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distributions-jks-1.0.1


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توضیحات

-
ویژگی مقدار
سیستم عامل -
نام فایل distributions-jks-1.0.1
نام distributions-jks
نسخه کتابخانه 1.0.1
نگهدارنده []
ایمیل نگهدارنده []
نویسنده Jaya Krishna with Udacity
ایمیل نویسنده jayakrishnas.work@gmail.com
آدرس صفحه اصلی -
آدرس اینترنتی https://pypi.org/project/distributions-jks/
مجوز -
Python Package: ‘distributions_jks’ Documentation Introduction This python package is an encapsulation of related classes and methods based on distributions in statistics. Distribution in statistics is a mathematical concept that represents how numbers are occurring, their possible values with probabilities. In this package there are three classes, each defined in separated modules. They are: 1. Distribution 2. Gaussian 3. Binomial These classes consist of attributes and methods useful for calculating simple statistical measures. Such as mean, standard deviation and probability density. There are also methods to visualize the distributions in an XY plane. DEPENDENCIES This package makes use of two more packages/modules. They are: - Matplotlib - Math Distribution Distribution class represents a general distribution of numbers. Any distribution consists of two attributes, mean and standard deviation. The Distribution class also provides a method for reading data from a text file. ATTRIBUTES data_list: list of ints - represents a list of numbers read from a data file. mean: float – represents the mean of a distribution (list of numbers) – default: 0. stdev: float – represents the standard deviation of a distribution (list of numbers) – default: 1 METHODS __init__() This instance initializing method executes at the time of instance creation. This function defines the instance variables mean and stdev. If arguments are provided mean and stdev are initialized with the values. Or else default values are given. Arguments self: An instance of Distribution class mean_v: represents the mean of a distribution stdev_v: represents the standard deviation of a distribution read_data_file() This method reads a text file consisting of numbers into the data_list attribute as a list of ints. The file should be a text file and formatted in such a way that each line only consists of a single number. Note: Even if we provide float values in the file, this method truncates the fractional part as it typecasts the values to int values. Arguments self: An instance of Distribution class file_path: The relative or absolute path of the text file where the data is stored. Gaussian This class, Gaussian, is a specialized distribution of numbers inheriting the Distribution class. It consists of the same attributes as of Distribution class and extra methods for dealing with new problems. ATTRIBUTES data_list: list of ints - represents a list of numbers read from a data file. mean: float – represents the mean of a distribution (list of numbers) – default: 0. stdev: float – represents the standard deviation of a distribution (list of numbers) – default: 1 METHODS __init__() – Same as of Distribution class read_data_file_() – Same as of Distribution class calculate_mean() This method calculates the mean value of the data_list and returns the same. Arguments self: An instance of Gaussian class Returns float – represents the mean value of the data_list calculate_stdev() This method calculates the standard deviation value of the data_list and returns the same. Arguments self: An instance of Gaussian class sample: boolean – represents whether the data_list is a sample (True) or population (False) Returns float – represents the standard deviation value of the data_list. probability_density() This method calculates the probability density function on the data_list based on point and returns the same. Arguments self: An instance of Gaussian class point: int – represents the point at which the function calculates the probability density. Returns float – represents the probability density value on the data_list at the point. plot_histogram() This function outputs a histogram of the instance variable data using matplotlib pyplot library. It takes nothing as an argument except the self and draws the plot based on the data_list itself. plot_histogram_probability_density() This function plots the normalized histogram of the data and a plot the probability density function along the same range. It take n_spaces as an argument and returns the X and Y axes values for the probability density function plot Arguments self: An instance of Gaussian class n_spaces: int – represents number of data points Returns list – X axes values for probability density function plot list – Y axes values for probability density function plot __add__() This function adds two Gaussian distribution instances together to create a new Gaussian distribution with different mean and standard deviation (stdev) values based on the given mean and stdev values of the provided two Gaussian instances. It overloads the + operator so that it can work with Gaussian class as a binary operator. It returns the new Gaussian instance. Arguments self: An instance of Gaussian class other: Gaussian – represents the other Gaussian instance we are adding the self Returns Guassian – A new Gaussian instance obtained from adding the self and other __repr__() This function represents the Gaussian instances as a string consisting of mean and standard deviation. It can used to directly print the contents of Gaussian instance without directly accessing the attributes. Binomial This class, Binomial, is a specialized distribution of numbers inheriting the Distribution class as well. It consists of the same attributes as of Distribution class and extra methods for dealing with new problems. ATTRIBUTES data_list: list of ints - represents a list of numbers read from a data file. size: int – represents the number of values present in the Binomial distribution. prob: float – represents the probability of the Binomial distribution. mean: float – represents the mean of a distribution (list of numbers) – default: 0. stdev: float – represents the standard deviation of a distribution (list of numbers) – default: 1 METHODS __init__() This initialization method adds on to the initialization method of Distribution class. It defines two extra instance attributes size and prob. read_data_file_() – Same as of Distribution class calculate_mean() This method calculates the mean value of the distribution based on size and probability (prob) and returns the same. Arguments self: An instance of Binomial class Returns float – represents the mean value of the distribution. calculate_stdev() This method calculates the standard deviation value of the distribution based on size and probability (prob) and returns the same. Arguments self: An instance of Binomial class Returns float – represents the standard deviation value of the distribution replace_stats_with_data() This method calculates the size and probability (prob) of the distribution provided by the text file read into data_list. Arguments self: An instance of Binomial class Returns int – represents the size of the distribution. float – represents the probability (prob) of the distribution. probability_density() This method calculates the probability density function on distribution based on point and returns the same. Arguments self: An instance of Binomial class point: int – represents the point at which the function calculates the probability density. Returns float – represents the probability density value on the distribution at the point. plot_bar() This function outputs a bar graph of the instance variable data using matplotlib pyplot library. It takes nothing as an argument except the self and draws the plot based on the data_list itself. plot_bar_probability_density() This function plots the normalized bar graph of the data and a plot the probability density function along the same range. It returns the X and Y axes values for the probability density function plot Arguments self: An instance of Binomial class Returns list – X axes values for probability density function plot list – Y axes values for probability density function plot __add__() This function adds two Binomial distribution instances together to create a new Binomial distribution with different size and probability (prov) values based on the given size and prob values of the provided two Binomial instances. It overloads the + operator so that it can work with Binomial class as a binary operator. It returns the new Binomial instance. Arguments self: An instance of Binomial class other: Binomial – represents the other Binomial instance we are adding the self. Returns Binomial – A new Binomial instance obtained from adding the self and other. __repr__() This function represents the Binomial instances as a string consisting of size, probability, mean and standard deviation.


نحوه نصب


نصب پکیج whl distributions-jks-1.0.1:

    pip install distributions-jks-1.0.1.whl


نصب پکیج tar.gz distributions-jks-1.0.1:

    pip install distributions-jks-1.0.1.tar.gz