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AI agent knowledge management system using Wiki-based markdown storage

Project description

OutoWiki Documentation

OutoWiki is a wiki-based knowledge management system designed for AI agents. It provides a structured way to store, retrieve, and organize information that AI agents learn across interactions.

Overview

OutoWiki solves the problem of persistent memory for AI agents by organizing information in a familiar wiki structure. Instead of opaque databases, OutoWiki uses markdown documents organized in folders, making the knowledge human-readable and editable.

Wiki-Style Classification

OutoWiki follows Wikipedia/NamuWiki classification principles:

  • is-a Relationship - Determine "What is this?" not "Is this similar?"
  • Category Tree Navigation - Navigate hierarchical categories to find appropriate documents
  • No Similarity Matching - Use topic understanding, not keyword matching
  • Explicit Document Linking - Support [[Document Name]] syntax for direct connection

Key Features

  • LLM-Driven Processing - All analysis, exploration, and decision-making by LLM (no Python pre-processing)
  • AgentLoop Architecture - Unified agent with tool-calling and conversation history
  • Folder-Based Classification - Categories are folders, no preset categories forced
  • Dynamic Category Creation - Create new categories as needed
  • Required Title Validation - title is REQUIRED for all documents, auto-retry if missing
  • Title-Filename Consistency - Document title must match filename (Wikipedia-style naming)
  • Fast Title Search - search_titles tool for quick document discovery by title
  • Search-Before-Create - Always search for existing documents before creating new ones
  • Full Document Delivery - Entire document content delivered to LLM (no 500-character limit)
  • Section-Based Editing - Wikipedia-style section editing (append, prepend, replace)
  • Multi-Topic Support - Process multiple topics separately, create one document per topic
  • Wikilink Support - Direct document connection via [[Document Name]] syntax
  • Version Tracking - Automatic version saving for all document operations
  • Relevance Scoring - Title/content/tag/category scoring for search results

Architecture

┌─────────────────────────────────────────────────────────┐
│                      OutoWiki Facade                     │
│  (OutoWiki class - main entry point for all operations)  │
└─────────────────────┬───────────────────────────────────┘
                      │
         ┌────────────┼────────────┐
         │            │            │
    ┌────▼─────────┐  ┌────▼────┐  ┌────▼────┐
    │   Recorder   │  │Searcher │  │AgentLoop│
    │  WithLoop    │  │WithLoop │  │         │
    └────┬─────────┘  └────┬────┘  └────┬────┘
         │                 │            │
         └─────────────────┼────────────┘
                           │
    ┌──────────────────────▼──────────────────────┐
    │              Tool Registry                   │
    │  ┌─────────┐ ┌──────────┐ ┌─────────────┐  │
    │  │Wiki I/O │ │Reasoning │ │ Specialized │  │
    │  │ Tools   │ │  Tools   │ │    Tools    │  │
    │  └─────────┘ └──────────┘ └─────────────┘  │
    └──────────────────────┬──────────────────────┘
                           │
    ┌──────────────────────▼──────────────────────┐
    │              LLM Provider                    │
    │         (OpenAI or Anthropic)                │
    └──────────────────────────────────────────────┘

The system has three main components:

  • RecorderWithAgentLoop: Uses AgentLoop for all recording operations. LLM autonomously analyzes content, explores wiki structure, and decides whether to create/modify/merge/split/delete documents. No Python pre-processing - all decisions made by LLM.
  • SearcherWithAgentLoop: Uses AgentLoop for all search operations. LLM autonomously explores the wiki using search tools, applies relevance scoring, and returns relevant documents.
  • AgentLoop: Unified LLM agent with tool-calling and conversation history. Manages multi-turn tool chaining and maintains context across operations.

AgentLoop Architecture

OutoWiki uses a unified agent loop for LLM operations. All analysis, exploration, and decision-making is performed by the LLM using tools.

┌─────────────────────────────────────────────────────────┐
│                      AgentLoop                           │
│  (Manages conversation history and tool execution)       │
└─────────────────────┬───────────────────────────────────┘
                      │
         ┌────────────┼────────────┐
         │            │            │
    ┌────▼────┐  ┌────▼────┐  ┌────▼────┐
    │Wiki I/O │  │Reasoning│  │Special- │
    │ Tools   │  │ Tools   │  │  ized   │
    │         │  │         │  │  Tools  │
    └─────────┘  └─────────┘  └─────────┘

Key Benefits:

  • LLM-Driven: All decisions made by LLM, not Python pre-processing
  • Conversation History: LLM sees previous tool results when planning next steps
  • Tool Chaining: LLM automatically chains tool calls based on what it finds
  • No Duplication: Single source of truth - LLM handles everything
  • Adaptive Strategy: LLM adjusts approach based on wiki state

Example Recording Flow:

result = recorder.record("User prefers Python for web development")
# LLM automatically:
# 1. Calls split_topics → identifies single topic
# 2. Calls search_titles → finds existing doc
# 3. Calls read_document → verifies content
# 4. Calls execute_modify_plan → appends new info

Example Search Flow:

results = searcher.search("Python web frameworks")
# LLM automatically:
# 1. Calls analyze_search_intent → determines strategy
# 2. Calls search_specific → checks exact paths
# 3. Calls search_folder_with_scoring → finds relevant docs
# 4. Returns paths with relevance ranking

Wiki Structure

OutoWiki organizes knowledge as markdown files in a folder hierarchy. No preset categories are forced - the wiki starts empty and categories are created dynamically as needed:

wiki/                    # Initially empty
├── programming/         # Created when first programming document is recorded
│   └── mobile/
│       └── camera.md
├── users/               # Created when first user document is recorded
│   └── alice/
│       └── preferences/
│           └── theme.md
└── ...                  # Categories grow organically

Each folder represents a category. When a document is recorded, the system:

  1. Analyzes the content to determine its topic (is-a relationship)
  2. Explores the existing category tree
  3. Finds or creates the appropriate category folder
  4. Records the document in that category

Documents support backlinks using the [[Document Name]] syntax. When auto_backlinks is enabled, OutoWiki automatically updates related documents when new content references existing topics.

Quick Start

from outowiki import OutoWiki, WikiConfig

# Create configuration
config = WikiConfig(
    provider="openai",
    api_key="sk-...",        # Your OpenAI API key
    model="gpt-4",
    wiki_path="./my_wiki"    # Local wiki folder
)

# Initialize the wiki
wiki = OutoWiki(config)

# Record new information
result = wiki.record({
    "type": "conversation",
    "content": "User prefers Python for web development. Suggested Flask or Django."
})
print(f"Recorded: {result.success}")
print(f"Actions: {result.actions_taken}")

# Search for information
results = wiki.search("programming preferences")
print(f"Found: {results.paths}")

# Work with a specific document
doc = wiki.get_document("concepts/web-development.md")
print(f"Title: {doc.metadata.title}")
print(doc.content[:500])

Documentation

Getting Started

API Reference

Guides

License

Apache License 2.0 - see LICENSE file for details.

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