AI Applications

Streamlit: A Guide to Deploying Your AI Application

A visual representation of deploying an AI application using Streamlit.

Streamlit: A Revolutionary Tool for Interactive Web Applications

Streamlit is an open-source Python library that simplifies the development and distribution of interactive web applications and data visualizations. This powerful tool allows users, especially data scientists and machine learning (ML) engineers, to create dynamic web apps effortlessly using Python code. Streamlit's integrated support for popular data visualization libraries like Matplotlib, Pandas, and Plotly enhances its capabilities, making it a favorite among developers seeking to present interactive data insights.

Why Choose Streamlit?

Streamlit stands out for several reasons:

  • Ease of Use: Developers can quickly build and deploy applications with minimal code.
  • Interactive Widgets: The library includes a variety of interactive widgets that can enhance user engagement.
  • Open-Source: As an open-source tool, it has a vibrant community and readily available resources for support.

Deployment Made Simple

Deploying a Streamlit app is a straightforward process that can be accomplished in just three steps:

1. Create Your Streamlit App

To illustrate how to create a Streamlit app, we will build a simple application that utilizes Langchain and OpenAI's GPT to summarize content from a URL. Before we begin, ensure you have Python version 3.11 or higher installed on your machine.

Follow these steps to create your app:

  1. Open your terminal and create a new directory:
    mkdir streamlit-app
  2. Change into the new directory:
    cd streamlit-app
  3. Create a Python file named streamlit_app.py and a requirements.txt file.
  4. Open requirements.txt in your preferred text editor and list the necessary libraries for your application.
  5. Install the libraries via terminal:
    pip install -r requirements.txt
  6. Copy and paste the necessary code into streamlit_app.py.
  7. Save the file and run your app with the command:
    streamlit run streamlit_app.py

2. Upload Your App to GitHub

For version control and deployment, upload your Streamlit app to GitHub. If you don't have a GitHub account yet, create one and then follow these steps:

  1. Create a new repository on GitHub and obtain the repository URL.
  2. In your terminal, navigate to the root folder of your app and execute the following commands:
    git init
    git add .
    git commit -m "Initial commit"
    git remote add origin 
    git push -u origin master

3. Deploy Your GitHub Repository to Streamlit

Finally, you can deploy your app with these steps:

  1. Visit the Streamlit website and create a Community Cloud account.
  2. Once your account is set up, click on "New app" and authorize Streamlit to access your GitHub repositories.
  3. Select your repository and branch, and specify the main file path (e.g., streamlit_app.py).
  4. Your app will now be live, and you can share its URL!

Final Thoughts

This tutorial demonstrated how to create and deploy a Streamlit app from a GitHub repository in three simple steps. Now that you have the knowledge, it's time to unleash your creativity and share impressive AI-powered applications with the community. If you have any questions or need assistance, feel free to connect with me on LinkedIn or Twitter!

Relevant Links:

Keywords:

  • Streamlit tutorial
  • Deploy apps with Streamlit
  • Interactive web applications
  • Data visualization libraries

Читать далее

Illustration of an app using AI21 Labs with Stable Diffusion for generating tweets.
Infographic on generative AI and prompt engineering steps in IBM Watsonx.ai

Оставить комментарий

Все комментарии перед публикацией проверяются.

Этот веб-сайт защищается hCaptcha. Применяются Политика конфиденциальности и Условия использования hCaptcha.