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sofiebudman/README.md

Typing SVG

πŸ‘§ About Me

High school student passionate about machine learning and biology.

πŸ‘©β€πŸ’» Skills

  • Languages: Python, Java, R, Javascript, HTML, CSS
  • Tools: Git, LINUX

πŸ’» Projects

We present a unified, multilingual AI framework for dysarthria, a speech disorder linked with neurological diseases. Our system implements detection, severity classification, speech restoration, automatic speech recognition, emotion recognition, and voice cloning in one pipeline. Achieving up to 97% accuracy across English, Russian, and German, the project demonstrates strong cross-lingual generalization and transfer learning, enabling accessible diagnosis and removing communication barriers.

Research Paper | Poster Presentation

Various Machine Learning Notebooks created during the MIT Beaverworks Summer Institute including, Time Series Signal Processing for Sleep State detection, Random Forest Detection of Hyperthyroidism, and Breast Cancer detection with Convolutional Neural Networks.

This project is a Java-based graphical simulation that models the spread of a custom-designed virus within a population. Using an interactive GUI, users can visualize how infections propagate over time based on configurable parameters such as infection rate, recovery rate, and population behavior.

An online foosball game created using Javascript, HTML, CSS, and the Pixi JS library through the More Active Girls in Computing Internship

πŸ‘©β€πŸ”¬ Research

This project applies machine learning techniques to predict Matrix Attachment Regions in the human genome. Presented at the Southern California Conference for Undergraduate Research (SCCUR), this work demonstrates how computational approaches can enhance biological research.

Exploring the function and significance of Transmembrane Protein 62 (TMEM62) using biological databases and computational tools. This project analyzes gene expression, protein structure, and evolutionary conservation through resources like NCBI, UniProt, and Ensembl to uncover potential roles in cellular processes and disease mechanisms.

πŸ“ˆ GitHub Stats

Sofie's GitHub stats Github Languages

πŸ“« Connect with Me

Projects

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  1. AP_CS_Final AP_CS_Final Public

    Java 2

  2. Dysarthria_App Dysarthria_App Public

    HTML

  3. ML_Notebooks ML_Notebooks Public

    Machine Learning Notebooks Created from Inspirit AI Program (2023)

    Jupyter Notebook

  4. Beaverworks Beaverworks Public

    Exercises and Projects for MIT Beaver works Summer Institute

    Jupyter Notebook