--- title: Scientific Research Paper Summarizer emoji: 🔬 colorFrom: indigo colorTo: blue sdk: gradio python_version: 3.11 app_file: app.py pinned: false license: apache-2.0 --- # 🔬 Scientific Research Paper Summarizer This Space hosts the deployment of our fine-tuned **Gemma-2-2b** model designed for research paper analysis and lay summarization. ### Features * **Real-time Literature Fetching:** Automatically searches and retrieves relevant academic papers from the arXiv repository for any entered topic. * **Intelligent Summarization:** Synthesizes the core findings and key points from the retrieved literature. * **Direct References:** Displays full metadata, authors, and clickable links for all source papers used during generating the overview. ### How it works 1. The user inputs a research topic or question. 2. The app queries the arXiv API to fetch the most relevant papers. 3. The abstracts and titles are formatted into a template matching the model's training structure (`Document:\n ... \n\nSummary:\n`). 4. The fine-tuned Gemma model summarizes the core ideas. 5. Citations are displayed transparently below the response.