Zurück zu den Vorlagen
WORKFLOW-VORLAGE
Tavily Search & Extract Template | Operasyon için n8n Otomasyon İş Akışı Şablonu (HTTP)
n8n için hazır otomasyon şablonu: Tavily Search & Extract Template. 10 düğüm. Entegrasyonlar: HTTP. JSON'u kopyalayıp n8n'e içe aktarın.
10 KnotenTavily_Search_Extract_Template-workflow.json
{"id": "QqbYH25we4JDZrZD","meta": {"instanceId": "31e69f7f4a77bf465b805824e303232f0227212ae922d12133a0f96ffeab4fef"},"name": "🔍🛠️ Tavily Search & Extract - Template","tags": [],"nodes": [{"id": "e029204b-2e05-4262-b464-7c1b3a995f91","name": "Sticky Note1","type": "n8n-nodes-base.stickyNote","position": [-780,-940],"parameters": {"color": 4,"width": 520,"height": 940,"content": "## Tavily API Search Endpoint\n\n**Base URL**: `https://api.tavily.com/search`\n**Method**: POST\n\n### Required Parameters\n- `query`: The search query string\n- `api_key`: Your Tavily API key\n\n### Optional Parameters\n- `search_depth`: \"basic\" or \"advanced\" (default: \"basic\")\n- `topic`: \"general\" or \"news\" (default: \"general\") \n- `max_results`: Maximum number of results to return (default: 5)\n- `include_images`: Include query-related images (default: false)\n- `include_answer`: Include AI-generated answer (default: false)\n- `include_raw_content`: Include parsed HTML content (default: false)\n- `include_domains`: List of domains to include\n- `exclude_domains`: List of domains to exclude\n- `time_range`: Filter by time range (\"day\", \"week\", \"month\", \"year\")\n- `days`: Number of days back for news results (default: 3)\n\n### Example Request\n```json\n{\n \"api_key\": \"tvly-YOUR_API_KEY\",\n \"query\": \"Who is Leo Messi?\",\n \"search_depth\": \"basic\",\n \"include_answer\": false,\n \"include_images\": true,\n \"max_results\": 5\n}\n```\n"},"typeVersion": 1},{"id": "6c47edec-6c6e-460d-b098-f9a26caa5f8e","name": "Sticky Note","type": "n8n-nodes-base.stickyNote","position": [-220,-940],"parameters": {"color": 6,"width": 640,"height": 720,"content": "## Tavily API Extract Endpoint \n\n**Base URL**: `https://api.tavily.com/extract`\n**Method**: POST\n\n### Required Parameters\n- `urls`: Single URL string or array of URLs\n- `api_key`: Your Tavily API key\n\n### Optional Parameters\n- `include_images`: Include extracted images (default: false)\n\n### Example Request\n```json\n{\n \"api_key\": \"tvly-YOUR_API_KEY\", \n \"urls\": [\n \"https://en.wikipedia.org/wiki/Artificial_intelligence\",\n \"https://en.wikipedia.org/wiki/Machine_learning\"\n ]\n}\n```"},"typeVersion": 1},{"id": "cacae1d1-c9ec-4c2f-ba5d-f782257697cc","name": "Sticky Note2","type": "n8n-nodes-base.stickyNote","position": [-1240,-940],"parameters": {"color": 3,"width": 420,"height": 540,"content": "## Tavily API Documentation\n\nThe Tavily REST API provides seamless access to Tavily Search, a powerful search engine for LLM agents, and Tavily Extract, an advanced web scraping solution optimized for LLMs.\n\nhttps://docs.tavily.com/docs/rest-api/examples\n\nhttps://docs.tavily.com/docs/rest-api/api-reference#parameters\n\nThe Tavily API provides two main endpoints for search and data extraction.\n\nThe API returns JSON responses containing:\n\n- Search results with titles, URLs, and content\n- Extracted raw content from specified URLs\n- Response time metrics\n- Any error messages for failed requests\n\n\n**Note**: Error handling should check for failed results in the response before processing.\n"},"typeVersion": 1},{"id": "16e977f4-e72d-474c-a04b-3f3ad51cc322","name": "Sticky Note3","type": "n8n-nodes-base.stickyNote","position": [-1240,-360],"parameters": {"width": 420,"height": 360,"content": "## Tavily Use Cases\n\n📜 Why Use Tavily API for Data Enrichment?