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Stop Guessing, Start Trading: The Token Metrics API Advantage

Announcements

Big news: We’re cranking up the heat on AI-driven crypto analytics with the launch of the Token Metrics API and our official SDK (Software Development Kit). This isn’t just an upgrade – it's a quantum leap, giving traders, hedge funds, developers, and institutions direct access to cutting-edge market intelligence, trading signals, and predictive analytics.

Crypto markets move fast, and having real-time, AI-powered insights can be the difference between catching the next big trend or getting left behind. Until now, traders and quants have been wrestling with scattered data, delayed reporting, and a lack of truly predictive analytics. Not anymore.

The Token Metrics API delivers 32+ high-performance endpoints packed with powerful AI-driven insights right into your lap, including:

  • Trading Signals: AI-driven buy/sell recommendations based on real-time market conditions.
  • Investor & Trader Grades: Our proprietary risk-adjusted scoring for assessing crypto assets.
  • Price Predictions: Machine learning-powered forecasts for multiple time frames.
  • Sentiment Analysis: Aggregated insights from social media, news, and market data.
  • Market Indicators: Advanced metrics, including correlation analysis, volatility trends, and macro-level market insights.

Getting started with the Token Metrics API is simple:

  1. Sign up at www.tokenmetrics.com/api
  2. Generate an API key and explore sample requests.
  3. Choose a tier–start with 50 free API calls/month, or stake TMAI tokens for premium access.
  4. Optionally–download the SDK, install it for your preferred programming language, and follow the provided setup guide.

At Token Metrics, we believe data should be decentralized, predictive, and actionable. 

The Token Metrics API & SDK bring next-gen AI-powered crypto intelligence to anyone looking to trade smarter, build better, and stay ahead of the curve. With our official SDK, developers can plug these insights into their own trading bots, dashboards, and research tools – no need to reinvent the wheel.

Research

How Does Tokenizing AI Services Work? The Complete Guide to AI Tokenization in 2025

Talha Ahmad
5 min
MIN

The convergence of artificial intelligence and blockchain technology has sparked a significant evolution in the digital economy: the tokenization of AI services. As we progress through 2025, this innovative approach is reshaping how AI capabilities are accessed, distributed, and monetized worldwide. By converting AI services into blockchain-based digital tokens, tokenization is democratizing artificial intelligence and creating entirely new economic models that empower users and developers alike.

Tokenizing AI services marks a fundamental shift away from centralized AI platforms toward decentralized, community-owned ecosystems. In these ecosystems, AI capabilities become tradeable assets, enabling broader participation and fostering innovation. This transformation is more than theoretical—it is driving billions of dollars in market activity and redefining the relationship between businesses, individuals, and artificial intelligence.

Understanding AI Service Tokenization

To grasp how does tokenizing AI services work, it’s essential to understand the core concept of AI tokenization. Tokenizing AI services involves converting artificial intelligence capabilities, including AI models and computational resources, into digital tokens that exist on blockchain networks. These tokens represent ownership, access rights, or usage credits for specific AI functionalities, effectively bridging traditional AI services with decentralized finance ecosystems.

Tokenization in AI is the foundational process of converting data, such as text or computational resources, into smaller, manageable tokens that AI models can analyze and utilize.

At its foundation, tokenization is the process of issuing a unique, digital, and anonymous representation of a real-world asset or service. In Web3 applications, tokens operate on blockchains—often private or permissioned—allowing them to be utilized within specific protocols. When applied to AI services, this process creates programmable assets that can be traded, staked, or used to access computational resources securely and transparently. Understanding AI tokenization is crucial for effectively managing and securing data, especially as AI systems handle increasingly large and sensitive datasets.

Tokenization fundamentally transforms AI service operation by introducing several key characteristics:

  • Fractional Ownership: Instead of requiring large upfront investments for AI access, tokenization enables fractional ownership of AI models and services, making advanced AI capabilities accessible to smaller investors and businesses.
  • Programmability: Tokens can embed smart contract functionality, enabling automated execution of AI services based on predefined parameters and conditions.
  • Composability: Tokenized AI services can interact seamlessly with other blockchain-based assets and applications, fostering synergies and unlocking new use cases across decentralized ecosystems.
  • Transparency: All transactions and interactions involving tokenized AI services are immutably recorded on the blockchain, providing accountability and auditability.
  • Building Blocks: Tokens serve as the fundamental building blocks of AI service tokenization, enabling modular and flexible integration of AI capabilities within decentralized systems.

In summary, tokenizing AI services leverages the process of tokenization in AI to create secure, programmable, and accessible digital assets—tokens matter because they directly impact the performance, security, and efficiency of AI service deployment and utilization.

The Tokenization Process: From AI to Asset

Transforming traditional AI services into tokenized assets involves a multi-step tokenization process that ensures both technical functionality and economic viability. Model processes in AI tokenization break down data into tokens, allowing AI models to analyze and process information efficiently within their context window.

Managing tokens effectively is crucial for optimizing model performance, enhancing security, and reducing operational costs in tokenized AI services. Strategic token management helps prevent semantic fragmentation, mitigates security vulnerabilities, and improves computational efficiency.

Asset Identification and Preparation

The initial phase requires identifying which AI services or capabilities are suitable for tokenization. These may include:

  • AI Models: Machine learning models, neural networks, and specialized algorithms that deliver specific functionalities.
  • Computing Resources: GPU power, processing capacity, and storage resources dedicated to AI operations.
  • Data Assets: Curated datasets, training data, and specialized knowledge bases that underpin AI systems.
  • AI Agents: Autonomous software entities capable of performing tasks and making decisions independently.

Smart Contract Development

Smart contracts form the backbone of tokenized AI services. These self-executing agreements define the terms, conditions, and functionalities of tokenized assets. Written as code on a blockchain, smart contracts enable AI algorithms to autonomously execute predefined strategies, eliminating intermediaries and reducing operational costs. In this model, artificial intelligence makes decisions, and the blockchain ensures their execution—creating powerful automation capabilities previously unattainable in traditional AI systems.

Token Creation and Distribution

Following smart contract development, tokens are created according to established blockchain standards. These standards dictate the rules for token creation and management, ensuring interoperability across platforms. Each token is assigned as a unique token or included in a set of unique tokens to represent specific assets or rights. Common standards include:

  • ERC-20: Fungible tokens ideal for utility tokens and currency-like applications.
  • ERC-721: Non-fungible tokens (NFTs) suited for unique AI models or specialized services.
  • ERC-1155: Multi-token standards capable of handling both fungible and non-fungible assets, allowing for the creation and management of multiple tokens within a single contract.

Once created, tokens are distributed to users, investors, or stakeholders, enabling access to AI services or ownership rights. One token can represent a single access right or asset, while multiple tokens can represent broader ownership or usage rights.

Marketplace Integration

The final step involves integrating tokenized AI services into decentralized marketplaces where they can be discovered, evaluated, and utilized by end users. These marketplaces provide infrastructure for trading, governance, and community interaction around tokenized AI assets, facilitating the growth of vibrant AI ecosystems.

Types of Tokenized AI Services

AI Model Tokenization

AI models trained on extensive training data can be tokenized to represent their value and ownership rights.

Large language models (LLMs) use tokenization to process and generate text by breaking input text into smaller units called tokens. These individual tokens can be words, subwords, or even characters, and each is assigned a unique ID by the large language model to represent text as sequences of token IDs. GPT models utilize byte pair encoding (BPE) for efficient subword tokenization, which merges frequent character pairs to handle vocabulary limitations and unknown words. Word tokenization splits text into words, while subword and character-level tokenization break text into even smaller units, each with different trade-offs for handling special characters and out-of-vocabulary terms. Tokenization enables AI models to analyze semantic relationships and patterns in the input sequence, supporting tasks like parsing, translation, and content generation. Breaking text into tokens is essential for processing input text and generating output tokens, as it allows models to understand and generate human language. Input tokens and output tokens are counted for pricing and rate limiting, with the number of tokens and token limits directly affecting model usage and costs. The context window defines the maximum number of tokens a model can process at once, setting a token limit for both input and output. During text generation, models predict the next token to generate human like text and generate responses. Detokenization converts numerical representations of tokens back into textual information for human interpretation. Tokenization methods also handle unknown words using special tokens like <|unk|> and manage special characters during preprocessing. Other tokens can represent data types beyond text, such as when models process images in multimodal AI applications. Tokenization bridges human language and machine processing, and token based methods are fundamental in AI applications for tasks like chatbots, translation, and predictive analytics. Understanding the token limit and token limits is crucial for optimizing AI applications and managing costs.

Tokenized AI models foster innovation and collaboration by allowing researchers, developers, and businesses to monetize their intellectual property. For example, a natural language processing model could be tokenized, enabling multiple organizations to purchase access rights while original developers retain ownership and receive royalties based on token usage.

Computational Resource Tokenization

Computing resources such as GPU power and storage are essential for training AI models and running inference tasks. These resources can be tokenized to represent their availability and utilization in decentralized AI marketplaces. Tokenizing computational resources optimizes resource allocation, reduces operational costs, and increases efficiency. Some platforms leveraging this model report cost reductions of up to 70% compared to traditional cloud computing services.

Data Asset Tokenization

High-quality training data is the foundation of effective AI systems. Tokenizing data assets enables secure sharing and monetization of datasets while protecting sensitive information. Techniques like federated learning and secure multi-party computation allow data owners to monetize tokenized data without compromising privacy or regulatory compliance, thus addressing concerns related to sensitive data and potential data breaches.

AI Agent Tokenization

AI agents—autonomous software entities capable of decision-making—are increasingly tokenized to represent ownership stakes. These tokens facilitate community governance and provide economic incentives for agent development and improvement. Token issuance creates digital tokens on blockchain platforms that encapsulate ownership rights, access privileges, or revenue-sharing potential for AI agents.

Token Metrics: The Premier Example of AI Service Tokenization

Token Metrics exemplifies the successful tokenization of AI services in the cryptocurrency analytics space, demonstrating how sophisticated AI capabilities can be effectively tokenized to create value for both providers and users.

The TMAI Token Ecosystem

Token Metrics AI (TMAI) is a groundbreaking token that empowers the crypto community with advanced AI tools and insights. The TMAI token acts as the gateway to the platform’s comprehensive suite of AI-powered services, including:

  • AI-Powered Trading Bots: Token holders gain access to AI-driven trading bots compatible with various exchanges. These bots leverage machine learning models trained on cryptocurrency market dynamics to automate trading strategies.
  • Comprehensive Analytics Platform: The TMAI Agent provides AI-driven market analysis across platforms such as Twitter (X), Telegram, and Discord, ensuring users receive real-time insights wherever they trade.
  • Tokenized Governance: TMAI holders participate in governance through the Token Metrics DAO, influencing platform development and strategic direction.

Advanced Tokenomics Model

TMAI employs a sophisticated vote-escrowed (veTMAI) system that exemplifies best practices in AI service tokenization:

  • Staking Mechanisms: Holders lock TMAI tokens for durations up to 12 months, earning a Staking Score that determines access to platform benefits. Longer commitments yield higher multipliers, incentivizing long-term engagement.
  • Revenue Sharing: Stakers earn a proportional share of platform revenue, distributed by the Token Metrics DAO, with options for direct payouts or reinvestment.
  • Early Access Benefits: Stakers receive early access to investment deals through Token Metrics Ventures Fund, with larger allocations for higher Staking Scores.

