Exemplo n.º 1
0
    def _validate_get_payload(payload):
        """Validate provided payload.

        :param payload: Compute payload.
        :type dict
        :return:
        :rtype: None
        """
        if 'properties' not in payload or 'computeType' not in payload[
                'properties']:
            raise ComputeTargetException('Invalid cluster payload:\n'
                                         '{}'.format(payload))
        if payload['properties'][
                'computeType'] != KubernetesCompute._compute_type:
            raise ComputeTargetException('Invalid cluster payload, not "{}":\n'
                                         '{}'.format(
                                             KubernetesCompute._compute_type,
                                             payload))
        for arm_key in ['location', 'id', 'tags']:
            if arm_key not in payload:
                raise ComputeTargetException(
                    'Invalid cluster payload, missing ["{}"]:\n'
                    '{}'.format(arm_key, payload))
        for key in [
                'properties', 'provisioningErrors', 'description',
                'provisioningState', 'resourceId'
        ]:
            if key not in payload['properties']:
                raise ComputeTargetException(
                    'Invalid cluster payload, missing ["properties"]["{}"]:\n'
                    '{}'.format(key, payload))
Exemplo n.º 2
0
    def wait_for_completion(self, show_output=False, is_delete_operation=False):
        """Wait for the current provisioning operation to finish on the cluster.

        This method returns a :class:`azureml.exceptions.ComputeTargetException` if there is a problem
        polling the compute object.

        :param show_output: Indicates whether to provide more verbose output.
        :type show_output: bool
        :param is_delete_operation: Indicates whether the operation is meant for deleting.
        :type is_delete_operation: bool
        :raises azureml.exceptions.ComputeTargetException:
        """
        try:
            operation_state, error = self._wait_for_completion(show_output)
            print('Provisioning operation finished, operation "{}"'.format(operation_state))
            if not is_delete_operation:
                self.refresh_state()
            if operation_state != 'Succeeded':
                if error and 'statusCode' in error and 'message' in error:
                    error_response = ('StatusCode: {}\n'
                                      'Message: {}'.format(error['statusCode'], error['message']))
                else:
                    error_response = error

                raise ComputeTargetException('Compute object provisioning polling reached non-successful terminal '
                                             'state, current provisioning state: {}\n'
                                             'Provisioning operation error:\n'
                                             '{}'.format(self.provisioning_state, error_response))
        except ComputeTargetException as e:
            if e.message == 'No operation endpoint':
                self.refresh_state()
                raise ComputeTargetException('Long running operation information not known, unable to poll. '
                                             'Current state is {}'.format(self.provisioning_state))
            else:
                raise e
Exemplo n.º 3
0
    def _build_attach_payload(config, workspace):
        """Build attach payload.

        :param config: the compute configuration.
        :type config: KubeComputeAttachConfiguration
        :param workspace: The workspace object to associate the compute resource with.
        :type workspace: azureml.core.Workspace
        :return:
        :rtype: dict
        """
        json_payload = copy.deepcopy(kubernetes_compute_template)
        del (json_payload['properties']['computeLocation'])

        if not config:
            raise ComputeTargetException('Error, missing config.')

        attach_resource_id = config.resource_id
        if not attach_resource_id:
            raise ComputeTargetException('Error, missing resource_id.')

        json_payload['properties'].update(config.to_dict())
        json_payload['properties']['resourceId'] = attach_resource_id
        json_payload['properties']['properties']['amlK8sConfig'].update(
            config.aml_k8s_config)
        return json_payload
Exemplo n.º 4
0
    def validate_configuration(self):
        """Check that the specified configuration values are valid.

        Raises a :class:`azureml.exceptions.ComputeTargetException` if validation fails.

