Starburst Teradata connectors#
The Teradata connectors allow querying and creating tables in external Teradata databases. There are two connectors available:
The Starburst Teradata connector is a standard connector with a rich feature set, which is easy to install.
The Starburst Teradata Direct connector has the same feature set as the Starburst Teradata connector. It combines the connector with a table operator installed on the Teradata servers. This makes it more complex to install and update, but can produce higher query performance.
Starburst Teradata connector#
The Starburst Teradata connector is a feature-rich, easy to install connector.
Requirements#
To connect to Teradata, you need:
Teradata 17 or higher.
Network access from the coordinator and workers to Teradata.
Teradata’s JDBC driver, downloaded from Teradata.
A valid Starburst Enterprise license.
Configuration#
To configure the Teradata connector as example
catalog, create a file named
example.properties
in etc/catalog
(replace example with your database
name or some other descriptive name of the catalog) with the following contents:
connector.name=teradata
connection-url=jdbc:teradata://HOST
connection-user=USERNAME
connection-password=PASSWORD
More information about the supported JDBC URL format and parameters of the Teradata JDBC driver is available in the Teradata documentation.
General configuration properties#
The following table describes general catalog configuration properties for the connector:
Property name |
Description |
Default value |
---|---|---|
|
Support case insensitive schema and table names. |
|
|
This value should be a duration. |
|
|
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. |
|
|
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. |
|
|
Cache the fact that metadata, including table and column statistics, is not available |
|
|
Maximum number of objects stored in the metadata cache |
|
|
Maximum number of statements in a batched execution. Do not change this setting from the default. Non-default values may negatively impact performance. |
|
|
Push down dynamic filters into JDBC queries |
|
|
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. |
|
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();
Transaction mode#
As a new user, consider setting the Teradata system default to the ANSI session mode. For more information, read Transaction Semantics Differences in ANSI and Teradata Session Modes.
Unless the Teradata system default is changed, the connector defaults to the
TERA
transaction mode. To set the connector’s transaction mode to
ANSI
without changing the mode system-wide on Teradata, append
/TMODE=ANSI
to the connection-url
parameter in your catalog properties
file:
connection-url=jdbc:teradata://HOST/TMODE=ANSI
Installation#
To install the Teradata connector, use the following directions:
Obtain the Teradata JDBC driver file (
terajdbc4.jar
) from the Teradata website.Add the Teradata JDBC JAR file to the SEP
plugin/teradata
directory.Add SEP Teradata catalog properties file (such as
example.properties
for a SEP catalog namedexample
).Perform the above steps on every SEP cluster node.
Restart SEP on every node.
Parallelism#
SEP can read from Teradata tables using multiple parallel JDBC connections. By
default, parallel reads are disabled. To enable parallel reads, set the
following catalog configuration property to a value greater than 1
:
Property name |
Description |
Default |
---|---|---|
|
Number of parallel JDBC connections to use when reading from Teradata.
The corresponding catalog session property is |
1 |
Note
Parallelism is not supported for views in the Teradata JDBC connector. The Teradata Direct connector supports parallelism for both tables and views.
Type mapping#
Because Trino and Teradata 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.
Teradata to Trino type mapping#
The connector maps Teradata types to the corresponding Trino types according to the following table:
Teradata type |
Trino type |
---|---|
BYTEINT |
TINYINT |
SMALLINT |
SMALLINT |
INTEGER |
INTEGER |
BIGINT |
BIGINT |
REAL |
REAL |
FLOAT |
REAL |
DOUBLE |
DOUBLE |
NUMERIC |
DECIMAL |
DECIMAL |
DECIMAL |
CHAR |
CHAR |
NCHAR |
CHAR |
VARCHAR |
VARCHAR |
NVARCHAR |
VARCHAR |
LONGVARCHAR |
VARCHAR |
DATE |
DATE |
TIMESTAMP |
TIMESTAMP |
No other types are supported.
