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<SOS> metric: categorizationaccuracy Kaggle data source: digit-recognizer<set_options>
%matplotlib inline !pip install --upgrade 'scikit-learn>=1.0'
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%matplotlib inline !pip install --upgrade 'scikit-learn>=1.0' <load_from_csv>
labeled_data = pd.read_csv(".. /input/train.csv") print(labeled_data.shape) labeled_data.head()
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labeled_data = pd.read_csv(".. /input/train.csv") print(labeled_data.shape) labeled_data.head()<load_from_csv>
unlabeled_data= pd.read_csv(".. /input/test.csv") print(unlabeled_data.shape) unlabeled_data.head()
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unlabeled_data= pd.read_csv(".. /input/test.csv") print(unlabeled_data.shape) unlabeled_data.head()<data_type_conversions>
X_labeled_raw =(labeled_data.iloc[:,1:].values ).astype('float32') y_labeled_raw = labeled_data.iloc[:,0].values.astype('int32') X_unlabeled_raw = unlabeled_data.values.astype('float32' )
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X_labeled_raw =(labeled_data.iloc[:,1:].values ).astype('float32') y_labeled_raw = labeled_data.iloc[:,0].values.astype('int32') X_unlabeled_raw = unlabeled_data.values.astype('float32' )<prepare_output>
y_labeled = y_labeled_raw
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y_labeled = y_labeled_raw<split>
X_train, X_val, y_train, y_val = train_test_split(X_labeled, y_labeled, test_size=0.20, random_state=42, shuffle=True )
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X_train, X_val, y_train, y_val = train_test_split(X_labeled, y_labeled, test_size=0.20, random_state=42, shuffle=True )<prepare_x_and_y>
training_data = tf.data.Dataset.from_tensor_slices(( X_train, y_train)) validation_data = tf.data.Dataset.from_tensor_slices(( X_val, y_val)) print(training_data.element_spec )
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training_data = tf.data.Dataset.from_tensor_slices(( X_train, y_train)) validation_data = tf.data.Dataset.from_tensor_slices(( X_val, y_val)) print(training_data.element_spec )<import_modules>
print(device_lib.list_local_devices() )
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print(device_lib.list_local_devices() )<choose_model_class>
def get_model() : model = Sequential([ Input(shape=(28,28,1)) , data_augmentation, Convolution2D(32,(5,5), activation='relu'), BatchNormalization(axis=1), Convolution2D(32,(5,5), activation='relu'), MaxPooling2D() , Dropout(0.25), Convolution2D(64,(3,3), activation='relu'), BatchNormalization(axis=1), Convolution2D(64,(3,3), activation='relu'), MaxPooling2D() , Dropout(0.25), Flatten() , Dense(256, activation='relu'), Dropout(0.25), Dense(10, activation='softmax') ]) model.compile(optimizer=tf.keras.optimizers.Adam() , loss=tf.keras.losses.SparseCategoricalCrossentropy() , metrics=['accuracy']) return model model = get_model() model.summary()
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def get_model() : model = Sequential([ Input(shape=(28,28,1)) , data_augmentation, Convolution2D(32,(5,5), activation='relu'), BatchNormalization(axis=1), Convolution2D(32,(5,5), activation='relu'), MaxPooling2D() , Dropout(0.25), Convolution2D(64,(3,3), activation='relu'), BatchNormalization(axis=1), Convolution2D(64,(3,3), activation='relu'), MaxPooling2D() , Dropout(0.25), Flatten() , Dense(256, activation='relu'), Dropout(0.25), Dense(10, activation='softmax') ]) model.compile(optimizer=tf.keras.optimizers.Adam() , loss=tf.keras.losses.SparseCategoricalCrossentropy() , metrics=['accuracy']) return model model = get_model() model.summary()<train_model>
EPOCHS=60 BATCH=64 autotune = tf.data.AUTOTUNE train_data_batches = training_data.shuffle(buffer_size=40000 ).batch(BATCH ).prefetch(buffer_size=autotune) val_data_batches = validation_data.shuffle(buffer_size=10000 ).batch(BATCH ).prefetch(buffer_size=autotune) history = model.fit(train_data_batches, epochs=EPOCHS, validation_data=val_data_batches, verbose=1 )
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EPOCHS=60 BATCH=64 autotune = tf.data.AUTOTUNE train_data_batches = training_data.shuffle(buffer_size=40000 ).batch(BATCH ).prefetch(buffer_size=autotune) val_data_batches = validation_data.shuffle(buffer_size=10000 ).batch(BATCH ).prefetch(buffer_size=autotune) history = model.fit(train_data_batches, epochs=EPOCHS, validation_data=val_data_batches, verbose=1 )<predict_on_test>
probabilities = model.predict(X_val) y_predicted = np.argmax(probabilities, axis=1) ConfusionMatrixDisplay.from_predictions(y_val, y_predicted)
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<save_to_csv><EOS>
probabilities = model.predict(X_test, verbose=0) predictions = np.argmax(probabilities, axis=1) sample_submission = pd.read_csv('.. /input/sample_submission.csv') sample_submission['Label'] = predictions sample_submission.to_csv("submission.csv",index=False )
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<SOS> metric: categorizationaccuracy Kaggle data source: digit-recognizer<import_modules>
import pandas as pd
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import pandas as pd<load_from_csv>
mnist_test = pd.read_csv("/kaggle/input/mnist-fashion-data-classification/mnist_test.csv") mnist_train = pd.read_csv("/kaggle/input/mnist-fashion-data-classification/mnist_train.csv")
