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UNI COIN 價格

UNI COIN 價格UNI

UNI COIN(UNI)的 新台幣 價格為 -- TWD。
該幣種的價格尚未更新或已停止更新。本頁面資訊僅供參考。您可在 Bitget 現貨市場 上查看上架幣種。
註冊

今日UNI COIN即時價格TWD

今日UNI COIN即時價格為 -- TWD,目前市值為 --。過去 24 小時內,UNI COIN價格跌幅為 0.00%,24 小時交易量為 NT$0.00。UNI/TWD(UNI COIN兌換TWD)兌換率即時更新。
1UNI COIN的新台幣價值是多少?
截至目前,UNI COIN(UNI)的 新台幣 價格為 -- TWD。您現在可以用 1 UNI 兌換 --,或用 NT$ 10 兌換 0 UNI。在過去 24 小時內,UNI 兌換 TWD 的最高價格為 -- TWD,UNI 兌換 TWD 的最低價格為 -- TWD。

UNI COIN 市場資訊

價格表現(24 小時)
24 小時
24 小時最低價 --24 小時最高價 --
歷史最高價(ATH):
--
漲跌幅(24 小時):
--
漲跌幅(7 日):
--
漲跌幅(1 年):
--
市值排名:
--
市值:
--
完全稀釋市值:
--
24 小時交易額:
--
流通量:
-- UNI
‌最大發行量:
--

UNI COIN 的 AI 分析報告

今日加密市場熱點查看報告

UNI COIN價格預測

熱門活動

如何購買UNI COIN(UNI)

建立您的免費 Bitget 帳戶

建立您的免費 Bitget 帳戶

使用您的電子郵件地址/手機號碼在 Bitget 註冊,並建立強大的密碼以確保您的帳戶安全
認證您的帳戶

認證您的帳戶

輸入您的個人資訊並上傳有效的身份照片進行身份認證
將 UNI 兌換為 TWD

將 UNI 兌換為 TWD

在 Bitget 上選擇加密貨幣進行交易。

常見問題

UNI COIN 的目前價格是多少?

UNI COIN 的即時價格為 --(UNI/TWD),目前市值為 -- TWD。由於加密貨幣市場全天候不間斷交易,UNI COIN 的價格經常波動。您可以在 Bitget 上查看 UNI COIN 的市場價格及其歷史數據。

UNI COIN 的 24 小時交易量是多少?

在最近 24 小時內,UNI COIN 的交易量為 --。

UNI COIN 的歷史最高價是多少?

UNI COIN 的歷史最高價是 --。這個歷史最高價是 UNI COIN 自推出以來的最高價。

我可以在 Bitget 上購買 UNI COIN 嗎?

可以,UNI COIN 目前在 Bitget 的中心化交易平台上可用。如需更詳細的說明,請查看我們很有幫助的 如何購買 uni-coin 指南。

我可以透過投資 UNI COIN 獲得穩定的收入嗎?

當然,Bitget 推出了一個 機器人交易平台,其提供智能交易機器人,可以自動執行您的交易,幫您賺取收益。

我在哪裡能以最低的費用購買 UNI COIN?

Bitget提供行業領先的交易費用和市場深度,以確保交易者能够從投資中獲利。 您可通過 Bitget 交易所交易。

您可以在哪裡購買UNI COIN(UNI)?

透過 Bitget App 購買
數分鐘完成帳戶註冊,即可透過信用卡或銀行轉帳購買加密貨幣。
Download Bitget APP on Google PlayDownload Bitget APP on AppStore
透過 Bitget 交易所交易
將加密貨幣存入 Bitget 交易所,交易流動性大且費用低

