Anna Chau

Machine Learning Engineer & Researcher

Get In Touch

About Me

Anna Chau headshot

I'm a Machine Learning Engineer and Researcher pursuing my Master's in Electrical and Computer Engineering with a focus on Machine Learning and Data Science at the University of Southern California. I earned my Bachelor's in Electrical and Computer Engineering from Temple University in Philadelphia, where I discovered my passion for machine learning during my final years.

With expertise spanning theoretical foundations and practical applications, I specialize in developing innovative solutions that translate cutting-edge research into real-world impact. I'm driven by the challenge of making AI more accessible, efficient, and transformative across diverse domains. As I approach closer to my graduation from USC, I find myself compelled to join in on the emerging impact of AI.

Education

MS in Electrical & Computer Engineering
Machine Learning & Data Science
University of Southern California, Los Angeles, CA
2024 - 2026
GPA: 3.7
BS in Electrical & Computer Engineering
Temple University, Philadelphia, PA
2020- 2024
GPA: 3.63

Experience

2 Years Research
1 Year Industry

Experience

Machine Learning Researcher

Temple University, Computer Fusion Laboratory Aug 2023 — May 2024
Developed computer vision solutions for maritime infrastructure assessment and corrosion detection systems.
  • Optimized a ResNet-based CNN to achieve >92% accuracy in multi-class corrosion severity classification for real-time detection of ship hull images to enhance safety and reliability in maritime operations
  • Maintained an interactive corrosion-detection web application with React front end and Flask/MongoDB backend to streamline image visualization and data management
  • Collected and manually annotated ship hull images under varying environmental conditions to label corrosion regions and severity levels to build a rich supervised training dataset
Python PyTorch React Flask MongoDB

Test Engineering Intern

Vicor Corporation May 2023 — Aug 2023
Conducted comprehensive performance analyses on power conversion systems while contributing to Six Sigma quality improvement initiatives.
  • Collected and analyzed performance data of power units post-production, evaluating voltages, efficiency, load regulation, and thermal performance across varying load conditions
  • Utilized SQL and Excel-based statistical analysis to assess unit compliance with engineering specifications and applied Six Sigma methodologies to identify and quantify variation across multiple production runs
  • Optimized measurement acceptance ranges and test sequence configurations and maintained safety margins while reducing false-reject rates and decreasing average test time by 43 seconds per unit
SQL Excel Six Sigma Data Analysis

Featured Projects

SocialCycle - Mobile Application

Sep 2025 — Present
Developing a cross-platform application (React Native/TypeScript) that centralizes local cycling and running club events into a unified, data-driven calendar accessible on web and mobile applications.
  • Implemented secure OAuth2 integration with the Instagram Graph API to ingest structured and unstructured social data through a compliant data ingestion pipeline built in FastAPI
  • Engineering a scalable backend deployed on AWS (EC2, S3, RDS) with Docker-based microservices and asynchronous workers to handle media ingestion, ML inference, and event-verification workflows
  • Designing ML models utilizing NLP (caption parsing, hashtag analysis) to extract ride details and auto-populate calendar data
React Native TypeScript FastAPI AWS Docker
More about this →

Autism Severity Detection

Aug 2025 — Present
Researching multi-modal learning to predict DSM-5 autism support needs from T1 MRI embeddings with possible genomic variant-level features.
  • Building a reproducible neuroimaging pre-processing pipeline that includes NIfTI I/O, skull-stripping (HD-BET/BET), bias-field correction, MNI152 registration, resampling, and intensity normalization (WhiteStripe/z-score)
Python Neuroimaging Machine Learning
More about this →

Cardiovascular Disease Detection

Aug 2023 — May 2024
Optimized a convolutional neural network to detect the presence of six cardiovascular diseases from raw electrocardiogram (ECG) signals.
  • Raised F1-score from 0.83 to 0.89 to improve diagnostic automation and model generalization
  • Processed and standardized dataset of ~2.3 million ECG traces to normalize scaling variations across 12-lead recordings from heterogeneous ECG machines
  • Investigated feature importance across precordial leads and mitigated multicollinearity in input signals for optimal channel configurations
Python PyTorch Signal Processing
More about this →

Micromouse Autonomous Robot

Feb 2022 — Dec 2022
Built an autonomous maze-solving robot with computer vision and cloud computing capabilities.
  • Tailored the functionality of a robot by managing ROS2 packages designed for three-dimensional movement in Gazebo simulated maze
  • Implemented programs within AWS Cloud server to enable robot to autonomously explore a maze using LiDAR 3D point cloud vision and maze solving algorithms
Python ROS2 AWS Gazebo LiDAR

Photography

Capturing moments and perspectives through my lens.

Click any category to explore the full gallery

Technical Skills

💻

Programming

Python C/C++ Java JavaScript SQL MATLAB
🌐

Web Development

React/ReactNative HTML/CSS
👾

Backend

Django REST FastAPI WebSockets PostgreSQL MySQL Redis MongoDB Snowflake
☁️

DevOps

Docker AWS EC2/S3 Git/Github
🤖

Data & ML

PyTorch TensorFlow NumPy pandas scikit-learn
🚴🏼

Personal Hobbies

Painting Photography Hiking Cycling (Current favorite!)

Let's Connect

I'm always interested in discussing new opportunities, collaborations, or innovative projects in machine learning and AI.

Los Angeles, CA