Skip to content

Commit fcaaaf8

Browse files
Merge pull request #295532 from kenwith/patch-3
Resolves build validation issues by moving to relative links.
2 parents 02a8fa5 + c6c8514 commit fcaaaf8

File tree

1 file changed

+5
-5
lines changed

1 file changed

+5
-5
lines changed

articles/app-service/deploy-intelligent-apps-dotnet-to-azure-sql.md

Lines changed: 5 additions & 5 deletions
Original file line numberDiff line numberDiff line change
@@ -11,13 +11,13 @@ ms.collection: ce-skilling-ai-copilot
1111

1212
# Deploy a .NET Blazor app connected to Azure SQL and Azure OpenAI on Azure App Service
1313

14-
When creating intelligent apps, you may want to ground the context of your app using your own SQL data. With the recent announcement of [Azure SQL vector support (preview)](https://devblogs.microsoft.com/azure-sql/announcing-eap-native-vector-support-in-azure-sql-database/), you can ground the context using the Azure SQL data you already have with new [vector functions](https://learn.microsoft.com/sql/t-sql/functions/vector-functions-transact-sql) that help manage vector data.
14+
When creating intelligent apps, you may want to ground the context of your app using your own SQL data. With the recent announcement of [Azure SQL vector support (preview)](https://devblogs.microsoft.com/azure-sql/announcing-eap-native-vector-support-in-azure-sql-database/), you can ground the context using the Azure SQL data you already have with new [vector functions](/sql/t-sql/functions/vector-functions-transact-sql) that help manage vector data.
1515

1616
In this tutorial, you'll create a RAG sample application by setting up a Hybrid vector search against your Azure SQL database using a .NET 8 Blazor app. This example builds from the previous documentation to deploy a [.NET Blazor app with OpenAI](/azure/app-service/deploy-intelligent-apps?pivots=openai-dotnet).
1717

1818
## Prerequisites
1919

20-
- An [Azure OpenAI](https://learn.microsoft.com/azure/ai-services/openai/quickstart?pivots=programming-language-csharp&tabs=command-line%2Ckeyless%2Ctypescript-keyless%2Cpython#set-up) resource with deployed models
20+
- An [Azure OpenAI](/azure/ai-services/openai/quickstart?pivots=programming-language-csharp&tabs=command-line%2Ckeyless%2Ctypescript-keyless%2Cpython#set-up) resource with deployed models
2121
- A .NET 8 or 9 Blazor Web App deployed on App Service
2222
- An Azure SQL database resource with vector embeddings.
2323

@@ -135,15 +135,15 @@ In order to prepare your Azure SQL database for vector search, you need to make
135135
- `text-embedding-ada-002` is used to generate the embeddings
136136
- `gpt-3.5-turbo` is used for the language model
137137

138-
These two models need to be deployed before continuing the next step. Visit the [documentation](https://learn.microsoft.com/azure/ai-studio/how-to/deploy-models-openai) for deploying models with Azure OpenAI using Azure AI Foundry.
138+
These two models need to be deployed before continuing the next step. Visit the [documentation](/azure/ai-studio/how-to/deploy-models-openai) for deploying models with Azure OpenAI using Azure AI Foundry.
139139

140140
## 4. Vectorize your SQL database
141141

142142
To perform a hybrid vector search on your Azure SQL database, you first need to have the appropriate embeddings in your database. There are many ways you can vectorize your database. One option is to use the following [Azure SQL database vectorizer](https://github.com/Azure-Samples/azure-sql-db-vectorizer) to generate embeddings for your SQL database. Vectorize your Azure SQL database before continuing.
143143
144144
## 5. Create procedure to generate embeddings
145145

146-
With [Azure SQL vector support (preview)](https://devblogs.microsoft.com/azure-sql/announcing-eap-native-vector-support-in-azure-sql-database/), you can create a stored procedure that will use a Vector data type to store generated embeddings for search queries. The stored procedure invokes an external REST API endpoint to get the embeddings. See the [documentation](https://learn.microsoft.com/azure-data-studio/quickstart-sql-database) to use Azure Data Studio to connect to your database before running the query.
146+
With [Azure SQL vector support (preview)](https://devblogs.microsoft.com/azure-sql/announcing-eap-native-vector-support-in-azure-sql-database/), you can create a stored procedure that will use a Vector data type to store generated embeddings for search queries. The stored procedure invokes an external REST API endpoint to get the embeddings. See the [documentation](/azure-data-studio/quickstart-sql-database) to use Azure Data Studio to connect to your database before running the query.
147147
148148
- Use the following to create a stored procedure with your preferred SQL query editor. You need to populate the @url parameter with your Azure OpenAI resource name and populate the rest endpoint with the API key from your text embedding model. You'll notice the model name as part of the @url, which will be populated with your search query.
149149

@@ -469,4 +469,4 @@ Here's the full example of the added *OpenAI.razor* page:
469469
}
470470
}
471471

472-
```
472+
```

0 commit comments

Comments
 (0)