Overview
The Retrieval Augmented Generation (RAG) architecture advances data retrieval technology. By connecting with knowledge management databases, RAG allows for a more efficient search process. Users can quickly find the specific information they need within large, unstructured datasets, reducing search times and improving team productivity.
RAG's ability to understand complex queries is a key feature. Users can find relevant information without precise search terms, as RAG's algorithm interprets the intent behind queries. This enhances the retrieval process and ensures access to important data for decision-making. Additionally, RAG is scalable. It can adapt to growing data needs without losing performance, making it a useful tool for businesses aiming to use their unstructured data more effectively and maintain a competitive edge through improved data management.
Logic20/20's Retrieval Augmented Generation Architecture leverages a full stack of AWS services, including S3 and API Gateway for ingestion, Amazon Opensearch, SageMaker Embedding Model and SageMaker LLM, and Lambda, and the Elastic Container Service to interface with customers.
Highlights
- Efficient Data Retrieval: Enables quick navigation through large, unstructured datasets to find specific information, enhancing productivity.
- Scalability: Adapts to growing data needs, ensuring consistent performance as businesses and data repositories expand.
- Improved Decision-Making: Ensures access to pertinent data, supporting informed decisions with accurate and relevant information.
Details
Unlock automation with AI agent solutions

Pricing
Custom pricing options
How can we make this page better?
Legal
Content disclaimer
Support
Vendor support
Email – solutions@logic2020.com Website -