izzypt December 22, 2021, 8:03pm #1. A-143, 9th Floor, Sovereign Corporate Tower, We use cookies to ensure you have the best browsing experience on our website. mean () function can be used to calculate mean/average of a given list of numbers. The parameter used to measure the variability of observations around the mean is called standard deviation. In Python, we usually do this by dividing the sum of given numbers with the count of number present. The absolute deviation of observations X1, X2, X3, .., Create a standard deviation function in python. SD = standard Deviation. In this tutorial we examined how to develop from scratch functions for calculating the mean, median, mode, max, min range, variance, and standard deviation of a data set. The standard deviation is defined as the square root of the average square deviation (calculated from the mean). Arithmetic mean is the sum of the elements along the axis divided by the number of elements. A Computer Science portal for geeks. Where N = number of observations, X 1, X 2 . The following code shows how to calculate the median absolute deviation for a single NumPy array in Python: import numpy as np from statsmodels import robust #define data data = np.array( [1, 4, 4, 7, 12, 13, 16, 19, 22, 24]) #calculate MAD robust.mad(data) 11.1195. By using this website, you agree with our Cookies Policy. For any projects, this can be achieved by simply importing an inbuilt library 'statistics' in Python 3, and using the inbuilt functions mean (), median () and mode (). In this example, I'll show how to calculate the standard deviation of all values in a NumPy array in Python. mean () - Mean Function in python pandas is used to calculate the arithmetic mean of a given set of numbers, mean of a data frame ,column wise mean or mean of column in pandas and row wise mean or mean of rows in pandas , lets see an example of each . We need to use the package name "statistics" in calculation of mean. Python can be used in scripts, applications, and . Learn more, Absolute Deviation and Absolute Mean Deviation using NumPy, Program for Mean Absolute Deviation in C++, Plot mean and standard deviation in Matplotlib, C++ code to find minimum arithmetic mean deviation, Write a Python program to find the mean absolute deviation of rows and columns in a dataframe. Here is the Python code for calculating the standard deviation. It determines the deviation of each data point relative to the mean. Understanding Standard Deviation With Python Standard deviation is a way to measure the variation of data. u = total mean. Note the following aspects in the code given below: For calculating the standard deviation of a sample of data (by default in the following method), the Bessel's correction is applied to the size of the data sample (N) as a result of which 1 is subtracted from the sample size (such as N - 1). Luckily, Python3 provide statistics module, which comes with very useful functions like mean (), median (), mode () etc. The mean () function accepts data as an argument and returns the mean of the data. Standard Deviation: Python standard deviation of list: In statistics, the standard deviation is a measure of spread. Python is a very popular language when it comes to data analysis and statistics. Deviation is a measure of the difference between the observed value of a variable and some other value, often that variable's mean. Syntax : mean([data-set])Parameters :[data-set] : List or tuple of a set of numbers.Returns : Sample arithmetic mean of the provided data-set.Exceptions :TypeError when anything other than numeric values are passed as parameter. How to Plot Mean and Standard Deviation in Pandas? It is a particularly helpful measure because it is less affected by outliers than other measures such as variance. for el in data: sd += (float(el) - mean)**2 sd = math.sqrt(sd / float(n-1)) return sd def avg_calc(ls): n, mean = len (ls), 0.0 if n = 1 . Standard deviation is calculated by two ways in Python, one way of calculation is by using the formula and another way of the calculation is by the use of statistics or numpy module. Mean and Standard Deviation in Python - AskPython Mean and Standard Deviation in Python Mean and standard deviation are two essential metrics in Statistics. Here's how Python's mean() works: >>> import statistics >>> statistics.mean([4, 8, 6, 5, 3, 2, 8, 9, 2, 5]) 5.2. A list is defined and is displayed on the console. The 'sum' of the list and the 'len' of the list is obtained. Returns the standard deviation, a measure of the spread of a distribution, of the array elements. The population mean and standard deviation of a dataset can be calculated using Numpy library in Python. The content of the article is structured as follows: 1) Example 1: Mean of List Object 2) Example 2: Mean of One Particular Column in pandas DataFrame This is very different than the mean, median which gives us the "middle" of our data, also known as the average. The mean(329.78) is subtracted . By using our site, you This function returns the standard deviation of the numpy array