        :raises: :class:`azureml.exceptions.ComputeTargetException`
        """
        if self.resource_id:
            # resource_id is provided, validate resource_id
            aks_arm_type = 'Microsoft.ContainerService/managedClusters'
            arc_arm_type = 'Microsoft.Kubernetes/connectedClusters'
            CLUSTER_TYPE_REGEX = '(?:{}|{})'.format(aks_arm_type, arc_arm_type)
            arm_template = ('/subscriptions/{part}/resourceGroups/{part}'
                            '/providers/{cluster_type}/{part}')
            resource_id_pattern = \
                '(?i)' + arm_template.format(part=r'[\w\-_\.]+', cluster_type=CLUSTER_TYPE_REGEX)
            if not re.match(resource_id_pattern, self.resource_id):
                raise ComputeTargetException(
                    'Invalid resource_id provided: {} \n Does not match\n'
                    'AKS template: {}\n or\n ARC template: {}'.format(
                        self.resource_id,
                        arm_template.format(part='<>',
                                            cluster_type=aks_arm_type),
                        arm_template.format(part='<>',
                                            cluster_type=arc_arm_type)))
        else:
            raise ComputeTargetException('Missing argument: resource_id.')
Exemplo n.º 5
0
 def _valid_compute_name(compute_name):
     message = "compute name must be between 2 and 16 characters long. " \
         "Its first character has to be alphanumeric, and " \
         "valid characters include letters, digits, and the - character."
     if not compute_name:
         raise ComputeTargetException('Compute_name cannot be Empty.')
     if not re.match("^[A-Za-z][A-Za-z0-9-]{0,14}[A-Za-z0-9]$",
                     compute_name):
         raise ComputeTargetException(message)
Exemplo n.º 6
0
 def _validate_get_payload(payload):
     if 'properties' not in payload or 'computeType' not in payload['properties']:
         raise ComputeTargetException('Invalid cluster payload:\n'
                                      '{}'.format(payload))
     if payload['properties']['computeType'] != BatchCompute._compute_type:
         raise ComputeTargetException('Invalid cluster payload, not "{}":\n'
                                      '{}'.format(BatchCompute._compute_type, payload))
     for arm_key in ['location', 'id', 'tags']:
         if arm_key not in payload:
             raise ComputeTargetException('Invalid cluster payload, missing ["{}"]:\n'
                                          '{}'.format(arm_key, payload))
     for key in ['properties', 'provisioningErrors', 'description', 'provisioningState', 'resourceId']:
         if key not in payload['properties']:
             raise ComputeTargetException('Invalid cluster payload, missing ["properties"]["{}"]:\n'
                                          '{}'.format(key, payload))
Exemplo n.º 7
0
    def attach(workspace, name, resource_id):  # pragma: no cover
        """DEPRECATED. Use the ``attach_configuration`` method instead.

        Associate an existing DataFactory compute resource with the provided workspace.

        :param workspace: The workspace object to associate the compute resource with.
        :type workspace: azureml.core.Workspace
        :param name: The name to associate with the compute resource inside the provided workspace. Does not have to
            match the name of the compute resource to be attached.
        :type name: str
        :param resource_id: The Azure resource ID for the compute resource being attached.
        :type resource_id: str
        :return: A DataFactoryCompute object representation of the compute object.
        :rtype: azureml.core.compute.datafactory.DataFactoryCompute
        :raises azureml.exceptions.ComputeTargetException:
        """
        raise ComputeTargetException(
            'This method is DEPRECATED. Please use the following code to attach a '
            'DataFactory compute resource.\n'
            '# Attach DataFactory\n'
            'attach_config = DataFactoryCompute.attach_configuration(resource_group='
            '"name_of_resource_group",\n'
            '                                                        factory_name='
            '"name_of_datafactory")\n'
            'compute = ComputeTarget.attach(workspace, name, attach_config)')
Exemplo n.º 8
0
    def _wait_for_completion(self, show_output):
        """Wait for completion implementation.

