2 min read

Data Security Analyst Skills Test

joseph cole

Updated on November 24, 2022

Data Security Analyst Skill Test Overview 

This Data Security Analyst test evaluates candidates’ skills and competency and their ability to establish proactive security measures. This test will help technical recruiters identify potential candidates needed for data mining and analysis, behavioral analytics, forensics, and security audits. 

Expected Skills 

  • Security management frameworks like HIPAA, GDPR, SOC 2  
  • Network infrastructure and network security control 
  • Fundamentals of data privacy and regulations 
  • VPN (Virtual Private Networks), Subnetting, routing protocols, and encryption techniques 
  • Intrusion detection and threat knowledge 

Test Category 

Type – Multiple Choice Questions 

Time – 10 mins 

Language – English 

Level – Entry 

Difficulty – Easy 

Test Questions 

  1. Which is not termed as a cybercrime? 
  • Advanced Encryption Standard 
  • Man in the Middle 
  • Service Denial 
  • Malware 
  • None of these 
  1. Cybersecurity is compromised through _____ 
  • Attack 
  • Exploit 
  • Threat 
  • Vulnerability 
  • All of the above 
  1. IP addresses can be generally fetched through _______ 
  • IP tracker 
  • Websites 
  • Webpages 
  • Emails 
  • All of the above 
  1. _______ is the least strong security encryption standard 
  • WEP 
  • WPA 
  • WPA2 
  • WPA3 
  • None of these 
  1. _______ can diminish the chances of data leakage 
  • Authentication 
  • Chorography 
  • Cryptography 
  • Steganography  
  • All of these 

Who should take the Test? 

Candidates who want to build a career in data/cyber/information security skills and have relevant competencies and credentials can take up the test.  

Give Glider AI a Try Today 

How can Glider AI help you with Hiring a Data Security Analyst? 

Glider’s recruitment platform is built on the mission, of “competency over credentials. This way, your hiring process is taken care of end-to-end from the structured and data-driven candidate-evaluation process to spotlighting a qualified Data Security Analyst for the role.  

Glider AI’s Unique Features

  • Conversational Chatbot for Talent Screening
  • Interactive, coding-enabled skill tests
  • Powerful candidate analytics 

Hiring Resources for Data Security Analyst

  • Hiring a Data Security Analyst  
  • Data Security Analyst Job Description 
  • Data Security Analyst Interview Questions 
  • How to hire a Data Security Analyst 

Access 2,000 pre-built assessments covering over 500 skills with 250,000 questions, all validated by 2,000 SMEs including this for the Data Security Analyst role

Go ahead and spotlight your Data Security Analyst with Glider AI today! 

You can always write to us at info@glider.ai to help you access the hiring resources

Schedule a Glider AI Demo now 

CREATE YOUR ACCOUNT

Accelerate the hiring of top talent

Make talent quality your leading analytic with skills-based hiring solution.

Get started

QA & Testing​ – Top Job Roles and Skills

What is QA and Testing? Quality Assurance (QA) and testing are integral processes in software development aimed at ensuring the reliability, functionality, and usability of applications. QA involves establishing standards and procedures to monitor and improve the software development lifecycle, focusing on preventing defects and identifying areas for optimization. It encompasses various activities such as […]

JavaScript Interview Questions

Whether hiring for an entry-level web developer position or a web architect, asking the right JavaScript coding questions lets you assess the candidate’s depth of knowledge in core JavaScript concepts, problem-solving skills, and understanding of modern JavaScript practices.  More than identifying which people in your pool of applicants can answer technical questions, these JavaScript interview questions also reveal who […]

Data Science and Analytics – Top Job Roles and Skills

What is Data Science and Analytics? Data science and analytics includes the systematic study of data to derive insights and make informed decisions across various domains and industries. It involves the application of statistical techniques, machine learning algorithms, and computational tools to analyze large and complex datasets, uncover patterns, trends, and correlations, and extract actionable […]

chevron-down