Pattern Recognition

Streaming

It is a common use case to search for a set of event patterns, especially in case of data streams. Flink comes with a complex event processing (CEP) library which allows for pattern detection in event streams. Furthermore, Flink’s SQL API provides a relational way of expressing queries with a large set of built-in functions and rule-based optimizations that can be used out of the box.

In December 2016, the International Organization for Standardization (ISO) released a new version of the SQL standard which includes Row Pattern Recognition in SQL (ISO/IEC TR 19075-5:2016). It allows Flink to consolidate CEP and SQL API using the MATCH_RECOGNIZE clause for complex event processing in SQL.

A MATCH_RECOGNIZE clause enables the following tasks:

  • Logically partition and order the data that is used with the PARTITION BY and ORDER BY clauses.
  • Define patterns of rows to seek using the PATTERN clause. These patterns use a syntax similar to that of regular expressions.
  • The logical components of the row pattern variables are specified in the DEFINE clause.
  • Define measures, which are expressions usable in other parts of the SQL query, in the MEASURES clause.

The following example illustrates the syntax for basic pattern recognition:

  1. SELECT T.aid, T.bid, T.cid
  2. FROM MyTable
  3. MATCH_RECOGNIZE (
  4. PARTITION BY userid
  5. ORDER BY proctime
  6. MEASURES
  7. A.id AS aid,
  8. B.id AS bid,
  9. C.id AS cid
  10. PATTERN (A B C)
  11. DEFINE
  12. A AS name = 'a',
  13. B AS name = 'b',
  14. C AS name = 'c'
  15. ) AS T

This page will explain each keyword in more detail and will illustrate more complex examples.

Flink’s implementation of the MATCH_RECOGNIZE clause is a subset of the full standard. Only those features documented in the following sections are supported. Additional features may be supported based on community feedback, please also take a look at the known limitations.

Introduction and Examples

Installation Guide

The pattern recognition feature uses the Apache Flink’s CEP library internally. In order to be able to use the MATCH_RECOGNIZE clause, the library needs to be added as a dependency to your Maven project.

  1. <dependency>
  2. <groupId>org.apache.flink</groupId>
  3. <artifactId>flink-cep</artifactId>
  4. <version>1.18.1</version>
  5. </dependency>

Alternatively, you can also add the dependency to the cluster classpath (see the dependency section for more information).

If you want to use the MATCH_RECOGNIZE clause in the SQL Client, you don’t have to do anything as all the dependencies are included by default.

SQL Semantics

Every MATCH_RECOGNIZE query consists of the following clauses:

  • PARTITION BY - defines the logical partitioning of the table; similar to a GROUP BY operation.
  • ORDER BY - specifies how the incoming rows should be ordered; this is essential as patterns depend on an order.
  • MEASURES - defines output of the clause; similar to a SELECT clause.
  • ONE ROW PER MATCH - output mode which defines how many rows per match should be produced.
  • AFTER MATCH SKIP - specifies where the next match should start; this is also a way to control how many distinct matches a single event can belong to.
  • PATTERN - allows constructing patterns that will be searched for using a regular expression-like syntax.
  • DEFINE - this section defines the conditions that the pattern variables must satisfy.

Attention Currently, the MATCH_RECOGNIZE clause can only be applied to an append table. Furthermore, it always produces an append table as well.

Examples

For our examples, we assume that a table Ticker has been registered. The table contains prices of stocks at a particular point in time.

The table has a following schema:

  1. Ticker
  2. |-- symbol: String # symbol of the stock
  3. |-- price: Long # price of the stock
  4. |-- tax: Long # tax liability of the stock
  5. |-- rowtime: TimeIndicatorTypeInfo(rowtime) # point in time when the change to those values happened

For simplification, we only consider the incoming data for a single stock ACME. A ticker could look similar to the following table where rows are continuously appended.

