[role="xpack"] [[transform-checkpoints]] === How {transform} checkpoints work ++++ How checkpoints work ++++ Each time a {transform} examines the source indices and creates or updates the destination index, it generates a _checkpoint_. If your {transform} runs only once, there is logically only one checkpoint. If your {transform} runs continuously, however, it creates checkpoints as it ingests and transforms new source data. To create a checkpoint, the {ctransform}: . Checks for changes to source indices. + Using a simple periodic timer, the {transform} checks for changes to the source indices. This check is done based on the interval defined in the transform's `frequency` property. + If the source indices remain unchanged or if a checkpoint is already in progress then it waits for the next timer. . Identifies which entities have changed. + The {transform} searches to see which entities have changed since the last time it checked. The `sync` configuration object in the {transform} identifies a time field in the source indices. The {transform} uses the values in that field to synchronize the source and destination indices. . Updates the destination index (the {dataframe}) with the changed entities. + -- The {transform} applies changes related to either new or changed entities to the destination index. The set of changed entities is paginated. For each page, the {transform} performs a composite aggregation using a `terms` query. After all the pages of changes have been applied, the checkpoint is complete. -- This checkpoint process involves both search and indexing activity on the cluster. We have attempted to favor control over performance while developing {transforms}. We decided it was preferable for the {transform} to take longer to complete, rather than to finish quickly and take precedence in resource consumption. That being said, the cluster still requires enough resources to support both the composite aggregation search and the indexing of its results. TIP: If the cluster experiences unsuitable performance degradation due to the {transform}, stop the {transform}. Consider whether you can apply a source query to the {transform} to reduce the scope of data it processes. Also consider whether the cluster has sufficient resources in place to support both the composite aggregation search and the indexing of its results. [discrete] [[ml-transform-checkpoint-errors]] ==== Error handling Failures in {transforms} tend to be related to searching or indexing. To increase the resiliency of {transforms}, the cursor positions of the aggregated search and the changed entities search are tracked in memory and persisted periodically. Checkpoint failures can be categorized as follows: * Temporary failures: The checkpoint is retried. If 10 consecutive failures occur, the {transform} has a failed status. For example, this situation might occur when there are shard failures and queries return only partial results. * Irrecoverable failures: The {transform} immediately fails. For example, this situation occurs when the source index is not found. * Adjustment failures: The {transform} retries with adjusted settings. For example, if a parent circuit breaker memory errors occur during the composite aggregation, the {transform} receives partial results. The aggregated search is retried with a smaller number of buckets. This retry is performed at the interval defined in the `frequency` property for the {transform}. If the search is retried to the point where it reaches a minimal number of buckets, an irrecoverable failure occurs. If the node running the {transforms} fails, the {transform} restarts from the most recent persisted cursor position. This recovery process might repeat some of the work the {transform} had already done, but it ensures data consistency.