Put the keystone in your Python Data Science skills by becoming proficient with Data Visualization and Modeling. This course is suited for intermediate programmers, who have some experience with NumPy and Pandas, that want to expand their skills for any career in data science. Whether you come to data science through social sciences and Statistics, or from a programming background, this course will integrate the two perspectives and offer unique insights from each.
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What you'll learn
Create professional visualizations for many kinds of data Utilize Classification algorithms to make predictions using a dataset
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December 2024
4 assignments
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There are 4 modules in this course
In this module, you will learn about plotting in Python—an important technique for exploring a dataset, and an indispensable tool for communicating insights. We’ll learn to make all the most common types of plots used in data science including the basics like line, bar, and scatter plots, as well as more advanced plot types including histograms and heatmaps. We’ll learn both how to make these plots and how they can be customized for your needs using a core plotting library for python, matplotlib, which serves as the backbone for many python plotting tools. You’ll learn how to create professional, accessible, and information-rich plots, which you will leverage to quickly identify trends in data that would be difficult to otherwise recognize. We've also included some optional additional readings if you want to further enhance your learning!
What's included
1 video29 readings1 assignment5 ungraded labs
This module, you will learn the basics of how to use code to make predictions based on data. After discussing what prediction is, you’ll learn to describe the concepts that underlie predictive algorithms within the context of the K-Nearest Neighbors (KNN) algorithm for both classification and regression. Additionally, you’ll learn to evaluate the accuracy of a predictive algorithm to assess its ability to generalize to new data. You will build your own KNN classification and regression algorithms from scratch and make predictions with each of them. At the end of this module, we’ll have a quiz to give you the opportunity to evaluate your understanding of predictive algorithms and reflect on your experience implementing your own.
What's included
1 video7 readings1 assignment5 ungraded labs
This module, you will learn how to describe the differences between prediction and inference, two key Data Science concepts. You’ll learn how to implement linear regressions — one of the most useful tools that data scientists have for inference and prediction — and other statistical models in Python. You’ll apply this knowledge by examining a dataset and regressing multiple variables on each other, and describing the insights on their relationships.
What's included
1 video7 readings1 assignment2 ungraded labs
This module, you’ll bring together the concepts and skills you’ve developed throughout the course to create a final project for your data science portfolio. You’ll recreate a now-famous data visualization that illustrates the relationship between the income of countries and their greenhouse gas emissions on a global scale. To do this, you’ll explore and prepare 4 datasets and merge them into a composite dataset that you’ll plot. Creating this merged dataset is an important step, and you’ll validate your merged dataset with a short quiz on the insights within. The end result of this effort will be a publication-quality plot that makes a compelling point about the relationship between emissions and income—an impactful visualization that showcases your growing programming skills for data science applications.
What's included
5 readings1 assignment7 ungraded labs
Offered by
Recommended if you're interested in Data Analysis
Duke University
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Duke University
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Frequently asked questions
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