Back to blog
Crypto Basics

Role of AI in Crypto Industry - Benefits, Risks and Uses

Learn everything about the role of artificial intelligence (AI) in the crypto industry and its uses in this descriptive guide.
Token Metrics Team
8 Minutes
Want Smarter Crypto Picks—Free?
See unbiased Token Metrics Ratings for BTC, ETH, and top alts.
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
 No credit card | 1-click unsubscribe

Artificial intelligence (AI) has become a buzzword in various industries, and the crypto industry is not an exception. AI is playing a vital role in the crypto industry by enhancing the efficiency, security, and transparency of various processes.

The crypto industry is experiencing a paradigm shift in the way it operates due to AI's advancements. To begin, it's essential to comprehend the significance of Artificial Intelligence (AI) in the world of cryptocurrencies. So let's start..

Importance of AI in Crypto Industry

In order to understand the importance of AI, we need to explore the various applications of AI in the crypto industry, including trading, fraud detection, security, and governance. We will also examine the impact of AI on the crypto industry and how it is transforming the future of finance.

Artificial intelligence in Trading

AI is revolutionizing the way trading is done in the crypto industry. With its advanced algorithms, AI can analyze vast amounts of data, identify trends, and predict market movements. This capability is crucial in a fast-paced market like the crypto industry, where timing is everything.

Moreover, AI can execute trades automatically based on predefined criteria, which can save traders a significant amount of time and effort. This automation eliminates human error, increases trading efficiency, and reduces the risk of losses.

Artificial intelligence in Fraud Detection

The crypto industry has faced several fraud cases in the past, which have raised concerns about its security. However, AI can help detect and prevent fraud in the industry. AI can analyze data from various sources, including social media, to identify fraudulent activities and alert the relevant authorities.

Additionally, AI can help prevent money laundering by tracking the movement of funds across the blockchain network. This capability can enhance the industry's transparency and make it more attractive to investors.

Artificial intelligence in Security

AI can also play a vital role in the security of the crypto industry. With its advanced algorithms, AI can identify and prevent cyber attacks, which have become increasingly common in the industry. AI can also detect vulnerabilities in the blockchain network and suggest ways to fix them.

Moreover, AI can help prevent hacking attempts by analyzing user behavior and identifying suspicious activities. This capability can enhance the security of the industry and protect investors' funds.

Artificial intelligence in Governance

AI can also improve the governance of the crypto industry. With its ability to analyze data and identify patterns, AI can help regulators identify potential risks and take necessary actions. AI can also help regulators develop policies and regulations that are more effective and efficient.

Moreover, AI can enhance the transparency of the industry by analyzing data on blockchain networks and providing insights into how they operate. This transparency can increase trust in the industry and attract more investors.

Benefits of Using AI in Crypto Trading

The use of AI in cryptocurrency trading has been increasing over the years due to its ability to analyze vast amounts of data, detect patterns, and make predictions. Let's explore some of the benefits of using AI in cryptocurrency trading.

1. Improved Efficiency‍

One of the most significant benefits of using AI in cryptocurrency trading is improved efficiency. AI can analyze large amounts of data from various sources in real-time, making it easier to identify profitable trades.

This capability saves traders a significant amount of time and effort by automating the trading process. Traders can also set specific criteria for trading, and the AI can execute trades automatically based on those criteria.

2. Accurate Market Predictions

AI has the ability to analyze vast amounts of data and detect patterns that are difficult for humans to see. This capability enables AI to make accurate price predictions about the future movement of cryptocurrencies. With its advanced algorithms, AI can analyze market trends and historical data to identify potential price movements.

3. Reduced Risk of Losses

By using AI, traders can reduce the risk of losses. AI can detect potential risks and help traders make informed decisions about when to buy or sell cryptocurrencies. AI can also execute trades automatically based on predefined criteria, which eliminates human error and reduces the risk of losses.

4. Improved Security

AI can also improve the security of cryptocurrency trading. With its advanced algorithms, AI can detect potential cyber attacks and protect traders' funds from being stolen. AI can also identify vulnerabilities in the blockchain network and suggest ways to fix them.

5. Increased Transparency

AI can increase transparency in cryptocurrency trading by analyzing data on the blockchain network. This capability enables traders to see how cryptocurrencies are moving and who is trading them. Increased transparency can enhance trust in the industry and attract more investors.

