Description
What you’ll learn
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Build deep learning models from scratch using PyTorch with a strong engineering foundation
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Build deep learning models from scratch using PyTorch with a strong engineering foundation
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Understand and apply neural networks, backpropagation, and optimization effectively
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Train, evaluate, and improve models using regularization and generalization techniques
“This course contains the use of artificial intelligence”
Deep learning is no longer just a research skill — it is a core engineering competency. This course, Deep Learning Foundations for AI Engineers, is designed to take you beyond theory and help you build, train, debug, and manage deep learning systems the way real AI engineers do.
You’ll start by developing a strong conceptual foundation in neural networks, understanding how artificial neurons, forward propagation, activation functions, and loss functions work together to enable learning. Rather than memorizing formulas, you’ll build intuition through visual explanations and code-driven demonstrations.
From there, you’ll move into training deep neural networks using PyTorch, learning critical skills such as gradient descent, backpropagation, optimizer selection, and learning rate tuning. You’ll understand why models fail, how overfitting happens, and how to apply regularization techniques like L1/L2 penalties, dropout, and batch normalization to improve generalization.
This course is highly hands-on. You’ll implement:
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A neural network from scratch
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End-to-end training pipelines
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Fully connected networks using real datasets
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Image classification models with CNNs
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Sequence prediction models using RNNs, LSTMs, and GRUs
You’ll also develop a strong engineering mindset by learning model saving, loading, and versioning, experiment reproducibility, debugging deep learning models, and monitoring training and validation curves — skills that are essential in production environments, not just notebooks.
By the end of the course, you won’t just “know deep learning” — you’ll think and work like a deep learning engineer, capable of building scalable, reproducible, and production-ready AI systems.
Who this course is for:
- Machine learning engineers who want to deepen their understanding of deep neural networks
- Software engineers transitioning into AI and deep learning roles
- Data scientists looking to build production-ready deep learning models
- Students and graduates preparing for AI, ML, or deep learning interviews





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