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소스 채널 @phpdevelopersuz · Post #2601 · 8월 29일

👋🏻 Durov "USERNAME"lar haqida! "Yaqin vaqtgacha Telegram’dagi barcha foydalanuvchi nomlarining 70 foizi Erondan kelgan kibersquatterlar tomonidan faol bo‘lmagan kanallarda saqlangan. Bu qidiruv natijalarini chalkashtirib yuboradigan o'lik foydalanuvchi nomlari qabristonini yaratdi va millionlab Telegram foydalanuvchilariga o'z akkauntlari, guruhlari va kanallari uchun tegishli umumiy manzillarni tanlashiga to'sqinlik qildi. Ushbu zaxiralangan foydalanuvchi nomlarini olishni istagan foydalanuvchilar ko'pincha hech qanday javob olmagan yoki aldanib qolishgan. Yaxshiyamki, bu vaziyat o'zgara boshladi. Avgust oyi oʻrtalarida biz oʻtgan yil davomida boʻsh yoki faol boʻlmagan kanallarga bogʻlangan barcha ochiq Telegram manzillarini olib tashladik. Biz bu manzillarning 99 foizini asta-sekin qaytadan umumiy foydalanishga kiritamiz, bu safar algoritmik va geolokatsiya cheklovlari bilan faqat bir nechta foydalanuvchilar emas, balki ko‘proq foydalanuvchilar foyda ko‘rishi mumkin. Eng yuqori baholangan qisqa foydalanuvchi nomlariga kelsak, ularni tarqatishning eng samarali va adolatli usuli men avvalgi postimda aytib o'tgan auktsion bo'lib tuyuladi. Shunday qilib, ushbu jozibali havolalarni qo'lga kiritganlar ularni yaxshi foydalanishga va taniqli t.me manzillarida joylashtirilgan original kontent bilan foydalanuvchilarimiz uchun qadrlashga undaydi. Telegram foydalanuvchi nomlarini yig‘ib olganlar hafsalasi pir bo‘lganiga shubha qilmayman, lekin bu o‘zgarish foydalanuvchilarning katta qismiga foyda keltiradi. Men millionlab ajoyib Telegram manzillari qanday qayta tiklanishini va nihoyat bizning hamjamiyatimizga xizmat qila boshlashini intiqlik bilan kutaman. P.S. Kelgusi voqealarni kutgan holda, bugun biz Telegramdagi har bir foydalanuvchi nomi uchun sindor.t.me kabi maxsus havolalarni qo'llab-quvvatlashni boshlaymiz. Ushbu veb-saytlar allaqachon istalgan brauzerda ishlaydi." - Pavel Durov #username#yangilik#hulosa 💚@TGraphUz | YouTube

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Crypto Australia🇭🇲🇭🇲

@CryptoAustralia · Post #15801 · 2024. 02. 13. AM 10:21

We can use Short-Term Holder MVRV to monitor the unrealized profit or loss of new market participants. Comparing the STH cost-basis to the spot price reveals the pressure they face to sell at a loss or take profit. #MVRV is already above the 1.0 Mark, which shows strong bullishness in the market and #MVRV tested the Moving Average as Resistance already, and more momentum yet to come if it crosses the 155D Moving Average with MVRV By Crypto Australia

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Crypto Australia🇭🇲🇭🇲

@CryptoAustralia · Post #15790 · 2024. 02. 12. PM 01:02

#MVRV started flipping bullish as #MVRV Ratio flipping above the 1Y MRVR Moving Average. Historically, we've seen this indicating some good mid-term and long-term trends successfully, so this could be another indication to us. By Crypto Australia

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Crypto M - Crypto News

@CryptoM · Post #65021 · 2026. 04. 10. PM 02:11

🚀 Bitcoin's Potential Bear-Market 'Iron Bottom' Predicted by Analyst A CryptoQuant analyst has projected that Bitcoin might establish a bear-market 'iron bottom' within the $55,000–$60,000 range by the end of 2026. According to NS3.AI, this prediction is grounded in on-chain indicators, notably the MVRV Z-score, which has moderated but remains above negative levels. #Bitcoin#Crypto#BearMarket#CryptoAnalysis#MVRV#OnChainData#CryptoPredictions#BTC

以太坊区块链新闻| ETH 以太币圈热瓜

@ethereumglobalnews · Post #963 · 2025. 10. 14. AM 11:58

🤣 以太區塊鏈新聞 🗓 2025-10-14 EthereumGlobalNews 💵#鏈上數據觀察 📊【 #BTC穩站135日均線,鏈上指標顯示投機降溫、結構穩固 】同時 #MVRV回落至 1.0 附近,顯示市場正從過度投機中冷卻,但整體結構依然穩健。 #技術走勢#BTC趨勢觀察#市場情緒#區塊鏈數據

以太坊区块链新闻| ETH 以太币圈热瓜

@ethereumglobalnews · Post #1050 · 2025. 10. 18. PM 12:58

#Santiment:主流币种 #MVRV 转为负值,显示潜在抄底时机浮现 —————————————————— 🔻 各資產的 30 日平均回報如下: • #BTC:-5.8% • #ETH:-8.4% • #XRP:-15.3% —————————————————— #鏈上情緒分析#數據回調#逢低買入訊號 🤣 以太區塊鏈新聞 🗓 2025-10-18 EthereumGlobalNews 💵#鏈上數據分析