CCR
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@CCRRecall the architecture decision for the transformer model."
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
CCR — Continuous Context Retention
Without CCR: "Can you remind me what we decided about the dataset preprocessing last week?"
With CCR: Your AI agent already knows — months of decisions, experiments, and code reasoning recalled instantly.
CCR gives MCP-capable AI agents persistent project memory, strategy playbooks, and a sandboxed Python REPL. Full auto-context for Claude Code and Kimi Code CLI; MCP tools for Continue.dev; SDK wrappers for Ollama and OpenAI API. macOS/Linux only (Windows support is not yet implemented).
New to CCR? See the Student & Researcher Quickstart — setup in 3 minutes, before/after examples, PhD workflow guide.
Quick Start
Requirements: macOS/Linux · Python 3.11+ · An AI agent (see cost table below)
# 0. Prerequisites (if not already installed)
# - Python 3.11+: python3 --version
# - Claude Code: npm install -g @anthropic-ai/claude-code (requires paid Claude Pro or API key)
# - Kimi CLI: pip install kimi-cli (free tier available)
# - Ollama: https://ollama.com (free, runs locally)
# 1. Install CCR (free and open source)
pip install ccr-memory # or: pip install -e . (from source)
# 2. Global setup — works across ALL projects automatically
ccr install-global
# 3. Open your agent from any project directory — CCR handles the rest
cd /your/project && claude # or kimi, continue, ollama, etc.
cd /your/project && kimi # Kimi Code CLI (free tier)That's it. Your agent will automatically load project memory on every session start and auto-commit progress when you finish — in every directory without per-project setup. Memory is stored per-project in ./.ccr/ and auto-initialized on first use.
What CCR Does
CCR is an MCP server that gives AI agents three capabilities they don't have natively:
Persistent Memory (GCC) — Git-style version-controlled memory that survives across sessions. Branch, merge, and search your project's decision history.
Self-Evolving Playbooks (ACE) — Strategy bullets that track what works and what doesn't, with temporal decay and automatic pruning.
Sandboxed REPL (RLM) — An isolated Python environment for iterative analysis, with repo search and structured output.
All core tools run with minimal overhead. The AI agent itself provides the reasoning; CCR provides the memory layer.
Works across agents — Claude Code and Kimi share memory via hooks; Continue.dev via MCP; Ollama and OpenAI via SDK wrappers. The same .ccr/ directory is readable by all.
For Researchers and Students
CCR is designed for long-running research projects where context loss is the main productivity bottleneck. A 3-month project means ~90 agent sessions. Without CCR, each starts from scratch. With CCR, each starts where the last left off.
Researcher-specific features:
gcc_commit(experiment={"metrics": {"val_loss": 0.23}})— log ML runs with metrics and hypothesisgcc_experiments(metric_filter={"val_loss": {"lt": 0.3}})— find all runs meeting a metric thresholdgcc_discuss(topic=..., decision=..., rationale=...)— persistent decision log for architecture choicesgcc_search("preprocessing decision")— find any past decision across commits, discussions, and sessions
CCR is free and open source. The AI agents it connects to are not:
Agent | Cost | Notes |
Claude Code | $20/mo Pro or ~$2–8/mo API | Most capable; requires Claude Pro subscription or Anthropic API key |
Kimi Code CLI | Free tier | No payment required for basic usage |
Continue | Free extension | But LLM backends (OpenAI/Anthropic) require paid API keys |
Ollama | Free | Runs local models; needs RAM/GPU for larger models |
OpenAI API | Pay-per-token | No subscription, but every API call costs money |
Global pricing note: Agent subscriptions (e.g., Claude Pro at $20/mo) are US-priced. At PPP, this is $40–80/mo equivalent in many countries. The API-key path (~$2–8/mo actual usage) is the most accessible entry point for budget-constrained students.
See the Student & Researcher Quickstart for setup, cost details, and a full PhD workflow guide.
