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Execution Mode (Batch/Streaming)

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.

Apache Flink’s unified approach to stream and batch processing means that a DataStream application executed over bounded input will produce the same final results regardless of the configured execution mode. It is important to note what final means here: a job executing in STREAMING mode might produce incremental updates (think upserts in a database) while a BATCH job would only produce one final result at the end. The final result will be the same if interpreted correctly but the way to get there can be different.

By enabling BATCH execution, we allow Flink to apply additional optimizations that we can only do when we know that our input is bounded. For example, different join/aggregation strategies can be used, in addition to a different shuffle implementation that allows more efficient task scheduling and failure recovery behavior. We will go into some of the details of the execution behavior below.

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 indefinitely. 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.

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.

One obvious outlier is when you want to use a bounded job to bootstrap some job state that you then want to use in an unbounded job. For example, by running a bounded job using STREAMING mode, taking a savepoint, and then restoring that savepoint on an unbounded job. This is a very specific use case and one that might soon become obsolete when we allow producing a savepoint as additional output of a BATCH execution job.

Another case where you might run a bounded job using STREAMING mode is when writing tests for code that will eventually run with unbounded sources. For testing it can be more natural to use a bounded source in those cases.

Configuring BATCH execution mode

The execution mode can be configured via the execution.runtime-mode setting. There are three possible values:

  • STREAMING: The classic DataStream execution mode (default)
  • BATCH: Batch-style execution on the DataStream API
  • AUTOMATIC: Let the system decide based on the boundedness of the sources

This can be configured via command line parameters of bin/flink run ..., or programmatically when creating/configuring the StreamExecutionEnvironment.

Here’s how you can configure the execution mode via the command line:

$ bin/flink run -Dexecution.runtime-mode=BATCH examples/streaming/WordCount.jar

This example shows how you can configure the execution mode in code:

StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();
env.setRuntimeMode(RuntimeExecutionMode.BATCH);

Execution Behavior

This section provides an overview of the execution behavior of BATCH execution mode and contrasts it with STREAMING execution mode. For more details, please refer to the FLIPs that introduced this feature: FLIP-134 and FLIP-140.

Task Scheduling And Network Shuffle

Flink jobs consist of different operations that are connected together in a dataflow graph. The system decides how to schedule the execution of these operations on different processes/machines (TaskManagers) and how data is shuffled (sent) between them.

Multiple operations/operators can be chained together using a feature called chaining. A group of one or multiple (chained) operators that Flink considers as a unit of scheduling is called a task. Often the term subtask is used to refer to the individual instances of tasks that are running in parallel on multiple TaskManagers but we will only use the term task here.

Task scheduling and network shuffles work differently for BATCH and STREAMING execution mode. Mostly due to the fact that we know our input data is bounded in BATCH execution mode, which allows Flink to use more efficient data structures and algorithms.

We will use this example to explain the differences in task scheduling and network transfer:

StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();

DataStreamSource<String> source = env.fromElements(...);

source.name("source")
	.map(...).name("map1")
	.map(...).name("map2")
	.rebalance()
	.map(...).name("map3")
	.map(...).name("map4")
	.keyBy((value) -> value)
	.map(...).name("map5")
	.map(...).name("map6")
	.sinkTo(...).name("sink");

Operations that imply a 1-to-1 connection pattern between operations, such as map(), flatMap(), or filter() can just forward data straight to the next operation, which allows these operations to be chained together. This means that Flink would not normally insert a network shuffle between them.

Operation such as keyBy() or rebalance() on the other hand require data to be shuffled between different parallel instances of tasks. This induces a network shuffle.

For the above example Flink would group operations together as tasks like this:

  • Task1: source, map1, and map2
  • Task2: map3, map4
  • Task3: map5, map6, and sink

And we have a network shuffle between Tasks 1 and 2, and also Tasks 2 and 3. This is a visual representation of that job:

Example Job Graph

STREAMING Execution Mode

In STREAMING execution mode, all tasks need to be online/running all the time. This allows Flink to immediately process new records through the whole pipeline, which we need for continuous and low-latency stream processing. This also means that the TaskManagers that are allotted to a job need to have enough resources to run all the tasks at the same time.

Network shuffles are pipelined, meaning that records are immediately sent to downstream tasks, with some buffering on the network layer. Again, this is required because when processing a continuous stream of data there are no natural points (in time) where data could be materialized between tasks (or pipelines of tasks). This contrasts with BATCH execution mode where intermediate results can be materialized, as explained below.

BATCH Execution Mode

In BATCH execution mode, the tasks of a job can be separated into stages that can be executed one after another. We can do this because the input is bounded and Flink can therefore fully process one stage of the pipeline before moving on to the next. In the above example the job would have three stages that correspond to the three tasks that are separated by the shuffle barriers.

Instead of sending records immediately to downstream tasks, as explained above for STREAMING mode, processing in stages requires Flink to materialize intermediate results of tasks to some non-ephemeral storage which allows downstream tasks to read them after upstream tasks have already gone off line. This will increase the latency of processing but comes with other interesting properties. For one, this allows Flink to backtrack to the latest available results when a failure happens instead of restarting the whole job. Another side effect is that BATCH jobs can execute on fewer resources (in terms of available slots at TaskManagers) because the system can execute tasks sequentially one after the other.

TaskManagers will keep intermediate results at least as long as downstream tasks have not consumed them. (Technically, they will be kept until the consuming pipelined regions have produced their output.) After that, they will be kept for as long as space allows in order to allow the aforementioned backtracking to earlier results in case of a failure.

