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Bitget: Top 4 in global daily trading volume!
Please also display BTC in AR62.14%
New listings on Bitget : Pi Network
BTC/USDT$82310.00 (-3.64%)Fear at Greed Index25(Fear)
Altcoin season index:0(Bitcoin season)
Coins listed in Pre-MarketPAWS,WCTTotal spot Bitcoin ETF netflow +$218.1M (1D); +$111.9M (7D).Welcome gift package para sa mga bagong user na nagkakahalaga ng 6200 USDT.Claim now
Trade anumang oras, kahit saan gamit ang Bitget app. I-download ngayon
Bitget: Top 4 in global daily trading volume!
Please also display BTC in AR62.14%
New listings on Bitget : Pi Network
BTC/USDT$82310.00 (-3.64%)Fear at Greed Index25(Fear)
Altcoin season index:0(Bitcoin season)
Coins listed in Pre-MarketPAWS,WCTTotal spot Bitcoin ETF netflow +$218.1M (1D); +$111.9M (7D).Welcome gift package para sa mga bagong user na nagkakahalaga ng 6200 USDT.Claim now
Trade anumang oras, kahit saan gamit ang Bitget app. I-download ngayon
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SideShift Token presyoXAI
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Quote pera:
PHP
Kinukuha ang data mula sa mga third-party na provider. Ang pahinang ito at ang impormasyong ibinigay ay hindi nag-eendorso ng anumang partikular na cryptocurrency. Gustong i-trade ang mga nakalistang barya? Click here
₱8.01+0.09%1D
Price chart
Last updated as of 2025-04-03 13:37:55(UTC+0)
Market cap:₱1,156,201,710.35
Ganap na diluted market cap:₱1,156,201,710.35
Volume (24h):₱2,000,268.86
24h volume / market cap:0.17%
24h high:₱8.09
24h low:₱7.97
All-time high:₱21.87
All-time low:₱3.87
Umiikot na Supply:144,299,740 XAI
Total supply:
210,000,000XAI
Rate ng sirkulasyon:68.00%
Max supply:
210,000,000XAI
Price in BTC:0.{5}1717 BTC
Price in ETH:0.{4}7947 ETH
Price at BTC market cap:
₱641,979.28
Price at ETH market cap:
₱84,306.24
Mga kontrata:
0x35e7...cdbe232(Ethereum)
Ano ang nararamdaman mo tungkol sa SideShift Token ngayon?
Tandaan: Ang impormasyong ito ay para sa sanggunian lamang.
Presyo ng SideShift Token ngayon
Ang live na presyo ng SideShift Token ay ₱8.01 bawat (XAI / PHP) ngayon na may kasalukuyang market cap na ₱1.16B PHP. Ang 24 na oras na dami ng trading ay ₱2.00M PHP. Ang presyong XAI hanggang PHP ay ina-update sa real time. Ang SideShift Token ay 0.09% sa nakalipas na 24 na oras. Mayroon itong umiikot na supply ng 144,299,740 .
Ano ang pinakamataas na presyo ng XAI?
Ang XAI ay may all-time high (ATH) na ₱21.87, na naitala noong 2024-01-24.
Ano ang pinakamababang presyo ng XAI?
Ang XAI ay may all-time low (ATL) na ₱3.87, na naitala noong 2023-11-09.
Bitcoin price prediction
Ano ang magiging presyo ng XAI sa 2026?
Batay sa makasaysayang modelo ng hula sa pagganap ng presyo ni XAI, ang presyo ng XAI ay inaasahang aabot sa ₱9.01 sa 2026.
Ano ang magiging presyo ng XAI sa 2031?
Sa 2031, ang presyo ng XAI ay inaasahang tataas ng +34.00%. Sa pagtatapos ng 2031, ang presyo ng XAI ay inaasahang aabot sa ₱15.42, na may pinagsama-samang ROI na +91.61%.
SideShift Token price history (PHP)
The price of SideShift Token is -22.01% over the last year. The highest price of in PHP in the last year was ₱12.06 and the lowest price of in PHP in the last year was ₱4.68.
