Kage Sensei

Decentralized AI Infrastructure

Kage Sensei

AI Memory & Learning Engine on Decentralized Storage

Build persistent AI workflows that remember context, learn from failures, and improve over time. Powered by MCP, Sui, Walrus, and a self-hosted developer-first stack.

Features

Memory via Walrus

Persist AI memories on decentralized storage with compression-aware metadata and deterministic context alignment.

MCP-Native Engine

Expose memory, learning, analysis, and suggestion tools through Streamable HTTP MCP for Codex and Claude-like clients.

Auto-Learning from Sessions

Ingest sessions, mine recurring failures, and convert them into reusable lessons and actionable playbooks.

Self-Hosted by Design

Run on your own infra with secure auth, encrypted config options, Docker-first deployment, and provider flexibility.

How it works

1

Connect AI

Attach Codex/Claude/OpenAI-compatible clients directly via MCP Streamable HTTP.

2

Store on Sui + Walrus

Write compressed memory artifacts with verifiable metadata and durable decentralized persistence.

3

Learn & Suggest

Continuously analyze sessions to generate lessons, suggestions, and quality improvements.

Tech Stack

Node.js Node.js
Sui Sui
Walrus Walrus
MCP MCP
Render Render