问题
I have trained a semantic segmentation model using the sagemaker and the out has been saved to a s3 bucket. I want to load this model from the s3 to predict some images in sagemaker.
I know how to predict if I leave the notebook instance running after the training as its just an easy deploy but doesn't really help if I want to use an older model.
I have looked at these sources and been able to come up with something myself but it doesn't work hence me being here:
https://course.fast.ai/deployment_amzn_sagemaker.html#deploy-to-sagemaker https://aws.amazon.com/getting-started/tutorials/build-train-deploy-machine-learning-model-sagemaker/
https://sagemaker.readthedocs.io/en/stable/pipeline.html
https://github.com/awslabs/amazon-sagemaker-examples/blob/master/advanced_functionality/inference_pipeline_sparkml_xgboost_abalone/inference_pipeline_sparkml_xgboost_abalone.ipynb
My code is this:
from sagemaker.pipeline import PipelineModel
from sagemaker.model import Model
s3_model_bucket = 'bucket'
s3_model_key_prefix = 'prefix'
data = 's3://{}/{}/{}'.format(s3_model_bucket, s3_model_key_prefix, 'model.tar.gz')
models = ss_model.create_model() # ss_model is my sagemaker.estimator
model = PipelineModel(name=data, role=role, models= [models])
ss_predictor = model.deploy(initial_instance_count=1, instance_type='ml.c4.xlarge')
回答1:
You can actually instantiate a Python SDK model
object from existing artifacts, and deploy it to an endpoint. This allows you to deploy a model from trained artifacts, without having to retrain in the notebook. For example, for the semantic segmentation model:
trainedmodel = sagemaker.model.Model(
model_data='s3://...model path here../model.tar.gz',
image='685385470294.dkr.ecr.eu-west-1.amazonaws.com/semantic-segmentation:latest', # example path for the semantic segmentation in eu-west-1
role=role) # your role here; could be different name
trainedmodel.deploy(initial_instance_count=1, instance_type='ml.c4.xlarge')
And similarly, you can instantiate a predictor object on a deployed endpoint from any authenticated client supporting the SDK, with the following command:
predictor = sagemaker.predictor.RealTimePredictor(
endpoint='endpoint name here',
content_type='image/jpeg',
accept='image/png')
More on those abstractions:
Model
: https://sagemaker.readthedocs.io/en/stable/model.htmlPredictor
: https://sagemaker.readthedocs.io/en/stable/predictors.html
来源:https://stackoverflow.com/questions/56255154/how-to-use-a-pretrained-model-from-s3-to-predict-some-data