Microsoft SQL Server
Important Capabilities
Capability | Status | Notes |
---|---|---|
Asset Containers | ✅ | Enabled by default |
Classification | ✅ | Optionally enabled via classification.enabled |
Data Profiling | ✅ | Optionally enabled via configuration |
Descriptions | ✅ | Enabled by default |
Detect Deleted Entities | ✅ | Enabled via stateful ingestion |
Domains | ✅ | Supported via the domain config field |
Platform Instance | ✅ | Enabled by default |
Schema Metadata | ✅ | Enabled by default |
This plugin extracts the following:
- Metadata for databases, schemas, views and tables
- Column types associated with each table/view
- Table, row, and column statistics via optional SQL profiling
We have two options for the underlying library used to connect to SQL Server: (1) python-tds and (2) pyodbc. The TDS library is pure Python and hence easier to install.
If you do use pyodbc, make sure to change the source type from
mssql
tomssql-odbc
so that we pull in the right set of dependencies. This will be needed in most cases where encryption is required, such as managed SQL Server services in Azure.
Prerequisites
If you want to ingest MSSQL Jobs and stored procedures (with code) the user credentials needs the proper privileges.
Script for granting the privileges:
USE MSDB
GRANT SELECT ON OBJECT::msdb.dbo.sysjobsteps TO 'USERNAME'
GRANT SELECT ON OBJECT::msdb.dbo.sysjobs TO 'USERNAME'
USE 'DATA_DB_NAME'
GRANT VIEW DEFINITION TO 'USERNAME'
GRANT SELECT ON OBJECT::sys.sql_expression_dependencies TO 'USERNAME'
Extended Properties
Feature Overview
What are Extended Properties?
Extended Properties in MSSQL allow users to add custom metadata to database objects such as tables, columns, and schemas. This feature helps in storing additional descriptive information directly within the database.
Why Use Extended Properties?
- Enhanced Metadata Management: Store additional context about your data directly within the database.
- Improved Data Governance: Helps in better understanding and managing your data assets.
- Custom Annotations: Allows for annotations that can be specific to your organizational needs.
General Purpose
Ingest information from MSSQL's extended properties into DataHub and display it in the appropriate places in DataHub.
Goal
Ingest additional metadata properties to enrich the data models and provide more comprehensive context. Implementation Details
This feature works with tables and views. The retrieved properties are mapped to the appropriate DataHub fields: Description, Tags, Owners and Domain.
Descriptions and Tags can be applied at the schema level of objects, providing context and categorization at a broader scope. All properties (Description, Tags, Owners and Domain) can be applied at the object level, allowing for detailed metadata management of individual database objects.
Configuration
Configuring Extended Properties
Add to the Ingestion Module Configuration:
Add the following new setting:
add_extended_properties: True|False (default: False)
NOTE: True only if include_descriptions == True.
Add New Setting for Mapping Extended Properties:
Add the following new setting:
map_extended_properties: Dict(str: Dict)
NOTE: This configuration is used only if add_extended_properties == True.
Structure of map_extended_properties
map_extended_properties: Specifies how and where to write custom MSSQL extended properties to DataHub.
Key: str - exact name of the extended properties (e.g., "MS_Description", "OWNER").
Value: dict - contains descriptions of type, actions, strategy, and additional information. Actions and strategies can vary for different types.
Types
Description
The description type allows you to manage textual descriptions of database objects. Extended properties of this type provide valuable context for data assets.
Actions:
overwrite: Overwrites all descriptions. In DataHub, only the last description from the configuration for this type will be visible.
append: Adds to the previous description. If this action is used, a delimiter can be added. If the delimiter is absent, the default is used: \n ___ \n.
NOTE: default action: append
Important: Additionally, the first description will always be from ms_description.
NOTE: Actions only have an effect within the configuration. In DataHub, descriptions created via the UI will not be overwritten. However, information from extended properties descriptions can be viewed in the edit description window.
Example Configuration:
"X_Description_1": {
"type": "description",
"strategy": "append",
"delimiter": "; "
},
"X_Description_2": {
"type": "description",
"strategy": "overwrite"
}
In this example, we are mapping only the value of MSSQL's extended property X_Description_2 to the description of DataHub's dataset.
Owner
The owner type is crucial for identifying the responsible individuals or teams for database objects. This helps in assigning accountability and managing data stewardship.
In MSSQL extended properties, responsible persons should be listed as either users' emails or names (email up to "@") and presented as a comma-separated list.
Requires additional setting ownership_type. Values must be existing DataHub ownership types (e.g., "TECHNICAL_OWNER", "PRODUCER").
Actions:
overwrite: Overwrites existing users with the corresponding ownership_type.
append: Adds another user to the existing ones with the corresponding ownership_type.
NOTE: default action: append
Important: We check for the presence of these users in DataHub. If they are absent, you will see an error in the logs: “Ingestion error: Absent: {list of users}”.
Example Configuration:
map_extended_properties:
"X_OWNER_1": {
"type": "owner",
"strategy": "append",
"ownership_type": "TECHNICAL_OWNER"
},
"X_OWNER_2": {
"type": "owner",
"strategy": "overwrite",
"ownership_type": "PRODUCER"
}
Tag
The tag type is used for categorizing and labeling data assets. Tags help in organizing and retrieving information based on specific criteria.
In MSSQL extended properties, tags can be recorded as a comma-separated list. Each tag is considered a string enclosed in quotes (between “).
Actions:
- overwrite: Overwrites the existing tags.
- append: Adds another tag to the existing ones.
NOTE: default action: append
If a new tag is not present in DataHub, it will be created automatically.
