Best practices for scaling Amazon Comprehend custom text classification throughput

0

We are using the Comprehend asynchronous API for a custom text-only classification model. Per the documentation, asynchronous requests are limited to 10 active jobs. We are finding job completion times ranging from 5-10 minutes, causing a bottleneck for our required sustained throughput of 150 jobs (peaking at 300 jobs) per hour.

Any insights on best practices for increasing Comprehend custom classification throughput would be greatly appreciated. Is there a recommended way to scale out the processing using additional resources?

profile pictureAWS
demandé il y a 4 mois322 vues
1 réponse
1

I think based on the data you have provided, seems you are doing OK in terms of throughout. Other than making sure to start a new job as soon as one completes (by retrying Start Job Operation on limit exceeded), there's not much you can do.

If you need to increase the active job limit which can help more work done within same time period please cut a support ticket with data and requirement and we can take a look at it.

répondu il y a 4 mois

Vous n'êtes pas connecté. Se connecter pour publier une réponse.

Une bonne réponse répond clairement à la question, contient des commentaires constructifs et encourage le développement professionnel de la personne qui pose la question.

Instructions pour répondre aux questions