Case Study: From a Monolith to Cloud, Containers, Microservices

The following shows a case study about successfully moving from a very complex monolith system to a cloud-native architecture. The architecture leverages containers and Microservices. This solve issues such as high efforts for extending the system, and a very slow deployment process. The old system included a few huge Java applications and a complex integration middleware deployment.

The new architecture allows flexible development, deployment and operations of business and integration services. Besides, it is vendor-agnostic so that you can leverage on-premise hardware, different public cloud infrastructures, and cloud-native PaaS platforms.

The session will describe the challenges of the existing monolith system, the step-by-step procedure to move to the new cloud-native Microservices architecture. It also explains why containers such as Docker play a key role in this scenario.

A live demo shows how container solutions such as Docker, PaaS cloud platforms such as CloudFoundry, cluster managers such as Kubernetes or Mesos, and different programming languages are used to implement, deploy and scale cloud-native Microservices in a vendor-agnostic way.

Key Takeaways

Key takeaways for the audience:

– Best practices for moving to a cloud-native architecture

– How to leverage microservices and containers for flexible development, deployment and operations

– How to solve challenges in real world projects

– Understand key technologies, which are recommended

– How to stay vendor-agnostic

– See a live demo of how cloud-native applications respectively services differ from monolith applications regarding development and runtime

Slides and Video from Microservices Meetup Mumbai

Here are the slides and video recording. Presented in February 2017 at Microservices Meetup Mumbai, India.

https://www.slideshare.net/KaiWaehner/case-study-how-to-move-from-a-monolith-to-cloud-containers-and-microservices

Kai Waehner

bridging the gap between technical innovation and business value for real-time data streaming and applied AI.

Recent Posts

dbt Meets Apache Flink: One Workflow for Data Engineers on Snowflake, BigQuery, Databricks, and Confluent

Two toolchains, two skill sets, two CI/CD pipelines — that has been the reality for…

3 months ago

The Shift Left Architecture 2.0: Operational, Analytical and AI Interfaces for Real-Time Data Products

The Shift Left Architecture moves data integration logic into an event-driven architecture where governed data…

3 months ago

UFC VIP Experience Worth the Price? Fan Review. Business Perspective. Tech Vision.

The Ultimate Fighting Championship (UFC) held Fight Night London on March 21, 2026, at The…

3 months ago

Dashboards and Queries for Apache Kafka: Operational, Explorative, and the Role of the Context Engine

Dashboards are a popular way to make streaming data visible and useful, but they are…

3 months ago

Data Streaming at MWC 2026: How Apache Kafka, Flink and Agentic AI Power Telecom Trends

Mobile World Congress (MWC) 2026 highlights the shift from batch systems to real time data…

4 months ago

From Takeoff to Touchdown: Real-Time Aviation with Data Streaming at Qantas

This blog post explores how data streaming transforms airline operations by enabling real-time visibility, faster…

4 months ago