AWS Rekognition: Machine Learning Using Python Masterclass
AWS Rekognition: Machine Learning Using Python Masterclass
In the world of Artificial Intelligence and Machine Learning with Cloud Computing and Big Data - Learn AWS Rekognition: Machine Learning Using Python Masterclass step-by-step, complete hands-on - Bringing you the latest technologies with up-to-date knowledge.
[Latest Update] Note: Python 3.5.1 has been superseded by Python 3.5.6. Added new lectures
Are you new to AWS Rekognition and machine learning? Are you looking to enhance you skills within the AWS ecosystem or perhaps pursue AWS certifications? Look no further - learn the Use Python programming to extract text and labels from images using PyCharm, Boto3, and AWS Rekognition Machine Learning.
Gain Solid understanding and application of AWS Rekognition machine learning along with full Python programming introduction and advanced hands-on instruction.
Course Description
Welcome to AWS Rekognition: Machine Learning Using Python Masterclass - A one of its kind course
It is not only a comprehensive course, you are will not find a course similar to this. The flipped classroom model with hand-on learning will help you experience direct into the course as your begin your learning journey.
Note: AWS Machine learning is not free. Please note that you may incur additional costs from AWS.
In this course, you'll learn and practice:
Successfully use Python to extract labels from images
Extract text from images using Python
Fundamentals of AWS Machine Learning
Gain solid understanding of AWS Rekognition
Python intro and advanced programming - all in one
PyCharm installation and configuration
Using Boto3: Coding in Python to detect objects, faces, and text from images, and much more....
In this course with over 18+ hours of hands-on instruction, you will also get complete resources, and code where applicable with this course! We've built this course with our Team ClayDesk of industry recognized developers and consultants to bring you the best of everything!
So, if you would like to:
prepare for the AWS certification exam, this course is for you
gain marketable skills as an IT expert and professional, this course is for you
This course is not designed for intermediate or advanced level students
This AWS Rekognition: Machine Learning Using Python Masterclass is exactly what you need, and more. You’ll even get a certification of completion
What out students say.
See what our students say “It is such a comprehensive course that I don’t need to take any other course but this one to learn all of Python intro and advanced concepts and then use Python code to work with AWS Rekognition - Absolutely worth it” - Vikram Sharma
“This is such an awesome course. I loved every bit of it – Wonderful learning experience!” Nancy Morgan.
Join thousands of other students and share valuable experience
Why take this course?
As a senior Project Manager & Web developer, managing and deploying enterprise level IT projects, along with a Microsoft Certified Systems Engineer & Trainer, my experience with AWS Rekognition, Python using PyCharm has been phenomenally great! I am excited to share my knowledge and transfer skills to my students.
Enroll now in AWS Rekognition: Machine Learning Using Python Masterclass today and revolutionize your learning. Stay at the cutting edge of enterprise cloud computing — and enjoy bigger, brighter opportunities.
See you in class
Syed & Team ClayDesk
Use Python programming to extract text and labels from images using Pycharm, Boto3, and AWS Rekognition Machine Learning
Url: View Details
What you will learn
- Successfully use Python to extract text from images and labels
- Fundamentals of AWS Machine Learning within AWS
- Gain solid understanding of AWS Rekognition
Rating: 4.55
Level: Beginner Level
Duration: 18.5 hours
Instructor: Syed Raza
Courses By: 0-9 A B C D E F G H I J K L M N O P Q R S T U V W X Y Z
About US
The display of third-party trademarks and trade names on this site does not necessarily indicate any affiliation or endorsement of hugecourses.com.
View Sitemap