I developed an Academic Recommender system designed to assist researchers by suggesting relevant venues, fields of study, authors, and papers, thereby streamlining their research process. This project leverages advanced machine learning algorithms and natural language processing (NLP) techniques to analyze vast amounts of academic data and generate personalized recommendations. The system is built using a robust technology stack, including React for the frontend, Node.js and GraphQL for the backend, and PostgreSQL and Elasticsearch for data storage and retrieval. By integrating these technologies, the Academic Recommender provides researchers with accurate and timely insights, enhancing their productivity and enabling more efficient navigation of the academic landscape (Image by rawpixel.com on Freepik).