6. Enhanced Trading Strategies

AI can also enhance trading strategies by providing insights into market trends and identifying profitable trades. Traders can use this information to adjust their trading strategies and make more informed decisions. AI can also analyze the trading behavior of other traders and provide insights into how they are trading.

Risks associated with using AI in crypto

While using artificial intelligence (AI) in cryptocurrency trading has numerous benefits, it is not without risks. Lets see some of the risks associated with using AI in the crypto industry.

1. Over-reliance on AI

One of the most significant risks associated with using AI in cryptocurrency trading is over-reliance on AI. While AI can help traders make informed decisions, it is not infallible. Traders who rely solely on AI may miss critical market movements and make poor trading decisions. It is essential to use AI as a tool to aid in trading decisions, rather than relying entirely on it.

2. Limited Training Data

AI requires vast amounts of data to train its algorithms and make accurate predictions. However, the cryptocurrency industry is relatively new, and there is limited historical data available. This limitation can lead to inaccuracies in AI predictions, which can result in significant losses for traders.

3. Black Box Problem

Another risk associated with using AI in cryptocurrency trading is the black box problem. AI algorithms are often complex, and it can be challenging to understand how they arrive at their predictions. This lack of transparency can make it difficult for traders to trust AI decisions and make informed decisions about their trades.

4. Cybersecurity Risks

AI technology is still new and some systems are vulnerable to cyber attacks, which can compromise the security of traders' funds. Hackers can exploit vulnerabilities in AI algorithms to manipulate trades or steal funds. It is essential to implement robust cybersecurity measures to protect against these risks.

5. Bias in Algorithms

AI algorithms can be biased based on the data they are trained on. If the data is biased, the AI algorithm will make biased predictions, which can result in significant losses for traders. It is crucial to ensure that AI algorithms are trained on unbiased data to avoid this risk.

6. Regulatory Risks

The use of AI in cryptocurrency trading is a relatively new concept, and there is limited regulation surrounding its use. Traders who use AI may be subject to regulatory risks if they violate laws or regulations. It is essential to stay up to date on regulatory developments and ensure that AI systems comply with relevant laws and regulations.

Uses of AI in Crypto Space

Artificial intelligence (AI) has numerous uses in the field of cryptocurrency industry. The most significant use of AI in cryptocurrency space is for research and analysis. AI is used by many investors and traders for predicting market trends and making informed investment decisions. 

Machine learning algorithms can analyze vast amounts of data, including historical crypto price, market cap, trends, volume and many more data points to identify patterns and correlations that may indicate future price movements.

These are few common uses of AI in the crypto space - 

  • Cryptocurrency Market Analysis
  • Accurate Crypto Market Predictions
  • Crypto Market Sentiment Analysis 
  • Automated Crypto Trading Strategies
  • Monetizing Crypto Insights

One best example is Token Metrics itself, We utilize AI's capabilities to deliver high-performance analytics and precise data solutions to users. At Token Metrics, we integrate AI technology and human expertise into our products to provide accurate and reliable market analysis to our users. 

By leveraging AI algorithms, we can process and analyze vast amounts of data efficiently, allowing us to deliver insights and price predictions that aid users in making informed investment decisions. To learn more about the Token Metrics platform, head over to app.tokenmetrics.com and register now. 

The future of AI in Crypto Space

The future of AI in the crypto space is incredibly promising, as the technology continues to evolve and become more sophisticated. One area where AI is expected to make significant strides is in predicting market trends and analyzing large amounts of data quickly and accurately. 

As the crypto market becomes increasingly complex, AI will play a crucial role in identifying trends and patterns that human analysts may miss. AI-powered chatbots and virtual assistants will also become more prevalent, providing data backed suggestions on investment and support to traders and investors. 

Overall, the future of AI in the crypto space is exciting, and it is expected to revolutionize the way investors and traders approach the market.

Conclusion

In conclusion, AI is playing a vital role in the crypto industry by enhancing its efficiency, security, and transparency. AI is transforming the way trading is done, detecting and preventing fraud, improving security, and enhancing governance. The crypto industry is experiencing a paradigm shift in the way it operates due to AI's advancements, and the future looks bright.

Disclaimer

The information provided on this website does not constitute investment advice, financial advice, trading advice, or any other sort of advice and you should not treat any of the website's content as such.

