Aprendizagem Profunda
Descrição
By the end of this course, students will:
· Understand the core concepts, paradigms, and challenges of DL.
· Understand the theoretical foundations of DL, such as backpropagation, optimization, and activation functions.
· Know the advantages and limitations of DL models and their applications.
· Be able to implement and optimize DL algorithms using frameworks like PyTorch.
· Be able to experimentally model data using the explored architectures.
· Be able to analyze and evaluate model performance using metrics and visualizations.
· Be able to compare and validate different DL approaches for diverse datasets.
· Be able to assess the suitability of deep learning methods for various domains.
· Be able to critically evaluate results, addressing biases and ethical concerns.
- Be able to show autonomy in learning and applying DL advancements.