A package for working with graphs representing minimal implicational logic models
Project description
Implicational Logic Graph
A Python package for working with graphs representing minimal implicational logic models. This library provides tools for constructing and manipulating type systems based on combinatory logic, with support for transactional graph operations.
Features
- 🎯 Type System: Build complex type expressions using variables and applications (function types)
- 🧩 Combinators: Work with S and K combinators from combinatory logic
- 📊 Graph Structure: Represent type transformations as nodes and edges in a directed graph
- 🔄 Transactional Operations: Safely modify graphs with automatic rollback on failure
- ✅ Validation: Ensure graph consistency with built-in validation
- 🚀 Performance: Optimized data structures for O(1) lookups and efficient traversal
Installation
Using Poetry (recommended)
poetry add implicational-logic-graph
Using pip
pip install implicational-logic-graph
From source
git clone https://github.com/yourusername/implicational-logic-graph.git
cd implicational-logic-graph
poetry install
Quick Start
from implicational_logic_graph import var, app, node, Graph, Combinator
# Create type variables
A = var("A")
B = var("B")
# Create a function type: A -> B
func_type = app(A, B)
# Create a graph with nodes
graph = Graph()
with graph.connect() as conn:
conn.add_node(node(A))
conn.add_node(node(B))
print(f"Graph has {graph.node_count()} nodes")
Core Concepts
Types
The library provides a type system for minimal implicational logic:
- Variable: Atomic type variables (e.g.,
A,B,C) - Application: Function types representing
input_type -> output_type
from implicational_logic_graph import var, app
# Simple type variables
A = var("A")
B = var("B")
C = var("C")
# Function type: A -> B
simple_function = app(A, B)
# Complex type: (A -> B) -> C
complex_function = app(app(A, B), C)
# Nested type: A -> (B -> C)
nested_function = app(A, app(B, C))
print(simple_function) # Output: A -> B
print(complex_function) # Output: (A -> B) -> C
print(nested_function) # Output: A -> B -> C
Combinators
Combinators represent transformations between types. The library includes the S and K combinators from combinatory logic:
from implicational_logic_graph import S, K, var
A = var("A")
B = var("B")
C = var("C")
# S combinator: (A -> B -> C) -> (A -> B) -> A -> C
s_comb = S(A, B, C)
print(s_comb) # Output: S: (A -> B -> C) -> (A -> B) -> A -> C
# K combinator: A -> B -> A
k_comb = K(A, B)
print(k_comb) # Output: K: A -> B -> A
# Custom combinator
from implicational_logic_graph import Combinator
identity = Combinator(name="I", type=app(A, A))
print(identity) # Output: I: A -> A
Graph Elements
Nodes
Nodes represent types in the graph:
from implicational_logic_graph import node, var, app
A = var("A")
B = var("B")
# Create nodes
node_a = node(A)
node_b = node(B)
node_func = node(app(A, B))
print(node_a) # Output: Node(A)
print(node_func) # Output: Node(A -> B)
Edges
Edges represent combinator transformations between types:
from implicational_logic_graph import edge, node, Combinator, var, app
A = var("A")
B = var("B")
# Create nodes
n1 = node(A)
n2 = node(B)
# Create a combinator that transforms A to B
comb = Combinator(name="f", type=app(A, B))
# Create an edge
e = edge(n1, n2, comb)
print(e) # Output: A --[f: A -> B]--> B
Graph Operations
Creating and Modifying Graphs
from implicational_logic_graph import Graph, var, node, edge, Combinator, app
# Create an empty graph
graph = Graph()
# Create types and nodes
A = var("A")
B = var("B")
C = var("C")
n_a = node(A)
n_b = node(B)
n_c = node(C)
# Use transactional connections to modify the graph
with graph.connect() as conn:
conn.add_node(n_a)
conn.add_node(n_b)
conn.add_node(n_c)
print(f"Nodes: {graph.node_count()}") # Output: Nodes: 3
# Add edges
comb_ab = Combinator(name="f", type=app(A, B))
comb_bc = Combinator(name="g", type=app(B, C))
with graph.connect() as conn:
conn.add_edge(edge(n_a, n_b, comb_ab))
conn.add_edge(edge(n_b, n_c, comb_bc))
print(f"Edges: {graph.edge_count()}") # Output: Edges: 2
Querying Graphs
# Get node by UID
node_retrieved = graph.get_node(n_a.uid)
# Get node by type
node_by_type = graph.get_node_by_type(A)
# Check if node exists
exists = graph.has_node(n_a.uid)
# Get outgoing edges from a node
outgoing = graph.get_outgoing_edges(n_a.uid)
print(f"Outgoing from A: {len(outgoing)}")
# Get incoming edges to a node
incoming = graph.get_incoming_edges(n_c.uid)
print(f"Incoming to C: {len(incoming)}")
# Iterate over all nodes
for n in graph.nodes():
print(f"Node: {n.type}")
# Iterate over all edges
for e in graph.edges():
print(f"Edge: {e}")
Graph Validation
# Validate graph consistency
try:
graph.validate()
print("Graph is valid!")