Example Configuration:
map_extended_properties:
"X_TAG_1": {
"type": "tag",
"strategy": "append"
},
"X_TAG_2": {
"type": "tag",
"strategy": "overwrite"
}
Domains
The domains type is used for associating database objects with specific domains. Only the first domain will be recorded, which simplifies domain management.
In MSSQL extended properties, domains can be listed, but only the first domain will be recorded in DataHub.
There is no strategy for domains.
NOTE: A domain added via the UI will be overwritten.
Important: We check for the presence of the domain in DataHub. If it is absent, you will see an error in the logs: “ERROR … Failed to retrieve domain id for domain {domain name}”.
Example Configuration:
map_extended_properties:
X_DOMAIN": {
"type": "domains"
}
Combining Different Types:
You can also combine different types in a single configuration. map_extended_properties:
"X_Description_1": {
"type": "description",
"strategy": "append",
"delimiter": "; "
},
"X_Description_2": {
"type": "description",
"strategy": "overwrite"
},
"X_OWNER_1": {
"type": "owner",
"strategy": "append",
"ownership_type": "TECHNICAL_OWNER"
},
"X_OWNER_2": {
"type": "owner",
"strategy": "overwrite",
"ownership_type": "PRODUCER"
},
"X_TAG_1": {
"type": "tag",
"strategy": "append"
},
"X_TAG_2": {
"type": "tag",
"strategy": "overwrite"
},
"X_DOMAIN": {
"type": "domains"
}
In this example, various types are mapped in one configuration, demonstrating how to specify different handling strategies for descriptions, owners, tags, and domains.
CLI based Ingestion
Install the Plugin
The mssql
source works out of the box with acryl-datahub
.
Starter Recipe
Check out the following recipe to get started with ingestion! See below for full configuration options.
For general pointers on writing and running a recipe, see our main recipe guide.
source:
type: mssql
config:
# Coordinates
host_port: localhost:1433
database: DemoDatabase
# Credentials
username: user
password: pass
# Options
# Uncomment if you need to use encryption with pytds
# See https://python-tds.readthedocs.io/en/latest/pytds.html#pytds.connect
# options:
# connect_args:
# cafile: server-ca.pem
# validate_host: true
sink:
# sink configs
#------------------------------------------------------------------------
#Example: using ingestion with ODBC and encryption
#This requires you to have already installed the Microsoft ODBC Driver for SQL Server.
#See https://docs.microsoft.com/en-us/sql/connect/python/pyodbc/step-1-configure-development-environment-for-pyodbc-python-development?view=sql-server-ver15
# ------------------------------------------------------------------------
source:
type: mssql-odbc
config:
# Coordinates
host_port: localhost:1433
database: DemoDatabase
# Credentials
username: admin
password: password
# Options
use_odbc: "True"
uri_args:
driver: "ODBC Driver 17 for SQL Server"
Encrypt: "yes"
TrustServerCertificate: "Yes"
ssl: "True"
sink:
# sink configs
Config Details
- Options
- Schema
Note that a .
is used to denote nested fields in the YAML recipe.
Field | Description |
---|---|
add_extended_properties boolean | Enable reading extended properties from mssql Default: False |
convert_urns_to_lowercase boolean | Enable to convert the SQL Server assets urns to lowercase Default: False |
database string | database (catalog). If set to Null, all databases will be considered for ingestion. |
host_port string | MSSQL host URL. Default: localhost:1433 |
include_descriptions boolean | Include table descriptions information. Default: True |
include_jobs boolean | Include ingest of MSSQL Jobs. Requires access to the 'msdb' and 'sys' schema. Default: True |
include_lineage boolean | Enable lineage extraction for stored procedures Default: True |
include_stored_procedures boolean | Include ingest of stored procedures. Requires access to the 'sys' schema. Default: True |
include_stored_procedures_code boolean | Include information about object code. Default: True |
include_table_location_lineage boolean | If the source supports it, include table lineage to the underlying storage location. Default: True |
include_tables boolean | Whether tables should be ingested. Default: True |
include_view_column_lineage boolean | Populates column-level lineage for view->view and table->view lineage using DataHub's sql parser. Requires include_view_lineage to be enabled. Default: True |
include_view_lineage boolean | Populates view->view and table->view lineage using DataHub's sql parser. Default: True |
include_views boolean | Whether views should be ingested. Default: True |
incremental_lineage boolean | When enabled, emits lineage as incremental to existing lineage already in DataHub. When disabled, re-states lineage on each run. Default: False |
map_extended_properties map(str,object) | |
options object | Any options specified here will be passed to SQLAlchemy.create_engine as kwargs. To set connection arguments in the URL, specify them under connect_args . |
password string(password) | password |
platform_instance string | The instance of the platform that all assets produced by this recipe belong to. This should be unique within the platform. See https://datahubproject.io/docs/platform-instances/ for more details. |
sqlalchemy_uri string | URI of database to connect to. See https://docs.sqlalchemy.org/en/14/core/engines.html#database-urls. Takes precedence over other connection parameters. |
uri_args map(str,string) | |
use_file_backed_cache boolean | Whether to use a file backed cache for the view definitions. Default: True |
use_odbc boolean | See https://docs.sqlalchemy.org/en/14/dialects/mssql.html#module-sqlalchemy.dialects.mssql.pyodbc. Default: False |
username string | username |
env string | The environment that all assets produced by this connector belong to Default: PROD |
classification ClassificationConfig | For details, refer to Classification. Default: {'enabled': False, 'sample_size': 100, 'max_worker... |
classification.enabled boolean | Whether classification should be used to auto-detect glossary terms Default: False |
classification.info_type_to_term map(str,string) | |
classification.max_workers integer | Number of worker processes to use for classification. Set to 1 to disable. Default: 4 |
classification.sample_size integer | Number of sample values used for classification. Default: 100 |
classification.classifiers array | Classifiers to use to auto-detect glossary terms. If more than one classifier, infotype predictions from the classifier defined later in sequence take precedance. Default: [{'type': 'datahub', 'config': None}] |
