Github user Lewuathe commented on a diff in the pull request:
https://github.com/apache/spark/pull/3636#discussion_r22151650
--- Diff:
mllib/src/main/scala/org/apache/spark/mllib/optimization/GradientDescent.scala
---
@@ -182,34 +206,43 @@ object GradientDescent extends Logging {
var regVal = updater.compute(
weights, Vectors.dense(new Array[Double](weights.size)), 0, 1,
regParam)._2
- for (i <- 1 to numIterations) {
- val bcWeights = data.context.broadcast(weights)
- // Sample a subset (fraction miniBatchFraction) of the total data
- // compute and sum up the subgradients on this subset (this is one
map-reduce)
- val (gradientSum, lossSum, miniBatchSize) = data.sample(false,
miniBatchFraction, 42 + i)
- .treeAggregate((BDV.zeros[Double](n), 0.0, 0L))(
- seqOp = (c, v) => {
- // c: (grad, loss, count), v: (label, features)
- val l = gradient.compute(v._2, v._1, bcWeights.value,
Vectors.fromBreeze(c._1))
- (c._1, c._2 + l, c._3 + 1)
- },
- combOp = (c1, c2) => {
- // c: (grad, loss, count)
- (c1._1 += c2._1, c1._2 + c2._2, c1._3 + c2._3)
- })
-
- if (miniBatchSize > 0) {
- /**
- * NOTE(Xinghao): lossSum is computed using the weights from the
previous iteration
- * and regVal is the regularization value computed in the previous
iteration as well.
- */
- stochasticLossHistory.append(lossSum / miniBatchSize + regVal)
- val update = updater.compute(
- weights, Vectors.fromBreeze(gradientSum /
miniBatchSize.toDouble), stepSize, i, regParam)
- weights = update._1
- regVal = update._2
- } else {
- logWarning(s"Iteration ($i/$numIterations). The size of sampled
batch is zero")
+ val b = new Breaks
+ b.breakable {
--- End diff --
@mengxr Thank you. I can modify it.
---
If your project is set up for it, you can reply to this email and have your
reply appear on GitHub as well. If your project does not have this feature
enabled and wishes so, or if the feature is enabled but not working, please
contact infrastructure at [email protected] or file a JIRA ticket
with INFRA.
---
---------------------------------------------------------------------
To unsubscribe, e-mail: [email protected]
For additional commands, e-mail: [email protected]