2016-06-23 8 views
0

Dies ist mein erstes Mal mit Mlib in Spark. Ich versuche, einen Zufalls WaldSpark Random Forest Fehler

model = RandomForest.trainClassifier(trainingData, numClasses=2, categoricalFeaturesInfo={}, 
           numTrees=3, featureSubsetStrategy="auto", 
           impurity='gini', maxDepth=4, maxBins=40) 

aber ich den Fehler

Py4JJavaError        Traceback (most recent call last) 
<ipython-input-49-5a8de04ff14b> in <module>() 
    4 model = RandomForest.trainClassifier(trainingData, numClasses=2,   categoricalFeaturesInfo={}, 
    5          numTrees=2, featureSubsetStrategy="auto", 
----> 6          impurity='gini', maxDepth=4, maxBins=40) 

/opt/spark/current/python/pyspark/mllib/tree.py in trainClassifier(cls,data, numClasses, categoricalFeaturesInfo, numTrees, featureSubsetStrategy, impurity, maxDepth, maxBins, seed) 
377   return cls._train(data, "classification", numClasses, 
378       categoricalFeaturesInfo, numTrees, featureSubsetStrategy, impurity, 
--> 379       maxDepth, maxBins, seed) 
380 
381  @classmethod 

/opt/spark/current/python/pyspark/mllib/tree.py in _train(cls, data, algo, numClasses, categoricalFeaturesInfo, numTrees, featureSubsetStrategy, impurity, maxDepth, maxBins, seed) 
294   model = callMLlibFunc("trainRandomForestModel", data, algo, numClasses, 
295        categoricalFeaturesInfo, numTrees, featureSubsetStrategy, impurity, 
--> 296        maxDepth, maxBins, seed) 
297   return RandomForestModel(model) 
298 

/opt/spark/current/python/pyspark/mllib/common.py in callMLlibFunc(name, *args) 
128  sc = SparkContext.getOrCreate() 
129  api = getattr(sc._jvm.PythonMLLibAPI(), name) 
--> 130  return callJavaFunc(sc, api, *args) 
131 
132 

/opt/spark/current/python/pyspark/mllib/common.py in callJavaFunc(sc, func, *args) 
121  """ Call Java Function """ 
122  args = [_py2java(sc, a) for a in args] 
--> 123  return _java2py(sc, func(*args)) 
124 
125 

/opt/spark/current/python/lib/py4j-0.9-src.zip/py4j/java_gateway.py in __call__(self, *args) 
811   answer = self.gateway_client.send_command(command) 
812   return_value = get_return_value(
--> 813    answer, self.gateway_client, self.target_id, self.name) 
814 
815   for temp_arg in temp_args: 

/opt/spark/current/python/pyspark/sql/utils.py in deco(*a, **kw) 
43  def deco(*a, **kw): 
44   try: 
---> 45    return f(*a, **kw) 
46   except py4j.protocol.Py4JJavaError as e: 
47    s = e.java_exception.toString() 

/opt/spark/current/python/lib/py4j-0.9-src.zip/py4j/protocol.py in get_return_value(answer, gateway_client, target_id, name) 
306     raise Py4JJavaError(
307      "An error occurred while calling {0}{1}{2}.\n". 
--> 308      format(target_id, ".", name), value) 
309    else: 
310     raise Py4JError(

