{"passport":{"unfragile":{"@version":"1.0","version":"2026-05","artifact":{"id":"smithery_menschmachine-pdfdancer-mcp","slug":"menschmachine-pdfdancer-mcp","name":"pdfdancer-mcp","type":"mcp","url":"https://github.com/MenschMachine/pdfdancer-mcp","page_url":"https://unfragile.ai/menschmachine-pdfdancer-mcp","categories":["mcp-servers"],"tags":["mcp","model-context-protocol","smithery:MenschMachine/pdfdancer-mcp"],"pricing":{"model":"open_source","free":true,"starting_price":null},"status":"active","verified":false},"capabilities":[{"id":"smithery_menschmachine-pdfdancer-mcp__cap_0","uri":"capability://data.processing.analysis.mcp.based.pdf.processing","name":"mcp-based pdf processing","description":"This capability allows for the processing of PDF documents using the Model Context Protocol (MCP), enabling seamless integration with various AI models. It leverages a modular architecture that allows different models to be plugged in for specific tasks like text extraction or summarization, ensuring flexibility and scalability. The design focuses on efficient data flow between the PDF content and the AI models, optimizing the processing time and resource usage.","intents":["How can I extract text from a PDF document using an AI model?","What is the best way to summarize a PDF file with AI?","Can I integrate multiple AI models for different PDF processing tasks?"],"best_for":["developers building AI-driven PDF applications","teams integrating AI with document workflows"],"limitations":["Limited to PDF format; other document types are not supported","Performance may vary based on the complexity of the PDF structure"],"requires":["Node.js 14+","MCP-compatible AI model"],"input_types":["PDF documents"],"output_types":["text","structured data"],"categories":["data-processing-analysis","document-processing"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"smithery_menschmachine-pdfdancer-mcp__cap_1","uri":"capability://tool.use.integration.dynamic.model.orchestration","name":"dynamic model orchestration","description":"This capability enables the orchestration of multiple AI models for varied tasks within the PDF processing workflow. By using a context-aware routing mechanism, it directs requests to the appropriate model based on the specific requirements of the task, such as text extraction, summarization, or data analysis. This orchestration is designed to minimize latency and maximize throughput by efficiently managing model resources.","intents":["How can I use different AI models for various tasks on the same PDF?","What is the best way to manage multiple AI models in a document processing pipeline?","Can I optimize the performance of my PDF processing by using multiple models?"],"best_for":["data scientists working on document analysis","developers creating multi-functional PDF tools"],"limitations":["Requires careful configuration of models to ensure compatibility","Potential overhead in managing multiple models may increase complexity"],"requires":["MCP-compatible AI models","Node.js 14+"],"input_types":["PDF documents","model configuration data"],"output_types":["text","structured data","model-specific outputs"],"categories":["tool-use-integration","workflow-automation"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"smithery_menschmachine-pdfdancer-mcp__cap_2","uri":"capability://data.processing.analysis.contextual.data.extraction","name":"contextual data extraction","description":"This capability focuses on extracting relevant information from PDF documents based on contextual understanding provided by integrated AI models. It uses natural language processing techniques to identify and extract key data points, such as names, dates, and important phrases, while considering the context of the document. This ensures that the extracted data is not only accurate but also meaningful in relation to the overall content.","intents":["How can I extract specific data points from a PDF based on context?","What methods are available for accurate data extraction from complex documents?","Can I improve the quality of extracted data by using AI?"],"best_for":["business analysts extracting insights from reports","developers building data extraction tools for PDFs"],"limitations":["Accuracy may vary depending on the complexity of the document's layout","Contextual understanding is limited to the capabilities of the integrated models"],"requires":["MCP-compatible AI model","Node.js 14+"],"input_types":["PDF documents"],"output_types":["structured data","text"],"categories":["data-processing-analysis","information-extraction"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"smithery_menschmachine-pdfdancer-mcp__cap_3","uri":"capability://data.processing.analysis.real.time.pdf.content.analysis","name":"real-time pdf content analysis","description":"This capability provides real-time analysis of PDF content, enabling users to gain insights and feedback as they interact with the document. It employs a streaming architecture that processes content on-the-fly, allowing for immediate responses to user queries or actions. This is particularly useful for applications requiring instant feedback, such as educational tools or collaborative platforms.","intents":["How can I analyze PDF content in real-time during user interactions?","What tools can provide instant feedback on PDF documents?","Can I create an interactive PDF application that responds to user input?"],"best_for":["developers creating interactive PDF applications","educators using PDFs for teaching"],"limitations":["May require significant computational resources for complex documents","Real-time performance can be affected by network latency"],"requires":["Node.js 14+","MCP-compatible AI model"],"input_types":["PDF documents","user interaction data"],"output_types":["text","feedback data"],"categories":["data-processing-analysis","real-time-interaction"],"confidence":0.5,"matches":0,"success_rate":0}],"trust":{"score":26,"verified":false,"data_access_risk":"moderate","permissions":["Node.js 14+","MCP-compatible AI model","MCP-compatible AI models"],"failure_modes":["Limited to PDF format; other document types are not supported","Performance may vary based on the complexity of the PDF structure","Requires careful configuration of models to ensure compatibility","Potential overhead in managing multiple models may increase complexity","Accuracy may vary depending on the complexity of the document's layout","Contextual understanding is limited to the capabilities of the integrated models","May require significant computational resources for complex documents","Real-time performance can be affected by network latency","builder identity is not verified yet","no observed match outcomes yet"],"rank_breakdown":{"adoption":0.05,"quality":0.18,"ecosystem":0.48999999999999994,"match_graph":0.25,"freshness":0.6,"weights":{"adoption":0.25,"quality":0.25,"ecosystem":0.15,"match_graph":0.23,"freshness":0.12}},"observed_outcomes":{"matches":0,"success_rate":0,"avg_confidence":0,"top_intents":[],"last_matched_at":null},"maintenance":{"status":"active","updated_at":"2026-05-24T12:16:27.442Z","last_scraped_at":"2026-05-03T15:19:15.092Z","last_commit":null},"community":{"stars":null,"forks":null,"weekly_downloads":null,"model_downloads":null,"model_likes":null}},"distribution":{"claim_url":"https://unfragile.ai/submit?claim=menschmachine-pdfdancer-mcp","compare_url":"https://unfragile.ai/compare?artifact=menschmachine-pdfdancer-mcp"}},"signature":"jUfla2cPerYIlbM58I/ZVAXZbg3nj0hprCSIMXbSpc/jrkuJoziomgRaHLu74bm8KMbMAhalgWJYbBFQ/iJ+Bg==","signedAt":"2026-06-19T14:51:59.758Z","signedBy":"unfragile.ai","version":1},"_links":{"self":"https://unfragile.ai/api/v1/passport/menschmachine-pdfdancer-mcp","artifact":"https://unfragile.ai/menschmachine-pdfdancer-mcp","verify":"https://unfragile.ai/api/v1/verify?slug=menschmachine-pdfdancer-mcp","publicKey":"https://unfragile.ai/api/v1/trust-passport-public-key","spec":"https://unfragile.ai/trust","schema":"https://unfragile.ai/schema.json","docs":"https://unfragile.ai/docs"}}