Automate Solana trading with Gemini AI, multi-timeframe analysis & AFK Crypto
Try It Out!
The SOL/USDT Multi-Timeframe AI Market Analyzer and Trader with Telegram Approval is your fully automated Solana trading assistant powered by AI, AFK Crypto, and Telegram.
It runs hourly by default, fetches real-time market data for the SOL/USDT pair, and uses AI-driven logic to determine optimal entry, exit, and risk management strategies. You receive a Telegram approval message that lets you confirm or reject the trade instantly. Once approved, the bot executes trades via your AFK Crypto Wallet and keeps monitoring for Take-Profit or Stop-Loss triggers — sending alerts directly to Telegram when they’re hit.
This system combines automation with manual oversight, giving you AI precision with human approval control.
How It Works
-
Hourly Trigger – The workflow initiates every hour to analyze the current market status.
-
Fetch SOL Market Data (Crypto Compare) – Retrieves multiple timeframe data (1m, 5m, 1h) for trend, momentum, and volatility analysis.
-
AI Market Analyzer – Processes data through an AI agent to identify:
- Market sentiment (bullish, bearish, neutral)
- Recommended position: LONG / SHORT / HOLD
- Stop-Loss and Take-Profit levels
- Confidence rating and reasoning
-
Balance Check (AFK Crypto) – Verifies wallet balance via
/v1/wallets/balances?chain=solanaand calculates position size based on 1% risk. -
Telegram Approval Message – Sends a Telegram message containing AI insights and trade details with “✅ Approve” or “❌ Decline” buttons.
-
Trade Execution (AFK Trade API) – If approved, executes trade instantly via
/v1/trade/swapusing your AFK Crypto wallet. -
Live Trade Monitoring – Monitors SOL price in real-time. Once Take-Profit or Stop-Loss conditions are met:
- The position auto-closes.
- A Telegram notification is sent summarizing results and updated balance.
How to Use
-
Import the workflow into your n8n workspace.
-
Add your credentials:
- AFK Crypto API Key – For balance and trading operations.
- Telegram Bot Token + Chat ID – For sending messages and approvals.
- Crypto Compare API Key – For fetching market data.
-
Edit “Fetch SOL Market Data” Node: Update the endpoint if you want different timeframes or markets.
-
Set the schedule: Default trigger = every hour (modifiable in the “Every Hour” node).
-
Deploy and activate. The bot will send you hourly market analyses via Telegram — allowing you to approve or skip each suggested trade.
(Optional) Extend This Workflow
- Auto Mode: Allow the AI to auto-trade when confidence > 90%.
- Portfolio Sync: Log every trade and PnL automatically to Notion or Airtable.
- Risk Adjuster: Dynamically modify the 1% risk per trade based on balance or volatility.
- Multi-Pair Trading: Expand to include ETH/USDT or BTC/USDT using the same logic.
Requirements
- AFK Crypto Wallet + API Key
- Telegram Bot Token + Chat ID
- Crypto Compare API Key
- n8n Instance with HTTP Request, AI, and Telegram nodes enabled
AFK APIs Used
GET https://api.afkcrypto.com/v1/wallets/balances?chain=solanaPOST https://api.afkcrypto.com/v1/trade/swap
Summary
The SOL/USDT Multi-Timeframe AI Market Analyzer and Trader with Telegram Approval workflow is an intelligent trading automation system that merges AI analytics, Telegram decision prompts, and AFK Crypto execution.
It empowers you to make data-driven trading decisions — with AI doing the heavy lifting and you retaining the final say before every trade. A perfect hybrid between automation and control, optimized for active Solana traders who value precision and security.
Our Website: https://afkcrypto.com/ Check our blogs: https://www.afkcrypto.com/blog
Automate Solana Trading with Gemini AI Multi-Timeframe Analysis
This n8n workflow leverages the power of Google Gemini AI and multi-timeframe analysis to automate Solana (SOL) trading decisions on Gemini, notifying you via Telegram. It's designed to fetch real-time market data, analyze it with an AI agent, and then provide actionable trading insights.
