Helping A Major Auto Manufacturer Improve On-Time Delivery to the Just-In-Time Assembly Line
Customer Company Size
Large Corporate
Region
- America
Country
- United States
Product
- FourKites Visibility Platform
- FourKites Geofencing Capabilities
Tech Stack
- GPS-ELD Integrations
- Machine Learning Algorithm
- Real-Time Data Alerts
Implementation Scale
- Enterprise-wide Deployment
Impact Metrics
- Customer Satisfaction
- Digital Expertise
- Productivity Improvements
Technology Category
- Analytics & Modeling - Predictive Analytics
- Functional Applications - Fleet Management Systems (FMS)
- Sensors - GPS
Applicable Industries
- Automotive
- Transportation
Applicable Functions
- Logistics & Transportation
Use Cases
- Fleet Management
- Predictive Maintenance
- Track & Trace of Assets
Services
- System Integration
- Training
About The Customer
Averitt Express is a prominent freight transportation and supply chain management company with a global reach extending to over 100 countries. The company is driven by values that emphasize continuous improvement and exceeding customer expectations. Averitt has a long-standing relationship with a leading car manufacturer, which relies on Averitt for the precise, on-time delivery of automotive components to its just-in-time assembly line. This partnership underscores Averitt's commitment to delivering high-quality service and maintaining strong customer relationships.
The Challenge
Averitt Express, a leading provider of freight transportation and supply chain management, was tasked with ensuring precise, on-time delivery of an automotive component to a specific point in a car manufacturer's just-in-time assembly line. The challenge was to maintain high accuracy and visibility for multiple daily runs between the component manufacturer’s facility and the assembly line. Inaccurate or delayed tracking data could disrupt the supply chain and impact Averitt’s ability to meet customer commitments.
The Solution
Averitt partnered with FourKites to enhance visibility and ensure precise delivery. FourKites' platform was the only solution capable of recognizing each run as a separate load, which was crucial for Averitt's operations. The platform's advanced geofencing capabilities allowed for precise tracking to specific locations within the assembly line, rather than just a central loading dock. FourKites' product team quickly understood Averitt's needs and demonstrated superior functionality. They used a proven integration process and dedicated onboarding team to seamlessly bring Averitt’s loads onto the platform. Additionally, FourKites provided training to ensure Averitt’s teams could operate the platform autonomously.
Operational Impact
Quantitative Benefit
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