Global Setup (ccr install-global) — Recommended
Run once to enable CCR across all projects:
ccr install-global # Claude Code + Kimi (default)
ccr install-global --agents auto # Auto-detect all installed agentsThis configures:
Claude Code global MCP + hooks (
~/.claude/.mcp.json,~/.claude/settings.json)Kimi Code CLI global MCP + hooks (
~/.kimi/mcp.json,~/.kimi/config.toml)Continue.dev MCP config (
~/.continue/config.json)Ollama wrapper script (
~/.ccr/bin/ollama-ccr)OpenAI API SDK wrapper + CLI prefix
Helper scripts in
~/.ccr/bin/and shell aliases
After installation, simply run your agent from any project directory. .ccr/ is auto-created on first use.
See docs/AGENTS.md for per-agent setup details.
Per-Project Setup (ccr install)
If you prefer per-project configuration (e.g., for team settings in version control):
cd /your/project
ccr install --agent claude-codeManual Setup
Add to your project's .mcp.json:
{
"mcpServers": {
"ccr": {
"command": ".venv/bin/python",
"args": ["-m", "ccr.mcp_server", "--project", "."]
}
}
}Then in your session, call gcc_context(level=2) to load memory and gcc_commit after completing tasks.
Related MCP server: Sprintra
Features
Persistent Memory (GCC)
Commits: Save what you did, why, files changed, and what's next
Branches: Isolate experiments with
gcc_branch, merge when decidedContext levels: 5 levels of detail retrieval (summary → full history)
Pattern buffer: Transferable skills extracted from commits, with quality scoring
Cross-linking: Automatic bidirectional links between related commits
Semantic search: Find past work by meaning, not just keywords (ONNX embeddings)
Playbooks (ACE)
Strategy bullets: "When X, do Y" rules with helpful/harmful counters
Temporal decay: Unused strategies fade (30 days → 21% weight, 90 days → 1%)
Two-tier scope: Global strategies (all projects) + project-specific strategies
Failure lessons: Structured analysis of what went wrong and prevention principles
Optional LLM-powered evolution: Automatic bullet generation, curation, and deduplication when a sub-model is configured
Sandboxed REPL (RLM)
Python-level sandbox: AST validation, restricted builtins, and module allowlist
Repo tools:
search_repo(),get_file(),estimate_tokens()available in REPLStructured output:
FINAL_VARtermination pattern for clean resultsOptional kernel sandbox: macOS Seatbelt / Linux Landlock available for standalone execution (disabled in MCP path to preserve repo tool access)
Repo Indexing
Hybrid search: Keyword + semantic + combined modes
Per-language parsing: Symbol extraction for Python, TypeScript, Rust, Go, and more
ONNX embeddings: Optional dense embeddings (all-MiniLM-L6-v2, 384-dim)
Zero-config: Works immediately; semantic search available with
pip install ccr-memory[semantic]
Session Logger
Every Q&A turn (user message + the agent's response) is persisted to .ccr/sessions.db (SQLite). Use it to replay any past session, debug unexpected agent behaviour, or export conversation pairs for fine-tuning. Logging is automatic when hooks are active — the agent calls session_log_turn after each response. See docs/session-logger.md for the full reference.
Architecture
AI Agent ──stdio──> CCR MCP Server
├── GCC Memory (.ccr/commits, branches, patterns)
├── ACE Playbook (.ccr/playbook.txt, failure_lessons.json)
├── RLM Sandbox (isolated Python subprocess)
└── Repo Index (.ccr/index.json, embeddings)CCR stores all data in a .ccr/ directory within your project (like .git/). Global strategies live in ~/.ccr/.