影片部分 - 快速認證、快速交易

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如何在 Bitget 完成身分認證以防範詐騙
1. 登入您的 Bitget 帳戶。
2. 如果您是 Bitget 的新用戶,請觀看我們的教學,以了解如何建立帳戶。
3. 將滑鼠移到您的個人頭像上,點擊「未認證」,然後點擊「認證」。
4. 選擇您簽發的國家或地區和證件類型,然後根據指示進行操作。
5. 根據您的偏好,選擇「手機認證」或「電腦認證」。
6. 填寫您的詳細資訊,提交身分證影本,並拍攝一張自拍照。
7. 提交申請後,身分認證就完成了!
1 TWD 即可購買 UNI COIN
新用戶可獲得價值 6,200 USDT 的迎新大禮包
立即購買 UNI COIN
加密貨幣投資(包括透過 Bitget 線上購買 UNI COIN)具有市場風險。Bitget 為您提供購買 UNI COIN 的簡便方式,並且盡最大努力讓用戶充分了解我們在交易所提供的每種加密貨幣。但是,我們不對您購買 UNI COIN 可能產生的結果負責。此頁面和其包含的任何資訊均不代表對任何特定加密貨幣的背書認可,任何價格數據均採集自公開互聯網,不被視為來自Bitget的買賣要約。

UNI 資料來源

UNI COIN評級
4.4
100 筆評分

標籤

交換媒介
合約:
0xe687...3a76bf2(Ethereum)
相關連結:

