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check out @viralemergence
πŸ¦‡
check out @viralemergence

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@bansallab @viralemergence
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cjcarlson/README.md

Hi! I'm Colin. πŸ‘¨β€πŸŽ€

πŸŽ“ I'm currently an Assistant Research Professor at Georgetown University. Check out what our lab works on here. Our group is moving to Yale University in summer 2024. See you there!

🦠 I'm also director of the Verena Institute, a team of researchers using artificial intelligence to predict the where, when, and how of viral emergence.

πŸ”’ On my Github, you'll find work that uses machine learning and other kinds of data analytics to predict species distributions (like the embarcadero R package), identify the signal of climate change impacts on infectious diseases, or otherwise solve complex problems at the interface between ecology and global health.

Pinned

  1. falciparum falciparum Public

    🦟🦠σ €₯ Detection and attribution of climate change fingerprint on malaria

    R 1

  2. plague-wna plague-wna Public

    πŸ­πŸ—ΊοΈ Mapping plague in the western United States

    R 5

  3. viralemergence/iceberg viralemergence/iceberg Public

    β„οΈπŸ» Climate change and cross-species viral transmission

    R 12 5

  4. helminths helminths Public

    πŸͺ±πŸŒŽ The global diversity of helminth parasites

    R 2 2

  5. geomalaria geomalaria Public

    β˜€οΈπŸ¦Ÿ Malaria risk in a world with solar geoengineering

    R 2

  6. embarcadero embarcadero Public

    πŸŒ²πŸŒ‰ Species distribution models with Bayesian additive regression trees

    R 47 11