Points de contrôle
Enable Google Cloud services
/ 5
Create a Vertex AI Workbench instance
/ 10
Copy the notebook from a Cloud Storage bucket
/ 10
Create a Cloud Storage Bucket
/ 5
Create training script
/ 20
Train the Model on Vertex AI
/ 20
Deploy the model
/ 20
Endpoint queried successfully
/ 10
Classify Images with TensorFlow on Google Cloud: Challenge Lab
- GSP398
- Overview
- Setup and requirements
- Enable Google Cloud services
- Challenge scenario
- Task 1. Create a Vertex AI Workbench instance
- Task 2. Copy the notebook from a Cloud Storage bucket
- Task 3. Create a training script
- Task 4. Train the model
- Task 5. Deploy the model to a Vertex Online Prediction Endpoint
- Task 6. Query deployed model on Vertex Online Prediction Endpoint
- Congratulations!
GSP398
Overview
In a challenge lab you’re given a scenario and a set of tasks. Instead of following step-by-step instructions, you will use the skills learned from the labs in the course to figure out how to complete the tasks on your own! An automated scoring system (shown on this page) will provide feedback on whether you have completed your tasks correctly.
When you take a challenge lab, you will not be taught new Google Cloud concepts. You are expected to extend your learned skills, like changing default values and reading and researching error messages to fix your own mistakes.
To score 100% you must successfully complete all tasks within the time period!
This lab is recommended for students who have enrolled in the Get Started with TensorFlow on Google Cloud skill badge course. Are you ready for the challenge?
Topics tested:
- Write a script to train a CNN for image classification and saves the trained model to the specified directory.
- Run your training script using Vertex AI custom training job.
- Deploy your trained model to a Vertex Online Prediction Endpoint for serving predictions.
- Request an online prediction and see the response.
Setup and requirements
Before you click the Start Lab button
Read these instructions. Labs are timed and you cannot pause them. The timer, which starts when you click Start Lab, shows how long Google Cloud resources will be made available to you.
This hands-on lab lets you do the lab activities yourself in a real cloud environment, not in a simulation or demo environment. It does so by giving you new, temporary credentials that you use to sign in and access Google Cloud for the duration of the lab.
To complete this lab, you need:
- Access to a standard internet browser (Chrome browser recommended).
- Time to complete the lab---remember, once you start, you cannot pause a lab.
How to start your lab and sign in to the Google Cloud console
-
Click the Start Lab button. If you need to pay for the lab, a pop-up opens for you to select your payment method. On the left is the Lab Details panel with the following:
- The Open Google Cloud console button
- Time remaining
- The temporary credentials that you must use for this lab
- Other information, if needed, to step through this lab
-
Click Open Google Cloud console (or right-click and select Open Link in Incognito Window if you are running the Chrome browser).
The lab spins up resources, and then opens another tab that shows the Sign in page.
Tip: Arrange the tabs in separate windows, side-by-side.
Note: If you see the Choose an account dialog, click Use Another Account. -
If necessary, copy the Username below and paste it into the Sign in dialog.
{{{user_0.username | "Username"}}} You can also find the Username in the Lab Details panel.
-
Click Next.
-
Copy the Password below and paste it into the Welcome dialog.
{{{user_0.password | "Password"}}} You can also find the Password in the Lab Details panel.
-
Click Next.
Important: You must use the credentials the lab provides you. Do not use your Google Cloud account credentials. Note: Using your own Google Cloud account for this lab may incur extra charges. -
Click through the subsequent pages:
- Accept the terms and conditions.
- Do not add recovery options or two-factor authentication (because this is a temporary account).
- Do not sign up for free trials.
After a few moments, the Google Cloud console opens in this tab.
Activate Cloud Shell
Cloud Shell is a virtual machine that is loaded with development tools. It offers a persistent 5GB home directory and runs on the Google Cloud. Cloud Shell provides command-line access to your Google Cloud resources.
- Click Activate Cloud Shell at the top of the Google Cloud console.
