Gain Insights from Recent Published Papers
In this demo I will use Helix to learn from recently published academic papers and provide insight. I will search arxiv, a popular openly accessible paper website, for a recent technical topic. Then I will take those results and ask Helix to fine tune a large language model based upon them. Then I will be able to gain insight from these articles.
Steps
- Start an inference session on Helix
- Type a question relating to the topic of interest and note how incorrect it is, e.g.:
- How are LLMs improving 6G communications networks?
- What components make up the proposed multi-agent system for 6G communications?
- What is Multi-agent Data Retrieval in multi-agent systems for 6G communications?
- How does Multi-agent Data Retrieval work in multi-agent systems for 6G communications?
- Generate 3 blog post titles based upon recent papers about the use of LLMs in 6G communication networks.
- Start a finetune session on Helix
- Search Arxiv for papers of interest, e.g.:
- https://arxiv.org/search/?query=+6G+communications+llms&searchtype=all
- Copy the Links of the PDFs and paste them into Helix’s “Add link” section, one by one. E.g.:
- Hit finetune
- When finished, re-ask the same questions:
- How are LLMs improving 6G communications networks?
- What components make up the proposed multi-agent system for 6G communications?
- What is Multi-agent Data Retrieval in multi-agent systems for 6G communications?
- How does Multi-agent Data Retrieval work in multi-agent systems for 6G communications?
- Generate 3 blog post titles based upon recent papers about the use of LLMs in 6G communication networks.
Example Sessions
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