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AI-X 價格

AI-X 價格X

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報價幣種:
TWD
數據來源於第三方提供商。本頁面和提供的資訊不為任何特定的加密貨幣提供背書。想要交易已上架幣種?  點擊此處

您今天對 AI-X 感覺如何?

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注意:此資訊僅供參考。

AI-X 今日價格

AI-X 的即時價格是今天每 (X / TWD) NT$0.{9}5706,目前市值為 NT$0.00 TWD。24 小時交易量為 NT$820.54 TWD。X 至 TWD 的價格為即時更新。AI-X 在過去 24 小時內的變化為 13.01%。其流通供應量為 0 。

X 的最高價格是多少?

X 的歷史最高價(ATH)為 NT$0.{4}1918,於 2024-10-24 錄得。

X 的最低價格是多少?

X 的歷史最低價(ATL)為 NT$0.{10}3194,於 2023-06-14 錄得。
計算 AI-X 收益

AI-X 價格預測

什麼時候是購買 X 的好時機? 我現在應該買入還是賣出 X?

在決定買入還是賣出 X 時,您必須先考慮自己的交易策略。長期交易者和短期交易者的交易活動也會有所不同。Bitget X 技術分析 可以提供您交易參考。
根據 X 4 小時技術分析,交易訊號為 買入
根據 X 1 日技術分析,交易訊號為 買入
根據 X 1 週技術分析,交易訊號為 賣出

X 在 2026 的價格是多少?

根據 X 的歷史價格表現預測模型,預計 X 的價格將在 2026 達到 NT$0.{9}7415

X 在 2031 的價格是多少?

2031,X 的價格預計將上漲 +39.00%。 到 2031 底,預計 X 的價格將達到 NT$0.{8}1531,累計投資報酬率為 +168.35%。

AI-X 價格歷史(TWD)

過去一年,AI-X 價格上漲了 -79.92%。在此期間, 兌 TWD 的最高價格為 NT$0.{4}1918, 兌 TWD 的最低價格為 NT$0.{9}4046。
時間漲跌幅(%)漲跌幅(%)最低價相應時間內 {0} 的最低價。最高價 最高價
24h+13.01%NT$0.{9}4972NT$0.{9}8401
7d+37.86%NT$0.{9}4046NT$0.{8}1499
30d-25.89%NT$0.{9}4046NT$0.{8}2196
90d-50.48%NT$0.{9}4046NT$0.{8}2720
1y-79.92%NT$0.{9}4046NT$0.{4}1918
全部時間+59.61%NT$0.{10}3194(2023-06-14, 1 年前 )NT$0.{4}1918(2024-10-24, 148 天前 )

AI-X 市場資訊

AI-X 市值走勢圖

市值
--
完全稀釋市值
NT$5,705,974.04
排名
買幣

AI-X 持幣分布集中度

巨鯨
投資者
散戶

AI-X 地址持有時長分布

長期持幣者
游資
交易者
coinInfo.name(12)即時價格表
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AI-X 評級

社群的平均評分
4.4
100 筆評分
此內容僅供參考。

AI-X (X) 簡介

AI-X代幣的價值:探究區塊鏈金融的未來

具有革命性的區塊鏈技術

區塊鏈技術自從比特幣的誕生以來,就給全球金融市場帶來了巨大的影響。這種技術大大改進了許多交易過程,提高了交易汽輸的質量和效率。然而,更令人驚奇的是,區塊鏈技術能夠驅動一種全新類型的數字資產:加密貨幣。

加密貨幣擁有去中心化、安全性高、交易快速等特點,這使得其在全球金融市場中有著很大的競爭優勢。而AI-X就是數字資產經濟新時代中的一種具有潛力的加密貨幣。

AI-X代幣:深具投資潛力的新興資產

AI-X代幣作為一種基於區塊鏈的數字資產,充分利用了區塊鏈技術的特點。它擁有去中心化、安全性高、交易快速等特點,這使得其在全球金融市場中有著很大的競爭優勢。

另一方面,AI-X代幣還融入了人工智能技術,使得它在眾多的加密貨幣中顯得與眾不同。透過人工智能的技術,AI-X代幣可以更好的預測市場趨勢,為投資者提供更為準確的投資策略。

總結

總體來說,AI-X代幣既繼承了區塊鏈技術的優點,又融入了先進的人工智能技術,這使得它成為了當前加密貨幣市場中的一顆耀眼的明星。隨著區塊鏈技術和人工智能技術的不斷進步,我們有理由相信,AI-X的價值會在未來的金融市場中得到更大的體現。


AI-X 動態

告別掃鏈與盯盤,「AI P小將」的正確開啟方式是什麼?
告別掃鏈與盯盤,「AI P小將」的正確開啟方式是什麼?

