Introduction to Machine Learning in AWS
Enroll in this course to learn the foundational concepts in Machine Learning in AWS with a demonstration. Understand cloud computing, cloud service providers, AWS, and machine learning concepts with the course for free online.
What you learn in Introduction to Machine Learning in AWS ?
About this Free Certificate Course
The course has been designed to make sure you learn everything there is to know about getting started with Machine Learning in AWS. This course begins by explaining what cloud computing is and then continues with different concepts such as cloud service providers, AWS, and machine learning. The course also includes a demonstration to help you understand the subject better. Complete the course and gain a certificate for free to showcase your expertise in the subject!
After you have completed this self-paced beginner-level guide to Machine Learning in AWS, you can continue your learning journey in this leading domain by registering for the Cloud Computing courses with millions of aspirants across the globe!
Course Outline
Through this AWS free course module, you will understand what Cloud Computing is in simple words and understand its benefits.
This chapter brings to your knowledge the different cloud service providers, the features, and compares between the offers they provide to their users.
This module briefs you quickly about AWS and its services. It discusses the cost, security, scalability, flexibility, availability and recovery features of AWS.
This module begins by defining machine learning. It then discusses how a machine understands the tasks with examples and explains supervised and unsupervised learning concepts in machine learning.
This section demonstrates each of the AWS components briefed in the previous chapter.
With this course, you get
Free lifetime access
Learn anytime, anywhere
Completion Certificate
Stand out to your professional network
1.5 Hours
of self-paced video lectures
Frequently Asked Questions
What are the prerequisites to learning this Machine Learning in AWS course?
This is a beginner-level course. So, you do not need to have any prior knowledge to learn this course. You can get started with the course and learn cloud computing and machine learning concepts to work with AWS.
How long does it take to complete this free Machine Learning in AWS course?
Although this Machine Learning in AWS is a 1.5 hours long course, you can learn it at your leisure since it is self-paced.
Will I have lifetime access to this free Machine Learning in AWS course?
Yes. Once you enroll in this free Machine Learning in AWS online course, you will have lifetime access to it.
What are my next learning options after this Machine Learning in AWS course?
After you have completed this free Machine Learning in AWS course, you can either learn other concepts in cloud computing individually, or you can register for the PG in Cloud Computing and master them all under a single roof.
Why is it essential to learn Machine Learning for Cloud Computing?
Cloud computing allows users to deal with machine learning features without having highly developed data science expertise. It facilitates enterprises to experiment with different machine learning technologies quickly and scales up as projects are put into production and demand rises. The cloud enables access to intelligent capabilities without requiring highly developed artificial intelligence or data science expertise.
Success stories
Can Great Learning Academy courses help your career? Our learners tell us how.And thousands more such success stories..
Related Cloud Computing Courses
Popular Upskilling Programs
Explore new and trending free online courses
Relevant Career Paths >
Machine Learning in AWS
What is Amazon Machine Learning?
Amazon Machine Learning is a widely acceptable and reliable product of Amazon Web Services. This domain of AWS allows its users to implement machine learning models quickly and easily. This service of AWS turns out to be very profitable for companies by giving them an integrated platform to enhance their business and product performance. Amazon Machine Learning empowers the developers to analyze audience data patterns via algorithms and deploy mathematical models accordingly. It further helps them in the development and implementation of predictive applications. A Machine learning in aws course can give you clear insights into the Machine Learning services of AWS and help you garner better job opportunities.
AWS Machine Learning encompasses a vast multitude of tools and services. These AWS machine learning services that enable companies or individuals to devise ML models for all kinds of applications are Amazon Augmented AI, Amazon CodeGury, Amazon Comprehend, Amazon Forecast, Amazon HealthLake, etc. AWS has curated a platform, including courses like machine learning aws certification, aws AI, to name a few, for those who want to master AWS.
What is Machine Learning?
Machine Learning (ML) is a typical and interesting branch of Artificial Intelligence that deals with training software applications to predict results as accurately as possible. It focuses on developing algorithms or models that take historical data as input to give new predictions, refraining from the need for explicit programming. In simple words, we can say that Machine Learning is about making the machines/software applications learn how to make intelligent predictions or decisions with minimal human intervention. In technical terms, we can express it as a data analysis method to automate analytical model building.
Machine Learning technology is all about training computers or software applications to make predictions on the basis of past data like a human brain. When working on a Machine Learning model, a given dataset is divided into two parts, the first one is referred to as training data, and the second is referred to as test data. The former is used for training the ML algorithms, whereas the latter is used for testing the accuracy of the algorithm. For training an ML model, input is fed to get the output in accordance with the applied algorithm. Until the outcome of the model comes out true, we give feedback to the model so that the model can learn from it and predict the result accurately. The more data, the better will be the model, and the higher will be the accuracy. There are various types of ML algorithms that are implemented as per the project’s needs.
The three major classifications of Machine Learning include Supervised Learning, Unsupervised Learning, and Reinforcement Learning. The main difference between these three types of Machine Learning is as follows:
Supervised Learning: When we use ‘labeled’ data to train our ML model, it is known as Supervised Learning. On the basis of fed data, the machine learns which ‘feature’ is associated with which ‘label.’ The machine further uses this knowledge to predict the outcomes for the test data.
Unsupervised Learning: When a Machine Learning model studies the patterns of the training data to make predictions, instead of using any labeled data, it is known as Unsupervised Machine Learning. Such a Machine Learning algorithm examines the fed historical data to find any naturally occurring pattern. It then uses the pattern to predict the outcome for the test data.
Reinforcement Learning: When a model learns from the feedback received, it is known as Reinforcement Machine Learning. Here, if the model fails to predict the right outcome for the given data, feedback is given to it. Based on the feedback received, it learns about the model environment and improves its prediction accuracy.