Token Metrics does not recommend that any cryptocurrency should be bought, sold, or held by you. Do conduct your own due diligence and consult your financial advisor before making any investment decisions.

Build Smarter Crypto Apps &
AI Agents in Minutes, Not Months
Real-time prices, trading signals, and on-chain insights all from one powerful API.
Grab a Free API Key
About Token Metrics
Token Metrics: AI-powered crypto research and ratings platform. We help investors make smarter decisions with unbiased Token Metrics Ratings, on-chain analytics, and editor-curated “Top 10” guides. Our platform distills thousands of data points into clear scores, trends, and alerts you can act on.
30 Employees
analysts, data scientists, and crypto engineers
Daily Briefings
concise market insights and “Top Picks”
Transparent & Compliant
Sponsored ≠ Ratings; research remains independent
Want Smarter Crypto Picks—Free?
See unbiased Token Metrics Ratings for BTC, ETH, and top alts.
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
 No credit card | 1-click unsubscribe
Token Metrics Team
Token Metrics Team

Recent Posts

Research

APIs Explained: How They Power Apps and AI

Token Metrics Team
5

APIs are the invisible glue connecting modern software — from mobile apps and cloud services to AI agents and crypto dashboards. Understanding what an API is, how it works, and how to evaluate one is essential for builders, analysts, and product managers who need reliable data and interoperable systems. This guide breaks down APIs into practical components, shows common real-world use cases, and outlines security and integration best practices without jargon.

What an API Is and Why It Matters

API stands for "Application Programming Interface." At its core, an API is a contract between two software systems that defines how they exchange information. Instead of sharing raw databases or duplicating functionality, systems expose endpoints (URL patterns or function calls) that clients can use to request specific data or actions.

APIs matter because they enable modularity and reuse. Developers can consume services—such as authentication, payments, mapping, or market data—without rebuilding them. For example, a crypto portfolio app might fetch price feeds, on-chain metrics, and historical candles via multiple APIs rather than maintaining every data pipeline internally.

APIs also power automation and AI: machine learning models and AI agents frequently call APIs to retrieve fresh data, trigger workflows, or enrich decision-making pipelines. Tools like Token Metrics use APIs to combine price feeds, signals, and on-chain indicators into research products.

How APIs Work: Requests, Responses, and Data Formats

Most web APIs follow a simple request–response pattern over HTTP(S). A client sends a request to an endpoint and receives a response containing status information and payload data. Key elements to understand:

  • Endpoints: Specific URLs or routes that expose functionality, e.g., /v1/prices or /v1/orders.
  • Methods: HTTP verbs such as GET (read), POST (create), PUT/PATCH (update), and DELETE.
  • Authentication: API keys, OAuth tokens, or signed requests ensure only authorized clients can access certain endpoints.
  • Response codes: 200 for success, 4xx for client errors, 5xx for server errors—useful for error handling.
  • Data formats: JSON is the most common for modern APIs; XML and protocol buffers appear in legacy or high-performance systems.

Understanding these primitives helps teams design robust clients: retry logic for transient errors, pagination for large datasets, and schema validation for payload integrity.

Common Types of APIs and Real-World Use Cases

APIs come in several flavors depending on their design and purpose. Recognizing the differences helps you pick the right integration model.

  • REST APIs: Resource-oriented, stateless, and commonly use JSON. They’re widely adopted for web services.
  • GraphQL: A query language that allows clients to request only the fields they need, reducing over-fetching in complex data models.
  • WebSocket / Streaming APIs: For real-time updates (e.g., live price ticks, notifications). Useful in trading dashboards and live analytics.
  • gRPC / Protocol Buffers: High-performance binary RPCs for low-latency microservices.
  • On-chain / Blockchain APIs: Specialized endpoints that return transaction history, token balances, and contract events for blockchain analysis.

Use-case examples:

  1. A mobile app calls a REST API to authenticate users and load personalized content.
  2. An AI agent queries a streaming API to receive real-time signals for model inference (without polling).
  3. A crypto analytics platform aggregates multiple market and on-chain APIs to produce composite indicators.

