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Gain a foundational understanding of a subject or tool
Develop job-relevant skills with hands-on projects
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There are 4 modules in this course
This course introduces the Large Language Models (LLMs) and the Hugging Face ecosystem, combining conceptual understanding with hands-on implementation to help you build intelligent, language-driven systems. Whether you’re exploring AI for the first time or looking to deepen your understanding of modern NLP architectures, this course provides a clear and practical path into the world of transformer-based models and open-source innovation.
Through guided lessons and real-world demonstrations, you’ll explore how LLMs process language, learn from massive datasets, and generate context-aware responses. You’ll also gain hands-on experience using Hugging Face tools to load, evaluate, and fine-tune models, prepare datasets for NLP tasks, and build pipelines for classification, sentiment analysis, and question answering. The course culminates with a project that integrates fine-tuned models, external APIs, and a user interface to create a fully functional knowledge assistant.
By the end of this course, you will be able to:
• Understand transformer architecture and attention mechanisms that power modern LLMs.
• Differentiate between pre-training and fine-tuning approaches and apply them using Hugging Face tools.
• Compare open-source and proprietary LLMs, evaluating trade-offs in performance and accessibility.
• Prepare and tokenize datasets for efficient model training and evaluation.
• Build, test, and deploy NLP pipelines for real-world applications.
• Extend agents with external data sources and integrate APIs securely.
• Develop and test an end-to-end intelligent assistant powered by fine-tuned models.
This course is ideal for AI developers, data scientists, and ML enthusiasts who want to understand and apply LLMs using open-source frameworks. A basic understanding of Python and machine learning will be helpful, but not required.
Join us to explore the Introduction of large language models, master the Hugging Face ecosystem, and gain the practical skills to fine-tune, connect, and deploy intelligent systems that power the future of AI.
Explore the core concepts behind Large Language Models (LLMs) — how they’re built, trained, and optimized. Learn about transformer architecture, attention mechanisms, tokenization, and the differences between open-source and proprietary models. By the end, you’ll understand how modern AI systems like GPT and BERT think, learn, and generate language responsibly.
Demonstration: Exploring a Pretrained Transformer Model on Hugging Face Hub•4 minutes
Demonstration: Inspecting Tokenization and Embedding Process•6 minutes
Pre-Training vs. Fine-Tuning in LLMs Explained•4 minutes
Demonstration: Comparing Model Families (BERT vs. GPT vs. T5) in Hugging Face Pipelines•4 minutes
Demonstration: Exploring Model Layers and Parameters in Transformers Library•7 minutes
Open-Source vs. Proprietary LLMs: Key Differences•4 minutes
Demonstration: Loading and Testing a Model from Hugging Face Hub•4 minutes
Demonstration: Evaluating Model Outputs and Identifying Bias or Drift•5 minutes
5 readings•Total 85 minutes
Welcome to Introduction to LLMs and Hugging Face•15 minutes
Transformer Architecture and Attention Explained•20 minutes
Compare and Analyze Pretrained LLMs•20 minutes
AI Bias Analysis in Open Models•20 minutes
Summary of Understanding Large Language Models•10 minutes
4 assignments•Total 48 minutes
Practice Quiz: Fundamentals of LLMs•6 minutes
Practice Quiz: Model Architectures and Training•6 minutes
Practice Quiz: Open and Closed Model Ecosystems•6 minutes
Knowledge Check: Understanding Large Language Models•30 minutes
1 discussion prompt•Total 10 minutes
Introduce Yourself•10 minutes
Exploring the Hugging Face Platform
Module 2•2 hours to complete
Module details
Dive into the Hugging Face ecosystem, the most powerful open-source platform for NLP and LLM development. Learn how to explore models, manage datasets, and build pipelines for tasks like sentiment analysis and text classification. Through hands-on demos, you’ll gain practical experience with Transformers, Datasets, and Hub integrations.