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mnist_test = pd.read_csv("/kaggle/input/mnist-fashion-data-classification/mnist_test.csv") mnist_train = pd.read_csv("/kaggle/input/mnist-fashion-data-classification/mnist_train.csv") <load_from_csv>
sample_submission = pd.read_csv("/kaggle/input/digit-recognizer/sample_submission.csv") train = pd.read_csv("/kaggle/input/digit-recognizer/train.csv") test = pd.read_csv("/kaggle/input/digit-recognizer/test.csv" )
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sample_submission = pd.read_csv("/kaggle/input/digit-recognizer/sample_submission.csv") train = pd.read_csv("/kaggle/input/digit-recognizer/train.csv") test = pd.read_csv("/kaggle/input/digit-recognizer/test.csv" )<feature_engineering>
test['dataset'] = 'test'
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test['dataset'] = 'test'<feature_engineering>
train['dataset'] = 'train'
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train['dataset'] = 'train'<concatenate>
dataset = pd.concat([train.drop('label', axis=1), test] ).reset_index()
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dataset = pd.concat([train.drop('label', axis=1), test] ).reset_index()<concatenate>
mnist = pd.concat([mnist_train, mnist_test] ).reset_index(drop=True) labels = mnist['label'].values mnist.drop('label', axis=1, inplace=True) mnist.columns = cols
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mnist = pd.concat([mnist_train, mnist_test] ).reset_index(drop=True) labels = mnist['label'].values mnist.drop('label', axis=1, inplace=True) mnist.columns = cols<sort_values>
idx_mnist = mnist.sort_values(by=list(mnist.columns)).index dataset_from = dataset.sort_values(by=list(mnist.columns)) ['dataset'].values original_idx = dataset.sort_values(by=list(mnist.columns)) ['index'].values
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idx_mnist = mnist.sort_values(by=list(mnist.columns)).index dataset_from = dataset.sort_values(by=list(mnist.columns)) ['dataset'].values original_idx = dataset.sort_values(by=list(mnist.columns)) ['index'].values<feature_engineering>
for i in range(len(idx_mnist)) : if dataset_from[i] == 'test': sample_submission.loc[original_idx[i], 'Label'] = labels[idx_mnist[i]]
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<save_to_csv><EOS>
sample_submission.to_csv('submission.csv', index=False )
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19,567,958
<SOS> metric: categorizationaccuracy Kaggle data source: digit-recognizer<define_variables>
warnings.filterwarnings('ignore') %matplotlib inline
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input_path = Path('/kaggle/input/tabular-playground-series-jan-2021/' )<load_from_csv>
train = pd.read_csv('.. /input/digit-recognizer/train.csv') test = pd.read_csv('.. /input/digit-recognizer/test.csv') submission = pd.read_csv('.. /input/digit-recognizer/sample_submission.csv' )
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train = pd.read_csv(input_path / 'train.csv', index_col='id') display(train.head() )<load_from_csv>
X_train = train.drop(['label'], axis=1) y_train = train['label']
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test = pd.read_csv(input_path / 'test.csv', index_col='id') display(test.head() )<drop_column>
X_train /= 255.0 test /= 255.0
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target = train.pop('target' )<split>
X_train1 = X_train.values.reshape(-1, 28, 28, 1) test = test.values.reshape(-1, 28, 28, 1 )
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X_train, X_test, y_train, y_test = train_test_split(train, target, train_size=0.80 )<import_modules>
y_train = to_categorical(y_train, num_classes=10 )
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from sklearn.dummy import DummyRegressor from sklearn.svm import SVR from sklearn.preprocessing import StandardScaler from sklearn.datasets import make_regression from sklearn.ensemble import RandomForestRegressor from sklearn.linear_model import Ridge from sklearn.linear_model import SGDRegressor from sklearn.linear_model import BayesianRidge from sklearn.linear_model import LassoLars from sklearn.linear_model import ARDRegression from sklearn.linear_model import PassiveAggressiveRegressor from sklearn.linear_model import TheilSenRegressor from sklearn.linear_model import LinearRegression from lightgbm import LGBMRegressor from xgboost import XGBRegressor <compute_train_metric>
X_train, X_val , y_train, y_val = train_test_split(X_train1, y_train, test_size=0.2 )
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def FitAndScoreModel(df,name, model,X_tr,y_tr,X_tst,y_tst): model.fit(X_tr,y_tr) Y_pred = model.predict(X_tst) score=mean_squared_error(y_tst, Y_pred, squared=False) df = df.append({'Model':name, 'MSE': score},ignore_index = True) return df<create_dataframe>
model = keras.models.Sequential() model.add(keras.layers.Conv2D(filters = 64, kernel_size=(5,5), padding='same', activation='relu', input_shape=(28, 28, 1))) model.add(keras.layers.BatchNormalization()) model.add(keras.layers.Conv2D(filters = 64, kernel_size=(5,5), padding='same', activation='relu')) model.add(keras.layers.BatchNormalization()) model.add(keras.layers.MaxPool2D(pool_size=(2,2))) model.add(keras.layers.Dropout(0.5)) model.add(keras.layers.Conv2D(filters = 64, kernel_size=(3,3), padding='same', activation='relu')) model.add(keras.layers.BatchNormalization()) model.add(keras.layers.Conv2D(filters = 64, kernel_size=(3,3), padding='same', activation='relu')) model.add(keras.layers.BatchNormalization()) model.add(keras.layers.MaxPool2D(pool_size=(2,2))) model.add(keras.layers.Dropout(0.5)) model.add(keras.layers.Flatten()) model.add(keras.layers.Dense(256, activation='relu')) model.add(keras.layers.BatchNormalization()) model.add(keras.layers.Dropout(0.5)) model.add(keras.layers.Dense(256, activation='relu')) model.add(keras.layers.BatchNormalization()) model.add(keras.layers.Dropout(0.5)) model.add(keras.layers.Dense(10, activation='softmax'))