Trino to Teradata type mapping#
The connector maps Trino types to the corresponding Teradata types according to the following table:
Trino type |
Teradata type |
---|---|
TINYINT |
BYTEINT |
SMALLINT |
SMALLINT |
INTEGER |
INTEGER |
BIGINT |
BIGINT |
REAL |
REAL |
DOUBLE |
DOUBLE PRECISION |
DATE |
DATE |
TIMESTAMP |
TIMESTAMP |
CHAR |
CHAR |
VARCHAR |
VARCHAR |
No other types are supported.
The mapping above applies to creating a table with CREATE TABLE
and CREATE TABLE ... AS [SELECT]
statements.
Any Trino data type not listed in the above table cannot be created as a column in a new Teradata table.
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 |
|
|
Allow forced mapping of comma separated lists of data types to convert to
unbounded |
Teradata type mapping configuration#
The following additional properties can be used to configure the type mapping.
Property name |
Session property name |
Description |
Default |
---|---|---|---|
|
|
Default SEP |
|
|
|
Rounding mode for the Teradata
|
|
|
If enabled, sets the Teradata |
|
Lower case of Teradata NOT CASESPECIFIC
char types#
SEP does not support case insensitive comparison of values with char-based type. However, it is possible to force the connector to convert values to lower case for these comparisons. You can activate this behavior with a catalog property:
teradata.type.not-case-specific.to-lower-case=true
Alternatively you can use a catalog session property:
SET SESSION teradata.not_casespecific_to_lower_case = true;
CREATE TABLE WITH
syntax#
The Teradata connector supports CREATE TABLE [ WITH ( property_name = expression [, ...] ) ]
trino syntax.
Property name |
Description |
---|---|
|
This allows to configure primary index for the table.
The value is the array of columns used for the index.
NOTE:
If provided array is empty the Teradata behaviour is equal to
|
|
Specifies if created primary index is unique. Defaults to |
Table functions#
The connector provides specific table functions to access Teradata.
query(VARCHAR) -> table
#
The query
function allows you to query the underlying database directly. It
requires syntax native to the data source, because the full query is pushed down
and processed in the data source. This can be useful for accessing native
features or for improving query performance in situations where running a query
natively may be faster.
The query
table function is available in the system
schema of any
catalog that uses the Teradata connector, such as example
. The
following example passes myQuery
to the data source. myQuery
has to be a
valid query for the data source, and is required to return a table as a result:
SELECT
*
FROM
TABLE(
example.system.query(
query => 'myQuery'
)
);
Performance#
The connector includes a number of performance improvements, detailed in the following sections.
Table statistics#
The Teradata 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 Teradata and retrieved by the connector.
To collect statistics for a table, execute the following statements in Teradata. The second statement needs to be repeated for every column you want to collect statistics for.
COLLECT SUMMARY STATISTICS ON table_schema.table_name;
COLLECT STATISTICS COLUMN(column_name) ON table_schema.table_name;
Managed statistics#
The connector supports Managed statistics allowing SEP to collect and store its own table and column statistics that can then be used for performance optimizations in query planning.
Statistics must be collected manually using the built-in
collect_statistics
command, see
collect_statistics for details and examples.
Pushdown#
The connector supports pushdown for a number of operations:
Aggregate pushdown for the following functions:
Additionally, pushdown is only supported for DOUBLE
type columns with the
following functions:
Additionally pushdown is only supported for REAL
or DOUBLE
type column
with the following functions:
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
|
|
|
Strategy used to evaluate whether join operations are pushed down. Set to
|
|
Warning
The Teradata connector does not push down join operations where the join
condition uses columns of type CHAR
or VARCHAR
.
Predicate pushdown support#
The connector’s support of predicate pushdown is partially dependent on the configured transaction mode. You can modify the connector’s transaction mode in the catalog configuration file.
