{"passport":{"unfragile":{"@version":"1.0","version":"2026-05","artifact":{"id":"pinecone-db","slug":"pinecone","name":"Pinecone","type":"api","url":"https://www.pinecone.io","page_url":"https://unfragile.ai/pinecone","categories":["developer-tools","database","rag","infrastructure"],"tags":["vector-database","embeddings","similarity-search","serverless","rag"],"pricing":{"model":"freemium","free":true,"starting_price":"$25/mo"},"status":"active","verified":false},"capabilities":[{"id":"pinecone-db__cap_0","uri":"capability://search.retrieval.managed.vector.similarity.search","name":"managed vector similarity search","description":"Pinecone implements a managed vector similarity search by utilizing a serverless architecture that auto-scales to zero, allowing it to handle billions of embeddings efficiently. It employs advanced indexing techniques to ensure sub-second response times for similarity searches, regardless of the scale of data. The architecture supports both sparse and dense hybrid search, enabling more flexible querying options for various embedding types.","intents":["How can I perform similarity searches on large datasets of embeddings?","I need to quickly retrieve similar items based on vector representations.","What is the best way to search through billions of embeddings efficiently?"],"best_for":["data scientists building AI applications requiring fast similarity searches"],"limitations":["Cloud-only service; no self-hosted option available","Can become expensive at scale with high-dimensional embeddings"],"requires":["API key for Pinecone","Python 3.6+ or Node.js 12+"],"input_types":["vectors","text queries"],"output_types":["similarity scores","metadata"],"categories":["search-retrieval","vector-database"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"pinecone-db__cap_1","uri":"capability://data.processing.analysis.batch.upsert.operations","name":"batch upsert operations","description":"Pinecone supports batch upsert operations, allowing users to insert or update multiple records in a single API call. This is achieved through a JSON request format that can handle arrays of vectors and associated metadata, reducing the overhead of multiple network requests and improving performance for large data ingestion tasks.","intents":["How can I efficiently upload large volumes of embeddings to my vector database?","What is the best way to update multiple records in Pinecone at once?","I need to insert a batch of embeddings without making individual requests."],"best_for":["developers managing large datasets in AI applications"],"limitations":["Specific constraints on max payload size are not detailed","Rate limits may apply based on the tier"],"requires":["API key for Pinecone","Python 3.6+ or Node.js 12+"],"input_types":["arrays of vectors"],"output_types":["success status","updated metadata"],"categories":["data-processing-analysis","vector-database"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"pinecone-db__cap_2","uri":"capability://search.retrieval.metadata.filtering.in.similarity.search","name":"metadata filtering in similarity search","description":"Pinecone enables metadata filtering during similarity searches by allowing users to specify conditions on metadata fields in their queries. This is implemented through a structured query language that integrates seamlessly with the vector search, enabling refined results based on additional context provided by metadata.","intents":["How can I filter similarity search results based on specific metadata attributes?","I need to refine my search results to only include items with certain characteristics.","What options do I have for combining metadata with vector searches?"],"best_for":["developers needing to enhance search relevance with contextual data"],"limitations":["Complex queries may require deeper understanding of metadata structure","Performance may vary based on metadata complexity"],"requires":["API key for Pinecone","Python 3.6+ or Node.js 12+"],"input_types":["vector queries with metadata filters"],"output_types":["filtered similarity results","metadata"],"categories":["search-retrieval","vector-database"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"pinecone-db__cap_3","uri":"capability://data.processing.analysis.real.time.performance.metrics.retrieval","name":"real-time performance metrics retrieval","description":"Pinecone provides endpoints for retrieving real-time performance metrics and usage statistics, allowing users to monitor the health and efficiency of their vector database operations. This is achieved through dedicated API endpoints that return JSON-formatted data on query latency, throughput, and resource