美文网首页
Dl4j - CSV数据转换

Dl4j - CSV数据转换

作者: 大猪大猪 | 来源:发表于2019-07-11 14:54 被阅读0次

    准备数据

    0,0,24,9.833333333333334,10,9.7,454,0
    0,1,4,17.0,1,17.0,432,0
    1,0,2,20.0,1,20.0,0,0
    1,1,24,10.375,13,9.615384615384615,455,0
    1,1,4,10.75,3,11.0,0,0
    0,1,3,16.0,2,16.0,246,0
    0,1,6,13.0,4,13.0,4767,0
    

    转换

    val sparkConf = new SparkConf()
        .set("spark.serializer", "org.apache.spark.serializer.KryoSerializer")
        .set("spark.kryo.registrator", "org.nd4j.Nd4jRegistrator")
        .setMaster("local[*]")
        .setAppName("Dl4jTransform")
    
      val useSparkLocal = true
    
      val spark = SparkSession
        .builder
        .config(sparkConf)
        .getOrCreate()
    
      def main(args: Array[String]): Unit = {
        val sc = spark.sparkContext
        sc.setLogLevel("ERROR")
    
        val inputDataSchema = new Schema.Builder()
          .addColumnInteger("geneSid")
          .addColumnInteger("platform")
          .addColumnInteger("loginCount")
          .addColumnDouble("loginHour")
          .addColumnInteger("shareCount")
          .addColumnDouble("shareHour")
          .addColumnDouble("regHours")
          .addColumnCategorical("shareIn", "YES", "NO")
          .build()
    
        val tp = new TransformProcess.Builder(inputDataSchema)
          .removeColumns("shareHour", "loginHour")
          .convertToInteger("regHours") //转成整数
    //      .transform(new BaseDoubleTransform("regHours") { //自定义转换
    //        override def map(writable: Writable): Writable = {
    //          new IntWritable(writable.toInt)
    //        }
    //
    //        override def map(o: Any): AnyRef = {
    //          val d = o.asInstanceOf[Double]
    //          new IntWritable(d.toInt)
    //        }
    //      })
          .categoricalToInteger("shareIn") // 转成数字 YES:0  NO:1
          .build()
    
        val lines = spark.sparkContext.textFile("hello.csv")
        val readWritables = lines.map(new StringToWritablesFunction(new CSVRecordReader()).call(_))
        val processed = SparkTransformExecutor.execute(readWritables, tp)
        val toSave = processed.map(new WritablesToStringFunction("\t"))
    
        import spark.implicits._
        toSave.rdd.toDS().show(false)
      }
    

    输出结果

    +------------------------+
    |value                   |
    +------------------------+
    |0  0   24  10  454   0  |
    |0  1   4   1   432   0  |
    |1  0   2   1   0     0  |
    |1  1   24  13  455   1  |
    |1  1   4   3   0     0  |
    |0  1   3   2   246   0  |
    |0  1   6   4   4767  0  |
    +------------------------+
    

    相关文章

      网友评论

          本文标题:Dl4j - CSV数据转换

          本文链接:https://www.haomeiwen.com/subject/xzcdkctx.html