except ValueError as e:
print(f"Graph validation failed: {e}")
Usage Examples
Example 1: Simple Type Chain
Build a chain of type transformations:
from implicational_logic_graph import (
Graph, var, app, node, edge, Combinator
)
# Create graph
graph = Graph()
# Define types
types = [var(name) for name in ["A", "B", "C", "D"]]
nodes = [node(t) for t in types]
# Add nodes
with graph.connect() as conn:
for n in nodes:
conn.add_node(n)
# Create transformation chain: A -> B -> C -> D
with graph.connect() as conn:
for i in range(len(nodes) - 1):
comb = Combinator(
name=f"f{i}",
type=app(types[i], types[i + 1])
)
conn.add_edge(edge(nodes[i], nodes[i + 1], comb))
print(f"Created chain with {graph.node_count()} nodes and {graph.edge_count()} edges")
# Query the chain
a_node = graph.get_node_by_type(var("A"))
outgoing = graph.get_outgoing_edges(a_node.uid)
print(f"A has {len(outgoing)} outgoing edge(s)")
Example 2: Complex Type Structure
Work with higher-order functions:
from implicational_logic_graph import (
Graph, var, app, node, edge, S, K
)
# Create graph
graph = Graph()
# Define type variables
A = var("A")
B = var("B")
C = var("C")
# Create complex types
# Type 1: A
# Type 2: B
# Type 3: A -> B
# Type 4: (A -> B) -> C
t1 = A
t2 = B
t3 = app(A, B)
t4 = app(t3, C)
nodes = [node(t) for t in [t1, t2, t3, t4]]
# Add nodes
with graph.connect() as conn:
for n in nodes:
conn.add_node(n)
# Add S and K combinators as edges
s_comb = S(A, B, C)
k_comb = K(A, B)
# Note: You would connect these based on your specific logic model
print(f"Created graph with {graph.node_count()} nodes")
print(f"S combinator type: {s_comb.type}")
print(f"K combinator type: {k_comb.type}")
Example 3: Transactional Rollback
Demonstrate automatic rollback on failure:
from implicational_logic_graph import (
Graph, var, node, edge, Combinator, app
)
graph = Graph()
A = var("A")
B = var("B")
n_a = node(A)
n_b = node(B)
# Add initial nodes
with graph.connect() as conn:
conn.add_node(n_a)
conn.add_node(n_b)
print(f"Initial nodes: {graph.node_count()}") # Output: 2
# Try to add invalid edge (will fail and rollback)
try:
with graph.connect() as conn:
# This will succeed
C = var("C")
n_c = node(C)
conn.add_node(n_c)
# This will fail (trying to add duplicate node)
conn.add_node(n_a) # Already exists!
except RuntimeError as e:
print(f"Transaction failed: {e}")
# Graph remains unchanged
print(f"Nodes after failed transaction: {graph.node_count()}") # Output: 2
print(f"Has C: {graph.get_node_by_type(var('C')) is not None}") # Output: False
Example 4: Building a Proof Tree
Create a structure representing logical derivations:
from implicational_logic_graph import (
Graph, var, app, node, edge, Combinator
)
# Create a graph representing a proof
graph = Graph()
# Axioms (base types)
P = var("P")
Q = var("Q")
R = var("R")
# Derived types (implications)
PQ = app(P, Q) # P -> Q
QR = app(Q, R) # Q -> R
PR = app(P, R) # P -> R (conclusion)
# Create nodes for each type in the proof
nodes_dict = {
"P": node(P),
"Q": node(Q),
"R": node(R),
"P->Q": node(PQ),
"Q->R": node(QR),
"P->R": node(PR),
}
# Add all nodes
with graph.connect() as conn:
for n in nodes_dict.values():
conn.add_node(n)
# Add inference rules as edges
with graph.connect() as conn:
# Modus Ponens: P, P->Q ⊢ Q
mp1 = Combinator(name="MP1", type=app(P, Q))
conn.add_edge(edge(nodes_dict["P"], nodes_dict["Q"], mp1))
# Modus Ponens: Q, Q->R ⊢ R
mp2 = Combinator(name="MP2", type=app(Q, R))
conn.add_edge(edge(nodes_dict["Q"], nodes_dict["R"], mp2))
# Composition: P->Q, Q->R ⊢ P->R
comp = Combinator(name="Comp", type=app(P, R))
conn.add_edge(edge(nodes_dict["P"], nodes_dict["R"], comp))
print(f"Proof tree has {graph.node_count()} types")
print(f"Proof tree has {graph.edge_count()} inference rules")
# Validate the proof structure
graph.validate()
print("Proof structure is valid!")
