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3D, folding map view built with MKMapView and a few well organised _UIPortalViews... Used CATransformLayer and CATransform3D to create the 3D effect. All animatable with UIKit animation APIs too which is a nice bonus - UIViewPropertyAnimator doing the work here.

80,096 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Cosmin
Cosmin1 год назад

🤯

Фото профиля Seb Vidal
Seb Vidal1 год назад

This may or may not be for Duet’s map view feature that we spoke about like 2 years ago 💀

Фото профиля UserInterface
UserInterface4 лет назад

Need Professional Video Production, Music Videos, Commercials, Graphic Design, or Photo Retouching? We will take your project from concept to completion. #services #creative #DMV

Фото профиля Levi Williams
Levi Williams1 год назад

Insane 🤯

Фото профиля Seb Vidal
Seb Vidal1 год назад

Cheers Levi 💪🏽

Фото профиля Justin Allen
Justin Allen1 год назад

The zoom in that kinda breaks the folded map immersion. But other than that it’s neat!

Фото профиля Seb Vidal
Seb Vidal1 год назад

Yeah the angle is pretty aggressive, 45 degrees here. Could make it less for a “smoother” look :)

Фото профиля Krisztián Kemenes
Krisztián Kemenes1 год назад

Really nice!

Фото профиля Seb Vidal
Seb Vidal1 год назад

Thanks Krisztián! 🙏🏽

Фото профиля Steven Peterson 🏳️‍🌈
Steven Peterson 🏳️‍🌈1 год назад

This is spiffy, it’d be easier to get from section 2 to section 6 if you just folded the whole ring in half!

Фото профиля Seb Vidal
Seb Vidal1 год назад

Steven for SVP of hardware engineering!

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