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license: apache-2.0
task_categories:
- image-classification
- text-to-image
language:
- en
- zh
tags:
- preference
- reward-model
- text-to-image
- human-feedback
pretty_name: HPDv3++
size_categories:
- 100K<n<1M
---
# HPDv3++: A Dual-Dimension Preference Dataset for Text-to-Image Reward Modeling
HPDv3++ is a large-scale human-preference dataset for text-to-image (T2I) generation, built on a frontier generator (Qwen-Image) and annotated along two axes: **text-following (TF)** and **aesthetic quality (Aes)**. It is the dataset used to train [HPSv3++](https://huggingface.co/Junjun2333/HPSv3-PlusPlus), a capability-aware and RL-iteration-aware reward model.
Each preference pair stores a **preferred** image (`path1`) and a **non-preferred** image (`path2`) for the same prompt.
## Quick start
```bash
pip install -U "huggingface_hub[cli]"
hf download Junjun2333/HPDv3-PlusPlus --repo-type dataset --local-dir HPDv3pp
cd HPDv3pp
# Reassemble and extract our image pool (split tar parts -> images/qwen_image, images/rollout, images/thumbs):
cat images.tar.part* | tar -xf -
```
The split tar contains **only the images we generated** (`images/qwen_image/`,
`images/rollout/`, `images/thumbs/`). The `stage1_ref.json` reference pairs point
to the **original HPDv3 images** (`images/hpdv3/...`), which we do **not**
re-host here. If you need them (only required to reproduce HPSv3++ Stage 1 with
the original HPDv3 reference set), download the HPDv3 images from the official
repo and place them under `images/hpdv3/`:
```bash
# Original HPDv3 images (only needed for stage1_ref.json)
hf download MizzenAI/HPDv3 --repo-type dataset --include "images.tar.gz.*" --local-dir hpdv3_src
cat hpdv3_src/images.tar.gz.* | gunzip | tar -xv # then move/symlink the resulting images into images/hpdv3/
```
After extraction you get an `images/` directory. Every path in the JSON files
(`path1` / `path2` / `image_path`) is **relative** and resolves against the
repo root, e.g. `images/qwen_image/prompt_000000/6.jpg`. The four ready-to-use
train/test files (`train_aes`, `train_tf`, `test_aes`, `test_tf`) reference only
our own images and need no HPDv3 download.
## What you can use directly
These four files are ready-to-use, self-contained, and **do not require any
HPSv3++ code or model** -- just images + JSON. Each record is
`{"path1": <preferred>, "path2": <non-preferred>, "prompt": <text>}` (the same
format as HPSv3/HPDv3), with `path1` preferred over `path2`.
| File | Pairs | Use |
|---|---|---|
| `train/train_aes.json` | 100,463 | Training -- aesthetic preference |
| `train/train_tf.json` | 90,908 | Training -- text-following preference |
| `test/test_aes.json` | 5,720 | Evaluation -- aesthetic |
| `test/test_tf.json` | 4,465 | Evaluation -- text-following |
The training and test sets are **disjoint** (no shared pairs), including across
the two axes (aes/tf), so they can be used together without leakage.
## Repository layout
```
HPDv3-PlusPlus/
|-- images.tar.part00, images.tar.part01, ... # split tar of OUR images (~268 GB; qwen_image + rollout + thumbs)
|-- train/
| |-- train_aes.json # 100,463 ready-to-use aesthetic training pairs
| |-- train_tf.json # 90,908 ready-to-use text-following training pairs
| |-- stage1_labeled.json # 191,466 labeled pairs (used by HPSv3++ Stage 1)
| |-- stage1_ref.json # 284,974 original HPDv3 reference pairs (Stage 1 OGD anti-forgetting)
| |-- stage2_labeled.json # 111,650 labeled pairs (used by HPSv3++ Stage 2)
| |-- rollout.json # 322,452 unlabeled rollouts, long format, one image per row
| `-- ogd_std.json # 58,242 pre-computed per-group std (also embedded in rollout.json)
|-- test/
| |-- test_aes.json # 5,720 ready-to-use aesthetic test pairs
| `-- test_tf.json # 4,465 ready-to-use text-following test pairs
`-- images/ # after extraction: qwen_image/, rollout/, thumbs/ (ours);
# hpdv3/ must be downloaded separately from MizzenAI/HPDv3 (only for stage1_ref)
```
## JSON formats
**Preference pairs** (`train_aes`, `train_tf`, `stage1_labeled`, `stage1_ref`, `stage2_labeled`, `test_aes`, `test_tf`):
| Field | Meaning |
|---|---|
| `path1` / `path2` | Preferred / non-preferred image (relative `images/...` path) |
| `prompt` | Text prompt |
| `choice_dist` / `confidence` / `model1` / `model2` | (where annotated) vote distribution, confidence, generator names; `null` otherwise. The ready-to-use `train_aes`/`train_tf` and `test` files keep only `path1/path2/prompt`. |
**`rollout.json`** (unlabeled rollouts for HPSv3++ Stage 2; long format, one image per row):
| Field | Meaning |
|---|---|
| `group_id` | Group id (same prompt + tier + iter_step form one group) |
| `source` | `capability` or `iteration` |
| `prompt` | Text prompt |
| `tier` | Generator tier |
| `iter_step` / `iter_norm` | Raw / normalized RL iteration |
| `capability` / `level` | Continuous capability score / discrete level |
| `image_path` | Relative image path |
| `ogd_std` | Pre-computed per-group std |
## Notes
- The images we host here (`qwen_image` + `rollout` + `thumbs`) are ~268 GB. The
original HPDv3 images (`hpdv3/`, ~60 GB, referenced only by `stage1_ref.json`)
are not re-hosted -- download them from MizzenAI/HPDv3 if needed (see Quick start).
- The ready-to-use train/test files reference only our own images, so they work
with just the split tar above (no HPDv3 download needed).
- For the full two-stage training / evaluation pipeline (which additionally uses
`rollout.json`, `stage1_ref.json`, etc.), see the HPSv3++ code repository.
## Citation
```bibtex
@misc{hpsv3pp,
title = {HPSv3++: Scaling Reward Models Across the Full Spectrum of Diffusion Model Capabilities},
author = {HPSv3++ Team},
year = {2026}
}
```
|