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Interpretability of Ventilatory Response in Synthetic Airways

Overview

VENT_AI is an exploratory machine learning project focused on analyzing ventilation-related data using AI techniques.
The project was developed as part of an academic and learning-oriented effort to understand how machine learning models can be applied in healthcare-related contexts, particularly ventilation systems.

The repository represents a prototype and experimentation phase, rather than a production-ready system.


Project Objective

The main objectives of this project were to:

  • Explore ventilation-related data from a machine learning perspective
  • Understand how healthcare or sensor data can be processed and modeled
  • Experiment with different ML workflows for analysis and prediction
  • Gain hands-on experience in applying AI techniques to real-world problem domains

Scope of the Project

This project focuses on:

  • Data preprocessing and cleaning
  • Feature exploration and basic analysis
  • Initial model experimentation
  • Observing model behavior and limitations

The emphasis was on learning and experimentation, not on building a finalized deployment solution.


Methodology (High-Level)

The project follows a standard machine learning workflow:

  1. Data loading and inspection
  2. Preprocessing and feature preparation
  3. Initial model selection and training
  4. Basic evaluation and analysis
  5. Iterative experimentation

Exact model configurations may vary depending on experiments conducted during development.


Tech Stack

  • Python
  • Machine learning libraries (e.g., scikit-learn / PyTorch)
  • NumPy
  • Pandas
  • Matplotlib / visualization tools

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Interpretability of Ventilatory Response in Synthetic Airways

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