pandas.Panel.sample¶
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Panel.sample(n=None, frac=None, replace=False, weights=None, random_state=None, axis=None)[source]¶
- Returns a random sample of items from an axis of object. - New in version 0.16.1. - Parameters: - n : int, optional - Number of items from axis to return. Cannot be used with frac. Default = 1 if frac = None. - frac : float, optional - Fraction of axis items to return. Cannot be used with n. - replace : boolean, optional - Sample with or without replacement. Default = False. - weights : str or ndarray-like, optional - Default ‘None’ results in equal probability weighting. If passed a Series, will align with target object on index. Index values in weights not found in sampled object will be ignored and index values in sampled object not in weights will be assigned weights of zero. If called on a DataFrame, will accept the name of a column when axis = 0. Unless weights are a Series, weights must be same length as axis being sampled. If weights do not sum to 1, they will be normalized to sum to 1. Missing values in the weights column will be treated as zero. inf and -inf values not allowed. - random_state : int or numpy.random.RandomState, optional - Seed for the random number generator (if int), or numpy RandomState object. - axis : int or string, optional - Axis to sample. Accepts axis number or name. Default is stat axis for given data type (0 for Series and DataFrames, 1 for Panels). - Returns: - A new object of same type as caller. - Examples - Generate an example - Seriesand- DataFrame:- >>> s = pd.Series(np.random.randn(50)) >>> s.head() 0 -0.038497 1 1.820773 2 -0.972766 3 -1.598270 4 -1.095526 dtype: float64 >>> df = pd.DataFrame(np.random.randn(50, 4), columns=list('ABCD')) >>> df.head() A B C D 0 0.016443 -2.318952 -0.566372 -1.028078 1 -1.051921 0.438836 0.658280 -0.175797 2 -1.243569 -0.364626 -0.215065 0.057736 3 1.768216 0.404512 -0.385604 -1.457834 4 1.072446 -1.137172 0.314194 -0.046661 - Next extract a random sample from both of these objects... - 3 random elements from the - Series:- >>> s.sample(n=3) 27 -0.994689 55 -1.049016 67 -0.224565 dtype: float64 - And a random 10% of the - DataFramewith replacement:- >>> df.sample(frac=0.1, replace=True) A B C D 35 1.981780 0.142106 1.817165 -0.290805 49 -1.336199 -0.448634 -0.789640 0.217116 40 0.823173 -0.078816 1.009536 1.015108 15 1.421154 -0.055301 -1.922594 -0.019696 6 -0.148339 0.832938 1.787600 -1.383767