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I'm the Assistant Unit Leader in the U.S. Geological Survey Washington Cooperative Fish and Wildlife Research Unit. I'm also an associate professor in the School of Aquatic and Fishery Sciences at the University of Washington.

I am an applied ecologist who integrates different data sources and analytical methods to study a variety of problems related to the conservation and management of aquatic resources, particularly along the west coast of North America. Much of my research is focused on the development and application of statistical methods for analyzing temporal and spatial data. Examples of recent projects include integrated population models for Pacific salmon, evaluation of the risks and rewards of ecological portfolios, and assessing the effects of large-scale disturbances from natural and anthropogenic causes. You can learn more about me here.

Mark Scheuerell's Projects

advice icon advice

Some advice for students seeking opportunities for graduate school

aslo2020 icon aslo2020

Information for a special session at the ASLO-SFS 2020 Joint Annual Meeting

assessor icon assessor

ASSESSOR is an age-structured state-space stock-recruit model for Pacific salmon.

aukecoho icon aukecoho

Development site for an integrated population model for Auke Creek coho salmon

bgc_meta icon bgc_meta

Meta-analysis of biogeochemistry data from N Am

bulltrout icon bulltrout

This repo contains the data and code for a trend analysis of bull trout populations in the western US conducted as part of the USFWS Species Status Assessment (SSA).

capm icon capm

Capital Asset Pricing Model

columbia-econ icon columbia-econ

This is a temporary site for organizing reference materials for the economic analysis of salmon returns to the Columbia River.

columbia_econ icon columbia_econ

This repo contains environmental data for use in an the economic evaluation of salmon returns to the Columbia River.

cru-mentoring icon cru-mentoring

Results of anonymous poll asking participants about their interest and potential role in a CRU-wide mentoring program.

cv icon cv

Curriculum vitae

dfadd icon dfadd

Testing ground for DFA models with and without covariates in the observation equation.

dittman icon dittman

Support for Andy Dittman's straying analysis.

envdatasci icon envdatasci

Course materials for "Intro to Environmental Data Science" offered during Winter 2020 in the UW School of Aquatic and Fishery Sciences

exdfa icon exdfa

This is the development repo for creating an example workflow of dynamic factor analysis (DFA) as part of a forthcoming review paper.

gasout icon gasout

Estimating time-to-failure for Mattel's Gas Out

greta icon greta

simple and scalable statistical modelling in R

gretadfa icon gretadfa

Using the greta package for R to fit Dynamic Factor Models

lmrcsc icon lmrcsc

This is the slide deck for my presentation to NOAA's LMRCSC.

markdown-test icon markdown-test

A test site for showing how to display a HTML file on GitHub.

marss icon marss

Multivariate Autoregressive State-Space Modeling with R

marstab icon marstab

Stability properties for MAR(1) models

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