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Google > 实例探究 > Coop Reduces Food Waste by Forecasting with Google’s AI and Data Cloud

Coop Reduces Food Waste by Forecasting with Google’s AI and Data Cloud

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公司规模
Large Corporate
地区
  • Europe
国家
  • Switzerland
产品
  • Vertex AI Forecast
  • Google Cloud
  • BigQuery
  • Google Kubernetes Engine
技术栈
  • PyTorch
  • TensorFlow
  • Extreme Gradient Boosting
实施规模
  • Pilot projects
影响指标
  • Productivity Improvements
  • Cost Savings
  • Environmental Impact Reduction
技术
  • 分析与建模 - 预测分析
  • 平台即服务 (PaaS) - 数据管理平台
适用行业
  • 零售
适用功能
  • 物流运输
  • 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
  • 系统集成
关于客户
Coop is a large Swiss retailer with a rich history spanning nearly 160 years. Despite its long-standing presence in the market, Coop is committed to modernizing its operations through innovative technologies. The company has a dedicated machine learning (ML) team that began its journey in 2018 with the mission to leverage ML-powered forecasting to inform business decisions. Coop's focus is on optimizing operations to enhance customer satisfaction, reduce costs, and support sustainability goals. The company is particularly committed to becoming a zero-waste organization, integrating sustainability into all aspects of its business, from supplier selection to reducing energy, CO2 emissions, waste materials, and water usage in its supply chains.
挑战
Coop faced challenges with its initial on-premises forecasting environment, which was limited by cumbersome scaling and infrastructure issues. The company needed a more robust solution to operationalize machine learning outcomes beyond local machines. The goal was to optimize operations, save costs, and support sustainability goals by leveraging machine learning-powered forecasting for demand planning based on supply chain seasonality and expected customer demand.
解决方案
Coop transitioned to Google Cloud to address its forecasting challenges. The company conducted a two-day workshop with the Google Cloud team to ingest data from its data pipelines and SAP systems into BigQuery. Coop's ML team utilized Vertex AI Workbench to develop its data science workflow, aiming to train forecasting models to optimize stock levels at distribution centers. During the proof-of-concept phase, Coop's ML team compared two custom-built models against an AutoML-powered Vertex AI Forecast model. The team found that Vertex AI Forecast was faster and more accurate, achieving a 43% performance improvement over in-house models. Coop is now building a small-scale pilot for one distribution center, with plans to scale it across all centers in Switzerland.
运营影响
  • Coop's ML team successfully integrated Google Cloud tools, such as Google Kubernetes Engine and BigQuery, to create its own ML platform.
  • The team automated and streamlined data science workflows, reducing dependency on infrastructure teams.
  • Coop plans to use BigQuery as a pre-stage for Vertex AI to enhance data streaming efficiency.
  • The company is exploring natural language processing-based solutions for other data science departments.
数量效益
  • Vertex AI Forecast provided a 43% performance improvement relative to models trained in-house on a custom VM.
  • The team reached 14.5 WAPE (Weighted Average Percentage Error) on the test set during the proof-of-concept phase.

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