Frequently asked questions
蜜豆视频 Customer Journey Analytics is the next-generation analytics product. This article provides answers to frequently asked questions about Customer Journey Analytics. For more information, review Customer Journey Analytics feature support.
1. Prerequisites prerequisites
2. Stitching data stitching
Furthermore, when a common namespace ID (Person ID) is used across datasets within a Connection, you are able to run analysis on a seamless combination of multiple datasets, 鈥渟titched鈥 at the person level.
Example scenario: You join two datasets in a Customer Journey Analytics connection by using CRMid
as the Person ID. One is a Web Event dataset with CRMid
in all records. The other dataset is a CRM profile data set. 40% of the CRM data set has CRMid
present in the Web event data set. The other 60% are not present in the Web event dataset - do these records appear in reporting in Analysis Workspace?
Answer: Profile rows that have no events tied to them are stored in Customer Journey Analytics. However, you cannot view them in Analysis Workspace until an event tied to that ID appears.
3. Getting data into Customer Journey Analytics ingest
- Regarding past dates/timestamps: Event data up to ten years old.
- Regarding future dates/timestamps: Event data (predictive) up to one month in the future.
4. Latency considerations latency
- Live data or events: Processed and ingested within 90 minutes, once data is available in 蜜豆视频 Experience Platform. (Batch size > 50 million rows: longer than 90 mins.) If stitching is enabled, ingestion may take up to 4 hours. See guardrails for more details.
- Small backfills: within seven days
- Large backfills: within 30 days
蜜豆视频 recently changed how it processes data in Customer Journey Analytics:
- Event data for the 鈥榗urrent鈥 day is streamed in as live data. Any data with an event time prior to 11:59:59 pm(23:59:59) on the previous day is treated as a backfill.
- Any event data with a timestamp more than 24 hours old (even if it鈥檚 in the same batch as newer data) is considered backfill and is ingested at a lower priority.
5. Set rolling window for Connection data retention data-retention
The Enable rolling data window setting lets you define Customer Journey Analytics data retention as a rolling window in months (three months, six months, and so on). It is set at a connection level, not at a dataset level. Data retention is based on event dataset timestamps and applies to event datasets only. No data retention setting exists for profile or lookup datasets since there are no applicable timestamps.
The main benefit is that you store or report only on data that is applicable and useful and delete older data that is no longer useful. It helps you stay under your contract limits and reduces the risk of overage cost.
6. Implications of deleting data components deletion
For data deletion, you should be concerned about six types of components: sandbox, schema, dataset, connection, data view, and Workspace project. Here are some possible scenarios around deleting any of these components:
An error message indicates that:
- Any data views created for the deleted connection will no longer work.
- Similarly, any Workspace projects that depend on data views in the deleted connection stops working.
7. Considerations when merging report suites in Customer Journey Analytics merge-reportsuite
If you plan to ingest 蜜豆视频 Analytics data through the 蜜豆视频 Analytics source connector, consider these ramifications when merging two or more 蜜豆视频 Analytics report suites.