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Want to increase yields by 30%? 👇 🍃 Keep reading. Average crop loss rates for cannabis farms are somewhere between 23% and 44%, for greenhouse growers this figure will be on the lower end of the scale (20-30%). The most common causes of crop loss? 🐞 Pests, disease and environmental factors. Now, a lot of greenhouse cultivators are already using environmental sensors to maintain optimal greenhouse temperatures and humidity - And these sensors can work wonders - But they are missing something vital. 👉 Context. The average temperature in your greenhouse doesn't provide you with feedback about how your plants are doing individually. Or even the temperature of your plants. Your average temperature might be "optimal", but is it consistent across your entire canopy? Our data says otherwise. Without having a visual of your canopy and seeing the data broken down by canopy location, you can't truly action the learnings you are getting from your data. Every plant has different needs, and (looking at that 30% crop loss), every plant matters. The same goes for pests and disease. Have you ever missed the first signs of pests and disease, leading to it spreading across multiple plants? It's easily done. Even the best of the best aren't able to keep their eyes on every plant, all of the time. The signs and symptoms of pests, disease can start off small. So small, they are easily missed by the human eye. So, how can you possibly catch every sign when you have hundreds of plants to monitor? We'll be posting more info over the coming weeks, but here's a short intro to how in-context data with canopy visuals can give you more confidence in your cultivation methods and boost your yields! #aifarming #farmingtechnology #farmingtech #croploss #cropmanagement #cannabiscultivation #hempcultivation #hempindustry #hemp #cannabis #cannabisfarming #cannabisbusiness #cannabisindustry #cannabis

Do you have any questions about the Neatleaf Spyder for crop management? 👇

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