Developer-Friendly Infrastructure

Token Metrics offers a modular, scalable crypto API for real-time ratings, sentiment analysis, indices, and AI signals. The official SDK allows developers to build AI-powered trading agents without extensive AI expertise, democratizing access to advanced AI tools.

Market Performance and Adoption

With over 50% of TMAI’s supply airdropped to the community, Token Metrics emphasizes collective ownership and governance. The platform has raised $8.5 million from over 3,000 investors, reflecting strong market traction and user engagement.

Technical Implementation and Architecture

Blockchain Integration

Tokenizing AI services demands robust blockchain infrastructure capable of handling complex computations securely and at scale. While Ethereum remains dominant due to its mature smart contract ecosystem, emerging layer-2 solutions and AI-focused blockchains are gaining traction for their improved performance and scalability.

Oracle Integration

Oracles connect blockchains to external data sources, providing real-time information essential for AI service execution. Reliable oracle integration ensures smart contracts receive accurate data feeds, enabling AI algorithms to analyze market trends, optimize token pricing, and automate decision-making.

Interoperability Standards

Interoperability is crucial for tokenized AI services to function across diverse platforms. Multi-chain protocols enable AI tokens to operate on different blockchains, maximizing utility and market reach. Standardizing token ids and formats ensures seamless communication between AI systems and blockchain applications.

Market Growth and Economic Impact

Market Size and Projections

The tokenization market is projected to reach $4 trillion by 2025, highlighting the transformative potential of AI tokens. Fueled by advances in machine learning, natural language processing, and blockchain interoperability, tokenized AI services are becoming foundational components of decentralized AI infrastructure.

Investment and Funding Trends

Significant investments from both traditional and crypto-native sources are fueling projects that tokenize AI services. Many have achieved unicorn valuations by pioneering innovative approaches to AI democratization and tokenized data sharing.

Real-World Economic Benefits

Tokenized AI services deliver tangible advantages:

  • Cost Reduction: By eliminating intermediaries and enabling peer-to-peer transactions, tokenization reduces operational costs by 30-70%.
  • Increased Accessibility: Fractional ownership models allow smaller businesses and developers to access enterprise-grade AI capabilities.
  • Revenue Diversification: Developers monetize AI tools and data assets, while users share in economic gains.

Challenges and Solutions

Technical Challenges

  • Scalability: Blockchain networks face scalability limits that can hinder AI-powered smart contracts. Layer-2 solutions and AI-optimized blockchains offer promising remedies.
  • Energy Consumption: Both AI and blockchain are energy-intensive. Innovations in consensus mechanisms and efficient AI algorithms aim to reduce environmental impact.
  • Oracle Reliability: Ensuring accurate data feeds requires multiple oracle providers and AI-driven validation to prevent errors or exploits.

Regulatory Considerations

Legal frameworks around tokenized assets remain uncertain. Regulatory scrutiny, especially concerning securities laws and PCI DSS compliance, poses risks. However, institutions like the Federal Reserve are exploring how tokenization and AI can enhance payment systems, suggesting clearer regulations will emerge.

Security Concerns

Blockchain systems are vulnerable to hacks. Robust security protocols, regular audits, and AI-driven vulnerability detection tools are essential to safeguard tokenized AI services and protect sensitive information.

Future Trends and Developments

Enhanced AI Capabilities

The future will see more advanced AI services tokenized, including:

  • Autonomous AI Agents: Self-improving systems that adapt based on user feedback and market conditions.
  • Specialized Industry Solutions: Tailored AI services for healthcare, finance, manufacturing, and more.
  • Multi-Modal AI: Systems processing text, images, audio, and video through unified tokenized interfaces.

Improved User Experience

User-friendly platforms will emerge, featuring:

  • No-Code Interfaces: Enabling non-technical users to deploy AI services effortlessly.
  • Mobile-First Designs: Accessing tokenized AI tools on smartphones and tablets.
  • Integration with Existing Tools: APIs and plugins connecting tokenized AI services with popular business software.

Cross-Chain Compatibility

Seamless operation across multiple blockchains will become standard, allowing users to leverage AI capabilities regardless of their preferred blockchain ecosystem.

Conclusion: The Future of AI is Tokenized

Understanding how does tokenizing AI services work is essential for anyone engaged in the evolving AI landscape. By converting AI capabilities into blockchain-based assets, tokenization is creating democratic, transparent, and efficient systems that serve a global community rather than a few centralized entities.

Token Metrics exemplifies this transformative potential, showcasing how AI analytics can be tokenized to create value for millions worldwide. Through its TMAI token ecosystem, it provides a blueprint for community-owned, governance-driven AI platforms.

The benefits of AI service tokenization are clear: democratized access, economic efficiency, community governance, revenue sharing, and accelerated innovation. As tokenization becomes the dominant model for AI distribution and monetization, businesses, developers, and investors must engage early to remain competitive.

The future of artificial intelligence is no longer centralized within tech giants. It is tokenized, distributed, and owned by the communities that build and use it. This shift represents one of the most significant technological transformations since the internet’s inception, with profound implications across industries and economies worldwide.

Research

What are Decentralized AI Marketplaces? The Future of Peer-to-Peer AI Innovation

Talha Ahmad
5 min
MIN

The artificial intelligence revolution is entering an exciting new phase in 2025, shifting away from centralized corporate control toward decentralized, community-driven ecosystems. Decentralized AI marketplaces are emerging as transformative platforms that democratize access to artificial intelligence tools, models, and services. These innovative platforms leverage blockchain technology to create peer-to-peer networks where developers, businesses, and individuals can buy, sell, and collaborate on AI solutions without relying on traditional intermediaries.

As the global AI landscape evolves, decentralized AI marketplaces address critical issues of accessibility, transparency, and ownership that have long hindered centralized AI systems. These platforms enable small businesses to tap into enterprise-grade AI tools, provide new revenue streams for AI developers, and reshape the way artificial intelligence is developed and deployed worldwide. By fostering open participation and fair compensation, decentralized AI marketplaces are setting the stage for a more inclusive and innovative AI industry.

Understanding Decentralized AI Marketplaces

Decentralized AI marketplaces represent disruptive platforms that utilize blockchain technology and decentralized networks to empower peer-to-peer exchanges of AI assets. Unlike traditional AI platforms controlled by a single party or tech giants, these marketplaces operate on distributed networks where no single entity has complete control, reducing risks of censorship, data monopolies, and single points of failure.

At their core, decentralized AI marketplaces are peer-to-peer platforms designed to democratize how AI is built, accessed, and monetized. Developers can upload AI models, data providers can offer curated datasets, and GPU owners can rent out computing power. These assets are traded openly, with contributors receiving direct rewards through smart contracts and token rewards, ensuring transparency and fair compensation.

The fundamental architecture of these platforms includes several key components:

  • Smart Contract Infrastructure: These automated agreements handle transactions, payments, and governance without human intervention, fostering trust and transparency between participants.
  • Tokenization Layer: Tokenization represents AI services, data, models, and computing resources as digital tokens on blockchain networks. This layer provides liquidity, fractional ownership, and efficiency within decentralized marketplaces.
  • Decentralized Storage: Secure, distributed storage systems safeguard AI models and datasets, ensuring availability and preventing single points of failure.
  • Consensus Mechanisms: Validation systems maintain the quality and authenticity of AI services and models offered on the platform.

Together, these components create an open, transparent, and resilient AI marketplace that empowers users to maintain control over their assets while enabling seamless collaboration across distributed networks.

Key Features and Benefits

Democratization of AI Access

Traditionally, developing and deploying advanced AI models required significant resources, technical expertise, and infrastructure, limiting access to large corporations and research institutions. Decentralized AI marketplaces level the playing field by making powerful AI tools and models accessible to smaller businesses, startups, and individual researchers.

This democratization goes beyond mere access; it encompasses ownership and control. Unlike centralized AI systems that can change terms of service or restrict access, decentralized marketplaces allow users to maintain sovereignty over their AI tools and data. By allowing open participation and removing single-party gatekeepers, these platforms enable a broader range of businesses and individuals to innovate and benefit from AI.

Enhanced Privacy and Security

Data privacy remains a paramount concern in today's digital world. Decentralized AI marketplaces address these concerns by enabling data providers to retain control over their sensitive information while still benefiting from AI insights. Techniques such as federated learning and secure multi-party computation allow AI models to be trained on decentralized data sources without exposing raw data.

This approach aligns with growing demands for patient privacy, data sovereignty, and compliance with regulations. By decentralizing data storage and AI training, these marketplaces reduce risks associated with centralized data breaches and misuse, fostering trust among participants.

Transparent and Fair Monetization

Unlike traditional AI platforms dominated by centralized providers, decentralized AI marketplaces offer transparent and fair monetization mechanisms. Verifiable training data lineage, censorship-resistant model hosting, and decentralized governance via DAOs ensure accountability and equitable value creation.

Token rewards and smart contracts automate payments and incentivize contributors fairly, distributing ownership and access across a wide network. This permissionless, open ecosystem resists censorship and expands the reach of artificial intelligence beyond corporate and political gatekeepers, empowering developers, data providers, and computing resource owners alike.

Cost Efficiency

By eliminating intermediaries and reducing overhead costs, decentralized marketplaces allow sellers to offer AI solutions at more competitive prices. This dynamic attracts more buyers and increases revenue opportunities. Additionally, pay-as-you-go or subscription-based pricing models enable businesses to access AI tools at a fraction of traditional costs, making AI development and deployment more affordable and scalable.

Sharing GPU resources and computing power within distributed networks optimizes resource allocation and reduces barriers for AI model training and AI tasks, benefiting both providers and users.

Market Growth and Industry Impact

The decentralized AI marketplace sector is experiencing rapid expansion. Currently, there are over 230 companies engaged in decentralized AI projects, including notable names like Filecoin, Raiinmaker, 0G Labs, Masa, and Storj. Among these, 132 companies have secured funding, with 21 reaching Series A rounds. The United States leads with 78 companies, followed by Singapore and the United Kingdom.

This growth signals a significant shift in AI development and deployment, with decentralized AI marketplaces unlocking vast economic opportunities across sectors such as healthcare, education, and finance. By empowering individuals and businesses, these platforms help address longstanding concerns about bias, discrimination, and concentration of power in the AI industry.

Decentralization fosters innovation by enabling open source protocols, transparent governance, and token-based incentives that drive sustainable AI development and adoption.

Leading Platforms and Technologies

SingularityNET

SingularityNET is the world's first decentralized AI network, enabling anyone to create, share, and monetize AI services at scale. Using its native AGIX token, the platform facilitates transactions within a decentralized protocol that supports AI development and collaboration across distributed networks.

Ocean Protocol and Fetch.AI

Ocean Protocol empowers data providers by securing data ownership and allowing users to share and monetize their data while retaining full control. Fetch.AI complements this by enhancing automation and efficiency, enabling AI systems and autonomous economic agents to optimize decisions across decentralized networks.

Emerging Innovations

MWX is poised to revolutionize the AI landscape with its upcoming global launch of the first decentralized, open-access AI marketplace tailored for small and medium enterprises (SMEs). By removing intermediaries and gatekeepers, MWX aims to bring powerful, ready-to-use AI tools directly to millions of SMEs worldwide.

Infrastructure Development

0G Labs is pioneering critical infrastructure that redefines what's possible for AI and blockchain integration. Their architecture lays the foundation for truly decentralized, performant AI infrastructure, including decentralized storage, verifiable inference, and service marketplaces. These developments underpin the next generation of decentralized AI applications.

