AI-Powered Wildlife Conservation: Using Technology to Protect Biodiversity

Authors

  • Christopher Hitchens

Abstract

Artificial intelligence is becoming a powerful tool in conservation science. This paper presents AI applications in tracking endangered species, detecting illegal poaching, and monitoring habitats through drones, camera traps, and acoustic sensors. By automating data analysis and enhancing prediction models, AI enables conservationists to make faster, data-driven decisions. The study illustrates how technology can support biodiversity preservation and foster more adaptive, sustainable ecosystems.

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Published

2025-01-14

Issue

Section

Articles