Are you sure you want to delete this access key?
Legend |
---|
DVC Managed File |
Git Managed File |
Metric |
Stage File |
External File |
Legend |
---|
DVC Managed File |
Git Managed File |
Metric |
Stage File |
External File |
Use DAGsHub to create reproducible versions of your data science research project, allow others to understand your project, and to contribute back to it.
DAGsHub is built firmly around open, standard formats for your project. In particular:
Therefore, you can work with DAGsHub regardless of your chosen programming language or frameworks.
This client library is meant to help you get started quickly in Python, but it's purely optional - the data formats are very simple and you can choose to work with them directly.
You can learn more by completing our short tutorial or reading the docs
pip install dagshub
from dagshub import dagshub_logger, DAGsHubLogger
# As a context manager:
with dagshub_logger() as logger:
# Metrics:
logger.log_metrics(loss=3.14, step_num=1)
# OR:
logger.log_metrics({'val_loss': 6.28}, step_num=2)
# Hyperparameters:
logger.log_hyperparams(lr=1e-4)
# OR:
logger.log_hyperparams({'optimizer': 'sgd'})
# As a normal Python object:
logger = DAGsHubLogger()
logger.log_hyperparams(num_layers=32)
logger.log_metrics(batches_per_second=100, step_num=42)
# ...
logger.save()
logger.close()
The basic DAGsHub logger is just plain Python, and requires no specific framework.
However, for convenience, we include some integrations with common ML frameworks, which can just work right out of the box, without having to write any logging code on your own:
Made with 🐶 by DAGsHub.
Press p or to see the previous file or, n or to see the next file
Are you sure you want to delete this access key?
Are you sure you want to delete this access key?
Are you sure you want to delete this access key?
Are you sure you want to delete this access key?