Intro to Large Language Models (LLMs) Course Syllabus
Full curriculum breakdown — modules, lessons, estimated time, and outcomes.
An essential course for understanding how Large Language Models work and their growing impact in the AI ecosystem. This beginner-friendly program spans approximately 5 hours of on-demand video content, structured across six focused modules. You'll gain a solid foundation in LLM concepts, architecture, training methods, real-world applications, and ethical considerations—ideal for tech professionals looking to build foundational AI knowledge. No prior experience with deep learning is required, making it accessible to a broad audience.
Module 1: Introduction to LLMs
Estimated time: 0.5 hours
- What are Large Language Models and why they matter
- Evolution from NLP to modern LLMs
- Key milestones in LLM development
- Overview of popular LLMs like GPT
Module 2: Architecture and Core Concepts
Estimated time: 0.75 hours
- Transformer architecture fundamentals
- Attention mechanisms explained
- Tokenization and text processing
- Understanding embeddings and model sizes
Module 3: Training and Fine-Tuning LLMs
Estimated time: 1 hour
- Pre-training vs. fine-tuning explained
- Role of large datasets in training
- Hyperparameters and model performance
- Challenges in training large models
Module 4: Using LLMs in Real-World Applications
Estimated time: 1 hour
- Content generation and summarization
- Language translation using LLMs
- Code generation and programming assistance
- Integrating LLMs into business workflows
Module 5: Limitations, Ethics & Safety
Estimated time: 0.75 hours
- Bias in language models
- Mitigation strategies for fairness
- Safety and misuse concerns
- Responsible deployment practices
Module 6: Future Trends in LLMs
Estimated time: 0.5 hours
- Open-source vs. proprietary models
- Emergence of multimodal LLMs
- Career paths and skills for LLM work
- Next wave of LLM development
Prerequisites
- Familiarity with basic AI concepts
- No coding experience required
- Interest in artificial intelligence and technology trends
What You'll Be Able to Do After
- Explain how Large Language Models work
- Describe the transformer architecture and attention mechanisms
- Understand the training and fine-tuning process of LLMs
- Identify real-world applications of LLMs across industries
- Recognize ethical issues and best practices in LLM deployment