Powering the World’s Physical Insights, Together




Nola is the Intelligence Layer for the physical world. We transform standard video feeds into high-fidelity crowd analytics, enabling immediate operational action and long-term strategic planning. We are seeking strategic partners to scale this vision.
Strategic Partnership Models
Embedded Platform Partners
For ride manufacturers and operational platforms looking to add native computer vision services to their products. Nola acts as the data engine, feeding crowd analytics data directly into your own ecosystem and dashboards.
Focus: Native functionality & product enhancement.
Strategic Solution Partners
For system integrators and specialised consultants who deploy Nola as the primary crowd analytics engine for bespoke client solutions.
Focus: Scalable delivery & operational ROI.
Built for the Real World: Mastering Edge Cases
Most AI works in a lab; Nola works in the field. We have specifically trained our models to handle the high-complexity environments of amusement park and attractions, and legacy CCTV infrastructure where standard analytics fail.
Strategic Solution Partners
Most AI works in a lab; Nola works in the field. We have specifically trained our models to handle the high-complexity environments of amusement park and attractions, and legacy CCTV infrastructure where standard analytics fail.
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Edge Computing & Local Intelligence: We prioritize efficiency and privacy by processing data at the edge, reducing bandwidth costs and ensuring sub-second response times without streaming raw video to the cloud.
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High-Density Venues: Optimized for the extreme crowd dynamics of stadiums and transit hubs, maintaining individual tracking in dense packs.
- Amusement & Water Parks: Engineered to handle high-velocity movement and unpredictable visual noise like reflections and aquatic splashes.
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Resilient in Poor Conditions: Battle-tested against low-light and poor image quality.
The Nola Advantage: Custom Intelligence & Accuracy
We understand that every industry has unique visual challenges. We don’t just provide off-the-shelf solutions; we work with our partners to ensure the counting and tracking is surgical in its precision.
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Collaborative Model Development: Have a unique use case? We partner with you to develop and deploy new computer vision models tailored to your specific environment.
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Continuous Training & Refinement: Our team assists in the ongoing training of your models to adapt to changing site conditions, ensuring long-term reliability.
- Accuracy Auditing: We provide the tools and expertise to audit and verify data integrity.
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Infrastructure Agnostic: Our AI works with existing CCTV setups, maximizing ROI for the end-user by removing the need for specialized hardware.
- Rapid, Autonomous Implementation: We’ve designed Nola for speed. Partners can get up and running in minutes, with a streamlined setup process that requires minimal overhead.
- Proven Reliability: A scalable architecture designed to handle high-density environments with extreme reliability and low data latency.
Full Implementation Autonomy
We’ve built Nola to be a self-service engine. While our team is always here to support you, we provide the tools for you to lead the implementation from start to finish. Self-Service Management: Access intuitive dashboards to configure feeds, define detection zones, and manage data outputs independently. Developer-First API: Our clean, JSON-based outputs are designed for rapid ingestion into your own applications, digital twins, or third-party reporting suites.
Trusted by the World's Leading Amusement Parks, Attractions and Associations



















Platform Insights

Features
Gain actionable insights with intuitive dashboards crafted to enhance guest experiences and streamline operations
Push Notifications
Real-time alerts on crowd density, delays, and service updates
Integrations
Connect with POS, weather, transport and more for enriched insights
Guest
Dashboards
Real-time wait time data
Email Reports
Automated summaries of visitor metrics and patterns
