How to use the Scikit-learn Python library for data science projects

Versatile Python library offers powerful machine learning tools for data analysis and data mining.
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The Scikit-learn Python library, initially released in 2007, is commonly used in solving machine learning and data science problems—from the beginning to the end. The versatile library offers an uncluttered, consistent, and efficient API and thorough online documentation.

What is Scikit-learn?

Scikit-learn is an open source Python library that has powerful tools for data analysis and data mining. It's available under the BSD license and is built on the following machine learning libraries:

  • NumPy, a library for manipulating multi-dimensional arrays and matrices. It also has an extensive compilation of mathematical functions for performing various calculations.
  • SciPy, an ecosystem consisting of various libraries for completing technical computing tasks.
  • Matplotlib, a library for plotting various charts and graphs.

Scikit-learn offers an extensive range of built-in algorithms that make the most of data science projects.

Here are the main ways the Scikit-learn library is used.

1. Classification

The classification tools identify the category associated with provided data. For example, they can be used to categorize email messages as either spam or not.

Classification algorithms in Scikit-learn include:

  • Support vector machines (SVMs)
  • Nearest neighbors
  • Random forest

2. Regression

Regression involves creating a model that tries to comprehend the relationship between input and output data. For example, regression tools can be used to understand the behavior of stock prices.

Regression algorithms include:

  • SVMs
  • Ridge regression
  • Lasso

3. Clustering

The Scikit-learn clustering tools are used to automatically group data with the same characteristics into sets. For example, customer data can be segmented based on their localities.

Clustering algorithms include:

  • K-means
  • Spectral clustering
  • Mean-shift

4. Dimensionality reduction

Dimensionality reduction lowers the number of random variables for analysis. For example, to increase the efficiency of visualizations, outlying data may not be considered.

Dimensionality reduction algorithms include:

  • Principal component analysis (PCA)
  • Feature selection
  • Non-negative matrix factorization

5. Model selection

Model selection algorithms offer tools to compare, validate, and select the best parameters and models to use in your data science projects.

Model selection modules that can deliver enhanced accuracy through parameter tuning include:

  • Grid search
  • Cross-validation
  • Metrics

6. Preprocessing

The Scikit-learn preprocessing tools are important in feature extraction and normalization during data analysis. For example, you can use these tools to transform input data—such as text—and apply their features in your analysis.

Preprocessing modules include:

  • Preprocessing
  • Feature extraction

A Scikit-learn library example

Let's use a simple example to illustrate how you can use the Scikit-learn library in your data science projects.

We'll use the Iris flower dataset, which is incorporated in the Scikit-learn library. The Iris flower dataset contains 150 details about three flower species:

  • Setosa—labeled 0
  • Versicolor—labeled 1
  • Virginica—labeled 2

The dataset includes the following characteristics of each flower species (in centimeters):

  • Sepal length
  • Sepal width
  • Petal length
  • Petal width

Step 1: Importing the library

Since the Iris dataset is included in the Scikit-learn data science library, we can load it into our workspace as follows:

from sklearn import datasets
iris = datasets.load_iris()

These commands import the datasets module from sklearn, then use the load_digits() method from datasets to include the data in the workspace.

Step 2: Getting dataset characteristics

The datasets module contains several methods that make it easier to get acquainted with handling data.

In Scikit-learn, a dataset refers to a dictionary-like object that has all the details about the data. The data is stored using the .data key, which is an array list.

For instance, we can utilize iris.data to output information about the Iris flower dataset.

print(iris.data)

Here is the output (the results have been truncated):

[[5.1 3.5 1.4 0.2]
 [4.9 3.  1.4 0.2]
 [4.7 3.2 1.3 0.2]
 [4.6 3.1 1.5 0.2]
 [5.  3.6 1.4 0.2]
 [5.4 3.9 1.7 0.4]
 [4.6 3.4 1.4 0.3]
 [5.  3.4 1.5 0.2]
 [4.4 2.9 1.4 0.2]
 [4.9 3.1 1.5 0.1]
 [5.4 3.7 1.5 0.2]
 [4.8 3.4 1.6 0.2]
 [4.8 3.  1.4 0.1]
 [4.3 3.  1.1 0.1]
 [5.8 4.  1.2 0.2]
 [5.7 4.4 1.5 0.4]
 [5.4 3.9 1.3 0.4]
 [5.1 3.5 1.4 0.3]

Let's also use iris.target to give us information about the different labels of the flowers.

print(iris.target)

Here is the output:

[0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0
 0 0 0 0 0 0 0 0 0 0 0 0 0 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1
 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 2 2 2 2 2 2 2 2 2 2 2
 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2
 2 2]

If we use iris.target_names, we'll output an array of the names of the labels found in the dataset.

print(iris.target_names)

Here is the result after running the Python code:

['setosa' 'versicolor' 'virginica']

Step 3: Visualizing the dataset

We can use the box plot to produce a visual depiction of the Iris flower dataset. The box plot illustrates how the data is distributed over the plane through their quartiles.

Here's how to achieve this:

import seaborn as sns
box_data = iris.data #variable representing the data array
box_target = iris.target #variable representing the labels array
sns.boxplot(data = box_data,width=0.5,fliersize=5)
sns.set(rc={'figure.figsize':(2,15)})

Let's see the result:

Box plot

On the horizontal axis:

  • 0 is sepal length
  • 1 is sepal width
  • 2 is petal length
  • 3 is petal width

The vertical axis is dimensions in centimeters.

Wrapping up

Here is the entire code for this simple Scikit-learn data science tutorial.

from sklearn import datasets
iris = datasets.load_iris()
print(iris.data)
print(iris.target)
print(iris.target_names)
import seaborn as sns
box_data = iris.data #variable representing the data array
box_target = iris.target #variable representing the labels array
sns.boxplot(data = box_data,width=0.5,fliersize=5)
sns.set(rc={'figure.figsize':(2,15)})

Scikit-learn is a versatile Python library you can use to efficiently complete data science projects.

If you want to learn more, check out the tutorials on LiveEdu, such as Andrey Bulezyuk's video on using the Scikit-learn library to create a machine learning application.

Do you have any questions or comments? Feel free to share them below.

Michael Livecoding.tv
Dr. Michael is the founder and CEO of Los Angeles-based Education Ecosystem. Inc. (previously Livecoding.tv). Education Ecosystem (LEDU) is a project-based learning platform that teaches students how to build real products in areas such as programming, game development, artificial intelligence, cybersecurity, data science, and blockchain.

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