Modified: falcon/site/0.3-incubating/docs/FalconArchitecture.html
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http://svn.apache.org/viewvc/falcon/site/0.3-incubating/docs/FalconArchitecture.html?rev=1660589&r1=1660588&r2=1660589&view=diff
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--- falcon/site/0.3-incubating/docs/FalconArchitecture.html (original)
+++ falcon/site/0.3-incubating/docs/FalconArchitecture.html Wed Feb 18 10:55:56 
2015
@@ -1,13 +1,13 @@
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@@ -70,7 +70,132 @@
                 
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-            <div class="section"><h3>Contents<a 
name="Contents"></a></h3><p></p><ul><li><a 
href="#Architecture">Architecture</a></li><li><a href="#Control_flow">Control 
flow</a></li><li><a href="#Modes_Of_Deployment">Modes Of 
Deployment</a></li><li><a href="#Entity_Management_actions">Entity Management 
actions</a></li><li><a href="#Instance_Management_actions">Instance Management 
actions</a></li><li><a href="#Retention">Retention</a></li><li><a 
href="#Replication">Replication</a></li><li><a 
href="#Cross_entity_validations">Cross entity validations</a></li><li><a 
href="#Updating_process_and_feed_definition">Updating process and feed 
definition</a></li><li><a href="#Handling_late_input_data">Handling late input 
data</a></li><li><a href="#Idempotency">Idempotency</a></li><li><a 
href="#Alerting_and_Monitoring">Alerting and Monitoring</a></li><li><a 
href="#Falcon_EL_Expressions">Falcon EL Expressions</a></li></ul></div><div 
class="section"><h3>Architecture<a name="Architecture"></a></h3>
 </div><div class="section"><h4>Introduction<a 
name="Introduction"></a></h4><p>Falcon is a feed and process management 
platform over hadoop. Falcon essentially transforms user's feed and process 
configurations into repeated actions through a standard workflow engine (Apache 
Oozie). Falcon by itself doesn't do any heavy lifting. All the functions and 
workflow state management requirements are delegated to the workflow scheduler. 
The only thing that Falcon maintains is the dependencies and relationship 
between these entities. This is adequate to provide integrated and seamless 
experience to the developers using the falcon platform.</p></div><div 
class="section"><h4>Falcon Architecture - Overview<a 
name="Falcon_Architecture_-_Overview"></a></h4><p><img 
src="../images/Architecture.png" alt="" /></p></div><div 
class="section"><h4>Scheduler<a name="Scheduler"></a></h4><p>Falcon system has 
picked Apache Oozie as the default scheduler. However the system is open for 
integration with other sc
 hedulers. Lot of the data processing in hadoop requires scheduling to be based 
on both data availability as well as time. Apache Oozie currently supports 
these capabilities off the shelf and hence the choice.</p></div><div 
class="section"><h4>Control flow<a name="Control_flow"></a></h4><p>Though the 
actual responsibility of the workflow is with the scheduler (Oozie), Falcon 
remains in the execution path, by subscribing to messages that each of the 
workflow may generate. When Falcon generates a workflow in Oozie, it does so, 
after instrumenting the workflow with additional steps which includes messaging 
via JMS. Falcon system itself subscribes to these control messages and can 
perform actions such as retries, handling late input arrival etc.</p></div><div 
class="section"><h5>Feed Schedule flow<a 
name="Feed_Schedule_flow"></a></h5><p><img src="../images/FeedSchedule.png" 
alt="" /></p></div><div class="section"><h5>Process Schedule flow<a 
name="Process_Schedule_flow"></a></h5><p><img s
 rc="../images/ProcessSchedule.png" alt="" /></p></div><div 
class="section"><h3>Modes Of Deployment<a 
name="Modes_Of_Deployment"></a></h3><p>There are two basic components of Falcon 
set up. Falcon Prism and Falcon Server. As the name suggests Falcon Prism 
splits the request it gets to the Falcon Servers. More details 
below:</p></div><div class="section"><h4>Stand Alone Mode<a 
name="Stand_Alone_Mode"></a></h4><p>Stand alone mode is useful when the hadoop 
jobs and relevant data processing involves only one hadoop cluster. In this 
mode there is single Falcon server that contacts with oozie to schedule jobs on 
Hadoop. All the process / feed request like submit, schedule, suspend, kill are 
sent to this server only. For running in this mode one should use the falcon 
which has been built for standalone mode, or build using standalone option if 
using source code.</p></div><div class="section"><h4>Distributed Mode<a 
name="Distributed_Mode"></a></h4><p>Distributed mode is the mode which you mi
 ght me using most of the time. This is for orgs which have multiple instances 
of hadoop clusters, and multiple workflow schedulers to handle them. Here we 
have 2 components: Prism and Server. Both Prism and server have there own setup 
(runtime and startup properties) and there config locations.  In this mode 
Prism acts as a contact point for Falcon servers. Below are the requests that 
can be sent to prism and server in this mode:</p><p>Prism: submit, schedule, 
submitAndSchedule, Suspend, Resume, Kill, instance management  Server: 
schedule, suspend, resume, instance management</p><p>As observed above submit 
and kill are kept exclusively as Prism operations to keep all the config stores 
in sync and to support feature of idempotency. Request may also be sent from 
prism but directed to a specific server using the option &quot;-colo&quot; from 
CLI or append the same in web request, if using API.</p><p>When a cluster is 
submitted it is by default sent to all the servers configured in the 
 prism. When is feed is SUBMIT / SCHEDULED request is only sent to the servers 
specified in the feed / process definitions. Servers are mentioned in the feed 
/ process via CLUSTER tags in xml definition.</p></div><div 
class="section"><h5>Prism Setup<a name="Prism_Setup"></a></h5><p><img 
src="../images/PrismSetup.png" alt="" /></p></div><div 
class="section"><h4>Configuration Store<a 
name="Configuration_Store"></a></h4><p>Configuration store is file system based 
store that the Falcon system maintains where the entity definitions are stored. 
File System used for the configuration store can either be a local file system 
or HDFS file system. It is recommended that the store be maintained outside of 
the system where Falcon is deployed. This is needed for handling issues 
relating to disk failures or other permanent failures of the system where 
Falcon is deployed. Configuration store also maintains an archive location 
where prior versions of the configuration or deleted configurations are ma
 intained. They are never accessed by the Falcon system and they merely serve 
to track historical changes to the entity definitions.</p></div><div 
class="section"><h4>Atomic Actions<a name="Atomic_Actions"></a></h4><p>Often 
times when Falcon performs entity management actions, it may need to do several 
individual actions. If one of the action were to fail, then the system could be 
in an inconsistent state. To avoid this, all individual operations performed 
are recorded into a transaction journal. This journal is then used to undo the 
overall user action. In some cases, it is not possible to undo the action. In 
such cases, Falcon attempts to keep the system in an consistent 
state.</p></div><div class="section"><h3>Entity Management actions<a 
name="Entity_Management_actions"></a></h3></div><div 
class="section"><h4>Submit<a name="Submit"></a></h4><p>Entity submit action 
allows a new cluster/feed/process to be setup within Falcon. Submitted entity 
is not scheduled, meaning it would simpl
 y be in the configuration store within Falcon. Besides validating against the 
schema for the corresponding entity being added, the Falcon system would also 
perform inter-field validations within the configuration file and validations 
across dependent entities.</p></div><div class="section"><h4>List<a 
name="List"></a></h4><p>List all the entities within the falcon config store 
for the entity type being requested. This will include both scheduled and 
submitted entity configurations.</p></div><div class="section"><h4>Dependency<a 
name="Dependency"></a></h4><p>Returns the dependencies of the requested entity. 
Dependency list include both forward and backward dependencies (depends on 
&amp; is dependent on). For example, a feed would show process that are 
dependent on the feed and the clusters that it depends on.</p></div><div 
class="section"><h4>Schedule<a name="Schedule"></a></h4><p>Feeds or Processes 
that are already submitted and present in the config store can be scheduled. 
Upon sche
 dule, Falcon system wraps the required repeatable action as a bundle of oozie 
coordinators and executes them on the Oozie scheduler. (It is possible to 
extend Falcon to use an alternate workflow engine other than Oozie). Falcon 
overrides the workflow instance's external id in Oozie to reflect the 
process/feed and the nominal time. This external Id can then be used for 
instance management functions.</p></div><div class="section"><h4>Suspend<a 
name="Suspend"></a></h4><p>This action is applicable only on scheduled entity. 
This triggers suspend on the oozie bundle that was scheduled earlier through 
the schedule function. No further instances are executed on a suspended 
process/feed.</p></div><div class="section"><h4>Resume<a 
name="Resume"></a></h4><p>Puts a suspended process/feed back to active, which 
in turn resumes applicable oozie bundle.</p></div><div 
class="section"><h4>Status<a name="Status"></a></h4><p>Gets the current status 
of the entity.</p></div><div class="section"><h4>Defin
 ition<a name="Definition"></a></h4><p>Gets the current entity definition as 
stored in the configuration store. Please note that user documentations in the 
entity will not be retained.</p></div><div class="section"><h4>Delete<a 
name="Delete"></a></h4><p>Delete operation on the entity removes any scheduled 
activity on the workflow engine, besides removing the entity from the falcon 
configuration store. Delete operation on an entity would only succeed if there 
are no dependent entities on the deleted entity.</p></div><div 
class="section"><h4>Update<a name="Update"></a></h4><p>Update operation allows 
an already submitted/scheduled entity to be updated. Cluster update is 
currently not allowed. Feed update can cause cascading update to all the 
processes already scheduled. The following set of actions are performed in 
Oozie to realize an update.</p><p></p><ul><li>Suspend the previously scheduled 
Oozie coordinator. This is prevent any new action from being 
triggered.</li><li>Update the coor
 dinator to set the end time to &quot;now&quot;</li><li>Resume the suspended 
coordinators</li><li>Schedule as per the new process/feed definition with the 
start time as &quot;now&quot;</li></ul></div><div class="section"><h3>Instance 
Management actions<a name="Instance_Management_actions"></a></h3><p>Instance 
Manager gives user the option to control individual instances of the process 
based on their instance start time (start time of that instance). Start time 
needs to be given in standard TZ format. Example: 01 Jan 2012 01:00 =&gt; 
2012-01-01T01:00Z</p><p>All the instance management operations (except running) 
allow single instance or list of instance within a Date range to be acted on. 
Make sure the dates are valid. i.e. are within the start and end time of 
process itself.</p><p>For every query in instance management the process name 
is a compulsory parameter.</p><p>Parameters -start and -end are used to mention 
the date range within which you want the instance to be operated upon.
 </p><p>-start: using only &quot;-start&quot; without &quot;-end&quot; will 
conduct the desired operation only on single instance given by date along with 
start.</p><p>-end: &quot;-end&quot; can only be used along with 
&quot;-start&quot; . It corresponds to the end date till which instance need to 
operated upon.</p><p></p><ul><li>1. <b>status</b>: -status option via CLI can 
be used to get the status of a single or multiple instances. If the instance is 
not yet materialized but is within the process validity range, WAITING is 
returned as the state. Along with the status of the instance log location is 
also returned.</li></ul><p></p><ul><li>2.       <b>running</b>: -running 
returns all the running instance of the process. It does not take any start or 
end dates but simply return all the instances in state RUNNING at that given 
time.</li></ul><p></p><ul><li>3.   <b>rerun</b>: -rerun is the option that you 
will use most often from instance management. As the name suggest this option 
is used to r
 erun a particular instance or instances of the process. The rerun option 
reruns all parent workflow for the instance, which in turn rerun all the 
sub-workflows for it. This option is valid for any instance in terminal state, 
i.e. KILLED, SUCCEEDED, FAILED. User can also set properties in the request, 
which will give options what types of actions should be rerun like, only 
failed, run all etc. These properties are dependent on the workflow engine 
being used along with falcon.</li></ul><p></p><ul><li>4. <b>suspend</b>: 
-suspend is used to suspend a instance or instances for the given process. This 
option pauses the parent workflow at the state, which it was in at the time of 
execution of this command. This command is similar to SUSPEND process command 
in functionality only difference being, SUSPEND process suspends all the 
instance whereas suspend instance suspend only that instance or instances in 
the range.</li></ul><p></p><ul><li>5.    <b>resume</b>: -resume option is used 
to resume a
 ny instance that is in suspended state. (Note: due to a bug in oozie 
&#xef;&#xbf;&#xbd;resume option in some cases may not actually resume the 
suspended instance/ instances)</li><li>6. <b>kill</b>: -kill option can be used 
to kill an instance or multiple instances</li></ul><p>In all the cases where 
your request is syntactically correct but logically not, the instance / 
instances are returned with the same status as earlier. Example: trying to 
resume a KILLED / SUCCEEDED instance will return the instance with KILLED / 
SUCCEEDED, without actually performing any operation. This is so because only 
an instance in SUSPENDED state can be resumed. Same thing is valid for rerun a 
SUSPENDED or RUNNING options etc.</p></div><div class="section"><h3>Retention<a 
name="Retention"></a></h3><p>In coherence with it's feed lifecycle management 
philosophy, Falcon allows the user to retain data in the system for a specific 
period of time for a scheduled feed. The user can specify the retention period i
