Bitget: Top 4 in global daily trading volume!
BTC market share56.65%
Altcoin season index:0(Bitcoin season)
BTC/USDT$104880.64 (+4.38%)Fear and Greed Index75(Extreme greed)
Total spot Bitcoin ETF netflow +$626.1M (1D); +$169.1M (7D).Coins listed in Pre-MarketJWelcome gift package for new users worth 6200 USDT.Claim now
Trade anytime, anywhere with the Bitget app. Download now
Bitget: Top 4 in global daily trading volume!
BTC market share56.65%
Altcoin season index:0(Bitcoin season)
BTC/USDT$104880.64 (+4.38%)Fear and Greed Index75(Extreme greed)
Total spot Bitcoin ETF netflow +$626.1M (1D); +$169.1M (7D).Coins listed in Pre-MarketJWelcome gift package for new users worth 6200 USDT.Claim now
Trade anytime, anywhere with the Bitget app. Download now
Bitget: Top 4 in global daily trading volume!
BTC market share56.65%
Altcoin season index:0(Bitcoin season)
BTC/USDT$104880.64 (+4.38%)Fear and Greed Index75(Extreme greed)
Total spot Bitcoin ETF netflow +$626.1M (1D); +$169.1M (7D).Coins listed in Pre-MarketJWelcome gift package for new users worth 6200 USDT.Claim now
Trade anytime, anywhere with the Bitget app. Download now
Coin-related
Price calculator
Price history
Price prediction
Technical analysis
Coin buying guide
Crypto category
Profit calculator
Drift priceDRIFT
Listed
BuyQuote currency:
USD
$1.18+3.09%1D
Last updated 2025-01-17 20:43:54(UTC+0)
Market cap:$324,252,958.17
Fully diluted market cap:$324,252,958.17
Volume (24h):$35,841,221.19
24h volume / market cap:11.05%
24h high:$1.19
24h low:$1.12
All-time high:$2.65
All-time low:$0.1000
Circulating supply:274,168,580 DRIFT
Total supply:
1,000,000,000DRIFT
Circulation rate:27.00%
Max supply:
--DRIFT
Contracts:
DriFtu...bksjwg7(Solana)
More
How do you feel about Drift today?
GoodBad
Note: This information is for reference only.
Price of Drift today
The live price of Drift is $1.18 per (DRIFT / USD) today with a current market cap of $324.25M USD. The 24-hour trading volume is $35.84M USD. DRIFT to USD price is updated in real time. Drift is 3.09% in the last 24 hours. It has a circulating supply of 274,168,580 .
What is the highest price of DRIFT?
DRIFT has an all-time high (ATH) of $2.65, recorded on 2024-11-09.
What is the lowest price of DRIFT?
DRIFT has an all-time low (ATL) of $0.1000, recorded on 2024-05-16.
Drift price prediction
When is a good time to buy DRIFT? Should I buy or sell DRIFT now?
When deciding whether to buy or sell DRIFT, you must first consider your own trading strategy. The trading activity of long-term traders and short-term traders will also be different. The Bitget DRIFT technical analysis can provide you with a reference for trading.
According to the DRIFT 4h technical analysis, the trading signal is Buy.
According to the DRIFT 1d technical analysis, the trading signal is Neutral.
According to the DRIFT 1w technical analysis, the trading signal is Buy.
What will the price of DRIFT be in 2026?
Based on DRIFT's historical price performance prediction model, the price of DRIFT is projected to reach $1.29 in 2026.
What will the price of DRIFT be in 2031?
In 2031, the DRIFT price is expected to change by +24.00%. By the end of 2031, the DRIFT price is projected to reach $3.44, with a cumulative ROI of +193.27%.
Drift price history (USD)
The price of Drift is +1085.65% over the last year. The highest price of DRIFT in USD in the last year was $2.65 and the lowest price of DRIFT in USD in the last year was $0.1000.
