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i am very much new to hadoop,can any one give me a simple program on how to skip bad recors in hadoop map/reduce?

Thanks in Advance

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What do you mean by bad records?What's the criteria to decide that? –  Tariq Sep 11 '13 at 12:39
Do you mean if the input is corrupt? Then have a look at . If an exception is thrown in your mapper/reducer, catch it, log it and you may also increment a counter specific for that error so that you can see the stats when the job finishes –  Lorand Bendig Sep 11 '13 at 14:56
if some values are missing in my record,i can say that particular record is a bad record,i want to skip that record instead of processing it and show that particular record is a bad record in the logs. –  user1585111 Sep 11 '13 at 17:29
Corrupt record and bad record are 2 different things. If a value is missing how are you going to skipping it. By virtue of being absent it is automatically skipped. Could you please share some sample data with some more details? That would be really helpful. –  Tariq Sep 11 '13 at 19:54
@Tariq i was going through skipping bad records in hadoop definitive is the link to go… –  user1585111 Sep 12 '13 at 17:39

3 Answers 3

Since you are filtering records based on missingness of fields, this is logic suitable for your Mapper implementation. A Java API Mapper could look something like this:

public class FilteringMapper extends Mapper<LongWritable, Text, LongWritable, Text>{

private static final Logger _logger = Logger.getLogger(FilteringMapper.class);

protected void map(LongWritable key, Text value, Context context) {

    if(recordIsBad(value))<log record data you care about>);
        context.write(key, value);


private boolean recordIsBad(Text record){
    //return true if record is bad by your standards


This Mapper would only filter based on your standards. If you need further transformations of data in the Mapper this is easily added.

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The best way to handle corrupt records is in your mapper or reducer code. You can detect the bad record and ignore it, or you can abort the job by throwing an exception. You can also count the total number of bad records in the job using counters to see how widespread the problem is. In rare cases, though, you can’t handle the problem because there is a bug in a third party library that you can’t work around in your mapper or reducer. In these cases, you can use Hadoop’s optional skipping mode for automatically skipping bad records.
When skipping mode is enabled, tasks report the records being processed back to the tasktracker. When the task fails, the tasktracker retries the task, skipping the records that caused the failure. Because of the extra network traffic and bookkeeping to maintain the failed record ranges, skipping mode is turned on for a task only after it has failed twice.

Thus, for a task consistently failing on a bad record, the tasktracker runs the following task attempts with these outcomes:

  1. Task fails.

  2. Task fails.

  3. Skipping mode is enabled. Task fails, but failed record is stored by the tasktracker.

  4. Skipping mode is still enabled. Task succeeds by skipping the bad record that failed in the previous attempt.

Skipping mode is off by default; you enable it independently for map and reduce tasks using the SkipBadRecords class. It’s important to note that skipping mode can detect only one bad record per task attempt, so this mechanism is appropriate only for detecting occasional bad records (a few per task, say). You may need to increase the maximum number of task attempts (via and mapred.reduce.max.attempts) to give skipping mode enough attempts to detect and skip all the bad records in an input split. Bad records that have been detected by Hadoop are saved as sequence files in the job’s output directory under the _logs/skip subdirectory. These can be inspected for diagnostic purposes after the job has completed (using hadoop fs -text, for example).

Text from Definitive Guide

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