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pedroalencar1/README.md

Hi there, I'm Pedro Alencar

I am a doctor with double degree in Ecohydrology (Technische Universität Berlin) and Agricultural Engineering (Universidade Federal do Ceará).

To get more information on my recent projects and publications visit pedroalencar1.io.


👨‍💻 About Me :

I am a Postdoctoral researcher on the KI-recover project, funded by the Federal Ministry for the Environment, Nature Conservation and Nuclear Safety (Germany).

  • 🔬 Working on different methods of identifying extreme weather, particularly in the drier spectrum side (dry spells, droughts and flash droughts).

  • 🌱 Exploring data analysis and visualisation.

  • 📚 You can learn more about my scientific publications at:

         Webpage   TU-Berlin - Pedro Alencar

         Webpage   ORCiD - Pedro Alencar


🛠️ Languages and Tools :

R  Shiny  Python  Fortran  MATLAB  LaTeX  Markdown 

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  1. fdClassify fdClassify Public

    This is a R pacakage to indentify flash droughts with different methods

    R 18 3

  2. IntroToPython IntroToPython Public

    Introductory Notebooks for Ökohydrologie/TUB

    Jupyter Notebook 1

  3. WOFOST_streamlit WOFOST_streamlit Public

    web implementation of WOFOST with streamlit

    Python 1

  4. EBGEM EBGEM Public

    Scripts and data from EBGEM

    Fortran

  5. cedaR cedaR Public

    R package cedar - Copula-Entropy Drought Analysis with R

    R 1 1

  6. FlashDroguht_NLP FlashDroguht_NLP Public

    Assessment of FD impacts from NLP of news articles

    R