Real-World Applications and Use Cases

Small and Medium Enterprises (SMEs)

The demand for SME-friendly AI solutions has never been greater. As global competition intensifies and customer expectations evolve, small businesses face pressure to deliver more with fewer resources. Despite AI’s promise of productivity gains and cost reductions, many SMEs remain locked out due to complexity and expense.

Decentralized AI marketplaces address this gap by providing affordable, accessible AI tools designed specifically for smaller businesses. By leveraging distributed networks and open marketplaces, SMEs can tap into AI solutions that were previously accessible only to tech giants.

Computing Resource Sharing

Decentralized AI marketplaces enable providers to lend out idle GPU power and computing resources through lending protocols and tokenized incentives. This approach maximizes utilization of existing capacity, reduces costs by up to 70%, and democratizes access to computing power necessary for AI model training and AI tasks.

Such resource sharing optimizes allocation, supports long-term contracts, and fosters an open participation model that benefits both providers and users.

Specialized Industry Solutions

The decentralized AI marketplace ecosystem is rapidly diversifying, with platforms emerging to serve specific industries such as healthcare, finance, and creative content generation. These specialized marketplaces facilitate collaboration among domain experts, accelerate AI development tailored to industry needs, and promote innovation in areas like patient privacy, real-time data processing, and autonomous AI assistants.

Token Metrics: The Premier AI-Powered Crypto Analytics Platform

In the evolving world of decentralized AI marketplaces, Token Metrics exemplifies how artificial intelligence can be harnessed to provide sophisticated crypto trading and analytics solutions.

Advanced AI-Driven Analytics

Token Metrics consolidates research, portfolio management, and trading into a unified ecosystem. It assigns each token a Trader Grade for short-term potential and an Investor Grade for long-term viability, enabling users to prioritize opportunities effectively.

The platform’s AI algorithms analyze thousands of data points across blockchain networks, providing comprehensive insights that would be impossible to process manually.

Real-Time Market Intelligence

Token Metrics offers real-time AI buy and sell signals, helping users spot winning tokens early among thousands of options. With AI-curated portfolios for short and long-term gains, the platform simplifies market research and tracking, making sophisticated analytics accessible to individual investors.

Comprehensive Trading Ecosystem

With the launch of Trading on Token Metrics, users can act on AI-generated signals directly within the platform, creating an end-to-end solution that integrates ratings, token details, and trading functionalities seamlessly.

Developer-Friendly Infrastructure

Token Metrics provides a modular, scalable API offering real-time ratings, sentiment analysis, indices, and AI signals. This infrastructure supports developers and teams looking to integrate AI capabilities into their own applications, exemplifying how decentralized AI marketplaces can foster innovation across ecosystems.

Innovation in AI Engagement

Token Metrics’ AI-powered agent on X (formerly Twitter), @0xTMAI, delivers timely, data-backed content and actionable intelligence to the community. By leveraging proprietary data and back-tested signals, the agent provides real-time insights, automated posts, and instant replies, showcasing how AI agents can enhance engagement and information flow beyond traditional platforms.

Challenges and Considerations

Technical Complexity

Integrating blockchain technology with AI systems introduces technical challenges, including slower processing speeds, scalability issues, and regulatory uncertainties. Ensuring seamless interoperability and user-friendly experiences remains an ongoing focus for decentralized AI projects.

Governance and Incentives

Establishing fair and sustainable incentive structures is critical, especially when decentralizing infrastructure control. Without a central authority, creating trust and managing disputes through decentralized governance, chain governance, and dispute resolution mechanisms requires careful design and community participation.

Market Maturation

The decentralized AI marketplace ecosystem is still maturing. Platforms are increasingly adopting modular architectures, allowing users to select components such as decentralized storage, computing, or full-stack AI solutions tailored to their needs. As the technology evolves, user interfaces and developer tools are becoming more accessible, driving broader adoption.

The Future of Decentralized AI Marketplaces

2025 and Beyond

0G Labs is spearheading the creation of a decentralized AI operating system, integrating multiple layers including decentralized storage, verifiable inference, and service marketplaces. This system aims to enhance transparency, trust, and performance in AI applications, marking a critical step forward in decentralized artificial intelligence.

Integration with Web3

By combining blockchain infrastructure, decentralized governance, and token rewards, these platforms are building a people-powered internet that supports AI compute, content streaming, and digital storage. This integration with Web3 technologies defines the future of decentralized AI infrastructure.

Market Expansion

MWX’s launch as the first one-stop decentralized marketplace for AI products tailored to SMEs exemplifies the expanding market reach. By bridging the gap between businesses and AI advancements, platforms like MWX are driving adoption and innovation across diverse sectors.

Conclusion: The Dawn of Democratized AI

Decentralized AI marketplaces represent a fundamental shift in how artificial intelligence is developed, accessed, and monetized. Leveraging blockchain technology and distributed networks, these platforms dismantle traditional barriers that have confined AI access to a few tech giants and well-funded institutions.

The key benefits are clear: enhanced data privacy and security, transparent and fair monetization, cost efficiency, and democratized access to cutting-edge AI tools. From small businesses gaining enterprise-grade AI solutions to developers receiving fair compensation for their innovations, decentralized AI marketplaces are creating new opportunities throughout the AI ecosystem.

Platforms like Token Metrics illustrate the transformative potential of democratized AI, making sophisticated analytics and real-time insights accessible to individual users while supporting professional applications. With comprehensive APIs and AI agents, Token Metrics exemplifies how decentralized AI marketplaces empower users and developers alike.

As we progress through 2025, the growth of decentralized AI marketplaces appears unstoppable. Hundreds of companies are building in this space, significant funding is flowing, and the technology is maturing rapidly. The future of AI is no longer centralized in the hands of a few tech giants; it is distributed across a global network of contributors, innovators, and users.

Decentralized AI marketplaces are the infrastructure that will make this future possible, fostering a more inclusive, transparent, and democratized artificial intelligence ecosystem. For businesses, developers, and individuals eager to participate in this revolution, the time to engage with decentralized AI marketplaces is now—the tools are ready, the ecosystem is expanding, and the opportunities have never been greater.

Research

Can AI Help Identify Vulnerabilities in Smart Contracts? The Complete Guide to AI-Powered Security in 2025

Talha Ahmad
5 min
MIN

As blockchain technology continues to revolutionize financial systems and decentralized applications, smart contracts have become the backbone of the digital economy. These self-executing contracts automate agreements on blockchain platforms, enabling trustless and transparent interactions. However, with billions of dollars locked in smart contracts, security vulnerabilities have emerged as one of the most critical challenges facing the blockchain ecosystem. In 2025, artificial intelligence (AI) has become a powerful ally in the fight against smart contract vulnerabilities, offering unprecedented capabilities to detect, analyze, and prevent security flaws that traditional methods might miss. This article explores how AI can help identify vulnerabilities in smart contracts and transform smart contract security for the better.

The Critical Need for Smart Contract Security

Smart contracts are self-executing programs that run on blockchain networks, automatically enforcing the terms of an agreement without intermediaries. Unlike traditional software, smart contracts are immutable once deployed—meaning any vulnerabilities in their code can lead to irreversible losses. The stakes are extraordinarily high: smart contract vulnerabilities have led to the loss of millions of dollars in the blockchain and decentralized finance (DeFi) sectors.

Due to the substantial control smart contracts have over cryptocurrency and financial assets, any security flaws can result in unpredictable and severe asset losses. These vulnerabilities include unchecked external calls, logic errors, arithmetic operation mistakes, and access control weaknesses. Conducting thorough vulnerability detection on smart contracts helps identify and fix these potential risks early, ensuring the security of contract execution and protecting assets from theft or exploitation.

As blockchain technology continues to gain widespread adoption across industries like supply chain management, decentralized finance, and distributed ledger technology, the importance of smart contract security only grows. Developers, auditors, and investors alike must prioritize detecting and mitigating vulnerabilities in smart contracts to safeguard the integrity of blockchain platforms.

Traditional Vulnerability Detection: Limitations and Challenges

Current Methods and Their Shortcomings

Traditional smart contract audits rely heavily on manual code reviews, static analysis, fuzz testing, and formal verification techniques. Popular tools such as Oyente, Mythril, Securify, Slither, and Smartcheck automate parts of this process by scanning Solidity smart contracts for known security flaws like reentrancy, incorrect tx.origin authorization, timestamp dependency, and unhandled exceptions.

While these tools provide valuable insights, they have significant limitations. Most traditional methods depend on predefined detection rules and heuristics, which can lead to false positives (flagging safe code as vulnerable) or false negatives (missing actual vulnerabilities). They often struggle to comprehend complex code semantics, logic flaws, and interactions between contract components, especially in sophisticated Ethereum smart contracts or other blockchain platforms.

The Scalability Problem

The rapidly evolving landscape of smart contract development introduces new programming languages, complex contracts, and emerging threats at a pace traditional tools find difficult to keep up with. A comprehensive evaluation of 256 smart contract analysis tools revealed that no single approach—be it fuzzing, symbolic execution, machine learning, or formal verification—fully covers all vulnerability types accurately.

Moreover, predefined rules and static detection patterns become outdated quickly, unable to adapt or generalize to new data or attack vectors. This scalability problem creates a significant security gap, especially as blockchain projects grow in complexity and market value. Manual audits are time-consuming and prone to human error, further underscoring the need for more adaptive and automated vulnerability detection methods.

Enter AI: A Revolutionary Approach to Smart Contract Security

The Promise of Artificial Intelligence

In response to these challenges, AI-powered solutions have emerged as a revolutionary approach to smart contract vulnerability detection. Leveraging machine learning models, deep learning techniques, graph neural networks, and transformer models, AI systems can learn complex patterns from smart contract data and historical audit reports, uncovering hidden vulnerabilities that traditional methods might miss.

Unlike static analysis or rule-based tools, AI models do not require predefined detection rules. Instead, they learn features of vulnerabilities during training, enabling them to adapt to new threats and evolving codebases. This ability to provide comprehensive analysis and continuous improvement makes AI a game-changer in blockchain security.

Key Advantages of AI-Powered Detection

  • Automated Pattern Recognition: AI algorithms excel at analyzing smart contract code structure and semantics, identifying recurring patterns associated with security vulnerabilities such as unchecked external calls or arithmetic operation errors.
  • Adaptive Learning: Machine learning models can continuously learn from new vulnerabilities and exploits, enhancing their detection capabilities over time and addressing emerging threats more effectively than traditional tools.
  • Scalability: AI-powered solutions can process vast volumes of smart contract code rapidly, enabling auditors and developers to monitor smart contracts at scale without compromising quality.
  • Speed and Efficiency: AI systems significantly reduce vulnerability detection time—from hours or days with manual audits to seconds or minutes—accelerating the development and deployment of secure smart contracts.

By leveraging AI, smart contract developers and auditors can achieve significant improvements in identifying vulnerabilities, thereby enhancing the overall security of blockchain platforms.

AI Technologies Transforming Smart Contract Security

Large Language Models (LLMs) in Vulnerability Detection

One of the most significant breakthroughs in AI-powered smart contract security has come from Large Language Models like ChatGPT and GPT-4. These models, trained on vast amounts of code and natural language data, can understand and generate human-like code explanations and detect potential security flaws.

Initial evaluations of ChatGPT on publicly available smart contract datasets showed high recall rates but limited precision in pinpointing vulnerabilities. However, recent fine-tuned LLMs have surpassed traditional models, achieving accuracy rates exceeding 90%. Their ability to capture subtle code semantics and logic errors makes them invaluable for smart contract audits.

