AI

Master Conversation Summarization with Cohere and Python

A programmer summarizing conversations using Cohere AI and Python.

Cohere AI: Your Ally for Innovative Applications

Welcome to the realm of AI application development with Cohere! Imagine being part of an exhilarating lablab.ai AI Hackathon, crafting innovative tools powered by Cohere. As ideas flow rapidly through brainstorming sessions on platforms like Discord, brilliant concepts transform into tangible solutions amidst the wealth of content.

But what if you have a chatbot on your website and need to summarize user-bot interactions effectively? This tutorial guides you on how to generate chat summaries effortlessly through the combination of Cohere's capabilities and Python programming.

Kickstart Your Cohere Journey

Are you ready to dive into the functionalities of Cohere? Our extensive guides are designed to help you smoothly harness the power of AI applications.

Summarizing chat interactions can be incredibly valuable for businesses, allowing for insightful analysis of conversations. For instance, with a simple program, you can express an entire conversation in a summary like this:

"User inquires about product details, receives recommendations, and finalizes a purchase."

Prerequisites for Using Cohere

  • Python 3.6 or higher
  • Cohere API key
  • Install the Cohere Python library

Step 1: Install the Cohere Python Library

The first step in your summation journey is to install the Cohere Python library. Execute the following command in your terminal:

pip install cohere

Step 2: Create a Cohere Client

Next, create a Cohere client by executing the following code. Your API key can be found on the Cohere dashboard:

import cohere
co = cohere.Client('YOUR_API_KEY')

Step 3: Generate Chat Summaries

Now that you have your client set up, let's create a response object and invoke the Generate method on the Cohere client. For this example, we will utilize the xlarge model, details about which can be found on the Cohere website.

Define the prompt by providing examples of summarized dialogues and include the new chat that requires summarization. You can also customize various parameters, including a stop sequence that indicates where the generation should halt.

response = co.generate(
    model='xlarge',
    prompt='Summarize this conversation:',
    stop_sequence='End of summary'
)

Step 4: Validate Your Program

Execute the Python file to check if the summarization process works seamlessly. This tool can be particularly useful for summarizing conversations from various platforms like Slack, Discord, Telegram, or even emails.

The code for this tutorial is available on GitHub for further exploration and experimentation.

Beyond Cohere Tutorials: Unleashing Your Creativity

Having mastered the creation of a Cohere app, what's next on your agenda? Participating in an AI Hackathon hosted by lablab.ai offers you a fantastic opportunity to collaborate with other passionate developers to build functional AI applications within a matter of days.

Identify a relevant problem and tailor a unique solution to unlock the full potential of your newfound Cohere expertise!

Engage with the AI Community

Join forums, attend webinars, and get involved in collaborative projects to enhance your skills and expand your network within the AI community. The journey of exploring Cohere and the vast potential of AI applications is just beginning!

Reading next

Image depicting a dog breed recognition API workflow using Cohere API.
Screenshot of Cohere Playground for entity extraction tutorial

Leave a comment

All comments are moderated before being published.

This site is protected by hCaptcha and the hCaptcha Privacy Policy and Terms of Service apply.