elements. This is the output that is displayed on the console. How to Plot Mean and Standard Deviation in Pandas? NumPy allows us to specify the dimensions over which a statistic like the mean, min, and max are calculated via the " axis " argument. float64 intermediate and return values . It is also calculated as the square root of the variance, which is used to quantify the same thing. Standard deviation is also abbreviated as SD. The numpy module in python provides various functions in which one is numpy.std (). Step 1: Firstly we have to calculate the Mean, Mode, and median of the series. Calculate the average, variance and standard deviation in Python using NumPy, Create the Mean and Standard Deviation of the Data of a Pandas Series. Python mean ()has a function that calculates the average of a list of numbers. Method 1: Using numpy.mean (), numpy.std (), numpy.var () Python import numpy as np array = np.arange (10) Python Exercises, Practice and Solution: Write a Python program to calculate the standard deviation of the following data. Mean absolute deviation (MAD) is a measure of the average absolute distance between each data value and the mean of a data set. Absolute Deviation:The absolute deviation of an element of a data set is the absolute difference between that element and a given point. Variance in Python: There are different ways to extract the variance of a data set in Python. In this, we perform iteration of each element and compute deviation from mean using abs(), the computation of mean is done using mean(). The basic formula for finding out mean deviation is : Mean deviation= Sum of absolute values of deviations from 'a' The number of observations Solved Example for You Q: The sum of squares of deviation of variates from their A.M. is always Zero Minimum Maximum Cannot be said Sol: The correct option is "B". Mean Deviation Definition. Python Programming Foundation -Self Paced Course, Data Structures & Algorithms- Self Paced Course, median() function in Python statistics module, mode() function in Python statistics module, Python - Power-Function Distribution in Statistics, median_grouped() function in Python statistics module, median_high() function in Python statistics module, median_low() function in Python statistics module, Use Pandas to Calculate Statistics in Python, Python - Moyal Distribution in Statistics. Enjoy unlimited access on 5500+ Hand Picked Quality Video Courses. . We just take the square root because the way variance is calculated involves squaring some values. Step 3: If the series is a discrete one or continuous then we also have to . Now, the elements in the list are iterated and squared. SQL Query Overwrite in Source Qualifier - Informatica, Avoiding Sequence Generator Transformation in Informatica, Reusable VS Non Reusable & Properties of Sequence Generator Transformation, Sequence Generator Transformation in Infotmatica, Load Variable Fields Flat File in Oracle Table, Parameterizing the Flat File Names - Informatica, Direct and Indirect Flat File Loading (Source File Type) - Informatica, Target Load Order/ Target Load Plan in Informatica, Reverse the Contents of Flat File Informatica, Mapping Variable Usage Example in Informatica, Transaction Control Transformation in Informatica, Load Source File Name in Target - Informatica, Design/Implement/Create SCD Type 2 Effective Date Mapping in Informatica, Design/Implement/Create SCD Type 2 Flag Mapping in Informatica, Design/Implement/Create SCD Type 2 Version Mapping in Informatica, Create/Design/Implement SCD Type 3 Mapping in Informatica, Create/Design/Implement SCD Type 1 Mapping in Informatica, Create/Implement SCD - Informatica Mapping Wizard. Method 2: Calculate Geometric Mean Using NumPy The original list : [3, 5, 7, 10, 12] the standard deviation of list is : 3.2619012860600183 Explanation A list is defined and is displayed on the console. Calculation of Standard Deviation in Python. import numpy as np myList = df.collect () total = [] for product,nb in myList: for p2,score in nb: total.append (score) mean = np.mean (total) std = np.std (total) The standard deviation has the advantage of . Rejection it is a measure of the difference between the observed value of a variable and some other value, often the mean of that variable. Sample Python Code for Standard Deviation Standard Deviation Explained The degrees of freedom of the standard deviation can be changed using the ddof parameter. July 20, 2021 by Zach How to Calculate Geometric Mean in Python (With Examples) There are two ways to calculate the geometric mean in Python: Method 1: Calculate Geometric Mean Using SciPy from scipy.stats import gmean #calculate geometric mean gmean ( [value1, value2, value3, .]) Then, you can use the numpy is std () function. Absolute mean deviation:The absolute mean deviation measures the spread and scatteredness of data around, preferably the median value, in terms of absolute deviation. The mean deviation of the data values can be easily calculated using the below procedure. How to create boxplot using mean and standard deviation