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97f2a2213e
* Move some code outside dbms/src folder * Fix paths
295 lines
9.5 KiB
Python
295 lines
9.5 KiB
Python
from helpers.server_with_models import ClickHouseServerWithCatboostModels
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from helpers.generate import generate_uniform_string_column, generate_uniform_float_column, generate_uniform_int_column
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from helpers.train import train_catboost_model
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import os
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import numpy as np
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from pandas import DataFrame
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PORT = int(os.environ.get('CLICKHOUSE_TESTS_PORT', '9000'))
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CLICKHOUSE_TESTS_SERVER_BIN_PATH = os.environ.get('CLICKHOUSE_TESTS_SERVER_BIN_PATH', '/usr/bin/clickhouse')
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def add_noise_to_target(target, seed, threshold=0.05):
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col = generate_uniform_float_column(len(target), 0., 1., seed + 1) < threshold
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return target * (1 - col) + (1 - target) * col
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def check_predictions(test_name, target, pred_python, pred_ch, acc_threshold):
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ch_class = pred_ch.astype(int)
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python_class = pred_python.astype(int)
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if not np.array_equal(ch_class, python_class):
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raise Exception('Got different results:\npython:\n' + str(python_class) + '\nClickHouse:\n' + str(ch_class))
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acc = 1 - np.sum(np.abs(ch_class - np.array(target))) / (len(target) + .0)
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assert acc >= acc_threshold
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print test_name, 'accuracy: {:.10f}'.format(acc)
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def test_apply_float_features_only():
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name = 'test_apply_float_features_only'
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train_size = 10000
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test_size = 10000
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def gen_data(size, seed):
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data = {
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'a': generate_uniform_float_column(size, 0., 1., seed + 1),
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'b': generate_uniform_float_column(size, 0., 1., seed + 2),
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'c': generate_uniform_float_column(size, 0., 1., seed + 3)
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}
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return DataFrame.from_dict(data)
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def get_target(df):
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def target_filter(row):
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return 1 if (row['a'] > .3 and row['b'] > .3) or (row['c'] < .4 and row['a'] * row['b'] > 0.1) else 0
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return df.apply(target_filter, axis=1).as_matrix()
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train_df = gen_data(train_size, 42)
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test_df = gen_data(test_size, 43)
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train_target = get_target(train_df)
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test_target = get_target(test_df)
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print
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print 'train target', train_target
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print 'test target', test_target
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params = {
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'iterations': 4,
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'depth': 2,
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'learning_rate': 1,
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'loss_function': 'Logloss'
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}
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model = train_catboost_model(train_df, train_target, [], params)
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pred_python = model.predict(test_df)
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server = ClickHouseServerWithCatboostModels(name, CLICKHOUSE_TESTS_SERVER_BIN_PATH, PORT)
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server.add_model(name, model)
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with server:
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pred_ch = (np.array(server.apply_model(name, test_df, [])) > 0).astype(int)
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print 'python predictions', pred_python
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print 'clickhouse predictions', pred_ch
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check_predictions(name, test_target, pred_python, pred_ch, 0.9)
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def test_apply_float_features_with_string_cat_features():
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name = 'test_apply_float_features_with_string_cat_features'
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train_size = 10000
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test_size = 10000
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def gen_data(size, seed):
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data = {
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'a': generate_uniform_float_column(size, 0., 1., seed + 1),
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'b': generate_uniform_float_column(size, 0., 1., seed + 2),
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'c': generate_uniform_string_column(size, ['a', 'b', 'c'], seed + 3),
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'd': generate_uniform_string_column(size, ['e', 'f', 'g'], seed + 4)
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}
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return DataFrame.from_dict(data)
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def get_target(df):
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def target_filter(row):
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return 1 if (row['a'] > .3 and row['b'] > .3 and row['c'] != 'a') \
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or (row['a'] * row['b'] > 0.1 and row['c'] != 'b' and row['d'] != 'e') else 0
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return df.apply(target_filter, axis=1).as_matrix()
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train_df = gen_data(train_size, 42)
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test_df = gen_data(test_size, 43)
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train_target = get_target(train_df)
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test_target = get_target(test_df)
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print
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print 'train target', train_target
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print 'test target', test_target
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params = {
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'iterations': 6,
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'depth': 2,
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'learning_rate': 1,
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'loss_function': 'Logloss'
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}
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model = train_catboost_model(train_df, train_target, ['c', 'd'], params)
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pred_python = model.predict(test_df)
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server = ClickHouseServerWithCatboostModels(name, CLICKHOUSE_TESTS_SERVER_BIN_PATH, PORT)
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server.add_model(name, model)
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with server:
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pred_ch = (np.array(server.apply_model(name, test_df, [])) > 0).astype(int)
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print 'python predictions', pred_python
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print 'clickhouse predictions', pred_ch
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check_predictions(name, test_target, pred_python, pred_ch, 0.9)
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def test_apply_float_features_with_int_cat_features():
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name = 'test_apply_float_features_with_int_cat_features'
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train_size = 10000
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test_size = 10000
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def gen_data(size, seed):
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data = {
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'a': generate_uniform_float_column(size, 0., 1., seed + 1),
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'b': generate_uniform_float_column(size, 0., 1., seed + 2),
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'c': generate_uniform_int_column(size, 1, 4, seed + 3),
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'd': generate_uniform_int_column(size, 1, 4, seed + 4)