        :param show_output:
        :type show_output: bool
        :return:
        :rtype: (str, dict)
        """
        if not self._operation_endpoint:
            raise ComputeTargetException('No operation endpoint')
        operation_state, error = self._get_operation_state()
        current_state = operation_state
        if show_output:
            sys.stdout.write('{}'.format(current_state))
            sys.stdout.flush()
        while operation_state != 'Succeeded' and operation_state != 'Failed' and operation_state != 'Canceled':
            time.sleep(5)
            operation_state, error = self._get_operation_state()
            if show_output:
                sys.stdout.write('.')
                if operation_state != current_state:
                    sys.stdout.write('\n{}'.format(operation_state))
                    current_state = operation_state
                sys.stdout.flush()
        return operation_state, error
Exemplo n.º 9
0
    def delete(self):
        """
        Delete is not supported for a BatchCompute object. Use :meth:`detach` instead.

        :raises azureml.exceptions.ComputeTargetException:
        """
        raise ComputeTargetException('Delete is not supported for Batch object. Try to use detach instead.')
Exemplo n.º 10
0
    def _delete_or_detach(self, underlying_resource_action):
        """Remove the Compute object from its associated workspace.

        If underlying_resource_action is 'delete', the corresponding cloud-based objects will also be deleted.
        If underlying_resource_action is 'detach', no underlying cloud object will be deleted, the association
        will just be removed.

        :param underlying_resource_action: whether delete or detach the underlying cloud object
        :type underlying_resource_action: str
        :raises azureml.exceptions.ComputeTargetException:
        """
        headers = self._auth.get_authentication_header()
        ComputeTarget._add_request_tracking_headers(headers)
        params = {'api-version': MLC_WORKSPACE_API_VERSION, 'underlyingResourceAction': underlying_resource_action}
        resp = ClientBase._execute_func(get_requests_session().delete, self._mlc_endpoint, params=params,
                                        headers=headers)

        try:
            resp.raise_for_status()
        except requests.exceptions.HTTPError:
            raise ComputeTargetException('Received bad response from Resource Provider:\n'
                                         'Response Code: {}\n'
                                         'Headers: {}\n'
                                         'Content: {}'.format(resp.status_code, resp.headers, resp.content))

        self.provisioning_state = 'Deleting'
        self._operation_endpoint = resp.headers['Azure-AsyncOperation']
Exemplo n.º 11
0
    def _get(workspace, name):
        """Return web response content for the compute.

        :param workspace:
        :type workspace: azureml.core.Workspace
        :param name:
        :type name: str
        :return:
        :rtype: dict
        """
        endpoint = ComputeTarget._get_rp_compute_endpoint(workspace, name)
        headers = workspace._auth.get_authentication_header()
        ComputeTarget._add_request_tracking_headers(headers)
        params = {'api-version': MLC_WORKSPACE_API_VERSION}
        resp = ClientBase._execute_func(get_requests_session().get, endpoint, params=params, headers=headers)
        if resp.status_code == 200:
            content = resp.content
            if isinstance(content, bytes):
                content = content.decode('utf-8')
            get_content = json.loads(content)
            return get_content
        elif resp.status_code == 404:
            return None
        else:
            raise ComputeTargetException('Received bad response from Resource Provider:\n'
                                         'Response Code: {}\n'
                                         'Headers: {}\n'
                                         'Content: {}'.format(resp.status_code, resp.headers, resp.content))
Exemplo n.º 12
0
    def test_get_compute_target(self, mock_ComputeTarget, mock_AmlCompute):
        mock_ComputeTarget.side_effect = [
            'test_compute_target',
            ComputeTargetException("Compute Target Not Found")
        ]

        # First call to mock_compute_target returns 'test_compute_target'
        output_1 = self.aml_interface.get_compute_target(
            'test_compute_name', 'STANDARD_D2_V2')
        self.assertEqual(output_1, 'test_compute_target')
        mock_ComputeTarget.create.assert_not_called()

        mock_compute = Mock()
        # Compute target exists, create not called
        mock_ComputeTarget.create.return_value = mock_compute

        # Second call to mock_compute_target raises ComputeTargetException
        # Suggesting the compute target needs to be created
        output_2 = self.aml_interface.get_compute_target(
            'test_compute_name', 'STANDARD_D2_V2')

        self.assertEqual(output_2, mock_compute)
        mock_AmlCompute.provisioning_configuration.assert_called_once_with(
            vm_size='STANDARD_D2_V2', min_nodes=1, max_nodes=2)
        mock_ComputeTarget.create.assert_called_once()
        mock_compute.wait_for_completion.assert_called_once()
Exemplo n.º 13
0
    def deserialize_from_dict(compute_target_name, compute_target_dict):
        """Deserialize compute_target_dict and returns the corresponding compute target object.

