Technology Category
- Analytics & Modeling - Big Data Analytics
- Analytics & Modeling - Predictive Analytics
Applicable Industries
- Automotive
- Education
Applicable Functions
- Product Research & Development
- Sales & Marketing
Use Cases
- Real-Time Location System (RTLS)
- Virtual Training
Services
- System Integration
- Training
About The Customer
AramisAuto is a leader in France’s new and second-hand automotive sales industry. The company was created in 2001 and has 350 employees. It generated a turnover of over 356M€. With 1 car sold every 5 minutes, coupled with over 15 years of experience in the industry, AramisAuto is in the unique position of enjoying sector dominance. The company has a strong interest in developing its own competitive advantage and has secured the position of leader of the automotive sales industry by innovating consumer solutions.
The Challenge
AramisAuto, a leader in France’s new and second-hand automotive sales industry, was keen on developing its own competitive advantage with data-driven projects. The company decided to internalize the design, development, and deployment of their own data-driven solutions and products. This decision was driven by the need to develop analytics projects internally using newly hired expertise such as business intelligence engineers and data scientists. Due to data sensitivity issues, outsourcing data analysis teams was not a viable option. These new team members needed to quickly get up-to-speed in terms of creating highly-scalable predictive models and applying that knowledge to a wide array of business case scenarios, including real-time deployment of data products.
The Solution
AramisAuto addressed these challenges by adopting Dataiku’s Data Science Studio (DSS). DSS’s whitebox approach, collaborative teamcentric functionality, and ease-of-use provided the company with the tools they needed to empower their data team to quickly prototype, test, iterate, and deploy innovative data-driven solutions. The ability to share projects between multiple users enabled team members to effectively work together – no matter individual level of expertise – while a whitebox environment facilitated data transparency between relevant stakeholders. Finally, with DSS, they quickly deployed a real-time API. The implementation and active support of DSS has enabled AamisAuto to fully leverage the capability and power of predictive analytics.
Operational Impact
Quantitative Benefit
Case Study missing?
Start adding your own!
Register with your work email and create a new case study profile for your business.
Related Case Studies.
Case Study
Integral Plant Maintenance
Mercedes-Benz and his partner GAZ chose Siemens to be its maintenance partner at a new engine plant in Yaroslavl, Russia. The new plant offers a capacity to manufacture diesel engines for the Russian market, for locally produced Sprinter Classic. In addition to engines for the local market, the Yaroslavl plant will also produce spare parts. Mercedes-Benz Russia and his partner needed a service partner in order to ensure the operation of these lines in a maintenance partnership arrangement. The challenges included coordinating the entire maintenance management operation, in particular inspections, corrective and predictive maintenance activities, and the optimizing spare parts management. Siemens developed a customized maintenance solution that includes all electronic and mechanical maintenance activities (Integral Plant Maintenance).
Case Study
Monitoring of Pressure Pumps in Automotive Industry
A large German/American producer of auto parts uses high-pressure pumps to deburr machined parts as a part of its production and quality check process. They decided to monitor these pumps to make sure they work properly and that they can see any indications leading to a potential failure before it affects their process.