AWS Associate Machine Learning Engineer Training Course Overview

AWS Associate Machine Learning Engineer Training Course Outline

Domain 1: Data Preparation for Machine Learning

  • Ingest and Store Data
  • Data Formats and Ingestion Mechanisms
  • How to Use the Core AWS Data Sources
  • How to Use AWS Streaming Data Sources to Ingest Data
  • AWS Storage Options, Including Use Cases and Tradeoffs
  • Transform Data and Perform Feature Engineering
  • Data Cleaning and Transformation Techniques
  • Feature Engineering Techniques
  • Encoding Techniques
  • Tools to Explore, Visualise, or Transform Data and Features
  • Services That Transform Streaming Data
  • Data Annotation and Labelling Services
  • Ensure Data Integrity and Prepare Data for Modelling
  • Pre-Training Bias Metrics for Numeric, Text, and Image Data
  • Strategies to Address CI in Numeric, Text, and Image Datasets
  • Techniques to Encrypt Data
  • Data Classification, Anonymisation, and Masking
  • Implications of Compliance Requirements

Domain 2: ML Model Development

  • Choose a Modelling Approach
  • Capabilities and Appropriate Uses of ML Algorithms to Solve Business Problems
  • How to Use AWS AI Services to Solve Specific Business Problems
  • How to Consider Interpretability During Model Selection or Algorithm Selection
  • SageMaker Built-In Algorithms and When to Apply Them
  • Train and Refine Models
  • Elements in the Training Process
  • Methods to Reduce Model Training Time
  • Factors That Influence Model Size
  • Methods to Improve Model Performance
  • Benefits of Regularisation Techniques
  • Hyperparameter Tuning Techniques
  • Model Hyperparameters and Their Effects on Model Performance
  • Methods to Integrate Models Built Outside SageMaker into SageMaker
  • Analyse Model Performance
  • Model Evaluation Techniques and Metrics
  • Methods to Create Performance Baselines
  • Methods to Identify Model Overfitting and Underfitting
  • Metrics Available in SageMaker Clarify to Gain Insights into ML Training Data and Models
  • Convergence Issues

Domain 3: Deployment and Orchestration of ML Workflows

  • Select Deployment Infrastructure Based on Existing Architecture and Requirements
  • Deployment Best Practices
  • AWS Deployment Services
  • Methods to Serve ML Models in Real Time and in Batches
  • How to Provision Compute Resources in Production and Test Environments
  • Model and Endpoint Requirements for Deployment Endpoints
  • How to Choose Appropriate Containers
  • Methods to Optimise Models on Edge Devices
  • Create and Script Infrastructure Based on Existing Architecture and Requirements
  • Difference Between On-Demand and Provisioned Resources
  • How to Compare Scaling Policies
  • Tradeoffs and Use Cases of IaC Options
  • Containerisation Concepts and AWS Container Services
  • How to Use SageMaker Endpoint Auto Scaling Policies to Meet Scalability Requirements
  • Use Automated Orchestration Tools to Set Up CI/CD Pipelines
  • Capabilities and Quotas for AWS CodePipeline, AWS CodeBuild, and AWS CodeDeploy
  • Automation and Integration of Data Ingestion with Orchestration Services
  • Version Control Systems and Basic Usage
  • CI/CD Principles and How They Fit into ML Workflows
  • Deployment Strategies and Rollback Actions
  • How Code Repositories and Pipelines Work Together

Domain 4: ML Solution Monitoring, Maintenance, and Security

  • Monitor Model Inference
  • Drift in ML Models
  • Techniques to Monitor Data Quality and Model Performance
  • Design Principles for ML Lenses Relevant to Monitoring
  • Monitor and Optimise Infrastructure and Costs
  • Key Performance Metrics for ML Infrastructure
  • Monitoring and Observability Tools to Troubleshoot Latency and Performance Issues
  • How to Use AWS CloudTrail to Log, Monitor, and Invoke Re-Training Activities
  • Differences Between Instance Types and How They Affect Performance
  • Capabilities of Cost Analysis Tools
  • Cost Tracking and Allocation Techniques
  • Secure AWS Resources
  • IAM Roles, Policies, and Groups That Control Access to AWS Services
  • SageMaker Security and Compliance Features
  • Controls for Network Access to ML Resources
  • Security Best Practices for CI/CD Pipelines

Show moredowndown

Who should attend this AWS Associate Machine Learning Engineer Training Course?

The AWS Associate Machine Learning Engineer Training Course is perfectly suited for individuals eager to deepen their expertise in machine learning and cloud computing within the AWS ecosystem. It is particularly beneficial for:

  • Data Scientists
  • Machine Learning Engineers
  • Cloud Architects
  • Software Engineers
  • IT Managers and Directors
  • System Administrators
  • Big Data Analysts
  • AI Research Scientists

Prerequisites of AWS Associate Machine Learning Engineer Training Course

There are no formal prerequisites to attend this AWS Associate Machine Learning Engineer Training Course.

AWS Associate Machine Learning Engineer Training Course Overview

AWS, or Amazon Web Services, is a comprehensive and widely adopted cloud platform that offers over 200 fully featured services from data centres globally. Its importance lies in its vast array of tools and capabilities that allow businesses to scale and grow by providing powerful computing power, database storage, and other functionality. For organisations, this training enhances their team's ability to effectively use AWS for innovative and efficient cloud solutions, reducing operational costs and improving system scalability. For individuals, the training offers the skills to confidently utilise AWS technologies, making them invaluable assets to their teams and enhancing job performance. Lastly, for delegates, this certification opens up numerous career opportunities, as AWS skills are highly sought after in the tech industry, potentially leading to higher job security and advancement prospects.

