Super‑resolution research framework for PyTorch with a focus on simplicity and flexibility using config files.
Project description
SR-Forge
Structured Research Framework for Organized Research & Guided Experiments
SR-Forge is a modular, config-driven PyTorch framework for deep learning research. It handles the repetitive plumbing — data routing, component wiring, configuration management — so you can focus on what matters: your models, your data, and your experiments.
How It Works
Dataset --> [Entry] --> Transforms --> [Entry] --> Model --> [Entry] --> Loss
- A Dataset loads raw data and wraps it in an Entry — a dictionary-like container that carries tensors, metadata, and any other fields through the pipeline
- Transforms preprocess the data (normalize, augment, reshape)
- A Model runs the neural network computation
- Results are written back to the Entry
- A Loss function evaluates the prediction against the target
Every component reads from and writes to Entry objects. This uniform interface is what makes everything interchangeable — swap any component and the rest of the pipeline doesn't change.
Key Features
- Entry-based data flow — All data lives in Entry objects. Every component reads from Entry fields and writes back to them, so components are interchangeable without glue code.
- IO binding — Components declare abstract port names ("I need an
image") that get mapped to concrete Entry fields ("read frominput_rgb"). Write a component once, reuse it with any data layout. - Pipeline composition — Chain models and transforms with a simple arrow syntax:
image -> encoder -> features -> decoder -> output. - Configuration over code — Define entire experiments in YAML. Reproduce any experiment by sharing a config file.
- Built-in models — FSRCNN, DSen2, RAMS, TR-MISR, MagNAt, plus a registry for custom architectures.
- Unified metrics — L1, L2, SSIM, LPIPS, schedulable loss combiners, and straightforward logging.
Installation
Prerequisites
Install PyTorch before installing SR-Forge. Follow the official instructions at pytorch.org to pick the right build for your OS and GPU.
# Example: CUDA 12.8
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cu128
# Example: CPU only
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cpu
Install SR-Forge
pip install srforge
Graph neural network support (optional)
For graph-based models (e.g., MagNAt), install PyTorch Geometric first, then the graph extra:
pip install torch-geometric
pip install pyg-lib torch-scatter torch-sparse torch-cluster torch-spline-conv \
-f https://data.pyg.org/whl/torch-2.7.0+cu128.html
pip install srforge[graph]
Quick Start
mkdir my-experiment && cd my-experiment
srforge init
This generates a complete training script and config file:
my-experiment/
├── train.py # Complete training script
└── configs/
└── train-cfg.yaml # Sample config with all settings
Edit configs/train-cfg.yaml to point at your data, then run:
python train.py
The generated files are a starting point — modify them to fit your workflow. The config supports multi-GPU, mixed precision, dataset caching, W&B tracking, loss scheduling, and checkpointing out of the box.
A Taste of SR-Forge
from srforge.models import Model
from srforge.data import Entry
import torch
class Upscaler(Model):
def __init__(self):
super().__init__()
self.net = torch.nn.Conv2d(3, 3, 3, padding=1)
def _forward(self, image):
return self.net(image)
model = Upscaler()
model.set_io({"inputs": {"image": "input"}, "outputs": "prediction"})
entry = Entry({"input": torch.randn(1, 3, 64, 64)})
result = model(entry)
print(result.prediction.shape) # torch.Size([1, 3, 64, 64])
The model reads from entry["input"], runs the network, and stores the result in entry["prediction"].
Documentation
Full documentation is available at tarasiewicztomasz.gitlab.io/sr-forge.
For Developers
Install PyTorch and PyG with CUDA wheels first (see above), then clone and install in editable mode:
git clone https://gitlab.com/tarasiewicztomasz/sr-forge.git
cd sr-forge
pip install -e ".[dev,graph]"
Run the test suite:
pytest tests/ -v
Some tests require optional dependencies (e.g., torch_geometric). These are automatically skipped if the dependency is missing.
Contributing
SR-Forge is under active development. Contributions welcome!
- Report issues on GitLab
- Submit merge requests
- Share your models and experiments
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