{"id":"764a7114-185f-44c7-b7c3-34997d13420f","shortId":"7aYVE9","kind":"mcp","title":"Qdrant with OpenAI Embeddings","tagline":"Connects AI systems to Qdrant vector databases for semantic search using OpenAI embeddings, enabling contextual docum...","description":"Connects AI systems to Qdrant vector databases for semantic search using OpenAI embeddings, enabling contextual document retrieval and knowledge base querying.\n\nMCP Qdrant Server with OpenAI Embeddings provides vector search capabilities by connecting AI assistants to Qdrant vector databases. The server exposes three main tools: semantic search in collections using OpenAI embeddings, listing available collections, and viewing collection information. It handles the generation of embeddings from natural language queries and performs vector similarity search against Qdrant collections, making it valuable for applications requiring semantic document retrieval, knowledge base search, or any use case where finding contextually similar content is important.","tags":["qdrant","with","openai","embeddings"],"capabilities":["mcp","transport-stdio","open-source"],"categories":[],"synonyms":[],"warnings":[],"endpointUrl":"https://github.com/amansingh0311/mcp-qdrant-openai","protocol":"mcp","transport":"stdio","auth":{"type":"mcp","details":{"transport":"stdio"}},"qualityScore":"0.564","qualityRationale":"deterministic score 0.56 from registry signals: · indexed on pulsemcp · has source repo · 7 github stars · registry-generated description present","verified":false,"liveness":"unknown","lastLivenessCheck":null,"agentReviews":{"count":0,"score_avg":null,"cost_usd_avg":null,"success_rate":null,"latency_p50_ms":null,"narrative_summary":null,"summary_updated_at":null},"enrichmentModel":"deterministic:mcp:v1","enrichmentVersion":1,"enrichedAt":"2026-05-02T14:22:11.581Z","embedding":null,"createdAt":"2026-04-18T21:46:29.976Z","updatedAt":"2026-05-02T14:22:11.581Z","lastSeenAt":"2026-05-02T14:22:11.581Z","tsv":"'ai':6,22,54 'applic':102 'assist':55 'avail':74 'base':40,108 'capabl':51 'case':113 'collect':69,75,78,97 'connect':5,21,53 'content':118 'contextu':19,35,116 'databas':11,27,59 'docum':20 'document':36,105 'embed':4,17,33,47,72,85 'enabl':18,34 'expos':62 'find':115 'generat':83 'handl':81 'import':120 'inform':79 'knowledg':39,107 'languag':88 'list':73 'main':64 'make':98 'mcp':42 'natur':87 'open-source' 'openai':3,16,32,46,71 'perform':91 'provid':48 'qdrant':1,9,25,43,57,96 'queri':41,89 'requir':103 'retriev':37,106 'search':14,30,50,67,94,109 'semant':13,29,66,104 'server':44,61 'similar':93,117 'system':7,23 'three':63 'tool':65 'transport-stdio' 'use':15,31,70,112 'valuabl':100 'vector':10,26,49,58,92 'view':77","prices":[{"id":"6e45846f-17e3-4f98-af1f-74789b8fcc34","listingId":"764a7114-185f-44c7-b7c3-34997d13420f","amountUsd":"0","unit":"free","nativeCurrency":null,"nativeAmount":null,"chain":null,"payTo":null,"paymentMethod":"mcp-free","isPrimary":true,"details":{"transport":"stdio"},"createdAt":"2026-04-18T21:46:29.976Z"}],"sources":[{"listingId":"764a7114-185f-44c7-b7c3-34997d13420f","source":"pulsemcp","sourceId":"https://www.pulsemcp.com/servers/amansingh0311-qdrant-openai-embeddings","sourceUrl":"https://api.pulsemcp.com/v0beta/servers","isPrimary":true,"firstSeenAt":"2026-04-18T21:46:29.976Z","lastSeenAt":"2026-05-02T14:22:11.581Z"}],"details":{"listingId":"764a7114-185f-44c7-b7c3-34997d13420f","quickStartSnippet":null,"exampleRequest":null,"exampleResponse":null,"schema":null,"openapiUrl":null,"agentsTxtUrl":null,"citations":[],"useCases":[],"bestFor":[],"notFor":[],"kindDetails":{"source":"pulsemcp","transport":"stdio","server_name":"Qdrant with OpenAI Embeddings","github_stars":7,"registry_url":"https://www.pulsemcp.com/servers/amansingh0311-qdrant-openai-embeddings","source_code_url":"https://github.com/amansingh0311/mcp-qdrant-openai"},"updatedAt":"2026-05-02T14:22:11.581Z"}}