vastorbit.machine_learning.vast.linear_model.Ridge.predict¶
- Ridge.predict(vdf: Annotated[str | VastFrame, ''], X: Annotated[str | list[str], 'STRING representing one column or a list of columns'] | None = None, name: str | None = None, inplace: bool = True) VastFrame¶
Predicts using the input relation.
- Parameters:
vdf (SQLRelation) – Object used to run the prediction. You can also specify a customized relation, but you must enclose it with an alias. For example,
(SELECT 1) xis valid, whereas(SELECT 1)andSELECT 1are invalid.X (SQLColumns, optional) –
listof the columns used to deploy the models. If empty, the model predictors are used.name (str, optional) – Name of the added :py:class`VastColumn`. If empty, a name is generated.
inplace (bool, optional) – If set to True, the prediction is added to the :py:class`VastFrame`.
- Returns:
the input object.
- Return type:
Examples
We import
vastorbit:import vastorbit as vo
For this example, we will use the winequality dataset.
import vastorbit.datasets as vod data = vod.load_winequality()
123fixed_acidityDecimal(6, 3)123volatile_acidityDecimal(7, 4)123citric_acidDecimal(6, 3)123residual_sugarDecimal(7, 3)123chloridesDouble123free_sulfur_dioxideDecimal(7, 2)123total_sulfur_dioxideDecimal(7, 2)123densityDouble123phDecimal(6, 3)123sulphatesDecimal(6, 3)123alcoholDouble123qualityInteger123goodIntegerAbccolorVarchar(20)1 6.3 0.67 0.48 12.6 0.052 57.0 222.0 0.9979 3.17 0.52 9.3 6 0 white 2 7.4 0.4 0.29 5.4 0.044 31.0 122.0 0.994 3.3 0.5 11.1 8 1 white 3 7.1 0.26 0.31 2.2 0.044 29.0 128.0 0.9937 3.34 0.64 10.9 8 1 white 4 9.0 0.31 0.48 6.6 0.043 11.0 73.0 0.9938 2.9 0.38 11.6 5 0 white 5 6.3 0.39 0.24 6.9 0.069 9.0 117.0 0.9942 3.15 0.35 10.2 4 0 white 6 8.2 0.22 0.36 6.8 0.034 12.0 90.0 0.9944 3.01 0.38 10.5 8 1 white 7 7.1 0.19 0.28 3.6 0.033 16.0 78.0 0.993 2.91 0.78 11.4 6 0 white 8 7.3 0.25 0.36 13.1 0.05 35.0 200.0 0.9986 3.04 0.46 8.9 7 1 white 9 7.9 0.2 0.34 1.2 0.04 29.0 118.0 0.9932 3.14 0.41 10.6 6 0 white 10 7.1 0.26 0.32 5.9 0.037 39.0 97.0 0.9934 3.31 0.4 11.6 6 0 white 11 7.0 0.2 0.34 5.7 0.035 32.0 83.0 0.9928 3.19 0.46 11.5 6 0 white 12 6.9 0.3 0.33 4.1 0.035 26.0 155.0 0.9925 3.25 0.79 12.3 8 1 white 13 8.1 0.29 0.49 7.1 0.042 22.0 124.0 0.9944 3.14 0.41 10.8 6 0 white 14 5.8 0.17 0.3 1.4 0.037 55.0 130.0 0.9909 3.29 0.38 11.3 6 0 white 15 5.9 