Path: blob/master/cpd5.0/notebooks/python_sdk/deployments/python_function/Use function to recognize hand-written digits.ipynb
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Use Python function to recognize hand-written digits with ibm-watsonx-ai
Create and deploy a function that receives HTML canvas image data from a web app and then processes and sends that data to a model trained to recognize handwritten digits. See: MNIST function deployment tutorial
This notebook runs on Python 3.11.
Learning goals
The learning goals of this notebook are:
AI function definition
Store AI function
Deployment creation
Contents
This notebook contains the following parts:
Install and import the ibm-watsonx-ai
and dependecies
Note: ibm-watsonx-ai
documentation can be found here.
Connection to WML
Authenticate the Watson Machine Learning service on IBM Cloud Pack for Data. You need to provide platform url
, your username
and api_key
.
Alternatively you can use username
and password
to authenticate WML services.
Working with spaces
First of all, you need to create a space that will be used for your work. If you do not have space already created, you can use {PLATFORM_URL}/ml-runtime/spaces?context=icp4data
to create one.
Click New Deployment Space
Create an empty space
Go to space
Settings
tabCopy
space_id
and paste it below
Tip: You can also use SDK to prepare the space for your work. More information can be found here.
Action: Assign space ID below
You can use list
method to print all existing spaces.
To be able to interact with all resources available in Watson Machine Learning, you need to set space which you will be using.
Option 1: Use your own, existing model deployment
If you already deployed a model while working through one of the following MNIST tutorials, you can use that model deployment:
Paste the model deployment ID in the following cell.
Option 2: Download, store, and deploy a sample model
You can deployed a sample model and get its deployment ID by running the code in the following four cells.
3.1 Download sample data file
3.2 View sample data
4.1 Define the function
Define a Python closure with an inner function named "score".
Use default parameters to save your Watson Machine Learning credentials and the model deployment ID with the deployed function.
Process the canvas data (reshape and normalize) and then send the processed data to the model deployment.
Process the results from the model deployment so the deployed function returns simpler results.
Implement error handling so the function will behave gracefully if there is an error.
4.2 Test locally
You can test your function in the notebook before deploying the function.
To see debugging info:
Uncomment the print statements inside the score function
Rerun the cell defining the function
When you rerun the this cell, you will see the debugging info
6.1 Watson Machine Learning Python client
If you want to clean up all created assets:
experiments
trainings
pipelines
model definitions
models
functions
deployments
please follow up this sample notebook.
8. Summary and next steps
In this notebook, you created a Python function that receives HTML canvas image data and then processes and sends that data to a model trained to recognize handwritten digits.
Check out our Online Documentation for more samples, tutorials, documentation, how-tos, and blog posts.
Copyright © 2018-2025 IBM. This notebook and its source code are released under the terms of the MIT License.