The Fine-tuning Text Models with PEFT course is designed for developers, engineers, and technical product builders who are new to Generative AI but already have intermediate machine learning knowledge, basic Python proficiency, and familiarity with development environments such as VS Code, and who want to engineer, customize, and deploy open generative AI solutions while avoiding vendor lock-in.

Fine-tuning Text Models with PEFT

Fine-tuning Text Models with PEFT
This course is part of Open Generative AI: Build with Open Models and Tools Professional Certificate

Instructor: Professionals from the Industry
Access provided by Masterflex LLC, Part of Avantor
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February 2026
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There are 4 modules in this course
Learn how to fine-tune large language models with parameter-efficient techniques that make advanced training possible on everyday hardware. You’ll explore the principles and advantages of PEFT, implement QLoRA for practical fine-tuning, and design hyperparameter strategies that balance accuracy and efficiency. You’ll also apply evaluation metrics and build complete pipelines from data preparation to model assessment, gaining hands-on experience with workflows that shape today’s practice while preparing you to adapt as methods continue to advance.
What's included
5 videos2 readings1 assignment1 ungraded lab
See how parameter-efficient fine-tuning (PEFT) concepts form the foundation for QLoRA. You’ll examine QLoRA’s architecture, set up the training environment with the right dependencies, and prepare datasets for efficient fine-tuning on consumer hardware. You’ll also design hyperparameter strategies and manage checkpoints and model versions, gaining hands-on experience with a workflow that plays a central role in modern fine-tuning. Along the way, you’ll strengthen principles that help you adapt as fine-tuning methods continue to advance.
What's included
3 videos1 assignment2 ungraded labs
Focus on the role of hyperparameters in fine-tuning and how to adjust them for the best results. You’ll learn strategies for setting and refining learning rates, batch sizes, and rank values, along with techniques for identifying the “sweet spot” that balances efficiency and accuracy. You’ll also implement checkpointing and manage model versions to track progress and avoid wasted runs. These skills give you the ability to adapt hyperparameter choices to different problems and build stronger, more reliable models.
What's included
1 video1 reading1 assignment1 ungraded lab
Learn how to evaluate whether your fine-tuned model is bringing value and why benchmarks are critical for proving it. You’ll apply a suite of metrics, such as perplexity, ROUGE, BLEU, and BERTScore, while also using qualitative checks to capture dimensions numbers can miss. You’ll analyze trade-offs in accuracy, inference speed, and memory use, and create dashboards that make results easy to interpret. These practices ensure you can confidently measure performance and deliver fine-tuned models that meet real-world standards.
What's included
4 videos1 reading1 assignment1 ungraded lab
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Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
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