RETA-LLM
RETA-LLM is a toolkit designed for retrieval-augmented large language models. It is directly relevant to vector databases as it involves retrieval-based methods that typically leverage vector search and vector databases to enhance language model capabilities through external knowledge retrieval.
About this tool
RETA-LLM
RETA-LLM is a toolkit designed for retrieval-augmented large language models (LLMs). It focuses on enhancing LLM capabilities by integrating external knowledge retrieval, typically leveraging vector search and vector databases.
Features
- Toolkit for developing retrieval-augmented large language models (RAG)
- Integrates retrieval-based methods to supplement LLMs with external knowledge
- Utilizes vector search and vector databases for efficient retrieval
- Relevant for tasks in information retrieval and enhancing LLM performance
Pricing
No pricing information provided.
Category
- SDKs & Libraries
Tags
rag, llm, retrieval, vector-search
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