下载PDF
Corteva Agriscience > 实例探究 > Making Profitable Decisions with Data
Corteva Agriscience Logo

Making Profitable Decisions with Data

技术
  • 分析与建模 - 大数据分析
  • 功能应用 - 库存管理系统
适用行业
  • 农业
适用功能
  • 商业运营
用例
  • 预测性维护
  • 供应链可见性(SCV)
服务
  • 数据科学服务
挑战
Running Lake Farms, a family-owned farm in Pocahontas, AR, was facing challenges in forecasting its profitability at the beginning of each season. The farm's profitability was dependent on various factors such as the cost of inputs, yield, and market prices. The farm was also struggling with identifying unprofitable fields and understanding the reasons behind their lack of profitability. The farm needed a solution that could help them analyze their data and make informed decisions.
关于客户
Running Lake Farms is a family-owned farm located in Pocahontas, AR. The farm was started in 1980 by Gregory Baltz, a graduate in Agricultural Engineering from the University of Arkansas. The farm primarily grows rice but also cultivates soybeans, corn, and peanuts. Over the years, the farm has been growing steadily. Gregory Baltz, the CEO of the farm, is actively involved in the daily operations of the farm and is constantly communicating with his crew to ensure smooth operations.
解决方案
Running Lake Farms implemented Granular, a software solution that helps farmers manage their operations with data. Granular allows the farm to keep a full record of their input applications, helping them understand the cost of production per field. The software also provides analytics that help the farm identify which fields are more conducive to certain crops. This allows the farm to change their cropping plans based on expected financials. The farm uses Granular to analyze the previous years' production and identify profitable, marginal, and unprofitable fields. They then try to understand the reasons behind the profitability or lack thereof of each field.
运营影响
  • With Granular, Running Lake Farms has been able to add the financial aspect to all of their activities, allowing them to understand the cost of production per field.
  • The farm has been able to identify which farms are more conducive to certain crops, allowing them to change their cropping plans based on expected financials.
  • The farm has been able to identify unprofitable fields and understand the reasons behind their lack of profitability.

相关案例.

联系我们

欢迎与我们交流!

* Required
* Required
* Required
* Invalid email address
提交此表单,即表示您同意 IoT ONE 可以与您联系并分享洞察和营销信息。
不,谢谢,我不想收到来自 IoT ONE 的任何营销电子邮件。
提交

Thank you for your message!
We will contact you soon.