Both sides previous revision
Previous revision
Next revision
|
Previous revision
Next revision
Both sides next revision
|
courses:mapreduce-tutorial [2012/01/26 18:44] straka |
courses:mapreduce-tutorial [2012/01/29 21:53] straka |
| |
=== MapReduce extended === | === MapReduce extended === |
From now on, it is best to run MR jobs using a one-machine cluster. Running the scripts locally without any cluster has several disadvantages, most notably having only one reducer per job. | From now on, it is best to run MR jobs using a one-machine cluster -- create a one-machine cluster using ''hadoop-cluster'' for 3h (10800s) and run jobs using ''-jt cluster_master''. Running the scripts locally without any cluster has several disadvantages, most notably having only one reducer per job. |
* [[.:mapreduce-tutorial:Step 8]]: Multiple mappers, reducers and partitioning. | * [[.:mapreduce-tutorial:Step 8]]: Multiple mappers, reducers and partitioning. |
* [[.:mapreduce-tutorial:Step 9]]: Hadoop properties. | * [[.:mapreduce-tutorial:Step 9]]: Hadoop properties. |
=== Advanced MapReduce exercises === | === Advanced MapReduce exercises === |
Exercises in this section can be made in any order, but it is recommended to try solving all of them. The [[.:mapreduce-tutorial:Perl API|Perl API reference]] may come handy. | Exercises in this section can be made in any order, but it is recommended to try solving all of them. The [[.:mapreduce-tutorial:Perl API|Perl API reference]] may come handy. |
* [[.:mapreduce-tutorial:Step 13]]: Sorting | * [[.:mapreduce-tutorial:Step 13]]: Sorting. |
* [[.:mapreduce-tutorial:Step 14]]: N-gram language model | * [[.:mapreduce-tutorial:Step 14]]: N-gram language model. |
* [[.:mapreduce-tutorial:Step 15]]: K-means clustering | * [[.:mapreduce-tutorial:Step 15]]: K-means clustering. |
| |
===== Day 2 ===== | ===== Day 2 ===== |
* [[.:mapreduce-tutorial:Step 21]]: Preparing the environment. | * [[.:mapreduce-tutorial:Step 21]]: Preparing the environment. |
* [[.:mapreduce-tutorial:Step 22]]: Optional -- Setting Eclipse. | * [[.:mapreduce-tutorial:Step 22]]: Optional -- Setting Eclipse. |
| |
| === Java Hadoop basics ==== |
| * [[.:mapreduce-tutorial:Step 23]]: Predefined formats and types. |
| * [[.:mapreduce-tutorial:Step 24]]: Mappers, running Java Hadoop jobs. |
| * [[.:mapreduce-tutorial:Step 25]]: Reducers, combiners and partitioners. |
| * [[.:mapreduce-tutorial:Step 26]]: Counters, compression and job configuration. |
| |
| === Advanced topics === |
| * [[.:mapreduce-tutorial:Step 27]]: Custom data types. |
| * [[.:mapreduce-tutorial:Step 28]]: Running multiple Hadoop jobs in one class. |
| * [[.:mapreduce-tutorial:Step 29]]: Custom input formats. |
| |
| === Beyond MapReduce === |
| * [[.:mapreduce-tutorial:Step 30]]: Implementing iterative MapReduce jobs faster using All-Reduce |
| |
===== Other ===== | ===== Other ===== |
* [[user:majlis:hadoop|Further information]] | * [[user:majlis:hadoop|Further information]] |
| |