diff --git a/applications/rag/metadata.display.yaml b/applications/rag/metadata.display.yaml index 5b5ab76c3..dbe37893e 100644 --- a/applications/rag/metadata.display.yaml +++ b/applications/rag/metadata.display.yaml @@ -261,8 +261,8 @@ spec:
3) Once logged in, choose the CPU with Default Storage option and wait for JupyterLab to load.
- heading: "Step 3: Generate Vector Embeddings for the Dataset" description: |- - Go to File -> Open From URL & upload and execute the notebook rag-kaggle-ray-sql.ipynb. Note that this requires creating a Kaggle account and updating the first notebook cell with your Kaggle credentials to download the sample dataset (TV show/movie reviews). - Follow the README.md for detailed instructions. + Go to File -> Open From URL & upload and execute the notebook rag-kaggle-ray-sql.ipynb. Note that this requires creating a Kaggle account and updating the first notebook cell with your Kaggle credentials to download the sample dataset (TV show/movie reviews). + Follow the README.md for detailed instructions. - heading: "Step 4: Launch Frontend Chat Application" description: |-