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SolGPT 價格

SolGPT 價格GPT

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報價幣種:
USD

您今天對 SolGPT 感覺如何?

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注意:此資訊僅供參考。

SolGPT 今日價格

SolGPT 的即時價格是今天每 (GPT / USD) $0.{4}9969,目前市值為 $0.00 USD。24 小時交易量為 $257.09 USD。GPT 至 USD 的價格為即時更新。SolGPT 在過去 24 小時內的變化為 2.84%。其流通供應量為 0 。

GPT 的最高價格是多少?

GPT 的歷史最高價(ATH)為 $0.004169,於 2024-05-20 錄得。

GPT 的最低價格是多少?

GPT 的歷史最低價(ATL)為 $0.{4}9427,於 2024-11-26 錄得。
計算 SolGPT 收益

SolGPT 價格預測

什麼時候是購買 GPT 的好時機? 我現在應該買入還是賣出 GPT?

在決定買入還是賣出 GPT 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 GPT 技術分析 可以提供您交易參考。
根據 GPT 4 小時技術分析,交易訊號為 賣出
根據 GPT 1 日技術分析,交易訊號為 強力賣出
根據 GPT 1 週技術分析,交易訊號為 強力賣出

GPT 在 2025 的價格是多少?

根據 GPT 的歷史價格表現預測模型,預計 GPT 的價格將在 2025 達到 $0.0005131

GPT 在 2030 的價格是多少?

2030,GPT 的價格預計將上漲 -10.00%。 到 2030 底,預計 GPT 的價格將達到 $0.0008586,累計投資報酬率為 +692.88%。

SolGPT 價格歷史(USD)

過去一年,SolGPT 價格上漲了 -95.01%。在此期間, 兌 USD 的最高價格為 $0.004169, 兌 USD 的最低價格為 $0.{4}9427。
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+2.84%$0.{4}9427$0.{4}9969
7d-11.62%$0.{4}9427$0.0001306
30d-51.60%$0.{4}9427$0.0002145
90d-72.10%$0.{4}9427$0.0004880
1y-95.01%$0.{4}9427$0.004169
全部時間-95.70%$0.{4}9427(2024-11-26, 昨天 )$0.004169(2024-05-20, 192 天前 )

SolGPT 市場資訊

市值
--
+2.84%
完全稀釋市值
$99,546.87
+2.84%
24 小時交易額
$257.09
-72.96%
排名
流通率
0.00%
24 小時交易額/市值
0.00%
流通量
0 GPT
總供應量 / 最大供應量
998,533,861 GPT
-- GPT
立即購買 SolGPT

SolGPT 評級

社群的平均評分
4.6
100 筆評分
此內容僅供參考。

如何購買 SolGPT(GPT)

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
購買 SolGPT (GPT)

購買 SolGPT (GPT)

我們將為您示範使用多種支付方式在 Bitget 上購買 SolGPT

跟單交易專家,進行 GPT 跟單交易!

在 Bitget 註冊並成功購買 USDT 或 GPT 後,您還可以跟單交易專家開始跟單交易。

SolGPT 動態

多位頂級專案創辦人共探:AI Agent、代幣經濟與人機協作前景
多位頂級專案創辦人共探:AI Agent、代幣經濟與人機協作前景

加密 Token 化如何幫助智能體技術進步並激發社區活力?

BlockBeats2024-11-26 13:00
「AI投毒」防不勝防,還能用ChatGPT寫代碼嗎?
「AI投毒」防不勝防,還能用ChatGPT寫代碼嗎?

沒有證據顯示是刻意投毒給GPT,還是GPT主動採集

BlockBeats2024-11-22 07:24
更多 SolGPT 動態

用戶還在查詢 SolGPT 的價格。

SolGPT 的目前價格是多少?

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

SolGPT 的 24 小時交易量是多少?

在最近 24 小時內,SolGPT 的交易量為 $257.09。

SolGPT 的歷史最高價是多少?

SolGPT 的歷史最高價是 $0.004169。這個歷史最高價是 SolGPT 自推出以來的最高價。

我可以在 Bitget 上購買 SolGPT 嗎?

