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In diesem Kurs gibt es 5 Module
This course provides a comprehensive, hands-on journey into model adaptation, fine-tuning, and context engineering for large language models (LLMs). It focuses on how pretrained models can be efficiently customized, optimized, and deployed to solve real-world NLP problems across diverse domains.
Through structured lessons, demonstrations, and practice assignments, you will learn how to apply transfer learning, parameter-efficient fine-tuning techniques, context engineering strategies, and optimization methods to build scalable and production-ready LLM systems. The course emphasizes both theoretical foundations and practical workflows using modern tooling such as Hugging Face, Trainer APIs, and model monitoring platforms.
By the end of this course, you will be able to:
- Explain the principles of transfer learning, model adaptation, and parameter-efficient fine-tuning for large language models
- Fine-tune pretrained models using techniques such as LoRA and adapters for domain-specific and task-based applications
- Design effective context engineering strategies, including context optimization, compression, and scalable context patterns
- Evaluate fine-tuned models using task-appropriate metrics and perform error analysis
- Optimize, deploy, monitor, and maintain fine-tuned models for efficient and cost-effective production use
This course is ideal for machine learning engineers, AI practitioners, NLP developers, and data scientists who want to move beyond prompt-only interactions and gain practical expertise in adapting and deploying LLMs in real-world systems.
A working knowledge of Python, machine learning fundamentals, and basic NLP concepts is recommended to get the most out of this course.
Join us to master the end-to-end lifecycle of fine-tuning, optimizing, and operationalizing large language models—from pretrained foundations to scalable, production-ready AI solutions.
Explore how pretrained language models are adapted for new tasks using transfer learning techniques. Learn how parameter-efficient methods such as LoRA and adapters enable lightweight fine-tuning, and how domain-specific data improves model performance. By the end, you’ll understand how to customize large models efficiently while minimizing training cost and complexity.
Das ist alles enthalten
13 Videos5 LektĂĽren4 Aufgaben1 Diskussionsthema
Infos zu Modulinhalt anzeigen
13 Videos•Insgesamt 78 Minuten
Specialization Introduction•7 Minuten
Course Introduction•4 Minuten
Introduction to Transfer Learning•6 Minuten
Demonstration: Exploring Pretrained Models on Hugging Face Hub•5 Minuten
Demonstration: Visualizing Model Layers and Parameters•5 Minuten
Introduction to PEFT, LoRA, and Adapters•7 Minuten
Demonstration: Fine-Tuning with LoRA on a Custom Dataset•6 Minuten
Demonstration: Adding Adapters LoRa for Lightweight Training•7 Minuten
Demonstration: Instruction-Based Fine-Tuning on a Custom Dataset•7 Minuten
Demonstration: Evaluating Fine-Tuned Model Accuracy•6 Minuten
5 Lektüren•Insgesamt 70 Minuten
Welcome to Fine-Tuning & Optimizing Large Language Models•15 Minuten
Foundations of Transfer Learning and Domain Adaptation•15 Minuten
Understanding LoRA and Adapter-Based Fine-Tuning for Large Models•15 Minuten
Best Practices for Domain Adaptation •15 Minuten
Module Summary : Understanding Model Adaptation and Transfer Learning•10 Minuten
4 Aufgaben•Insgesamt 48 Minuten
Practice Knowledge Check: Fundamentals of Transfer Learning•6 Minuten
Practice Knowledge Check: Parameter-Efficient Fine-Tuning Techniques•6 Minuten
Practice Knowledge Check: Domain-Specific and Task-Based Adaptation•6 Minuten
Knowledge Check: Understanding Model Adaptation and Transfer Learning•30 Minuten
1 Diskussionsthema•Insgesamt 10 Minuten
Introduce Yourself•10 Minuten
Fine-Tuning Workflows and Hyperparameter Optimization
Modul 2•3 Stunden abzuschließen
Moduldetails
Dive into the end-to-end workflows required to fine-tune language models effectively. Learn how to prepare and tokenize datasets, configure training pipelines using the Hugging Face Trainer API, and optimize hyperparameters for better results. By the end, you’ll be able to train, evaluate, and publish fine-tuned models with confidence.
