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.
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.
- 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
- π VelOptix Optimizer β Lightweight, hardware-aware optimizer
- π Benchmarks Suite β Real-world ML task performance comparisons
- π Research Papers β Open science and reproducible research
- βοΈ Deployment Tools β ONNX/TFLite export-ready models
- π§ Email: Mosh2eb@gmail.com
- π Website: Coming soon
- π GitHub: github.com/VelOptix
βOptimizing intelligence. Independently.β