        :param compute_target_name: The compute target name, basically <compute_target_name>.compute file.
        :type compute_target_name: str
        :param compute_target_dict: The compute target dict, loaded from the on-disk .compute file.
        :type compute_target_dict: dict
        :return: The target specific compute target object.
        :rtype: azureml.core.compute_target.AbstractComputeTarget
        """
        _type_to_class_dict = {_BatchAITarget._BATCH_AI_TYPE: _BatchAITarget}

        if AbstractComputeTarget._TARGET_TYPE_KEY in compute_target_dict:
            compute_type = compute_target_dict[
                AbstractComputeTarget._TARGET_TYPE_KEY]
            if compute_type in _type_to_class_dict:
                return _type_to_class_dict[
                    compute_type]._deserialize_from_dict(
                        compute_target_name, compute_target_dict)
            else:
                return None
        else:
            raise ComputeTargetException(
                "{} required field is not present in {} dict for "
                "creating the require compute target "
                "object.".format(AbstractComputeTarget._TARGET_TYPE_KEY,
                                 compute_target_dict))
Exemplo n.º 14
0
def attach_legacy_compute_target(experiment, source_directory, compute_target):
    """Attaches a compute target to this project.

    :param experiment:
    :type experiment: azureml.core.experiment.Experiment
    :param source_directory:
    :type source_directory: str
    :param compute_target: A compute target object to attach.
    :type compute_target: str
    :return: None if the attach is successful, otherwise throws an exception.
    """
    logging.warning(
        "attach_legacy_compute_target method is going to be deprecated. "
        "This will be removed in the next SDK release.")
    _check_paramiko()
    from azureml._project import _compute_target_commands
    if isinstance(compute_target, _SSHBasedComputeTarget):
        _compute_target_commands.attach_ssh_based_compute_targets(
            experiment, source_directory, compute_target)
    elif isinstance(compute_target, _BatchAITarget):
        _compute_target_commands.attach_batchai_compute_target(
            experiment, source_directory, compute_target)
    else:
        raise ComputeTargetException(
            "Unsupported compute target type. Type={}".format(
                type(compute_target)))
Exemplo n.º 15
0
    def _deserialize_from_dict(compute_target_name, compute_target_dict):
        """Create a compute target object from a dictionary.

        :param compute_target_name: The compute target name, basically <compute_target_name>.compute file.
        :type compute_target_name: str
        :param compute_target_dict: The compute target dict, loaded from the on-disk .compute file.
        :type compute_target_dict: dict
        :return:
        :rtype: _BatchAITarget
        """
        if (_BatchAITarget._SUBSCRIPTION_ID_KEY in compute_target_dict and
                _BatchAITarget._RESOURCE_GROUP_NAME_KEY in compute_target_dict
                and _BatchAITarget._CLUSTER_NAME_KEY in compute_target_dict):
            batchai_object = _BatchAITarget(
                compute_target_name,
                compute_target_dict[_BatchAITarget._SUBSCRIPTION_ID_KEY],
                compute_target_dict[_BatchAITarget._RESOURCE_GROUP_NAME_KEY],
                compute_target_dict[
                    _BatchAITarget._CLUSTER_NAME_KEY].compute_target_dict.get(
                        _BatchAITarget._WORKSPACE_NAME_KEY))

            return batchai_object
        else:
            raise ComputeTargetException(
                "Failed to create a compute target object from a dictionary. "
                "Either {}, {} or {} is missing in "
                "{}".format(_BatchAITarget._SUBSCRIPTION_ID_KEY,
                            _BatchAITarget._RESOURCE_GROUP_NAME_KEY,
                            _BatchAITarget._CLUSTER_NAME_KEY,
                            compute_target_dict))
Exemplo n.º 16
0
    def get_credentials(self):
        """Retrieve the credentials for the RemoteCompute target.

