{"id":"d4a871fd-b38d-44a6-9eff-71e5bd860fe3","shortId":"RJWDJj","kind":"mcp","title":"Business Analytics RAG","tagline":"Combines business analytics capabilities for statistical operations on CSV data with RAG-powered knowledge retrieval ...","description":"Combines business analytics capabilities for statistical operations on CSV data with RAG-powered knowledge retrieval from business documents, supporting both Google Gemini and custom OpenAI-compatible APIs for comprehensive business intelligence workflows.\n\nBusiness analytics and knowledge retrieval system that combines MCP servers for data analysis and RAG (Retrieval-Augmented Generation) capabilities with flexible LLM backend support for both Google Gemini and custom localhost APIs. The implementation provides two specialized MCP servers: a business analytics server that performs statistical operations like mean calculation, correlation analysis, and linear regression on CSV business data, and a RAG server that searches through business knowledge documents for terms, definitions, and company policies. Built with Python using pandas for data processing and supporting both Gemini API and custom OpenAI-compatible endpoints, it's designed for business intelligence workflows where users need to combine quantitative data analysis with contextual business knowledge retrieval through natural language interactions.","tags":["business","analytics","rag"],"capabilities":["mcp","transport-stdio","open-source"],"categories":[],"synonyms":[],"warnings":[],"endpointUrl":"https://github.com/ansh-riyal/mcp-rag","protocol":"mcp","transport":"stdio","auth":{"type":"mcp","details":{"transport":"stdio"}},"qualityScore":"0.556","qualityRationale":"deterministic score 0.56 from registry signals: · indexed on pulsemcp · has source repo · 3 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":"2026-05-01T02:21:46.267Z","embedding":null,"createdAt":"2026-04-21T19:27:23.137Z","updatedAt":"2026-05-01T02:21:46.267Z","lastSeenAt":"2026-05-01T02:21:46.267Z","tsv":"'analysi':66,106,163 'analyt':2,6,22,55,96 'api':48,86,142 'augment':71 'backend':77 'built':130 'busi':1,5,21,37,51,54,95,112,121,153,166 'calcul':104 'capabl':7,23,73 'combin':4,20,61,160 'compani':128 'compat':47,147 'comprehens':50 'contextu':165 'correl':105 'csv':12,28,111 'custom':44,84,144 'data':13,29,65,113,136,162 'definit':126 'design':151 'document':38,123 'endpoint':148 'flexibl':75 'gemini':42,82,141 'generat':72 'googl':41,81 'implement':88 'intellig':52,154 'interact':172 'knowledg':18,34,57,122,167 'languag':171 'like':102 'linear':108 'llm':76 'localhost':85 'mcp':62,92 'mean':103 'natur':170 'need':158 'open-source' 'openai':46,146 'openai-compat':45,145 'oper':10,26,101 'panda':134 'perform':99 'polici':129 'power':17,33 'process':137 'provid':89 'python':132 'quantit':161 'rag':3,16,32,68,116 'rag-pow':15,31 'regress':109 'retriev':19,35,58,70,168 'retrieval-aug':69 'search':119 'server':63,93,97,117 'special':91 'statist':9,25,100 'support':39,78,139 'system':59 'term':125 'transport-stdio' 'two':90 'use':133 'user':157 'workflow':53,155","prices":[{"id":"6fb10ef0-a84f-42a1-8093-38211b7c5b33","listingId":"d4a871fd-b38d-44a6-9eff-71e5bd860fe3","amountUsd":"0","unit":"free","nativeCurrency":null,"nativeAmount":null,"chain":null,"payTo":null,"paymentMethod":"mcp-free","isPrimary":true,"details":{"transport":"stdio"},"createdAt":"2026-04-21T19:27:23.137Z"}],"sources":[{"listingId":"d4a871fd-b38d-44a6-9eff-71e5bd860fe3","source":"pulsemcp","sourceId":"https://www.pulsemcp.com/servers/business-analytics-rag","sourceUrl":"https://api.pulsemcp.com/v0beta/servers","isPrimary":true,"firstSeenAt":"2026-04-21T19:27:23.137Z","lastSeenAt":"2026-05-01T02:21:46.267Z"}],"details":{"listingId":"d4a871fd-b38d-44a6-9eff-71e5bd860fe3","quickStartSnippet":null,"exampleRequest":null,"exampleResponse":null,"schema":null,"openapiUrl":null,"agentsTxtUrl":null,"citations":[],"useCases":[],"bestFor":[],"notFor":[],"kindDetails":{"source":"pulsemcp","transport":"stdio","server_name":"Business Analytics RAG","github_stars":3,"registry_url":"https://www.pulsemcp.com/servers/business-analytics-rag","source_code_url":"https://github.com/ansh-riyal/mcp-rag"},"updatedAt":"2026-05-01T02:21:46.267Z"}}