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Astolfo2332/README.md

Miguel

Summary

As a Bioengineering, I am passionate about data analyst and Python development with expertise in using Python libraries such as Pandas, Scikit-Learn, Numpy and SciPy for data analysis and machine learning. Proficient in programming microcontrollers using C and C++, and experienced in web development with JavaScript, Node.js, Docker, and React.

Skills

  • Python
    • Pandas, Scikit-Learn, SciPy, Scikit-Learn, Numpy, Tensorflow, Pytorch.
  • Data Analysis
  • Machine Learning
  • C and C++ Programming
  • Microcontroller Programming
  • JavaScript
    • React and Vue
  • Docker
  • AWS in python aplications certificate
  • Google cloud basic infraestructure and GKE certificate

Education

Bioengineer | University of Antioquia | Medellín, Antioquia | September, 2024

  • Relevant Coursework: Biomedical Signal Processing, Biomaterials, Machine Learning.

Master in Artificial Intelligence | International University of Valencia | Present

Projects

Data Analyst | H&M project

  • Conduct data preprocessing, analysis, and visualization using Python, Pandas and SciPy.
  • Develop and implement machine learning models to extract insights from data.

Microcontroller-controlled Biomedical Device | Infusion pump

  • Programmed a microcontroller using C++ to regulate and monitor a medical device.
  • Integrated sensors and actuators to ensure accurate functionality, demonstrating the application of programming in the medical field.

Web App for Deaf Users | Docker deployment

  • Developed a web application using Node.js and React to assist deaf individuals in understanding technical words in engineering using sign language.
  • Utilized JavaScript to create interactive visualizations and provided easy and interactive access to videos and definitions.
  • Deployed as a Docker Flask service to ensure seamless accessibility and availability.

FMRI Task Images Pre and Post-Processing Pipeline with FSL and BIDS | Docker Pipeline

  • Designed and implemented a comprehensive pipeline for pre-processing and post-processing functional magnetic resonance imaging (fMRI) task images using the FSL (FMRIB Software Library) toolkit and adhering to the BIDS (Brain Imaging Data Structure) standard.
  • Utilized Python alongside FSL to perform data cleaning, normalization, and quality control, ensuring robust data for subsequent analysis.
  • Implemented BIDS organization to enhance data management and reproducibility across different studies.
  • Developed custom algorithms for noise reduction and artifact removal, enhancing the accuracy of subsequent analysis.
  • Containerized the pipeline using Docker to facilitate consistent and reproducible execution across different environments.
  • Documented the pipeline thoroughly and collaborated with the research team to ensure its effective integration into the analysis workflow.

Experience

Bioengenier Research Assistant | Nutraceutika SAS | Itagui, Antioquia | 10/2020 - 7/2024

  • Assist in experiments and data collection for ongoing research projects.
  • Apply Python for data preprocessing and assist in analyzing biological data.
  • Contribute to team efforts in understanding complex enzymatic processes.

AI Engineer | Nisum - BCI Bank | Remote | 10/2024 - Present

Languages

  • English (C1)
  • Spanish (Native)

Pinned Loading

  1. Respiratory_Difference Respiratory_Difference Public

    This project analyzes a respiratory dataset to determine if there are statistically significant differences between patients with wheezing, crackles and healthy individuals

    Jupyter Notebook

  2. ICFES_pro_prediction ICFES_pro_prediction Public

    Jupyter Notebook

  3. HyM_prediction HyM_prediction Public

    Al parecer al viejo Random Forest nada le gana, ni el mismo

    Jupyter Notebook

  4. parkinson_diff parkinson_diff Public

    This project uses transfer learning techniques to classify patients with Parkinson's disease based compresing 3D images into 2D using CCNs and leveraging pre-trained convolutional neural networks (…

    Jupyter Notebook

  5. automaton_1 automaton_1 Public

    Jupyter Notebook

  6. white_paper_LoRa white_paper_LoRa Public

    Jupyter Notebook