Skip to content
View alxmares's full-sized avatar
Block or Report

Block or report alxmares

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Please don't include any personal information such as legal names or email addresses. Maximum 100 characters, markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
alxmares/README.md

👨‍💻 About Me

I am an Electronic Instrumentation Engineer currently pursuing a Master's degree in Computing and Electronic Engineering. My expertise spans across Data Science, Machine Learning, and Artificial Intelligence, with a particular focus on digital signal processing (DSP) and emotion recognition from speech.

Key Skills and Experience:

  • Machine Learning: Solid foundations in various ML techniques including regression, classification, clustering, and deep learning models such as CNNs, RNNs, Transfer Learning & Fine Tuning.

  • Digital Signal Processing: Extensive experience in DSP applications, particularly in voice processing and speech emotion recognition.

  • Advanced Techniques: Proficiency in tools like Wav2vec2, eGeMAPS, HuBERT, Whisper for advanced speech recognition and processing.

  • Big Data Technologies: Familiar with Apache Spark, Databricks and IBM Watson.

  • Database Management: Experienced in managing databases with MongoDB, MySQL, and SQL.

  • Computer Vision: Knowledgeable in using opencv, ML algorithms and YOLO for various applications. Skilled in using LabelStudio for Data Annotation

  • Dashboards: Strong knowledge in Power BI and creating dashboards with Python.

  • 📫 How to reach me: Linkedin Badge


Machine Learning

Machine Learning GIF
  • Knowledge Base:

    • Basic Concepts: Regression, Random Forests, SVM, K-means, KNN, ensemble methods, perceptrons, dimensionality reduction, MLP, CNN (1D, 2D, 3D), RNN, etc.
    • Advanced Topics: Transfer learning, active learning, ensemble methods, self-labeling, hybrid networks, non-linear models, GANs, autoencoders.
  • Applications:

    • DSP (Imaging and Audio processing), speech emotion recognition, classification, resonant magnetic imaging (fMRI), regression, prediction, dashboards.
  • Tools and Libraries:

    • Pytorch, TensorFlow, Scikit-learn, PIL, OpenCV, Dash, MATLAB and more.

Data Visualization

Data Visualization GIF
  • Tools and Libraries:
    • Extensive experience with dashboards, matplotlib, seaborn, plotly, folium, and more.
    • Strong knowledge in Power BI.

Computer Vision

Computer Vision GIF
  • Technologies and Tools: YOLO, Google DeepDream, LabelStudio, and other advanced computer vision techniques.

🛠️ Languages and Tools

Python  C  Matlab  Apache Spark  FastAPI  Visual Studio  MySQL  MongoDB  Git  OpenCV  Jupyter  Kaggle  TensorFlow  PyTorch  ScikitLearn  Raspberry Pi 

Pinned Loading

  1. Mexican-Emo-Recognition Mexican-Emo-Recognition Public

    Speech and Text Emotion Recognition in Mexican Spanish with MESD, Whisper and Pysentimiento.

    Jupyter Notebook 2

  2. AutoRiesgoPsicosocial-NOM35 AutoRiesgoPsicosocial-NOM35 Public

    Aplicación integral para la NOM-35. Automatización y Análisis del Riesgo Psicosocial en trabajadores.

    Python

  3. ter_pysentimiento ter_pysentimiento Public

    TER system focused to Spanish with multilanguage speech-to-text

    Python 1

  4. pid_python pid_python Public

    PID Temperature Control System with real-time graphs in Python

    C++

  5. SentimentSurveyor SentimentSurveyor Public

    Emotion and Statistic Analyzer for Surveys

    Python

  6. webscraping-MercadoLibre webscraping-MercadoLibre Public

    Web scraping tool for extract important data and save images from Mercado Libre.

    Python