Expense Tracker
Automated expense management with a Supabase backend and hierarchical category support.
Expense Tracker Backend
AI-powered expense tracking system with natural language interface, intelligent categorization, and real-time sync.
Architecture
The system uses a two-server architecture:
- MCP Server: Core expense tracking tools exposed via Model Context Protocol
- Gemini AI Server: FastAPI server providing chat interface with authentication
Features
- 🤖 Natural language expense management via Gemini AI
- 🧠 Intelligent categorization using embeddings and similarity search
- 🔐 JWT authentication with Supabase
- 📊 Hierarchical categories for organization
- 🏷️ Predefined tag system
- 📈 Real-time data sync
- 🔄 Learning system that improves over time
Quick Start
Prerequisites
python3 -m venv venv
source venv/bin/activate
pip install -r requirements.txt
Environment Setup
cp .env.example .env
# Add your credentials:
# - SUPABASE_URL
# - SUPABASE_KEY
# - GOOGLE_API_KEY (for Gemini)
Database Setup
Execute the SQL scripts in your Supabase SQL Editor:
# Core tables
scripts/create_tables.sql
# Embeddings support
scripts/create_embeddings_schema.sql
Run Both Servers
Terminal 1 - MCP Server:
python run_mcp.py
Terminal 2 - Gemini AI Server:
uvicorn app.servers.gemini.main:app --reload --port 8000
Initialize Data
# Populate categories
python scripts/populate_hierarchical_categories.py
# Populate predefined tags
python scripts/populate_predefined_tags.py
API Endpoints
Chat Interface
POST /chat- Send natural language commandsPOST /auth/refresh- Refresh JWT token
MCP Tools (via chat)
- Create expenses from natural language
- Auto-categorize transactions
- Get spending summaries
- Analyze subscriptions
- View recent transactions
Flutter Client
refer https://github.com/keyurgit45/expense-tracker-client
Testing
# Run all tests with mocks
ENVIRONMENT=test pytest tests/ -v
# Run specific components
ENVIRONMENT=test pytest tests/test_mcp_tools.py -v
ENVIRONMENT=test pytest tests/test_categorization.py -v
Project Structure
backend/
├── app/
│ ├── core/ # Business logic
│ ├── servers/
│ │ ├── gemini/ # AI chat server
│ │ └── mcp/ # MCP tool server
│ └── shared/ # Shared configs
├── scripts/ # Utilities
└── tests/ # Test suite
AI Categorization
The system uses a hybrid approach:
- Generates embeddings for transactions using Sentence Transformers
- Finds similar past transactions using pgvector
- Uses weighted voting to predict categories
- Falls back to rule-based matching
- Learns from user confirmations
Development
- API docs: http://localhost:8000/docs
- Frontend integration: Configure CORS in Gemini server
- MCP tools can be tested directly via chat interface
相關伺服器
Doc Reading and Converter
A server for reading and converting documents between PDF, DOCX, and Markdown formats using marker-pdf and pandoc.
better-notion-mcp
Markdown-first Notion MCP server with 9 composite tools, 39 actions, and ~77% token reduction via tiered docs.
YNAB MCP Server
Integrate AI assistants with your You Need A Budget (YNAB) account for budget automation and analysis.
MCP Character Counter
Analyzes text to provide detailed character counts, including letters, numbers, and symbols.
Rememberizer Common Knowledge
Access personal and team knowledge repositories, including documents and Slack discussions.
MCP Orchestrator
A universal interface to manage and interact with all your MCP servers from a single point, using external configuration files for mappings and credentials.
MCP Data Analizer
Analyze and visualize data from .xlsx and .csv files using matplotlib and plotly.
Market Sizing MCP Server
Provides market research and business analysis by integrating with multiple economic data sources like Alpha Vantage, BLS, and the World Bank.
MCP Fleet
A Python monorepo for AI-powered project management and productivity servers, utilizing the Claude API.
ActivityWatch MCP Server (Swift)
Provides structured access to ActivityWatch time tracking data for AI assistants.