Description

Book Synopsis
Beginning-Intermediate user level

Table of Contents
​Chapter 1: Introduction and The Need of Data Lake

Chapter Goal: The chapter introduces the readers to the concept & need of a data lake in this big data environment.The chapter also covers how to create a data lake & architecture patterns to be followed for data lake analytics.

No of pages 15

Sub -Topics

1. Relational and non-relation data stores

2. Base for data: relational and non-relational databases

3. Warehouses of data: data warehouses

4. Markets for data: data marts

5. Introduction to data lake

6. Need to create a data lake

Chapter 2: Data Just Got Bigger

Chapter Goal: Today, enterprises have mix of relational and non-relational stores. However, when it comes to analyzing all this data – there must be a neutral platform which can understand these types of data. This introduces us to modern world concepts of distributed data storage & processing. It also talks about data sciences & machine learning concepts & how they are revolutionizing the data analysis world.

No of pages : 20

Sub - Topics:

1. Massively parallel processing, distributed data and spark the Hadoop

2. Distributed systems vs massively parallel processing systems (MPP)

3. Respective use cases for distributed and MPP systems

4. Science for data

5. Learning of machines

6. Overview of data analytics and advanced data analytics

Chapter 3: Emergence of Cloud Lakes

Chapter Goal: The chapter enlighten the users with multiple cloud-based technologies available which are scalable, agile and performance in terms of computation, storage & analytics options. It goes into details about the suggested architecture on Microsoft Azure to solve Modern data warehouse, analytics use cases.

No of pages: 20

Sub - Topics:

1. Data travels to Cloud with added benefits

2. Overview of phases of data analytics architecture

3. Available products under each phase on Microsoft Azure

Chapter 4: Phases in Managing Data Analytics Pipeline

Chapter Goal: This chapter covers in-depth context of this book. After we understand the background, this chapter will provide understanding of what are the phases of building entire data analytics pipeline. All the phases discussed in this book are critical to understand and any analytics solution will adhere to this common principle some way or the other. In each phase, there are different solutions to cater respective issues. It covers the data life cycle from upstream to downstream applications.

No of pages: 20

Sub - Topics:

1. Real time and batch mode data processing

2. Phases in data Management

· Ingest

· Store

· Analytics

· Visualization

3. Cloud data lake architecture patterns

Chapter 5: Data Ingestion in the Lake

Chapter Goal: The chapter talks about the limitations about the traditional storage & how the big data technologies has emerged as the champion in solving the limitations & changing the concepts of Extract, Transform & Load (ETL) to Extract, Load & Transform(ELT).

No of pages: 20

Sub - Topics:

1. Traditional limitations, can big data help?

2. ETL now becomes ELT

3. Tools in cloud for data ingestion

· Azure Data Factory on Microsoft Azure

· SQL server integration services on-premise

4. Overview of partner solutions for ETL/ELT – Informatica PowerEdge

Chapter 6: Data Storage & Farming

Chapter Goal: The chapter shares with readers that how once the data is available in storage layers, how it can be grown & real time data storage & analysis needs can be catered, it also talks about batch & real time data processing & storage.

No of pages: 20

Sub - Topics:

1. Grow the data

2. Role of Azure data lake store, Blob, relational and non-relational stores

3. Architecting the Lambda & Kappa

4. Manage storage for real time and batch processing

Chapter 7: Analyzing the Bigger Data in Real Time

Chapter Goal: Analysis of data is crucial for enterprises to get the business insights from the historic, present & future data to make descriptive, streaming & predictive analytics. In this chapter, we will specifically talk about real time analytics. Components required to perform real time analytics and how to optimize the cost using Azure PaaS solutions.

No of pages: 30

Sub - Topics:

1. Need of real time analytics

2. Approach to build data analytics on data lake for real time processing

3. Leverage event hubs/IOT hubs as a queuing solution on Azure

4. Why Edge computing and digital twins are gaining limelight

5. Choice between PaaS vs IaaS solution for streaming data processing

6. PaaS – stream analytics or spark streaming

7. Infuse R and Python on real-time data analytics pipelines

8. Use cases for real time analytics

Chapter 8: Analyzing the Bigger Data in Batch Mode

Chapter Goal: Analysis of data is crucial for enterprises to get the business insights from the historic, present & future data to make descriptive, streaming & predictive analytics. Analytics can help companies identify new business opportunities and revenue streams which results in an increase in profits, new customers, and improved customer service.

