Python - Uniform Distribution in Statistics Last Updated : 10 Jan, 2020 Comments Improve Suggest changes Like Article Like Report scipy.stats.uniform() is a Uniform continuous random variable. It is inherited from the of generic methods as an instance of the rv_continuous class. It completes the methods with details specific for this particular distribution. Parameters : q : lower and upper tail probability x : quantiles loc : [optional]location parameter. Default = 0 scale : [optional]scale parameter. Default = 1 size : [tuple of ints, optional] shape or random variates. moments : [optional] composed of letters [‘mvsk’]; ‘m’ = mean, ‘v’ = variance, ‘s’ = Fisher’s skew and ‘k’ = Fisher’s kurtosis. (default = ‘mv’). Results : Uniform continuous random variable Code #1 : Creating Uniform continuous random variable Python3 1== # importing library from scipy.stats import uniform numargs = uniform .numargs a, b = 0.2, 0.8 rv = uniform (a, b) print ("RV : \n", rv) Output : RV : scipy.stats._distn_infrastructure.rv_frozen object at 0x000002A9D9F1E708 Code #2 : Uniform continuous variates and probability distribution Python3 1== import numpy as np quantile = np.arange (0.01, 1, 0.1) # Random Variates R = uniform .rvs(a, b, size = 10) print ("Random Variates : \n", R) # PDF x = np.linspace(uniform.ppf(0.01, a, b), uniform.ppf(0.99, a, b), 10) R = uniform.pdf(x, 1, 3) print ("\nProbability Distribution : \n", R) Output : Random Variates : [0.30819979 0.95991962 0.70622125 0.60895239 0.72550267 0.73555393 0.3757751 0.88295358 0.50726709 0.57936421] Probability Distribution : [0. 0. 0. 0. 0. 0. 0. 0. 0. 0.] Code #3 : Graphical Representation. Python3 1== import numpy as np import matplotlib.pyplot as plt distribution = np.linspace(0, np.minimum(rv.dist.b, 3)) print("Distribution : \n", distribution) plot = plt.plot(distribution, rv.pdf(distribution)) Output : Distribution : [0. 0.02040816 0.04081633 0.06122449 0.08163265 0.10204082 0.12244898 0.14285714 0.16326531 0.18367347 0.20408163 0.2244898 0.24489796 0.26530612 0.28571429 0.30612245 0.32653061 0.34693878 0.36734694 0.3877551 0.40816327 0.42857143 0.44897959 0.46938776 0.48979592 0.51020408 0.53061224 0.55102041 0.57142857 0.59183673 0.6122449 0.63265306 0.65306122 0.67346939 0.69387755 0.71428571 0.73469388 0.75510204 0.7755102 0.79591837 0.81632653 0.83673469 0.85714286 0.87755102 0.89795918 0.91836735 0.93877551 0.95918367 0.97959184 1. ] Code #4 : Varying Positional Arguments Python3 1== import matplotlib.pyplot as plt import numpy as np x = np.linspace(0, 5, 100) # Varying positional arguments y1 = uniform.pdf(x, a, b) y2 = uniform.pdf(x, a, b) plt.plot(x, y1, "*", x, y2, "r--") Output : Comment More infoAdvertise with us Next Article Python - Uniform Discrete Distribution in Statistics M mathemagic Follow Improve Article Tags : Python Python scipy-stats-functions Practice Tags : python Similar Reads Python - Uniform Discrete Distribution in Statistics scipy.stats.randint() is a uniform discrete random variable. 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