Bayesian Multilevel Modelling using *brms* for Ecologists (BMME01)A Live
Online Course for Ecologists & Marine Mammal Researchers

*Delivered by PR Stats — October 20–31, 2025*
------------------------------
Understand complex ecological data — even without perfect replication

Bayesian multilevel models allow you to robustly analyse data that are
hierarchical, sparse, or structured across space and time — exactly the
kind of data challenges often faced in *marine mammal science*.

In this 10-session live online course, you’ll learn how to build and
interpret *Bayesian GLMs and hierarchical models*using the brms package in
R. While the course uses general ecological datasets, the concepts and
tools are *directly transferable to marine mammal research*, including:

   -

   Photo-ID data
   -

   Population monitoring
   -

   Acoustic detections
   -

   Habitat models
   -

   Movement and telemetry datasets

------------------------------
Why it’s useful for Marine Mammal Researchers

Marine mammal data often suffer from:

   -

   *Small sample sizes* or uneven survey effort
   -

   *Hierarchical structure* (e.g. sightings nested within individuals,
   seasons, sites)
   -

   *Spatial/temporal autocorrelation*
   -

   *Zero-inflation* (e.g. in acoustic or sightings data)

Bayesian multilevel models offer an intuitive and principled way to handle
these realities — providing *transparent uncertainty quantification*
and *flexible
model structures* tailored to your study design.
------------------------------
What You’ll Learn

Through real-time coding and interactive sessions, you will:

   -

   Understand *Bayesian inference* concepts like priors, posteriors, and
   credible intervals
   -

   Fit *GLMs and multilevel/hierarchical models* using brms (Bayesian
   syntax with R and Stan backend)
   -

   Use *informative priors* in ecologically meaningful ways
   -

   Apply *model diagnostics and comparison* (WAIC, LOO-CV)
   -

   Model *non-Gaussian data* (counts, proportions, zero-inflation)
   -

   Handle *spatial and temporal structure*
   -

   Understand basics of *joint species distribution models*
   -

   Interpret results with uncertainty and communicate findings effectively

*Note*: All examples use general ecological datasets — not marine mammal
data — but skills are easily adapted.

------------------------------
Course Format & Details
Feature Details
*Dates* October 20–24 & 27–31, 2025
*Duration* 10 days × ~4 hours per day (total 40 hours)
*Time zone* UK time (GMT+1); suitable for EU/UK, and recordings support
flexibility
*Format* Live, interactive sessions via online platform
*Software* R, RStudio, brms (Stan-based Bayesian models)
*Skill level* Comfortable with R, basic stats (GLMs, regression, data
wrangling)

All sessions are recorded, with materials (slides, code, data) provided
after each class.
------------------------------
💰 Course Fees

   -

   *Early-bird rate (first 10 places)*: £400
   -

   *Standard rate*: £450

------------------------------
Is This For You?

If you’re a *marine mammal scientist*, *PhD student*, *postdoc*, or
*government/NGO
researcher* working with:

   -

   Sighting or survey data
   -

   Mark-recapture or occupancy models
   -

   Acoustic presence/absence
   -

   Habitat or distribution models
   -

   Individual- or group-level data

…this course will provide the *Bayesian modelling foundation* you need,
even if the example datasets aren’t marine-mammal-specific.
------------------------------
Learn to model your marine mammal data with more clarity, flexibility, and
statistical confidence.

*Register now to secure your early-bird place* and bring advanced Bayesian
tools to your ecological research toolkit.

Email [email protected] with any questions.

-- 
Oliver Hooker PhD.
PR stats
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