Context Kernel
БесплатноНе проверенEnables Claude to pull curated context from self-hosted Markdown files via a remote MCP connector, with an append-only journal for agent notes manually promoted
Описание
Enables Claude to pull curated context from self-hosted Markdown files via a remote MCP connector, with an append-only journal for agent notes manually promoted by the owner.
README
Self-hostable context memory for LLMs. Keep your professional context, preferences, and evolving knowledge in sync across Claude Code, Desktop, and chat—without re-pasting or semantic drift.
Status: Live. Connects via Bearer token (Claude Code CLI) and OAuth (claude.ai connector UI), both verified end-to-end against a deployed Worker.
Started as a fix for one annoying thing: re-explaining myself to an AI before it could help with a research paper. Turned into infrastructure, because the real problem was never the paper — it was that nothing remembered anything.
A lightweight, opinionated context memory built on Cloudflare Workers and KV. You curate Markdown files about yourself, your work, and your preferences. A Worker serves them to Claude (Claude Code, Desktop, chat) over a secure remote MCP connector. Agents extend the memory via an append-only journal—but only you decide what becomes permanent.
What it solves
Running agentic sessions across machines? Stop re-pasting:
- Who you are and what you do
- Your communication style and output preferences
- How you want figures rendered
- Evolving project status, goals, and constraints
Context-kernel puts this in one place you control, reachable everywhere Claude runs. Claude pulls it automatically; you never paste again.
Quick start
Self-host on Cloudflare
You bring your own content/ (this repo ships only templates in content.example/).
npm install
cp wrangler.toml.example wrangler.toml # fill in your Cloudflare KV namespace IDs + route
wrangler kv namespace create CONTEXT_KV
wrangler kv namespace create CONTEXT_KV --preview # paste both into wrangler.toml
wrangler kv namespace create OAUTH_KV
wrangler kv namespace create OAUTH_KV --preview
wrangler secret put READ_TOKEN
wrangler secret put WRITE_TOKEN
cp -r content.example content # edit content/*.md with your context
npm run build
wrangler kv bulk put artifacts/kv-bulk.json --binding CONTEXT_KV
wrangler deploy
Note your deployed Worker URL (e.g., https://my-context-kernel.myname.workers.dev/mcp).
Connect Claude Code
claude mcp add --transport http context-kernel \
https://my-context-kernel.myname.workers.dev/mcp \
--header "Authorization: Bearer <READ_TOKEN>"
Replace <READ_TOKEN> with your token. On session start, .claude/skills/context-kernel/SKILL.md auto-loads your context.
Connect claude.ai chat interface (via OAuth)
- In Claude (Desktop or browser), go to Settings → Connectors
- Add custom connector with the deployed Worker's base URL,
/mcpendpoint (e.g.,https://my-context-kernel.myname.workers.dev/mcp) - Claude registers itself automatically (Dynamic Client Registration, RFC 7591)—no manual client ID or secret
- You'll land on a one-field login page asking for your
READ_TOKEN(the same token fromwrangler secret put READ_TOKEN)—enter it once to authorize - All OAuth-issued tokens grant read-only access to your context (write access remains restricted to direct plain-bearer
WRITE_TOKENonly)
The OAuth layer is optional; existing Claude Code + Bearer token setups continue to work unchanged, and the two flows share nothing but the underlying /mcp endpoint.
Local dev
printf "READ_TOKEN=dev-read\nWRITE_TOKEN=dev-write\n" > .dev.vars
npm run dev
Journal promotion (human review gate)
scripts/promote.ts (npm run promote) lets you review journal entries before promoting them into curated content/. Optional subagents:
.claude/agents/context-promoter.md— runs the promotion review.claude/agents/mcp-tester.md— smoke-tests a deployed Worker
Why not vector-memory tools?
Existing personal LLM memory systems (mem0, OpenMemory MCP) use semantic search over extracted facts. They're comprehensive—but have a known failure mode:
- Fact stored: "Prod runs Postgres 14"
- Fact updates: "Prod now runs Postgres 16"
- Both sit in the index. Similarity search hands back whichever scores higher—usually the older, reinforced one.
- Result: outdated info looks authoritative.
context-kernel avoids this by design:
| Feature | context-kernel | Vector-memory |
|---|---|---|
| Source of truth | Hand-edited Markdown | Extracted facts in index |
| Agent write access | Append-only journal | Often can edit directly |
| Stale data retirement | Manual—you remove it | Hopes retrieval rank decays |
| Semantic search | No | Yes |
| Self-maintenance | Low | High |
| Trustworthiness | High (you control it) | Variable (retrieval can fail) |
Tradeoff: Less automatic, no semantic search—but the memory stays trustworthy because you maintain it.