  1. symbol rowtime price tax
  2. ====== ==================== ======= =======
  3. 'ACME' '01-Apr-11 10:00:00' 12 1
  4. 'ACME' '01-Apr-11 10:00:01' 17 2
  5. 'ACME' '01-Apr-11 10:00:02' 19 1
  6. 'ACME' '01-Apr-11 10:00:03' 21 3
  7. 'ACME' '01-Apr-11 10:00:04' 25 2
  8. 'ACME' '01-Apr-11 10:00:05' 18 1
  9. 'ACME' '01-Apr-11 10:00:06' 15 1
  10. 'ACME' '01-Apr-11 10:00:07' 14 2
  11. 'ACME' '01-Apr-11 10:00:08' 24 2
  12. 'ACME' '01-Apr-11 10:00:09' 25 2
  13. 'ACME' '01-Apr-11 10:00:10' 19 1

The task is now to find periods of a constantly decreasing price of a single ticker. For this, one could write a query like:

  1. SELECT *
  2. FROM Ticker
  3. MATCH_RECOGNIZE (
  4. PARTITION BY symbol
  5. ORDER BY rowtime
  6. MEASURES
  7. START_ROW.rowtime AS start_tstamp,
  8. LAST(PRICE_DOWN.rowtime) AS bottom_tstamp,
  9. LAST(PRICE_UP.rowtime) AS end_tstamp
  10. ONE ROW PER MATCH
  11. AFTER MATCH SKIP TO LAST PRICE_UP
  12. PATTERN (START_ROW PRICE_DOWN+ PRICE_UP)
  13. DEFINE
  14. PRICE_DOWN AS
  15. (LAST(PRICE_DOWN.price, 1) IS NULL AND PRICE_DOWN.price < START_ROW.price) OR
  16. PRICE_DOWN.price < LAST(PRICE_DOWN.price, 1),
  17. PRICE_UP AS
  18. PRICE_UP.price > LAST(PRICE_DOWN.price, 1)
  19. ) MR;

The query partitions the Ticker table by the symbol column and orders it by the rowtime time attribute.

The PATTERN clause specifies that we are interested in a pattern with a starting event START_ROW that is followed by one or more PRICE_DOWN events and concluded with a PRICE_UP event. If such a pattern can be found, the next pattern match will be seeked at the last PRICE_UP event as indicated by the AFTER MATCH SKIP TO LAST clause.

The DEFINE clause specifies the conditions that need to be met for a PRICE_DOWN and PRICE_UP event. Although the START_ROW pattern variable is not present it has an implicit condition that is evaluated always as TRUE.

A pattern variable PRICE_DOWN is defined as a row with a price that is smaller than the price of the last row that met the PRICE_DOWN condition. For the initial case or when there is no last row that met the PRICE_DOWN condition, the price of the row should be smaller than the price of the preceding row in the pattern (referenced by START_ROW).

A pattern variable PRICE_UP is defined as a row with a price that is larger than the price of the last row that met the PRICE_DOWN condition.

This query produces a summary row for each period in which the price of a stock was continuously decreasing.

The exact representation of the output rows is defined in the MEASURES part of the query. The number of output rows is defined by the ONE ROW PER MATCH output mode.

  1. symbol start_tstamp bottom_tstamp end_tstamp
  2. ========= ================== ================== ==================
  3. ACME 01-APR-11 10:00:04 01-APR-11 10:00:07 01-APR-11 10:00:08

The resulting row describes a period of falling prices that started at 01-APR-11 10:00:04 and achieved the lowest price at 01-APR-11 10:00:07 that increased again at 01-APR-11 10:00:08.

Partitioning

It is possible to look for patterns in partitioned data, e.g., trends for a single ticker or a particular user. This can be expressed using the PARTITION BY clause. The clause is similar to using GROUP BY for aggregations.

It is highly advised to partition the incoming data because otherwise the MATCH_RECOGNIZE clause will be translated into a non-parallel operator to ensure global ordering.

Order of Events

Apache Flink allows for searching for patterns based on time; either processing time or event time.

In case of event time, the events are sorted before they are passed to the internal pattern state machine. As a consequence, the produced output will be correct regardless of the order in which rows are appended to the table. Instead, the pattern is evaluated in the order specified by the time contained in each row.

