LIBRISTO
LIBROAMANTO
obrigatório
Faça parte de uma comunidade de amantes de livros de todo o mundo e tenha acesso a uma série de benefícios. Crie uma conta gratuitamente
0
Correio DHL 7.99 Correio DPD 4.49 Ponto DPD 3.99 Correio GLS 5.49 Correio MRW 5.49 Ponto GLS 4.49

Lessons Derived From Designing Data-Intensive Applications

A Deep Dive into the Themes of Resilience and Mental Fortitude

Língua InglêsInglês
Livro Capa mole
Livro Lessons Derived From Designing Data-Intensive Applications Deborah J. Street
Código Libristo: 52746461
Editoras Independently published, maio 2026
Lessons Derived From Designing Data-Intensive ApplicationsA deep technical and conceptual exploratio... Descrição completa
? points 37 b Novo Novo
15.14
Reabastecimento esperado Lançamento 04. 06. 2026

Até 30 dias para devoluções

Lessons Derived From Designing Data-Intensive Applications

  • A deep technical and conceptual exploration inspired by the principles in Designing Data-Intensive Applications, focusing on how modern systems handle scale, reliability, and complexity in the digital age
  • A structured breakdown of how data systems are built, maintained, and optimized, revealing the hidden architecture behind applications that power today's global digital infrastructure
  • Lessons on scalability, emphasizing how systems must be designed not just for current usage but for unpredictable future growth in users, data, and demand
  • A reflection on reliability, showing how resilient systems are engineered to continue functioning even when parts of the system fail or behave unexpectedly
  • Insights into maintainability, highlighting the importance of clean architecture, clear data models, and modular design to ensure long-term system health
  • Lessons on data modeling, showing how the structure of data directly influences performance, flexibility, and the ability to evolve applications over time
  • A deep dive into distributed systems, explaining how multiple machines work together to create the illusion of a single cohesive system
  • Lessons on consistency versus availability, exploring the trade-offs systems must make when balancing correctness of data with system uptime and responsiveness
  • Insights into fault tolerance, showing how systems anticipate failure as a normal condition rather than an exception to be avoided
  • A reflection on replication, demonstrating how copying data across systems improves durability, availability, and performance when properly managed
  • Lessons on partitioning (sharding), explaining how dividing data across multiple nodes enables systems to scale horizontally without collapsing under load
  • A focus on latency awareness, emphasizing how even small delays in data retrieval can significantly impact user experience and system efficiency
  • Insights into batch processing, showing how large datasets can be processed efficiently in groups rather than individual real-time operations
  • Lessons on stream processing, highlighting how real-time data handling enables immediate insights, alerts, and responsive application behavior
  • A reflection on system design trade-offs, showing that engineering is often about balancing competing priorities rather than achieving perfection in all areas
  • Lessons on observability, emphasizing the importance of logs, metrics, and tracing in understanding how systems behave in real-world conditions
  • A deep exploration of data integrity, showing how systems must ensure accuracy, consistency, and trustworthiness even in complex distributed environments
  • Insights into abstraction layers, explaining how complexity is managed by separating concerns into different levels of system design
  • A reflection on failure scenarios, emphasizing the importance of designing systems that expect, detect, and recover from errors gracefully
  • Lessons on throughput optimization, showing how performance is measured not just by speed but by the volume of data processed effectively over time
  • A focus on communication between services, highlighting how APIs, protocols, and messaging systems form the backbone of distributed architectures
  • Insights into consistency models, explaining how different systems define and enforce the correctness of data in varying ways
  • A final insight that designing data-intensive applications is not just about technology, but about understanding trade-offs, anticipating failure, and building systems that remain reliable, scalable, and meaningful in an ever-growing digital world
Atriz & Poliglota
EWA KASP para
Reproduzir vídeo
Ewa Kasp
A Libristo tem a maior seleção de literatura estrangeira. É por isso que compro os meus livros aqui.

Sobre o livro

Nome completo Lessons Derived From Designing Data-Intensive Applications
Língua Inglês
Encadernação Livro - Capa mole
Data de emissão 2026
Número de páginas 78
EAN 9798195329761
Código Libristo 52746461
Peso 205
Dimensões 216 x 280 x 4
Ofereça este livro hoje
É fácil
1 Adicione ao carrinho e escolha Entregar como presente ao finalizar a compra 2 Receberá um vale 3 O livro chegará ao endereço do destinatário

Iniciar sessão

Inicie sessão na sua conta. Não tem uma conta Libristo? Crie uma agora!

 
obrigatório
obrigatório

Não tem uma conta? Descubra os benefícios de ter uma conta Libristo!

Com uma conta Libristo, terá tudo sob controlo.

Crie uma conta Libristo
Conselheiro de livros Libroamiko
Olá, sou o Libroamiko, posso ajudar?