H2O.ai > 实例探究 > Leveraging Large Scale Data Sets

Leveraging Large Scale Data Sets

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公司规模
1,000+
地区
  • America
国家
  • United States
产品
  • H2O
技术栈
  • Hadoop
  • R
  • Java
实施规模
  • Enterprise-wide Deployment
影响指标
  • Cost Savings
  • Productivity Improvements
技术
  • 分析与建模 - 大数据分析
  • 分析与建模 - 预测分析
适用功能
  • 商业运营
用例
  • 欺诈识别
服务
  • 数据科学服务
关于客户
The customer is a global insurance company that is seeking to detect and prevent claims fraud in its Workman's Compensation business. The company has a growing business and needs a more automated approach to handle the increasing volume of claims. The company has data scientists who use R for advanced analytics, but they were facing challenges in scaling their analytics to handle Hadoop-level data volumes. The company needed a solution that could provide sophisticated predictive analytics on large datasets and enable rapid deployment of fraud detection models.
挑战
The insurance company was facing a significant challenge with claims fraud, which is estimated to cost the industry $80 billion annually in the United States alone. The existing process for detecting suspicious claims was entirely manual, relying on the judgment and experience of professional claims examiners. This approach was not scalable for a growing business and was time-consuming due to the need to pull information from multiple systems. The company had consolidated data from various sources into a Hadoop data store, which included a mix of structured and unstructured data. However, Hadoop lacked the capability for sophisticated predictive analytics, and extracting the data to an analytic server was time-consuming.
解决方案
The company implemented H2O, an open-source machine learning platform, to address its challenges. H2O was co-located in the company's Hadoop cluster, allowing analysts to discover insights in the data without extracting it or taking samples. Data scientists could interact with H2O using R, but all of the work was performed in H2O where it was deployed, in the Hadoop cluster. This approach enabled the company to leverage its large datasets for predictive analytics. When an analytics project was completed, H2O exported predictive models as Plain Old Java Objects (POJOs). These POJOs could run anywhere in the organization that Java runs, enabling rapid deployment of fraud detection models in various systems.
运营影响
  • The company was able to automate its fraud detection process, reducing the reliance on manual examination of claims.
  • The solution enabled the company to leverage its large datasets for predictive analytics, providing insights that were not possible with the previous approach.
  • The use of POJOs allowed for rapid deployment of fraud detection models in various systems, increasing the agility of the company's fraud analytics.
数量效益
  • The solution helped the company to address a problem that costs the insurance industry $80 billion annually in the United States alone.

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