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dResults = pd.DataFrame(columns = ['Model', 'MSE'] )<train_model>
model.compile(loss='categorical_crossentropy', optimizer='adam', metrics=["accuracy"] )
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classifiers = [ DummyRegressor(strategy='median'), SGDRegressor() , BayesianRidge() , LassoLars() , ARDRegression() , PassiveAggressiveRegressor() , LinearRegression() , LGBMRegressor() , RandomForestRegressor() , XGBRegressor() ] for item in classifiers: print(item) clf = item dResults=FitAndScoreModel(dResults,item,item,X_train,y_train,X_test,y_test )<sort_values>
history = model.fit(X_train, y_train, epochs=25, validation_data=(X_val, y_val))
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dResults.sort_values(by='MSE', ascending=True,inplace=True) dResults.set_index('MSE',inplace=True) dResults.head(dResults.shape[0] )<init_hyperparams>
y_pred = model.predict(test )
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<init_hyperparams><EOS>
submission['Label'] = results submission.to_csv('submission.csv', index=False )
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<SOS> metric: categorizationaccuracy Kaggle data source: digit-recognizer<prepare_x_and_y>
import numpy as np import pandas as pd import seaborn as sns import matplotlib.pyplot as plt from sklearn.model_selection import train_test_split from skimage import color from skimage import measure from skimage.filters import try_all_threshold from skimage.filters import threshold_otsu from skimage.filters import threshold_local import keras from keras import Sequential from keras.layers import Dense, Conv2D, MaxPooling2D, Flatten, Dropout, BatchNormalization from keras.optimizers import Adam from keras.utils import to_categorical from keras.preprocessing.image import ImageDataGenerator from tensorflow.keras.callbacks import ReduceLROnPlateau, EarlyStopping, ModelCheckpoint
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19,478,081
n_fold = 10 folds = KFold(n_splits=n_fold, shuffle=True, random_state=42) train_columns = train.columns.values oof = np.zeros(len(train)) LGBMpredictions = np.zeros(len(test)) feature_importance_df = pd.DataFrame() for fold_,(trn_idx, val_idx)in enumerate(folds.split(train, target.values)) : strLog = "fold {}".format(fold_) print(strLog) X_tr, X_val = train.iloc[trn_idx], train.iloc[val_idx] y_tr, y_val = target.iloc[trn_idx], target.iloc[val_idx] model = LGBMRegressor(**params, n_estimators = 20000) model.fit(X_tr, y_tr, eval_set=[(X_tr, y_tr),(X_val, y_val)], eval_metric='rmse', verbose=1000, early_stopping_rounds=400) oof[val_idx] = model.predict(X_val, num_iteration=model.best_iteration_) fold_importance_df = pd.DataFrame() fold_importance_df["Feature"] = train_columns fold_importance_df["importance"] = model.feature_importances_[:len(train_columns)] fold_importance_df["fold"] = fold_ + 1 feature_importance_df = pd.concat([feature_importance_df, fold_importance_df], axis=0) LGBMpredictions += model.predict(test, num_iteration=model.best_iteration_)/ folds.n_splits <choose_model_class>
df_train = pd.read_csv('.. /input/digit-recognizer/train.csv') df_test = pd.read_csv('.. /input/digit-recognizer/test.csv' )
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<init_hyperparams>
y_train = df_train['label'] X_train = df_train.drop('label', axis = 1) X_test = np.array(df_test )
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XGparams={'colsample_bytree': 0.7, 'learning_rate': 0.01, 'max_depth': 7, 'min_child_weight': 1, 'n_estimators': 4000, 'nthread': 4, 'objective': 'reg:squarederror', 'subsample': 0.7}<train_model>
y_train = to_categorical(y_train, num_classes = 10) y_train.shape
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n_fold = 10 folds = KFold(n_splits=n_fold, shuffle=True, random_state=42) train_columns = train.columns.values oof = np.zeros(len(train)) XGpredictions = np.zeros(len(test)) feature_importance_df = pd.DataFrame() for fold_,(trn_idx, val_idx)in enumerate(folds.split(train, target.values)) : strLog = "fold {}".format(fold_) print(strLog) X_tr, X_val = train.iloc[trn_idx], train.iloc[val_idx] y_tr, y_val = target.iloc[trn_idx], target.iloc[val_idx] model = XGBRegressor(**XGparams) model.fit(X_tr, y_tr, eval_set=[(X_tr, y_tr),(X_val, y_val)], verbose=1000, early_stopping_rounds=400) oof[val_idx] = model.predict(X_val, ntree_limit=model.best_iteration) preds = model.predict(test, ntree_limit=model.best_iteration) fold_importance_df = pd.DataFrame() fold_importance_df["Feature"] = train_columns fold_importance_df["importance"] = model.feature_importances_[:len(train_columns)] fold_importance_df["fold"] = fold_ + 1 feature_importance_df = pd.concat([feature_importance_df, fold_importance_df], axis=0) XGpredictions += model.predict(test, ntree_limit=model.best_iteration)/ folds.n_splits <load_from_csv>
