{"passport":{"unfragile":{"@version":"1.0","version":"2026-05","artifact":{"id":"smithery_pbteja1998-sourcesyncai-mcp","slug":"pbteja1998-sourcesyncai-mcp","name":"SourceSync.ai MCP Server","type":"mcp","url":"https://sourcesync.ai","page_url":"https://unfragile.ai/pbteja1998-sourcesyncai-mcp","categories":["mcp-servers","rag-knowledge","documentation"],"tags":["mcp","model-context-protocol","smithery:pbteja1998/sourcesyncai-mcp"],"pricing":{"model":"open_source","free":true,"starting_price":null},"status":"active","verified":false},"capabilities":[{"id":"smithery_pbteja1998-sourcesyncai-mcp__cap_0","uri":"capability://data.processing.analysis.document.ingestion.and.indexing","name":"document ingestion and indexing","description":"This capability allows users to seamlessly ingest documents into the SourceSync.ai platform using a modular pipeline that supports various formats like PDF, DOCX, and Markdown. It utilizes a combination of text extraction libraries and indexing algorithms to create a searchable knowledge base, enabling efficient retrieval of information. The architecture is designed to handle large volumes of documents while maintaining quick access times through optimized indexing strategies.","intents":["How can I upload and index my documents for easy retrieval?","What formats can I use to ingest my files into the system?","How do I ensure my documents are searchable within the platform?"],"best_for":["teams managing large document repositories","researchers needing efficient document access"],"limitations":["Limited to specific document formats; unsupported formats may require conversion","Indexing may take time depending on document size"],"requires":["Node.js 14+","Access to the SourceSync.ai API"],"input_types":["text documents","PDFs","Markdown files"],"output_types":["structured data","searchable index"],"categories":["data-processing-analysis","document-management"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"smithery_pbteja1998-sourcesyncai-mcp__cap_1","uri":"capability://search.retrieval.semantic.search.capabilities","name":"semantic search capabilities","description":"The platform supports semantic search through advanced natural language processing techniques, leveraging embeddings to understand user queries contextually. By integrating with external AI models, it enhances the retrieval process, allowing users to find relevant documents based on meaning rather than keyword matching. This capability is built on a vector database that stores document embeddings for rapid similarity searches.","intents":["How can I perform a search that understands the context of my queries?","What methods are available for retrieving documents based on their content?","Can I find documents that are similar in meaning to a specific query?"],"best_for":["data scientists looking for advanced search functionalities","content creators needing relevant document retrieval"],"limitations":["Search results may vary based on the quality of embeddings; requires fine-tuning for optimal performance","Dependent on external AI models for embedding generation"],"requires":["Python 3.8+","Access to a vector database"],"input_types":["natural language queries"],"output_types":["search results","document references"],"categories":["search-retrieval","natural-language-processing"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"smithery_pbteja1998-sourcesyncai-mcp__cap_2","uri":"capability://tool.use.integration.api.orchestration.for.external.services","name":"api orchestration for external services","description":"This capability allows users to orchestrate API calls to various external services directly from the SourceSync.ai platform. It employs a schema-based approach to define API endpoints and their expected inputs/outputs, enabling seamless integration with third-party services like data enrichment APIs or machine learning models. The architecture supports asynchronous processing to enhance performance and responsiveness.","intents":["How can I connect my existing APIs to the SourceSync.ai platform?","What is the process for integrating external data sources into my workflows?","Can I automate API calls based on document events?"],"best_for":["developers building integrations with external services","teams looking to automate data workflows"],"limitations":["Requires thorough understanding of the external APIs; misconfigured endpoints can lead to failures","Limited to predefined schemas unless custom extensions are developed"],"requires":["Node.js 16+","API keys for external services"],"input_types":["API requests","JSON payloads"],"output_types":["API responses","structured