24 小時盯盤、凌晨 2 點手動交易的時代即將結束

BlockBeats2025-03-21 06:34
OCC結束聲譽風險檢查,因加密貨幣行業對取消銀行服務的反對聲浪
OCC結束聲譽風險檢查,因加密貨幣行業對取消銀行服務的反對聲浪

快速摘要:立法者和加密貨幣行業認為,數字資產公司在美國設立和維持銀行賬戶時面臨獨特的挑戰。美國貨幣監理署(OCC)也表示將從其手冊和指導中刪除有關聲譽風險的參考,但指出不會改變其對銀行如何處理風險的期望。

The Block2025-03-21 01:34
Pump.fun 推出名為 PumpSwap 的去中心化交易所以即時遷移畢業代幣
Pump.fun 推出名為 PumpSwap 的去中心化交易所以即時遷移畢業代幣

快速摘要 Pump.fun 已推出一個名為 PumpSwap 的原生去中心化交易所。Pump.fun 代幣在完成其債券曲線後,將直接轉移到 PumpSwap。PumpSwap 的推出還消除了 6 SOL 的遷移費,並為未來的創作者收入分享創造了機會。

The Block2025-03-20 20:01
更多 AI-X 動態

用戶還在查詢 AI-X 的價格。

AI-X 的目前價格是多少?

AI-X 的即時價格為 NT$0(X/TWD),目前市值為 NT$0 TWD。由於加密貨幣市場全天候不間斷交易,AI-X 的價格經常波動。您可以在 Bitget 上查看 AI-X 的市場價格及其歷史數據。

AI-X 的 24 小時交易量是多少?

在最近 24 小時內,AI-X 的交易量為 NT$820.54。

AI-X 的歷史最高價是多少?

AI-X 的歷史最高價是 NT$0.{4}1918。這個歷史最高價是 AI-X 自推出以來的最高價。

我可以在 Bitget 上購買 AI-X 嗎?

可以,AI-X 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 指南。

我可以透過投資 AI-X 獲得穩定的收入嗎?

當然,Bitget 推出了一個 策略交易平台,其提供智能交易策略,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 AI-X?

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。

在哪裡可以購買加密貨幣?

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!
加密貨幣投資(包括透過 Bitget 線上購買 AI-X)具有市場風險。Bitget 為您提供購買 AI-X 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 AI-X 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。

