Data for Profit: AutometricS HelpS Auto induStry HeAvyweigHtS drive Better, more profitABle BuSineSS deciSionS
公司规模
11-200
地区
- America
国家
- United States
产品
- Actian DataCloud
- Actian ParAccel Big Data Analytics Platform
- Actian Data Integrator
- Actian Data Profiler
技术栈
- Cloud-based model
- Data Integration
- Big Data Analytics
实施规模
- Enterprise-wide Deployment
影响指标
- Customer Satisfaction
- Productivity Improvements
- Revenue Growth
技术
- 分析与建模 - 大数据分析
- 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
- 汽车
适用功能
- 商业运营
- 销售与市场营销
用例
- 预测性维护
- 质量预测分析
- 供应链可见性(SCV)
服务
- 数据科学服务
- 系统集成
关于客户
Autometrics is a company that was founded in 2000 with the idea of providing hosted business intelligence in key vertical industries, including automotive and travel. The company has a scalable infrastructure built to accommodate the travel industry and deep domain expertise in analyzing auto industry data. Autometrics has access to a phenomenal array of U.S. auto industry data from sophisticated third-party sources, that, when combined with auto manufacturer data and intelligently analyzed, can help predict buyer behavior and deliver real impact to manufacturers’ and dealers’ bottom lines.
挑战
In the depths of the 2008-2009 economic downturn, Autometrics faced a significant business challenge. The recession had hit the automotive and travel industries hard, and Autometrics felt the pinch. The company needed to completely reinvent itself to survive. Autometrics had access to a phenomenal array of U.S. auto industry data from sophisticated third-party sources, that, when combined with auto manufacturer data and intelligently analyzed, could help predict buyer behavior and deliver real impact to manufacturers’ and dealers’ bottom lines. However, many potential clients were not only reluctant to give up their internal data but also reluctant to trust it to a cloud environment.
解决方案
Autometrics began to evangelize the value of sifting through huge volumes and varieties of data to get to the relevant data quickly and accurately. The company zeroed in on lower funnel prospects (LFPs), those customers primed to walk onto the lot and buy right now. Autometrics leveraged Actian Data Integrator to rapidly onboard and regularly update from a vast and ever-changing set of auto-related data sources. The company also added Actian Data Profiler to do rapid scanning of these massive datasets to identify and remove duplicates. Autometrics set out to find innovative thinkers in the auto industry who recognized the business value of a partner who not only rapidly collects both wide and deep data on LFPs but also has unique capabilities to isolate the meaningful signal data from the vast volumes of noise data surrounding it.
运营影响
数量效益
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