lijingwang
Model-data integration for subsurface hydrology, Data Science for the Geosciences, Geostatistics & Uncertainty Quantification
Stanford UniversityStanford, CA
Pinned Repositories
Beaver_Groundwater_Uncertainty
data_knowledge_driven_trend_surface
Stochastic geological surface modeling
DataScienceForGeosciences
Data Science for the Geosciences
DGSA_Light
This is a light version of DGSA, written in Python
dssg_cv_tutorial
A tutorial session on convolutional neural network for Stanford Data Science for Social Good program
flopy
A Python package to create, run, and post-process MODFLOW-based models.
GEOLSCI-240-ENERGY-240
Data science for geoscience
hierarchicalBayes
Open-source Python package for Hierarchical Bayesian inversion of global variables and large-scale spatial fields.
IntroSpatialData_SDSI
Introduction to Spatial Data Analysis, Data Science Blog @ Stanford Data Science Institute
semi_supervised_seismic_interpretation
lijingwang's Repositories
lijingwang/DataScienceForGeosciences
Data Science for the Geosciences
lijingwang/data_knowledge_driven_trend_surface
Stochastic geological surface modeling
lijingwang/IntroSpatialData_SDSI
Introduction to Spatial Data Analysis, Data Science Blog @ Stanford Data Science Institute
lijingwang/hierarchicalBayes
Open-source Python package for Hierarchical Bayesian inversion of global variables and large-scale spatial fields.
lijingwang/semi_supervised_seismic_interpretation
lijingwang/DGSA_Light
This is a light version of DGSA, written in Python
lijingwang/dssg_cv_tutorial
A tutorial session on convolutional neural network for Stanford Data Science for Social Good program
lijingwang/flopy
A Python package to create, run, and post-process MODFLOW-based models.
lijingwang/GEOLSCI-240-ENERGY-240
Data science for geoscience
lijingwang/lijingwang.github.io
lijingwang/Meta-Learning-Papers
Meta Learning / Learning to Learn / One Shot Learning / Few Shot Learning
lijingwang/Bayesian_inversion
lijingwang/clusterjob
ClusterJob: An automated system for painless and reproducible massive computational experiments
lijingwang/cme257-advanced-julia
Advanced Topics in Scientific Computing with Julia
lijingwang/cs230-code-examples
Code examples in pyTorch and Tensorflow for CS230
lijingwang/DataVizBlog
lijingwang/deep-residual-networks
Deep Residual Learning for Image Recognition
lijingwang/DGSA
lijingwang/DGSA-1
An R implementation of the DGSA method
lijingwang/DropoutUncertaintyExps
Experiments used in "Dropout as a Bayesian Approximation: Representing Model Uncertainty in Deep Learning"
lijingwang/dssg-reglab-public
lijingwang/fdagstat
An R package that implements the methods of geostatistics for functional data
lijingwang/fTree
An R package that implements methods for growing regression trees with functional and multivariate outputs
lijingwang/GS260_resources
Tutorials and resources for GS 260 Uncertainty Quantification in Subsurface Systems
lijingwang/Kalman-and-Bayesian-Filters-in-Python
Kalman Filter book using Jupyter Notebook. Focuses on building intuition and experience, not formal proofs. Includes Kalman filters,extended Kalman filters, unscented Kalman filters, particle filters, and more. All exercises include solutions.
lijingwang/QUSS
Companion code for Scheidt, C, Li, L, and Caers, J. K. Quantifying Uncertainty in Subsurface Systems, John Wiley & Sons, 2017.
lijingwang/scikit-fmm
scikit-fmm is a Python extension module which implements the fast marching method.
lijingwang/SpatialAggregation_Capesmith
lijingwang/texture-synthesis
Texture synthesis in Torch
lijingwang/Tree-based_Direct_Sampling
This is the first version of the Tree-based Direct Sampling (TDS), with 2D Antactica Topography modeling case as example.