Das ist alles enthalten
10 Videos4 LektĂĽren4 Aufgaben
Infos zu Modulinhalt anzeigen
10 Videos•Insgesamt 62 Minuten
Preprocessing and Cleaning Text for Fine-Tuning•7 Minuten
Demonstration: Tokenizing and Batching Datasets•6 Minuten
Demonstration: Dataset Splitting for Validation and Testing•6 Minuten
Setting Up Fine-Tuning Environments•7 Minuten
Demonstration: Configuring Trainer API for BERT Models•7 Minuten
Demonstration: Monitoring Training Loss and Accuracy•6 Minuten
Model Evaluation Metrics: F1, BLEU, ROUGE•6 Minuten
Demonstration: Visualizing Confusion Matrix for Performance•6 Minuten
Demonstration: Exporting and Uploading to Hugging Face Hub•6 Minuten
Demonstration: Evaluating models using DeepEval + ELO ranking•6 Minuten
4 Lektüren•Insgesamt 60 Minuten
Text Preprocessing Pipelines for Fine-Tuning Transformers•15 Minuten
Hyperparameter Optimization in Hugging Face Trainer•15 Minuten
Model Evaluation Metrics and Error Analysis for NLP Tasks•15 Minuten
Module Summary: Fine-Tuning Workflows and Hyperparameter Optimization•15 Minuten
4 Aufgaben•Insgesamt 48 Minuten
Practice Knowledge Check: Preparing and Tokenizing Data•6 Minuten
Practice Knowledge Check: Fine-Tuning Pipeline Setup•6 Minuten
Practice Knowledge Check: Evaluating Fine-Tuned Models•6 Minuten
Knowledge Check: Fine-Tuning Workflows and Hyperparameter Optimization•30 Minuten
Context Engineering for LLMs
Modul 3•3 Stunden abzuschließen
Moduldetails
Explore how context influences LLM behavior and performance. Learn the fundamentals of context engineering, manage token limits, apply context compression techniques, and design scalable context patterns. By the end, you’ll understand how to structure and optimize context for reliable and production-ready LLM applications.
Demonstration: Comparing Prompt and Context Engineering for LLMs•5 Minuten
Token Limits in LLMs•4 Minuten
Context Relevance Selection•5 Minuten
Context Compression Techniques•5 Minuten
Demonstration: Context Compression in LLM System•6 Minuten
Task Isolation Strategies•5 Minuten
Common Context Errors•5 Minuten
Scalable Context Engineering•6 Minuten
Demonstration: Context Isolation Patterns for LLMs•6 Minuten
Demonstration: Scaling LLM with Production using Context Engineering•6 Minuten
4 Lektüren•Insgesamt 55 Minuten
Foundations of LLM Context Design•15 Minuten
Optimizing Context Windows•15 Minuten
Context Engineering Design Patterns•15 Minuten
Module Summary: Context Engineering for LLMs•10 Minuten
4 Aufgaben•Insgesamt 48 Minuten
Practice Knowledge Check: LLM Context Fundamentals•6 Minuten
Practice Knowledge Check: Context Limits and Optimization•6 Minuten
Practice Knowledge Check: Context Patterns and Scalability•6 Minuten
Knowledge Check: Context Engineering for LLMs•30 Minuten
Optimization, Compression, and Deployment
Modul 4•3 Stunden abzuschließen
Moduldetails
Learn how to optimize fine-tuned models for efficient inference and real-world deployment. Explore model compression techniques such as quantization and knowledge distillation, scaling strategies in cloud environments, and continuous monitoring practices. By the end, you’ll know how to deploy, scale, and maintain LLMs while controlling cost and performance.