The MATCH_RECOGNIZE clause assumes a time attribute with ascending ordering as the first argument to ORDER BY clause.

For the example Ticker table, a definition like ORDER BY rowtime ASC, price DESC is valid but ORDER BY price, rowtime or ORDER BY rowtime DESC, price ASC is not.

Define & Measures

The DEFINE and MEASURES keywords have similar meanings to the WHERE and SELECT clauses in a simple SQL query.

The MEASURES clause defines what will be included in the output of a matching pattern. It can project columns and define expressions for evaluation. The number of produced rows depends on the output mode setting.

The DEFINE clause specifies conditions that rows have to fulfill in order to be classified to a corresponding pattern variable. If a condition is not defined for a pattern variable, a default condition will be used which evaluates to true for every row.

For a more detailed explanation about expressions that can be used in those clauses, please have a look at the event stream navigation section.

Aggregations

Aggregations can be used in DEFINE and MEASURES clauses. Both built-in and custom user defined functions are supported.

Aggregate functions are applied to each subset of rows mapped to a match. In order to understand how those subsets are evaluated have a look at the event stream navigation section.

The task of the following example is to find the longest period of time for which the average price of a ticker did not go below certain threshold. It shows how expressible MATCH_RECOGNIZE can become with aggregations. This task can be performed with the following query:

  1. SELECT *
  2. FROM Ticker
  3. MATCH_RECOGNIZE (
  4. PARTITION BY symbol
  5. ORDER BY rowtime
  6. MEASURES
  7. FIRST(A.rowtime) AS start_tstamp,
  8. LAST(A.rowtime) AS end_tstamp,
  9. AVG(A.price) AS avgPrice
  10. ONE ROW PER MATCH
  11. AFTER MATCH SKIP PAST LAST ROW
  12. PATTERN (A+ B)
  13. DEFINE
  14. A AS AVG(A.price) < 15
  15. ) MR;

Given this query and following input values:

  1. symbol rowtime price tax
  2. ====== ==================== ======= =======
  3. 'ACME' '01-Apr-11 10:00:00' 12 1
  4. 'ACME' '01-Apr-11 10:00:01' 17 2
  5. 'ACME' '01-Apr-11 10:00:02' 13 1
  6. 'ACME' '01-Apr-11 10:00:03' 16 3
  7. 'ACME' '01-Apr-11 10:00:04' 25 2
  8. 'ACME' '01-Apr-11 10:00:05' 2 1
  9. 'ACME' '01-Apr-11 10:00:06' 4 1
  10. 'ACME' '01-Apr-11 10:00:07' 10 2
  11. 'ACME' '01-Apr-11 10:00:08' 15 2
  12. 'ACME' '01-Apr-11 10:00:09' 25 2
  13. 'ACME' '01-Apr-11 10:00:10' 25 1
  14. 'ACME' '01-Apr-11 10:00:11' 30 1

The query will accumulate events as part of the pattern variable A as long as the average price of them does not exceed 15. For example, such a limit exceeding happens at 01-Apr-11 10:00:04. The following period exceeds the average price of 15 again at 01-Apr-11 10:00:11. Thus the results for said query will be:

  1. symbol start_tstamp end_tstamp avgPrice
  2. ========= ================== ================== ============
  3. ACME 01-APR-11 10:00:00 01-APR-11 10:00:03 14.5
  4. ACME 01-APR-11 10:00:05 01-APR-11 10:00:10 13.5

Aggregations can be applied to expressions, but only if they reference a single pattern variable. Thus SUM(A.price * A.tax) is a valid one, but AVG(A.price * B.tax) is not.

DISTINCT aggregations are not supported.

Defining a Pattern

The MATCH_RECOGNIZE clause allows users to search for patterns in event streams using a powerful and expressive syntax that is somewhat similar to the widespread regular expression syntax.

Every pattern is constructed from basic building blocks, called pattern variables, to which operators (quantifiers and other modifiers) can be applied. The whole pattern must be enclosed in brackets.

