SummarizePaper
Main Features
- arXiv Paper Summarization: Uses AI to provide concise, understandable, and insightful summaries (key-points, layman's summary, etc.) for all arXiv research articles, helping users quickly grasp the latest developments in their field.
- AI Chat Assistant: Offers a chatbot that allows users to chat directly with one or several arXiv papers, enabling conversations in a natural language way to get more insights and ask questions.
Usage Instructions
- Search Methods: Enter keywords, article titles, arXiv IDs (e.g., 2211.04191), or authors to search (use the language of papers you are interested in).
- Search Syntax: By default, the search engine looks for the query in all fields. Use field codes to search specific fields: "au:" for authors, "ti:" for titles, "abs:" for abstracts, "co:" for comments, "jr:" for journal reference, "cat:" for category, and "id:" for ID.
- Boolean Operators: Mix several fields in a search request using Boolean operators "AND", "OR", and "ANDNOT". Example: au:John Smith AND abs:search for life; Complex search example: au:Smith AND ti:climate ANDNOT ti:petrol AND (abs:renewable energy OR abs:solar).
Target Users
Researchers, students, journalists, or simply anyone who wants to stay informed.
Core Advantages
- Open-source tool, transparent and community-driven.
- Provides key-points and layman summaries, lowering the barrier to academic reading.
- Supports natural language conversational interaction to dig deeper into paper details.
- Supports advanced search syntax and Boolean logic for precise literature retrieval.
액세스:
21.4K
나라:
France
의론