Book Image

Data Science with Python

By : Rohan Chopra, Aaron England, Mohamed Noordeen Alaudeen
Book Image

Data Science with Python

By: Rohan Chopra, Aaron England, Mohamed Noordeen Alaudeen

Overview of this book

Data Science with Python begins by introducing you to data science and teaches you to install the packages you need to create a data science coding environment. You will learn three major techniques in machine learning: unsupervised learning, supervised learning, and reinforcement learning. You will also explore basic classification and regression techniques, such as support vector machines, decision trees, and logistic regression. As you make your way through the book, you will understand the basic functions, data structures, and syntax of the Python language that are used to handle large datasets with ease. You will learn about NumPy and pandas libraries for matrix calculations and data manipulation, discover how to use Matplotlib to create highly customizable visualizations, and apply the boosting algorithm XGBoost to make predictions. In the concluding chapters, you will explore convolutional neural networks (CNNs), deep learning algorithms used to predict what is in an image. You will also understand how to feed human sentences to a neural network, make the model process contextual information, and create human language processing systems to predict the outcome. By the end of this book, you will be able to understand and implement any new data science algorithm and have the confidence to experiment with tools or libraries other than those covered in the book.
Table of Contents (10 chapters)

Summary

This chapter introduced you to two widely used unsupervised, clustering algorithms, HCA and k-means clustering. While learning about k-means clustering, we leveraged the power of loops to create ensembles of models for tuning the number of clusters and to gain more confidence in our predictions. During the PCA section, we determined the number of principal components for dimensionality reduction and fit the components to a k-means model. Additionally, we compared the differences in k-means model performance before and after PCA transformation. We were introduced to an algorithm, LDA, which reduces dimensionality in a supervised manner. Lastly, we tuned the number of components in LDA by iterating through all possible values for components and programmatically returning the value resulting in the best accuracy score from a Random Forest classifier model. You should now feel comfortable with dimensionality reduction and unsupervised learning techniques.

We were briefly introduced to...