data"],"categories":["tool-use-integration","workflow-automation"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"smithery_pbteja1998-sourcesyncai-mcp__cap_3","uri":"capability://memory.knowledge.knowledge.management.and.retrieval","name":"knowledge management and retrieval","description":"This capability enables users to manage and retrieve knowledge effectively by organizing documents into a structured knowledge base. It uses tagging and categorization to facilitate quick access to relevant information, and integrates with the semantic search functionality to enhance retrieval accuracy. The system is designed to support dynamic updates, ensuring that the knowledge base remains current and relevant.","intents":["How can I organize my documents for better knowledge management?","What features help me retrieve specific information quickly?","Can I update my knowledge base dynamically as new documents are added?"],"best_for":["knowledge workers needing organized document access","teams collaborating on shared knowledge bases"],"limitations":["Requires consistent tagging and categorization for optimal performance","Dynamic updates may introduce temporary inconsistencies"],"requires":["Node.js 14+","Access to the SourceSync.ai platform"],"input_types":["text documents","metadata"],"output_types":["structured knowledge base","retrieval results"],"categories":["memory-knowledge","document-management"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"smithery_pbteja1998-sourcesyncai-mcp__cap_4","uri":"capability://data.processing.analysis.document.version.control","name":"document version control","description":"This capability provides a robust version control system for documents, allowing users to track changes, revert to previous versions, and manage document histories. It employs a Git-like approach to versioning, where each change is logged, and users can view diffs between versions. This system ensures that users can maintain document integrity and collaborate effectively without losing track of changes.","intents":["How can I track changes made to my documents over time?","What features are available for reverting to earlier document versions?","Can I collaborate with my team while maintaining version history?"],"best_for":["teams collaborating on document-heavy projects","content creators needing to manage revisions"],"limitations":["Version control may introduce complexity in document management; requires user training","Performance may degrade with very large document histories"],"requires":["Node.js 14+","Access to the SourceSync.ai platform"],"input_types":["text documents","version metadata"],"output_types":["document history","version diffs"],"categories":["data-processing-analysis","document-management"],"confidence":0.5,"matches":0,"success_rate":0}],"trust":{"score":31,"verified":false,"data_access_risk":"high","permissions":["Node.js 14+","Access to the SourceSync.ai API","Python 3.8+","Access to a vector database","Node.js 16+","API keys for external services","Access to the SourceSync.ai platform"],"failure_modes":["Limited to specific document formats; unsupported formats may require conversion","Indexing may take time depending on document size","Search results may vary based on the quality of embeddings; requires fine-tuning for optimal performance","Dependent on external AI models for embedding generation","Requires thorough understanding of the external APIs; misconfigured endpoints can lead to failures","Limited to predefined schemas unless custom extensions are developed","Requires consistent tagging and categorization for optimal performance","Dynamic updates may introduce temporary inconsistencies","Version control may introduce complexity in document management; requires user training","Performance may degrade with very large document histories","builder identity is not verified yet","no observed match outcomes yet"],"rank_breakdown":{"adoption":0.05,"quality":0.35,"ecosystem":0.5900000000000001,"match_graph":0.25,"freshness":0.5,"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":"2026-05-24T12:16:27.443Z","last_scraped_at":"2026-05-03T15:18:54.202Z","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=pbteja1998-sourcesyncai-mcp","compare_url":"https://unfragile.ai/compare?artifact=pbteja1998-sourcesyncai-mcp"}},"signature":"ZliPCdGfR/rZcCq2CyEMPHNy365n+2c+qwqo30fL1Ba/aT06Ug9YGD+7V0thq2rGu97b/tJeM0gXScuZk80GAw==","signedAt":"2026-06-20T11:46:15.799Z","signedBy":"unfragile.ai","version":1},"_links":{"self":"https://unfragile.ai/api/v1/passport/pbteja1998-sourcesyncai-mcp","artifact":"https://unfragile.ai/pbteja1998-sourcesyncai-mcp","verify":"https://unfragile.ai/api/v1/verify?slug=pbteja1998-sourcesyncai-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"}}