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}
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return DataFrame.from_dict(data)
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def get_target(df):
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def target_filter(row):
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return 1 if (row['a'] > .3 and row['b'] > .3 and row['c'] != 1) \
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or (row['a'] * row['b'] > 0.1 and row['c'] != 2 and row['d'] != 3) else 0
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return df.apply(target_filter, axis=1).as_matrix()
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train_df = gen_data(train_size, 42)
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test_df = gen_data(test_size, 43)
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train_target = get_target(train_df)
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test_target = get_target(test_df)
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print
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print 'train target', train_target
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print 'test target', test_target
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params = {
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'iterations': 6,
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'depth': 4,
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'learning_rate': 1,
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'loss_function': 'Logloss'
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}
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model = train_catboost_model(train_df, train_target, ['c', 'd'], params)
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pred_python = model.predict(test_df)
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server = ClickHouseServerWithCatboostModels(name, CLICKHOUSE_TESTS_SERVER_BIN_PATH, PORT)
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server.add_model(name, model)
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with server:
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pred_ch = (np.array(server.apply_model(name, test_df, [])) > 0).astype(int)
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print 'python predictions', pred_python
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print 'clickhouse predictions', pred_ch
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check_predictions(name, test_target, pred_python, pred_ch, 0.9)
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def test_apply_float_features_with_mixed_cat_features():
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name = 'test_apply_float_features_with_mixed_cat_features'
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train_size = 10000
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test_size = 10000
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def gen_data(size, seed):
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data = {
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'a': generate_uniform_float_column(size, 0., 1., seed + 1),
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'b': generate_uniform_float_column(size, 0., 1., seed + 2),
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'c': generate_uniform_string_column(size, ['a', 'b', 'c'], seed + 3),
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'd': generate_uniform_int_column(size, 1, 4, seed + 4)
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}
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return DataFrame.from_dict(data)
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def get_target(df):
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def target_filter(row):
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return 1 if (row['a'] > .3 and row['b'] > .3 and row['c'] != 'a') \
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or (row['a'] * row['b'] > 0.1 and row['c'] != 'b' and row['d'] != 2) else 0
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return df.apply(target_filter, axis=1).as_matrix()
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train_df = gen_data(train_size, 42)
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test_df = gen_data(test_size, 43)
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train_target = get_target(train_df)
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test_target = get_target(test_df)
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print
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print 'train target', train_target
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print 'test target', test_target
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params = {
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'iterations': 6,
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'depth': 4,
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'learning_rate': 1,
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'loss_function': 'Logloss'
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}
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model = train_catboost_model(train_df, train_target, ['c', 'd'], params)
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pred_python = model.predict(test_df)
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server = ClickHouseServerWithCatboostModels(name, CLICKHOUSE_TESTS_SERVER_BIN_PATH, PORT)
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server.add_model(name, model)
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with server:
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pred_ch = (np.array(server.apply_model(name, test_df, [])) > 0).astype(int)
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print 'python predictions', pred_python
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print 'clickhouse predictions', pred_ch
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check_predictions(name, test_target, pred_python, pred_ch, 0.9)
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def test_apply_multiclass():
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name = 'test_apply_float_features_with_mixed_cat_features'
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train_size = 10000
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test_size = 10000
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def gen_data(size, seed):
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data = {
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'a': generate_uniform_float_column(size, 0., 1., seed + 1),
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'b': generate_uniform_float_column(size, 0., 1., seed + 2),
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'c': generate_uniform_string_column(size, ['a', 'b', 'c'], seed + 3),
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'd': generate_uniform_int_column(size, 1, 4, seed + 4)
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}
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return DataFrame.from_dict(data)
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def get_target(df):
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def target_filter(row):
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if row['a'] > .3 and row['b'] > .3 and row['c'] != 'a':
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return 0
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elif row['a'] * row['b'] > 0.1 and row['c'] != 'b' and row['d'] != 2:
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return 1
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else:
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return 2
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return df.apply(target_filter, axis=1).as_matrix()
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train_df = gen_data(train_size, 42)
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test_df = gen_data(test_size, 43)
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train_target = get_target(train_df)
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test_target = get_target(test_df)
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print
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print 'train target', train_target
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print 'test target', test_target
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params = {
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'iterations': 10,
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'depth': 4,
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'learning_rate': 1,
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'loss_function': 'MultiClass'
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}
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model = train_catboost_model(train_df, train_target, ['c', 'd'], params)
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pred_python = model.predict(test_df)[:,0].astype(int)
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server = ClickHouseServerWithCatboostModels(name, CLICKHOUSE_TESTS_SERVER_BIN_PATH, PORT)
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server.add_model(name, model)
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with server:
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pred_ch = np.argmax(np.array(server.apply_model(name, test_df, [])), axis=1)
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print 'python predictions', pred_python
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print 'clickhouse predictions', pred_ch
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check_predictions(name, test_target, pred_python, pred_ch, 0.9)
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