\n\nhttps://docs.tavily.com/docs/use-cases/data-enrichment\n\n💡 Why Use Tavily API for Company Research?\n\nhttps://docs.tavily.com/docs/use-cases/company-research\n\n🔍 GPT Researcher\n\nhttps://docs.tavily.com/docs/gpt-researcher/introduction"},"typeVersion": 1},{"id": "7e4d0b3c-761d-42b9-bbbe-6ceb366fdc6f","name": "Tavily Search","type": "n8n-nodes-base.httpRequest","position": [-580,-180],"parameters": {"url": "https://api.tavily.com/search","body": "={\n \"api_key\": \"tvly-YOUR_API_KEY\",\n \"query\": \"What is n8n?\",\n \"search_depth\": \"basic\",\n \"include_answer\": false,\n \"include_images\": true,\n \"include_image_descriptions\": true,\n \"include_raw_content\": false,\n \"max_results\": 5,\n \"include_domains\": [],\n \"exclude_domains\": []\n}","method": "POST","options": {},"sendBody": true,"contentType": "raw","rawContentType": "application/json"},"typeVersion": 4.2},{"id": "47c0bfcf-a187-4b15-b208-2458c934d5f7","name": "Tavily Extract","type": "n8n-nodes-base.httpRequest","position": [40,-400],"parameters": {"url": "https://api.tavily.com/extract","body": "={\n \"api_key\": \"tvly-YOUR_API_KEY\",\n \"urls\": [\n \"https://en.wikipedia.org/wiki/Artificial_intelligence\"\n ]\n}","method": "POST","options": {},"sendBody": true,"contentType": "raw","rawContentType": "application/json"},"typeVersion": 4.2},{"id": "47791d39-087b-4104-aa0d-ef98deee945c","name": "Sticky Note4","type": "n8n-nodes-base.stickyNote","position": [-1940,-1020],"parameters": {"color": 7,"width": 660,"height": 1020,"content": "## Tavily API Overview\nhttps://docs.tavily.com/docs/welcome\n\nThe Tavily API provides a specialized search engine built specifically for AI agents and LLM applications, offering two main endpoints:\n\n## Search Endpoint\n\nThe search endpoint enables intelligent web searching with:\n\n**Key Features**\n- Query-based search with customizable depth (\"basic\" or \"advanced\")\n- Topic filtering for general or news content\n- Control over result quantity and content type\n- Domain inclusion/exclusion capabilities\n- Time range filtering and news date restrictions\n\n## Extract Endpoint\n\nThe extract endpoint focuses on content retrieval:\n\n**Key Features**\n- Single or batch URL processing\n- Raw content extraction\n- Optional image extraction\n- Structured response format\n\n## Implementation Benefits\n\n**For AI Integration**\n- Optimized for RAG (Retrieval Augmented Generation)\n- Single API call handles searching, scraping and filtering\n- Customizable response formats\n- Built-in content relevance scoring\n\n**Technical Advantages**\n- JSON response format\n- Error handling for failed requests\n- Response time metrics\n- Flexible content filtering options\n\n\nThis API is designed to simplify the integration of real-time web data into AI applications while ensuring high-quality, relevant results through intelligent processing and filtering."},"typeVersion": 1},{"id": "76b291bc-8c34-44f1-b366-09c9f51089e2","name": "Get Top Result","type": "n8n-nodes-base.set","position": [-700,140],"parameters": {"options": {},"assignments": {"assignments": [{"id": "a73e848c-f7e7-4b3a-ae99-930c577b47be","name": "results","type": "object","value": "={{ $json.results.first() }}"}]}},"typeVersion": 3.4},{"id": "4b098e57-eff2-4e70-9429-23b5c3d936c2","name": "Tavily Extract Top Search","type": "n8n-nodes-base.httpRequest","position": [-480,140],"parameters": {"url": "https://api.tavily.com/extract","body": "={\n \"api_key\": \"{{ $('Tavily API Key').item.json.api_key }}\",\n \"urls\": [\n \"{{ $json.results.url }}\"\n ]\n}","method": "POST","options": {},"sendBody": true,"contentType": "raw","rawContentType": "application/json"},"typeVersion": 