{"passport":{"unfragile":{"@version":"1.0","version":"2026-05","artifact":{"id":"smithery_lizthedeveloper-semantic-pdf-indexer-mcp","slug":"lizthedeveloper-semantic-pdf-indexer-mcp","name":"semantic-pdf-indexer-mcp","type":"mcp","url":"https://github.com/lizTheDeveloper/pdf-indexer-mcp","page_url":"https://unfragile.ai/lizthedeveloper-semantic-pdf-indexer-mcp","categories":["mcp-servers"],"tags":["mcp","model-context-protocol","smithery:lizTheDeveloper/semantic-pdf-indexer-mcp"],"pricing":{"model":"open_source","free":true,"starting_price":null},"status":"active","verified":false},"capabilities":[{"id":"smithery_lizthedeveloper-semantic-pdf-indexer-mcp__cap_0","uri":"capability://data.processing.analysis.semantic.document.indexing.with.contextual.embeddings","name":"semantic document indexing with contextual embeddings","description":"This capability leverages advanced natural language processing techniques to create semantic embeddings of PDF documents, allowing for context-aware indexing. It utilizes a transformer-based model to generate embeddings that capture the meaning of the text, which are then stored in a vector database for efficient retrieval. This approach ensures that the indexed content is not only searchable but also semantically relevant, distinguishing it from traditional keyword-based indexing methods.","intents":["How can I index my PDF documents for semantic search?","I need to retrieve contextually relevant information from a large set of PDFs.","What is the best way to enhance search capabilities in my document management system?"],"best_for":["data scientists working with large document repositories","developers building semantic search applications"],"limitations":["Requires significant memory for storing embeddings, which may not scale well for extremely large datasets","Performance may degrade with very large PDFs due to processing time"],"requires":["Python 3.8+","Transformers library version 4.0+","Vector database setup (e.g., Pinecone, Weaviate)"],"input_types":["PDF documents"],"output_types":["structured data (embeddings), searchable index"],"categories":["data-processing-analysis","document-management"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"smithery_lizthedeveloper-semantic-pdf-indexer-mcp__cap_1","uri":"capability://search.retrieval.real.time.semantic.search.integration","name":"real-time semantic search integration","description":"This capability allows users to perform real-time semantic searches across indexed PDF documents through a RESTful API. It integrates with the Model Context Protocol (MCP) to facilitate seamless communication between the search interface and the underlying indexing engine. By employing efficient query processing and caching strategies, it ensures low-latency responses even with complex queries, making it suitable for interactive applications.","intents":["How can I implement real-time search for my indexed PDFs?","What API should I use to query my document index efficiently?","I need to build a user-friendly search interface for my PDF library."],"best_for":["developers creating document search applications","teams needing interactive search capabilities"],"limitations":["Dependent on network latency for API calls, which can affect performance","Limited to the capabilities of the underlying vector database for complex queries"],"requires":["Node.js 14+","Access to the MCP API","Configured vector database"],"input_types":["search queries (text)"],"output_types":["search results (structured data)"],"categories":["search-retrieval","api-integration"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"smithery_lizthedeveloper-semantic-pdf-indexer-mcp__cap_2","uri":"capability://automation.workflow.bulk.pdf.processing.and.indexing","name":"bulk pdf processing and indexing","description":"This capability enables users to process and index multiple PDF documents in bulk, significantly reducing the time required for large-scale indexing tasks. It employs asynchronous processing techniques and parallel execution to handle multiple files simultaneously, optimizing resource usage and throughput. This design choice allows for efficient scaling, making it ideal for organizations with extensive document collections.","intents":["How can I index a large batch of PDF files quickly?","What is the best way to automate the indexing of multiple documents?","I need to process hundreds of PDFs for my project efficiently."],"best_for":["enterprises with large document archives","developers automating document workflows"],"limitations":["Bulk processing may require substantial computational resources, leading to potential bottlenecks","Error handling for individual files may complicate the bulk process"],"requires":["Python 3.8+","Asynchronous processing library (e.g., asyncio)","Access to a scalable processing environment"],"input_types":["multiple PDF documents"],"output_types":["structured data (bulk indexed results)"],"categories":["automation-workflow","data-processing-analysis"],"confidence":0.5,"matches":0,"success_rate":0}],"trust":{"score":26,"verified":false,"data_access_risk":"high","permissions":["Python 3.8+","Transformers library version 4.0+","Vector database setup (e.g., Pinecone, Weaviate)","Node.js 14+","Access to the MCP API","Configured vector database","Asynchronous processing library (e.g., asyncio)","Access to a scalable processing environment"],"failure_modes":["Requires significant memory for storing embeddings, which may not scale well for extremely large datasets","Performance may degrade with very large PDFs due to processing time","Dependent on network latency for API calls, which can affect performance","Limited to the capabilities of the underlying vector database for complex queries","Bulk processing may require substantial computational resources, leading to potential bottlenecks","Error handling for individual files may complicate the bulk process","builder identity is not verified yet","no observed match outcomes yet"],"rank_breakdown":{"adoption":0.05,"quality":0.16,"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":"2026-05-24T12:16:26.915Z","last_scraped_at":"2026-05-03T15:19:46.450Z","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=lizthedeveloper-semantic-pdf-indexer-mcp","compare_url":"https://unfragile.ai/compare?artifact=lizthedeveloper-semantic-pdf-indexer-mcp"}},"signature":"H/9Yyr5Lp+tTh5p/WKOsix/BYoXr/LG6uUBCaFaW3GvA4hihQdTe2jkh4dpF8oT/ggE9/apYovm6phhl1jw7AQ==","signedAt":"2026-07-08T02:40:37.605Z","signedBy":"unfragile.ai","version":1},"_links":{"self":"https://unfragile.ai/api/v1/passport/lizthedeveloper-semantic-pdf-indexer-mcp","artifact":"https://unfragile.ai/lizthedeveloper-semantic-pdf-indexer-mcp","verify":"https://unfragile.ai/api/v1/verify?slug=lizthedeveloper-semantic-pdf-indexer-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"}}