13

I have zip files that I would like to open 'through' Spark. I can open .gzip file no problem because of Hadoops native Codec support, but am unable to do so with .zip files.

Is there an easy way to read a zip file in your Spark code? I've also searched for zip codec implementations to add to the CompressionCodecFactory, but am unsuccessful so far.

22

There was no solution with python code and I recently had to read zips in pyspark. And, while searching how to do that I came across this question. So, hopefully this'll help others.

import zipfile
import io

def zip_extract(x):
    in_memory_data = io.BytesIO(x[1])
    file_obj = zipfile.ZipFile(in_memory_data, "r")
    files = [i for i in file_obj.namelist()]
    return dict(zip(files, [file_obj.open(file).read() for file in files]))


zips = sc.binaryFiles("hdfs:/Testing/*.zip")
files_data = zips.map(zip_extract).collect()

In the above code I returned a dictionary with filename in the zip as a key and the text data in each file as the value. you can change it however you want to suit your purposes.

2
  • 1
    This worked fine for my not-so-large zip files. Other fun part is that once you have the binary of the unpacked zip file, there's no easy way to get it to hdfs or s3. What I had to do was to write it to a local file using python and then take it from there and move it to s3.
    – pcv
    Apr 3 '19 at 14:00
  • Is there a way I can apply same logic for bz2 files. I am trying to not able to convert rdd to BytesIO Aug 23 '21 at 14:11
5

@user3591785 pointed me in the correct direction, so I marked his answer as correct.

For a bit more detail, I was able to search for ZipFileInputFormat Hadoop, and came across this link: http://cotdp.com/2012/07/hadoop-processing-zip-files-in-mapreduce/

Taking the ZipFileInputFormat and its helper ZipfileRecordReader class, I was able to get Spark to perfectly open and read the zip file.

    rdd1  = sc.newAPIHadoopFile("/Users/myname/data/compressed/target_file.ZIP", ZipFileInputFormat.class, Text.class, Text.class, new Job().getConfiguration());

The result was a map with one element. The file name as key, and the content as the value, so I needed to transform this into a JavaPairRdd. I'm sure you could probably replace Text with BytesWritable if you want, and replace the ArrayList with something else, but my goal was to first get something running.

JavaPairRDD<String, String> rdd2 = rdd1.flatMapToPair(new PairFlatMapFunction<Tuple2<Text, Text>, String, String>() {

    @Override
    public Iterable<Tuple2<String, String>> call(Tuple2<Text, Text> textTextTuple2) throws Exception {
        List<Tuple2<String,String>> newList = new ArrayList<Tuple2<String, String>>();

        InputStream is = new ByteArrayInputStream(textTextTuple2._2.getBytes());
        BufferedReader br = new BufferedReader(new InputStreamReader(is, "UTF-8"));

        String line;

        while ((line = br.readLine()) != null) {

        Tuple2 newTuple = new Tuple2(line.split("\\t")[0],line);
            newList.add(newTuple);
        }
        return newList;
    }
});
5

Please try the code below:

using API sparkContext.newAPIHadoopRDD(
    hadoopConf,
    InputFormat.class,
    ImmutableBytesWritable.class, Result.class)
1
  • 5
    Thank you, but would it be possible to give a sample use case?
    – JeffLL
    Feb 18 '15 at 20:55
4

I've had a similar issue and I've solved with the following code

sparkContext.binaryFiles("/pathToZipFiles/*")
.flatMap { case (zipFilePath, zipContent) =>

        val zipInputStream = new ZipInputStream(zipContent.open())

        Stream.continually(zipInputStream.getNextEntry)
        .takeWhile(_ != null)
        .flatMap { zipEntry => ??? }
    }
2
4

This answer only collects the previous knowledge and I share my experience.

ZipFileInputFormat

I tried following @Tinku and @JeffLL answers, and use imported ZipFileInputFormat together with sc.newAPIHadoopFile API. But this did not work for me. And I do not know how would I put com-cotdp-hadoop lib on my production cluster. I am not responsible for the setup.

ZipInputStream

@Tiago Palma gave a good advice, but he did not finish his answer and I struggled quite some time to actually get the decompressed output.

By the time I was able to do so, I had to prepare all the theoretical aspects, which you can find in my answer: https://stackoverflow.com/a/45958182/1549135

But the missing part of the mentioned answer is reading the ZipEntry:

import java.util.zip.ZipInputStream;
import java.io.BufferedReader;
import java.io.InputStreamReader;   

sc.binaryFiles(path, minPartitions)
      .flatMap { case (name: String, content: PortableDataStream) =>
        val zis = new ZipInputStream(content.open)
        Stream.continually(zis.getNextEntry)
              .takeWhile(_ != null)
              .flatMap { _ =>
                  val br = new BufferedReader(new InputStreamReader(zis))
                  Stream.continually(br.readLine()).takeWhile(_ != null)
              }}
 
2
  • Can it extract large files. Which are like 10 to 12gigs Zip File. I am getting memory exception
    – loneStar
    May 7 '19 at 15:23
  • can we do it for 7z files
    – loneStar
    Oct 22 '20 at 18:58
2
using API sparkContext.newAPIHadoopRDD(hadoopConf, InputFormat.class, ImmutableBytesWritable.class, Result.class) 

File name should be pass using conf

conf=( new Job().getConfiguration())
conf.set(PROPERTY_NAME from your input formatter,"Zip file address")
sparkContext.newAPIHadoopRDD(conf, ZipFileInputFormat.class, Text.class, Text.class)

Please Find PROPERTY_NAME from your input formatter for set path

1
  • Using above code, I was able execute it successfully till 56MB, but it is getting fail for the file with size 338MB, I am end up with exception java.lang.OutOfMemoryError: Java heap space at java.util.Arrays.copyOf(Arrays.java:3236) at java.io.ByteArrayOutputStream.grow(ByteArrayOutputStream.java:118) at java.io.ByteArrayOutputStream.ensureCapacity(ByteArrayOutputStream.java:93) at java.io.ByteArrayOutputStream.write(ByteArrayOutputStream.java:153) at hydrograph.engine.spark.zipread.ZipFileRecordReader.nextKeyValue(ZipFileRecordReader.java:105)....... Apr 26 '17 at 14:18
0

Try:

from pyspark.sql import SparkSession
spark = SparkSession.builder.getOrCreate()
spark.read.text("yourGzFile.gz")
1
  • 1
    While this code may answer the question, providing additional context regarding how and/or why it solves the problem would improve the answer's long-term value.
    – mufazmi
    May 21 '21 at 18:25

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