TimePrice change (%)Lowest priceHighest price
24h+3.09%$1.12$1.19
7d+3.48%$1.02$1.21
30d+7.46%$0.8791$1.54
90d+157.17%$0.3822$2.65
1y+1085.65%$0.1000$2.65
All-time+1085.65%$0.1000(2024-05-16, 247 days ago )$2.65(2024-11-09, 70 days ago )
Drift market information
Drift's market cap history
Drift market
Drift holdings by concentration
Whales
Investors
Retail
Drift addresses by time held
Holders
Cruisers
Traders
Live coinInfo.name (12) price chart
Drift ratings
Average ratings from the community
4.6
This content is for informational purposes only.
DRIFT to local currency
1 DRIFT to MXN$24.531 DRIFT to GTQQ9.131 DRIFT to CLP$1,195.391 DRIFT to UGXSh4,358.881 DRIFT to HNLL30.091 DRIFT to ZARR22.141 DRIFT to TNDد.ت3.811 DRIFT to IQDع.د1,549.441 DRIFT to TWDNT$38.891 DRIFT to RSDдин.134.661 DRIFT to DOP$72.611 DRIFT to MYRRM5.331 DRIFT to GEL₾3.361 DRIFT to UYU$51.971 DRIFT to MADد.م.11.891 DRIFT to AZN₼2.011 DRIFT to OMRر.ع.0.461 DRIFT to KESSh153.181 DRIFT to SEKkr13.231 DRIFT to UAH₴49.81
- 1
- 2
- 3
- 4
- 5
Last updated 2025-01-17 20:43:54(UTC+0)
How to buy Drift(DRIFT)
Create Your Free Bitget Account
Sign up on Bitget with your email address/mobile phone number and create a strong password to secure your account.
Verify Your Account
Verify your identity by entering your personal information and uploading a valid photo ID.
Buy Drift (DRIFT)
Use a variety of payment options to buy Drift on Bitget. We'll show you how.
Learn MoreTrade DRIFT perpetual futures
After having successfully signed up on Bitget and purchased USDT or DRIFT tokens, you can start trading derivatives, including DRIFT futures and margin trading to increase your income.
The current price of DRIFT is $1.18, with a 24h price change of +3.09%. Traders can profit by either going long or short onDRIFT futures.
Join DRIFT copy trading by following elite traders.
After signing up on Bitget and successfully buying USDT or DRIFT tokens, you can also start copy trading by following elite traders.
Drift news
Drift announces Season 2 airdrop for May 2025
Crypto.News•2024-12-31 16:00
Drift Ecosystem Newsletter #1
X•2024-11-09 04:32
DRIFT surpassed 2 USDT, with a 24-hour increase of 332%
Bitget•2024-11-09 03:17
Solana Decentralized Exchange Altcoin Skyrockets by More Than 400% on Friday After New Exchange Listing
Daily Hodl•2024-11-08 16:00
Buy more
FAQ
What is the current price of Drift?
The live price of Drift is $1.18 per (DRIFT/USD) with a current market cap of $324,252,958.17 USD. Drift's value undergoes frequent fluctuations due to the continuous 24/7 activity in the crypto market. Drift's current price in real-time and its historical data is available on Bitget.
What is the 24 hour trading volume of Drift?
Over the last 24 hours, the trading volume of Drift is $35.84M.
What is the all-time high of Drift?
The all-time high of Drift is $2.65. This all-time high is highest price for Drift since it was launched.
Can I buy Drift on Bitget?
Yes, Drift is currently available on Bitget’s centralized exchange. For more detailed instructions, check out our helpful How to buy Drift protocol guide.
Can I get a steady income from investing in Drift?
Of course, Bitget provides a strategic trading platform, with intelligent trading bots to automate your trades and earn profits.
Where can I buy Drift with the lowest fee?
Bitget offers industry-leading trading fees and depth to ensure profitable investments for traders. You can trade on the Bitget exchange.
Where can I buy Drift (DRIFT)?
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!
