clearml/examples/pipeline/pipeline_from_decorator.py

125 lines
5.8 KiB
Python

from clearml.automation.controller import PipelineDecorator
from clearml import TaskTypes
# Make the following function an independent pipeline component step
# notice all package imports inside the function will be automatically logged as
# required packages for the pipeline execution step
@PipelineDecorator.component(return_values=["data_frame"], cache=True, task_type=TaskTypes.data_processing)
def step_one(pickle_data_url: str, extra: int = 43):
print("step_one")
# make sure we have scikit-learn for this step, we need it to use to unpickle the object
import sklearn # noqa
import pickle
import pandas as pd
from clearml import StorageManager
local_iris_pkl = StorageManager.get_local_copy(remote_url=pickle_data_url)
with open(local_iris_pkl, "rb") as f:
iris = pickle.load(f)
data_frame = pd.DataFrame(iris["data"], columns=iris["feature_names"])
data_frame.columns += ["target"]
data_frame["target"] = iris["target"]
return data_frame
# Make the following function an independent pipeline component step
# notice all package imports inside the function will be automatically logged as
# required packages for the pipeline execution step.
# Specifying `return_values` makes sure the function step can return an object to the pipeline logic
# In this case, the returned tuple will be stored as an artifact named "X_train, X_test, y_train, y_test"
@PipelineDecorator.component(
return_values=["X_train", "X_test", "y_train", "y_test"], cache=True, task_type=TaskTypes.data_processing
)
def step_two(data_frame, test_size=0.2, random_state=42):
print("step_two")
# make sure we have pandas for this step, we need it to use the data_frame
import pandas as pd # noqa
from sklearn.model_selection import train_test_split
y = data_frame["target"]
X = data_frame[(c for c in data_frame.columns if c != "target")]
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=test_size, random_state=random_state)
return X_train, X_test, y_train, y_test
# Make the following function an independent pipeline component step
# notice all package imports inside the function will be automatically logged as
# required packages for the pipeline execution step
# Specifying `return_values` makes sure the function step can return an object to the pipeline logic
# In this case, the returned object will be stored as an artifact named "model"
@PipelineDecorator.component(return_values=["model"], cache=True, task_type=TaskTypes.training)
def step_three(X_train, y_train):
print("step_three")
# make sure we have pandas for this step, we need it to use the data_frame
import pandas as pd # noqa
from sklearn.linear_model import LogisticRegression
model = LogisticRegression(solver="liblinear", multi_class="auto")
model.fit(X_train, y_train)
return model
# Make the following function an independent pipeline component step
# notice all package imports inside the function will be automatically logged as
# required packages for the pipeline execution step
# Specifying `return_values` makes sure the function step can return an object to the pipeline logic
# In this case, the returned object will be stored as an artifact named "accuracy"
@PipelineDecorator.component(return_values=["accuracy"], cache=True, task_type=TaskTypes.qc)
def step_four(model, X_data, Y_data):
from sklearn.linear_model import LogisticRegression # noqa
from sklearn.metrics import accuracy_score
Y_pred = model.predict(X_data)
return accuracy_score(Y_data, Y_pred, normalize=True)
# The actual pipeline execution context
# notice that all pipeline component function calls are actually executed remotely
# Only when a return value is used, the pipeline logic will wait for the component execution to complete
@PipelineDecorator.pipeline(name="custom pipeline logic", project="examples", version="0.0.5")
def executing_pipeline(pickle_url, mock_parameter="mock"):
print("pipeline args:", pickle_url, mock_parameter)
# Use the pipeline argument to start the pipeline and pass it ot the first step
print("launch step one")
data_frame = step_one(pickle_url)
# Use the returned data from the first step (`step_one`), and pass it to the next step (`step_two`)
# Notice! unless we actually access the `data_frame` object,
# the pipeline logic does not actually load the artifact itself.
# When actually passing the `data_frame` object into a new step,
# It waits for the creating step/function (`step_one`) to complete the execution
print("launch step two")
X_train, X_test, y_train, y_test = step_two(data_frame)
print("launch step three")
model = step_three(X_train, y_train)
# Notice since we are "printing" the `model` object,
# we actually deserialize the object from the third step, and thus wait for the third step to complete.
print("returned model: {}".format(model))
print("launch step four")
accuracy = 100 * step_four(model, X_data=X_test, Y_data=y_test)
# Notice since we are "printing" the `accuracy` object,
# we actually deserialize the object from the fourth step, and thus wait for the fourth step to complete.
print(f"Accuracy={accuracy}%")
if __name__ == "__main__":
# set the pipeline steps default execution queue (per specific step we can override it with the decorator)
# PipelineDecorator.set_default_execution_queue('default')
# Run the pipeline steps as subprocesses on the current machine, great for local executions
# (for easy development / debugging, use `PipelineDecorator.debug_pipeline()` to execute steps as regular functions)
PipelineDecorator.run_locally()
# Start the pipeline execution logic.
executing_pipeline(
pickle_url="https://github.com/allegroai/events/raw/master/odsc20-east/generic/iris_dataset.pkl",
)
print("process completed")