summaryrefslogtreecommitdiff
path: root/site/docs/1.5.0/hardware-provisioning.html
diff options
context:
space:
mode:
authorReynold Xin <rxin@apache.org>2015-09-17 22:07:42 +0000
committerReynold Xin <rxin@apache.org>2015-09-17 22:07:42 +0000
commitee9ffe89d608e7640a2487406b618d27e58026d6 (patch)
tree50ec819abb41a9a769d7f64eed1f0ab2084aa6ff /site/docs/1.5.0/hardware-provisioning.html
parentc7104724b279f09486ea62f4a24252e8d06f5c96 (diff)
downloadspark-website-ee9ffe89d608e7640a2487406b618d27e58026d6.tar.gz
spark-website-ee9ffe89d608e7640a2487406b618d27e58026d6.tar.bz2
spark-website-ee9ffe89d608e7640a2487406b618d27e58026d6.zip
delete 1.5.0
Diffstat (limited to 'site/docs/1.5.0/hardware-provisioning.html')
-rw-r--r--site/docs/1.5.0/hardware-provisioning.html236
1 files changed, 0 insertions, 236 deletions
diff --git a/site/docs/1.5.0/hardware-provisioning.html b/site/docs/1.5.0/hardware-provisioning.html
deleted file mode 100644
index 5cd42921f..000000000
--- a/site/docs/1.5.0/hardware-provisioning.html
+++ /dev/null
@@ -1,236 +0,0 @@
-<!DOCTYPE html>
-<!--[if lt IE 7]> <html class="no-js lt-ie9 lt-ie8 lt-ie7"> <![endif]-->
-<!--[if IE 7]> <html class="no-js lt-ie9 lt-ie8"> <![endif]-->
-<!--[if IE 8]> <html class="no-js lt-ie9"> <![endif]-->
-<!--[if gt IE 8]><!--> <html class="no-js"> <!--<![endif]-->
- <head>
- <meta charset="utf-8">
- <meta http-equiv="X-UA-Compatible" content="IE=edge,chrome=1">
- <title>Hardware Provisioning - Spark 1.5.0 Documentation</title>
-
-
-
-
- <link rel="stylesheet" href="css/bootstrap.min.css">
- <style>
- body {
- padding-top: 60px;
- padding-bottom: 40px;
- }
- </style>
- <meta name="viewport" content="width=device-width">
- <link rel="stylesheet" href="css/bootstrap-responsive.min.css">
- <link rel="stylesheet" href="css/main.css">
-
- <script src="js/vendor/modernizr-2.6.1-respond-1.1.0.min.js"></script>
-
- <link rel="stylesheet" href="css/pygments-default.css">
-
-
- <!-- Google analytics script -->
- <script type="text/javascript">
- var _gaq = _gaq || [];
- _gaq.push(['_setAccount', 'UA-32518208-2']);
- _gaq.push(['_trackPageview']);
-
- (function() {
- var ga = document.createElement('script'); ga.type = 'text/javascript'; ga.async = true;
- ga.src = ('https:' == document.location.protocol ? 'https://ssl' : 'http://www') + '.google-analytics.com/ga.js';
- var s = document.getElementsByTagName('script')[0]; s.parentNode.insertBefore(ga, s);
- })();
- </script>
-
-
- </head>
- <body>
- <!--[if lt IE 7]>
- <p class="chromeframe">You are using an outdated browser. <a href="http://browsehappy.com/">Upgrade your browser today</a> or <a href="http://www.google.com/chromeframe/?redirect=true">install Google Chrome Frame</a> to better experience this site.</p>
- <![endif]-->
-
- <!-- This code is taken from http://twitter.github.com/bootstrap/examples/hero.html -->
-
- <div class="navbar navbar-fixed-top" id="topbar">
- <div class="navbar-inner">
- <div class="container">
- <div class="brand"><a href="index.html">
- <img src="img/spark-logo-hd.png" style="height:50px;"/></a><span class="version">1.5.0</span>
- </div>
- <ul class="nav">
- <!--TODO(andyk): Add class="active" attribute to li some how.-->
- <li><a href="index.html">Overview</a></li>
-
- <li class="dropdown">
- <a href="#" class="dropdown-toggle" data-toggle="dropdown">Programming Guides<b class="caret"></b></a>
- <ul class="dropdown-menu">
- <li><a href="quick-start.html">Quick Start</a></li>
- <li><a href="programming-guide.html">Spark Programming Guide</a></li>
- <li class="divider"></li>
- <li><a href="streaming-programming-guide.html">Spark Streaming</a></li>
- <li><a href="sql-programming-guide.html">DataFrames and SQL</a></li>
- <li><a href="mllib-guide.html">MLlib (Machine Learning)</a></li>
- <li><a href="graphx-programming-guide.html">GraphX (Graph Processing)</a></li>
- <li><a href="bagel-programming-guide.html">Bagel (Pregel on Spark)</a></li>
- <li><a href="sparkr.html">SparkR (R on Spark)</a></li>
- </ul>
