By: Ittai Muller, Senior Data Scientist
Getting started with AI: how to choose the first use case?
At Bright Cape, we believe that data is the engine behind operational success, but only in combination with the human side of the organization. Implementing AI and Agentic AI solutions can help companies improve efficiency, reduce costs, and get more work done in less time. However, AI is not a universal solution. Without a clear value strategy and the right investment in teams and infrastructure, AI remains a promise instead of becoming a catalyst for growth.
That is why we do not focus only on the technology. We also share insights on how to develop realistic expectations of AI, ensure data quality, and maintain human control.
Step by step, we guide you from the first introduction to AI within your organization to embedding a data-driven mindset more broadly. With AI, but without losing sight of the human component.
In this blog, we zoom in on a question many organizations face when they want to start with AI: what is the right first use case?
A good first AI use case should do three things: deliver value, be feasible, and create support within the organization. In practice, this means you do not start with technology, but with processes. After that, you determine which use cases have the most potential and assess whether the organization is ready to work with them. By following these steps in the right order, a realistic starting point for AI is created.