可以,SolGPT 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 SolGPT 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 SolGPT?

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 SolGPT(GPT)?

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 SolGPT)具有市場風險。Bitget 為您提供購買 SolGPT 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 SolGPT 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

‌交易

理財

GPT
USD
1 GPT = 0.{4}9969 USD
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
0.1%
Kraken
0.26%
Coinbase
1.99%

GPT 資料來源

合約
更多更多
https://img.bitgetimg.com/multiLang/develop/web/SOL.png
Solana
Eyhi3q...WfGcGx5
copy
wallet
相關連結
SolGPT WebsiteSolGPT WhitepaperSolGPT TwitterSolGPT Github

Bitget 觀點

sanajan
sanajan
1天前
Predictive Analytics: The Core of $ASI’s AI Strategy Predictive analytics forms the backbone of $ASI’s AI-powered trading strategy, enabling the generation of actionable insights for traders. By leveraging data-driven forecasting models, $ASI delivers cutting-edge solutions that help users anticipate market trends and optimize trading decisions. Here’s how predictive analytics drives $ASI’s AI strategy: 1. What is Predictive Analytics? Predictive analytics involves using statistical algorithms, machine learning (ML), and historical data to identify patterns and forecast future outcomes. In the context of $ASI, this means predicting market movements, price trends, and trading opportunities with high precision. 2. Data-Driven Decision Making At the core of $ASI’s strategy is the ability to process vast datasets to uncover meaningful insights. Key data inputs include: Historical Price Movements: Identifies long-term and short-term trends. Real-Time Market Data: Analyzes price changes, trading volumes, and order books. Sentiment Analysis: Uses natural language processing (NLP) to gauge investor sentiment from news and social media. Macroeconomic Factors: Incorporates global financial indicators to provide a holistic view of market dynamics. 3. Core Components of $ASI’s Predictive Models The $ASI AI platform integrates several technologies to enhance its predictive capabilities: Machine Learning Algorithms: Adaptive models learn from historical data and refine predictions as new data emerges. Deep Learning Neural Networks: Processes complex relationships within data for advanced pattern recognition. Statistical Techniques: Ensures robust and reliable predictions through regression, time-series analysis, and probabilistic models. Reinforcement Learning: Improves predictions through iterative testing and feedback from past outcomes. 4. Application in Trading Predictive analytics enables traders to capitalize on opportunities and manage risks effectively: Trend Forecasting: Anticipates upward or downward price trends across assets. Volatility Predictions: Alerts traders to potential price fluctuations, helping them prepare for market swings. Entry and Exit Points: Suggests optimal times to buy or sell assets for maximum profitability. Risk Mitigation: Provides warnings about adverse market conditions or potential losses. 5. Key Benefits of Predictive Analytics for $ASI Users Improved Accuracy: Delivers precise signals based on in-depth data analysis. Faster Decision-Making: Processes data in real-time, enabling traders to react promptly to market changes. Emotion-Free Trading: Replaces subjective decision-making with objective, data-driven recommendations. Scalability: Supports trading across multiple markets and assets simultaneously. 6. AI Models in Predictive Analytics The $ASI AI strategy employs state-of-the-art models to ensure accuracy and reliability: Time-Series Forecasting Models: ARIMA and LSTM networks for sequential data analysis. Classification Models: Decision trees and support vector machines (SVMs) for event prediction (e.g., bullish/bearish trends). Sentiment Models: NLP algorithms, such as BERT, to analyze sentiment data from text sources. 7. Integration with the $ASI Ecosystem Predictive analytics enhances the overall utility and value of $ASI within the AltSignals ecosystem: ActualizeAI: Provides predictive insights directly to users, improving their trading outcomes. DeFi Integration: Helps users optimize liquidity provision and yield farming by predicting market conditions. Token Value: Drives demand for $ASI tokens, as they are required to access premium AI-powered features. 8. Continuous Improvement Through Feedback Loops $ASI’s AI models evolve over time, ensuring the platform remains effective in changing market conditions: Performance Monitoring: Tracks the accuracy of predictions and adjusts models as needed. User Feedback: Incorporates trader experiences to refine signal generation. Adaptive Algorithms: Learns from new data to stay ahead of market trends. 