TRAIDA

TRAIDA AI & Data solutions In this sphere, you will find best practices for building your technical architecture to scale AI. You will need to clarify your data management systems, likely using knowledge graph technology, and possibly a NoCode or LowCode database depending on the complexity of your business. To analyze needs and conduct a phased transformation, we have defined the TRAIDA framework (Transformative AI and Data Solutions) which contains essential knowledge both technically and in terms of governance. The AI Add-on scenario is deployed as a starting point to implement initial AI automation that addresses simple but tactically significant cases. It supports the operations of an early-stage deployment. In this scenario, the AI automations simply invoke the existing systems. The AI Booster scenario is deployed to support a medium-sized business with a simple core activity, or one already supported by an ERP solution. It serves to boost a rigid core system by adding a more agile, low-code AI layer on the front end. The AI Core scenario is used to deploy an alternative to the conventional core-system and ERP approach, enabling greater flexibility through the native integration of AI across the organization. The technical architecture is based on a series of software components that form a stack, including data management, automation tools (workflows), and AI solutions. Each software component is integrated into a global execution platform, which can be either managed on the company’s premises (on-premise) or hosted by a provider (SaaS, Cloud). Given the level of technical expertise required to ensure the security and scalability of both the software and the execution platform, it is recommended to delegate their installation and administration to a specialized service provider. Therefore, the choice of technical scenario must also consider selecting an IT service provider capable of operating the chosen software stack. The choice of technical scenario must be compatible with the selected provider for operating your IT systems. It is crucial to ensure that the provider is capable of installing and managing the chosen technologies while meeting the expected performance, security, and cost requirements. Choosing your IT stack for AI, NoCode, and Data is like choosing a vehicle for a journey. You start at point A, and you want to reach point B—but you may eventually head to C or D. Some people need speed, others need space for family, pets, or business cargo. Your choice depends on your goals, budget, ethics (fuel vs. electric), and future plans. Just like a sports car, van, or electric SUV, your tech stack must fit your specific needs. Do you need fast prototypes or long-term scalability? Manual control or automation? The road you choose—flat highways or winding trails—also impacts your decision. A bad fit means higher costs, delays, and inefficiencies along the journey. The right stack, like the right car, gets you there smoothly, with room to adapt. That’s why an architecture study is essential: it helps you pick the right “vehicle” now. Traditional ML models require task-specific training with large labeled datasets. LLMs are pretrained on massive text corpora and can generalize across many tasks. Few-shot prompting lets LLMs perform tasks by showing just a few examples in the prompt. This mimics supervised ML without the need for model retraining or fine-tuning. ML models need to be retrained when the task changes; LLMs just need a new prompt. Few-shot LLMs are flexible but may be less accurate than fully trained ML models. LLMs can handle structured and unstructured data directly from natural language. ML often requires feature engineering, while LLMs use text as-is. LLMs are ideal for prototyping or when labeled data is scarce. Few-shot learning shows how LLMs can act like ML models—without training a new one. CAPEX, OPEX, ROI & Break-even We believe it’s essential to clarify the values of CAPEX and OPEX for the company’s IT system by comparing them with market standards. Then, we recommend analyzing the expected productivity gains from AI by measuring them based on the average revenue generated per employee over the years. To compute your CAPEX, OPEX, ROI (and break-even), download the two Excel sheets made freely available to you by the Engage-Meta community. They are simple and effective. Aiming to scale AI across the company without clarifying CAPEX, OPEX, ROI (and break-even) leads to a chaotic process. On the other hand, trying to precisely calculate the costs and expected benefits of AI over several years in a reliable way is nearly impossible—everything changes too quickly, both technically (e.g., token pricing) and in terms of ideas that reshape how we work. What remains stable, however, are your CAPEX, OPEX, and the key indicator of average revenue generated per employee over the years. These financial values provide a solid foundation for building a 3- to 5-year roadmap—strong enough to engage decision-makers and all company stakeholders. Of course, CAPEX should support a deep overhaul of the existing IT system to eliminate silos and integrate AI at scale under the best conditions—effectively a kind of rebirth for corporate IT. Without strong, market-standard CAPEX, large-scale AI deployment simply isn’t possible. Download the CAPEX-OPEX Excel file HERE. Download the ROI (Revenue per employee) Excel file HERE. Download the TRAIDA cards Click HERE or on the image to download the PDF of the global map. The TRAIDA framework consists of 20 cards and 65 topics to address AI and the associated data solutions. Here you will find 9 technical cards (30 topics), 6 governance cards (17 topics)  and 5+ business cards (18 topics). Each TRAIDA card is accompanied by a concise documentation that explains its importance in improving data quality and the use of AI on a large scale within the company. With its 20 cards and 65 topics, it offers a comprehensive view of enterprise architecture approached through the lens of data management and AI. Here is the introductory slide deck for the TRAIDA cards. You can freely use it in your projects, courses, and commercial offers. By doing so, you contribute to the alignment of IT and Business … Continue reading TRAIDA