Using AI to Predict Crop Yields

At Xyonix, we regularly build AI and machine learning models to make predictions based on structured and unstructured data like crop yields.

Combine harvester harvesting wheat

Predicting crop yields is very important to the global food production ecosystem. Farmers can make better decisions with access to quality crop yield predictions, government policy makers often use accurate crop yield predictions to strengthen national food security [1], and companies that produce seeds often predict how well new plant variations grow in different environments [2].

We have extensive experience building predictive models on a variety of different types of data. Our custom models will give you the ability to accurately and efficiently predict crop yields to optimize your agricultural outputs.

Want to learn more? Read about some of our recent projects below to get a taste of our capabilities.

Want to dig deeper? Read our article about how AI is transforming agriculture below.

References

[1] Horie, T., Yajima, M., and Nakagawa, H. (1992). Yield forecasting. Agric. Syst. 40, 211–236. doi: 10.1016/0308-521X(92)90022-G

[2] Syngenta (2018). Syngenta Crop Challenge In Analytics. Details at: https://www.ideaconnection.com/syngenta-crop-challenge/challenge.php/