Named collections
Named collections provide a way to store collections of key-value pairs to be used to configure integrations with external sources. You can use named collections with dictionaries, tables, table functions, and object storage.
Named collections can be configured with DDL or in configuration files and are applied when ClickHouse starts. They simplify the creation of objects and the hiding of credentials from users without administrative access.
The keys in a named collection must match the parameter names of the corresponding function, table engine, database, etc. In the examples below the parameter list is linked to for each type.
Parameters set in a named collection can be overridden in SQL, this is shown in the examples
below. This ability can be limited using [NOT] OVERRIDABLE
keywords and XML attributes
and/or the configuration option allow_named_collection_override_by_default
.
If override is allowed, it may be possible for users without administrative access to
figure out the credentials that you are trying to hide.
If you are using named collections with that purpose, you should disable
allow_named_collection_override_by_default
(which is enabled by default).
Storing named collections in the system database
DDL example
CREATE NAMED COLLECTION name AS
key_1 = 'value' OVERRIDABLE,
key_2 = 'value2' NOT OVERRIDABLE,
url = 'https://connection.url/'
In the above example:
key_1
can always be overridden.key_2
can never be overridden.url
can be overridden or not depending on the value ofallow_named_collection_override_by_default
.
Permissions to create named collections with DDL
To manage named collections with DDL a user must have the named_control_collection
privilege. This can be assigned by adding a file to /etc/clickhouse-server/users.d/
. The example gives the user default
both the access_management
and named_collection_control
privileges:
<clickhouse>
<users>
<default>
<password_sha256_hex>65e84be33532fb784c48129675f9eff3a682b27168c0ea744b2cf58ee02337c5</password_sha256_hex replace=true>
<access_management>1</access_management>
<named_collection_control>1</named_collection_control>
</default>
</users>
</clickhouse>
In the above example the password_sha256_hex
value is the hexadecimal representation of the SHA256 hash of the password. This configuration for the user default
has the attribute replace=true
as in the default configuration has a plain text password
set, and it is not possible to have both plain text and sha256 hex passwords set for a user.
Storage for named collections
Named collections can either be stored on local disk or in ZooKeeper/Keeper. By default local storage is used.
They can also be stored using encryption with the same algorithms used for disk encryption,
where aes_128_ctr
is used by default.
To configure named collections storage you need to specify a type
. This can be either local
or keeper
/zookeeper
. For encrypted storage,
you can use local_encrypted
or keeper_encrypted
/zookeeper_encrypted
.
To use ZooKeeper/Keeper we also need to set up a path
(path in ZooKeeper/Keeper, where named collections will be stored) to
named_collections_storage
section in configuration file. The following example uses encryption and ZooKeeper/Keeper:
<clickhouse>
<named_collections_storage>
<type>zookeeper_encrypted</type>
<key_hex>bebec0cabebec0cabebec0cabebec0ca</key_hex>
<algorithm>aes_128_ctr</algorithm>
<path>/named_collections_path/</path>
<update_timeout_ms>1000</update_timeout_ms>
</named_collections_storage>
</clickhouse>
An optional configuration parameter update_timeout_ms
by default is equal to 5000
.
Storing named collections in configuration files
XML example
<clickhouse>
<named_collections>
<name>
<key_1 overridable="true">value</key_1>
<key_2 overridable="false">value_2</key_2>
<url>https://connection.url/</url>
</name>
</named_collections>
</clickhouse>
In the above example:
key_1
can always be overridden.key_2
can never be overridden.url
can be overridden or not depending on the value ofallow_named_collection_override_by_default
.
Modifying named collections
Named collections that are created with DDL queries can be altered or dropped with DDL. Named collections created with XML files can be managed by editing or deleting the corresponding XML.
Alter a DDL named collection
Change or add the keys key1
and key3
of the collection collection2
(this will not change the value of the overridable
flag for those keys):
ALTER NAMED COLLECTION collection2 SET key1=4, key3='value3'
Change or add the key key1
and allow it to be always overridden:
ALTER NAMED COLLECTION collection2 SET key1=4 OVERRIDABLE
Remove the key key2
from collection2
:
ALTER NAMED COLLECTION collection2 DELETE key2
Change or add the key key1
and delete the key key3
of the collection collection2
:
ALTER NAMED COLLECTION collection2 SET key1=4, DELETE key3
To force a key to use the default settings for the overridable
flag, you have to
remove and re-add the key.
ALTER NAMED COLLECTION collection2 DELETE key1;
ALTER NAMED COLLECTION collection2 SET key1=4;
Drop the DDL named collection collection2
:
DROP NAMED COLLECTION collection2
Named collections for accessing S3
The description of parameters see s3 Table Function.
