ScholarCopilot-v1 Model
ScholarCopilot-v1 is the foundation model of Scholar Copilot. Scholar Copilot improves the academic writing process by seamlessly integrating automatic text completion and intelligent citation suggestions into a cohesive, human-in-the-loop AI-driven pipeline. Designed to enhance productivity and creativity, it provides researchers with high-quality text generation and precise citation recommendations powered by iterative and context-aware Retrieval-Augmented Generation (RAG).
The current version of Scholar Copilot leverages a state-of-the-art 7-billion-parameter language model (LLM) trained on the complete Arxiv full paper corpus. This unified model for retrieval and generation is adept at making context-sensitive decisions about when to cite, what to cite, and how to generate coherent content based on reference papers.
π Key Features
- ** π Next-3-Sentence Suggestions: Facilitates writing by predicting the next sentences with automatic retrieval and citation of relevant reference papers.
- ** π Citation Suggestions on Demand: Provides precise, contextually appropriate paper citations whenever needed.
- ** β¨ Full Section Auto-Completion: Assists in brainstorming and drafting comprehensive paper content and structure.
The current version of ScholarCopilot primarily focuses on the introduction and related work sections of academic papers. We will support full-paper writing in future releases.
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Qwen/Qwen2.5-7B