Bybit Launches AI Skills: Powering AI Agents for Crypto Trading With Zero Setup, 253 API Endpoints and Growing

TheNewsCryptoPublished on 2026-03-13Last updated on 2026-03-13

Abstract

Bybit, the world's second-largest crypto exchange, has launched AI Trading Skill, a feature enabling users to execute trades, access market data, and manage assets using natural language through major AI assistants like ChatGPT and Claude. With zero-installation setup and compatibility across AI platforms, it offers access to 253 API endpoints covering market intelligence, spot and derivatives trading, Earn products, account management, and advanced features like WebSocket streams. The system includes security safeguards such as testnet trading simulations, mandatory user confirmations for live transactions, and secure API authentication. This release represents Bybit's most comprehensive AI integration to date, transforming complex trading operations into simple conversational commands.

Dubai, UAE, March 13th, 2026, Chainwire

Bybit, the world’s second-largest cryptocurrency exchange by trading volume, today announced the launch of AI Trading Skill, a feature that enables users to execute crypto trades, access market data, and manage assets using simple natural language through any major AI assistant, including ChatGPT, OpenClaw, Claude, Gemini, Cursor, and Windsurf. With zero installation, universal AI compatibility, and 253 API endpoints, the launch marks a significant step toward agentic trading — where AI interprets user intent and executes actions seamlessly.

Key Advantages

  • Zero installation: No Node Package Manager (NPM), Command Line Interface (CLI), Software Development Kit(SDK) or configuration files — get started instantly.
  • Universal AI compatibility: Works with all major AI platforms and assistants.
  • Automatic updates: The Skill updates automatically alongside Bybit’s platform, ensuring users always have access to the latest features.

Full Market Access, Powered by AI

Behind the natural-language interface lies Bybit’s complete trading ecosystem. With six modules, Bybit AI Skills enables everything from querying live prices to executing complex orders. The 253 API endpoints allow users to chain commands, follow up with additional queries, and manage their portfolio intuitively — all without ever touching a traditional trading interface.

  1. Market Intelligence: Querying real-time prices, candle lines, order book depth, and funding rates.
  2. Spot Trading: Executing market buy/sell, limit orders, and batch operations.
  3. Derivatives Trading: Leverage trading, take-profit/stop-loss, and conditional orders.
  4. Earn: Flexible Savings and On-Chain Earn.
  5. Account & Assets: Accessing account information, deposits, withdrawals, and currency conversion.
  6. Advanced Features: Real-time market intelligence and execution tools through WebSocket streams, including margin lending (e.g., “Borrow 10,000 USDT”), price differential trading (e.g., “Place a price difference order”), and RFQ pricing (e.g., “Get BTC options bulk pricing”).

Bybit has long been committed to unlocking trading power through AI. Previous releases, including TradeGPT and other platform AI tools, assisted users in making informed investment decisions across market analysis and strategy. With AI Trading Skill,, Bybit delivers its most comprehensive AI integration to date — end-to-end coverage across the entire trading and digital asset wealth management journey. By turning complex market operations into simple conversations, Bybit sets a new standard for what an intelligent trading experience can be.

Security Designed for Safe AI-Powered Trading

While the experience feels as simple as chatting with an AI assistant, Bybit has embedded multiple safeguards into the AI Trading Skills framework to ensure that user assets remain protected at every step.

New users are first guided through testnet trading, allowing them to experiment with AI-driven commands in a simulated environment before interacting with real funds. When switching to live trading, all transactions require explicit user confirmation, ensuring that traders retain full control over every order.

The Skill manages the connection between the AI assistant and Bybit’s infrastructure through secure API authentication, eliminating the need for users to manually configure complex credentials or expose sensitive information during setup. Every instruction issued by the AI is translated into precise API calls and executed only after passing platform security checks.

By combining conversational simplicity with layered security controls, Bybit ensures that AI-powered trading remains both intuitive and safe — giving users confidence to explore this new way of interacting with crypto markets, backed by enterprise-grade infrastructure.

To find out more about Bybit AI Skills, traders can visit: https://www.bybit.com/ai

For further technical details, users may visit: GitHub – Bybit AI Skills

#Bybit / #CryptoArk

About Bybit

Bybit is the world’s second-largest cryptocurrency exchange by trading volume, serving a global community of over 80 million users. Founded in 2018, Bybit is redefining openness in the decentralized world by creating a simpler, open, and equal ecosystem for everyone. With a strong focus on Web3, Bybit partners strategically with leading blockchain protocols to provide robust infrastructure and drive on-chain innovation. Renowned for its secure custody, diverse marketplaces, intuitive user experience, and advanced blockchain tools, Bybit bridges the gap between TradFi and DeFi, empowering builders, creators, and enthusiasts to unlock the full potential of Web3. Discover the future of decentralized finance at Bybit.com.

For more details about Bybit, please visit Bybit Press

For media inquiries, please contact: media@bybit.com

For updates, please follow: Bybit’s Communities and Social Media

Contact

Head of PR
Tony Au
Bybit
media@bybit.com

Related Questions

QWhat is Bybit AI Skills and what does it allow users to do?

ABybit AI Skills is a feature that enables users to execute crypto trades, access market data, and manage assets using simple natural language through any major AI assistant, including ChatGPT, Claude, and others, with zero installation required.

QWhat are the three key advantages of Bybit's new AI Trading Skill?

AThe three key advantages are: 1) Zero installation, requiring no NPM, CLI, SDK, or configuration files; 2) Universal AI compatibility with all major AI platforms and assistants; 3) Automatic updates that ensure users always have access to the latest features.

QHow many API endpoints does Bybit AI Skills provide access to, and what is one of the six functional modules it includes?

ABybit AI Skills provides access to 253 API endpoints. One of its six modules is 'Market Intelligence,' which allows for querying real-time prices, candle lines, order book depth, and funding rates.

QWhat security measures has Bybit implemented for its AI Trading Skill to protect user assets?

ABybit has implemented multiple safeguards, including a testnet trading environment for new users, a requirement for explicit user confirmation for all live transactions, and secure API authentication that manages the connection without users needing to configure complex credentials or expose sensitive information.

QHow does Bybit's AI Trading Skill represent an evolution from its previous AI tools like TradeGPT?

AWhile previous tools like TradeGPT assisted users in making informed investment decisions, the new AI Trading Skill represents Bybit's most comprehensive AI integration to date, providing end-to-end coverage across the entire trading and digital asset wealth management journey by turning complex operations into simple conversational interface.

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