Creating ChatBot Using Natural Language Processing in Python Engineering Education EngEd Program

It also reduces carbon footprint and computation cost and saves developers time in training the model from scratch. Here, the input can either be text or speech and the chatbot acts accordingly. An example is Apple’s Siri which accepts both text and speech as input. For instance, Siri can call or open an app or search for something if asked to do so. As we move to the final step of creating a chatbot in Python, we can utilize a present corpus of data to train the Python chatbot even further. When a user inserts a particular input in the chatbot , the bot saves the input and the response for any future usage.

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Joseph Weizenbaum created the first chatbot in 1966, named Eliza. It all started when Alan Turing published an article named “Computer Machinery and Intelligence” and raised an intriguing question, “Can machines think? ” ever since, we have seen multiple chatbots surpassing their predecessors to be more naturally conversant and technologically advanced. These advancements have led us to an era where conversations with chatbots have become as normal and natural as with another human.

thoughts on “Basics of building an Artificial Intelligence Chatbot – 2023”

This step will create an intents JSON file that lists all the possible outcomes of user interactions with our chatbot. We first need a set of tags that users can use to categorize their queries. In this tutorial, we will design a conversational interface for our chatbot using natural language processing.

Next, we trim off the cache data and extract only the last 4 items. Then we consolidate the input data by extracting the msg in a list and join it to an empty string. For up to 30k tokens, Huggingface provides access to the inference API for free. Now copy the token generated when you sent the post request to the /token endpoint and paste it as the value to the token query parameter required by the /chat WebSocket. In update the get_token function to check if the token exists in the Redis instance.

Importing dependencies

This will help us to reduce the bag of words by associating similar words with their corresponding root words. Implemented Chat-bot using RASA Framework for questions related to the students and courses of the university. This project about AI Chatbot Kampus Merdeka to help student or Indonesian people know about Kampus Merdeka program from KEMENDIKBUDRISTEK . Before you run your program, you need to make sure you install python or python3 with pip .

If the input does have a temporal/spatial relationship, like text, some positional encoding must be added or the model will effectively see a bag of words. For a time-series, the output for a time-step is calculated from the entire history instead of only the inputs and current hidden-state. Bots allow you to communicate with your customers in a new way. Customers’ interests can be piqued at the right time by using chatbots. Imports are critical for successfully organizing your Python code.

Libraries & Data

But remember that as the number of ai chatbot pythons we send to the model increases, the processing gets more expensive, and the response time is also longer. Now that we have a token being generated and stored, this is a good time to update the get_token dependency in our /chat WebSocket. We do this to check for a valid token before starting the chat session. We are adding the create_rejson_connection method to connect to Redis with the rejson Client. This gives us the methods to create and manipulate JSON data in Redis, which are not available with aioredis.


Since the chat app will be open publicly, we do not want to worry about authentication and just keep it simple – but we still need a way to identify each unique user session. Open the project folder within VS Code, and open up the terminal. GPT-J-6B is a generative language model which was trained with 6 Billion parameters and performs closely with OpenAI’s GPT-3 on some tasks. ChatterBot provides a way to install the library as a Django app. As a next step, you could integrate ChatterBot in your Django project and deploy it as a web app.

Designing a chatbot conversation

Bottr —There is an option to add data from Medium, Wikipedia, or WordPress for better coverage. There are code-based frameworks that would integrate the chatbot into a broader tech stack for those who are more tech-savvy. The benefits are the flexibility to store data, provide analytics, and incorporate Artificial Intelligence in the form of open source libraries and NLP tools.

Is Python fast enough for AI?

Rapid development. Python allows for quick prototyping. Learning the stack's intricacies can waste a lot of time, but with Python, AI development can begin quickly and then developers can move on to building AI programs and algorithms. Additionally, Python code is very similar to English.

Process monitoring in Linux can be useful for a security audit, performance analysis, software improvement, and many other development activities. We don’t know if the bot was joking about the snowball store, but the conversation is quite amusing compared to the previous generations. It decreases the likelihood of picking low probability words and increases the likelihood of picking high probability words. We highly recommend you use Jupyter Notebook or Google Colab to test the following code, but you can use any Python environment if you want.

Types of AI Chatbots

Artificially intelligent chatbots, as the name suggests, are created to mimic human-like traits and responses. NLP or Natural Language Processing is hugely responsible for enabling such chatbots to understand the dialects and undertones of human conversation. A Chatbot is an Artificial Intelligence-based software developed to interact with humans in their natural languages.


To send messages between the client and server in real-time, we need to open a socket connection. This is because an HTTP connection will not be sufficient to ensure real-time bi-directional communication between the client and the server. One of the best ways to learn how to develop full stack applications is to build projects that cover the end-to-end development process. You’ll go through designing the architecture, developing the API services, developing the user interface, and finally deploying your application. After you’ve completed that setup, your deployed chatbot can keep improving based on submitted user responses from all over the world. You can imagine that training your chatbot with more input data, particularly more relevant data, will produce better results.

Which Python framework is best for chatbot?

Golem is a python framework for building chatbots. It is built for python developers and it can easily extract entities from existing messages.

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