Technology Category
- Analytics & Modeling - Machine Learning
- Platform as a Service (PaaS) - Application Development Platforms
Applicable Industries
- Consumer Goods
- Transportation
Applicable Functions
- Logistics & Transportation
- Maintenance
Use Cases
- Last Mile Delivery
- Transportation Simulation
Services
- Data Science Services
About The Customer
Grip is a data-driven company that provides smart shipping solutions to e-commerce businesses shipping perishable goods across the U.S. The company processes hundreds of thousands of orders through its platform each month, serving companies that ship meal kits, frozen bread and pasta, pastries, pet food, flowers, and other perishable items. Grip's platform integrates with various data sources, including Shopify, ShipStation, different warehouse management systems, APIs for weather data, carrier pricing and delivery time tracking, and customer support systems like Zendesk and Dynamics. The company uses this data to make the most effective shipping recommendations, helping its customers reduce damage rates and shipping costs.
The Challenge
Grip, a company that serves e-commerce businesses shipping perishable goods across the U.S., processes hundreds of thousands of orders through its platform each month. The company's challenge was to process and interpret a variety of data points to make the most effective shipping recommendations. The data came from multiple sources including Shopify, ShipStation, different warehouse management systems, APIs for weather data, carrier pricing and delivery time tracking, and customer support systems like Zendesk and Dynamics. The company needed to consolidate this data to suggest the best carrier, ideal refrigerant and insulation, packaging and material, and other shipping logistics. Additionally, once a delivery was made, Grip needed to publish analytics so customers could see orders that went out, where they went, areas of the country that are bottlenecked, and areas of the country that are performing well.
The Solution
Grip adopted the Databricks Lakehouse Platform to consolidate and process its data. The platform integrates with weather providers, so forecasting is processed through the platform. It also tracks customer feedback, including previous records of shipments to a particular area of the country. Databricks allows Grip to build machine learning models and data engineering pipelines end to end, serve end users with analytics, and track internal analytics all within one platform. Grip’s pipelines are entirely orchestrated through Databricks Workflows, which makes troubleshooting easy when something goes wrong. The alerting integration is tied into the company’s teams, so they can rerun or repair run functionality before it becomes problematic to the customer. Grip also uses Databricks SQL Serverless to drive analytics, which allows it to share data with customers more regularly.
Operational Impact
Quantitative Benefit
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