0.415 0.02 0.8 0.038 22.0 63.0 0.9932 3.36 0.36 9.3 5 0 white 16 6.6 0.23 0.26 1.3 0.045 16.0 128.0 0.9934 3.36 0.6 10.0 6 0 white 17 8.6 0.55 0.35 15.55 0.057 35.5 366.5 1.0001 3.04 0.63 11.0 3 0 white 18 6.9 0.35 0.74 1.0 0.044 18.0 132.0 0.992 3.13 0.55 10.2 5 0 white 19 7.6 0.14 0.74 1.6 0.04 27.0 103.0 0.9916 3.07 0.4 10.8 7 1 white 20 9.2 0.28 0.49 11.8 0.042 29.0 137.0 0.998 3.1 0.34 10.1 4 0 white 21 6.2 0.18 0.49 4.5 0.047 17.0 90.0 0.9919 3.27 0.37 11.6 6 0 white 22 5.3 0.165 0.24 1.1 0.051 25.0 105.0 0.9925 3.32 0.47 9.1 5 0 white 23 9.8 0.25 0.74 10.0 0.056 36.0 225.0 0.9977 3.06 0.43 10.0 4 0 white 24 8.1 0.29 0.49 7.1 0.042 22.0 124.0 0.9944 3.14 0.41 10.8 6 0 white 25 6.8 0.22 0.49 0.9 0.052 26.0 128.0 0.991 3.25 0.35 11.4 6 0 white 26 7.2 0.22 0.49 1.0 0.045 34.0 140.0 0.99 3.05 0.34 12.7 6 0 white 27 7.4 0.25 0.49 1.1 0.042 35.0 156.0 0.9917 3.13 0.55 11.3 5 0 white 28 8.2 0.18 0.49 1.1 0.033 28.0 81.0 0.9923 3.0 0.68 10.4 7 1 white 29 6.1 0.22 0.49 1.5 0.051 18.0 87.0 0.9928 3.3 0.46 9.6 5 0 white 30 7.0 0.39 0.24 1.0 0.048 8.0 119.0 0.9923 3.0 0.31 10.1 4 0 white 31 6.1 0.22 0.49 1.5 0.051 18.0 87.0 0.9928 3.3 0.46 9.6 5 0 white 32 6.5 0.36 0.49 2.9 0.03 16.0 94.0 0.9902 3.1 0.49 12.1 7 1 white 33 7.1 0.29 0.49 1.2 0.031 32.0 99.0 0.9893 3.07 0.33 12.2 6 0 white 34 7.4 0.25 0.49 1.1 0.042 35.0 156.0 0.9917 3.13 0.55 11.3 5 0 white 35 6.9 0.23 0.24 14.2 0.053 19.0 94.0 0.9982 3.17 0.5 9.6 5 0 white 36 8.5 0.56 0.74 17.85 0.051 51.0 243.0 1.0005 2.99 0.7 9.2 5 0 white 37 8.2 0.18 0.49 1.1 0.033 28.0 81.0 0.9923 3.0 0.68 10.4 7 1 white 38 6.3 0.23 0.49 7.1 0.05 67.0 210.0 0.9951 3.23 0.34 9.5 5 0 white 39 6.1 0.25 0.49 7.6 0.052 67.0 226.0 0.9956 3.16 0.47 8.9 5 0 white 40 7.2 0.26 0.74 13.6 0.05 56.0 162.0 0.998 3.03 0.44 8.8 5 0 white 41 7.2 0.31 0.24 1.4 0.057 17.0 117.0 0.9928 3.16 0.35 10.5 5 0 white 42 8.0 0.25 0.49 1.2 0.061 27.0 117.0 0.9938 3.08 0.34 9.4 5 0 white 43 7.0 0.18 0.49 5.3 0.04 34.0 125.0 0.9914 3.24 0.4 12.2 6 0 white 44 7.8 0.43 0.49 13.0 0.033 37.0 158.0 0.9955 3.14 0.35 11.3 6 0 white 45 8.3 0.2 0.74 4.45 0.044 33.0 130.0 0.9924 3.25 0.42 12.2 6 0 white 46 6.3 0.27 0.49 1.2 0.063 35.0 92.0 0.9911 3.38 0.42 12.2 6 0 white 47 7.4 0.16 0.49 1.2 0.055 18.0 150.0 0.9917 3.23 0.47 11.2 6 0 white 48 7.4 0.16 0.49 1.2 0.055 18.0 150.0 0.9917 3.23 0.47 11.2 6 0 white 49 6.9 