2020/06/05 - Amazon Personalize Runtime - 1 updated api methods
Changes [Personalize] Adds ability to create and apply filters.
{'filterArn': 'string'}
Returns a list of recommended items. The required input depends on the recipe type used to create the solution backing the campaign, as follows:
RELATED_ITEMS - itemId required, userId not used
USER_PERSONALIZATION - itemId optional, userId required
Note
Campaigns that are backed by a solution created using a recipe of type PERSONALIZED_RANKING use the API.
See also: AWS API Documentation
Request Syntax
client.get_recommendations( campaignArn='string', itemId='string', userId='string', numResults=123, context={ 'string': 'string' }, filterArn='string' )
string
[REQUIRED]
The Amazon Resource Name (ARN) of the campaign to use for getting recommendations.
string
The item ID to provide recommendations for.
Required for RELATED_ITEMS recipe type.
string
The user ID to provide recommendations for.
Required for USER_PERSONALIZATION recipe type.
integer
The number of results to return. The default is 25. The maximum is 500.
dict
The contextual metadata to use when getting recommendations. Contextual metadata includes any interaction information that might be relevant when getting a user's recommendations, such as the user's current location or device type.
(string) --
(string) --
string
The ARN of the filter to apply to the returned recommendations. For more information, see Using Filters with Amazon Personalize.
dict
Response Syntax
{ 'itemList': [ { 'itemId': 'string', 'score': 123.0 }, ] }
Response Structure
(dict) --
itemList (list) --
A list of recommendations sorted in ascending order by prediction score. There can be a maximum of 500 items in the list.
(dict) --
An object that identifies an item.
The and APIs return a list of PredictedItem s.
itemId (string) --
The recommended item ID.
score (float) --
A numeric representation of the model's certainty that the item will be the next user selection. For more information on scoring logic, see how-scores-work .