DARPADefense Advanced Research
Intel LabsAdvanced Architecture Group
Human Brain ProjectEU Flagship Initiative
SynSenseNeuromorphic Engineering
MIT CSAILComputer Science & AI Lab
IBM ResearchNeuromorphic Division
DARPADefense Advanced Research
Intel LabsAdvanced Architecture Group
Human Brain ProjectEU Flagship Initiative
SynSenseNeuromorphic Engineering
MIT CSAILComputer Science & AI Lab
IBM ResearchNeuromorphic Division
Synapse Neuromorphic Systems · Est. 2021

Hardware That Thinks
Like Tissue.

Silicon spiking neural networks · 0.8 mW inference · Biological-scale plasticity

Live Spike Raster · 512 Neurons
Time →
Real-time
SN-7 Flagship Chip
25 × 25 × 2 Core Array
Scroll to review data
Verified · Feb 2026
Power Consumption — Inference Workload
GPU ~93 mWSNN 0.8 mW
IDLEPEAK LOAD
Inference Latency — ms
Cloud GPU
48ms
Edge GPU
22ms
Edge CPU
67ms
Synapse SNN
3.2ms
3.2ms
Inference latency
0.8mW
Peak power draw
116×
Power vs GPU
Technical Assessment · SN-7 Architecture

The Von Neumann bottleneck imposes a 14× energy overhead at the edge. Every inference cycle on a conventional GPU requires data to travel the memory bus repeatedly — a structural inefficiency that compounds under continuous workloads.

The SN-7 eliminates this by co-locating memory and computation within each synaptic core. Spike-timing-dependent plasticity (STDP) runs natively in silicon: weights update in 0.4 µs without host intervention.

Benchmark results across 12 edge inference tasks show a median latency of 3.2 ms at 0.8 mW — against 48 ms at 93 mW for the nearest cloud-GPU baseline. The delta holds across gesture recognition, SLAM localization, and spike-based object detection.

On-device learning without cloud round-trips. Autonomous systems that adapt to new environments in under 200 ms. Hardware that speaks the same event-driven language as the models running on it.

Benchmarks reproducible via IEEE JETCAS submission #2025-1142
Signal Propagation · SN-7 Core Array

A single spike traverses 7 synaptic layers in 1.96 ms

Robotics · Edge Inference
Primary

Perception without the power budget.

Prototype edge inference on manipulators and mobile platforms where battery life is non-negotiable. SN-7 runs gesture classification, optical flow, and depth estimation simultaneously at under 2 mW total.

3.2 ms gesture recognition
SLAM on 512-neuron array
No cloud dependency
Defense · Autonomous Systems

Low-power autonomy at the tactical edge.

DARPA-validated for denied-environment operation. No RF signature from cloud round-trips. On-device learning adapts to new threat signatures in under 200 ms.

ITAR-compliant deployment available
Computational Neuroscience

Hardware that speaks your model's language.

Run NEST-compatible SNN models directly on silicon. Biological spike timing, STDP, and homeostatic plasticity — no translation layer.

NEST · Brian2 · PyNN compatible

Deploy your SNN on real
neuromorphic silicon.

Our cloud sandbox gives researchers direct access to SN-7 hardware. Deploy small spiking neural network models, measure real power draw, verify your latency numbers against our published benchmarks.

1,024neurons per free session
60scontinuous simulation window
<2minprovisioning time
Benchmark Report

Full technical comparison: power, latency, spike-timing accuracy, and STDP learning curves across 12 workload categories.

Request Simulation Access

Free tier: 1,024 neurons · 60s session · No credit card required

"The brain uses 20 watts to run everything you've ever thought.
We're building the silicon that earns that comparison."

Dr. Arjun Mehta · Founder & Chief Architect · Synapse Labs