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Float.scala
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Float.scala
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package com.thoughtworks.deeplearning
package differentiable
import java.util.logging.{Level, Logger}
import com.thoughtworks.feature.Constructor
import com.thoughtworks.feature.Override.inject
import com.thoughtworks.deeplearning.logs.{UncaughtExceptionDuringBackward, WeightIsUpdating}
import com.thoughtworks.deeplearning.math._
import com.thoughtworks.deeplearning.differentiable.Any.Trainable
import com.thoughtworks.deeplearning.Lift.LowPriorityLift
import com.thoughtworks.feature.Caller
import com.thoughtworks.raii.asynchronous.Do
import com.thoughtworks.raii.covariant.ResourceT
import shapeless.the
import scala.util.{Failure, Success, Try}
import scalaz.{-\/, Applicative, Monoid, \/, \/-}
import scalaz.concurrent.{Future, Task}
import scalaz.syntax.all._
/**
* A namespace of common operators for Float layers.
*
* @author 杨博 (Yang Bo) <pop.atry@gmail.com>
*/
object Float extends FloatCompanion {
trait Hyperparameter {
trait Weight {
var data: scala.Float
final def backward(deltaFuture: Do[scala.Float])(implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
className: Caller[_],
methodName: sourcecode.Name): Future[Unit] = {
Do.run(Do.releaseMap(deltaFuture) { delta =>
data -= optimizerConstructor.newInstance(this, delta).delta
})
.get
.map {
case \/-(()) => ()
case -\/(e) => logger.log(UncaughtExceptionDuringBackward(e))
}
}
}
type FloatWeight <: Weight
type FloatOptimizer <: Optimizer
abstract class Optimizer(val weight: FloatWeight, delta0: scala.Float) {
def delta: scala.Float = delta0
}
@inject
def optimizerConstructor: Constructor[(Weight, scala.Float) => FloatOptimizer]
}
object Hyperparameter {
trait FloatInitialization extends Hyperparameter {
abstract class Weight(override var data: scala.Float) extends super.Weight
@inject
def fromFloatConstructor: Constructor[scala.Float => Weight with FloatWeight]
final def floatWeight(data: scala.Float): Weight with FloatWeight =
fromFloatConstructor.newInstance(data)
}
trait FixedLearningRate extends LearningRate {
def fixedLearningRate: scala.Float
trait Optimizer extends super.Optimizer {
final def learningRate: scala.Float = fixedLearningRate
}
override type FloatOptimizer <: Optimizer
}
trait LearningRate extends Hyperparameter {
trait Optimizer extends super.Optimizer {
def learningRate: scala.Float
override def delta: scala.Float = super.delta * learningRate
}
override type FloatOptimizer <: Optimizer
}
trait L1Regularization extends Hyperparameter {
def l1Regularization: scala.Float
trait Optimizer extends super.Optimizer {
override def delta: scala.Float = super.delta + scala.math.signum(weight.data) * l1Regularization
}
override type FloatOptimizer <: Optimizer
}
trait L2Regularization extends Hyperparameter {
def l2Regularization: scala.Float
trait Optimizer extends super.Optimizer {
override def delta: scala.Float = super.delta + weight.data * l2Regularization
}
override type FloatOptimizer <: Optimizer
}
}
object implicits {
import com.thoughtworks.deeplearning.tapefactories.Binary.monoidBinaryTapeTaskFactory
import com.thoughtworks.deeplearning.tapefactories.Unary.monoidUnaryTapeTaskFactory
implicit def liftFloatWeight[W <: Hyperparameter#Weight](implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
className: Caller[_],
methodName: sourcecode.Name) = new Lift[W] {
override type Data = scala.Float
override type Delta = scala.Float
