=========== Quick Start =========== Installation ------------ To install the Yellowbrick library, the simplest thing to do is use ``pip`` as follows.:: $ pip install yellowbrick Using Yellowbrick ----------------- The Yellowbrick API is specifically designed to play nicely with Scikit-Learn. Here is an example of a typical workflow sequence with Scikit-Learn and Yellowbrick: Feature Visualization ^^^^^^^^^^^^^^^^^^^^^ In this example, we see how Rank2D performs pairwise comparisons of each feature in the data set with a specific metric or algorithm, then returns them ranked as a lower left triangle diagram.:: from yellowbrick.features import Rank2D visualizer = Rank2D(features=features, algorithm='covariance') visualizer.fit(X, y) # Fit the data to the visualizer visualizer.transform(X) # Transform the data visualizer.poof() # Draw/show/poof the data Model Visualization ^^^^^^^^^^^^^^^^^^^ In this example, we instantiate a Scikit-Learn classifier, and then we use Yellowbrick's ROCAUC class to visualize the tradeoff between the classifier's sensitivity and specificity.:: from sklearn.svm import LinearSVC from yellowbrick.classifier import ROCAUC model = LinearSVC() model.fit(X,y) visualizer = ROCAUC(model) visualizer.score(X,y) visualizer.poof() For additional information on getting started with Yellowbrick, check out our :ref:`examples `.