An example pattern could look like:

  1. PATTERN (A B+ C* D)

One may use the following operators:

  • Concatenation - a pattern like (A B) means that the contiguity is strict between A and B. Therefore, there can be no rows that were not mapped to A or B in between.
  • Quantifiers - modify the number of rows that can be mapped to the pattern variable.
    • *0 or more rows
    • +1 or more rows
    • ?0 or 1 rows
    • { n } — exactly n rows (n > 0)
    • { n, }n or more rows (n ≥ 0)
    • { n, m } — between n and m (inclusive) rows (0 ≤ n ≤ m, 0 < m)
    • { , m } — between 0 and m (inclusive) rows (m > 0)

Patterns that can potentially produce an empty match are not supported. Examples of such patterns are PATTERN (A*), PATTERN (A? B*), PATTERN (A{0,} B{0,} C*), etc.

Greedy & Reluctant Quantifiers

Each quantifier can be either greedy (default behavior) or reluctant. Greedy quantifiers try to match as many rows as possible while reluctant quantifiers try to match as few as possible.

In order to illustrate the difference, one can view the following example with a query where a greedy quantifier is applied to the B variable:

  1. SELECT *
  2. FROM Ticker
  3. MATCH_RECOGNIZE(
  4. PARTITION BY symbol
  5. ORDER BY rowtime
  6. MEASURES
  7. C.price AS lastPrice
  8. ONE ROW PER MATCH
  9. AFTER MATCH SKIP PAST LAST ROW
  10. PATTERN (A B* C)
  11. DEFINE
  12. A AS A.price > 10,
  13. B AS B.price < 15,
  14. C AS C.price > 12
  15. )

Given we have the following input:

  1. symbol tax price rowtime
  2. ======= ===== ======== =====================
  3. XYZ 1 10 2018-09-17 10:00:02
  4. XYZ 2 11 2018-09-17 10:00:03
  5. XYZ 1 12 2018-09-17 10:00:04
  6. XYZ 2 13 2018-09-17 10:00:05
  7. XYZ 1 14 2018-09-17 10:00:06
  8. XYZ 2 16 2018-09-17 10:00:07

The pattern above will produce the following output:

  1. symbol lastPrice
  2. ======== ===========
  3. XYZ 16

The same query where B* is modified to B*?, which means that B* should be reluctant, will produce:

  1. symbol lastPrice
  2. ======== ===========
  3. XYZ 13
  4. XYZ 16

The pattern variable B matches only to the row with price 12 instead of swallowing the rows with prices 12, 13, and 14.

It is not possible to use a greedy quantifier for the last variable of a pattern. Thus, a pattern like (A B*) is not allowed. This can be easily worked around by introducing an artificial state (e.g. C) that has a negated condition of B. So you could use a query like:

  1. PATTERN (A B* C)
  2. DEFINE
  3. A AS condA(),
  4. B AS condB(),
  5. C AS NOT condB()

Attention The optional reluctant quantifier (A?? or A{0,1}?) is not supported right now.

Time constraint

Especially for streaming use cases, it is often required that a pattern finishes within a given period of time. This allows for limiting the overall state size that Flink has to maintain internally, even in case of greedy quantifiers.

Therefore, Flink SQL supports the additional (non-standard SQL) WITHIN clause for defining a time constraint for a pattern. The clause can be defined after the PATTERN clause and takes an interval of millisecond resolution.

If the time between the first and last event of a potential match is longer than the given value, such a match will not be appended to the result table.

Note It is generally encouraged to use the WITHIN clause as it helps Flink with efficient memory management. Underlying state can be pruned once the threshold is reached.

Attention However, the WITHIN clause is not part of the SQL standard. The recommended way of dealing with time constraints might change in the future.

The use of the WITHIN clause is illustrated in the following example query:

  1. SELECT *
  2. FROM Ticker
  3. MATCH_RECOGNIZE(
  4. PARTITION BY symbol
  5. ORDER BY rowtime
  6. MEASURES
  7. C.rowtime AS dropTime,
  8. A.price - C.price AS dropDiff
  9. ONE ROW PER MATCH
  10. AFTER MATCH SKIP PAST LAST ROW
  11. PATTERN (A B* C) WITHIN INTERVAL '1' HOUR
  12. DEFINE
  13. B AS B.price > A.price - 10,
  14. C AS C.price < A.price - 10
  15. )

The query detects a price drop of 10 that happens within an interval of 1 hour.

