Commit b96dabde by Izma

Add README.md

parent e4c99781
# Building Simple and Efficient Chatbots Step-by-Step
---
## Description
---
In this code demonstration, we're leveraging the LangChain Framework to build a sophisticated chatbot. We'll start by setting up the necessary environment and dependencies. Then, we'll dive into implementing LLM and RAG techniques to enhance the chatbot's responses, ensuring accuracy and engagement. Throughout the code, we'll explore efficient prompts and strategies to streamline the conversation flow. By the end, you'll have a comprehensive understanding of how to leverage advanced techniques to develop a powerful and intelligent chatbot solution.
## Getting Started
---
### Dependencies
- Azure OpenAI Service
- Python 3.x
### Executing Program
1. Clone the git repository.
2. Create a `.env` file to store the following environment variables:
- `OPENAI_API_KEY`
- `BASE_URL`
- Deployment names for the `EMBEDDING_MODEL` and `CHAT_MODEL`.
3. Ensure that all files are located in the same folder.
These steps should help users effectively set up and run the program.
  • Geometry Dash Lite is a game that rewards patience, rhythm, and determination. While it can be unforgiving at times, with the right approach and mindset, anyone can progress through its levels and find satisfaction in improvement. From using Practice Mode effectively to learning rhythm-based jumps, mastering character transformations, and staying calm under pressure, these tips can help turn a frustrating game into a fun, skill-building challenge. Whether you're a newcomer stuck on Stereo Madness or an experienced player aiming to beat Clubstep, remember: every great Geometry Dash player started by dying hundreds of times. What matters is that they kept trying — and so can you.

Markdown is supported
0% or
You are about to add 0 people to the discussion. Proceed with caution.
Finish editing this message first!
Please register or to comment