DDL example
CREATE NAMED COLLECTION s3_mydata AS
access_key_id = 'AKIAIOSFODNN7EXAMPLE',
secret_access_key = 'wJalrXUtnFEMI/K7MDENG/bPxRfiCYEXAMPLEKEY',
format = 'CSV',
url = 'https://s3.us-east-1.amazonaws.com/yourbucket/mydata/'
XML example
<clickhouse>
<named_collections>
<s3_mydata>
<access_key_id>AKIAIOSFODNN7EXAMPLE</access_key_id>
<secret_access_key>wJalrXUtnFEMI/K7MDENG/bPxRfiCYEXAMPLEKEY</secret_access_key>
<format>CSV</format>
<url>https://s3.us-east-1.amazonaws.com/yourbucket/mydata/</url>
</s3_mydata>
</named_collections>
</clickhouse>
s3() function and S3 Table named collection examples
Both of the following examples use the same named collection s3_mydata
:
s3() function
INSERT INTO FUNCTION s3(s3_mydata, filename = 'test_file.tsv.gz',
format = 'TSV', structure = 'number UInt64', compression_method = 'gzip')
SELECT * FROM numbers(10000);
The first argument to the s3()
function above is the name of the collection, s3_mydata
. Without named collections, the access key ID, secret, format, and URL would all be passed in every call to the s3()
function.
S3 table
CREATE TABLE s3_engine_table (number Int64)
ENGINE=S3(s3_mydata, url='https://s3.us-east-1.amazonaws.com/yourbucket/mydata/test_file.tsv.gz', format = 'TSV')
SETTINGS input_format_with_names_use_header = 0;
SELECT * FROM s3_engine_table LIMIT 3;
┌─number─┐
│ 0 │
│ 1 │
│ 2 │
└────────┘
Named collections for accessing MySQL database
The description of parameters see mysql.
DDL example
CREATE NAMED COLLECTION mymysql AS
user = 'myuser',
password = 'mypass',
host = '127.0.0.1',
port = 3306,
database = 'test',
connection_pool_size = 8,
replace_query = 1
XML example
<clickhouse>
<named_collections>
<mymysql>
<user>myuser</user>
<password>mypass</password>
<host>127.0.0.1</host>
<port>3306</port>
<database>test</database>
<connection_pool_size>8</connection_pool_size>
<replace_query>1</replace_query>
</mymysql>
</named_collections>
</clickhouse>
mysql() function, MySQL table, MySQL database, and Dictionary named collection examples
The four following examples use the same named collection mymysql
:
mysql() function
SELECT count() FROM mysql(mymysql, table = 'test');
┌─count()─┐
│ 3 │
└─────────┘
The named collection does not specify the table
parameter, so it is specified in the function call as table = 'test'
.
MySQL table
CREATE TABLE mytable(A Int64) ENGINE = MySQL(mymysql, table = 'test', connection_pool_size=3, replace_query=0);
SELECT count() FROM mytable;
┌─count()─┐
│ 3 │
└─────────┘
The DDL overrides the named collection setting for connection_pool_size.
MySQL database
CREATE DATABASE mydatabase ENGINE = MySQL(mymysql);
SHOW TABLES FROM mydatabase;
┌─name───┐
│ source │
│ test │
└────────┘
MySQL Dictionary
CREATE DICTIONARY dict (A Int64, B String)
PRIMARY KEY A
SOURCE(MYSQL(NAME mymysql TABLE 'source'))
LIFETIME(MIN 1 MAX 2)
LAYOUT(HASHED());
SELECT dictGet('dict', 'B', 2);
┌─dictGet('dict', 'B', 2)─┐
│ two │
└─────────────────────────┘
Named collections for accessing PostgreSQL database
The description of parameters see postgresql. Additionally, there are aliases:
username
foruser
db
fordatabase
.
