Brain-inspired, model-agnostic persistent memory for LLMs. Learn, recall, forget — like a brain. Works with OpenAI, Claude, Gemini, Llama.
Project description
CLS++ — Continuous Learning System++
Switch AI models. Never lose context.
Quick Start • MCP • Integrations • Architecture • Documentation • Deployment
What is CLS++?
Every LLM in production today operates with amnesia. Sessions end, context windows clear, and the model forgets everything—preferences, corrections, facts established over months.
CLS++ is an external memory substrate that solves this at its root. Drawing from neuroscientific Complementary Learning Systems (CLS) theory, it implements:
| Feature | Description |
|---|---|
| Four-store hierarchy | L0 (Working Buffer) → L1 (Indexing) → L2 (Schema Graph) → L3 (Deep Recess) |
| Biological consolidation | Salience, Usage, Authority, Conflict, Surprise signals |
| Sleep cycle | Nightly maintenance: rank, decay, deduplicate, consolidate |
| Reconsolidation gate | Belief revision only with evidence quorum |
| Model-agnostic | Any LLM plugs in via REST API—Claude, GPT-4, Gemini, Llama |
Memory is external to the model. Switch models anytime. No reset.
Quick Start
Install
pip install clsplusplus # Python SDK (lightweight: only httpx + pydantic)
npm install clsplusplus # JavaScript / TypeScript SDK (zero runtime deps)
Optional Python extras pull in framework adapters or the full server:
pip install clsplusplus[server] # run the FastAPI server yourself
pip install clsplusplus[crewai] # CrewAI memory adapter
pip install clsplusplus[langgraph] # LangGraph memory store
pip install clsplusplus[llamaindex] # LlamaIndex memory block
pip install clsplusplus[autogen] # Microsoft AutoGen memory provider
Both the PyPI and npm packages are named clsplusplus and ship the same
Brain API. The npm package is a real TypeScript SDK (not just a CLI) — it
mirrors the Python SDK method-for-method.
Python SDK
from clsplusplus import Brain
brain = Brain("alice")
# Teach it anything in natural language
brain.learn("I work at Google as a senior engineer")
brain.learn("I prefer Python over JavaScript")
# Ask it anything — semantic recall, not keyword matching
brain.ask("What's my job?") # ["I work at Google as a senior engineer"]
# Get LLM-ready context for any prompt
brain.context("coding help")
# "Known facts about this user:\n- I work at Google..."
# Forget (GDPR right to be forgotten)
brain.forget("I work at Google as a senior engineer")
JavaScript / TypeScript SDK
import { Brain } from "clsplusplus";
const brain = new Brain("alice");
await brain.learn("I work at Google as a senior engineer");
const facts = await brain.ask("What's my job?");
const context = await brain.context("coding help");
await brain.forget("I work at Google as a senior engineer");
Use with OpenAI
from clsplusplus import Brain
brain = Brain("alice")
# Wrap any LLM function — auto-injects memory, auto-learns
@brain.wrap
def chat(system_prompt, user_message):
return openai.chat(system=system_prompt, user=user_message)
response = chat("You are a helpful assistant", "Help me with Python")
# Brain auto-recalls relevant memory, injects into prompt,
# calls your LLM, learns from the exchange, returns response.
Full SDK API
The Brain class is identical in the Python and JS/TS SDKs (the JS methods
are async). Constructor: Brain(user, api_key=None, url=None) in Python,
new Brain(user, { apiKey, url }) in TypeScript. Both read CLS_API_KEY and
CLS_BASE_URL from the environment when not passed; url defaults to
https://www.clsplusplus.com.
| Method | Description |
|---|---|
brain.learn(fact, **meta) |
Teach a fact. Returns memory ID. |
brain.ask(question, limit=5) |
Query for relevant facts. Returns list of strings. |
brain.context(topic="", limit=8) |
Get LLM-ready context string. |
brain.forget(fact_or_id) |
Forget by text or ID. Returns bool. |
brain.absorb(content, source="document") |
Bulk-learn from document, conversation, or list. |
brain.who() |
Auto-generated user profile dict. |
brain.correct(wrong, right) |
Update a belief (forget + learn). |
brain.chat(message, llm_fn=None) |
Full conversation handler with memory. |
brain.teach(dict) |
Learn from structured key/value data. |
brain.watch(messages) |
Learn from a list of chat messages. |
brain.wrap(fn) |
Wrap any LLM function with auto-memory. |
brain.all(limit=50) / brain.count() |
List / count what's stored. |
Module-level one-liners (Python: import clsplusplus as mem; TS:
import { learn, ask } from "clsplusplus") wrap a per-user Brain:
learn(user, fact), ask(user, question), context(user, topic),
forget(user, fact_or_id).
A lower-level CLSClient (alias CLS) is also exported for direct
write / read / get_item / forget / sleep / health calls against
the REST API — see the API Reference.
Connect via MCP (Claude, Cursor, Windsurf, ChatGPT)
CLS++ ships a Model Context Protocol server
exposing three tools — recall_memories, store_memory, who_am_i — so any
MCP client can read and write the same memory. Registry name:
io.github.rajamohan1950/cls-memory.
