- Регистрация
- 27 Авг 2018
- Сообщения
- 37,779
- Реакции
- 542,130
- Тема Автор Вы автор данного материала? |
- #1
What you'll learn:
- You will gain first-hand experience on how to train, optimize, deploy, and integrate ML in AWS cloud
- AWS Built-in algorithms, Bring Your Own, Ready-to-use AI capabilities
- Complete Guide to AWS Certified Machine Learning – Specialty (MLS-C01)
- Includes a high-quality Timed practice test (a lot of courses charge a separate fee for practice test)
- Familiarity with Python
- AWS Account - I will walk through steps to setup one
- Basic knowledge of Pandas, Numpy, Matplotlib
- Be an active learner and use course discussion forum if you need help - Please don't put help needed items in course review
There are several courses on Machine Learning and AI. What is unique about this course?
Here are the top reasons:
1. Cloud-based machine learning keeps you focused on the current best practices.
2. In this course, you will learn the most useful algorithms. Don’t waste your time sifting through mountains of techniques that are in the wild
4. Cloud-based service is straightforward to integrate with your application and has support for a wide variety of programming languages.
5. Whether you have small data or big data, the elastic nature of the AWS cloud allows you to handle them all.
6. There is also No upfront cost or commitment – Pay only for what you need and use
Hands-on Labs
In this course, you will learn with hands-on labs and work on exciting and challenging problems
What exactly will you learn in this course?
Here are the things that you will learn in this course:
AWS SageMaker
* You will learn how to deploy a Notebook instance on the AWS Cloud.
* You will gain insight into algorithms provided by SageMaker service
* Learn how to train, optimize and deploy your models
AI Services
In the AI Services section of this course,
* You will learn about a set of pre-trained services that you can directly integrate with your application.
* Within a few minutes, you can build image and video analysis applications – like face recognition
* You can develop solutions for natural language processing, like finding sentiment, text translation, and conversational chatbots.
Integration
* Learning algorithms is one part of the story - You need to know how to integrate the trained models in your application.
* You will learn how to host your models, scale on-demand, handle failures
* Provide a clean interface for the applications using Lambda and API Gateway
Data Lake
* Data management is one of the most complex and time-consuming activities when working on machine learning projects.
* With AWS, you have a variety of powerful tools for ingesting, cataloging, transforming, securing, visualization of your data assets.
* We will build a data lake solution in this course.
Machine Learning Certification
* If you are planning to get AWS Machine Learning Specialty Certification, you will find all the resources that you need to pass the exam in this course.
* Timed Practice Exam and Quizzes
Source Code
* The source code for this course available on Git and that ensures you always get the latest code
Ideal Student
* The ideal student for this course is willing to learn, participate in the course Q&A forum when you need help, and you need to be comfortable coding in Python.
Author
My name is Chandra Lingam, and I am the instructor for this course.
I have over 50,000 thousand students
I spend a considerable amount of time keeping myself up-to-date and teach cloud technologies from the basics.
I have the following AWS Certifications: Solutions Architect, Developer, SysOps, Solutions Architect Professional, Machine Learning Specialty.
I am looking forward to meeting you.
Thank you!
Who this course is for:
- AWS Certified Machine Learning - Specialty Preparation
- This course is designed for anyone who is interested in AWS cloud based machine learning and data science
DOWNLOAD: