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32 | Functions |
Functions
There are at least* two types of functions - regular functions (they are just called “functions”) and aggregate functions. These are completely different concepts. Regular functions work as if they are applied to each row separately (for each row, the result of the function does not depend on the other rows). Aggregate functions accumulate a set of values from various rows (i.e. they depend on the entire set of rows).
In this section we discuss regular functions. For aggregate functions, see the section “Aggregate functions”.
* - There is a third type of function that the ‘arrayJoin’ function belongs to; table functions can also be mentioned separately.*
Strong Typing
In contrast to standard SQL, ClickHouse has strong typing. In other words, it does not make implicit conversions between types. Each function works for a specific set of types. This means that sometimes you need to use type conversion functions.
Common Subexpression Elimination
All expressions in a query that have the same AST (the same record or same result of syntactic parsing) are considered to have identical values. Such expressions are concatenated and executed once. Identical subqueries are also eliminated this way.
Types of Results
All functions return a single return as the result (not several values, and not zero values). The type of result is usually defined only by the types of arguments, not by the values. Exceptions are the tupleElement function (the a.N operator), and the toFixedString function.
Constants
For simplicity, certain functions can only work with constants for some arguments. For example, the right argument of the LIKE operator must be a constant. Almost all functions return a constant for constant arguments. The exception is functions that generate random numbers. The ‘now’ function returns different values for queries that were run at different times, but the result is considered a constant, since constancy is only important within a single query. A constant expression is also considered a constant (for example, the right half of the LIKE operator can be constructed from multiple constants).
Functions can be implemented in different ways for constant and non-constant arguments (different code is executed). But the results for a constant and for a true column containing only the same value should match each other.
NULL Processing
Functions have the following behaviors:
- If at least one of the arguments of the function is
NULL
, the function result is alsoNULL
. - Special behavior that is specified individually in the description of each function. In the ClickHouse source code, these functions have
UseDefaultImplementationForNulls=false
.
Constancy
Functions can’t change the values of their arguments – any changes are returned as the result. Thus, the result of calculating separate functions does not depend on the order in which the functions are written in the query.
Higher-order functions, ->
operator and lambda(params, expr) function
Higher-order functions can only accept lambda functions as their functional argument. To pass a lambda function to a higher-order function use ->
operator. The left side of the arrow has a formal parameter, which is any ID, or multiple formal parameters – any IDs in a tuple. The right side of the arrow has an expression that can use these formal parameters, as well as any table columns.
Examples:
x -> 2 * x
str -> str != Referer
A lambda function that accepts multiple arguments can also be passed to a higher-order function. In this case, the higher-order function is passed several arrays of identical length that these arguments will correspond to.
For some functions the first argument (the lambda function) can be omitted. In this case, identical mapping is assumed.
SQL User Defined Functions
Custom functions from lambda expressions can be created using the CREATE FUNCTION statement. To delete these functions use the DROP FUNCTION statement.
Executable User Defined Functions
ClickHouse can call any external executable program or script to process data.
The configuration of executable user defined functions can be located in one or more xml-files. The path to the configuration is specified in the user_defined_executable_functions_config parameter.
A function configuration contains the following settings:
name
- a function name.command
- script name to execute or command ifexecute_direct
is false.argument
- argument description with thetype
, and optionalname
of an argument. Each argument is described in a separate setting. Specifying name is necessary if argument names are part of serialization for user defined function format like Native or JSONEachRow. Default argument name value isc
+ argument_number.format
- a format in which arguments are passed to the command.return_type
- the type of a returned value.return_name
- name of retuned value. Specifying return name is necessary if return name is part of serialization for user defined function format like Native or JSONEachRow. Optional. Default value isresult
.type
- an executable type. Iftype
is set toexecutable
then single command is started. If it is set toexecutable_pool
then a pool of commands is created.max_command_execution_time
- maximum execution time in seconds for processing block of data. This setting is valid forexecutable_pool
commands only. Optional. Default value is10
.command_termination_timeout
- time in seconds during which a command should finish after its pipe is closed. After that timeSIGTERM
is sent to the process executing the command. Optional. Default value is10
.command_read_timeout
- timeout for reading data from command stdout in milliseconds. Default value 10000. Optional parameter.command_write_timeout
- timeout for writing data to command stdin in milliseconds. Default value 10000. Optional parameter.pool_size
- the size of a command pool. Optional. Default value is16
.send_chunk_header
- controls whether to send row count before sending a chunk of data to process. Optional. Default value isfalse
.execute_direct
- Ifexecute_direct
=1
, thencommand
will be searched inside user_scripts folder specified by user_scripts_path. Additional script arguments can be specified using whitespace separator. Example:script_name arg1 arg2
. Ifexecute_direct
=0
,command
is passed as argument forbin/sh -c
. Default value is1
. Optional parameter.lifetime
- the reload interval of a function in seconds. If it is set to0
then the function is not reloaded. Default value is0
. Optional parameter.
The command must read arguments from STDIN
and must output the result to STDOUT
. The command must process arguments iteratively. That is after processing a chunk of arguments it must wait for the next chunk.
