--- license: apache-2.0 --- ![img1](./img/overview_paper.jpg) # GeoCAD-LLM: CAD Sequence Generation via Multimodal LLMs with Equivariant Geometric Features🛠️ - [Github](https://github.com/kshsh0405/GeoCADLLM_Inference) - [Paper](comming_soon) ## GeoCAD-LLM_4B_pc🛠️ - Base_model: [Qwen3-4B-Instruct](Qwen/Qwen3-4B-Instruct-2507) - Max sequence length: 8,192 - Epoch: 2 - Learning rate: 1e-4 - Batch size: 128 - This model specialized for pc-text-to-CAD. However, it also supports multi-modality. ## GeoCAD-LLM Contributions🔥 ![img2](./img/model_structure.jpg) - **State-of-the-art Performace🏆** in [Text2CAD](https://huggingface.co/datasets/SadilKhan/Text2CAD) datasets. (as shown in below Tables) - **Multimodal CAD Generation🌐**: Both text-to-CAD and pc-text-to-CAD. - GeoCAD-LLM directly generate CAD vector sequence as **natural language**. - **Novel Two Stage Training Pipeline🧭**: In stage1, training semantic geometry alignment. In stage2, training fine-grained geometry. Especially, we **direct levearge E(3)-equivariant features** for geomtry-consistent supervision, inherently ensuring geometric feature consistency regardless of input orientation. - **Apply Point Cloud Dropout (PCD) technique🧶**: PCD mitigates over-reliance on geometric inputs and improves multimodal generalization. Also, it is a critical training technique for multimodal CAD generation. ## Performace (text-to-CAD & pc-text-to-CAD)🔥 ![img3](./img/performance.jpg) ## Qualitative Results Please check our paper and supplementary materials.🤗 ## Bibtex🤗 ``` (TODO) ```