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…trained embeddings
…96 to 100, in order to speed-up tests
…ence_testing_data
…d item is equal the item id cardinality
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closing as we now have a PR for this branching out from current main |
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This PR updates the pretrained embedding use case to demonstrate the new functionality that is currently being worked on.
This is the example that I modified (added another section and quite a bit of prose, would be really grateful for a review! 🙂)