9. Challenges in Predictive Analytics and Solutions Market Noise: Predictive models may struggle with erratic price movements. $ASI mitigates this by combining multiple data sources for robust predictions. Overfitting Risks: Regular model testing and validation ensure predictions remain generalized and accurate. Data Integrity: Ensures high-quality data inputs by using verified sources and advanced preprocessing techniques. 10. The Future of Predictive Analytics in $ASI’s Strategy Enhanced Models: Adoption of advanced AI technologies like GPT-style models for even more sophisticated predictions. Cross-Market Predictions: Expanding beyond crypto to predict trends in traditional markets and other financial assets. Automated Execution: Integrating predictive analytics with automated trading systems for hands-free, optimized trades. Conclusion Predictive analytics is the cornerstone of $ASI’s AI strategy, equipping traders with the tools they need to navigate complex and volatile markets. By combining cutting-edge technology with real-time insights, $ASI ensures its users stay ahead of the curve, making predictive analytics an indispensable part of the future of trading.
SOCIAL-1.04%
ASI-20.83%
جیک_بیک۔
جیک_بیک۔
1天前
Predictive Analytics: The Core of $ASI’s AI Strategy Predictive analytics forms the backbone of $ASI’s AI-powered trading strategy, enabling the generation of actionable insights for traders. By leveraging data-driven forecasting models, $ASI delivers cutting-edge solutions that help users anticipate market trends and optimize trading decisions. Here’s how predictive analytics drives $ASI’s AI strategy: 1. What is Predictive Analytics? Predictive analytics involves using statistical algorithms, machine learning (ML), and historical data to identify patterns and forecast future outcomes. In the context of $ASI, this means predicting market movements, price trends, and trading opportunities with high precision. 2. Data-Driven Decision Making At the core of $ASI’s strategy is the ability to process vast datasets to uncover meaningful insights. Key data inputs include: Historical Price Movements: Identifies long-term and short-term trends. Real-Time Market Data: Analyzes price changes, trading volumes, and order books. Sentiment Analysis: Uses natural language processing (NLP) to gauge investor sentiment from news and social media. Macroeconomic Factors: Incorporates global financial indicators to provide a holistic view of market dynamics. 3. Core Components of $ASI’s Predictive Models The $ASI AI platform integrates several technologies to enhance its predictive capabilities: Machine Learning Algorithms: Adaptive models learn from historical data and refine predictions as new data emerges. Deep Learning Neural Networks: Processes complex relationships within data for advanced pattern recognition. Statistical Techniques: Ensures robust and reliable predictions through regression, time-series analysis, and probabilistic models. Reinforcement Learning: Improves predictions through iterative testing and feedback from past outcomes. 4. Application in Trading Predictive analytics enables traders to capitalize on opportunities and manage risks effectively: Trend Forecasting: Anticipates upward or downward price trends across assets. Volatility Predictions: Alerts traders to potential price fluctuations, helping them prepare for market swings. Entry and Exit Points: Suggests optimal times to buy or sell assets for maximum profitability. Risk Mitigation: Provides warnings about adverse market conditions or potential losses. 5. Key Benefits of Predictive Analytics for $ASI Users Improved Accuracy: Delivers precise signals based on in-depth data analysis. Faster Decision-Making: Processes data in real-time, enabling traders to react promptly to market changes. Emotion-Free Trading: Replaces subjective decision-making with objective, data-driven recommendations. Scalability: Supports trading across multiple markets and assets simultaneously. 6. AI Models in Predictive Analytics The $ASI AI strategy employs state-of-the-art models to ensure accuracy and reliability: Time-Series Forecasting Models: ARIMA and LSTM networks for sequential data analysis. Classification Models: Decision trees and support vector machines (SVMs) for event prediction (e.g., bullish/bearish trends). Sentiment Models: NLP algorithms, such as BERT, to analyze sentiment data from text sources. 