openvikingRAG and semantic search via OpenViking Context Database MCP server. Query documents, search knowledge base, add files/URLs to vector memory. Use for document Q&A, knowledge management, AI agent memory, file search, semantic retrieval. Triggers on "openviking", "search documents", "semantic search", "knowledge base", "vector database", "RAG", "query pdf", "document query", "add resource".
Install via ClawdBot CLI:
clawdbot install ZaynJarvis/openvikingGrade Good — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Calls external URL not in known-safe list
http://localhost:2033/mcpAudited Apr 16, 2026 · audit v1.0
Generated Mar 20, 2026
Law firms can use OpenViking to query large volumes of case files, contracts, and legal precedents. It enables semantic search across PDFs and documents, improving research efficiency and accuracy for case preparation.
Researchers and universities can deploy OpenViking to manage and search academic papers, theses, and datasets. The RAG pipeline helps quickly retrieve relevant studies and generate summaries, accelerating literature reviews.
Companies can integrate OpenViking to power AI-driven customer support by querying internal documentation, FAQs, and product manuals. This reduces response times and ensures accurate, context-aware answers for agents.
Healthcare providers can use OpenViking to search medical records, research articles, and clinical guidelines. It aids in diagnosing and treatment planning by providing quick access to relevant, up-to-date information.
Financial institutions can leverage OpenViking to query regulatory documents, compliance reports, and transaction records. It helps auditors and analysts detect anomalies and ensure adherence to laws efficiently.
Offer OpenViking as a cloud-based service with tiered pricing based on usage, storage, and API calls. This model targets businesses needing scalable RAG solutions without infrastructure management.
Sell on-premise licenses to large organizations requiring data privacy and customization. Includes support, training, and integration services for deploying OpenViking in secure environments.
Provide professional services to help clients set up, customize, and integrate OpenViking into their existing systems. Focus on industries like legal or healthcare with specific compliance needs.
💬 Integration Tip
Ensure API keys from Volcengine/Ark are properly configured in ov.conf and verify the MCP server is running before connecting to Claude or other agents.
Scored Apr 19, 2026
Search and analyze your own session logs (older/parent conversations) using jq.
Local semantic memory with Qdrant and Transformers.js. Store, search, and recall conversation context using vector embeddings (fully local, no API keys).
Maintain Clawdbot's compounding knowledge graph under life/areas/** by adding/superseding atomic facts (items.json), regenerating entity summaries (summary.md), and keeping IDs consistent. Use when you need deterministic updates to the knowledge graph rather than manual JSON edits.
Manage and retrieve long-term memories with LanceDB using semantic vector search, category filtering, and detailed metadata storage.
Fast semantic memory system with JSON indexing, auto-consolidation, and <20ms search. Capture learnings, decisions, insights, events. Use when you need persistent memory across sessions or want to recall prior work/decisions.
Long-term memory via ChromaDB with local Ollama embeddings. Auto-recall injects relevant context every turn. No cloud APIs required — fully self-hosted.