Description
This workflow automates the process of analyzing Solana's market data across multiple timeframes using a Google Gemini AI agent. It fetches price data from a specified API, feeds it to the AI for analysis, and then sends a consolidated trading recommendation to a Telegram chat. This allows for automated, AI-driven insights into SOL trading without constant manual monitoring.
What it does
- Triggers on Schedule: The workflow starts at a predefined interval (e.g., every 5 minutes) to perform regular market analysis.
- Fetches Market Data: It makes an HTTP request to an external API to retrieve real-time price data for Solana.
- Prepares Data for AI: A Code node processes the fetched market data, likely formatting it or extracting relevant metrics for the AI agent.
- Analyzes with AI Agent (Google Gemini): The prepared data is fed into an AI Agent powered by Google Gemini. This agent is configured to perform multi-timeframe analysis on Solana and generate trading recommendations.
- Processes AI Output: The AI's response is then processed, likely to extract the core trading signal or recommendation.
- Conditional Action (Buy/Sell/Hold): An If node evaluates the AI's recommendation.
- If the AI recommends a "BUY" action, it proceeds to send a "BUY" signal to Telegram.
- If the AI recommends a "SELL" action, it proceeds to send a "SELL" signal to Telegram.
- If the AI recommends "HOLD" or any other action, it sends a "HOLD" signal to Telegram.
- Sends Telegram Notification: Based on the AI's analysis and the conditional logic, a message containing the trading recommendation (BUY, SELL, or HOLD) for Solana is sent to a specified Telegram chat.
- Waits for Next Cycle: After sending the notification, the workflow pauses for a short duration before completing, ready for its next scheduled run.
Prerequisites/Requirements
- n8n Instance: A running n8n instance (self-hosted or cloud).
- Google Gemini API Key: An API key for the Google Gemini Chat Model to enable AI analysis. This will need to be configured as an n8n credential.
- Telegram Bot Token & Chat ID: A Telegram bot token and the chat ID where you want to receive notifications. This will need to be configured as an n8n credential.
- Market Data API Endpoint: An accessible API endpoint that provides Solana market data. The current HTTP Request node is generic and will need to be configured with the specific URL and any necessary authentication.
Setup/Usage
- Import the Workflow: Download the provided JSON and import it into your n8n instance.
- Configure Credentials:
- Google Gemini Chat Model: Create a new credential for "Google Gemini Chat Model" and provide your API key.
- Telegram: Create a new credential for "Telegram API" and provide your Bot Token. You will also need to specify the
Chat IDin the Telegram node's configuration.
- Configure HTTP Request Node (ID: 19):
- Update the "HTTP Request" node with the URL of your chosen market data API for Solana.
- Configure any necessary headers, authentication, or query parameters to fetch the required data.
- Configure Code Node (ID: 834):
- Review the JavaScript code in the "Code" node. This node is responsible for parsing the response from your market data API and formatting it for the AI Agent. Adjust the code as needed to match the structure of your API's response.
- Configure AI Agent Node (ID: 1119):
- Ensure the "AI Agent" node is correctly linked to your Google Gemini Chat Model credential.
- Review the prompt given to the AI Agent to ensure it performs the desired multi-timeframe analysis and generates clear BUY/SELL/HOLD recommendations.
- Configure Telegram Node (ID: 49):
- Ensure the "Telegram" node is correctly linked to your Telegram credential.
- Enter the
Chat IDwhere you want to receive the trading signals.
- Activate the Workflow: Once configured, activate the workflow. It will run automatically based on the schedule defined in the "Schedule Trigger" node.
- Monitor: Monitor your Telegram chat for automated Solana trading recommendations.