Tools
Core (used in every session)
Tool | Purpose |
| Save progress with what/why/files/next |
| Retrieve memory at 5 detail levels |
| Show current memory state |
| View strategies with stats |
| Rate strategies helpful/harmful |
| Add/update/merge/remove strategies |
Extended
Tool | Purpose |
| Experiment isolation |
| Trace commit relationships |
| Query transferable patterns |
| Ephemeral working memory |
| Generate hierarchical summaries |
| Find duplicate strategies |
| Remove harmful strategies |
| Sandboxed REPL |
| Repo search |
Session Logger
Tool | Purpose |
| Log the current Q&A turn (called automatically after each response) |
| Retrieve recent turns for a session (defaults to current session) |
| Full-text search across all session turns (FTS5) |
| Export a session as |
Research Foundation
CCR draws on 16 research papers across three tiers of implementation fidelity:
Implemented (>70% fidelity)
GCC (arXiv:2508.00031) — Git-style version-controlled agent memory
ACE (arXiv:2510.04618) — Evolving playbooks with structured bullets and delta operations
RLM (arXiv:2512.24601) — REPL-based execution with metadata-only stdout
Substantially Adapted (30-70% fidelity)
A-MAC (arXiv:2603.04549) — Admission control with 3 of 5 scoring factors
A-RAG (arXiv:2602.03442) — Hierarchical retrieval with keyword/semantic/hybrid modes
CER (arXiv:2506.06698) — Pattern buffer with dedup and quality scoring
MCE (arXiv:2601.21557) — Schema evolution with rule-based structural proposals
SkillRL (arXiv:2602.08234) — Failure-side skill distillation via structured lessons
Inspired By (<30% fidelity)
A-MEM/MAGMA — Commit cross-linking taxonomy
ERL — Trigger/action bullet structure
Memori — Semantic triple extraction
EverMemOS — Thematic commit clustering
EvolveR — Bayesian quality scoring for patterns
AgeMem — Working memory scratchpad
AgentEvolver — Contribution-weighted counters
ALMA — Meta-learned retrieval parameters
All implementations use mechanical heuristics where possible. See CLAUDE.md (project architecture notes) for detailed limitation tables comparing CCR's implementation vs. each paper.
vs. Alternatives
Feature | CCR | Mem0 | Letta/MemGPT | Graphiti |
Auto-manages memory | Yes (Claude + Kimi hooks) | Yes | Yes | Yes |
Multi-agent support | Yes (shared | No | No | No |
Version control (branch/merge) | Yes | No | No | No |
Playbooks with optional LLM evolution | Yes | No | No | No |
Sandboxed REPL | Yes | No | No | No |
No external database server | Yes | No | No (DB) | No (Neo4j) |
Core features work without LLM billing | Yes | No | No | No |
Open source | Apache 2.0 | Yes | Apache 2.0 | Apache 2.0 |
Configuration
Optional Dependencies
pip install ccr-memory[semantic] # ONNX embeddings for semantic search
pip install ccr-memory[vector] # sqlite-vec for persistent vector store
pip install ccr-memory[full] # Both of the aboveEnvironment Variables
Variable | Purpose |
| Override project root detection |
| Enable Ollama sub-model (e.g., |
| Enable Anthropic Haiku sub-model |
Sub-models are optional — they enable LLM-powered features like rolling summary synthesis and automatic bullet generation.
Diagnostics
ccr doctor # Check CCR health (deps, config, hooks)
ccr status # Show memory state
ccr context # Print project contextDevelopment
git clone https://github.com/qbit-glitch/ccr.git
cd ccr
python -m venv .venv && source .venv/bin/activate
pip install -e ".[dev]"
pytest tests/unit/ tests/integration/ -x -qLicense
Apache 2.0 — see LICENSE for full text.
This server cannot be installed
Maintenance
Resources
Unclaimed servers have limited discoverability.
Looking for Admin?
If you are the server author, to access and configure the admin panel.
Latest Blog Posts
- Your AI Chatbot Just Exposed Your CEO's Salary to an InternBy Om-Shree-0709 on .Agent IdentityMCP SecurityOAuth Delegation
- Why MCP Servers Need Execution Sandboxing (And Why Your Current Stack Isn't Enough)By Om-Shree-0709 on .Agentic AiPrompt InjectionWebAssembly
MCP directory API
We provide all the information about MCP servers via our MCP API.
curl -X GET 'https://glama.ai/api/mcp/v1/servers/qbit-glitch/ccr'
If you have feedback or need assistance with the MCP directory API, please join our Discord server