 n the respective  feed/data xml in the following manner for each cluster the 
feed can belong to :</p><div class="source"><pre class="prettyprint">
+            <div class="section">
+<h3>Contents<a name="Contents"></a></h3>
+<p></p>
+<ul>
+<li><a href="#Architecture">Architecture</a></li>
+<li><a href="#Control_flow">Control flow</a></li>
+<li><a href="#Modes_Of_Deployment">Modes Of Deployment</a></li>
+<li><a href="#Entity_Management_actions">Entity Management actions</a></li>
+<li><a href="#Instance_Management_actions">Instance Management actions</a></li>
+<li><a href="#Retention">Retention</a></li>
+<li><a href="#Replication">Replication</a></li>
+<li><a href="#Cross_entity_validations">Cross entity validations</a></li>
+<li><a href="#Updating_process_and_feed_definition">Updating process and feed 
definition</a></li>
+<li><a href="#Handling_late_input_data">Handling late input data</a></li>
+<li><a href="#Idempotency">Idempotency</a></li>
+<li><a href="#Alerting_and_Monitoring">Alerting and Monitoring</a></li>
+<li><a href="#Falcon_EL_Expressions">Falcon EL Expressions</a></li></ul></div>
+<div class="section">
+<h3>Architecture<a name="Architecture"></a></h3></div>
+<div class="section">
+<h4>Introduction<a name="Introduction"></a></h4>
+<p>Falcon is a feed and process management platform over hadoop. Falcon 
essentially transforms user's feed and process configurations into repeated 
actions through a standard workflow engine (Apache Oozie). Falcon by itself 
doesn't do any heavy lifting. All the functions and workflow state management 
requirements are delegated to the workflow scheduler. The only thing that 
Falcon maintains is the dependencies and relationship between these entities. 
This is adequate to provide integrated and seamless experience to the 
developers using the falcon platform.</p></div>
+<div class="section">
+<h4>Falcon Architecture - Overview<a 
name="Falcon_Architecture_-_Overview"></a></h4>
+<p><img src="../images/Architecture.png" alt="" /></p></div>
+<div class="section">
+<h4>Scheduler<a name="Scheduler"></a></h4>
+<p>Falcon system has picked Apache Oozie as the default scheduler. However the 
system is open for integration with other schedulers. Lot of the data 
processing in hadoop requires scheduling to be based on both data availability 
as well as time. Apache Oozie currently supports these capabilities off the 
shelf and hence the choice.</p></div>
+<div class="section">
+<h4>Control flow<a name="Control_flow"></a></h4>
+<p>Though the actual responsibility of the workflow is with the scheduler 
(Oozie), Falcon remains in the execution path, by subscribing to messages that 
each of the workflow may generate. When Falcon generates a workflow in Oozie, 
it does so, after instrumenting the workflow with additional steps which 
includes messaging via JMS. Falcon system itself subscribes to these control 
messages and can perform actions such as retries, handling late input arrival 
etc.</p></div>
+<div class="section">
+<h5>Feed Schedule flow<a name="Feed_Schedule_flow"></a></h5>
+<p><img src="../images/FeedSchedule.png" alt="" /></p></div>
+<div class="section">
+<h5>Process Schedule flow<a name="Process_Schedule_flow"></a></h5>
+<p><img src="../images/ProcessSchedule.png" alt="" /></p></div>
+<div class="section">
+<h3>Modes Of Deployment<a name="Modes_Of_Deployment"></a></h3>
+<p>There are two basic components of Falcon set up. Falcon Prism and Falcon 
Server. As the name suggests Falcon Prism splits the request it gets to the 
Falcon Servers. More details below:</p></div>
+<div class="section">
+<h4>Stand Alone Mode<a name="Stand_Alone_Mode"></a></h4>
+<p>Stand alone mode is useful when the hadoop jobs and relevant data 
processing involves only one hadoop cluster. In this mode there is single 
Falcon server that contacts with oozie to schedule jobs on Hadoop. All the 
process / feed request like submit, schedule, suspend, kill are sent to this 
server only. For running in this mode one should use the falcon which has been 
built for standalone mode, or build using standalone option if using source 
code.</p></div>
+<div class="section">
+<h4>Distributed Mode<a name="Distributed_Mode"></a></h4>
+<p>Distributed mode is the mode which you might me using most of the time. 
This is for orgs which have multiple instances of hadoop clusters, and multiple 
workflow schedulers to handle them. Here we have 2 components: Prism and 
Server. Both Prism and server have there own setup (runtime and startup 
properties) and there config locations.  In this mode Prism acts as a contact 
point for Falcon servers. Below are the requests that can be sent to prism and 
server in this mode:</p>
+<p>Prism: submit, schedule, submitAndSchedule, Suspend, Resume, Kill, instance 
management  Server: schedule, suspend, resume, instance management</p>
+<p>As observed above submit and kill are kept exclusively as Prism operations 
to keep all the config stores in sync and to support feature of idempotency. 
Request may also be sent from prism but directed to a specific server using the 
option &quot;-colo&quot; from CLI or append the same in web request, if using 
API.</p>
+<p>When a cluster is submitted it is by default sent to all the servers 
configured in the prism. When is feed is SUBMIT / SCHEDULED request is only 
sent to the servers specified in the feed / process definitions. Servers are 
mentioned in the feed / process via CLUSTER tags in xml definition.</p></div>
+<div class="section">
+<h5>Prism Setup<a name="Prism_Setup"></a></h5>
+<p><img src="../images/PrismSetup.png" alt="" /></p></div>
+<div class="section">
+<h4>Configuration Store<a name="Configuration_Store"></a></h4>
+<p>Configuration store is file system based store that the Falcon system 
maintains where the entity definitions are stored. File System used for the 
configuration store can either be a local file system or HDFS file system. It 
is recommended that the store be maintained outside of the system where Falcon 
is deployed. This is needed for handling issues relating to disk failures or 
other permanent failures of the system where Falcon is deployed. Configuration 
store also maintains an archive location where prior versions of the 
configuration or deleted configurations are maintained. They are never accessed 
by the Falcon system and they merely serve to track historical changes to the 
entity definitions.</p></div>
+<div class="section">
+<h4>Atomic Actions<a name="Atomic_Actions"></a></h4>
+<p>Often times when Falcon performs entity management actions, it may need to 
do several individual actions. If one of the action were to fail, then the 
system could be in an inconsistent state. To avoid this, all individual 
operations performed are recorded into a transaction journal. This journal is 
then used to undo the overall user action. In some cases, it is not possible to 
undo the action. In such cases, Falcon attempts to keep the system in an 
consistent state.</p></div>
+<div class="section">
+<h3>Entity Management actions<a 
name="Entity_Management_actions"></a></h3></div>
+<div class="section">
+<h4>Submit<a name="Submit"></a></h4>
+<p>Entity submit action allows a new cluster/feed/process to be setup within 
Falcon. Submitted entity is not scheduled, meaning it would simply be in the 
configuration store within Falcon. Besides validating against the schema for 
the corresponding entity being added, the Falcon system would also perform 
inter-field validations within the configuration file and validations across 
dependent entities.</p></div>
+<div class="section">
+<h4>List<a name="List"></a></h4>
+<p>List all the entities within the falcon config store for the entity type 
being requested. This will include both scheduled and submitted entity 
configurations.</p></div>
+<div class="section">
+<h4>Dependency<a name="Dependency"></a></h4>
+<p>Returns the dependencies of the requested entity. Dependency list include 
both forward and backward dependencies (depends on &amp; is dependent on). For 
example, a feed would show process that are dependent on the feed and the 
clusters that it depends on.</p></div>
+<div class="section">
+<h4>Schedule<a name="Schedule"></a></h4>
+<p>Feeds or Processes that are already submitted and present in the config 
store can be scheduled. Upon schedule, Falcon system wraps the required 
repeatable action as a bundle of oozie coordinators and executes them on the 
Oozie scheduler. (It is possible to extend Falcon to use an alternate workflow 
engine other than Oozie). Falcon overrides the workflow instance's external id 
in Oozie to reflect the process/feed and the nominal time. This external Id can 
then be used for instance management functions.</p></div>
+<div class="section">
+<h4>Suspend<a name="Suspend"></a></h4>
+<p>This action is applicable only on scheduled entity. This triggers suspend 
on the oozie bundle that was scheduled earlier through the schedule function. 
No further instances are executed on a suspended process/feed.</p></div>
+<div class="section">
+<h4>Resume<a name="Resume"></a></h4>
+<p>Puts a suspended process/feed back to active, which in turn resumes 
applicable oozie bundle.</p></div>
+<div class="section">
+<h4>Status<a name="Status"></a></h4>
+<p>Gets the current status of the entity.</p></div>
+<div class="section">
+<h4>Definition<a name="Definition"></a></h4>
+<p>Gets the current entity definition as stored in the configuration store. 
Please note that user documentations in the entity will not be 
retained.</p></div>
+<div class="section">
+<h4>Delete<a name="Delete"></a></h4>
+<p>Delete operation on the entity removes any scheduled activity on the 
workflow engine, besides removing the entity from the falcon configuration 
store. Delete operation on an entity would only succeed if there are no 
dependent entities on the deleted entity.</p></div>
+<div class="section">
+<h4>Update<a name="Update"></a></h4>
+<p>Update operation allows an already submitted/scheduled entity to be 
updated. Cluster update is currently not allowed. Feed update can cause 
cascading update to all the processes already scheduled. The following set of 
actions are performed in Oozie to realize an update.</p>
+<p></p>
+<ul>
+<li>Suspend the previously scheduled Oozie coordinator. This is prevent any 
new action from being triggered.</li>
+<li>Update the coordinator to set the end time to &quot;now&quot;</li>
+<li>Resume the suspended coordinators</li>
+<li>Schedule as per the new process/feed definition with the start time as 
&quot;now&quot;</li></ul></div>
+<div class="section">
+<h3>Instance Management actions<a name="Instance_Management_actions"></a></h3>
+<p>Instance Manager gives user the option to control individual instances of 
the process based on their instance start time (start time of that instance). 
Start time needs to be given in standard TZ format. Example: 01 Jan 2012 01:00 
=&gt; 2012-01-01T01:00Z</p>
+<p>All the instance management operations (except running) allow single 
instance or list of instance within a Date range to be acted on. Make sure the 
dates are valid. i.e. are within the start and end time of process itself.</p>
+<p>For every query in instance management the process name is a compulsory 
parameter.</p>
+<p>Parameters -start and -end are used to mention the date range within which 
you want the instance to be operated upon.</p>
+<p>-start: using only &quot;-start&quot; without &quot;-end&quot; will conduct 
the desired operation only on single instance given by date along with 
start.</p>
+<p>-end: &quot;-end&quot; can only be used along with &quot;-start&quot; . It 
corresponds to the end date till which instance need to operated upon.</p>
+<p></p>
+<ul>
+<li>1. <b>status</b>: -status option via CLI can be used to get the status of 
a single or multiple instances. If the instance is not yet materialized but is 
within the process validity range, WAITING is returned as the state. Along with 
the status of the instance log location is also returned.</li></ul>
+<p></p>
+<ul>
+<li>2. <b>running</b>: -running returns all the running instance of the 
process. It does not take any start or end dates but simply return all the 
instances in state RUNNING at that given time.</li></ul>
+<p></p>
+<ul>
+<li>3. <b>rerun</b>: -rerun is the option that you will use most often from 
instance management. As the name suggest this option is used to rerun a 
particular instance or instances of the process. The rerun option reruns all 
parent workflow for the instance, which in turn rerun all the sub-workflows for 
it. This option is valid for any instance in terminal state, i.e. KILLED, 
SUCCEEDED, FAILED. User can also set properties in the request, which will give 
options what types of actions should be rerun like, only failed, run all etc. 
These properties are dependent on the workflow engine being used along with 
falcon.</li></ul>
+<p></p>
+<ul>
+<li>4. <b>suspend</b>: -suspend is used to suspend a instance or instances for 
the given process. This option pauses the parent workflow at the state, which 
it was in at the time of execution of this command. This command is similar to 
SUSPEND process command in functionality only difference being, SUSPEND process 
suspends all the instance whereas suspend instance suspend only that instance 
or instances in the range.</li></ul>
+<p></p>
+<ul>
+<li>5. <b>resume</b>: -resume option is used to resume any instance that is in 
suspended state. (Note: due to a bug in oozie &#xef;&#xbf;&#xbd;resume option 
in some cases may not actually resume the suspended instance/ instances)</li>
+<li>6. <b>kill</b>: -kill option can be used to kill an instance or multiple 
instances</li></ul>
+<p>In all the cases where your request is syntactically correct but logically 
not, the instance / instances are returned with the same status as earlier. 
Example: trying to resume a KILLED / SUCCEEDED instance will return the 
instance with KILLED / SUCCEEDED, without actually performing any operation. 
This is so because only an instance in SUSPENDED state can be resumed. Same 
thing is valid for rerun a SUSPENDED or RUNNING options etc.</p></div>
+<div class="section">
+<h3>Retention<a name="Retention"></a></h3>
+<p>In coherence with it's feed lifecycle management philosophy, Falcon allows 
the user to retain data in the system for a specific period of time for a 
scheduled feed. The user can specify the retention period in the respective  
feed/data xml in the following manner for each cluster the feed can belong to 
:</p>
+<div class="source">
+<pre>
 &lt;clusters&gt;
         &lt;cluster name=&quot;corp&quot; type=&quot;source&quot;&gt;
             &lt;validity start=&quot;2012-01-30T00:00Z&quot; 
end=&quot;2013-03-31T23:59Z&quot;
@@ -79,7 +204,29 @@
         &lt;/cluster&gt;
  &lt;/clusters&gt; 
 
