Created
November 14, 2022 05:44
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import mlflow | |
from sklearn.linear_model import LogisticRegression | |
from pathlib import Path | |
import tempfile | |
with mlflow.start_run(): | |
mi = mlflow.sklearn.log_model(LogisticRegression(), "model") | |
client = mlflow.MlflowClient() | |
with tempfile.TemporaryDirectory() as tmpdir: | |
dst = mlflow.artifacts.download_artifacts(mi.model_uri, dst_path=tmpdir) | |
for p in Path(dst).rglob("*"): | |
rel_path = p.relative_to(dst) | |
if rel_path.name == "requirements.txt": | |
contents = p.read_text() | |
new_contents = "\n".join( | |
"mlflow==1.30.0" if l == "mlflow" else l for l in contents.splitlines() | |
) | |
p.write_text(new_contents) | |
client.log_artifact(mi.run_id, str(p), "model") | |
elif rel_path.name == "conda.yaml": | |
contents = p.read_text() | |
new_contents = "\n".join( | |
l.replace("mlflow", "mlflow==1.30.0") if l.endswith(" - mlflow") else l | |
for l in contents.splitlines() | |
) | |
p.write_text(new_contents) | |
client.log_artifact(mi.run_id, str(p), "model") |
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