Advanced AI Architectures

  • Deep Learning Solutions: Specialized deep learning models, such as the "Lightning Cat" system, utilize neural networks to analyze smart contract code and detect vulnerabilities missed by conventional tools. These models learn from historical data and audit reports to improve detection accuracy.
  • Graph Neural Networks (GNNs): GNNs analyze the structural relationships within smart contract code, such as control flow graphs and abstract syntax trees. Combining GNNs with LLMs has resulted in superior vulnerability detection metrics, including precision and recall rates above 85%.
  • Multi-Modal Approaches: Cutting-edge research integrates textual analysis with structural code information derived from opcode and control flow graphs. This comprehensive analysis uncovers complex security flaws that single-method approaches might overlook.

These AI techniques collectively enhance the ability to detect logic flaws, reentrancy issues, and other security vulnerabilities, thereby improving smart contract security significantly.

Token Metrics: Leading AI-Powered Crypto Analytics and Security Intelligence

In the rapidly evolving landscape of smart contract security, understanding broader ecosystem risks and token-level vulnerabilities is crucial for investors and developers. Token Metrics stands out as a premier platform offering comprehensive crypto analytics and security intelligence powered by AI.

Why Token Metrics is Essential for Smart Contract Security

  • AI-Powered Risk Assessment: Token Metrics leverages advanced AI algorithms to analyze smart contracts and associated tokens, delivering risk assessments that go beyond traditional code audits.
  • Comprehensive Security Intelligence: The platform monitors thousands of blockchain projects in real time, providing insights into smart contract audit statuses, security certifications, and vulnerability histories.
  • Market Impact Analysis: By correlating security incidents with token price performance, Token Metrics helps users understand how vulnerabilities affect market value and investor confidence.
  • Predictive Security Analytics: Using machine learning models, Token Metrics forecasts potential security risks based on code patterns and historical data, enabling proactive risk management.

Leveraging Token Metrics for Security-Conscious Investment

Investors can use Token Metrics to perform due diligence, monitor security updates, and manage portfolio risk by assessing the aggregate security exposure of their holdings. This AI-powered platform empowers users to make informed decisions in the decentralized finance space, where smart contract security is paramount.

Real-World AI Tools and Frameworks

Commercial AI-Powered Solutions

  • EY Blockchain Analyzer: EY’s Blockchain Analyzer: Smart Contract and Token Review tool integrates AI capabilities to enhance smart contract testing efficiency and comprehensiveness, reducing review times by over 50%.
  • QuillShield: This AI-powered security analysis tool detects logical errors beyond common vulnerabilities in Solidity smart contracts. It learns from past exploits to improve accuracy and reduces false positives through consensus mechanisms.

Open-Source AI Frameworks

Academic research has produced frameworks like GPTLens, which employs a two-stage detection process—generation and discrimination—for progressive vulnerability identification. Specialized models such as PSCVFinder utilize deep learning and normalization techniques to outperform traditional methods in detecting reentrancy and timestamp dependency vulnerabilities.

These open-source and commercial AI tools demonstrate the growing ecosystem of AI-powered solutions enhancing smart contract security.

AI vs. Traditional Tools: Performance Comparison

Accuracy and Effectiveness

Recent studies reveal that AI-powered tools offer significant improvements over traditional methods:

  • Recall Rates: AI models consistently detect more actual vulnerabilities, reducing the risk of missing critical security flaws.
  • Precision: While early AI models struggled with false positives, fine-tuned AI systems now achieve accuracy rates exceeding 90%.
  • Coverage: AI tools uncover nuanced logical vulnerabilities and code semantics that rule-based systems often overlook.

Speed and Scalability

Traditional static analysis tools like Slither and Mythril analyze contracts quickly but may miss complex vulnerabilities. In contrast, modern AI-powered tools provide similarly rapid analysis while delivering superior detection capabilities and scalability to handle large volumes of smart contract data.

Limitations and Challenges

Despite their advantages, AI-powered vulnerability detection systems face challenges:

  • Consistency Issues: Models like ChatGPT show variability in detecting different vulnerability types, with some contracts yielding inconsistent results across multiple analyses.
  • False Positives: High recall rates sometimes come at the cost of precision, necessitating human verification to filter false alarms.
  • Context Understanding: AI systems may struggle with complex contract logic and inter-contract dependencies that experienced human auditors better comprehend.

These limitations highlight the need for hybrid approaches combining AI with traditional audits and expert review.

The Current State of AI in Smart Contract Security

What AI Can Do Today

Modern AI systems excel at identifying a wide range of vulnerabilities, including:

  • Reentrancy vulnerabilities
  • Integer overflow and underflow
  • Timestamp dependency issues
  • Access control weaknesses
  • Logic errors and business rule violations

Leading AI models achieve accuracy rates between 86% and 91%, analyze contracts in sub-second times, and cover vulnerability types often missed by traditional tools.

What AI Cannot Do (Yet)

AI still faces challenges in:

  • Understanding complex business logic and domain-specific vulnerabilities
  • Detecting novel attack vectors not present in historical data
  • Contextual analysis of ecosystem-wide implications of vulnerabilities

These gaps underscore the importance of human expertise and continuous AI model refinement.

Best Practices for AI-Powered Smart Contract Security

Hybrid Approaches

The most effective smart contract security strategies combine AI-powered detection with traditional methods:

  1. Primary AI Screening: Use AI tools for initial comprehensive vulnerability detection.
  2. Traditional Tool Verification: Employ established static analysis tools like Slither and Mythril for cross-validation.
  3. Human Expert Review: Maintain human oversight for complex logical and business rule validation.
  4. Continuous Monitoring: Implement ongoing AI-powered monitoring of deployed contracts to detect emerging threats.

Implementation Guidelines

For Developers:

  • Integrate AI-powered security tools into development pipelines.
  • Use multiple AI models to cross-validate findings.
  • Maintain updated training data for custom AI models.
  • Combine static AI analysis with dynamic testing methods like symbolic execution.

For Auditors:

  • Leverage AI tools to enhance audit efficiency and coverage.
  • Use AI for initial screening before detailed manual analysis.
  • Develop expertise in interpreting AI outputs and identifying false positives.

For Investors:

  • Utilize platforms like Token Metrics for security-informed investment decisions.
  • Monitor AI-powered security assessments for portfolio holdings.
  • Correlate security metrics with market performance for better risk management.

The Future of AI in Smart Contract Security

Emerging Trends

The future of AI in smart contract security promises exciting developments:

  • Multi-Agent Systems: AI frameworks employing multiple specialized agents will provide comprehensive and collaborative security analysis.
  • Real-Time Monitoring: AI systems will enable continuous surveillance of deployed contracts, detecting attacks and vulnerabilities as they occur.
  • Predictive Security: Advanced AI will forecast potential vulnerabilities before exploitation, based on code patterns, project behavior, and market dynamics.

Integration with Development Workflows

AI-powered security will become seamlessly embedded in:

  • Integrated development environment (IDE) plugins offering real-time coding assistance.
  • Continuous integration/continuous deployment (CI/CD) pipelines for automated security checks.
  • Deployment systems performing pre-launch verification.
  • Runtime monitoring tools providing post-deployment protection.

These integrations will enable smart contract developers to write safer code and deploy more secure contracts with greater confidence.

Conclusion: AI as a Game-Changer in Smart Contract Security

The question, can AI help identify vulnerabilities in smart contracts? is answered emphatically in the affirmative. AI has already demonstrated remarkable capabilities in detecting smart contract vulnerabilities, achieving accuracy rates exceeding 90% and significantly reducing analysis time. However, AI is not a silver bullet; it is most effective when combined with traditional smart contract audits and human expertise.

The evaluation of AI tools shows their effectiveness in uncovering a wide range of security flaws, providing developers and auditors with robust mechanisms to improve the security of smart contract code before deployment. This represents a significant advancement in leveraging artificial intelligence for blockchain security.

For participants in the crypto ecosystem, platforms like Token Metrics provide essential AI-powered analytics that blend security assessment with market intelligence. As smart contracts continue to manage billions of dollars in digital assets, the ability to make security-informed decisions becomes crucial for success.

Ultimately, the future of smart contract security lies in the intelligent integration of AI capabilities with traditional security practices. As AI models evolve and improve, they will become increasingly central to ensuring the safety and reliability of blockchain-based applications. Organizations and individuals who embrace these AI-powered solutions today will be better positioned to navigate the complex and rapidly evolving security landscape of tomorrow’s decentralized economy.

The question is no longer whether AI can help with smart contract security—it’s how quickly we can responsibly integrate these powerful tools to create a more secure blockchain ecosystem for everyone.

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Announcements

Token Metrics Crypto API and Windsurf Integration: Unlock Hidden Crypto Signals for Smarter Trading

Token Metrics Team
8 min
MIN

In today’s crypto market, raw data isn’t enough. Speed isn’t enough. What you need is insight.

That’s why we’re excited to unveil a game-changing integration: Token Metrics Crypto API now powers an ultra-fast, AI-driven crypto analytics platform—supercharged by Windsurf Coding Agent automation. This isn’t just another crypto dashboard. It’s a real-time intelligence engine designed for traders, funds, and crypto builders who demand an edge.

The Problem with Most Crypto Dashboards

Most crypto dashboards simply pull price data and display it. But serious traders know that price alone doesn’t tell the full story. You need context. You need predictive signals. You need advanced analytics that go beyond surface-level charts.

The Token Metrics Crypto API changes that.

By combining cutting-edge AI models with deep on-chain and market data, the Token Metrics API delivers the kind of actionable intelligence that traditional platforms can’t match.

The Power of Token Metrics API

At the heart of this new platform lies the Token Metrics API — widely regarded by traders and funds as the best crypto API available today.

Here’s why:

✅ Real-Time AI Insights

The Token Metrics API delivers real-time valuations, grades, risk metrics, and momentum signals—powered by sophisticated AI and machine learning models analyzing thousands of crypto assets.

✅ Predictive Token Ratings

Leverage Investor Grade and Trader Grade rankings to see which tokens are gaining momentum — before the market fully reacts.

✅ Quant Metrics & Risk Analysis

Access volatility scores, Sharpe ratios, value-at-risk metrics, and drawdown analysis to manage risk with precision.

✅ Clustering & Sentiment Analysis

Identify hidden relationships between tokens using real-time clustering and on-chain sentiment analysis.

✅ Full Market Coverage

Whether you trade altcoins, L1 ecosystems, DeFi, or memecoins — the Token Metrics Crypto API covers thousands of assets across multiple chains.

This depth of data allows the platform to do far more than just monitor prices — it discovers patterns, clusters, momentum shifts, and early market signals in real-time.

How Windsurf Coding Agent Unlocks New Possibilities

To build a truly responsive and adaptive crypto intelligence platform, we leveraged Windsurf Coding Agent automation. Windsurf allows us to ship new dashboards, signals, and features in hours—not weeks.

As crypto markets evolve rapidly, speed to insight becomes critical. With Windsurf’s agent-driven automation, we can prototype, iterate, and deploy new AI models and data visualizations faster than any traditional development cycle allows.

  • 🔄 New momentum indicators can be developed overnight
  • 🔄 Cluster algorithms can be recalibrated instantly
  • 🔄 Dashboards respond live to market shifts

This makes the entire system fluid, adaptive, and always tuned to the latest market behavior.

