Skip to content
Pass Microsoft, Cisco, Sap and Salesforce Exams
Menu
  • Home
  • Exams
  • Certifications
  • Cloud Computing
  • Cyber Security
  • Contact Us
  • Log in
  • Sign up
Menu

Glue – CLF-C02 Exam Study Guide

Posted on 2024-09-062024-09-06 by zeusexam

Glue

The AWS Glue service provides ETL (extract, transform, and load) services for your data analytics. An ETL system in data analytics is like an automated data organizer that collects information from different places, cleans it up, and arranges it neatly so that your analysts can easily make sense of it. It’s basically the behind-the-scenes work that ensures your data is ready and polished for analysis.

The Glue Data Catalog acts as a central repository for metadata about your data sources, transformations, and targets. AWS Glue crawlers automatically scan and catalog data in various formats across different storage systems, creating a searchable and organized metadata store.

The ETL process is handled by Glue Jobs, which allows you to define and execute Python or Scala code for data transformation. Glue provides a serverless execution environment and allows you to scale your ETL jobs based on demand without managing the underlying infrastructure.

Glue features tight integration with other AWS services and supports a variety of potential data sources and destinations, including S3, Redshift, and RDS.

QuickSight

AWS QuickSight is a business intelligence service that makes it easy to visualize and explore your data. It allows you to create interactive dashboards and reports, providing insights from various data sources with just a few clicks.

QuickSight is designed to be user friendly, enabling both technical and nontechnical users to derive meaningful insights from their data through intuitive and customizable visualizations.

AWS QuickSight offers several key features that make it a powerful and user-friendly business intelligence service:

Easy data integration: QuickSight seamlessly connects to various data sources, including AWS services, databases, and third-party applications, making it convenient to analyze data from different platforms.

Intuitive visualizations: QuickSight provides a wide range of customizable and interactive visualizations, such as charts, graphs, and maps, to allow users to represent data in ways that best communicate insights.

Insights: QuickSight’s Auto Insights feature uses machine learning to automatically discover hidden trends, patterns, and anomalies in data, saving users time in the analysis process.

Smart recommendations: QuickSight offers intelligent recommendations for the most suitable visualizations based on the type of data and the analysis performed, enhancing the user experience and aiding in data exploration.

SPICE: QuickSight uses the Super-fast, Parallel, In-memory Calculation Engine (SPICE), which provides high-performance data processing for quick and responsive analytics, even with large datasets.

Ad hoc analysis: Users can perform ad hoc analysis by dragging and dropping fields to create new visualizations on the fly, enabling quick exploration and understanding of data.

Dashboard storytelling: QuickSight supports the creation of interactive dashboards and stories that allow users to present and share insights in a narrative format and enhance the communication of data-driven stories.

Kinesis

AWS Kinesis is a fully managed platform designed for real-time processing of streaming data at scale. It enables an organization to ingest, process, and analyze large volumes of real-time data from diverse sources, such as Internet of Things (IoT) devices, applications, and logs. Figure 17-3 shows AWS Kinesis in the AWS Management Console.

Figure 17-3 AWS Kinesis

Kinesis offers a suite of services that cater to specific aspects of streaming data workflows:

Kinesis Data Streams: This service allows you to collect and process real-time data streams. It enables you to scale the number of streaming data shards based on the volume of data, ensuring efficient handling of varying workloads. With Data Streams, developers can build applications that rapidly respond to changing data and extract valuable insights in real time.

Kinesis Data Firehose: This service simplifies the process of loading streaming data into other AWS services or external destinations and eliminates the need for manual intervention. It automates data delivery, transformation, and compression, streamlining the data pipeline and reducing management overhead.

Kinesis Data Analytics: This service facilitates the real-time analysis of streaming data. It enables you to run SQL queries on streaming data, extract meaningful information, and derive insights on the fly. Kinesis Data Analytics enables an organization to gain actionable intelligence from its streaming data in order to make informed decisions and drive innovation.

As you can see, AWS Kinesis is a comprehensive and scalable solution for managing the entire lifecycle of your streaming data, from ingestion and processing to analysis and delivery.

Exam Preparation Tasks

Review All Key Topics

Review the most important topics in this chapter, noted with the Key Topics icon in the outer margin of the page. Table 17-2 lists these key topics and the page number on which each is found.

Table 17-2 Key Topics for Chapter 17

  Key Topic ElementDescriptionPage Number
ListSageMaker features214
OverviewLex215
OverviewAthena217
OverviewKinesis219
   

Post navigation

← Practical usage of Config Connector
Business Application Services →

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Categories

  • 100-150 Study Course
  • AWS Study Course
  • AZ-104 Study Course
  • Certified Advanced Salesforce Admin
  • Cisco Study Course
  • CLF-C02 Study Course
  • Google
  • Google Associate Cloud Engineer
  • Microsoft Study Course
  • Salesforce
  • Study Course
© 2024 Zeusexam, Inc. All rights reserved. | Privacy Statement | Terms of Use | Use of Cookies | Trust | Accessibility | Cookie Preferences | Your Privacy Choices