8000 updated readme · lohithgn/azure-sql-db-openai@d67cac3 · GitHub
[go: up one dir, main page]

Skip to content

Commit d67cac3

Browse files
committed
updated readme
1 parent a13814e commit d67cac3

File tree

3 files changed

+12
-2
lines changed

3 files changed

+12
-2
lines changed

README.md

Lines changed: 12 additions & 2 deletions
Original file line numberDiff line numberDiff line change
@@ -17,9 +17,19 @@ This example shows how to use Azure OpenAI from Azure SQL database to get the ve
1717

1818
For an introduction on text and code embeddings, check out this OpenAI article: [Introducing text and code embeddings](https://openai.com/blog/introducing-text-and-code-embeddings).
1919

20-
Azure SQL database can be used to significatly speed up vectors operations using column store indexes, so that search can have sub-seconds performances even on large datasets.
20+
Azure SQL database can be used to easily and quickly perform vector similarity search. There are two options for this: a native option and a classic option.
2121

22-
![](_assets/azure-sql-cosine-similarity.gif)
22+
The **native option** is to use the new Vector Functions, recently introduced in Azure SQL database. Vector Functions are a set of functions that can be used to perform vector operations directly in the database.
23+
24+
> [!NOTE]
25+
> Vector Functions are in Early Adopter Preview.
26+
27+
![](_assets/azure-sql-cosine-similarity-native.gif)
28+
29+
The **classic option** is to use the classic T-SQL to perform vector operations, with the support for columnstore indexes for getting good performances.
30+
31+
> [!IMPORTANT]
32+
> This branch (the `main` branch) uses the native vector support in Azure SQL. If you want to use the classic T-SQL, switch to the `classic` branch.
2333
2434
## Download and import the Wikipedia Article with Vector Embeddings
2535

350 KB
Loading
-944 KB
Binary file not shown.

0 commit comments

Comments
 (0)
0