We’ve just released some upgrades to our platform that I wanted to run through with you.
We listened, we workshopped, and took user feedback on board.
The three key improvements in the latest upgrade includes:
- Next gen AI model architecture is now live - meaning we can re-train our models faster
- The ability to assign multiple inspections to a single asset - helping you organise your data better
- Self-serve product tours - stay up to date with the latest upgrades.
We've shared further details on these upgrades below.
Next gen AI model architecture is now live
Next gen AI model release is now live VAPAR's AI models have undergone some big changes to help our platform improve performance when processing inspection videos. What do you need to do to access these new models? Absolutely nothing! All new inspections will automatically be processed through these new AI models. Don't worry, all previous inspections will remain available with results unchanged. |
Introducing the Assets page
Pipe Assets in your network may have had many inspections on them through their design lives.
Linking the relevant inspections to the relevant Assets is an helpful way to manage your inspection data.
Understanding which assets might have more than one inspection allows you to:
- identify any planned or unplanned repeated inspection work
- identify changes in condition over time
- identify reverse surveys
- plenty more!
We've launched the Assets page so that you can starting gaining higher value insights on an Asset by Asset level as inspections start coming in. We will continue to build out further capability, so this is just the start!
Learn how to Manage your Assets.
Self-serve product tours
We've created guided tours and checklists directly in the platform that can help your team understand the core features of the platform faster. We will also be introducing new features through these self-serve product tours so that you are always up to date with the latest tools and tricks to get the most out of your account. |
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