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Learn Machine Learning on cloud with AWS SageMaker and No CODE Machine Learning with AWS SageMaker Canvas.

What you will learn

Fundamental concepts of Data Science and Machine Learning.

Basics of Cloud Computing.

Build complete Machine Learning Pipelines using AWS SageMaker.

No Code Machine Learning using AWS SageMaker Canvas.

Description

Are you someone who wants to start their journey with AWS SageMaker – a cloud based service for building and deploying powerful Machine Learning products, then this course is for you.

Machine Learning is the future one of the top tech fields to be in right now!Β  Machine Learning is widely adopted in Finance, banking, healthcare and technology. The field is exploding with opportunities and career prospects.


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AWS is the one of the most widely used cloud computing platforms in the world and several companies depend on AWS for their cloud computing purposes. AWS SageMaker is a fully managed service offered by AWS that allows data scientist and AI practitioners to train, test, and deploy AI/ML models quickly and efficiently.

What will you learn ?

  • Fundamental concepts of Data Science and Machine Learning.
  • Build Machine Learning Models locally using sklearn.
  • Model Evaluation metrics like accuracy, precision, MAE etc…
  • HyperParameter Optimization for better performance of ML models.
  • Basics of Cloud Computing.
  • What and Why of Cloud Computing.
  • What is AWS ?
  • Different Services provided by AWS.
  • AWS SageMaker – A complete solution to build and deploy powerful ML products on cloud.
  • Build in deploy Machine Learning Projects on Cloud.
  • Learn about powerful built in Machine Learning Algorithms in AWS SageMaker.
  • No CODE Machine Learning using AWS SageMaker Canvas.
  • AWS SageMaker marketplace – a place to buy state of the art pretrained ML models for direct use.
English
language

Content

Introduction

Introduction
Course Overview and Key Learning Outcomes

Machine Learning Concepts

Introduction to Machine Learning
Machine Learning Life Cycle
Regression in Machine Learning
Classification in Machine Learning
Machine Learning Pipeline
HyperParameter Tuning in Machine Learning
Model Evaluation Metrics

Cloud Computing

Introduction to Cloud Computing
How to get started with AWS
Different AWS services

AWS SageMaker

Introduction to AWS SageMaker
First ML Project on AWS SageMaker Notebook Instance
Built in Algorithms in Sagemaker
Linear Learner Practical Example
No Code ML using AWS SageMaker Canvas
AWS SageMaker MarketPlace