Skip to content

VelOptix AI Research Lab is an independent, solo-run research unit focused on building next-generation machine learning optimizers that are efficient, adaptive, and deployment-ready. Founded in 2025, VelOptix bridges theory and engineering to advance optimization in real-world AI systems.

Notifications You must be signed in to change notification settings

VelOptix/.github

Folders and files

NameName
Last commit message
Last commit date

Latest commit

Β 

History

2 Commits
Β 
Β 

Repository files navigation

🧠 VelOptix AI Research Lab

VelOptix is an independent AI research lab founded and run by a solo researcher, focused on building intelligent, ultra-efficient optimizers for real-world machine learning systems.

We aim to solve critical challenges in deep learning optimization β€” from convergence instability and hardware inefficiency to non-stationary data and deployment constraints.


🎯 Mission

To redefine the foundations of AI optimization through efficient, adaptive, and accessible solutions that work across platforms and scales β€” from large-scale servers to mobile edge devices.


πŸ” Focus Areas

  • Meta-learning & adaptive optimizers
  • On-device & low-resource optimization
  • Robust optimization for data drift and domain shift
  • Optimizers for Transformers, RL, and vision models
  • Gradient-free, fairness-aware, and explainable training strategies

πŸš€ Projects

  • πŸŒ€ VelOptix Optimizer – Lightweight, hardware-aware optimizer
  • πŸ“Š Benchmarks Suite – Real-world ML task performance comparisons
  • πŸ“ Research Papers – Open science and reproducible research
  • βš™οΈ Deployment Tools – ONNX/TFLite export-ready models

🌍 Contact

β€œOptimizing intelligence. Independently.”

About

VelOptix AI Research Lab is an independent, solo-run research unit focused on building next-generation machine learning optimizers that are efficient, adaptive, and deployment-ready. Founded in 2025, VelOptix bridges theory and engineering to advance optimization in real-world AI systems.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published