TimePrice change (%)
Lowest price
Highest price 
24h+0.09%₱7.97₱8.09
7d+0.20%₱7.95₱8.18
30d-20.68%₱7.9₱10.1
90d-1.02%₱7.9₱12.06
1y-22.01%₱4.68₱12.06
All-time-49.53%₱3.87(2023-11-09, 1 taon na ang nakalipas )₱21.87(2024-01-24, 1 taon na ang nakalipas )
SideShift Token impormasyon sa merkado
SideShift Token's market cap history
SideShift Token holdings by concentration
Whales
Investors
Retail
SideShift Token addresses by time held
Holders
Cruisers
Traders
Live coinInfo.name (12) price chart
SideShift Token na mga rating
Mga average na rating mula sa komunidad
4.4
Ang nilalamang ito ay para sa mga layuning pang-impormasyon lamang.
XAI sa lokal na pera
1 XAI To MXN$2.821 XAI To GTQQ1.081 XAI To CLP$134.361 XAI To HNLL3.621 XAI To UGXSh512.491 XAI To ZARR2.651 XAI To TNDد.ت0.441 XAI To IQDع.د184.081 XAI To TWDNT$4.661 XAI To RSDдин.14.891 XAI To DOP$8.871 XAI To MYRRM0.621 XAI To GEL₾0.391 XAI To UYU$5.921 XAI To MADد.م.1.351 XAI To AZN₼0.241 XAI To OMRر.ع.0.051 XAI To SEKkr1.361 XAI To KESSh18.171 XAI To UAH₴5.81
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Last updated as of 2025-04-03 13:37:55(UTC+0)
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Ang mga tao ay nagtatanong din tungkol sa presyo ng SideShift Token.
Ano ang kasalukuyang presyo ng SideShift Token?
The live price of SideShift Token is ₱8.01 per (XAI/PHP) with a current market cap of ₱1,156,201,710.35 PHP. SideShift Token's value undergoes frequent fluctuations due to the continuous 24/7 activity in the crypto market. SideShift Token's current price in real-time and its historical data is available on Bitget.
Ano ang 24 na oras na dami ng trading ng SideShift Token?
Sa nakalipas na 24 na oras, ang dami ng trading ng SideShift Token ay ₱2.00M.
Ano ang all-time high ng SideShift Token?
Ang all-time high ng SideShift Token ay ₱21.87. Ang pinakamataas na presyong ito sa lahat ng oras ay ang pinakamataas na presyo para sa SideShift Token mula noong inilunsad ito.
Maaari ba akong bumili ng SideShift Token sa Bitget?
Oo, ang SideShift Token ay kasalukuyang magagamit sa sentralisadong palitan ng Bitget. Para sa mas detalyadong mga tagubilin, tingnan ang aming kapaki-pakinabang na gabay na Paano bumili ng .
Maaari ba akong makakuha ng matatag na kita mula sa investing sa SideShift Token?
Siyempre, nagbibigay ang Bitget ng estratehikong platform ng trading, na may mga matatalinong bot sa pangangalakal upang i-automate ang iyong mga pangangalakal at kumita ng kita.
Saan ako makakabili ng SideShift Token na may pinakamababang bayad?
Ikinalulugod naming ipahayag na ang estratehikong platform ng trading ay magagamit na ngayon sa Bitget exchange. Nag-ooffer ang Bitget ng nangunguna sa industriya ng mga trading fee at depth upang matiyak ang kumikitang pamumuhunan para sa mga trader.
Saan ako makakabili ng crypto?
Video section — quick verification, quick trading

How to complete identity verification on Bitget and protect yourself from fraud
1. Log in to your Bitget account.
2. If you're new to Bitget, watch our tutorial on how to create an account.
3. Hover over your profile icon, click on “Unverified”, and hit “Verify”.
4. Choose your issuing country or region and ID type, and follow the instructions.
5. Select “Mobile Verification” or “PC” based on your preference.
6. Enter your details, submit a copy of your ID, and take a selfie.
7. Submit your application, and voila, you've completed identity verification!
Ang mga investment sa Cryptocurrency, kabilang ang pagbili ng SideShift Token online sa pamamagitan ng Bitget, ay napapailalim sa market risk. Nagbibigay ang Bitget ng madali at convenient paraan para makabili ka ng SideShift Token, at sinusubukan namin ang aming makakaya upang ganap na ipaalam sa aming mga user ang tungkol sa bawat cryptocurrency na i-eooffer namin sa exchange. Gayunpaman, hindi kami mananagot para sa mga resulta na maaaring lumabas mula sa iyong pagbili ng SideShift Token. Ang page na ito at anumang impormasyong kasama ay hindi isang pag-endorso ng anumang partikular na cryptocurrency.
