Skoot is a lightweight python library of machine learning transformer classes that interact with scikit-learn and pandas.

Overview

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skoot

Skoot is a lightweight python library of machine learning transformer classes that interact with scikit-learn and pandas. Its objective is to expedite data munging and pre-processing tasks that can tend to take up so much of data science practitioners' time. See the documentation for more info.

Note that skoot is the preferred alternative to the now deprecated skutil library

Two minutes to model-readiness

Real world data is nasty. Most data scientists spend the majority of their time tackling data cleansing tasks. With skoot, we can automate away so much of the bespoke hacking solutions that consume data scientists' time.

In this example, we'll examine a common dataset (the adult dataset from the UCI machine learning repo) that requires significant pre-processing.

from skoot.datasets import load_adult_df
from skoot.feature_selection import FeatureFilter
from skoot.decomposition import SelectivePCA
from skoot.preprocessing import DummyEncoder
from skoot.utils.dataframe import get_numeric_columns
from skoot.utils.dataframe import get_categorical_columns
from sklearn.model_selection import train_test_split
from sklearn.pipeline import Pipeline
from sklearn.ensemble import RandomForestClassifier
from sklearn.metrics import accuracy_score

# load the dataset with the skoot-native loader & split it
adult = load_adult_df(tgt_name="target")
y = adult.pop("target")
X_train, X_test, y_train, y_test = train_test_split(
    adult, y, random_state=42, test_size=0.2)
    
# get numeric and categorical feature names
num_cols = get_numeric_columns(X_train).columns
obj_cols = get_categorical_columns(X_train).columns

# remove the education-num from the num_cols since we're going to remove it
num_cols = num_cols[~(num_cols == "education-num")]
    
# build a pipeline
pipe = Pipeline([
    # drop out the ordinal level that's otherwise equal to "education"
    ("dropper", FeatureFilter(cols=["education-num"])),
    
    # decompose the numeric features with PCA
    ("pca", SelectivePCA(cols=num_cols)),
    
    # dummy encode the categorical features
    ("dummy", DummyEncoder(cols=obj_cols, handle_unknown="ignore")),
    
    # and a simple classifier class
    ("clf", RandomForestClassifier(n_estimators=100, random_state=42))
])

pipe.fit(X_train, y_train)

# produce predictions
preds = pipe.predict(X_test)
print("Test accuracy: %.3f" % accuracy_score(y_test, preds))

For more tutorials, check out the documentation.

Comments
  • Windows: pip install not working

    Windows: pip install not working

    Hi, I can't install skoot neither via pip, nor anaconda.

    > pip install skoot
    Collecting skoot
      Could not find a version that satisfies the requirement skoot (from versions: )
    No matching distribution found for skoot
    

    Any ideas why that might be? Thank you!

    opened by r0f1 2
  • Bump django from 1.11 to 1.11.29 in /build_tools/doc

    Bump django from 1.11 to 1.11.29 in /build_tools/doc

    Bumps django from 1.11 to 1.11.29.

    Commits
    • f1e3017 [1.11.x] Bumped version for 1.11.29 release.
    • 02d97f3 [1.11.x] Fixed CVE-2020-9402 -- Properly escaped tolerance parameter in GIS f...
    • e643833 [1.11.x] Pinned PyYAML < 5.3 in test requirements.
    • d0e3eb8 [1.11.x] Added CVE-2020-7471 to security archive.
    • 9a62ed5 [1.11.x] Post-release version bump.
    • e09f09b [1.11.x] Bumped version for 1.11.28 release.
    • 001b063 [1.11.x] Fixed CVE-2020-7471 -- Properly escaped StringAgg(delimiter) parameter.
    • 7fd1ca3 [1.11.x] Fixed timezones tests for PyYAML 5.3+.
    • 121115d [1.11.x] Added CVE-2019-19844 to the security archive.
    • 2c4fb9a [1.11.x] Post-release version bump.
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    dependencies 
    opened by dependabot[bot] 1
  • Bump django from 1.11 to 1.11.28 in /build_tools/doc

    Bump django from 1.11 to 1.11.28 in /build_tools/doc

    Bumps django from 1.11 to 1.11.28.

    Commits
    • e09f09b [1.11.x] Bumped version for 1.11.28 release.
    • 001b063 [1.11.x] Fixed CVE-2020-7471 -- Properly escaped StringAgg(delimiter) parameter.
    • 7fd1ca3 [1.11.x] Fixed timezones tests for PyYAML 5.3+.
    • 121115d [1.11.x] Added CVE-2019-19844 to the security archive.
    • 2c4fb9a [1.11.x] Post-release version bump.
    • 358973a [1.11.x] Bumped version for 1.11.27 release.
    • f4cff43 [1.11.x] Fixed CVE-2019-19844 -- Used verified user email for password reset ...
    • a235574 [1.11.x] Refs #31073 -- Added release notes for 02eff7ef60466da108b1a33f1e4dc...
    • e8fdf00 [1.11.x] Fixed #31073 -- Prevented CheckboxInput.get_context() from mutating ...
    • 4f15016 [1.11.x] Post-release version bump.
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    dependencies 
    opened by dependabot[bot] 1
  • Bump django from 1.11 to 1.11.23 in /build_tools/doc

    Bump django from 1.11 to 1.11.23 in /build_tools/doc

    Bumps django from 1.11 to 1.11.23.

