This technical course walks through preparing datasets, fine-tuning a GPT-style model, evaluating performance, and deploying it for specialised tasks. You will learn data cleaning and formatting, supervised fine-tuning strategies, validation metrics, and monitoring for drift and safety. Practical labs include small-domain fine-tuning examples and deployment patterns to integrate models into services with monitoring and rollback mechanisms.
- Skills you’ll learn: dataset prep, fine-tuning workflows, evaluation metrics, deployment patterns, monitoring and safety.
Certificate: Certificate of completion provided upon finishing the course.
Requirements
- Familiarity with ML tooling; compute resources and a prepared dataset.
Who this course is for
- ML engineers; data scientists; prompt engineers.
Benefits
- Prepare and clean datasets; fine-tune models; evaluate performance; deploy and monitor the fine-tuned model.
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