LATEST IN THE NEWS

April 22, 2025

Vellex Computing Exhibits at San Francisco Climate Week Deep Tech Expo

Vellex Computing exhibited its analog computing technology at the "Live From the Future! A Deep Tech Investor Expo" during San Francisco Climate Week, a showcase co-hosted by Activate, The Engine Ventures, and Breakthrough Energy Fellows.
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November 14, 2024

Vellex Computing Co-Founder Named 2024-2026 Mária Telkes Fellow

Dr. Palak Jain, CEO and co-founder of Vellex Computing, was named one of seven fellows in the 2024-2026 Mária Telkes Fellowship cohort, a program run jointly by the Cleantech Leaders Roundtable and the Clean Energy Business Network to advance underrepresented cleantech professionals into executive leadership.
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May 29, 2024

Vellex Computing Graduates from Creative Destruction Lab

Vellex Computing graduated from the Creative Destruction Lab (CDL) program at CDL Vancouver, completing four sessions with a network of entrepreneurs, investors, and mentors to advance its analog computing technology toward commercialization.
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OUR BLOGS

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.
April 7, 2026

Inference vs. On-Device Training: Making Your Devices Smarter, Not Static

Vedant Wakchaware
Today's smart devices and edge devices are constrained by static inference models that cannot adapt to changing real-world conditions, leading to intelligence decay. On-device training overcomes traditional power and memory barriers, enabling continuous, ultra-low-power learning directly on battery-constrained hardware. By eliminating energy-heavy cloud transmissions, localized training enables hyper-personalized, secure, and self-healing AI, creating a foundation for truly autonomous and adaptive edge devices.

OUR PUBLICATIONS

April, 2026

Automated Synthesis of Hardware-implementable Analog Circuits for Constrained Optimization

Sachin Khoja; Kamlesh Sawant; Palak Jain; Sairaj Dhople; Jason Poon
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