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Update policy overview

Applies to: ✅ Microsoft FabricAzure Data Explorer

Update policies are automation mechanisms triggered when new data is written to a table. They eliminate the need for special orchestration by running a query to transform the ingested data and save the result to a destination table. Multiple update policies can be defined on a single table, allowing for different transformations and saving data to multiple tables simultaneously. The target tables can have a different schema, retention policy, and other policies from the source table.

For example, a high-rate trace source table can contain data formatted as a free-text column. The target table can include specific trace lines, with a well-structured schema generated from a transformation of the source table's free-text data using the parse operator. For more information, common scenarios.

The following diagram depicts a high-level view of an update policy. It shows two update policies that are triggered when data is added to the second source table. Once they're triggered, transformed data is added to the two target tables.

Diagram shows an overview of the update policy.

An update policy is subject to the same restrictions and best practices as regular ingestion. The policy scales-out according to the cluster size, and is more efficient when handling bulk ingestion.

An update policy is subject to the same restrictions and best practices as regular ingestion. The policy scales-out according to the eventhouse size, and is more efficient when handling bulk ingestion.

Note

  • The source and target table must be in the same database.
  • The update policy function schema and the target table schema must match in their column names, types, and order.
  • The update policy function can reference tables in other databases. To do this, the update policy must be defined with a ManagedIdentity property, and the managed identity must have viewer role on the referenced databases. Ingesting formatted data improves performance, and CSV is preferred because of it's a well-defined format. Sometimes, however, you have no control over the format of the data, or you want to enrich ingested data, for example, by joining records with a static dimension table in your database.

Update policy query

If the update policy is defined on the target table, multiple queries can run on data ingested into a source table. If there are multiple update policies, the order of execution isn't necessarily known.

Query limitations

  • The policy-related query can invoke stored functions, but:
    • It can't perform cross-cluster queries.
    • It can't access external data or external tables.
    • It can't make callouts (by using a plugin).
  • The query doesn't have read access to tables that have the RestrictedViewAccess policy enabled.
  • For update policy limitations in streaming ingestion, see streaming ingestion limitations.
  • The policy-related query can invoke stored functions, but:
    • It can't perform cross-eventhouse queries.
    • It can't access external data or external tables.
    • It can't make callouts (by using a plugin).
  • The query doesn't have read access to tables that have the RestrictedViewAccess policy enabled.
  • For update policy limitations in streaming ingestion, see streaming ingestion limitations.

Warning

An incorrect query can prevent data ingestion into the source table. It is important to note that limitations, as well as the compatibility between the query results and the schema of the source and destination tables, can cause an incorrect query to prevent data ingestion into the source table.

These limitations are validated during the creation and execution of the policy, but not when arbitrary stored functions that the query might reference are updated. Therefore, it is crucial to make any changes with caution to ensure the update policy remains intact.

When referencing the Source table in the Query part of the policy, or in functions referenced by the Query part:

  • Don't use the qualified name of the table. Instead, use TableName.
  • Don't use database("<DatabaseName>").TableName or cluster("<ClusterName>").database("<DatabaseName>").TableName.
  • Don't use the qualified name of the table. Instead, use TableName.
  • Don't use database("<DatabaseName>").TableName or cluster("<EventhouseName>").database("<DatabaseName>").TableName.

The update policy object

A table can have zero or more update policy objects associated with it. Each such object is represented as a JSON property bag, with the following properties defined.

Property Type Description
IsEnabled bool States if update policy is true - enabled, or false - disabled
Source string Name of the table that triggers invocation of the update policy
Query string A query used to produce data for the update
IsTransactional bool States if the update policy is transactional or not, default is false. If the policy is transactional and the update policy fails, the source table isn't updated.
PropagateIngestionProperties bool States if properties specified during ingestion to the source table, such as extent tags and creation time, apply to the target table.
ManagedIdentity string The managed identity on behalf of which the update policy runs. The managed identity can be an object ID, or the system reserved word. The update policy must be configured with a managed identity when the query references tables in other databases or tables with an enabled row level security policy. For more information, see Use a managed identity to run a update policy.

Note

In production systems, set IsTransactional:true to ensure that the target table doesn't lose data in transient failures.

Note

Cascading updates are allowed, for example from table A, to table B, to table C. However, if update policies are defined in a circular manner, this is detected at runtime, and the chain of updates is cut. Data is ingested only once to each table in the chain.

