FLASH: Federated Learning-Based LLMs for Advanced Query Processing in Social Networks through RAG
Our paper introduces a novel approach to social network information retrieval and user engagement through a personalized chatbot system empowered by Federated Learning GPT. The system is designed to seamlessly aggregate and curate diverse social media data sources, including user posts, multimedia c...
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Zusammenfassung: | Our paper introduces a novel approach to social network information retrieval
and user engagement through a personalized chatbot system empowered by
Federated Learning GPT. The system is designed to seamlessly aggregate and
curate diverse social media data sources, including user posts, multimedia
content, and trending news. Leveraging Federated Learning techniques, the GPT
model is trained on decentralized data sources to ensure privacy and security
while providing personalized insights and recommendations. Users interact with
the chatbot through an intuitive interface, accessing tailored information and
real-time updates on social media trends and user-generated content. The
system's innovative architecture enables efficient processing of input files,
parsing and enriching text data with metadata, and generating relevant
questions and answers using advanced language models. By facilitating
interactive access to a wealth of social network information, this personalized
chatbot system represents a significant advancement in social media
communication and knowledge dissemination. |
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DOI: | 10.48550/arxiv.2408.05242 |