"Azure Data Engineering Course in Hyderabad " - PowerPoint PPT Presentation

About This Presentation
Title:

"Azure Data Engineering Course in Hyderabad "

Description:

Enroll in our Azure Data Engineering Course in Hyderabad to gain in-depth knowledge of Microsoft Azure's powerful data processing capabilities. Learn essential skills such as data ingestion, storage, and analytics using Azure services. Our hands-on training, led by industry experts, will equip you with the expertise needed to design and implement robust data solutions. Prepare for a successful career in data engineering with our specialized course in the heart of Hyderabad. – PowerPoint PPT presentation

Number of Views:0
Date added: 5 February 2024
Slides: 10
Provided by: swathimallela
Tags:

less

Transcript and Presenter's Notes

Title: "Azure Data Engineering Course in Hyderabad "


1
Azure Data Engineering
2
Table of content
  • Introduction to Azure Data Engineering
  • Azure Data Services Overview
  • Azure Data Factory
  • Azure Databricks
  • Azure Synapse Analytics
  • Azure Data Lake Storage
  • Real-time Data Processing with Azure Stream
    Analytics
  • Integration with Power BI

3
Introduction to Azure Data Engineering
  • Azure Data Engineering refers to the set of
    services and tools provided by Microsoft Azure
    for designing, implementing, and managing data
    solutions in the cloud. It encompasses various
    technologies and capabilities that allow
    organizations to process, store, and analyze
    large volumes of data efficiently. Whether
    dealing with structured or unstructured data,
    Azure Data Engineering provides a comprehensive
    suite of services to meet diverse business needs.
  • As an Azure data engineer, you help stakeholders
    understand the data through exploration, and
    build and maintain secure and compliant data
    processing pipelines by using different tools and
    techniques. You use various Azure data services
    and frameworks to store and produce cleansed and
    enhanced datasets for analysis.

4
Azure Data Services Overview
  1. Azure SQL Database A fully managed relational
    database service that offers high-performance,
    scalability, and built-in security features. It
    supports popular database engines such as SQL
    Server, MySQL, and PostgreSQL.
  2. Azure Cosmos DB A globally distributed,
    multi-model database service designed for
    building highly responsive and scalable
    applications. It supports multiple data models,
    including document, graph, key-value, table, and
    column-family.
  3. Azure Synapse Analytics (formerly SQL Data
    Warehouse) An integrated analytics service that
    brings together big data and data warehousing. It
    allows users to query and analyze large datasets
    using both on-demand and provisioned resources.
  4. Azure Data Lake Storage A scalable and secure
    data lake solution for big data analytics. It
    enables organizations to store and analyze
    massive amounts of data with features like
    hierarchical namespace and fine-grained access
    control.
  5. Azure Blob Storage A massively scalable object
    storage service that is optimized for storing and
    serving large amounts of unstructured data, such
    as documents, images, and videos.
  6. Azure Data Factory A cloud-based data
    integration service that allows organizations to
    create, schedule, and manage data pipelines,
    facilitating the movement and transformation of
    data across various sources and destinations.
  7. Azure Databricks An Apache Spark-based analytics
    platform that provides a collaborative
    environment for big data analytics. It allows
    data engineers and data scientists to work
    together on large-scale data processing and
    machine learning tasks.
  8. Azure HDInsight A fully managed cloud service
    that makes it easy to process large amounts of
    data using popular open-source frameworks such as
    Hadoop, Spark, Hive, HBase, and more.
  9. Azure Stream Analytics A real-time analytics
    service that ingests, processes, and analyzes
    streaming data from various sources. It provides
    insights into trends and patterns as data is
    generated.
  10. Azure Data Explorer A fast and highly scalable
    service designed for analyzing large volumes of
    data in real-time. It is particularly well-suited
    for log and telemetry data.
  11. Azure Cache for Redis A fully managed,
    open-source, and in-memory data store service
    that provides sub-millisecond response times. It
    is commonly used for caching and accelerating
    data access.
  12. Azure Data Box A family of devices designed to
    facilitate the secure and efficient transfer of
    large amounts of data to and from Azure. This is
    particularly useful for organizations dealing
    with massive datasets.
  13. Azure Data Share A service that enables
    organizations to securely share data with other
    organizations in a governed and compliant manner.
    It simplifies the process of sharing data across
    Azure subscriptions and with external partners.
  14. Azure Data Catalog A fully managed service that
    serves as a centralized repository for
    discovering, understanding, and managing data
    assets across an organization. It helps in
    maintaining a data catalog for better data
    governance

