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Is there a way to hide the code in a bookmarklet

If you had a bookmarklet like "javascript:alert("Hello World");" Would there be a way to make it so you cant directly see the code, but make the bookmarklet still function? Ive made a bookmarklet I want to share but I dont want people to easily steal the code. Ive seen other people hide their code, I just dont know how they did it.

I saw a stack overflow from 2013, but it wasnt very helpful.

I googled and looked around a bit, and couldnt find anything. I tried to use this "https://obfuscator.io/," but it just game me several errors.

Via Active questions tagged javascript - Stack Overflow https://ift.tt/uJIRwbH

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