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Data Engineering
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"Hey everyone, it seems like there's some confusion about enhanced autoscaling in Databricks lately. If you're feeling lost or unsure abo...

Rishabh-Pandey
Esteemed Contributor

"Hey everyone, it seems like there's some confusion about enhanced autoscaling in Databricks lately. If you're feeling lost or unsure about how it works, don't worry - you're not"

Enhanced autoscaling is a feature in Databricks that enables dynamic scaling of compute resources in response to changes in workload demand. Unlike traditional autoscaling, which simply adds or removes instances based on pre-set thresholds, enhanced autoscaling uses machine learning algorithms to make more accurate predictions about future workload demand and adjust the number of instances accordingly.

This allows for more efficient resource utilization and cost savings, as well as improved performance and faster job completion times. Enhanced autoscaling also supports custom policies, allowing users to tailor the scaling behavior to their specific use case and requirements. Overall, it is a powerful tool for optimizing the use of cloud resources and maximizing the value of Databricks for data processing and analyse

do follow for such more posts Rishabh Pandey

#machinelearning #databricks #bigdata @Sujitha Ramamoorthy​ @Kaniz Fatma​ @Ajay Pandey​ @Aviral Bhardwaj​ 

Rishabh Pandey
2 REPLIES 2

Ajay-Pandey
Esteemed Contributor III

Very informative

Thanks for sharing!

Ajay Kumar Pandey

Thanks @Ajay Pandey​ ​

Rishabh Pandey

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