Security, Rate Limits, and Best Practices for Integration

When integrating any external API, consider availability and trustworthiness alongside features. Key operational and security practices include:

  • Authentication & Secrets Management: Store API keys and tokens securely (secrets manager or environment variables), rotate credentials periodically, and avoid embedding keys in client-side code.
  • Rate Limiting & Throttling: Respect provider limits and implement exponential backoff and jitter to handle 429 responses gracefully.
  • Data Validation: Validate and sanitize incoming data to prevent schema drift or malicious payloads.
  • Monitoring & SLAs: Track error rates, latency, and uptime. Investigate providers’ SLA and status pages for critical dependencies.
  • Privacy & Compliance: Ensure data handling aligns with legal requirements and your organization’s policies, especially when personal or financial data is involved.

Selecting the right provider often requires scenario analysis: trade off latency vs. cost, historical depth vs. real-time freshness, and breadth of endpoints vs. ease of use. Well-documented APIs with client SDKs, clear versioning, and robust support reduce integration risk.

Build Smarter Crypto Apps & AI Agents with Token Metrics

Token Metrics provides real-time prices, trading signals, and on-chain insights all from one powerful API. Grab a Free API Key

FAQ: What is an API?

Q1: What’s the difference between an API and a web service?

An API is a broader concept: a set of rules for interacting with software. A web service is a type of API that specifically uses web protocols (HTTP) to exchange data between systems.

FAQ: How do I authenticate with an API?

Authentication methods vary: API keys for simple use cases, OAuth for delegated access, or HMAC signatures for high-security endpoints. Always follow the provider’s recommended flow and protect credentials.

FAQ: When should I use GraphQL over REST?

GraphQL is useful when clients need flexible queries and should avoid over- or under-fetching. REST is simpler and often sufficient for straightforward resource-based designs. Choose based on data complexity and client requirements.

FAQ: How do rate limits affect integrations?

Rate limits control how many requests you can make in a given window. Plan batching, caching, and backoff strategies to stay within limits while maintaining performance and reliability.

FAQ: Can APIs be used for real-time data?

Yes. Real-time needs are typically met with WebSocket or streaming APIs that push updates to clients. Polling REST endpoints frequently is possible but less efficient and may hit rate limits.

FAQ: How do I evaluate an API provider?

Look at documentation quality, authentication options, latency, historical data availability, SDKs, support channels, and uptime history. Proof-of-concept integrations and small-scale performance tests reveal practical fit.

Disclaimer

This article is educational and informational only. It does not constitute financial, legal, or investment advice. Evaluate APIs and providers based on your organization’s technical requirements, compliance needs, and risk tolerance before integrating.

Research

APIs Explained: How They Connect Apps and Data

Token Metrics Team
5

APIs power modern software by letting systems talk to one another. Whether you use a mobile app, connect a trading bot, or plug an AI model into a data feed, APIs are the plumbing that moves data and requests. This guide explains what an API is, how APIs work, common types and protocols, practical crypto and AI use cases, and design and security practices you should know as a developer or analyst.

What an API Is and How It Works

API stands for Application Programming Interface. Broadly, it is a contract that defines how one software component requests services or data from another. An API specifies:

  • Available endpoints or functions (what you can ask for)
  • Input and output formats (how to send and receive data)
  • Authentication and rate limits (who can use it and how often)

At runtime a client (for example, a web app) sends a request to an API endpoint on a server. The server validates the request, executes logic, and returns a response—usually structured data like JSON or XML. Think of an API as a standardized messenger that abstracts internal complexity and enforces clear expectations between systems.

Common API Types and Protocols

APIs differ by style and protocol. Key varieties include:

  • REST: Resource-oriented, uses HTTP methods (GET/POST/PUT/DELETE) and JSON. Widely adopted for web services.
  • GraphQL: Client-specified queries that can reduce over- or under-fetching by letting clients request exactly what they need.
  • gRPC: High-performance RPC framework using Protocol Buffers; common for internal microservices.
  • Webhooks: Server-to-client callbacks that push events instead of polling, useful for real-time notifications.

Protocol selection depends on latency, payload size, developer ergonomics, and whether the API is public, private, or internal to an organization.

APIs in Crypto and AI: Practical Use Cases

APIs are foundational in crypto and AI workflows. Examples include:

  • Market data: Endpoints that return prices, orderbook snapshots, and historical candles for trading and backtesting.
  • On-chain data: APIs that expose blockchain state, transactions, token balances, and smart contract events.
  • Execution: Trading APIs that allow order placement, cancellations, and account management (note: focus on technical integration, not trading advice).
  • AI model inputs: Data pipelines that feed structured market or on-chain data into models and agents for feature generation or monitoring.