Remote (hosted, OAuth) — add https://www.clsplusplus.com/mcp as a custom
connector. The OAuth 2.1 + PKCE + Dynamic Client Registration flow handles
auth; no API key to paste.
Local (stdio) — run the bundled server with an API key:
pip install clsplusplus
# one-line install for Claude Code:
claude mcp add cls-memory \
--env CLS_API_URL=https://www.clsplusplus.com \
--env CLS_API_KEY=cls_live_xxx \
-- python3 -m clsplusplus.mcp_server
Or paste this into .claude/settings.json (Cursor/Windsurf use the same shape
in their MCP config):
{
"mcpServers": {
"cls-memory": {
"command": "python3",
"args": ["-m", "clsplusplus.mcp_server"],
"env": {
"CLS_API_URL": "https://www.clsplusplus.com",
"CLS_API_KEY": "cls_live_xxx"
}
}
}
}
The dashboard's Connect button (GET /v1/mcp/connect) mints a fresh key and
returns this exact block pre-filled. Create keys manually at
https://www.clsplusplus.com/profile#api-keys.
Agent-framework integrations
CLS++ ships native memory adapters for four agent frameworks. Each is an optional extra and lazily imported — the base package never requires the framework. Full setup in docs/integrations.
| Framework | Install | Class | Plugs in as |
|---|---|---|---|
| CrewAI | pip install clsplusplus[crewai] |
clsplusplus.integrations.crewai.CLSMemoryStorage |
ExternalMemory(storage=...) — docs |
| LangGraph | pip install clsplusplus[langgraph] |
clsplusplus.integrations.langgraph.CLSMemoryStore |
graph.compile(store=...) — docs |
| LlamaIndex | pip install clsplusplus[llamaindex] |
clsplusplus.integrations.llamaindex.CLSMemoryBlock |
Memory.from_defaults(memory_blocks=[...]) — docs |
| AutoGen | pip install clsplusplus[autogen] |
clsplusplus.integrations.autogen.CLSMemory |
AssistantAgent(memory=[...]) — docs |
# Example: CrewAI
from crewai import Crew
from crewai.memory.external.external_memory import ExternalMemory
from clsplusplus.integrations.crewai import CLSMemoryStorage
crew = Crew(
agents=[...], tasks=[...], memory=True,
external_memory=ExternalMemory(storage=CLSMemoryStorage(user="my-crew")),
)
Editor integrations (Cursor, Codex, n8n) also have guides under docs/integrations.
Managed service
CLS++ runs as a fully managed service — no infrastructure to host. Install the SDK and point it at the hosted API:
pip install clsplusplus # or: npm install clsplusplus
Get an API key and start storing memory at clsplusplus.com.
Try It Live
Try the demo — Tell Claude something, ask OpenAI. Same memory. No sign-up.
The Chrome extension (Web Store, v7.4.1) captures user messages from
ChatGPT, Claude, and Gemini chat pages automatically and feeds them through
the same memory pipeline. Host permissions: chatgpt.com,
chat.openai.com, claude.ai, gemini.google.com. The Link Account popup
differentiates 401 / 403 / network / unknown errors so you know whether the
key is wrong, the account is unlinked, or the server is unreachable.
Architecture
Browser (extension/capture.js) Any LLM client (SDK / REST)
↓ ↓
↓ www.clsplusplus.com (Vercel, Next.js)
↓ │ rewrites /api/v1/*, /api/admin/*
↓ ▼
└──────────────► Render-hosted FastAPI (clsplusplus-api)
│ middleware: auth, rate limit, abuse-guard
▼
┌─────────────────────────────────────────┐
│ CLS++ Core Service │
│ L0: Redis working buffer │ ← Prefrontal cortex
│ L1: PostgreSQL+pgvector episodic │ ← Hippocampus
│ L2: Schema graph (crystallized) │ ← Neocortex
│ L3: Deep archive │ ← Thalamus
│ PhaseMemoryEngine (gas→liquid→ │
│ solid→glass, auto tier-compression) │
│ SleepOrchestrator (replay + REM) │
│ ReconsolidationGate (belief revision) │
│ Weblab (PostHog flags + auto-rollback)│
│ Pricing control plane (memory-stored) │
└─────────────────────────────────────────┘
Every user message captured in the extension and every SDK learn() call
lands in L0, is promoted through the phase engine by the same thermodynamic
rules, and is persisted to L1 in the background. There is no separate
"explicit store" path — capture is continuous, tier compression is
automatic.
SaaS Mode (Memory-as-a-Service)
Enable API key auth and rate limiting for production:
export CLS_API_KEYS=cls_live_xxxxxxxxxxxxxxxxxxxxxxxx
export CLS_REQUIRE_API_KEY=true
export CLS_RATE_LIMIT_REQUESTS=100
export CLS_RATE_LIMIT_WINDOW_SECONDS=60
# Abuse-guard (env-tunable; defaults shown)
export CLS_ABUSE_AUTHFAIL_THRESHOLD=60 # auth failures per IP per window
export CLS_ABUSE_AUTHFAIL_WINDOW_SECONDS=600 # 10 minutes
export CLS_ABUSE_WHITELIST_IPS= # comma-separated operator IPs
Requests carrying a valid API key are exempt from auth-fail flood counting
(see src/clsplusplus/abuse_guard.py).
