
LinkedIn – Deep Learning: Image Recognition 2024-8
Published on: 2024-09-22 20:32:46
Categories: 28
Description
Deep Learning: Image Recognition course. This course will help you stay ahead in the fast-paced world of technology, especially in the field of artificial intelligence. By learning the basic concepts of image recognition using deep learning, you can play an active role in various projects, such as building facial recognition applications to developing smart surveillance systems. In this course, you will learn the basics of image recognition using deep learning and be able to build your own image recognition models. By learning this valuable skill, you can contribute to various projects that require image processing and create new innovations.
What you will learn in this course:
- Training a computer to recognize images: Learn how to teach a computer to recognize images and distinguish between them.
- Prepare images for AI: Learn how to prepare images for use in AI models.
- Building Face Recognition Systems: Learn how to build systems that can recognize people from images.
- Troubleshooting common problems: Learn about common problems you may encounter while building image recognition models and learn how to solve them.
- Creativity with images and artificial intelligence: Learn how to use artificial intelligence to create creative images.
Who is this course suitable for:
- People who want to work in artificial intelligence and machine learning.
- Developers who want to improve their image processing skills.
- People who are looking to learn a new and practical skill.
Deep Learning: Image Recognition course specifications
- Publisher: LinkedIn
- Lecturer: Isil Berkun
- Training level: beginner to advanced
- Training duration: 2 hours and 14 minutes
Course headings

Course images

Sample video of the course
Installation guide
After Extract, view with your favorite Player.
Subtitle: English
Quality: 720p
download link
Download file – 363 MB
File(s) password: www.downloadly.ir
File size
363 MB
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