Image de Google Jackets
Vue normale Vue MARC vue ISBD

Data Engineering with AWS A practical guide to building scalable and secure enterprise data platforms (English Edition) ['Kumar Jha, Sanjiv']

Par : Contributeur(s) : Type de matériel : TexteTexteÉditeur : BPB Publications 2025Description : pType de contenu :
Type de média :
Type de support :
ISBN :
  • 9789365890969
Sujet(s) :
Ressources en ligne : Abrégé : DescriptionData engineering and AWS form the backbone of modern enterprise data architecture, enabling organizations to harness the exponential growth of data for competitive advantage. As businesses generate petabytes of information daily, the ability to build scalable, secure, and cost-effective data platforms has become critical for survival in today's data-driven economy.This comprehensive guide takes you through the complete journey of building enterprise-grade data platforms on AWS. You will understand data lake foundations with S3, implement real-time streaming with Kinesis, and optimize batch processing using Glue. The book covers advanced topics, including data warehouse engineering with Redshift, modern architectural patterns like data mesh, and cross-boundary data sharing strategies. The guide explores the GenAI revolution transforming data platforms from human-centric to AI-native systems, covering enhanced medallion architectures that serve both traditional analytics and generative AI workloads.By the end of this book, you will be able to design and build scalable, secure, and cost-effective data platforms on AWS. You will master the skills to process massive datasets, implement enterprise-grade security, and architect solutions for real-time analytics and ML workflows, ultimately driving significant business value.What you will learn? Build petabyte-scale data lakes using S3 and Lake Formation.? Implement real-time streaming pipelines with Kinesis and Lambda.? Design cost-optimized data warehouses using Amazon Redshift.? Create modern data mesh architectures on AWS.? Master DataOps practices with CI/CD and IaC.? Architect GenAI-native platforms with enhanced medallion architectures.? Integrate ML pipelines using SageMaker and Glue.? Implement enterprise security and governance strategies.Who this book is forThis book is ideal for data engineers, cloud architects, DevOps engineers, and solutions architects building data platforms on AWS. Data scientists, ML engineers, and technical managers seeking to understand modern data infrastructure implementation will also find immense value.Table of Contents1. Modern Data Engineering Landscape2. Building Data Lake Foundations3. Data Formats and Storage Optimization4. Real-time Data Ingestion and Streaming5. Batch Data Processing6. Data Transformation and Quality7. Data Warehouse Engineering with Redshift8. Modern Data Architecture Patterns9. Data Governance and Security10. Cross-boundary Data Sharing and Collaborations11. Analytics and Visualization12. Machine Learning Integration13. DataOps and Automation14. GenAI Revolution in Data Engineering15. Future-Proofing Data PlatformsAppendix: Performance Tuning Guide
Tags de cette bibliothèque : Pas de tags pour ce titre. Connectez-vous pour ajouter des tags.
Evaluations
    Classement moyen : 0.0 (0 votes)
Nous n'avons pas d'exemplaire de ce document

DescriptionData engineering and AWS form the backbone of modern enterprise data architecture, enabling organizations to harness the exponential growth of data for competitive advantage. As businesses generate petabytes of information daily, the ability to build scalable, secure, and cost-effective data platforms has become critical for survival in today's data-driven economy.This comprehensive guide takes you through the complete journey of building enterprise-grade data platforms on AWS. You will understand data lake foundations with S3, implement real-time streaming with Kinesis, and optimize batch processing using Glue. The book covers advanced topics, including data warehouse engineering with Redshift, modern architectural patterns like data mesh, and cross-boundary data sharing strategies. The guide explores the GenAI revolution transforming data platforms from human-centric to AI-native systems, covering enhanced medallion architectures that serve both traditional analytics and generative AI workloads.By the end of this book, you will be able to design and build scalable, secure, and cost-effective data platforms on AWS. You will master the skills to process massive datasets, implement enterprise-grade security, and architect solutions for real-time analytics and ML workflows, ultimately driving significant business value.What you will learn? Build petabyte-scale data lakes using S3 and Lake Formation.? Implement real-time streaming pipelines with Kinesis and Lambda.? Design cost-optimized data warehouses using Amazon Redshift.? Create modern data mesh architectures on AWS.? Master DataOps practices with CI/CD and IaC.? Architect GenAI-native platforms with enhanced medallion architectures.? Integrate ML pipelines using SageMaker and Glue.? Implement enterprise security and governance strategies.Who this book is forThis book is ideal for data engineers, cloud architects, DevOps engineers, and solutions architects building data platforms on AWS. Data scientists, ML engineers, and technical managers seeking to understand modern data infrastructure implementation will also find immense value.Table of Contents1. Modern Data Engineering Landscape2. Building Data Lake Foundations3. Data Formats and Storage Optimization4. Real-time Data Ingestion and Streaming5. Batch Data Processing6. Data Transformation and Quality7. Data Warehouse Engineering with Redshift8. Modern Data Architecture Patterns9. Data Governance and Security10. Cross-boundary Data Sharing and Collaborations11. Analytics and Visualization12. Machine Learning Integration13. DataOps and Automation14. GenAI Revolution in Data Engineering15. Future-Proofing Data PlatformsAppendix: Performance Tuning Guide

PLUDOC

PLUDOC est la plateforme unique et centralisée de gestion des bibliothèques physiques et numériques de Guinée administré par le CEDUST. Elle est la plus grande base de données de ressources documentaires pour les Étudiants, Enseignants chercheurs et Chercheurs de Guinée.

Adresse

627 919 101/664 919 101

25 boulevard du commerce
Kaloum, Conakry, Guinée

Réseaux sociaux

Powered by Netsen Group @ 2025