- </li>
-
- <li class="dropdown">
- <a href="#" class="dropdown-toggle" data-toggle="dropdown">API Docs<b class="caret"></b></a>
- <ul class="dropdown-menu">
- <li><a href="api/scala/index.html#org.apache.spark.package">Scala</a></li>
- <li><a href="api/java/index.html">Java</a></li>
- <li><a href="api/python/index.html">Python</a></li>
- <li><a href="api/R/index.html">R</a></li>
- </ul>
- </li>
-
- <li class="dropdown">
- <a href="#" class="dropdown-toggle" data-toggle="dropdown">Deploying<b class="caret"></b></a>
- <ul class="dropdown-menu">
- <li><a href="cluster-overview.html">Overview</a></li>
- <li><a href="submitting-applications.html">Submitting Applications</a></li>
- <li class="divider"></li>
- <li><a href="spark-standalone.html">Spark Standalone</a></li>
- <li><a href="running-on-mesos.html">Mesos</a></li>
- <li><a href="running-on-yarn.html">YARN</a></li>
- <li class="divider"></li>
- <li><a href="ec2-scripts.html">Amazon EC2</a></li>
- </ul>
- </li>
-
- <li class="dropdown">
- <a href="api.html" class="dropdown-toggle" data-toggle="dropdown">More<b class="caret"></b></a>
- <ul class="dropdown-menu">
- <li><a href="configuration.html">Configuration</a></li>
- <li><a href="monitoring.html">Monitoring</a></li>
- <li><a href="tuning.html">Tuning Guide</a></li>
- <li><a href="job-scheduling.html">Job Scheduling</a></li>
- <li><a href="security.html">Security</a></li>
- <li><a href="hardware-provisioning.html">Hardware Provisioning</a></li>
- <li><a href="hadoop-third-party-distributions.html">3<sup>rd</sup>-Party Hadoop Distros</a></li>
- <li class="divider"></li>
- <li><a href="building-spark.html">Building Spark</a></li>
- <li><a href="https://cwiki.apache.org/confluence/display/SPARK/Contributing+to+Spark">Contributing to Spark</a></li>
- <li><a href="https://cwiki.apache.org/confluence/display/SPARK/Supplemental+Spark+Projects">Supplemental Projects</a></li>
- </ul>
- </li>
- </ul>
- <!--<p class="navbar-text pull-right"><span class="version-text">v1.5.0</span></p>-->
- </div>
- </div>
- </div>
-
- <div class="container" id="content">
-
- <h1 class="title">Hardware Provisioning</h1>
-
-
- <p>A common question received by Spark developers is how to configure hardware for it. While the right
-hardware will depend on the situation, we make the following recommendations.</p>
-
-<h1 id="storage-systems">Storage Systems</h1>
-
-<p>Because most Spark jobs will likely have to read input data from an external storage system (e.g.
-the Hadoop File System, or HBase), it is important to place it <strong>as close to this system as
-possible</strong>. We recommend the following:</p>
-
-<ul>
- <li>
- <p>If at all possible, run Spark on the same nodes as HDFS. The simplest way is to set up a Spark
-<a href="spark-standalone.html">standalone mode cluster</a> on the same nodes, and configure Spark and
-Hadoop&#8217;s memory and CPU usage to avoid interference (for Hadoop, the relevant options are
-<code>mapred.child.java.opts</code> for the per-task memory and <code>mapred.tasktracker.map.tasks.maximum</code>
-and <code>mapred.tasktracker.reduce.tasks.maximum</code> for number of tasks). Alternatively, you can run
-Hadoop and Spark on a common cluster manager like <a href="running-on-mesos.html">Mesos</a> or
-<a href="running-on-yarn.html">Hadoop YARN</a>.</p>
- </li>
- <li>
- <p>If this is not possible, run Spark on different nodes in the same local-area network as HDFS.</p>
- </li>
- <li>
- <p>For low-latency data stores like HBase, it may be preferrable to run computing jobs on different
-nodes than the storage system to avoid interference.</p>
- </li>
-</ul>
-
-<h1 id="local-disks">Local Disks</h1>
-
-<p>While Spark can perform a lot of its computation in memory, it still uses local disks to store
-data that doesn&#8217;t fit in RAM, as well as to preserve intermediate output between stages. We
-recommend having <strong>4-8 disks</strong> per node, configured <em>without</em> RAID (just as separate mount points).
