Orchestrate ML Across Edge, Cloud, and Secure Domains
The Enterprise Platform for Collaborative, Federated AI
Continuous training and coordination across edge devices, aggregators, and cloud, without centralizing data.
As AI becomes mission-critical, enterprises require secure, collaborative platforms that operate in complex, distributed environments. Scaleout Edge is built on a secure federated learning core, enabling decentralized model training without sharing raw data, and lays the foundation for future autonomy, AI governance, and secure data collaboration.
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Scaleout Edge In The AI Stack

Scaleout Edge is a platform for operational AI in demanding, distributed environments. It supports AI teams in collaboratively building, deploying, and governing machine learning models across edge, cloud, and secure domains using federated learning.
Scaleout Edge introduces a dedicated Edge-Native ML Layer in the modern enterprise AI architecture.
  • Scaleout Edge introduces a dedicated Edge-Native ML Layer in the modern enterprise AI architecture that enables:
    • Federated learning and distributed machine learning capabilities
    • Orchestration and coordination for the entire ML lifecycle
    • Secure AI operations across distributed and mission-critical environments
  • This layer bridges the gap between traditional model development and deployment, enabling enterprises to operationalize AI at the edge with robust governance and security.

Key Capabilities

Scaleout Edge delivers essential capabilities for managing the entire ML lifecycle across distributed edge environments. Each feature addresses the unique challenges of edge AI deployment, ensuring reliability, security, and performance.
Scaleout Edge AI User Interface
  • Federated Learning: Federated Learning is our private, privacy-first method for collaborative model training across edge devices, no data movement required.
  • Telemetry: Real-time visibility into model performance and health across all connected devices.
  • Secure Model Propagation: Safely deploy, update, and personalize models in the field without compromising data privacy.
  • Centralized Orchestration: Manage and automate the full ML lifecycle from a single, secure control plane.

Architecture & Components

The Scaleout Edge architecture overview.
Architecture
  • Control Layer (Tier 1: cloud, near edge) with global controller managing service discovery and model storage through S3;
  • Model Layer (Tier 1-2: cloud, near edge, far edge) with combiners handling model aggregation and optional reducers; and
  • Client Layer (Tier 2-3: near edge, far edge, device edge) with geographically distributed clients.
Components
  • SDK (Open): Integrate with your existing data pipelines and ML workflows using our open SDK.
  • Orchestration Backend (Licensed): Provides centralized management, automation, and monitoring of distributed models.
  • UI Tools (Optional): Visualize deployments, monitor metrics, and streamline collaboration through intuitive interfaces.

Deployment, Integration & Scalability

Logos of deployment options and integrations.
  • Deployment options: On-premises, private cloud, public cloud, and hybrid environments supported.
  • Integrations: Compatible with MLflow, TensorFlow, PyTorch, Kubernetes, and major CI/CD tools.
  • APIs: RESTful APIs and SDKs for custom integration into existing ML pipelines.
  • Scalability: Supports from a few to thousands of edge devices; hybrid edge-cloud deployments supported.

Edge AI Across Industries

Purpose-built federated learning solutions for sectors with unique edge computing challenges

Automotive and the vehicle industry
Automotive/Vehicle Industry
Enable fleet learning across distributed vehicles for improved perception, predictive maintenance, and autonomous capabilities, while preserving data privacy.
Defense and security sector
Security & Defense Sector
Deploy robust AI in bandwidth-constrained, high-security environments. Train models across organizational boundaries without compromising sensitive data.
Industrial and IoT
Industrial IoT & Automation
Transform operations with real-time inference at the edge. Improve efficiency and quality control by leveraging machine learning across distributed sensors and equipment.

Case Studies

Overview of the federated learning based ISTAR system

FEDAIR

Scaleout's FEDAIR project for NATO's DIANA programme enables secure, decentralized ML model updates in conflict zones, allowing adaptation without compromising sensitive data.
Machine learning for cybersecurity in vehicles.

SCANIA

This project develops advanced, architecture-aware machine learning systems for onboard intrusion detection in connected vehicle networks, using federated learning to enhance cybersecurity.

Get started

Sign up for a free trial, or request a demo. The quickstart tutorial and API reference is available in our documentation, and visit GitHub for more details about the SDK.

Getting Access

The best way for data scientists and ML professionals to get started is by registering for a free personal account and starting with the Getting Started tutorial. It takes approximately 30 minutes to complete.
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Request Demo

Share your edge AI challenges with our engineering team to explore federated learning solutions. A technical team member will contact you to discuss your specific requirements and implementation options.
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Collaborations & Partnerships

We support diverse federated learning initiatives with partners including SAAB, the Swedish Defence Materiel Administration (FMV), NATO DIANA, Scania, Eurocontrol, and other leading organizations.

Collaborations and partnership logos.