        :return: The credentials for the RemoteCompute target.
        :rtype: dict
        :raises azureml.exceptions.ComputeTargetException:
        """
        endpoint = self._mlc_endpoint + '/listKeys'
        headers = self._auth.get_authentication_header()
        ComputeTarget._add_request_tracking_headers(headers)
        params = {'api-version': MLC_WORKSPACE_API_VERSION}
        resp = ClientBase._execute_func(get_requests_session().post,
                                        endpoint,
                                        params=params,
                                        headers=headers)

        try:
            resp.raise_for_status()
        except requests.exceptions.HTTPError:
            raise ComputeTargetException('Received bad response from MLC:\n'
                                         'Response Code: {}\n'
                                         'Headers: {}\n'
                                         'Content: {}'.format(
                                             resp.status_code, resp.headers,
                                             resp.content))
        content = resp.content
        if isinstance(content, bytes):
            content = content.decode('utf-8')
        creds_content = json.loads(content)
        return creds_content
Exemplo n.º 17
0
    def detach(self):
        """Detach is not supported for a DsvmCompute object. Use :meth:`delete` instead.

        :raises: :class:`azureml.exceptions.ComputeTargetException`
        """
        raise ComputeTargetException(
            'Detach is not supported for DSVM object. Try to use delete instead.'
        )
Exemplo n.º 18
0
    def delete(self):
        """Delete is not supported for an KubernetesCompute object. Use :meth:`detach` instead.

        :raises: :class:`azureml.exceptions.ComputeTargetException`
        """
        raise ComputeTargetException(
            'Delete is not supported for KubernetesCompute object. Try to use detach instead.'
        )
Exemplo n.º 19
0
    def delete(self):
        """Delete is not supported for Synapse object. Try to use detach instead.

        :raises: azureml.exceptions.ComputeTargetException
        """
        raise ComputeTargetException(
            'Delete is not supported for Synapse object. Try to use detach instead.'
        )
Exemplo n.º 20
0
    def validate_configuration(self):
        """Check that the specified configuration values are valid.

        Raises a :class:`azureml.exceptions.ComputeTargetException` if validation fails.

        :raises azureml.exceptions.ComputeTargetException:
        """
        if self.resource_id:
            # resource_id is provided, validate resource_id
            resource_parts = self.resource_id.split('/')
            if len(resource_parts) != 9:
                raise ComputeTargetException('Invalid resource_id provided: {}'.format(self.resource_id))
            resource_type = resource_parts[6]
            if resource_type != 'Microsoft.Batch':
                raise ComputeTargetException('Invalid resource_id provided, resource type {} does not match for '
                                             'Batch'.format(resource_type))
            # make sure do not use other info
            if self.resource_group:
                raise ComputeTargetException('Since resource_id is provided, please do not provide resource_group.')
            if self.account_name:
                raise ComputeTargetException('Since resource_id is provided, please do not provide account_name.')
        elif self.resource_group or self.account_name:
            # resource_id is not provided, validate other info
            if not self.resource_group:
                raise ComputeTargetException('resource_group is not provided.')
            if not self.account_name:
                raise ComputeTargetException('account_name is not provided.')
        else:
            # neither resource_id nor other info is provided
            raise ComputeTargetException('Please provide resource_group and account_name for the Batch compute '
                                         'resource being attached. Or please provide resource_id for the resource '
                                         'being attached.')
Exemplo n.º 21
0
    def validate_configuration(self):
        """Check that the specified configuration values are valid.

        Raises a :class:`azureml.exceptions.ComputeTargetException` if validation fails.

