Qwen 2.5 Coder 32B: Is This Best Open Weight Model Better than GPT-4o?

Prompt Engineering


Summary

The video introduces the Quin 2.5 model and its variations up to 32 billion, showcasing its performance compared to other models like GBD40 and CL 3.5 in benchmarks. It demonstrates how to build code-based applications with Quin for edge devices ranging from half a billion to 32 billion. The discussion covers leaderboards, including the Quin quarter model and CL 3.5 HIU model, as well as creating web applications like a snake game in Python and generating images using an external API. The step-by-step explanation of implementation processes for backend and API servers, as well as JavaScript interaction, is detailed, along with successful local testing.


Introduction to Quin 2.5 Model

Introduction to the new Quin 2.5 model and its different versions up to 32 billion, highlighting its performance compared to other models like GBD40 and CL 3.5 in benchmarks.

Building Code-Based Applications

Demonstration of how to build code-based applications using the Quin model, specifically focusing on sizes ranging from half a billion to 32 billion for edge devices.

Exploring Leaderboards and Code Refactoring

Discussion on different types of leaderboards, including code refactoring leaderboard and small coding access sizes. Mention of the Quin quarter model and CL 3.5 HIU model in the context of leaderboards.

Creating Web Applications

Creating simple web applications, like a snake game in Python, by experimenting with HTML code and animations, and testing them on two different applications.

Generating Images Using External API

Demonstration of creating a web application to generate images using an external API, involving text input from the user and displaying the generated image on the web page.

Implementation and Testing

Explanation of the implementation process using a detailed prompt to generate code for a backend server, API server, and JavaScript interaction. Testing the generated code locally with successful outcomes.


FAQ

Q: What is the Quin 2.5 model and what are its different versions up to 32 billion?

A: The Quin 2.5 model is a new model with different versions up to 32 billion, showcasing improved performance compared to other models like GBD40 and CL 3.5 in benchmarks.

Q: How can code-based applications be built using the Quin model?

A: Code-based applications using the Quin model can be built by focusing on sizes ranging from half a billion to 32 billion, specifically tailored for edge devices.

Q: What are the different types of leaderboards discussed in the context of the Quin model?

A: Different types of leaderboards include the code refactoring leaderboard, small coding access sizes, as well as mentions of the Quin quarter model and CL 3.5 HIU model.

Q: Describe the process of creating simple web applications using the Quin model.

A: Simple web applications like a snake game in Python can be created by experimenting with HTML code and animations, and then testing them on different applications.

Q: How can a web application be created to generate images using an external API?

A: A web application can be created to generate images using an external API by involving text input from the user and displaying the generated image on the web page.

Q: Explain the implementation process for generating code for a backend server, API server, and JavaScript interaction.

A: The implementation process involves a detailed prompt to generate code for a backend server, API server, and JavaScript interaction, followed by testing the generated code locally for successful outcomes.

Logo

Get your own AI Agent Today

Thousands of businesses worldwide are using Chaindesk Generative AI platform.
Don't get left behind - start building your own custom AI chatbot now!