0.19 0.49 6.6 0.036 49.0 172.0 0.9932 3.2 0.27 11.5 6 0 white 50 7.8 0.43 0.49 13.0 0.033 37.0 158.0 0.9955 3.14 0.35 11.3 6 0 white 51 7.2 0.4 0.49 1.1 0.048 11.0 138.0 0.9929 3.01 0.42 9.3 5 0 white 52 7.8 0.43 0.49 13.0 0.033 37.0 158.0 0.9955 3.14 0.35 11.3 6 0 white 53 7.6 0.52 0.49 14.0 0.034 37.0 156.0 0.9958 3.14 0.38 11.8 7 1 white 54 8.3 0.21 0.49 19.8 0.054 50.0 231.0 1.0012 2.99 0.54 9.2 5 0 white 55 6.9 0.34 0.74 11.2 0.069 44.0 150.0 0.9968 3.0 0.81 9.2 5 0 white 56 6.3 0.27 0.49 1.2 0.063 35.0 92.0 0.9911 3.38 0.42 12.2 6 0 white 57 8.3 0.2 0.74 4.45 0.044 33.0 130.0 0.9924 3.25 0.42 12.2 6 0 white 58 7.1 0.22 0.74 2.7 0.044 42.0 144.0 0.991 3.31 0.41 12.2 6 0 white 59 7.9 0.11 0.49 4.5 0.048 27.0 133.0 0.9946 3.24 0.42 10.6 6 0 white 60 8.5 0.17 0.74 3.6 0.05 29.0 128.0 0.9928 3.28 0.4 12.4 6 0 white 61 6.4 0.145 0.49 5.4 0.048 54.0 164.0 0.9946 3.56 0.44 10.8 6 0 white 62 7.4 0.16 0.49 1.2 0.055 18.0 150.0 0.9917 3.23 0.47 11.2 6 0 white 63 8.3 0.19 0.49 1.2 0.051 11.0 137.0 0.9918 3.06 0.46 11.0 6 0 white 64 8.0 0.44 0.49 9.1 0.031 46.0 151.0 0.9926 3.16 0.27 12.7 8 1 white 65 7.0 0.2 0.74 0.8 0.044 19.0 163.0 0.9931 3.46 0.53 10.2 5 0 white 66 6.9 0.19 0.49 6.6 0.036 49.0 172.0 0.9932 3.2 0.27 11.5 6 0 white 67 7.1 0.25 0.49 3.0 0.03 30.0 96.0 0.9903 3.13 0.39 12.3 7 1 white 68 6.5 0.24 0.24 1.6 0.046 15.0 60.0 0.9928 3.19 0.39 9.8 5 0 white 69 7.2 0.4 0.49 1.1 0.048 11.0 138.0 0.9929 3.01 0.42 9.3 5 0 white 70 7.6 0.52 0.49 14.0 0.034 37.0 156.0 0.9958 3.14 0.38 11.8 7 1 white 71 7.8 0.43 0.49 13.0 0.033 37.0 158.0 0.9955 3.14 0.35 11.3 6 0 white 72 7.8 0.21 0.49 1.35 0.052 6.0 48.0 0.9911 3.15 0.28 11.4 5 0 white 73 7.0 0.2 0.49 5.9 0.038 39.0 128.0 0.9938 3.21 0.48 10.8 6 0 white 74 6.9 0.25 0.24 3.6 0.057 13.0 85.0 0.9942 2.99 0.48 9.5 4 0 white 75 7.2 0.08 0.49 1.3 0.05 18.0 148.0 0.9945 3.46 0.44 10.2 6 0 white 76 7.1 0.85 0.49 8.7 0.028 40.0 184.0 0.9962 3.22 0.36 10.7 5 0 white 77 7.6 0.51 0.24 1.2 0.04 10.0 104.0 0.992 3.05 0.29 10.8 6 0 white 78 7.9 0.22 0.24 4.6 0.044 39.0 159.0 0.9927 2.99 0.28 11.5 6 0 white 79 7.7 0.16 0.49 2.0 0.056 20.0 124.0 0.9948 3.32 0.49 10.7 6 0 white 80 7.2 0.08 0.49 1.3 0.05 18.0 148.0 0.9945 3.46 0.44 10.2 6 0 white 81 6.6 0.25 0.24 1.7 0.048 26.0 124.0 0.9942 3.37 0.6 10.1 6 0 white 82 6.7 0.16 0.49 2.4 0.046 57.0 187.0 0.9952 3.62 0.81 10.4 6 