Spark机器学习库现支持两种接口的API:RDD-based和DataFrame-based,Spark官方网站上说,RDD-based APIs在2.0后进入维护模式,主要的机器学习API是spark-ml包中的DataFrame-based API,并将在3.0后完全移除RDD-based API。

在学习了两周Spark MLlib后,准备转向DataFrame-based接口。由于现有的文档资料均是RDD-based接口,于是便去看了看Spark MLlib的源码。DataFrame-based API 包含在org.apache.spark.ml包中,其中主要的类结构如下:

咱先看一个线性回归的例子examples/ml/LinearRegressionExample.scala,其首先定义了一个LinearRegression的对象:

val lir = new LinearRegression()
          .setFeaturesCol("features")
          .setLabelCol("label")
          .setRegParam(params.regParam)
          .setElasticNetParam(params.elasticNetParam)
          .setMaxIter(params.maxIter)
          .setTol(params.tol)

然后,调用fit方法训练数据,得到一个训练好的模型lirModel,它是一个LinearRegressionModel类的对象。

val lirModel = lir.fit(training)

现在,我们大概可以理清MLlib机器学习的流程,和很多单机机器学习库一样,先定义一个模型并设置好参数,然后训练数据,最后返回一个训练好了的模型。

我们现在在源码中去查看LinearRegression和LinearRegressionModel,其类的依赖关系如下:

LinearRegression是一个Predictor,LinearRegressionModel是一个Model,那么Predictor是学习算法,Model是训练得到的模型。除此之外,还有一类继承自Params的类,这是一个表示参数的类。Predictor 和Model 共享一套参数。

现在用Spark MLlib来完成第一个机器学习例子,数据是我之前放在txt文件里的回归数据,一共550多万条,共13列,第一列是Label,后面是Features。分别演示两种接口,先用旧的接口:

1.读取原始数据:

scala> import org.apache.spark.mllib.linalg._
import org.apache.spark.mllib.linalg._
scala> import org.apache.spark.mllib.regression._
import org.apache.spark.mllib.regression._      
scala> val raw_data = sc.textFile("data/my/y_x.txt")
raw_data: org.apache.spark.rdd.RDD[String] = data/my/y_x.txt MapPartitionsRDD[1] at textFile at <console>:30

2.转换格式,RDD-based接口以LabeledPoint为输入数据的格式:

scala> val data = raw_data.map{ line =>
     | val arr = line.split(' ').map(_.toDouble)
     | val label = arr.head
     | val features = Vectors.dense(arr.tail)| LabeledPoint(label,features)
     | }
data: org.apache.spark.rdd.RDD[org.apache.spark.mllib.regression.LabeledPoint] = MapPartitionsRDD[2] at map at <console>:32

3.划分train、test数据集:

scala> val splits = data.randomSplit(Array(0.8, 0.2))
splits: Array[org.apache.spark.rdd.RDD[org.apache.spark.mllib.regression.LabeledPoint]] = Array(MapPartitionsRDD[3] at randomSplit at <console>:34, MapPartitionsRDD[4] at randomSplit at <console>:34)
scala> val train_set = splits(0).cache
train_set: org.apache.spark.rdd.RDD[org.apache.spark.mllib.regression.LabeledPoint] = MapPartitionsRDD[3] at randomSplit at <console>:34
scala> val test_set = splits(1).cache
test_set: org.apache.spark.rdd.RDD[org.apache.spark.mllib.regression.LabeledPoint] = MapPartitionsRDD[4] at randomSplit at <console>:34

4.使用LinearRegressionWithSGD.train训练模型:

scala> val lr = LinearRegressionWithSGD.train(train_set,100,0.0001)
warning: there was one deprecation warning; re-run with -deprecation for details
16/08/26 09:20:44 WARN Executor: 1 block locks were not released by TID = 0:
[rdd_3_0]
lr: org.apache.spark.mllib.regression.LinearRegressionModel = org.apache.spark.mllib.regression.LinearRegressionModel: intercept = 0.0, numFeatures = 12

5.模型评估:

scala> val pred_labels = test_set.map(lp => (lp.label, lr.predict(lp.features))) 
pred_labels: org.apache.spark.rdd.RDD[(Double, Double)] = MapPartitionsRDD[17] at map at <console>:42
scala> val mse = pred_labels.map{case (p,v) => math.pow(p-v,2)}.mean
mse: Double = 0.05104150735910074

再用新的接口:

1.读取原始数据:

scala> import org.apache.spark.ml.linalg._
import org.apache.spark.ml.linalg._
scala> import org.apache.spark.ml.regression._
import org.apache.spark.ml.regression._
scala> import org.apache.spark.sql._
import org.apache.spark.sql._
scala> val raw_data = spark.read.text("data/my/y_x.txt")
raw_data: org.apache.spark.sql.DataFrame = [value: string]

2.转换数据

scala> val data = raw_data.rdd.map { case Row(line:String) => 
     | val arr = line.split(' ').map(_.toDouble)
     | val label = arr.head
     | val features = Vectors.dense(arr.tail)
     | (label,features)
     | }
data: org.apache.spark.rdd.RDD[(Double, org.apache.spark.ml.linalg.Vector)] = MapPartitionsRDD[4] at map at <console>:34

3.划分数据集

scala> val splits = data.randomSplit(Array(0.8, 0.2))
splits: Array[org.apache.spark.rdd.RDD[(Double, org.apache.spark.ml.linalg.Vector)]] = Array(MapPartitionsRDD[5] at randomSplit at <console>:36, MapPartitionsRDD[6] at randomSplit at <console>:36)
scala> val train_set = splits(0).toDS.cache
train_set: org.apache.spark.sql.Dataset[(Double, org.apache.spark.ml.linalg.Vector)] = [_1: double, _2: vector]
scala> val test_set = splits(1).toDS.cache
test_set: org.apache.spark.sql.Dataset[(Double, org.apache.spark.ml.linalg.Vector)] = [_1: double, _2: vector]

4.创建LinearRegression对象,并设置模型参数。这里设置类LabelCol和FeaturesCol列,默认为“label”和“features”,而我们的数据是"_1"和”_2“。

scala> val lir = new LinearRegression
lir: org.apache.spark.ml.regression.LinearRegression = linReg_c4e70a01bcd3
scala> lir.setFeaturesCol("_2")
res0: org.apache.spark.ml.regression.LinearRegression = linReg_c4e70a01bcd3
scala> lir.setLabelCol("_1")
res1: org.apache.spark.ml.regression.LinearRegression = linReg_c4e70a01bcd3

5.训练模型

val model = lir.fit(train_set)
16/08/26 09:45:16 WARN Executor: 1 block locks were not released by TID = 0:
[rdd_9_0]
16/08/26 09:45:16 WARN WeightedLeastSquares: regParam is zero, which might cause numerical instability and overfitting.
model: org.apache.spark.ml.regression.LinearRegressionModel = linReg_c4e70a01bcd3

6.模型评估

scala> val res = model.transform(test_set)
res: org.apache.spark.sql.DataFrame = [_1: double, _2: vector ... 1 more field]
scala> import org.apache.spark.ml.evaluation._
import org.apache.spark.ml.evaluation._
scala> val eva = new RegressionEvaluator
eva: org.apache.spark.ml.evaluation.RegressionEvaluator = regEval_8fc6cce63aa9
scala> eva.setLabelCol("_1")
res6: eva.type = regEval_8fc6cce63aa9
scala> eva.setMetricName("mse")
res7: eva.type = regEval_8fc6cce63aa9
scala> eva.evaluate(res)
res8: Double = 0.027933653533088666