-</pre></div><p>The 'limit' attribute can be specified in units of 
minutes/hours/days/months, and a corresponding numeric value can be attached to 
it. It essentially instructs the system to retain data spanning from the 
current moment to the time specified in the attribute spanning backwards in 
time. Any data beyond the limit (past/future) is erased from the 
system.</p></div><div class="section"><h4>Example:<a 
name="Example:"></a></h4><p>If retention period is 10 hours, and the policy 
kicks in at time 't', the data retained by system is essentially the one 
falling in between [t-10h,t]. Any data in the boundaries 
[-&#xef;&#xbf;&#xbd;,t-10h) and (t,&#xef;&#xbf;&#xbd;] is removed from the 
system.</p><p>The 'action' attribute can attain values of DELETE/ARCHIVE. Based 
upon the tag value, the data eligible for removal is either 
deleted/archived.</p></div><div class="section"><h4>NOTE: Falcon 0.1/0.2 
releases support Delete operation only<a 
name="NOTE:_Falcon_0.10.2_releases_support_Delete
 _operation_only"></a></h4></div><div class="section"><h4>When does retention 
policy come into play, aka when is retention really performed?<a 
name="When_does_retention_policy_come_into_play_aka_when_is_retention_really_performed"></a></h4><p>Retention
 policy in Falcon kicks off on the basis of the time value specified by the 
user. Here are the basic rules:</p><p></p><ul><li>If the retention policy 
specified is less than 24 hours: In this event, the retention policy 
automatically kicks off every 6 hours.</li><li>If the retention policy 
specified is more than 24 hours: In this event, the retention policy 
automatically kicks off every 24 hours.</li><li>As soon as a feed is 
successfully scheduled: the retention policy is triggered immediately 
regardless of the current timestamp/state of the system.</li></ul><p>Relation 
between feed path and retention policy: Retention policy for a particular 
scheduled feed applies only to the eligible feed path specified in the feed 
xml. Any other paths
  that do not conform to the specified feed path are left unaffected by the 
retention policy.</p></div><div class="section"><h3>Replication<a 
name="Replication"></a></h3><p>Falcon's feed lifecycle management also supports 
Feed replication across different clusters out-of-the-box. Multiple source 
clusters and target clusters can be defined in feed definition. Falcon 
replicates the data using hadoop's distcp version 2 across different clusters 
whenever a feed is scheduled.</p><p>The frequency at which the data is 
replicated is governed by the frequency specified in the feed definition. 
Ideally, the feeds data path should have the same granularity as that for 
frequency of the feed, i.e. if the frequency of the feed is hours(3), then the 
data path should be to level /${YEAR}/${MONTH}/${DAY}/${HOUR}.</p><div 
class="source"><pre class="prettyprint">
+</pre></div>
+<p>The 'limit' attribute can be specified in units of 
minutes/hours/days/months, and a corresponding numeric value can be attached to 
it. It essentially instructs the system to retain data spanning from the 
current moment to the time specified in the attribute spanning backwards in 
time. Any data beyond the limit (past/future) is erased from the 
system.</p></div>
+<div class="section">
+<h4>Example:<a name="Example:"></a></h4>
+<p>If retention period is 10 hours, and the policy kicks in at time 't', the 
data retained by system is essentially the one falling in between [t-10h,t]. 
Any data in the boundaries [-&#xef;&#xbf;&#xbd;,t-10h) and 
(t,&#xef;&#xbf;&#xbd;] is removed from the system.</p>
+<p>The 'action' attribute can attain values of DELETE/ARCHIVE. Based upon the 
tag value, the data eligible for removal is either deleted/archived.</p></div>
+<div class="section">
+<h4>NOTE: Falcon 0.1/0.2 releases support Delete operation only<a 
name="NOTE:_Falcon_0.10.2_releases_support_Delete_operation_only"></a></h4></div>
+<div class="section">
+<h4>When does retention policy come into play, aka when is retention really 
performed?<a 
name="When_does_retention_policy_come_into_play_aka_when_is_retention_really_performed"></a></h4>
+<p>Retention policy in Falcon kicks off on the basis of the time value 
specified by the user. Here are the basic rules:</p>
+<p></p>
+<ul>
+<li>If the retention policy specified is less than 24 hours: In this event, 
the retention policy automatically kicks off every 6 hours.</li>
+<li>If the retention policy specified is more than 24 hours: In this event, 
the retention policy automatically kicks off every 24 hours.</li>
+<li>As soon as a feed is successfully scheduled: the retention policy is 
triggered immediately regardless of the current timestamp/state of the 
system.</li></ul>
+<p>Relation between feed path and retention policy: Retention policy for a 
particular scheduled feed applies only to the eligible feed path specified in 
the feed xml. Any other paths that do not conform to the specified feed path 
are left unaffected by the retention policy.</p></div>
+<div class="section">
+<h3>Replication<a name="Replication"></a></h3>
+<p>Falcon's feed lifecycle management also supports Feed replication across 
different clusters out-of-the-box. Multiple source clusters and target clusters 
can be defined in feed definition. Falcon replicates the data using hadoop's 
distcp version 2 across different clusters whenever a feed is scheduled.</p>
+<p>The frequency at which the data is replicated is governed by the frequency 
specified in the feed definition. Ideally, the feeds data path should have the 
same granularity as that for frequency of the feed, i.e. if the frequency of 
the feed is hours(3), then the data path should be to level 
/${YEAR}/${MONTH}/${DAY}/${HOUR}.</p>
+<div class="source">
+<pre>
     &lt;clusters&gt;
         &lt;cluster name=&quot;sourceCluster1&quot; type=&quot;source&quot; 
partition=&quot;${cluster.name}&quot; delay=&quot;minutes(40)&quot;&gt;
             &lt;validity start=&quot;2021-11-01T00:00Z&quot; 
end=&quot;2021-12-31T00:00Z&quot;/&gt;
@@ -92,12 +239,28 @@
         &lt;/cluster&gt;
     &lt;/clusters&gt;
 