Example
Creating test_function
using XML configuration.
File test_function.xml.
<functions>
<function>
<type>executable</type>
<name>test_function_python</name>
<return_type>String</return_type>
<argument>
<type>UInt64</type>
<name>value</name>
</argument>
<format>TabSeparated</format>
<command>test_function.py</command>
</function>
</functions>
Script file inside user_scripts
folder test_function.py
.
#!/usr/bin/python3
import sys
if __name__ == '__main__':
for line in sys.stdin:
print("Value " + line, end='')
sys.stdout.flush()
Query:
SELECT test_function_python(toUInt64(2));
Result:
┌─test_function_python(2)─┐
│ Value 2 │
└─────────────────────────┘
Creating test_function_sum
manually specifying execute_direct
to 0
using XML configuration.
File test_function.xml.
<functions>
<function>
<type>executable</type>
<name>test_function_sum</name>
<return_type>UInt64</return_type>
<argument>
<type>UInt64</type>
<name>lhs</name>
</argument>
<argument>
<type>UInt64</type>
<name>rhs</name>
</argument>
<format>TabSeparated</format>
<command>cd /; clickhouse-local --input-format TabSeparated --output-format TabSeparated --structure 'x UInt64, y UInt64' --query "SELECT x + y FROM table"</command>
<execute_direct>0</execute_direct>
</function>
</functions>
Query:
SELECT test_function_sum(2, 2);
Result:
┌─test_function_sum(2, 2)─┐
│ 4 │
└─────────────────────────┘
Creating test_function_sum_json
with named arguments and format JSONEachRow using XML configuration.
File test_function.xml.
<functions>
<function>
<type>executable</type>
<name>test_function_sum_json</name>
<return_type>UInt64</return_type>
<return_name>result_name</return_name>
<argument>
<type>UInt64</type>
<name>argument_1</name>
</argument>
<argument>
<type>UInt64</type>
<name>argument_2</name>
</argument>
<format>JSONEachRow</format>
<command>test_function_sum_json.py</command>
</function>
</functions>
Script file inside user_scripts
folder test_function_sum_json.py
.
#!/usr/bin/python3
import sys
import json
if __name__ == '__main__':
for line in sys.stdin:
value = json.loads(line)
first_arg = int(value['argument_1'])
second_arg = int(value['argument_2'])
result = {'result_name': first_arg + second_arg}
print(json.dumps(result), end='\n')
sys.stdout.flush()
Query:
SELECT test_function_sum_json(2, 2);
Result:
┌─test_function_sum_json(2, 2)─┐
│ 4 │
└──────────────────────────────┘
Executable user defined functions can take constant parameters configured in command
setting (works only for user defined functions with executable
type).
File test_function_parameter_python.xml.
<functions>
<function>
<type>executable</type>
<name>test_function_parameter_python</name>
<return_type>String</return_type>
<argument>
<type>UInt64</type>
</argument>
<format>TabSeparated</format>
<command>test_function_parameter_python.py {test_parameter:UInt64}</command>
</function>
</functions>
Script file inside user_scripts
folder test_function_parameter_python.py
.
#!/usr/bin/python3
import sys
if __name__ == "__main__":
for line in sys.stdin:
print("Parameter " + str(sys.argv[1]) + " value " + str(line), end="")
sys.stdout.flush()
Query:
SELECT test_function_parameter_python(1)(2);
Result:
┌─test_function_parameter_python(1)(2)─┐
│ Parameter 1 value 2 │
└──────────────────────────────────────┘
Error Handling
Some functions might throw an exception if the data is invalid. In this case, the query is canceled and an error text is returned to the client. For distributed processing, when an exception occurs on one of the servers, the other servers also attempt to abort the query.
Evaluation of Argument Expressions
In almost all programming languages, one of the arguments might not be evaluated for certain operators. This is usually the operators &&
, ||
, and ?:
.
But in ClickHouse, arguments of functions (operators) are always evaluated. This is because entire parts of columns are evaluated at once, instead of calculating each row separately.
Performing Functions for Distributed Query Processing
For distributed query processing, as many stages of query processing as possible are performed on remote servers, and the rest of the stages (merging intermediate results and everything after that) are performed on the requestor server.
This means that functions can be performed on different servers.
For example, in the query SELECT f(sum(g(x))) FROM distributed_table GROUP BY h(y),
- if a
distributed_table
has at least two shards, the functions ‘g’ and ‘h’ are performed on remote servers, and the function ‘f’ is performed on the requestor server. - if a
distributed_table
has only one shard, all the ‘f’, ‘g’, and ‘h’ functions are performed on this shard’s server.
The result of a function usually does not depend on which server it is performed on. However, sometimes this is important.
For example, functions that work with dictionaries use the dictionary that exists on the server they are running on.
Another example is the hostName
function, which returns the name of the server it is running on in order to make GROUP BY
by servers in a SELECT
query.
If a function in a query is performed on the requestor server, but you need to perform it on remote servers, you can wrap it in an ‘any’ aggregate function or add it to a key in GROUP BY
.