Rotating Box Challenge: Why OpenAI GPT Beat DeepSeek and Qwen2.5 Hands Down
Author(s): Tarun Singh
Originally published on Towards AI.
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Imagine a rotating box. Inside it, a ball bounces around, striking the walls, defying gravity, and never stepping out of bounds. Sounds simple, right? Well, not for every AI model.
I decided to put three of the most talked-about AI models β OpenAI GPT, DeepSeek, and Qwen2.5 β to the test. The challenge? A simple physics simulation of a rotating box with a bouncing ball. No technical jargon, no pricing debates, no architecture comparisons β just a practical, real-world demonstration of how well these models can execute a given prompt.
Hereβs how it went down.
I gave all three models the exact same prompt:
Physics Simulation: Ball in a Rotating Box Create a Python program that simulates a ball moving inside a rotating square box. The simulation should: – Use Pygame (or Pygame+Pymunk) for physics and graphics – Display a square box rotating continuously around its center – Show a ball affected by gravity and collisions – Ensure the ball stays within the box's boundaries – Provide smooth animation and realistic physics behavior Technical Requirements: – Python 3.x with Pygame – 800×800 pixel window – 60 FPS target performance – Basic collision detection… Read the full blog for free on Medium.
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Published via Towards AI