-</pre></div><p>If more than 1 source cluster is defined, then partition 
expression is compulsory, a partition can also have a constant. The expression 
is required to avoid copying data from different source location to the same 
target location, also only the data in the partition is considered for 
replication if it is present. The partitions defined in the cluster should be 
less than or equal to the number of partition declared in the feed 
definition.</p><p>Falcon uses pull based replication mechanism, meaning in 
every target cluster, for a given source cluster, a coordinator is scheduled 
which pulls the data using distcp from source cluster. So in the above example, 
2 coordinators are scheduled in backupCluster, one which pulls the data from 
sourceCluster1 and another from sourceCluster2. Also, for every feed instance 
which is replicated Falcon sends a JMS message on success or failure of 
replication instance.</p><p>Replication can be scheduled with the past date, 
the time frame co
 nsidered for replication is the minimum overlapping window of start and end 
time of source and target cluster, ex: if s1 and e1 is the start and end time 
of source cluster respectively, and s2 and e2 of target cluster, then the 
coordinator is scheduled in target cluster with start time max(s1,s2) and 
min(e1,e2).</p><p>A feed can also optionally specify the delay for replication 
instance in the cluster tag, the delay governs the replication instance delays. 
If the frequency of the feed is hours(2) and delay is hours(1), then the 
replication instance will run every 2 hours and replicates data with an offset 
of 1 hour, i.e. at 09:00 UTC, feed instance which is eligible for replication 
is 08:00; and 11:00 UTC, feed instance of 10:00 UTC is eligible and so 
on.</p></div><div class="section"><h4>Where is the feed path defined?<a 
name="Where_is_the_feed_path_defined"></a></h4><p>It's defined in the feed xml 
within the location tag.</p><p><b>Example:</b></p><div class="source"><pre 
class="pr
 ettyprint">
+</pre></div>
+<p>If more than 1 source cluster is defined, then partition expression is 
compulsory, a partition can also have a constant. The expression is required to 
avoid copying data from different source location to the same target location, 
also only the data in the partition is considered for replication if it is 
present. The partitions defined in the cluster should be less than or equal to 
the number of partition declared in the feed definition.</p>
+<p>Falcon uses pull based replication mechanism, meaning in every target 
cluster, for a given source cluster, a coordinator is scheduled which pulls the 
data using distcp from source cluster. So in the above example, 2 coordinators 
are scheduled in backupCluster, one which pulls the data from sourceCluster1 
and another from sourceCluster2. Also, for every feed instance which is 
replicated Falcon sends a JMS message on success or failure of replication 
instance.</p>
+<p>Replication can be scheduled with the past date, the time frame considered 
for replication is the minimum overlapping window of start and end time of 
source and target cluster, ex: if s1 and e1 is the start and end time of source 
cluster respectively, and s2 and e2 of target cluster, then the coordinator is 
scheduled in target cluster with start time max(s1,s2) and min(e1,e2).</p>
+<p>A feed can also optionally specify the delay for replication instance in 
the cluster tag, the delay governs the replication instance delays. If the 
frequency of the feed is hours(2) and delay is hours(1), then the replication 
instance will run every 2 hours and replicates data with an offset of 1 hour, 
i.e. at 09:00 UTC, feed instance which is eligible for replication is 08:00; 
and 11:00 UTC, feed instance of 10:00 UTC is eligible and so on.</p></div>
+<div class="section">
+<h4>Where is the feed path defined?<a 
name="Where_is_the_feed_path_defined"></a></h4>
+<p>It's defined in the feed xml within the location tag.</p>
+<p><b>Example:</b></p>
+<div class="source">
+<pre>
 &lt;locations&gt;
         &lt;location type=&quot;data&quot; 
path=&quot;/retention/testFolders/${YEAR}-${MONTH}-${DAY}&quot; /&gt;
 &lt;/locations&gt;
 
-</pre></div><p>Now, if the above path contains folders in the following 
fashion:</p><p>/retention/testFolders/${YEAR}-${MONTH}-${DAY} 
/retention/testFolders/${YEAR}-${MONTH}/someFolder</p><p>The feed retention 
policy would only act on the former and not the latter.</p><p>Users may choose 
to override the feed path specific to a cluster, so every cluster may have a 
different feed path. <b>Example:</b></p><div class="source"><pre 
class="prettyprint">
+</pre></div>
+<p>Now, if the above path contains folders in the following fashion:</p>
+<p>/retention/testFolders/${YEAR}-${MONTH}-${DAY} 
/retention/testFolders/${YEAR}-${MONTH}/someFolder</p>
+<p>The feed retention policy would only act on the former and not the 
latter.</p>
+<p>Users may choose to override the feed path specific to a cluster, so every 
cluster may have a different feed path. <b>Example:</b></p>
+<div class="source">
+<pre>
 &lt;clusters&gt;
         &lt;cluster name=&quot;testCluster&quot; type=&quot;source&quot;&gt;
             &lt;validity start=&quot;2011-11-01T00:00Z&quot; 
end=&quot;2011-12-31T00:00Z&quot;/&gt;
@@ -109,7 +272,34 @@
         &lt;/cluster&gt;
     &lt;/clusters&gt;
 