Need of Machine Learning
The origins of Machine Learning were laid back by pattern recognition and the concept of computers performing a specific task without being programmed. The iterative aspect of ML helps the models to learn to adapt to new data by learning from past data. The evolution of Machine Learning has enabled the models to apply complex mathematical and statistical calculations to big data automatically repeatedly at a very high speed in recent developments.
The factors that serve as the fuel to the surging popularity of Machine Learning technology are – exponentially increasing volume of data, a growing variety of data, affordable data storage, and cheaper and effective computational processing. Machine Learning has opened up numerous profitable opportunities for business organizations. The aim is to make automatic models analyze the bulk of complex data to give accurate outcomes in less time. Such precise models help a company to observe the marketing trend and save from hidden risks, thereby improving profit chances. Machine Learning models bet on saving the two major wheels of this world – time and money. The current and future scope of Machine Learning is quite wide. From speech and image recognition to language translation to self-driving cars, Machine Learning covers all the substantial applications.
What is AWS?
The Amazon Web Services, abbreviated as AWS, is an on-demand cloud computing platform powered by Amazon.com that came into effect in the year 2006. It was initially built with the aim to facilitate the smooth running of its online retail operations when launched in 2002. Amazon was the first company to come up with such a cloud computing model to set unbeatable scalability standards in terms of providing compute power, storage, and throughput to its users.
AWS offers a splendid combination of Infrastructure as a Service (IaaS), and Platform as a Service (PaaS) packaged with Software as a Service (SaaS) to individuals, business organizations, and governments on a pay-as-you-go basis. Several data centers across the availability zones (AZs) in different regions across the globe contribute to the services offered. A cluster of AZs that are connected via low-latency network links in geographical proximity form a region.
There are a number of tools and solutions offered by AWS for different purposes to its clients. For example, AWS presents its users with highly helpful organizational tools like Database Storage, Compute Power, and Content Delivery, to name a few. AWS serves a variety of services across different domains; each can be configured as per the users’ demands. Different categories of services that AWS supports are as follows:
- Management
-
Compute
-
Data Management
-
Storage Management
-
Networking
-
Hybrid Cloud
-
Migration
-
Monitoring
-
Security
-
Big Data Management
-
Governance
-
Development Tools
-
Mobile Development
-
Messages & Notifications
-
Analytics
-
IOT
-
Blockchain
-
Artificial Intelligence
With the wide scope of Amazon Web Services (AWS), there are a number of training opportunities, including aws machine learning training. Even Amazon itself has specialized courses in distinct fields such as aws fundamentals, cloud computing, amazon machine learning course, and so on. For those seeking a career in the field of Machine Learning, aws certified machine learning course pays well.
Why AWS?
There is no second opinion when we say – ‘Whatever your business needs are, AWS has got you covered!’. AWS is trusted by almost every firm out there, and the reason is its splendid range of cost-effective services and solutions. It favors an organization by eliminating the costs for its up-front capital infrastructure. AWS helps you focus on your main business product development rather than overworking yourself to look out for other technological needs too. That being said, AWS shares a fine part of the burden in companies with a wide spectrum of entitled duties. It allows you to choose servers as per your workload.
AWS makes EC2 accessible to your business, thereby providing a virtual group of computers via the internet and global server farms, minimizing the job of hardware resources. It serves as a one-and-all solution for any enterprise, no matter whether it is a large scale or small scale.
Security, experience benefit, usage convenience, flexibility, and scalability are some of the greatest plus points of using AWS. Its advantages make it the number 1 choice for the companies out there when it comes to choosing a cloud development platform.
Top Competitors of AWS
Although AWS is dominating the market of cloud infrastructure providers by ruling across 190 countries, there are some top-notch competitors of AWS. The list of such 7 competitors goes as follows:
1.Google Cloud Platform (CGP)
2.Microsoft Azure
3.IBM Cloud
4.Oracle Cloud
5.VMware Cloud
6.Dell Technologies Cloud
7.Alibaba Cloud
Why learn Machine Learning in AWS?
As the Machine Learning technology is being leveraged for applications by the companies day by day, the cost, need for flexibility, and complexity involved is becoming the key hurdles. To bring everything at your ease, AWS offers a fully managed ML service in the form of Amazon Sage Maker. There is a wide variety of services to choose from for more customized ML projects in this AWS Machine Learning Infrastructure service. Owing to the great benefits of using AWS ML tools like Sage Maker, Amazon Lex, Amazon Polly, etc., the aws machine learning course is gaining high popularity. In order to keep up with the momentum of growing data, business needs, and competition, experts want to hire candidates with AWS machine learning certification. AWS eliminates the hindrance to adopting machine learning by facilitating the users with cost-effective and efficient options that are agile as well as easy to use.
About The Course
AWS, being one of the most sought-after skill sets, has laid the foundation of this introduction to machine learning in aws course. The learners will get to learn about cloud computing, various cloud service providers, AWS, and Machine Learning in this course. This course contains 1.5 hours of video content, inclusive of a demo in the final section of this course. There is a quiz at the end of the video lectures to test what you have learned in this course.
This introduction to machine learning in aws course will help beginners reach an intermediary level in their learning journey of AWS machine learning. The course curriculum has been designed by the experts to help the learners get a lucid introduction to machine learning in AWS. The basics of AWS serve as the only prerequisite for this course.
In this course, learners will get exposed to modern on-demand technical skills such as Data Science, Machine Learning, Cloud Computing, and AWS. You can avail your certificate from Great Learning on successfully completing the course. If you are concerned with AWS machine learning certification cost, this course is a must-have as it is absolutely free. Hurry and enroll yourselves right away!