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Mihiarc/README.md

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About Me

I'm a Research Economist at the USDA Forest Service, Southern Research Station, where I develop open-source software tools that make environmental and natural resource research more accessible and reproducible.

My work lives at the intersection of economics, ecology, and data science. I build tools that help researchers, land managers, and policymakers understand our forests better — from analyzing national forest inventories to projecting how land use will change under different climate scenarios. I was a key contributor to the USDA Forest Service 2020 RPA Assessment, which provides long-range strategic planning for America's renewable resources.

Education    Ph.D. Applied Economics, Oregon State University
Location     Research Triangle Park, NC

Tech Stack

Languages


GitHub Stats

GitHub Stats Top Languages

GitHub Streak

Activity Graph


Featured Projects

pyfia

PyPI Downloads

High-performance Python library for Forest Inventory and Analysis (FIA) data. The nation's forest census monitors 300,000+ plots — pyfia makes this massive dataset accessible with Polars and DuckDB.

Design-based estimation with proper variance calculations matching FIA EVALIDator exactly.

pyfvs

GitHub stars

Python implementation of the Forest Vegetation Simulator for the Southern variant. Simulates growth and yield of loblolly, shortleaf, longleaf, and slash pine.

Used for timber harvest planning, carbon modeling, and forest management scenarios.

gridfia

GitHub stars

Create gridded spatial estimates from FIA plot data. Transforms discrete plot measurements into continuous maps of biomass, carbon density, and timber volume.

Outputs to GeoTIFF and Zarr for seamless GIS integration.

rpa-landuse

GitHub stars

Natural language query agent for RPA land use projections. Ask questions like "How much forestland will Georgia lose by 2070?" and get data-backed answers.

Built with LangChain and Claude for accessible policy analysis.

socialmapper

GitHub stars

Community accessibility analysis bridging OpenStreetMap POI data and US Census demographics. Travel-time based metrics for understanding service access.

Useful for urban planning, public health, and equity research.

esri-converter

GitHub stars

Convert ESRI geodatabases to open formats like GeoParquet. Handles multi-GB datasets with streaming and chunking.

OGC compliant output with Rich progress tracking.


Research Focus



Statistical methods for large-scale forest data analysis


Projecting future scenarios under climate change


Quantifying ecosystem service values


Tools for wildfire and drought planning

Selected Publications

First-Author Publications

Mihiar, C. & Lewis, D.J. (2021). Climate, adaptation, and the value of forestland: A national Ricardian analysis of the United States. Land Economics, 97(4), 911-932.

Estimates how climate affects forest land values across the US, finding forests are already adapting to local conditions. Results suggest forestland values are more resilient to climate change than previously thought. [15 citations]

Mihiar, C., Lewis, D.J. & Coulston, J.W. (2023). County-level land-use projections for the conterminous United States, 2020-2070, used in the 2020 RPA Assessment.

Official land-use projections for the 2020 RPA Assessment — six land-use categories across 3,000+ counties under multiple climate scenarios. [4 citations]

Mihiar, C. & Lewis, D.J. (2023). An empirical analysis of US land-use change under multiple climate change scenarios. Journal of the Agricultural and Applied Economics Association, 2(3), 597-611.

Climate effects on land use are smaller than socioeconomic drivers but regionally significant. [3 citations]

Co-Authored Publications

Cavender-Bares, J., Nelson, E., Meireles, J.E., ... Mihiar, C., et al. (2022). The hidden value of trees: Quantifying the ecosystem services of tree lineages and their major threats across the contiguous US. PLOS Sustainability and Transformation, 1(4).

Comprehensive assessment of tree ecosystem services across evolutionary lineages. [44 citations]

Caldwell, P.V., Martin, K.L., Vose, J.M., ... Mihiar, C., et al. (2023). Forested watersheds provide the highest water quality among all land cover types, but the benefit of this ecosystem service depends on landscape context. Science of the Total Environment, 882.

Forests are critical for water quality, but value depends on surrounding land uses. [43 citations]


Building tools that empower researchers, policymakers, and communities to understand and protect our natural resources.

Popular repositories Loading

  1. pyfia pyfia Public

    pyFIA provides a programmatic API for working with Forest Inventory and Analysis (FIA) data. It leverages modern Python data science tools like Polars and DuckDB for efficient processing of large-s…

    Python 5 1

  2. socialmapper socialmapper Public

    A geospatial analysis toolkit that bridges the gap between OpenStreetMap POI data and US Census demographics, helping researchers and developers understand community accessibility and demographic p…

    Python 3

  3. Mihiarc Mihiarc Public

    1

  4. pyfvs pyfvs Public

    FVS-Python is a Python implementation of the Southern variant of the Forest Vegetation Simulator (FVS). It simulates the growth and yield of four southern yellow pine species.

    Python 1

  5. gridfia gridfia Public

    GridFIA - Python API for spatial forest biomass analysis | Part of fiatools.org

    Python 1 1

  6. rpa-landuse rpa-landuse Public

    AI-powered analytics tool for USDA Forest Service RPA Assessment land use data. Built with a modern data stack (DuckDB, LangChain, Claude/GPT-4) to analyze county-level land use projections from th…

    Python