-</pre></div></div><div class="section"><h4>Relation between feed's retention 
limit and feed's late arrival cut off period:<a 
name="Relation_between_feeds_retention_limit_and_feeds_late_arrival_cut_off_period:"></a></h4><p>For
 reasons that are obvious, Falcon has an external validation that ensures that 
the user always specifies the feed retention limit to be more than the feed's 
allowed late arrival period. If this rule is violated by the user, the feed 
submission call itself throws back an error.</p></div><div 
class="section"><h3>Cross entity validations<a 
name="Cross_entity_validations"></a></h3></div><div class="section"><h4>Entity 
Dependencies in a nutshell<a 
name="Entity_Dependencies_in_a_nutshell"></a></h4><p><img 
src="../images/EntityDependency.png" alt="" /></p><p>The above schematic shows 
the dependencies between entities in Falcon. The arrow in above diagram points 
from a dependency to the dependent.</p><p>Let's just get one simple rule stated 
here, which we will keep refe
 rring to time and again while talking about entities: A dependency in the 
system cannot be removed unless all it's dependents are removed first. This 
holds true for all transitive dependencies also.</p><p>Now, let's follow it up 
with a simple illustration of an Falcon Job:</p><p>Let's consider a process P 
that refers to feed F1 as an input feed, and generates feed F2 as an output 
feed. These feeds/processes are supposed to be associated with a cluster 
C1.</p><p>The order of submission of this job would be in the following 
order:</p><p>C1-&gt;F1/F2(in any order)-&gt;P</p><p>The order of removal of 
this job from the system is in the exact opposite order, 
i.e.:</p><p>P-&gt;F1/F2(in any order)-&gt;C1</p><p>Please note that there might 
be multiple process referring to a particular feed, or a single feed belonging 
to multiple clusters. In that event, any of the dependencies cannot be removed 
unless ALL of their dependents are removed first. Attempting to do so will 
result in an error mess
 age and a 400 Bad Request operation.</p></div><div class="section"><h4>Other 
cross validations between entities in Falcon system<a 
name="Other_cross_validations_between_entities_in_Falcon_system"></a></h4><p><b>Cluster-Feed
 Cross validations:</b></p><p></p><ul><li>The cluster(s) referenced by feed 
(inside the &lt;clusters&gt; tag) should be  present in the system at the 
time</li></ul>of submission. Any exception to this results in a feed submission 
failure. Note that a feed might be referring to more than a single cluster. The 
identifier for the same is the 'name' attribute for the individual 
cluster.<p><b>Example:</b></p><p><b>Feed XML:</b></p><div class="source"><pre 
class="prettyprint">
+</pre></div></div>
+<div class="section">
+<h4>Relation between feed's retention limit and feed's late arrival cut off 
period:<a 
name="Relation_between_feeds_retention_limit_and_feeds_late_arrival_cut_off_period:"></a></h4>
+<p>For reasons that are obvious, Falcon has an external validation that 
ensures that the user always specifies the feed retention limit to be more than 
the feed's allowed late arrival period. If this rule is violated by the user, 
the feed submission call itself throws back an error.</p></div>
+<div class="section">
+<h3>Cross entity validations<a name="Cross_entity_validations"></a></h3></div>
+<div class="section">
+<h4>Entity Dependencies in a nutshell<a 
name="Entity_Dependencies_in_a_nutshell"></a></h4>
+<p><img src="../images/EntityDependency.png" alt="" /></p>
+<p>The above schematic shows the dependencies between entities in Falcon. The 
arrow in above diagram points from a dependency to the dependent.</p>
+<p>Let's just get one simple rule stated here, which we will keep referring to 
time and again while talking about entities: A dependency in the system cannot 
be removed unless all it's dependents are removed first. This holds true for 
all transitive dependencies also.</p>
+<p>Now, let's follow it up with a simple illustration of an Falcon Job:</p>
+<p>Let's consider a process P that refers to feed F1 as an input feed, and 
generates feed F2 as an output feed. These feeds/processes are supposed to be 
associated with a cluster C1.</p>
+<p>The order of submission of this job would be in the following order:</p>
+<p>C1-&gt;F1/F2(in any order)-&gt;P</p>
+<p>The order of removal of this job from the system is in the exact opposite 
order, i.e.:</p>
+<p>P-&gt;F1/F2(in any order)-&gt;C1</p>
+<p>Please note that there might be multiple process referring to a particular 
feed, or a single feed belonging to multiple clusters. In that event, any of 
the dependencies cannot be removed unless ALL of their dependents are removed 
first. Attempting to do so will result in an error message and a 400 Bad 
Request operation.</p></div>
+<div class="section">
+<h4>Other cross validations between entities in Falcon system<a 
name="Other_cross_validations_between_entities_in_Falcon_system"></a></h4>
+<p><b>Cluster-Feed Cross validations:</b></p>
+<p></p>
+<ul>
+<li>The cluster(s) referenced by feed (inside the &lt;clusters&gt; tag) should 
be  present in the system at the time</li></ul>of submission. Any exception to 
this results in a feed submission failure. Note that a feed might be referring 
to more than a single cluster. The identifier for the same is the 'name' 
attribute for the individual cluster.
+<p><b>Example:</b></p>
+<p><b>Feed XML:</b></p>
+<div class="source">
+<pre>
    &lt;clusters&gt;
         &lt;cluster name=&quot;corp&quot; type=&quot;source&quot;&gt;
             &lt;validity start=&quot;2009-01-01T00:00Z&quot; 
end=&quot;2012-12-31T23:59Z&quot;
@@ -118,44 +308,165 @@
         &lt;/cluster&gt;
     &lt;/clusters&gt;
 
-</pre></div><p><b>Cluster corp's XML:</b></p><div class="source"><pre 
class="prettyprint">
+</pre></div>
+<p><b>Cluster corp's XML:</b></p>
+<div class="source">
+<pre>
 &lt;cluster colo=&quot;gs&quot; description=&quot;&quot; name=&quot;corp&quot; 
xmlns=&quot;uri:falcon:cluster:0.1&quot; 
xmlns:xsi=&quot;http://www.w3.org/2001/XMLSchema-instance&quot;&gt;
 
-</pre></div><p><b>Cluster-Process Cross validations:</b></p><p></p><ul><li>In 
a similar relationship to that of feed and a cluster, a process also refers to 
the relevant cluster by the</li></ul>'name' attribute. Any exception results in 
a process submission failure.</div><div class="section"><h4>Example:<a 
name="Example:"></a></h4></div><div class="section"><h4>Process XML:<a 
name="Process_XML:"></a></h4><div class="source"><pre class="prettyprint">
+</pre></div>
+<p><b>Cluster-Process Cross validations:</b></p>
+<p></p>
+<ul>
+<li>In a similar relationship to that of feed and a cluster, a process also 
refers to the relevant cluster by the</li></ul>'name' attribute. Any exception 
results in a process submission failure.</div>
+<div class="section">
+<h4>Example:<a name="Example:"></a></h4></div>
+<div class="section">
+<h4>Process XML:<a name="Process_XML:"></a></h4>
+<div class="source">
+<pre>
 &lt;process name=&quot;agregator-coord16&quot;&gt;
     &lt;cluster name=&quot;corp&quot;/&gt;....
 
-</pre></div></div><div class="section"><h4>Cluster corp's XML:<a 
name="Cluster_corps_XML:"></a></h4><div class="source"><pre class="prettyprint">
+</pre></div></div>
+<div class="section">
+<h4>Cluster corp's XML:<a name="Cluster_corps_XML:"></a></h4>
+<div class="source">
+<pre>
 &lt;cluster colo=&quot;gs&quot; description=&quot;&quot; name=&quot;corp&quot; 
xmlns=&quot;uri:falcon:cluster:0.1&quot; 
xmlns:xsi=&quot;http://www.w3.org/2001/XMLSchema-instance&quot;&gt;
 
-</pre></div><p><b>Feed-Process Cross Validations:</b></p><p>1. The process 
&lt;input&gt; and feeds designated as input feeds for the job:</p><p>For every 
feed referenced in the &lt;input&gt; tag in a process definition, following 
rules are applied when the process is due for submission:</p><p></p><ul><li>The 
feed having a value associated with the 'feed' attribute in input tag should be 
present in</li></ul>the system. The corresponding attribute in the feed 
definition is the 'name' attribute in the &lt;feed&gt; 
tag.<p><b>Example:</b></p><p><b>Process xml:</b></p><div class="source"><pre 
class="prettyprint">
+</pre></div>
+<p><b>Feed-Process Cross Validations:</b></p>
+<p>1. The process &lt;input&gt; and feeds designated as input feeds for the 
job:</p>
+<p>For every feed referenced in the &lt;input&gt; tag in a process definition, 
following rules are applied when the process is due for submission:</p>
+<p></p>
+<ul>
+<li>The feed having a value associated with the 'feed' attribute in input tag 
should be present in</li></ul>the system. The corresponding attribute in the 
feed definition is the 'name' attribute in the &lt;feed&gt; tag.
+<p><b>Example:</b></p>
+<p><b>Process xml:</b></p>
+<div class="source">
+<pre>
 &lt;input end-instance=&quot;now(0,20)&quot; 
start-instance=&quot;now(0,-60)&quot;
 feed=&quot;raaw-logs16&quot; name=&quot;inputData&quot;/&gt;
 
-</pre></div><p><b>Feed xml:</b></p><div class="source"><pre 
class="prettyprint">
+</pre></div>
+<p><b>Feed xml:</b></p>
+<div class="source">
+<pre>
 &lt;feed description=&quot;clicks log&quot; name=&quot;raaw-logs16&quot;....
 
-</pre></div><p>* The time interpretation for corresponding tags indicating the 
start and end instances for a particular input feed in the process xml should 
lie well within the timespan of the period specified in &lt;validity&gt; tag of 
the particular feed.</p><p><b>Example:</b></p><p>1. In the following scenario, 
process submission will result in an error:</p><p><b>Process XML:</b></p><div 
class="source"><pre class="prettyprint">
+</pre></div>
+<p>* The time interpretation for corresponding tags indicating the start and 
end instances for a particular input feed in the process xml should lie well 
within the timespan of the period specified in &lt;validity&gt; tag of the 
particular feed.</p>
+<p><b>Example:</b></p>
+<p>1. In the following scenario, process submission will result in an 
error:</p>
+<p><b>Process XML:</b></p>
+<div class="source">
+<pre>
 &lt;input end-instance=&quot;now(0,20)&quot; 
start-instance=&quot;now(0,-60)&quot;
    feed=&quot;raaw-logs16&quot; name=&quot;inputData&quot;/&gt;
 
-</pre></div><p><b>Feed XML:</b></p><div class="source"><pre 
class="prettyprint">
+</pre></div>
+<p><b>Feed XML:</b></p>
+<div class="source">
+<pre>
 &lt;validity start=&quot;2009-01-01T00:00Z&quot; 
end=&quot;2009-12-31T23:59Z&quot;.....
 
