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Dive into the world of Large Language Models (LLMs) with this comprehensive repository. From understanding basics to exploring various LLMs, finetuning on downstream tasks, and deploying models using Vector DBs like Qurant, this guide equips you with essential skills for harnessing the power of LLMs in your projects.

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Introduction-to-LLMs

Overview

Welcome to the "Introduction-to-LLMs" repository! This comprehensive guide walks you through the basics of Large Language Models (LLMs), explores various LLMs, demonstrates how to finetune them on downstream tasks, leverage Vector DBs such as Qurant, and most importantly, deploy the finetuned model. Dive into the world of LLMs with practical examples provided in Jupyter notebooks.

Table of Contents

Getting Started

Clone the repository to get started:

git clone https://github.com/Praveen76/Introduction-to-LLMs.git
cd Introduction-to-LLMs

Explore the various sections and follow the step-by-step guides to enhance your understanding of LLMs.

Basics of LLMs

Understand the fundamental concepts of Large Language Models, including architecture, training, and their applications in natural language processing.

Various LLMs

Explore a variety of Large Language Models, comparing their strengths, weaknesses, and use cases. Gain insights into the latest advancements in the field.

Finetuning on Downstream Tasks

Learn how to finetune LLMs on specific downstream tasks to tailor them to your specific requirements. Follow practical examples and best practices.

Leveraging Vector DBs

Discover the power of Vector Databases, with a focus on Qurant. Understand how to integrate and utilize these databases to enhance the capabilities of your models.

Model Deployment

Master the art of deploying finetuned models into production environments. Explore deployment strategies, considerations, and practical tips.

Notebooks

Find detailed implementations and solutions in the notebooks folder:

  1. part-1-openai.ipynb
  2. part-2-prompt-enginering.ipynb
  3. part-3-langchain.ipynb
  4. part-4-rag.ipynb
  5. part-5-finetune.ipynb

Explore these Jupyter notebooks for hands-on examples and practical demonstrations.

Contributing

If you have a Data Science mini-project that you'd like to share, please follow the guidelines in CONTRIBUTING.md.

Code of Conduct

Please adhere to our Code of Conduct in all your interactions with the project.

License

This project is licensed under the MIT License.

Contact

For questions or inquiries, feel free to contact me on Linkedin.

About Me:

I’m a seasoned Data Scientist and founder of TowardsMachineLearning.Org. I've worked on various Machine Learning, NLP, and cutting-edge deep learning frameworks to solve numerous business problems.

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Dive into the world of Large Language Models (LLMs) with this comprehensive repository. From understanding basics to exploring various LLMs, finetuning on downstream tasks, and deploying models using Vector DBs like Qurant, this guide equips you with essential skills for harnessing the power of LLMs in your projects.

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