SQL Server connector#
The SQL Server connector allows querying and creating tables in an external Microsoft SQL Server database. This can be used to join data between different systems like SQL Server and Hive, or between two different SQL Server instances.
Requirements#
To connect to SQL Server, you need:
SQL Server 2012 or higher, or Azure SQL Database.
Network access from the Trino coordinator and workers to SQL Server. Port 1433 is the default port.
Configuration#
The connector can query a single database on a given SQL Server instance. Create
a catalog properties file that specifies the SQL server connector by setting the
connector.name
to sqlserver
.
For example, to access a database as example
, create the file
etc/catalog/example.properties
. Replace the connection properties as
appropriate for your setup:
connector.name=sqlserver
connection-url=jdbc:sqlserver://<host>:<port>;databaseName=<databaseName>;encrypt=false
connection-user=root
connection-password=secret
The connection-url
defines the connection information and parameters to pass
to the SQL Server JDBC driver. The supported parameters for the URL are
available in the SQL Server JDBC driver documentation.
The connection-user
and connection-password
are typically required and
determine the user credentials for the connection, often a service user. You can
use secrets to avoid actual values in the catalog
properties files.
Connection security#
The JDBC driver, and therefore the connector, automatically use Transport Layer Security (TLS) encryption and certificate validation. This requires a suitable TLS certificate configured on your SQL Server database host.
If you do not have the necessary configuration established, you can disable
encryption in the connection string with the encrypt
property:
connection-url=jdbc:sqlserver://<host>:<port>;databaseName=<databaseName>;encrypt=false
Further parameters like trustServerCertificate
, hostNameInCertificate
,
trustStore
, and trustStorePassword
are details in the TLS section of
SQL Server JDBC driver documentation.
Data source authentication#
The connector can provide credentials for the data source connection in multiple ways:
inline, in the connector configuration file
in a separate properties file
in a key store file
as extra credentials set when connecting to Trino
You can use secrets to avoid storing sensitive values in the catalog properties files.
The following table describes configuration properties for connection credentials:
Property name |
Description |
---|---|
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Type of the credential provider. Must be one of |
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Connection user name. |
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Connection password. |
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Name of the extra credentials property, whose value to use as the user
name. See |
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Name of the extra credentials property, whose value to use as the password. |
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Location of the properties file where credentials are present. It must
contain the |
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The location of the Java Keystore file, from which to read credentials. |
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File format of the keystore file, for example |
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Password for the key store. |
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Name of the key store entity to use as the user name. |
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Password for the user name key store entity. |
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Name of the key store entity to use as the password. |
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Password for the password key store entity. |
Multiple SQL Server databases or servers#
The SQL Server connector can only access a single SQL Server database within a single catalog. Thus, if you have multiple SQL Server databases, or want to connect to multiple SQL Server instances, you must configure multiple instances of the SQL Server connector.
To add another catalog, simply add another properties file to etc/catalog
with a different name, making sure it ends in .properties
. For example,
if you name the property file sales.properties
, Trino creates a
catalog named sales
using the configured connector.
General configuration properties#
The following table describes general catalog configuration properties for the connector:
Property name |
Description |
Default value |
---|---|---|
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Support case insensitive schema and table names. |
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This value should be a duration. |
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Path to a name mapping configuration file in JSON format that allows Trino to disambiguate between schemas and tables with similar names in different cases. |
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Frequency with which Trino checks the name matching configuration file for changes. This value should be a duration. |
(refresh disabled) |
|
The duration for which metadata, including table and column statistics, is cached. |
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Cache the fact that metadata, including table and column statistics, is not available |
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Maximum number of objects stored in the metadata cache |
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Maximum number of statements in a batched execution. Do not change this setting from the default. Non-default values may negatively impact performance. |
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Push down dynamic filters into JDBC queries |
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Maximum duration for which Trino will wait for dynamic filters to be collected from the build side of joins before starting a JDBC query. Using a large timeout can potentially result in more detailed dynamic filters. However, it can also increase latency for some queries. |
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Appending query metadata#
The optional parameter query.comment-format
allows you to configure a SQL
comment that is sent to the datasource with each query. The format of this
comment can contain any characters and the following metadata:
$QUERY_ID
: The identifier of the query.$USER
: The name of the user who submits the query to Trino.$SOURCE
: The identifier of the client tool used to submit the query, for exampletrino-cli
.$TRACE_TOKEN
: The trace token configured with the client tool.