Py4JJavaError: An error occurred while calling o1123.trainRandomForestModel. 
: org.apache.spark.SparkException: Job aborted due to stage failure: Task 0 in stage 94.0 failed 4 times, most recent failure: Lost task 0.3 in stage 94.0 (TID 680, mapr5-217.jiwiredev.com): java.lang.RuntimeException: No bin was found for continuous feature. This error can occur when given invalid data values (such as NaN). Feature index: 20. Feature value: 1670.0 
at org.apache.spark.mllib.tree.impl.TreePoint$.findBin(TreePoint.scala:131) 
at org.apache.spark.mllib.tree.impl.TreePoint$.org$apache$spark$mllib$tree$impl$TreePoint$$labeledPointToTreePoint(TreePoint.scala:84) 
at org.apache.spark.mllib.tree.impl.TreePoint$$anonfun$convertToTreeRDD$2.apply(TreePoint.scala:66) 
at org.apache.spark.mllib.tree.impl.TreePoint$$anonfun$convertToTreeRDD$2.apply(TreePoint.scala:65) 
at scala.collection.Iterator$$anon$11.next(Iterator.scala:328) 
at scala.collection.Iterator$$anon$11.next(Iterator.scala:328) 
at org.apache.spark.storage.MemoryStore.unrollSafely(MemoryStore.scala:283) 
at org.apache.spark.CacheManager.putInBlockManager(CacheManager.scala:171) 
at org.apache.spark.CacheManager.getOrCompute(CacheManager.scala:78) 
at org.apache.spark.rdd.RDD.iterator(RDD.scala:268) 
at org.apache.spark.rdd.MapPartitionsRDD.compute(MapPartitionsRDD.scala:38) 
at org.apache.spark.rdd.RDD.computeOrReadCheckpoint(RDD.scala:306) 
at org.apache.spark.rdd.RDD.iterator(RDD.scala:270) 
at org.apache.spark.scheduler.ShuffleMapTask.runTask(ShuffleMapTask.scala:73) 
at org.apache.spark.scheduler.ShuffleMapTask.runTask(ShuffleMapTask.scala:41) 
at org.apache.spark.scheduler.Task.run(Task.scala:89) 
at org.apache.spark.executor.Executor$TaskRunner.run(Executor.scala:214) 
at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1142) 
at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:617) 
at java.lang.Thread.run(Thread.java:745) 