7. Integration with the $ASI Ecosystem Predictive analytics enhances the overall utility and value of $ASI within the AltSignals ecosystem: ActualizeAI: Provides predictive insights directly to users, improving their trading outcomes. DeFi Integration: Helps users optimize liquidity provision and yield farming by predicting market conditions. Token Value: Drives demand for $ASI tokens, as they are required to access premium AI-powered features. 8. Continuous Improvement Through Feedback Loops $ASI’s AI models evolve over time, ensuring the platform remains effective in changing market conditions: Performance Monitoring: Tracks the accuracy of predictions and adjusts models as needed. User Feedback: Incorporates trader experiences to refine signal generation. Adaptive Algorithms: Learns from new data to stay ahead of market trends. 9. Challenges in Predictive Analytics and Solutions Market Noise: Predictive models may struggle with erratic price movements. $ASI mitigates this by combining multiple data sources for robust predictions. Overfitting Risks: Regular model testing and validation ensure predictions remain generalized and accurate. Data Integrity: Ensures high-quality data inputs by using verified sources and advanced preprocessing techniques. 10. The Future of Predictive Analytics in $ASI’s Strategy Enhanced Models: Adoption of advanced AI technologies like GPT-style models for even more sophisticated predictions. Cross-Market Predictions: Expanding beyond crypto to predict trends in traditional markets and other financial assets. Automated Execution: Integrating predictive analytics with automated trading systems for hands-free, optimized trades. Conclusion Predictive analytics is the cornerstone of $ASI’s AI strategy, equipping traders with the tools they need to navigate complex and volatile markets. By combining cutting-edge technology with real-time insights, $ASI ensures its users stay ahead of the curve, making predictive analytics an indispensable part of the future of trading.
SOCIAL-1.04%
ASI-20.83%
Crypto-Hania
Crypto-Hania
1天前
$ASI Predictive Analytics: The Core of $ASI’s AI Strategy $ASI Predictive analytics forms the backbone of $ASI’s AI-powered trading strategy, enabling the generation of actionable insights for traders. By leveraging data-driven forecasting models, $ASI delivers cutting-edge solutions that help users anticipate market trends and optimize trading decisions. Here’s how predictive analytics drives $ASI’s AI strategy: $ASI 1. What is Predictive Analytics? Predictive analytics involves using statistical algorithms, machine learning (ML), and historical data to identify patterns and forecast future outcomes. In the context of $ASI, this means predicting market movements, price trends, and trading opportunities with high precision. 2. Data-Driven Decision Making At the core of $ASI’s strategy is the ability to process vast datasets to uncover meaningful insights. Key data inputs include: Historical Price Movements: Identifies long-term and short-term trends. Real-Time Market Data: Analyzes price changes, trading volumes, and order books. Sentiment Analysis: Uses natural language processing (NLP) to gauge investor sentiment from news and social media. Macroeconomic Factors: Incorporates global financial indicators to provide a holistic view of market dynamics. 3. Core Components of $ASI’s Predictive Models The $ASI AI platform integrates several technologies to enhance its predictive capabilities: Machine Learning Algorithms: Adaptive models learn from historical data and refine predictions as new data emerges. Deep Learning Neural Networks: Processes complex relationships within data for advanced pattern recognition. Statistical Techniques: Ensures robust and reliable predictions through regression, time-series analysis, and probabilistic models. Reinforcement Learning: Improves predictions through iterative testing and feedback from past outcomes. 4. Application in Trading Predictive analytics enables traders to capitalize on opportunities and manage risks effectively: Trend Forecasting: Anticipates upward or downward price trends across assets. Volatility Predictions: Alerts traders to potential price fluctuations, helping them prepare for market swings. Entry and Exit Points: Suggests optimal times to buy or sell assets for maximum profitability. Risk Mitigation: Provides warnings about adverse market conditions or potential losses. 5. Key Benefits of Predictive Analytics for $ASI Users Improved Accuracy: Delivers precise signals based on in-depth data analysis. Faster Decision-Making: Processes data in real-time, enabling traders to react promptly to market changes. Emotion-Free Trading: Replaces subjective decision-making with objective, data-driven recommendations. Scalability: Supports trading across multiple markets and assets simultaneously. 