-In Linux, mount the disks with the <a href="http://www.centos.org/docs/5/html/Global_File_System/s2-manage-mountnoatime.html"><code>noatime</code> option</a>
-to reduce unnecessary writes. In Spark, <a href="configuration.html">configure</a> the <code>spark.local.dir</code>
-variable to be a comma-separated list of the local disks. If you are running HDFS, it&#8217;s fine to
-use the same disks as HDFS.</p>
-
-<h1 id="memory">Memory</h1>
-
-<p>In general, Spark can run well with anywhere from <strong>8 GB to hundreds of gigabytes</strong> of memory per
-machine. In all cases, we recommend allocating only at most 75% of the memory for Spark; leave the
-rest for the operating system and buffer cache.</p>
-
-<p>How much memory you will need will depend on your application. To determine how much your
-application uses for a certain dataset size, load part of your dataset in a Spark RDD and use the
-Storage tab of Spark&#8217;s monitoring UI (<code>http://&lt;driver-node&gt;:4040</code>) to see its size in memory.
-Note that memory usage is greatly affected by storage level and serialization format &#8211; see
-the <a href="tuning.html">tuning guide</a> for tips on how to reduce it.</p>
-
-<p>Finally, note that the Java VM does not always behave well with more than 200 GB of RAM. If you
-purchase machines with more RAM than this, you can run <em>multiple worker JVMs per node</em>. In
-Spark&#8217;s <a href="spark-standalone.html">standalone mode</a>, you can set the number of workers per node
-with the <code>SPARK_WORKER_INSTANCES</code> variable in <code>conf/spark-env.sh</code>, and the number of cores
-per worker with <code>SPARK_WORKER_CORES</code>.</p>
-
-<h1 id="network">Network</h1>
-
-<p>In our experience, when the data is in memory, a lot of Spark applications are network-bound.
-Using a <strong>10 Gigabit</strong> or higher network is the best way to make these applications faster.
-This is especially true for &#8220;distributed reduce&#8221; applications such as group-bys, reduce-bys, and
-SQL joins. In any given application, you can see how much data Spark shuffles across the network
-from the application&#8217;s monitoring UI (<code>http://&lt;driver-node&gt;:4040</code>).</p>
-
-<h1 id="cpu-cores">CPU Cores</h1>
-
-<p>Spark scales well to tens of CPU cores per machine because it performes minimal sharing between
-threads. You should likely provision at least <strong>8-16 cores</strong> per machine. Depending on the CPU
-cost of your workload, you may also need more: once data is in memory, most applications are
-either CPU- or network-bound.</p>
-
-
- </div> <!-- /container -->
-
- <script src="js/vendor/jquery-1.8.0.min.js"></script>
- <script src="js/vendor/bootstrap.min.js"></script>
- <script src="js/vendor/anchor.min.js"></script>
- <script src="js/main.js"></script>
-
- <!-- MathJax Section -->
- <script type="text/x-mathjax-config">
- MathJax.Hub.Config({
- TeX: { equationNumbers: { autoNumber: "AMS" } }
- });
- </script>
- <script>
- // Note that we load MathJax this way to work with local file (file://), HTTP and HTTPS.
- // We could use "//cdn.mathjax...", but that won't support "file://".
- (function(d, script) {
- script = d.createElement('script');
- script.type = 'text/javascript';
- script.async = true;
- script.onload = function(){
- MathJax.Hub.Config({
- tex2jax: {
- inlineMath: [ ["$", "$"], ["\\\\(","\\\\)"] ],
- displayMath: [ ["$$","$$"], ["\\[", "\\]"] ],
- processEscapes: true,
- skipTags: ['script', 'noscript', 'style', 'textarea', 'pre']
- }
- });
- };
- script.src = ('https:' == document.location.protocol ? 'https://' : 'http://') +
- 'cdn.mathjax.org/mathjax/latest/MathJax.js?config=TeX-AMS-MML_HTMLorMML';
- d.getElementsByTagName('head')[0].appendChild(script);
- }(document));
- </script>
- </body>
-</html>