Growers cannot build reliable yield forecasts from a single source of data. Constantly shifting interactions between climate execution, plant behaviour, labour decisions, and timing shape yield outcomes. The variation of outside radiation has an influence on plant development. Inside the greenhouse, climate control operates dynamically. Growers adjust setpoints based on energy prices, weather forecasts and crop stage. At the plant level, individual plants grow at different rates, and different sections respond differently to the same conditions.
The Priva One platform provides deep visibility into climate execution. Not what was planned, but what actually happened inside the greenhouse. IUNU’s LUNA AI system adds continuous plant-level insight at scale, capturing real variability across plants, zones, and conditions. Because this learning is automated and continuous, it scales across entire commercial operations without increasing labour or relying on manual crop registration. Unlike forecasting systems that rely on historical variety performance, average conditions, or manually gathered data, this approach learns continuously from the specific facility, genetics, and executed climate strategy.
“When climate execution data and plant-level learning are combined, prognosis shifts from experience-based to evidence-based,” said Meiny Prins, CEO of Priva. “The model adapts as the crop responds. If plant development accelerates or slows, if climate strategies shift, or if labour actions alter plant balance, the system incorporates those effects before they turn into costly volume swings.”
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