override def apply(weight: W): Do[Tape[Data, Delta]] = {
import weight._
Do.delay(Tape(data, backward))
}
}
private[deeplearning] implicit object FloatMonoid extends Monoid[scala.Float] {
override def zero: scala.Float = 0
override def append(f1: scala.Float, f2: => scala.Float): scala.Float = f1 + f2
}
def infer(self: AnyRef): self.type = self
@inline
implicit def liftFloat[A](
implicit typeClass: LowPriorityLift.Aux[A, scala.Float, scala.Float]): Lift.Aux[A, scala.Float, scala.Float] =
typeClass
implicit object FloatTrainable extends Trainable[scala.Float, scala.Float] {
override def apply(data: scala.Float): Do[scala.Float] = Do.now(1)
}
@inline
implicit def `Float+Float`(
implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
className: Caller[_],
methodName: sourcecode.Name): polyFunctions.+.Case.Aux[Do[FloatTape], Do[FloatTape], Do[FloatTape]] = {
polyFunctions.+.at { (operand0, operand1) =>
tapefactories.Binary.doTape(operand0, operand1) { (data0, data1) =>
Task.delay {
val outputData = data0 + data1
val computeBackward = { outputDelta: scala.Float =>
val delta0Future = Do.now(outputDelta)
val delta1Future = Do.now(outputDelta)
(delta0Future, delta1Future)
}
(outputData, computeBackward)
}
}
}
}
@inline
implicit def `Float-Float`(
implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
className: Caller[_],
methodName: sourcecode.Name): polyFunctions.-.Case.Aux[Do[FloatTape], Do[FloatTape], Do[FloatTape]] = {
polyFunctions.-.at { (operand0, operand1) =>
tapefactories.Binary.doTape(operand0, operand1) { (data0, data1) =>
Task.delay {
val outputData = data0 - data1
val computeBackward = { outputDelta: scala.Float =>
val delta0Future = Do.now(outputDelta)
val delta1Future = Do.delay(-outputDelta)
(delta0Future, delta1Future)
}
(outputData, computeBackward)
}
}
}
}
@inline
implicit def `Float*Float`(
implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
className: Caller[_],
methodName: sourcecode.Name): polyFunctions.*.Case.Aux[Do[FloatTape], Do[FloatTape], Do[FloatTape]] = {
polyFunctions.*.at { (operand0, operand1) =>
tapefactories.Binary.doTape(operand0, operand1) { (data0, data1) =>
Task.delay {
val outputData = data0 * data1
val computeBackward = { outputDelta: scala.Float =>
val delta0Future = Do.delay(outputDelta * data1)
val delta1Future = Do.delay(outputDelta * data0)
(delta0Future, delta1Future)
}
(outputData, computeBackward)
}
}
}
}
@inline
implicit def `Float/Float`(
implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
className: Caller[_],
methodName: sourcecode.Name): polyFunctions./.Case.Aux[Do[FloatTape], Do[FloatTape], Do[FloatTape]] = {
polyFunctions./.at { (operand0, operand1) =>
tapefactories.Binary.doTape(operand0, operand1) { (data0, data1) =>
Task.delay {
val outputData = data0 / data1
val computeBackward = { outputDelta: scala.Float =>
val delta0Future = Do.delay(outputDelta / data1)
val delta1Future = Do.delay(-data0 * outputDelta / (data1 * data1))
(delta0Future, delta1Future)
}
(outputData, computeBackward)
}
}
}
}
@inline
implicit def `min(Float,Float)`(
implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
className: Caller[_],
methodName: sourcecode.Name): math.polyFunctions.min.Case.Aux[Do[FloatTape], Do[FloatTape], Do[FloatTape]] = {
math.polyFunctions.min.at { (operand0, operand1) =>
tapefactories.Binary.doTape(operand0, operand1) { (data0, data1) =>
Task.delay {
val leftLessThenRight = data0 < data1
val outputData = if (leftLessThenRight) data0 else data1
val computeBackward = { outputDelta: scala.Float =>
val zero = Do.now(the[Numeric[scala.Float]].zero)