classification.classifiers.DynamicTypedClassifierConfig DynamicTypedClassifierConfig | |
classification.classifiers.DynamicTypedClassifierConfig.type ❓ string | The type of the classifier to use. For DataHub, use datahub |
classification.classifiers.DynamicTypedClassifierConfig.config object | The configuration required for initializing the classifier. If not specified, uses defaults for classifer type. |
classification.column_pattern AllowDenyPattern | Regex patterns to filter columns for classification. This is used in combination with other patterns in parent config. Specify regex to match the column name in database.schema.table.column format. Default: {'allow': ['.*'], 'deny': [], 'ignoreCase': True} |
classification.column_pattern.ignoreCase boolean | Whether to ignore case sensitivity during pattern matching. Default: True |
classification.column_pattern.allow array | List of regex patterns to include in ingestion Default: ['.*'] |
classification.column_pattern.allow.string string | |
classification.column_pattern.deny array | List of regex patterns to exclude from ingestion. Default: [] |
classification.column_pattern.deny.string string | |
classification.table_pattern AllowDenyPattern | Regex patterns to filter tables for classification. This is used in combination with other patterns in parent config. Specify regex to match the entire table name in database.schema.table format. e.g. to match all tables starting with customer in Customer database and public schema, use the regex 'Customer.public.customer.*' Default: {'allow': ['.*'], 'deny': [], 'ignoreCase': True} |
classification.table_pattern.ignoreCase boolean | Whether to ignore case sensitivity during pattern matching. Default: True |
classification.table_pattern.allow array | List of regex patterns to include in ingestion Default: ['.*'] |
classification.table_pattern.allow.string string | |
classification.table_pattern.deny array | List of regex patterns to exclude from ingestion. Default: [] |
classification.table_pattern.deny.string string | |
database_pattern AllowDenyPattern | Regex patterns for databases to filter in ingestion. Default: {'allow': ['.*'], 'deny': [], 'ignoreCase': True} |
database_pattern.ignoreCase boolean | Whether to ignore case sensitivity during pattern matching. Default: True |
database_pattern.allow array | List of regex patterns to include in ingestion Default: ['.*'] |
database_pattern.allow.string string | |
database_pattern.deny array | List of regex patterns to exclude from ingestion. Default: [] |
database_pattern.deny.string string | |
domain map(str,AllowDenyPattern) | A class to store allow deny regexes |
domain. key .allowarray | List of regex patterns to include in ingestion Default: ['.*'] |
domain. key .allow.stringstring | |
domain. key .ignoreCaseboolean | Whether to ignore case sensitivity during pattern matching. Default: True |
domain. key .denyarray | List of regex patterns to exclude from ingestion. Default: [] |
domain. key .deny.stringstring | |
procedure_pattern AllowDenyPattern | Regex patterns for stored procedures to filter in ingestion.Specify regex to match the entire procedure name in database.schema.procedure_name format. e.g. to match all procedures starting with customer in Customer database and public schema, use the regex 'Customer.public.customer.*' Default: {'allow': ['.*'], 'deny': [], 'ignoreCase': True} |
procedure_pattern.ignoreCase boolean | Whether to ignore case sensitivity during pattern matching. Default: True |
procedure_pattern.allow array | List of regex patterns to include in ingestion Default: ['.*'] |
procedure_pattern.allow.string string | |
procedure_pattern.deny array | List of regex patterns to exclude from ingestion. Default: [] |
procedure_pattern.deny.string string | |
profile_pattern AllowDenyPattern | Regex patterns to filter tables (or specific columns) for profiling during ingestion. Note that only tables allowed by the table_pattern will be considered. Default: {'allow': ['.*'], 'deny': [], 'ignoreCase': True} |
profile_pattern.ignoreCase boolean | Whether to ignore case sensitivity during pattern matching. Default: True |
profile_pattern.allow array | List of regex patterns to include in ingestion Default: ['.*'] |
profile_pattern.allow.string string | |
profile_pattern.deny array | List of regex patterns to exclude from ingestion. Default: [] |
profile_pattern.deny.string string | |
schema_pattern AllowDenyPattern | Regex patterns for schemas to filter in ingestion. Specify regex to only match the schema name. e.g. to match all tables in schema analytics, use the regex 'analytics' Default: {'allow': ['.*'], 'deny': [], 'ignoreCase': True} |
schema_pattern.ignoreCase boolean | Whether to ignore case sensitivity during pattern matching. Default: True |
schema_pattern.allow array | List of regex patterns to include in ingestion Default: ['.*'] |
schema_pattern.allow.string string | |
schema_pattern.deny array | List of regex patterns to exclude from ingestion. Default: [] |
schema_pattern.deny.string string | |
table_pattern AllowDenyPattern | Regex patterns for tables to filter in ingestion. Specify regex to match the entire table name in database.schema.table format. e.g. to match all tables starting with customer in Customer database and public schema, use the regex 'Customer.public.customer.*' Default: {'allow': ['.*'], 'deny': [], 'ignoreCase': True} |
table_pattern.ignoreCase boolean | Whether to ignore case sensitivity during pattern matching. Default: True |
table_pattern.allow array | List of regex patterns to include in ingestion Default: ['.*'] |
table_pattern.allow.string string | |
table_pattern.deny array | List of regex patterns to exclude from ingestion. Default: [] |
table_pattern.deny.string string | |
view_pattern AllowDenyPattern | Regex patterns for views to filter in ingestion. Note: Defaults to table_pattern if not specified. Specify regex to match the entire view name in database.schema.view format. e.g. to match all views starting with customer in Customer database and public schema, use the regex 'Customer.public.customer.*' Default: {'allow': ['.*'], 'deny': [], 'ignoreCase': True} |
view_pattern.ignoreCase boolean | Whether to ignore case sensitivity during pattern matching. Default: True |
view_pattern.allow array | List of regex patterns to include in ingestion Default: ['.*'] |
view_pattern.allow.string string | |
view_pattern.deny array | List of regex patterns to exclude from ingestion. Default: [] |
view_pattern.deny.string string | |
profiling GEProfilingConfig | Default: {'enabled': False, 'operation_config': {'lower_fre... |
profiling.catch_exceptions boolean | Default: True |
