- Main
- Computers - Databases
- Computers - Applications & Software
- Building Real-Time Analytics Systems:...
Building Real-Time Analytics Systems: From Events to Insights with Apache Kafka and Apache Pinot
Mark NeedhamQuanto ti piace questo libro?
Qual è la qualità del file?
Scarica il libro per la valutazione della qualità
Qual è la qualità dei file scaricati?
Gain deep insight into real-time analytics, including the features of these systems and the problems they solve. With this practical book, data engineers at organizations that use event-processing systems such as Kafka, Google Pub/Sub, and AWS Kinesis will learn how to analyze data streams in real time. The faster you derive insights, the quicker you can spot changes in your business and act accordingly.
Author Mark Needham from StarTree provides an overview of the real-time analytics space and an understanding of what goes into building real-time applications. The book's second part offers a series of hands-on tutorials that show you how to combine multiple software products to build real-time analytics applications for an imaginary pizza delivery service.
You will:
• Learn common architectures for real-time analytics
• Discover how event processing differs from real-time analytics
• Ingest event data from Apache Kafka into Apache Pinot
• Combine event streams with OLTP data using Debezium and Kafka Streams
• Write real-time queries against event data stored in Apache Pinot
• Build a real-time dashboard and order tracking app
• Learn how Uber, Stripe, and Just Eat use real-time analytics
Author Mark Needham from StarTree provides an overview of the real-time analytics space and an understanding of what goes into building real-time applications. The book's second part offers a series of hands-on tutorials that show you how to combine multiple software products to build real-time analytics applications for an imaginary pizza delivery service.
You will:
• Learn common architectures for real-time analytics
• Discover how event processing differs from real-time analytics
• Ingest event data from Apache Kafka into Apache Pinot
• Combine event streams with OLTP data using Debezium and Kafka Streams
• Write real-time queries against event data stored in Apache Pinot
• Build a real-time dashboard and order tracking app
• Learn how Uber, Stripe, and Just Eat use real-time analytics
Anno:
2023
Edizione:
1
Casa editrice:
O’Reilly Media
Lingua:
english
Pagine:
221
ISBN 10:
1098138791
File:
PDF, 15.04 MB
I tuoi tag:
IPFS:
CID , CID Blake2b
english, 2023
Leggi Online
- Scaricare
- pdf 15.04 MB Current page
- Checking other formats...
- Convertire a
- Sbloccare file di conversione di dimensioni maggiori di 8 MB Premium
Il file verrà inviato al tuo indirizzo email. Ci vogliono fino a 1-5 minuti prima di riceverlo.
Entro 1-5 minuti il file verrà consegnato al tuo account Telegram.
Attenzione: assicurati di aver collegato il tuo account al bot Z-Library Telegram.
Entro 1-5 minuti il file verrà consegnato al tuo dispositivo Kindle.
Nota: devi verificare ogni libro che desideri inviare al tuo Kindle. Controlla la tua casella di posta per l'e-mail di verifica da Amazon Kindle Support.
La conversione in è in corso
La conversione in non è riuscita
Vantaggi dello status Premium
- Inviare a lettori di e-book
- Limite aumentato di download
- Converti i file
- Più risultati di ricerca
- Altri vantaggi