Class DeployClient
azureml.deploy.DeployClient(host, auth=None, use=None)
Defines the factory for creating Deployment Clients.
Basic Usage Module implementation plugin with use
property:
Find and Load module from an import reference:
from azureml.deploy import DeployClient
from azureml.deploy.server import MLServer
host = 'http://localhost:12800'
ctx = ('username', 'password')
mls_client = DeployClient(host, use=MLServer, auth=ctx)
Find and Load module as defined by use from namespace str:
host = 'http://localhost:12800'
ctx = ('username', 'password')
mls_client = DeployClient(host, use=MLServer, auth=ctx)
mls_client = DeployClient(host, use='azureml.deploy.server.MLServer',
auth=ctx)
Find and Load module from a file/path tuple:
host = 'http://localhost:12800'
ctx = ('username', 'password')
use = ('azureml.deploy.server.MLServer', '/path/to/mlserver.py')
mls_client = DeployClient(host, use=use, auth=ctx)
Create a new Deployment Client.
Arguments
host
Server HTTP/HTTPS endpoint, including the port number.
auth
(optional) Authentication context. Not all deployment clients require authentication. The auth is required for MLServer
use
(required) Deployment implementation to use (ex) use='MLServer' to use The ML Server.
Feedback
https://aka.ms/ContentUserFeedback.
În curând: Pe parcursul anului 2024, vom elimina treptat Probleme legate de GitHub ca mecanism de feedback pentru conținut și îl vom înlocui cu un nou sistem de feedback. Pentru mai multe informații, consultați:Trimiteți și vizualizați feedback pentru