June 19, 2026

On-Device AI Training: Why Deployed AI Models Need to Keep Learning

An AI model is trained on a dataset that captures the world at a single point in time. The physical systems running those models, drones, satellites, humanoid robots, operate in environments that keep changing. A model trained months ago in a data center on data that no longer reflects the field conditions it encounters will degrade over time. Engineers call this model drift. In safety-critical applications, it is a real and growing problem.

The traditional fix is a cloud retraining loop: collect field data, upload it, retrain centrally, push a new model back to the device. In practice, this can take days, requires dedicated engineering overhead, and depends on a reliable internet connection that most field-deployed systems do not have.

On-device AI training addresses this directly: give the device itself the ability to learn continuously, adapting in real time with no connectivity required.

What is on-device AI training, and why is it hard?

On-device AI training is the process of updating a neural network's parameters directly on the hardware where the model is deployed, without sending data to a cloud server. It is distinct from on-device inference, which runs a trained model to make predictions; training is significantly more computationally demanding than inference.

Three constraints make it genuinely difficult on edge hardware.

1) Power :- The standard optimizers used in AI training are designed to run on digital chips and involve heavy data movement between compute cores and memory. NVIDIA's H100 SXM GPU draws up to 700W during training workloads. Edge devices operate in the milliwatt-to-watt range. Running a conventional training loop on a field-deployed device is physically incompatible with battery-powered operation.

2) Memory :- Training requires storing not just the model weights but also the gradients computed during backpropagation, which are often the same size as the model itself. Edge devices typically have kilobytes or megabytes of RAM, not the gigabytes that conventional training pipelines assume.

3) Connectivity :- Cloud retraining shifts the compute burden off-device but introduces its own constraint: a reliable, low-latency connection. For drones, satellites, and remote industrial sensors, that connection is intermittent at best and unavailable at worst.

Together, these three constraints explain why on-device AI training has remained largely out of reach for deployed hardware, despite years of progress in edge inference.

How Vellex Computing is solving this

Vellex has built an analog AI optimization engine. It works by leveraging physical principles like energy minimization that occur naturally in analog circuits, performing mathematical operations that would otherwise require significant digital compute.

Rather than iterating through millions of discrete clock cycles as digital training does, Vellex's hardware settles to a solution through circuit dynamics. The result is real-time AI training at power levels compatible with battery-operated systems, with no cloud dependency.

The practical applications span autonomous robotics, including drones and humanoid systems, satellite systems, and industrial IoT. Drones that adapt their navigation models mid-mission. Satellites that train on-orbit. Humanoid robots and industrial systems that improve incrementally over time rather than degrading between maintenance cycles.

Where is on-device AI training headed?

The operational case for on-device training is already visible in the sectors that need it most. Autonomous drones, satellite platforms, and industrial robots are running AI at the edge today on pre-trained, fixed-weight models. Those models degrade in the field, and cloud retraining is operationally expensive and often impractical in these environments. The missing piece has been hardware capable of running training at the required power levels.

The economics reinforce this. As autonomous systems scale across robotics, satellite operations, and industrial deployments, the cost of maintaining model accuracy through cloud retraining scales with them. On-device training breaks that dependency.

For defense and critical infrastructure, the resilience case is equally direct. A system that can adapt in the field without communicating with a remote server is harder to degrade and more operationally robust. It does not depend on a communication link that can be disrupted.

The hardware to make on-device training practical is arriving now. Systems that can adapt without leaving the field will increasingly be the baseline for autonomous robotics, satellite operations, and industrial deployment.

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August 29, 2025

Types of Optimization for your Business needs

Meghesh Saini
Many enterprises waste millions on IT, logistics, and supply chain inefficiencies due to poor optimization. This blog highlights key optimization problem types-resource allocation, routing, inventory, energy, and financial, and outlines how solving them can cut costs, boost performance, and support sustainability. With modern, data-driven strategies, businesses can significantly reduce waste and enhance resilience. Vellex helps organizations tackle these challenges, delivering measurable savings and competitive advantage through smart optimization.
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Optimization: Challenges and Opportunities

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Optimization powers efficiency, cost savings, and performance across industries. Yet traditional digital methods struggle with scalability, speed, and energy use. As systems grow more complex, new approaches are needed. Physics-inspired and hybrid analog-digital computing offer faster, more sustainable solutions. Vellex is pioneering this frontier with a platform that leverages natural dynamics to solve problems in milliseconds while consuming minimal power. From EV fleets to healthcare scheduling, our solutions enable industries to achieve real-time, scalable, and energy-efficient optimization.
May 6, 2025

Streamlining the Future of Grid Interconnection with AI

Palak Jain, Ph.D.
In the race to a sustainable energy future, the efficient connection of renewable energy sources to the grid is paramount. However, a staggering 90% of interconnection applications are plagued with deficiencies and errors, leading to significant delays and increased costs. At Vellex Computing, we recognized this critical bottleneck and developed a groundbreaking solution: the Interconnection Concierge (IC).