profiling.enabled boolean | Whether profiling should be done. Default: False |
profiling.field_sample_values_limit integer | Upper limit for number of sample values to collect for all columns. Default: 20 |
profiling.include_field_distinct_count boolean | Whether to profile for the number of distinct values for each column. Default: True |
profiling.include_field_distinct_value_frequencies boolean | Whether to profile for distinct value frequencies. Default: False |
profiling.include_field_histogram boolean | Whether to profile for the histogram for numeric fields. Default: False |
profiling.include_field_max_value boolean | Whether to profile for the max value of numeric columns. Default: True |
profiling.include_field_mean_value boolean | Whether to profile for the mean value of numeric columns. Default: True |
profiling.include_field_median_value boolean | Whether to profile for the median value of numeric columns. Default: True |
profiling.include_field_min_value boolean | Whether to profile for the min value of numeric columns. Default: True |
profiling.include_field_null_count boolean | Whether to profile for the number of nulls for each column. Default: True |
profiling.include_field_quantiles boolean | Whether to profile for the quantiles of numeric columns. Default: False |
profiling.include_field_sample_values boolean | Whether to profile for the sample values for all columns. Default: True |
profiling.include_field_stddev_value boolean | Whether to profile for the standard deviation of numeric columns. Default: True |
profiling.limit integer | Max number of documents to profile. By default, profiles all documents. |
profiling.max_number_of_fields_to_profile integer | A positive integer that specifies the maximum number of columns to profile for any table. None implies all columns. The cost of profiling goes up significantly as the number of columns to profile goes up. |
profiling.max_workers integer | Number of worker threads to use for profiling. Set to 1 to disable. Default: 20 |
profiling.offset integer | Offset in documents to profile. By default, uses no offset. |
profiling.partition_datetime string(date-time) | If specified, profile only the partition which matches this datetime. If not specified, profile the latest partition. Only Bigquery supports this. |
profiling.partition_profiling_enabled boolean | Whether to profile partitioned tables. Only BigQuery and Aws Athena supports this. If enabled, latest partition data is used for profiling. Default: True |
profiling.profile_external_tables boolean | Whether to profile external tables. Only Snowflake and Redshift supports this. Default: False |
profiling.profile_if_updated_since_days number | Profile table only if it has been updated since these many number of days. If set to null , no constraint of last modified time for tables to profile. Supported only in snowflake and BigQuery . |
profiling.profile_nested_fields boolean | Whether to profile complex types like structs, arrays and maps. Default: False |
profiling.profile_table_level_only boolean | Whether to perform profiling at table-level only, or include column-level profiling as well. Default: False |
profiling.profile_table_row_count_estimate_only boolean | Use an approximate query for row count. This will be much faster but slightly less accurate. Only supported for Postgres and MySQL. Default: False |
profiling.profile_table_row_limit integer | Profile tables only if their row count is less than specified count. If set to null , no limit on the row count of tables to profile. Supported only in snowflake and BigQuery Supported for oracle based on gathered stats. Default: 5000000 |
profiling.profile_table_size_limit integer | Profile tables only if their size is less than specified GBs. If set to null , no limit on the size of tables to profile. Supported only in snowflake and BigQuery Supported for oracle based on calculated size from gathered stats. Default: 5 |
profiling.query_combiner_enabled boolean | This feature is still experimental and can be disabled if it causes issues. Reduces the total number of queries issued and speeds up profiling by dynamically combining SQL queries where possible. Default: True |
profiling.report_dropped_profiles boolean | Whether to report datasets or dataset columns which were not profiled. Set to True for debugging purposes. Default: False |
profiling.sample_size integer | Number of rows to be sampled from table for column level profiling.Applicable only if use_sampling is set to True. Default: 10000 |
profiling.turn_off_expensive_profiling_metrics boolean | Whether to turn off expensive profiling or not. This turns off profiling for quantiles, distinct_value_frequencies, histogram & sample_values. This also limits maximum number of fields being profiled to 10. Default: False |
profiling.use_sampling boolean | Whether to profile column level stats on sample of table. Only BigQuery and Snowflake support this. If enabled, profiling is done on rows sampled from table. Sampling is not done for smaller tables. Default: True |
profiling.operation_config OperationConfig | Experimental feature. To specify operation configs. |
profiling.operation_config.lower_freq_profile_enabled boolean | Whether to do profiling at lower freq or not. This does not do any scheduling just adds additional checks to when not to run profiling. Default: False |
profiling.operation_config.profile_date_of_month integer | Number between 1 to 31 for date of month (both inclusive). If not specified, defaults to Nothing and this field does not take affect. |
profiling.operation_config.profile_day_of_week integer | Number between 0 to 6 for day of week (both inclusive). 0 is Monday and 6 is Sunday. If not specified, defaults to Nothing and this field does not take affect. |
profiling.tags_to_ignore_sampling array | Fixed list of tags to ignore sampling. If not specified, tables will be sampled based on use_sampling . |
profiling.tags_to_ignore_sampling.string string | |
stateful_ingestion StatefulStaleMetadataRemovalConfig | Base specialized config for Stateful Ingestion with stale metadata removal capability. |
stateful_ingestion.enabled boolean | Whether or not to enable stateful ingest. Default: True if a pipeline_name is set and either a datahub-rest sink or datahub_api is specified, otherwise False Default: False |
stateful_ingestion.remove_stale_metadata boolean | Soft-deletes the entities present in the last successful run but missing in the current run with stateful_ingestion enabled. Default: True |
The JSONSchema for this configuration is inlined below.
