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What would you like to be added/modified:
Research benchmarks for evaluating LLM and LLM Agent
Develop a personalized LLM Agent using lifelong learning on the KubeEdge-lanvs edge-cloud collaborative platform
Why is this needed:
Large Language Models (LLMs) have garnered widespread attention due to their exceptional reasoning abilities and zero-shot capabilities. Among these, the LLM Agent is viewed as a significant practical application of LLMs in the physical world. An LLM Agent can achieve various complex tasks in the physical world through task planning, tool usage, self-reflection, and task execution. This project aims to develop a personalized LLM Agent by utilizing a cloud-edge collaborative framework, combining responses from large cloud-based models with those generated from privacy-sensitive data on edge devices. We plan to develop a personalized LLM Agent based on the KubeEdge-lanvs cloud-edge collaborative platform for lifelong learning. This system will be capable of integrating the generalization capabilities of large cloud-based LLMs with personalized user data on edge devices to generate high-quality and personalized responses.
If anyone has questions regarding this issue, please feel free to leave a message here. We would also appreciate it if new members could introduce themselves to the community.
What would you like to be added/modified:
Research benchmarks for evaluating LLM and LLM Agent
Develop a personalized LLM Agent using lifelong learning on the KubeEdge-lanvs edge-cloud collaborative platform
Why is this needed:
Large Language Models (LLMs) have garnered widespread attention due to their exceptional reasoning abilities and zero-shot capabilities. Among these, the LLM Agent is viewed as a significant practical application of LLMs in the physical world. An LLM Agent can achieve various complex tasks in the physical world through task planning, tool usage, self-reflection, and task execution. This project aims to develop a personalized LLM Agent by utilizing a cloud-edge collaborative framework, combining responses from large cloud-based models with those generated from privacy-sensitive data on edge devices. We plan to develop a personalized LLM Agent based on the KubeEdge-lanvs cloud-edge collaborative platform for lifelong learning. This system will be capable of integrating the generalization capabilities of large cloud-based LLMs with personalized user data on edge devices to generate high-quality and personalized responses.
Recommended Skills:
LLMs, Python, KubeEdge-Ianvs
Useful links:
Introduction to Ianvs
Install of Ianvs and Introduction to Lifelong Learning
HuggingGPT: Solving AI tasks with chatgpt and its friends in hugging face, NeurIPS '24
TaskBench: Benchmarking Large Language Models for Task Automation
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