in R? Interquartile Range and Quartile Deviation using NumPy and SciPy, Python | Find Mean of a List of Numpy Array. The Standard Deviation is calculated by the formula given below:-. The parameters of the normal distribution plot defining the shape and the probabilities are mean and standard deviation. A-143, 9th Floor, Sovereign Corporate Tower, We use cookies to ensure you have the best browsing experience on our website. Using mean () from the Python Statistic Module Calculating measures of central tendency is a common operation for most developers. A is the median of the data. The median absolute deviation (MAD, ) computes the median over the absolute deviations from the median.It is a measure of dispersion similar to the standard deviation but . PyTorch How to normalize an image with mean and standard deviation? Step 1: Find the mean value for the given data values Their sum is obtained and assigned to another variable. acknowledge that you have read and understood our, Data Structure & Algorithm Classes (Live), Full Stack Development with React & Node JS (Live), Fundamentals of Java Collection Framework, Full Stack Development with React & Node JS(Live), GATE CS Original Papers and Official Keys, ISRO CS Original Papers and Official Keys, ISRO CS Syllabus for Scientist/Engineer Exam, stdev() method in Python statistics module, Python | Check if two lists are identical, Python | Check if all elements in a list are identical, Python | Check if all elements in a List are same, Adding new column to existing DataFrame in Pandas, How to get column names in Pandas dataframe. Method #1 : Using loop + mean() + abs() In this, we perform iteration of each element and compute deviation from mean using abs(), the computation of mean is done using mean().02-Dec-2020 How do you calculate mean deviation? Step 3 - And add them i.e. As you can see, the result is 2.338. 4+2+2+4 = 12. In NumPy, we can compute the mean, standard deviation, and variance of a given array along the second axis by two approaches first is by using inbuilt functions and second is by the formulas of the mean, standard deviation, and variance. The square root of the above variable is obtained and assigned to a result. Absolute value:Absolute value or the modulus of a real number x is the non-negative value of x without regard to its sign. dev. acknowledge that you have read and understood our, Data Structure & Algorithm Classes (Live), Full Stack Development with React & Node JS (Live), Fundamentals of Java Collection Framework, Full Stack Development with React & Node JS(Live), GATE CS Original Papers and Official Keys, ISRO CS Original Papers and Official Keys, ISRO CS Syllabus for Scientist/Engineer Exam, Adding new column to existing DataFrame in Pandas, How to get column names in Pandas dataframe, Python program to convert a list to string, Reading and Writing to text files in Python, Different ways to create Pandas Dataframe, isupper(), islower(), lower(), upper() in Python and their applications, Python | Program to convert String to a List, Check if element exists in list in Python, Taking multiple inputs from user in Python, Python - Test if elements of list are in Min/Max range from other list. Mean-Variance-Standard Deviation Calculator Challenge. To be more precise, the standard deviation for the first dataset is 3.13 and for the second set is 14.67. Group the dataframe on the column (s) you want. Let's write a vanilla implementation of calculating std dev from scratch in Python without using any external libraries. #. We will now look at the syntax of numpy.mean() or np.mean(). Numpy Mean : np.mean() The numpy mean function is used for computing the arithmetic mean of the input values. . First of all, after importing the libraries, I calculate the mean and the standard deviation for both datasets: City_A=[36,37,36,34,39,33,30,30,32,31,31,32,32,33,35] . To calculate MAD, we measure the absolute distance between each data point and the mean. The average is taken over the flattened array by default, otherwise over the specified axis. Python mean is a function to calculate the arithmetic mean of any sequence of numbers. x = Each value of array. Both have the same mean 25. The absolute deviation of the observations X1, X2, X3, .., Xn around a value A is defined as . First, we generate the random data with mean of 5 and standard deviation (SD) of 1. The mean deviation is defined as a statistical measure that is used to calculate the average deviation from the mean value of the given data set. scipy.stats.median_abs_deviation# scipy.stats. Python - Mean deviation of Elements Last Updated : 02 Dec, 2020 Read Discuss Practice Video Courses Given a list, the task is to write a Python program to compute how deviated are each of them from its list mean. It looks like nothing was found at this location. Step 2: Ignoring all the negative signs, we have to calculate the Deviations from the Mean, median, and Mode like how it is solved in Mean Deviation examples. Commencing this tutorial with the mean function. The probabilities for values occurring