Attention all AWS professionals! Are you preparing for an interview that requires knowledge of AWS BI and data visualization services? Look no further! I have compiled a list of the top 30+ latest AWS certification interview questions that will help you ace your next interview. From Amazon QuickSight to Amazon Redshift, these questions cover a range of topics that will demonstrate your expertise in AWS BI and data visualization services. Don't miss out on this opportunity to enhance your knowledge and impress potential employers. Check out the full list of questions now! #AWS #certification #interviewquestions #BI #datavisualization #AWSprofessionals
Visit by:-https://www.datacademy.ai/questions-on-aws-bi-and-data-visualization/
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
Top 30+ Latest AWS Certification Interview Questions on AWS BI and data visualization services.pdf
1. www.datacademy.ai
Knowledge world
Top 30+ Latest AWS Certification Interview Questions on
AWS BI and data visualization services
Here are some commonly asked AWS certification interview question related to AWS BI
and data visualization services
1. What is Amazon QuickSight?
Amazon QuickSight is a fast, cloud-powered business intelligence (BI) service that makes it
easy to deliver insights to everyone in your organization.
2. What is Amazon Redshift?
Amazon Redshift is a fast, fully managed, petabyte-scale data warehouse service that makes
it simple and cost-effective to analyze all your data using your existing business intelligence
tools.
3. What is Amazon Athena?
Amazon Athena is an interactive query service that makes it easy to analyze data directly in
Amazon S3 using standard SQL.
4. What is Amazon EMR?
Amazon EMR is a cloud-native big data platform for processing vast amounts of data
quickly and cost-effectively.
5. What is Amazon CloudWatch?
Amazon CloudWatch is a monitoring service for AWS resources and the applications you
run on the Amazon Web Services (AWS) cloud.
6. What is Amazon Kinesis?
Amazon Kinesis is a fully managed, cloud-based service for real-time processing of
streaming data at massive scale.
7. How does Amazon QuickSight integrate with other AWS services?
2. www.datacademy.ai
Knowledge world
Amazon QuickSight integrates with other AWS services such as Amazon Redshift, Amazon
RDS, Amazon S3, Amazon Athena, Amazon EMR, and more, enabling you to easily and
quickly bring in your data and start generating insights.
8. Can you explain how Amazon Redshift works?
Amazon Redshift works by managing a cluster of nodes, where each node is comprised of
one or more CPU cores and disk drives. The data is automatically distributed across all
nodes, and you can use standard SQL to query the data.
9. How does Amazon Athena differ from Amazon Redshift?
Amazon Athena is a managed service that allows you to run interactive queries directly on
data stored in Amazon S3, while Amazon Redshift is a data warehouse that you can use to
store and analyze large amounts of structured data. The main difference between the two is
the size of the data set and the type of analysis you need to perform.
10. What are some common use cases for Amazon Kinesis?
Some common use cases for Amazon Kinesis include real-time data processing for
applications such as fraud detection, real-time metrics and logs, real-time market data
analysis, and IoT device data analysis.
11. How can you access Amazon QuickSight?
You can access Amazon QuickSight via the AWS Management Console, APIs, or embedded
in your applications.
12. What is Amazon S3 Select?
Amazon S3 Select is a feature of Amazon S3 that enables you to retrieve only the data you
need from an object, reducing the amount of data you retrieve and the time it takes to
transfer the data over the network.
13. What is Amazon S3 Inventory?
Amazon S3 Inventory is a feature of Amazon S3 that provides a scheduled alternative to
Amazon S3 Inventory reports, which gives you a list of your objects and their metadata on a
daily or weekly basis.
14. What is Amazon S3 Transfer Acceleration?
3. www.datacademy.ai
Knowledge world
Amazon S3 Transfer Acceleration is a feature of Amazon S3 that enables fast, easy, and
secure transfers of large files to and from Amazon S3 over the public Internet.
15. How does Amazon Redshift handle data compression?
Amazon Redshift uses advanced columnar storage and data compression techniques to
reduce the amount of disk space required to store data. This enables you to store and
analyze large amounts of data in a cost-effective manner.
16. Can you explain how Amazon Redshift handles data security?
Amazon Redshift provides multiple security features to ensure that your data is secure.
These features include network isolation using Amazon VPC, encryption of data at rest
using AES-256 encryption, encryption of data in transit using SSL, and control over
network access using security groups and network ACLs.
