가장 많이 묻는 면접 질문과 답변 & 온라인 테스트
면접 준비, 온라인 테스트, 튜토리얼, 라이브 연습을 위한 학습 플랫폼

집중 학습 경로, 모의고사, 면접 준비 콘텐츠로 실력을 키우세요.

WithoutBook은 주제별 면접 질문, 온라인 연습 테스트, 튜토리얼, 비교 가이드를 하나의 반응형 학습 공간으로 제공합니다.

Prepare Interview

모의 시험

홈페이지로 설정

이 페이지 북마크

이메일 주소 구독

ETL Testing 면접 질문과 답변

Ques 1. What is ETL testing?

ETL (Extract, Transform, Load) testing is a process of verifying the correctness of data transformation and loading from source to target databases.

Example:

An example of ETL testing is validating that data from a CSV file is accurately transformed and loaded into a data warehouse.

도움이 되었나요? Add Comment View Comments
 

Ques 2. Explain the difference between ETL testing and database testing.

ETL testing focuses on the data transformation and loading processes, ensuring data integrity during these processes. Database testing, on the other hand, verifies the correctness of data storage, retrieval, and manipulation within a database.

Example:

In ETL testing, you would check if data is transformed and loaded accurately, while in database testing, you might validate SQL queries and stored procedures.

도움이 되었나요? Add Comment View Comments
 

Ques 3. What is a staging area in ETL?

A staging area in ETL is an intermediate storage area where data is temporarily held during the extraction and transformation processes before being loaded into the target data warehouse.

Example:

Data extracted from source systems is first loaded into the staging area, where it undergoes transformations before being moved to the final data warehouse.

도움이 되었나요? Add Comment View Comments
 

Ques 4. What is data profiling in ETL testing?

Data profiling is the process of analyzing and examining source data to understand its structure, quality, and relationships, helping in designing effective ETL processes.

Example:

Data profiling can involve checking for missing values, identifying data patterns, and assessing data distribution in the source system.

도움이 되었나요? Add Comment View Comments
 

Ques 5. Explain the importance of data cleansing in ETL.

Data cleansing involves identifying and correcting errors or inconsistencies in source data, ensuring the accuracy and reliability of data in the target data warehouse.

Example:

Removing duplicate records and correcting misspelled names in source data are examples of data cleansing activities in ETL.

도움이 되었나요? Add Comment View Comments
 

Most helpful rated by users:

Copyright © 2026, WithoutBook.