0 white 83 6.9 0.25 0.24 3.6 0.057 13.0 85.0 0.9942 2.99 0.48 9.5 4 0 white 84 7.5 0.32 0.24 4.6 0.053 8.0 134.0 0.9958 3.14 0.5 9.1 3 0 white 85 7.4 0.28 0.49 1.5 0.034 20.0 126.0 0.9918 2.98 0.39 10.6 6 0 white 86 6.2 0.15 0.49 0.9 0.033 17.0 51.0 0.9932 3.3 0.7 9.4 6 0 white 87 6.7 0.25 0.74 19.4 0.054 44.0 169.0 1.0004 3.51 0.45 9.8 6 0 white 88 6.5 0.26 0.74 13.3 0.044 68.0 224.0 0.9972 3.18 0.54 9.5 6 0 white 89 7.9 0.16 0.74 17.85 0.037 52.0 187.0 0.9998 2.99 0.41 9.3 5 0 white 90 5.6 0.185 0.49 1.1 0.03 28.0 117.0 0.9918 3.55 0.45 10.3 6 0 white 91 7.5 0.2 0.49 1.3 0.031 8.0 97.0 0.9918 3.06 0.62 11.1 5 0 white 92 8.0 0.3 0.49 9.4 0.046 47.0 188.0 0.9964 3.14 0.48 10.0 5 0 white 93 8.0 0.34 0.49 9.0 0.033 39.0 180.0 0.9936 3.13 0.38 12.3 8 1 white 94 7.7 0.35 0.49 8.65 0.033 42.0 186.0 0.9931 3.14 0.38 12.4 8 1 white 95 7.6 0.29 0.49 9.6 0.03 45.0 197.0 0.9938 3.13 0.38 12.3 7 1 white 96 6.7 0.62 0.24 1.1 0.039 6.0 62.0 0.9934 3.41 0.32 10.4 5 0 white 97 6.8 0.27 0.49 1.2 0.044 35.0 126.0 0.99 3.13 0.48 12.1 7 1 white 98 7.7 0.27 0.49 1.8 0.041 23.0 86.0 0.9914 3.16 0.42 12.5 6 0 white 99 6.7 0.51 0.24 2.1 0.043 14.0 155.0 0.9904 3.22 0.6 13.0 6 0 white 100 7.4 0.19 0.49 9.3 0.03 26.0 132.0 0.994 2.99 0.32 11.0 7 1 white Rows: 1-100 | Columns: 14Divide your dataset into training and testing subsets.
data = vod.load_winequality() train, test = data.train_test_split(test_size = 0.2)
Let’s import the model:
from vastorbit.machine_learning.vast import LinearRegression
Then we can create the model:
model = LinearRegression( tol = 1e-6, fit_intercept = True, )
We can now fit the model:
model.fit( train, [ "fixed_acidity", "volatile_acidity", "citric_acid", "residual_sugar", "chlorides", "density", ], "quality", test, )
Prediction is straight-forward:
model.predict( test, [ "fixed_acidity", "volatile_acidity", "citric_acid", "residual_sugar", "chlorides", "density", ], "prediction", )
123fixed_acidityDecimal(6, 3)123volatile_acidityDecimal(7, 4)123citric_acidDecimal(6, 3)123residual_sugarDecimal(7, 3)123chloridesDouble123free_sulfur_dioxideDecimal(7, 2)123total_sulfur_dioxideDecimal(7, 2)123densityDouble123phDecimal(6, 3)123sulphatesDecimal(6, 3)123alcoholDouble123qualityInteger123goodIntegerAbccolorVarchar(20)123seedrandDecimal(26, 6)123predictionDouble1 7.1 0.27 0.31 18.2 0.046 55.0 252.0 1.0 3.07 