We're using on-demand bigQuery model exclusively for all our projects. my observation is that in on-demand model, as long as we're below 2000 slots per project, we don't see any wait times in stages of jobs running in our project. So, I would consider the slots availability in on-demand model as HOT even though Google says it depends on availability
If we switch to enterprise edition, and go for 0 to 2000 slots autoscaling, should I expect any wait-times increase? Google says your baseline slots are HOT and readily available.
Solved! Go to Solution.
Hi @crazyrevol,
Welcome to the Google Cloud Community!
It appears you're considering the trade-offs of moving from BigQuery's on-demand pricing to Enterprise Edition autoscaling (0–2000 slots). While dedicated slots offer advantages, you’re considering whether this shift could lead to longer wait times and impact query performance. Your objective is to find the optimal balance between cost efficiency and reliable performance.
Here are the potential ways that might help with your use case:
Was this helpful? If so, please accept this answer as “Solution”. If you need additional assistance, reply here within 2 business days and I’ll be happy to help.
Hi @crazyrevol,
Welcome to the Google Cloud Community!
It appears you're considering the trade-offs of moving from BigQuery's on-demand pricing to Enterprise Edition autoscaling (0–2000 slots). While dedicated slots offer advantages, you’re considering whether this shift could lead to longer wait times and impact query performance. Your objective is to find the optimal balance between cost efficiency and reliable performance.
Here are the potential ways that might help with your use case:
Was this helpful? If so, please accept this answer as “Solution”. If you need additional assistance, reply here within 2 business days and I’ll be happy to help.
Hello @MarvinLlamas
Thank you for your reply!
The monitor Performance link you provided above, is not for BigQuery as fas as I understand. Is there is UI monitoring way I can set alerts if any bigquery job is taking longer than say twice or 10 times longer than historical average ?