Introduction
Cohere, a leading AI company, offers a suite of powerful language models that can transform how you work with text data. This tutorial will guide you through using the Cohere Rerank (Beta) model to optimize search algorithms and build a Streamlit app with it. To learn more about Cohere LLMs, check out our How to Get Started with Cohere LLMs Tutorial.
Understanding ElevenLabs
ElevenLabs is a voice AI research and deployment company dedicated to making content accessible in any language and voice. They specialize in creating highly realistic, versatile, and contextually aware AI audio, allowing the generation of speech in numerous voices and languages. Founded in 2022 by Piotr and Mati, former engineers and strategists, ElevenLabs was inspired by the desire to eliminate linguistic barriers in content, particularly poor dubbing in Hollywood movies.
What is Streamlit?
Streamlit is a pure Python framework for building web applications. It's user-friendly and perfect for those looking to create interactive applications in Python. For a more in-depth understanding, familiarize yourself with Streamlit's documentation.
Prerequisites
- Download Visual Studio Code compatible with your operating system or use other code editors like IntelliJ IDEA or PyCharm.
- Sign up for a Cohere account to get your API key.
- Sign up for an ElevenLabs account to access their voice AI API key.
- Create an account on Streamlit for app deployment.
- Have a cup of coffee and a laptop ready for the coding session!
Learning Outcomes
- Learn how to use the Cohere Rerank (Beta) model via API.
- Build web apps using Streamlit.
- Create an app with Cohere Rerank (Beta).
- Deploy the app on the Streamlit Sharing Cloud.
Getting Started
Create a New Project
Start by creating a new folder for your project. Open Visual Studio Code and create a new folder named cohere-rerank-tutorial
.
Create a Virtual Environment
Create a Python virtual environment and activate it by using the following command:
python -m venv venv
source venv/bin/activate # On Windows use `venv\Scripts\activate`
Install All Dependencies
Next, install the required dependencies using:
pip install -r requirements.txt
Creating the Streamlit App
After setting up the initial project structure, create a new file named app.py
in your project directory.
Setting Up the App
- Import necessary libraries at the top of the
app.py
file. - Configure the logger for debugging purposes.
- Set up the Streamlit page with a title and description.
- Create a sidebar for handling API keys and uploaded files.
Handling User Input
Utilize Streamlit's st.form()
to create a form for user input, and use st.columns()
for organizing the layout.
Implementing Voice Generation
Implement a function to generate voiceovers for each message entered.
Displaying Responses
Get the response from the Cohere API and display it on the screen.
Clearing Chat History
Optionally, implement a function to clear the chat history.
Running the App
Run the app by executing:
streamlit run app.py
Visit http://localhost:8501 to view your Streamlit app.
Deploying the App
Push Code to GitHub
Create a new GitHub repository and push the code to it. Ensure to include the requirements.txt
file for deployment.
Deploy on Streamlit Sharing Cloud
Log in to Streamlit Sharing Cloud, click on 'New app', fill out the details, and click on the Deploy!
button.
Testing the App
To test the app, enter your Cohere API key, upload your desired file, and enter your query before clicking on the Send button.
Conclusion
Thank you for following along with this tutorial! With these steps, you've successfully built and deployed a Streamlit app using Cohere Rerank (Beta) and ElevenLabs voice AI.
More Resources
For full source code, check out the GitHub repository.
Zostaw komentarz
Wszystkie komentarze są moderowane przed opublikowaniem.
Ta strona jest chroniona przez hCaptcha i obowiązują na niej Polityka prywatności i Warunki korzystania z usługi serwisu hCaptcha.