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Sep
18
comment How do I limit the number of records sent to the reducer in a map reduce job?
Unless they are extremely long lines, I would just use "head -n 1000 input > output" to grab the first thousand lines (or "hadoop dfs -text input | head -n 1000 > output" if the file is in HDFS). Honestly, Arnon's suggestion to simply not use MR makes a lot of sense. 1000 lines is very small.
Aug
22
comment Maven packages in the a different version than dependency:tree shows
Thank you, I think that explains it. The different results between the jar and dependency:tree were especially confusing me. If you'd like to put this in an answer I'll accept it.
May
18
comment Elastic Mapreduce Map output lost
Otherwise you can set up a bootstrap action that replaces the Jetty jar before your job runs.
May
18
comment Elastic Mapreduce Map output lost
You should be able to use an older version of Jetty by using an older version of Hadoop. If you're using the old API, you might be able to fall back to 0.18. If you're using the new API, you might be out of luck, since 20.2 seems to be the oldest EMR supports.
Mar
13
comment Change File Split size in Hadoop
dfs.block.size isn't necessarily global; you can set specific files to have a different block size than the default for your filesystem. I agree that mapred.max.split.size is probably the way to go in this case, though.
Oct
7
comment Starting jobs with direct calls to Hadoop from within SSH
Ah, maybe you uploaded it with s3, rather than s3n? I don't think the two are compatible. wiki.apache.org/hadoop/AmazonS3
Sep
21
comment hadoop streaming ensuring one key per reducer
Good call. With Python streaming reducers, he can ship the (zipped) Python HDFS libs to the task nodes with the -file argument, and then use the Python zipimport module to import them.
Aug
30
comment setCompressOutput in Hadoop
This is assuming Hadoop version 0.20, by the way.
Aug
9
comment Select DB, OLAP solutions for fast web analytics (large data array)
Also: if you want counts of unique users (rather than total hits) for each query, then this pre-aggregation will not work.
Aug
9
comment Select DB, OLAP solutions for fast web analytics (large data array)
I forgot to mention: a possible problem with pre-aggregating the data is that a user's information may change. For example, if the user relocates to another country, they will still be counted in their previous country for the pre-aggregation you have already done. This may be desirable according to your business rules, or it may not.
Jul
14
comment What is meant by sparse data/ datastore/ database?
@Peter Wone See the link in David's answer. HBase basically stores sorted tuples of the form (key, column family, column name, timestamp, value). If a column has no value for a given row, there is no tuple stored. There isn't a pointer to every tuple, so some scanning is often involved if you only need to look up one column. There are certainly disadvantages to this sort of structure, but it allows each row to have many sparse columns (with columns added easily) and permits versioning as well.
Jul
11
comment What is meant by sparse data/ datastore/ database?
@Jai That link explains how HBase stores values in a sparse fashion.
Jul
11
comment What is meant by sparse data/ datastore/ database?
HBase does not use a "linked-list style of chained pointer architecture." Its architecture is completely different (see David's link in the other answer). HBase also doesn't store pointers to cell values held elsewhere in the filesystem unless you explicitly tell it to. A table may have hundreds or thousands of columns (or more), and column values may be relatively large (indexes, for example). In such a context, sparsity is basically the only option.
Jun
22
comment Assessing and comparing Hadoop for Business Intelligence Design considerations
The speed question really depends on a lot of things. The latency involved in starting a MapReduce job is relatively high, so that even the simplest Hive query (for example) will not be instant if it has to start a MapReduce job. If you have terabytes of data, though, something like MSSQL is not going to scale very well, whereas Hadoop/Hive will (by adding machines). Still, Hive lacks good support in a few areas like indexes. Something like Vertica or Teradata might perform better, but those are $$$.
Jun
16
comment What's the way to run an Amazon Elastic Mapreduce job that depends on Numpy?
I know this is an old question, and maybe you've solved it by now, but you can use Amazon's script-runner jar to execute a script (on S3) that sets up whatever else you need. That's what Amazon uses to install Hive when you start up an EMR cluster with Hive support.
Jun
16
comment Elastic Map Reduce External Jars
You can take a look at Amazon's script-runner jar. You can use it to add your setup as the first step in the jobflow. It will allow you to easily run a script from S3.
Jun
16
comment Elastic Map Reduce External Jars
There's no other way that I've noticed, at least. It is kind of a shame, but it shouldn't be too difficult to work around.
Jun
13
comment A hadoop job complete without map and reduce on a Hadoop Cluster( one namenode ,12 datanode)
Actually, do you see any failed tasks, or does the job fail before it starts any tasks?
Jun
13
comment A hadoop job complete without map and reduce on a Hadoop Cluster( one namenode ,12 datanode)
When you click on the job, you should see a column in the first table that says "Failed/Killed Task Attempts". If you see any failed attempts (the numbers before the /'s...) click on the number, tell us whether it's a map or reduce task, and paste the error message into your question.
Jun
11
comment A hadoop job complete without map and reduce on a Hadoop Cluster( one namenode ,12 datanode)
When you look at your job on the web interface, do you see any map failures or anything?