Tech »  Topic »  Amazon OpenSearch Service improves vector database performance and cost with GPU acceleration and auto-optimization

Amazon OpenSearch Service improves vector database performance and cost with GPU acceleration and auto-optimization


Today we’re announcing serverless GPU acceleration and auto-optimization for vector index in Amazon OpenSearch Service that helps you build large-scale vector databases faster with lower costs and automatically optimize vector indexes for optimal trade-offs between search quality, speed, and cost.

Here are the new capabilities introduced today:

  • GPU acceleration – You can build vector databases up to 10 times faster at a quarter of the indexing cost when compared to non-GPU acceleration, and you can create billion-scale vector databases in under an hour. With significant gains in cost saving and speed, you get an advantage in time-to-market, innovation velocity, and adoption of vector search at scale.
  • Auto-optimization – You can find the best balance between search latency, quality, and memory requirements for your vector field without needing vector expertise. This optimization helps you achieve better cost-savings and recall rates when compared to default index configurations, while manual index tuning can take ...

Copyright of this story solely belongs to aws.amazon.com - blog . To see the full text click HERE