Skip to main content

Machine-Learning Toolsets

Project description

spinesUtils -- A Machine-Learning Toolsets

Let you get more done in less time.


This is where all stories begin:

pip install spinesUtils

better CSV dataloader

from spinesUtils import read_csv

your_df = read_csv(
    fp='/path/to/your/file.csv',
    sep=',',  # equal to pandas read_csv.sep
    turbo_method='polars',  # use turbo_method to speed up load time
    chunk_size=None,  # it can be integer if you want to use pandas backend
    transform2low_mem=True,  # it can compresses file to save more memory
    verbose=False
)

better pandas DataFrame insight tools

from spinesUtils import df_preview, classify_samples_dist

df_insight = df_preview(your_df)

df_target_distribution = classify_samples_dist(your_df, target_col=your_df[y_col])

print(df_insight)
print(df_target_distribution)

better dataframe compresses/uncompress tools

# single dataframe
from spinesUtils import transform_dtypes_low_mem, inverse_transform_dtypes

# compresses file to save memory
transform_dtypes_low_mem(your_df, verbose=True)

# uncompress file to python type
inverse_transform_dtypes(your_df, verbose=True, int_dtype=int, float_dtype=float)
# dataframes
import numpy as np
from spinesUtils import transform_batch_dtypes_low_mem, inverse_transform_batch_dtypes

your_dfs = [your_df1, your_df2, your_df3]  # it can be unlimited

# compresses files to save memory
transform_batch_dtypes_low_mem(your_dfs, verbose=True)

# uncompress file to numpy type
inverse_transform_batch_dtypes(your_dfs, verbose=True, int_dtype=np.int32, float_dtype=np.float32)

better train_test_split function

# return numpy.ndarray
from spinesUtils import train_test_split_bigdata

X_train, X_valid, X_test, y_train, y_valid, y_test = train_test_split_bigdata(
    df=your_df, 
    x_cols=x_cols,
    y_col=y_col, 
    shuffle=True,
    return_valid=True,
    train_size=0.8,
    valid_size=0.5
)
# return pandas.dataframe
from spinesUtils import train_test_split_bigdata_df

train, valid, test = train_test_split_bigdata_df(
    df=your_df, 
    x_cols=x_cols,
    y_col=y_col, 
    shuffle=True,
    return_valid=True,
    train_size=0.8,
    valid_size=0.5,
    reset_index=True
)

better imbalanced-data model

from spinesUtils import BinaryBalanceClassifier
from lightgbm import LGBMClassifier
from sklearn.metrics import f1_score, recall_score, precision_score

classifier = BinaryBalanceClassifier(meta_estimators=[LGBMClassifier(), LGBMClassifier()])

classifier.fit(your_df[x_cols], your_df[y_col], threshold_search_set=(your_df[x_cols], your_df[y_col]))

print('threshold: ', classifier.auto_threshold)

print(
    'f1:', f1_score(your_df[y_col], classifier.predict(your_df[x_cols])), 
    'recall:', recall_score(your_df[y_col], classifier.predict(your_df[x_cols])), 
    'precision:', precision_score(your_df[y_col], classifier.predict(your_df[x_cols]))
)

log for human

from spinesUtils import Logger

your_logger = Logger(name='your_logger',
                     fp='/path/to/your.log',  # If fp = None, the log file will not be saved
                     verbose=True,
                     truncate_file=True,
                     with_time=True)

your_logger.insert2file("test")  # only insert to log file
your_logger.print('test')  # only print to console

# Or you can do it both
your_logger.insert_and_throwout('test')

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

spinesUtils-0.3.6.tar.gz (26.8 kB view hashes)

Uploaded Source

Built Distribution

spinesUtils-0.3.6-py3-none-any.whl (36.9 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page