{
"title": "SQLServerConfig",
"description": "Base configuration class for stateful ingestion for source configs to inherit from.",
"type": "object",
"properties": {
"schema_pattern": {
"title": "Schema Pattern",
"description": "Regex patterns for schemas to filter in ingestion. Specify regex to only match the schema name. e.g. to match all tables in schema analytics, use the regex 'analytics'",
"default": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"allOf": [
{
"$ref": "#/definitions/AllowDenyPattern"
}
]
},
"table_pattern": {
"title": "Table Pattern",
"description": "Regex patterns for tables to filter in ingestion. Specify regex to match the entire table name in database.schema.table format. e.g. to match all tables starting with customer in Customer database and public schema, use the regex 'Customer.public.customer.*'",
"default": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"allOf": [
{
"$ref": "#/definitions/AllowDenyPattern"
}
]
},
"view_pattern": {
"title": "View Pattern",
"description": "Regex patterns for views to filter in ingestion. Note: Defaults to table_pattern if not specified. Specify regex to match the entire view name in database.schema.view format. e.g. to match all views starting with customer in Customer database and public schema, use the regex 'Customer.public.customer.*'",
"default": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"allOf": [
{
"$ref": "#/definitions/AllowDenyPattern"
}
]
},
"classification": {
"title": "Classification",
"description": "For details, refer to [Classification](../../../../metadata-ingestion/docs/dev_guides/classification.md).",
"default": {
"enabled": false,
"sample_size": 100,
"max_workers": 4,
"table_pattern": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"column_pattern": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"info_type_to_term": {},
"classifiers": [
{
"type": "datahub",
"config": null
}
]
},
"allOf": [
{
"$ref": "#/definitions/ClassificationConfig"
}
]
},
"incremental_lineage": {
"title": "Incremental Lineage",
"description": "When enabled, emits lineage as incremental to existing lineage already in DataHub. When disabled, re-states lineage on each run.",
"default": false,
"type": "boolean"
},
"convert_urns_to_lowercase": {
"title": "Convert Urns To Lowercase",
"description": "Enable to convert the SQL Server assets urns to lowercase",
"default": false,
"type": "boolean"
},
"env": {
"title": "Env",
"description": "The environment that all assets produced by this connector belong to",
"default": "PROD",
"type": "string"
},
"platform_instance": {
"title": "Platform Instance",
"description": "The instance of the platform that all assets produced by this recipe belong to. This should be unique within the platform. See https://datahubproject.io/docs/platform-instances/ for more details.",
"type": "string"
},
"stateful_ingestion": {
"$ref": "#/definitions/StatefulStaleMetadataRemovalConfig"
},
"options": {
"title": "Options",
"description": "Any options specified here will be passed to [SQLAlchemy.create_engine](https://docs.sqlalchemy.org/en/14/core/engines.html#sqlalchemy.create_engine) as kwargs. To set connection arguments in the URL, specify them under `connect_args`.",
"type": "object"
},
"profile_pattern": {
"title": "Profile Pattern",
"description": "Regex patterns to filter tables (or specific columns) for profiling during ingestion. Note that only tables allowed by the `table_pattern` will be considered.",
"default": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"allOf": [
{
"$ref": "#/definitions/AllowDenyPattern"
}
]
},
"domain": {
"title": "Domain",
"description": "Attach domains to databases, schemas or tables during ingestion using regex patterns. Domain key can be a guid like *urn:li:domain:ec428203-ce86-4db3-985d-5a8ee6df32ba* or a string like \"Marketing\".) If you provide strings, then datahub will attempt to resolve this name to a guid, and will error out if this fails. There can be multiple domain keys specified.",
"default": {},
"type": "object",
"additionalProperties": {
"$ref": "#/definitions/AllowDenyPattern"
}
},
"include_views": {
"title": "Include Views",
"description": "Whether views should be ingested.",
"default": true,
"type": "boolean"
},
"include_tables": {
"title": "Include Tables",
"description": "Whether tables should be ingested.",
"default": true,
"type": "boolean"
},
"include_table_location_lineage": {
"title": "Include Table Location Lineage",
"description": "If the source supports it, include table lineage to the underlying storage location.",
"default": true,
"type": "boolean"
},
"include_view_lineage": {
"title": "Include View Lineage",
"description": "Populates view->view and table->view lineage using DataHub's sql parser.",
"default": true,
"type": "boolean"
},
"include_view_column_lineage": {
"title": "Include View Column Lineage",
"description": "Populates column-level lineage for view->view and table->view lineage using DataHub's sql parser. Requires `include_view_lineage` to be enabled.",
"default": true,
"type": "boolean"
},
"use_file_backed_cache": {
"title": "Use File Backed Cache",
"description": "Whether to use a file backed cache for the view definitions.",
"default": true,
"type": "boolean"
},
"profiling": {
"title": "Profiling",
"default": {
"enabled": false,
"operation_config": {
"lower_freq_profile_enabled": false,
"profile_day_of_week": null,