Parameter addresses_expr
is used in a collection instead of host:port
. The parameter is optional, because there are other optional ones: host
, hostname
, port
. The following pseudo code explains the priority:
CASE
WHEN collection['addresses_expr'] != '' THEN collection['addresses_expr']
WHEN collection['host'] != '' THEN collection['host'] || ':' || if(collection['port'] != '', collection['port'], '5432')
WHEN collection['hostname'] != '' THEN collection['hostname'] || ':' || if(collection['port'] != '', collection['port'], '5432')
END
Example of creation:
CREATE NAMED COLLECTION mypg AS
user = 'pguser',
password = 'jw8s0F4',
host = '127.0.0.1',
port = 5432,
database = 'test',
schema = 'test_schema'
Example of configuration:
<clickhouse>
<named_collections>
<mypg>
<user>pguser</user>
<password>jw8s0F4</password>
<host>127.0.0.1</host>
<port>5432</port>
<database>test</database>
<schema>test_schema</schema>
</mypg>
</named_collections>
</clickhouse>
Example of using named collections with the postgresql function
SELECT * FROM postgresql(mypg, table = 'test');
┌─a─┬─b───┐
│ 2 │ two │
│ 1 │ one │
└───┴─────┘
SELECT * FROM postgresql(mypg, table = 'test', schema = 'public');
┌─a─┐
│ 1 │
│ 2 │
│ 3 │
└───┘
Example of using named collections with database with engine PostgreSQL
CREATE TABLE mypgtable (a Int64) ENGINE = PostgreSQL(mypg, table = 'test', schema = 'public');
SELECT * FROM mypgtable;
┌─a─┐
│ 1 │
│ 2 │
│ 3 │
└───┘
PostgreSQL copies data from the named collection when the table is being created. A change in the collection does not affect the existing tables.
Example of using named collections with database with engine PostgreSQL
CREATE DATABASE mydatabase ENGINE = PostgreSQL(mypg);
SHOW TABLES FROM mydatabase
┌─name─┐
│ test │
└──────┘
Example of using named collections with a dictionary with source POSTGRESQL
CREATE DICTIONARY dict (a Int64, b String)
PRIMARY KEY a
SOURCE(POSTGRESQL(NAME mypg TABLE test))
LIFETIME(MIN 1 MAX 2)
LAYOUT(HASHED());
SELECT dictGet('dict', 'b', 2);
┌─dictGet('dict', 'b', 2)─┐
│ two │
└─────────────────────────┘
Named collections for accessing a remote ClickHouse database
The description of parameters see remote.
Example of configuration:
CREATE NAMED COLLECTION remote1 AS
host = 'remote_host',
port = 9000,
database = 'system',
user = 'foo',
password = 'secret',
secure = 1
<clickhouse>
<named_collections>
<remote1>
<host>remote_host</host>
<port>9000</port>
<database>system</database>
<user>foo</user>
<password>secret</password>
<secure>1</secure>
</remote1>
</named_collections>
</clickhouse>
secure
is not needed for connection because of remoteSecure
, but it can be used for dictionaries.
Example of using named collections with the remote
/remoteSecure
functions
SELECT * FROM remote(remote1, table = one);
┌─dummy─┐
│ 0 │
└───────┘
SELECT * FROM remote(remote1, database = merge(system, '^one'));
┌─dummy─┐
│ 0 │
└───────┘
INSERT INTO FUNCTION remote(remote1, database = default, table = test) VALUES (1,'a');
SELECT * FROM remote(remote1, database = default, table = test);
┌─a─┬─b─┐
│ 1 │ a │
└───┴───┘
Example of using named collections with a dictionary with source ClickHouse
CREATE DICTIONARY dict(a Int64, b String)
PRIMARY KEY a
SOURCE(CLICKHOUSE(NAME remote1 TABLE test DB default))
LIFETIME(MIN 1 MAX 2)
LAYOUT(HASHED());
SELECT dictGet('dict', 'b', 1);
┌─dictGet('dict', 'b', 1)─┐
│ a │
└─────────────────────────┘
Named collections for accessing Kafka
The description of parameters see Kafka.
DDL example
CREATE NAMED COLLECTION my_kafka_cluster AS
kafka_broker_list = 'localhost:9092',
kafka_topic_list = 'kafka_topic',
kafka_group_name = 'consumer_group',
kafka_format = 'JSONEachRow',
kafka_max_block_size = '1048576';
XML example
<clickhouse>
<named_collections>
<my_kafka_cluster>
<kafka_broker_list>localhost:9092</kafka_broker_list>
<kafka_topic_list>kafka_topic</kafka_topic_list>
<kafka_group_name>consumer_group</kafka_group_name>
<kafka_format>JSONEachRow</kafka_format>
<kafka_max_block_size>1048576</kafka_max_block_size>
</my_kafka_cluster>
</named_collections>
</clickhouse>
Example of using named collections with a Kafka table
Both of the following examples use the same named collection my_kafka_cluster
:
CREATE TABLE queue
(
timestamp UInt64,
level String,
message String
)
ENGINE = Kafka(my_kafka_cluster)
CREATE TABLE queue
(
timestamp UInt64,
level String,
message String
)
ENGINE = Kafka(my_kafka_cluster)
SETTINGS kafka_num_consumers = 4,
kafka_thread_per_consumer = 1;