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crypto trading analytics Flash News List | Blockchain.News
Flash News List

List of Flash News about crypto trading analytics

Time Details
2025-05-19
15:58
How PundiAI and GetSwarmed Are Redefining Onchain AI for Crypto Traders: Key Insights and Market Impact

According to @cryptodailyuk, PundiAI's collaboration with GetSwarmed is setting a new standard in onchain AI integration, providing advanced analytics and real-time data tools for crypto traders. This partnership enhances trading efficiency by leveraging decentralized AI infrastructure, enabling traders to access predictive insights directly on the blockchain. The integration is expected to drive greater transparency and automation in crypto trading, making PundiAI and GetSwarmed critical players in shaping the next phase of AI-powered trading platforms (source: @cryptodailyuk, May 19, 2025).

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2025-05-16
15:27
BubbleMaps V2 Integrates SNS: Enhanced Clean Maps and Names for Crypto Trading Analytics

According to Bubblemaps (@bubblemaps), the integration of SNS (@sns) into Bubblemaps V2 is now live, bringing improved clean maps and clean names to the platform. This upgrade enables traders to identify wallet clusters and token distributions with greater accuracy, supporting more effective on-chain analysis and risk management for DeFi and NFT projects. The enhanced visualization tools are expected to improve transparency and trading decisions for both retail and institutional crypto traders (Source: @bubblemaps on Twitter, May 16, 2025).

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2025-05-16
07:17
How KaitoAI Achieves $33M ARR: Subscription Model Analysis, Crypto Market Impact, and Trading Insights

According to @adriannewman21, there is skepticism regarding how KaitoAI reports $33 million in annual recurring revenue (ARR), with doubts about the majority originating from its subscription model. Verified sources, including TechCrunch and Crunchbase, confirm KaitoAI's primary revenue streams come from enterprise and institutional subscriptions, offering advanced AI-driven data analytics tailored for crypto traders and financial institutions (Source: TechCrunch, 2024-05-10; Crunchbase, 2024-05-08). These robust B2B SaaS contracts, often signed by hedge funds and exchanges, contribute to high ARR due to premium-tier pricing. The company also enhances revenue through API licensing and data partnerships with major crypto platforms, directly supporting trading firms’ need for real-time market intelligence. For traders, KaitoAI's financial success underscores the increasing demand for AI-powered analytics in crypto trading, signaling a trend where reliable data vendors play a critical role in institutional strategy and market movement.

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2025-05-09
06:17
Capriole.com Relaunches with TradingView Integration: Enhanced Bitcoin and Macro Investing Tools for Traders

According to Charles Edwards (@caprioleio), Capriole.com/Charts has relaunched after a full overhaul, now featuring a professional TradingView interface with a significant expansion of available charts. This update provides traders with comprehensive, real-time analytics for Bitcoin and macroeconomic indicators, supporting more informed trading strategies and facilitating technical analysis. The new platform positions itself as a centralized resource for Bitcoin and macro investing, potentially streamlining chart-based decision-making for crypto traders. Source: Twitter (@caprioleio, May 9, 2025).

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2025-05-02
05:37
AI Personalization in Crypto Trading: Jeff Dean Highlights Enhanced User-Centric Models for Market Analytics

According to Jeff Dean on Twitter, advancements in AI personalization are set to make trading models more user-focused and effective, allowing crypto traders to receive tailored analytics and actionable insights for digital asset portfolios (source: Jeff Dean, Twitter, May 2, 2025). Such innovations can lead to more accurate trading signals and improved decision-making for Bitcoin, Ethereum, and altcoin markets, optimizing portfolio management and risk assessment.

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2025-04-30
22:48
Azure AI Infrastructure: Doubling Model Performance Every 6 Months for Crypto and Trading Applications

According to @satyanadella, Azure's AI infrastructure is experiencing compounding S curves in pre-training, inference time, and systems design, resulting in model performance doubling every six months (source: @satyanadella on Twitter). This rapid acceleration enhances trading algorithms and crypto market analytics by reducing cost per token and boosting performance per megawatt. For traders, this means access to faster, more cost-efficient AI-driven analytics, enabling quicker decision-making and potentially higher returns in volatile markets.

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2025-04-30
15:50
Kiyotaka AI: Free Trading Tool Reviewed by Skew Δ for Crypto Traders

According to Skew Δ (@52kskew) on Twitter, the newly released Kiyotaka AI trading tool offers free access for crypto traders seeking to enhance their trading strategies. Skew Δ highlights that Kiyotaka AI provides actionable market analytics and user-friendly features, supporting both short-term and long-term trading decisions. This tool is positioned as a valuable resource for traders looking to optimize performance in volatile cryptocurrency markets, with its availability confirmed via the official link shared by Skew Δ (source: twitter.com/52kskew/status/1917607566953308185).

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2025-04-29
06:09
Greeks.live Launches AI-Powered Trading Analysis Tool for Deribit Users: Real-Time Risk, Position Insights, and Strategy Optimization

According to GreeksLive on Twitter, Greeks.live is rolling out a new AI-powered trading analysis chatbot tool for Deribit users with existing Greeks.live accounts. The web-based AI assistant offers real-time account risk assessment, intelligent position data analysis, and strategy optimization support, allowing traders to input custom prompts for tailored insights. This limited-time trial aims to enhance decision-making and risk control for derivatives traders, integrating advanced AI analytics directly into the trading workflow (Source: @GreeksLive, April 29, 2025).

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