memoriki
mcp
Gecti
Health Gecti
- License — License: MIT
- Description — Repository has a description
- Active repo — Last push 0 days ago
- Community trust — 55 GitHub stars
Code Gecti
- Code scan — Scanned 1 files during light audit, no dangerous patterns found
Permissions Gecti
- Permissions — No dangerous permissions requested
Purpose
This project provides a personal knowledge base that combines structured wiki management with semantic search and an entity graph, designed to act as a "second brain" for MCP-compatible AI agents like Claude Code.
Security Assessment
Overall Risk: Low. The tool does not request dangerous permissions, and the light code scan found no hardcoded secrets or dangerous execution patterns. It acts primarily as a structural file manager for a local directory and interfaces with a Python package (MemPalace). While it processes your personal notes and files (which you should always be mindful of when feeding data to LLMs), the tool itself does not appear to make unauthorized network requests or execute hidden shell commands.
Quality Assessment
Overall Quality: Good. The project is very new but actively maintained, with its most recent push occurring today. It has a clear MIT license and is building noticeable early traction within the community (55 GitHub stars). The documentation is excellent, providing straightforward setup instructions and explaining its architecture clearly. It cleanly integrates concepts from established developers (Andrej Karpathy) rather than reinventing the wheel.
Verdict
Safe to use.
This project provides a personal knowledge base that combines structured wiki management with semantic search and an entity graph, designed to act as a "second brain" for MCP-compatible AI agents like Claude Code.
Security Assessment
Overall Risk: Low. The tool does not request dangerous permissions, and the light code scan found no hardcoded secrets or dangerous execution patterns. It acts primarily as a structural file manager for a local directory and interfaces with a Python package (MemPalace). While it processes your personal notes and files (which you should always be mindful of when feeding data to LLMs), the tool itself does not appear to make unauthorized network requests or execute hidden shell commands.
Quality Assessment
Overall Quality: Good. The project is very new but actively maintained, with its most recent push occurring today. It has a clear MIT license and is building noticeable early traction within the community (55 GitHub stars). The documentation is excellent, providing straightforward setup instructions and explaining its architecture clearly. It cleanly integrates concepts from established developers (Andrej Karpathy) rather than reinventing the wheel.
Verdict
Safe to use.
Memoriki - LLM Wiki + MemPalace. Personal knowledge base with real memory.
README.md
Memoriki
Personal knowledge base with real memory. Combines LLM Wiki (Andrej Karpathy) + MemPalace (MCP server).
Wiki gives structure. MemPalace gives memory.
The Problem
- LLM Wiki without MemPalace = library without a catalog. Search is just grep.
- MemPalace without Wiki = search engine without books. Semantic search over raw chunks.
- Together = structured knowledge + semantic search + entity graph.
Three Layers of Knowledge
| Layer | What it does | Tool |
|---|---|---|
| Wiki | Structure, [[wiki-links]], YAML frontmatter, index | Markdown + Obsidian |
| MemPalace Drawers | Semantic search over all content | mempalace_search |
| MemPalace KG | Entity relationship graph with timestamps | mempalace_kg_query |
Architecture
memoriki/
raw/ # Your sources (articles, notes, transcripts)
wiki/ # LLM-generated wiki (LLM owns this entirely)
index.md # Page catalog - updated on every ingest
log.md # Operation log (append-only)
entities/ # People, companies, products
concepts/ # Ideas, patterns, frameworks
sources/ # Summary page per source
synthesis/ # Cross-cutting analysis, comparisons
mempalace.yaml # MemPalace config
CLAUDE.md # Schema and rules for the LLM
idea-file.md # Karpathy's original idea (reference)
Quick Start
# 1. Clone
git clone https://github.com/AyanbekDos/memoriki.git my-knowledge-base
cd my-knowledge-base
# 2. Install MemPalace
pip install mempalace
mempalace init .
# 3. Connect MemPalace to Claude Code
claude mcp add mempalace -- python -m mempalace.mcp_server
# 4. Drop your first source
cp ~/some-article.md raw/
# 5. Launch Claude Code and start ingesting
claude
# > Read raw/some-article.md and ingest it into the wiki
Operations
- Ingest - drop a file into
raw/, tell the LLM to read and integrate it into the wiki - Query - ask a question, LLM finds relevant pages and synthesizes an answer
- Lint - health check: contradictions, orphans, knowledge gaps
Works With
Any MCP-compatible LLM agent:
- Claude Code - use
CLAUDE.mdas-is - OpenAI Codex - rename
CLAUDE.mdtoAGENTS.md - Cursor, Gemini CLI and other MCP-compatible tools
Use Cases
- Founders: customer discovery, interviews, competitors, pivots - all in one place
- Researchers: papers, articles, notes - wiki with compounding synthesis
- Students: lecture notes, books, projects - structured "second brain"
- Teams: Slack threads, meetings, decisions - AI-maintained wiki
License
MIT
Credits
- Andrej Karpathy - original LLM Wiki idea
- MemPalace - MCP server for semantic search and knowledge graph
- Claude Code - LLM agent
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