Get real-time crypto token insights via Telegram with DexScreener and GPT-4o
Instantly access real-time decentralized exchange (DEX) insights directly in Telegram! This workflow integrates the DexScreener API with GPT-4o-powered AI and Telegram, allowing users to fetch the latest blockchain token analytics, liquidity pools, and trending tokens effortlessly. Ideal for crypto traders, DeFi analysts, and investors who need actionable market data at their fingertips.
How It Works
- A Telegram bot listens for user queries about tokens or trading pairs.
- The workflow interacts with the DexScreener API (no API key required) to fetch real-time data, including:
- Token fundamentals (profiles, images, descriptions, and links)
- Trending and boosted tokens (hyped projects, potential market movers)
- Trading pair analytics (liquidity, price action, volumes, volatility)
- Order and payment activity (transaction insights, investor movements)
- Liquidity pool depth (market stability, capital flows)
- Multi-chain pair comparisons (performance tracking across networks)
- An AI-powered language model (GPT-4o-mini) enhances responses for better insights.
- The workflow logs session data to improve user interaction tracking.
- The requested DEX insights are sent back via Telegram in an easy-to-read format.
What You Can Do with This Agent
This AI-driven Telegram bot enables you to:
✅ Track trending and boosted tokens before they gain mainstream traction.
✅ Monitor real-time liquidity pools to assess token stability.
✅ Analyze active trading pairs across different blockchains.
✅ Identify transaction trends by checking paid orders for tokens.
✅ Compare market activity with detailed trading pair analysis.
✅ Receive instant insights with AI-enhanced responses for deeper understanding.
Set Up Steps
- Create a Telegram Bot
- Use @BotFather on Telegram to create a bot and obtain an API token.
- Configure Telegram API Credentials in n8n
- Add your Telegram bot token under Telegram API credentials.
- Deploy and Test
- Send a query (e.g.,
"SOL/USDC") to your Telegram bot and receive real-time insights instantly!
- Send a query (e.g.,
🚀 Unlock powerful, real-time DEX insights directly in Telegram—no API key required!
📺 Setup Video Tutorial
Watch the full setup guide on YouTube:
Get Real-Time Crypto Token Insights via Telegram with Dexscreener and GPT-4o
This n8n workflow allows you to interact with a GPT-4o powered AI agent via Telegram to get real-time insights on crypto tokens using the Dexscreener API. Simply send a message to your Telegram bot with a query about a crypto token, and the AI agent will fetch relevant data and provide a concise summary.
What it does
- Listens for Telegram messages: The workflow is triggered whenever a new message is received by your configured Telegram bot.
- Processes chat messages with an AI Agent: The received message is fed into an AI Agent powered by GPT-4o. This agent uses a "Simple Memory" to maintain conversational context.
- Utilizes an HTTP Request Tool: The AI Agent is equipped with an "HTTP Request Tool" to interact with external APIs. In this case, it's configured to query the Dexscreener API for crypto token data.
- Generates and sends a response: The AI Agent processes the user's query, uses the HTTP Request Tool to get data from Dexscreener, summarizes the findings, and then sends the generated response back to the user via Telegram.
- Edits fields (Set node): A "Set" node is included in the workflow, likely for data transformation or formatting before the final Telegram message is sent, ensuring the output is clean and readable.
Prerequisites/Requirements
- n8n Instance: A running n8n instance.
- Telegram Bot Token: A Telegram bot token obtained from BotFather.
- OpenAI API Key: An API key for OpenAI (specifically for GPT-4o).
- Dexscreener API: While not explicitly configured in the provided JSON, the "HTTP Request Tool" is intended to interact with the Dexscreener API. You might need to configure the specific API endpoint and any necessary authentication within the "HTTP Request Tool" node.
Setup/Usage
- Import the workflow: Download the provided JSON and import it into your n8n instance.
- Configure Telegram Trigger:
- Click on the "Telegram Trigger" node.
- Add your Telegram Bot API credential.
- Activate the workflow.
- Configure OpenAI Chat Model:
- Click on the "OpenAI Chat Model" node.
- Add your OpenAI API credential.
- Ensure the model is set to
gpt-4oor a similar capable model.
- Configure HTTP Request Tool:
- Click on the "HTTP Request Tool" node.
- Configure the base URL and any necessary headers or authentication for the Dexscreener API. This tool will be used by the AI agent to fetch crypto data.
- Activate the workflow: Once all credentials are set up, activate the workflow.
Now, you can send messages to your Telegram bot asking questions about crypto tokens (e.g., "What is the current price of ETH on Uniswap?", "Tell me about the trading volume of SOL on Raydium"), and the AI agent will respond with insights.
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