The focus of this course is to equip learners with the skills and knowledge to design, develop, and optimize advanced large language model (LLM) solutions using LLama2. Topics covered will include a comprehensive understanding of LLM architectures, techniques for fine-tuning LLMs, retrieval-augmented generation (RAG), and the utilization of tools like Ollama, LangChain, Streamlit, and Hugging Face. This course will be exciting for learners as it delves into cutting-edge advancements in AI, offering hands-on experience with state-of-the-art tools and techniques.
A key highlight of the course is building two different implementations of a solution that consumes the original LLama2 paper published by Meta, enabling Q&A interactions with the AI about the paper. This hands-on project not only provides practical experience but also demonstrates the benefits of using LLama2 for deep understanding and knowledge extraction from complex documents.
This course targets Software Engineers, Machine Learning Engineers, Data Scientists, and Engineering Managers. Participants will gain insights into leveraging Llama2 for advanced AI solutions. Software Engineers will deepen their understanding of LLM architectures, Machine Learning Engineers will enhance model optimization skills, Data Scientists will explore innovative applications, and Engineering Managers will learn to lead AI-driven projects effectively.
Participants should have a beginner-level knowledge of Python and accounts on GitHub and Hugging Face for hands-on projects. A minimum hardware setup of 8 GB RAM and 3.8 GB of free storage is required, and the course is compatible with macOS or Windows operating systems.
By the end of this course, participants will be able to evaluate large language models (LLMs) and understand the solution development process. They will analyze use cases to identify optimal architectures and optimization techniques, apply and compare various optimization methods, and design advanced LLM solutions using Llama2, equipping them to create sophisticated AI applications.
Overview
Syllabus
- Leveraging Llama2 for Advanced AI Solutions
- This course is designed to equip learners with the skills and knowledge to design, develop, and optimize advanced large language model (LLM) solutions using Llama2. It covers a comprehensive understanding of LLM architectures, techniques for fine-tuning LLMs, retrieval-augmented generation (RAG), and the utilization of tools like Ollama, LangChain, Streamlit, and Hugging Face.
Taught by
Fabian Hinsenkamp and Starweaver Instructor Team