-</pre></div><p>Explanation: The process timelines for the feed range between a 
40 minute interval between [-60m,-20m] from the current timestamp (which lets 
assume is 'today' as per the 'now' directive). However, the feed validity is 
between a 1 year period in 2009, which makes it anachronistic.</p><p>2. The 
following example would work just fine:</p><p><b>Process XML:</b></p><div 
class="source"><pre class="prettyprint">
+</pre></div>
+<p>Explanation: The process timelines for the feed range between a 40 minute 
interval between [-60m,-20m] from the current timestamp (which lets assume is 
'today' as per the 'now' directive). However, the feed validity is between a 1 
year period in 2009, which makes it anachronistic.</p>
+<p>2. The following example would work just fine:</p>
+<p><b>Process XML:</b></p>
+<div class="source">
+<pre>
 &lt;input end-instance=&quot;now(0,20)&quot; 
start-instance=&quot;now(0,-60)&quot;
    feed=&quot;raaw-logs16&quot; name=&quot;inputData&quot;/&gt;
 
-</pre></div><p><b>Feed XML:</b></p><div class="source"><pre 
class="prettyprint">
+</pre></div>
+<p><b>Feed XML:</b></p>
+<div class="source">
+<pre>
 validity start=&quot;2009-01-01T00:00Z&quot; end=&quot;2012-12-31T23:59Z&quot; 
.......
 
-</pre></div><p>since at the time of charting this document (03/03/2012), the 
feed validity is able to encapsulate the process input's start and end 
instances.</p><p>Failure to follow any of the above rules would result in a 
process submission failure.</p><p><b>NOTE:</b> Even though the above check 
ensures that the timelines are not anachronistic, if the input data is not 
present in the system for the specified time period, the process can be 
submitted and scheduled, but all instances created would result in a WAITING 
state unless data is actually provided in the cluster.</p></div><div 
class="section"><h3>Updating process and feed definition<a 
name="Updating_process_and_feed_definition"></a></h3><p>Any changes in 
feed/process can be done by updating its definition. After the update, any new 
workflows which are to be scheduled after the update call will pick up the new 
changes. Feed/process name and start time can't be updated. Updating a process 
triggers updates to the workflow that 
 is triggered in the workflow engine. Updating feed updates feed workflows like 
retention, replication etc. and also updates the processes that reference the 
feed.</p></div><div class="section"><h3>Handling late input data<a 
name="Handling_late_input_data"></a></h3><p>Falcon system can handle late 
arrival of input data and appropriately re-trigger processing for the affected 
instance. From the perspective of late handling, there are two main 
configuration parameters late-arrival cut-off and late-inputs section in feed 
and process entity definition that are central. These configurations govern how 
and when the late processing happens. In the current implementation (oozie 
based) the late handling is very simple and basic. The falcon system looks at 
all dependent input feeds for a process and computes the max late cut-off 
period. Then it uses a scheduled messaging framework, like the one available in 
Apache ActiveMQ or Java's <a href="./DelayQueue.html">DelayQueue</a> to 
schedule a mess
 age with a cut-off period, then after a cut-off period the message is dequeued 
and Falcon checks for changes in the feed data which is recorded in HDFS in 
latedata file by falcons &quot;record-size&quot; action, if it detects any 
changes then the workflow will be rerun with the new set of feed 
data.</p><p><b>Example:</b> The late rerun policy can be configured in the 
process definition. Falcon supports 3 policies, periodic, exp-backoff and 
final. Delay specifies, how often the feed data should be checked for changes, 
also one needs to  explicitly set the feed names in late-input which needs to 
be checked for late data.</p><div class="source"><pre class="prettyprint">
+</pre></div>
+<p>since at the time of charting this document (03/03/2012), the feed validity 
is able to encapsulate the process input's start and end instances.</p>
+<p>Failure to follow any of the above rules would result in a process 
submission failure.</p>
+<p><b>NOTE:</b> Even though the above check ensures that the timelines are not 
anachronistic, if the input data is not present in the system for the specified 
time period, the process can be submitted and scheduled, but all instances 
created would result in a WAITING state unless data is actually provided in the 
cluster.</p></div>
+<div class="section">
+<h3>Updating process and feed definition<a 
name="Updating_process_and_feed_definition"></a></h3>
+<p>Any changes in feed/process can be done by updating its definition. After 
the update, any new workflows which are to be scheduled after the update call 
will pick up the new changes. Feed/process name and start time can't be 
updated. Updating a process triggers updates to the workflow that is triggered 
in the workflow engine. Updating feed updates feed workflows like retention, 
replication etc. and also updates the processes that reference the 
feed.</p></div>
+<div class="section">
+<h3>Handling late input data<a name="Handling_late_input_data"></a></h3>
+<p>Falcon system can handle late arrival of input data and appropriately 
re-trigger processing for the affected instance. From the perspective of late 
handling, there are two main configuration parameters late-arrival cut-off and 
late-inputs section in feed and process entity definition that are central. 
These configurations govern how and when the late processing happens. In the 
current implementation (oozie based) the late handling is very simple and 
basic. The falcon system looks at all dependent input feeds for a process and 
computes the max late cut-off period. Then it uses a scheduled messaging 
framework, like the one available in Apache ActiveMQ or Java's <a 
href="./DelayQueue.html">DelayQueue</a> to schedule a message with a cut-off 
period, then after a cut-off period the message is dequeued and Falcon checks 
for changes in the feed data which is recorded in HDFS in latedata file by 
falcons &quot;record-size&quot; action, if it detects any changes then the 
workflow will be r
 erun with the new set of feed data.</p>
+<p><b>Example:</b> The late rerun policy can be configured in the process 
definition. Falcon supports 3 policies, periodic, exp-backoff and final. Delay 
specifies, how often the feed data should be checked for changes, also one 
needs to  explicitly set the feed names in late-input which needs to be checked 
for late data.</p>
+<div class="source">
+<pre>
   &lt;late-process policy=&quot;exp-backoff&quot; 
delay=&quot;hours(1)&quot;&gt;
         &lt;late-input input=&quot;impression&quot; 
workflow-path=&quot;hdfs://impression/late/workflow&quot; /&gt;
         &lt;late-input input=&quot;clicks&quot; 
workflow-path=&quot;hdfs://clicks/late/workflow&quot; /&gt;
    &lt;/late-process&gt;
 