Cryptocurrency investments, including buying Drift online via Bitget, are subject to market risk. Bitget provides easy and convenient ways for you to buy Drift, and we try our best to fully inform our users about each cryptocurrency we offer on the exchange. However, we are not responsible for the results that may arise from your Drift purchase. This page and any information included are not an endorsement of any particular cryptocurrency. Any price and other information on this page is collected from the public internet and can not be consider as an offer from Bitget.
DRIFT resources
Tags:
Bitget Insights
BGUSER-SX0MCXKN
2025/01/09 17:45
Maitland of Al
The term "Maitland" is not a widely recognized term in the field of Artificial Intelligence (AI). However, I can provide some information on the concept of "maintland" or "maintenance land" in the context of AI.
In AI, maintenance land refers to the process of maintaining and updating AI systems to ensure they continue to function effectively and efficiently over time. This can include tasks such as:
1. _Data maintenance_: Ensuring that the data used to train and test AI models is accurate, complete, and up-to-date.
2. _Model maintenance_: Updating AI models to reflect changes in the underlying data or to improve their performance.
3. _Software maintenance_: Ensuring that the software used to deploy and manage AI systems is up-to-date and secure.
4. _Hardware maintenance_: Ensuring that the hardware used to support AI systems is functioning properly and is sufficient to meet the demands of the system.
Importance of Maitland in AI
The concept of maitland is important in AI because it ensures that AI systems continue to function effectively and efficiently over time. This can help to:
1. _Improve performance_: Regular maintenance can help to improve the performance of AI systems by ensuring that they are using the most up-to-date data and models.
2. _Reduce errors_: Maintenance can help to reduce errors and improve the accuracy of AI systems by ensuring that they are functioning correctly.
3. _Enhance security_: Maintenance can help to enhance the security of AI systems by ensuring that they are protected from cyber threats and that any vulnerabilities are patched.
4. _Increase trust_: Maintenance can help to increase trust in AI systems by ensuring that they are transparent, explainable, and fair.
Challenges of Maitland in AI
The challenges of maitland in AI include:
1. _Data quality_: Ensuring that the data used to train and test AI models is accurate, complete, and up-to-date can be a challenge.
2. _Model drift_: AI models can drift over time, which can affect their performance and accuracy.
3. _Software updates_: Ensuring that the software used to deploy and manage AI systems is up-to-date and secure can be a challenge.
4. _Hardware maintenance_: Ensuring that the hardware used to support AI systems is functioning properly and is sufficient to meet the demands of the system can be a challenge.
Best Practices for Maitland in AI
The best practices for maitland in AI include:
1. _Regular maintenance_: Regular maintenance is essential to ensure that AI systems continue to function effectively and efficiently over time.
2. _Data quality checks_: Data quality checks should be performed regularly to ensure that the data used to train and test AI models is accurate, complete, and up-to-date.
3. _Model monitoring_: AI models should be monitored regularly to ensure that they are performing as expected and to detect any drift or degradation.
4. _Software updates_: Software updates should be performed regularly to ensure that the software used to deploy and manage AI systems is up-to-date and secure.
5. _Hardware maintenance_: Hardware maintenance should be performed regularly to ensure that the hardware used to support AI systems is functioning properly and is sufficient to meet the demands of the system.$AL
AL0.00%
CYBER0.00%
Crypto-Paris
2024/12/27 14:52
Deploying und Überwachung von Machine-Learning-Modellen
Deploying
1. Integrieren des Modells in den
Deploying und Überwachung von Machine-Learning-Modellen
Deploying
1. Integrieren des Modells in den Workflow
2. Bereitstellung der Ergebnisse für Benutzer/Entwickler
3. Konfiguration der Modellumgebung
Überwachung
1. *Modellleistung*: Überwachen von Genauigkeit und Leistung
2. *Data-Drift*: Erkennen von Datenveränderungen
3. *Modell-Degradation*: Überwachen der Modellleistung über die Zeit
4. *Benutzerfeedback*: Sammeln von Feedback für Verbesserungen
Erfolgskriterien
1. *Modellleistung*: Erforderliche Genauigkeit und Leistung erreicht
2. *Benutzerzufriedenheit*: Benutzer zufrieden mit Ergebnissen
3. *Stabilität*: Modell bleibt stabil und funktioniert ordnungsgemäß
Tools für Deploying und Überwachung
1. TensorFlow Serving
2. AWS SageMaker
3. Azure Machine Learning
4. Google Cloud AI Platform
5. Prometheus und Grafana für Überwachung
Best Practices
1. Kontinuierliche Integration und -lieferung
2. Automatisierte Tests
3. regelmäßige Überwachung und Analyse
4. Dokumentation und Kommunikation
5. kontinuierliche Verbesserung und Optimierung
CLOUD0.00%
DRIFT0.00%
Kylian-mbappe
2024/12/27 14:25
Deploying und Überwachung von Machine-Learning-Modellen
Deploying
Das Deploying ist der letzte Schr
Deploying und Überwachung von Machine-Learning-Modellen
Deploying
Das Deploying ist der letzte Schritt eines Data-Analytics-Projekts. Hier werden die Machine-Learning-Modelle in den tatsächlichen Workflow integriert und die Ergebnisse für Benutzer oder Entwickler zugänglich gemacht.
