Citizen Developer
Zeitspanne
explore our new search
Power Apps: New App Development with AI
Power Apps
15. Jan 2026 06:11

Power Apps: New App Development with AI

von HubSite 365 über Deepak Shrivastava [MVP]

Senior Manager at Ernst & Young | Microsoft MVP | MCT

Build apps with Power Apps and Microsoft Power Platform using AI agents for natural language specs, data models and code.

Key insights

  • vibe.powerapps.com is the new Power Apps experience that turns plain ideas into working apps.
    You describe a use case and the platform uses AI to start building a full app quickly.
  • The platform relies on AI agents and natural language prompts to generate requirements, user stories, and a suggested data model.
    Agents then produce full-stack code, UI components, forms, and APIs that you can refine.
  • Key components include Microsoft 365 Copilot for in-workflow assistance, Dataverse for secure data, and extensible code apps for professional developers.
    The system supports hundreds of connectors so apps integrate with existing data and tools.
  • Major benefits are faster development, better team collaboration, and improved governance.
    Non-coders can prototype with AI while pro developers extend, review, and secure production apps.
  • A simple step-by-step flow: sign in, enter a clear prompt, review the generated prototype, use real-time editing to refine, then save and publish.
    Iteratively discuss changes with agents or edit directly to reach a production-ready app.
  • Follow security and lifecycle best practices: enable Entra authentication, apply DLP policies, and use a Center of Excellence for governance.
    Reuse templates and involve developers for custom logic to ensure scalability and maintainability.

Overview

The YouTube video by Deepak Shrivastava [MVP] introduces the new app development experience at vibe.powerapps.com, showing how creators can build applications using natural language and AI-assisted agents. In the video, users describe their requirements and the platform generates user stories, a suggested data model, and full-stack code that can be edited in real time. Consequently, this approach promises to reduce development time while making professional apps accessible to both business users and developers. Moreover, the demonstration highlights how the system blends low-code builders with traditional developer tooling for extensibility.


How the AI-Powered Workflow Works

First, a user types a plain-language request such as "build an inventory tracker with forms and reports," and a set of specialized agents begins to collaborate on the solution. These agents produce a cohesive plan, propose a Dataverse schema or other data sources, and scaffold a working app that includes forms, APIs, and UI components. Then, the creator can refine the result through conversational prompts, inline edits, or point-and-click adjustments until the app meets requirements. As a result, the platform merges automated generation with human oversight to maintain control over final outcomes.


Benefits and Tradeoffs

The biggest advantage shown in the video is speed: what used to take days or weeks can become a prototype in minutes, enabling faster iteration and quicker validation of ideas. However, speed comes with tradeoffs, because generated code and models may require review and refinement to satisfy complex business rules or performance needs. Additionally, the convenience of agent-driven creation reduces initial friction for non-developers, yet it can increase reliance on AI decisions unless teams enforce robust governance. Therefore, organizations must balance rapid delivery with careful code review, testing, and policy enforcement to ensure production readiness.


Governance, Security, and Practical Challenges

Deepak emphasizes enterprise features such as Entra authentication, data loss prevention, and the ability to integrate many connectors, but these raise practical governance questions. For example, automated generation must align with a company’s security policies and compliance needs, and administrators need tools to audit and remediate generated components. Furthermore, challenges include managing data consistency across connectors, avoiding inadvertent data exposure, and ensuring the generated code conforms to performance and scalability expectations. Hence, teams should embed a governance workflow early to review agent recommendations and enforce organizational standards.


Tradeoffs Between Low-Code Speed and Developer Control

The video illustrates how professional developers can extend or replace parts of generated apps using standard frameworks like React or Vue, which preserves the ability to craft advanced experiences. Nevertheless, this flexibility introduces a tradeoff: customizing generated artifacts increases maintenance complexity and can blur responsibilities between makers and pro devs. In practice, organizations must decide where to draw the line between rapid app creation for business users and deep engineering work by developers. Consequently, a hybrid approach—quick prototypes from AI with targeted handoffs for critical paths—often provides the best balance.


Practical Tips and Recommended Next Steps

Deepak recommends starting small: test with noncritical apps to learn how prompts produce outputs and how agents respond to refinement. Also, review generated data models and code before publishing, and involve IT or a CoE to set policies around connectors, authentication, and lifecycle processes. Finally, use the platform’s real-time editing and conversation features to iterate quickly while maintaining structured reviews for security and performance. By combining experimentation with disciplined governance, teams can extract the productivity gains shown in the video while managing the inherent risks.


Conclusion

The showcased vibe coding experience for Power Apps highlights a meaningful shift toward AI-assisted app development that accelerates delivery and broadens who can participate in building business applications. Yet, as the video makes clear, organizations must weigh speed against control, enforce governance, and plan for long-term maintainability. In summary, Deepak Shrivastava [MVP] demonstrates a practical path forward: use AI to jumpstart projects, but pair automation with human review and strong policies to ensure enterprise readiness. Overall, the platform offers real promise, provided teams consciously manage the tradeoffs and challenges involved.


Power Apps - Power Apps: New App Development with AI

Keywords

PowerApps tutorial, new app development experience PowerApps, PowerApps AI integration, low-code app development PowerApps, Power Apps maker tutorial, build canvas apps PowerApps, step-by-step PowerApps development, vibecoding PowerApps