What's included
9 videos4 readings4 assignments
Show info about module content
9 videos•Total 37 minutes
Getting Started with the Hugging Face Ecosystem•4 minutes
Understanding the Hugging Face Hub and Model Cards•4 minutes
Demonstration: Introduction to Hugging Face Platform•4 minutes
Data Cleaning and Preparation for NLP Models•4 minutes
Demonstration: Loading and Exploring a Text Dataset with Hugging Face Datasets•4 minutes
Demonstration: Preprocessing and Tokenizing Text Data for Model Training•5 minutes
Building Fast NLP Pipelines for Prototyping•4 minutes
Demonstration 1: Using the Transformers Pipeline for Sentiment Analysis•5 minutes
Demonstration 2: Building a Custom Text Classification Pipeline Prototype for the Capstone Project•4 minutes
4 readings•Total 55 minutes
Overview of Hugging Face Libraries and Tools•15 minutes
Dataset Splitting and Normalization for NLP•15 minutes
Common NLP Tasks with Hugging Face Tools•15 minutes
Summary of Exploring the Hugging Face Platform•10 minutes
4 assignments•Total 48 minutes
Practice Quiz: Getting Started with Hugging Face•6 minutes
Practice Quiz: Working with Datasets•6 minutes
Practice Quiz: Building Pipelines for NLP Tasks•6 minutes
Knowledge Check: Exploring the Hugging Face Platform•30 minutes
Connecting Agents and Tools
Module 3•3 hours to complete
Module details
Learn how to extend LLMs into intelligent AI agents by integrating them with external APIs, logic, and memory. Master fine-tuning techniques, build data-aware assistants, and create interactive apps using tools like Streamlit. This module focuses on practical agent design, decision-making, and deployment readiness.
What's included
16 videos5 readings4 assignments
Show info about module content
16 videos•Total 70 minutes
Fine-Tuning LLMs: When and Why It Matters•3 minutes
Demonstration: Contextual Fine-Tuning of Model •4 minutes
Demonstration: Fine-Tuning Transformers on Domain-Specific Dataset•4 minutes
Integrating External Data into AI Agents•4 minutes
Demonstration: Connecting to a Web API for Real-Time Information•6 minutes
Demonstration: Adding Decision Logic and Memory to Your Agent - I•4 minutes
Demonstration: Adding Decision Logic and Memory to Your Agent - II•4 minutes
Designing an End-to-End AI Assistant Architecture•4 minutes
Demonstration: Streamlit App Rag vs Agent •4 minutes
Demonstration: Capstone Wrap-Up: RAG Data, Prompts, and UI•6 minutes
5 readings•Total 83 minutes
LLM Hyperparameter Tuning and Batch Management•20 minutes
Extend Your Agent with External Data•20 minutes
Accessing Code Resources for Demonstration Videos•3 minutes
Test Full Knowledge Assistant Workflow•30 minutes
Summary of Connecting Agents and Tools•10 minutes
4 assignments•Total 48 minutes
Practice Quiz: Fine-Tuning Fundamentals•6 minutes
Practice Quiz: Integrating External APIs and Logic•6 minutes
Practice Quiz: Building and Testing Your Knowledge Assistant•6 minutes
Knowledge Check: Connecting Agents and Tools•30 minutes
Course Wrap-Up and Assessment
Module 4•2 hours to complete
Module details
Consolidate your learning with a hands-on project that combines LLMs, Hugging Face tools, and intelligent agent design. Complete your final graded assessment and reflect on your journey to mastering AI-powered application development.
What's included
1 video1 reading1 assignment1 discussion prompt
Show info about module content
1 video•Total 2 minutes
Course Summary•2 minutes
1 reading•Total 60 minutes
Practice Project: Building a RAG + Agent System for Enterprise Search•60 minutes
1 assignment•Total 30 minutes
End Course Knowledge Check: Introduction to LLMs and Hugging Face•30 minutes
1 discussion prompt•Total 10 minutes
Describe your Learning Journey•10 minutes
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themselves with industry-relevant skills in today’s cutting edge technologies.
Basic knowledge of Python and fundamental machine learning concepts is recommended.
What topics are covered in the course?
The course covers LLM architecture, Hugging Face tools, fine-tuning, API integration, and deployment.
How long is the course duration?
It’s designed as a multi-module program that can be completed in about 4–6 weeks with regular practice
Is this course suitable for beginners?
Yes, it starts with foundational concepts and gradually advances to hands-on projects.
Will there be hands-on exercises or projects?
Yes, each module includes practical demos, coding exercises, and a capstone project.
What tools or libraries will I use during the course?
You’ll work with Hugging Face Hub, Transformers, Datasets, Trainer API, and external APIs.
Can I access the course content after completion?
Yes, you’ll have continued access to course materials for review and reference.
Are there any quizzes or assessments included?
Yes, each module includes short quizzes, graded assignments, and a final assessment.
Will I receive a certificate after completing the course?
Yes, a verified certificate is awarded upon successful completion of all modules.
How does this course help in deploying real-world LLM models?
It teaches you how to fine-tune, evaluate, and deploy transformer-based models for real-world AI applications.
When will I have access to the lectures and assignments?
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
What will I get if I subscribe to this Specialization?
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Is financial aid available?
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.