X_train, X_val, y_train, y_val = train_test_split(X_train, y_train, test_size=0.25, random_state=1 )
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submission = pd.read_csv(input_path / 'sample_submission.csv', index_col='id') submission.reset_index(inplace=True) submission = submission.rename(columns = {'index':'id'} )<save_to_csv>
kernel_ =(5,5 )
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LGBMsubmission=submission.copy() LGBMsubmission['target'] = LGBMpredictions LGBMsubmission.to_csv('submission_LGBM.csv', header=True, index=False) LGBMsubmission.head()<save_to_csv>
model = Sequential() model.add(Conv2D(filters = 32, kernel_size =(5,5),padding = 'Same', activation ='relu', input_shape =(28, 28, 1))) model.add(Conv2D(filters = 32, kernel_size =(5,5),padding = 'Same', activation ='relu')) model.add(MaxPooling2D(pool_size=(2,2))) model.add(Dropout(0.25)) model.add(Conv2D(filters = 64, kernel_size =(3,3),padding = 'Same', activation ='relu')) model.add(Conv2D(filters = 64, kernel_size =(3,3),padding = 'Same', activation ='relu')) model.add(MaxPooling2D(pool_size=(2,2), strides=(2,2))) model.add(Dropout(0.25)) model.add(Flatten()) model.add(Dense(256, activation = "relu")) model.add(Dense(256, activation = 'relu')) model.add(Dropout(0.5)) model.add(Dense(10, activation = "softmax")) model.summary()
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XGBoostsubmission=submission.copy() XGBoostsubmission['target'] = XGpredictions XGBoostsubmission.to_csv('submission_XGBoost.csv', header=True, index=False) XGBoostsubmission.head()<save_to_csv>
aug = ImageDataGenerator( rotation_range=10, zoom_range = 0.1, width_shift_range=0.1, height_shift_range=0.1) gen_train = aug.flow(X_train, y_train, batch_size=64) gen_val = aug.flow(X_val, y_val, batch_size=64 )
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EnsembledSubmission=submission.copy() EnsembledSubmission['target'] =(LGBMpredictions*0.72 + XGpredictions*0.28) EnsembledSubmission.to_csv('ensembled_submission.csv', header=True, index=False) EnsembledSubmission.head()<import_modules>
model.compile(loss='categorical_crossentropy', optimizer='adam', metrics=['accuracy'] )
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import numpy as np import pandas as pd import matplotlib.pyplot as plt import seaborn as sns import optuna from sklearn.preprocessing import StandardScaler from sklearn.pipeline import Pipeline from sklearn.model_selection import train_test_split, KFold from sklearn.metrics import mean_squared_error from sklearn.base import TransformerMixin import xgboost as xgb import lightgbm as lgb<load_from_csv>
checkpoint = tf.keras.callbacks.ModelCheckpoint("weights.hdf5", monitor='val_accuracy', verbose=1, save_best_only=True) reduce_lr = tf.keras.callbacks.ReduceLROnPlateau(monitor='val_loss', factor=0.5, patience=4, min_lr=0.00005, verbose=1) early_stop = tf.keras.callbacks.EarlyStopping(patience=5, restore_best_weights=True )
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df = pd.read_csv('.. /input/tabular-playground-series-jan-2021/train.csv') df.head()<compute_train_metric>
training = model.fit(gen_train, epochs=100, batch_size=512, validation_data=gen_val, callbacks = [checkpoint, reduce_lr], verbose = 1 )
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def objective_xgb(trial, data, target): parameters = { 'tree_method': 'gpu_hist', 'lambda': trial.suggest_loguniform('lambda', 1e-3, 10.0), 'alpha': trial.suggest_loguniform('alpha', 1e-3, 10.0), 'colsample_bytree': trial.suggest_categorical('colsample_bytree', [0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9,1.0]), 'subsample': trial.suggest_categorical('subsample', [0.4, 0.5, 0.6, 0.7, 0.8, 1.0]), 'learning_rate': trial.suggest_categorical('learning_rate', [0.008, 0.009, 0.01, 0.012, 0.014, 0.016, 0.018, 0.02]), 'n_estimators': 1000, 'max_depth': trial.suggest_categorical('max_depth', [5, 7, 9, 11, 13, 15, 17, 20]), 'random_state': trial.suggest_categorical('random_state', [24, 48, 2020]), 'min_child_weight': trial.suggest_int('min_child_weight', 1, 300), } folds = KFold(n_splits=5, random_state=1337, shuffle=True) rmse = [] for train_idx, test_idx in folds.split(data, target): X_train, X_test = X.iloc[train_idx], X.iloc[test_idx] y_train, y_test = y.iloc[train_idx], y.iloc[test_idx] model = xgb.XGBRegressor(**parameters) model.fit(X_train, y_train, eval_set=[(X_test, y_test)], early_stopping_rounds=100, verbose=False) rmse.append(mean_squared_error(y_test, model.predict(X_test), squared=False)) print(f'Mean RMSE for all the folds: {np.mean(rmse)}') return np.mean(rmse )<init_hyperparams>
model.load_weights("weights.hdf5" )
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xgb_parameters = { 'objective': 'reg:squarederror', 'tree_method': 'gpu_hist', 'n_estimators': 1000, 'lambda': 7.610705234008646, 'alpha': 0.0019377246932580476, 'colsample_bytree': 0.5, 'subsample': 0.7, 'learning_rate': 0.012, 'max_depth': 20, 'random_state': 24, 'min_child_weight': 229 }<split>
y_test = model.predict(X_test) y_pred = np.argmax(y_test, axis=1 )
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<init_hyperparams><EOS>
output_csv = {"ImageId":[*range(1,1+len(y_pred)) ], "Label":y_pred} Y_pre = pd.DataFrame(output_csv) Y_pre.set_index("ImageId", drop=True, append=False, inplace=True) Y_pre.to_csv("/kaggle/working/submission.csv" )
Digit Recognizer
18,907,580
<SOS> metric: categorizationaccuracy Kaggle data source: digit-recognizer<categorify>
