Skip to content

safiya2610/interview-agent

 
 

Repository files navigation

CodentAI - Agentic AI Mock interview platform

CodentAI helps software engineering candidates practice realistic coding interviews with an AI interviewer that adapts to their target role and preparation needs.

Why Use CodentAI

  • Practice with interview sessions that feel structured, focused, and high signal.
  • Improve both communication and coding performance in a single flow.
  • Build confidence before real interviews by simulating pressure and time limits.
  • Track your consistency with session history and progress stats.

Core Features

  • Company-Targeted Interview Rounds
    Start sessions aligned with the companies you are targeting.

  • AI Interviewer Guidance
    Get real-time interviewer prompts, follow-ups, and progression through interview phases.

  • Logic-First Interview Flow
    Explain your approach before coding, mirroring real interview expectations.

  • Integrated Coding Workspace
    Write and test code in one place with language options and live output.

  • Run and Submit Feedback Loop
    Execute your solution, inspect errors, and iterate quickly.

  • Session Tracking Dashboard
    Review recent sessions and monitor practice momentum over time.

What You Improve

  • Problem-solving clarity
  • Verbal explanation and communication
  • Time management under interview constraints
  • Debugging speed and correction quality
  • Consistent practice habits

Ideal For

  • Students preparing for internships and new grad roles
  • Engineers preparing for company switch interviews
  • Anyone who wants a repeatable, measurable mock interview workflow

Interview Journey

  1. Start a mock interview session.
  2. Discuss your approach with the AI interviewer.
  3. Move into coding once your logic is clear.
  4. Run, refine, and submit your solution.
  5. Review session outcomes and continue improving.

About

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors

Languages

  • TypeScript 85.7%
  • JavaScript 6.4%
  • CSS 4.6%
  • PLpgSQL 3.3%