Implement Neural Network In Python | Deep Learning Tutorial 13 (Tensorflow2.0, Keras & Python)

Published: 01 January 1970
on channel: codebasics
109,044
1.9k

In this video we will implement a simple neural network with single neuron from scratch in python. This is also an implementation of a logistic regression in python from scratch. You know that logistic regression can be thought of as a simple neural network. The pre requisite for this tutorial is the previous tutorial on gradient descent (link below). We will be using gradient descent python funciton written in previous video to implement our own custom neural network class.

Watch previous video on gradient descent:    • Gradient Descent For Neural Network |...  

Code of this tutorial: https://github.com/codebasics/deep-le...

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Next video:    • Stochastic Gradient Descent vs Batch ...  

Previous video:    • Gradient Descent For Neural Network |...  

Deep learning playlist:    • Deep Learning With Tensorflow 2.0, Ke...  
Machine learning playlist : https://www.youtube.com/playlist?list...

Prerequisites for this series:   
1: Python tutorials (first 16 videos): https://www.youtube.com/playlist?list...  
2: Pandas tutorials(first 8 videos):    • Pandas Tutorial (Data Analysis In Pyt...  
3: Machine learning playlist (first 16 videos): https://www.youtube.com/playlist?list...

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