-</pre></div></div><div class="section"><h3>Idempotency<a 
name="Idempotency"></a></h3><p>All the operations in Falcon are Idempotent. 
That is if you make same request to the falcon server / prism again you will 
get a SUCCESSFUL return if it was SUCCESSFUL in the first attempt. For example, 
you submit a new process / feed and get SUCCESSFUL message return. Now if you 
run the same command / api request on same entity you will again get a 
SUCCESSFUL message. Same is true for other operations like schedule, kill, 
suspend and resume. Idempotency also by takes care of the condition when 
request is sent through prism and fails on one or more servers. For example 
prism is configured to send request to 3 servers. First user sends a request to 
SUBMIT a process on all 3 of them, and receives a response SUCCESSFUL from all 
of them. Then due to some issue one of the servers goes down, and user send a 
request to schedule the submitted process. This time he will receive a response 
with PARTIAL stat
 us and a FAILURE message from the server that has gone down. If the users 
check he will find the process would have been started and running on the 2 
SUCCESSFUL servers. Now the issue with server is figured out and it is brought 
up. Sending the SCHEDULE request again through prism will result in a 
SUCCESSFUL response from prism as well as other three servers, but this time 
PROCESS will be SCHEDULED only on the server which had failed earlier and other 
two will keep running as before.</p></div><div class="section"><h3>Alerting and 
Monitoring<a name="Alerting_and_Monitoring"></a></h3></div><div 
class="section"><h4>Alerting<a name="Alerting"></a></h4><p>Falcon provides 
monitoring of various events by capturing metrics of those events. The metric 
numbers can then be used to monitor performance and health of the Falcon system 
and the entire processing pipelines.</p><p>Users can view the logs of these 
events in the metric.log file, by default this file is created under 
${user.dir}/logs/ d
 irectory. Users may also extend the Falcon monitoring framework to send events 
to systems like Mondemand/lwes.</p><p>The following events are captured by 
Falcon for logging the metrics:</p><ol style="list-style-type: decimal"><li>New 
cluster definitions posted to Falcon (success &amp; failures)</li><li>New feed 
definition posted to Falcon (success &amp; failures)</li><li>New process 
definition posted to Falcon (success &amp; failures)</li><li>Process update 
events (success &amp; failures)</li><li>Feed update events (success &amp; 
failures)</li><li>Cluster update events (success &amp; 
failures)</li><li>Process suspend events (success &amp; failures)</li><li>Feed 
suspend events (success &amp; failures)</li><li>Process resume events (success 
&amp; failures)</li><li>Feed resume events (success &amp; 
failures)</li><li>Process remove events (success &amp; failures)</li><li>Feed 
remove events (success &amp; failures)</li><li>Cluster remove events (success 
&amp; failures)</li><li>Process in
 stance kill events (success &amp; failures)</li><li>Process instance re-run 
events (success &amp; failures)</li><li>Process instance generation 
events</li><li>Process instance failure events</li><li>Process instance 
auto-retry events</li><li>Process instance retry exhaust events</li><li>Feed 
instance deletion event</li><li>Feed instance deletion failure event (no 
retries)</li><li>Feed instance replication event</li><li>Feed instance 
replication failure event</li><li>Feed instance replication auto-retry 
event</li><li>Feed instance replication retry exhaust event</li><li>Feed 
instance late arrival event</li><li>Feed instance post cut-off arrival 
event</li><li>Process re-run due to late feed event</li><li>Transaction 
rollback failed event</li></ol><p>The metric logged for an event has the 
following properties:</p><ol style="list-style-type: decimal"><li>Action - Name 
of the event.</li><li>Dimensions - A list of name/value pairs of various 
attributes for a given action.</li><li>Status- 
 Status of an action FAILED/SUCCEEDED.</li><li>Time-taken - Time taken in nano 
seconds for a given action.</li></ol><p>An example for an event logged for a 
submit of a new process definition:</p><p>2012-05-04 12:23:34,026 
{Action:submit, Dimensions:{entityType=process}, Status: SUCCEEDED, 
Time-taken:97087000 ns}</p><p>Users may parse the metric.log or capture these 
events from custom monitoring frameworks and can plot various graphs  or send 
alerts according to their requirements.</p></div><div 
class="section"><h4>Notifications<a name="Notifications"></a></h4><p>Falcon 
creates a JMS topic for every process/feed that is scheduled in Falcon. The 
implementation class and the broker url of the JMS engine are read from the 
dependent cluster's definition. Users may register consumers on the required 
topic to check the availability or status of feed instances.</p><p>For a given 
process that is scheduled, the name of the topic is same as the process name. 
Falcon sends a Map message for every
  feed produced by the instance of a process to the JMS topic. The JMS <a 
href="./MapMessage.html">MapMessage</a> sent to a topic has the following 
properties: entityName, feedNames, feedInstancePath, workflowId, runId, 
nominalTime, timeStamp, brokerUrl, brokerImplClass, entityType, operation, 
logFile, topicName, status, brokerTTL;</p><p>For a given feed that is 
scheduled, the name of the topic is same as the feed name. Falcon sends a map 
message for every feed instance that is deleted/archived/replicated depending 
upon the retention policy set in the feed definition. The JMS <a 
href="./MapMessage.html">MapMessage</a> sent to a topic has the following 
properties: entityName, feedNames, feedInstancePath, workflowId, runId, 
nominalTime, timeStamp, brokerUrl, brokerImplClass, entityType, operation, 
logFile, topicName, status, brokerTTL;</p><p>The JMS messages are automatically 
purged after a certain period (default 3 days) by the Falcon JMS house-keeping 
service.TTL (Time-to-live) for J
 MS message can be configured in the Falcon's startup.properties 
file.</p></div><div class="section"><h3>Falcon EL Expressions<a 
name="Falcon_EL_Expressions"></a></h3><p>Falcon expression language can be used 
in process definition for giving the start and end instance for various 
feeds.</p><p>Before going into how to use falcon EL expressions it is necessary 
to understand what does instance and instance start time refer to with respect 
to Falcon.</p><p>Lets consider a part of process definition below:</p><div 
class="source"><pre class="prettyprint">
+</pre></div></div>
+<div class="section">
+<h3>Idempotency<a name="Idempotency"></a></h3>
+<p>All the operations in Falcon are Idempotent. That is if you make same 
request to the falcon server / prism again you will get a SUCCESSFUL return if 
it was SUCCESSFUL in the first attempt. For example, you submit a new process / 
feed and get SUCCESSFUL message return. Now if you run the same command / api 
request on same entity you will again get a SUCCESSFUL message. Same is true 
for other operations like schedule, kill, suspend and resume. Idempotency also 
by takes care of the condition when request is sent through prism and fails on 
one or more servers. For example prism is configured to send request to 3 
servers. First user sends a request to SUBMIT a process on all 3 of them, and 
receives a response SUCCESSFUL from all of them. Then due to some issue one of 
the servers goes down, and user send a request to schedule the submitted 
process. This time he will receive a response with PARTIAL status and a FAILURE 
message from the server that has gone down. If the users check he wi
 ll find the process would have been started and running on the 2 SUCCESSFUL 
servers. Now the issue with server is figured out and it is brought up. Sending 
the SCHEDULE request again through prism will result in a SUCCESSFUL response 
from prism as well as other three servers, but this time PROCESS will be 
SCHEDULED only on the server which had failed earlier and other two will keep 
running as before.</p></div>
+<div class="section">
+<h3>Alerting and Monitoring<a name="Alerting_and_Monitoring"></a></h3></div>
+<div class="section">
+<h4>Alerting<a name="Alerting"></a></h4>
+<p>Falcon provides monitoring of various events by capturing metrics of those 
events. The metric numbers can then be used to monitor performance and health 
of the Falcon system and the entire processing pipelines.</p>
+<p>Users can view the logs of these events in the metric.log file, by default 
this file is created under ${user.dir}/logs/ directory. Users may also extend 
the Falcon monitoring framework to send events to systems like 
Mondemand/lwes.</p>
+<p>The following events are captured by Falcon for logging the metrics:</p>
+<ol style="list-style-type: decimal">
+<li>New cluster definitions posted to Falcon (success &amp; failures)</li>
+<li>New feed definition posted to Falcon (success &amp; failures)</li>
+<li>New process definition posted to Falcon (success &amp; failures)</li>
+<li>Process update events (success &amp; failures)</li>
+<li>Feed update events (success &amp; failures)</li>
+<li>Cluster update events (success &amp; failures)</li>
+<li>Process suspend events (success &amp; failures)</li>
+<li>Feed suspend events (success &amp; failures)</li>
+<li>Process resume events (success &amp; failures)</li>
+<li>Feed resume events (success &amp; failures)</li>
+<li>Process remove events (success &amp; failures)</li>
+<li>Feed remove events (success &amp; failures)</li>
+<li>Cluster remove events (success &amp; failures)</li>
+<li>Process instance kill events (success &amp; failures)</li>
+<li>Process instance re-run events (success &amp; failures)</li>
+<li>Process instance generation events</li>
+<li>Process instance failure events</li>
+<li>Process instance auto-retry events</li>
+<li>Process instance retry exhaust events</li>
+<li>Feed instance deletion event</li>
+<li>Feed instance deletion failure event (no retries)</li>
+<li>Feed instance replication event</li>
+<li>Feed instance replication failure event</li>
+<li>Feed instance replication auto-retry event</li>
+<li>Feed instance replication retry exhaust event</li>
+<li>Feed instance late arrival event</li>
+<li>Feed instance post cut-off arrival event</li>
+<li>Process re-run due to late feed event</li>
+<li>Transaction rollback failed event</li></ol>
+<p>The metric logged for an event has the following properties:</p>
+<ol style="list-style-type: decimal">
+<li>Action - Name of the event.</li>
+<li>Dimensions - A list of name/value pairs of various attributes for a given 
action.</li>
+<li>Status- Status of an action FAILED/SUCCEEDED.</li>
+<li>Time-taken - Time taken in nano seconds for a given action.</li></ol>
+<p>An example for an event logged for a submit of a new process definition:</p>
+<p>2012-05-04 12:23:34,026 {Action:submit, Dimensions:{entityType=process}, 
Status: SUCCEEDED, Time-taken:97087000 ns}</p>
+<p>Users may parse the metric.log or capture these events from custom 
monitoring frameworks and can plot various graphs  or send alerts according to 
their requirements.</p></div>
+<div class="section">
+<h4>Notifications<a name="Notifications"></a></h4>
+<p>Falcon creates a JMS topic for every process/feed that is scheduled in 
Falcon. The implementation class and the broker url of the JMS engine are read 
from the dependent cluster's definition. Users may register consumers on the 
required topic to check the availability or status of feed instances.</p>
+<p>For a given process that is scheduled, the name of the topic is same as the 
process name. Falcon sends a Map message for every feed produced by the 
instance of a process to the JMS topic. The JMS <a 
href="./MapMessage.html">MapMessage</a> sent to a topic has the following 
properties: entityName, feedNames, feedInstancePath, workflowId, runId, 
nominalTime, timeStamp, brokerUrl, brokerImplClass, entityType, operation, 
logFile, topicName, status, brokerTTL;</p>
+<p>For a given feed that is scheduled, the name of the topic is same as the 
feed name. Falcon sends a map message for every feed instance that is 
deleted/archived/replicated depending upon the retention policy set in the feed 
definition. The JMS <a href="./MapMessage.html">MapMessage</a> sent to a topic 
has the following properties: entityName, feedNames, feedInstancePath, 
workflowId, runId, nominalTime, timeStamp, brokerUrl, brokerImplClass, 
entityType, operation, logFile, topicName, status, brokerTTL;</p>
+<p>The JMS messages are automatically purged after a certain period (default 3 
days) by the Falcon JMS house-keeping service.TTL (Time-to-live) for JMS 
message can be configured in the Falcon's startup.properties file.</p></div>
+<div class="section">
+<h3>Falcon EL Expressions<a name="Falcon_EL_Expressions"></a></h3>
+<p>Falcon expression language can be used in process definition for giving the 
start and end instance for various feeds.</p>
+<p>Before going into how to use falcon EL expressions it is necessary to 
understand what does instance and instance start time refer to with respect to 
Falcon.</p>
+<p>Lets consider a part of process definition below:</p>
+<div class="source">
+<pre>
 &lt;?xml version=&quot;1.0&quot; encoding=&quot;UTF-8&quot; 
standalone=&quot;yes&quot;?&gt;
 &lt;process name=&quot;testProcess&quot;&gt;
     &lt;clusters&gt;
@@ -182,7 +493,38 @@ validity start=&quot;2009-01-01T00:00Z&q
 ...
 &lt;/process&gt;
 
