In Simple Terms with Satish

AEM Cloud vs On-Prem (Explained in 10 Minutes)

12 min · 1. apr. 2026
episode AEM Cloud vs On-Prem (Explained in 10 Minutes) cover

Description

Adobe Experience Manager (AEM) has evolved significantly — but what really changed when it moved from On-Premise to AEM as a Cloud Service?In this video, we break it down in simple terms.We’ll explore how traditional AEM environments worked, the operational challenges teams faced, and how AEM Cloud Service completely changes the architecture, deployment model, and developer experience.From dispatcher-based caching to CI/CD pipelines, from repository storage to asset microservices — this video connects all the dots.Whether you're an AEM developer, architect, or just getting started, this will help you understand the real difference — not just at a high level, but how it actually works under the hood.Topics Covered:- AEM On-Premise Architecture- Dispatcher and Publish flow- Repository (TarMK vs Cloud storage concepts)- Asset Processing vs Microservices- CI/CD with Cloud Manager- Immutable Infrastructure- /apps vs /libs best practices- Preview Environment- Rolling DeploymentsIf you found this helpful, don’t forget to like, share, and subscribe for more “In Simple Terms” content.👉 Subscribe: https://www.youtube.com/@LearnWithSatishChoudhary#AEM #AdobeExperienceManager #AEMCloud #AEMArchitecture #CloudComputing #DevOps #digitalexperiences 00:00 Introduction01:30 The World of Traditional AEM03:00 The Hidden Cost of AEM On-Premise Architecture04:00 A Simple Analogy (Restaurant Model)05:11 The Shift Toward Cloud Platforms05:44 AEM Scale Analogy (Handling Traffic Growth)06:18 AEM as a Cloud Service – Overview & Architecture07:10 Repository Evolution (TarMK vs Cloud Model)08:12 Asset Microservices Explained09:08 Immutable Infrastructure09:38 /apps vs /libs and Developer Restrictions10:24 CI/CD and Cloud Manager10:58 Preview Environment & Zero-Downtime Deployments11:42 The Developer Mindset Shift12:09 Final Thoughts

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68 episodes

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