Not Just Another Dashboard — A Real-Time AI Engine

This isn’t your average crypto dashboard.

Every data point is analyzed, filtered, and rendered within milliseconds. As soon as the Token Metrics API delivers updated data, the platform processes it through real-time clustering, momentum scoring, and risk analysis.

The result? A blazingly fast, AI-powered crypto dashboard that gives you insights while your competition is still refreshing price feeds.

Platform Highlights:

  • Real-Time Market Trends:
    See market shifts as they happen, not minutes later.

  • Hidden Cluster Discovery:
    Identify which tokens are moving together before major narratives emerge.

  • Smart Momentum Signals:
    Detect early breakout signals across DeFi, AI, RWA, Memes, and other sectors.

  • Token Ratings & Sentiment:
    Get automated Investor Grades, Trader Grades, and community sentiment scoring.

  • Built-in AI Analysis Engine:
    Summary insights are auto-generated by AI to make complex data immediately actionable.

Turning Complexity Into Clarity

Crypto markets generate overwhelming amounts of data — price swings, liquidity changes, on-chain flows, funding rates, sentiment shifts, and more.

The Token Metrics + Windsurf integration filters that noise into clear, actionable signals. Whether you’re:

  • A crypto fund manager seeking alpha
  • An algorithmic trader hunting momentum
  • A community builder wanting to inform your Discord or Telegram group
  • A developer creating your own crypto trading bots or dashboards

... this platform turns complexity into clarity.

The signal is out there. We help you find it.

Why Token Metrics API is the Best Crypto API for Builders

When evaluating crypto APIs, most traders and developers face the same issues: incomplete data, poor documentation, limited endpoints, or stale updates. The Token Metrics API stands apart as the best crypto API for several key reasons:

1️⃣ Comprehensive Data Coverage

The Token Metrics API covers over 6,000 crypto assets across major chains, sectors, and narratives.

2️⃣ AI-Driven Metrics

Unlike other crypto APIs that only provide raw market data, Token Metrics delivers pre-calculated AI insights including:

  • Trader & Investor Grades
  • Bullish/Bearish Signals
  • Quantitative Rsk Metrics
  • Sentiment Scores
  • Support & Resistance Levels

3️⃣ Developer Friendly

The API is fully documented, REST-based, and easily integrates with platforms like Windsurf, Zapier, and custom trading systems.

4️⃣ Instant Updates

Data is refreshed continuously to ensure you’re always working with the latest available insights.

This makes the Token Metrics crypto API ideal for:

  • Building automated trading agents
  • Developing AI-powered dashboards
  • Running quant research pipelines
  • Powering Discord/Telegram trading bots
  • Creating crypto advisory tools for funds or DAOs

Example Use Case: Proactive Cluster Monitoring

Imagine this:

You’re managing a portfolio with exposure to several DeFi tokens. The platform detects that several mid-cap DeFi projects are clustering together with rising momentum scores and improving Investor Grades. Within seconds, your dashboard flashes an early “sector breakout” signal.

By the time social media narratives catch on hours or days later — you’re already positioned.

This is the edge that real-time AI-driven analytics delivers.

What You Can Build With Token Metrics API + Windsurf

The possibilities are nearly endless:

  • Fully autonomous AI trading agents
  • Real-time risk management dashboards
  • Community-facing Discord or Telegram bots
  • Investor-grade weekly market reports
  • Live streaming momentum monitors
  • Institutional quant analysis tools

And because Windsurf Coding Agent automates development, these solutions can evolve rapidly as new narratives, tokens, and market behaviors emerge.

Start Building Your Edge Today

If you’re serious about staying ahead in crypto, you need more than just prices—you need intelligence.

The combination of Token Metrics API and Windsurf’s automation delivers the fastest, smartest way to build your own crypto intelligence systems.

➤ Sign up for Token Metrics

➤ Get API access

➤ Start building with Windsurf

Turn data into insights. Turn insights into profits.

Click here to view the demo!

Conclusion: The Future of Crypto Analytics Is Here

The days of static dashboards and delayed signals are over. The future belongs to platforms that deliver real-time, AI-powered, adaptive crypto intelligence.

With Token Metrics Crypto API and Windsurf Coding Agent, you have the tools to build that future—today.

Announcements

Build AI-Powered Crypto Trading Bots in Minutes: Token Metrics Partners with Cline for Seamless Crypto API Integration

Token Metrics Team
8 min
MIN

Combine the Best Crypto API with Cline’s AI Coding Environment to Automate Smarter Trades—Faster

The world of crypto development just leveled up.

We're excited to announce a powerful new integration between Token Metrics and Cline (via the Roo Code extension)—bringing together the most advanced crypto API on the market and an AI-native coding environment purpose-built for building and testing crypto trading bots.

This partnership unlocks the ability to rapidly prototype, test, and launch intelligent trading strategies using real-time data from Token Metrics directly inside Cline, making it easier than ever for developers and traders to build in the crypto economy.

In this post, we’ll show you exactly how this works, walk through a working example using the Hyperliquid token, and explain why Token Metrics is the best crypto API to use with Cline for next-gen trading automation.

What Is Cline (Roo Code)?

Cline is an AI-first coding assistant designed to turn ideas into code through conversational prompts. With the Roo Code extension in Visual Studio Code, Cline transforms your IDE into an AI-native environment, allowing you to:

  • Write and debug code using natural language
  • Chain tools and APIs together with zero setup
  • Backtest and optimize strategies within a single flow

By integrating Token Metrics’ cryptocurrency API through its MCP (Multi-Client Protocol) server, developers can access real-time grades, trading signals, quant metrics, and risk insights—all through AI-driven prompts.

This combo of live crypto data and AI-native coding makes Cline one of the fastest ways to build trading bots today.

What Is Token Metrics MCP & API?

The Token Metrics API is the ultimate toolkit for crypto developers. It's a high-performance, developer-focused crypto API that gives you:

  • AI-powered Trader & Investor Grades
  • Buy/Sell Signals for bull/bear market detection
  • Support & Resistance Levels
  • Sentiment Analysis
  • Quantitative Metrics including ROI, performance vs. BTC, and more
  • Full Token Reports & Rankings

These features are now accessible via the MCP server—a gateway that standardizes access to Token Metrics data for AI agents, bots, dashboards, and more.

Whether you’re building a Telegram bot, a trading terminal, or a portfolio optimizer, the Token Metrics MCP setup with Cline makes it seamless.

Step-by-Step: Build a Trading Bot in Cline Using Token Metrics

Here’s a walkthrough of how you can build a complete AI-powered trading bot using Cline and the Token Metrics API.

1. Set Up Your Project in Visual Studio Code

Open VS Code and click “Open Folder.” Name your project something fun—like “Hype Bot.”
Then go to the Extensions tab, search for “Roo Code” (the advanced version of Cline), and install it.

2. Connect to the Token Metrics MCP Server

Once installed:

  • Click the MCP icon in the sidebar.
  • Choose “Edit Global MCP.”
  • Visit the official Token Metrics MCP Instructions and copy the full configuration block.
  • Paste it into your global MCP settings in Cline.

🎉 Now your environment is live, and you’re connected to the best crypto API on the market.

3. Explore the API with a Prompt

Inside Cline, simply prompt:

“Explore the Token Metrics API and analyze the Hyperliquid token.”

In seconds, the agent fetches and returns detailed insights—including investor grade, sentiment shifts, trading volume, and support/resistance levels for Hyperliquid. It even detects patterns not visible on typical trading platforms.

4. Generate a Trading Strategy

Next prompt:

“Create a trading strategy using this data.”

The agent responds with a full Python trading script based on AI signals from the API—complete with buy/sell logic, thresholds, and data pipelines.

5. Run Backtests and Analyze Performance

Cline automatically generates a backtest file and plots a performance chart.

For example:

  • Portfolio grew from $10,000 to $10,600
  • 27 trades, with an 18.5% win rate
  • Maximum drawdown of 14%
  • Realistic insights into risk-adjusted returns

This is real-time data, real code, real results—all built through a few smart prompts.

Why This Partnership Matters

🔗 Natural-Language-Powered Crypto Development

No more hours spent reading docs or integrating messy SDKs. With Cline + Token Metrics, you talk to your agent, and it builds the bot, fetches the data, and runs the strategy.

⚙️ Best-in-Class Crypto Market Intelligence

Token Metrics provides professional-grade market signals used by hedge funds, traders, and analysts. With 80+ metrics per token, it’s the most detailed cryptocurrency API available—now accessible to indie devs and builders via Cline.

⚡ Build, Test, Iterate—Fast

Backtesting, strategy generation, and data access happen within seconds. This drastically cuts time-to-market for MVPs, AI assistants, and algo bots.

Use Cases You Can Build

  • Hype Token Trading Bots – Surf emerging narratives like Memecoins, RWA, or AI.
  • Risk-Managed Portfolios – Adjust exposure based on grades and market phases.
  • Discord/Telegram Bots – Stream top-performing tokens with real-time buy alerts.
  • CEX/DEX Strategy Automation – Monitor performance across centralized and decentralized exchanges.
  • Quant Research Dashboards – Power internal tools with Token Metrics data for investment committees or research teams.

Why Token Metrics Is the Best Crypto API for Cline Developers

  • Built for AI Workflows – Easy to use via prompts, structured for agent consumption.
  • Real-Time Coverage – Stay updated on narrative-driven tokens before they pump.
  • Secure & Scalable – Use API keys, MCP servers, and secure backtest environments.
  • Free to Start – Includes 5,000 free API calls so you can build before committing.

Final Thoughts

The future of building in crypto is agent-driven, data-rich, and fast.

This integration between Token Metrics and Cline proves that with the right tools, anyone can turn an idea into a trading bot in under 10 minutes—using real-time market data, AI-grade analysis, and seamless backtesting in one workflow.

No manual coding. No noise. Just results.

Start building smarter bots today:
👉 Get your API Key on Token Metrics
👉 Install Roo Code and connect Cline

Watch demo here!

Let’s build the next generation of crypto trading together.

Announcements

Transforming Crypto AI Trading: Token Metrics Crypto API Now Integrates Seamlessly with Cursor AI

Token Metrics Team
8 min
MIN

AI is transforming the future of AI crypto trading—and with the integration of Token Metrics Crypto API and Cursor AI, we’re taking another giant leap forward.

This integration unlocks the ability for developers, quants, and crypto-native builders to create powerful trading agents using natural language, real-time crypto market data, and automation—all through a single interface.

Whether you're building an AI agent that monitors market trends, provides trading signals, or develops actionable investment plans, the combination of Token Metrics' cryptocurrency API and Cursor AI’s intelligent prompt interface is the future of how crypto strategies are built and executed.

In this blog, we’ll walk you through the integration, show you what’s possible, and explain why this is the most developer-friendly and data-rich crypto API available today.

What Is the Token Metrics Crypto API?

The Token Metrics API is a developer-grade crypto API that delivers over 80 advanced signals and data points per token. It covers:

  • AI Trader Grades & Investor Grades
  • Buy/Sell Signals based on bull/bear market trends
  • Support & Resistance levels
  • Sentiment Analysis
  • Quantitative Metrics & ROI Data
  • Project Reports & Risk Ratings

With deep market insight and predictive analytics, it’s built for developers looking to power anything from crypto dashboards to automated trading agents, telegram bots, or custom portfolio apps.

Now, with the Cursor AI integration, all of this power is just one conversation away.

What Is Cursor AI?