買入

理財

X
TWD
1 X = 0.{9}5706 TWD
在所有主流交易平台中,Bitget 提供最低的交易手續費。VIP 等級越高,費率越優惠。

Bitget 觀點

Cointribune EN
Cointribune EN
4小時前
AI Agents Take Over The Future Of Automation Is Here
Artificial intelligence has taken a decisive step forward with the meteoric rise of ChatGPT, which has revolutionized both the general public and businesses. Yet, faced with the limitations of giant models, a new approach is emerging: intelligent agents. Capable of acting and interacting with their digital environment, they redefine the future of AI by moving from simple text generation to executing concrete and autonomous tasks. Just a few years ago, interacting with an artificial intelligence seemed like science fiction to the general public. But when ChatGPT appeared at the end of 2022, a radical evolution took place. Based on the GPT-3.5 model and freely accessible online, ChatGPT experienced a meteoric rise, reaching 100 million monthly users in just two months, a historic record for a consumer application. In comparison, services like TikTok took nearly 9 months to reach such an audience. While democratizing text generation by AI, ChatGPT has enabled non-specialists to experience the power of large language models, also known as LLMs. From schoolchildren to professional engineers, everyone could ask questions, get summaries, create code, and generate content ideas through a natural language computing conversation. The impact in the professional world has been just as significant. Several companies quickly integrated these models into their products and workflows. OpenAI generated nearly 1 billion dollars in revenue in 2023, potentially reaching 3.7 billion in 2024. This ascent was supported by the development of AI APIs and commercial licenses. The formation of major partnerships, such as with Microsoft, allowed ChatGPT to be included in users’ daily routines (search engines, office suites), further amplifying its impact. GPT-3.5 was a true turning point. AI could now compose coherent text on demand. GPT-4, created at the beginning of 2023, affirmed the revolutionary aspect of the software by notably improving its reasoning capabilities and image comprehension. In record time, text-generative AI has transitioned from a laboratory curiosity to an essential consumer tool, both for less experienced users and for companies seeking automation. However, this meteoric rise has been called into question by the evolution of giant models. Indeed, major players in the web, such as Open AI and its competitors (Anthropic, Google, Meta, Grok in the United States, Mistral in France, Deepseek and Qwen in China) have worked to increase the power of their LLMs since 2024. Thus, new records of performance and intelligence have been established at the cost of significant efforts and massive expenses. Nevertheless, gains tend to plateau compared to the initial spectacular jumps. Indeed, according to “scaling laws”, each new advancement now requires an exponential increase in resources (model size, data used, computing power), which progressively limits the real progress margin of artificial intelligences. In fact, doubling the intelligence of a model would not merely double the initial cost but multiply it by ten or a hundred: it would require both more computing power and more training data. Where the transition from GPT-3 to GPT-4 brought significant improvements (with GPT-4 performing approximately 40% better than GPT-3.5 on certain standardized academic exams), OpenAI’s next model (codenamed Orion) is said to offer only minimal improvements over GPT-4, according to some sources. This dynamics of diminishing returns affects the entire sector: Google reportedly found that its Gemini 2.0 model does not meet expected goals, and Anthropic even temporarily paused the development of its main LLM to reassess its strategy. In short, the exhaustion of large high-quality training data corpora, as well as the unsustainable costs in computing power and energy needed to improve models, lead to a sort of technical ceiling, at least temporarily. The numbers confirm this on benchmarks. The multitask understanding scores (MMLU) of the best models converge: since 2023, almost all LLMs achieve similar performances on these tests, indicating we are approaching a plateau. Even much smaller open-source models are beginning to compete with the giants trained by billions of dollars in investments. The race for enormity of models is therefore showing its limits, and the giants of AI are changing strategies: Sam Altman (OpenAI) stated that the path to truly intelligent AI will likely no longer come from simply scaling LLMs, but rather from a creative use of existing models. In clear terms, it involves finding new approaches to gain intelligence without simply multiplying the size of neural networks. Certain techniques, such as Chain-of-Thought (or Tree-of-Thought), allow the model to generate a “reasoning” (often referred to as “thinking” models) before providing its answer, within which it can explore possibilities and realize its mistakes… This is the hallmark of models o1, o3 from OpenAI , R1 from Deepseek , and the „Think“ mode of Grok… This method offers remarkable intelligence gains, particularly in mathematical problems. However, it still comes at a cost: one of the major benchmarks for testing model intelligence is the ARC-AGI (“Abstract and Reasoning Corpus for Artificial General Intelligence”), published by François Chollet in 2019, which tests the intelligence of models on generalization tasks like the one below : This benchmark remained a challenge too difficult for the entirety of general models for a long time, taking 4 years to progress from 0 % completion with GPT-3 to 5 % with GPT-4o. But last December, OpenAI published the results of its range of o3 models, with a specialized model on ARC-AGI achieving 88 % completion : However, each problem incurs a cost of over $3,000 to execute (not counting training expenses), and takes over ten minutes. The limit of giant LLMs is now evident. Instead of accumulating billions of parameters for ever-smaller returns in intelligence, the AI industry now prefers to equip it with “arms and legs” to transition from simple text generation to concrete action. Now, AI no longer merely answers questions or generates content passively, but connects itself to databases, triggers APIs, and executes actions: conducting internet searches, writing code and executing it, booking a flight, making a call… It is clear that this new approach radically transforms our relationship with technology. This paradigm shift allows companies to rethink their workflows and use the power of LLMs to automate tedious and repetitive tasks. This modular approach focuses on interaction intelligence rather than brute parametric force. The real challenge now is to enable AI to collaborate with other systems to achieve tangible results. Several intelligent agents already illustrate the disruptive potential of this approach: Anthropic, creator