Lorsque vous vous inscrivez à ce cours, vous êtes également inscrit(e) à cette Spécialisation.
Apprenez de nouveaux concepts auprès d'experts du secteur
Acquérez une compréhension de base d'un sujet ou d'un outil
Développez des compétences professionnelles avec des projets pratiques
Obtenez un certificat professionnel partageable
Il y a 2 modules dans ce cours
AWS: Feature Engineering, Data Transformation & Integrity is the second course in the Exam Prep (MLA-C01): AWS Certified Machine Learning Engineer – Associate Specialization. This course enables learners to build essential skills in preparing and transforming data for machine learning workloads using AWS services. It provides a structured, hands-on understanding of data cleaning, feature engineering, encoding techniques, and scalable ETL workflows on AWS.
Learners will start by mastering data preparation techniques, including cleaning, transformation, and feature extraction. The course explores methods to improve model accuracy by engineering meaningful features and applying categorical encoding strategies such as One-Hot Encoding, Label Encoding, and Tokenization. Learners will also understand the importance of maintaining data integrity and fairness, addressing bias, and securely handling sensitive information (PII) using tools like AWS Glue DataBrew.
In the second module, learners will gain practical experience with AWS-native tools for scalable data engineering. This includes working with AWS Glue for ETL job orchestration, Glue Data Quality for dataset validation, and AWS Glue DataBrew for code-free data profiling and transformation. Learners will also dive into Amazon EMR, processing large-scale datasets using Apache Spark to build powerful, distributed data pipelines tailored for ML workflows.
The course is divided into two modules, each broken down into lessons and practical video walkthroughs. Learners can expect approximately 2.5 to 3 hours of video lectures, combining theoretical knowledge with hands-on guidance using AWS ML services. Each module also includes Graded and Ungraded Quizzes to reinforce understanding and assess readiness.
Module 1: Data Preparation & Transformation Techniques
Module 2: ETL & Data Engineering with AWS Glue and EMR
By the end of this course, learners will be able to:
- Clean, transform, and engineer data effectively for ML use cases
- Apply categorical encoding techniques for machine learning models
- Ensure fairness, integrity, and compliance in dataset preparation
- Use AWS Glue, Glue DataBrew, and EMR for scalable, production-ready data pipelines
This course is ideal for machine learning practitioners, data engineers, and developers with 6 months to 1 year of AWS experience. It is also valuable for learners preparing for the MLA-C01 exam who want to deepen their hands-on skills in data transformation, feature engineering, and large-scale ETL on AWS.
Welcome to Week 1 of the AWS: Feature Engineering, Data Transformation & Integrity course.
This week, you’ll dive into the foundational steps of preparing high-quality data for machine learning workflows. We’ll begin with data cleaning and transformation techniques to ensure consistency and accuracy in your datasets.
You’ll then explore feature engineering methods that help extract meaningful insights, followed by encoding techniques such as One-Hot Encoding, Label Encoding, and Tokenization to prepare categorical and textual data for modeling.
Finally, we’ll focus on ensuring data integrity and fairness by learning how to address bias in data preparation and securely handle sensitive information (PII) using tools like AWS Glue DataBrew.
Inclus
5 vidéos2 lectures2 devoirs1 sujet de discussion
Afficher les informations sur le contenu du module
5 vidéos•Total 31 minutes
Data cleaning and Transformation techniques•7 minutes
Addressing and Reducing Bias in Data Preparation•6 minutes
Handing PII in DataBrew•3 minutes
2 lectures•Total 60 minutes
Welcome to the Course•30 minutes
Overview of Data Preparation & Transformation Techniques•30 minutes
2 devoirs•Total 40 minutes
Data Preparation & Transformation Techniques - Assessment•20 minutes
Practical Data Preparation & Feature Engineering - Knowledge Check•20 minutes
1 sujet de discussion•Total 10 minutes
Meet and Greet•10 minutes
ETL & Data Engineering with AWS Glue and EMR
Module 2•4 heures à terminer
Détails du module
Welcome to Week 2 of the AWS: Feature Engineering, Data Transformation & Integrity course.
This week, you'll dive into AWS-native tools for large-scale data processing and transformation. We’ll begin with AWS Glue, where you'll learn how to create Glue Crawlers, configure ETL jobs, and validate outputs for structured and semi-structured data.
You'll explore AWS Glue DataBrew, a no-code tool that simplifies data profiling, cleaning, and transformation. We’ll also cover AWS Glue Data Quality to help ensure your datasets meet required standards for ML workflows.
In the second half of the week, you’ll work with Amazon EMR to process massive datasets using Apache Spark. You'll launch EMR clusters, submit jobs, and transform data at scale — gaining hands-on experience with distributed data pipelines tailored for machine learning tasks.
Inclus
10 vidéos3 lectures2 devoirs
Afficher les informations sur le contenu du module
10 vidéos•Total 76 minutes
AWS Glue Data Quality•5 minutes
AWS Glue•10 minutes
AWS Glue DataBrew•4 minutes
Perform ETL with AWS Glue - Create Glue Crawler•8 minutes
Run Glue Crawler & Create Glue Job•7 minutes
Validate the Output from Glue Job•2 minutes
Amazon EMR•9 minutes
Amazon EMR - Launch EMR Cluster•12 minutes
Amazon EMR - Submit Work & Validate•13 minutes
Transforming data using Spark on Amazon EMR•7 minutes
3 lectures•Total 90 minutes
Overview of ETL & Data Engineering with AWS Glue and EMR•30 minutes
Course Conclusion•30 minutes
What's Next ?•30 minutes
2 devoirs•Total 45 minutes
ETL & Data Engineering with AWS Glue and EMR - Assessment•20 minutes
Scalable ETL & Data Processing with AWS Glue & EMR - Knowledge Check•25 minutes
Obtenez un certificat professionnel
Ajoutez ce titre à votre profil LinkedIn, à votre curriculum vitae ou à votre CV. Partagez-le sur les médias sociaux et dans votre évaluation des performances.
Providing certification training since the year 2000, Whizlabs is the pioneer among online training providers across the globe. We are dedicated to helping you learn the skills you need to transform your career in the IT industry.
We provide certification training in the form of Video Courses, Practice Tests, Hands-on Labs and Sandbox in various disciplines such as Cloud Computing, DevOps, Cyber Security, Java, Big Data, Snowflake, CompTIA, Agile, Linux, CCNA, Blockchain, and much more.
Pour quelles raisons les étudiants sur Coursera nous choisissent-ils pour leur carrière ?
Felipe M.
Étudiant(e) depuis 2018
’Pouvoir suivre des cours à mon rythme à été une expérience extraordinaire. Je peux apprendre chaque fois que mon emploi du temps me le permet et en fonction de mon humeur.’
Jennifer J.
Étudiant(e) depuis 2020
’J'ai directement appliqué les concepts et les compétences que j'ai appris de mes cours à un nouveau projet passionnant au travail.’
Larry W.
Étudiant(e) depuis 2021
’Lorsque j'ai besoin de cours sur des sujets que mon université ne propose pas, Coursera est l'un des meilleurs endroits où se rendre.’
Chaitanya A.
’Apprendre, ce n'est pas seulement s'améliorer dans son travail : c'est bien plus que cela. Coursera me permet d'apprendre sans limites.’
When will I have access to the lectures and assignments?
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
What will I get if I subscribe to this Specialization?
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Is financial aid available?
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.