State Backends / State

In STREAMING mode, Flink uses a StateBackend to control how state is stored and how checkpointing works.

In BATCH mode, the configured state backend is ignored. Instead, the input of a keyed operation is grouped by key (using sorting) and then we process all records of a key in turn. This allows keeping only the state of only one key at the same time. State for a given key will be discarded when moving on to the next key.

See FLIP-140 for background information on this.

Event Time / Watermarks

When it comes to supporting event time, Flink’s streaming runtime builds on the pessimistic assumption that events may come out-of-order, i.e. an event with timestamp t may come after an event with timestamp t+1. Because of this, the system can never be sure that no more elements with timestamp t < T for a given timestamp T can come in the future. To amortise the impact of this out-of-orderness on the final result while making the system practical, in STREAMING mode, Flink uses a heuristic called Watermarks. A watermark with timestamp T signals that no element with timestamp t < T will follow.

In BATCH mode, where the input dataset is known in advance, there is no need for such a heuristic as, at the very least, elements can be sorted by timestamp so that they are processed in temporal order. For readers familiar with streaming, in BATCH we can assume “perfect watermarks”.

Given the above, in BATCH mode, we only need a MAX_WATERMARK at the end of the input associated with each key, or at the end of input if the input stream is not keyed. Based on this scheme, all registered timers will fire at the end of time and user-defined WatermarkAssigners or WatermarkStrategies are ignored.

Processing Time

Processing Time is the wall-clock time on the machine that a record is processed, at the specific instance that the record is being processed. Based on this definition, we see that the results of a computation that is based on processing time are not reproducible. This is because the same record processed twice will have two different timestamps.

Despite the above, using processing time in STREAMING mode can be useful. The reason has to do with the fact that streaming pipelines often ingest their unbounded input in real time so there is a correlation between event time and processing time. In addition, because of the above, in STREAMING mode 1h in event time can often be almost 1h in processing time, or wall-clock time. So using processing time can be used for early (incomplete) firings that give hints about the expected results.

This correlation does not exist in the batch world where the input dataset is static and known in advance. Given this, in BATCH mode we allow users to request the current processing time and register processing time timers, but, as in the case of Event Time, all the timers are going to fire at the end of the input.

Conceptually, we can imagine that processing time does not advance during the execution of a job and we fast-forward to the end of time when the whole input is processed.

Failure Recovery

In STREAMING execution mode, Flink uses checkpoints for failure recovery. Take a look at the checkpointing documentation for hands-on documentation about this and how to configure it. There is also a more introductory section about fault tolerance via state snapshots that explains the concepts at a higher level.

One of the characteristics of checkpointing for failure recovery is that Flink will restart all the running tasks from a checkpoint in case of a failure. This can be more costly than what we have to do in BATCH mode (as explained below), which is one of the reasons that you should use BATCH execution mode if your job allows it.

In BATCH execution mode, Flink will try and backtrack to previous processing stages for which intermediate results are still available. Potentially, only the tasks that failed (or their predecessors in the graph) will have to be restarted, which can improve processing efficiency and overall processing time of the job compared to restarting all tasks from a checkpoint.

Important Considerations

Compared to classic STREAMING execution mode, in BATCH mode some things might not work as expected. Some features will work slightly differently while others are not supported.

Behavior Change in BATCH mode:

  • “Rolling” operations such as reduce() or sum() emit an incremental update for every new record that arrives in STREAMING mode. In BATCH mode, these operations are not “rolling”. They emit only the final result.

Unsupported in BATCH mode:

Custom operators should be implemented with care, otherwise they might behave improperly. See also additional explanations below for more details.

Checkpointing

As explained above, failure recovery for batch programs does not use checkpointing.

It is important to remember that because there are no checkpoints, certain features such as CheckpointListener and, as a result, Kafka’s EXACTLY_ONCE mode or StreamingFileSink’s OnCheckpointRollingPolicy won’t work. If you need a transactional sink that works in BATCH mode make sure it uses the Unified Sink API as proposed in FLIP-143.

You can still use all the state primitives, it’s just that the mechanism used for failure recovery will be different.

Broadcast State

This feature was introduced to allow users to implement use-cases where a “control” stream needs to be broadcast to all downstream tasks, and the broadcast elements, e.g. rules, need to be applied to all incoming elements from another stream.

In this pattern, Flink provides no guarantees about the order in which the inputs are read. Use-cases like the one above make sense in the streaming world where jobs are expected to run for a long period with input data that are not known in advance. In these settings, requirements may change over time depending on the incoming data.

In the batch world though, we believe that such use-cases do not make much sense, as the input (both the elements and the control stream) are static and known in advance.

We plan to support a variation of that pattern for BATCH processing where the broadcast side is processed first entirely in the future.

Writing Custom Operators

It is important to remember the assumptions made for BATCH execution mode when writing a custom operator. Otherwise, an operator that works just fine for STREAMING mode might produce wrong results in BATCH mode. Operators are never scoped to a particular key which means they see some properties of BATCH processing Flink tries to leverage.

First of all you should not cache the last seen watermark within an operator. In BATCH mode we process records key by key. As a result, the Watermark will switch from MAX_VALUE to MIN_VALUE between each key. You should not assume that the Watermark will always be ascending in an operator. For the same reasons timers will fire first in key order and then in timestamp order within each key. Moreover, operations that change a key manually are not supported.