
Currently I am sharing my knowledge with the Power Platform, with PowerApps and Power Automate. With over 8 years of experience, I have been learning SharePoint and SharePoint Online
In a recent YouTube demonstration, Andrew Hess - MySPQuestions shows how a single AI prompt can drive the creation of a full Power Platform solution. He uses Plan Designer to translate plain language into data tables, a canvas app, and a Power BI report. The video also walks viewers through interactions with Copilot and adjustments to default Power Fx formulas. Consequently, the presentation highlights how low-code tools can accelerate the journey from idea to functioning software.
Initially, the video opens with a conversation between the maker and Copilot, which frames the requirement and refines the scope. Then, the presenter finalizes the prompt using iterative edits and runs a process agent that generates an entity relationship diagram and sample tables. Next, the tool creates a Users Microsoft Dataverse table, exports documentation as a PDF, and produces a one-shot Canvas app. Finally, the demo shows tweaking formulas and making small UI or logic changes to meet business needs.
The demonstration relies on several pillars of the Microsoft ecosystem, including Power Apps, Microsoft Dataverse, Power BI, and AI-driven features in AI Builder. Moreover, the prompt execution appears to leverage models like GPT-4o through Azure OpenAI services, enabling generative code and content. The Prompt Builder tool plays a central role by turning a human instruction into a reusable, solution-aware prompt. As a result, both developers and citizen makers can apply the same prompt across apps and flows.
Importantly, the video frames the work within an Agile project management lens, treating the single prompt as the minimal viable requirement that evolves with feedback. The presenter emphasizes short cycles, quick validation, and refinement—techniques that mirror sprint-based development. Consequently, the generated artifacts act as rapid prototypes that the team can iterate on during subsequent sprints. This hybrid approach balances speed with practical governance.
First, the approach dramatically shortens prototyping time by converting natural language directly into working components, which helps non-developers accelerate solutions. Second, it increases accessibility by wrapping complex AI and model calls into low-code expressions via Power Fx. Third, because prompts are solution-aware and reusable, organizations can standardize patterns and replicate them across projects. Therefore, the method supports both rapid innovation and repeatable practice.
However, this speed introduces tradeoffs around control and quality. While generated apps provide a strong starting point, they often require careful review to meet security and compliance standards. In addition, generated formulas and data models may not follow organizational naming conventions or performance best practices, which can complicate maintenance. Thus, teams must balance the benefit of rapid output against the need for governance and technical debt management.
Prompt engineering remains a practical hurdle because small wording changes can produce different outputs, so reproducibility can be inconsistent across runs. Likewise, debugging generated Power Fx expressions or data relationships can be time-consuming when logic is embedded in auto-created artifacts. Consequently, organizations should pair AI generation with strong test cases and human review to catch errors early. Moreover, tracking versions of prompts and generated assets is essential for long-term maintainability.
Moving a generated app into a production environment requires extra steps, such as performance tuning, security hardening, and integration testing with existing systems. Furthermore, when teams attempt to scale this approach across many projects, they must invest in templates, coding standards, and governance frameworks. Therefore, while the video demonstrates a compelling one-shot capability, practical adoption demands organizational readiness and cross-functional coordination.
The demo also touches on how these capabilities can fit into enterprise project portfolio management by speeding up proof-of-concept efforts. Tools like OnePlan and integrations with Azure DevOps or traditional project schedules make it possible to align rapid apps with portfolio priorities. Yet portfolio teams must be careful to evaluate cost, capacity, and strategic value before converting prototypes into tracked investments. As a result, decision-makers benefit from seeing prototypes as inputs to portfolio planning rather than final deliverables.
In summary, Andrew Hess - MySPQuestions demonstrates a persuasive workflow where one clear prompt drives a full Power Platform solution, and the approach has clear advantages for speed and accessibility. Nevertheless, the method calls for disciplined governance, testing, and iterative refinement to ensure long-term reliability. Finally, organizations should treat generated apps as draft outputs that accelerate collaboration between citizen makers and professional developers while they apply agile practices to refine and harden the results.
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