3

The data is stored in the following forms:

    data/file1_features.mat
    data/file1_labels.txt
    data/file2_features.mat
    data/file2_labels.txt
    ...
    data/file100_features.mat
    data/file100_labels.txt

Each data/file*_features.mat stores the features of some samples and each row is a sample. Each data/file*_labels.txt stores the labels of those samples and each row is a number (e.g., 1,2,3,...). In the whole 100 files, there are total about 80 million samples.

In Spark, how to access this data set?

I have checked the spark-2.0.0-preview/examples/src/main/python/mllib/random_forest_classification_example.py. It has the following lines:

    data = MLUtils.loadLibSVMFile(sc, 'data/mllib/sample_libsvm_data.txt')
    (trainingData, testData) = data.randomSplit([0.7, 0.3])

I run this example in ./bin/pyspark, it shows the data object is a PythonRDD.

    PythonRDD[32] at RDD at PythonRDD.scala:48

The data/mllib/sample_libsvm_data.txt is just one file. In my case, there are many files. Is there any RDD in Spark to handle this case conveniently? Does it need to merge all 100 files to one big file and process it as the example? I want to use the Spark engine to scale the data set (mean-std normalization or min-max normalization).

  • i see there are two type of file one with .mat extension and another with .txt extension...do you want to load all files into single rdd for processing? or want to load only txt/mat file? – Shashi May 18 '16 at 19:57
  • @Shashi, yes, I want to load both types of data. The *.mat files are the features and the *.txt files are the labels. If I understand correctly, I think the data has been sharded. Thus, I wonder if we should write some simple interface to control the *.mat files (e.g. using h5py) to load them into numpy array, then feed them into the RDD in Spark. Then in the pyspark, we can use the RDD. – mining May 18 '16 at 23:05
1

Simply point

   dir = "<path_to_data>/data"
   sc.textFile(dir)

Spark automatically picks up all of the files inside that directory

  • thank you! I also want to load the *.mat files. Maybe I should store the features into *.txt format. Your solution is a good start. – mining May 18 '16 at 23:07
  • you do not need to rename it will already pick them up – javadba May 18 '16 at 23:09
  • Does Spark already support reading MATLAB files? I think we should first convert the MATLAB matrix into *.txt format. – mining May 18 '16 at 23:40
  • No - i did not "get" your meaning. Semantics of the file are up to you to provide. My point was only that all of the files - regardless of extension - would get sucked in. You will need to ensure compatibility of the format of the file and the intended usage by the spark worker app/code. – javadba May 18 '16 at 23:54
  • I think I didn't catch your ideas completely. I'm not familiar with Spark. I think I should get the basic knowledge about RDD. After searching, I find this post [blog.madhukaraphatak.com/matfile-to-rdd/] and this post [stackoverflow.com/questions/24029873/… might be related to this question. If I understand correctly, we should first read the batch data into memory, then merge them into a large RDD. But this seems to not right for RDD. With my limited information on Spark, I think RDD might be just some file keys in a map. – mining May 19 '16 at 0:08
1

If you want load specific file type for processing then you can use regular expression for loading files into RDD.

dir = "data/*.txt"

sc.textFile(dir)

Spark will all files ending with txt extension.

  • thank you! I also want to load the *.mat files. Maybe I should store the features into *.txt format. Your solution is a good start. – mining May 18 '16 at 23:08

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