In this AWS Associate Machine Learning Engineer Training, delegates will gain comprehensive insights into the end-to-end processes of machine learning on the AWS platform. From data preparation, model building, and training to deployment and securing machine learning solutions, the course covers essential skills for effectively harnessing the power of AWS for machine learning projects. Delegates will explore various AWS services and tools that facilitate data handling, feature engineering, model evaluation, and the deployment of machine learning models in production environments.

Course Objectives

  • To understand AWS data ingestion and storage solutions
  • To apply feature engineering on diverse datasets
  • To develop and train machine learning models
  • To evaluate models using AWS SageMaker
  • To deploy models for batch and real-time processing
  • To manage and monitor machine learning solutions
  • To implement security best practices in AWS

After attending this training, delegates will be able to apply their knowledge to set up complete machine learning workflows on AWS. They will have the skills to choose the appropriate AWS tools for different stages of machine learning projects, from data collection and processing to training and deploying models.

Show moredowndown

What’s included in this AWS Associate Machine Learning Engineer Training Course? 

  • World-Class Training Sessions from Experienced Instructors   
  • AWS Associate Machine Learning Engineer Training Certificate 
  • Digital Delegate Pack 

Show moredowndown

Why choose us

Ways to take this course

Experience live, interactive learning from home with The Knowledge Academy's Online Instructor-led AWS Associate Machine Learning Engineer Training Course. Engage directly with expert instructors, mirroring the classroom schedule for a comprehensive learning journey. Enjoy the convenience of virtual learning without compromising on the quality of interaction.

live-classes

Live classes

Join a scheduled class with a live instructor and other delegates.

interactive

Interactive

Engage in activities, and communicate with your trainer and peers.

best-trainers

Global Pool of the Best Trainers

We handpick from a global pool of expert trainers for our Online Instructor-led courses.

enterprise

Expertise

With 10+ years of quality, instructor-led training, we equip professionals with lasting skills for success.

global

Global Reach

With classes running in all timezones, access any of our courses and course material from anywhere, anytime.

Unlock your potential with The Knowledge Academy's AWS Associate Machine Learning Engineer Training Course, accessible anytime, anywhere on any device. Enjoy 90 days of online course access, extendable upon request, and benefit from the support of our expert trainers. Elevate your skills at your own pace with our Online Self-paced sessions.

Experience the most sought-after learning style with The Knowledge Academy's AWS Associate Machine Learning Engineer Training Course. Available in 490+ locations across 190+ countries, our hand-picked Classroom venues offer an invaluable human touch. Immerse yourself in a comprehensive, interactive experience with our expert-led AWS Associate Machine Learning Engineer Training Course sessions.

best_trainers

Highly experienced trainers

Boost your skills with our expert trainers, boasting 10+ years of real-world experience, ensuring an engaging and informative training experience

venues

State of the art training venues

We only use the highest standard of learning facilities to make sure your experience is as comfortable and distraction-free as possible

small_classes

Small class sizes

Our Classroom courses with limited class sizes foster discussions and provide a personalised, interactive learning environment

value_for_money

Great value for money

Achieve certification without breaking the bank. Find a lower price elsewhere? We'll match it to guarantee you the best value

Streamline large-scale training requirements with The Knowledge Academy’s In-house/Onsite AWS Associate Machine Learning Engineer Training Course at your business premises. Experience expert-led classroom learning from the comfort of your workplace and engage professional development.

tailored_learning_experience

Tailored learning experience

Leverage benefits offered from a certification that fits your unique business or project needs

budget

Maximise your training budget

Cut unnecessary costs and focus your entire budget on what really matters, the training.

team_building

Team building opportunity

Our AWS Associate Machine Learning Engineer Training Course offers a unique chance for your team to bond and engage in discussions, enriching the learning experience beyond traditional classroom settings

monitor_progress

Monitor employees progress

The course know-how will help you track and evaluate your employees' progression and performance with relative ease

What our customers are saying

AWS Associate Machine Learning Engineer Training Course FAQs

Please arrive at the venue at 8:45am.
We are able to provide support via phone & email prior to attending, during and after the course.
Delegate pack consisting of course notes and exercises, Manual, Experienced Instructor, and Refreshments
This course is [ 3 ] day(s)
Once your booking has been placed and confirmed, you will receive an email which contains your course location, course overview, pre-course reading material (if required), course agenda and payment receipts
The Knowledge Academy is the Leading global training provider for AWS Associate Machine Learning Engineer Training Course.
Show more down

Why choose us

icon

Best price in the industry

You won't find better value in the marketplace. If you do find a lower price, we will beat it.

icon

Many delivery methods

Flexible delivery methods are available depending on your learning style.

icon

High quality resources

Resources are included for a comprehensive learning experience.

barclays Logo
deloitte Logo
Thames Water Logo

"Really good course and well organised. Trainer was great with a sense of humour - his experience allowed a free flowing course, structured to help you gain as much information & relevant experience whilst helping prepare you for the exam"

Joshua Davies, Thames Water

santander logo
bmw Logo
Google Logo
backBack to course information

Get a custom course package

We may not have any package deals available including this course. If you enquire or give us a call on 01344203999 and speak to our training experts, we should be able to help you with your requirements.

cross

BIGGEST
NEW YEAR SALE!

red-starWHO WILL BE FUNDING THE COURSE?

close

close

Thank you for your enquiry!

One of our training experts will be in touch shortly to go over your training requirements.

close

close

Press esc to close

close close

Back to course information

Thank you for your enquiry!

One of our training experts will be in touch shortly to go overy your training requirements.

close close

Thank you for your enquiry!

One of our training experts will be in touch shortly to go over your training requirements.