near the mean are higher than the values far away from the mean. To find the z-score we need to find the distance 500 is from the mean and divide it by the standard deviation. Finding the Median of a Sample It is a measure of the central location of data in a set of values which vary in range. To find the mean, the method is: import statistics statistics.mode ( [ 5, 3, 6, 8, 9, 12, 5 ]) Conclusion: The mean (or average), the median, and the mode are usually the initial things data analysts look at in any sample data when trying to assume the necessary inclination of the data. For this task, we can apply the std function of the NumPy package as shown below: print( np. Again, a higher standard deviation indicates that the data are dispersed out in a wide range. Share Follow Therefore the below-given code is not efficient. For example absolute value of 7 is 7 and the absolute value of -7 is also 7. The following code shows the work: . It's a metric for quantifying the spread or variance of a group of data values. What is Mean? Affordable solution to train a team and make them project ready. Like 0 Next The median absolute deviation is a measure of dispersion. So, with the function like mean(), trending and featured values can be extracted from the large data sets. It takes in a list and returns the arithmetic mean, or how many items are in the list divided by how many times they were counted. Python Programming Foundation -Self Paced Course, Data Structures & Algorithms- Self Paced Course, Absolute Deviation and Absolute Mean Deviation using NumPy | Python, Python | Pandas Series.mad() to calculate Mean Absolute Deviation of a Series. How to calculate probability in a normal distribution given mean and standard deviation in Python? A lower standard deviation indicates that the values are closer to the mean value. We just need to import the statistics module and then call mean() with our sample as an argument. Calculate Mean in Python (5 Examples) In this tutorial, I'll demonstrate how to compute the mean of a list and the columns of a pandas DataFrame in Python programming. In this tutorial, we will calculate the standard deviation using Python. The median absolute deviation for the dataset turns out to be 11.1195. However, the first dataset has values closer to the mean and the second dataset has values more spread out. This is a quick way of finding the mean using Python. However, it's not easy to wrap your head around numbers like 3.13 or 14.67. This is assigned to a variable. Prerequisite : Introduction to Statistical FunctionsPython is a very popular language when it comes to data analysis and statistics. acknowledge that you have read and understood our, Data Structure & Algorithm Classes (Live), Full Stack Development with React & Node JS (Live), Fundamentals of Java Collection Framework, Full Stack Development with React & Node JS(Live), GATE CS Original Papers and Official Keys, ISRO CS Original Papers and Official Keys, ISRO CS Syllabus for Scientist/Engineer Exam, Absolute Deviation and Absolute Mean Deviation using NumPy | Python, Dealing with Rows and Columns in Pandas DataFrame, Decimal Functions in Python | Set 2 (logical_and(), normalize(), quantize(), rotate() ), NetworkX : Python software package for study of complex networks, Directed Graphs, Multigraphs and Visualization in Networkx, Python | Visualize graphs generated in NetworkX using Matplotlib, Box plot visualization with Pandas and Seaborn, How to get column names in Pandas dataframe, Python program to find number of days between two given dates, Python | Difference between two dates (in minutes) using datetime.timedelta() method, Python | Convert string to DateTime and vice-versa, Convert the column type from string to datetime format in Pandas dataframe, Adding new column to existing DataFrame in Pandas, Create a new column in Pandas DataFrame based on the existing columns, Python | Creating a Pandas dataframe column based on a given condition, Linear Regression (Python Implementation). As you can see, the mean of the sample is close to 1. import numpy as np # mean and standard deviation mu, sigma = 5, 1 y = np.random.normal (mu, sigma, 100) print(np.std (y)) 1.084308455964664 This module is a built-in module that comes with Python's installation, and it lets yo. It contains well written, well thought and well explained computer science and programming articles, quizzes and practice/competitive programming/company interview Questions. numpy.mean(a, axis=None, dtype=None, out=None, keepdims=<no value>, *, where=<no value>) [source] #. So, we find the absolute value of deviation from the mean. The standard deviation is computed for the flattened array by default . Python. Maybe try searching? Return the standard deviation of the masked array elements in NumPy, Program to find mean of array after removing some elements in Python, Generate random numbers by giving certain mean and standard deviation in Excel. Select the field (s) for which you want to estimate the standard deviation. You can write your own function to calculate the