£400Registration Fee
View DetailsBioacoustics Data Analysis
Delivered remotely (United Kingdom) Western European Time, United KingdomAnalyse animal acoustic signals in R. Learn spectrograms, annotations, and bioacoustic workflows.
£400Registration Fee
View DetailsAnalyse animal acoustic signals in R. Learn spectrograms, annotations, and bioacoustic workflows.
£350Registration Fee
View DetailsLearn Snakemake to automate data workflows. Build reproducible, scalable pipelines for research with hands-on training in this 4-day live online course.
£450Registration Fee
View DetailsLearn machine learning in R with hands-on training. Covers supervised and unsupervised models, tuning, evaluation, and interpretability.
£450Registration Fee
View DetailsLearn SEM and causal inference in R. Use DAGs, latent variables, and path models for ecological analysis.
£250Registration Fee
View DetailsModel Selection and Simplification in R – a live online course covering model fit, nested model comparison, cross-validation, information criteria (AIC/BIC), and variable selection methods including stepwise, ridge, Lasso, and elastic net.
£250Registration Fee
View DetailsUse R to analyse ecological networks. Learn metrics, simulation, and visualisation with igraph.
£300Registration Fee
View DetailsAnalyse bird point-count data in R. Learn N-mixture, time-removal, and distance sampling models.
£150Registration Fee
View DetailsA one-day live online course on zero-inflated models in R. Learn to model count data with excess zeros using ZIP, ZINB, and hurdle approaches, plus model diagnostics and interpretation.
£450Registration Fee
View DetailsModel hierarchical ecological data using GLMMs in R. Covers lme4, brms, and Bayesian methods for ecologists.
£450Registration Fee
View DetailsLearn Generalised Linear Models (GLMs) in R with this live online course. Covers Poisson regression, logistic regression, multinomial, ordinal, Gamma models, mixed-effects, and Bayesian GLMs. Ideal for researchers, postgraduate students, and data analysts.
£480Registration Fee
View DetailsBeginner Python course for biologists. Learn file handling, loops, and bioinformatics-focused coding in Python.
£350Registration Fee
View DetailsRNA-Seq analysis training – live online course covering experiment design, data QC, alignment, gene expression, DESeq2 differential expression, PCA, visualisation, and functional analysis.
£450Registration Fee
View DetailsLearn spatial multiplexed proteomics data analysis with CODEX, CycIF, and MACSIMA. Master image processing, segmentation, phenotyping, and spatial analysis in R and Python.
£500Registration Fee
View DetailsLearn Bayesian modelling with the R-INLA package. Build, fit, and interpret INLA models, define priors and latent effects, and apply INLA to real data in a five day course.
£480Registration Fee
View DetailsExplore and visualise biological data in Python using pandas and seaborn. Ideal for applied researchers.
£350Registration Fee
View DetailsLearn single cell RNA-Seq analysis with Seurat, 10x Genomics, and advanced QC methods. Gain cell type-specific insights in this live online course.
£350Registration Fee
View DetailsLive online bioinformatics training in single-cell RNA-seq analysis using Seurat and 10x Genomics data.
£480Registration Fee
View DetailsTake your Python skills further. Learn OOP, testing, and optimisation for complex bioinformatics tasks.
£400Registration Fee
View DetailsCausal Inference for Ecologists is an applied R course teaching researchers how to identify and estimate causal effects in ecological and environmental data.
£300Registration Fee
View DetailsLearn Python for data science and statistical computing. Build skills in NumPy, Pandas and visualisation across two days of hands-on training for researchers and analysts.
£450Registration Fee
View DetailsMachine Learning for Ecological Time Series is an applied R course teaching ecologists how to analyse, model, and predict ecological time series data.
£300Registration Fee
View DetailsDeep learning course using Python and PyTorch. Learn neural networks, CNNs and transformers through hands-on coding and real data across two intensive training days.
£350Registration Fee
View DetailsLearn to analyse ecological field data with detection error using R. Work with point counts, ARU data, N-mixture models, distance sampling and time-removal methods.
£485Registration Fee
View DetailsAnalyse ecological community data in R using VEGAN. Learn ordination, clustering, and multivariate statistics with real datasets.
£300Registration Fee
View DetailsLearn deep learning in R using the torch ecosystem. Build MLPs, CNNs and transformer models through hands-on coding and gain practical skills for real research workflows.
£275Registration Fee
View DetailsSpecies Distribution and Ecological Niche Modelling is an applied R course teaching standard workflows for building, evaluating, and interpreting SDMs.
£150Registration Fee
View DetailsLearn mechanistic species distribution and ecological niche modelling with NicheMapR in R. Hands-on live online course with microclimate modelling.
£480Registration Fee
View DetailsStable Isotope Mixing Models in R is an applied course teaching ecologists how to use SIBER, SIAR, and MixSIAR for dietary analysis.
£400Registration Fee
View DetailsCausal Inference for Ecologists is an applied R course teaching researchers how to identify and estimate causal effects in ecological and environmental data.
£300Registration Fee
View DetailsInteractive Data Applications with Shiny is a practical R Shiny course for researchers focused on building, customising, and deploying interactive web applications from data analyses.
£500Registration Fee
View DetailsLearn Bayesian modelling with the R-INLA package. Build, fit, and interpret INLA models, define priors and latent effects, and apply INLA to real data in a five day course.
£400Registration Fee
View DetailsBayesian Statistical Modelling with Stan and brms is an advanced R course for researchers covering Bayesian model building, diagnostics, and interpretation using Stan and brms.
£480Registration Fee
View DetailsLearn to analyse animal movement data using spatial methods, home range estimation, interaction metrics and resource or step selection models through hands-on training in R.
£450Registration Fee
View DetailsMachine Learning for Time Series is a practical Python course teaching how to model, analyse, and forecast time series data using machine learning methods.
£480Registration Fee
View DetailsLearn ENM and SDM modelling in R. Apply tools like Maxent and Biomod2 to predict species distributions and environmental niches.