5
Azure Data Factory
  • Azure Data Factory (ADF) is a cloud-based data
    integration service provided by Microsoft Azure.
    It allows organizations to create, schedule, and
    manage data pipelines that can move data between
    supported on-premises and cloud-based data
    stores. Azure Data Factory simplifies the process
    of orchestrating and automating the movement and
    transformation of data, making it a fundamental
    component in modern data engineering workflows.
  • Azure Data Factory is Azure's cloud ETL service
    for scale-out serverless data integration and
    data transformation. It offers a code-free UI for
    intuitive authoring and single-pane-of-glass
    monitoring and management. You can also lift and
    shift existing SSIS packages to Azure and run
    them with full compatibility in ADF.
  • Azure Data Factory is a cloud-based data
    integration service provided by Microsoft. It
    allows you to create, schedule, and manage data
    pipelines that can move and transform data from
    various sources to different destinations.

6
Azure Databricks
  • Azure Databricks is a cloud-based big data
    analytics platform provided by Microsoft in
    collaboration with Databricks. It is built on
    Apache Spark and designed for data engineering,
    data science, and machine learning. Azure
    Databricks simplifies the process of building and
    managing Apache Spark-based big data and machine
    learning solutions by providing an integrated,
    collaborative environment for data scientists,
    data engineers, and business analysts.
  • Azure Databricks is a fully managed first-party
    service that enables an open data lakehouse in
    Azure. With a lakehouse built on top of an open
    data lake, quickly light up a variety of
    analytical workloads while allowing for common
    governance across your entire data estate.
  • Databricks is an industry-leading, cloud-based
    data engineering tool used for processing and
    transforming massive quantities of data and
    exploring the data through machine learning
    models. Recently added to Azure, it's the latest
    big data tool for the Microsoft cloud

7
  • Azure Synapse Analytics
  • Azure Synapse Analytics, formerly known as Azure
    SQL Data Warehouse, is a cloud-based analytics
    service provided by Microsoft Azure. It is
    designed to enable organizations to analyze and
    query large volumes of data with high performance
    and scalability. Azure Synapse Analytics
    integrates both data warehousing and big data
    analytics capabilities, providing a unified
    platform for processing and analyzing diverse
    datasets.
  • Azure Data Lake Storage
  • Azure Data Lake Storage (ADLS) is a scalable and
    secure cloud-based data lake solution provided by
    Microsoft Azure. It is designed to handle large
    volumes of data for big data analytics and data
    science applications. Azure Data Lake Storage is
    built to support both structured and unstructured
    data, allowing organizations to store and analyze
    diverse datasets with high throughput and
    low-latency access.
  • Real-time Data Processing with Azure Stream
    Analytics
  • Azure Stream Analytics is a real-time analytics
    service provided by Microsoft Azure that allows
    organizations to process and analyze streaming
    data in real-time. It enables the extraction of
    insights and actionable information from
    continuous streams of data generated by various
    sources, such as IoT devices, social media,
    applications, and more. Azure Stream Analytics
    supports a wide range of scenarios, including
    real-time monitoring, anomaly detection, and
    event-driven applications

8
Integration with Power BI
  • Configure Power BI Output in Azure Stream
    Analytics In the Azure Stream Analytics job
    definition, users can configure Power BI as an
    output sink. This is done by specifying the Power
    BI output settings, including the Power BI
    workspace, dataset, and table to which the
    streaming data will be sent.
  • Define Query Logic Users define the query logic
    in Azure Stream Analytics using the SQL-like
    query language. This query defines how the
    incoming streaming data is processed, filtered,
    and transformed before being sent to Power BI.
    The query can include various operations to
    extract meaningful information from the data.
  • Specify Output Schema Users need to specify the
    output schema that aligns with the structure
    expected by the Power BI dataset. This includes
    defining the data types and structure of the
    fields that will be sent to Power BI.
  • Establish Authentication To enable Azure Stream
    Analytics to push data to Power BI, users need to
    establish authentication. This typically involves
    providing the necessary credentials or using
    Azure Active Directory authentication to ensure
    secure communication between Azure Stream
    Analytics and Power BI.
  • Start the Stream Analytics Job Once the
    configuration is complete, users start the Azure
    Stream Analytics job. This initiates the
    real-time processing of streaming data based on
    the defined query logic. As the data is
    processed, the results are continuously sent to
    the specified Power BI workspace and dataset.
  • Visualize Real-Time Data in Power BI In Power
    BI, users can connect to the configured dataset
    and create real-time dashboards and reports. The
    streaming data from Azure Stream Analytics is
    visualized in Power BI, providing users with
    up-to-the-moment insights into their data.

9
  • Presenter name kathika.kalyani
  • Email address info_at_3zenx.com
  • Website address www.3ZenX.com
Write a Comment
User Comments (0)
About PowerShow.com