Releases: eulogik/NanoForecast
Releases · eulogik/NanoForecast
v0.3 — Colab T4 training, 21% MASE improvement, 6.5M params
v0.3 Release
Highlights
- Larger model: d_model=96, 8 layers, 6.5M params (up from 1.6M)
- Longer context: 512 timesteps (up from 256)
- More data: 6 real datasets + 10K synthetic records, 200 epochs
- 21% MASE improvement: Overall MASE 2.73 (was 3.45 in v0.2)
- 5/6 datasets improved: ETTh1 (-42%), ETTh2 (-26%), ETTm1 (-39%), electricity (-16%), traffic (-35%)
- Trained on Colab T4: 11.7h wall time, best epoch 147, val_loss 0.2230
- Best checkpoint pushed: https://huggingface.co/eulogik/nanoforecast-v03
Full Benchmarks
| Dataset | MASE | sMAPE |
|---|---|---|
| ETTh1 | 1.95 | 12.06% |
| ETTh2 | 2.74 | 10.47% |
| ETTm1 | 2.17 | 10.70% |
| exchange_rate | 7.44 | 1.72% |
| electricity | 1.29 | 4.76% |
| traffic | 0.81 | 24.00% |
Links
- Model Hub: https://huggingface.co/eulogik/nanoforecast-v03
- Live Demo: https://huggingface.co/spaces/eulogik/nanoforecast
- Paper: deploy/paper.tex
- PyPI: https://pypi.org/project/nanoforecast/
What's Changed
- Colab training notebook: deploy/colab_training_v03.ipynb
- Dataset caching: retry on corrupted downloads
- Gradio 6.x placeholder fix