The predicate pushdown supports statements with the following arithmetic, boolean, comparison operators, and functions:
+
-
/
*
%
OR
NOT
LIKE
LIKE
withESCAPE
characterIS NULL
IS NOT NULL
NULLIF
IN
=
<>
If the transaction mode is set to TERA
, the support for pushdown of any
predicates on columns of character string types like
CHAR
or VARCHAR
is limited.
If the transaction mode is set to ANSI
, the connector does not support
pushdown of inequality predicates such as !=
, or range predicates such as
>
and BETWEEN
, on columns with character string types. Equality
predicates, such as IN
or =
, on columns with character string types are
pushed down. This ensures correctness of results since the remote data source
may sort strings differently than SEP.
In the following example, the predicate of the first query is not pushed down
since name
is a column of type VARCHAR
, and >
is an inequality
predicate. The second query is pushed down.
SELECT * FROM nation WHERE name > 'CANADA';
SELECT * FROM nation WHERE name = 'CANADA';
Dynamic filtering#
Dynamic filtering is enabled by default. It causes the connector to wait for dynamic filtering to complete before starting a JDBC query.
You can disable dynamic filtering by setting the dynamic-filtering.enabled
property in your catalog configuration file to false
.
Wait timeout#
By default, table scans on the connector are delayed up to 20 seconds until dynamic filters are collected from the build side of joins. Using a large timeout can potentially result in more detailed dynamic filters. However, it can also increase latency for some queries.
You can configure the dynamic-filtering.wait-timeout
property in your
catalog properties file:
dynamic-filtering.wait-timeout=1m
You can use the dynamic_filtering_wait_timeout
catalog session property in a specific session:
SET SESSION example.dynamic_filtering_wait_timeout = 1s;
Compaction#
The maximum size of dynamic filter predicate, that is pushed down to the
connector during table scan for a column, is configured using the
domain-compaction-threshold
property in the catalog
properties file:
domain-compaction-threshold=100
You can use the domain_compaction_threshold
catalog
session property:
SET SESSION domain_compaction_threshold = 10;
By default, domain-compaction-threshold
is set to 32
.
When the dynamic predicate for a column exceeds this threshold, it is compacted
into a single range predicate.
For example, if the dynamic filter collected for a date column dt
on the
fact table selects more than 32 days, the filtering condition is simplified from
dt IN ('2020-01-10', '2020-01-12',..., '2020-05-30')
to dt BETWEEN '2020-01-10' AND '2020-05-30'
. Using a large threshold can result in increased
table scan overhead due to a large IN
list getting pushed down to the data
source.
Metrics#
Metrics about dynamic filtering are reported in a JMX table for each catalog:
jmx.current."com.starburstdata.presto.plugin.jdbc.dynamicfiltering:name=example,type=dynamicfilteringstats"
Metrics include information about the total number of dynamic filters, the number of completed dynamic filters, the number of available dynamic filters and the time spent waiting for dynamic filters.
JDBC connection pooling#
When JDBC connection pooling is enabled, each node creates and maintains a connection pool instead of opening and closing separate connections to the data source. Each connection is available to connect to the data source and retrieve data. After completion of an operation, the connection is returned to the pool and can be reused. This improves performance by a small amount, reduces the load on any required authentication system used for establishing the connection, and helps avoid running into connection limits on data sources.
JDBC connection pooling is disabled by default. You can enable JDBC connection
pooling by setting the connection-pool.enabled
property to true
in your
catalog configuration file:
connection-pool.enabled=true
The following catalog configuration properties can be used to tune connection pooling:
Property name |
Description |
Default value |
---|---|---|
|
Enable connection pooling for the catalog. |
|
|
The maximum number of idle and active connections in the pool. |
|
|
The maximum lifetime of a connection. When a connection reaches this lifetime it is removed, regardless of how recently it has been active. |
|
|
The maximum size of the JDBC data source cache. |
|
|
The expiration time of a cached data source when it is no longer accessed. |
|
Starburst Cached Views#
The connectors supports table scan redirection to improve performance and reduce load on the data source.
