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I’ve created procedural generators of ICs and connectors using geometry nodes. Due to the large number of different packages of ICs and connectors, it might be better to generate their models as and when needed rather than storing an unlimited number of unique 3D models. Also using the new...

50,726 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Seve
Seve1 год назад

This is awesome!! We’re building something similar (a large 3d electronics library with parameterized models) Would love to collaborate!!

Фото профиля Rainmaker
Rainmaker2 лет назад

In this free Substack post I share code for several machine learning models and engage in hyperparameter tuning that yields a model that delivers superior returns in the Gold market.

Фото профиля John
John1 год назад

This system breaks down because many new ICs have unique footprints and models, so you will still need a library system nonetheless. Besides that, it looks good

Фото профиля Adam Raudonis
Adam Raudonis1 год назад

What you do is so cool!!!

Фото профиля 木子不是木子狸
木子不是木子狸1 год назад

That's what I neeeed!

Фото профиля Dean Sheppard
Dean Sheppard1 год назад

I’m using manufacturer 3D models to verify how they fit the actual footprint. Creating something based on a possibly wrong footprint goes against logic imho.

Фото профиля Michael Rangen
Michael Rangen1 год назад

I want to be good at Blender one day, just so I can leverage all the cool tools you’re building. Keep up the great work!

Фото профиля neoCortez
neoCortez1 год назад

Looks awesome, been wanting to dive further into geometry nodes!

Фото профиля huseyin sağır
huseyin sağır1 год назад

Süper.

Фото профиля navzz
navzz1 год назад

Cool

Фото профиля Sohan Basak e/code
Sohan Basak e/code1 год назад

Blender for CAD!

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