Bitget Insights

Cointribune EN
23h
Elon Musk Is Fighting For The Privacy Of Coinbase Users
Elon Musk, via his platform X, has filed a brief with the U.S. Supreme Court challenging the IRS’s practices regarding access to Coinbase user data. This initiative is part of a broader debate on privacy protection in the crypto space.
X Corp, Elon Musk’s company that manages the X platform, filed an amicus curiae brief with the U.S. Supreme Court on Friday, contesting the IRS’s methods.
The company specifically denounces the use of so-called “no-suspicion” subpoenas allowing the tax authorities to access, without a judicial warrant, the financial data of users on platforms like Coinbase.
The case highlights how the tax authorities obtained, through simple administrative subpoena, three years of transaction statements concerning over 14,000 Coinbase customers, including James Harper, the main plaintiff.
Alongside seven advocacy groups and researchers, X Corp denounces these “no-suspicion subpoenas” as a violation of the Fourth Amendment, which protects Americans against unreasonable searches.
Following this request, the Supreme Court asked the federal government on Monday to formulate an official response, highlighting the importance of this case. The dispute dates back to 2020 when James Harper sued the IRS to contest the seizure of his personal information related to cryptos.
In 2023, a federal court ruled in favor of the IRS, determining that the tax agency was acting within the scope of its legal prerogatives.
The current appeal before the Supreme Court thus marks a new stage in this legal battle, with potentially significant implications for the protection of digital financial data.
This initiative perfectly aligns with Elon Musk’s vision regarding digital governance. The billionaire, who recently sold his platform X to his own company xAI for 33 billion dollars, has always positioned himself as an advocate for privacy and freedom of speech.
By taking a stand for the protection of cryptocurrency users’ data, Musk strengthens his credibility among the tech and crypto communities, particularly sensitive to privacy issues.
The Supreme Court’s verdict could redefine the limits of state power in relation to digital privacy. This case resonates with the recent case of Tornado Cash , a crypto mixing protocol ultimately removed from the OFAC blacklist after a court ruled that the agency had overstepped its authority.
This case resonates with the recent case of Tornado Cash , a crypto mixing protocol ultimately removed from the OFAC blacklist after a court ruled that the agency had overstepped its authority, illustrating the growing tensions between state regulation and digital freedoms.
XAI-0.98%
ELON-1.67%
Mahnoor-Baloch007
1d
AI agents and AI are related but distinct concepts in the field of artificial intelligence.
AI (Artificial Intelligence)
1. Definition: AI refers to the broad field of study focused on creating intelligent machines that can perform tasks that typically require human intelligence.
2. Characteristics: AI systems can process and analyze large amounts of data, learn from experiences, and make decisions based on that data.
3. Examples: AI-powered chatbots, image recognition systems, and natural language processing tools.
AI Agents
1. Definition: AI agents are a specific type of AI system that can autonomously perform tasks on behalf of a user or another system.
2. Characteristics: AI agents have the ability to design their own workflow, utilize available tools, and interact with external environments to achieve complex goals.
3. Examples: AI-powered trading bots, autonomous vehicles, and smart home systems.
Key Differences
1. Autonomy: AI agents have a higher level of autonomy compared to traditional AI systems, allowing them to make decisions and take actions independently.
2. Interactivity: AI agents can interact with their environment and other systems, whereas traditional AI systems may only process data internally.
3. Proactivity: AI agents can anticipate and prevent problems, whereas traditional AI systems may only react to problems after they occur.
4. Complexity: AI agents often require more complex decision-making and problem-solving capabilities compared to traditional AI systems.
