CASE STUDY
Scalable QA for AI Interviews
Executed scenario-driven automation testing across Admin, Tenant, and Candidate workflows, ensuring interview quality, scoring logic, system feedback, and AI behavior were production-ready, scalable, and aligned with real-world hiring and compliance use cases.
AI
ABOUT THE CLIENT
Scalable QA for Agentic AI Interview Platform
The client is a deep-tech startup offering Spectra, an Agentic AI interview platform designed to “hear, see, reason, and speak.” The platform enables scalable and hyper-personalized interviews across recruitment, compliance, research, and more. Our QA efforts centered on multi-portal functional validation and regression automation, delivering 80% coverage to support mission-critical pre-launch goals
HIGHLIGHTS
80%
Automation Coverage
165+
Test cases executed
-
90+ bugs identified and tracked
-
Visual PPT mapping amplified stakeholder understanding of automation scope
-
Ensured consistency across interrelated functionalities of the Spectra platform
Tools we Used
PROBLEM STATEMENT
Repetitive AI Questions and Inconsistent Resume Scoring
AI-generated interview questions often lacked variety, resulting in duplication within sessions and a diminished candidate experience. In parallel, the resume scoring algorithm produced inconsistent results, frequently inflating candidate scores without clear reasoning. These functional flaws risked undermining recruiter trust and platform credibility, especially in hiring-critical environments.
OUR SOLUTION
Test-Driven Root Cause Detection and Flow Stabilization
-
Conducted scenario-based functional testing to surface AI question repetition
-
Validated backend logic against expected diversity patterns in interview flows
-
Highlighted resume score discrepancies by running varied candidate profiles through controlled sessions
-
Flagged logic flaws and proposed guardrails for question and scoring randomness
-
Developed targeted automation around scoring APIs to test stability across edge cases
-
Collaborated closely with the dev team by presenting visual evidence of flawed flows via structured PPTs
What we did?
Talk to our Experts
Amazing clients who
trust us
trust us