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| title: embodied-efficiency | |
| emoji: "🤖" | |
| colorFrom: indigo | |
| colorTo: blue | |
| sdk: docker | |
| app_port: 7860 | |
| pinned: true | |
| short_description: Deploy console for VLAs, compiler + safety supervisor | |
| # embodied-efficiency, the deploy console | |
| An interactive console for getting a vision-language-action (VLA) model onto the robot and keeping it safe once it's there. Two pillars, one page, no API key and no GPU needed. | |
| - **Deploy-compiler.** Set a latency and footprint budget and it picks the best config off a Pareto frontier measured on a real L4, redrawing the frontier live as you move a slider. Action-chunking, precision, and flow steps are the levers; latency was measured on hardware, footprint and fidelity compute anywhere. | |
| - **Safety supervisor.** Throw an action at the runtime trust layer (a clean one, a NaN, one out of joint limits, one that's drifted far from anything calibrated) and watch it pass the good ones and hold a safe fallback for the rest. This runs the actual `supervisor.py` from the repo, and the intervention log is a real running governance trail. | |
| Built with FastAPI + Jinja2 + htmx and a vendored, offline Tailwind build, so the whole thing is one small container with no build step and no network calls. | |
| Code and the full write-up: [github.com/LaelaZorana/embodied-efficiency](https://github.com/LaelaZorana/embodied-efficiency) | |