Related Templates
Track competitor SEO keywords with Decodo + GPT-4.1-mini + Google Sheets
This workflow automates competitor keyword research using OpenAI LLM and Decodo for intelligent web scraping. Who this is for SEO specialists, content strategists, and growth marketers who want to automate keyword research and competitive intelligence. Marketing analysts managing multiple clients or websites who need consistent SEO tracking without manual data pulls. Agencies or automation engineers using Google Sheets as an SEO data dashboard for keyword monitoring and reporting. What problem this workflow solves Tracking competitor keywords manually is slow and inconsistent. Most SEO tools provide limited API access or lack contextual keyword analysis. This workflow solves that by: Automatically scraping any competitor’s webpage with Decodo. Using OpenAI GPT-4.1-mini to interpret keyword intent, density, and semantic focus. Storing structured keyword insights directly in Google Sheets for ongoing tracking and trend analysis. What this workflow does Trigger — Manually start the workflow or schedule it to run periodically. Input Setup — Define the website URL and target country (e.g., https://dev.to, france). Data Scraping (Decodo) — Fetch competitor web content and metadata. Keyword Analysis (OpenAI GPT-4.1-mini) Extract primary and secondary keywords. Identify focus topics and semantic entities. Generate a keyword density summary and SEO strength score. Recommend optimization and internal linking opportunities. Data Structuring — Clean and convert GPT output into JSON format. Data Storage (Google Sheets) — Append structured keyword data to a Google Sheet for long-term tracking. Setup Prerequisites If you are new to Decode, please signup on this link visit.decodo.com n8n account with workflow editor access Decodo API credentials OpenAI API key Google Sheets account connected via OAuth2 Make sure to install the Decodo Community node. Create a Google Sheet Add columns for: primarykeywords, seostrengthscore, keyworddensity_summary, etc. Share with your n8n Google account. Connect Credentials Add credentials for: Decodo API credentials - You need to register, login and obtain the Basic Authentication Token via Decodo Dashboard OpenAI API (for GPT-4o-mini) Google Sheets OAuth2 Configure Input Fields Edit the “Set Input Fields” node to set your target site and region. Run the Workflow Click Execute Workflow in n8n. View structured results in your connected Google Sheet. How to customize this workflow Track Multiple Competitors → Use a Google Sheet or CSV list of URLs; loop through them using the Split In Batches node. Add Language Detection → Add a Gemini or GPT node before keyword analysis to detect content language and adjust prompts. Enhance the SEO Report → Expand the GPT prompt to include backlink insights, metadata optimization, or readability checks. Integrate Visualization → Connect your Google Sheet to Looker Studio for SEO performance dashboards. Schedule Auto-Runs → Use the Cron Node to run weekly or monthly for competitor keyword refreshes. Summary This workflow automates competitor keyword research using: Decodo for intelligent web scraping OpenAI GPT-4.1-mini for keyword and SEO analysis Google Sheets for live tracking and reporting It’s a complete AI-powered SEO intelligence pipeline ideal for teams that want actionable insights on keyword gaps, optimization opportunities, and content focus trends, without relying on expensive SEO SaaS tools.
Generate song lyrics and music from text prompts using OpenAI and Fal.ai Minimax
Spark your creativity instantly in any chat—turn a simple prompt like "heartbreak ballad" into original, full-length lyrics and a professional AI-generated music track, all without leaving your conversation. 📋 What This Template Does This chat-triggered workflow harnesses AI to generate detailed, genre-matched song lyrics (at least 600 characters) from user messages, then queues them for music synthesis via Fal.ai's minimax-music model. It polls asynchronously until the track is ready, delivering lyrics and audio URL back in chat. Crafts original, structured lyrics with verses, choruses, and bridges using OpenAI Submits to Fal.ai for melody, instrumentation, and vocals aligned to the style Handles long-running generations with smart looping and status checks Returns complete song package (lyrics + audio link) for seamless sharing 🔧 Prerequisites n8n account (self-hosted or cloud with chat integration enabled) OpenAI account with API access for GPT models Fal.ai account for AI music generation 🔑 Required Credentials OpenAI API Setup Go to platform.openai.com → API keys (sidebar) Click "Create new secret key" → Name it (e.g., "n8n Songwriter") Copy the key and add to n8n as "OpenAI API" credential type Test by sending a simple chat completion request Fal.ai HTTP Header Auth Setup Sign up at fal.ai → Dashboard → API Keys Generate a new API key → Copy it In