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H2O.ai > 实例探究 > Hortifrut Optimizes Distribution of Blueberries with AI
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Hortifrut Optimizes Distribution of Blueberries with AI

技术
  • 分析与建模 - 机器学习
  • 分析与建模 - 预测分析
适用行业
  • 农业
适用功能
  • 物流运输
  • 质量保证
用例
  • 预测性维护
  • 供应链可见性(SCV)
服务
  • 数据科学服务
挑战
Transporting fruit from the farm may take weeks, so Hortifrut had to predict the quality of produce upon arrival. Not being able to do this accurately can impact customer experience and revenue loss. But getting such predictions accurately can be a difficult task given the complexity of the distribution channel, weather data, variety of datasets, shipping times and more. If traditional machine learning methods and toolkits were used, it could easily take months to build accurate predictions that can be reliably deployed. This may also require hiring additional data science talent on the team, hence requiring additional time and budget to achieve the aforementioned business goal.
关于客户
Hortifrut, based in Chile, is the largest producer of blueberries in the world and operates farms in Peru, Chile, Mexico, Argentina, the United States, Spain, Morocco, and China, with distribution of fruit across 37 countries. Hortifrut addresses 25% of the world blueberry market and is using Driverless AI to make distribution decisions across their expansive operations. They are able to predict the quality of the blueberries from origin to final destination, increasing the consumer experience, and increasing revenue.
解决方案
Hortifrut leveraged Driverless AI in order to have better predictive insights into the quality of their blueberries. They used capabilities such as feature engineering, natural language processing (NLP), explainability, timeseries, visualization and scoring pipelines in Driverless AI. Hortifrut is now able to scale their data science efforts in order to deliver use cases such as predicting the quality of blueberries based on features such as variety, farm origin, shipping time, vessel and packaging, without hiring additional data science talent in the team.
运营影响
  • Hortifrut has saved a significant amount of money by reducing perishable claims.
  • Hortifrut has been able to deliver real business results with a small data science team thereby improving productivity of the team.
  • Hortifrut is able to reduce the model development time from 3-5 months down to 3-5 weeks.
数量效益
  • Reduced model build time from 3-5 months to 3-5 weeks
  • Solved new business problems without expanding the data science team

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