import numpy as np import pandas as pd import os import torch import torch.nn as nn import torch.optim as optim from PIL import Image from matplotlib import pyplot as plt from torch.utils.data import Dataset,DataLoader from torchvision import transforms as T from torchvision import models import tqdm from sklearn.metrics import f1_score,roc_auc_score,accuracy_score,confusion_matrix
Digit Recognizer
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class NonLinearTransformer(TransformerMixin): def __init__(self): pass def fit(self, X, y=None): return self def transform(self, X, y=None): X = X.drop(columns=['id']) for c in X.columns: if c == 'target': continue X[f'{c}^2'] = X[c] ** 2 return X<define_search_model>
train_df=pd.read_csv(".. /input/digit-recognizer/train.csv") test_df=pd.read_csv(".. /input/digit-recognizer/test.csv" )
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pipe_xgb = Pipeline([ ('custom', NonLinearTransformer()), ('scaling', StandardScaler()), ('regression', xgb.XGBRegressor(**xgb_parameters)) ]) pipe_lgb = Pipeline([ ('custom', NonLinearTransformer()), ('scaling', StandardScaler()), ('regression', lgb.LGBMRegressor(**lgb_parameters)) ] )<load_from_csv>
def get_image(data_df,idx): return Image.fromarray(np.uint8(np.reshape(data_df.iloc[idx][data_df.columns[-784:]].to_numpy() ,(28,28)))).convert('RGB')
Digit Recognizer
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df_train = pd.read_csv('.. /input/tabular-playground-series-jan-2021/train.csv') df_predict = pd.read_csv('.. /input/tabular-playground-series-jan-2021/test.csv' )<prepare_x_and_y>
class TrainDataSet(Dataset): def __init__(self,data_df,transforms=T.ToTensor()): self.data_df=data_df self.transform=transforms def __len__(self): return self.data_df.shape[0] def __getitem__(self,idx): image=self.transform(get_image(self.data_df,idx)) label=torch.tensor(self.data_df.label.iloc[idx],dtype=torch.long) return image,label
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X, y = df_train.drop(columns=['target']), df_train['target']<split>
class TestDataSet(TrainDataSet): def __getitem__(self,idx): image=self.transform(get_image(self.data_df,idx)) return image
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X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=1337 )<compute_test_metric>
def create_model() : model = models.resnet18(pretrained=True) num_ftrs = model.fc.in_features model.fc = nn.Linear(num_ftrs, 10) return model
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pipe_xgb.fit(X_train, y_train) pipe_lgb.fit(X_train, y_train) print(f'XGB Score: {pipe_xgb.score(X_test, y_test)}, LGB Score: {pipe_lgb.score(X_test, y_test)}') print(f'XGB RMSE: {mean_squared_error(y_test, pipe_xgb.predict(X_test), squared=False)}, LGB RMSE: {mean_squared_error(y_test, pipe_lgb.predict(X_test), squared=False)}' )<predict_on_test>
transform=T.Compose([ T.Resize(( 256,256)) , T.ToTensor() , T.Normalize(( 0.485, 0.456, 0.406),(0.229, 0.224, 0.225)) ] )
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def ensemble_predict(X): target_xgb = pipe_xgb.predict(X) target_lgb = pipe_lgb.predict(X) return [0.85 * x + 0.15 * l for(x, l)in zip(target_xgb, target_lgb)]<compute_test_metric>
def train_once(model,dataloader,criterion,optimizer,device): total_loss=0 n_total=0 criterion.reduction="sum" model.train() for i,(images,labels)in enumerate(tqdm.tqdm(dataloader)) : optimizer.zero_grad() images=images.to(device) labels=labels.to(device) outputs=model(images) loss=criterion(outputs,labels) total_loss+=loss.item() n_total+=labels.shape[0] loss.backward() optimizer.step() return total_loss/n_total
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print(f'Ensemble RMSE: {mean_squared_error(y_test, ensemble_predict(X_test), squared=False)}' )<train_model>
class Validation_Metrics(object): def __init__(self,activation_func=nn.Softmax(dim=1)) : self.predictions=[] self.labels=[] self.activation_func=activation_func self.collapsed=False def update(self,model_outputs,labels): if not self.collapsed: self.predictions.append(self.activation_func(model_outputs ).detach()) self.labels.append(labels.detach()) else: raise ValueError('Error, one cannot add further values to a logger once it has been collapsed') def collapse(self): if self.collapsed: pass else: self.predictions=torch.cat(self.predictions ).cpu().numpy() self.labels=torch.cat(self.labels ).cpu().numpy() self.collapsed=True def Confusion_matrix(self): self.collapse() Confusion_matrix=np.zeros(10,10) pred=np.argmax(self.predictions,axis=1) labels=self.labels return confusion_matrix(labels,pred) def AUC(self): self.collapse() pred=self.predictions labels=np.zeros(pred.shape) labels[np.arange(label.shape[0]),self.labels]=1.0 aucs = [] for i in range(labels.shape[1]): aucs.append(roc_auc_score(labels[:, i], pred[:, i])) return aucs def F1_score(self): self.collapse() pred=np.argmax(self.predictions,axis=1) labels=self.labels return f1_score(labels, pred, average=None) def Accuracy(self): self.collapse() pred=np.argmax(self.predictions,axis=1) labels=self.labels return accuracy_score(labels, pred)
Digit Recognizer
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pipe_xgb.fit(X, y) pipe_lgb.fit(X, y )<save_to_csv>
