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Chaîne source @OnePlusGuide · Post #2977 · 26 déc.

🔻ANDROID 11 PER LA SERIE 7: CI SIAMO QUASI🔻 #OP7#OP7PRO#OP7T#OP7TPRO#OOS#R Buone notizie per i possessori di un OnePlus serie 7. Pare che i problemi alla decriptazione siano finalmente stati risolti. Nella giornata di ieri, OnePlus ha reso noto sul suo forum cinese che la prima build alpha è stata rilasciata in Cina (HydrogenOS). Possiamo quindi aspettarci che a breve seguirà OxygenOS, sempre alpha. A questo punto, non bisognerà attendere più di un mese per il rilascio della prima Open Beta. Pierre — Il nostro canale 👉🏻@oneplusguide I nostri gruppi 👉🏻@oneplusitcommunity

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@githubtrending · Post #15523 · 25/02/2026 12:30

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