AI-Native Edge Intelligence
TinyLLMs distills large-model intelligence into small language models that run on local hardware — offline, in milliseconds, fully under your control.
Research & engineering from
What we do
Compress frontier reasoning from 70B+ teacher models into 1–7B models — without losing the reasoning.
Run on local hardware with no cloud dependency, no network, and no data leaving the device.
Agentic systems for mission-critical, offline environments where latency and reliability are non-negotiable.
TinyLLMs in numbers
active parameters
edge inference latency
minimum hardware footprint
offline & air-gapped
Solutions
On-vehicle agents for traffic preemption, dynamic routing, and dispatcher intent — running locally when responders hit dead zones.
Reasoning copilots for remote sites, factory floors, and contested connectivity — where uptime can't depend on a network.
On-device intelligence for regulated data that must never leave the hardware it lives on.
Platform
A single pipeline takes a frontier model and lands it, intact, on hardware with as little as 4 GB of memory.
Teacher models trained on H100/A100 clusters with reinforcement learning for spatial and persona reasoning.
Knowledge distillation, quantization, and pruning shrink the model to edge size while preserving reasoning.
Autonomous logic and routing execute locally — zero cloud latency, zero network dependency.
Transfer behavior from 70B+ teachers into sub-3B students.
INT8/INT4 weights — less memory, faster edge compute.
Drop non-critical connections to enforce sparsity.
Freeze the base; train tiny rank-decomposition adapters.
Company
Two engineers who build across the full stack — from training to edge deployment — and share everything in between.
Co-Founder
Works across the full stack — RL training, distillation pipelines, and on-device deployment. Research in reward modeling and policy optimization.
LinkedIn
Co-Founder
Works across the full stack — quantization, inference runtime, and training infrastructure. Research in edge computing and NLP.
LinkedIn