Google Clarifies AI Ultra Plans
In brief
- Google has updated its AI Ultra plans for Google One to make the difference between the two offerings clear.
- The top-end plan costs $200 per month and includes 30x the usage limits and 30TB of storage.
- The lower plan costs $100 per month with lesser limits and storage, but still more AI compute than other plans.
- This change will help users see the difference between the two plans when upgrading.
- Google now shows the amount of AI usage alongside the storage allotment when upgrading, making it easier for users to choose the right plan, and this change is rolling out now.
Terms in this brief
- AI Ultra plans
- AI Ultra plans by Google refer to their premium subscription offerings for Google One that provide enhanced AI capabilities and storage. The top-tier plan costs $200 per month with 30TB of storage, while the lower tier is $100 per month with less storage but still offers more AI compute than other plans.
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