Bitget 觀點

PneumaTx
PneumaTx
14小時前
Choosing the Right Bitget GetAgent AI Trader: A Data-Backed Personal Experience
Why I joined the GetAgent AI Trading Bot event: I joined the Bitget GetAgent AI Trading Bot event because I wanted to understand how AI copy trading actually works in real market conditions. Not just which bot shows the highest number, but how each AI thinks, manages risk, and behaves when the market is uncertain. Once I started looking closely, I realized that choosing an AI agent is not a simple decision. Each agent follows a completely different logic, and those differences show clearly in their performance, drawdowns, and trade behavior. Comparing the AI agents by strategy and performance: The first agent that stood out to me was Infinite_Grid. At the time I observed it, it was showing a profit rate around 9%, which was the strongest among all agents. Its strategy is contrarian cycle trading. It assumes price moves in cycles and focuses on buying weakness and selling strength instead of chasing trends. It held mostly long positions on major coins like BTC, ETH, BNB, SOL, XRP, and LTC, using moderate leverage between 5x and 8x. Even though it experienced volatility, it showed the ability to recover from drawdowns. Pure_DeepSeek was the second strongest performer, with a profit rate around 5.5%. Its strategy is adaptive and flexible. It does not follow strict rules and can switch between scalping and swing trading depending on market conditions. At the time, it held long positions on BTC and SOL and kept many assets on wait. This agent felt cautious and focused on capital preservation when signals were unclear. Apex_Neutral had a profit rate around -9.5%. Its approach is market neutral. It opens both long and short positions at the same time to reduce directional risk. It traded assets like BTC, ETH, SOL, and XRP using higher leverage around 12x, but only entered when confidence was high. Even though performance was negative during this period, its risk control and patience were very clear. Dip_Sniper showed a profit rate around -25%. Its strategy focuses on detecting trend exhaustion and early reversals using divergence signals like RSI and MACD. At the time I observed it, it had no open positions and was mostly waiting for clear setups. This showed discipline, but also highlighted how difficult reversal trading can be when timing is not perfect. BlueChip_Alpha was sitting around -55%. It uses a cross-sectional ranking strategy on large-cap coins such as BTC, ETH, BNB, SOL, DOGE, UNI, and XRP. It goes long on strong assets and short on weaker ones, usually with leverage around 10x. This approach is complex and clearly more sensitive to market conditions. Altcoin_Turbo had a profit rate close to -65%. It focuses on altcoins like ADA, UNI, SOL, and BNB, pairing long and short positions to isolate momentum. Even with hedging, the volatility in altcoins made this strategy very challenging during the observed period. CTA_Force was also near -65%. It follows a directional trend strategy using momentum and volume filters. At the time, it was only holding a long BNB position with 10x leverage and waiting on other assets. This showed how trend-following systems can struggle when markets are not trending clearly. What the numbers taught me about market conditions: Looking at all agents together made one thing very clear. This market phase was not friendly to pure momentum or aggressive trend-following strategies. Agents focused on altcoins, high leverage, or strict trend continuation were under pressure. The agents that handled conditions better were the ones that were either adaptive or contrarian. Infinite_Grid and Pure_DeepSeek stood out not because they avoided losses entirely, but because their logic matched the market environment better. How I think about switching between AI agents: From this comparison, I formed a simple rotation logic. When the market is choppy, range-bound, or showing signs of exhaustion, Infinite_Grid makes sense as a base agent. Its cycle-based logic and moderate leverage help control risk. When volatility increases and trends become less predictable, switching part of exposure to Pure_DeepSeek makes sense. Its adaptive behavior allows it to slow down or change style when signals are mixed. During very uncertain or unstable periods, Apex_Neutral can be useful to reduce directional exposure, even if returns are slower. Agents like Dip_Sniper, BlueChip_Alpha, Altcoin_Turbo, and CTA_Force require very specific market conditions. They may perform well in strong trends or clean reversals, but during this period, the data showed that patience was needed before allocating to them. This helped me understand that rotating between AI agents based on market behavior is more important than sticking to one bot permanently. Why I chose Infinite_Grid as my main agent: After comparing strategies and performance, I chose Infinite_Grid as my main copy trading agent. Its profit rate around 9%, combined with its calm behavior and moderate leverage, aligned well with my risk tolerance. I also liked that it showed a clear recovery after a drawdown instead of overtrading. Another important factor for me was that it uses 0% profit sharing, which made testing and observing the strategy more transparent. What actually happened in my own trades: In my own account, one BNB trade closed with a small realized profit. It was a long position using 8x leverage that opened and closed on the same day. The gain was small, but the execution was clean and disciplined. I also have open positions on ETH and SOL that were currently showing small unrealized losses. These positions use 5x leverage and have no liquidation risk. This fits the cycle-based logic of Infinite_Grid, which expects price to move back and forth before resolving. Seeing both realized gains and unrealized losses helped me understand that this strategy is about patience and risk control, not instant results. What this experience taught me about AI copy trading: This event taught me that AI copy trading is not about finding the perfect bot. It is about understanding how each AI thinks, how it performs in different conditions, and how to rotate between strategies when the market changes. The Bitget GetAgent platform made it easy to compare agents side by side, observe real behavior, and learn from both profits and drawdowns. That learning process was the most valuable part of this experience. For me, Infinite_Grid fit best in this market phase, but seeing all agents together helped me build a clearer and more disciplined approach to AI trading going forward.
BTC+1.89%
DOGE+2.16%
DeFi Planet
DeFi Planet
18小時前
Top DeFi protocols by DAU in November. @Uniswap led the charge followed by Pancake swap. Money is flowing into DeFi. Follow the money 💰 flow.
UNI+2.18%
Bpay-News
Bpay-News
18小時前
UNI Price Prediction: $8.50 Target by February 2025 as Technical Recovery Signals Emerge UNI price prediction points to $8.50-$10.66 recovery potential over 4-6 weeks as oversold conditions and whale accumulation suggest bullish reversal from current $5.43 levels.
UNI+2.18%
Eryxx
Eryxx
1天前
$UNI Analysis : The price of UNI is preparing to start an upward movement after gathering liquidity in the range of $4.73 - $5.10. If the price reacts to this zone, we will see growth to the important level of $7.
UNI+2.18%
BGUSER-8YYD1C8Nmf786
BGUSER-8YYD1C8Nmf786
3天前
A whale is offloading his bags at a loss. In the past 3 days, he has sold $UNI, $LINK, $PENDLE, $AAVE, and $AERO for a total loss of $4,000,000.
LINK+2.67%
PENDLE+1.52%