Curated knowledge base
Admins build and manage the knowledge employees can query — documents, drives, and internal sources, organised by team.
MRAG lets teams chat with files, web, and internal knowledge. Admins govern access, sources, use cases, logs, and audit trails from a single console.
Three gaps. One governed platform.
MRAG brings daily AI work and enterprise control into one platform. Teams chat with files, web, and internal knowledge. Admins manage access, approved use cases, knowledge sources, and what AI is allowed to do — from a single console.
Admins build and manage the knowledge employees can query — documents, drives, and internal sources, organised by team.
Each use case has its own scope: which sources, which teams, what the AI is allowed to do.
Every answer is grounded in your knowledge base and traceable to its source.
Admins can read every conversation, see what sources were used, and tune or revoke access at any time.
Employees ask questions and get answers drawn from your organisation's knowledge base — not the open internet.
For complex questions, MRAG breaks the task into steps, retrieves from the right sources, and assembles a verified answer — automatically.
Index files, Google Drive, and internal documents. Every answer links back to the document and page it came from.
Users can attach files during chat. Those files stay private to the session, separate from the shared knowledge base.
Web access can be enabled or disabled per use case by the admin.
Use cases, access groups, retention policies, model selection, and full audit logs. The control plane that makes the other five deployable.
Employees ask questions and get answers drawn from your organisation's knowledge base — not the open internet.
For complex questions, MRAG breaks the task into steps, retrieves from the right sources, and assembles a verified answer — automatically.
Index files, Google Drive, and internal documents. Every answer links back to the document and page it came from.
Users can attach files during chat. Those files stay private to the session, separate from the shared knowledge base.
Web access can be enabled or disabled per use case by the admin.
Use cases, access groups, retention policies, model selection, and full audit logs. The control plane that makes the other five deployable.
MRAG is not one product with two skins. It is two purpose-built surfaces that share the same knowledge engine, so what your team uses and what your admin controls are always in lockstep.
Chat with your knowledge, files, and the web. Switch use cases, see source citations on every answer, recall full chat history. The same interface from desktop to mobile, English and Japanese, light and dark.
Build knowledge bases, configure use cases, manage access groups, monitor every conversation. Define what AI can do, who can use it, and what it can draw from — without touching the chat surface.
MRAG is not one product with two skins. It is two purpose-built surfaces that share the same knowledge engine, so what your team uses and what your admin controls are always in lockstep.
Chat with your knowledge, files, and the web. Switch use cases, see source citations on every answer, recall full chat history. The same interface from desktop to mobile, English and Japanese, light and dark.
Build knowledge bases, configure use cases, manage access groups, monitor every conversation. Define what AI can do, who can use it, and what it can draw from — without touching the chat surface.
A managed AI workspace,built on your organisation's knowledge,configured by admins,used by teams.
Answer states: grounded · needs improvement · low confidence ·missing source · clarify · fallback ·
Configure once, govern continuously.
Observe, learn, and improve — then repeat.
SSO, MFA, roles, retention.
Index, tag, partition by group.
Define prompts, scope, and guardrails per team.
Enable file search, web access, and agent tools.
Read every trace. Tune. Revoke.
Answers with sources, inline.
Those are general-purpose AI assistants — you bring your own context every time. MRAG is a managed platform where admins build curated knowledge bases from your organisation's documents and sources. Employees then get AI answers drawn from that knowledge, not from the open internet. Everything is scoped, logged, and reviewable.
Yes. The admin console gives you full chat history across all users — who asked what, which sources were used, and what the AI answered. You can review any conversation at any time without touching the chat surface.
MRAG runs as a managed SaaS with isolated workspaces per organisation. Your data is not shared across customers. For companies with stricter requirements, dedicated single-tenant deployments are available on request.
Initial setup is handled with you — building knowledge bases, configuring use cases and prompts, connecting data sources, and onboarding users. After that, your admin manages everything from the console: updating knowledge, adding users, adjusting access per team. No engineering required for day-to-day operation.
Yes. Each use case is configured separately — different prompts, different data sources, different access groups. A hotel's front desk, a bank's compliance team, and a sales team at a software company can all run on the same platform with completely separate configurations.
Start with a 30-minute walkthrough on your own data. If it fits, we run a paid pilot: one team, two use cases, four weeks. Pilots convert into full deployments without re-procuring.
Book a 30-minute walkthrough. We show you how MRAG works on your own data, end to end.