aljoscha commented on a change in pull request #14114:
URL: https://github.com/apache/flink/pull/14114#discussion_r526017020



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File path: docs/dev/datastream_execution_mode.md
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+---
+title: "Execution Mode (Batch/Streaming)"
+nav-id: datastream_execution_mode
+nav-parent_id: streaming
+nav-pos: 1
+---
+<!--
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+KIND, either express or implied.  See the License for the
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+-->
+
+The DataStream API supports different runtime execution modes from which you
+can choose depending on the requirements of your use case and the
+characteristics of your job.
+
+There is the "classic" execution behavior of the DataStream API which we call
+`STREAMING` execution mode. This should be used for unbounded jobs that require
+continuous incremental processing and are expected to stay online indefinitely.
+
+Additionally, there is a batch-style execution mode that we call `BATCH`
+execution mode. This executes jobs in a way that is more reminiscent of batch
+processing frameworks such as MapReduce. This should be used for bounded jobs
+for which you have a known fixed input and which do not run continuously.
+
+We have these different execution modes because `BATCH` execution allows some
+additional optimizations that we can only do when we now that our input is
+bounded. For example, different join/aggregation strategies can be used, in
+additional to a different shuffle implementation that allows more efficient
+failure recovery behavior. We will go into some of the details of the execution
+behavior below.
+
+* This will be replaced by the TOC
+{:toc}
+
+## When can/should I use BATCH execution mode?
+
+The BATCH execution mode can only be used for Jobs/Flink Programs that are
+_bounded_. Boundedness is a property of a data source that tells us whether all
+the input coming from that source is known before execution or whether new data
+will show up, potentially for forever. A job, in turn, is bounded if all its
+sources are bounded and unbounded otherwise.
+
+STREAMING execution mode, on the other hand, can be used for both bounded and
+unbounded jobs.
+
+Another term that is typically used for bounded sources is _batch source_. Or,
+we can say that we are working with a batch data set or a batch of data. Some
+typical other terms for an unbounded source are _continuous source_, _streaming
+source_, _stream_, or _infinite stream_.
+
+As a rule of thumb, you should be using BATCH execution mode when your program
+is bounded because this will be more efficient. You have to use STREAMING
+execution mode when your program is unbounded because only this mode is general
+enough to be able to deal with continuous data streams.
+
+TODO: Should we even go into this?

Review comment:
       Will do




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