This portable, single-file AI memory system stores, chunks, indexes, and retrieves knowledge from PDFs, documents, notes, conversations, code, and media, providing agents with instant retrieval and long-term memory even when offline. Its core features include sub-five-millisecond hybrid search that blends BM25 lexical matching with semantic vector embeddings, crash-safe embedded write-ahead logging for deterministic results, automatic content ingestion and indexing, a built-in timeline index for time-based queries, multi-language SDKs (Python, Node.js, Rust) plus a CLI and MCP server, offline-first operation, and true portability via a shareable .mv2 file that requires no databases or servers; these capabilities address the challenges of complex retrieval-augmented generation pipelines, cloud dependence, vendor lock-in, and fragmented knowledge bases, and are ideal for developers building chatbots, AI agents, knowledge bases, document processors, and multi-agent systems who need persistent context and scalable memory.
MemVid kan hittas i AI-powered Document Processing kategorier.
Inga skärmdumpar har laddats upp ännu. Äger du det här företaget?
Ladda upp skärmdumpar.Utforska mer i den här kategorin:
Nya SaaS-produkter lanseras varje dag, 21,811 har lagts till bara under de senaste 30 dagarna. Håll dig informerad och var först med att veta när nya SaaS-produkter som matchar din sökfråga upptäcks av SaaS Browser.
Logga in för att konfigurera e-postaviseringar för nya SaaS-produkter som matchar din sökning.
Logga in för att skapa en avisering