CARDAMOM
Carbon inference framework
A Bayesian inference framework for optimizing terrestrial carbon cycle model states and processes parameters using terrestrial ecosystem observations.
7 stars
5 watching
0 forks
Language: Jupyter Notebook
last commit: 3 months ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
| An open-source land surface model that simulates the interaction between terrestrial ecosystems and climate systems | 310 |
| A framework for training and evaluating physics-informed neural ODEs for climate and weather forecasting | 75 |
| An idealized climate-economic modelling framework using Julia that optimizes trade-offs between emissions mitigation, adaptation, carbon dioxide removal, and geoengineering. | 68 |
| A forest growth and ecosystem carbon balance model that simulates the interactions between tree growth, soil organic matter, and environmental factors. | 8 |
| Library providing functionality for modeling carbon budgets based on the CBM-CFS3 framework | 7 |
| An interface to the MITgcm climate model that enables users to analyze and interact with its output | 32 |
| An R framework for simulating ecosystem processes at site scales | 25 |
| A framework for optimizing hyperparameters in machine learning models using Bayesian optimization | 93 |
| A bundle of R packages for transparent climate data access and post-processing | 132 |
| A climate model implementation using automatic differentiation and data assimilation to simulate global ocean circulation | 343 |
| An integrated assessment model of climate change that simulates the impacts of different policy scenarios and provides insights for policymakers | 44 |
| A comprehensive ecosystem model that simulates carbon and nitrogen cycles, soil thermal dynamics, and vegetation growth in high-latitude ecosystems. | 22 |
| A Python wrapper around a climate model allowing users to simulate and analyze climate change scenarios | 43 |
| A Go library that provides an online machine learning framework with various algorithms and models | 1,574 |
| Estimates the carbon footprint of web applications during development and deployment | 238 |