of Claude, recently published a new standard, the Model Context Protocol (or MCP), which should ultimately allow connection between a compatible LLM and “servers” of tools chosen by the user. This approach has already garnered much attention in the community. Some, like Siddharth Ahuja (@sidahuj) on X (formerly Twitter), use it to connect Claude to Blender, the 3D modeling software, generating scenes just with queries : The arrival of these agents marks a decisive turning point in our interaction with AI. By allowing an artificial intelligence to take action, we witness a transformation of work methods. Companies integrating agents into their systems can automate complex processes, reduce delays, and improve operational accuracy, whether it’s about synthesizing vast volumes of information or driving complete applications. For professionals, the impact is immediate. An analyst can now delegate the research and compilation of information to Deep Research, freeing up time for strategic analysis. A developer, aided by v0, can turn an idea into reality in just a few minutes, while GitHub Copilot speeds up code production and reduces errors. The possibilities are already immense and continue to grow as new agents are created. Beyond the professional realm, these agents will also transform our daily lives, sliding into our personal tools and making services once reserved for experts accessible: it is now much easier to “photoshop” an image, generate code for a complex algorithm, or obtain a detailed report on a topic… Thus, the era of giant LLMs may be coming to an end, while the arrival of AI agents opens a new era of innovation. These agents – Deep Research, Manus, v0 by Vercel, GitHub Copilot, Cursor, Perplexity AI, and many others – seem to demonstrate that the true value of AI lies in its ability to orchestrate multiple tools to accomplish complex tasks, save time, and transform our workflows. But beyond these concrete successes, one question remains: what does the future of AI hold for us? What innovations can we expect? Perhaps an even deeper integration with edge computing, or agents capable of learning in real time, or modular ecosystems allowing everyone to customize their digital assistant? What is certain is that we are still only at the beginning of this revolution, which may be the largest humanity will ever experience. And you, are you eager to discover Orion (GPT5), Claude 4, Llama 4, DeepHeek R2, and other disruptive innovations? Which tool from this future excites you the most?
UP-0.28%
X-2.86%
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THEDEFIPLUG
4小時前
Most stablecoins are dead money but $lvlUSD isn’t. It earns 6-8%+ APY, stacks XP rewards, and powers 40x incentive pools. I’ve been farming it for max yield and here’s why it’s one of the best stablecoin plays in DeFi right now. @levelusd TVL explode past $80M in just a few
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Crypto News Flash
Crypto News Flash
5小時前
XRP Futures Trading Gets CFTC Nod—Institutional Demand Rising?
Following Bitnomial’s New XRP Futures Contracts, as reported by CNF in 2024, the initiative initially aimed to boost market confidence. The Chicago-based digital asset derivatives exchange, Bitnomial, has launched the first-ever XRP futures contracts regulated by the U.S. Commodity Futures Trading Commission (CFTC). As tweeted on X by Bitnomial: Bitnomial is launching the first-ever CFTC-regulated $XRP futures in the U.S. — physically settled for real market impact. Plus, we’ve voluntarily dismissed our case against the SEC as regulatory clarity improves. 🚀 XRP futures are here! 🚀 Bitnomial is launching the first-ever CFTC-regulated $XRP futures in the U.S. — physically settled for real market impact. Plus, we’ve voluntarily dismissed our case against the SEC as regulatory clarity improves. pic.twitter.com/ARkSanjFNU — Bitnomial (@Bitnomial) March 19, 2025 According to reports, Bitnomial’s CFTC-approved XRP futures contracts represent a major milestone in the crypto derivatives market. These contracts are physically settled, meaning that upon expiration, they are delivered in XRP tokens — distinguishing them from cash-settled alternatives that do not directly involve the underlying asset. The introduction of these regulated futures contracts provides institutional and retail investors with a new way to gain exposure to XRP, potentially enhancing liquidity and market depth for the digital asset. Concurrently with the launch, Bitnomial announced the withdrawal of its lawsuit against the U.S. Securities and Exchange Commission (SEC). The exchange had previously filed the lawsuit in October 2024, accusing the SEC of overstepping its jurisdiction by asserting that XRP futures should be classified as securities. The decision to retract the lawsuit aligns with recent developments, including the SEC’s decision to drop its appealagainst Ripple, the company behind XRP. This sequence of events has been viewed as a “resounding” victory for Ripple and has contributed to a more favorable regulatory environment for XRP. The launch of CFTC-regulated XRP futures by Bitnomial is expected to have several significant implications. First, regulated futures contracts could attract more institutional investors, increasing market maturity and stability. Second, increased liquidity and trading activity could lead to more accurate price discovery and reduced market volatility. Third, the availability of physically settled futures contracts could enhance market transparency and confidence among institutional and retail investors. According to a recent CNF report , Bitnomial’s platform debuted with $25M in Ripple support, underscoring the strategic alignment between the exchange and the XRP ecosystem. As of now, XRP is trading at $2.46, surging 7.52% in the past day and 10.31% in the past week.
X-2.86%
MAJOR+24.91%
𝙲𝚛𝚢𝚙𝚝𝚘𝚂𝚊𝚝Red
𝙲𝚛𝚢𝚙𝚝𝚘𝚂𝚊𝚝Red
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💰 $VELODROME   /USDT 🔽SHORT ✳️ ENTRY - 6220 , 6350 , 6500 🎯 TARGETS - 6140 , 6050 , 5960 , 5853 , 5700 , 5500 🀄️ LEVERAGE -  cross 15x 🔴 STOPLOSS - 6780
X-2.86%
VELODROME+5.56%
MDALAMGIMIA
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$BANANA has been a powerhouse over the last three days, surging from $16.10 to a high of $24.84, delivering a 2x return for early traders. The strong bullish momentum is backed by an upward trend in EMAs, with the 5 EMA at $22.52 and 20 EMA at $19.61, confirming sustained buying pressure. The Parabolic SAR at $18.29 indicates a strong trend continuation, with no immediate signs of reversal. Traders should watch for a clean breakout above $24.84 to target $26-$27, while a retracement to $23-$22.50 could offer a re-entry opportunity. Maintaining tight stop-losses and securing partial profits at resistance levels will be key to maximizing gains in this fast-moving trend. good nays
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熱門加密貨幣
按市值計算的8大加密貨幣。
相近市值
在所有 Bitget 資產中,這8種資產的市值最接近 AI-X。