"profile_date_of_month": null
},
"limit": null,
"offset": null,
"profile_table_level_only": false,
"include_field_null_count": true,
"include_field_distinct_count": true,
"include_field_min_value": true,
"include_field_max_value": true,
"include_field_mean_value": true,
"include_field_median_value": true,
"include_field_stddev_value": true,
"include_field_quantiles": false,
"include_field_distinct_value_frequencies": false,
"include_field_histogram": false,
"include_field_sample_values": true,
"max_workers": 20,
"report_dropped_profiles": false,
"turn_off_expensive_profiling_metrics": false,
"field_sample_values_limit": 20,
"max_number_of_fields_to_profile": null,
"profile_if_updated_since_days": null,
"profile_table_size_limit": 5,
"profile_table_row_limit": 5000000,
"profile_table_row_count_estimate_only": false,
"query_combiner_enabled": true,
"catch_exceptions": true,
"partition_profiling_enabled": true,
"partition_datetime": null,
"use_sampling": true,
"sample_size": 10000,
"profile_external_tables": false,
"tags_to_ignore_sampling": null,
"profile_nested_fields": false
},
"allOf": [
{
"$ref": "#/definitions/GEProfilingConfig"
}
]
},
"username": {
"title": "Username",
"description": "username",
"type": "string"
},
"password": {
"title": "Password",
"description": "password",
"type": "string",
"writeOnly": true,
"format": "password"
},
"host_port": {
"title": "Host Port",
"description": "MSSQL host URL.",
"default": "localhost:1433",
"type": "string"
},
"database": {
"title": "Database",
"description": "database (catalog). If set to Null, all databases will be considered for ingestion.",
"type": "string"
},
"sqlalchemy_uri": {
"title": "Sqlalchemy Uri",
"description": "URI of database to connect to. See https://docs.sqlalchemy.org/en/14/core/engines.html#database-urls. Takes precedence over other connection parameters.",
"type": "string"
},
"include_stored_procedures": {
"title": "Include Stored Procedures",
"description": "Include ingest of stored procedures. Requires access to the 'sys' schema.",
"default": true,
"type": "boolean"
},
"include_stored_procedures_code": {
"title": "Include Stored Procedures Code",
"description": "Include information about object code.",
"default": true,
"type": "boolean"
},
"procedure_pattern": {
"title": "Procedure Pattern",
"description": "Regex patterns for stored procedures to filter in ingestion.Specify regex to match the entire procedure name in database.schema.procedure_name format. e.g. to match all procedures starting with customer in Customer database and public schema, use the regex 'Customer.public.customer.*'",
"default": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"allOf": [
{
"$ref": "#/definitions/AllowDenyPattern"
}
]
},
"include_jobs": {
"title": "Include Jobs",
"description": "Include ingest of MSSQL Jobs. Requires access to the 'msdb' and 'sys' schema.",
"default": true,
"type": "boolean"
},
"include_descriptions": {
"title": "Include Descriptions",
"description": "Include table descriptions information.",
"default": true,
"type": "boolean"
},
"use_odbc": {
"title": "Use Odbc",
"description": "See https://docs.sqlalchemy.org/en/14/dialects/mssql.html#module-sqlalchemy.dialects.mssql.pyodbc.",
"default": false,
"type": "boolean"
},
"uri_args": {
"title": "Uri Args",
"description": "Arguments to URL-encode when connecting. See https://docs.microsoft.com/en-us/sql/connect/odbc/dsn-connection-string-attribute?view=sql-server-ver15.",
"default": {},
"type": "object",
"additionalProperties": {
"type": "string"
}
},
"database_pattern": {
"title": "Database Pattern",
"description": "Regex patterns for databases to filter in ingestion.",
"default": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"allOf": [
{
"$ref": "#/definitions/AllowDenyPattern"
}
]
},
"include_lineage": {
"title": "Include Lineage",
"description": "Enable lineage extraction for stored procedures",
"default": true,
"type": "boolean"
},
"add_extended_properties": {
"title": "Add Extended Properties",
"description": "Enable reading extended properties from mssql",
"default": false,
"type": "boolean"
},
"map_extended_properties": {
"title": "Map Extended Properties",
"description": "Mapping for extended properties from msqsl to datahub",
"default": {},
"type": "object",
"additionalProperties": {
"type": "object"
}
}
},
"additionalProperties": false,
"definitions": {
"AllowDenyPattern": {
"title": "AllowDenyPattern",
"description": "A class to store allow deny regexes",
"type": "object",
"properties": {
"allow": {
"title": "Allow",
"description": "List of regex patterns to include in ingestion",
"default": [
".*"
],
"type": "array",
"items": {
"type": "string"
}
},
"deny": {
"title": "Deny",
"description": "List of regex patterns to exclude from ingestion.",
"default": [],
"type": "array",
"items": {
"type": "string"
}
},
"ignoreCase": {
"title": "Ignorecase",
"description": "Whether to ignore case sensitivity during pattern matching.",
"default": true,
"type": "boolean"
}
},
"additionalProperties": false
},
"DynamicTypedClassifierConfig": {
"title": "DynamicTypedClassifierConfig",
"type": "object",
"properties": {
"type": {
"title": "Type",
"description": "The type of the classifier to use. For DataHub, use `datahub`",
"type": "string"
},
"config": {
"title": "Config",
"description": "The configuration required for initializing the classifier. If not specified, uses defaults for classifer type."