        :raises: :class:`azureml.exceptions.ComputeTargetException`
        """
        if not self.linked_service or (not isinstance(self.linked_service,
                                                      LinkedService)):
            raise ComputeTargetException(
                'A valid linked_service object is required to attach compute.')

        if self.type != "SynapseSpark":
            raise ComputeTargetException(
                'Only SynapseSpark type is supported now.')

        if not self.pool_name:
            raise ComputeTargetException(
                'pool_name must be provided to attach synapse compute')
Exemplo n.º 22
0
    def validate_configuration(self):
        """Check that the specified configuration values are valid.

        Raises a :class:`azureml.exceptions.ComputeTargetException` if validation fails.

        :raises: :class:`azureml.exceptions.ComputeTargetException`
        """
        if self.resource_id:
            resource_parts = self.resource_id.split('/')
            if len(resource_parts) != 9:
                raise ComputeTargetException('Invalid resource_id provided: {}'.format(self.resource_id))
            resource_type = resource_parts[6]
            if resource_type != 'Microsoft.Kusto':
                raise ComputeTargetException('Invalid resource_id provided, resource type {} does not match for '
                                             'Kusto'.format(resource_type))
        if not self.resource_group or not self.workspace_name or not self.resource_id:
            raise ComputeTargetException('Please provide resource group, workspace name, and resource id')
        if not self.tenant_id or not self.application_key or not self.application_id:
            raise ComputeTargetException('Please provide tenant id, application id, and application key')
        if not self.kusto_connection_string:
            raise ComputeTargetException('Please provide kusto connection string for the target cluster')
Exemplo n.º 23
0
def get_paginated_compute_results(payload, headers):
    if 'value' not in payload:
        raise ComputeTargetException(
            'Error, invalid paginated response payload, missing "value":\n'
            '{}'.format(payload))
    items = payload['value']
    while 'nextLink' in payload:
        next_link = payload['nextLink']

        try:
            resp = ClientBase._execute_func(get_requests_session().get,
                                            next_link,
                                            headers=headers)
        except requests.Timeout:
            print(
                'Error, request to Machine Learning Compute timed out. Returning with items found so far'
            )
            return items
        if resp.status_code == 200:
            content = resp.content
            if isinstance(content, bytes):
                content = content.decode('utf-8')
            payload = json.loads(content)
        else:
            raise ComputeTargetException(
                'Received bad response from Machine Learning Compute while retrieving '
                'paginated results:\n'
                'Response Code: {}\n'
                'Headers: {}\n'
                'Content: {}'.format(resp.status_code, resp.headers,
                                     resp.content))
        if 'value' not in payload:
            raise ComputeTargetException(
                'Error, invalid paginated response payload, missing "value":\n'
                '{}'.format(payload))
        items += payload['value']

    return items
Exemplo n.º 24
0
    def _attach(workspace, name, attach_payload, target_class):
        """Attach implementation method.

        :param workspace:
        :type workspace: azureml.core.Workspace
        :param name:
        :type name: str
        :param attach_payload:
        :type attach_payload: dict
        :param target_class:
        :type target_class:
        :return:
        :rtype:
        """
        attach_payload['location'] = workspace.location
        endpoint = ComputeTarget._get_compute_endpoint(workspace, name)
        headers = {'Content-Type': 'application/json'}
        headers.update(workspace._auth.get_authentication_header())
        ComputeTarget._add_request_tracking_headers(headers)
        params = {'api-version': MLC_WORKSPACE_API_VERSION}
        resp = ClientBase._execute_func(get_requests_session().put, endpoint, params=params, headers=headers,
                                        json=attach_payload)

        try:
            resp.raise_for_status()
        except requests.exceptions.HTTPError:
            raise ComputeTargetException('Received bad response from Resource Provider:\n'
                                         'Response Code: {}\n'
                                         'Headers: {}\n'
                                         'Content: {}'.format(resp.status_code, resp.headers, resp.content))
        if 'Azure-AsyncOperation' not in resp.headers:
            raise ComputeTargetException('Error, missing operation location from resp headers:\n'
                                         'Response Code: {}\n'
                                         'Headers: {}\n'
                                         'Content: {}'.format(resp.status_code, resp.headers, resp.content))
        compute_target = target_class(workspace, name)
        compute_target._operation_endpoint = resp.headers['Azure-AsyncOperation']
        return compute_target
Exemplo n.º 25
0
    def _build_attach_payload(resource_id):
        """Build attach payload.

