APP DEV CASE STUDY

Operations Optimization & Real-Time Forecasting for a Quick-Service Restaurant

Client Introduction

This quick-service restaurant (QSR) brand is known throughout Florida and other locations with about 150 stores, known for its Caribbean-inspired menu.

The restaurant serves a diverse customer base with dine-in, drive-thru, and online ordering options. The company has refocused its growth strategy on operational excellence and digital engagement within core markets, aiming to enhance customer experience and improve profitability.

CLIENT PROFILE
EMPLOYEES: 8,000+
INDUSTRY: Restaurant
FOUNDED: 1988

Legacy methods for cooking processes

The client’s kitchen operations relied on manual processes and PAR sheets to determine cooking schedules for grilled chicken, which involves a multi-step process taking roughly an hour.

Chickens were cooked in overlapping 20-minute batches to ensure availability during peak demand. However, cooks had to manually interpret prior day sales data, estimate demand, and adjust for current conditions – resulting in inconsistency, training challenges, and increased food waste.

Additionally, there was limited visibility into how actual production aligned with demand or how much waste was occurring at each store.

Operations Optimization & Real-Time Forecasting for a Quick-Service Restaurant

Before Smartbridge…

  • Cooking process required chickens to be prepared in batches every 20 minutes, taking ~1 hour total.
  • Manual calculation from previous day’s sales (PAR sheets) led to inconsistent production.
  • Difficult to adjust for real-time demand changes or log waste accurately.
  • Training cooks was challenging due to manual, error-prone processes.
  • Limited insight into overproduction, underproduction, or food waste.

The Solution: Stabilizing the App & Modernizing with Microsoft

We developed a solution that used historical sales data by store to generate optimized cook forecasts for every 20-minute slot throughout the day.

These forecasts were calculated daily and uploaded to an Azure-hosted API and database. A custom .NET MAUI application, deployed on wall-mounted iPads in each kitchen, guided cooks in real time—prompting when to cook, how many to cook, and when to move items to the next step.

Cooks could also log waste events directly in the app. Sales data was sent from each store’s back-office POS system to the cloud API every five minutes. Using SignalR, real-time updates were pushed to the iPads, allowing the app to dynamically track available inventory and trigger alerts when cooked items had exceeded hold times.

This system reduced waste, simplified training, and improved operational consistency across stores. It also gave corporate users visibility into actual vs. forecasted production and waste, enabling more data-driven decisions.

TECHNOLOGIES USED

Operations Optimization & Real-Time Forecasting for a Quick-Service Restaurant - Azure
Operations Optimization & Real-Time Forecasting for a Quick-Service Restaurant - .net Maui
Microsoft Data & AI Solutions Partner
Reduce Kitchen Waste

Reduced waste through timely production and inventory tracking

Simplify cooking process

Simplified cook training with standardized processes

Enhance forecast accuracy

Enhanced visibility into forecast accuracy, production trends & waste metrics across stores

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