n8n, create "HTTP Header Auth" credential: Name="Fal.ai", Header Name="Authorization", Header Value="Key [Your API Key]" Test with a simple GET to their queue endpoint (e.g., /status) ⚙️ Configuration Steps Import the workflow JSON into your n8n instance Assign OpenAI API credentials to the "OpenAI Chat Model" node Assign Fal.ai HTTP Header Auth to the "Generate Music Track", "Check Generation Status", and "Fetch Final Result" nodes Activate the workflow—chat trigger will appear in your n8n chat interface Test by messaging: "Create an upbeat pop song about road trips" 🎯 Use Cases Content Creators: YouTubers generating custom jingles for videos on the fly, streamlining production from idea to audio export Educators: Music teachers using chat prompts to create era-specific folk tunes for classroom discussions, fostering interactive learning Gift Personalization: Friends crafting anniversary R&B tracks from shared memories via quick chats, delivering emotional audio surprises Artist Brainstorming: Songwriters prototyping hip-hop beats in real-time during sessions, accelerating collaboration and iteration ⚠️ Troubleshooting Invalid JSON from AI Agent: Ensure the system prompt stresses valid JSON; test the agent standalone with a sample query Music Generation Fails (401/403): Verify Fal.ai API key has minimax-music access; check usage quotas in dashboard Status Polling Loops Indefinitely: Bump wait time to 45-60s for complex tracks; inspect fal.ai queue logs for bottlenecks Lyrics Under 600 Characters: Tweak agent prompt to enforce fuller structures like [V1][C][V2][B][C]; verify output length in executions
Automate Dutch Public Procurement Data Collection with TenderNed
TenderNed Public Procurement What This Workflow Does This workflow automates the collection of public procurement data from TenderNed (the official Dutch tender platform). It: Fetches the latest tender publications from the TenderNed API Retrieves detailed information in both XML and JSON formats for each tender Parses and extracts key information like organization names, titles, descriptions, and reference numbers Filters results based on your custom criteria Stores the data in a database for easy querying and analysis Setup Instructions This template comes with sticky notes providing step-by-step instructions in Dutch and various query options you can customize. Prerequisites TenderNed API Access - Register at TenderNed for API credentials Configuration Steps Set up TenderNed credentials: Add HTTP Basic Auth credentials with your TenderNed API username and password Apply these credentials to the three HTTP Request nodes: "Tenderned Publicaties" "Haal XML Details" "Haal JSON Details" Customize filters: Modify the "Filter op ..." node to match your specific requirements Examples: specific organizations, contract values, regions, etc. How It Works Step 1: Trigger The workflow can be triggered either manually for testing or automatically on a daily schedule. Step 2: Fetch Publications Makes an API call to TenderNed to retrieve a list of recent publications (up to 100 per request). Step 3: Process & Split Extracts the tender array from the response and splits it into individual items for processing. Step 4: Fetch Details For each tender, the workflow makes two parallel API calls: XML endpoint - Retrieves the complete tender documentation in XML format JSON endpoint - Fetches metadata including reference numbers and keywords Step 5: Parse & Merge Parses the XML data and merges it with the JSON metadata and batch information into a single data structure. Step 6: Extract Fields Maps the raw API data to clean, structured fields including: Publication ID and date Organization name Tender title and description Reference numbers (kenmerk, TED number) Step 7: Filter Applies your custom filter criteria to focus on relevant tenders only. Step 8: Store Inserts the processed data into your database for storage and future analysis. Customization Tips Modify API Parameters In the "Tenderned Publicaties" node, you can adjust: offset: Starting position for pagination size: Number of results per request (max 100) Add query parameters for date ranges, status filters, etc. Add More Fields Extend the "Splits Alle Velden" node to extract additional fields from the XML/JSON data, such as: Contract value estimates Deadline dates CPV codes (procurement classification) Contact information Integrate Notifications Add a Slack, Email, or Discord node after the filter to get notified about new matching tenders. Incremental Updates Modify the workflow to only fetch new tenders by: Storing the last execution timestamp Adding date filters to the API query Only processing publications newer than the last run Troubleshooting No data returned? Verify your TenderNed API credentials are correct Check that you have setup youre filter proper Need help setting this up or interested in a complete tender analysis solution? Get in touch 🔗 LinkedIn – Wessel Bulte