def val(model,dataloader,criterion,device): total_loss=0 n_total=0 criterion.reduction="sum" Metrics=Validation_Metrics() model.eval() with torch.no_grad() : for images,labels in tqdm.tqdm(dataloader): images=images.to(device) labels=labels.to(device) outputs=model(images) loss=criterion(outputs,labels) Metrics.update(outputs,labels) total_loss+=loss.item() n_total+=labels.shape[0] return total_loss/n_total,Metrics
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target = pd.DataFrame({ 'id': df_predict['id'], 'target': ensemble_predict(df_predict) }) target.to_csv('submission.csv', index=False )<define_variables>
n_folds=5
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PATH = '/kaggle/input/tabular-playground-series-jan-2021/'<load_from_csv>
train_df.insert(1,"fold",np.random.randint(1,n_folds+1,size=train_df.shape[0]))
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train = pd.read_csv(PATH+'train.csv') test = pd.read_csv(PATH+'test.csv') submission = pd.read_csv(PATH+'sample_submission.csv' )<install_modules>
def Get_Train_Val_Set(fold_i,transform=transform): train_set=TrainDataSet(train_df[train_df.fold!=fold_i],transforms=transform) test_set=TrainDataSet(train_df[train_df.fold==fold_i],transforms=transform) return train_set, test_set
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!pip install pycaret<import_modules>
USE_CUDA = torch.cuda.is_available() device = torch.device("cuda" if USE_CUDA else "cpu" )
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from pycaret.regression import *<define_variables>
criterion=nn.CrossEntropyLoss() optimizer_name="Adam" optimizer_parameters={"lr":0.0001} epochs=1
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reg = setup(data=train, target='target', silent=True, session_id=2021 )<choose_model_class>
def create_optimizer(model,optimizer_name,optimizer_parameters): if optimizer_name=="SGD": return optim.SGD(model.parameters() ,**optimizer_parameters) elif optimizer_name=="Adam": return optim.Adam(model.parameters() ,**optimizer_parameters )
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blended = blend_models(best_3, fold=5 )<predict_on_test>
Best_val_accuracy=0 for fold in range(1,n_folds+1): print(f"Training fold {fold}") model=create_model() model.to(device) optimizer=create_optimizer(model,optimizer_name,optimizer_parameters) TrainSet,ValSet=Get_Train_Val_Set(fold) TrainLoader=DataLoader(TrainSet, batch_size=256) ValLoader=DataLoader(ValSet, batch_size=1024) for epoch in range(epochs): train_loss=train_once(model,TrainLoader,criterion,optimizer,device) print(f"For epoch {epoch+1}, the Train Loss was: {train_loss}") val_loss,Metrics=val(model,ValLoader,criterion,device) print(f"The Val Loss was {val_loss}, and the val accuracy was {Metrics.Accuracy() }") if Metrics.Accuracy() >Best_val_accuracy: print("New Best, saving") torch.save(model.state_dict() ,f"fold{fold}Best.pt")
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pred_holdout = predict_model(blended )<categorify>
optimizer=create_optimizer(model,optimizer,optimizer_parameters) optimizer
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final_model = finalize_model(blended )<predict_on_test>
model_outputs=torch.zeros(( test_df.shape[0],10)).to(device) plot_every=1
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predictions = predict_model(final_model, data=test )<prepare_output>
TestSet=TestDataSet(test_df,transforms=transform )
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submission['target'] = predictions['Label']<save_to_csv>
for fold in range(1,n_folds+1): print(f"Running on fold {fold}") model=create_model() model.load_state_dict(torch.load(f"fold{fold}Best.pt")) model.to(device) model.eval() for i,image in enumerate(tqdm.tqdm(TestSet)) : image=torch.unsqueeze(image,0 ).to(device) outputs=model(image) model_outputs[i]+=outputs.detach() [0]
Digit Recognizer
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submission.to_csv('submission_0116_baseline.csv', index=False )<import_modules>
submission_df=pd.read_csv(".. /input/digit-recognizer/sample_submission.csv" )
Digit Recognizer
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import lightgbm as lgb import optuna.integration.lightgbm as oplgb from sklearn.model_selection import KFold from sklearn.metrics import mean_squared_error from tqdm.notebook import tqdm import matplotlib.pyplot as plt import seaborn as sns<load_from_csv>
submission_df["Label"]=np.argmax(model_outputs.cpu().numpy() ,1 )
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df_train = pd.read_csv("/kaggle/input/tabular-playground-series-jan-2021/train.csv") df_test = pd.read_csv("/kaggle/input/tabular-playground-series-jan-2021/test.csv") df_sample = pd.read_csv("/kaggle/input/tabular-playground-series-jan-2021/sample_submission.csv" )<drop_column>
submission_df.to_csv("submission.csv", index=False )
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<define_variables><EOS>
pd.read_csv("submission.csv" )
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<SOS> metric: categorizationaccuracy Kaggle data source: digit-recognizer<prepare_x_and_y>
for dirname, _, filenames in os.walk('/kaggle/input'): for filename in filenames: print(os.path.join(dirname, filename))
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train_x = df_train[feature_cols] train_y = df_train.target test_x = df_test<choose_model_class>
np.random.seed(1) df_train = pd.read_csv("/kaggle/input/digit-recognizer/train.csv") df_train = df_train.iloc[np.random.permutation(len(df_train)) ]