    Commits
    • 9748977 [1.11.x] Bumped version for 1.11.23 release.
    • 869b34e [1.11.x] Fixed CVE-2019-14235 -- Fixed potential memory exhaustion in django....
    • ed682a2 [1.11.x] Fixed CVE-2019-14234 -- Protected JSONField/HStoreField key and inde...
    • 52479ac [1.11.x] Fixed CVE-2019-14233 -- Prevented excessive HTMLParser recursion in ...
    • 42a66e9 [1.11.X] Fixed CVE-2019-14232 -- Adjusted regex to avoid backtracking issues ...
    • 693046e [1.11.x] Added stub release notes for security releases.
    • 6d054b5 [1.11.x] Added CVE-2019-12781 to the security release archive.
    • 7c849b9 [1.11.x] Post-release version bump.
    • 480380c [1.11.x] Bumped version for 1.11.22 release.
    • 32124fc [1.11.x] Fixed CVE-2019-12781 -- Made HttpRequest always trust SECURE_PROXY_S...
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    dependencies 
    opened by dependabot[bot] 1
  • Wrapped classes still reference sklearn user-guide

    Wrapped classes still reference sklearn user-guide

    The "See Also" section of wrapped sklearn estimators still references sklearn user_guide refs. We need to monkey patch "Selective" (or whatever prefix we are using) in front of them so they link in our documentation.

    bug 
    opened by tgsmith61591 1
  • Bump django from 1.11 to 2.2.24 in /build_tools/doc

    Bump django from 1.11 to 2.2.24 in /build_tools/doc

    Bumps django from 1.11 to 2.2.24.

    Commits
    • 2da029d [2.2.x] Bumped version for 2.2.24 release.
    • f27c38a [2.2.x] Fixed CVE-2021-33571 -- Prevented leading zeros in IPv4 addresses.
    • 053cc95 [2.2.x] Fixed CVE-2021-33203 -- Fixed potential path-traversal via admindocs'...
    • 6229d87 [2.2.x] Confirmed release date for Django 2.2.24.
    • f163ad5 [2.2.x] Added stub release notes and date for Django 2.2.24.
    • bed1755 [2.2.x] Changed IRC references to Libera.Chat.
    • 63f0d7a [2.2.x] Refs #32718 -- Fixed file_storage.test_generate_filename and model_fi...
    • 5fe4970 [2.2.x] Post-release version bump.
    • 61f814f [2.2.x] Bumped version for 2.2.23 release.
    • b8ecb06 [2.2.x] Fixed #32718 -- Relaxed file name validation in FileField.
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    dependencies 
    opened by dependabot[bot] 0
  • scipy._lib_version not found when building package

    scipy._lib_version not found when building package

    problem: error saying scipy._lib_version is missing when building skoot

    cause: scipy._lib_version was removed in scipy 1.5.0 --> https://github.com/scipy/scipy/pull/11290 (downgrading to scipy 1.4.0 helps)

    Thanks!

    opened by AgroSimi 0
  • pip install Skoot on Mac keeps failing with ERROR: Could not find a version that satisfies the requirement skoot (from versions: none).

    pip install Skoot on Mac keeps failing with ERROR: Could not find a version that satisfies the requirement skoot (from versions: none).

    Description

    pip install Skoot on Mac keeps failing with ERROR: Could not find a version that satisfies the requirement skoot (from versions: none) ERROR: No matching distribution found for skoot

    Steps/Code to Reproduce

    pip install skoot using python version : Python 2.7.17 using pip version : pip 19.3.1

    Expected Results

    No errors thrown, successful installation of Skoot

    Actual Results

    ERROR: Could not find a version that satisfies the requirement skoot (from versions: none) ERROR: No matching distribution found for skoot

    Versions

    platform - Darwin-19.2.0-x86_64-i386-64bit sys - ('Python', '2.7.17 (default, Oct 24 2019, 12:57:47) \n[GCC 4.2.1 Compatible Apple LLVM 11.0.0 (clang-1100.0.33.8)]') Skoot -( not able to install ) numpy -("NumPy", numpy.version) scipy - ('SciPy', '1.2.3') sklearn - scikit-learn->sklearn (1.16.6)

    opened by lakshmikrish-97 8
  • [MRG] Mac builds

    [MRG] Mac builds

    This PR adds builds for mac. Currently, it does not deploy to PyPI. We still need the deploy-vars group on ADO. Since we decided to just do mac + Linux for now, this branched off of add-azure... We can use that branch to play around with Windows, or create a new one

    opened by aaronreidsmith 1
  • Package Roadmap

    Package Roadmap

    Is skoot still an active project? Or is there a successor to this concept? Looking to build something similar for my specific workflow, but maybe it would be mutually beneficial to contribute to this project.

    opened by MattConflitti 2
  • String fields with typos

    String fields with typos

    Description

    TODO: Create a transformer that can map values in text fields to known "good" values given Levenstein distance or some other method.

    enhancement 
    opened by tgsmith61591 0
Releases(0.20.0)
Owner
Taylor G Smith
Data scientist, ML engineer and all-around hacker. Java was once my first love, but I've long since converted to the cult of Python.
Taylor G Smith
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