The comment can provide more context about the query. This additional
information is available in the logs of the datasource. To include environment
variables from the Trino cluster with the comment , use the
${ENV:VARIABLE-NAME}
syntax.
The following example sets a simple comment that identifies each query sent by Trino:
query.comment-format=Query sent by Trino.
With this configuration, a query such as SELECT * FROM example_table;
is
sent to the datasource with the comment appended:
SELECT * FROM example_table; /*Query sent by Trino.*/
The following example improves on the preceding example by using metadata:
query.comment-format=Query $QUERY_ID sent by user $USER from Trino.
If Jane
sent the query with the query identifier
20230622_180528_00000_bkizg
, the following comment string is sent to the
datasource:
SELECT * FROM example_table; /*Query 20230622_180528_00000_bkizg sent by user Jane from Trino.*/
Note
Certain JDBC driver settings and logging configurations might cause the comment to be removed.
Domain compaction threshold#
Pushing down a large list of predicates to the data source can compromise
performance. Trino compacts large predicates into a simpler range predicate
by default to ensure a balance between performance and predicate pushdown.
If necessary, the threshold for this compaction can be increased to improve
performance when the data source is capable of taking advantage of large
predicates. Increasing this threshold may improve pushdown of large
dynamic filters.
The domain-compaction-threshold
catalog configuration property or the
domain_compaction_threshold
catalog session property can be used to adjust the default value of
32
for this threshold.
Specific configuration properties#
The SQL Server connector supports additional catalog properties to configure the behavior of the connector and the issues queries to the database.
Property name |
Description |
---|---|
|
Control the automatic use of snapshot isolation for transactions issued by
Trino in SQL Server. Defaults to |
Procedures#
system.flush_metadata_cache()
Flush JDBC metadata caches. For example, the following system call flushes the metadata caches for all schemas in the
example
catalogUSE example.example_schema; CALL system.flush_metadata_cache();
Case insensitive matching#
When case-insensitive-name-matching
is set to true
, Trino
is able to query non-lowercase schemas and tables by maintaining a mapping of
the lowercase name to the actual name in the remote system. However, if two
schemas and/or tables have names that differ only in case (such as “customers”
and “Customers”) then Trino fails to query them due to ambiguity.
In these cases, use the case-insensitive-name-matching.config-file
catalog
configuration property to specify a configuration file that maps these remote
schemas/tables to their respective Trino schemas/tables:
{
"schemas": [
{
"remoteSchema": "CaseSensitiveName",
"mapping": "case_insensitive_1"
},
{
"remoteSchema": "cASEsENSITIVEnAME",
"mapping": "case_insensitive_2"
}],
"tables": [
{
"remoteSchema": "CaseSensitiveName",
"remoteTable": "tablex",
"mapping": "table_1"
},
{
"remoteSchema": "CaseSensitiveName",
"remoteTable": "TABLEX",
"mapping": "table_2"
}]
}
Queries against one of the tables or schemes defined in the mapping
attributes are run against the corresponding remote entity. For example, a query
against tables in the case_insensitive_1
schema is forwarded to the
CaseSensitiveName schema and a query against case_insensitive_2
is forwarded
to the cASEsENSITIVEnAME
schema.
At the table mapping level, a query on case_insensitive_1.table_1
as
configured above is forwarded to CaseSensitiveName.tablex
, and a query on
case_insensitive_1.table_2
is forwarded to CaseSensitiveName.TABLEX
.
By default, when a change is made to the mapping configuration file, Trino must
be restarted to load the changes. Optionally, you can set the
case-insensitive-name-mapping.refresh-period
to have Trino refresh the
properties without requiring a restart:
case-insensitive-name-mapping.refresh-period=30s
Non-transactional INSERT#
The connector supports adding rows using INSERT statements.
By default, data insertion is performed by writing data to a temporary table.
