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A Python library for symbolic math expressions and evaluation.

Project description

Expressionizer

Expressionizer is a Python library for symbolic math expression building, simplification, and step-by-step evaluation output.

It is designed for apps and tools that need explainable algebraic transformation, not just final answers. Typical use cases include math tutoring workflows, educational software, expression debugging, and generating human-readable solution traces.

Pre-Stable Status

Expressionizer is currently in a pre-stable (0.x) phase.

  • The core API is usable and actively developed.
  • Some interfaces and behavior may change between minor versions.
  • If you are using this in production, pin an exact version.

Why Expressionizer

  • Build symbolic expressions in Python.
  • Evaluate with variable substitutions.
  • Generate step-by-step simplification traces.
  • Render expressions as plain text and LaTeX.
  • Support structured expression types like equations and inequalities.
  • Include procedural expression generation utilities.

Features

  • Symbolic expression tree primitives
    • Symbol, Power, Product, Sum, FunctionCall
    • Equation and InEquality data structures
  • Convenience constructors
    • symbol(...), sum(...), product(...), power(...), fraction(...)
  • Expression normalization and simplification
    • Combines numeric terms/factors
    • Merges powers and repeated structures where possible
  • Step-by-step evaluation engine
    • evaluate(...) returns both the result and evaluation context
    • Context tracks snapshots and can render explanation output
    • Includes decomposition-based arithmetic steps for larger operations
  • Configurable evaluator behavior
    • Limits and precision controls via EvaluatorOptions
    • Approximation and bounds behavior for very small/large numbers
  • Rendering
    • Plain text rendering with render(...)
    • LaTeX rendering with render_latex(...)
    • Expression tree inspection with render_type(...)
  • Function evaluation support
    • Works with substitutions for variables and callables
    • Includes common math function support through procedural helpers
  • Procedural generation utilities
    • Random variable name generation
    • Random number generation with constraints
    • Weighted random expression generation for testing/content generation
    • Optional calculus generation controls (allow_calculus, difficulty, guarantee_solvable)

Installation

pip install expressionizer

Quick Start

from expressionizer import symbol, sum, power, evaluate, render_latex

x = symbol("x")
expr = power(sum([x, 2]), 2)

result, context = evaluate(expr, substitutions={"x": 3})

print("Result:", result)
print("Expression (LaTeX):", render_latex(expr))
print(context.render())

Output from a real run:

Result: 25
Expression (LaTeX): (2 + x)^2
## Step 1
Substitute $x = 3$:
$$(2 + x)^2 \\
= (2 + 3)^2 \\
= 5^2$$

## Step 2
$$5^2 \\
= 5(5) \\
= 25$$

Real Examples (Generated by Expressionizer)

1) Symbolic multiplication with substitution

from expressionizer import symbol, sum, product, evaluate

x = symbol("x")
expr = product([sum([x, 4]), sum([x, 1])])

result, context = evaluate(expr, substitutions={"x": 5})

print(result)
print(context.render())
54
## Step 1
Substitute $x = 5$:
$$(4 + x)(1 + x) \\
= (4 + 5)(1 + 5) \\
= 9(1 + 5)$$

## Step 2
$$9(1 + 5) \\
= 9(6)$$

## Step 3
$$9(6) \\
= 54$$

2) Decimal decomposition and place-value addition

from expressionizer import Sum, evaluate

expr = Sum([4, 7.90623])
result, context = evaluate(expr)

print(result)
print(context.render())
11.90623
Let's break $4$ and $7.90623$ down into their components.
$$4 + 7.90623 \\
= 4 + 7 + 0.9 + 0.006 + 0.0002 + 0.00003$$

[aligned place-value rows]
4.00000
7.00000
0.90000
0.00600
0.00020
0.00003

$10^{-5}$: $3 + 0 + 0 + 0 + 0 + 0 = 3$
$10^{-4}$: $0 + 2 + 0 + 0 + 0 + 0 = 2$
$10^{-3}$: $0 + 0 + 6 + 0 + 0 + 0 = 6$
$10^{-1}$: $0 + 0 + 0 + 9 + 0 + 0 = 9$
$10^{0}$: $0 + 0 + 0 + 0 + 7 + 4 = 11$, carry the 1.
$10^{1}$: 1 (carried)
Putting it together, we get $11.90623$.
$$ 4 + 7 + 0.9 + 0.006 + 0.0002 + 0.00003 = 11.90623 $$

context.render() returns a formatted explanation sequence you can display in apps, notebooks, or web UIs.

Core API Overview

  • evaluate(expression, substitutions={}, error_on_invalid_snap=True)
    • Returns (result, context)
  • render(expression, group=False)
    • Plain text expression rendering
  • render_latex(expression, renderOptions=...)
    • LaTeX rendering for display and documentation
  • Constructors:
    • symbol(name)
    • sum(terms)
    • product(factors)
    • power(base, exponent)
    • fraction(numerator, denominator)
    • derivative(expression, variable, order=1)
    • partial_derivative(expression, variables)
    • integral(expression, variable, lower=None, upper=None)

Calculus Coverage Notes

Expressionizer includes a native rule-based calculus engine for derivatives and integrals, including multivariate differentiation and definite/indefinite integrals.

  • Coverage is strong for common educational forms (polynomials, many trig/exp/log forms, product/chain/power rules).
  • Some advanced integrals and non-elementary forms will remain symbolic (by design) rather than returning incorrect simplifications.
  • For procedural generation, prefer guarantee_solvable=True when you need high reliability for auto-generated calculus problems.
  • The evaluator now exposes solve metadata (solve_status, reason_code, coverage tags, explanation events) so you can filter low-confidence outputs in training pipelines.

Compatibility

  • Python >=3.8
  • OS independent

Roadmap

As a pre-stable library, near-term improvements are focused on:

  • API stabilization toward 1.0
  • Expanded test coverage
  • Improved docs and examples
  • Continued refinement of step-by-step output quality

SEO Keywords

Python symbolic math library, step-by-step math solver, algebra expression evaluator, LaTeX math renderer, expression simplification engine, educational math software backend.

Contributing

Issues and pull requests are welcome. If you report a bug, include:

  • the expression
  • substitutions used
  • expected behavior
  • actual behavior and rendered steps

License

MIT

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