Optimize Deep Learning: Tune PyTorch Models is an intermediate course for deep learning practitioners ready to move beyond off-the-shelf training and gain granular control over their models. Standard training loops can hide critical issues, leading to unstable performance and suboptimal results. This course empowers you to take full command of the training process using PyTorch Lightning.

Optimize Deep Learning: Tune PyTorch Models

Optimize Deep Learning: Tune PyTorch Models
This course is part of LLM Optimization & Evaluation Specialization

Instructor: LearningMate
Access provided by Lok Jagruti University
Recommended experience
What you'll learn
Use PyTorch Lightning to implement callbacks, diagnose instabilities, and optimize model performance.
Skills you'll gain
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January 2026
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There are 3 modules in this course
This module introduces the core concepts of PyTorch Lightning that streamline deep learning development. You will learn why refactoring from raw PyTorch is essential for building scalable, production-ready models. You will get hands-on experience structuring your code into a LightningModule and using the Trainer to handle the engineering boilerplate, allowing you to focus purely on the science.
What's included
1 video1 reading2 assignments
In this module, you will learn to take full control of your training process using callbacks. You will discover how to implement automated rules for early stopping to prevent wasted computation and model checkpointing to save your best-performing models, including how to sync them with cloud storage for production-ready workflows.
What's included
1 video1 reading1 assignment1 ungraded lab
In this final module, you will step into the role of a deep learning diagnostician. You will learn to identify and fix common training instabilities like exploding and vanishing gradients by monitoring model internals. You will use these skills to debug a real training job and interact with an AI coach to sharpen your critical thinking.
What's included
2 videos1 reading2 assignments1 ungraded lab
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