Github user zsxwing commented on a diff in the pull request:

    https://github.com/apache/spark/pull/6081#discussion_r30350173
  
    --- Diff: core/src/main/scala/org/apache/spark/SparkContext.scala ---
    @@ -689,6 +689,58 @@ class SparkContext(config: SparkConf) extends Logging 
with ExecutorAllocationCli
         new ParallelCollectionRDD[T](this, seq, numSlices, Map[Int, 
Seq[String]]())
       }
     
    +  /**
    +   * Creates a new RDD[Long] containing elements from `start` to 
`end`(exclusive), increased by
    +   * `step` every element.
    +   *
    +   * @note if we need to cache this RDD, we should make sure each 
partition does not exceed limit.
    +   *
    +   * @param start the start value.
    +   * @param end the end value.
    +   * @param step the incremental step
    +   * @param numSlices the partition number of the new RDD.
    +   * @return
    +   */
    +  def range(
    +      start: Long,
    +      end: Long,
    +      step: Long = 1,
    +      numSlices: Int = defaultParallelism): RDD[Long] = withScope {
    +    assertNotStopped()
    +    // when step is 0, range will run infinitely
    +    require(step != 0, "step cannot be 0")
    +    val numElements: BigInt = {
    +      val safeStart = BigInt(start)
    +      val safeEnd = BigInt(end)
    +      if (((safeEnd - safeStart) % step).toInt == 0) {
    --- End diff --
    
    `toInt` may overflow. You can directly compare `BitInt` with `0`.


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