【发布时间】:2016-08-26 09:10:41
【问题描述】:
我是一名 Spark 新手,试图在我的数据集上编辑和应用此电影推荐教程 (https://databricks-training.s3.amazonaws.com/movie-recommendation-with-mllib.html)。但它一直抛出此错误:
ValueError: Can not reduce() empty RDD
这是计算模型的均方根误差的函数:
def computeRmse(model, data, n):
"""
Compute RMSE (Root Mean Squared Error).
"""
predictions = model.predictAll(data.map(lambda x: (x[0], x[1])))
print predictions.count()
print predictions.first()
print "predictions above"
print data.count()
print data.first()
print "validation data above"
predictionsAndRatings = predictions.map(lambda x: ((x[0], x[1]), x[2])) \
#LINE56
.join(data.map(lambda line: line.split(‘,’) ).map(lambda x: ((x[0], x[1]), x[2]))) \
.values()
print predictionsAndRatings.count()
print "predictions And Ratings above"
#LINE63
return sqrt(predictionsAndRatings.map(lambda x: (x[0] - x[1]) ** 2).reduce(add) / float(n))
model = ALS.train(training, rank, numIter, lambda)。 data 是验证数据集。 训练和验证集最初来自 rating.txt 文件,格式为:userID,productID,rating,ratingopID
这些是输出的一部分:
879
...
Rating(user=0, product=656, rating=4.122132631144641)
predictions above
...
1164
...
(u'640085', u'1590', u'5')
validation data above
...
16/08/26 12:47:18 INFO DAGScheduler: Registering RDD 259 (join at /path/myapp/MyappALS.py:56)
16/08/26 12:47:18 INFO DAGScheduler: Got job 20 (count at /path/myapp/MyappALS.py:59) with 12 output partitions
16/08/26 12:47:18 INFO DAGScheduler: Final stage: ResultStage 238 (count at /path/myapp/MyappALS.py:59)
16/08/26 12:47:18 INFO DAGScheduler: Parents of final stage: List(ShuffleMapStage 237)
16/08/26 12:47:18 INFO DAGScheduler: Missing parents: List(ShuffleMapStage 237)
16/08/26 12:47:18 INFO DAGScheduler: Submitting ShuffleMapStage 237 (PairwiseRDD[259] at join at /path/myapp/MyappALS.py:56), which has no missing parents
....
0
predictions And Ratings above
...
Traceback (most recent call last):
File "/path/myapp/MyappALS.py", line 130, in <module>
validationRmse = computeRmse(model, validation, numValidation)
File "/path/myapp/MyappALS.py", line 63, in computeRmse
return sqrt(predictionsAndRatings.map(lambda x: (x[0] - x[1]) ** 2).reduce(add) / float(n))
File "/spark/python/lib/pyspark.zip/pyspark/rdd.py", line 805, in reduce
ValueError: Can not reduce() empty RDD
所以从 count() 我确定初始 RDD 不是空的。
比INFO log Registering RDD 259 (join at /path/myapp/MyappALS.py:56) 是否意味着启动了join作业?
我错过了什么吗? 谢谢。
【问题讨论】:
-
你确定你的加入不会产生空集吗?加入将
Return an RDD containing all pairs of elements with matching keys in self and other。并且示例显示它只会加入那些有key的人出现在两个集合中。 -
我设法解决了这个问题,并且函数 computeRMSE 确实给出了输出,但是在主程序中,我正在运行一个循环,在每次迭代中更改模型的参数,但它会因输出而崩溃第一次迭代后的内存错误!
标签: apache-spark pyspark rdd apache-spark-mllib