Lock manager#
The Lock Manager imposes concurrency control on Teradata Database by managing the locks on the database objects being accessed by each transaction and releasing those locks when the transaction either commits or rolls back its work. This control ensures that the data remains consistent for all users. However for analytic queries default Teradata Lock Manager could be too restrictive.
Property name |
Description |
---|---|
|
|
Security#
The connector includes a number of security-related features, detailed in the following sections.
User impersonation#
Teradata connector supports user impersonation.
User impersonation can be enabled in the catalog file:
teradata.impersonation.enabled=true
User impersonation in Teradata connector is based on GRANT CONNECT THROUGH
.
For more details, search for GRANT CONNECT THROUGH
on the Teradata
documentation.
Note
Option WITH TRUST_ONLY
in GRANT CONNECT THROUGH
is not yet supported.
Kerberos authentication#
The connector supports Kerberos authentication. Use the following properties in the catalog properties file to configure it.
teradata.authentication.type=KERBEROS
kerberos.client.principal=example@example.com
kerberos.client.keytab=etc/kerberos/example.keytab
kerberos.config=etc/kerberos/krb5.conf
With this configuration the user example@example.com
, defined in the
principal property, is used to connect to the database, and the related Kerberos
service ticket is located in the example.keytab
file. The Kerberos
configuration specified with kerberos.config
is used.
Kerberos credential pass-through#
The connector can be configured to pass through Kerberos credentials, received by SEP, to the Teradata database.
Configure Kerberos and SEP, following the instructions in Kerberos credential pass-through.
Then configure the connector to pass through the credentials from the server to the database in your catalog properties file and ensure the Kerberos client configuration properties are in place:
teradata.authentication.type=KERBEROS_PASS_THROUGH
http.authentication.krb5.config=/etc/krb5.conf
http-server.authentication.krb5.service-name=exampleServiceName
http-server.authentication.krb5.keytab=/path/to/Keytab/File
Now any database access via SEP is subject to the data access restrictions and permissions of the user supplied via Kerberos.
Password credential pass-through#
The connector supports password credential pass-through. To enable it, edit the catalog properties file to include the authentication type:
teradata.authentication.type=PASSWORD_PASS_THROUGH
For more information about configurations and limitations, see Password credential pass-through.
Audit#
The connector utilizes the QUERY_ID
property for Teradata’s Query
Band
to annotate any query from SEP in Teradata with the SEP query
identifier. If teradata.query-band.query-id.enabled=true
each Teradata query
has QUERY_ID=<query_id>
with the current identifier added. This allows you to
determine which queries originated from SEP, and specifically also details
such as user submitting the query, for audit purposes.
The following example shows a QUERY_ID
value for a query issued from
SEP:
QUERY_ID=20220324_142042_00000_zkr9n;
If User impersonation is enabled, the impersonated username
is appended to the QUERY_ID
value as an additional PROXYROLE
property:
QUERY_ID=20220324_142042_00000_zkr9n;PROXYROLE=user_name;
Property name |
Description |
---|---|
|
Add a SEP query identifier to the Teradata QUERY_BAND. Defaults to
|
|
Name of a SEP property for query identifier in the Teradata QUERY_BAND.
Defaults to |
SQL support#
The connector provides read and write access to data and metadata in Teradata. 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
ALTER TABLE EXECUTE#
The connector supports the following commands for use with ALTER TABLE EXECUTE:
collect_statistics#
The collect_statistics
command is used with
Managed statistics to collect statistics for a table
and its columns.
The following statement collects statistics for the example_table
table
and all of its columns:
ALTER TABLE example_table EXECUTE collect_statistics;
Collecting statistics for all columns in a table may be unnecessarily
performance-intensive, especially for wide tables. To only collect statistics
for a subset of columns, you can include the columns
parameter with an
array of column names. For example:
ALTER TABLE example_table
EXECUTE collect_statistics(columns => ARRAY['customer','line_item']);
Starburst Teradata Direct connector#
The Teradata Direct connector is an alternative connector for Teradata databases.
