How to train your own object detection models using the TensorFlow Object Detection API (2020 Update)
This started as a summary of this nice tutorial, but has since then become its own thing.
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This started as a summary of this nice tutorial, but has since then become its own thing.
I've been deceiving you all. I had you believe that Svelte was a UI framework — unlike React and Vue etc, because it shifts work out of the client and into the compiler, but a framework nonetheless.
But that's not exactly accurate. In my defense, I didn't realise it myself until very recently. But with Svelte 3 around the corner, it's time to come clean about what Svelte really is.
Svelte is a language.
Specifically, Svelte is an attempt to answer a question that many people have asked, and a few have answered: what would it look like if we had a language for describing reactive user interfaces?
A few projects that have answered this question:
title | slug | createdAt | language | preview |
---|---|---|---|---|
React Hook prompting the user to "Add to homescreen" |
react-hook-prompting-the-user-to-add |
2018-11-29T20:35:02Z |
en |
Simple React Hook for showing the user a custom "Add to homescreen" prompt. |
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