Example 5: Exploring Graph Structure
Navigate and analyze the graph:
from implicational_logic_graph import (
Graph, var, app, node, edge, Combinator
)
# Build a diamond-shaped graph
# A
# / \
# B C
# \ /
# D
graph = Graph()
A, B, C, D = var("A"), var("B"), var("C"), var("D")
n_a, n_b, n_c, n_d = node(A), node(B), node(C), node(D)
with graph.connect() as conn:
conn.add_node(n_a)
conn.add_node(n_b)
conn.add_node(n_c)
conn.add_node(n_d)
# A -> B, A -> C
conn.add_edge(edge(n_a, n_b, Combinator("f1", app(A, B))))
conn.add_edge(edge(n_a, n_c, Combinator("f2", app(A, C))))
# B -> D, C -> D
conn.add_edge(edge(n_b, n_d, Combinator("g1", app(B, D))))
conn.add_edge(edge(n_c, n_d, Combinator("g2", app(C, D))))
# Analyze the structure
print("=== Graph Analysis ===")
print(f"Total nodes: {graph.node_count()}")
print(f"Total edges: {graph.edge_count()}")
# Find all paths from A
print("\nFrom A:")
for e in graph.get_outgoing_edges(n_a.uid):
print(f" -> {e.dst_node.type} via {e.combinator.name}")
# Find all paths to D
print("\nTo D:")
for e in graph.get_incoming_edges(n_d.uid):
print(f" <- {e.src_node.type} via {e.combinator.name}")
# Check connectivity
print("\nNode connectivity:")
for n in graph.nodes():
incoming = len(graph.get_incoming_edges(n.uid))
outgoing = len(graph.get_outgoing_edges(n.uid))
print(f" {n.type}: {incoming} in, {outgoing} out")
API Reference
Types Module (types)
var(name: str) -> Variable: Create a type variableapp(input_type: BaseType, output_type: BaseType) -> Application: Create a function typeVariable: Atomic type variableApplication: Function application type
Combinator Module (combinator)
S(A, B, C) -> Combinator: Create S combinatorK(A, B) -> Combinator: Create K combinatorCombinator: Generic combinator with name and type
Graph Elements Module (graph_elements)
node(type: BaseType) -> Node: Create a nodeedge(src: Node, dst: Node, comb: Combinator) -> Edge: Create an edgeNode: Graph node representing a typeEdge: Graph edge representing a transformation
Graph Module (graph)
Graph(): Create a new empty graphgraph.connect() -> Connection: Create a transactional connectiongraph.validate() -> bool: Validate graph consistencygraph.has_node(uid: str) -> bool: Check if node existsgraph.get_node(uid: str) -> Node: Get node by UIDgraph.get_node_by_type(type: BaseType) -> Optional[Node]: Get node by typegraph.get_outgoing_edges(uid: str) -> list[Edge]: Get outgoing edgesgraph.get_incoming_edges(uid: str) -> list[Edge]: Get incoming edgesgraph.nodes() -> Iterator[Node]: Iterate over nodesgraph.edges() -> Iterator[Edge]: Iterate over edgesgraph.node_count() -> int: Get number of nodesgraph.edge_count() -> int: Get number of edges
Connection Module (connection)
Connection: Transactional graph modification contextconn.add_node(node: Node) -> Connection: Queue node additionconn.add_edge(edge: Edge) -> Connection: Queue edge additionconn.remove_node(uid: str) -> Connection: Queue node removalconn.remove_edge(uid: str) -> Connection: Queue edge removalconn.commit(): Apply all queued operationsconn.rollback(): Discard all queued operations
Development
Setup
# Clone the repository
git clone https://github.com/yourusername/implicational-logic-graph.git
cd implicational-logic-graph
# Install dependencies
poetry install
# Run tests
poetry run pytest
# Run tests with coverage
poetry run pytest --cov=src/implicational_logic_graph
Running Tests
# Run all tests
poetry run pytest
# Run specific test file
poetry run pytest tests/test_graph.py
# Run with verbose output
poetry run pytest -v
# Run with coverage report
poetry run pytest --cov=src/implicational_logic_graph --cov-report=html
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
- Fork the repository
- Create your feature branch (
git checkout -b feature/amazing-feature) - Commit your changes (
git commit -m 'Add some amazing feature') - Push to the branch (
git push origin feature/amazing-feature) - Open a Pull Request
License
This project is licensed under the MIT License - see the LICENSE file for details.
Acknowledgments
- Based on concepts from combinatory logic and type theory
- Inspired by minimal implicational logic models
- Built with Pydantic for data validation
Citation
If you use this library in your research, please cite:
@software{implicational_logic_graph,
author = {Carlos Fernandez},
title = {Implicational Logic Graph},
year = {2024},
url = {https://github.com/yourusername/implicational-logic-graph}
}
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