Skip to main content

Posts

From cloud to AI-native ready in 5 steps

Recent posts

Resilience at Scale: Why Best Practices and AI Matter More Than We Think

  In technology conversations, “best practices” are mentioned everywhere—architecture reviews, governance frameworks, and delivery checklists. They are part of how we design and operate digital platforms. But in many projects, especially those with low or moderate workloads, best practices may feel theoretical. They look good on paper, yet the business impact is not always visible.   I recently worked on a project that challenged this perception. We pushed Azure Batch to operate at over 100,000 vCores, stretching the service's limits and placing significant pressure on Azure Storage, Azure Container Registry, and the networking layer. At this scale, every detail matters. And suddenly, all those Microsoft recommendations that previously seemed optional became essential.   1. Best Practices Deliver Real Value When Systems Become Truly Intensive For smaller systems or early-stage products, it is easy to overlook best practices. Everything works fine. For example: ...

AI-Native on top of the 6 Migration Rs

For the last decade, the 6 Rs of cloud migration have been used to describe how enterprises should adopt the cloud: Rehost, Replatform, Refactor, Retain, and, sometimes, Retire. The 6 Rs of cloud migration have guided enterprises in adopting the cloud. However, with AI now central to digital transformation, these Rs alone are no longer sufficient. Cloud migration is just the first step; true AI-Native status requires a deeper cloud-native transformation. Customers labelling their migrations as Cloud-Native often have applications that still behave like on-premises systems, resulting in manual operations, static systems, and locked data that hinder AI programs. This is where a new perspective is required to build AI capabilities on top of the 6Rs. Pure cloud-native solutions are difficult for large enterprises. Realistically, we need to identify gaps and what is needed to prepare for AI integration. In the next part of the article, each R will be analysed in terms of AI-Native needs. R...

Why cloud modernisation is the missing link to AI adoption

In the last decade, enterprises migrated thousands of workloads to the cloud for elasticity and lower infrastructure costs. Nevertheless, most workloads behave as they did on-premises: tightly coupled, batch-oriented, and blind to data in motion. This creates high virtualised technical debt with few systems ready for AI. IT leaders should identify and prioritize refactoring critical applications. Early steps include adopting containerization, implementing DevOps, and exploring data integration for real-time flow — establishing an agile, AI-ready ecosystem. This growing intent to re-architect for AI highlights a critical gap between cloud adoption and true cloud modernisation. To better understand what is getting in the way, it’s important to recognize a fundamental insight: Migrations ≠ Modernisations , where Migration offers quick lift-and-shift cloud hosting, but not the value of true Modernisation. From Lift & Shift to AI-Native Moving your servers from a data center to the clou...

Azure Well-Architected AI workload Assessment

  AI is everywhere, part of the IT solutions we build and run today. Having an AI service, a good model, and data is not enough. As for cloud, the real difference is how we build, manage and run the whole solution. Microsoft created the Azure Well-Architected Framework for AI Workloads exactly for this reason — to help teams design AI systems that are reliable, secure, and cost-efficient. The assessment has six main categories that we cover in the next section. Based on the results, we can gain a good understanding of the current AI workload estate and a list of actions to improve how you run and manage your AI workloads . Designing the AI Application The first step in building your AI application is to consider how you will structure it. Using containers for tasks like data processing or model inference helps maintain consistency across the system. This approach makes it easier to update, move, and manage different components. When you have multiple steps in your workflow, such as...

[Post Event] ITCamp 2025

  This week, Cluj-Napoca hosted he 13 th edition of ITDays . With over 800 participants and more than 70 speakers, the two-day conference brought together IT specialists from the area. It was a valuable networking opportunity, allowing us to renew existing relationships and connect with new people. The most notable appearance was that of Morgan Stanley, which joined ITDays as one of its sponsors. With a large delivery office in Budapest, they aroused the interest of many people at the conference. Besides networking, good coffee and chatting with extraordinary people, I had the opportunity to deliver a session about AI-native applications inside the cloud. I presented a five-step playbook for preparing cloud environments and businesses for AI adoption—covering modernisation, data readiness, scalability, governance, and continuous innovation to unlock intelligence and agility. Thank you, Ovidiu, and the rest of the team, for making this conference possible!  

Why Database Modernization Matters for AI

  When companies transition to the cloud, they typically begin with applications and virtual machines, which is often the easier part of the process. The actual complexity arises later when databases are moved. To save time and effort, cloud adoption is more of a cloud migration in an IaaS manner, fulfilling current, but not future needs. Even organisations that are already in the cloud find that their databases, although “migrated,” are not genuinely modernised. This disparity becomes particularly evident when they begin to explore AI technologies. Understanding Modernisation Beyond Migration Database modernisation is distinct from merely relocating an outdated database to Azure. It's about making your data layer ready for future needs, like automation, real-time analytics, and AI capabilities. AI needs high throughput, which can be achieved using native DB cloud capabilities. When your database runs in a traditional setup (even hosted in the cloud), in that case, you will enc...