
Udemy – Convolutional Neural Networks in Python: CNN Computer Vision 2024-9
Published on: 2024-10-02 21:36:39
Categories: 28
Description
Course Convolutional Neural Networks in Python: CNN Computer Vision. This course will help you gain a deep understanding of Convolutional Neural Networks (CNN) and Deep Learning. You will implement a complete image recognition project from start to finish in Python. You will also learn how to use the Keras and TensorFlow libraries. This course is suitable for people looking for a career in data science, professionals who want to start their deep learning journey, and anyone who wants to take image recognition from beginner to mastery in a short period of time.
What you will learn in this course
- Comprehensive understanding of Convolutional Neural Networks (CNN) and Deep Learning
- Building a complete image recognition project from start to finish in Python
- Learn how to use the Keras and TensorFlow libraries
- Using artificial neural networks (ANN) for prediction
- Using pandas dataframes to manipulate data and perform statistical calculations
This course is suitable for people who
- Looking for a job in the field of data science
- Professionals who want to start their deep learning journey
- Anyone who wants to master image recognition from beginner level in a short period of time
Course specifications Convolutional Neural Networks in Python: CNN Computer Vision
- Publisher: Udemy
- Teacher: Start-Tech Academy
- Training level: beginner to advanced
- Training duration: 7 hours and 47 minutes
- Number of courses: 62
Course headings

Course prerequisites
- Students will need to install Python and Anaconda software but we have a separate lecture to help you install the same
Course images

Sample video of the course
Installation guide
After Extract, view with your favorite Player.
Subtitle: English
Quality: 720p
download link
Download part 1 – 1 GB
Download part 2 – 1 GB
Download part 3 – 367 MB
File(s) password: www.downloadly.ir
File size
2.3 GB
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