Compared to the Starburst Teradata connector, it requires more advanced
configuration and is capable of achieving higher performance. It supports all
use cases of the Teradata connector, and adds greatly improved performance for
SELECT
queries.
The connector is composed of components running on SEP, and others running on Teradata. All components participate in every transmission. A transmission includes all data transfer related to a single table scan.
The connector uses JDBC as a control channel to schedule the query in Teradata.
Any SELECT
statement run with JDBC is passed to a Teradata table operator,
which then uses the custom transmitters to pass the data over HTTP to the SEP
controller and receivers:
Starburst Enterprise
- Controller
The controller starts and manages all transmissions. It runs on the SEP coordinator and distributes work to the receivers, and provides status information to the transmitters.
- Receivers
The receivers connect to the transmitters and receive data from Teradata from the transmitters. They run on the SEP workers and are managed by the controller.
Teradata
- Table operator and JDBC driver
The table operator and JDBC driver read the data from the Teradata storage.
- Transmitters
The transmitters send the data for each table operator invocation on Teradata to the receivers on SEP.
The following features from the Teradata connector are also supported by the Teradata Direct connector:
The Teradata Direct connector supports parallelism for both tables and views.
SEP controller and receiver installation#
The Teradata Direct connector must be configured in a catalog
properties file. e.g. example.properties
, using the connector name
teradata_direct
.
connector.name=teradata_direct
connection-url=jdbc:teradata://HOST
connection-user=USERNAME
connection-password=PASSWORD
teradata-direct.table-operator.name=some_schema.table_operator
teradata-direct.http.port=9000
teradata-direct.http.host=hostname.accessible.from.teradata.instance
Warning
The port used for the teradata-direct.http.port
catalog configuration
property must be unique across all catalogs that use the Teradata Direct
connector. If multiple different catalogs use the same port value for this
property the cluster fails to start.
Besides the connector name, you need to provide the JDBC connection parameters
and the relevant JAR files in the teradata
plugin directory, as discussed in
Starburst Teradata connector.
Additionally you need to install the native table operator on Teradata in the queried schema and configure the parameters for the connector specifying the table operator name, and the HTTP port and host of the SEP coordinator node.
Property name |
Description |
---|---|
|
Native Table Operator function name. |
|
Sets the receiver port the same on each node. If this is not specified, ports are set randomly. |
|
We strongly recommend that you set this to |
General configuration properties#
The following table describes general catalog configuration properties for the connector:
Property name |
Description |
Default value |
---|---|---|
|
Support case insensitive schema and table names. |
|
|
This value should be a duration. |
|
|
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. |
|
|
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. |
|
|
Cache the fact that metadata, including table and column statistics, is not available |
|
|
Maximum number of objects stored in the metadata cache |
|
|
Maximum number of statements in a batched execution. Do not change this setting from the default. Non-default values may negatively impact performance. |
|
|
Push down dynamic filters into JDBC queries |
|
|
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. |
|
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();
Additional Teradata configuration properties#
Further configuration can be done with the following parameters:
teradata-direct.receiver.buffer.size
in the catalog properties
file, or receiver_buffer_size
in catalog session properties:
Determines the buffer size per each SEP worker. This buffer is available per table scan, so a single query joining three tables uses three buffers. Default value is 32MB.
teradata-direct.parcel.size
in example.properties
, or
parcel_size
in catalog session properties:
The size of the data packets sent to the SEP receivers. The last packet may be smaller. Defaults to 2MB. Parcel size should not be higher than the buffer size.
teradata-direct.compression.enabled
in example.propertes
, or
compression_enabled
in catalog session properties:
Determines if transmission data is compressed. Defaults to
false
.
teradata-direct.splits-per-worker
in example.propertes
, or
splits_per_worker
in catalog session properties:
Determines how many splits each SEP worker receives. This determines the maximum concurrency level on SEP. Defaults to 16, identical to the
task.concurrency
of the SEP server.
teradata-direct.table-operator.logging-path
in the catalog properties file:
Set the path for log files of the native table operator on the Teradata nodes. Default behavior is to log to files in the the
/tmp
folder.