6. AI Models in Predictive Analytics The $ASI AI strategy employs state-of-the-art models to ensure accuracy and reliability: Time-Series Forecasting Models: ARIMA and LSTM networks for sequential data analysis. Classification Models: Decision trees and support vector machines (SVMs) for event prediction (e.g., bullish/bearish trends). Sentiment Models: NLP algorithms, such as BERT, to analyze sentiment data from text sources. 7. Integration with the $ASI Ecosystem Predictive analytics enhances the overall utility and value of $ASI within the AltSignals ecosystem: ActualizeAI: Provides predictive insights directly to users, improving their trading outcomes. DeFi Integration: Helps users optimize liquidity provision and yield farming by predicting market conditions. Token Value: Drives demand for $ASI tokens, as they are required to access premium AI-powered features. 8. Continuous Improvement Through Feedback Loops $ASI’s AI models evolve over time, ensuring the platform remains effective in changing market conditions: Performance Monitoring: Tracks the accuracy of predictions and adjusts models as needed. User Feedback: Incorporates trader experiences to refine signal generation. Adaptive Algorithms: Learns from new data to stay ahead of market trends. 9. Challenges in Predictive Analytics and Solutions Market Noise: Predictive models may struggle with erratic price movements. $ASI mitigates this by combining multiple data sources for robust predictions. Overfitting Risks: Regular model testing and validation ensure predictions remain generalized and accurate. Data Integrity: Ensures high-quality data inputs by using verified sources and advanced preprocessing techniques. 10. The Future of Predictive Analytics in $ASI’s Strategy Enhanced Models: Adoption of advanced AI technologies like GPT-style models for even more sophisticated predictions. Cross-Market Predictions: Expanding beyond crypto to predict trends in traditional markets and other financial assets. Automated Execution: Integrating predictive analytics with automated trading systems for hands-free, optimized trades. $ASI Conclusion Predictive analytics is the cornerstone of $ASI’s AI strategy, equipping traders with the tools they need to navigate complex and volatile markets. By combining cutting-edge technology with real-time insights, $ASI ensures its users stay ahead of the curve, making predictive analytics an indispensable part of the future of trading.$ASI
SOCIAL-1.04%
ASI-20.83%
Robertz
Robertz
2天前
Predictive Analytics: The Core of $ASI’s AI Strategy
Predictive Analytics: The Core of $ASI’s AI Strategy Predictive analytics forms the backbone of $ASI’s AI-powered trading strategy, enabling the generation of actionable insights for traders. By leveraging data-driven forecasting models, $ASI delivers cutting-edge solutions that help users anticipate market trends and optimize trading decisions. Here’s how predictive analytics drives $ASI’s AI strategy: 1. What is Predictive Analytics? Predictive analytics involves using statistical algorithms, machine learning (ML), and historical data to identify patterns and forecast future outcomes. In the context of $ASI, this means predicting market movements, price trends, and trading opportunities with high precision. 2. Data-Driven Decision Making At the core of $ASI’s strategy is the ability to process vast datasets to uncover meaningful insights. Key data inputs include: Historical Price Movements: Identifies long-term and short-term trends. Real-Time Market Data: Analyzes price changes, trading volumes, and order books. Sentiment Analysis: Uses natural language processing (NLP) to gauge investor sentiment from news and social media. Macroeconomic Factors: Incorporates global financial indicators to provide a holistic view of market dynamics. 3. Core Components of $ASI’s Predictive Models The $ASI AI platform integrates several technologies to enhance its predictive capabilities: Machine Learning Algorithms: Adaptive models learn from historical data and refine predictions as new data emerges. Deep Learning Neural Networks: Processes complex relationships within data for advanced pattern recognition. Statistical Techniques: Ensures robust and reliable predictions through regression, time-series analysis, and probabilistic models. Reinforcement Learning: Improves predictions through iterative testing and feedback from past outcomes. 