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folds = KFold(n_splits=5, shuffle=True, random_state=2021 )<train_model>
sample_size = df_train.shape[0] validation_size = int(df_train.shape[0] * 0.1) train_x = np.asarray(df_train.iloc[:sample_size - validation_size:, 1:] ).reshape([sample_size - validation_size, 28, 28, 1]) train_y = np.asarray(df_train.iloc[:sample_size - validation_size:, 0] ).reshape([sample_size - validation_size, 1]) val_x = np.asarray(df_train.iloc[sample_size - validation_size:,1:] ).reshape([validation_size,28,28,1]) val_y = np.asarray(df_train.iloc[sample_size - validation_size:, 0] ).reshape([validation_size, 1] )
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class FoldsAverageLGBM: def __init__(self, folds): self.folds = folds self.models = [] def fit(self, lgb_params, train_x, train_y): oof_preds = np.zeros_like(train_y) self.train_x = train_x.values self.train_y = train_y.values for tr_idx, va_idx in tqdm(folds.split(train_x)) : tr_x, va_x = self.train_x[tr_idx], self.train_x[va_idx] tr_y, va_y = self.train_y[tr_idx], self.train_y[va_idx] lgb_train_dataset = lgb.Dataset(tr_x, tr_y) lgb_valid_dataset = lgb.Dataset(va_x, va_y) model = lgb.train(lgb_params, lgb_train_dataset, valid_sets=[lgb_valid_dataset], verbose_eval=100) self.models.append(model) oof_pred = model.predict(va_x) oof_preds[va_idx] = oof_pred self.oof_preds = oof_preds def predict(self, test_x): preds = [] for model in tqdm(self.models): pred = model.predict(test_x) preds.append(pred) preds = np.mean(preds, axis=0) return preds<init_hyperparams>
df_test = pd.read_csv("/kaggle/input/digit-recognizer/test.csv") test_x = np.asarray(df_test.iloc[:, :] ).reshape([-1, 28, 28, 1] )
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best_lgb_params = { 'seed': 2021, 'objective': 'regression', 'metric': 'rmse', 'verbosity': -1, 'feature_pre_filter': False, 'lambda_l1': 6.540486456085813, 'lambda_l2': 0.01548480538099245, 'num_leaves': 256, 'feature_fraction': 0.52, 'bagging_fraction': 0.6161835249194311, 'bagging_freq': 7, 'min_child_samples': 20 } best_lgb_params["learning_rate"] = 0.001 best_lgb_params["early_stopping_round"] = 1000 best_lgb_params["num_iterations"] = 20000<statistical_test>
train_x = train_x/255 val_x = val_x/255 test_x = test_x/255
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folds_average_lgbm = FoldsAverageLGBM(folds )<train_model>
model = models.Sequential()
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folds_average_lgbm.fit(best_lgb_params, train_x, train_y )<compute_test_metric>
model.add(Conv2D(32,3, padding ="same",input_shape=(28, 28, 1))) model.add(LeakyReLU()) model.add(Conv2D(32,3, padding ="same")) model.add(LeakyReLU()) model.add(MaxPool2D(pool_size=(2,2))) model.add(Dropout(0.25)) model.add(Conv2D(64,3, padding ="same")) model.add(LeakyReLU()) model.add(Conv2D(64,3, padding ="same")) model.add(LeakyReLU()) model.add(MaxPool2D(pool_size=(2,2))) model.add(Dropout(0.25)) model.add(Flatten()) model.add(Dense(256,activation='relu')) model.add(Dense(32,activation='relu')) model.add(Dense(10,activation="sigmoid"))
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np.sqrt(mean_squared_error(df_train.target, folds_average_lgbm.oof_preds))<predict_on_test>
initial_lr = 0.001 loss = "sparse_categorical_crossentropy" model.compile(Adam(lr = initial_lr), loss = loss, metrics = ['accuracy']) model.summary()
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y_pred = folds_average_lgbm.predict(test_x )<save_to_csv>
epochs = 20 batch_size = 256 history_1 = model.fit(train_x, train_y, batch_size = batch_size, epochs = epochs, validation_data =(val_x, val_y))
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sub = df_sample.copy() sub["target"] = y_pred sub.to_csv("submission_lgbm_1.csv", index=False) sub.head()<load_from_csv>
val_p = np.argmax(model.predict(val_x), axis = 1) error = 0 confusion_matrix = np.zeros([10, 10]) for i in range(val_x.shape[0]): confusion_matrix[val_y[i], val_p[i]] += 1 if val_y[i] != val_p[i]: error += 1 print("Confusion Matrix: ", confusion_matrix) print(" Errors in validation set: ", error) print(" Error Persentage: ",(error * 100)/ val_p.shape[0]) print(" Accuracy: ", 100 -(error * 100)/ val_p.shape[0]) print(" Validation set Shape: ", val_p.shape[0] )
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train = pd.read_csv(input_path / 'train.csv', index_col='id') display(train.head() )<load_from_csv>
datagen = ImageDataGenerator( featurewise_center = False, samplewise_center = False, featurewise_std_normalization = False, samplewise_std_normalization = False, zca_whitening = False, rotation_range = 10, zoom_range = 0.1, width_shift_range = 0.1, height_shift_range = 0.1, horizontal_flip = False, vertical_flip = False) datagen.fit(train_x )
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test = pd.read_csv(input_path / 'test.csv', index_col='id') display(test.head() )<load_from_csv>
lrr = ReduceLROnPlateau(monitor = 'val_accuracy', patience = 2, verbose = 1, factor = 0.5, min_lr = 0.00001 )
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submission = pd.read_csv(input_path / 'sample_submission.csv', index_col='id') display(submission.head() )<install_modules>
epochs = 30 history_2 = model.fit_generator(datagen.flow(train_x, train_y, batch_size = batch_size), steps_per_epoch = int(train_x.shape[0]/batch_size)+ 1, epochs = epochs, validation_data =(val_x, val_y), callbacks = [lrr])