}
},
"required": [
"type"
],
"additionalProperties": false
},
"ClassificationConfig": {
"title": "ClassificationConfig",
"type": "object",
"properties": {
"enabled": {
"title": "Enabled",
"description": "Whether classification should be used to auto-detect glossary terms",
"default": false,
"type": "boolean"
},
"sample_size": {
"title": "Sample Size",
"description": "Number of sample values used for classification.",
"default": 100,
"type": "integer"
},
"max_workers": {
"title": "Max Workers",
"description": "Number of worker processes to use for classification. Set to 1 to disable.",
"default": 4,
"type": "integer"
},
"table_pattern": {
"title": "Table Pattern",
"description": "Regex patterns to filter tables for classification. This is used in combination with other patterns in parent config. Specify regex to match the entire table name in `database.schema.table` format. e.g. to match all tables starting with customer in Customer database and public schema, use the regex 'Customer.public.customer.*'",
"default": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"allOf": [
{
"$ref": "#/definitions/AllowDenyPattern"
}
]
},
"column_pattern": {
"title": "Column Pattern",
"description": "Regex patterns to filter columns for classification. This is used in combination with other patterns in parent config. Specify regex to match the column name in `database.schema.table.column` format.",
"default": {
"allow": [
".*"
],
"deny": [],
"ignoreCase": true
},
"allOf": [
{
"$ref": "#/definitions/AllowDenyPattern"
}
]
},
"info_type_to_term": {
"title": "Info Type To Term",
"description": "Optional mapping to provide glossary term identifier for info type",
"default": {},
"type": "object",
"additionalProperties": {
"type": "string"
}
},
"classifiers": {
"title": "Classifiers",
"description": "Classifiers to use to auto-detect glossary terms. If more than one classifier, infotype predictions from the classifier defined later in sequence take precedance.",
"default": [
{
"type": "datahub",
"config": null
}
],
"type": "array",
"items": {
"$ref": "#/definitions/DynamicTypedClassifierConfig"
}
}
},
"additionalProperties": false
},
"DynamicTypedStateProviderConfig": {
"title": "DynamicTypedStateProviderConfig",
"type": "object",
"properties": {
"type": {
"title": "Type",
"description": "The type of the state provider to use. For DataHub use `datahub`",
"type": "string"
},
"config": {
"title": "Config",
"description": "The configuration required for initializing the state provider. Default: The datahub_api config if set at pipeline level. Otherwise, the default DatahubClientConfig. See the defaults (https://github.com/datahub-project/datahub/blob/master/metadata-ingestion/src/datahub/ingestion/graph/client.py#L19).",
"default": {},
"type": "object"
}
},
"required": [
"type"
],
"additionalProperties": false
},
"StatefulStaleMetadataRemovalConfig": {
"title": "StatefulStaleMetadataRemovalConfig",
"description": "Base specialized config for Stateful Ingestion with stale metadata removal capability.",
"type": "object",
"properties": {
"enabled": {
"title": "Enabled",
"description": "Whether or not to enable stateful ingest. Default: True if a pipeline_name is set and either a datahub-rest sink or `datahub_api` is specified, otherwise False",
"default": false,
"type": "boolean"
},
"remove_stale_metadata": {
"title": "Remove Stale Metadata",
"description": "Soft-deletes the entities present in the last successful run but missing in the current run with stateful_ingestion enabled.",
"default": true,
"type": "boolean"
}
},
"additionalProperties": false
},
"OperationConfig": {
"title": "OperationConfig",
"type": "object",
"properties": {
"lower_freq_profile_enabled": {
"title": "Lower Freq Profile Enabled",
"description": "Whether to do profiling at lower freq or not. This does not do any scheduling just adds additional checks to when not to run profiling.",
"default": false,
"type": "boolean"
},
"profile_day_of_week": {
"title": "Profile Day Of Week",
"description": "Number between 0 to 6 for day of week (both inclusive). 0 is Monday and 6 is Sunday. If not specified, defaults to Nothing and this field does not take affect.",
"type": "integer"
},
"profile_date_of_month": {
"title": "Profile Date Of Month",
"description": "Number between 1 to 31 for date of month (both inclusive). If not specified, defaults to Nothing and this field does not take affect.",
"type": "integer"
}
},
"additionalProperties": false
},
"GEProfilingConfig": {
"title": "GEProfilingConfig",
"type": "object",
"properties": {
"enabled": {
"title": "Enabled",
"description": "Whether profiling should be done.",
"default": false,
"type": "boolean"
},
"operation_config": {
"title": "Operation Config",
"description": "Experimental feature. To specify operation configs.",
"allOf": [
{
"$ref": "#/definitions/OperationConfig"
}
]
},
"limit": {
"title": "Limit",
"description": "Max number of documents to profile. By default, profiles all documents.",
"type": "integer"
},
"offset": {
"title": "Offset",
"description": "Offset in documents to profile. By default, uses no offset.",
"type": "integer"
},
"profile_table_level_only": {
"title": "Profile Table Level Only",
"description": "Whether to perform profiling at table-level only, or include column-level profiling as well.",
"default": false,
"type": "boolean"
},
"include_field_null_count": {
"title": "Include Field Null Count",
"description": "Whether to profile for the number of nulls for each column.",
"default": true,
"type": "boolean"
},
"include_field_distinct_count": {
"title": "Include Field Distinct Count",
"description": "Whether to profile for the number of distinct values for each column.",
"default": true,
"type": "boolean"
},
"include_field_min_value": {
"title": "Include Field Min Value",
"description": "Whether to profile for the min value of numeric columns.",
"default": true,
"type": "boolean"
},
"include_field_max_value": {
"title": "Include Field Max Value",
"description": "Whether to profile for the max value of numeric columns.",
"default": true,
"type": "boolean"
},
"include_field_mean_value": {
"title": "Include Field Mean Value",
