Skocz do zawartości

Aktywacja nowych użytkowników
Zakazane produkcje

  • advertisement_alt
  • advertisement_alt
  • advertisement_alt

Znajdź zawartość

Wyświetlanie wyników dla tagów 'Denormalization' .



Więcej opcji wyszukiwania

  • Wyszukaj za pomocą tagów

    Wpisz tagi, oddzielając je przecinkami.
  • Wyszukaj przy użyciu nazwy użytkownika

Typ zawartości


Forum

  • DarkSiders
    • Regulamin
    • Dołącz do Ekipy forum jako
    • Ogłoszenia
    • Propozycje i pytania
    • Help
    • Poradniki / Tutoriale
    • Wszystko o nas
  • Poszukiwania / prośby
    • Generowanie linków
    • Szukam
  • DSTeam no Limits (serwery bez limitów!)
  • Download
    • Kolekcje
    • Filmy
    • Muzyka
    • Gry
    • Programy
    • Ebooki
    • GSM
    • Erotyka
    • Inne
  • Hydepark
  • Archiwum
  • UPandDOWN-Lader Tematy

Szukaj wyników w...

Znajdź wyniki, które zawierają...


Data utworzenia

  • Od tej daty

    Do tej daty


Ostatnia aktualizacja

  • Od tej daty

    Do tej daty


Filtruj po ilości...

Dołączył

  • Od tej daty

    Do tej daty


Grupa podstawowa


AIM


MSN


Website URL


ICQ


Yahoo


Jabber


Skype


AIM


MSN


Website URL


ICQ


Yahoo


Jabber


Skype


Gadu Gadu


Skąd


Interests


Interests


Polecający

Znaleziono 1 wynik

  1. Free Download Data Denormalization In Modern System Design Published 10/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 626.80 MB | Duration: 0h 37m The myth of normalization and how denormalized views powered by event driven or batch processing architecture can help What you'll learn What is a normalized dataset Where normalization falls short and why is normalization a myth The concept of denormalized views How to implement denormalized views with event driven (streaming) workflows The pitfalls of event driven (streaming) replication to your denormalized view How to implement denormalized views with batch processing workflows The pitfalls of batch processing replication to your denormalized view Tradeoffs of denormalized views When should you really consider denormalized views Gain a new perspective in your existing microservice architecture Requirements High level understanding of backend system design High level understanding of databases High level understanding of microservice architecture and distributed systems Description We will dive deep into the cutting-edge world of modern database and software engineering, where traditional data normalization is increasingly giving way to more powerful techniques: denormalized views.Whether you're struggling with slow queries, high latency, or scaling data for millions of users, this series will teach you how to harness the true potential of denormalized views.We'll break down complex concepts in simple terms, showing you how modern views replicate and transform data for specific use cases, reduce the need for real-time processing, and improve overall performance. We'll cover how to implement such denormalization process, from using event-driven architecture to using batch processing instead and materialized views. We'll talk about denormalization techniques, and how to map and handle all of the many edge cases they will bring about.In this course, I want to challenge the way we think about databases and system design. In the past, normalization -structuring data into its smallest parts, and forbidding data duplication- was the golden rule for optimizing databases. But nowadays things have changed. When we're dealing with massive amounts of data, oftentimes normalization can actually slow us down.What if there was another approach? I'll show how effective denormalization of your data to what I call "denormalized views" can help provide an alternative solution to complete normalization. We'll demonstrate how replicating your data in a new denormalized format, designed for fast read access for a specific use case, can help you solve a new class of problem you weren't able to serve before because of performance reasons. Perhaps this is about a specific process in your organisation that is taking increasingly longer and more resources to be scaled and that needs to be rethought as soon as possible. Perhaps a new feature request that your team wasn't able to prioritize because there was no known solution to the problem at hand. Either way, this approach to system design is potentially one solution to your problems.Whether you're a backend engineer, system architect, or just someone curious about database performance, this series will arm you with the knowledge to design faster, more scalable, and more reliable systems. Learn how today's largest platforms - from Netflix to Facebook - use these principles to handle massive data volumes and power seamless user experiences. Overview Section 1: Normalization and its tradeoffs Lecture 1 The Myth of Normalization Lecture 2 What is Normalization? What are its tradeoffs? Section 2: What are Denormalized Views? Lecture 3 The Denormalized View Concept Lecture 4 Caching Denormalized views Section 3: Implementing Denormalized Views Lecture 5 Implementing Denormalized Views Replication Workflows Lecture 6 The complexities of Batch Processing Lecture 7 The complexities of Event-Driven Workflows Section 4: Tradeoffs and conclusion Lecture 8 Trade-offs and Conclusion Section 5: Examination Junior to Senior Software engineers with some professional experience in backend software engineering,Senior+ software engineers looking to challenge their views on distributed systems Screenshot Homepage https://www.udemy.com/course/data-denormalization-in-modern-system-design/ Rapidgator https://rg.to/file/06d48b85a3fa1f82c40c7ad09147a4a3/zpvxb.Data.Denormalization.In.Modern.System.Design.rar.html Fikper Free Download https://fikper.com/l3uxPKzR85/zpvxb.Data.Denormalization.In.Modern.System.Design.rar.html No Password - Links are Interchangeable
×
×
  • Dodaj nową pozycję...

Powiadomienie o plikach cookie

Korzystając z tej witryny, wyrażasz zgodę na nasze Warunki użytkowania.