You can skip this step to improve performance and write directly to the target
table. Set the insert.non-transactional-insert.enabled
catalog property
or the corresponding non_transactional_insert
catalog session property to
true
.
Note that with this property enabled, data can be corrupted in rare cases where exceptions occur during the insert operation. With transactions disabled, no rollback can be performed.
Querying SQL Server#
The SQL Server connector provides access to all schemas visible to the specified
user in the configured database. For the following examples, assume the SQL
Server catalog is example
.
You can see the available schemas by running SHOW SCHEMAS
:
SHOW SCHEMAS FROM example;
If you have a schema named web
, you can view the tables
in this schema by running SHOW TABLES
:
SHOW TABLES FROM example.web;
You can see a list of the columns in the clicks
table in the web
database
using either of the following:
DESCRIBE example.web.clicks;
SHOW COLUMNS FROM example.web.clicks;
Finally, you can query the clicks
table in the web
schema:
SELECT * FROM example.web.clicks;
If you used a different name for your catalog properties file, use
that catalog name instead of example
in the above examples.
Type mapping#
Because Trino and SQL Server each support types that the other does not, this connector modifies some types when reading or writing data. Data types may not map the same way in both directions between Trino and the data source. Refer to the following sections for type mapping in each direction.
SQL Server type to Trino type mapping#
The connector maps SQL Server types to the corresponding Trino types following this table:
SQL Server database type |
Trino type |
Notes |
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SQL Server |
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Trino type to SQL Server type mapping#
The connector maps Trino types to the corresponding SQL Server types following this table:
Trino type |
SQL Server type |
Notes |
---|---|---|
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Trino only supports writing values belonging to |
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Complete list of SQL Server data types.
Numeric type mapping#
For SQL Server FLOAT[(n)]
:
If
n
is not specified maps to TrinoDouble
If
1 <= n <= 24
maps to TrinoREAL
If
24 < n <= 53
maps to TrinoDOUBLE
Character type mapping#
For Trino CHAR(n)
:
If
1 <= n <= 4000
maps SQL ServerNCHAR(n)
If
n > 4000
maps SQL ServerNVARCHAR(max)
For Trino VARCHAR(n)
:
If
1 <= n <= 4000
maps SQL ServerNVARCHAR(n)
If
n > 4000
maps SQL ServerNVARCHAR(max)
Type mapping configuration properties#
The following properties can be used to configure how data types from the connected data source are mapped to Trino data types and how the metadata is cached in Trino.
Property name |
Description |
Default value |
---|---|---|
|
Configure how unsupported column data types are handled:
The respective catalog session property is |
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|
Allow forced mapping of comma separated lists of data types to convert to
unbounded |
SQL support#
The connector provides read access and write access to data and metadata in SQL Server. In addition to the globally available and read operation statements, the connector supports the following features:
SQL DELETE#
If a WHERE
clause is specified, the DELETE
operation only works if the
predicate in the clause can be fully pushed down to the data source.
ALTER TABLE RENAME TO#
The connector does not support renaming tables across multiple schemas. For example, the following statement is supported:
ALTER TABLE example.schema_one.table_one RENAME TO example.schema_one.table_two
The following statement attempts to rename a table across schemas, and therefore is not supported:
ALTER TABLE example.schema_one.table_one RENAME TO example.schema_two.table_two
Fault-tolerant execution support#
The connector supports Fault-tolerant execution of query processing. Read and write operations are both supported with any retry policy.
Table functions#
The connector provides specific table functions to access SQL Server.
query(varchar) -> table
#
The query
function allows you to query the underlying database directly. It
requires syntax native to SQL Server, because the full query is pushed down and
processed in SQL Server. This can be useful for accessing native features which
are not implemented in Trino or for improving query performance in situations
where running a query natively may be faster.
The native query passed to the underlying data source is required to return a table as a result set. Only the data source performs validation or security checks for these queries using its own configuration. Trino does not perform these tasks. Only use passthrough queries to read data.
