By finishing the "LLM Twin: Building Your Production-Ready AI Replica" free course, you will learn how to design, train, and deploy a production-ready LLM twin of yourself powered by LLMs, vector DBs, and LLMOps good practices.
Why should you care? ๐ซต
โ No more isolated scripts or Notebooks! Learn production ML by building and deploying an end-to-end production-grade LLM system.
You will learn how to architect and build a real-world LLM system from start to finishโ-โfrom data collection to deployment.
You will also learn to leverage MLOps best practices, such as experiment trackers, model registries, prompt monitoring, and versioning.
The end goal? Build and deploy your own LLM twin.
What is an LLM Twin? It is an AI character that learns to write like somebody by incorporating its style and personality into an LLM.
- 1. The architecture of the LLM twin is split into 4 Python microservices:
- 2. Who is this for?
- 3. How will you learn?
- 4. Costs?
- 5. Questions and troubleshooting
- 6. Lessons
- 7. Install & Usage
- 8. Meet your teachers!
- 9. License
- 10. Contributors
- 11. Sponsors
- Crawl your digital data from various social media platforms.
- Clean, normalize and load the data to a Mongo NoSQL DB through a series of ETL pipelines.
- Send database changes to a RabbitMQ queue using the CDC pattern.
- โ๏ธ Deployed on AWS.
- Consume messages from a queue through a Bytewax streaming pipeline.
- Every message will be cleaned, chunked, embedded and loaded into a Qdrant vector DB in real-time.
- In the bonus series, we refactor the cleaning, chunking, and embedding logic using Superlinked, a specialized vector compute engine. We will also load and index the vectors to Redis vector search.
- โ๏ธ Deployed on AWS.
- Create a custom dataset based on your digital data.
- Fine-tune an LLM using QLoRA.
- Use Comet ML's experiment tracker to monitor the experiments.
- Evaluate and save the best model to Comet's model registry.
- โ๏ธ Deployed on Qwak.
- Load the fine-tuned LLM from Comet's model registry.
- Deploy it as a REST API.
- Enhance the prompts using advanced RAG.
- Generate content using your LLM twin.
- Monitor the LLM using Comet's prompt monitoring dashboard.
- In the bonus series, we refactor the advanced RAG layer to write more optimal queries using Superlinked.
- โ๏ธ Deployed on Qwak.
Along the 4 microservices, you will learn to integrate 3 serverless tools:
Audience: MLE, DE, DS, or SWE who want to learn to engineer production-ready LLM systems using LLMOps good principles.
Level: intermediate
Prerequisites: basic knowledge of Python, ML, and the cloud
The course contains 11 hands-on written lessons and the open-source code you can access on GitHub.
You can read everything and try out the code at your own pace.
The articles and code are completely free. They will always remain free.
If you plan to run the code while reading it, you have to know that we use several cloud tools that might generate additional costs.
Pay as you go
- AWS offers accessible plans to new joiners.
- For a new first-time account, you could get up to 300$ in free credits which are valid for 6 months. For more, consult the AWS Offerings page.
- Qwak has a QPU based pricing plan. Here's what you need to know:
- A QPU stands for Qwak Processing Unit, and is the equivalent of 4vCPU-16GB.
- Qwak offers up to 100QPU/month for free for up to one year after registration.
- After that, a policy of 1.2$/QPU is applied as a pay-as-you-go tactic.
- To find more about Qwak pricing, consult Qwak Pricing Page
- To find more about Qwak Compute Instances, consult Qwak Instances Page
Freemium (Free-of-Charge)
Please ask us any questions if anything gets confusing while studying the articles or running the code.
You can ask any question
by opening an issue
in this GitHub repository by clicking here.
โ Quick overview of each lesson of the LLM Twin free course.
Important
To understand the entire code step-by-step, check out our articles โ
The course is split into 12 lessons. Every Medium article represents an independent lesson.
The lessons are NOT 1:1 with the folder structure!
- The Importance of Data Pipelines in the Era of Generative AI
- Change Data Capture: Enabling Event-Driven Architectures
- SOTA Python Streaming Pipelines for Fine-tuning LLMs and RAG โ in Real-Time!
- The 4 Advanced RAG Algorithms You Must Know to Implement
- The Role of Feature Stores in Fine-Tuning LLMs: From raw data to instruction dataset
- How to fine-tune LLMs on custom datasets at Scale using Qwak and CometML
- Best Practices when evaluating fine-tuned LLMs
- Architect scalable and cost-effective LLM & RAG inference pipelines
- How to evaluate your RAG using RAGAs Framework
To understand how to install and run the LLM Twin code, go to the INSTALL_AND_USAGE dedicated document.
Note
Even though you can run everything solely using the INSTALL_AND_USAGE dedicated document, we recommend that you read the articles to understand the LLM Twin system and design choices fully.
The bonus Superlinked series has an extra dedicated README that you can access under the 6-bonus-superlinked-rag directory.
In that section, we explain how to run it with the improved RAG layer powered by Superlinked.
The course is created under the Decoding ML umbrella by:
Paul Iusztin Senior ML & MLOps Engineer |
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Alexandru Vesa Senior AI Engineer |
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Rฤzvanศ Alexandru Senior ML Engineer |
This course is an open-source project released under the MIT license. Thus, as long you distribute our LICENSE and acknowledge our work, you can safely clone or fork this project and use it as a source of inspiration for whatever you want (e.g., university projects, college degree projects, personal projects, etc.).
A big "Thank you ๐" to all our contributors! This course is possible only because of their efforts.
Also, another big "Thank you ๐" to all our sponsors who supported our work and made this course possible.
Comet | Bytewax | Qdrant | Qwak | Superlinked |