Storing Models in the Cloud¶
Rasa NLU supports using S3 and GCS to save your models.
- Amazon S3 Storage
S3 is supported using the
boto3module which you can install withpip install boto3.Start the Rasa NLU server with
storageoption set toaws. Get your S3 credentials and set the following environment variables:AWS_SECRET_ACCESS_KEYAWS_ACCESS_KEY_IDAWS_DEFAULT_REGIONBUCKET_NAMEAWS_ENDPOINT_URL
If there is no bucket with the name
BUCKET_NAMERasa will create it.
- Google Cloud Storage
GCS is supported using the
google-cloud-storagepackage which you can install withpip install google-cloud-storageStart the Rasa NLU server with
storageoption set togcs.When running on google app engine and compute engine, the auth credentials are already set up. For running locally or elsewhere, checkout their client repo for details on setting up authentication. It involves creating a service account key file from google cloud console, and setting the
GOOGLE_APPLICATION_CREDENTIALSenvironment variable to the path of that key file.
- Azure Storage
Azure is supported using the
azure-storage-blobpackage which you can install withpip install azure-storage-blobStart the Rasa NLU server with
storageoption set toazure.The following environment variables must be set:
AZURE_CONTAINERAZURE_ACCOUNT_NAMEAZURE_ACCOUNT_KEY
If there is no container with the name
AZURE_CONTAINERRasa will create it.
Models are gzipped before saving to cloud.