"description": "Whether to profile for the mean value of numeric columns.",
"default": true,
"type": "boolean"
},
"include_field_median_value": {
"title": "Include Field Median Value",
"description": "Whether to profile for the median value of numeric columns.",
"default": true,
"type": "boolean"
},
"include_field_stddev_value": {
"title": "Include Field Stddev Value",
"description": "Whether to profile for the standard deviation of numeric columns.",
"default": true,
"type": "boolean"
},
"include_field_quantiles": {
"title": "Include Field Quantiles",
"description": "Whether to profile for the quantiles of numeric columns.",
"default": false,
"type": "boolean"
},
"include_field_distinct_value_frequencies": {
"title": "Include Field Distinct Value Frequencies",
"description": "Whether to profile for distinct value frequencies.",
"default": false,
"type": "boolean"
},
"include_field_histogram": {
"title": "Include Field Histogram",
"description": "Whether to profile for the histogram for numeric fields.",
"default": false,
"type": "boolean"
},
"include_field_sample_values": {
"title": "Include Field Sample Values",
"description": "Whether to profile for the sample values for all columns.",
"default": true,
"type": "boolean"
},
"max_workers": {
"title": "Max Workers",
"description": "Number of worker threads to use for profiling. Set to 1 to disable.",
"default": 20,
"type": "integer"
},
"report_dropped_profiles": {
"title": "Report Dropped Profiles",
"description": "Whether to report datasets or dataset columns which were not profiled. Set to `True` for debugging purposes.",
"default": false,
"type": "boolean"
},
"turn_off_expensive_profiling_metrics": {
"title": "Turn Off Expensive Profiling Metrics",
"description": "Whether to turn off expensive profiling or not. This turns off profiling for quantiles, distinct_value_frequencies, histogram & sample_values. This also limits maximum number of fields being profiled to 10.",
"default": false,
"type": "boolean"
},
"field_sample_values_limit": {
"title": "Field Sample Values Limit",
"description": "Upper limit for number of sample values to collect for all columns.",
"default": 20,
"type": "integer"
},
"max_number_of_fields_to_profile": {
"title": "Max Number Of Fields To Profile",
"description": "A positive integer that specifies the maximum number of columns to profile for any table. `None` implies all columns. The cost of profiling goes up significantly as the number of columns to profile goes up.",
"exclusiveMinimum": 0,
"type": "integer"
},
"profile_if_updated_since_days": {
"title": "Profile If Updated Since Days",
"description": "Profile table only if it has been updated since these many number of days. If set to `null`, no constraint of last modified time for tables to profile. Supported only in `snowflake` and `BigQuery`.",
"exclusiveMinimum": 0,
"type": "number"
},
"profile_table_size_limit": {
"title": "Profile Table Size Limit",
"description": "Profile tables only if their size is less than specified GBs. If set to `null`, no limit on the size of tables to profile. Supported only in `snowflake` and `BigQuery`Supported for `oracle` based on calculated size from gathered stats.",
"default": 5,
"type": "integer"
},
"profile_table_row_limit": {
"title": "Profile Table Row Limit",
"description": "Profile tables only if their row count is less than specified count. If set to `null`, no limit on the row count of tables to profile. Supported only in `snowflake` and `BigQuery`Supported for `oracle` based on gathered stats.",
"default": 5000000,
"type": "integer"
},
"profile_table_row_count_estimate_only": {
"title": "Profile Table Row Count Estimate Only",
"description": "Use an approximate query for row count. This will be much faster but slightly less accurate. Only supported for Postgres and MySQL. ",
"default": false,
"type": "boolean"
},
"query_combiner_enabled": {
"title": "Query Combiner Enabled",
"description": "*This feature is still experimental and can be disabled if it causes issues.* Reduces the total number of queries issued and speeds up profiling by dynamically combining SQL queries where possible.",
"default": true,
"type": "boolean"
},
"catch_exceptions": {
"title": "Catch Exceptions",
"default": true,
"type": "boolean"
},
"partition_profiling_enabled": {
"title": "Partition Profiling Enabled",
"description": "Whether to profile partitioned tables. Only BigQuery and Aws Athena supports this. If enabled, latest partition data is used for profiling.",
"default": true,
"type": "boolean"
},
"partition_datetime": {
"title": "Partition Datetime",
"description": "If specified, profile only the partition which matches this datetime. If not specified, profile the latest partition. Only Bigquery supports this.",
"type": "string",
"format": "date-time"
},
"use_sampling": {
"title": "Use Sampling",
"description": "Whether to profile column level stats on sample of table. Only BigQuery and Snowflake support this. If enabled, profiling is done on rows sampled from table. Sampling is not done for smaller tables. ",
"default": true,
"type": "boolean"
},
"sample_size": {
"title": "Sample Size",
"description": "Number of rows to be sampled from table for column level profiling.Applicable only if `use_sampling` is set to True.",
"default": 10000,
"type": "integer"
},
"profile_external_tables": {
"title": "Profile External Tables",
"description": "Whether to profile external tables. Only Snowflake and Redshift supports this.",
"default": false,
"type": "boolean"
},
"tags_to_ignore_sampling": {
"title": "Tags To Ignore Sampling",
"description": "Fixed list of tags to ignore sampling. If not specified, tables will be sampled based on `use_sampling`.",
"type": "array",
"items": {
"type": "string"
}
},
"profile_nested_fields": {
"title": "Profile Nested Fields",
"description": "Whether to profile complex types like structs, arrays and maps. ",
"default": false,
"type": "boolean"
}
},
"additionalProperties": false
}
}
}
Code Coordinates
- Class Name:
datahub.ingestion.source.sql.mssql.source.SQLServerSource
- Browse on GitHub
Questions
If you've got any questions on configuring ingestion for Microsoft SQL Server, feel free to ping us on our Slack.