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From "Doug Cutting (JIRA)" <j...@apache.org>
Subject [jira] Commented: (HADOOP-4049) Cross-system causal tracing within Hadoop
Date Fri, 26 Sep 2008 18:35:44 GMT

    [ https://issues.apache.org/jira/browse/HADOOP-4049?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=12634963#action_12634963
] 

Doug Cutting commented on HADOOP-4049:
--------------------------------------

We should be able to do this without replicating the logic of ObjectWritable#writeObject and
#readObject.  Why can't you just invoke super.writeObject() and super.readObject() from the
implementations?  If your ObjectWritable subclass was called RPCResponse, and RPC's always
returned instances of this, regardless of whether instrumentation is enabled, and it has a
pathState field, but the pathState might be null, would that make things simpler?

> Cross-system causal tracing within Hadoop
> -----------------------------------------
>
>                 Key: HADOOP-4049
>                 URL: https://issues.apache.org/jira/browse/HADOOP-4049
>             Project: Hadoop Core
>          Issue Type: New Feature
>          Components: dfs, ipc, mapred
>    Affects Versions: 0.18.0, 0.18.1
>            Reporter: George Porter
>         Attachments: HADOOP-4049.2-ipc.patch, HADOOP-4049.3-ipc.patch, HADOOP-4049.4-rpc.patch,
HADOOP-4049.patch, multiblockread.png, multiblockwrite.png
>
>
> Much of Hadoop's behavior is client-driven, with clients responsible for contacting individual
datanodes to read and write data, as well as dividing up work for map and reduce tasks.  In
a large deployment with many concurrent users, identifying the effects of individual clients
on the infrastructure is a challenge.  The use of data pipelining in HDFS and Map/Reduce make
it hard to follow the effects of a given client request through the system.
> This proposal is to instrument the HDFS, IPC, and Map/Reduce layers of Hadoop with X-Trace.
 X-Trace is an open-source framework for capturing causality of events in a distributed system.
 It can correlate operations making up a single user request, even if those operations span
multiple machines.  As an example, you could use X-Trace to follow an HDFS write operation
as it is pipelined through intermediate nodes.  Additionally, you could trace a single Map/Reduce
job and see how it is decomposed into lower-layer HDFS operations.
> Matei Zaharia and Andy Konwinski initially integrated X-Trace with a local copy of the
0.14 release, and I've brought that code up to release 0.17.  Performing the integration involves
modifying the IPC protocol, inter-datanode protocol, and some data structures in the map/reduce
layer to include 20-byte long tracing metadata.  With release 0.18, the generated traces could
be collected with Chukwa.
> I've attached some example traces of HDFS and IPC layers from the 0.17 patch to this
JIRA issue.
> More information about X-Trace is available from http://www.x-trace.net/ as well as in
a paper that appeared at NSDI 2007, available online at http://www.usenix.org/events/nsdi07/tech/fonseca.html

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