4. Application in Trading Predictive analytics enables traders to capitalize on opportunities and manage risks effectively: Trend Forecasting: Anticipates upward or downward price trends across assets. Volatility Predictions: Alerts traders to potential price fluctuations, helping them prepare for market swings. Entry and Exit Points: Suggests optimal times to buy or sell assets for maximum profitability. Risk Mitigation: Provides warnings about adverse market conditions or potential losses. 5. Key Benefits of Predictive Analytics for $ASI Users Improved Accuracy: Delivers precise signals based on in-depth data analysis. Faster Decision-Making: Processes data in real-time, enabling traders to react promptly to market changes. Emotion-Free Trading: Replaces subjective decision-making with objective, data-driven recommendations. Scalability: Supports trading across multiple markets and assets simultaneously. 6. AI Models in Predictive Analytics The $ASI AI strategy employs state-of-the-art models to ensure accuracy and reliability: Time-Series Forecasting Models: ARIMA and LSTM networks for sequential data analysis. Classification Models: Decision trees and support vector machines (SVMs) for event prediction (e.g., bullish/bearish trends). Sentiment Models: NLP algorithms, such as BERT, to analyze sentiment data from text sources. 7. Integration with the $ASI Ecosystem Predictive analytics enhances the overall utility and value of $ASI within the AltSignals ecosystem: ActualizeAI: Provides predictive insights directly to users, improving their trading outcomes. DeFi Integration: Helps users optimize liquidity provision and yield farming by predicting market conditions. Token Value: Drives demand for $ASI tokens, as they are required to access premium AI-powered features. 8. Continuous Improvement Through Feedback Loops $ASI’s AI models evolve over time, ensuring the platform remains effective in changing market conditions: Performance Monitoring: Tracks the accuracy of predictions and adjusts models as needed. User Feedback: Incorporates trader experiences to refine signal generation. Adaptive Algorithms: Learns from new data to stay ahead of market trends. 9. Challenges in Predictive Analytics and Solutions Market Noise: Predictive models may struggle with erratic price movements. $ASI mitigates this by combining multiple data sources for robust predictions. Overfitting Risks: Regular model testing and validation ensure predictions remain generalized and accurate. Data Integrity: Ensures high-quality data inputs by using verified sources and advanced preprocessing techniques. 10. The Future of Predictive Analytics in $ASI’s Strategy Enhanced Models: Adoption of advanced AI technologies like GPT-style models for even more sophisticated predictions. Cross-Market Predictions: Expanding beyond crypto to predict trends in traditional markets and other financial assets. Automated Execution: Integrating predictive analytics with automated trading systems for hands-free, optimized trades. Conclusion Predictive analytics is the cornerstone of $ASI’s AI strategy, equipping traders with the tools they need to navigate complex and volatile markets. By combining cutting-edge technology with real-time insights, $ASI ensures its users stay ahead of the curve, making predictive analytics an indispensable part of the future of trading.
ASI-20.83%
HIGH+8.88%
holiest
holiest
2天前
ASI Alliance can overcome OpenAI in hardware.
The Artificial Superintelligence (ASI) Alliance, an industry merger aiming to challenge Big Tech dominance in artificial intelligence, has a long path to reach rivals’ computing power. Still, a key alliance member believes it can offer much smarter decentralization solutions. ASI officially opened voting on bringing the cloud computing and blockchain platform Cudos into its alliance in a move to expand its computing power and AI tools. The vote allows the community to decide whether Cudos should join and merge their native token, Cudos (CUDOS), with the ASI Alliance, which currently includes SingularityNET, the Ocean Protocol and Fetch.ai. Cudos’ entrance into the ASI Alliance is expected to scale with the alliance’s growing computing needs on its mission to deploy artificial general intelligence (AGI), which attempts to create software with humanlike intelligence powered by immense computational power. With the potential Cudos merger, the ASI Alliance could bring $200 million of dedicated computer hardware if token prices remain healthy. Despite this, the ASI Alliance is still far from achieving the level of computational power of major AI rivals. With firms like OpenAI supposedly using around $1 billion of computing power for GPT-4, one could roughly estimate that the ASI Alliance is 80% far from matching the level of OpenAI’s AI model. $ASI
ASI-20.83%
CLOUD+1.58%

相關資產

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 SolGPT。