강의

멘토링

커뮤니티

AI Technology

/

Deep Learning & Machine Learning

[Tensorflow2] Complete conquest of Python deep learning - Latest techniques of GAN, BERT, RNN, CNN

This is a comprehensive deep learning project course that teaches the latest deep learning techniques, GAN, BERT, RNN, and CNN, while creating various useful projects based on Python and TensorFlow 2 along with theories.

(3.5) 20 reviews

366 learners

Level Intermediate

Course period Unlimited

  • nomad
Tensorflow
Tensorflow
Python
Python
Deep Learning(DL)
Deep Learning(DL)
Keras
Keras
Tensorflow
Tensorflow
Python
Python
Deep Learning(DL)
Deep Learning(DL)
Keras
Keras

Deep Learning Web Service Project 1 - Basics. Object Detect Defective Product Identification

Hello, Nomad Creator students?

Now that we're used to wearing masks, it seems like COVID-19 prevention has become a part of our daily lives. I hope you're all staying healthy.

I created a new course called ' Deep Learning Web Service Project 1 - Basics. Object Detect Defective Product Identification' .

We have summarized the techniques used to service deep learning using mobile web apps used in actual artificial intelligence image recognition projects. These days, many people want to service codes made with Python, TensorFlow, Keras, YOLO, and OpenCV directly on mobile.

We'll learn step by step how to make this.

[OpenCV] Python Deep Learning Image Processing Project - Find Son Heung-min! YOLO object recognition program created in the process

[OpenCV] Python Deep Learning Image Processing Project 2 - Find the Bad Apples! Using the Custom Yolo Model Created in the Process to Identify Bad Products

This is a service that identifies objects (Object Detection) by taking pictures directly from the desktop web or mobile app.

As a follow-up, we are also preparing a deep learning web service project that uses face recognition technology to identify faces, age, and gender and manage access.

Deep Learning Web Service Project 1 - Basics. Object Detect Defective Product Discrimination Please show lots of love!

Comment