Step into a role where you help teams build Generative AI solutions that are not only powerful, but also trustworthy, safe, and testable. As part of a collaborative consulting environment, you’ll work closely with product, engineering, and risk stakeholders to design practical assurance approaches for LLM-powered systems—balancing innovation with reliability. You’ll contribute to real-world AI validation efforts, from defining test strategies and evaluation metrics to executing red teaming exercises and documenting outcomes that leadership can act on. If you enjoy combining structured testing discipline with the fast-evolving world of GenAI, this is a chance to shape how AI quality, safety, and responsibility are measured and improved—while learning alongside motivated teams solving meaningful problems.
Technical Requirements: • BTech/BE or equivalent technical degree.
• 3–9 years of experience in testing/quality engineering, with hands-on exposure to Generative AI or LLM testing initiatives.
• Working knowledge of AI testing concepts, including test design, evaluation metrics, and result interpretation for LLM outputs.
• Experience contributing to structured documentation such as test plans, test evidence, and defect/risk reporting.
Additional Responsibilities: • Proven experience executing red teaming for LLM applications and translating findings into actionable controls and mitigations.
• Practical experience implementing Responsible AI practices and assurance workflows across the AI lifecycle.
• Strong understanding of LLM failure modes (hallucinations, toxicity, bias, prompt sensitivity) and methods to test and reduce them.
• Experience building automated evaluation pipelines and regression suites for LLM systems using DeepEval or similar frameworks.
• Consulting experience: stakeholder management, requirement discovery, and delivering clear outcomes under ambiguity.
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