For teams building crypto analytics or AI agents, structured and timely data is essential. For example, Token Metrics provides research tools that combine on-chain and market signals behind an API-friendly interface, illustrating how analytics platforms expose data and insights for downstream tools.

Design, Security, and Best Practices for APIs

Robust API design balances usability, performance, and safety. Key best practices include:

  1. Clear documentation: Describe endpoints, parameters, examples, and error codes to speed onboarding.
  2. Versioning: Use explicit versioning (v1, v2) to avoid breaking client integrations when you change behavior.
  3. Authentication & Authorization: Implement API keys, OAuth, or signed requests and scope keys to limit access.
  4. Rate limits & quotas: Protect backend systems and ensure fair use by enforcing sensible limits.
  5. Input validation & sanitization: Prevent injection attacks and ensure predictable behavior.
  6. Monitoring & observability: Track latency, error rates, and usage patterns to detect anomalies early.

Security is especially important for crypto-related endpoints that can expose sensitive account or on-chain actions. Design your API assuming adversaries will attempt to abuse endpoints and validate responses on the client side as well.

Build Smarter Crypto Apps & AI Agents with Token Metrics

Token Metrics provides real-time prices, trading signals, and on-chain insights all from one powerful API. Grab a Free API Key

FAQ: What is an API — Common Questions

How does an API differ from a library or SDK?

An API defines how to communicate with a service; a library is code you include in a project. An SDK bundles libraries, documentation, and tools to help developers use an API more easily.

What is the difference between REST and GraphQL?

REST exposes fixed endpoints for resources and often returns entire objects, while GraphQL lets clients specify exact fields to fetch. GraphQL can reduce data transfer for complex UIs but adds server-side complexity.

Are public APIs safe to use for production systems?

Public APIs can be used in production if they meet reliability, latency, and security requirements. Verify SLAs, implement retries and fallbacks, and isolate credentials using secure storage patterns.

How do I authenticate with most APIs?

Common methods include API keys, OAuth 2.0, JWTs, and signed requests. Choose mechanisms that match your threat model: short-lived tokens and scoped keys reduce exposure compared to long-lived secrets.

How can I test and monitor an API integration?

Use unit and integration tests with mocked responses, postman or curl for ad-hoc tests, and observability tools to monitor latency, error rates, and unexpected schema changes. Deploy health checks and alarming for critical endpoints.

What are typical rate limits and how should clients handle them?

Rate limits vary by provider; common patterns include requests-per-minute and burst allowances. Clients should implement exponential backoff, respect Retry-After headers, and cache responses where appropriate.

How does an API support AI agents?

APIs supply structured, machine-readable data that AI agents can ingest for feature generation, state tracking, or decision-making. Consistent schemas, timestamps, and low-latency endpoints improve model reliability.

Conclusion

APIs are the connective tissue of modern software, enabling modular design, data sharing, and integration across web, crypto, and AI systems. Understanding API types, security practices, and operational patterns helps teams design robust integrations and choose the right tooling for scale.

Disclaimer

This article is for educational purposes only. It provides technical explanations and practical guidance about APIs and related technologies. It does not constitute investment, legal, or professional advice.

Research

APIs Explained: How They Power Apps and Data

Token Metrics Team
5

APIs are one of the least visible yet most powerful pieces of modern software infrastructure. Whether you're building a mobile app, connecting to market data, or integrating an AI model, APIs are the bridges that let systems share data and functionality. This guide unpacks what an API is, how different API styles work, and practical steps to evaluate and use APIs safely and effectively.

What an API Is: A Practical Definition

An API—short for Application Programming Interface—is a set of rules and protocols that lets one software system request services or data from another. At its simplest, an API specifies the inputs a caller must provide, the format of those inputs, and the shape of the output it can expect. APIs abstract internal implementation details so developers can build on top of existing services without reinventing core functionality.

Key conceptual elements include:

  • Endpoints: Named URLs or addresses that expose specific functionality or data.
  • Requests & Responses: Standardized messages (often JSON) sent to and returned from endpoints.
  • Authentication: Mechanisms (API keys, OAuth tokens) that control who can access the interface.
  • Rate limits & quotas: Rules that protect services and ensure fair usage.