val delta = Do.now(outputDelta)
if (leftLessThenRight) (delta, zero) else (zero, delta)
}
(outputData, computeBackward)
}
}
}
}
@inline
implicit def `max(Float,Float)`(
implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
className: Caller[_],
methodName: sourcecode.Name): math.polyFunctions.max.Case.Aux[Do[FloatTape], Do[FloatTape], Do[FloatTape]] = {
math.polyFunctions.max.at { (operand0, operand1) =>
tapefactories.Binary.doTape(operand0, operand1) { (data0, data1) =>
Task.delay {
val leftLessThenRight = data0 < data1
val outputData = if (leftLessThenRight) data1 else data0
val computeBackward = { outputDelta: scala.Float =>
val zero = Do.now(the[Numeric[scala.Float]].zero)
val delta = Do.now(outputDelta)
if (leftLessThenRight) (zero, delta) else (delta, zero)
}
(outputData, computeBackward)
}
}
}
}
@inline
implicit def `log(Float)`(
implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
className: Caller[_],
methodName: sourcecode.Name): math.polyFunctions.log.Case.Aux[Do[FloatTape], Do[FloatTape]] = {
math.polyFunctions.log.at { operand =>
tapefactories.Unary.doTape(operand) { data =>
Task.delay {
val outputData = scala.math.log(data).toFloat
val computeBackward = { outputDelta: scala.Float =>
Do.delay(outputDelta / data)
}
(outputData, computeBackward)
}
}
}
}
@inline
implicit def `exp(Float)`(implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
methodName: sourcecode.Name,
className: Caller[_]): math.polyFunctions.exp.Case.Aux[Do[FloatTape], Do[FloatTape]] = {
math.polyFunctions.exp.at { operand =>
tapefactories.Unary.doTape(operand) { data =>
Task.delay {
val outputData = scala.math.exp(data).toFloat
val computeBackward = { outputDelta: scala.Float =>
Do.delay(outputDelta * outputData)
}
(outputData, computeBackward)
}
}
}
}
@inline
implicit def `abs(Float)`(implicit logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
methodName: sourcecode.Name,
className: Caller[_]): math.polyFunctions.abs.Case.Aux[Do[FloatTape], Do[FloatTape]] = {
math.polyFunctions.abs.at { operand =>
tapefactories.Unary.doTape(operand) { data =>
Task.delay {
val isDataPositive = data >= 0
val outputData = if (isDataPositive) data else -data
val computeBackward = { outputDelta: scala.Float =>
if (isDataPositive) Do.now(outputDelta) else Do.delay(-outputDelta)
}
(outputData, computeBackward)
}
}
}
}
@inline
def reciprocal[Operand](operand: Operand)(implicit liftOperand: Lift.Aux[Operand, scala.Float, scala.Float],
logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
methodName: sourcecode.Name,
className: Caller[_]): Do[FloatTape] = {
tapefactories.Unary.doTape(liftOperand(operand)) { data: scala.Float =>
Task.delay {
val outputData = 1 / data
val computeBackward = { outputDelta: scala.Float =>
Do.delay(-outputDelta / (data * data))
}
(outputData, computeBackward)
}
}
}
implicit final class DifferentiableFloatOps[From](from: From)(
implicit lift: Lift.Aux[From, scala.Float, scala.Float],
logger: Logger = Logger.getGlobal,
fullName: sourcecode.FullName,
methodName: sourcecode.Name,
className: Caller[_]) {
private val operand: Do[FloatTape] = lift(from)
@inline
def unary_- : Do[FloatTape] = {
tapefactories.Unary.doTape(operand) { data =>
Task.delay {
val outputData = -data
val computeBackward = { outputDelta: scala.Float =>
Do.delay(-outputDelta)
}
(outputData, computeBackward)
}
}
}
}
}
}
//workaround for https://github.com/scala/bug/issues/10306
private[differentiable] abstract class FloatCompanion { this: Float.type =>
private[deeplearning] type FloatTape = Tape[scala.Float, scala.Float]
}