Let’s assume the query is used to analyze the following ticker data:

  1. symbol rowtime price tax
  2. ====== ==================== ======= =======
  3. 'ACME' '01-Apr-11 10:00:00' 20 1
  4. 'ACME' '01-Apr-11 10:20:00' 17 2
  5. 'ACME' '01-Apr-11 10:40:00' 18 1
  6. 'ACME' '01-Apr-11 11:00:00' 11 3
  7. 'ACME' '01-Apr-11 11:20:00' 14 2
  8. 'ACME' '01-Apr-11 11:40:00' 9 1
  9. 'ACME' '01-Apr-11 12:00:00' 15 1
  10. 'ACME' '01-Apr-11 12:20:00' 14 2
  11. 'ACME' '01-Apr-11 12:40:00' 24 2
  12. 'ACME' '01-Apr-11 13:00:00' 1 2
  13. 'ACME' '01-Apr-11 13:20:00' 19 1

The query will produce the following results:

  1. symbol dropTime dropDiff
  2. ====== ==================== =============
  3. 'ACME' '01-Apr-11 13:00:00' 14

The resulting row represents a price drop from 15 (at 01-Apr-11 12:00:00) to 1 (at 01-Apr-11 13:00:00). The dropDiff column contains the price difference.

Notice that even though prices also drop by higher values, for example, by 11 (between 01-Apr-11 10:00:00 and 01-Apr-11 11:40:00), the time difference between those two events is larger than 1 hour. Thus, they don’t produce a match.

Output Mode

The output mode describes how many rows should be emitted for every found match. The SQL standard describes two modes:

  • ALL ROWS PER MATCH
  • ONE ROW PER MATCH.

Currently, the only supported output mode is ONE ROW PER MATCH that will always produce one output summary row for each found match.

The schema of the output row will be a concatenation of [partitioning columns] + [measures columns] in that particular order.

The following example shows the output of a query defined as:

  1. SELECT *
  2. FROM Ticker
  3. MATCH_RECOGNIZE(
  4. PARTITION BY symbol
  5. ORDER BY rowtime
  6. MEASURES
  7. FIRST(A.price) AS startPrice,
  8. LAST(A.price) AS topPrice,
  9. B.price AS lastPrice
  10. ONE ROW PER MATCH
  11. PATTERN (A+ B)
  12. DEFINE
  13. A AS LAST(A.price, 1) IS NULL OR A.price > LAST(A.price, 1),
  14. B AS B.price < LAST(A.price)
  15. )

For the following input rows:

  1. symbol tax price rowtime
  2. ======== ===== ======== =====================
  3. XYZ 1 10 2018-09-17 10:00:02
  4. XYZ 2 12 2018-09-17 10:00:03
  5. XYZ 1 13 2018-09-17 10:00:04
  6. XYZ 2 11 2018-09-17 10:00:05

The query will produce the following output:

  1. symbol startPrice topPrice lastPrice
  2. ======== ============ ========== ===========
  3. XYZ 10 13 11

The pattern recognition is partitioned by the symbol column. Even though not explicitly mentioned in the MEASURES clause, the partitioned column is added at the beginning of the result.

Pattern Navigation

The DEFINE and MEASURES clauses allow for navigating within the list of rows that (potentially) match a pattern.

This section discusses this navigation for declaring conditions or producing output results.

Pattern Variable Referencing

A pattern variable reference allows a set of rows mapped to a particular pattern variable in the DEFINE or MEASURES clauses to be referenced.

For example, the expression A.price describes a set of rows mapped so far to A plus the current row if we try to match the current row to A. If an expression in the DEFINE/MEASURES clause requires a single row (e.g. A.price or A.price > 10), it selects the last value belonging to the corresponding set.

