EdX

Authoritative AWS (edX)

Authoritative AWS (edX)

Master the core AWS services and architect secure, high-performance cloud solutions through this comprehensive, industry-recognized AWS certification training course. Gain in-depth knowledge of AWS core services like EC2, S3, VPC, and IAM - Master AWS networking and security best practices to deploy robust, compliant solutions.

Class Deals by MOOC List - Click here and see EdX's Active Discounts, Deals, and Promo Codes.

  • Learn advanced cloud architecture principles to design scalable, fault-tolerant systems - Explore AWS big data and machine learning services for data analytics workloads - Prepare for AWS Certified Solutions Architect - Professional and other AWS certifications - Get hands-on through integrated labs and projects using real AWS environments.

This course is part of the Introduction to Cloud Computing Professional Certificate.

What you'll learn
Fundamentals of cloud computing on AWS - Core AWS compute, storage, networking, and security services - AWS infrastructure setup and operations - Advanced VPC design and connectivity options - AWS security controls and compliance requirements - Detecting and mitigating cloud security threats - High availability and fault tolerance architecture patterns - Continuous integration, deployment, and automation - Data collection, storage, and processing on AWS - Building and deploying machine learning models

Syllabus

Foundations of AWS Introduction to cloud computing and foundational AWS services. Covers AWS operations and includes a graded quiz.
Networking Mastery on AWS Explores network design, implementation, management, security, compliance, and governance on AWS. Includes a graded quiz.
Fortifying Your Cloud: AWS Security Essentials Covers threat detection, logging and monitoring, infrastructure security, identity and access management, data protection, and management and security on AWS.
Architecting for Excellence: AWS Solutions Architect Pro Focuses on organizational complexity, designing new solutions, continuous improvement, and accelerating workload migration and modernization on AWS. Includes a graded quiz.
Unlocking Insights: AWS Data Analytics Specialty Covers data collection, storage and data management, processing, analysis and visualization, and security for data analytics on AWS. Includes a graded quiz.
Machine Learning Mastery on AWS Explores data engineering, exploratory data analysis, modeling, and ML implementation and operations on AWS. Includes a graded quiz.

Go to Class
MOOC List is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

Related Courses

Introduction to Cloud Computing (edX) EdX
IBM

Introduction to Cloud Computing (edX)

Master the core concepts in Cloud Computing, from service and deployment models, to cloud architecture, security, new technologies, and possible careers. This course introduces you to the core concepts of cloud computing. You will gain the foundational knowledge required for understanding cloud computing from both business and practitioner perspectives.

Self Paced
Self-Paced
Introduction to DevOps and Site Reliability Engineering (edX) EdX
Linux Foundation,LinuxFoundationX

Introduction to DevOps and Site Reliability Engineering (edX)

Learn how to start transforming your organization using the principles and practices of DevOps. As Agile practices started revolutionizing software development, there has been an increasing need to bridge the gap between faster development vs. slower deployment and operational practices. With its modern principles, practices and an array of state-of-the-art automation tools, DevOps provides a path to bring your operations into the Agile manifold, ultimately resulting in faster software delivery, without compromising on quality.

Self Paced
Self-Paced
R Data Science Capstone Project (edX) EdX
IBM

R Data Science Capstone Project (edX)

Apply various data analysis and visualization skills and techniques you have learned by taking on the role of a data scientist working with real-world data sets. In this capstone course, you will apply various data science skills and techniques that you have learned as part of the previous courses in the IBM Data Science with R or IBM Data Analytics with Excel and R Professional Certificate Programs.

Self Paced
Self-Paced
Dynamic Programming: Applications In Machine Learning and Genomics (edX) EdX
University of California, San Diego,UC San DiegoX

Dynamic Programming: Applications In Machine Learning and Genomics (edX)

Learn how dynamic programming and Hidden Markov Models can be used to compare genetic strings and uncover evolution. If you look at two genes that serve the same purpose in two different species, how can you rigorously compare these genes in order to see how they have evolved away from each other?

Self Paced
Self-Paced
CS50's Introduction to Artificial Intelligence with Python (edX) EdX
HarvardX,Harvard University

CS50's Introduction to Artificial Intelligence with Python (edX)

Learn to use machine learning in Python in this introductory course on artificial intelligence. AI is transforming how we live, work, and play. By enabling new technologies like self-driving cars and recommendation systems or improving old ones like medical diagnostics and search engines, the demand for expertise in AI and machine learning is growing rapidly. This course will enable you to take the first step toward solving important real-world problems and future-proofing your career.

Self Paced
Self-Paced
Statistical Inference and Modeling for High-throughput Experiments (edX) EdX
HarvardX,Harvard University

Statistical Inference and Modeling for High-throughput Experiments (edX)

A focus on the techniques commonly used to perform statistical inference on high throughput data. In this course you’ll learn various statistics topics including multiple testing problem, error rates, error rate controlling procedures, false discovery rates, q-values and exploratory data analysis. We then introduce statistical modeling and how it is applied to high-throughput data. In particular, we will discuss parametric distributions, including binomial, exponential, and gamma, and describe maximum likelihood estimation.

Self Paced
Self-Paced
Basics of Statistical Inference and Modelling Using R (edX) EdX
University of Canterbury,UCx

Basics of Statistical Inference and Modelling Using R (edX)

Learn why a statistical method works, how to implement it using R and when to apply it and where to look if the particular statistical method is not applicable in the specific situation. Basics of Statistical Inference and Modelling Using R is part one of the Statistical Analysis in R professional certificate.

Self Paced
Self-Paced