lightning/pytorch_lightning/loggers/mlflow.py

119 lines
3.1 KiB
Python

"""
Log using `mlflow <https://mlflow.org>'_
.. code-block:: python
from pytorch_lightning.loggers import MLFlowLogger
mlf_logger = MLFlowLogger(
experiment_name="default",
tracking_uri="file:/."
)
trainer = Trainer(logger=mlf_logger)
Use the logger anywhere in you LightningModule as follows:
.. code-block:: python
def train_step(...):
# example
self.logger.experiment.whatever_ml_flow_supports(...)
def any_lightning_module_function_or_hook(...):
self.logger.experiment.whatever_ml_flow_supports(...)
"""
from logging import getLogger
from time import time
try:
import mlflow
except ImportError:
raise ImportError('Missing mlflow package.')
from .base import LightningLoggerBase, rank_zero_only
logger = getLogger(__name__)
class MLFlowLogger(LightningLoggerBase):
def __init__(self, experiment_name, tracking_uri=None, tags=None):
r"""
Logs using MLFlow
Args:
experiment_name (str): The name of the experiment
tracking_uri (str): where this should track
tags (dict): todo this param
"""
super().__init__()
self._mlflow_client = mlflow.tracking.MlflowClient(tracking_uri)
self.experiment_name = experiment_name
self._run_id = None
self.tags = tags
@property
def experiment(self):
r"""
Actual mlflow object. To use mlflow features do the following.
Example::
self.logger.experiment.some_mlflow_function()
"""
return self._mlflow_client
@property
def run_id(self):
if self._run_id is not None:
return self._run_id
expt = self._mlflow_client.get_experiment_by_name(self.experiment_name)
if expt:
self._expt_id = expt.experiment_id
else:
logger.warning(f"Experiment with name {self.experiment_name} not found. Creating it.")
self._expt_id = self._mlflow_client.create_experiment(name=self.experiment_name)
run = self._mlflow_client.create_run(experiment_id=self._expt_id, tags=self.tags)
self._run_id = run.info.run_id
return self._run_id
@rank_zero_only
def log_hyperparams(self, params):
for k, v in vars(params).items():
self.experiment.log_param(self.run_id, k, v)
@rank_zero_only
def log_metrics(self, metrics, step=None):
timestamp_ms = int(time() * 1000)
for k, v in metrics.items():
if isinstance(v, str):
logger.warning(
f"Discarding metric with string value {k}={v}"
)
continue
self.experiment.log_metric(self.run_id, k, v, timestamp_ms, step)
def save(self):
pass
@rank_zero_only
def finalize(self, status="FINISHED"):
if status == 'success':
status = 'FINISHED'
self.experiment.set_terminated(self.run_id, status)
@property
def name(self):
return self.experiment_name
@property
def version(self):
return self._run_id