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louiselize/README.md

Louise Lizé

Computer Science PhD student · Machine learning · InSAR · Volcano deformation · Geophysical inverse problems

Hello! I'm Louise, a PhD student working at the intersection of remote sensing, volcanic deformation, geophysical modelling, and machine learning.

My research focuses on the use of machine learning and geophysical modelling to analyze volcanic deformation from satellite-based displacement observations. More broadly, I am interested in inverse problems, synthetic data generation, and the transition from controlled simulations to real-world geophysical data.

Volcanic uplift observed from satellite data

Image: volcanic uplift illustration, ©ESA.

Affiliation and research environment

Professional Background

Previous role: I worked as a Software Data Engineer at Odite Sagemcom. My role involved enabling search algorithms to be effectively used by clients, specifically Distribution System Operators (DSOs). I primarily worked on backend development, focusing on building APIs and managing data workflows before and after the application of the search algorithms. This was within the context of improving the distribution and understanding of low-voltage electrical networks.

🎓 Education: I graduated as a Computer Science Engineer from the French engineering university UTC and completed a double degree program at UQAC in Canada. My education provided me with a strong foundation in AI, data science, and software development.

Previous Experience

👩‍💻 Thales DIS: During my internship, I worked as a CX Management Intern at Thales DIS, focusing on cloud migration. I also led the development of an AI LLM tool designed to rapidly analyze customer satisfaction. This project culminated in a proof of concept that my team and I presented at the Thales AI Hackathon, winning first place among 70 entries.

👨‍💻 Olvid: As a Fullstack Intern at Olvid, I used Vue.js and Java to help company administrators manage and integrate Olvid's secure instant messaging product. This role strengthened my full-stack development skills and highlighted the importance of secure communication within organizations.

Technical background

I have a hybrid background combining scientific computing, data science, and software engineering.

Scientific computing & data Software & engineering
Python, NumPy, pandas Backend development
scikit-learn, machine learning workflows APIs and data workflows
matplotlib, data visualization PostgreSQL and SQL databases
Feature extraction and data analysis Full-stack development experience
Synthetic data generation Git and collaborative development

Connect with Me

Feel free to explore my repositories and see the projects I have been involved in, from academic work to professional and research-oriented projects. Also, don't hesitate to connect with me on LinkedIn to discuss potential collaborations or to share insights on technology, data science, Earth observation, and energy systems.

Pinned Loading

  1. SpotifyDataAnalysis SpotifyDataAnalysis Public

    Spotify's data exploration using both supervised and unsupervised learning methods

    Jupyter Notebook

  2. ChessAI ChessAI Public

    AI capable of playing chess

    Java

  3. minesweeperAI minesweeperAI Public

    AI capable of playing minesweeper

    Python

  4. VacuumAI VacuumAI Public

    Simulation of a cleaning robot in a castle

    C#

  5. RevenMyst/LO21_Projet RevenMyst/LO21_Projet Public

    C++

  6. portfolio portfolio Public

    TypeScript