Ten years ago, we couldn't have imagined how tools like machine learning, eDNA, and satellites would advance and transform conservation work. Now technology is advancing faster than ever, and as tools become smaller, lighter, and more affordable, it's vital to have a space where community members can discuss the next big thing, share ideas, compare tool options, and tell the story of their experiences - positive, negative, and anything in between - while using new technologies.
In 2021, the WILDLABS State of Conservation Tech report detailed what tools show the most promise according to community members, as well as what tools are currently seen as the most effective. And as new tools enter the field, we're excited to see how this data will change over time, and how this group grows over time as well.
Our State of Conservation Tech research also discusses something called the "Hype Cycle" - the pattern that occurs when a new technology bursts onto the scene, promises to be an exciting solution, encounters challenges as new users adopt the tool and put it into practice beyond just theory, and eventually settles into its most effective state as users acquire the right skills to use it to its actual potential. Machine learning, one of the most promising technologies, is currently in the middle of its own hype cycle, and we see community members working through their own hurdles to incorporate ML into their work effectively. Despite what you may think, this Hype Cycle can also be positive for tech development, as it means that users have big ideas for new tools, and with the right resources and skills, they can work toward bringing those ideas to life. And as our community members experiences the Hype Cycle for various tools at their own paces, we hope this group will also serve as a place to discuss that process and overcome hurdles together.
Ready to discover new possibilities? Join our Emerging Tech group now and get to know your forward-thinking conservation tech peers!
Header photo: Internet of Elephants
São Paulo State University (UNESP)
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World Wide Fund for Nature/ World Wildlife Fund (WWF)
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Wildlife conservationist currently working on biodiversity monitoring and community development for AFOLU VCS & CCB projects.
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Web & connected devices (IOT) developer, software development manager and passionate environmentalist.
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Saint Louis Zoo & Saint Louis Zoo WildCare Institute
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I work in sustainability and social impact in the tech sector, and study AI, Ethics & Society at Cambridge. For my dissertation, I am investigating the ethical and societal implications of wildlife conservation technologies.
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- @nickschurch
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Principal Statistician for Ecology and Environmental Science with Biomathematics and Statistics Scotland.
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Zoological Society London (ZSL)
Water-landing fixed-wing drones in marine ecology and maritime surveillance in MPAs and beyond.
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Stanford University
Doctoral Research at Stanford University | Interested in data science and observational approaches for issues in coastal health
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- 8 Groups
Wildlife Conservation Society (WCS)
Video producer, videographer and editor for the Wildlife Conservation Society (WCS)
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- @patrick
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Space signal processing engineer by day, environmental data analyst by night.
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