autoML forecasting failure due to limitation of 3000 time step, how to unlock this limitation?

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권순세

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Dec 28, 2023, 1:02:48 AM12/28/23
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Hi Team,

currently i tried to use autoML forecasting using bigquery data. 

but i encountered failure of training due to the below error message, 

 ->  Training pipeline failed with error message: Found time series with more than 3000 time steps

how to unlock those limitation so that i can use more than 3000 time steps per each time series. 

please advise me. 

thanks,

Sunse Kwon

Yang Yang

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Dec 28, 2023, 1:38:14 AM12/28/23
to 권순세, cloud-automl-tables-discuss
Hi 권순세,

Thanks for reaching out. 3000 timesteps is the hard limit for the managed service. However we have just launched Tabular Workflow for Forecasting (currently in public preview, will be GA within 1 or 2 months), which doesn't have such limitations and has more flexibility and transparency to the training progress and has the exact same(or even better functionalities as AutoML Forecasting managed service), please feel free to try it out.

Please let us know if you have any questions.

Best,
Yang

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Yang
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권순세

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Dec 28, 2023, 2:57:38 AM12/28/23
to Yang Yang, cloud-automl-tables-discuss
Thanks for your reply. 

I will definitely look into it. 

best regards, 

Sunse 


2023년 12월 28일 (목) 오후 3:38, Yang Yang <yyy...@google.com>님이 작성:


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Best Regards,

Sunse Kwon
AI Researcher, Team Spacefarm
Address : Room 104, 815, Daewangpangyo-ro, Sujeong-gu, Seongnam-si, Gyeonggi-do, South Korea.

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