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!pip install pytorch-tabnet <prepare_x_and_y>
val_p = np.argmax(model.predict(val_x), axis = 1) error = 0 confusion_matrix = np.zeros([10, 10]) for i in range(val_x.shape[0]): confusion_matrix[val_y[i], val_p[i]] += 1 if val_y[i] != val_p[i]: error += 1 print("Confusion Matrix: ", confusion_matrix) print(" Errors in validation set: ", error) print(" Error Persentage: ",(error * 100)/ val_p.shape[0]) print(" Accuracy: ", 100 -(error * 100)/ val_p.shape[0]) print(" Validation set Shape: ", val_p.shape[0] )
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features = train.columns[1:-1] X = train[features] y = np.log1p(train["target"]) X_test = test[features] <data_type_conversions>
test_y = np.argmax(model.predict(test_x), axis = 1 )
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<train_on_grid><EOS>
df_submission = pd.DataFrame([df_test.index + 1, test_y], ["ImageId", "Label"] ).transpose() df_submission.to_csv("MySubmission.csv", index = False )
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<SOS> metric: categorizationaccuracy Kaggle data source: digit-recognizer<compute_test_metric>
tpu = tf.distribute.cluster_resolver.TPUClusterResolver.connect() tpu_strategy = tf.distribute.experimental.TPUStrategy(tpu)
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print("The CV score is %.5f" % np.mean(CV_score_array,axis=0)) <save_to_csv>
train_dataframe=pd.read_csv(".. /input/digit-recognizer/train.csv") test_dataframe=pd.read_csv(".. /input/digit-recognizer/test.csv" )
Digit Recognizer
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submission.iloc[:,0:] = predictions submission.to_csv('submission.csv' )<import_modules>
train_dataframe['label'].value_counts()
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from catboost import CatBoostRegressor<load_from_csv>
train_label = train_dataframe.label.to_numpy() train_image=train_dataframe.to_numpy() [0:,1:].reshape(42000,28,28,1) test_image = test_dataframe.to_numpy().reshape(28000,28,28,1 )
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df_train = pd.read_csv('/kaggle/input/tabular-playground-series-jan-2021/train.csv') y = df_train['target'] df_train.drop(['id', 'target'], axis = 1, inplace = True) df_test = pd.read_csv('/kaggle/input/tabular-playground-series-jan-2021/test.csv') sub_id = df_test['id'] df_test.drop('id', axis = 1, inplace = True )<train_on_grid>
train_image = train_image.astype(float)/ 255.0 test_image = test_image.astype(float)/ 255.0
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cbr = CatBoostRegressor() cbr.fit(df_train, y )<prepare_output>
with tpu_strategy.scope() : model = tf.keras.models.Sequential([ tf.keras.layers.Conv2D(64,(3,3), activation='relu',padding = 'Same', input_shape=(28, 28, 1)) , tf.keras.layers.MaxPooling2D(2, 2), tf.keras.layers.Dropout(0.25), tf.keras.layers.Conv2D(128,(3,3), activation='relu',padding = 'Same'), tf.keras.layers.MaxPooling2D(2,2), tf.keras.layers.Dropout(0.25), tf.keras.layers.Conv2D(256,(3,3), activation='relu',padding = 'Same'), tf.keras.layers.MaxPooling2D(2,2), tf.keras.layers.Dropout(0.25), tf.keras.layers.Flatten() , tf.keras.layers.Dense(1024, activation='relu'), tf.keras.layers.Dropout(0.5), tf.keras.layers.Dense(10, activation='softmax') ]) optimizer = Adam(learning_rate=0.001) model.compile(loss=SparseCategoricalCrossentropy(from_logits=True), optimizer = optimizer, metrics=['accuracy']) epochs = 50 batch_size = 16
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submission = pd.DataFrame(sub_id, columns = ['id']) submission.head()<predict_on_test>
x_train,x_val,y_train,y_val=train_test_split(train_image,train_label,test_size=0.2,random_state=42 )
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submission['target'] = cbr.predict(df_test )<save_to_csv>
history = model.fit(x_train,y_train,batch_size=64,epochs=15,validation_data=(x_val,y_val),shuffle=True )
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submission.to_csv('catboost.csv', index = False )<set_options>
val_pred = model.predict(x_val )
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mpl.rcParams['agg.path.chunksize'] = 10000<load_from_csv>
val_pred1 = np.argmax(val_pred, axis=1 )
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train_data = pd.read_csv('/kaggle/input/tabular-playground-series-jan-2021/train.csv') test_data = pd.read_csv('/kaggle/input/tabular-playground-series-jan-2021/test.csv') print("successfully loaded!" )<filter>
predictions = model.predict(test_image )
Digit Recognizer

Dataset Card for Pipeline2Code

Dataset origin

Code4ML: a Large-scale Dataset of annotated Machine Learning Code

Dataset Summary

This dataset is designed for the iterative generation of Machine Learning (ML) code based on high-level ML pipeline descriptions. It consists of code snippets extracted from Kaggle kernels, organized as Jupyter Notebook snippets. Each kernel includes a set of prompts and completions. The initial prompt contains an token, meta-information about the task the notebook aims to solve, and the semantic type of the code snippet. The final prompt of each kernel consists of the semantic type of the code snippet followed by an token. Each prompt is associated with a code snippet completion. Subsequent prompts include previously generated completions and the semantic type of the snippet.

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