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scrap.txt
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1:10: loss: 2.2915698289871216 accuracy: 0.1171875 duration: 88072 ms.
1:20: loss: 2.245325207710266 accuracy: 0.1796875 duration: 176792 ms.
1:30: loss: 2.2091324806213377 accuracy: 0.21875 duration: 263850 ms.
1:40: loss: 2.166573643684387 accuracy: 0.234375 duration: 350876 ms.
2018-05-01 11:14:19,273 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:10: loss: 2.287407875061035 accuracy: 0.171875 duration: 81427 ms.
2018-05-01 11:15:45,166 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:20: loss: 2.2399443626403808 accuracy: 0.1875 duration: 85893 ms.
2018-05-01 11:17:11,915 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:30: loss: 2.207755136489868 accuracy: 0.21875 duration: 86749 ms.
2018-05-01 11:18:38,611 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:40: loss: 2.1901093244552614 accuracy: 0.1796875 duration: 86696 ms.
batchSize = 128
par = 4
2018-05-01 11:33:04,512 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:10: loss: 2.293930506706238 accuracy: 0.140625 duration: 84542 ms.
2018-05-01 11:34:31,409 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:20: loss: 2.2760065317153932 accuracy: 0.1484375 duration: 86897 ms.
2018-05-01 11:35:59,488 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:30: loss: 2.246646547317505 accuracy: 0.1953125 duration: 88079 ms.
batchSize = 128
par = 8
2018-05-01 11:38:21,964 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:10: loss: 2.2916112661361696 accuracy: 0.1328125 duration: 83810 ms.
2018-05-01 11:39:50,174 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:20: loss: 2.270481753349304 accuracy: 0.1875 duration: 88210 ms.
2018-05-01 11:41:17,313 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:30: loss: 2.2637011051177978 accuracy: 0.171875 duration: 87139 ms.
batchSize = 256
par = 4
2018-05-01 11:44:56,798 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:10: loss: 2.2893950939178467 accuracy: 0.12109375 duration: 168209 ms.
2018-05-01 11:47:50,127 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:20: loss: 2.279911971092224 accuracy: 0.1328125 duration: 173329 ms.
batchSize = 256
par = 8
2018-05-01 11:52:20,983 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:10: loss: 2.275270128250122 accuracy: 0.15625 duration: 165857 ms.
2018-05-01 11:55:15,282 [INFO] from scorch.sandbox.cnn.LeNet5$ in main - 1:20: loss: 2.23012433052063 accuracy: 0.2109375 duration: 174299 ms.
package scorch.data.loader
import akka.actor.{Actor, ActorSystem, Props}
import akka.stream._
import akka.stream.scaladsl._
import akka.util.Timeout
import botkop.{numsca => ns}
import scorch._
import scorch.autograd.Variable
import scorch.data.loader.NetActor.{Ack, Complete, Init}
import scorch.nn.cnn.{Conv2d, MaxPool2d}
import scorch.nn.{Linear, Module}
import scorch.optim.Adam
import scala.concurrent.duration._
import scala.concurrent.{Await, Future}
import scala.language.postfixOps
import scala.util.{Failure, Success}
class NetActor(net: Module, lossFunction: (Variable, Variable) => Variable)
extends Actor {
val optimizer = Adam(net.parameters, lr = 0.01)
override def receive: Receive = {
case (x: Variable, y: Variable) =>
println("received x y")
val yHat = net(x)
val loss = lossFunction(yHat, y)
val cost = loss.data.squeeze()
println(s"loss = $cost")
net.zeroGrad()
loss.backward()
println(net.parameters.size)
optimizer.step()
println("back prop done")
sender ! Ack
case _: Init.type =>
sender ! Ack
case Complete =>
println("done")
}
}
/*
class OptimActor(optimizer: Optimizer) extends Actor {
override def receive: Receive = {
case gradients: Seq[Variable] =>
optimizer.parameters.zip(gradients).foreach { case (p, g) =>
p.grad.data := g.data
}
optimizer.step()
sender ! optimizer.parameters
}
}
*/
object NetActor {
def props(net: Module) = Props(new NetActor(net, softmaxLoss))
case class Backward(loss: Variable)
case object Init
case object Ack
case object Complete
}
case class Net(batchSize: Int) extends Module {
val numChannels = 3
val imageSize = 32
val numClasses = 10
val inputShape = List(batchSize, numChannels, imageSize, imageSize)
val conv = Conv2d(numChannels = 3,
numFilters = 4,
filterSize = 5,
weightScale = 1e-3,
pad = 1,
stride = 1)
val pool = MaxPool2d(poolSize = 2, stride = 2)
