In this article, we are going to do something really cool: we will build a chatbot using Python and the Gemini API. This will be a web-based assistant and could be the beginning of your own AI project. It’s beginner-friendly, and I will guide you through it step-by-step. By the end, you’ll have your own AI assistant!
What You’ll Need
- IDE (I recommend Visual Studio Code)
- Gemini API key
- Python
- Python libraries
Download IDE — VS code
You can use any IDE you like, but if you don’t have one, please download VS Code. It’s really powerful and easy to use. Here’s the link: https://code.visualstudio.com/download
Gemini API
Create a Google Cloud Project
Before we obtain an API key, we need to create a project in Google Cloud. To create a project, please follow this link: https://console.cloud.google.com/cloud-resource-manager
After the project is created, we are ready to request an API key.
How to Get Gemini API Key
To get the API key, visit https://aistudio.google.com/app/apikey and click on the “Create API key” button.
Then, select the project that you created in the previous step from the drop-down menu and click “Generate API key”.
Copy the key; we’ll need it in the next steps.
Install Python
Windows: Download the installer from https://www.python.org/downloads/windows/
Linux (Ubuntu/Debian): Use this command in your terminal window:
sudo apt-get install python3
Install Python Libraries
For the next steps, you need to use the terminal. If you are on Windows, you can use https://apps.microsoft.com/detail/9n0dx20hk701?rtc=1&hl=en-us
Install PIP
After we set up Python, we need to set up the pip package installer for Python.
sudo apt install python3-pip
Set Up a Virtual Environment
The next step is to set up virtual environments for our project to manage dependencies separately.
Use this command:
sudo apt install python3-venv
The command python3 -m venv myprojectenv is used to create a virtual environment for a Python project:
python3 -m venv myprojectenv
The command source myprojectenv/bin/activate is used to activate the virtual environment:
source myprojectenv/bin/activate
Install LangChain
LangChain is a framework designed to simplify the creation of applications using large language models.
Use this command:
pip install langchain-core
Install LangChain-Google-GenAI
Use this command:
pip install langchain-google-genai
This package contains the LangChain integrations for Gemini through their generative-ai SDK.
Once you’ve done that, we are ready to go to the next steps.
Install Flask
Once the virtual environment is activated, we can use pip to set up Flask.
Use this command:
pip install Flask
Create a ChatBot with the Python Flask Framework
First, let’s create a directory for our app.
Use these commands:
mkdir myflaskapp
cd myflaskapp
Inside the directory, create a file for our app and call it “app.py”.
Then add the following content:
from flask import Flask
app = Flask(name)
@app.route('/')
def home():
return "Hello, Flask!"
if name == 'main':
app.run(debug=True)
To make sure that our app is working fine, let’s run it.
Use this command:
python3 app.py
If everything is okay, you will be able to access your Flask app at http://127.0.0.1:5000.
Create an HTML Page for the Flask App
You can create your own HTML or use the example provided.
You can download it from here: https://github.com/proflead/gemini-flask-app/blob/master/web/index.html
You will need 2 JavaScript files:
To communicate with the Gemini API: https://github.com/proflead/gemini-flask-app/blob/master/web/gemini-api.js
And https://github.com/proflead/gemini-flask-app/blob/master/web/main.js To format the output result on the page without reloading the page.
Change app.py
Let’s modify our app.py file with the following code:
You can copy the code from here: https://github.com/proflead/gemini-flask-app/blob/master/app.py
Once you are ready, run this command in the project folder:
python3 app.py
If you did everything correctly, you will be able to see your ChatBot.
Video Tutorial: AI Chatbot using Python and Gemini API
Conclusion
As you can see, building a chatbot with Python and the Gemini API is not that difficult. You can further improve it by adding styles, extra functions, or even vision recognition. If you run into any issues, feel free to leave a comment explaining your problem, and I’ll try to help you.
Cheers! :)
Top comments (0)