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Creating a Personal Productivity Assistant Using GLM-5

From Idea to Reality: Building a Personal Productivity Agent in Just Five Minutes with GLM-5 AI

A Revolutionary Approach to Application Development


This headline captures the essence of the article while also highlighting the innovative nature of the GLM-5 AI model and the quick development time.

Building a Productivity Application in 5 Minutes with GLM-5 AI

Have you ever had a brilliant app idea, only to be overwhelmed by the development process that can drag on for weeks or months? What if you could turn that idea into a fully functioning application in the time it takes to enjoy a cup of coffee? This isn’t just wishful thinking anymore!

In this article, we’ll explore how you can create a complete personal productivity agent using the GLM-5 AI model on the Z.ai platform—all in five minutes. This journey highlights the revolutionary potential of agentic AI development, making it easier than ever to turn concepts into minimum viable products (MVPs).

What is the GLM-5 AI Model?

At the heart of this rapid application development is GLM-5, the flagship model from Zhipu AI. This significant advancement in traditional AI assistants has powerful coding capabilities due to its foundation in Agentic Engineering. Unlike conventional models, GLM-5 is designed to be self-directed—capable of understanding high-level objectives, crafting complex actions, writing code, and troubleshooting independently.

GLM-5 supports the entire software development lifecycle. Trained on extensive programming knowledge, it can create project structures, manage databases, and build APIs and user interfaces. With access to an integrated environment complete with a file system, terminal, and editor, GLM-5 allows developers to work more efficiently.

Building a Personal Productivity Agent Using GLM-5

To illustrate the power of GLM-5, we’ll create a fully deployed app using Vibe Coding on the Z.ai platform. Start by visiting Z.ai and selecting the GLM-5 model. Remember to enable “Agent” mode to allow the AI to create files and use the terminal in the cloud.

The First Step: Brainstorming the App

The project kicks off with a high-level prompt: “First brainstorm about a Personal Productivity Agent. Then build an MVP version of that.”

Initially, GLM-5 didn’t dive straight into code but produced a structured plan. This plan outlined key features and the scope of the MVP, confirming that the development stays true to the original vision. The AI generates categories such as task management and time management, allowing us to choose essential features for our MVP.

The Build Process and An Unexpected Hurdle

With the approved plan, GLM-5 began the development phase, creating project structure and defining a database schema. However, challenges are part of any project. An error indicated a database schema drift, an everyday issue in development.

This presented a true test of the AI’s problem-solving capabilities.

Intelligent Recovery

The build paused momentarily as we prompted: “What happened? Please continue building.” GLM-5 analyzed the error, recognized the need to recount the database, and moved forward without additional human intervention.

This incident exemplified the advancement of agentic AI—GLM-5 didn’t just recognize the problem but fixed it and proceeded to generate API routes, develop the main dashboard, and even create a unique logo for the application.

The Final Product: A Deployed MVP

In just five minutes from the initial prompt, we had an MVP application. This productivity agent featured:

  • A sleek dashboard
  • Intelligent task management with a natural language interface
  • A Pomodoro timer
  • An AI Advisor

The app prioritized urgent tasks and allowed for tagging, showcasing the seamless transition from concept to concrete application, powered by the Z.ai platform.

Deploying the Application

Deploying on the Z.ai platform is a breeze. Once the AI builds the app, all it takes is a single click on the “Publish” button to make it live. Within seconds, you receive a unique URL to share your application with the world.

Check out the deployed app here!

Testing the Application

With the app live, it was time to put it through its paces. Features like the Quick Add Task worked flawlessly, allowing users to create tasks effortlessly. The Pomodoro timer functioned as expected, and the AI Assistant displayed impressive context awareness by suggesting task management techniques based on the user’s input.

Conclusion

The rapid development cycle we experienced is indicative of a transformative era in software development. A five-minute estimate, based on direct experience with GLM-5, illustrates its potential. These tools are here to automate tedious coding, debugging, and deployment tasks, enabling developers to focus on what truly matters.

Software is not aimed at replacing human developers but rather empowering them with incredibly potent AI assistance.

Frequently Asked Questions

Q1. What is the GLM-5 AI model?
A1. GLM-5 is a powerful foundation model from Z.human focused on agentic tasks and complex coding, capable of creating applications independently.

Q2. What is the Z.ai platform?
A2. The Z.ai platform combines development tools, allowing access to models like GLM-5 for building, testing, and deploying AI applications.

Q3. How long did it take to build the personal productivity agent?
A3. It took approximately five minutes from the initial idea to a deployed and functioning application.


Harsh Mishra is an AI/ML Engineer who converses more with Large Language Models than with humans. Passionate about GenAI, NLP, and enhancing machine intelligence (for now), when he’s not optimizing models, you’ll find him optimizing his coffee intake. 🚀☕

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