Architecture
┌──────────────────────┐
│ content/*.md │ ← Hand-curated (sacred, never auto-written)
│ (your source truth) │
└──────────────────────┘
│
v
┌──────────────────────────────────────────────────────┐
│ npm run build │
│ Compile → Validate → KV bulk-upload artifact │
└──────────────────────────────────────────────────────┘
│
v
┌──────────────────────────────────────────────────────┐
│ Cloudflare KV │
│ • context:full:md (whole context) │
│ • section:<name>:md (individual sections) │
│ • journal:* (append-only agent notes) │
└──────────────────────────────────────────────────────┘
│
v
┌──────────────────────────────────────────────────────┐
│ Cloudflare Worker (Remote MCP Server) │
│ 📡 Token-gated, constant-time auth │
│ │
│ Read Tools (READ_TOKEN): │
│ • get_context() → full context or section │
│ • list_sections() → available topics │
│ • get_meta() → metadata (timestamps, versions) │
│ │
│ Write Tools (WRITE_TOKEN): │
│ • append_journal(entry) → dated note │
└──────────────────────────────────────────────────────┘
│
v
┌──────────────────────────────────────────────────────┐
│ Claude Code / Desktop / Chat │
│ Connects via MCP connector (auto-loads context) │
└──────────────────────────────────────────────────────┘
│
v
┌──────────────────────────────────────────────────────┐
│ npm run promote │
│ You review journal, cherry-pick what becomes │
│ permanent in content/ (manual gate = no rot) │
└──────────────────────────────────────────────────────┘
Key design principles
Manual promotion gate: Agents append to a disposable journal. You review and hand-promote what becomes curated. This is what keeps the memory from rotting—stale content is retired because you remove it, not by accident.
Two-token security model: Read token pulls context; write token appends to journal only. Give write token to servers/agents, read token to yourself. Read token never reaches write operations.
Markdown as source of truth: No vector embeddings, no fact extraction, no semantic search. You edit plain text, version it, deploy it. What you see is what agents know.
Security model
| Aspect | Detail |
|---|---|
| Token auth | Every request authenticated before any data read |
| Read token | Serves your context to Claude. Safe to embed in Claude Code config. |
| Write token | Allows journal appends only. No read, no delete. Give to agents/servers. |
| Leaked write token | Agent can leave poisoned notes—but manual promotion means it can't silently corrupt your curated context. You see it. |
| Leaked read token | Attacker sees your context. Rotate immediately. |
| Token comparison | Constant-time (no timing attacks). |
| Secrets storage | Cloudflare Workers secrets (encrypted, never in repo). wrangler.toml and .dev.vars are git-ignored. |
See SECURITY.md for the detailed threat model and incident reporting.
Prior art, and why not just use it
Personal memory layers for LLMs already exist and are more mature than this project. Worth naming honestly:
- OpenMemory MCP (mem0): self-hostable, user-owned memory across MCP clients, with a dashboard, per-client ACLs, and audit logs.
- mem0-mcp-selfhosted: self-hosted memory for Claude Code with an optional knowledge graph.
- Claude Code's own Auto Memory / Session Memory: already extracts and carries forward notes and summaries between sessions, no extra infra required.
If the goal were only "stop re-pasting who I am," any of these would work today.
The reason this project exists anyway: those tools are vector-store-backed, they extract facts automatically and retrieve by semantic similarity. That design has a known failure mode, described plainly by one such tool's own author: self-hosting fixes where memory lives, it does not fix what happens when a stored fact stops being true. If an agent writes "prod runs on Postgres 14" and it later becomes 16, both rows sit in the store, and similarity search hands back whichever scores higher, usually the older, more-reinforced one. Nothing retracts a fact.
That failure mode maps directly onto how a research context actually changes: current projects, course load, and priorities shift term to term, and a system that quietly keeps surfacing last term's status alongside this term's is worse than no memory at all, because it looks authoritative.
context-kernel avoids this by construction, not by tuning:
- The curated store is hand-edited Markdown, not extracted facts in a vector index. Nothing becomes "memory" without a human writing or approving the sentence.
- Agents can only append to a disposable journal. They cannot edit curated context, so they cannot silently overwrite or contradict it.
- Promotion is a manual, human-run step. Stale or superseded content is retired because the owner removes it, not because a retrieval score happened to favor the newer entry.
The tradeoff is honest: this is less automatic than a vector-memory tool, and it does not do semantic search over your history. It optimizes for the memory being trustworthy over it being self-maintaining.
Content sections
profile, goals, current-work, resume, writing-prefs, figure-prefs, answer-prefs,
skills, env-constants. Add only what an authorized Claude session should see; leave out
contact-heavy details.
Build stats
This project was built end-to-end with Claude Code (Sonnet 5 + Haiku 4.5, caveman-compressed communication mode), across all sessions from scaffold to deployed OAuth fix.
| Metric | Value |
|---|---|
| Commits | 19 |
| Test coverage | 100/100 passing |
| Output tokens (all sessions) | ~353K |
| Cache-read tokens (all sessions) | ~102.9M |
| Cache-creation tokens (all sessions) | ~2.6M |
| Estimated total cost | ~$26 (Sonnet 5 intro + Haiku 4.5 pricing) |
Repository hygiene
Committed: engine source, tests, artifact generator, promotion script, personal skill, subagent
definitions, content.example/ templates, config example.
Ignored: content/ (your real data), generated artifacts/, node_modules/, real wrangler.toml,
.dev.vars, .promoted-ids.json (local promotion-review state).
License
MIT. See LICENSE.
Установка Context Kernel
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/dkritarth/context-kernelFAQ
Context Kernel MCP бесплатный?
Да, Context Kernel MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Context Kernel?
Нет, Context Kernel работает без API-ключей и переменных окружения.
Context Kernel — hosted или self-hosted?
Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.
Как установить Context Kernel в Claude Desktop, Claude Code или Cursor?
Открой Context Kernel на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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