opencontext
OpenContext Context Management (Persistent Memory)
Give your AI assistant persistent memory. Stop repeating explanations, and build smarter.
When to use this skill
- When you need to keep context across sessions
- When you need to record project background/decisions
- When you need to search prior conclusions/lessons
- When you need knowledge sharing in a Multi-Agent workflow
- When you want to reduce repetitive background explanations
1. Core concepts
Problem
When working with an AI assistant, context gets lost (across sessions, repos, and dates). You end up repeating background, re-explaining decisions, and sometimes the assistant continues with incorrect assumptions.
Solution
OpenContext is a lightweight personal context/knowledge store for AI assistants.
[Load context] → [Do work] → [Store conclusions]
Default paths
| Item | Path |
|---|---|
| Contexts | ~/.opencontext/contexts |
| Database | ~/.opencontext/opencontext.db |
2. Install and initialize
Install CLI
npm install -g @aicontextlab/cli
# Or use npx
npx @aicontextlab/cli <command>
Initialize (run inside the repo)
cd your-project
oc init
What oc init does:
- Prepare the global context store (on first run)
- Generate user-level commands/skills + mcp.json for the selected tool
- Update the repo's AGENTS.md
3. Slash Commands
Beginner-friendly commands
| Command | Purpose |
|---|---|
/opencontext-help |
When you don't know where to start |
/opencontext-context |
(Recommended default) Load background before work |
/opencontext-search |
Search existing documents |
/opencontext-create |
Create a new document/idea |
/opencontext-iterate |
Store conclusions and citations |
Install locations
# Slash Commands
Cursor: ~/.cursor/commands
Claude Code: ~/.claude/commands
# Skills
Cursor: ~/.cursor/skills/opencontext-*/SKILL.md
Claude Code: ~/.claude/skills/opencontext-*/SKILL.md
Codex: ~/.codex/skills/opencontext-*/SKILL.md
# MCP Config
Cursor: ~/.cursor/mcp.json
Claude Code: ~/.claude/mcp.json
4. Core CLI commands
Folder/document management
# List folders
oc folder ls --all
# Create folder
oc folder create project-a -d "My project"
# Create document
oc doc create project-a design.md -d "Design doc"
# List documents
oc doc ls project-a
Search & manifest
# Search (keyword/hybrid/vector)
oc search "your query" --mode keyword --format json
# Generate a manifest (list of files the AI should read)
oc context manifest project-a --limit 10
Search modes
| Mode | Description | Requirements |
|---|---|---|
--mode keyword |
Keyword-based search | No embeddings required |
--mode vector |
Vector search | Embeddings + index required |
--mode hybrid |
Hybrid (default) | Embeddings + index required |
Embedding configuration (for semantic search)
# Set API key
oc config set EMBEDDING_API_KEY "<<your_key>>"
# (Optional) Set base URL
oc config set EMBEDDING_API_BASE "https://api.openai.com/v1"
# (Optional) Set model
oc config set EMBEDDING_MODEL "text-embedding-3-small"
# Build index
oc index build
5. MCP Tools
OpenContext MCP Tools
oc_list_folders # List folders
oc_list_docs # List documents
oc_manifest # Generate manifest
oc_search # Search documents
oc_create_doc # Create document
oc_get_link # Generate stable link
Multi-Agent integration
# Gemini: large-scale analysis
ask-gemini "Analyze the structure of the entire codebase"
# Codex: run commands
shell "docker-compose up -d"
# OpenContext: store results
oc doc create project-a conclusions.md -d "Analysis conclusions"
6. Multi-Agent workflow integration
Orchestration Pattern
[Claude] Plan
↓
[Gemini] Analysis/research + OpenContext search
↓
[Claude] Write code
↓
[Codex] Run/test
↓
[Claude] Synthesize results + store in OpenContext
Practical example: API design + implementation + testing
# 1. [Claude] Design API spec using the skill
/opencontext-context # Load project background
# 2. [Gemini] Analyze a large codebase
ask-gemini "@src/ Analyze existing API patterns"
# 3. [Claude] Implement code based on the analysis
# (Use context loaded from OpenContext)
# 4. [Codex] Test and build
shell "npm test && npm run build"
# 5. [Claude] Create final report + store conclusions
/opencontext-iterate # Store decisions and lessons learned
7. Recommended daily workflow
Before work (1 min)
/opencontext-context
- Load project background + known pitfalls
During work
/opencontext-search
- Search existing conclusions when unsure
After work (2 min)
/opencontext-iterate
- Record decisions, pitfalls, and next steps
High-ROI document types
- Acceptance Criteria - acceptance criteria
- Common Pitfalls - common pitfalls
- API Contracts - API contracts
- Dependency Versions - dependency versions
8. Stable links (Stable Links)
Keep links stable across renames/moves by referencing document IDs:
[label](oc://doc/<stable_id>)
Generate a link via CLI
oc doc link <doc_path>
Generate a link via MCP
oc_get_link doc_path="Product/api-spec"
9. Desktop App & Web UI
Desktop App (recommended)
- Manage/search/edit context with a native UI
- Use without the CLI
- Automatic index builds (in the background)
Citation features:
| Action | How | Result |
|---|---|---|
| Cite text snippet | Select text → right-click → "Copy Citation" | Agent reads the snippet + source |
| Cite document | Click the citation icon next to the document title | Agent reads the full document + obtains stable_id |
| Cite folder | Right-click folder → "Copy Folder Citation" | Agent bulk-reads all docs in the folder |
Web UI
oc ui
# Default URL: http://127.0.0.1:4321
Quick Reference
Essential workflow
Before: /opencontext-context (load background)
During: /opencontext-search (search)
After: /opencontext-iterate (store)
Core CLI commands
oc init # Initialize project
oc folder ls --all # List folders
oc doc ls <folder> # List documents
oc search "query" # Search
oc doc create ... # Create document
MCP Tools
oc_list_folders list folders
oc_list_docs list documents
oc_search search
oc_manifest manifest
oc_create_doc create document
oc_get_link generate link
Paths
~/.opencontext/contexts context store
~/.opencontext/opencontext.db database
References
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