
Overview
Santex partnered with one of the world’s leading quick-service restaurant (QSR) operators to overcome critical data challenges and unlock new business value. By modernizing their data infrastructure, enabling real-time analytics, and automating complex integrations, we empowered the client with precise, actionable insights, reduced operational inefficiencies, and significant cost savings, driving data-powered decision-making.
The Challenge
Managing a diverse portfolio of restaurant brands across multiple countries comes with a set of data challenges. This fast-food giant faced:
Fragmented Data Sources: Disparate systems from external vendors, delivery platforms, and internal tools made data unmanageable.
Manual Processes: Limited automation led to time-intensive manual workflows and error-prone reporting.
Data Inconsistencies: Lack of standardization across datasets caused unreliable performance metrics, slowing down decision-making.
Real-Time Visibility Gaps: The inability to monitor key metrics in real-time hindered their ability to adapt to market demands.

The Solution
The Santex team helped address this challenge, aligning with the client’s operational and geographic complexities and emphasizing scalability and speed.
Data Warehouse Modernization:
• Implemented Snowflake for robust, cloud-based data warehousing.
• Integrated AWS S3 for flexible data lake storage and Amazon Glue for efficient ETL pipelines.Real-Time Reporting & Analytics:
• Delivered insights through Tableau dashboards with real-time integrations.
• Unified third-party delivery data (Uber Eats, DoorDash) with internal KPIs for a 360° performance view.Automated Vendor Integrations:
• Built seamless connections between third-party vendors, using AWS Lambda for serverless automation to eliminate delays in data synchronization.Data Quality Management:
• Established governance frameworks with automated quality checks, reducing inconsistencies by 40%.Advanced Analytics:
• Deployed machine learning models for predictive insights, including demand forecasting and sales optimization.
• Used NLP to categorize and analyze unstructured data for better customer understanding.
Key Outcomes
40% Improvement in Data Quality: Eliminated manual entry errors and reduced inconsistencies, resulting in better forecasting and decision-making.
80% Reduction in Manual Workflows: Automated vendor collaboration processes, drastically cutting response times and improving data flow reliability.
20% reduction in infrastructure costs: Achieved through real-time performance monitoring, enabling visibility into KPIs across all brands.
100% Automated Vendor Data Issue Notifications: Failures are instantly reported, assigned, and tracked, eliminating manual reporting.
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