talk-data.com talk-data.com

Topic

Logstash

log_processing data_processing elk_stack

2

tagged

Activity Trend

1 peak/qtr
2020-Q1 2026-Q1

Activities

Showing filtered results

Filtering by: Bahaaldine Azarmi ×
Learning Kibana 5.0

Learning Kibana 5.0 is your gateway to mastering the art of data visualization using the powerful features of the Kibana platform. This book guides you through the process of creating stunning interactive dashboards and making data-driven insights accessible with real-time visualizations. Whether you're new to the Elastic stack or seeking to refine your expertise, this book equips you to harness Kibana's full potential. What this Book will help me do Build robust, real-time dashboards in Kibana to visualize complex datasets efficiently. Leverage Timelion to perform time-series data analysis and create metrics-based dashboards. Explore advanced analytics using the Graph plugin to uncover relationships and correlations in data. Learn how to create and deploy custom plugins to tailor Kibana to specific project needs. Understand how to use the Elastic stack to monitor, analyze, and optimize various types of data flows. Author(s) Bahaaldine Azarmi is a seasoned expert in the Elastic stack, known for his dedication to making complex technical topics approachable and practical. With years of experience in data analytics and software development, Bahaaldine shares not only his technical expertise but also his passion for helping professionals achieve their goals through clear, actionable guidance. His writing emphasizes hands-on learning and practical application. Who is it for? This book is perfect for developers, data visualization engineers, and data scientists who aim to hone their skills in data visualization and interactive dashboard development. It assumes a basic understanding of Elasticsearch and Logstash to maximize its practicality. If you aim to advance your career by learning how to optimize data architecture and solve real-world problems using the Elastic stack, this book is ideal for you.

Scalable Big Data Architecture: A Practitioner’s Guide to Choosing Relevant Big Data Architecture

This book highlights the different types of data architecture and illustrates the many possibilities hidden behind the term "Big Data", from the usage of No-SQL databases to the deployment of stream analytics architecture, machine learning, and governance. Scalable Big Data Architecture covers real-world, concrete industry use cases that leverage complex distributed applications , which involve web applications, RESTful API, and high throughput of large amount of data stored in highly scalable No-SQL data stores such as Couchbase and Elasticsearch. This book demonstrates how data processing can be done at scale from the usage of NoSQL datastores to the combination of Big Data distribution. When the data processing is too complex and involves different processing topology like long running jobs, stream processing, multiple data sources correlation, and machine learning, it’s often necessary to delegate the load to Hadoop or Spark and use the No-SQL to serve processed data in real time. This book shows you how to choose a relevant combination of big data technologies available within the Hadoop ecosystem. It focuses on processing long jobs, architecture, stream data patterns, log analysis, and real time analytics. Every pattern is illustrated with practical examples, which use the different open sourceprojects such as Logstash, Spark, Kafka, and so on. Traditional data infrastructures are built for digesting and rendering data synthesis and analytics from large amount of data. This book helps you to understand why you should consider using machine learning algorithms early on in the project, before being overwhelmed by constraints imposed by dealing with the high throughput of Big data. Scalable Big Data Architecture is for developers, data architects, and data scientists looking for a better understanding of how to choose the most relevant pattern for a Big Data project and which tools to integrate into that pattern.