Experiment tracking for PyTorch-trained models.
- Log, organize, visualize, and compare ML experiments in a single place
- Monitor model training live
- Version and query production-ready models and associated metadata (e.g., datasets)
- Collaborate with the team and across the organization
- Training metrics
- Model checkpoints
- Model predictions
- Other metadata
from neptune_pytorch import NeptuneLogger
run = neptune.init_run()
neptune_logger = NeptuneLogger(
run,
model=model, # your torch Model()
log_model_diagram=True,
log_gradients=True,
log_parameters=True,
log_freq=30,
)
If you got stuck or simply want to talk to us, here are your options:
- Check our FAQ page.
- You can submit bug reports, feature requests, or contributions directly to the repository.
- Chat! In the Neptune app, click the blue message icon in the bottom-right corner and send a message. A real person will talk to you ASAP (typically very ASAP).
- You can just shoot us an email at support@neptune.ai.