4.2},{"id": "f593e164-1c9d-46e6-a619-39fe621c829f","name": "Filter > 90%","type": "n8n-nodes-base.set","position": [-920,140],"parameters": {"options": {},"assignments": {"assignments": [{"id": "8fd0cfc4-7adc-45f9-a278-d217e362ebfb","name": "results","type": "array","value": "={{ $json.results.filter(item => item.score > 0.80) }}"}]},"includeOtherFields": true},"typeVersion": 3.4},{"id": "fadd100c-0335-42c2-9c3d-48e6d17eb2f9","name": "Tavily Search Topic","type": "n8n-nodes-base.httpRequest","position": [-1140,140],"parameters": {"url": "https://api.tavily.com/search","body": "={\n \"api_key\": \"{{ $json.api_key }}\",\n \"query\": \"{{ $('Provide search topic via Chat window').item.json.chatInput }}\",\n \"search_depth\": \"basic\",\n \"include_answer\": false,\n \"include_images\": true,\n \"include_image_descriptions\": true,\n \"include_raw_content\": false,\n \"max_results\": 5,\n \"include_domains\": [],\n \"exclude_domains\": []\n}","method": "POST","options": {},"sendBody": true,"contentType": "raw","rawContentType": "application/json"},"typeVersion": 4.2},{"id": "1bc5a21f-0f96-4951-9c88-0bec00b9c586","name": "OpenAI Chat Model","type": "@n8n/n8n-nodes-langchain.lmChatOpenAi","position": [-240,300],"parameters": {"options": {}},"credentials": {"openAiApi": {"id": "jEMSvKmtYfzAkhe6","name": "OpenAi account"}},"typeVersion": 1.1},{"id": "994bb3ee-598b-4d3f-bcfc-16c9cca36657","name": "Summarize Web Page Content","type": "@n8n/n8n-nodes-langchain.chainLlm","position": [-260,140],"parameters": {"text": "=Summarize this web content and provide in Markdown format: {{ $json.results[0].raw_content }}","promptType": "define"},"typeVersion": 1.5},{"id": "d5520da7-f6bc-470e-ab96-e04097041f08","name": "Sticky Note5","type": "n8n-nodes-base.stickyNote","position": [-1680,40],"parameters": {"color": 5,"width": 1800,"height": 400,"content": "## Tavily Search and Extract with AI Summarization Example"},"typeVersion": 1},{"id": "9bd6c18e-aabf-4719-b9c4-ac91b36891a1","name": "Tavily API Key","type": "n8n-nodes-base.set","position": [-1360,140],"parameters": {"options": {},"assignments": {"assignments": [{"id": "035660a9-bb58-4ecb-bad3-7f4d017fa69f","name": "api_key","type": "string","value": "tvly-YOUR_API_KEY"}]}},"typeVersion": 3.4},{"id": "41f36ad7-7a2b-4732-89ec-fe6500768631","name": "Provide search topic via Chat window","type": "@n8n/n8n-nodes-langchain.chatTrigger","position": [-1580,140],"webhookId": "6b8f316b-776e-429a-8699-55f230c3a168","parameters": {"options": {}},"typeVersion": 1.1},{"id": "0213756a-35c4-46a8-9b79-2e8a81852177","name": "Sticky Note6","type": "n8n-nodes-base.stickyNote","position": [-1420,320],"parameters": {"color": 7,"height": 80,"content": "### Tavily API Key\nhttps://app.tavily.com/home"},"typeVersion": 1}],"active": false,"pinData": {},"settings": {"executionOrder": "v1"},"versionId": "e1f22fbb-9663-405c-b7b1-7e8b2d54ad0f","connections": {"Filter > 90%": {"main": [[{"node": "Get Top Result","type": "main","index": 0}]]},"Get Top Result": {"main": [[{"node": "Tavily Extract Top Search","type": "main","index": 0}]]},"Tavily API Key": {"main": [[{"node": "Tavily Search Topic","type": "main","index": 0}]]},"OpenAI Chat Model": {"ai_languageModel": [[{"node": "Summarize Web Page Content","type": "ai_languageModel","index": 0}]]},"Tavily Search Topic": {"main": [[{"node": "Filter > 90%","type": "main","index": 0}]]},"Tavily Extract Top Search": {"main": [[{"node": "Summarize Web Page Content","type": "main","index": 0}]]},"Provide search topic via Chat window": {"main": [[{"node": "Tavily API Key","type": "main","index": 0}]]}}}
Im n8n Editor: mit Strg+V einfügen→Workflow wird erstellt