final case class WithOutputDataHook[Input0 <: Batch, OutputData, OutputDelta](layer: Aux[Input0, Aux[OutputData, OutputDelta]], hook: (OutputData) ⇒ Unit) extends Layer with Product with Serializable
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Type Members
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type
Input = Input0
- Definition Classes
- WithOutputDataHook → Layer
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type
Output = Batch { ... /* 2 definitions in type refinement */ }
- Definition Classes
- WithOutputDataHook → Layer
Value Members
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final
def
!=(arg0: Any): Boolean
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final
def
##(): Int
- Definition Classes
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def
+(other: String): String
- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to any2stringadd[WithOutputDataHook[Input0, OutputData, OutputDelta]] performed by method any2stringadd in scala.Predef.
- Definition Classes
- any2stringadd
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def
->[B](y: B): (WithOutputDataHook[Input0, OutputData, OutputDelta], B)
- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to ArrowAssoc[WithOutputDataHook[Input0, OutputData, OutputDelta]] performed by method ArrowAssoc in scala.Predef.
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def
==(arg0: Any): Boolean
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final
def
asInstanceOf[T0]: T0
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def
clone(): AnyRef
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def
compose[G, NewInput <: Batch, InputData, InputDelta](g: G)(implicit toLayer: Aux[G, NewInput, InputData, InputDelta], toInput: <:<[Aux[NewInput, Aux[InputData, InputDelta]], Aux[NewInput, Input]]): Aux[NewInput, Aux[OutputData, OutputDelta]]
Returns a Layer that accepts another layer's output as input of this layer
Returns a Layer that accepts another layer's output as input of this layer
- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to AnyLayerOps[Input, OutputData, OutputDelta] performed by method toAnyLayerOps in com.thoughtworks.deeplearning.DifferentiableAny. This conversion will take place only if an implicit value of type Aux[WithOutputDataHook[Input0, OutputData, OutputDelta], Input, OutputData, OutputDelta] is in scope.
- Definition Classes
- AnyLayerOps
import com.thoughtworks.deeplearning.DifferentiableAny._ def composeNetwork(implicit thisLayer: INDArray @Symbolic)(anotherLayer: INDArray @Symbolic) = { thisLayer.compose(anotherLayer)
Example: -
def
ensuring(cond: (WithOutputDataHook[Input0, OutputData, OutputDelta]) ⇒ Boolean, msg: ⇒ Any): WithOutputDataHook[Input0, OutputData, OutputDelta]
- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to Ensuring[WithOutputDataHook[Input0, OutputData, OutputDelta]] performed by method Ensuring in scala.Predef.
- Definition Classes
- Ensuring
-
def
ensuring(cond: (WithOutputDataHook[Input0, OutputData, OutputDelta]) ⇒ Boolean): WithOutputDataHook[Input0, OutputData, OutputDelta]
- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to Ensuring[WithOutputDataHook[Input0, OutputData, OutputDelta]] performed by method Ensuring in scala.Predef.
- Definition Classes
- Ensuring
-
def
ensuring(cond: Boolean, msg: ⇒ Any): WithOutputDataHook[Input0, OutputData, OutputDelta]
- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to Ensuring[WithOutputDataHook[Input0, OutputData, OutputDelta]] performed by method Ensuring in scala.Predef.
- Definition Classes
- Ensuring
-
def
ensuring(cond: Boolean): WithOutputDataHook[Input0, OutputData, OutputDelta]
- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to Ensuring[WithOutputDataHook[Input0, OutputData, OutputDelta]] performed by method Ensuring in scala.Predef.
- Definition Classes
- Ensuring
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final
def
eq(arg0: AnyRef): Boolean
- Definition Classes
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def
finalize(): Unit
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def
formatted(fmtstr: String): String
- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to StringFormat[WithOutputDataHook[Input0, OutputData, OutputDelta]] performed by method StringFormat in scala.Predef.
