Hao Li's repositories

DataSciencePython

common data analysis and machine learning tasks using python

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ShellTutorial

✨Linux命令行与Shell脚本教程 | 包含常见命令行使用,Bash基础、高级编程,以及实用范例! | 提供在线网页文档 | 承诺健在即更新✨

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tricolore

A flexible color scale for ternary compositions

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aglandscapes-what-or-how

Contains scripts and files related to a study of the relationship between crop yields and compositions and configuration of landscapes

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ar6

Figure and data generation for Chapter 7 of the IPCC's Sixth Assessment Report, Working Group 1 (plus assorted other contributions)

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bambi

BAyesian Model-Building Interface (Bambi) in Python.

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bhm-at-scale

🪜 Bayesian Hierarchical Models at Scale

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climate_indices

Climate indices for drought monitoring, community reference implementations in Python

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command-line-quick-reference

quick reference on command line tools and techniques

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couplings-heat-crops

Data and code for Lesk et al. 2021

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Crop-Yields-Hunger-And-Climate

This project focused on predicting future hunger and food scarcity based on different climate conditions.

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dea-notebooks

Repository for Digital Earth Australia Jupyter Notebooks: tools and workflows for geospatial analysis with Open Data Cube and xarray

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dea-waterbodies

DEA Waterbodies is a product that maps and monitors open waterbodies across Australia. Once a polygon set has been generated corresponding to open waterbodies, each waterbody is tracked over time to record the change in wet surface area over time.

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drought_features

run theory to characterize drought indices

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gitignore

A collection of useful .gitignore templates

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gushi_namer

古诗文起名: 利用诗经 楚辞 唐诗 宋词等给小朋友起名字

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hamster

A Heat And MoiSture Tracking framEwoRk (HAMSTER) for the evaluation of Lagrangian models

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linearmodels

Add linear models including instrumental variable and panel data models that are missing from statsmodels.

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pydata-book

Materials and IPython notebooks for "Python for Data Analysis" by Wes McKinney, published by O'Reilly Media

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pydens

PyDEns is a framework for solving Ordinary and Partial Differential Equations (ODEs & PDEs) using neural networks

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pymc_workshop

One-day workshop on probabilistic programming with PyMC

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pytesmo

python Toolbox for the Evaluation of Soil Moisture Observations

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python-resources-for-earth-sciences

A Curated List of Python Resources for Earth Sciences

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resources

PyMC3 educational resources

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stat_rethinking_2023

Statistical Rethinking Course for Jan-Mar 2023

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statrethink-course-numpyro-2019

Statistical Rethinking: A Bayesian Course Using Python and NumPyro

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TLCL

《快乐的 Linux 命令行》

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visualization-curriculum

A data visualization curriculum of interactive notebooks.

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ww_tvol_study

Process global-scale satellite and airborne elevation data into time series of glacier mass change: Hugonnet et al. (2021).

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xmca

Maximum Covariance Analysis in Python

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