Knowledge update proposal
Pending reviewChanged Section
+ Add troubleshooting step for context retrieval mismatch
- Remove outdated workaround for legacy API
Let AI Agents truly use your enterprise knowledge while keeping final change authority in human hands.
OMI connects Notion, GitHub, websites, and other knowledge sources to give Codex, Cursor, and AI Agents unified context. Every knowledge change is first organized as a reviewable proposal before becoming organizational knowledge.
OMI
read pathUnified knowledge package with source references, evidence, and freshness.
Agents read trusted context for real tasks and produce outputs with evidence links.
Proposal Review
write pathAll knowledge updates become proposals and require review before durable write.
People or dedicated review agents decide whether proposals become durable knowledge.
Human-reviewed decisions become trusted organizational knowledge.
Changed Section
+ Add troubleshooting step for context retrieval mismatch
- Remove outdated workaround for legacy API
Knowledge is fragmented.
Docs, code, and tickets live in different systems. Agents reason from partial facts—and you discover the gap only after the wrong answer is in front of a customer.
Agents keep going with partial context.
Models do not pause when context is thin; they still sound certain. Every missed edge case becomes rework, escalations, and trust debt.
New experience appears every day.
Support wins and incident learnings pile up in chats and notes. Without a durable write path, the organization keeps re-learning the same lesson.
Most teams still govern this manually.
Copy-paste, Slack threads, and last-minute human review are the real “workflow.” It breaks the moment headcount or incident volume ticks up.
The bottleneck is rarely model capability now. It is usually weak knowledge access, unstable output trust, and missing governance for updates.
Read path
Start from Notion, GitHub, and websites without forcing migration into a new system.
Source-backed context
Serve Codex, Cursor, OpenClaw, and other agents with context packages that include sources and freshness.
Review boundary
Convert AI-generated knowledge changes into proposals and support review / approve / reject decisions.
Durable knowledge
Turn one-off outputs into a governed and continuously improving organizational knowledge loop.
Product Loop
Connect
Retrieve
Analyze
Propose
Review
Connect existing knowledge sources
Provide unified context for agents
Read context in real tasks
Organize new AI-derived insights into proposals
Review before writing durable organizational knowledge
AI can participate. Humans approve.
You do not need to
You need to
Use Cases
Whether you ship answers, assets, or on-call context, agents need unified retrieval and a safe path from AI insight to durable knowledge.
Teams use AI for campaign copy, social posts, and standout product imagery. When brand facts, product truth, and tone live in one place—and every improvement can be reviewed—output quality jumps by orders of magnitude.
Typical gaps today
Background knowledge sits in Feishu, enterprise chat drives, laptops, and ad-hoc files. People paste the same context into prompts again and again. Even with MCP tools, sources are so fragmented that agents do not know where to look first.
Iterations turn into lessons, guardrails, and "permanent" brand memory. That is an enterprise governance problem: someone must review before those writes become truth. Most stacks cannot express that boundary.
Specialist firms or other teams may already have playbooks that should guide your agents. A platform can deliver that as vetted, consumable knowledge—almost like a shared pre-trained layer—so you do not rebuild generic industry depth from scratch. Providers can package and sell that expertise safely.
OMI puts enterprise knowledge into agent workflows and keeps every update inside a reviewable, traceable governance boundary.
Start from a single high-value workflow, then expand into an enterprise-wide AI knowledge governance layer.