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0

Well, this might sound stupid, but if we have a really small table which we query, we can probably get away with reading the values using the HBase Java API (even in a MapReduce job) and then storing them in static variables. That way, we have to read those values only once per Mapper and it won't be much of an overhead.


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I think your variable hasn't been initilized, that is why the NullPointerException is thrown.


2

You're most likely not running the configure method before, so the int[] results is still null when you call results.length. To be able to access its methods and variables, you'll have to initialize it before, but because your errors are showing a null pointer exception, it's because the int[] results has not been initialized, so you need to make sure you're ...


1

The problem is that the results variable is null on the line that throws the NPE. Now you should verify this by testing the variables for null and/or their contents before the offending line, and then look back in your code to see why. Perhaps you're calling reduce before calling the configure method, but hard to tell based on what you've posted. Most ...


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Basically found a solution to the problem that I stated above. r.file <- hdfs.file(hdfsFilePath,"r") from.dfs( mapreduce( input = as.matrix(hdfs.read.text.file(r.file)), input.format = "csv", map = ... )) Below is the entire modified function: transfer.csvfile.hdfs.to.hdfs.reduced = ...


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Try this, You can access the price column by, D = FILTER C BY $3 > 2.0; or D = FILTER C BY B::price > 2.0;


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In recent Hadoop (e.g. >=0.2 up to 2.4+) you would set this kind of options during the job configuration: conf = new JobConf(MyJarClass); conf.set("myStringOption", "myStringValue"); conf.set("myIntOption", 42); And retrieve those options in the configure() method ofmapper/reducer classes: public static class MyMapper extends MapReduceBase implements ...


2

Whenever you have an array in your document, the aggregate method is your friend :) db.foo.aggregate([ // De-normalize the 'modifications' array {"$unwind":"$modifications"}, // Sort by 'modifications.modified' descending {"$sort":{"modifications.modified":-1}}, // Pick the first one i.e., the max {"$limit":1} ]) Output: { ...


1

I think I see where your confusion is coming from. I'll attempt to clear it up. HDFS slices your file up into blocks. These are physical partitions of the file. MapReduce creates logical splits on top of these blocks. These splits are defined based on a number of parameters, with block boundaries and locations being a huge factor. You can set your ...


1

Just like all MongoDB operations, a MapReduce always operates only on a single collection and can not obtain info from another one. So you first step needs to be to dump both collections into one. Your documents have different _id's, so it should not be a problem for them to coexist in the same collection. Then you do a MapReduce where the map function ...


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The documentation has the format: http://wiki.apache.org/hadoop/AmazonS3 s3n://ID:SECRET@BUCKET/Path


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Try this : --Load data inputdata = LOAD '/input.txt' using JsonLoader('Name:chararray,elementinfo:(fraction:chararray),destionation:chararray,source:chararray'); --Group data groupedByAll = group inputdata all; store groupedByAll into '/OUT/pig' using PigStorage(','); Now your output looks : ...


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The solution here apparently is either upgrade to 0.14.0 (or patch the old version) or not use HCatalog but read the metastore directly and manually add each partition subdirectory to MultipleInputs. Personally since I can't upgrade easily and the subpartitioning is too much work, I just focused on optimising the jobs in other ways and be contempt with ...


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I solved this problem by changing the php server user to hduser (user which has permission to write files in hdfs). without changing this user only the commands which reads from the hdfs were working and not the one which needs to create the files or write on hdfs. When i tried to run the command for creating the directory in hdfs through my php script, I ...


0

I encounter the same error: ERROR [RMCommunicator Allocator] org.apache.hadoop.mapreduce.v2.app.rm.RMContainerAllocator: Container complete event for unknown container id container_1406174606649_0001_01_000154 It may related to mapred.child.java.opts property in mapred-site.xml. I used to set it like this: <property> ...


1

Map-only jobs work differently than Map-and-Reduce jobs. It's not inconsistent, just different. how will I be able to get the intermediate file that has both partitions and sorted data from the mapper output. You can't. There isn't a hook to be able to get pieces of data from intermediate stages of MapReduce. Same is true for getting data after the ...


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Error code 1 is a generic error for Hadoop Streaming. You can get this error code for two main reasons: Your Mapper and Reducer scripts are not executable (include the #!/usr/bin/python at the beginning of the script). Your Python program is simply written wrong - you could have a syntax error or logical bug. Unfortunately, error code 1 does not give ...