Cursor AI is an advanced AI development environment where agents can write code, test ideas, and build applications based on natural language prompts. With support for live API integrations and tool chaining, it’s the perfect platform to build and deploy intelligent agents—without switching tabs or writing boilerplate code.

Now, developers can query live cryptocurrency API data from Token Metrics using natural language—and let the agent create insights, strategies, and trading logic on the fly.

What You Can Build: Real Example

Let’s walk through what building with Token Metrics on Cursor AI looks like.

Step 1: Prompt the Agent

It starts with a simple prompt:
“What are the tools you have for Token Metrics MCP?”

In seconds, the agent replies with the full toolkit available via Token Metrics Multi-Client Protocol (MCP), including:

  • Access to trader and investor grades
  • Market analysis and real-time predictions
  • Quantitative metrics and token reports
  • AI-driven sentiment and momentum scores

Step 2: Ask for a Use Case

Next, you say:
“Give me a trading agent idea using those tools.”

The agent responds by combining crypto API tools into an actionable concept—for instance, a trading assistant that monitors bull flips on high-ROI tokens, cross-checks sentiment, and then alerts you when investor and trader grades align.

Step 3: Build a Plan Using Live Data

Then you prompt again:
“Can you explore the tools and create a comprehensive plan for me?”

Here’s the magic: the agent pulls real-time data directly from the Token Metrics API, analyzes signals, ranks tokens, identifies top performers, and builds a structured trading plan with entry/exit logic.

No manual research. No spreadsheet wrangling.
Just clean, fast, and intelligent crypto trading strategy—generated by AI using the best crypto API on the market.

Why This Changes Everything

🔗 Unified AI & Data Stack

With Token Metrics + Cursor AI, developers can interact with crypto data using plain English. There’s no more need to juggle raw JSON files or multiple APIs. One schema, one key, full access.

⚡ Real-Time, Actionable Insights

Cursor agents can now fetch live signals and respond instantly, allowing you to create agents that trade, monitor, alert, and adapt based on changing market conditions.

🤖 Build AI Trading Agents in Minutes

From backtesting tools to investment advisors to portfolio rebalancers, the combined power of a smart agent and a smart API turns hours of coding into a few well-written prompts.

Why Token Metrics API Is the Best Crypto API for AI Agents

  • Built for Speed – Fast response times and optimized endpoints for seamless agent-to-agent communication.
  • AI-Ready Structure – The API was designed with machine learning and automated trading in mind.
  • Massive Coverage – Thousands of tokens, over 80+ data points per asset.
  • MCP Gateway – Unified interface for all AI tools to access one consistent schema.
  • Free Tier – Get started with 5,000 free API calls at Token Metrics.

Whether you're building your first crypto trading bot or an enterprise-grade RAG assistant, this integration unlocks full creative and technical freedom.

Final Thoughts

This is just the beginning.

By connecting the Token Metrics API with Cursor AI, we’re moving toward a future where crypto tools are built by conversation, not code. It's not just about faster development—it’s about smarter, more adaptive trading tools that are accessible to everyone.

So go ahead.
Open up Cursor AI.
Type your first prompt.
And start building with the most intelligent crypto API in the game.

👉 Explore the Token Metrics API

👉 Start Building with Cursor AI

Watch Demo here!

Research

Top Crypto Trading Platforms in 2025

Token Metrics Team
10 min
MIN

Is the cryptocurrency market continues to mature, new technologies are emerging to give traders an edge. Among the most transformative is AI-powered crypto trading. From automating strategies to identifying hidden opportunities, AI is redefining how traders interact with digital assets.

In this guide, we’ll break down:

  • What is AI crypto trading?
  • What are the different types of cryptocurrency trading?
  • The top crypto trading exchanges and platforms, with Token Metrics as the leading AI crypto trading option.

What is AI Crypto Trading?

AI crypto trading refers to the use of artificial intelligence (AI), machine learning (ML), and data science techniques to make smarter, faster, and more informed trading decisions in the cryptocurrency markets.

These systems analyze vast datasets—price charts, market sentiment, technical indicators, social media trends, on-chain activity—to generate trading signals, price predictions, and portfolio strategies. The goal: remove emotion and bias from crypto trading and replace it with data-driven precision.

Some AI crypto trading tools offer:

  • Predictive analytics for token performance
  • Real-time trading signals based on pattern recognition
  • Automated execution of buy/sell orders based on predefined strategies
  • Portfolio optimization using volatility and correlation models
  • Sentiment analysis from Twitter, Reddit, and news feeds

AI is especially valuable in the 24/7 crypto markets, where human traders can’t keep up with constant volatility. With AI, traders can react instantly to market shifts and make decisions grounded in data—not gut feeling.

What Are the Types of Cryptocurrency Trading?

Understanding the major types of cryptocurrency trading is essential for choosing the right strategy—especially if you’re planning to use AI to assist or automate your trades.

1. Spot Trading

Spot trading is the simplest and most common form of crypto trading. You buy or sell a cryptocurrency at its current price, and the transaction settles immediately (or “on the spot”). Most traders begin here.

AI can assist by identifying ideal entry and exit points, evaluating token grades, and managing risk.

2. Futures Trading

Futures trading involves contracts that speculate on the future price of a cryptocurrency. Traders can go long or short, using leverage to amplify gains (and risks).

AI helps by identifying bullish or bearish trends, backtesting strategies, and automating trades with quantitative models that adapt to market changes.

3. Margin Trading

Margin trading allows users to borrow funds to increase their trade size. It’s risky but potentially more rewarding.

AI can reduce some of the risks by using real-time volatility data, calculating stop-loss levels, and dynamically adjusting positions.

4. Swing Trading

Swing traders hold positions for days or weeks, capturing short- to medium-term trends.

AI tools are ideal for swing trading, as they can combine technical indicators, market sentiment, and volume analysis to anticipate breakouts and reversals.

5. Day Trading

Day traders open and close positions within a single day, requiring rapid decision-making and constant monitoring.

Here, AI-powered bots can outperform humans by making thousands of micro-decisions per second, reducing slippage and emotional trading errors.

6. Algorithmic and Bot Trading

Algorithmic trading uses coded strategies to automate trades. AI takes this further by allowing the bot to learn and improve over time.

Token Metrics, for example, offers AI grades and indices that traders can plug into their own bots or use through the platform’s native AI strategies.

Top Cryptocurrency Trading Exchanges

When it comes to crypto trading platforms, there are two main categories:

  • Exchanges where you buy, sell, and hold crypto
  • Analytics platforms that help you decide what to trade and when

Below are some of the top cryptocurrency trading platforms in 2025—both exchanges and AI-powered tools—tailored to serious traders:

1. Token Metrics – The #1 AI Crypto Trading Platform

Token Metrics is not an exchange, but a crypto analytics and trading intelligence platform powered by AI. It offers:

  • Trader & Investor Grades (AI-powered scoring of tokens)
  • Bullish/Bearish Signals
  • Portfolio Strategies via AI Indices
  • Custom Alerts for price and grade movements
  • Data API for building AI trading bots

Token Metrics bridges the gap between raw data and actionable decisions. Whether you’re a beginner or a pro running algorithmic strategies, Token Metrics delivers the AI layer needed to outperform the market.

Traders use Token Metrics alongside centralized exchanges (like Binance or Coinbase) or DEXs to validate trades, identify top-performing narratives, and automate entry/exit based on AI signals.

2. Binance

Binance is the largest crypto exchange by volume, offering thousands of trading pairs, margin, and futures trading. While it doesn’t offer native AI tools, many traders integrate Binance with AI bots using their API.

Use Token Metrics + Binance together for AI-informed execution on a high-liquidity exchange.

3. Coinbase

Coinbase is ideal for retail investors and new traders. While it lacks advanced AI features, it’s a trusted fiat gateway.

Advanced users can subscribe to Coinbase Advanced or integrate with tools like Token Metrics to make smarter trading decisions.

4. Bybit

Bybit offers both spot and derivatives, plus social trading tools like copy trading. It’s popular with swing and leverage traders.

Combine Bybit with Token Metrics for AI-driven entry points on high-volatility setups.

5. Kraken

Kraken is known for strong security and a transparent track record. It supports spot, margin, and futures trading.

When paired with AI tools, Kraken becomes a secure execution venue for data-driven strategies.

6. OKX

OKX offers robust bot features, including grid trading and DCA bots. For users who prefer built-in automation, OKX is a solid option.

Still, Token Metrics outperforms on signal generation, narrative tracking, and AI-backed token scoring—making it an ideal data source for OKX bots.

Why AI is the Future of Crypto Trading

As cryptocurrency trading evolves, manual strategies alone can’t keep up. Market cycles are faster, token launches are more frequent, and volatility is constant. This is where crypto AI trading shines.

Here’s why more traders are adopting AI:

  • Speed: AI analyzes and reacts faster than any human
  • Scale: It can monitor 1,000s of tokens across multiple chains simultaneously
  • Emotionless: AI doesn’t panic-sell or FOMO-buy
  • Backtested: Strategies are tested on historical data for statistical confidence
  • Adaptive: AI learns and improves over time based on market behavior

Platforms like Token Metrics make this technology accessible—offering plug-and-play AI indices, custom signals, and portfolio intelligence for retail traders, funds, and institutions alike.

Final Thoughts

Cryptocurrency trading is becoming more competitive, data-driven, and automated. With the rise of crypto AI trading, traders now have the tools to gain a true edge—whether they’re investing $100 or managing $1M.

If you’re serious about crypto trading in 2025, don’t just guess—trade with data, trade with AI.

Explore how Token Metrics can power your portfolio with AI-generated insights, real-time signals, and next-generation trading tools.

Announcements

🚀 Token Metrics API Goes Live on Hacker News – The AI Crypto Toolkit for Builders

Token Metrics Team
5 min
MIN

The Token Metrics API has officially launched on Hacker News, marking a major milestone in our mission to bring AI-powered crypto insights to every developer, founder, and builder in the Web3 space.

If you're building trading bots, dashboards, investment tools, or AI agents that interact with the crypto market, this is your developer edge in 2025. Forget raw feeds and static charts—this is real-time, AI-grade crypto intelligence available in minutes via a single API key.

What Is the Token Metrics API?

The Token Metrics API is a powerful crypto intelligence engine built for developers who want more than just price data. It combines machine learning, quantitative modeling, and narrative indexing to deliver structured signals that help users make smarter trading decisions.

Instead of simply showing what the market did, the API helps predict what it might do—with insights like:

  • Trader & Investor Grades (0–100 scores on momentum and fundamentals)
  • Bullish/Bearish Signals across 6,000+ assets
  • Narrative-based Indices like DeFi, AI, Memes, RWAs, and more
  • Quantitative Risk Scores and sentiment analysis
  • Real-time updates, no lag, no stale metrics

It’s like giving your crypto bot a brain—and not just any brain, an AI-trained crypto analyst that never sleeps.

Why It’s Different from Every Other Crypto API

Most APIs give you prices, volume, and maybe some on-chain data. Token Metrics gives you opinionated intelligence derived from over 80 on-chain, off-chain, technical, and sentiment indicators.

That means:

  • Your dashboard users get real-time grades and trending tokens.
  • Your AI agent can speak fluently about token fundamentals.
  • Your bot can act on bullish flips before the rest of the market.

We’ve designed this API for modularity and plug-and-play usability. With 21+ endpoints and official SDKs, you can ship faster and smarter—no custom pipeline needed.

What Can You Build?

Whether you're a solo developer or building inside a Web3 team, the possibilities are wide open.