        :param resource_id: resource id of the synapse spark pool.
        :type resource_id: str
        :return: payload for attaching compute API call.
        :rtype: dict
        """
        if not resource_id:
            raise ComputeTargetException('Error, missing resource_id.')

        json_payload = copy.deepcopy(synapse_compute_template)
        json_payload['properties']['resourceId'] = resource_id
        return json_payload
Exemplo n.º 26
0
    def attach(workspace,
               name,
               username,
               address,
               ssh_port=22,
               password='',
               private_key_file='',
               private_key_passphrase=''):  # pragma: no cover
        """DEPRECATED. Use the ``attach_configuration`` method instead.

        Associate an existing remote compute resource with the provided workspace.

        :param workspace: The workspace object to associate the compute resource with.
        :type workspace: azureml.core.Workspace
        :param name: The name to associate with the compute resource inside the provided workspace. Does not have to
            match the name of the compute resource to be attached.
        :type name: str
        :param username: The username needed to access the resource.
        :type username: str
        :param address: The address of the resource to be attached.
        :type address: str
        :param ssh_port: The exposed port for the resource. Defaults to 22.
        :type ssh_port: int
        :param password: The password needed to access the resource.
        :type password: str
        :param private_key_file: Path to a file containing the private key for the resource.
        :type private_key_file: str
        :param private_key_passphrase: Private key phrase needed to access the resource.
        :type private_key_passphrase: str
        :return: A RemoteCompute object representation of the compute object.
        :rtype: azureml.core.compute.remote.RemoteCompute
        :raises azureml.exceptions.ComputeTargetException:
        """
        raise ComputeTargetException(
            'This method is DEPRECATED. Please use the following code to attach a Remote '
            'compute resource.\n'
            '# Attach Remote compute\n'
            'attach_config = RemoteCompute.attach_configuration(address="ip_address",\n'
            '                                                   ssh_port=22,\n'
            '                                                   username="******",\n'
            '                                                   password=None, # If using '
            'ssh key\n'
            '                                                   private_key_file='
            '"path_to_a_file",\n'
            '                                                   private_key_passphrase='
            '"some_key_phrase")\n'
            'compute = ComputeTarget.attach(workspace, name, attach_config)')
Exemplo n.º 27
0
def _get_workspace_key(experiment):
    cloud_execution_service_address = experiment.workspace.service_context._get_run_history_url()
    execution_service_details = ExecutionServiceAddress(cloud_execution_service_address)
    experiment_uri_path = experiment.workspace.service_context._get_experiment_scope(experiment.name)
    uri = execution_service_details.address
    uri += "/execution/v1.0" + experiment_uri_path + "/getorcreateworkspacesshkey"

    auth_header = experiment.workspace._auth_object.get_authentication_header()
    headers = {}

    headers.update(auth_header)
    response = requests.post(uri, headers=headers)

    if response.status_code >= 400:
        from azureml._base_sdk_common.common import get_http_exception_response_string
        raise ComputeTargetException(get_http_exception_response_string(response))

    return response.json()
Exemplo n.º 28
0
    def _get_operation_state(self):
        """Return operation state.

        :return:
        :rtype: (str, dict)
        """
        headers = self._auth.get_authentication_header()
        ComputeTarget._add_request_tracking_headers(headers)
        params = {}

        # API version should not be appended for operation status URLs.
        # This is a bug fix for older SDK and ARM breaking changes and
        # will append version only if the request URL doesn't have one.
        if 'api-version' not in self._operation_endpoint:
            params = {'api-version': MLC_WORKSPACE_API_VERSION}

        resp = ClientBase._execute_func(get_requests_session().get, self._operation_endpoint, params=params,
                                        headers=headers)

        try:
            resp.raise_for_status()
        except requests.exceptions.HTTPError:
            raise ComputeTargetException('Received bad response from Resource Provider:\n'
                                         'Response Code: {}\n'
                                         'Headers: {}\n'
                                         'Content: {}'.format(resp.status_code, resp.headers, resp.content))
        content = resp.content
        if isinstance(content, bytes):
            content = content.decode('utf-8')
        content = json.loads(content)
        status = content['status']
        error = content.get('error')

