Bayesian Modelling with R-INLA

*Five-Day Intensive Online Course*

Marine-mammal research increasingly relies on advanced statistical tools to
analyse complex ecological data: spatial surveys, detection-non-detection
datasets, telemetry tracks, abundance estimates, behavioural data, and
multi-level hierarchical structures. *Bayesian Modelling using R-INLA
(BMIN03)* provides a comprehensive, practical introduction to modern
Bayesian methods that are directly applicable to these challenges.

This five-day live-online course is designed for ecologists and
conservation scientists who want to apply *efficient Bayesian modelling* to
their data, using the R-INLA framework.
Why Marine-Mammal Scientists Benefit from R-INLA

   -

   *Spatial and spatio-temporal modelling* are central to marine-mammal
   ecology; INLA excels at these models due to its efficient latent Gaussian
   approach.
   -

   *Large datasets* from aerial surveys, eDNA transects, passive acoustic
   monitoring, or satellite telemetry can be modelled more efficiently than
   with traditional MCMC.
   -

   INLA supports *complex hierarchical structures*, allowing you to combine
   environmental covariates, survey design effects, behavioural information,
   and individual variation within a unified Bayesian framework.

What You Will Learn

   -

   The core ideas behind *Bayesian inference* and how INLA provides fast,
   accurate approximations ideal for large ecological datasets.
   -

   How to build and fit *generalised linear, mixed-effects, spatial, and
   spatio-temporal models* commonly used in marine-mammal population
   analysis.
   -

   How to incorporate *latent effects*, custom priors, random fields, and
   structured dependencies — useful for modelling habitat use, movement,
   distribution, and abundance.
   -

   How to analyse *line-transect and distance-sampling-style data*,
   telemetry data, occupancy models, and hierarchical datasets with
   individual- or site-level effects.
   -

   How to interpret posterior outputs, generate predictions, map spatial
   distributions, assess uncertainty, and communicate Bayesian results
   effectively.

Course Format

   -

   *Five days*, 7 hours per day, combining theory, practical coding
   exercises, and guided model-building.
   -

   *Live online* sessions with full recordings provided.
   -

   Full access to teaching materials plus *30 days of post-course support*.

Who Should Attend

   -

   Marine-mammal ecologists, conservation biologists, environmental
   statisticians and analysts who work in R.
   -

   Researchers involved in *abundance estimation, density surface
   modelling, telemetry studies, habitat modelling, impact assessment, or
   long-term monitoring*.
   -

   Scientists familiar with basic statistical modelling (e.g., GLMs, mixed
   models) but who want to move into Bayesian approaches.

*Next course date:* 23–27 February 2026 (live online)
*Course fee:* £500

Advance your ability to model complex ecological systems and produce
defensible, transparent, and uncertainty-aware analyses.
Learn more or register:
https://prstats.org/course/bayesian-modelling-using-r-inla-bmin03/
<https://prstats.org/course/bayesian-modelling-using-r-inla-bmin03/?utm_source=chatgpt.com>

-- 
Oliver Hooker PhD.
PR stats
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