Das ist alles enthalten
13 Videos4 LektĂĽren4 Aufgaben
Infos zu Modulinhalt anzeigen
13 Videos•Insgesamt 72 Minuten
Model Compression Techniques•6 Minuten
Demonstration: Quantizing Model for Inference Speed - I•4 Minuten
Demonstration: Quantizing Model for inference Speed - II•5 Minuten
Demonstration: Knowledge Distillation for Model Compression•6 Minuten
Scaling and Cost Management in Cloud Environments•6 Minuten
Demonstration: Deploying on Hugging Face Inference API•7 Minuten
Demonstration: Monitoring Latency and Costs•6 Minuten
Continuous Evaluation and Model Versioning•6 Minuten
Demonstration: Tracking Metrics with MLflow - I•6 Minuten
Demonstration: Tracking Metrics with MLflow - II •5 Minuten
Demonstration: Tracking Metrics with MLflow - III•7 Minuten
Demonstration: Updating Models Using Incremental Retraining - I•5 Minuten
Demonstration: Updating Models Using Incremental Retraining - II•5 Minuten
4 Lektüren•Insgesamt 65 Minuten
Efficiency Optimization Techniques for Transformer Models•15 Minuten
Scaling Fine-Tuned Models for Production Inference•15 Minuten
Lifecycle Management for Deployed LLM Models•20 Minuten
Module Summary: Understanding Model Adaptation and Transfer Learning•15 Minuten
4 Aufgaben•Insgesamt 48 Minuten
Practice Knowledge Check: Model Optimization Techniques•6 Minuten
Practice Knowledge Check: Scaling Fine-Tuned Models•6 Minuten
Practice Knowledge Check: Monitoring and Maintaining Fine-Tuned Models•6 Minuten
Knowledge Check: Optimization, Compression, and Deployment•30 Minuten
Course Wrap-Up
Modul 5•1 Stunde abzuschließen
Moduldetails
Apply everything you’ve learned through a hands-on practice project focused on fine-tuning and adapting an LLM end to end. Reflect on key concepts, complete the final graded assessment, and identify next steps for advancing your skills. By the end, you’ll be prepared to apply model adaptation techniques in real-world AI systems.
Das ist alles enthalten
1 Video1 LektĂĽre1 Aufgabe1 Diskussionsthema
Infos zu Modulinhalt anzeigen
1 Video•Insgesamt 3 Minuten
Course Summary: Fine-Tuning & Optimizing Large Language Models•3 Minuten
1 Lektüre•Insgesamt 40 Minuten
Practice Project: Fine-Tuning and Adapting Domain-Specific LLMs•40 Minuten
1 Aufgabe•Insgesamt 30 Minuten
End Course Knowledge Check: Fine-Tuning & Optimizing Large Language Models•30 Minuten
1 Diskussionsthema•Insgesamt 10 Minuten
Describe your Learning Journey•10 Minuten
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This course teaches how to fine-tune, adapt, optimize, and deploy large language models for real-world applications.
Why should I take this course?
It helps you move beyond prompt usage and gain hands-on expertise in production-grade LLM adaptation.
Who is this course for?
It is designed for ML engineers, AI practitioners, NLP developers, and data scientists.
Do I need prior experience with LLMs?
Basic familiarity with machine learning and NLP concepts is recommended but not mandatory.
What tools are used in this course?
The course uses Hugging Face Transformers, Trainer API, and modern LLM tooling.
Will I learn parameter-efficient fine-tuning techniques?
Yes, the course covers PEFT methods such as LoRA and adapter-based fine-tuning.
Will I learn model optimization techniques?
Yes, the course covers quantization, compression, and knowledge distillation.
Will I learn how to evaluate fine-tuned models?
Yes, the course covers metrics like F1, BLEU, ROUGE, and error analysis.
Does the course include hands-on demonstrations?
Yes, each module includes practical demos and assignments.
How is this course different from prompt engineering courses?
This course focuses on model adaptation, training workflows, and production deployment rather than prompts alone.
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.