        # Prior to API version 2019-06-01 the 'error' element was double nested.
        # This change retains backwards compat for 2018-11-19 version.
        if error is not None:
            innererror = error.get('error')
            if innererror is not None:
                error = innererror
        # ---------------------------------------------------------------------

        return status, error
Exemplo n.º 29
0
    def __new__(cls, workspace, name):
        """Return an instance of a compute target.

        ComputeTarget constructor is used to retrieve a cloud representation of a Compute object associated with the
        provided workspace. Will return an instance of a child class corresponding to the specific type of the
        retrieved Compute object.

        :param workspace: The workspace object containing the Compute object to retrieve.
        :type workspace: azureml.core.Workspace
        :param name: The name of the of the Compute object to retrieve.
        :type name: str
        :return: An instance of a child of :class:`azureml.core.ComputeTarget` corresponding to the
            specific type of the retrieved Compute object
        :rtype: azureml.core.ComputeTarget
        :raises azureml.exceptions.ComputeTargetException:
        """
        if workspace and name:
            compute_payload = cls._get(workspace, name)
            if compute_payload:
                compute_type = compute_payload['properties']['computeType']
                is_attached = compute_payload['properties']['isAttachedCompute']
                for child in ComputeTarget.__subclasses__():
                    if is_attached and compute_type == 'VirtualMachine' and child.__name__ == 'DsvmCompute':
                        # Cannot attach DsvmCompute
                        continue
                    elif not is_attached and compute_type == 'VirtualMachine' and child.__name__ == 'RemoteCompute':
                        # Cannot create RemoteCompute
                        continue
                    elif not is_attached and compute_type == 'Kubernetes' and child.__name__ == 'KubernetesCompute':
                        # Cannot create KubernetesCompute
                        continue
                    elif compute_type == child._compute_type:
                        compute_target = super(ComputeTarget, cls).__new__(child)
                        compute_target._initialize(workspace, compute_payload)
                        return compute_target
            else:
                raise ComputeTargetException('ComputeTargetNotFound: Compute Target with name {} not found in '
                                             'provided workspace'.format(name))
        else:
            return super(ComputeTarget, cls).__new__(cls)
Exemplo n.º 30
0
    async def _wait_for_target_state(self,
                                     target_state,
                                     progress_between=(30, 70),
                                     progress_in_seconds=240):
        """ Wait for the compute instance to be in the target state.

        emit events reporting progress starting at `progress_between[0]` to `progress_between[1]` over `progress_in_seconds` seconds.
        This is to give the use watching the progress bar the illusion of progress even if we don't really know how far we have progressed.
        """
        started_at = datetime.datetime.now()
        while True:
            state, _ = self._poll_compute_setup()
            time_taken = datetime.datetime.now() - started_at
            min_progress, max_progress = progress_between
            progress = (
                min_progress + (max_progress - min_progress) *
                (time_taken.total_seconds() / progress_in_seconds)) // 1
            progress = max_progress if progress > max_progress else progress
            if state.lower() == target_state:
                self.log.info(f"Compute in target state {target_state}.")
                self._add_event(f"Compute in target state '{target_state}'.",
                                max_progress)
                break
            elif state.lower() in self._vm_bad_states:
                self._add_event(
                    f"Compute instance in failed state: {state!r}.",
                    min_progress)
                raise ComputeTargetException(
                    f"Compute instance in failed state: {state!r}.")
            else:
                self._add_event(
                    f"Compute in state '{state.lower()}' after {time_taken.total_seconds():.0f} seconds."
                    +
                    f"Aiming for target state '{target_state}', this may take a short while",
                    progress)
            await asyncio.sleep(5)