-</pre></div><p>The above definition says that the process will start at 2nd of 
Jan 2010 at 1 am and will end at 3rd of Jan 2011 at 3 am on cluster corp. Also 
process will start a user-defined workflow (which we will call instance) every 
30 mins.</p><p>This means starting 2010-01-02T01:00Z every 30 mins a instance 
will start will run user defined workflow. Now if this workflow needs some 
input data and produce some output, user needs to give that in &lt;inputs&gt; 
and &lt;outputs&gt; tags.  Since the inputs that the process takes can be 
distributed over a wide range we use the limits by giving &quot;start&quot; and 
&quot;end&quot; instance for input. Output is only one location so only 
instance is given.  The timeout specifies, the how long a given instance should 
wait for input data before being terminated by the workflow 
engine.</p><p>Coming back to instance start time, since a instance will start 
every 30 mins starting 2010-01-02T01:00Z, the time it is scheduled to start is 
called
  its instance time. For example first few instance time for above example 
are:</p><p><pre>Instance Number      instance start Time</pre></p><p><pre>1     
              2010-01-02T01:00Z</pre> <pre>2                  
2010-01-02T01:30Z</pre> <pre>3                  2010-01-02T02:00Z</pre> <pre>4  
                2010-01-02T02:30Z</pre> <pre>.                         .</pre> 
<pre>.                          .</pre> <pre>.                          .</pre> 
<pre>.                          .</pre></p><p>Now lets go to how to use 
expression language. Only thing to keep in mind is all EL evaluation are done 
based on the start time of that instance, and very instance will have different 
inputs / outputs based on the feed instance given in process 
definition.</p><p>All the parameters in various El can be both positive, zero 
or negative values. Positive values indicate so many units in future, zero 
means the base time EL has been resolved to, and negative values indicate 
corresponding units in past.</p><p><b><i>Note: if no instance is created at the 
resolved time, then the instance immediately before it is 
considered.</i></b></p><p>Falc
 on currently support following ELs:</p><p></p><ul><li>1.       
<b>now(hours,minutes)</b>: now refer to the instance start time. Hours and 
minutes given are in reference with the start time of instance. For example 
now(-2,40)  corresponds to feed instance at -2 hr and +40 minutes i.e.  feed 
instance 80 mins before the instance start time. Id user would have given 
now(0,-80) it would have correspond to the same.</li><li>2.       
<b>today(hours,minutes)</b>: hours and minutes given in this EL corresponds to 
instance from the start day of instance start time. Ie. If instance start is at 
2010-01-02T01:30Z  then today(-3,-20) will mean instance created at 
2010-01-01T20:40 and today(3,20) will correspond to 
2010-01-02T3:20Z.</li></ul><p></p><ul><li>3.     
<b>yesterday(hours,minutes)</b>: As the name suggest EL yesterday picks up feed 
instances with respect to start of day yesterday. Hours and minutes are added 
to the 00 hours starting yesterday, Example: yesterday(24,30) will actually 
correspond to 00:30 
 am of today, for 2010-01-02T01:30Z this would mean 2010-01-02:00:30 
feed.</li></ul><p></p><ul><li>4.   <b>currentMonth(day,hour,minute)</b>: 
Current month takes the reference to start of the month with respect to 
instance start time. One thing to keep in mind is that day is added to the 
first day of the month. So the value of day is the number of days you want to 
add to the first day of the month. For example: for instance start time 
2010-01-12T01:30Z and El as currentMonth(3,2,40) will correspond to feed 
created at 2010-01-04T02:40Z and currentMonth(0,0,0) will mean 
2010-01-01T00:00Z.</li></ul><p></p><ul><li>5.    
<b>lastMonth(day,hour,minute)</b>: Parameters for lastMonth is same as 
currentMonth, only difference being the reference is shifted to one month back. 
For instance start 2010-01-12T01:30Z lastMonth(2,3,30) will correspond to feed 
instance at 2009-12-03:T03:30Z</li></ul><p></p><ul><li>6. 
<b>currentYear(month,day,hour,minute)</b>: The month,day,hour, minutes in the 
pareamter are
  added with reference to the start of year of instance start time. For our 
exmple start time 2010-01-02:00:30 reference will go back to 
2010-01-01:T00:00Z. Also similar to days, months are added to the 1st month 
that Jan. So currentYear(0,2,2,20) will mean 2010-01-03T02:20Z while 
currentYear(11,2,2,20) will mean 2010-12-03T02:20Z</li></ul><p></p><ul><li>7. 
<b>lastYear(month,day,hour,minute)</b>: This is exactly similary to currentYear 
in usage&gt; only difference being start reference is taken to start of 
previous year. For example: lastYear(4,2,2,20) will corrospond to feed insatnce 
created at 2009-05-03T02:20Z and lastYear(12,2,2,20) will corrospond to feed at 
2010-01-03T02:20Z.</li></ul><p></p><ul><li>8. <b>latest(number of latest 
instance)</b>: This will simply make you input consider the number of latest 
available instance of the feed given as parameter. For example: latest(0) will 
consider the last available instance of feed, where as latest latest(-1) will 
consider second las
 t available feed and latest(-3) will consider 4th last available 
feed.</li></ul></div>
+</pre></div>
+<p>The above definition says that the process will start at 2nd of Jan 2010 at 
1 am and will end at 3rd of Jan 2011 at 3 am on cluster corp. Also process will 
start a user-defined workflow (which we will call instance) every 30 mins.</p>
+<p>This means starting 2010-01-02T01:00Z every 30 mins a instance will start 
will run user defined workflow. Now if this workflow needs some input data and 
produce some output, user needs to give that in &lt;inputs&gt; and 
&lt;outputs&gt; tags.  Since the inputs that the process takes can be 
distributed over a wide range we use the limits by giving &quot;start&quot; and 
&quot;end&quot; instance for input. Output is only one location so only 
instance is given.  The timeout specifies, the how long a given instance should 
wait for input data before being terminated by the workflow engine.</p>
+<p>Coming back to instance start time, since a instance will start every 30 
mins starting 2010-01-02T01:00Z, the time it is scheduled to start is called 
its instance time. For example first few instance time for above example 
are:</p>
+<p><pre>Instance Number      instance start Time</pre></p>
+<p><pre>1                       2010-01-02T01:00Z</pre> <pre>2                 
 2010-01-02T01:30Z</pre> <pre>3                  2010-01-02T02:00Z</pre> <pre>4 
                 2010-01-02T02:30Z</pre> <pre>.                         .</pre> 
<pre>.                          .</pre> <pre>.                          .</pre> 
<pre>.                          .</pre></p>
+<p>Now lets go to how to use expression language. Only thing to keep in mind 
is all EL evaluation are done based on the start time of that instance, and 
very instance will have different inputs / outputs based on the feed instance 
given in process definition.</p>
+<p>All the parameters in various El can be both positive, zero or negative 
values. Positive values indicate so many units in future, zero means the base 
time EL has been resolved to, and negative values indicate corresponding units 
in past.</p>
+<p><b><i>Note: if no instance is created at the resolved time, then the 
instance immediately before it is considered.</i></b></p>
+<p>Falcon currently support following ELs:</p>
+<p></p>
+<ul>
+<li>1. <b>now(hours,minutes)</b>: now refer to the instance start time. Hours 
and minutes given are in reference with the start time of instance. For example 
now(-2,40)  corresponds to feed instance at -2 hr and +40 minutes i.e.  feed 
instance 80 mins before the instance start time. Id user would have given 
now(0,-80) it would have correspond to the same.</li>
+<li>2. <b>today(hours,minutes)</b>: hours and minutes given in this EL 
corresponds to instance from the start day of instance start time. Ie. If 
instance start is at 2010-01-02T01:30Z  then today(-3,-20) will mean instance 
created at 2010-01-01T20:40 and today(3,20) will correspond to 
2010-01-02T3:20Z.</li></ul>
+<p></p>
+<ul>
+<li>3. <b>yesterday(hours,minutes)</b>: As the name suggest EL yesterday picks 
up feed instances with respect to start of day yesterday. Hours and minutes are 
added to the 00 hours starting yesterday, Example: yesterday(24,30) will 
actually correspond to 00:30 am of today, for 2010-01-02T01:30Z this would mean 
2010-01-02:00:30 feed.</li></ul>
+<p></p>
+<ul>
+<li>4. <b>currentMonth(day,hour,minute)</b>: Current month takes the reference 
to start of the month with respect to instance start time. One thing to keep in 
mind is that day is added to the first day of the month. So the value of day is 
the number of days you want to add to the first day of the month. For example: 
for instance start time 2010-01-12T01:30Z and El as currentMonth(3,2,40) will 
correspond to feed created at 2010-01-04T02:40Z and currentMonth(0,0,0) will 
mean 2010-01-01T00:00Z.</li></ul>
+<p></p>
+<ul>
+<li>5. <b>lastMonth(day,hour,minute)</b>: Parameters for lastMonth is same as 
currentMonth, only difference being the reference is shifted to one month back. 
For instance start 2010-01-12T01:30Z lastMonth(2,3,30) will correspond to feed 
instance at 2009-12-03:T03:30Z</li></ul>
+<p></p>
+<ul>
+<li>6. <b>currentYear(month,day,hour,minute)</b>: The month,day,hour, minutes 
in the pareamter are added with reference to the start of year of instance 
start time. For our exmple start time 2010-01-02:00:30 reference will go back 
to 2010-01-01:T00:00Z. Also similar to days, months are added to the 1st month 
that Jan. So currentYear(0,2,2,20) will mean 2010-01-03T02:20Z while 
currentYear(11,2,2,20) will mean 2010-12-03T02:20Z</li></ul>
+<p></p>
+<ul>
+<li>7. <b>lastYear(month,day,hour,minute)</b>: This is exactly similary to 
currentYear in usage&gt; only difference being start reference is taken to 
start of previous year. For example: lastYear(4,2,2,20) will corrospond to feed 
insatnce created at 2009-05-03T02:20Z and lastYear(12,2,2,20) will corrospond 
to feed at 2010-01-03T02:20Z.</li></ul>
+<p></p>
+<ul>
+<li>8. <b>latest(number of latest instance)</b>: This will simply make you 
input consider the number of latest available instance of the feed given as 
parameter. For example: latest(0) will consider the last available instance of 
feed, where as latest latest(-1) will consider second last available feed and 
latest(-3) will consider 4th last available feed.</li></ul></div>
                   </div>
           </div>
 
@@ -190,7 +532,7 @@ validity start=&quot;2009-01-01T00:00Z&q
 
     <footer>
             <div class="container">
-              <div class="row span12">Copyright &copy;                    
2013-2014
+              <div class="row span12">Copyright &copy;                    
2013-2015
                         <a href="http://www.apache.org";>Apache Software 
Foundation</a>.
             All Rights Reserved.      
                     


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