0.56 8.7 5 0 white 0.07 5.627027081137584 2 6.8 0.27 0.12 1.3 0.04 87.0 168.0 0.992 3.18 0.41 10.0 5 0 white 0.04 6.057549067663302 3 6.9 0.49 0.24 1.2 0.049 13.0 125.0 0.9932 3.17 0.51 9.4 5 0 white 0.13 5.712338038706378 4 6.3 0.14 0.39 1.2 0.044 26.0 116.0 0.992 3.26 0.53 10.3 6 0 white 0.1 6.03172262072917 5 7.4 0.21 0.27 1.2 0.041 27.0 99.0 0.9927 3.19 0.33 9.8 6 0 white 0.17 6.0566398818722575 6 7.0 0.21 0.28 8.6 0.045 37.0 221.0 0.9954 3.25 0.54 10.4 6 0 white 0.15 5.921392425670604 7 6.9 0.23 0.38 8.3 0.047 47.0 162.0 0.9954 3.34 0.52 10.5 7 1 white 0.06 5.862833192459988 8 7.0 0.21 0.28 8.6 0.045 37.0 221.0 0.9954 3.25 0.54 10.4 6 0 white 0.01 5.921392425670604 9 6.7 0.22 0.37 1.6 0.028 24.0 102.0 0.9913 3.29 0.59 11.6 7 1 white 0.12 6.149577466890662 10 6.0 0.27 0.27 1.6 0.046 32.0 113.0 0.9924 3.41 0.51 10.5 7 1 white 0.17 5.872313841110241 11 7.0 0.14 0.32 9.0 0.039 54.0 141.0 0.9956 3.22 0.43 9.4 6 0 white 0.06 5.952576208344482 12 6.6 0.24 0.29 2.0 0.023 19.0 86.0 0.99 3.25 0.45 12.5 6 0 white 0.13 6.339868322875077 13 5.5 0.16 0.22 4.5 0.03 30.0 102.0 0.9938 3.24 0.36 9.4 6 0 white 0.19 5.805496828840035 14 7.1 0.55 0.13 1.7 0.073 21.0 165.0 0.994 2.97 0.58 9.2 6 0 white 0.02 5.626325499747651 15 5.9 0.36 0.41 1.3 0.047 45.0 104.0 0.9917 3.33 0.51 10.6 6 0 white 0.15 5.8574692473173116 16 6.2 0.37 0.3 6.6 0.346 79.0 200.0 0.9954 3.29 0.58 9.6 5 0 white 0.07 5.673138403865096 17 7.4 0.29 0.29 1.6 0.045 53.0 180.0 0.9936 3.34 0.68 10.5 6 0 white 0.12 5.881049066937891 18 7.0 0.28 0.36 1.0 0.035 8.0 70.0 0.9899 3.09 0.46 12.1 6 0 white 0.1 6.331006952330057 19 6.3 0.19 0.28 1.8 0.022 28.0 158.0 0.9907 3.2 0.64 11.4 6 0 white 0.09 6.223879853853589 20 7.2 0.4 0.62 10.8 0.041 70.0 189.0 0.9976 3.08 0.49 8.6 4 0 white 0.12 5.524774714222531 21 6.8 0.23 0.32 1.6 0.026 43.0 147.0 0.9904 3.29 0.54 12.5 6 0 white 0.0 6.2961703865057075 22 5.7 0.335 0.34 1.0 0.04 13.0 174.0 0.992 3.27 0.66 10.0 5 0 white 0.08 5.800402656790936 23 7.2 0.4 0.62 10.8 0.041 70.0 189.0 0.9976 3.08 0.49 8.6 4 0 white 0.14 5.524774714222531 24 6.8 0.19 0.58 14.2 0.038 51.0 164.0 0.9975 3.12 0.48 9.6 6 0 white 0.1 5.788135549870674 25 7.8 0.18 0.31 12.2 0.053 46.0 140.0 0.998 3.06 0.53 8.9 6 0 white 0.09 5.830744592684368 26 6.0 0.24 0.27 1.9 0.048 40.0 170.0 0.9938 3.64 0.54 10.0 7 1 white 0.16 5.703226966466673 27 7.4 0.36 