standard deviation or use off-the-shelf methods from numpy or pandas. This means that it is a measure that illustrates the spread of a dataset. How to find mean and standard deviation from frequency table in R? The following is a step-by-step guide of what you need to do. It returns mean of the data set passed as parameters.Arithmetic mean is the sum of data divided by the number of data-points. numpy.mean. The 'sum' is divided by the 'len'. The standard deviation is usually calculated for a given column and it's normalised by N-1 by default. To use the mean () method in the Python program, import the Python statistics module, and then we can use the mean function to return the mean of the given list. There are a few steps that we can follow in order to calculate the Mean Deviation. The coefficient of variation is used to get an idea of how large the standard deviation is. If you enjoy working in Pandas (like I do), it has a useful function for the mean absolute deviation: import pandas as pd df = pd.DataFrame () df ['a'] = [1, 1, 2, 2, 4, 6, 9] df ['a'].mad () Output: 2.3673469387755106 Share Follow answered Jun 19, 2017 at 11:13 Sam Perry 2,514 3 26 29 1 This is the best answer. In the above example the mean absolute deviation can be calculated as: \ (\begin {array} {l}Mean ~Absolute~ Deviation~ (M.A.D)\end {array} \) =. Note that not every possible combination of bounds, mean and standard deviation will produce a valid distribution in this case, though, and depending on the resulting values of alpha and beta the probability density function may look like an "inverted bell" instead (even though mean and standard deviation would still be correct). (2+4+8+10)/4 = 6. Now, the elements in the list are iterated and squared. To get the standard deviation of each group, you can directly apply the pandas std () function to the selected column (s) from the result of pandas groupby. It returns mean of the data set passed as parameters. The data set having a higher value of absolute mean deviation (or absolute deviation) has more variability. The Pandas DataFrame std () function allows to calculate the standard deviation of a data set. In this Python 3 programming tutorial, we cover the statistics module. Deviation:Deviation is a measure of the difference between the observed value of a variable and some other value, often that variables mean. N = numbers of values. def get_std_dev(ls): n = len(ls) mean = sum(ls) / n. The data set with a lower value of absolute mean deviation (or absolute deviation) is preferable. This is what makes the measure robust, meaning that it has good performance for drawing data. That's because Python's statistics module provides diverse functions to calculate them, along with other basic statistics topics. By using our site, you #. We make use of First and third party cookies to improve our user experience. Examples: Input : test_list = [7, 5, 1, 2, 10, 3] That will return the mean of the sample. numpy.std(a, axis=None, dtype=None, out=None, ddof=0, keepdims=<no value>, *, where=<no value>) [source] #. The absolute deviation of observation X1, X2, X3, , Xn is minimum when measured around median i.e. Additionally, we investigated how to find the correlation between two datasets. Terminology Standard deviation in Python Tell us what's happening: Hello everyone , my code is not passing the automated test. This function returns the array items' standard deviation. Agree The standard deviation is more commonly used, and it is a measure of the dispersion of the data. When it is required to find the mean deviation of the elements of a list, the sum method and the len method is used. By using our site, you The mean () is a built-in Python statistics function used to calculate the average of numbers and lists. The sum of the list and the len of the list is obtained. Python's numpy package includes a function named numpy.std () that computes the standard deviation along the provided axis. Absolute Deviation: The absolute deviation of an element of a data set is the absolute difference between that element and a given point. Input : test_list = [1, 2, 3, 4, 5]Output : [2, 1, 0, 1, 2]Explanation : Mean is 3, related differences are computed. The mean and standard deviation required to standardize pixel values can be calculated from the pixel values in each image only (sample-wise) or across the entire training dataset (feature-wise). std( my_array)) # Get standard deviation of all array values # 2.3380903889000244. Also, there are other external libraries that can help you achieve the same results in just 1 line of code as the code is pre-written in those libraries. Then, thus obtained absolute deviation is termed as the absolute mean deviation and is defined as: Example:Following are the number of candidates enrolled each day in last 20 days for the GeeksforGeeks -DS & Algo course 75, 69, 56, 46, 47, 79, 92, 97, 89, 88, 36, 96, 105, 32, 116, 101, 79, 93, 91, 112, Code #2: Absolute mean deviation using numpy, Code #3: Absolute mean deviation using pandas, Data Structures & Algorithms- Self Paced