Model: USS-Inferprise/Phi4-Mini-Prose2Tags-4B-GGUF Source: Original Platform
library_name, tags, base_model, license, pipeline_tag
| library_name | tags | base_model | license | pipeline_tag | ||||||
|---|---|---|---|---|---|---|---|---|---|---|
| gguf |
|
|
mit | text-generation |
Quants of (https://huggingface.co/USS-Inferprise/Phi4-Mini-Prose2Tags-4B)
quantized_by: USS-Inferprise
We also include a concept for a ComfyUI custom node for applying this model in a workflow.
Original Model Card Follows:
Phi4-Mini-Prose2Tags-4B
This model is a specialized fine-tune designed to translate natural language prose descriptions into structured Danbooru-style tags. It is intended to bridge the gap between human-readable image captions and the tag-based prompting systems used by many latent diffusion models.
Model Details
- Developed by: USS-Inferprise
- Model Name: Phi4-Mini-Prose2Tags-4B
- Base Model: huihui-ai/Phi-4-mini-instruct-abliterated
- Training Architecture: LoRA (Low-Rank Adaptation)
- Merging Method: Linear Merge (via Mergekit)
- Primary Task: Prose-to-Tag Translation
Training Methodology
Dataset Construction
The training data (USS-Inferprise/Phi4-Mini-Prose2Tags-4B-Raw-Training-Data) was generated using a synthetic pipeline:
- Source Images: 100,000 images sourced from
laion/conceptual-captions-12m-webdataset. - Prose Generation: Images were described using QwenVL.
- Tag Generation: Images were tagged using WD 1.3.
- Pairing: The resulting QwenVL descriptions and WD 1.3 tags were paired to create the final training instruction set.
⚠️ Safety & Content Note
Important
This model was trained exclusively on a curated subset of data intended for general audiences. No explicit, NSFW, or adult-oriented tags were included in the training dataset (
Prose2Tags-4B-Raw-Training-Data).While the base model (
Phi-4-mini-instruct-abliterated) has been modified to reduce certain refusals, this specific fine-tune is designed for clean, descriptive tagging. It may not recognize or accurately generate tags related to explicit content. If it can... it didn't learn it from us.
Training Process
- Library: Unsloth
- Hardware: NVIDIA L40S
- Epochs: 1
- Method: LoRA fine-tuning merged into the base model using a Linear merge strategy.
Evaluation & Testing
Testing was performed on 100 images excluded from the training set. To ensure the model generalizes well across different captioning styles, the test inputs used gokaygokay/Florence-2-SD3-Captioner instead of the training-source QwenVL.
Detailed test outputs can be found here: USS-Inferprise/Phi4-Mini-P2T-4B-Testing.
Proper Prompt Format
Warning: You must strictly follow the prompt format below. Failure to do so may result in the model reverting to the standard Phi-4-Mini helpful persona rather than generating tags.
<|user|>
You are a Danbooru tag translator.
{prose_input}<|end|>
<|assistant|>