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Developer Launches Zero-Login Browser Gaming Platform GameDeck with Emoji Identities

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A solo developer has built and launched GameDeck, a browser-based gaming platform that requires no sign-ups, downloads, or passwords. Users identify themselves by choosing an emoji badge and entering a name, with no personal data, cookies, or analytics collected. The platform is built using vanilla JavaScript as a single-page app and deployed on Google Cloud Run. Within 24 hours of launch, multi-language support became the top feature request, prompting the developer to add English, Simplified Chinese, and Traditional Chinese with instant switching. The developer has open-sourced the project and is seeking community feedback on the browser game architecture and internationalization approach.

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Developer Launches Zero-Login Browser Gaming Platform GameDeck with Emoji Identities · ShortSingh