I want to deploy a successful custom training job on GCP using a prebuilt scikit-learn container. The model I am using is a scikit-learn RandomForestClassifier saved using joblib. The deployment fails with
message: "terminate called after throwing an instance of 'std::length_error'"
However, based on this question, I can make a prediction by accessing GCSFS with the following:
from io import BytesIO import numpy blob = bucket.blob('project/model/model.joblib') model_file = BytesIO() blob.download_to_file(model_file) model = joblib.load(model_file) # Predict with one sample print(model.predict(numpy.array([1,1,24,1,0,211,2,31]).reshape(1,-1)))
It also runs with
gcloud ai-platform local predict --model-dir gs://modeldir \ --json-instances input.json \ --framework scikit-learn
If it runs successfully locally, I don't understand why it fails in the prediction container.