Configuring in Kubernetes deployments#
The Starburst Teradata Direct connector is supported for Kubernetes deployments in AWS EKS and in Azure AKS meeting certain requirements.
Warning
The configuration to use the connector on Kubernetes is complex and requires significant networking and Kubernetes expertise. Contact Starburst Support for assistance and help.
Encryption#
The connector can encrypt all data transmissions and use HTTPS. Add the details for the Java keystore file to use in the SEP server config.
teradata-direct.https.keystore.path=mykekstore.jks
teradata-direct.https.keystore.password=123456
SEP automatically distributes the keystore to the controller, the receivers, the transmitters and the table operator.
Native table operator#
Install the native table operator with the following steps:
To obtain access to the Teradata native table operator file, contact Starburst Support.
Copy the provided file onto all Teradata servers into an identical location such as
/opt/starburst
.Allow Teradata processes to access the file by either adding read permission with a command such as
chmod +r <.so file>
, or allowing access by thetdtrusted
group withchown :tdtrusted <.so file>; chmod g+r <.so file>
.Create the table operator function in the desired schema. We recommend a dedicated database for the current operator version.
CREATE FUNCTION some_database.table_operator() RETURNS TABLE VARYING USING FUNCTION starburst_teradata_contract LANGUAGE C NO SQL PARAMETER STYLE SQLTABLE EXTERNAL NAME 'SP!/opt/starburst/starburst-direct-<version>.so!F!starburst_teradata';
Warning
Do not install the native table operator in the syslib
database.
No Teradata restart is needed for the changes to take effect.
By default the UDF is created to run in protected mode. It allocates memory and opens socket and can therefore not be used in unprotected mode.
The path and access for the .so
file, for example /opt/starburst
, has to
be adjusted to a suitable location on your Teradata servers.
Each user that connects to Teradata from SEP needs to be granted sufficient access:
GRANT EXECUTE ON SPECIFIC FUNCTION some_database.table_operator TO your_user;
Alternatively access to table operator UDF can be granted via ROLE
CREATE ROLE table_operator_users;
GRANT EXECUTE ON SPECIFIC FUNCTION some_database.table_operator
TO table_operator_users;
GRANT table_operator_users TO your_user;
This also requires to set the role for any impersonated user, this could be achieved with the below in the catalog file:
teradata.impersonation-role=table_operator_users
Updates
You must only update the native table operator when required in the release notes. The requirement can be in the specific release you are installing, or in a release that you are skipping over. For example, the requirement result from an STS release between two LTS releases. An update from one LTS to the other, skipping the STS, still includes the need to update the native table operator. Contact Starburst Support if you require specific guidance for your update.
The following list details the necessary steps:
Download the new native table operator
starburst-direct-<version>.so
. The version needs to correspond to the version of the SEP cluster.Remove the function in Teradata before any updates:
DROP FUNCTION some_database.table_operator;
Drop the database used for the function in Teradata with
DROP DATABASE
.Remove all old
.so
files from all Teradata server nodes.Restart Teradata with
tparesert -force
to remove the native table operator from memory. This step may not be necessary and is solely determined by the memory management of Teradata. If you skip this step and run into an error like[Error 7559] [SQLState HY000] Memory (via malloc call) not freed before exiting UDF/XSP/UDM
, you must restart the upgrade process.Copy the new native table operator file to all Teradata server nodes. Use the original filename from the download. The filename is required to be different from each prior install.
Proceed with the same steps as performed during the initial installation. Make sure you update the create function statement to the new database and
.so
file path.Update the catalog properties files to point to the new database on the SEP coordinator and all workers.
teradata-direct.table-operator.name=new_database.table_operator
Restart the SEP cluster.