0

I have some data in Map format and I want to convert them to tfrecords, using the beam pipeline. Here is my attempt to write the code. I have attempted this in python which works but I need to implement this in java as some business logic is there which I can't port to python. The corresponding working python implementation can be found here in this question.

import com.google.protobuf.ByteString;
import org.apache.beam.sdk.Pipeline;
import org.apache.beam.sdk.extensions.protobuf.ProtoCoder;
import org.apache.beam.sdk.io.TFRecordIO;
import org.apache.beam.sdk.transforms.Create;
import org.apache.beam.sdk.transforms.DoFn;
import org.apache.beam.sdk.transforms.ParDo;
import org.apache.commons.lang3.RandomStringUtils;
import org.tensorflow.example.BytesList;
import org.tensorflow.example.Example;
import org.tensorflow.example.Feature;
import org.tensorflow.example.Features;

import java.nio.charset.StandardCharsets;
import java.util.ArrayList;
import java.util.HashMap;
import java.util.List;
import java.util.Map;
import java.util.stream.Collectors;
import java.util.stream.IntStream;

public class Sample {

    static class Foo extends DoFn<Map<String, String>, Example> {

        public static Feature stringToFeature(String value) {
            ByteString byteString = ByteString.copyFrom(value.getBytes(StandardCharsets.UTF_8));
            BytesList bytesList = BytesList.newBuilder().addValue(byteString).build();
            return Feature.newBuilder().setBytesList(bytesList).build();
        }

        public void processElement(@Element Map<String, String> element, OutputReceiver<Example> receiver) {

            Features features = Features.newBuilder()
                    .putFeature("foo", stringToFeature(element.get("foo")))
                    .putFeature("bar", stringToFeature(element.get("bar")))
                    .build();

            Example example = Example
                    .newBuilder()
                    .setFeatures(features)
                    .build();

            receiver.output(example);
        }

    }

    private static Map<String, String> generateRecord() {
        String[] keys = {"foo", "bar"};
        return IntStream.range(0,keys.length)
                .boxed()
                .collect(Collectors
                        .toMap(i -> keys[i],
                                i -> RandomStringUtils.randomAlphabetic(8)));
    }

    public static void main(String[] args) {

        List<Map<String, String>> records = new ArrayList<>();
        for (int i=0; i<10; i++) {
            records.add(generateRecord());
        }

        System.out.println(records);
        Pipeline p = Pipeline.create();

        p.apply("Input creation", Create.of(records))
                .apply("Encode to Exampple", ParDo.of(new Foo())).setCoder(ProtoCoder.of(Example.class))
                .apply("Write to disk",
                        TFRecordIO.write()
                                .to("output")
                                .withNumShards(2)
                                .withSuffix(".tfrecord"));

        p.run();


    }
}

For the above code I am getting the following error at compile time

Error:(70, 17) java: no suitable method found for apply(java.lang.String,org.apache.beam.sdk.io.TFRecordIO.Write)
    method org.apache.beam.sdk.values.PCollection.<OutputT>apply(org.apache.beam.sdk.transforms.PTransform<? super org.apache.beam.sdk.values.PCollection<org.tensorflow.example.Example>,OutputT>) is not applicable
      (cannot infer type-variable(s) OutputT
        (actual and formal argument lists differ in length))
    method org.apache.beam.sdk.values.PCollection.<OutputT>apply(java.lang.String,org.apache.beam.sdk.transforms.PTransform<? super org.apache.beam.sdk.values.PCollection<org.tensorflow.example.Example>,OutputT>) is not applicable
      (cannot infer type-variable(s) OutputT
        (argument mismatch; org.apache.beam.sdk.io.TFRecordIO.Write cannot be converted to org.apache.beam.sdk.transforms.PTransform<? super org.apache.beam.sdk.values.PCollection<org.tensorflow.example.Example>,OutputT>))
0

input to TFRecordIO.write() should be byte[] so making following changes worked for me.

static class Foo extends DoFn<Map<String, String>, byte[]> {

    public static Feature stringToFeature(String value) {
        ByteString byteString = ByteString.copyFrom(value.getBytes(StandardCharsets.UTF_8));
        BytesList bytesList = BytesList.newBuilder().addValue(byteString).build();
        return Feature.newBuilder().setBytesList(bytesList).build();
    }

    public void processElement(@Element Map<String, String> element, OutputReceiver<byte[]> receiver) {

        Features features = Features.newBuilder()
                .putFeature("foo", stringToFeature(element.get("foo")))
                .putFeature("bar", stringToFeature(element.get("bar")))
                .build();

        Example example = Example
                .newBuilder()
                .setFeatures(features)
                .build();

        receiver.output(example.toByteArray());
    }

}
-1

You need to convert the input to TFRecordIO to be byte[]

You can do it by using a transform like

static class StringToByteArray extends DoFn<String, byte[]> {
 @ProcessElement
 public void processElement(ProcessContext c) {
  c.output(c.element().getBytes(Charsets.UTF_8));
 }
} 
5
  • Isn't that a job of protcoder, which handles the serialisation of protobuf messages Apr 20 '20 at 9:05
  • Coders do not change element type. They are only used for efficient coding and decoding of the element when elements are serialized and deserialized and type checking. If you check the documentation of TFRecordIO.Write, It takes a byte[] as input. For reference please check following documentation beam.apache.org/documentation/programming-guide/… and beam.apache.org/releases/javadoc/2.4.0/org/apache/beam/sdk/io/…
    – Ankur
    Apr 20 '20 at 19:37
  • Great to know that it worked. Can you please accept the answer as it solves the problem in order to help the community.
    – Ankur
    Apr 22 '20 at 23:01
  • @bruce_wayne, I kind of have a similar requirement , so I was trying to compile your code, but got compile time Error : Error:(66, 82) java: incompatible types: java.lang.Class<org.tensorflow.example.Example> cannot be converted to org.apache.beam.sdk.coders.Coder<byte[]> Any Idea on this ? Jun 10 '20 at 10:37
  • The return type of processElement should be bytes not the objects, check my answer below stackoverflow.com/a/61367583/6082378 . Jun 11 '20 at 11:58

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.