utilization, enabling proactive management of the database.","intents":["How can I monitor the performance of my Pinecone instance?","What metrics are available to track the efficiency of my similarity searches?","I need to analyze usage statistics for my vector database."],"best_for":["system administrators overseeing database performance"],"limitations":["Specific metrics and thresholds for alerts are not defined","Rate limits may apply to metrics retrieval"],"requires":["API key for Pinecone","Python 3.6+ or Node.js 12+"],"input_types":["API requests for metrics"],"output_types":["JSON performance metrics"],"categories":["data-processing-analysis","monitoring"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"pinecone-db__cap_4","uri":"capability://data.processing.analysis.namespace.management.for.multi.tenancy","name":"namespace management for multi-tenancy","description":"Pinecone supports namespace management, allowing users to create isolated environments within the same database instance for different applications or teams. This is implemented through a logical separation of data within the same physical infrastructure, providing a cost-effective solution for multi-tenancy while ensuring data privacy and security.","intents":["How can I manage multiple projects within a single Pinecone instance?","What is the best way to ensure data separation for different teams using Pinecone?","I need to create isolated environments for testing and production in my vector database."],"best_for":["teams managing multiple applications or projects within a single database"],"limitations":["Complexity in managing multiple namespaces may require additional oversight","Performance may vary based on namespace usage"],"requires":["API key for Pinecone","Python 3.6+ or Node.js 12+"],"input_types":["namespace creation requests"],"output_types":["namespace status","success confirmation"],"categories":["data-processing-analysis","database-management"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"pinecone-db__headline","uri":"capability://data.processing.analysis.managed.vector.database.for.ai.applications","name":"managed vector database for ai applications","description":"Pinecone is a managed vector database designed specifically for AI applications, enabling fast and scalable similarity search for billions of embeddings without the need for infrastructure management.","intents":["best managed vector database","vector database for AI applications","scalable similarity search solutions","vector database with serverless architecture","RAG framework for production use"],"best_for":["AI applications","production RAG systems"],"limitations":["cloud-only","cost at scale"],"requires":["internet connection"],"input_types":["vector embeddings"],"output_types":["similarity search results"],"categories":["data-processing-analysis"],"confidence":0.5,"matches":0,"success_rate":0}],"trust":{"score":85,"verified":false,"data_access_risk":"high","permissions":["API key for Pinecone","Python 3.6+ or Node.js 12+","internet connection"],"failure_modes":["Cloud-only service; no self-hosted option available","Can become expensive at scale with high-dimensional embeddings","Specific constraints on max payload size are not detailed","Rate limits may apply based on the tier","Complex queries may require deeper understanding of metadata structure","Performance may vary based on metadata complexity","Specific metrics and thresholds for alerts are not defined","Rate limits may apply to metrics retrieval","Complexity in managing multiple namespaces may require additional oversight","Performance may vary based on namespace usage","builder identity is not verified yet","no observed match outcomes yet"],"rank_breakdown":{"adoption":0.82,"quality":0.85,"ecosystem":0.49999999999999994,"match_graph":0.25,"freshness":0.9,"weights":{"adoption":0.25,"quality":0.25,"ecosystem":0.1,"match_graph":0.28,"freshness":0.12}},"observed_outcomes":{"matches":0,"success_rate":0,"avg_confidence":0,"top_intents":[],"last_matched_at":null},"maintenance":{"status":"active","updated_at":"2026-05-24T12:34:13.304Z","last_scraped_at":null,"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=pinecone","compare_url":"https://unfragile.ai/compare?artifact=pinecone"}},"signature":"vj2r/NOsjdn5RpcpnsKSqsK5LZLvyjkLj89TwYR5oXjvmt/g0O+uCnf70tyXRODz19I0GxMvjrjNIT71qCDLDw==","signedAt":"2026-06-20T02:21:06.111Z","signedBy":"unfragile.ai","version":1},"_links":{"self":"https://unfragile.ai/api/v1/passport/pinecone","artifact":"https://unfragile.ai/pinecone","verify":"https://unfragile.ai/api/v1/verify?slug=pinecone","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"}}