0.33 1.4 0.025 27.0 55.0 0.9915 3.21 0.33 11.2 6 0 white 0.08 6.116016384477604 28 7.8 0.28 0.32 9.0 0.036 34.0 115.0 0.9952 3.17 0.39 10.3 7 1 white 0.08 6.022923033889072 29 6.1 0.31 0.26 2.2 0.051 28.0 167.0 0.9926 3.37 0.47 10.4 6 0 white 0.14 5.856819257862355 30 7.2 0.34 0.34 12.6 0.048 7.0 41.0 0.9942 3.19 0.4 11.7 5 0 white 0.17 6.192277707466559 31 7.9 0.19 0.26 2.1 0.039 8.0 143.0 0.9942 3.05 0.74 9.8 5 0 white 0.05 5.964351969004497 32 6.1 0.28 0.22 1.8 0.034 32.0 116.0 0.9898 3.36 0.44 12.6 6 0 white 0.15 6.27339126218223 33 5.6 0.19 0.47 4.5 0.03 19.0 112.0 0.9922 3.56 0.45 11.2 6 0 white 0.03 5.989148797041992 34 7.9 0.345 0.51 15.3 0.047 54.0 171.0 0.9987 3.09 0.51 9.1 5 0 white 0.17 5.719160807328876 35 7.4 0.25 0.36 13.2 0.067 53.0 178.0 0.9976 3.01 0.48 9.0 6 0 white 0.18 5.817746500692863 36 6.7 0.31 0.31 9.9 0.04 10.0 175.0 0.9953 3.46 0.55 11.4 4 0 white 0.1 5.868530845794709 37 5.5 0.35 0.35 1.1 0.045 14.0 167.0 0.992 3.34 0.68 9.9 6 0 white 0.19 5.764279012924561 38 7.7 0.22 0.42 1.9 0.052 10.0 87.0 0.9922 3.3 0.49 11.8 6 0 white 0.15 6.172991242881125 39 7.2 0.46 0.65 10.4 0.05 76.0 192.0 0.9976 3.16 0.42 8.7 5 0 white 0.08 5.460574103277423 40 9.2 0.25 0.34 1.2 0.026 31.0 93.0 0.9916 2.93 0.37 11.3 7 1 white 0.04 6.432560649887165 41 7.7 0.34 0.27 8.8 0.063 39.0 184.0 0.9969 3.09 0.63 9.2 6 0 white 0.14 5.722531059755198 42 6.0 0.26 0.5 2.2 0.048 59.0 153.0 0.9928 3.08 0.61 9.8 5 0 white 0.16 5.808400902227788 43 6.5 0.28 0.27 5.2 0.04 44.0 179.0 0.9948 3.19 0.69 9.4 6 0 white 0.01 5.739713686292646 44 7.2 0.2 0.34 2.7 0.032 49.0 151.0 0.99 3.16 0.39 12.7 7 1 white 0.06 6.479839078442581 45 6.0 0.38 0.26 6.0 0.034 42.0 134.0 0.9912 3.38 0.38 12.3 7 1 white 0.07 6.154363778052982 46 7.4 0.24 0.22 10.7 0.042 26.0 81.0 0.9954 2.86 0.36 9.7 6 0 white 0.01 6.056783144525866 47 6.6 0.25 0.3 1.6 0.046 32.0 134.0 0.993 3.42 0.51 10.1 7 1 white 0.12 5.881022852325742 48 6.9 0.28 0.27 2.1 0.036 42.0 121.0 0.9926 3.42 0.49 10.8 7 1 white 0.07 5.984859167739728 49 7.3 0.2 0.37 1.2 0.037 48.0 119.0 0.992 3.32 0.49 10.9 6 0 white 0.1 6.133824353185275 50 6.4 0.475 0.06 1.0 0.03 9.0 131.0 0.9904 2.97 0.29 10.8 5 0 white 0.13 6.0774683911393765 51 5.9 0.27 0.29 11.4 0.036 31.0 115.0 0.9949 3.35 0.48 10.5 8 1 white 0.15 5.907559040053343 52 6.5 0.36 0.28 3.2 0.037 29.0 119.0 0.9908 3.25 0.65 12.4 