Paper Summarizer is an AI-powered command-line application designed to process academic papers and produce concise, structured summaries. It leverages OpenAI’s GPT API to analyze documents, extracting essential sections such as abstract, introduction, methods, results, and conclusion. Users can customize summary length and choose output formats like markdown or plain text. The tool supports batch processing of multiple files, making it easy to integrate into existing research workflows. By condensing complex research into clear, digestible overviews, Paper Summarizer helps users quickly grasp core insights and improve productivity without sacrificing accuracy.
Content Summarizer with AI Agents orchestrates a sequence of specialized AI agents to streamline content summarization workflows. A FetchAgent retrieves text from URLs or local files, while a PreprocessingAgent cleans and segments content. A SummarizationAgent generates concise summaries for each segment using GPT models, and a FeedbackAgent iteratively refines the output for coherence and relevance. The tool supports customization of summary length and tone, handles long documents through chunking, and produces final summaries in plain text or JSON formats. It requires a valid OpenAI API key and runs in a standard Python environment.