Foundation phase update 🛠️
Last week we demonstrated local Edge AI on the Arduino UNO Q.
This week we're focusing on perception.
We're experimenting with ECG signals, motion sensing, and MQTT-based data pipelines to help ARMIC better understand patient activity during rehabilitation sessions.
The goal isn't just automation.
It's building systems that can observe, understand, and eventually adapt in real time.
We also documented the architectural transition behind ARMIC and why local Edge AI changes everything for rehabilitation robotics:
https://t.co/haZMRxcSuu
Foundation phase update 🛠️
We’ve started validating the Edge AI architecture behind ARMIC using the Arduino UNO Q + local SmolLM2 inference.
Current setup:
→ llama.cpp running locally
→ MCU + MPU synchronization
→ Local WebUI
→ Real-time peripheral coordination
→ On-device AI execution
This is one of the first steps toward an autonomous rehabilitation system capable of real-time robotic interaction directly at the edge.
Walkthrough below 🤖
One of the main reasons we migrated from the ESP32 to the Arduino UNO Q was the need to keep both AI inference and hardware coordination on the same edge device.
Instead of relying on cloud execution, the goal is to enable:
• local inference
• real-time motor control
• synchronized MCU + MPU operation
• adaptive robotic interaction
This shifts ARMIC from rigid automation toward autonomous rehabilitation systems driven directly at the edge.
From onchain → to real hardware.
Used part of the project fees to start expanding the physical AI side of ARMIC.
Arduino setup just arrived.
Robotic arm next.
We’re interested in building systems that don’t just exist on charts, but interact with the real world 🤖
The project has grown, the market has spoken so we have to deliver now.
- Will be updating more than Bi-weekly.
- Documenting everything
- All open-source
In addition to this Blue checkmark ✅️
We didn’t win.
We’re still building.
The fees from $ARMIC are going into hardware, platform development, and open-sourcing the system.
We’ll also enable DEX liquidity so it becomes a community token.
3-month roadmap. Biweekly updates.
This doesn’t stop here.
@SmartyCrypto195@flypraxis@EasyA_Kickstart That was never the focus, nor the intention, nor the thesis for the project. Tg was heavily spammed by scammers, and from the beginning we communicated what the project was all about. But to each his own.
Thesis on Armic (@projectarmic):
@projectarmic is a legitimate early-stage DeSci project building autonomous AI agents for patient recovery — AI that tracks, adapts, verifies, and rewards rehab progress, paired with robotic execution and on-chain incentives.
The team is fully doxxed: biomedical engineers Luis Eduardo Arevalo Oliver (@EddOliver_), Alejandro Sanchez Gutierrez, and Victor Alonso Altamirano Izquierdo (@outlay_pay), with real experience in healthcare hardware, IoT, AI agents, and Web3 systems (prior hackathon work and roles at Blank!t).
Launched transparently on Solana via @EasyA_Kickstart (in collaboration with @dom_kwok and @kwok_phil), with immediate supply locking via @Streamflow_Fi, fee allocation for hardware/open-sourcing, and a focus on real builds over hype.
In a $30B+ rehab market crippled by poor adherence, this combination of AI autonomy, robotics, and tokenized incentives has genuine product-market fit potential. High execution risk (still pre-product), but the doxxed builder team, on-chain transparency, and narrative alignment (AI agents + health + DeSci) make it one of the more credible micro-funding experiments in the space right now.
Just for transparency, the money for fees WILL be used to improve the project and Open Source it. In term of better hardware, documentation and partnership with hardware companies. This is a purely DeSci and micro-funding initiative, of course inspired by @EasyA_Kickstart
Quiet before results.
We didn’t spend this time optimizing optics.
We built the next layer:
→ agents
→ Solana integration
→ real flows
Outcome is one checkpoint.
We’re playing a longer game.
Still hoping for the best 😁 @EasyA_Kickstart