Driver stacktrace: 
at org.apache.spark.scheduler.DAGScheduler.org$apache$spark$scheduler$DAGScheduler$$failJobAndIndependentStages(DAGScheduler.scala:1431) 
at org.apache.spark.scheduler.DAGScheduler$$anonfun$abortStage$1.apply(DAGScheduler.scala:1419) 
at org.apache.spark.scheduler.DAGScheduler$$anonfun$abortStage$1.apply(DAGScheduler.scala:1418) 
at scala.collection.mutable.ResizableArray$class.foreach(ResizableArray.scala:59) 
at scala.collection.mutable.ArrayBuffer.foreach(ArrayBuffer.scala:47) 
at org.apache.spark.scheduler.DAGScheduler.abortStage(DAGScheduler.scala:1418) 
at org.apache.spark.scheduler.DAGScheduler$$anonfun$handleTaskSetFailed$1.apply(DAGScheduler.scala:799) 
at org.apache.spark.scheduler.DAGScheduler$$anonfun$handleTaskSetFailed$1.apply(DAGScheduler.scala:799) 
at scala.Option.foreach(Option.scala:236) 
at org.apache.spark.scheduler.DAGScheduler.handleTaskSetFailed(DAGScheduler.scala:799) 
at org.apache.spark.scheduler.DAGSchedulerEventProcessLoop.doOnReceive(DAGScheduler.scala:1640) 
at org.apache.spark.scheduler.DAGSchedulerEventProcessLoop.onReceive(DAGScheduler.scala:1599) 
at org.apache.spark.scheduler.DAGSchedulerEventProcessLoop.onReceive(DAGScheduler.scala:1588) 
at org.apache.spark.util.EventLoop$$anon$1.run(EventLoop.scala:48) 
at org.apache.spark.scheduler.DAGScheduler.runJob(DAGScheduler.scala:620) 
at org.apache.spark.SparkContext.runJob(SparkContext.scala:1832) 
at org.apache.spark.SparkContext.runJob(SparkContext.scala:1845) 
at org.apache.spark.SparkContext.runJob(SparkContext.scala:1858) 
at org.apache.spark.SparkContext.runJob(SparkContext.scala:1929) 
at org.apache.spark.rdd.RDD$$anonfun$collect$1.apply(RDD.scala:927) 
at org.apache.spark.rdd.RDDOperationScope$.withScope(RDDOperationScope.scala:150) 
at org.apache.spark.rdd.RDDOperationScope$.withScope(RDDOperationScope.scala:111) 
at org.apache.spark.rdd.RDD.withScope(RDD.scala:316) 
at org.apache.spark.rdd.RDD.collect(RDD.scala:926) 
at org.apache.spark.rdd.PairRDDFunctions$$anonfun$collectAsMap$1.apply(PairRDDFunctions.scala:741) 
at org.apache.spark.rdd.PairRDDFunctions$$anonfun$collectAsMap$1.apply(PairRDDFunctions.scala:740) 
at org.apache.spark.rdd.RDDOperationScope$.withScope(RDDOperationScope.scala:150) 
at org.apache.spark.rdd.RDDOperationScope$.withScope(RDDOperationScope.scala:111) 
at org.apache.spark.rdd.RDD.withScope(RDD.scala:316) 
at org.apache.spark.rdd.PairRDDFunctions.collectAsMap(PairRDDFunctions.scala:740) 
at org.apache.spark.mllib.tree.DecisionTree$.findBestSplits(DecisionTree.scala:651) 
at org.apache.spark.mllib.tree.RandomForest.run(RandomForest.scala:233) 
at org.apache.spark.mllib.tree.RandomForest$.trainClassifier(RandomForest.scala:289) 
at org.apache.spark.mllib.api.python.PythonMLLibAPI.trainRandomForestModel(PythonMLLibAPI.scala:751) 
at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) 
at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62) 
at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43) 
at java.lang.reflect.Method.invoke(Method.java:497) 
at py4j.reflection.MethodInvoker.invoke(MethodInvoker.java:231) 
at py4j.reflection.ReflectionEngine.invoke(ReflectionEngine.java:381) 
at py4j.Gateway.invoke(Gateway.java:259) 
at py4j.commands.AbstractCommand.invokeMethod(AbstractCommand.java:133) 
at py4j.commands.CallCommand.execute(CallCommand.java:79) 
at py4j.GatewayConnection.run(GatewayConnection.java:209) 
at java.lang.Thread.run(Thread.java:745) 
Caused by: java.lang.RuntimeException: No bin was found for continuous feature. This error can occur when given invalid data values (such as NaN). Feature index: 20. Feature value: 1670.0 
at org.apache.spark.mllib.tree.impl.TreePoint$.findBin(TreePoint.scala:131) 
at org.apache.spark.mllib.tree.impl.TreePoint$.org$apache$spark$mllib$tree$impl$TreePoint$$labeledPointToTreePoint(TreePoint.scala:84) 
at org.apache.spark.mllib.tree.impl.TreePoint$$anonfun$convertToTreeRDD$2.apply(TreePoint.scala:66) 
at org.apache.spark.mllib.tree.impl.TreePoint$$anonfun$convertToTreeRDD$2.apply(TreePoint.scala:65) 
at scala.collection.Iterator$$anon$11.next(Iterator.scala:328) 
at scala.collection.Iterator$$anon$11.next(Iterator.scala:328) 
at org.apache.spark.storage.MemoryStore.unrollSafely(MemoryStore.scala:283) 
at org.apache.spark.CacheManager.putInBlockManager(CacheManager.scala:171) 
at org.apache.spark.CacheManager.getOrCompute(CacheManager.scala:78) 
at org.apache.spark.rdd.RDD.iterator(RDD.scala:268) 
at org.apache.spark.rdd.MapPartitionsRDD.compute(MapPartitionsRDD.scala:38) 
at org.apache.spark.rdd.RDD.computeOrReadCheckpoint(RDD.scala:306) 
at org.apache.spark.rdd.RDD.iterator(RDD.scala:270) 
at org.apache.spark.scheduler.ShuffleMapTask.runTask(ShuffleMapTask.scala:73) 
at org.apache.spark.scheduler.ShuffleMapTask.runTask(ShuffleMapTask.scala:41) 
at org.apache.spark.scheduler.Task.run(Task.scala:89) 
at org.apache.spark.executor.Executor$TaskRunner.run(Executor.scala:214) 
at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1142) 
at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:617) 
... 1 more 

ich bin Fütterung ein LabeledPoint bekommen zu laufen. Bitte lassen Sie mich wissen, ob ich einen anderen Code posten sollte.

Jede Auslegung würde sehr

Antwort

0

java.lang.RuntimeException geschätzt werden: Kein bin wurde für die kontinuierliche Funktion gefunden.

Sie müssen gültige Buckets für die Eingabedaten bereitstellen. 1671 befindet sich nicht in einem der Buckets, die für die Feature-Ordinalzahl 20 definiert sind.

/** 
    * Find discretized value for one (labeledPoint, feature). 
    * 
    * NOTE: We cannot use Bucketizer since it handles split thresholds differently than the old 
    *  (mllib) tree API. We want to maintain the same behavior as the old tree API. 
    * 
    * @param featureArity 0 for continuous features; number of categories for categorical features. 
    */ 
    private def findBin(
     featureIndex: Int, 
     labeledPoint: LabeledPoint, 
     featureArity: Int, 
     thresholds: Array[Double]): Int = { 
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