Skip to main content

Monster Generator

Project description

MonsterLab

by Robert Sharp

Monster Class

Optional Inputs

It is recommended to pass all the optional arguments or none of them. For example, a custom type requires a custom name.

  • Name: Compound Gaussian Distribution -> String
    • Derived from Type
    • Multidimensional distribution of types and subtypes
  • Type: Wide Flat Distribution -> String
    • Demonic
    • Devilkin
    • Dragon
    • Undead
    • Elemental
    • Fey
    • Undead
  • Level: Poisson Distribution -> Integer
    • Range: [1..20]
    • Most Common: [4..7] ~64%
    • Mean: 6.001
    • Median: 6
  • Rarity: Linear Distribution [Rank 0..Rank 5] -> String
    • Rank 0: 30.5% Very Common
    • Rank 1: 25.0% Common
    • Rank 2: 19.4% Uncommon
    • Rank 3: 13.8% Rare
    • Rank 4: 8.3% Epic
    • Rank 5: 2.7% Legendary

Derived Fields

  • Damage: Compound Geometric Distribution with Linear Noise -> String
    • Derived from Level and Rarity
  • Health: Geometric Distribution with Gaussian Noise -> Float
    • Derived from Level and Rarity
  • Energy: Geometric Distribution with Gaussian Noise -> Float
    • Derived from Level and Rarity
  • Sanity: Geometric Distribution with Gaussian Noise -> Float
    • Derived from Level and Rarity
  • Time Stamp: The Monster's Birthday -> String

Example Monster

  • Name: Revenant
  • Type: Undead
  • Level: 3
  • Rarity: Rank 0
  • Damage: 3d2+1
  • Health: 6.35
  • Energy: 5.78
  • Sanity: 6.0
  • Time Stamp: 2021-08-09 14:23:23

Code Example

$ pip install MonsterLab
$ python3
>>> from MonsterLab import Monster
>>> Monster()
Name: Imp
Type: Demonic
Level: 10
Rarity: Rank 0
Damage: 10d2+1
Health: 20.89
Energy: 20.55
Sanity: 20.79
Time Stamp: 2021-08-09 14:23:23

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

MonsterLab-1.2.7.tar.gz (4.1 kB view hashes)

Uploaded Source

Built Distribution

MonsterLab-1.2.7-py3-none-any.whl (4.4 kB view hashes)

Uploaded Python 3

Supported by

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