*Looking for a course on Species Distribution Modelling (SDMs)?*
PR Statistics has the right course for you—whether you’re just starting
out, building on existing skills, or ready to explore Bayesian methods for
SDMs.

Please feel free to share!

Species distribution models (SDMs) are especially valuable in marine mammal
research, where direct observation is often limited and costly. These
courses provide the tools to predict habitat use, identify critical areas
for conservation, and assess how environmental change—such as shifting
oceanographic conditions or climate change—may affect species ranges. By
learning methods from introductory to advanced, including Bayesian
approaches, marine mammal researchers can better integrate ecological data
with spatial modelling, improve the accuracy of predictions, and strengthen
the scientific basis for management and conservation decisions.

*For beginners:*
Start with our introduction to SDMs and ENMs (SDMR06). This course requires
no prior SDM experience—just a basic understanding of R. If you don’t yet
have the basics, check out our free recorded courses first.
SDMR06 covers the *core foundations* of SDM: how to calculate and interpret
niche models, choose appropriate modelling approaches, run standard
algorithms, compare model outcomes, build ensemble predictions, and apply
models to your own data.
🔗 Learn more about SDMR06
<https://www.prstats.org/course/species-distribution-modelling-sdmr06/?utm_source=chatgpt.com>

*For intermediate users:*
Take your modelling further with our advanced course (ASDM01). This course
goes beyond baseline workflows into *model refinement, accuracy
improvement, and the integration of physiological and environmental
realism* through
mechanistic and simulated species models.
🔗 Learn more about ASDM01
<https://www.prstats.org/course/advanced-species-distribution-modelling-using-r-asdm01/?utm_source=chatgpt.com>

*For those looking to improve model accuracy with Bayesian methods:*
Explore our Bayesian SDM course (SDMB07). This course covers the *entire
Bayesian modelling pipeline*: from data preparation and model fitting, to
cross-validation, performance evaluation, and interpreting variable
importance with tools like partial dependence plots.
SDMB07 introduces *Bayesian Additive Regression Trees (BART)*—a modern
approach that produces robust predictions, reduces overfitting, and
explicitly quantifies uncertainty. Unlike traditional or mechanistic SDMs,
Bayesian SDMs allow for a clear representation of uncertainty, providing
posterior means, credible intervals, and uncertainty surfaces for deeper
insight into prediction confidence.
🔗 Learn more about SDMB07
<https://www.prstats.org/course/species-distribution-modelling-with-bayesian-statistics-sdmb07/?utm_source=chatgpt.com>

Email [email protected] with any questions.

-- 
Oliver Hooker PhD.
PR stats
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