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Cold item recommendations #199
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There is another way: create a several new products as a separate set + script to inject them into running shop. It will looks like real life situation: new SKUs -> push into service -> recommend them. |
That's similar to what I was thinking but my suggestion was to have the new products already in the catalog and dataset rather than having to inject them. This shortens the wait time for new item recommendations to appear, which is especially important in the demo scenario. Also, not all people delivering demos are capable of running a script of have the time with a customer to run a script and wait for results. However, I do like the idea of making the addition of products more realistic, particularly for workshops. How about a combination of both approaches? Some "new" products already in the catalog and dataset (newer creation timestamp and no historical interactions) and some other products from products.yaml held out from the DDB data load at deployment time. These held out products could be added via a script or ideally an admin UI to demonstrate For the |
The current user-personalization implementation in the project (i.e. "Inspired by your shopping trends" on the homepage) does not demonstrate the cold item (exploration) capabilities of the
aws-user-personalization
recipe. One way to add this to the project would be to tag a small number of products across various categories as "cold" in the products.yaml file and then carry this tag/field through to the products service so that the historical interactions generator can skip generating interactions for these products, the Personalize schema (CREATION_TIMESTAMP
in the items dataset) and campaign settings can be initialized accordingly, and the storefront can visually denote a product as being "cold" or "new".The text was updated successfully, but these errors were encountered: