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djspiewak / streams-tutorial.md
Created March 22, 2015 19:55
Introduction to scalaz-stream

Introduction to scalaz-stream

Every application ever written can be viewed as some sort of transformation on data. Data can come from different sources, such as a network or a file or user input or the Large Hadron Collider. It can come from many sources all at once to be merged and aggregated in interesting ways, and it can be produced into many different output sinks, such as a network or files or graphical user interfaces. You might produce your output all at once, as a big data dump at the end of the world (right before your program shuts down), or you might produce it more incrementally. Every application fits into this model.

The scalaz-stream project is an attempt to make it easy to construct, test and scale programs that fit within this model (which is to say, everything). It does this by providing an abstraction around a "stream" of data, which is really just this notion of some number of data being sequentially pulled out of some unspecified data source. On top of this abstraction, sca

@rkuhn
rkuhn / MergeSorted.scala
Created November 18, 2015 16:09
MergeSorted
class MergeSorted[T: Ordering] extends GraphStage[FanInShape2[T, T, T]] {
private val left = Inlet[T]("left")
private val right = Inlet[T]("right")
private val out = Outlet[T]("out")
override val shape = new FanInShape2(left, right, out)
override def createLogic(attr: Attributes) = new GraphStageLogic(shape) {
import Ordering.Implicits._
setHandler(left, ignoreTerminateInput)