val numFlatFeatures: Int =
pool.outputShape(conv.outputShape(inputShape)).tail.product
def flatten(v: Variable): Variable = v.reshape(batchSize, numFlatFeatures)
val fc = Linear(numFlatFeatures, numClasses)
override def forward(x: Variable): Variable =
x ~> conv ~> relu ~> pool ~> flatten ~> fc ~> relu
}
object ParallelLoader extends App {
val batchSize = 8
val loader = new Cifar10DataLoader(miniBatchSize = batchSize,
mode = "train",
take = Some(80))
implicit val system: ActorSystem = ActorSystem("scorch")
implicit val materializer: ActorMaterializer = ActorMaterializer()
implicit val askTimeout: Timeout = Timeout(60 seconds)
val net = Net(batchSize)
val netActor = system.actorOf(NetActor.props(net))
val source = Source(loader)
val sink = Sink.actorRefWithAck(netActor, Init, Ack, Complete)
source.runWith(sink)
}
object FlatLoader extends App {
import scala.concurrent.ExecutionContext.Implicits.global
val parallelism = 4
val batchSize = 16
val loader = new Cifar10DataLoader(miniBatchSize = batchSize,
mode = "train",
take = None)
val base = Net(batchSize)
val workers = Seq.fill(parallelism)(Net(batchSize))
val optimizer = Adam(base.parameters, lr = 0.001)
def add(as: Seq[Variable], bs: Seq[Variable]): Seq[Variable] =
as.zip(bs).map { case (a, b) => Variable(a.data + b.data) }
def pass(iteration: Int, worker: Net, x: Variable, y: Variable): Unit = {
println("pass")
val yHat = worker(x)
val loss = softmaxLoss(yHat, y)
println(s"iteration: $iteration loss = ${loss.data.squeeze()}")
loss.backward()
}
def updateBaseGradients(allGradients: Seq[Seq[Variable]]): Unit = {
val sums = allGradients.fold(base.gradients) {
case (a, b) => add(a, b)
}
val means = sums.map(_ / parallelism)
base.gradients.zip(means).foreach {
case (bg, m) =>
bg.data := m.data
}
}
loader.zipWithIndex
.sliding(parallelism, parallelism)
.map(_.toList)
.foreach { pb: List[((Variable, Variable), Int)] =>
base.zeroGrad()
val fs: Seq[Future[Seq[Variable]]] = workers
.zip(pb)
.map {
case (worker, ((x, y), ix)) =>
Future {
worker.zeroGrad()
pass(ix, worker, x, y)
worker.gradients
}
}
val results = Future.sequence(fs)
results.onComplete {
case Success(allGradients) =>
/*
val sums = allGradients.fold(base.gradients) {
case (a, b) => add(a, b)
}
val means = sums.map(_ / parallelism)
base.gradients.zip(means).foreach {
case (bg, m) =>
bg := m
}
*/
updateBaseGradients(allGradients)
optimizer.step()
workers.foreach { w =>
base.parameters.zip(w.parameters).foreach {
case (bp, wp) =>
wp.data := bp.data
}
}
println("step")
case Failure(ex) =>
throw new Exception(ex)
}
Await.ready(results, 20 seconds)
}
}
case class Parallelize(module: Module,
parallelism: Int,
timeOut: Duration = Duration.Inf)
extends Module {
// val workers: Seq[Module[Id]] = Seq.fill(parallelism)(module.clone().asInstanceOf[Module[Id]])
override def forward(x: Variable): Variable = ???
}
object Parallelize {
case class ParallelizeFunction(x: Variable,
baseModule: Module,
workerModules: Seq[Module],
timeOut: Duration = Duration.Inf)
extends scorch.autograd.Function {
import ns._
import scala.concurrent.ExecutionContext.Implicits.global
val parallelism: Int = workerModules.length
val batchSize: Int = x.shape.head
def scatter(v: Variable): Seq[Variable] =
(0 until batchSize)
.sliding(parallelism, parallelism)
.map(s => (s.head, s.last))
.map {
case (first, last) =>
Variable(v.data(first :> last))
}
.toSeq
val fs: Seq[Future[Variable]] = scatter(x).zip(workerModules).map {
case (v, worker) =>
Future {
workerModules.foreach { wm =>
// set parameters of all workers to parameters of base module
// set gradients of all workers to gradients of base module
wm.parameters.zip(baseModule.parameters).foreach {
case (wp, bp) =>
wp.data := bp.data
wp.grad.data := bp.grad.data
}
}
worker(v)
}
}
val activations: Seq[Variable] = Await.result(Future.sequence(fs), timeOut)
override def forward(): Variable = {
Variable(ns.concatenate(activations.map(_.data)), Some(this))
}
override def backward(gradOutput: Variable): Unit = {
val gs = scatter(gradOutput)
val fs = activations.zip(gs).map {
case (v, g) =>
Future(v.backward(g))
}
Await.result(Future.sequence(fs), timeOut)
// collect gradients from workers and accumulate in base module
workerModules.foreach { wm =>
baseModule.gradients.zip(wm.gradients).foreach {
case (bg, wg) =>
bg.data += wg.data
}
}
}
}
}