A company captures clickstream data from multiple websites and analyzes it using batch processing. The data is loaded nightly into Amazon Redshift and is consumed by business analysts. The company wants to move towards near-real-time data processing for timely insights. The solution should process the streaming data with minimal effort and operational overhead.
Which combination of AWS services are MOST cost-effective for this solution? (Choose two.)
A . Amazon EC2
B . AWS Lambda
C . Amazon Kinesis Data Streams
D . Amazon Kinesis Data Firehose
E . Amazon Kinesis Data Analytics
Answer: CE
Explanation:
Kinesis Data Streams and Kinesis Client Library (KCL) C Data from the data source can
be continuously captured and streamed in near real-time using Kinesis Data Streams.
With the Kinesis Client Library (KCL), you can build your own application that can
preprocess the streaming data as they arrive and emit the data for generating
incremental views and downstream analysis.
Kinesis Data Analytics C This service provides the easiest way to process the data that is streaming through Kinesis Data Stream or Kinesis Data Firehose using SQL. This enables customers to gain actionable insight in near real-time from the incremental stream before storing it in Amazon S3.
https://d1.awsstatic.com/whitepapers/lambda-architecure-on-for-batch-aws.pdf
Latest SAA-C02 Dumps Valid Version with 230 Q&As
Latest And Valid Q&A | Instant Download | Once Fail, Full Refund