Skip to main content

Python client for OAT (Optimization and Analysis Tooling) database

Project description

OatClient - Python Client for OAT Database

A Python client library for interacting with the OAT (Optimization and Analysis Tooling) database backend.

Features

  • ✅ Full support for logical operations (AND, OR, XOR, NOT, IMPLY, EQUIV)
  • ✅ Cardinality constraints (AtLeast, AtMost, Equal)
  • ✅ Linear inequality constraints (GeLineq)
  • ✅ Property management with filtering
  • ✅ Advanced query system with Filter helpers
  • ✅ Optimization solver integration
  • ✅ Buffered compilation modes (Instant/OnDemand)
  • ✅ Type hints for better IDE support

Installation

pip install oat

Quick Start

from OatClient import OatClient, CompilationSettings

# Initialize client
client = OatClient(
    base_url="http://localhost:7062",
    compilation_settings=CompilationSettings.INSTANT
)

# Create primitives
x = client.set_primitive("x", bound=complex(0, 1))
y = client.set_primitive("y", bound=complex(0, 1))
z = client.set_primitive("z", bound=complex(0, 1))

# Add properties
client.set_property(x, "name", "Variable X")

# Create constraints
at_least_2 = client.set_atleast([x, y, z], 2)

# Solve
solutions = client.solve(
    roots=[at_least_2],
    objectives=[{x: -1, y: -2}],
    assume={at_least_2: complex(1, 1)},
    maximize=True
)

if solutions:
    solution = solutions[0]
    print(f"x = {solution[x]}")  # complex(lower, upper)

Available Methods

Primitive Operations

  • set_primitive(id: str, bound: complex = complex(0, 1)) -> str - Create a single primitive
  • set_primitives(ids: List[str], bound: complex = complex(0, 1)) -> List[str] - Create multiple primitives
  • set_property(id: str, property: str, value: Any) -> None - Set node property

Logical Operations

  • set_and(references: List[str]) -> str - AND operation
  • set_or(references: List[str]) -> str - OR operation
  • set_xor(references: List[str]) -> str - XOR operation
  • set_not(references: List[str]) -> str - NOT operation
  • set_imply(lhs: str, rhs: str) -> str - Implication (lhs → rhs)
  • set_equiv(lhs: str, rhs: str) -> str - Equivalence (lhs ↔ rhs)

Cardinality Constraints

  • set_atleast(references: List[str], value: int) -> str - At least N must be true
  • set_atmost(references: List[str], value: int) -> str - At most N must be true
  • set_equal(references: List[str], value: Union[int, str]) -> str - Exactly N must be true

Linear Constraints

  • set_gelineq(coefficients: Dict[str, int], bias: int) -> str - Greater-or-equal linear inequality

Query Operations

  • get_node_ids(filter: Optional[dict] = None) -> List[str] - Get node IDs with optional filtering
  • get_properties(id: str) -> Dict[str, Any] - Get all properties for a node
  • get_many_properties(ids: List[str]) -> Dict[str, Dict[str, Any]] - Get properties for multiple nodes

Solver

  • solve(roots: List[str], objectives: List[Dict[str, int]], assume: Dict[str, complex] = {}, maximize: bool = True) -> List[dict] - Solve optimization problem

Utility

  • health_check() -> bool - Check server health
  • compile() -> None - Manually compile buffered operations
  • delete_node(id: str) -> None - Delete a node

Bounds

In OatClient, bounds are represented as complex numbers where:

  • real part = lower bound
  • imag part = upper bound
# Bound representing [0, 1]
bound = complex(0, 1)

# Bound representing [5, 10]
bound = complex(5, 10)

# Access bounds
lower = bound.real  # 5
upper = bound.imag  # 10

Filter Helpers

Use the Filter class to build complex queries:

from OatClient import Filter

# Simple property filter
nodes = client.get_node_ids(Filter.property_equals("type", "constraint"))

# Property exists
nodes = client.get_node_ids(Filter.property_exists("name"))

# Numeric comparisons
nodes = client.get_node_ids(Filter.property_gt("priority", 5))

# Complex filters
nodes = client.get_node_ids(Filter.and_(
    Filter.property_exists("name"),
    Filter.property_gt("priority", 5),
    Filter.node_id_starts_with("task_")
))

# OR and NOT
nodes = client.get_node_ids(Filter.or_(
    Filter.property_equals("status", "active"),
    Filter.not_(Filter.property_exists("archived"))
))

