Wildlife_RESQ
Dhruv Patel, Bhoomika Singh , Yatharth Parmar ,Karan Bhanushali, Dr. Suvarna Pansambal
Department of Computer Engineering
Atharva College of Engineering
Mumbai, India
Abstract-- Wildlife RESQ is an AI-powered platform that integrates real-time information, data analytics, and social-driven engagement to increase wildlife rescue and conservation efforts. This paper presents the system design, implementation strategies, and advanced AI methodologies that supports Wildlife RESQ. The platform uses Retrieval-Augmented Generation (RAG) with Lang Chain, Llama-Index to provide accurate, context-aware responses for wildlife conservation queries. Computer vision and sentiment analysis helps in processing unstructured data from social media and resources to enable better decision-making for conservation efforts. Additionally, a priority-based queuing system ensures optimal allocation of resources for rescue operations, while a real-time volunteer management system streamlines communication between NGOs, conservationists, and rescue teams.
Wildlife conservation is currently facing major obstacles, including segregated data, ineffective volunteer management, and a lack of public awareness. To face these challenges, we introduce Wildlife RESQ—an innovative platform that uses artificial intelligence (AI) and Retrieval-Augmented Generation (RAG) to transform wildlife protection initiatives. By harnessing advanced language models (LLMs) like LaMDA and employing frameworks such as Lang-Chain and Llama-Index, Wildlife RESQ effectively collects and combines information from a variety of sources, including structured datasets, news stories, and social media, to deliver real-time, precise insights. The platform includes interactive visualizations, tailored donation suggestions, and sentiment analysis to counter misinformation. It also promotes collaboration among volunteers and NGOs through efficient management tools. Overall, Wildlife RESQ signals a crucial advancement toward utilizing data for community-driven wildlife conservation, aiming for a sustainable future for endangered species.