LATEST IN THE NEWS

April 7, 2026

Vellex Exhibits Highly Efficient AI Training at National Laboratory of the Rockies

Vedant Wakchaware
Vellex Computing was selected to pitch at the 2026 Industry Growth Forum in Denver, presenting its vision for the next generation of AI to investors and corporate leaders. Co-founders Dr. Palak Jain and Jason showcased Vellex’s highly efficient, physics-based computing architecture that enables true self-learning intelligence.
Read Vellex News
Vellex Logo Small
November 20, 2025

Vellex Showcases Analog Intelligence at Tough Tech Week Demo Day in Boston

Meghesh Saini
Vellex Computing participated in Tough Tech Week 2025 Demo Day in Cambridge, showcasing its Analog Intelligence Platform to investors and deep-tech leaders. CEO Palak Jain presented Vellex’s low-power, high-speed analog AI capabilities and engaged with partners across the tough-tech ecosystem.
Read Vellex News
Vellex Logo Small
September 16, 2025

Vellex awarded Competitive Grant from the U.S. National Science Foundation

Meghesh Saini
We are proud to announce that we have been awarded the highly competitive National Science Foundation (NSF) Small Business Innovation Research (SBIR) Phase I grant. This milestone marks a significant recognition of our pioneering work in developing physics-inspired computing solutions that transform the way complex control and optimization problems are solved.
Read Vellex News
Vellex Logo Small

OUR BLOGS

April 30, 2026

A Detailed Guide to Federated Learning on Edge Devices

Vedant Wakchaware
While on-device training secures user privacy, it unintentionally traps intelligence, forcing every edge device to learn the exact same lessons from scratch. How do we build a collaborative "hive mind" without exposing raw data to the cloud? The answer is Federated Learning. This comprehensive guide explores the decentralized paradigm of bringing the model to the data, detailing how devices evolve together by sharing abstract mathematical updates. Dive into the 5-step federated architecture loop and discover how cryptographic shields like Secure Aggregation and Differential Privacy prevent data extraction. Learn how advanced algorithms overcome severe bandwidth constraints and hardware disparities to power the next generation of secure, collective AI.
April 22, 2026

Decoding Weight Updates: How Edge AI Adapts Itself in Real-Time

Vedant Wakchaware
How does a disconnected smartwatch learn your unique music taste offline using just a fraction of the parameters found in massive cloud models? Step inside the mathematical core of on-device training as we decode the micro-weight update. This deep dive breaks down the exact sequence—from the initial Forward Pass and Loss Calculation to local Backpropagation—that enables edge hardware to dynamically adapt its logic in real-time. Discover how this highly targeted learning cleanly bypasses the SRAM memory wall, paving the way for truly autonomous, mathematically private, and incredibly efficient AI across all industries.
April 15, 2026

The Mechanics of On-Device Training: Hardware and Software Optimizations for the Edge

Vedant Wakchaware
Move beyond static AI inference. This comprehensive guide explores the mechanics of continuous on-device AI training, detailing how developers overcome severe hardware and memory bottlenecks. Discover how advanced software optimizations like sparse representations, layer-wise training, and federated learning allow edge devices to adapt, evolve, and learn locally in real-time, completely untethered from the cloud and without compromising user privacy.

OUR PUBLICATIONS

December, 2024

A hybrid-computing solution to nonlinear optimization problems

Kamlesh Sawant; Dillon Nguyen; Alex Liu; Jason Poon; Sairaj Dhople
Published in IEEE Transactions on Circuits and Systems I - Regular Papers, vol. 71, no. 12, pp. 6555-6568, Dec. 2024
May, 2022

Real-time selective harmonic minimization using a hybrid analog/digital computing method

Jason Poon; Mohit Sinha; Sairaj V. Dhople; Juan Rivas-Davila
Published in IEEE Transactions on Power Electronics, vol. 37, no. 5, pp. 5078-5088, May 2022
December, 2021

Decentralized Carrier Phase Shifting for Optimal Harmonic Minimization in Asymmetric Parallel-Connected Inverters

Jason Poon; Brian Johnson; Sairaj V. Dhople; Juan Rivas-Davila
Published in IEEE Transactions on Power Electronics ( Volume: 36, Issue: 5, May 2021)