The Sovereign
Edge AI Platform

Machine learning that trains where the data lives. On drones, vehicles, and industrial fleets. Raw data never leaves the device.

BAE Systems SAAB NATO FMV Scania

Winter Demo 2026 | BAE Systems Bofors

Edge AI in the field

Scaleout enabled autonomous drones to learn and operate in contested Arctic environments without central data links.

Edge AI for Autonomous Target Detection (ALMA Demo)

Onboard perception.

Real-time AI model distinguishes multiple target types locally during autonomous search flights.

Mission prioritisation.

Onboard prioritization logic selects targets based on mission requirements and real-time environmental data.

Local autonomy.

Full autonomy without reliance on external processing or continuous radio links for flight path adjustment.

Scaleout Edge Platform

Infrastructure for Decentralized ML

The AI systems that matter most run where data cannot be centralised and networks cannot be trusted. Scaleout Edge manages the complete model lifecycle in those environments — from federated training and versioned deployment to continuous monitoring and retraining.

Scaleout Edge Orchestrator

Federated learning.

Models train on-device. Only encrypted weight updates are shared. Your data stays exactly where it is, enforced by architecture.

Full model provenance.

Every version recorded with its compute package hash and session lineage, creating a complete audit trail across the fleet.

Fleet-wide observability.

Training metrics and hardware telemetry from every node. Visibility where you have no physical access.

Edge infrastructure.

Extends your existing ML stack to handle distributed model training and management across devices.

Tactical CV Network

Computer vision that improves in the field

Static models degrade as environments change and new threats appear. The operational footage that would fix them can't be centralised — classified, bandwidth-constrained, sovereignty-bound. Tactical CV Network closes the loop without moving the data.

Scaleout Ground Node
Scaleout Edge
Label Studio
Training
Connected

recon_drone_001_inference

Source: rtmpConn

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Detection across all scenarios.

Counter-UAS, ISR, and ground surveillance — single platform, unified operational picture.

Continuous on-site retraining.

Models retrain on live sensor data. Raw footage never leaves the site.

Federated network improvement.

Learning aggregates across every node in the network when connectivity allows.

C2 integration out of the box.

Detections flow into ATAK and standard C2 systems via TAK, REST, and MQTT.

Use Cases

One platform. Four operational contexts.

From contested defense environments to regulated industries, a consistent pattern: distributed data that cannot move and AI that must keep improving.

Tactical Edge

Autonomous Intelligence in Denied Environments

Drones, unmanned systems, and forward-deployed sensors operating in contested or bandwidth-denied environments.

  • On-device training directly on sensor streams.
  • Sensitive raw data never crosses classification boundaries.
NATO DIANA BAE Systems Bofors FMV
Autonomous Transport

Fleet-Wide Learning Without Bottlenecks

Thousands of vehicles generating terabytes of telemetry daily — too much to centralize, too valuable to ignore.

  • Build collective fleet intelligence without exposing individual routes.
  • Compressed weight updates transmit instead of raw telemetry.
Traton / Scania BMW
Sovereign Data

Rugged Intelligence for Industrial Frontlines

Remote mines, railways, and energy infrastructure where data sovereignty is a legal requirement.

  • Predictive maintenance trained on site-local sensor streams.
  • Federation syncs improvements across dispersed sites.
Oracle Roving Edge Akkodis
Cross-Jurisdictional

Federated Intelligence Without Data Exchange

High-value datasets in government and healthcare siloed by privacy law and classification.

  • GDPR and HIPAA compliance enforced architecturally.
  • No party sees another's raw data or proprietary information.
Banks Government Healthcare

Research & Insights

Technical publications and perspectives from the Scaleout team.

Moving beyond detection to full autonomy at the edge

Autonomy is not a single AI model; it is a tightly coupled system of hardware-agnostic modules. Our stack transforms raw visual input into structured mission logic, enabling drones to maintain persistent target memory and execute complex maneuvers in communication-degraded environments.

Sigvard Dackevall

Machine Learning Engineer

Gradient inversion attacks in federated learning

We tested privacy risks against production-grade vision models like YOLO and ViT. In realistic settings, meaningful image reconstruction often collapses.

Viktor Valadi, Mattias Åkesson, et al.

Deploying AI at the Edge? Discuss your use case with us.