No of pages: 30

Sub - Topics:

9. Role of big data and massively parallel processing systems

10. Approach to build data analytics on data lake for batch processing

11. Approach to build data analytics solution for real time analytics

12. When to leverage HDInsight and Spark clusters

13. Infuse R and Python in data analytics pipelines

14. How it's different from conventional data warehousing and massively parallel processing solutions

15. Use cases for batch mode processing

Chapter 9: Visualization and Other Downstream Choices

Chapter Goal: Visualization of data is crucial for reporting& also to perform exploratory data analytics. The chapter talks about the visual elements like charts, graphs, and maps, data visualization tools which provide an accessible way to see and understand trends, outliers, and patterns in data

No of pages: 10

Sub - Topics:

1. Visualizations tools – Power BI

2. Downstream applications – LOB applications, notification applications

3. Choice of data stores for downstream applications – Cosmos DB, Azure SQL Database

Chapter 10: Summary of Data Lake components in Azure

Chapter Goal: The chapter takes a dig at multiple azure components which makes its easy to create an enterprise data lake in cloud & talks about in details the usage of each

No of pages: 20

Sub - Topics:

1. Azure data factory

2. Azure data lake storage

3. Azure HDInsight

4. Azure databricks

5. Azure data warehouse

6. Azure PowerBI

Chapter 11: Conclusion

Chapter Goal: The concluding chapter summarizes the information shared around the data lake in the book

No of pages: 5

Data Lake Analytics on Microsoft Azure A

    Product form

    £29.99

    Includes FREE delivery

    RRP £39.99 – you save £10.00 (25%)

    Order before 4pm today for delivery by Sat 27 Jun 2026.

    A Paperback / softback by Harsh Chawla, Pankaj Khattar

    1 in stock

      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of Data Lake Analytics on Microsoft Azure A by Harsh Chawla

      Publisher: APress
      Publication Date: 09/10/2020
      ISBN13: 9781484262511, 978-1484262511
      ISBN10: 1484262514

      Description

      Book Synopsis
      Beginning-Intermediate user level

      Table of Contents
      ​Chapter 1: Introduction and The Need of Data Lake

      Chapter Goal: The chapter introduces the readers to the concept & need of a data lake in this big data environment.The chapter also covers how to create a data lake & architecture patterns to be followed for data lake analytics.

      No of pages 15

      Sub -Topics

      1. Relational and non-relation data stores

      2. Base for data: relational and non-relational databases

      3. Warehouses of data: data warehouses

      4. Markets for data: data marts

      5. Introduction to data lake

      6. Need to create a data lake

      Chapter 2: Data Just Got Bigger

      Chapter Goal: Today, enterprises have mix of relational and non-relational stores. However, when it comes to analyzing all this data – there must be a neutral platform which can understand these types of data. This introduces us to modern world concepts of distributed data storage & processing. It also talks about data sciences & machine learning concepts & how they are revolutionizing the data analysis world.

      No of pages : 20

      Sub - Topics:

      1. Massively parallel processing, distributed data and spark the Hadoop

      2. Distributed systems vs massively parallel processing systems (MPP)

      3. Respective use cases for distributed and MPP systems

      4. Science for data

      5. Learning of machines

      6. Overview of data analytics and advanced data analytics

      Chapter 3: Emergence of Cloud Lakes

      Chapter Goal: The chapter enlighten the users with multiple cloud-based technologies available which are scalable, agile and performance in terms of computation, storage & analytics options. It goes into details about the suggested architecture on Microsoft Azure to solve Modern data warehouse, analytics use cases.

      No of pages: 20

      Sub - Topics:

      1. Data travels to Cloud with added benefits

      2. Overview of phases of data analytics architecture

      3. Available products under each phase on Microsoft Azure

      Chapter 4: Phases in Managing Data Analytics Pipeline

      Chapter Goal: This chapter covers in-depth context of this book. After we understand the background, this chapter will provide understanding of what are the phases of building entire data analytics pipeline. All the phases discussed in this book are critical to understand and any analytics solution will adhere to this common principle some way or the other. In each phase, there are different solutions to cater respective issues. It covers the data life cycle from upstream to downstream applications.

