case study

Application Modernization For A Restaurant-Technology Company

Information Technology & Services

Business Impacts

Reduced the time taken to process system malfunctions with continuous monitoring, logging and alert generation

Modernized system by upgrading the existing infrastructure

Improved scalability and agility of the application by converting the monolithic application to microservices

Customer Key Facts

  • Location : United States
  • Industry : IT Services and IT Consulting

Problem Context 

The client is a leader in restaurant technology and has a tabletop, pay at the table, and e-commerce system installed in over 1800 restaurants in the US, allowing guests to have greater control over their dining experience.
They want to modernize the 33 APIs which run on Django, written over ten years ago

Challenges

  • Changes were made with less business logic available
  • Limited documentation from the client’s side on the business logic of each APIs

Technologies Used

Amazon RDS

Amazon RDS

Amazon ElastiCache

Amazon ElastiCache

Amazon Secrets Manager

Amazon Secrets Manager

Amazon WAF

Amazon WAF

Elastic Load Balancer

Elastic Load Balancer

Python

Python

Terraform

Terraform

Docker

Docker

Django

Django

Solution Approach and Overview

  • Quantiphi modernized the entire backend of the client's system, enabling the end-users to have greater control over their dining experience.
  • Upgraded the infrastructure in accordance with the best policies and scaled individual microservices

Solution Key Features

  • Converted monolithic applications to microservices by moving testing codes to Python's latest versions - Django (1.7 to 4) and Python (2.7 to 3.9)
  • Upgraded dependencies for deprecated libraries and implemented Message Queue for communication between two microservices, scalability, and fault tolerance
  • Set up CI/CD pipelines for continuous integration and development
  • Built a BI & Data warehouse mechanism pointing to new databases
  • Performed unit tests in the dev environment to ensure a smooth data flow. 
  • Code deployment and testing in staging and production environments

Result

Modernized the client's backend system entirely and converted monolithic applications to microservices to deliver a more scalable and agile application

Start Your Next Gen AI Journey Today

Discover how Quantiphi’s AI-powered solutions can transform your business. Fill out the form, and we’ll help you explore tailored AI strategies to unlock new opportunities for growth.

Thank you for reaching out to us!

Our experts will be in touch with you shortly.

In the meantime, explore our insightful blogs and case studies.

Something went wrong!

Please try it again.

Share