Build smarter with Token Metrics if you’re creating:

  • 🧠 AI trading agents that query real-time token grades
  • 📊 Investor dashboards that surface top-rated altcoins
  • 📈 DApps that alert users to sector momentum shifts
  • 📱 Mobile apps with embedded market signals
  • 🧪 Backtesting systems for narrative-based portfolio strategies

Because the API supports OpenAI, Claude, Cursor, and Raycast integrations, your agents and LLM-powered tools can query live crypto intelligence in natural language—no additional parsing required.

Why the Hacker News Feature Matters

Token Metrics API just made it to the front page of Hacker News, one of the internet’s most trusted platforms for discovering high-impact developer tools.

This means:

  • 💬 A community of builders and engineers is already testing the API
  • 🧪 Feedback is pouring in, helping us evolve faster
  • 🚀 Your early adoption puts you ahead of the curve

If you’ve been waiting for the right time to integrate AI-native crypto signals into your product—this is it.

Get Started for Free

We’re offering 5,000 free API calls/month for every new developer.

Sign up, plug in your key, and build:

  • With one consistent schema
  • Across multiple clients
  • Without chasing multiple API docs

Your users don’t just want raw data anymore—they want insights. Token Metrics delivers those insights in real time, with zero guesswork.

Join the Developer Revolution

💥 Explore the API – Get your key in 30 seconds
💬 Join the Hacker News discussion – See what other devs are saying
📚 Browse Docs – View full endpoints and SDKs

One API. One schema. Smarter crypto apps.
The future of crypto building is AI-powered—and it starts here.

Research

Bullish or Bearish? Interpreting AI Signals in Today’s Volatile Crypto Market

Token Metrics Team
5 min
MIN

Introduction

Crypto moves fast — and traders who can't read the signs get left behind. But in a market where emotions dominate, how do you distinguish between a real trend and a fakeout? That’s where AI-powered trading signals come in.

Token Metrics AI monitors over 6,000 tokens using 80+ data points, from technical momentum to on-chain activity and social sentiment. Its bullish and bearish signals aren’t just flashes of color — they’re actionable, data-driven insights that can guide decisions in chaotic markets.

In this post, we break down how to interpret bullish and bearish signals, what they’ve been saying recently, and how to react when market direction flips suddenly.

What Are Bullish and Bearish Signals?

Let’s start with the basics:

  • Bullish Signal (Green Dot): Indicates that a token is showing signs of an upward trend based on combined technical, sentiment, and on-chain analysis.
  • Bearish Signal (Red Dot): Suggests that a token is losing momentum, and price downside or stagnation is likely.

But these signals aren’t standalone — they come with contextual grades, like the Trader Grade, which ranks signal strength from 0 to 100. This allows you to not just know the direction, but the confidence behind it.

What Happened Recently? The May 30 Flip

On May 30, 2025, Token Metrics AI issued a broad bearish flip across much of the market. That included:

  • Ethereum
  • Bittensor
  • Launchcoin
  • Many Real World Asset and L2 tokens

The AI signal flipped red, and Trader Grades fell across the board. Why? Here's what the AI detected:

  • Slowing volume
  • Negative sentiment shift
  • Liquidity thinning on DEXs
  • On-chain accumulation stalling

This wasn’t panic-driven — it was a data-driven, proactive warning that the cycle had peaked. In a world where most traders rely on lagging indicators or Twitter sentiment, this was an edge.

How to Interpret a Bullish Signal

A bullish signal isn’t an instant “buy” — it's a call to investigate. Here's what to check when a green dot appears:

✅ 1. Trader Grade Above 80

This means high conviction. If it's between 60–79, the trend is forming, but may lack strength.

✅ 2. Volume Confirmation

Price up + volume up = good. Price up + volume flat = caution.

✅ 3. Narrative Alignment

If the token fits a hot theme (like RWAs or AI), that adds strength to the signal.

✅ 4. Recent Price Action

Did the signal appear after a breakout, or just before? Entry timing depends on whether you're catching the beginning or chasing the middle of the trend.

✅ 5. Compare to Peers

If 3–5 similar tokens are also turning bullish, that indicates sector-wide rotation — a better entry environment.

How to Interpret a Bearish Signal

Red doesn’t mean "dump immediately" — it means it's time to tighten your risk.

❗ 1. Trader Grade Below 50

This indicates deteriorating conviction — exit or reduce exposure.

❗ 2. Volume Divergence

If price is flat but volume is fading, that’s a warning of a potential breakdown.

❗ 3. Signal Timing

Did the bearish flip happen near local highs? That’s often the best exit point.

❗ 4. Check for Repeats

Was this the second red dot in a week? That could confirm a longer-term downtrend.

❗ 5. BTC/ETH Context

If Bitcoin or ETH also flip bearish, it may suggest macro pressure, not just token-specific weakness.

Real-Time Examples from the Webinar

During the June 5 Token Metrics webinar, we walked through examples of how these signals worked in real time:

🟢 Bullish (April) – Launchcoin

Strong signal, grade in the 80s. Resulted in a massive short-term run.

🔴 Bearish (May 30) – Ethereum

Signal turned red around $3,490. Traders who followed it avoided the 55% drawdown that followed.

🔴 Bearish (June) – Fartcoin

After a 700% run-up, the signal flipped bearish with a low Trader Grade of ~24. Result? A slow bleed lower as sentiment cooled.

What Makes AI Signals Different from Traditional TA?

Feature                                                    Token Metrics AI                     Traditional TA

Combines social + on-chain                    ✅                                       ❌

Updated in real time                                 ✅                                       ❌

Machine learning trained on past data   ✅                                       ❌

Outputs confidence grade                       ✅                                       ❌

Adapts to new narratives                         ✅                                       ❌

This isn’t about moving averages or MACD — it’s about combining the entire digital footprint of a token to anticipate what comes next.

How to React to a Signal Flip

What do you do when your favorite token suddenly flips from bullish to bearish?

  1. Reduce exposure immediately — even if you don’t sell everything, cut risk.
  2. Check the Grade — if it’s falling, momentum is likely over.
  3. Watch Peer Tokens — if similar projects are also turning red, it confirms sector rotation.
  4. Set New Alerts — if the signal flips back to green, be ready to re-enter.

Your job isn’t to predict the market. It’s to respond to what the data is saying.

How to Combine AI Signals with a Strategy

Here’s a basic framework:

Entry

  • Bullish signal + Trader Grade > 80 = enter with full size.
  • Grade 60–79 = enter small or wait for confirmation.

Exit

  • Bearish signal = scale out or exit.
  • Grade < 50 = no new positions unless for short trades.

Risk

  • Position size scales with grade.
  • Only trade tokens with high liquidity and volume confirmation.

This keeps your system simple, repeatable, and data-driven.

Conclusion

In volatile markets, conviction matters. Token Metrics AI doesn’t just point up or down — it tells you how strong the trend is, how likely it is to last, and when it’s time to pivot.

Don’t trade on emotions. Don’t chase hype. Use the signals — and trust the grade.

Because in a market that never sleeps, it pays to have an AI watching your back.

Research

Crypto Market Cools Off: What Is Token Metrics AI Saying Now

Token Metrics Team
5 min
MIN

Introduction

The euphoria of April and May in the crypto market has officially hit the brakes. While traders were riding high just weeks ago, the mood has shifted — and the data confirms it. Token Metrics’ proprietary AI signals flipped bearish on May 30, and since then, the market has been slowly but steadily declining.

In this post, we break down what’s happened since the bearish signal, how major altcoins and sectors are reacting, and what Token Metrics’ indicators are telling us about what might come next.

The Big Picture: Cooling Off After a Hot Q1 and Q2 Start

The platform’s AI signal turned bearish on May 30 when the total crypto market cap hit $3.34 trillion. Since then, the momentum that defined early 2025 has reversed.

This wasn’t a sudden crash — it’s a slow bleed. The signal shift didn’t come from headline-driven panic, but from data-level exhaustion: volume softening, sentiment stalling, and trend strength fading across most tokens.

Token Metrics AI recognized the shift — and issued the warning.

What the Bearish Signal Means

The AI model analyzes over 80 metrics across price, volume, sentiment, and on-chain data. When key trends across these data sets weaken, the system flips from bullish (green) to bearish (red).

On May 30:

  • Trader Grades across most tokens declined
  • Signal sentiment flipped bearish
  • Momentum and velocity cooled down

According to the model, these were signs of a broad de-risking cycle — not just isolated weakness.

Sectors Showing Declines

Even tokens that had been performing well throughout Q2 began to stall or roll over.

🚨 Launch Coin

Previously one of the top performers in April, Launch Coin saw its grades decrease and price action softened.It may even be rebranding — a typical signal that a project is pivoting after a hype cycle.

🏦 Real World Assets (RWAs)

RWAs were hot in March–May, but by early June, volume and signal quality had cooled off significantly.

🔐 ZK and L2s

Projects like Starknet and zkSync, once dominant in trader attention, have seen signal strength drop, with many now scoring below 70.

The cooling effect is broad, touching narratives, sectors, and high-performing individual tokens alike.

The Bull-Bear Indicator in Action

One of the key tools used by Token Metrics is the Bull vs. Bear Indicator, which aggregates bullish vs. bearish signals across all tokens tracked.

As of early June:

  • The percentage of tokens with bullish signals dropped to its lowest since January.
  • New projects launching with strong grades also saw a decline.
  • Even community-favorite tokens began receiving “exit” alerts.

This isn’t fear — it’s fatigue.

How Traders Are Reacting

During the webinar, we noted that many users who rely on Token Metrics signals began rotating into stables once the May 30 signal flipped. Others reduced leverage, paused entries, or shifted into defensive plays like ETH and BTC.

This reflects an important philosophy:

"When the data changes, we change our approach."

Instead of trying to fight the tape or chase rebounds, disciplined traders are using the bearish signal to protect gains and preserve capital.

What About Ethereum and Bitcoin?

Even ETH and BTC, the two bellwether assets, aren’t immune.

  • Ethereum: Lost momentum after a strong May push. Its Trader Grade is dropping, and the AI signals currently reflect neutral-to-bearish sentiment.
  • Bitcoin: While still holding structure better than altcoins, it has also declined since peaking above $72k. Volume weakening and sentiment falling suggest caution.

In previous cycles, ETH and BTC acted as shelters during altcoin corrections. But now, even the majors show weakness — another reason why the bearish flip matters.

What Could Reverse This?

Abdullah Sarwar, head of research at Token Metrics, mentioned that for the signals to flip back bullish, we would need to see:

  • Increased momentum across top tokens
  • New narratives (e.g., real-world utility, cross-chain demand)
  • Higher volume and liquidity inflows
  • Positive macro or ETF news

Until then, the system will remain in defensive mode — prioritizing safety over chasing trades.

How to Act During a Bearish Signal

The team offered several tips for traders during this cooling-off period:

  1. Reduce exposure
    Don’t hold full positions in assets with weak grades or bearish signals.

  2. Watch signal reversals
    Keep an eye on sudden bullish flips with high Trader Grades — they often mark trend reversals.

  3. Rebalance into safer assets
    BTC, ETH, or even stables allow you to sit on the sidelines while others take unnecessary risk.

  4. Use Token Metrics filters
    Use the platform to filter for:

    • Top tokens with >80 grades
    • Signals that flipped bullish in the last 3 days
    • Low market-cap tokens with strong on-chain activity

These tools help find exceptions in a weak market.

