Data Engineering And Business Intelligence For Scalable Solutions

Download Data Engineering And Business Intelligence For Scalable Solutions PDF/ePub or read online books in Mobi eBooks. Click Download or Read Online button to get Data Engineering And Business Intelligence For Scalable Solutions book now. This website allows unlimited access to, at the time of writing, more than 1.5 million titles, including hundreds of thousands of titles in various foreign languages.
Data Engineering and Business Intelligence for Scalable Solutions

Author: RAVI KIRAN PAGIDI PROF.(DR.) VISHWADEEPAK SINGH BAGHELA
language: en
Publisher: DeepMisti Publication
Release Date: 2024-12-22
In the dynamic realm of data engineering and business intelligence, scalability is no longer a luxury but a necessity for organizations aiming to thrive in today’s data-driven world. This book, Data Engineering and Business Intelligence for Scalable Systems, is crafted to address the challenges and opportunities involved in designing, implementing, and managing scalable solutions that transform raw data into actionable insights. Our mission is to provide a comprehensive resource that bridges the gap between foundational principles and cutting-edge strategies, equipping readers with the knowledge to excel in this fast-evolving field. This book delves deeply into the methodologies, tools, and frameworks that underpin successful data engineering and business intelligence practices for scalable systems. From conceptualizing robust data pipelines to leveraging advanced analytics for decision-making, the content spans a wide range of topics tailored to meet the needs of students, data engineers, BI professionals, and organizational leaders. Through a balanced approach, we integrate theory with practical applications, offering readers actionable insights to tackle real-world challenges in data scalability and intelligence. The chapters are meticulously structured to provide both depth and breadth, covering topics such as data architecture design, ETL processes, cloud-based data warehousing, and real-time analytics. Furthermore, we explore the integration of machine learning into BI systems, the use of automation in data workflows, and the role of predictive modeling in crafting forward-looking business strategies. Special emphasis is placed on scalability, ensuring that the solutions discussed are adaptable to growing data volumes and evolving enterprise demands. We hope this book serves as a trusted guide for those aspiring to master the art and science of data engineering and business intelligence for scalable systems. May it inspire innovation, foster growth, and empower readers to design systems that stand at the forefront of technological and business advancements. Thank you for joining us on this transformative journey. Authors
Data Engineering for Cloud Applications: Leveraging Full-Stack Skills for Scalable Solutions

Author: AKASH BALAJI MALI PROF. (DR.) SUDEEPT SINGH YADAV
language: en
Publisher: DeepMisti Publication
Release Date:
In the rapidly evolving world of cloud computing, data engineering plays a pivotal role in building scalable, efficient, and resilient applications. As organizations move their infrastructures to the cloud, the demand for professionals who can design, manage, and optimize data pipelines has surged. "Data Engineering for Cloud Applications: Leveraging Full-Stack Skills for Scalable Solutions" aims to bridge the gap between traditional data engineering practices and the modern demands of cloud-native environments. This book is written for developers, engineers, and architects who want to harness the power of cloud platforms while leveraging their full-stack skills to create scalable, high-performance applications. The integration of cloud technologies such as AWS, Azure, and Google Cloud with data engineering practices enables organizations to manage vast amounts of data effectively, streamline their workflows, and enhance decision-making capabilities. Through practical insights, hands-on examples, and industry best practices, this book guides you through the entire data engineering lifecycle in the cloud, from ingestion to processing and storage. Emphasis is placed on optimizing data flows, reducing latency, and maintaining data integrity across distributed systems. Whether you're working with relational databases, NoSQL systems, or big data solutions, this book offers the tools and techniques necessary to build applications that scale with your business needs. Moreover, this book highlights the synergy between cloud architecture and full-stack development, demonstrating how data engineers can collaborate with front-end and back-end developers to create end-to-end solutions. By the end, you will have a deep understanding of cloud data engineering, allowing you to design robust, scalable solutions that meet the demands of modern businesses in an increasingly data-driven world. Thank you for embarking on this journey with us. Authors
DATA THAT DRIVES: ENGINEERING BI AND ETL FOR BUSINESS TRANSFORMATION

Author: Dhaval Patolia
language: en
Publisher: Xoffencer International Book Publication House
Release Date: 2025-05-23
Business Intelligence (BI) and Extract, Transform, and Load (ETL) procedures are becoming more important to organisations in today's data- driven economy. These processes are used to drive strategic decision-making and obtain a competitive edge. Within the context of facilitating business transformation, this chapter offers an examination of the crucial role that developing effective BI and ETL frameworks plays. Business intelligence systems are able to transform raw data into actionable insights that can be used to improve operational efficiency, customer engagement, and innovation. This is accomplished via the systematic collection, processing, and analysis of massive amounts of heterogeneous data and information. An emphasis is placed in the research on the architectural design of ETL pipelines that are scalable, adaptable, and real-time. These pipelines should guarantee that data is of high quality, consistent, and timely. It analyses contemporary data engineering approaches such as API integration, Change Data Capture (CDC), and stream processing, all of which make it possible to consume and convert data from a variety of sources in a seamless manner. In addition to this, the study emphasises the use of sophisticated analytics and visualisation technologies that provide stakeholders at all levels of the organisation additional leverage. This chapter explains, through the use of case studies and best practices, how well-engineered business intelligence (BI) and enterprise transaction flow (ETL) systems not only increase the accuracy of reporting and forecasting, but also allow proactive business plans, agile reactions to changes in the market, and continuous development. The results highlight how important it is to achieve alignment between data engineering and business objectives, governance regulations, and new technologies like as machine learning and cloud computing. The purpose of this work is to provide a thorough guide for data engineers, business analysts, and decision-makers who are interested in maximising the potential of their data assets in order to achieve real business change.