17. Can you explain how Amazon QuickSight supports collaboration?
Amazon QuickSight supports collaboration by enabling multiple users to access, analyze,
and share data insights. You can easily share insights with others by sending a link or
embedding a dashboard in your application.
18. Can Amazon QuickSight be used for real-time data analysis?
Yes, Amazon QuickSight supports real-time data analysis by providing the ability to
connect to real-time data sources such as Amazon Kinesis or other streaming data sources.
19. Can Amazon QuickSight be used for big data analysis?
Yes, Amazon QuickSight can be used for big data analysis by connecting to big data sources
such as Amazon Redshift, Amazon EMR, or other big data sources.
20. Can you explain how Amazon Athena integrates with other AWS services?
Amazon Athena integrates with other AWS services such as Amazon S3, Amazon Glue,
Amazon CloudWatch, and more, enabling you to easily and quickly bring in your data,
process it, and start generating insights.
21. How does Amazon Kinesis handle data security?
Amazon Kinesis provides multiple security features to ensure that your data is secure.
These features include encryption of data in transit using SSL/TLS, encryption of data at
4. www.datacademy.ai
Knowledge world
rest using AWS Key Management Service (KMS), and control over network access using
security groups and network ACLs.
22. Can Amazon Kinesis be used for real-time data processing?
Yes, Amazon Kinesis is designed specifically for real-time data processing, making it a great
choice for applications such as real-time metrics, real-time logs, real-time market data
analysis, and IoT device data analysis.
23. Can you explain the Amazon Kinesis data model?
The Amazon Kinesis data model consists of three main components: streams, shards, and
records. Streams are collections of data records that are ordered and accessible over a
certain period of time. Shards are units of a stream that you can use to scale a stream’s
capacity horizontally. Records are individual units of data that are stored within a shard.
24. Can Amazon Redshift be used for real-time data analysis?
While Amazon Redshift is not designed for real-time data analysis, it can be used in near
real-time scenarios. By using Amazon Redshift in conjunction with Amazon Kinesis, you
can perform real-time data processing and then analyze the results in near real-time using
Amazon Redshift.
25. How does Amazon CloudWatch handle data security?
Amazon CloudWatch provides multiple security features to ensure that your data is secure.
These features include encryption of data in transit using SSL/TLS, encryption of data at
rest using AWS Key Management Service (KMS), and control over network access using
security groups and network ACLs.
26. Can you explain the Amazon CloudWatch data model?
The Amazon CloudWatch data model consists of metrics, dimensions, and alarms. Metrics
are time-ordered data that you can use to monitor the health and performance of your
applications and infrastructure. Dimensions are metadata that you can use to categorize
metrics and isolate specific subsets of metrics for analysis. Alarms are used to trigger
actions based on specified conditions for metrics.
27. Can Amazon QuickSight be used for machine learning?
Yes, Amazon QuickSight can be used for machine learning by integrating with Amazon
SageMaker, a fully-managed machine learning service. With Amazon SageMaker, you can
5. www.datacademy.ai
Knowledge world
train and deploy machine learning models, and then use Amazon QuickSight to visualize
the results and insights generated by the models.
28. Can Amazon Redshift be used for machine learning?
Yes, Amazon Redshift can be used for machine learning by integrating with Amazon
SageMaker or other machine learning services. With Amazon Redshift, you can store and
process large amounts of data, and then use machine learning algorithms to generate
insights from the data.
29. How does Amazon S3 handle data security?
Amazon S3 provides multiple security features to ensure that your data is secure. These
features include encryption of data at rest using AES-256 encryption, encryption of data in
transit using SSL/TLS, and control over network access using IAM policies and resource-
based access control.
30. Can Amazon QuickSight be used with multiple data sources?
Yes, Amazon QuickSight can be used with multiple data sources, including Amazon S3,
Amazon Redshift, Amazon RDS, Amazon Aurora, Amazon Athena, and more. You can
easily connect to these data sources and create visualizations using the drag-and-drop
interface.
31. Can Amazon Quicksight be used for reporting?
Yes, Amazon QuickSight can be used for reporting, allowing you to create and share
interactive reports with team members. You can use the drag-and-drop interface to create
visualizations, add filters and parameters, and apply custom styles. You can also schedule
reports to be delivered via email or published to a shared folder.