Available Filter Methods

  • Filter.property_equals(key: str, value: Any) - Property equals value
  • Filter.property_exists(key: str) - Property exists
  • Filter.property_contains(key: str, substring: str) - Property contains substring
  • Filter.property_gt(key: str, value: float) - Property greater than
  • Filter.property_gte(key: str, value: float) - Property greater than or equal
  • Filter.property_lt(key: str, value: float) - Property less than
  • Filter.property_lte(key: str, value: float) - Property less than or equal
  • Filter.node_id_equals(node_id: str) - Node ID equals
  • Filter.node_id_starts_with(prefix: str) - Node ID starts with prefix
  • Filter.and_(*expressions) - Combine with AND
  • Filter.or_(*expressions) - Combine with OR
  • Filter.not_(expression) - Negate expression

Compilation Modes

Instant Compilation (Default)

Operations are compiled immediately:

client = OatClient(base_url, CompilationSettings.INSTANT)
x = client.set_primitive("x")  # Compiled immediately

On-Demand Compilation

Operations are buffered and compiled in batch:

client = OatClient(base_url, CompilationSettings.ON_DEMAND)
x = client.set_primitive("x")  # Buffered
y = client.set_primitive("y")  # Buffered
client.compile()  # Compile all buffered operations

Complete Example

from OatClient import OatClient, CompilationSettings, Filter

# Initialize
client = OatClient("http://localhost:7062", CompilationSettings.INSTANT)

# Create primitives
a = client.set_primitive("a")
b = client.set_primitive("b")
c = client.set_primitive("c")

# Add metadata
client.set_property(a, "type", "task")
client.set_property(b, "type", "task")
client.set_property(c, "type", "resource")
client.set_property(a, "priority", 10)

# Create logical constraints
and_constraint = client.set_and([a, b])
or_constraint = client.set_or([b, c])
imply_constraint = client.set_imply(a, b)  # a → b

# Create cardinality constraint
atleast_2 = client.set_atleast([a, b, c], 2)

# Query nodes
tasks = client.get_node_ids(Filter.property_equals("type", "task"))
print(f"Tasks: {tasks}")

high_priority = client.get_node_ids(Filter.property_gt("priority", 5))
print(f"High priority: {high_priority}")

# Solve with objectives
solutions = client.solve(
    roots=[atleast_2],
    objectives=[{a: -1, b: -2}],  # Minimize weighted sum
    assume={atleast_2: complex(1, 1)},  # Force constraint to be true
    maximize=True
)

if solutions:
    for i, sol in enumerate(solutions):
        print(f"\nSolution {i + 1}:")
        for var, bound in sol.items():
            print(f"  {var}: [{int(bound.real)}, {int(bound.imag)}]")

Requirements

  • Python >= 3.10
  • requests

License

[Your License Here]

Links

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

oat_python_sdk-0.1.2.tar.gz (6.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

oat_python_sdk-0.1.2-py3-none-any.whl (7.2 kB view details)

Uploaded Python 3

File details

Details for the file oat_python_sdk-0.1.2.tar.gz.

File metadata

  • Download URL: oat_python_sdk-0.1.2.tar.gz
  • Upload date:
  • Size: 6.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.4 CPython/3.10.15 Darwin/24.6.0

File hashes

Hashes for oat_python_sdk-0.1.2.tar.gz
Algorithm Hash digest
SHA256 ff4743c016076c960342077734ec7bd3fef94ee5a18988759a14e22408c87ccb
MD5 89b6221101fc6e22eb04b3259dfc414a
BLAKE2b-256 acaf17061fe34d9b818e5f20811bea481bb494c49cab113d3bde28a7a8f777e3

See more details on using hashes here.

File details

Details for the file oat_python_sdk-0.1.2-py3-none-any.whl.

File metadata

  • Download URL: oat_python_sdk-0.1.2-py3-none-any.whl
  • Upload date:
  • Size: 7.2 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.4 CPython/3.10.15 Darwin/24.6.0

File hashes

Hashes for oat_python_sdk-0.1.2-py3-none-any.whl
Algorithm Hash digest
SHA256 e472766c07d3024b36a04c81e222e7a32707e1929257baf4abeec10231b36af2
MD5 d29fd88bd3bbb06c535ac5954a3981bf
BLAKE2b-256 e9036df96a29494f9fe8b728d56bcbc1fd743041c19a78d96fac975ec6a64126

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page