Conclusion: Bearish Doesn’t Mean Broken

Markets cycle — and AI sees it before headlines do.

Token Metrics' bearish signal wasn’t a call to panic. It was a calibrated, data-backed alert that the trend had shifted — and that it was time to switch from offense to defense.

If you’re navigating this new phase, listen to the data. Use the tools. And most importantly, avoid trading emotionally.

The bull market might return. When it does, Token Metrics AI will flip bullish again — and you’ll be ready.

Research

Backtesting Token Metrics AI: Can AI Grades Really Predict Altcoin Breakouts?

Token Metrics Team
5 min
MIN

To test the accuracy of Token Metrics' proprietary AI signals, we conducted a detailed six-month backtest across three different tokens — Fartcoin, Bittensor ($TAO), and Ethereum. Each represents a unique narrative: memecoins, AI infrastructure, and blue-chip Layer 1s. Our goal? To evaluate how well the AI’s bullish and bearish signals timed market trends and price action.

Fartcoin:

The green and red dots on the following Fartcoin price chart represent the bullish and bearish market signals, respectively. Since Nov 26, 2024, Token Metrics AI has given 4 trading signals for Fartcoin. Let’s analyze each signal separately.

The Fartcoin chart above displays green and red dots that mark bullish and bearish signals from the Token Metrics AI, respectively. Over the last six months — starting November 26, 2024 — our system produced four significant trade signals for Fartcoin. Let’s evaluate them one by one.

The first major signal was bullish on November 26, 2024, when Fartcoin was trading at $0.29. This signal preceded a massive run-up, with the price topping out at $2.49. That’s an astounding 758% gain — all captured within just under two months. It’s one of the most powerful validations of the AI model’s ability to anticipate momentum early.

Following that rally, a bearish signal was triggered on January 26, 2025, just before the market corrected. Fartcoin retraced sharply, plunging 74.76% from the highs. Traders who acted on this bearish alert could have avoided substantial drawdowns — or even profited through short-side exposure.

On March 25, 2025, the AI turned bullish again, as Fartcoin traded near $0.53. Over the next several weeks, the token surged to $1.58, a 198% rally. Again, the AI proved its ability to detect upward momentum early.

Most recently, on June 1, 2025, Token Metrics AI flipped bearish once again. The current Trader Grade of 24.34 reinforces this view. For now, the system warns of weakness in the memecoin market — a trend that appears to be playing out in real-time.

Across all four trades, the AI captured both the explosive upside and protected traders from steep corrections — a rare feat in the volatile world of meme tokens.

Bittensor

Next, we examine Bittensor, the native asset of the decentralized AI Layer 1 network. Over the last six months, Token Metrics AI produced five key signals — and the results were a mixed bag but still largely insightful.

In December 2024, the AI turned bearish around $510, which preceded a sharp decline to $314 by February — a 38.4% drawdown. This alert helped traders sidestep a brutal correction during a high-volatility period.

On February 21, 2025, the system flipped bullish, but this trade didn't play out as expected. The price dropped 25.4% after the signal. Interestingly, the AI reversed again with a bearish signal just five days later, showing how fast sentiment and momentum can shift in emerging narratives like AI tokens.

The third signal marked a solid win: Bittensor dropped from $327 to $182.9 following the bearish call — another 44% drop captured in advance.

In April 2025, momentum returned. The AI issued a bullish alert on April 19, with TAO at $281. By the end of May, the token had rallied to over $474, resulting in a 68.6% gain — one of the best performing bullish signals in the dataset.

On June 4, the latest red dot (bearish) appeared. The model anticipates another downward move — time will tell if it materializes, but the track record suggests caution is warranted.

Ethereum

Finally, we analyze the AI’s predictive power for Ethereum, the second-largest crypto by market cap. Over the six-month window, Token Metrics AI made three major calls — and each one captured critical pivots in ETH’s price.

On November 7, 2024, a green dot (bullish) appeared when ETH was priced at $2,880. The price then surged to $4,030 in less than 40 days, marking a 40% gain. For ETH, such a move is substantial and was well-timed.

By December 24, the AI flipped bearish with ETH trading at $3,490. This signal was perhaps the most important, as it came ahead of a major downturn. ETH eventually bottomed out near $1,540 in April 2025, avoiding a 55.8% drawdown for those who acted on the signal.

In May 2025, the AI signaled another bullish trend with ETH around $1,850. Since then, the asset rallied to $2,800, creating a 51% gain.

These three trades — two bullish and one bearish — show the AI’s potential in navigating large-cap assets during both hype cycles and corrections.Backtesting Token Metrics AI across memecoins, AI narratives, and Ethereum shows consistent results: early identification of breakouts, timely exit signals, and minimized risk exposure. While no model is perfect, the six-month history reveals a tool capable of delivering real value — especially when used alongside sound risk management.

Whether you’re a trader looking to time the next big altcoin rally or an investor managing downside in turbulent markets, Token Metrics AI signals — available via the fastest crypto API — offer a powerful edge.

Backtesting Token Metrics AI across memecoins, AI narratives, and Ethereum shows consistent results: early identification of breakouts, timely exit signals, and minimized risk exposure. While no model is perfect, the six-month history reveals a tool capable of delivering real value — especially when used alongside sound risk management.

Whether you’re a trader looking to time the next big altcoin rally or an investor managing downside in turbulent markets, Token Metrics AI signals — available via the fastest crypto API — offer a powerful edge.

Research

Token Metrics API vs. CoinGecko API: Which Crypto API Should You Choose in 2025?

Token Metrics Team
7 min
MIN

As the crypto ecosystem rapidly matures, developers, quant traders, and crypto-native startups are relying more than ever on high-quality APIs to build data-powered applications. Whether you're crafting a trading bot, developing a crypto research platform, or launching a GPT agent for market analysis, choosing the right API is critical.

Two names dominate the space in 2025: CoinGecko and Token Metrics. But while both offer access to market data, they serve fundamentally different purposes. CoinGecko is a trusted source for market-wide token listings and exchange metadata. Token Metrics, on the other hand, delivers AI-powered intelligence for predictive analytics and decision-making.

Let’s break down how they compare—and why the Token Metrics API is the superior choice for advanced, insight-driven builders.

🧠 AI Intelligence: Token Metrics Leads the Pack

At the core of Token Metrics is machine learning and natural language processing. It’s not just a data feed. It’s an AI that interprets the market.

Features exclusive to Token Metrics API:

  • Trader Grade (0–100) – Short-term momentum score based on volume, volatility, and technicals
  • Investor Grade (0–100) – Long-term asset quality score using fundamentals, community metrics, liquidity, and funding
  • Bullish/Bearish AI Signals – Real-time alerts based on over 80 weighted indicators
  • Sector-Based Smart Indices – Curated index sets grouped by theme (AI, DeFi, Gaming, RWA, etc.)
  • Sentiment Scores – Derived from social and news data using NLP
  • LLM-Friendly AI Reports – Structured, API-returned GPT summaries per token
  • Conversational Agent Access – GPT-based assistant that queries the API using natural language

In contrast, CoinGecko is primarily a token and exchange aggregator. It offers static data: price, volume, market cap, supply, etc. It’s incredibly useful for basic info—but it lacks context or predictive modeling.

Winner: Token Metrics — The only crypto API built for AI-native applications and intelligent automation.

🔍 Data Depth & Coverage

While CoinGecko covers more tokens and more exchanges, Token Metrics focuses on providing actionable insights rather than exhaustively listing everything.

Feature                                                   Token Metrics API                                    CoinGecko API

Real-time + historical OHLCV              ✅                                                          ✅

Trader/Investor Grades                        ✅ AI-powered                                     ❌

Exchange Aggregation                         ✅ (Used in indices, not exposed)     ✅

Sentiment & Social Scoring                  ✅ NLP-driven                                     ❌

AI Signals                                               ✅                                                         ❌

Token Fundamentals                            ✅ Summary via deepdive         ⚠️ Limited

                                                                        endpoint

NFT Market Data                                  ❌                                                          ✅

On-Chain Behavior                               ✅ Signals + Indices                   ⚠️ Pro-only (limited)

If you're building something analytics-heavy—especially trading or AI-driven—Token Metrics gives you depth, not just breadth.

Verdict: CoinGecko wins on broad metadata coverage. Token Metrics wins on intelligence and strategic utility.

🛠 Developer Experience

One of the biggest barriers in Web3 is getting devs from “idea” to “prototype” without friction. Token Metrics makes that easy.

Token Metrics API Includes:

  • SDKs for Python, Node.js, and Postman
  • Quick-start guides and GitHub sample projects
  • Integrated usage dashboard to track limits and history
  • Conversational agent to explore data interactively
  • Clear, logical endpoint structure across 21 data types

CoinGecko:

  • Simple REST API
  • JSON responses
  • Minimal docs
  • No SDKs
  • No built-in tooling (must build from scratch)

Winner: Token Metrics — Serious devs save hours with ready-to-go SDKs and utilities.

📊 Monitoring, Quotas & Support

CoinGecko Free Tier:

  • 10–30 requests/min
  • No API key needed
  • Public endpoints
  • No email support
  • Rate limiting enforced via IP

Token Metrics Free Tier:

  • 5,000 requests/month
  • 1 request/min
  • Full access to AI signals, grades, rankings
  • Telegram & email support
  • Upgrade paths to 20K–500K requests/month

While CoinGecko’s no-login access is beginner-friendly, Token Metrics offers far more power per call. With just a few queries, your app can determine which tokens are gaining momentum, which are losing steam, and how portfolios should be adjusted.

Winner: Token Metrics — Better for sustained usage, scaling, and production reliability.

💸 Pricing & Value

Plan Feature                CoinGecko Pro            Token Metrics API

Entry Price                  ~$150/month                $99/month

AI Grades & Signals            ❌                               ✅ 

Sentiment Analytics            ❌                               ✅

Sector Index Insights          ❌                               ✅

NLP Token Summaries       ❌                                ✅

Developer SDKs                  ❌                                ✅

Token-Based Discounts     ❌                                ✅ (up to 35% with $TMAI)

For what you pay, Token Metrics delivers quant models and intelligent signal streams — not just raw price.

Winner: Token Metrics — Cheaper entry, deeper value.

🧠 Use Cases Where Token Metrics API Shines

  • Trading Bots
    Use Trader Grade and Signal endpoints to enter/exit based on AI triggers.
  • GPT Agents
    Generate conversational answers for “What’s the best AI token this week?” using structured summaries.
  • Crypto Dashboards
    Power sortable, filtered token tables by grade, signal, or narrative.
  • Portfolio Rebalancers
    Track real-time signals for tokens held, flag risk zones, and show sector exposure.
  • LLM Plugins
    Build chat-based investment tools with explainability and score-based logic.

🧠 Final Verdict: CoinGecko for Info, Token Metrics for Intelligence

If you're building a crypto price tracker, NFT aggregator, or exchange overview site, CoinGecko is a solid foundation. It’s reliable, broad, and easy to get started.

But if your product needs to think, adapt, or help users make better decisions, then Token Metrics API is in another class entirely.

You're not just accessing data — you're integrating AI, machine learning, and predictive analytics into your app. That’s the difference between showing the market and understanding it.

🔗 Ready to Build Smarter?

  • ✅ 5,000 free API calls/month
  • 🤖 Trader & Investor Grades
  • 📊 Live Bull/Bear signals
  • 🧠 AI-powered summaries and GPT compatibility
  • ⚡ 21 endpoints + Python/JS SDKs

👉 Start with Token Metrics API

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