      No of pages: 20

      Sub - Topics:

      1. Real time and batch mode data processing

      2. Phases in data Management

      · Ingest

      · Store

      · Analytics

      · Visualization

      3. Cloud data lake architecture patterns

      Chapter 5: Data Ingestion in the Lake

      Chapter Goal: The chapter talks about the limitations about the traditional storage & how the big data technologies has emerged as the champion in solving the limitations & changing the concepts of Extract, Transform & Load (ETL) to Extract, Load & Transform(ELT).

      No of pages: 20

      Sub - Topics:

      1. Traditional limitations, can big data help?

      2. ETL now becomes ELT

      3. Tools in cloud for data ingestion

      · Azure Data Factory on Microsoft Azure

      · SQL server integration services on-premise

      4. Overview of partner solutions for ETL/ELT – Informatica PowerEdge

      Chapter 6: Data Storage & Farming

      Chapter Goal: The chapter shares with readers that how once the data is available in storage layers, how it can be grown & real time data storage & analysis needs can be catered, it also talks about batch & real time data processing & storage.

      No of pages: 20

      Sub - Topics:

      1. Grow the data

      2. Role of Azure data lake store, Blob, relational and non-relational stores

      3. Architecting the Lambda & Kappa

      4. Manage storage for real time and batch processing

      Chapter 7: Analyzing the Bigger Data in Real Time

      Chapter Goal: Analysis of data is crucial for enterprises to get the business insights from the historic, present & future data to make descriptive, streaming & predictive analytics. In this chapter, we will specifically talk about real time analytics. Components required to perform real time analytics and how to optimize the cost using Azure PaaS solutions.

      No of pages: 30

      Sub - Topics:

      1. Need of real time analytics

      2. Approach to build data analytics on data lake for real time processing

      3. Leverage event hubs/IOT hubs as a queuing solution on Azure

      4. Why Edge computing and digital twins are gaining limelight

      5. Choice between PaaS vs IaaS solution for streaming data processing

      6. PaaS – stream analytics or spark streaming

      7. Infuse R and Python on real-time data analytics pipelines

      8. Use cases for real time analytics

      Chapter 8: Analyzing the Bigger Data in Batch Mode

      Chapter Goal: Analysis of data is crucial for enterprises to get the business insights from the historic, present & future data to make descriptive, streaming & predictive analytics. Analytics can help companies identify new business opportunities and revenue streams which results in an increase in profits, new customers, and improved customer service.

      No of pages: 30

      Sub - Topics:

      9. Role of big data and massively parallel processing systems

      10. Approach to build data analytics on data lake for batch processing

      11. Approach to build data analytics solution for real time analytics

      12. When to leverage HDInsight and Spark clusters

      13. Infuse R and Python in data analytics pipelines

      14. How it's different from conventional data warehousing and massively parallel processing solutions

      15. Use cases for batch mode processing

      Chapter 9: Visualization and Other Downstream Choices

      Chapter Goal: Visualization of data is crucial for reporting& also to perform exploratory data analytics. The chapter talks about the visual elements like charts, graphs, and maps, data visualization tools which provide an accessible way to see and understand trends, outliers, and patterns in data

      No of pages: 10

      Sub - Topics:

      1. Visualizations tools – Power BI

      2. Downstream applications – LOB applications, notification applications

      3. Choice of data stores for downstream applications – Cosmos DB, Azure SQL Database

      Chapter 10: Summary of Data Lake components in Azure

      Chapter Goal: The chapter takes a dig at multiple azure components which makes its easy to create an enterprise data lake in cloud & talks about in details the usage of each

      No of pages: 20

      Sub - Topics:

      1. Azure data factory

      2. Azure data lake storage

      3. Azure HDInsight

      4. Azure databricks

      5. Azure data warehouse

      6. Azure PowerBI

      Chapter 11: Conclusion

      Chapter Goal: The concluding chapter summarizes the information shared around the data lake in the book

      No of pages: 5

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account