license: cc-by-4.0
task_categories:
- text-to-3d
- image-to-3d
language:
- en
tags:
- CAD
- code-generation
CADFS Dataset
CADFS: A Big CAD Program Dataset and Framework for Computer-Aided Design with Large Language Models
A large-scale dataset for parametric CAD model generation from text descriptions and multi-view images. Models are represented as FeatureScript programs, enabling direct import into Onshape environment.
This dataset was used to train and evaluate CADFS, a fine-tuned Qwen2-VL-2B multimodal language model for text-to-CAD and image-to-CAD generation.
Data Description
dataset/ β Processed Data
| File | Description |
|---|---|
featurescript_fp.zip |
Full-precision processed FeatureScript programs. |
featurescript_rp.zip |
Used in training and evaluation. Reduced-precision variant with floating-point values rounded to 2 decimal places. Produces a more compact token representation suitable for language model training. Note that rounding may break compilability for some models, while others are only compilable in reduced precision. |
text_annotations.zip |
Natural language annotations describing the geometry, topology, and design intent of each model, obtained with GPT-OSS-120b. |
step.zip |
STEP files with B-rep geometry. Rendered from featurescript_fp.zip where possible, or featurescript_rp.zip otherwise. |
raw/ β Raw Source Data
Source data used to create the processed FeatureScript representation.
| File | Description |
|---|---|
featurescript_raw.zip |
Unprocessed FeatureScript programs. |
sketch_raw.zip |
Sketch metadata extracted from FeatureScript feature trees. |
step_abc.zip |
STEP files extracted from the ABC dataset, used in both training and evaluation. |
multiview_images_abc.zip |
Multi-view images rendered from step_abc.zip, used in both training and evaluation. |
test_data/ β Evaluation Benchmarks
Minimal data required to perform evaluation, without the need to download the full dataset. A .json metadata file and a .zip archive are provided for each benchmark:
| Benchmark | Contents |
|---|---|
| CADFS | jsonl, fs, annotations, images, step |
| DeepCAD | jsonl, fs, annotations, images, step |
| CADParser | jsonl, images, step |
train_data/ β Training Splits
Training data is split into two stages following the CADFS two-stage fine-tuning strategy, and two input modalities each. We filtered out duplicates and kept only samples whose input and output fit within a context size of 8192 tokens.
| File | Stage | Modality | Description |
|---|---|---|---|
stage1_txt_train.jsonl |
Stage 1 | Text | Pre-training on text-to-FeatureScript generation |
stage1_img_train.jsonl |
Stage 1 | Image | Pre-training on image-to-FeatureScript generation |
stage2_txt_train.jsonl |
Stage 2 | Text | Fine-tuning with high-quality curated text pairs |
stage2_img_train.jsonl |
Stage 2 | Image | Fine-tuning with high-quality curated image-program pairs |
For training and evaluation we use .jsonl data format. Each .jsonl line follows the format:
Image input:
{
"messages": [
{
"role": "system",
"content": "You are CAD code generation model."
},
{
"role": "user",
"content": "<image>Generate a CAD model using FeatureScript framework..."
},
{
"role": "assistant",
"content": "FeatureScript 1511;\n..."
}
],
"images": ["path/to/0085/00858269.png"],
"cad_file_id": "00858269"
}
Text input:
{
"messages": [
{
"role": "system",
"content": "You are CAD code generation model."
},
{
"role": "user",
"content": "Step 1 - Sketch\nCreate a new sketch on the default top plane..."
},
{
"role": "assistant",
"content": "FeatureScript 1511;\n..."
}
],
"cad_file_id": "00858269"
}
Usage
For usage examples, inference code, and FeatureScript processing pipeline, see the CADFS GitHub repository.
License
This dataset is released under CC BY 4.0.
It may be used for any purpose, including commercial, with attribution.
Citation
If you use this dataset in your research, please cite:
@inproceedings{pyatov2026cadfs,
title = {{{CADFS}}: A Big {{CAD}} Program Dataset and Framework for Computer-Aided Design with Large Language Models},
shorttitle = {{{CADFS}}},
booktitle = {2026 {{IEEE}}/{{CVF Conference}} on {{Computer Vision}} and {{Pattern Recognition}} ({{CVPR}})},
author = {Vladislav Pyatov and Gleb Bobrovskikh and Saveliy Galochkin and Nikita Boldyrev and Oleg Voynov and Alexander Filippov and Gonzalo Ferrer and Peter Wonka and Evgeny Burnaev},
year = 2026,
month = jun,
langid = {english}
}