AWS AI Practitioner: Training Fine-Tuning and Evaluating Foundation Models

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Foundation models (FMs) are designed to be highly adaptable, capable of performing a wide range of tasks such as natural language processing and image classification. However, they must also be properly trained, fine-tuned, evaluated, and tested. In this course, examine the elements for training and methods for fine-tuning a foundation model. Learn how to prepare data for fine-tuning and evaluate foundation model performance using human evaluation, benchmark datasets, and various metrics. Finally, discover the process used to determine if a foundation model effectively meets business objectives. This course is part of a collection that prepares you for the AIF-C01: AWS Certified AI Practitioner exam.