DGX AI Compute Systems
Vision AI

Lightly.ai Sustainable AI Performance Powered by NVIDIA DGX™

Operational Benefits at Production Scale

Lightly.ai

About the client

Pioneers in AI Technology

AMBER and Lightly: Transforming industries through advanced computing and vision AI

Lightly is the computer vision suite for ML teams building real-world vision systems. Founded in Zurich by ETH and Harvard alumni, Igor Susmelj and Matthias Heller, Lightly provides an end-to-end platform for managing datasets, preparing training data, and training better AI models.

Lightly’s flagship products, LightlyStudio and LightlyTrain, cover the full lifecycle of computer vision development. LightlyStudio supports dataset curation, labeling, quality assurance, visualization, and dataset management in a single workflow. LightlyTrain enables self-supervised pretraining and fine-tuning to improve model performance while significantly reducing labeling effort.

Lightly is a key partner for teams across industries such as agriculture, manufacturing, robotics, retail, and beyond that rely on high-quality computer vision systems in production.

To continue scaling vision workloads sustainably, Lightly sought an infrastructure model that combined high performance, cost control, and a significantly lower carbon footprint.

Challenges

Why Lightly Needed a Cloud Alternative

Balancing performance, cost, and sustainability for large-scale vision AI

Unsustainable Cloud Expenses

As demand for training and experimentation grew, Lightly’s GPU cloud spend climbed into the $17,000–$70,000 per month range, with peak prices reaching $16.10 per GPU-hour. At this scale, variable per-hour billing became a major business risk and limited the scope of experiments the team could justify.

Unpredictable Cloud Performance

Shared cloud instances introduced noisy-neighbor effects, virtualization overhead, and fluctuating throughput. For production-grade computer vision workloads, this meant training jobs could slow down or behave inconsistently, breaking continuous-training pipelines and making it harder to plan releases.

Limited Hardware Access

Gaining access to the latest, high-performance GPUs for long-running workloads was increasingly difficult and expensive. This constrained Lightly’s ability to train larger models, process more complex datasets, and keep up with the performance expectations of enterprise customers in safety-critical domains like autonomous driving.

AMBER`s SolutionFrom Cloud Variance to Predictable Throughput on NVIDIA DGX™

Co-located, renewable-powered, and enterprise-supported

AMBER`s Solution

AMBER`s Solution

From Cloud Variance to Predictable Throughput on NVIDIA DGX™

Co-located, renewable-powered, and enterprise-supported

AMBER worked with Lightly to move from variable cloud instances to a dedicated NVIDIA DGX™ B200 cluster hosted in a Norwegian co-location facility powered by 100% renewable energy. The goal: stable performance, linear costs, and a clear sustainability story. 

Each DGX B200 system provides eight Blackwell GPUs with 192 GB of HBM3e per GPU, enabling larger batch sizes and more complex models without running into memory ceilings. High-speed NVLink and NVSwitch interconnects keep multi-GPU throughput high for both computer vision training and future LLM workloads.

By shifting to self-hosted DGX capacity, Lightly replaces volatile per-hour cloud spend with a predictable operational run rate. AMBER and NVIDIA experts helped design, deploy, and tune the environment so that jobs can be scheduled efficiently and infrastructure stays optimized over time.

The cluster is tightly integrated with Lightly’s existing tooling and data pipelines, and – crucially – it operates in a renewable-powered data center, reducing the carbon footprint of compute-intensive AI workloads while maintaining enterprise-grade reliability.

Reasons for NVIDIA DGX™

  • End-to-end AI platform
  • Blackwell B200 performance
  • Optimized for vision and LLM workloads
  • Renewable-powered co-location
  • Predictable economics
  • Enterprise-grade support
  • Data sovereignty and security

Benefits

Operational Benefits at Production Scale

Lower OpEx, faster training cycles, predictable throughput, sustainable power, and data control.

Predictable
Spend

With self-hosted DGX capacity, Lightly replaces fluctuating cloud pricing with a consistent operational model. Under continuous use, the effective cost drops to around $0.51 per GPU-hour, compared with $2.95–$16.10 per GPU-hour in the cloud, aligning spend directly with utilization instead of spot-market pricing.

Faster Training
Cycles

Jobs start immediately and finish reliably, enabling more frequent retrains and evaluations that line up with product release cycles. Queue-free access on a dedicated DGX fabric removes multi-tenant interference and reduces idle time between experiments.

Data
Control

Training data and production datasets remain within Lightly’s own environment, simplifying compliance and privacy management. Integration with the DGX software stack keeps data close to compute while maintaining enterprise-grade access controls.

Predictable
Throughput

As experiments and user load increase, the DGX B200 cluster sustains high throughput and stable latency. High-speed interconnects and low-precision optimization paths validated in NVIDIA InferenceMAX benchmarks provide a roadmap for scaling future inference workloads efficiently.

Sustainable
Performance

Running in a renewable-powered Norwegian data center dramatically reduces the carbon footprint associated with large-scale training, while dedicated hardware eliminates virtualization overhead. Lightly can maintain top-tier performance without compromising on sustainability goals.

Sharper Data
Efficiency

The additional performance headroom allows Lightly to run larger, more sophisticated experiments on curated datasets – further amplifying the gains of their core data-selection technology and unlocking new levels of accuracy and efficiency for customers.

Testimonials

Voices from Lightly & AMBER

Insights from Lightly & AMBER on the transformative impact of NVIDIA DGX™ technology.

  • Testimonials

    “Cloud felt like a moving target. On DGX, our jobs start when we need them and finish on time, and the bill finally makes sense. Our datasets stay in our environment. The Blackwell path gives us headroom without surprise trade-offs.”

    Igor Susmelj, co-Founder, Lightly

  • Testimonials

    “AMBER delivered a clean DGX foundation with a direct lane to B200. Lightly now iterates at its own pace with predictable access and stable spend. When they enable Blackwell inference, throughput and unit-cost gains show up immediately in production.”

    Michael Rechenmacher, Founder and CEO

Ihre optimale Website-Nutzung

Wir verarbeiten auf unserer Website Ihre Daten mittels verschiedener Techniken (u.a. Cookies). Einige Verarbeitungen sind technisch notwendig, während andere uns helfen, diese Website und Ihre Erfahrung zu verbessern.

Die Daten werden von uns oder Dritten zur Ermöglichung von komfortablen Webseiteneinstellungen, zur Erstellung von Statistiken und personalisierten (Werbe-)Maßnahmen oder zur Anzeigen- und Inhaltsmessung verwendet. Dabei können Ihre Daten auch in die USA oder andere Drittländer übermittelt werden. Unter "Ablehnen" können Sie nur den Einsatz technisch notwendiger Techniken zulassen. Unter “Einstellungen” können Sie einzelne Verwendungszweckezulassen. Sie können Ihre Auswahl jederzeit unter in den Einstellungen widerrufen oder anpassen. Weitere Informationen über die Verarbeitung Ihrer Daten finden Sie in unserer Datenschutzerklärung.

Detailinformationen zu externer Mediennutzung

Externe Medien sind z.B. Videos oder iFrames von anderen Plattformen, die auf dieser Website eingebunden werden. 

Wir nutzen Google Analytics, um das Verhalten von Besuchern auszuwerten und unsere Webseite stetig zu verbessern.

Damit die Website optimal funktioniert, müssen Sie Ihre aktive Zustimmung geben. Sie können hier Ihre persönlichen Einstellungen selbst festlegen.

Noch Fragen? Erfahren Sie mehr über Ihre Rechte als Nutzer in der Datenschutzerklärung und Impressum!

Ihre Einstellungen wurden gespeichert.