In summary, while AI refers to the broader field of artificial intelligence, AI agents are a specific type of AI system that can autonomously perform tasks, interact with their environment, and make decisions independently.
Thank you...🙂
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BTC-0.34%

Crypto_inside
2d
Machine learning ❌ Traditional learning. 🧐😵💫
Machine learning and traditional learning are two distinct approaches to learning and problem-solving.
Traditional Learning:
1. Rule-based: Traditional learning involves explicit programming and rule-based systems.
2. Human expertise: Traditional learning relies on human expertise and manual feature engineering.
3. Fixed models: Traditional learning uses fixed models that are not updated automatically.
Machine Learning:
1. Data-driven: Machine learning involves learning from data and improving over time.
2. Algorithmic: Machine learning relies on algorithms that can learn from data and make predictions.
3. Adaptive models: Machine learning uses adaptive models that can update automatically based on new data.
Key Differences:
1. Learning style: Traditional learning is rule-based, while machine learning is data-driven.
2. Scalability: Machine learning can handle large datasets and complex problems, while traditional learning is limited by human expertise.
3. Accuracy: Machine learning can achieve higher accuracy than traditional learning, especially in complex domains.
Advantages of Machine Learning:
1. Improved accuracy: Machine learning can achieve higher accuracy than traditional learning.
2. Increased efficiency: Machine learning can automate many tasks, freeing up human experts for more complex tasks.
3. Scalability: Machine learning can handle large datasets and complex problems.
Disadvantages of Machine Learning:
1. Data quality: Machine learning requires high-quality data to learn effectively.
2. Interpretability: Machine learning models can be difficult to interpret and understand.
3. Bias: Machine learning models can perpetuate biases present in the training data.
When to Use Machine Learning:
1. Complex problems: Machine learning is well-suited for complex problems that require pattern recognition and prediction.
2. Large datasets: Machine learning can handle large datasets and identify trends and patterns.
3. Automating tasks: Machine learning can automate many tasks, freeing up human experts for more complex tasks.
When to Use Traditional Learning:
1. Simple problems: Traditional learning is well-suited for simple problems that require explicit programming and rule-based systems.
2. Small datasets: Traditional learning is suitable for small datasets where machine learning may not be effective.
3. Human expertise: Traditional learning relies on human expertise and manual feature engineering, making it suitable for domains where human expertise is essential.
Thank you...🙂
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BGB+0.04%

Crypto_inside
2d
What is Q-learning...🤔🤔??
Q-learning is a type of reinforcement learning algorithm used in machine learning and artificial intelligence. It's a model-free, off-policy learning algorithm that helps agents learn to make decisions in complex, uncertain environments.
Key Components:
1. Agent: The decision-maker that interacts with the environment.
2. Environment: The external system with which the agent interacts.
3. Actions: The decisions made by the agent.
4. Rewards: The feedback received by the agent for its actions.
5. Q-function: A mapping from states and actions to expected rewards.
How Q-learning Works:
1. Initialization: The agent starts with an arbitrary Q-function.
2. Exploration: The agent selects an action and observes the resulting state and reward.
3. Update: The agent updates its Q-function based on the observed reward and the expected reward for the next state.
4. Exploitation: The agent chooses the action with the highest Q-value for the current state.
Advantages:
1. Simple to implement: Q-learning is a straightforward algorithm to understand and code.
2. Effective in complex environments: Q-learning can handle complex, dynamic environments with many states and actions.
Disadvantages:
1. Slow convergence: Q-learning can require many iterations to converge to an optimal policy.
2. Sensitive to hyperparameters: The performance of Q-learning is highly dependent on the choice of hyperparameters.
Q-learning is a powerful algorithm for reinforcement learning, but it can be challenging to tune and may not always converge to an optimal solution.
Thank you...🙂
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BTC-0.34%

Crypto_inside
2d
What is Machine learning..🤔🤔??
Machine learning is a subset of artificial intelligence (AI) that involves training algorithms to learn from data and make predictions, decisions, or recommendations without being explicitly programmed.
