Book Image

Cloud Analytics with Microsoft Azure - Second Edition

By : Has Altaiar, Jack Lee, Michael Peña
Book Image

Cloud Analytics with Microsoft Azure - Second Edition

By: Has Altaiar, Jack Lee, Michael Peña

Overview of this book

Cloud Analytics with Microsoft Azure serves as a comprehensive guide for big data analysis and processing using a range of Microsoft Azure features. This book covers everything you need to build your own data warehouse and learn numerous techniques to gain useful insights by analyzing big data. The book begins by introducing you to the power of data with big data analytics, the Internet of Things (IoT), machine learning, artificial intelligence, and DataOps. You will learn about cloud-scale analytics and the services Microsoft Azure offers to empower businesses to discover insights. You will also be introduced to the new features and functionalities added to the modern data warehouse. Finally, you will look at two real-world business use cases to demonstrate high-level solutions using Microsoft Azure. The aim of these use cases will be to illustrate how real-time data can be analyzed in Azure to derive meaningful insights and make business decisions. You will learn to build an end-to-end analytics pipeline on the cloud with machine learning and deep learning concepts. By the end of this book, you will be proficient in analyzing large amounts of data with Azure and using it effectively to benefit your organization.
Table of Contents (7 chapters)

DataOps

In order to be efficient and agile with implementing data analytics in your company, you need the right culture and processes. This is where the concept of DataOps comes in. DataOps removes the co-ordination barrier between data (analysts, engineers, and scientists) and operations (administrators and operations managers) teams in order to achieve speed and accuracy in data analytics.

DataOps is about a culture of collaboration between different roles and functions. Data scientists have access to real-time data to explore, prepare, and serve results. Automated processes and flows prove invaluable to this collaborative effort between analysts and developers, as they provide easy access to data through visualization tools. Relevant data should be served to end users via web or mobile applications; this is usually possible with an Application Programming Interface (API). For CEOs, DataOps means faster decision-making, as it allows them to monitor their business at a high level without waiting for team leaders to report. Figure 1.1 tries to explain the idea of a collaborative DataOps culture:

The DataOps process

Figure 1.1: The DataOps process

Once a team attains the desired speed and accuracy in testing their hypotheses (such as the likelihood of someone buying a product based on their characteristics and behavior), they are able to derive better insights. Once there are better insights, there are more actionable and reasonable decision points for business stakeholders that minimize risks and maximize profits.