What will you in PyTorch for Deep Learning with Python Bootcamp Course
Learn PyTorch from scratch, including tensors, autograd, and model building.
Build and train neural networks for real-world datasets.
Implement CNNs, RNNs, and transfer learning using PyTorch.
Use advanced tools like TensorBoard and deployment strategies.
Complete projects for image classification and time series forecasting.
Program Overview
Module 1: Introduction to PyTorch & Setup
⏳ 30 minutes
Installing PyTorch and environment configuration.
Overview of PyTorch ecosystem and capabilities.
Module 2: PyTorch Fundamentals & Tensors
⏳ 45 minutes
Tensor creation, operations, and broadcasting.
Autograd and dynamic computation graphs in PyTorch.
Module 3: Neural Networks from Scratch
⏳ 60 minutes
Building feedforward neural networks using
torch.nn.Loss functions and optimizers for training.
Module 4: Model Training Workflow
⏳ 60 minutes
Training and evaluation loops.
Using GPU for model acceleration.
Module 5: Convolutional Neural Networks (CNNs)
⏳ 60 minutes
Creating CNNs for image recognition tasks.
Applying CNNs to datasets like MNIST and CIFAR-10.
Module 6: Recurrent Neural Networks (RNNs) & Time Series
⏳ 60 minutes
Building and training RNNs for sequential data.
Use cases in text and time series prediction.
Module 7: Transfer Learning & Pretrained Models
⏳ 45 minutes
Implementing transfer learning with models like ResNet.
Fine-tuning vs. feature extraction.
Module 8: TensorBoard & Model Visualization
⏳ 45 minutes
Tracking metrics and visualizing model architecture.
Using TensorBoard with PyTorch.
Module 9: Saving, Loading & Deployment
⏳ 45 minutes
Saving and loading model checkpoints.
Deployment strategies for inference.
Module 10: Final Projects & Applications
⏳ 75 minutes
Full pipeline projects on image and time-series data.
Best practices and industry insights.
Get certificate
Job Outlook
High Demand: PyTorch is widely adopted for AI development and research.
Career Advancement: Great for aspiring data scientists and AI engineers.
Salary Potential: $100K–$160K based on deep learning and deployment expertise.
Freelance Opportunities: Real-world applications in computer vision, NLP, and automation.
Explore More Learning Paths
Advance your deep learning skills and Python expertise with these carefully selected programs designed to enhance your PyTorch knowledge and AI capabilities.
Related Courses
Introduction to Neural Networks and PyTorch Course – Gain a foundational understanding of neural networks and PyTorch essentials to kickstart your AI journey.
IBM Deep Learning with PyTorch, Keras, and TensorFlow Professional Certificate Course – Master multiple deep learning frameworks, implement advanced models, and gain hands-on project experience.
PyTorch for Deep Learning Bootcamp Course – Learn practical PyTorch techniques through project-based exercises, from building to training and evaluating models.
Related Reading
What Does a Data Engineer Do? – Understand how robust data management supports AI workflows and model deployment.
Specification: PyTorch for Deep Learning with Python Bootcamp Course
|

