Once your model is trained, you must deploy the model on Abacus.AI platform to generate predictions. You can use the prediction dashboard to generate the predictions from the trained model. In this section the underlying prediction API and all other additional prediction API methods are discussed for the use case in consideration:
Returns a list of anomalous timestamps from the training dataset.
REQUIRED | KEY | TYPE | DESCRIPTION |
---|---|---|---|
Yes | deploymentToken | str | The deployment token to authenticate access to created deployments. This token is only authorized to predict on deployments in this project, so it is safe to embed this model inside of an application or website. |
Yes | deploymentId | str | The unique identifier to a deployment created under the project. |
No | startTimestamp | str | timestamp from which anomalies have to be detected in the training data |
No | endTimestamp | str | timestamp to which anomalies have to be detected in the training data |
No | queryData | Union[dict, str, list] | additional data on which anomaly detection has to be performed, it can either be a single record or list of records or a json string representing list of records |
No | getAllItemData | bool | set this to true if anomaly detection has to be performed on all the data related to input ids |
No | seriesIds | list[str] | list of series ids on which the anomaly detection has to be performed |
KEY | TYPE | DESCRIPTION |
---|---|---|
success | Boolean | true if the call succeeded, false if there was an error |
None |
TYPE | WHEN |
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DataNotFoundError |
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DataNotFoundError |
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