8 1 white 0.11 6.176919749561108 53 6.5 0.26 0.43 8.9 0.083 50.0 171.0 0.9965 2.85 0.5 9.0 5 0 white 0.18 5.648383428804067 54 7.0 0.32 0.24 6.2 0.048 31.0 228.0 0.9957 3.23 0.62 9.4 6 0 white 0.0 5.701100747622235 55 7.0 0.32 0.24 6.2 0.048 31.0 228.0 0.9957 3.23 0.62 9.4 6 0 white 0.1 5.701100747622235 56 7.0 0.23 0.42 18.05 0.05 35.0 144.0 0.9999 3.22 0.42 8.8 5 0 white 0.06 5.632464720274186 57 7.0 0.23 0.42 18.05 0.05 35.0 144.0 0.9999 3.22 0.42 8.8 5 0 white 0.12 5.632464720274186 58 6.5 0.21 0.37 2.5 0.048 70.0 138.0 0.9917 3.33 0.75 11.4 7 1 white 0.07 6.113171978855604 59 7.8 0.4 0.49 7.8 0.06 34.0 162.0 0.9966 3.26 0.58 11.3 6 0 white 0.14 5.655594116200035 60 6.6 0.325 0.49 7.7 0.049 53.0 217.0 0.996 3.16 0.4 9.3 5 0 white 0.13 5.617926979775575 61 7.1 0.31 0.38 1.2 0.036 10.0 124.0 0.9924 3.14 0.44 9.9 6 0 white 0.17 5.963577725009429 62 7.0 0.35 0.3 6.5 0.028 27.0 87.0 0.9936 3.4 0.42 11.4 7 1 white 0.09 5.983573337610551 63 6.3 0.31 0.3 10.0 0.046 49.0 212.0 0.9962 3.74 0.55 11.9 6 0 white 0.06 5.686685052707816 64 7.2 0.25 0.28 14.4 0.055 55.0 205.0 0.9986 3.12 0.38 9.0 7 1 white 0.0 5.704889229149558 65 7.3 0.26 0.33 17.85 0.049 41.5 195.0 1.0 3.06 0.44 9.1 7 1 white 0.1 5.645615584045515 66 7.0 0.24 0.3 4.2 0.04 41.0 213.0 0.9927 3.28 0.49 11.8 6 0 white 0.09 6.100208416231084 67 6.7 0.265 0.22 8.6 0.048 54.0 198.0 0.9955 3.25 0.41 10.2 5 0 white 0.19 5.833875112155567 68 8.5 0.32 0.36 14.9 0.041 47.0 190.0 0.9982 3.08 0.31 10.0 6 0 white 0.17 5.904191165055238 69 7.0 0.24 0.3 4.2 0.04 41.0 213.0 0.9927 3.28 0.49 11.8 6 0 white 0.08 6.100208416231084 70 6.4 0.24 0.22 1.5 0.038 38.0 157.0 0.9934 3.41 0.55 9.9 6 0 white 0.12 5.8083491974390995 71 9.3 0.2 0.33 1.7 0.05 28.0 178.0 0.9954 3.16 0.43 9.0 4 0 white 0.0 5.95773846427943 72 8.2 0.15 0.48 2.7 0.052 24.0 190.0 0.995 3.5 0.45 10.9 7 1 white 0.16 5.91186959143937 73 7.5 0.4 1.0 19.5 0.041 33.0 148.0 0.9977 3.24 0.38 12.0 6 0 white 0.1 5.86254384170698 74 6.5 0.18 0.34 1.6 0.04 43.0 148.0 0.9912 3.32 0.59 11.5 8 1 white 0.02 6.172770568512249 75 7.0 0.13 0.3 5.0 0.056 31.0 122.0 0.9945 3.47 0.42 10.5 6 0 white 0.04 5.956482002194207 76 7.0 0.3 0.32 6.4 0.034 28.0 97.0 0.9924 3.23 0.44 11.8 6 0 white 0.19 6.1894753088339485 77 8.7 0.34 0.46 13.8 0.055 68.0 198.0 0.9988 3.36 0.37 9.5 6 0 white 0.09 5.7699618878136505 78 6.6 0.545 0.04 