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Shin Kyung-sik's Deep Learning - Gradient-based Linear Regression (1)

This is a lecture for perfectly understanding the process of training the simplest form of deep learning model using gradient descent.

14 learners are taking this course

  • asdfghjkl13551941
AI
deeplearning
AI 코딩
Deep Learning(DL)
gradient-descent
python3
optimization-problem

What you will learn!

  • Model Training Using Gradient Descent

  • Implementation of Linear Regression

  • Analysis of the Model Training Process

NOTICE

This course is part of the AI-specialized curriculum All about AI.

Training a model using Gradient Descent!

This is a lecture for perfectly understanding the process of training the simplest form of deep learning model using gradient descent. Through this

  1. The principle of the process of fitting a model to data by applying gradient descent

  2. Basic concepts related to deep learning

  3. The ability to directly implement the learning process

  4. Deep learning analytical capabilities in the learning process

can definitely be cultivated.

In particular, through various visualization materials, you will gain a complete mathematical understanding of the phenomena that occur during the learning process.

Through this, you can cultivate not only simple concepts but also 'research/development capabilities'.

Linear Regression: Perfect Theoretical Understanding!

This course covers the theory thoroughly, starting from basic mathematical knowledge and progressing to the process of training a linear regression model.

This concept is not only necessary when training more complex deep learning models, but also essential for understanding the various phenomena that occur when training models.

Linear Regression Implementation from Scratch!

In this lecture,

  1. Create the dataset directly,

  2. Implement a linear regression model directly,

  3. We will directly implement the process of training this model on the dataset.

Through a total of 45 step-by-step implementations, you will definitely develop implementation skills related to deep learning.

Prerequisites

This lecture is a follow-up to the [Gradients and PyTorch's Autograd] and [Gradient Descent] lectures.

If you feel lacking in previous concepts, I recommend taking and studying the relevant lectures😃

Recommended for
these people

Who is this course right for?

  • Those who want to properly learn deep learning

  • Those who want to build a solid foundation in deep learning basics

Need to know before starting?

  • Fundamentals of Differentiation (Refer to Gradients and PyTorch's Autograd lecture)

  • Concept of Gradient Descent (refer to Gradient Descent lecture)

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Curriculum

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18 lectures ∙ (4hr 2min)

Course Materials:

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