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Implements different number theory functions

Project description

num_theory

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A high-performance Python package for number theory operations, optimized for Project Euler and computational mathematics problems. From prime factorization to generating arithmetic progressions, the num_theory package is a versatile tool for students, researchers, and enthusiasts alike. It can also serve as a utility for developing solutions to Project Euler problems.

Project Euler is a series of challenging mathematical/computer programming problems that will require more than just mathematical insights to solve. Although mathematics will help you arrive at elegant and efficient methods, the use of a computer and programming skills will be required to solve most problems.

Although there are many other packages that share similar functionalities to ours, it can take considerable time and effort to find all the utilities you need to solve Project Euler problems. This creates a need for a package that consolidates those utilities conveniently in a simple, efficient, well documented, and easy to use package. num_theory fulfils this need.

Features

  • Fast prime number generation and primality testing
  • Efficient prime factorization
  • Arithmetic progression calculations
  • Optimized for computational challenges and competitive programming
  • Simple, intuitive API design (easy-to-use function calls with clear parameters and outputs)

Installation

pip install num_theory_euler_problems

Usage

Prime Numbers

from num_theory import get_primes, is_prime, prime_factorization

# Generate all primes under 100
primes = get_primes(100)

# Check if a number is prime
is_prime(997)  # Returns True

# Get prime factorization
factors = prime_factorization(84)  # Returns [(2, 2), (3, 1), (7, 1)]

Arithmetic Progressions

Real-Life Application: Saving Money with an Arithmetic Progression Imagine you want to save money using an increasing savings plan. You start with $50 in the first month, and you decide to increase your savings by $20 each month.

You can use the arithmetic_progression function to calculate:

The amount of money saved each month for 6 months The total amount saved after 6 months The exact amount saved in the 6th month

from num_theory import arithmetic_progression

# 1. Get the savings amount for each month
monthly_savings = arithmetic_progression(a=50, d=20, n=6)
print(monthly_savings)
# Output: [50, 70, 90, 110, 130, 150]

# 2. Calculate the total amount saved in 6 months
total_savings = arithmetic_progression(a=50, d=20, n=6, compute_sum=True)
print(total_savings)
# Output: 600.0

# 3. Find the savings amount in the 6th month
sixth_month_savings = arithmetic_progression(a=50, d=20, n=6, nth_term=True)
print(sixth_month_savings)
# Output: 150

Key Functions

Function Description Example
get_primes(n) Generates all primes less than n get_primes(10) returns [2, 3, 5, 7]
prime_factorization(n) Returns prime factors with their powers prime_factorization(12) returns [(2, 2), (3, 1)]
arithmetic_progression(a, d, n, ...) Handles arithmetic progression operations arithmetic_progression(a=2, d=3, n=5) returns [2, 5, 8, 11, 14]
is_prime(n) Tests primality efficiently is_prime(17) returns True

Relevance in the Python Ecosystem

This package complements existing Python libraries by offering a targeted collection of number theory utilities specifically for solving Project Euler problems.
Although there are other packages that provide similar functionalities, our package is special in that it consolidates various utility functions in one place to target Project Euler problems specifically.

Related Packages:

  • SymPy: This does provide some symbolic mathematics, including some number theory, but isn't optimized for the computational challenges of advanced number theory.
  • NumPy: The general-purpose library for numerical computations, but not specialized in number theory.
  • primesieve: A highly efficient library for prime generation. This package provides similar functionalities.

Comparison with Other Libraries

Feature num_theory SymPy NumPy primesieve
Focus Number Theory Symbolic Math Numerical Computing Prime Generation
Optimization Project Euler General Math General Purpose Prime Numbers
Learning Curve Simple Steep Moderate Simple
Speed Fast(10-100ms) Moderate(>100ms) Fast(10-100ms) Very Fast(<10ms)

Contributing

Interested in contributing? Check out the contributing guidelines . Please note that this project is released with a Code of Conduct. By contributing to this project, you agree to abide by its terms.

Authors

  • Dhruv Garg
  • Dominic Lam
  • Thamer Aldawood
  • Tingting Chen

License

num_theory was created by Dhruv Garg, Dominic Lam, Thamer Aldawood, Tingting Chen. It is licensed under the terms of the MIT license.

Credits

num_theory was created with cookiecutter and the py-pkgs-cookiecutter template.

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