If no pattern variable is specified (e.g. SUM(price)), an expression references the default pattern variable * which references all variables in the pattern. In other words, it creates a list of all the rows mapped so far to any variable plus the current row.

Example

For a more thorough example, one can take a look at the following pattern and corresponding conditions:

  1. PATTERN (A B+)
  2. DEFINE
  3. A AS A.price >= 10,
  4. B AS B.price > A.price AND SUM(price) < 100 AND SUM(B.price) < 80

The following table describes how those conditions are evaluated for each incoming event.

The table consists of the following columns:

  • # - the row identifier that uniquely identifies an incoming row in the lists [A.price]/[B.price]/[price].
  • price - the price of the incoming row.
  • [A.price]/[B.price]/[price] - describe lists of rows which are used in the DEFINE clause to evaluate conditions.
  • Classifier - the classifier of the current row which indicates the pattern variable the row is mapped to.
  • A.price/B.price/SUM(price)/SUM(B.price) - describes the result after those expressions have been evaluated.
#priceClassifier[A.price][B.price][price]A.priceB.priceSUM(price)SUM(B.price)
#110-> A#1--10---
#215-> B#1#2#1, #210152515
#320-> B#1#2, #3#1, #2, #310204535
#431-> B#1#2, #3, #4#1, #2, #3, #410317666
#535#1#2, #3, #4, #5#1, #2, #3, #4, #51035111101

As can be seen in the table, the first row is mapped to pattern variable A and subsequent rows are mapped to pattern variable B. However, the last row does not fulfill the B condition because the sum over all mapped rows SUM(price) and the sum over all rows in B exceed the specified thresholds.

Logical Offsets

Logical offsets enable navigation within the events that were mapped to a particular pattern variable. This can be expressed with two corresponding functions:

Offset functionsDescription
LAST(variable.field, n)

Returns the value of the field from the event that was mapped to the n-th last element of the variable. The counting starts at the last element mapped.

FIRST(variable.field, n)

Returns the value of the field from the event that was mapped to the n-th element of the variable. The counting starts at the first element mapped.

Examples

For a more thorough example, one can take a look at the following pattern and corresponding conditions:

  1. PATTERN (A B+)
  2. DEFINE
  3. A AS A.price >= 10,
  4. B AS (LAST(B.price, 1) IS NULL OR B.price > LAST(B.price, 1)) AND
  5. (LAST(B.price, 2) IS NULL OR B.price > 2 * LAST(B.price, 2))

The following table describes how those conditions are evaluated for each incoming event.

The table consists of the following columns:

  • price - the price of the incoming row.
  • Classifier - the classifier of the current row which indicates the pattern variable the row is mapped to.
  • LAST(B.price, 1)/LAST(B.price, 2) - describes the result after those expressions have been evaluated.
priceClassifierLAST(B.price, 1)LAST(B.price, 2)Comment
10-> A
15-> BnullnullNotice that LAST(B.price, 1) is null because there is still nothing mapped to B.
20-> B15null
31-> B2015
353120Not mapped because 35 < 2 * 20.

It might also make sense to use the default pattern variable with logical offsets.

In this case, an offset considers all the rows mapped so far:

  1. PATTERN (A B? C)
  2. DEFINE
  3. B AS B.price < 20,
  4. C AS LAST(price, 1) < C.price
priceClassifierLAST(price, 1)Comment
10-> A
15-> B
20-> C15LAST(price, 1) is evaluated as the price of the row mapped to the B variable.

If the second row did not map to the B variable, we would have the following results:

priceClassifierLAST(price, 1)Comment
10-> A
20-> C10LAST(price, 1) is evaluated as the price of the row mapped to the A variable.

It is also possible to use multiple pattern variable references in the first argument of the FIRST/LAST functions. This way, one can write an expression that accesses multiple columns. However, all of them must use the same pattern variable. In other words, the value of the LAST/FIRST function must be computed in a single row.

Thus, it is possible to use LAST(A.price * A.tax), but an expression like LAST(A.price * B.tax) is not allowed.

After Match Strategy

The AFTER MATCH SKIP clause specifies where to start a new matching procedure after a complete match was found.