When you are connected, you are already authenticated, and the project is set to your Project_ID,
gcloud
is the command-line tool for Google Cloud. It comes pre-installed on Cloud Shell and supports tab-completion.
- (Optional) You can list the active account name with this command:
- Click Authorize.
Output:
- (Optional) You can list the project ID with this command:
Output:
gcloud
, in Google Cloud, refer to the gcloud CLI overview guide.
Enable Google Cloud services
- In Cloud Shell, use
gcloud
to enable the services used in the lab
This will allow access to running model training, deployment, and explanation jobs with Vertex AI.
Click Check my progress to verify the objective.
Challenge scenario
You were recently hired as a Machine Learning Engineer for an Optical Character Recognition app development team. Your manager has tasked you with building a machine learning model to recognize Hiragana alphabets. The challenge: your business requirements are that you have just 6 weeks to produce a model that achieves greater than 90% accuracy to improve upon an existing bootstrapped solution. Furthermore, after doing some exploratory analysis in your startup's data warehouse, you found that you only have a small dataset of 60k images of alphabets to build a higher-performing solution.
To build and deploy a high-performance machine learning model with limited data quickly, you will walk through training and deploying a CNN classifier for online predictions on Google Cloud's Vertex AI platform. Vertex AI is Google Cloud's next-generation machine learning development platform where you can leverage the latest ML pre-built components to significantly enhance your development productivity, scale your workflow and decision-making with your data, and accelerate time to value.
First, you will progress through a typical experimentation workflow where you will write a script that trains your custom CNN model using tf.keras
classification layers. You will then send the model code to a custom training job and run the custom training job using pre-built Docker containers provided by Vertex AI to run training and prediction. Lastly, you will deploy the model to an endpoint so that you can use your model for predictions.
Task 1. Create a Vertex AI Workbench instance
-
Navigate to Vertex AI > Workbench.
-
Configure the Instance:
-
Name: Provide a name for your instance as
cnn-challenge
. -
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).
-
Name: Provide a name for your instance as
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.
Task 2. Copy the notebook from a Cloud Storage bucket
-
In your notebook, click the terminal.
-
Copy the below path in terminal.
Click Check my progress to verify the objective.
- Open the notebook file
cnn-challenge-lab.ipynb
.
- In the Setup section, define your
PROJECT_ID
andGCS_BUCKET
variables.
Click Check my progress to verify the objective.
Task 3. Create a training script
In this section, you will complete the training script task.py
using TensorFlow.
Write a TensorFlow CNN classifier
-
Fill out the
#TODO
section to add the last layer for the model creation. -
Fill out the
#TODO
section to save your model. You should save it to the AIP_MODEL_DIR environment variable.
Click Check my progress to verify the objective.
Task 4. Train the model
Define custom training job on Vertex AI
- Fill out the
#TODO
section to create a custom training job on vertex ai. You can find the documentation here.
script_path
, container_uri
, and model_serving_container_image_uri
parameters.
Train the model using Vertex AI pipelines
- Fill out the
#TODO
section and run the custom training job function you defined above. You can find the documentation here.
args
and machine_type
parameters.
Click Check my progress to verify the objective.
Task 5. Deploy the model to a Vertex Online Prediction Endpoint
- Fill out the
#TODO
section deploy the model to an endpoint. You can find the documentation here.
traffic_split
, machine_type
, min_replica_count
and max_replica_count
parameters.
Click Check my progress to verify the objective.
Task 6. Query deployed model on Vertex Online Prediction Endpoint
- Fill out the
#TODO
section to generate online predictions using your Vertex Endpoint. You can find the documentation here.
Congratulations!
You created a workflow that trains and deploys a model on Google Cloud using Vertex AI. First, you wrote a script to build, train, and evaluate a Convolutional Neural Network for image classification in a Vertex Notebook. You then used your script to train the model using a custom training job on Google Cloud's Vertex AI. Lastly, you deployed your model container to a Vertex Endpoint that you queried for online predictions.
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Manual Last Updated November 29, 2024
Lab Last Tested November 29, 2024
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