Improve search capabilities for your PostgreSQL-backed applications using vector search and embeddings generated in under 10 milliseconds without sending data outside your PostgreSQL instance. Integrate real-time translation, sentiment analysis, and advanced AI functionalities securely within your database environment with Azure Local AI and Azure AI Service. Combine the Azure Local AI extension with the Azure AI extension to maximize the potential of AI-driven features in your applications, such as semantic search and real-time data translation, all while maintaining data security and efficiency.
Joshua Johnson, Principal Technical PM for Azure Database for PostgreSQL, demonstrates how you can reduce latency and ensure predictable performance by running locally deployed models, making it ideal for highly transactional applications.
► QUICK LINKS:
00:00 - Improve search for PostgreSQL
01:21 - Increased speed
02:47 - Plain text descriptive query
03:20 - Improve search results
04:57 - Semantic search with vector embeddings
06:10 - Test it out
06:41 - Azure local AI extension with Azure AI Service
07:39 - Wrap up
► Link References
Check out our previous episode on Azure AI extension at [ Ссылка ]
Get started with Azure Database for PostgreSQL - Flexible Server at [ Ссылка ]
To stay current with all the updates, check out our blog at [ Ссылка ]
► Unfamiliar with Microsoft Mechanics?
As Microsoft's official video series for IT, you can watch and share valuable content and demos of current and upcoming tech from the people who build it at Microsoft.
• Subscribe to our YouTube: [ Ссылка ]
• Talk with other IT Pros, join us on the Microsoft Tech Community: [ Ссылка ]
• Watch or listen from anywhere, subscribe to our podcast: [ Ссылка ]
► Keep getting this insider knowledge, join us on social:
• Follow us on Twitter: [ Ссылка ]
• Share knowledge on LinkedIn: [ Ссылка ]
• Enjoy us on Instagram: [ Ссылка ]
• Loosen up with us on TikTok: [ Ссылка ]
#postgresql #azureai #vectorsearch #AzureDatabase
Ещё видео!