This documentation is for an out-of-date version of Apache Flink. We recommend you use the latest stable version.
Streaming Concepts #
Flink’s Table API and SQL support are unified APIs for batch and stream processing. This means that Table API and SQL queries have the same semantics regardless whether their input is bounded batch input or unbounded stream input.
The following pages explain concepts, practical limitations, and stream-specific configuration parameters of Flink’s relational APIs on streaming data.
State Management #
Table programs that run in streaming mode leverage all capabilities of Flink as a stateful stream processor.
In particular, a table program can be configured with a state backend and various checkpointing options for handling different requirements regarding state size and fault tolerance. It is possible to take a savepoint of a running Table API & SQL pipeline and to restore the application’s state at a later point in time.
State Usage #
Due to the declarative nature of Table API & SQL programs, it is not always obvious where and how much state is used within a pipeline. The planner decides whether state is necessary to compute a correct result. A pipeline is optimized to claim as little state as possible given the current set of optimizer rules.
Conceptually, source tables are never kept entirely in state. An implementer deals with logical tables (i.e. dynamic tables). Their state requirements depend on the used operations.
Queries such as
SELECT ... FROM ... WHERE which only consist of field projections or filters are usually
stateless pipelines. However, operations such as joins, aggregations, or deduplications require keeping
intermediate results in a fault-tolerant storage for which Flink’s state abstractions are used.
Please refer to the individual operator documentation for more details about how much state is required and how to limit a potentially ever-growing state size.
For example, a regular SQL join of two tables requires the operator to keep both input tables in state entirely. For correct SQL semantics, the runtime needs to assume that a matching could occur at any point in time from both sides. Flink provides optimized window and interval joins that aim to keep the state size small by exploiting the concept of watermarks.
Another example is the following query that computes the number of clicks per session.
SELECT sessionId, COUNT(*) FROM clicks GROUP BY sessionId;
sessionId attribute is used as a grouping key and the continuous query maintains a count
sessionId it observes. The
sessionId attribute is evolving over time and
values are only active until the session ends, i.e., for a limited period of time. However, the
continuous query cannot know about this property of
sessionId and expects that every
value can occur at any point of time. It maintains a count for each observed
Consequently, the total state size of the query is continuously growing as more and more
values are observed.
Idle State Retention Time #
The Idle State Retention Time parameter
defines for how long the state of a key is retained without being updated before it is removed.
For the previous example query, the count of a
sessionId would be removed as soon as it has not
been updated for the configured period of time.
By removing the state of a key, the continuous query completely forgets that it has seen this key
before. If a record with a key, whose state has been removed before, is processed, the record will
be treated as if it was the first record with the respective key. For the example above this means
that the count of a
sessionId would start again at
Stateful Upgrades and Evolution #
Table programs that are executed in streaming mode are intended as standing queries which means they are defined once and are continuously evaluated as static end-to-end pipelines.
In case of stateful pipelines, any change to both the query or Flink’s planner might lead to a completely different execution plan. This makes stateful upgrades and the evolution of table programs challenging at the moment. The community is working on improving those shortcomings.
For example, by adding a filter predicate, the optimizer might decide to reorder joins or change the schema of an intermediate operator. This prevents restoring from a savepoint due to either changed topology or different column layout within the state of an operator.
The query implementer must ensure that the optimized plans before and after the change are compatible.
EXPLAIN command in SQL or
table.explain() in Table API to get insights.
Since new optimizer rules are continuously added, and operators become more efficient and specialized, also the upgrade to a newer Flink version could lead to incompatible plans.
Currently, the framework cannot guarantee that state can be mapped from a savepoint to a new table operator topology.
In other words: Savepoints are only supported if both the query and the Flink version remain constant.
Since the community rejects contributions that modify the optimized plan and the operator topology
in a patch version (e.g. from
1.13.2), it should be safe to upgrade a Table API & SQL
pipeline to a newer bug fix release. However, major-minor upgrades from (e.g. from
are not supported.
For both shortcomings (i.e. modified query and modified Flink version), we recommend to investigate whether the state of an updated table program can be “warmed up” (i.e. initialized) with historical data again before switching to real-time data. The Flink community is working on a hybrid source to make this switching as convenient as possible.
Where to go next? #
- Dynamic Tables: Describes the concept of dynamic tables.
- Time attributes: Explains time attributes and how time attributes are handled in Table API & SQL.
- Versioned Tables: Describes the Temporal Table concept.
- Joins in Continuous Queries: Different supported types of Joins in Continuous Queries.
- Query configuration: Lists Table API & SQL specific configuration options.