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Pipe1213/README.md

Hi 👋, I'm Felipe Espinosa

An AI Master’s student at Paris-Saclay University. My focus areas include Natural Language Processing, Text-to-Speech, Generative AI, and Computer Vision. I’m passionate about applying advanced AI techniques to solve real-world problems.

  • 🔭 I’m currently working on Text to Speech for under-resources languages

  • 🌱 I’m currently learning Natural Language Processing, GenAI, Computer Vision, Reinforcement Learning

  • 📫 Feel free to reach out if you’re interested in collaboration or have internship opportunities!

Connect with me:

felipe-espinosa13

Languages and Tools:

arduino git linux pandas python pytorch scikit_learn seaborn tensorflow

 pipe1213

pipe1213

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  1. BayesianML-project BayesianML-project Public

    Forked from jlopetegui98/BayesianML-project

    Implementation of the final project for BayesianML course

    Jupyter Notebook

  2. Creation-of-a-synthetic-dataset-for-French-NER-in-clinical-trial-texts Creation-of-a-synthetic-dataset-for-French-NER-in-clinical-trial-texts Public

    Forked from jlopetegui98/Creation-of-a-synthetic-dataset-for-French-NER-in-clinical-trial-texts

    Final project of Hands-On NLP course at Université Paris-Saclay M1-AI

    Jupyter Notebook

  3. VITS_Tutorial VITS_Tutorial Public

    Forked from jaywalnut310/vits

    This repo explain how to train VITS (Conditional Variational Autoencoder with Adversarial Learning) from scracth using your own dataset and use it on inference.

    Python 1