In this lab, you learn how to build a neural network to classify the tf-flowers (5 flowers) dataset by using a pre-trained image embedding.You load a pre-trained model which is trained on very large, general-purpose datasets and transfer that knowledge to the actual dataset that you want to classify. This means you use a pre-trained model instead of the Flattened layer as your first layer.
Learning objectives
You learn how to apply data augmentation in two ways:
Understand how to set up preprocessing in order to convert image type and resize the image to the desired size.
Understand how to implement transfer learning with MobileNet.
Setup and requirements
For each lab, you get a new Google Cloud project and set of resources for a fixed time at no cost.
Sign in to Qwiklabs using an incognito window.
Note the lab's access time (for example, 1:15:00), and make sure you can finish within that time.
There is no pause feature. You can restart if needed, but you have to start at the beginning.
When ready, click Start lab.
Note your lab credentials (Username and Password). You will use them to sign in to the Google Cloud Console.
Click Open Google Console.
Click Use another account and copy/paste credentials for this lab into the prompts.
If you use other credentials, you'll receive errors or incur charges.
Accept the terms and skip the recovery resource page.
Task 1. Launch Vertex AI Workbench instance
In the Google Cloud console, from the Navigation menu (), select Vertex AI.
Click Enable All Recommended APIs.
In the Navigation menu, click Workbench.
At the top of the Workbench page, ensure you are in the Instances view.
Click Create New.
Configure the Instance:
Name: lab-workbench
Region: Set the region to
Zone: Set the zone to
Advanced Options (Optional): If needed, click "Advanced Options" for further customization (e.g., machine type, disk size).
Click Create.
This will take a few minutes to create the instance. A green checkmark will appear next to its name when it's ready.
Click OPEN JUPYTERLAB next to the instance name to launch the JupyterLab interface. This will open a new tab in your browser.
Click Check my progress to verify the objective.
Launch Vertex AI Workbench instance
Task 2. Clone a course repo within your JupyterLab interface
To clone the training-data-analyst notebook in your JupyterLab instance:
Step 1
In JupyterLab, click the Terminal icon to open a new terminal.
Step 2
At the command-line prompt, type in the following command and press Enter.
Confirm that you have cloned the repository by double clicking on the training-data-analyst directory and ensuring that you can see its contents. The files for all the Jupyter notebook-based labs throughout this course are available in this directory.
Click Check my progress to verify the objective.
Clone a course repo within your JupyterLab interface
Task 3. Classify images with transfer learning
In the notebook interface, navigate to training-data-analyst > courses > machine_learning > deepdive2 > computer_vision_fun > labs and open classifying_images_with_transfer_learning.ipynb.
In the Select Kernel dialog, choose TensorFlow 2-11 (Local) from the list of available kernels.
In the notebook interface, click Edit > Clear All Outputs.
Carefully read through the notebook instructions and fill in lines marked with #TODO where you need to complete the code.
Tip: To run the current cell, click the cell and press SHIFT+ENTER. Other cell commands are listed in the notebook UI under Run.
Hints may also be provided for the tasks to guide you. Highlight the text to read the hints, which are in white text.
To view the complete solution, navigate to training-data-analyst > courses > machine_learning > deepdive2 > computer_vision_fun > solutions and open classifying_images_with_transfer_learning.ipynb.
Click Check my progress to verify the objective.
Classify images with transfer learning
End your lab
When you have completed your lab, click End Lab. Qwiklabs removes the resources you’ve used and cleans the account for you.
You will be given an opportunity to rate the lab experience. Select the applicable number of stars, type a comment, and then click Submit.
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2 stars = Dissatisfied
3 stars = Neutral
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5 stars = Very satisfied
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For feedback, suggestions, or corrections, please use the Support tab.
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In this lab, you learn how to build a neural network to classify the tf-flowers (5 flowers) dataset by using a pre-trained image embedding.
Durata:
Configurazione in 0 m
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Accesso da 90 m
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Completamento in 90 m