How APIs Work: The Mechanics

At a technical level, most modern APIs follow a request-response model. A client sends a request to an endpoint, the server processes that request using internal logic or data stores, and then returns a response. The most common flow includes:

  1. Client constructs a request (method, headers, body) according to the API specification.
  2. Client authenticates using the required scheme (API key, bearer token, etc.).
  3. Server validates input, applies business logic, and accesses data sources.
  4. Server returns a standardized response with status codes and a body payload.

APIs also include non-functional considerations: latency, consistency, error handling, and observability. Robust APIs document error codes, expected payloads, and examples to reduce integration friction.

Common API Types and When to Use Them

Not all APIs are the same. Choosing the right style depends on use case, performance needs, and complexity.

  • REST (Representational State Transfer): Widely used, HTTP-based, resource-oriented, typically JSON over GET/POST methods. Good for CRUD-style operations and public web services.
  • GraphQL: Client-driven queries that let callers request precisely the fields they need. Useful when reducing overfetching matters or when multiple clients require different views of the same data.
  • WebSocket: Full-duplex channels for real-time, low-latency communication. Common for live market feeds, chat systems, and push notifications.
  • RPC / gRPC: Procedure-call semantics with efficient binary serialization, often used in microservices and high-throughput internal systems.

In crypto and AI contexts, combinations are common: REST for configuration and historical data, WebSocket for live updates, and specialized RPC endpoints for blockchain node interactions.

Practical Uses, Evaluation, and Best Practices

APIs are used to access market data, execute trades (in regulated contexts), fetch on-chain metrics, call ML inference endpoints, and orchestrate microservices. When evaluating or integrating an API, consider:

  • Documentation quality: Clear examples, schemas, and code snippets shorten integration time.
  • Authentication & access models: Ensure the offered auth methods match your security needs and deployment model.
  • Rate limits and pricing: Understand throughput constraints and cost implications for production usage.
  • Data freshness and SLAs: Check update frequency, latency expectations, and uptime guarantees if available.
  • Error handling and retries: Use idempotent patterns and backoff strategies when calls fail temporarily.

For teams building AI agents or analytic dashboards, designing APIs with predictable schemas and clear versioning reduces downstream friction. AI-driven research platforms can augment manual analysis by normalizing data and providing signal overlays; for example, tools like Token Metrics integrate multiple data sources and can be accessed via APIs to feed models or dashboards.

Build Smarter Crypto Apps & AI Agents with Token Metrics

Token Metrics provides real-time prices, trading signals, and on-chain insights all from one powerful API. Grab a Free API Key

FAQ: What Is an API?

Q: How is an API different from a library or SDK?
A: A library is code included in an application at compile/runtime and runs locally; an SDK bundles libraries and tools for a platform. An API is an interface—often remote—that defines how to interact with a service that may run on different infrastructure.

FAQ: What security practices should I follow?

Q: How should I secure API access?
A: Use strong authentication (tokens, OAuth), enforce least privilege, rotate keys, use TLS for transport encryption, validate inputs server-side, and monitor usage for anomalies.

FAQ: What are rate limits and why do they matter?

Q: Why do APIs throttle requests?
A: Rate limits protect service stability, prevent abuse, and ensure fair access. Design clients to respect published limits and apply exponential backoff on failures.

FAQ: How do API versions work?

Q: What approaches are used for versioning?
A: Common patterns: URL versioning (/v1/...), header-based versioning, or content negotiation. Versioning maintains backward compatibility and lets providers evolve interfaces without breaking clients.

FAQ: How do I choose the right API style?

Q: REST, GraphQL, or WebSocket—how to decide?
A: Choose REST for straightforward resource access and broad compatibility, GraphQL when clients need flexible queries to minimize payloads, and WebSocket for real-time streaming or low-latency updates.

Disclaimer

This article is for informational purposes only and does not constitute financial, legal, or professional advice. It outlines technical concepts and best practices for understanding and integrating APIs. Evaluate services and compliance considerations independently before sending or acting on production data.

Choose from Platinum, Gold, and Silver packages
Reach with 25–30% open rates and 0.5–1% CTR
Craft your own custom ad—from banners to tailored copy
Perfect for Crypto Exchanges, SaaS Tools, DeFi, and AI Products