1

Ok, so it looks like I've answered my own question. You can simply do pipe.groupBy('sex) {_.toList[(Int, Int)](('weight, 'age) -> 'list)} which results in a list of tuples. Would've saved me a lot of time if the Fields API Reference mentioned this.


2

You have not defined the set method in MyTwoDArrayWritable, that is why that error is shown. Instead of calling array.set, you should use the method you have already defined which does exactly what you need: setValues, so replace array.set(myInnerArray,myInnerArray1); with array.setValues(myInnerArray,myInnerArray1);


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Not sure what you think your example has to do with the query you want to run. What you really want to do here is "emit" each of those index values as a "key" and then just let the "reducer" sum up the occurrences: db.collection.mapReduce( // mapper function () { var mkeys = ['first_case','second_case']; var test_data = ...


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I tried to run the MapReduce job by running the command line command but it is not working, however if i run a different command e.g. running the ls command for hdfs, it is running fine but when i run the command to start the mapreduce job through php it is not. can you please guide me?


0

I fixed this compression problem by following steps: 1, fix the problem of “Unable to load native-hadoop library” Hadoop "Unable to load native-hadoop library for your platform" error on CentOS 2, install snappy http://code.google.com/p/snappy/ 3, copy /usr/local/lib/libsnappy* to $HADOOP_HOME/lib/native/ 4, configure the LD_LIBRARY_PATH in ...


0

It should be possible to use GraphLab Create (in Python) running on Hadoop to do what you describe. The clustering toolkit can help implement the K-Means part. You can coordinate/script it from your local machine and use the graphlab.deploy API to run the job on Hadoop.


1

Solution 1: Create a BaseJob class: public abstract class BaseJob extends Configured implements Tool { // method to set the configuration for the job and the mapper and the reducer classes protected Job setupJob(Transformation transformation, final Configuration conf) throws Exception { //Get the job object from the global configuration Job job = ...


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If you want to use your type as a key in Hadoop, it has to be comparable, (your type must be totally ordered), i.e. two instances a and b of DimensionWritable must be either equal, or a must be greater or less than b (whatever that means is up to the implementation). By implementing compareTo you define how instances can be naturally compared to each other. ...


0

I had the same problem and it got solved by removing some unneeded references in Maven (hadoop-common and hadoop-hdfs). I'm using hadoop 2.2.0 from Windows, connecting to Linux hadoop single-node cluster.


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Both ways are valid, you can edit the configuration in any way before starting the job.


0

It might be the default setting of mapreduce.output.fileoutputformat.compress.type which is set to RECORD. Basically it tries to compress every record, if your records are small text snippets (e.g. a token in your inverted index) it might end up in a larger size than it was before. You can try to set this property to BLOCK, which should compress on a ...


3

Yes, the same context is for both input and output. It stores references to RecordReader and RecordWriter. Whenever context.getCurrentKey() and context.getCurrentValue() are used to retrieve key and value pair, the request is delegated to RecordReader. And when context.write() is called, it is delegated to RecordWriter. Note that RecordReader and ...


0

Hive order by uses a single reducer, so you can use distribute by/ sort by and then from the sorted table you can do insert overwrite local from table -- to write the data into a file


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Can't really say what's happening without more information on the job, but what might be happening is that the transfer of data from 1200 mappers -> 1 reducer is taking a really long time. To answer your question, you can't kill the job and resume the job again in the same state. You'll have to kill it and restart the job. Here's the command to kill the ...


1

In order to learn MR you don't need to deep dive into the internals. But if you want to do so, I'd suggest you to check first the YARN articles from Hortonworks to see the big picture. You may also read the architecture design doc of YARN. Then I'd have a look at the javadoc and would also check this blog which dissects several components of the Hadoop stack ...


2

Create a mapper that maps a GUID to your line. The following Hadoop mapper illustrates the logic: public class ShuffleMapper extends Mapper<LongWritable, Text, Text, Text> { @Override protected void map(LongWritable key, Text value, Context context) throws IOException, InterruptedException { context.write(new ...


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As it says here: Distributed Cache associates the cache files to the current working directory of the mapper and reducer using symlinks. So you should try to access your files through the File object: File f = new File("./part-00000"); EDIT1 My last suggestion: DistributedCache.addCacheFile(new URI(tagDictFilePath.toString() + "#cache-file"), ...


