Before you begin
- Labs create a Google Cloud project and resources for a fixed time
- Labs have a time limit and no pause feature. If you end the lab, you'll have to restart from the beginning.
- On the top left of your screen, click Start lab to begin
You will embark on a journey to explore the fundamental concepts of Advanced hypothesis testing through an Annotated Follow-Along Guide.
Hypothesis testing is a crucial concept in statistics used to make inferences about a population based on sample data. Python provides several libraries, such as SciPy and StatsModels, that offer functions and methods for hypothesis testing.
You'll need to start the lab before you can access the materials. To do this, click the green “Start Lab” button at the top of the screen.
After you click the “Start Lab” button, you will see a Jupyter Notebook, where you will be performing further steps in the lab. You should have a jupyter notebook that looks like this:
You'll explore the following objective into this lab:
To complete this lab, you will open a Jupyter Notebook and follow instructions to enter code and written responses where prompted. The Jupyter notebook will autosave as you work, or you can manually save it by clicking the Save and Checkpoint button or by selecting Save and Checkpoint from the File menu.
As you complete the lab, note the following features:
In this lab, you will perform operations on CSV data corresponding to the tasks outlined in the instructions. Retrieve the CSV file attached to the task instructions and proceed to upload it into the Jupyter Notebook using the following steps:
Click on the CSV file name specified in the task instructions, and the CSV file will be downloaded to your designated download directory.
Next, within your lab's Jupyter Notebook, simply select the Upload File button, choose the desired CSV files, and then click on Upload.
The process of uploading the CSV file has commenced, and you can locate the progress indicators at the bottom of the Jupyter Notebook.
You will learn to use Python to run both a one-way and two-way ANOVA test. You'll also learn to run a post hoc test to analyze the results of a one-way ANOVA test. Before starting on this programming exercise, we strongly recommend watching the video lecture and completing the IVQ for the associated topics.
Use the following CSV data for this task:
Click the files icon to access Jupyter notebook file.
Open the main.ipynb file, by clicking on the file name.
You work for an environmental think tank called Repair Our Air (ROA). ROA is formulating policy recommendations to improve the air quality in America, using the Environmental Protection Agency's Air Quality Index (AQI) to guide their decision making. An AQI value close to 0 signals "little to no" public health concern, while higher values are associated with increased risk to public health.
Click the files icon to access Jupyter notebook file.
Open the main.ipynb file, by clicking on the file name.
### YOUR CODE HERE ### indicates where you should write code. Be sure to replace this with your own code before running the code cell.
Before you end the lab, make sure you’re satisfied that you’ve completed all the tasks, and follow these steps:
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