There are four different strategies:

  • SKIP PAST LAST ROW - resumes the pattern matching at the next row after the last row of the current match.
  • SKIP TO NEXT ROW - continues searching for a new match starting at the next row after the starting row of the match.
  • SKIP TO LAST variable - resumes the pattern matching at the last row that is mapped to the specified pattern variable.
  • SKIP TO FIRST variable - resumes the pattern matching at the first row that is mapped to the specified pattern variable.

This is also a way to specify how many matches a single event can belong to. For example, with the SKIP PAST LAST ROW strategy every event can belong to at most one match.

Examples

In order to better understand the differences between those strategies one can take a look at the following example.

For the following input rows:

  1. symbol tax price rowtime
  2. ======== ===== ======= =====================
  3. XYZ 1 7 2018-09-17 10:00:01
  4. XYZ 2 9 2018-09-17 10:00:02
  5. XYZ 1 10 2018-09-17 10:00:03
  6. XYZ 2 5 2018-09-17 10:00:04
  7. XYZ 2 10 2018-09-17 10:00:05
  8. XYZ 2 7 2018-09-17 10:00:06
  9. XYZ 2 14 2018-09-17 10:00:07

We evaluate the following query with different strategies:

  1. SELECT *
  2. FROM Ticker
  3. MATCH_RECOGNIZE(
  4. PARTITION BY symbol
  5. ORDER BY rowtime
  6. MEASURES
  7. SUM(A.price) AS sumPrice,
  8. FIRST(rowtime) AS startTime,
  9. LAST(rowtime) AS endTime
  10. ONE ROW PER MATCH
  11. [AFTER MATCH STRATEGY]
  12. PATTERN (A+ C)
  13. DEFINE
  14. A AS SUM(A.price) < 30
  15. )

The query returns the sum of the prices of all rows mapped to A and the first and last timestamp of the overall match.

The query will produce different results based on which AFTER MATCH strategy was used:

AFTER MATCH SKIP PAST LAST ROW
  1. symbol sumPrice startTime endTime
  2. ======== ========== ===================== =====================
  3. XYZ 26 2018-09-17 10:00:01 2018-09-17 10:00:04
  4. XYZ 17 2018-09-17 10:00:05 2018-09-17 10:00:07

The first result matched against the rows #1, #2, #3, #4.

The second result matched against the rows #5, #6, #7.

AFTER MATCH SKIP TO NEXT ROW
  1. symbol sumPrice startTime endTime
  2. ======== ========== ===================== =====================
  3. XYZ 26 2018-09-17 10:00:01 2018-09-17 10:00:04
  4. XYZ 24 2018-09-17 10:00:02 2018-09-17 10:00:05
  5. XYZ 25 2018-09-17 10:00:03 2018-09-17 10:00:06
  6. XYZ 22 2018-09-17 10:00:04 2018-09-17 10:00:07
  7. XYZ 17 2018-09-17 10:00:05 2018-09-17 10:00:07

Again, the first result matched against the rows #1, #2, #3, #4.

Compared to the previous strategy, the next match includes row #2 again for the next matching. Therefore, the second result matched against the rows #2, #3, #4, #5.

The third result matched against the rows #3, #4, #5, #6.

The forth result matched against the rows #4, #5, #6, #7.

The last result matched against the rows #5, #6, #7.

AFTER MATCH SKIP TO LAST A
  1. symbol sumPrice startTime endTime
  2. ======== ========== ===================== =====================
  3. XYZ 26 2018-09-17 10:00:01 2018-09-17 10:00:04
  4. XYZ 25 2018-09-17 10:00:03 2018-09-17 10:00:06
  5. XYZ 17 2018-09-17 10:00:05 2018-09-17 10:00:07

Again, the first result matched against the rows #1, #2, #3, #4.

Compared to the previous strategy, the next match includes only row #3 (mapped to A) again for the next matching. Therefore, the second result matched against the rows #3, #4, #5, #6.

The last result matched against the rows #5, #6, #7.

