The shap-e repository provides the official code and model release for Shap-E, a conditional generative model designed to produce 3D assets (implicit functions, meshes, neural radiance fields) from text or image prompts. The model is built with a two-stage architecture: first an encoder that maps existing 3D assets into parameterizations of implicit functions, and then a conditional diffusion model trained on those parameterizations to generate new assets. Because it works at the level of implicit functions, Shap-E can render output both as textured meshes and NeRF-style volumetric renderings. The repository contains sample notebooks (e.g. sample_text_to_3d.ipynb, sample_image_to_3d.ipynb) so users can try out text → 3D or image → 3D generation. The code is distributed under the MIT license, and includes a “model card” that documents limitations, recommended use, and ethical considerations.

Features

  • Conditional generation of 3D implicit function models from text or images
  • Two-stage model architecture: encoder + diffusion over implicit parameter space
  • Output in multiple representations: meshes, NeRF renderings
  • Sample notebooks for text23D and image23D use cases
  • Model card documenting limitations, biases, and usage guidance
  • MIT-licensed code, allowing reuse and extension

Project Samples

Project Activity

See All Activity >

Categories

Generative AI

License

MIT License

Follow Shap-E

Shap-E Web Site

Other Useful Business Software
Earn up to 16% annual interest with Nexo. Icon
Earn up to 16% annual interest with Nexo.

More flexibility. More control.

Generate interest, access liquidity without selling, and execute trades seamlessly. All in one platform. Geographic restrictions, eligibility, and terms apply.
Get started with Nexo.
Rate This Project
Login To Rate This Project

User Reviews

Be the first to post a review of Shap-E!

Additional Project Details

Programming Language

Python

Related Categories

Python Generative AI

Registered

2025-10-02