2.5 0.031 48.0 111.0 0.9906 3.14 0.32 11.9 5 0 white 0.13 6.09371445121684 79 6.9 0.16 0.3 9.6 0.057 50.0 185.0 0.9978 3.39 0.38 9.6 6 0 white 0.07 5.635597061994645 80 7.5 0.22 0.29 4.8 0.05 33.0 87.0 0.994 3.14 0.42 9.9 5 0 white 0.07 6.027225346273269 81 6.7 0.16 0.28 2.5 0.046 40.0 153.0 0.9921 3.38 0.51 11.4 7 1 white 0.02 6.135243284680314 82 9.6 0.21 0.28 1.2 0.038 12.0 53.0 0.9926 2.8 0.46 10.6 5 0 white 0.17 6.386893752303621 83 8.0 0.3 0.28 5.7 0.044 31.0 124.0 0.9948 3.16 0.51 10.2 6 0 white 0.01 5.96263326666795 84 7.7 0.43 0.28 4.5 0.046 33.0 102.0 0.9918 3.16 0.56 12.2 7 1 white 0.01 6.210861284165333 85 6.5 0.18 0.26 1.4 0.041 40.0 141.0 0.9941 3.34 0.72 9.5 6 0 white 0.03 5.7543381021827145 86 6.4 0.15 0.36 1.8 0.034 43.0 150.0 0.9922 3.42 0.69 11.0 8 1 white 0.0 6.03799348334482 87 8.5 0.21 0.26 9.25 0.034 73.0 142.0 0.9945 3.05 0.37 11.4 6 0 white 0.1 6.298349263966173 88 9.4 0.16 0.3 1.4 0.042 26.0 176.0 0.9954 3.15 0.46 9.1 5 0 white 0.17 5.991868977030862 89 7.8 0.22 0.36 1.4 0.056 21.0 153.0 0.993 3.2 0.53 10.4 6 0 white 0.04 6.06028624953214 90 7.4 0.35 0.31 17.95 0.062 42.0 187.0 1.0002 3.27 0.64 9.1 5 0 white 0.04 5.575535876996952 91 6.6 0.37 0.24 2.0 0.064 23.0 120.0 0.9946 3.32 0.54 9.4 5 0 white 0.0 5.59078730691175 92 7.1 0.37 0.32 1.4 0.037 27.0 126.0 0.9918 3.19 0.62 12.0 5 0 white 0.02 6.02611974919833 93 6.4 0.26 0.21 7.1 0.04 35.0 162.0 0.9956 3.39 0.58 9.9 6 0 white 0.07 5.714878646080535 94 6.4 0.26 0.21 7.1 0.04 35.0 162.0 0.9956 3.39 0.58 9.9 6 0 white 0.19 5.714878646080535 95 7.6 0.3 0.22 10.2 0.049 57.0 191.0 0.9966 3.08 0.4 9.3 6 0 white 0.19 5.846490209308541 96 8.8 0.2 0.43 15.0 0.053 60.0 184.0 1.0008 3.28 0.79 8.8 6 0 white 0.05 5.651373730232223 97 7.6 0.38 0.2 3.4 0.046 9.0 116.0 0.9944 3.15 0.41 9.4 5 0 white 0.01 5.819698152522449 98 6.8 0.3 0.35 2.8 0.038 10.0 164.0 0.9912 3.09 0.53 12.0 6 0 white 0.15 6.177179588784952 99 6.8 0.33 0.28 1.2 0.032 38.0 131.0 0.9889 3.19 0.41 13.0 6 0 white 0.09 6.4328404636031 100 7.3 0.19 0.24 6.3 0.054 34.0 231.0 0.9964 3.36 0.54 10.0 6 0 white 0.12 5.743644267808804 Rows: 1-100 | Columns: 16Important
For this example, a specific model is utilized, and it may not correspond exactly to the model you are working with. To see a comprehensive example specific to your class of interest, please refer to that particular class.