Scala的REPL Shell的调用

最近突然对spark的spark-shell发生了兴趣
它是如何启动scala的REPL的,并且在此前写入了常用的环境变量的呢?
通过查看spark的源码,找到了SparkILoop.scala

import scala.tools.nsc.interpreter.{JPrintWriter, ILoop}

/**
 *  A Spark-specific interactive shell.
 */
class SparkILoop(in0: Option[BufferedReader], out: JPrintWriter)
    extends ILoop(in0, out) {
  def this(in0: BufferedReader, out: JPrintWriter) = this(Some(in0), out)
  def this() = this(None, new JPrintWriter(Console.out, true))

  def initializeSpark() {
    intp.beQuietDuring {
      processLine("""
        @transient val sc = {
          val _sc = org.apache.spark.repl.Main.createSparkContext()
          println("Spark context available as sc.")
          _sc
        }
        """)
      processLine("""
        @transient val sqlContext = {
          val _sqlContext = org.apache.spark.repl.Main.createSQLContext()
          println("SQL context available as sqlContext.")
          _sqlContext
        }
        """)
      processLine("import org.apache.spark.SparkContext._")
      processLine("import sqlContext.implicits._")
      processLine("import sqlContext.sql")
      processLine("import org.apache.spark.sql.functions._")
    }
  }
  ...
}

可以看出SparkILoop继承自scala.tools.nsc.interpreter.ILoop
紧接着着看了ILoop的api doc
终于找到了启动ILoop的方法:

import scala.tools.nsc.interpreter.ILoop
import scala.tools.nsc.Settings

val loop = new ILoop
loop.process(new Settings)

Scala 的详细介绍请点这里
Scala 的下载地址请点这里

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转载自www.linuxidc.com/Linux/2015-10/123823.htm