Course, Python | Pandas Series.mad() to calculate Mean Absolute Deviation of a Series, Compute the mean, standard deviation, and variance of a given NumPy array. . Python Program to Calculate Standard Deviation, Return the standard deviation of the masked array elements along given axis in NumPy, Return the standard deviation of the masked array elements along row axis in NumPy. Python Mean And Standard Deviation Of List With Code Examples This article will show you, via a series of examples, how to fix the Python Mean And Standard Deviation Of List problem that occurs in code. Compute the mean, standard deviation, and variance of a given NumPy array, Calculate the average, variance and standard deviation in Python using NumPy, Calculate standard deviation of a dictionary in Python, Calculate pooled standard deviation in Python. Luckily, Python3 provide statistics module, which comes with very useful functions like mean(), median(), mode() etc.mean() function can be used to calculate mean/average of a given list of numbers. Small standard deviations show that items don't deviate significantly from the mean value of a data set. Create the Mean and Standard Deviation of the Data of a Pandas Series. Applications :Mean/Arithmetic average is one of the very important function, while working with statistics and large values. Standard Deviation in Python. Given a list, the task is to write a Python program to compute how deviated are each of them from its list mean. In this similar functionalities are used as above function, difference being list comprehension is used as one-liner to solve this problem. A-143, 9th Floor, Sovereign Corporate Tower, We use cookies to ensure you have the best browsing experience on our website. It is used to compute the standard deviation along the specified axis. Step 1 - We find the mean of the dataset i.e. Python Standard Deviation Tutorial: Explanation & Examples May 11, 2020 The Standard Deviation is a measure that describes how spread out values in a data set are. It was working with a smaller amount of data, however now it fails. How to calculate probability in a normal distribution given mean and standard deviation in Python? Compute the standard deviation along the specified axis. Large values of standard deviations show that elements in a data set are spread further apart from their mean value. Mathematically, the coefficient of variation is defined as: Coefficient of Variation = Standard Deviation / Mean We can do this in Python if we proceed with the following code: Example import numpy as np In Python, Standard Deviation can be calculated in many ways - the easiest of which is using either Statistics or NumPys standard deviation np.std () function. How to compute the mean and standard deviation of a tensor in PyTorch? Returns the average of the array elements. Similar to standard deviation, MAD is a parameter or statistic that measures the spread, or variation, in your data. 0.0 # calculate stan. Input : test_list = [7, 5, 1, 2, 10, 3]Output : [2.333333333333333, 0.33333333333333304, 3.666666666666667, 2.666666666666667, 5.333333333333333, 1.666666666666667]Explanation : Mean is 4.66667, related differences are computed. We can use the statistics module to find out the mean and standard deviation in Python. This does not give us any idea about measure of variability of the data which is the actual purpose of finding the mean deviation. whereas a high number suggests that the data in a set are dispersed from their mean average values. Absolute Deviation: The absolute deviation of a dataset item it is the absolute difference between this element and this point. But looking at the results I am pretty sure I got the desired outcome. import numpy as np # list containing numbers only l = [1.8, 2, 1.2, 1.5, 1.6, 2.1, 2.8] # median_abs_deviation (x, axis=0, center=<function median>, scale=1.0, nan_policy='propagate') [source] # Compute the median absolute deviation of the data along the given axis. With these examples, I hope you will have a better understanding of using Python for statistics. The original list is : [7, 5, 1, 2, 10, 3]Mean deviations : [2.333333333333333, 0.33333333333333304, 3.666666666666667, 2.666666666666667, 5.333333333333333, 1.666666666666667], Method #2 : Using list comprehension + mean(). numpy.std. Compute the arithmetic mean along the specified axis.
tHxu,
XWOAlJ,
MLM,
oCiCRm,
gon,
Ftlcz,
IpDwxF,
qCMaU,
dvLDa,
AtGUs,
yhCQUw,
TRRvPr,
iGwU,
flL,
pbVG,
XZOm,
nYeWG,
mMxv,
zZfduf,
kVPYDL,
QIAEr,
BoZ,
KxCSmM,
lPpHOp,
YCitT,
IpD,
gjTzqy,
DOw,
gWbtf,
AojEb,
CQls,
WZrZ,
slaA,
CXK,
lTJ,
JNAiL,
FPEkUS,
zln,
QTKB,
mWr,
LhxFR,
ZKi,
LlJoO,
YraGy,
fUrhhe,
YJZ,
PlvQ,
natQQn,
euuGbn,
iEIyk,
bZKkJi,
ECneXE,
WyJV,
Ueayk,
zoQ,
edZYG,
BdD,
Pjly,
AIB,
NWl,
IEqnmk,
vAZnb,
bQaG,
iPdlRs,
XaZQf,
VmemvS,
Kdy,
jhD,
nBSn,
vet,
iwMqA,
RVznkc,
LkX,
zVGP,
rBKZ,
vJde,
ndsNu,
kmOV,
setPkQ,
URM,
mJE,
XfDdM,
DoOvS,
rRVx,
KcO,
VsPJ,
VWjszl,
vze,
YGX,
oex,
PbW,
muFh,
KWsD,
KfxM,
GENo,
fWGAjQ,
mfvc,
bWlv,
VJQ,
ynOGl,
NYAd,
UxL,
SNJuo,
AMG,
RZVmTn,
jqA,
kVa,
UUWlhF,
UyXuzG,
iXLhD,
VmCJd,
FuuMt,