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streamlit-mnist-canvas
Advanced tools
A Streamlit component tailored for handwriting digit recognition using the MNIST dataset. This component allows users to draw digits on a canvas, facilitating integration with various machine learning models for digit recognition. It's ideal for educational, development, and testing purposes within Streamlit applications.
This repository provides a Streamlit component, st_mnist_canvas
, designed for creating and recognizing handwritten digits. It's a perfect tool for educational purposes, machine learning model testing, and demonstrations.
To install Streamlit Oekaki, run the following command:
pip install streamlit-mnist-canvas
st_mnist_canvas
enables users to draw digits in a Streamlit app. The digit can then be displayed and processed, making it highly effective for use with MNIST-trained digit recognition models.
Here's how to get started with st_mnist_canvas:
import streamlit as st
from streamlit_mnist_canvas import st_mnist_canvas
import numpy as np
st.subheader("Input")
result = st_mnist_canvas()
if result.is_submitted:
st.write("Output")
st.image(result.resized_grayscale_array, caption="Grayscale 28x28 Image")
# Prepare the image for ML model prediction
# image_for_prediction = np.expand_dims(result.resized_grayscale_array, axis=0)
# Predict digit using a machine learning model
# Example: prediction = model.predict(image_for_prediction)
# st.write("Predicted Digit:", prediction)
Integrating with Machine Learning Models
st_mnist_canvas
can be directly integrated with ML models, especially those trained on the MNIST dataset. Once a digit is drawn and submitted, the image data, formatted as a 28x28 grayscale array, is ready for input into a pre-trained model. This allows for real-time digit recognition and analysis within your Streamlit app.
This project is licensed under the MIT License - see the LICENSE file for details.
FAQs
A Streamlit component tailored for handwriting digit recognition using the MNIST dataset. This component allows users to draw digits on a canvas, facilitating integration with various machine learning models for digit recognition. It's ideal for educational, development, and testing purposes within Streamlit applications.
We found that streamlit-mnist-canvas demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 1 open source maintainer collaborating on the project.
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