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Project: Clustering Antarctic Penguin Species
source: @allison_horst https://github.com/allisonhorst/penguins
You have been asked to support a team of researchers who have been collecting data about penguins in Antartica! The data is available in csv-Format as penguins.csv
Origin of this data : Data were collected and made available by Dr. Kristen Gorman and the Palmer Station, Antarctica LTER, a member of the Long Term Ecological Research Network.
The dataset consists of 5 columns.
| Column | Description |
|---|---|
| culmen_length_mm | culmen length (mm) |
| culmen_depth_mm | culmen depth (mm) |
| flipper_length_mm | flipper length (mm) |
| body_mass_g | body mass (g) |
| sex | penguin sex |
Unfortunately, they have not been able to record the species of penguin, but they know that there are at least three species that are native to the region: Adelie, Chinstrap, and Gentoo. Your task is to apply your data science skills to help them identify groups in the dataset!
# Import Required Packages
import pandas as pd
import matplotlib.pyplot as plt
from sklearn.cluster import KMeans
from sklearn.preprocessing import StandardScaler
# Loading and examining the dataset
penguins_df = pd.read_csv("penguins.csv")
penguins_df.head()df = pd.get_dummies(penguins_df, dtype=float)
df.head()df.info()df.describe()from sklearn.pipeline import Pipeline
ks = range(1,7)
inertias = []
for k in ks:
scaler = StandardScaler()
kmeans = KMeans(n_clusters=k)
steps = [('scale', scaler), ('KMeans', kmeans)]
pipeline = Pipeline(steps)
pipeline = pipeline.fit(df)
inertias.append(kmeans.inertia_)plt.plot(ks, inertias, '-o')
plt.xlabel('number of clusters, k')
plt.ylabel('inertia')
plt.xticks(ks)
plt.show()scaler = StandardScaler()
kmeans = KMeans(n_clusters=4)
steps = [('scale', scaler), ('KMeans', kmeans)]
pipeline = Pipeline(steps)
pipeline = pipeline.fit(df)
labels = pipeline.predict(df)df['label'] = labels
df.head()numeric_columns = list(df.columns[0:4])
stat_penguins = df.groupby('label')[numeric_columns].mean()
stat_penguins