• spark dataframe 类型转换


    读一张表,对其进行二值化特征转换。可以二值化要求输入类型必须double类型,类型怎么转换呢?

    直接利用spark column 就可以进行转换:

     

    DataFrame dataset = hive.sql("select age,sex,race from hive_race_sex_bucktizer ");

    /**

    * 类型转换

    */

    dataset = dataset.select(dataset.col("age").cast(DoubleType).as("age"),dataset.col("sex"),dataset.col("race"));

     

    是不是很简单。想起之前的类型转换做法,遍历并创建另外一个满足类型要求的RDD,然后根据RDD创建Datafame,好复杂!!!!

     

    		JavaRDD<Row> parseDataset =   dataset.toJavaRDD().map(new Function<Row,Row>() {
    
    			@Override
    			public Row call(Row row) throws Exception {
    				System.out.println(row);
    				long age = row.getLong(row.fieldIndex("age"));
    				String sex = row.getAs("sex");
    				String race =row.getAs("race");
    				double raceV  = -1;
    				if("white".equalsIgnoreCase(race)){
    					raceV = 1;
    				} else if("black".equalsIgnoreCase(race)) {
    					raceV = 2;
    				} else if("yellow".equalsIgnoreCase(race)) {
    					raceV = 3;
    				} else if("Asian-Pac-Islander".equalsIgnoreCase(race)) {
    					raceV = 4;
    				}else if("Amer-Indian-Eskimo".equalsIgnoreCase(race)) {
    					raceV = 3;
    				}else {
    					raceV = 0;
    				}
    				
    				return RowFactory.create(age,("male".equalsIgnoreCase(sex)?1:0),raceV);
    			}
    		});
    		
    		StructType schema = new StructType(new StructField[]{
    				 createStructField("_age", LongType, false),
    				  createStructField("_sex", IntegerType, false),
    				  createStructField("_race", DoubleType, false)
    				});
    		
    		DataFrame  df  =  hive.createDataFrame(parseDataset, schema);
    

      不断探索,不断尝试!

     

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  • 原文地址:https://www.cnblogs.com/likehua/p/6203520.html
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