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Yes, when looking at the code, K denotes the type of the key, V denotes the value type. The real Writable type depends on what kind of input you want to sample, in that sense- yes it is similar to what you would use in a Mapper. RecordReader<K,V> reader = inf.createRecordReader(splits.get(i), samplingContext); reader.initialize(splits.get(i), ...


0

I got a similar exception stack trace due to improper Mapper Class set in my code (typo :) ) job.setMapperClass(Mapper.class) // Set to org.apache.hadoop.mapreduce.Mapper due to type Notice that mistakenly I was using Mapper class from mapreduce package, I changed it to my custom mapper class: job.setMapperClass(LogProcMapperClass.class) // ...


2

You don't need to use map-reduce for this. You can use aggregation framework and combine multiple aggregation operators. You almost got it you were just missing the final piece - $multiply operator: db.items.aggregate([{ "$group" : { "_id" : null, "prices" : { "$sum" : { "$multiply" : ["$price", ...


1

No, Even though there are three replicas for a split, only one mapper will be assigned by MapReduce engine. It uses the concept called data localization in order to decide which replica of the split to use. Hadoop does its best to run the map task on a node where the input data resides in HDFS. This is called the data locality optimization since ...


0

The function you are referring to here is a JavaScript method implemented as a shell helper for the ObjectId wrapper. Other driver implementations for various languages contain a similar method whose basic function can be seen from the mongo shell as this: function (){ return new Date(parseInt(this.valueOf().slice(0,8), 16)*1000); } But this at ...


0

As described here you can't iterate over values twice. And i think it is bad idea to override run method, it just iterates through keys and calls reduce method for every pair (source). So you can't calculate the average of word occurrences with only one map-reduce job.


0

I think the problem is that you have imported not suitable FileInputFormat. I guess that you need to replace import org.apache.hadoop.mapreduce.lib.input.FileInputFormat; with import org.apache.hadoop.mapred.FileInputFormat;


1

One of the biggest reasons is that finalise is run AFTER everything is completed on the final set of data. Not only that but finalise can also run on single results whereas reduce will skip single results. If you can do everything in reduce then use reduce, you have no need for a finalise.


0

UUpppss!! Solved! The problem was a typo error (a copy-paste problem) :-| In PHP the first line of the reduce function, where it was $reduce = new MongoCode("reduce = function(key, values) { should be $reduce = new MongoCode("function(key, values) {


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Look at FileSystem, it allows you to create, delete files, etc. Simple class that creates a file and prints its size: import org.apache.hadoop.conf.Configured; import org.apache.hadoop.fs.FSDataOutputStream; import org.apache.hadoop.fs.FileSystem; import org.apache.hadoop.fs.Path; import org.apache.hadoop.util.Tool; import org.apache.hadoop.util.ToolRunner; ...


1

The main function of a combiner is optimization. It acts like a mini-reducer for most cases. From page 206 of the same book, chapter - How mapreduce works(The map side): Running the combiner function makes for a more compact map output, so there is less data to write to local disk and to transfer to the reducer. The quote from your question, If a ...


0

You need to set the maximum split size when using the CombineFileInputFormat as the input format class. Or you would probably get exactly ONLY ONE mapper when all blocks come from the same rack. You can achieve this in one of the following ways: call the CombineFileInputFormat.setMaxSplitSize() method set mapreduce.input.fileinputformat.split.maxsize ...


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You can increase the number of splits by reducing the maximum size for each split, using the mapreduce.input.fileinputformat.split.maxsize property. The value to set is the maximum split size in bytes.


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Yes. In yarn, the tasks run in a dedicated JVM. And unlike mapreduce 1, it doesn't support JVM reuse. In mapreduce 1 however, the property for controlling task JVM reuse is mapred.job.reuse.jvm.num.tasks. It specifies the maximum number of tasks to run for a given job for each JVM launched and by default it is 1. This answer should give you a better idea ...


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If you can use Python for this job than you can consider using the query language ObjectPath This allows you to complete the job in one line like this: $.people[@.age<30 and $.countries[@.name is @@.country].population > 100000000] except that "@@" has not been implemented yet - if you'd like to use it, you can write a feature request on the github ...


2

Well, the MongoDB does not call Reduce function on a key if there is only one value for it. In my opinion, this is bad. It should be left to my reducer code to decide whether to skip a singular value or do some operation on it. Now, if I have to do some operation on singular value, I end up writing the finalize function and in the finalize, I try to ...



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