Cloud Native AI and Machine Learning on AWS

Learn the specifics. Get your hands dirty. This AWI AI machine learning course makes upskilling feel like a chart-topping hit.

Lessons
Lab
TestPrep
AI Tutor (ऐड ऑन)
निःशुल्क परीक्षण प्राप्त करें

इस कोर्स के बारे में

Ready to master AWS AI services? This cloud native AWS AI and ML course gives you hands-on experience. 

Dive into real-world projects using Amazon SageMaker, Comprehend, Rekognition, and AutoML. Learn feature engineering and neural networks. Then, deploy models with SageMaker endpoints and serverless inference. 

कौशल जो आपको प्राप्त होंगे

  • ML Models: Master end-to-end pipelines using Amazon SageMaker, from data prep to production-ready deployments.
  • AI Workflows: Leverage AutoML (Canvas, Autopilot) and MLOps to streamline model training, tuning, and monitoring.
  • Engineer Smart Features: Transform raw data into powerful inputs with feature engineering for vision, NLP, and tabular datasets.
  • AWS AI Services: Integrate pre-trained models like Rekognition (CV), Comprehend (NLP), and Lookout (anomaly detection) into real-world apps.
  • Optimize Performance: Boost models with neural networks, distributed training, and elastic inference for cost-effective scaling.
  • Data Lakes: Design AWS-based data lakes for ML, ensuring security, reusability, and seamless hydration.

1

Preface

2

Introducing the ML Workflow

  • Introduction
  • Evolution of AI and ML
  • Approaching an ML problem
  • Overview of the ML workflow
  • Introducing AI and ML on AWS
  • Navigating the ML workflow
  • Conclusion
  • Points to Remember
3

Hydrating the Data Lake

  • Introduction
  • Lesson Scenario
  • The Data Lake
  • Securing your Buckets
  • Securing your Data Lake
  • Data Lakes for Machine Learning
  • The Importance of Hydration
  • Setting Up Your AWS Account
  • Starting Datasets
  • Streaming Data and the Data Lake
  • Uncovering Patterns
  • Amazon Athena
  • Conclusion
  • Points to Remember
4

Predicting the Future With Features

  • Introduction
  • Technical Requirements
  • Introducing feature engineering
  • Tokenize and remove punctuations
  • Feature engineering for computer vision
  • Resizing Images
  • Cropping and tiling images
  • Rotating images
  • Converting to grayscale
  • Converting to RecordIO format
  • Dimensionality reduction with Principal Component Analysis
  • Feature engineering for tabular datasets
  • Exploring the data
  • Imputing missing values
  • Feature selection
  • Feature frequency encoding
  • Target mean encoding
  • One hot encoding
  • Feature scaling
  • Feature normalization
  • Binning
  • Feature correlation
  • Principal Component Analysis
  • Conclusion
  • Points to Remember
5

Orchestrating the Data Continuum

  • Introduction
  • Demystifying the data continuum
  • Running feature engineering with AWS Glue ETL
  • Data profiling with AWS Glue DataBrew
  • Conclusion
  • Points to Remember
6

Casting a Deeper Net (Algorithms and Neural Networks)

  • Introduction
  • Introducing Algorithms and Neural networks
  • Simplifying the Algorithm versus Neural network conundrum
  • Building ML solutions with Algorithms and Neural Networks
  • Conclusion
  • Points to Remember
7

Iteration Makes Intelligence (Model Training and Tuning)

  • Introduction
  • The Meaning of Training
  • What Training Means for Deep Learning
  • GPU vs CPU
  • AWS Trainium
  • Transfer Learning
  • The Mise en Place of Model Training
  • Defining Model Training and Evaluation Metrics
  • Setting Up Model Hyperparameters
  • Script vs Container
  • Training Data Storage and Compute
  • Training Scenarios
  • Linear Regression
  • Natural Language Processing
  • Image Classification
  • Conclusion
  • Points to Remember
8

Let George Take Over (AutoML in Action)

  • Introduction
  • Running AutoML with SageMaker Canvas
  • Automated Hyperparameter Tuning
  • Using AutoGluon for AutoML
  • Conclusion
  • Points to Remember
9

Blue or Green (Model Deployment Strategies)

  • Introduction
  • Inference Options
  • Choosing your Compute
  • Amazon SageMaker Endpoint
  • Inference at the Edge
  • Deployment Mechanics
  • After the Deployment
  • Updating a Deployed Model
  • Conclusion
  • Points to Remember
10

Wisdom at Scale with Elastic Inference

  • Introduction
  • Understanding SageMaker ML Inference options
  • SageMaker endpoints for serverless inference
  • SageMaker transformer for batch inference
  • Running Inference with SageMaker Hosting
  • Inference with real-time endpoints
  • Inference with serverless endpoints
  • Inference with Batch Transform
  • Adding a SageMaker Elastic Inference (EI) accelerator
  • Conclusion
  • Points to Remember
11

Adding Intelligence with Sensory Cognition

  • Introduction
  • Introducing AWS AI services
  • Adding sensory cognition to your applications
  • Conclusion
  • Points to Remember
12

AI for Industrial Automation

  • Introduction
  • Overview of AI for Industrial Automation
  • Cost of Poor Quality or COPQ
  • Quality Control with Amazon Lookout for Vision
  • Predictive Analytics with Amazon Lookout for Equipment
  • Conclusion
  • Points to Remember
13

Operationalized Model Assembly (MLOps and Best Practices)

  • Introduction
  • Lesson Scenario
  • MLOps Defined
  • Orchestration Options
  • Phase Discrimination
  • Best Practices using the AWS Well-Architected Lens for Machine Learning
  • Conclusion

कोई प्रश्न? FAQ देखें

  Want to Learn More?

हमसे अभी संपर्क करें

AWS offers a suite of AI/ML services, including:

  • Amazon SageMaker: End-to-end platform for building, training, and deploying ML models.
  • AWS AI Services: Pre-trained models like Rekognition (CV), Comprehend (NLP), and Lex (chatbots) for ready-to-use AI solutions.
  • Amazon Bedrock: For generative AI applications using foundation models (e.g., Meta, Mistral AI).
  • AWS Trainium/Inferentia: Specialized infrastructure for cost-efficient ML training/inference.

Here are the best AWS certifications you can aim for: 

  • AWS Certified Machine Learning – Specialty: Best for hands-on ML engineers validating skills in model building, tuning, and deployment on AWS.
  • AWS Certified AI Practitioner: Foundational for non-technical roles (e.g., business analysts) to understand AI/ML concepts and AWS services.
  • AWS Certified Data Engineer – Associate: Complements ML workflows with data pipeline expertise.

Yes. AWS offers:

  • AWS Certified AI Practitioner (AIF-C01): Covers AI/ML fundamentals, generative AI, and AWS services like Bedrock and SageMaker. No technical prerequisites.
  • AWS Certified Machine Learning – Specialty: Advanced certification for ML engineers.

As of 2025, global average salaries for top AWS certs are:

Master Cloud Native AWS AI and ML

  Learn, build, deploy, and cash in on AWS AI and ML services. 

$279.99

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