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Z3_MCP
Un serveur MCP pour le prover du théorème Z3
3 years
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Z3 Theorem Prover with Functional Programming
A Python implementation of abstactions over the Z3 Theorem Prover capabilities using functional programming principles, exposed through a Model Context Protocol (MCP) server.
Overview
This project demonstrates how to use the Z3 Theorem Prover with a functional programming approach to solve complex constraint satisfaction problems and analyze relationships between entities. It leverages the returns
library for functional programming abstractions and exposes its capabilities through an MCP server.
Features
- Constraint Satisfaction Problems: Solve complex problems with variables and constraints
- Relationship Analysis: Analyze and infer relationships between entities
- Functional Programming: Uses pure functions, immutable data structures, and monadic error handling
- MCP Server: Exposes Z3 capabilities through a standardized interface
Project Structure
z3_mcp/
├── core/ # Core implementation
│ ├── solver.py # Constraint satisfaction problem solving
│ └── relationships.py # Relationship analysis
├── models/ # Data models
│ ├── constraints.py # Models for constraint problems
│ └── relationships.py # Models for relationship analysis
├── server/ # MCP server
│ └── main.py # Server implementation
└── examples/ # Example usage
└── main.py # Demonstration of capabilities
Technical Stack
- Z3 Solver: Microsoft's theorem prover for constraint solving
- Returns: Functional programming library for monadic operations and error handling
- Pydantic: Data validation and serialization
- FastMCP: Implementation of the Model Context Protocol
Installation
This project uses uv
for dependency management.
# Clone the repository
git clone https://github.com/javergar/z3_mcp.git
cd z3_mcp
# Install dependencies
uv pip install -e .
# Install development dependencies (optional)
uv pip install -e ".[dev]"
Usage
Running Examples
The project includes several examples that demonstrate the capabilities of the Z3 solver:
# Run the examples
python -m z3_poc.examples.main
Examples include:
- N-Queens Problem
- Family Relationship Inference
- Temporal Reasoning with Causal Relationships
- Cryptarithmetic Puzzle (SEND + MORE = MONEY)
Running the MCP Server
Start the MCP server to expose Z3 capabilities through the Model Context Protocol:
# Run the server
python -m z3_poc.server.main
Setting up the MCP Server with Claude/Cline
To use the Z3 solver MCP server with Claude through the Cline extension in VSCode, you need to configure the settings.json
file:
-
Configuration: Add the following to the
mcpServers
object in the settings file:
"z3-solver": {
"command": "uv",
"args": [
"--directory",
"/path/to/your/z3_poc",
"run",
"z3_poc/server/main.py"
],
"disabled": false,
"autoApprove": [
"simple_constraint_solver",
"simple_relationship_analyzer",
"solve_constraint_problem",
"analyze_relationships"
]
}
-
Configuration Options:
-
command
: The command to run (usinguv
for Python environment management) -
args
: Command arguments, including the path to your project and the server script -
disabled
: Set tofalse
to enable the server -
autoApprove
: List of tools that can be used without explicit approval
-
-
Restart: After updating the settings, restart VSCode or the Claude Desktop app for the changes to take effect.
Once configured, Claude will have access to the Z3 solver capabilities through the MCP server.
MCP Tools
The server provides the following tools:
solve_constraint_problem
Solves a constraint satisfaction problem with a full Problem model.
# Example input
{
"problem": {
"variables": [
{"name": "x", "type": "integer"},
{"name": "y", "type": "integer"}
],
"constraints": [
{"expression": "x + y == 10"},
{"expression": "x >= 0"},
{"expression": "y >= 0"}
],
"description": "Find non-negative values for x and y that sum to 10"
}
}
analyze_relationships
Analyzes relationships between entities with a full RelationshipQuery model.
# Example input
{
"query": {
"relationships": [
{"person1": "Alice", "person2": "Bob", "relation": "sibling"},
{"person1": "Bob", "person2": "Charlie", "relation": "sibling"}
],
"query": "sibling(Alice, Charlie)"
}
}
simple_constraint_solver
A simpler interface for solving constraint problems without requiring the full Problem model.
# Example input
{
"variables": [
{"name": "x", "type": "integer"},
{"name": "y", "type": "integer"}
],
"constraints": [
"x + y == 10",
"x <= 5",
"y <= 5"
],
"description": "Find values for x and y"
}
simple_relationship_analyzer
A simpler interface for analyzing relationships without requiring the full RelationshipQuery model.
# Example input
{
"relationships": [
{"person1": "Bob", "person2": "Hanna", "relation": "sibling"},
{"person1": "Bob", "person2": "Claudia", "relation": "sibling"}
],
"query": "sibling(Hanna, Claudia)"
}
Functional Programming Approach
This project demonstrates several functional programming principles:
- Immutable Data Structures: Using Pydantic models for immutable data representation
-
Result Type: Using
returns.result.Result
for error handling without exceptions -
Maybe Type: Using
returns.maybe.Maybe
for handling nullable values -
Do Notation: Using generator expressions with
Result.do()
for sequential operations - Pattern Matching: Using Python's match-case for handling different result types
Example of do notation in analyze_relationships
:
expr = (
RelationshipResult(...)
for entities in create_entities(query.relationships)
for relations in create_relations(query.relationships)
for _ in add_relationship_assertions(solver, query.relationships, entities, relations)
for query_expr in parse_query(query.query, entities, relations)
for (result, explanation, is_satisfiable) in evaluate_query(solver, query_expr)
)
return Result.do(expr)
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
License
This project is licensed under the MIT License - see the LICENSE file for details.
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Reviews

user_QrQSVuOj
I have been using z3_mcp for a while now, and it has significantly improved my workflow. The seamless integration and robust features stand out, making complex project management much easier. Kudos to javergar for creating such a reliable and efficient tool. Highly recommended for anyone looking to enhance their productivity. Check it out at https://github.com/javergar/z3_mcp.