For example, query the example
catalog and select the top 10 percent of
nations by population:
SELECT
*
FROM
TABLE(
example.system.query(
query => 'SELECT
TOP(10) PERCENT *
FROM
tpch.nation
ORDER BY
population DESC'
)
);
procedure(varchar) -> table
#
The procedure
function allows you to run stored procedures on the underlying
database directly. It requires syntax native to SQL Server, because the full query
is pushed down and processed in SQL Server. In order to use this table function set
sqlserver.experimental.stored-procedure-table-function-enabled
to true
.
Note
The procedure
function does not support running StoredProcedures that return multiple statements,
use a non-select statement, use output parameters, or use conditional statements.
Warning
This feature is experimental only. The function has security implication and syntax might change and be backward incompatible.
The follow example runs the stored procedure employee_sp
in the example
catalog and the
example_schema
schema in the underlying SQL Server database:
SELECT
*
FROM
TABLE(
example.system.procedure(
query => 'EXECUTE example_schema.employee_sp'
)
);
If the stored procedure employee_sp
requires any input
append the parameter value to the procedure statement:
SELECT
*
FROM
TABLE(
example.system.procedure(
query => 'EXECUTE example_schema.employee_sp 0'
)
);
Note
The query engine does not preserve the order of the results of this
function. If the passed query contains an ORDER BY
clause, the
function result may not be ordered as expected.
Performance#
The connector includes a number of performance improvements, detailed in the following sections.
Table statistics#
The SQL Server connector can use table and column statistics for cost based optimizations, to improve query processing performance based on the actual data in the data source.
The statistics are collected by SQL Server and retrieved by the connector.
The connector can use information stored in single-column statistics. SQL Server Database can automatically create column statistics for certain columns. If column statistics are not created automatically for a certain column, you can create them by executing the following statement in SQL Server Database.
CREATE STATISTICS example_statistics_name ON table_schema.table_name (column_name);
SQL Server Database routinely updates the statistics. In some cases, you may want to force statistics update (e.g. after defining new column statistics or after changing data in the table). You can do that by executing the following statement in SQL Server Database.
UPDATE STATISTICS table_schema.table_name;
Refer to SQL Server documentation for information about options, limitations and additional considerations.
Pushdown#
The connector supports pushdown for a number of operations:
Aggregate pushdown for the following functions:
Note
The connector performs pushdown where performance may be improved, but in order to preserve correctness an operation may not be pushed down. When pushdown of an operation may result in better performance but risks correctness, the connector prioritizes correctness.
Cost-based join pushdown#
The connector supports cost-based Join pushdown to make intelligent decisions about whether to push down a join operation to the data source.
When cost-based join pushdown is enabled, the connector only pushes down join operations if the available Table statistics suggest that doing so improves performance. Note that if no table statistics are available, join operation pushdown does not occur to avoid a potential decrease in query performance.
The following table describes catalog configuration properties for join pushdown:
Property name |
Description |
Default value |
---|---|---|
|
Enable join pushdown. Equivalent catalog
session property is
|
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Strategy used to evaluate whether join operations are pushed down. Set to
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Predicate pushdown support#
The connector supports pushdown of predicates on VARCHAR
and NVARCHAR
columns if the underlying columns in SQL Server use a case-sensitive collation.
The following operators are pushed down:
=
<>
IN
NOT IN
To ensure correct results, operators are not pushed down for columns using a case-insensitive collation.
Bulk insert#
You can optionally use the bulk copy API to drastically speed up write operations.
Enable bulk copying and a lock on the destination table to meet minimal logging requirements.
The following table shows the relevant catalog configuration properties and their default values:
Property name |
Description |
Default |
---|---|---|
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Use the SQL Server bulk copy API for writes. The corresponding catalog
session property is |
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Obtain a bulk update lock on the destination table for write operations.
The corresponding catalog session property is
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Limitations:
Column names with leading and trailing spaces are not supported.
Data compression#
You can specify the data compression policy for SQL Server tables
with the data_compression
table property. Valid policies are NONE
, ROW
or PAGE
.
Example:
CREATE TABLE example_schema.scientists (
recordkey VARCHAR,
name VARCHAR,
age BIGINT,
birthday DATE
)
WITH (
data_compression = 'ROW'
);