LinkedThin 作者: Bryan Saraiva
An essential feed refiner that filters promotional and suggested content to provide a cleaner LinkedIn experience.
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LinkedThin is your essential feed refiner for a distraction-free LinkedIn. It identifies and suppresses promoted posts, suggested content, and irrelevant noise to return your focus to genuine updates from your network. Purely local and private.
Full Functionality & Features:
• Real-time Filtering: Uses high-performance MutationObservers to scan your feed as you scroll, instantly hiding blocked items without breaking the page layout.
• Privacy-First Design: LinkedThin runs entirely on your machine. As declared in our manifest, we collect zero data, track no behaviour, and communicate with no external servers.
• Intelligent Suppression: Targets stable analytics attributes rather than volatile CSS classes, ensuring the extension remains effective even as LinkedIn updates its platform.
• Lightweight Performance: Implements idempotent processing to ensure each post is only scanned once, keeping your browsing experience fast and fluid.
Stop letting algorithms dictate your professional focus. Keep your network; lose the noise.
Full Functionality & Features:
• Real-time Filtering: Uses high-performance MutationObservers to scan your feed as you scroll, instantly hiding blocked items without breaking the page layout.
• Privacy-First Design: LinkedThin runs entirely on your machine. As declared in our manifest, we collect zero data, track no behaviour, and communicate with no external servers.
• Intelligent Suppression: Targets stable analytics attributes rather than volatile CSS classes, ensuring the extension remains effective even as LinkedIn updates its platform.
• Lightweight Performance: Implements idempotent processing to ensure each post is only scanned once, keeping your browsing experience fast and fluid.
Stop letting algorithms dictate your professional focus. Keep your network; lose the noise.
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- 版本
- 1.0.0
- 大小
- 21.27 KB
- 最近更新
- 9 天前 (2026年1月18日)
- 版本紀錄
- 新增至收藏集