Artificial intelligence (AI) is expected to play a significant role in protecting endangered wildlife in the future, according to an expert. Phil Siegel, the founder of the Center for Advanced Preparedness and Threat Response Simulation, believes that AI can be used to track animals’ migratory patterns and provide warnings ahead of potential dangers. By utilizing AI technology, nonprofits and tech developers can aim to solve various environmental problems, with conservation being a crucial focus area.
In Tamil Nadu, India, AI-based surveillance systems have been implemented to monitor elephants crossing railway tracks and prevent accidents. Through a trial program featuring CCTV towers equipped with thermal and visible light imaging, the state aims to enhance safety measures for wildlife. Computer vision technology, which focuses on the visual aspects of AI, plays a crucial role in enabling robots to interact with their surroundings effectively. AI-driven solutions such as ChatGPT are also being utilized to tackle wildlife protection challenges.
In Africa, technology developed by Dutch startup Hack the Planet and British scientists at Stirling University leverages satellites to identify poachers in specific areas and alert authorities. This innovative approach demonstrates the practical applications of AI in wildlife conservation efforts. The use of AI technology in wildlife protection extends beyond monitoring and prevention, as it can also help mitigate potential conflicts between animals and human populations.
The AI-based surveillance systems implemented in Tamil Nadu have proven effective in deterring elephants from straying into human settlements in search of food. By providing warnings to train operators and officials, the system enables them to adjust their approach and prevent collisions with animals. Although the system requires continuous monitoring by workers, it has detected numerous instances of animals approaching the tracks, prompting efforts to expand its implementation to additional areas.
In addition to wildlife protection, AI technology has broader applications in emergency response situations, such as detecting wildfires before they escalate. By analyzing vast amounts of data and identifying patterns, AI systems can enhance warning and surveillance capabilities, ultimately improving response strategies. While large language models like ChatGPT have garnered attention, Siegel emphasizes the importance of machine learning algorithms in various sectors.
Despite the focus on large language models, Siegel highlights the continued relevance of machine learning algorithms in diverse industries. While advancements in AI technology have enabled more sophisticated applications, the fundamentals of machine learning remain integral to many practical use cases. Moving forward, AI is poised to revolutionize how organizations address environmental challenges and enhance their conservation efforts through data-driven solutions.


