                                    proto_type=variable_pb2.VariableDef,
                                    to_proto=Variable.to_proto,
                                    from_proto=Variable.from_proto)
     
    Protobuf type tensorflow.CollectionDef