Product endpoints: POST /v1/memories/encode, POST /v1/memories/retrieve, DELETE /v1/memories/forget, GET /v1/health/score, GET /v1/pricing, GET /v1/version, plus the in-app support desk (POST /v1/feedback, GET /v1/support/mine, POST /v1/support/{id}/rate). See SaaS docs.
Memory reads/writes are bound to the caller's own namespace server-side (
_owned_namespace_forinapi.py): a signed-in user can never read another tenant's memories by passing a namespace.
Pricing
CLS++ launched in India and bills via Razorpay (UPI / QR). Pricing is
country-based — Indian users are billed in ₹, US in $, EU in €,
resolved from the request's country (src/clsplusplus/currency.py). Published
monthly tiers: Pro ₹999 / $29, Business ₹3,999 / $99, Enterprise
₹14,999 / $499, plus a free tier. Per-tier feature bundles are optimized by
the bundle-pricing agent and exposed on GET /v1/pricing. The pricing control
plane lives inside the CLS++ memory layer itself (reserved namespace
__cls_pricing__), operator-tunable at runtime via POST /admin/pricing/config;
defaults are seeded by src/clsplusplus/pricing_store.py. GET /v1/pricing is a
public, abuse-exempt endpoint.
Deployment
CLS++ is a managed, hosted service — there's nothing to deploy. The production API runs at www.clsplusplus.com; enterprise and on-prem options are available on request.
Documentation
| Document | Description |
|---|---|
| Architecture Overview | Components, stores, data flow, MCP |
| API Reference | Endpoints, auth, examples |
| Integrations | CrewAI, LangGraph, LlamaIndex, AutoGen, Cursor, Codex, n8n |
| API Blueprint | SaaS API playbook (DX, security, billing) |
| SaaS Strategy | Memory-as-a-Service, pricing |
| Marketplace Integration | AWS, Azure, GCP, OCI |
| Productionization | Deployment, security, compliance |
| Commercialization | Go-to-market, licensing |
Status
Phase 1 (Foundation) — Complete
- Four stores (L0–L3) + Plasticity Engine
- Write/Read API + Python SDK
- Docker Compose + Render deploy (Dockerfile ships
/app/scripts/for operator tooling) - Sleep cycle orchestrator
- Reconsolidation gate
- API key auth + rate limiting
- SaaS product endpoints
- Chrome extension (v7.4.1) capturing ChatGPT / Claude / Gemini
- Remote MCP server (OAuth 2.1 + PKCE + DCR) + stdio MCP server
- Native CrewAI / LangGraph / LlamaIndex / AutoGen memory adapters
- Abuse-guard with env-tunable thresholds and operator IP whitelist
- PostHog Weblab — staged rollouts with auto-rollback (5xx > 2% or p95 > 3s)
- Country-based pricing (₹ / $ / €) + agent-optimized feature bundles (Razorpay / UPI), memory-resident control plane
- In-app support desk ("Doctor") — agent-triaged feedback / bugs / questions with auto-resolution + per-user timeline
- Company agent platform —
doctor-*,dynamic-pricing,bundle-pricing,competitive-intel,marketing-growth -
cls bench— runnable reliability reproductions (silent-loss, delete-on-conflict, dimension-switch, empty-extraction) - Per-user memory isolation (server-side namespace binding)
Recent Architectural Decisions
- Auto-crystallization gated OFF by default. The Landauer
liquid→solid pipeline produced low-quality
[Schema: subject]token-soup entries that leaked into user-visible memory lists. Re-enable per process withCLS_ENABLE_AUTO_CRYSTALLIZATION=1. Melting still runs so existing schemas drain out. Seesrc/clsplusplus/memory_phase.py. - Pricing lives in the memory layer. Operator-tunable config (margin
floor/target, infra cost, dynamic-demand toggle) and the bucketed demand
history are stored as two fixed-id documents in namespace
__cls_pricing__, not in env vars. - Frontend ↔ backend topology. The Next.js frontend on Vercel
(
www.clsplusplus.com) rewrites/api/v1/*and/api/admin/*to the Render-hosted FastAPI. The bare onrender.com host is the internal upstream target — not the public surface. - Integration ownership.
POST /v1/integrationsinjectsowner_emailfrom the JWT-authed user; non-admin override returns 403. A backfill script handles legacy NULL rows.
Operator Runbooks
See docs/RUNBOOKS.md and
docs/LAUNCH_RUNBOOK.md for incident response,
deploy procedures, and the abuse-guard / weblab dashboards. The
container ships operator scripts at /app/scripts/ (see
scripts/admin_doctor.py, scripts/backfill_integration_owner_email.py).
Support
Questions or enterprise enquiries: clsplusplus.com or open a ticket at clsplusplus.com/tickets.
License
Provisional patent filed October 2025. Apache 2.0 (see LICENSE).
AlphaForge AI Labs • clsplusplus.com • 2026
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