Überwachung
Nach dem Deploying wird die Leistung des Modells überwacht, um Veränderungen wie Data-Drift oder Modell-Degradation zu erkennen. Wenn alles ordnungsgemäß funktioniert, kann das Projekt als erfolgreich betrachtet werden.
Schritte der Überwachung
1. *Modellleistung*: Überwachen der Modellleistung und -genauigkeit.
2. *Data-Drift*: Erkennen von Veränderungen in den Daten, die das Modell beeinflussen könnten.
3. *Modell-Degradation*: Überwachen der Modellleistung über die Zeit, um Degradation zu erkennen.
4. *Benutzerfeedback*: Sammeln von Feedback von Benutzern, um das Modell zu verbessern.
Erfolgskriterien
1. *Modellleistung*: Das Modell erreicht die erforderliche Genauigkeit und Leistung.
2. *Benutzerzufriedenheit*: Die Benutzer sind mit den Ergebnissen des Modells zufrieden.
3. *Stabilität*: Das Modell bleibt stabil und funktioniert ordnungsgemäß über die Zeit.
DRIFT0.00%
Sanam_Baloch
2024/12/27 14:07
The final stage of a data analytics project: deployment and monitoring. This is where the rubber meets the road, and the machine learning models are put into action.
During this stage, the analysts integrate the models into the actual workflow, making the outcomes available to users or developers. This is a critical step, as it ensures that the insights and predictions generated by the models are actionable and can drive business decisions.
Once the model is deployed, the analysts closely monitor its performance, watching for any changes that could impact its accuracy or effectiveness. This includes:
1. *Data drift*: Changes in the underlying data distribution that could affect the model's performance.
2. *Model degradation*: Decreases in the model's accuracy or performance over time.
3. *Concept drift*: Changes in the underlying relationships between variables that could impact the model's performance.
By monitoring the model's performance and addressing any issues that arise, the analysts can ensure that the project remains successful and continues to deliver value to the organization.
Some key activities during this stage include:
1. *Model serving*: Deploying the model in a production-ready environment.
2. *Monitoring and logging*: Tracking the model's performance and logging any issues or errors.
3. *Model maintenance*: Updating or retraining the model as needed to maintain its performance.
4. *Feedback loops*: Establishing processes to collect feedback from users or stakeholders and incorporating it into the model's development.
By following these steps, analysts can ensure that their data analytics project is not only successful but also sustainable and adaptable to changing business needs.
DRIFT0.00%
BGUSER-AEJ9PSGU
2024/12/27 13:58
Model Deployment and Monitoring
This is the last stage of a data analytics project. Here, analysts put the machine learning models into the actual workflow and make the outcomes available to users or developers. Once the model is deployed, they observe its performance for changes, like data drift, model degradation, etc. If everything appears operational, the project can be deemed successful.
DRIFT0.00%
Related assets
Popular cryptocurrencies
A selection of the top 8 cryptocurrencies by market cap.
Recently added
The most recently added cryptocurrencies.