Management commands

Update policy management commands include:

Update policy is initiated following ingestion

Update policies take effect when data is ingested or moved to a source table, or extents are created in a source table. These actions can be done using any of the following commands:

Warning

When the update policy is invoked as part of a .set-or-replace command, by default data in derived tables is replaced in the same way as in the source table. Data may be lost in all tables with an update policy relationship if the replace command is invoked. Consider using .set-or-append instead.

Remove data from source table

After ingesting data to the target table, you can optionally remove it from the source table. Set a soft-delete period of 0sec (or 00:00:00) in the source table's retention policy, and the update policy as transactional. The following conditions apply:

  • The source data isn't queryable from the source table
  • The source data doesn't persist in durable storage as part of the ingestion operation
  • Operational performance improves. Post-ingestion resources are reduced for background grooming operations on extents in the source table.

Note

When the source table has a soft delete period of 0sec (or 00:00:00), any update policy referencing this table must be transactional.

Performance impact

Update policies can affect performance, and ingestion for data extents is multiplied by the number of target tables. It's important to optimize the policy-related query. You can test an update policy's performance impact by invoking the policy on already-existing extents, before creating or altering the policy, or on the function used with the query.

Evaluate resource usage

Use .show queries, to evaluate resource usage (CPU, memory, and so on) with the following parameters:

  • Set the Source property, the source table name, as MySourceTable
  • Set the Query property to call a function named MyFunction()
// '_extentId' is the ID of a recently created extent, that likely hasn't been merged yet.
let _extentId = toscalar(
    MySourceTable
    | project ExtentId = extent_id(), IngestionTime = ingestion_time()
    | where IngestionTime > ago(10m)
    | top 1 by IngestionTime desc
    | project ExtentId
);
// This scopes the source table to the single recent extent.
let MySourceTable =
    MySourceTable
    | where ingestion_time() > ago(10m) and extent_id() == _extentId;
// This invokes the function in the update policy (that internally references `MySourceTable`).
MyFunction

Transactional settings

The update policy IsTransactional setting defines whether the update policy is transactional and can affect the behavior of the policy update, as follows:

  • IsTransactional:false: If the value is set to the default value, false, the update policy doesn't guarantee consistency between data in the source and target table. If an update policy fails, data is ingested only to the source table and not to the target table. In this scenario, ingestion operation is successful.
  • IsTransactional:true: If the value is set to true, the setting does guarantee consistency between data in the source and target tables. If an update policy fails, data isn't ingested to the source or target table. In this scenario, the ingestion operation is unsuccessful.

Handling failures

When policy updates fail, they're handled differently based on whether the IsTransactional setting is true or false. Common reasons for update policy failures are:

  • A mismatch between the query output schema and the target table.
  • Any query error.

You can view policy update failures using the .show ingestion failures command with the following command: In any other case, you can manually retry ingestion.

.show ingestion failures
| where FailedOn > ago(1hr) and OriginatesFromUpdatePolicy == true

Example of extract, transform, load

You can use update policy settings to perform extract, transform, load (ETL).

In this example, use an update policy with a simple function to perform ETL. First, we create two tables:

  • The source table - Contains a single string-typed column into which data is ingested.
  • The target table - Contains the desired schema. The update policy is defined on this table.
  1. Let's create the source table:

    .create table MySourceTable (OriginalRecord:string)
    
  2. Next, create the target table:

    .create table MyTargetTable (Timestamp:datetime, ThreadId:int, ProcessId:int, TimeSinceStartup:timespan, Message:string)
    
  3. Then create a function to extract data:

    .create function
     with (docstring = 'Parses raw records into strongly-typed columns', folder = 'UpdatePolicyFunctions')
         ExtractMyLogs()
        {
        MySourceTable
        | parse OriginalRecord with "[" Timestamp:datetime "] [ThreadId:" ThreadId:int "] [ProcessId:" ProcessId:int "] TimeSinceStartup: " TimeSinceStartup:timespan " Message: " Message:string
        | project-away OriginalRecord
    }
    
  4. Now, set the update policy to invoke the function that we created:

    .alter table MyTargetTable policy update
    @'[{ "IsEnabled": true, "Source": "MySourceTable", "Query": "ExtractMyLogs()", "IsTransactional": true, "PropagateIngestionProperties": false}]'
    
  5. To empty the source table after data is ingested into the target table, define the retention policy on the source table to have 0s as its SoftDeletePeriod.

     .alter-merge table MySourceTable policy retention softdelete = 0s