Running Large Language Models Privately - privateGPT and Beyond
Published:May 30, 2023 00:00
•1 min read
•Weaviate
Analysis
The article discusses data privacy and privacy-preserving machine learning in the context of Large Language Models (LLMs). It highlights the importance of running LLMs privately, likely focusing on solutions like privateGPT. The source, Weaviate, suggests a focus on vector search and knowledge graphs, which could be relevant to the implementation of private LLMs.
Key Takeaways
- •Focus on data privacy in the context of LLMs.
- •Exploration of privacy-preserving machine learning techniques.
- •Mention of privateGPT as a potential solution.
- •Relevance of vector search and knowledge graphs (implied by source).
Reference
“A discussion on data privacy and privacy-preserving machine learning for LLMs”