Abdelaziz Zayed

Teaching Assistant at McGill University

Canada
email-iconphone-icongithub-logolinkedin-logotwitter-logostackoverflow-logofacebook-logo
Join Prog.AI to see contacts
email-iconphone-icongithub-logolinkedin-logotwitter-logostackoverflow-logofacebook-logo
Join Prog.AI to see contacts

Summary

🤩
Rockstar
🎓
Top School
Abdelaziz Zayed is a software engineer and teaching assistant at McGill University with seven years of experience spanning compilers, machine learning, and production engineering. He researches domain-agnostic compiler optimizations and presented work on optimizing MLIR programs with equality saturation at CGO 2025, while also TA-ing a Compiler Design course where students build a C-subset compiler from scratch. His internships at Amazon, AWS (contributing to the popular Deep Java Library), NVIDIA, and Morgan Stanley reflect hands-on impact in ML model deployment, deep-learning frameworks, and compute-graph engineering. Abdelaziz combines strong theoretical grounding in programming languages with practical systems work—implementing PyTorch/TensorFlow operators and demos for generative models—and a passion for math and teaching that informs both research and developer-focused contributions.
code7 years of coding experience
job3 years of employment as a software developer
bookMaster of Science - MS, Compilers and Programming Languages, Master of Science - MS, Compilers and Programming Languages at McGill University
languagesEnglish, French
github-logo-circle

Github Skills (10)

javas10
pytorch10
machine-learning10
deep-learning10
tensorflow10
ndarray10
ai10
java10
image-generation9
computer-vision9

Programming languages (5)

JavaRustLLVMJavaScriptJupyter Notebook

Github contributions (5)

github-logo-circle
deepjavalibrary/djl

May 2021 - Aug 2021

An Engine-Agnostic Deep Learning Framework in Java
Role in this project:
userML Engineer
Contributions:7 reviews, 17 commits, 23 PRs in 3 months
Contributions summary:Abdelaziz primarily contributed to adding and improving deep learning operations within the DJL framework, specifically focusing on PyTorch and TensorFlow integrations. Their work included implementing the `truncatedNormal` and `oneHot` operators for TensorFlow and PyTorch, respectively, alongside bug fixes and integration tests. Further contributions involve the addition of a BigGAN demo with clean-up and documentation improvements, and a super-resolution demo for TensorFlow. This indicates a focus on expanding the framework's capabilities related to image generation and enhancement.
pytorchmxnetcaffe2deep-learningagnostic
AzizZayed/Simple-Pong

Jun 2019 - Apr 2020

Contributions:13 commits, 11 pushes, 1 branch in 10 months
Find and Hire Top DevelopersWe’ve analyzed the programming source code of over 60 million software developers on GitHub and scored them by 50,000 skills. Sign-up on Prog,AI to search for software developers.
Request Free Trial
Abdelaziz Zayed - Teaching Assistant at McGill University