- Definition Classes
- StringFormat
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- @inline()
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def
forward(input: Input): Output
- Definition Classes
- WithOutputDataHook → Layer
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final
def
getClass(): Class[_]
- Definition Classes
- AnyRef → Any
- val hook: (OutputData) ⇒ Unit
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final
def
isInstanceOf[T0]: Boolean
- Definition Classes
- Any
- val layer: Aux[Input0, Aux[OutputData, OutputDelta]]
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final
def
ne(arg0: AnyRef): Boolean
- Definition Classes
- AnyRef
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final
def
notify(): Unit
- Definition Classes
- AnyRef
-
final
def
notifyAll(): Unit
- Definition Classes
- AnyRef
-
def
predict[InputData, InputDelta](inputData: InputData)(implicit ev: <:<[Aux[Input, Aux[OutputData, OutputDelta]], Aux[Aux[InputData, InputDelta], Aux[OutputData, OutputDelta]]]): OutputData
Return a Layer that accepts input and will only forward.
Return a Layer that accepts input and will only forward. If you want to test the accuracy of network assertions, you can not let your network backward, then you need to use
predict
.- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to AnyLayerOps[Input, OutputData, OutputDelta] performed by method toAnyLayerOps in com.thoughtworks.deeplearning.DifferentiableAny. This conversion will take place only if an implicit value of type Aux[WithOutputDataHook[Input0, OutputData, OutputDelta], Input, OutputData, OutputDelta] is in scope.
- Definition Classes
- AnyLayerOps
import com.thoughtworks.deeplearning.DifferentiableAny._ def composeNetwork(implicit input: INDArray @Symbolic) =??? val predictor=composeNetwork predictor.predict(testData)
Example: -
final
def
synchronized[T0](arg0: ⇒ T0): T0
- Definition Classes
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-
def
train[InputData, InputDelta](inputData: InputData)(implicit ev: <:<[Aux[Input, Aux[OutputData, OutputDelta]], Aux[Aux[InputData, InputDelta], Aux[OutputData, OutputDelta]]], outputDataIsOutputDelta: Trainable[OutputData, OutputDelta]): OutputData
Return a Layer that accepts input and will forward & backward.
Return a Layer that accepts input and will forward & backward. If you want to train your network,you need your network backward, then you need to use
train
.- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to AnyLayerOps[Input, OutputData, OutputDelta] performed by method toAnyLayerOps in com.thoughtworks.deeplearning.DifferentiableAny. This conversion will take place only if an implicit value of type Aux[WithOutputDataHook[Input0, OutputData, OutputDelta], Input, OutputData, OutputDelta] is in scope.
- Definition Classes
- AnyLayerOps
import com.thoughtworks.deeplearning.DifferentiableAny._ def composeNetwork(implicit input: INDArray @Symbolic) =??? val yourNetwork=composeNetwork yourNetwork.train(testData)
Example: -
final
def
wait(): Unit
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final
def
wait(arg0: Long, arg1: Int): Unit
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final
def
wait(arg0: Long): Unit
- Definition Classes
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-
def
withOutputDataHook(hook: (OutputData) ⇒ Unit): Aux[Input, Aux[OutputData, OutputDelta]]
In DeepLearning.Scala,operation is not immediately run, but first filled with placeholders, the entire network will be running ,then the real data will come into networks.
In DeepLearning.Scala,operation is not immediately run, but first filled with placeholders, the entire network will be running ,then the real data will come into networks. So if you want to see some vars's intermediate state,you need to use
withOutputDataHook
.- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to AnyLayerOps[Input, OutputData, OutputDelta] performed by method toAnyLayerOps in com.thoughtworks.deeplearning.DifferentiableAny. This conversion will take place only if an implicit value of type Aux[WithOutputDataHook[Input0, OutputData, OutputDelta], Input, OutputData, OutputDelta] is in scope.
- Definition Classes
- AnyLayerOps
import com.thoughtworks.deeplearning.DifferentiableAny._ (var:From[INDArray]##`@`).withOutputDataHook{ data => println(data) }
Example: -
def
→[B](y: B): (WithOutputDataHook[Input0, OutputData, OutputDelta], B)
- Implicit
- This member is added by an implicit conversion from WithOutputDataHook[Input0, OutputData, OutputDelta] to ArrowAssoc[WithOutputDataHook[Input0, OutputData, OutputDelta]] performed by method ArrowAssoc in scala.Predef.
- Definition Classes
- ArrowAssoc