AFTER MATCH SKIP TO FIRST A

This combination will produce a runtime exception because one would always try to start a new match where the last one started. This would produce an infinite loop and, thus, is prohibited.

One has to keep in mind that in case of the SKIP TO FIRST/LAST variable strategy it might be possible that there are no rows mapped to that variable (e.g. for pattern A*). In such cases, a runtime exception will be thrown as the standard requires a valid row to continue the matching.

Time attributes

In order to apply some subsequent queries on top of the MATCH_RECOGNIZE it might be required to use time attributes. To select those there are available two functions:

FunctionDescription
MATCH_ROWTIME([rowtime_field])

Returns the timestamp of the last row that was mapped to the given pattern.

The function accepts zero or one operand which is a field reference with rowtime attribute. If there is no operand, the function will return rowtime attribute with TIMESTAMP type. Otherwise, the return type will be same with the operand type.

The resulting attribute is a rowtime attribute that can be used in subsequent time-based operations such as interval joins and group window or over window aggregations.

MATCH_PROCTIME()

Returns a proctime attribute that can be used in subsequent time-based operations such as interval joins and group window or over window aggregations.

Controlling Memory Consumption

Memory consumption is an important consideration when writing MATCH_RECOGNIZE queries, as the space of potential matches is built in a breadth-first-like manner. Having that in mind, one must make sure that the pattern can finish. Preferably with a reasonable number of rows mapped to the match as they have to fit into memory.

For example, the pattern must not have a quantifier without an upper limit that accepts every single row. Such a pattern could look like this:

  1. PATTERN (A B+ C)
  2. DEFINE
  3. A as A.price > 10,
  4. C as C.price > 20

The query will map every incoming row to the B variable and thus will never finish. This query could be fixed, e.g., by negating the condition for C:

  1. PATTERN (A B+ C)
  2. DEFINE
  3. A as A.price > 10,
  4. B as B.price <= 20,
  5. C as C.price > 20

Or by using the reluctant quantifier:

  1. PATTERN (A B+? C)
  2. DEFINE
  3. A as A.price > 10,
  4. C as C.price > 20

Attention Please note that the MATCH_RECOGNIZE clause does not use a configured state retention time. One may want to use the WITHIN clause for this purpose.

Known Limitations

Flink’s implementation of the MATCH_RECOGNIZE clause is an ongoing effort, and some features of the SQL standard are not yet supported.

Unsupported features include:

  • Pattern expressions:
    • Pattern groups - this means that e.g. quantifiers can not be applied to a subsequence of the pattern. Thus, (A (B C)+) is not a valid pattern.
    • Alterations - patterns like PATTERN((A B | C D) E), which means that either a subsequence A B or C D has to be found before looking for the E row.
    • PERMUTE operator - which is equivalent to all permutations of variables that it was applied to e.g. PATTERN (PERMUTE (A, B, C)) = PATTERN (A B C | A C B | B A C | B C A | C A B | C B A).
    • Anchors - ^, $, which denote beginning/end of a partition, those do not make sense in the streaming context and will not be supported.
    • Exclusion - PATTERN ({- A -} B) meaning that A will be looked for but will not participate in the output. This works only for the ALL ROWS PER MATCH mode.
    • Reluctant optional quantifier - PATTERN A?? only the greedy optional quantifier is supported.
  • ALL ROWS PER MATCH output mode - which produces an output row for every row that participated in the creation of a found match. This also means:
    • that the only supported semantic for the MEASURES clause is FINAL
    • CLASSIFIER function, which returns the pattern variable that a row was mapped to, is not yet supported.
  • SUBSET - which allows creating logical groups of pattern variables and using those groups in the DEFINE and MEASURES clauses.
  • Physical offsets - PREV/NEXT, which indexes all events seen rather than only those that were mapped to a pattern variable (as in logical offsets case).
  • Extracting time attributes - there is currently no possibility to get a time attribute for subsequent time-based operations.
  • MATCH_RECOGNIZE is supported only for SQL. There is no equivalent in the Table API.
  • Aggregations:
    • distinct aggregations are not supported.