diff --git a/_search-plugins/knn/disk-based-vector-search.md b/_search-plugins/knn/disk-based-vector-search.md index 82da30a0ac..dfb9262db5 100644 --- a/_search-plugins/knn/disk-based-vector-search.md +++ b/_search-plugins/knn/disk-based-vector-search.md @@ -167,7 +167,7 @@ GET my-vector-index/_search For [model-based indexes]({{site.url}}{{site.baseurl}}/search-plugins/knn/approximate-knn/#building-a-k-nn-index-from-a-model), you can specify the `on_disk` parameter in the training request in the same way that you would specify it during index creation. By default, `on_disk` mode will use the [Faiss IVF method]({{site.url}}{{site.baseurl}}/search-plugins/knn/knn-index/#supported-faiss-methods) and a compression level of `32x`. To run the training API, send the following request: ```json -POST /_plugins/_knn/models/_train/test-model +POST /_plugins/_knn/models/test-model/_train { "training_index": "train-index-name", "training_field": "train-field-name",