I'm trying to parallelize a machine learning prediction task via Spark. I've used Spark successfully a number of times before on other tasks and have faced no issues with parallelization before.
In this particular task, my cluster has 4 workers. I'm calling mapPartitions on an RDD with 4 partitions. The map function loads a model from disk (a bootstrap script distributes all that is needed to do this; I've verified it exists on each slave machine) and performs prediction on data points in the RDD partition.
The code runs, but only utilizes one executor. The logs for the other executors say "Shutdown hook called". On different runs of the code, it uses different machines, but only one at a time.
How can I get Spark to use multiple machines at once?
I'm using PySpark on Amazon EMR via Zeppelin notebook. Code snippets are below.
%spark.pyspark sc.addPyFile("/home/hadoop/MyClassifier.py") sc.addPyFile("/home/hadoop/ModelLoader.py") from ModelLoader import ModelLoader from MyClassifier import MyClassifier def load_models(): models_path = '/home/hadoop/models' model_loader = ModelLoader(models_path) models = model_loader.load_models() return models def process_file(file_contents, models): filename = file_contents filetext = file_contents pred = MyClassifier.predict(filetext, models) return (filename, pred) def process_partition(file_list): models = load_models() for file_contents in file_list: pred = process_file(file_contents, models) yield pred all_contents = sc.wholeTextFiles("s3://some-path", 4) processed_pages = all_contents.mapPartitions(process_partition) processedDF = processed_pages.toDF(["filename", "pred"]) processedDF.write.json("s3://some-other-path", mode='overwrite')
There are four tasks as expected, but they all run on the same executor!
I have the cluster running and can provide logs as available in Resource Manager. I just don't know yet where to look.