Difference between revisions of "Hadoop/MapReduce Tutorials"
(12 intermediate revisions by the same user not shown) | |||
Line 1: | Line 1: | ||
+ | --[[User:Thiebaut|D. Thiebaut]] 16:01, 18 April 2010 (UTC) | ||
+ | ---- | ||
[[Image:AmazonAWS.jpg |right| 150px]] | [[Image:AmazonAWS.jpg |right| 150px]] | ||
<br /> | <br /> | ||
− | [[File:HadoopCartoon.png | right | | + | [[File:HadoopCartoon.png | right | 50px]] |
<bluebox> | <bluebox> | ||
− | |||
<br /> | <br /> | ||
These tutorials target the Hadoop/MapReduce Cluster in the CS Dept. at Smith College, as well as Amazon's EC2 and S3. | These tutorials target the Hadoop/MapReduce Cluster in the CS Dept. at Smith College, as well as Amazon's EC2 and S3. | ||
− | |||
− | |||
<br /> | <br /> | ||
</bluebox> | </bluebox> | ||
Line 15: | Line 14: | ||
<br /> | <br /> | ||
<br /> | <br /> | ||
+ | |||
+ | |||
::{| | ::{| | ||
! Tutorial | ! Tutorial | ||
− | ! | + | ! Description |
− | |- | + | |- style="background:#eeeeff" valign="top" |
| width="30%" | | | width="30%" | | ||
[[Hadoop Tutorial 1 -- Running WordCount | Tutorial #1]] | [[Hadoop Tutorial 1 -- Running WordCount | Tutorial #1]] | ||
| | | | ||
Running WordCount written in Java on the Smith College Hadoop/MapReduce Cluster | Running WordCount written in Java on the Smith College Hadoop/MapReduce Cluster | ||
− | |- | + | |- style="background:#ffffff" valign="top" |
+ | | | ||
+ | [[Hadoop Tutorial 1.1 -- Generating Task Timelines | Tutorial #1.1]] | ||
+ | | | ||
+ | Creating timelines of the execution of tasks during the execution of a MapReduce program. | ||
+ | |- style="background:#eeeeff" valign="top" | ||
| | | | ||
[[Hadoop Tutorial 2 -- Running WordCount in Python | Tutorial #2]] | [[Hadoop Tutorial 2 -- Running WordCount in Python | Tutorial #2]] | ||
| | | | ||
Running WordCount in Python on the Smith College Hadoop/MapReduce Cluster | Running WordCount in Python on the Smith College Hadoop/MapReduce Cluster | ||
− | |- | + | |- style="background:#ffffff" valign="top" |
+ | | | ||
+ | [[Hadoop_Tutorial_2.1_--_Streaming_XML_Files | Tutorial #2.1]] | ||
+ | | | ||
+ | Running a streaming Python MapReduce program on XML files | ||
+ | |- style="background:#eeeeff" valign="top" | ||
+ | | | ||
+ | [http://cs.smith.edu/dftwiki/index.php/Hadoop_Tutorial_2.2_--_Running_C%2B%2B_Programs_on_Hadoop Tutorial #2.2] | ||
+ | | | ||
+ | Running C++ programs under Hadoop Pipes | ||
+ | |- style="background:#ffffff" valign="top" | ||
| | | | ||
[[Hadoop Tutorial 3 -- Hadoop on Amazon AWS | Tutorial #3]] | [[Hadoop Tutorial 3 -- Hadoop on Amazon AWS | Tutorial #3]] | ||
| | | | ||
Running Hadoop jobs on Amazon AWS | Running Hadoop jobs on Amazon AWS | ||
− | |- | + | |- style="background:#eeeeff" valign="top" |
| | | | ||
[[Hadoop_Tutorial_3.1_--_Using_Amazon's_WordCount_program | Tutorial #3.1]] | [[Hadoop_Tutorial_3.1_--_Using_Amazon's_WordCount_program | Tutorial #3.1]] | ||
| | | | ||
Uploading text to S3 and running Amazon's WordCount Java program on our own data. | Uploading text to S3 and running Amazon's WordCount Java program on our own data. | ||
− | |- | + | |- style="background:#ffffff" valign="top" |
| | | | ||
[[Hadoop_Tutorial_3.2_--_Using_Your_Own_WordCount_program | Tutorial #3.2]] | [[Hadoop_Tutorial_3.2_--_Using_Your_Own_WordCount_program | Tutorial #3.2]] | ||
| | | | ||
− | + | Uploading and Running your own streaming version of the WordCount program on AWS. | |
− | |- | + | |- style="background:#eeeeff" valign="top" |
+ | | | ||
+ | [[Hadoop Tutorial 3.3 -- How Much? | Tutorial #3.3]] | ||
+ | | | ||
+ | Computing the cost of maintaining a cluster of 6 MapReduce instances on Amazon's AWS | ||
+ | |- style="background:#ffffff" valign="top" | ||
| | | | ||
[[Hadoop Tutorial 4: Start an EC2 Instance | Tutorial #4]] | [[Hadoop Tutorial 4: Start an EC2 Instance | Tutorial #4]] |
Latest revision as of 14:54, 18 April 2010
--D. Thiebaut 16:01, 18 April 2010 (UTC)
These tutorials target the Hadoop/MapReduce Cluster in the CS Dept. at Smith College, as well as Amazon's EC2 and S3.
Tutorial Description Running WordCount written in Java on the Smith College Hadoop/MapReduce Cluster
Creating timelines of the execution of tasks during the execution of a MapReduce program.
Running WordCount in Python on the Smith College Hadoop/MapReduce Cluster
Running a streaming Python MapReduce program on XML files
Running C++ programs under Hadoop Pipes
Running Hadoop jobs on Amazon AWS
Uploading text to S3 and running Amazon's WordCount Java program on our own data.
Uploading and Running your own streaming version of the WordCount program on AWS.
Computing the cost of maintaining a cluster of 6 MapReduce instances on Amazon's AWS
Start a server on Amazon's EC2 infrastructure