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Ragkit

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A self-hostable, MCP-native RAG pipeline that ingests, indexes, and serves data, enabling AI agents to scan codebases for prioritized findings and integrate wit

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Описание

A self-hostable, MCP-native RAG pipeline that ingests, indexes, and serves data, enabling AI agents to scan codebases for prioritized findings and integrate with CI workflows.

README

RAGKIT

RAGKIT

Batteries-included local RAG pipeline — ingest, index, serve

PyPI CI License: COCL 1.0 Suite

AI Agents & LLMOps — build, route, evaluate, and secure agents.

pip install cognis-ragkit
ragkit scan .            # → prioritized findings in seconds

🔎 Example output

Real, reproducible output from the tool — runs offline:

$ ragkit-emit --version
ragkit 0.1.0
$ ragkit-emit --help
usage: ragkit [-h] [--version] [--format {table,json}]
              {index,search,ask,stats} ...

Local RAG pipeline: ingest, index, serve.

positional arguments:
  {index,search,ask,stats}
    index               build an index from files/directories
    search              retrieve top-k chunks for a query
    ask                 extractive cited answer for a query
    stats               show index statistics

options:
  -h, --help            show this help message and exit
  --version             show program's version number and exit
  --format {table,json}
                        output format

Blocks above are real ragkit output — reproduce them from a clone.

Sample result format (illustrative values — run on your own data for real findings):

{
"Findings": [
    {
        "ID": "12345",
        "Title": "Suspicious Activity Detected",
        "Description": "An unknown entity accessed our network.",
        "Severity": "High"
    },
    {
        "ID": "67890",
        "Title": "Malware Infection Found",
        "Description": "A virus was detected on a workstation.",
        "Severity": "Medium"
    }
]
}

Usage — step by step

ragkit is a local, dependency-light RAG pipeline: ingest + TF-IDF index, search, and extractive cited answers. Console script: ragkit.

  1. Install:
    pipx install ragkit     # or: pip install ragkit
    
  2. Build an index from files or directories of .txt / .md documents (written to .ragkit/index.json by default):
    ragkit index ./docs --chunk-size 80 --overlap 20
    
  3. Search for the top-k most relevant chunks:
    ragkit search "how do retries work" --top-k 5
    
  4. Ask for an extractive, cited answer and read it as JSON (the --format flag is global, before the subcommand):
    ragkit --format json ask "what is the retention policy" --top-k 3 | jq '.answer, .citations'
    
  5. Inspect the index in CI/automation to confirm it built and is fresh:
    ragkit --format json stats | jq '.documents, .chunks'
    

Contents

Why ragkit?

self-host RAG

ragkit is single-purpose, scriptable, and self-hostable: point it at a target, get prioritized results in the format your workflow already speaks (table · JSON · SARIF), gate CI on it, and let agents drive it over MCP.

Features

  • ✅ Tokenize
  • ✅ Chunk Text
  • ✅ Ingest Paths
  • ✅ Build Index
  • ✅ Save Index
  • ✅ Load Index
  • ✅ Answer
  • ✅ Runs on Linux/macOS/Windows · Docker · devcontainer
  • ✅ Ports in Python, JavaScript, Go, and Rust (ports/)

Quick start

pip install cognis-ragkit
ragkit --version
ragkit scan .                       # scan current project
ragkit scan . --format json         # machine-readable
ragkit scan . --fail-on high        # CI gate (non-zero exit)

Example

$ ragkit scan .
  [HIGH    ] RAG-001  example finding             (./src/app.py)
  [MEDIUM  ] RAG-002  another signal              (./config.yaml)

  2 findings · risk score 5 · 38ms

Architecture

flowchart LR
  IN[sources] --> P[ragkit<br/>curate + validate]
  P --> OUT[query / analysis]

Use it from any AI stack

ragkit is interoperable with every popular way of using AI:

  • MCP serverragkit mcp (Claude Desktop, Cursor, Cognis.Studio, uncensored-fleet)
  • OpenAI-compatible / JSON — pipe ragkit scan . --format json into any agent or LLM
  • LangChain · CrewAI · AutoGen · LlamaIndex — wrap the CLI/JSON as a tool in one line
  • CI / scripts — exit codes + SARIF for non-AI pipelines

How it compares

Cognis ragkit RAGFlow
Self-hostable, no account varies
Single command, zero config ⚠️
JSON + SARIF for CI varies
MCP-native (AI agents)
Polyglot ports (JS/Go/Rust)
Open license ✅ COCL varies

Built in the spirit of RAGFlow, re-framed the Cognis way. Missing a credit? Open a PR.

Integrations

Pipes into your stack: SARIF for code-scanning, JSON for anything, an MCP server (ragkit mcp) for AI agents, and a webhook forwarder for SIEM/Slack/Jira. See docs/INTEGRATIONS.md.

Install — every way, every platform

pip install "git+https://github.com/cognis-digital/ragkit.git"    # pip (works today)
pipx install "git+https://github.com/cognis-digital/ragkit.git"   # isolated CLI
uv tool install "git+https://github.com/cognis-digital/ragkit.git" # uv
pip install cognis-ragkit                                          # PyPI (when published)
docker run --rm ghcr.io/cognis-digital/ragkit:latest --help        # Docker
brew install cognis-digital/tap/ragkit                             # Homebrew tap
curl -fsSL https://raw.githubusercontent.com/cognis-digital/ragkit/main/install.sh | sh
Linux macOS Windows Docker Cloud
scripts/setup-linux.sh scripts/setup-macos.sh scripts/setup-windows.ps1 docker run ghcr.io/cognis-digital/ragkit DEPLOY.md (AWS/Azure/GCP/k8s)

Related Cognis tools

  • agentsmith — Config-first scaffolding and orchestration for multi-agent workflows
  • skillhub — Local skill registry and installer for AI agents
  • toolguard — Runtime allowlist and policy for agent tool-calls
  • evalbench — Offline LLM / agent eval harness with regression gates
  • memorybank — Portable long-term memory store for agents, exposed over MCP
  • promptpack — Versioned prompt / template registry with A/B and rollbacks

Explore the suite → 🗂️ all 170+ tools · ⭐ awesome-cognis · 🔗 cognis-sources · 🤖 uncensored-fleet · 🧠 engram

Contributing

PRs, new rules, and demo scenarios are welcome under the collaboration-pull model — see CONTRIBUTING.md and SECURITY.md.

⭐ If ragkit saved you time, star it — it genuinely helps others find it.

Interoperability

{} composes with the 300+ tool Cognis suite — JSON in/out and a shared OpenAI-compatible /v1 backbone. See INTEROP.md for the suite map, composition patterns, and reference stacks.

License

Source-available under the Cognis Open Collaboration License (COCL) v1.0 — free for personal, internal-evaluation, research, and educational use; commercial / production use requires a license ([email protected]). See LICENSE.


Cognis Digital · one of 170+ tools in the Cognis Neural Suite · Making Tomorrow Better Today

from github.com/cognis-digital/ragkit

Установка Ragkit

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/cognis-digital/ragkit

FAQ

Ragkit MCP бесплатный?

Да, Ragkit MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Ragkit?

Нет, Ragkit работает без API-ключей и переменных окружения.

Ragkit — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить Ragkit в Claude Desktop, Claude Code или Cursor?

Открой Ragkit 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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