Key Characteristics:
1. Learning from data: Machine learning algorithms learn patterns and relationships in data.
2. Improving over time: Machine learning models improve their performance as they receive more data.
3. Making predictions or decisions: Machine learning models make predictions, decisions, or recommendations based on the learned patterns.
Types of Machine Learning:
1. Supervised Learning: The algorithm learns from labeled data to make predictions.
2. Unsupervised Learning: The algorithm learns from unlabeled data to identify patterns.
3. Reinforcement Learning: The algorithm learns through trial and error to achieve a goal.
4. Semi-supervised Learning: The algorithm learns from a combination of labeled and unlabeled data.
5. Deep Learning: A subset of machine learning that uses neural networks with multiple layers.
Machine Learning Applications:
1. Image Recognition: Image classification, object detection, and facial recognition.
2. Natural Language Processing (NLP): Text classification, sentiment analysis, and language translation.
3. Speech Recognition: Speech-to-text and voice recognition.
4. Predictive Analytics: Forecasting, regression, and decision-making.
5. Recommendation Systems: Personalized product recommendations.
Machine Learning Algorithms:
1. Linear Regression: Linear models for regression tasks.
2. Decision Trees: Tree-based models for classification and regression.
3. Random Forest: Ensemble learning for classification and regression.
4. Support Vector Machines (SVMs): Linear and non-linear models for classification and regression.
5. Neural Networks: Deep learning models for complex tasks.
Machine Learning Tools and Frameworks:
1. TensorFlow: Open-source deep learning framework.
2. PyTorch: Open-source deep learning framework.
3. Scikit-learn: Open-source machine learning library.
4. Keras: High-level neural networks API.
Machine learning has numerous applications across industries, including healthcare, finance, marketing, and more. Its ability to learn from data and improve over time makes it a powerful tool for solving complex problems.
Thank you...🙂
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Mga kaugnay na asset
Mga sikat na cryptocurrencies
Isang seleksyon ng nangungunang 8 cryptocurrencies ayon sa market cap.
Kamakailang idinagdag
Ang pinakahuling idinagdag na cryptocurrency.
Maihahambing na market cap
Sa lahat ng asset ng Bitget, ang 8 na ito ang pinakamalapit sa SideShift Token sa market cap.

SideShift Token Social Data
Sa nakalipas na 24 na oras, ang marka ng sentimento ng social media para sa SideShift Token ay 3, at ang trend ng presyo ng social media patungo sa SideShift Token ay Bullish. Ang overall na marka ng social media ng SideShift Token ay 0, na nagra-rank ng 686 sa lahat ng cryptocurrencies.
Ayon sa LunarCrush, sa nakalipas na 24 na oras, binanggit ang mga cryptocurrencies sa social media nang 1,058,120 (na) beses, na binanggit ang SideShift Token na may frequency ratio na 0.01%, na nagra-rank ng 537 sa lahat ng cryptocurrencies.
Sa nakalipas na 24 na oras, mayroong total 489 na natatanging user na tumatalakay sa SideShift Token, na may kabuuang SideShift Token na pagbanggit ng 48. Gayunpaman, kumpara sa nakaraang 24 na oras, ang bilang ng mga natatanging user pagtaas ng 9%, at ang kabuuang bilang ng mga pagbanggit ay bumaba ng 29%.
Sa Twitter, mayroong kabuuang 2 na tweet na nagbabanggit ng SideShift Token sa nakalipas na 24 na oras. Kabilang sa mga ito, ang 100% ay bullish sa SideShift Token, 0% ay bearish sa SideShift Token, at ang 0% ay neutral sa SideShift Token.
Sa Reddit, mayroong 1 na mga post na nagbabanggit ng SideShift Token sa nakalipas na 24 na oras. Kung ikukumpara sa nakaraang 24 na oras, ang bilang ng mga pagbanggit bumaba ng 0% . Bukod pa rito, mayroong 0 na komento na nagbabanggit ng SideShift Token. Kung ikukumpara sa nakaraang 24 na oras, ang bilang ng mga pagbanggit ay bumaba ng 0%.
Lahat ng panlipunang pangkalahatang-ideya
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