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Practical Deep Learning with PyTorch Course

A practical and beginner-friendly course to master deep learning with PyTorch through real-world applications.

access

Lifetime

level

Beginner

certificate

Certificate of completion

language

English

What will you in Practical Deep Learning with PyTorch Course

  • Understand deep learning fundamentals and how to implement them using PyTorch.

  • Build and train neural networks from scratch.

  • Master convolutional neural networks (CNNs) for image processing tasks.

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  • Learn to manage overfitting, loss functions, and optimization techniques.

  • Gain hands-on experience with real-world datasets and model evaluation.

Program Overview

Module 1: Introduction to Deep Learning & PyTorch

⏳ 30 minutes

  • Core principles of deep learning and how PyTorch fits in.

  • Setting up the development environment and working with tensors.

Module 2: Building Neural Networks

⏳ 60 minutes

  • Structure of a neural network: layers, activation, loss, and optimizers.

  • Creating and training your first model using PyTorch.

Module 3: Training & Evaluation Techniques

⏳ 45 minutes

  • Data preprocessing, batching, and training loops.

  • Model evaluation metrics like accuracy and loss tracking.

Module 4: Convolutional Neural Networks (CNNs)

⏳ 60 minutes

  • Understanding CNN architecture and use cases.

  • Implementing a CNN for image classification.

Module 5: Avoiding Overfitting & Model Optimization

⏳ 45 minutes

  • Techniques like dropout, regularization, and data augmentation.

  • Hyperparameter tuning and model checkpointing.

Module 6: Real-World Projects with PyTorch

⏳ 90 minutes

  • Applying deep learning to real datasets (e.g., MNIST, CIFAR-10).

  • Building an end-to-end classification project.

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Job Outlook

  • High Demand: Deep learning engineers are in demand across industries such as healthcare, finance, and tech.

  • Career Advancement: Skills gained lead to roles like AI Engineer, ML Researcher, or Computer Vision Specialist.

  • Salary Potential: Deep learning professionals earn between $100K–$160K per year.

  • Freelance Opportunities: High-paying project work in AI-powered applications and model development.

Explore More Learning Paths

Take your PyTorch skills to the next level with these carefully selected programs designed to help you build practical deep learning models and apply them to real-world problems.

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Related Reading

  • What Does a Data Engineer Do? – Explore how effective data management supports the development and deployment of deep learning models in production environments.

9.7Expert Score
Highly Recommended
A hands-on and well-structured PyTorch course that builds a strong foundation in deep learning.
Value
9.3
Price
9.5
Skills
9.7
Information
9.6
PROS
  • Great for beginners looking to enter deep learning.
  • Real-world datasets and practical model development.
  • Detailed explanation of PyTorch internals.
CONS
  • No coverage of advanced topics like RNNs or GANs.
  • Requires Python programming background.

Specification: Practical Deep Learning with PyTorch Course

access

Lifetime

level

Beginner

certificate

Certificate of completion

language

English

Practical Deep Learning with PyTorch Course
Practical Deep Learning with PyTorch Course
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