
AI Trust Governance Architect
About the role
Key Responsibilities:
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AI Assurance Architecture
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Architect platforms and frameworks for AI assurance, evaluation, and benchmarking
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Design systems for LLM, agent, and RAG evaluation across functional, non functional, and risk dimensions
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Define architectural patterns for Responsible AI, bias detection, explainability, and safety validation
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Build reusable assurance components supporting Business Assurance, Risk Assurance, and Reliability
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Security, Reliability & Governance
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Architect AI testing and validation for security, privacy, prompt injection, and adversarial robustness
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Integrate red teaming, threat simulation, and chaos style validation for AI systems
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Define governance mechanisms for model usage, auditability, traceability, and compliance
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Ensure AI systems meet enterprise standards for resilience, fault tolerance, and observability
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Platform & Engineering Enablement
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Design AI assurance platforms supporting automated test execution, reporting, and insights
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Enable integration with CI/CD pipelines to enforce AI quality gates
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Collaborate with QE engineering teams to embed AI assurance into the SDLC
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Mentor teams on AI risk identification and mitigation from an engineering perspective
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Core Platforms, Frameworks & Tooling
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LLM and AI evaluation frameworks (Prompt Foo, Deep Eval, custom LLM evaluation harnesses)
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Prompt, RAG, and agent validation tooling (prompt testing frameworks, retrieval accuracy validators, agent workflow evaluators)
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Responsible AI and model risk tooling (Fairlearn, SHAP, Explainable AI libraries, toxicity and bias scanners)
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Security and adversarial testing tools for AI systems (PyRIT, Garak)
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AI red teaming and threat simulation frameworks (automated red team scripts, adversarial test suites for LLMs and agents)
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AI assurance automation and QE frameworks (Galileo)
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Observability for AI behavior and drift (Langfuse, Arize, Evidently, custom telemetry dashboards)
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Client Orientation & Leadership
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Partner with product and engineering teams to identify AI Assurance opportunities and shape roadmaps
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Support client workshops, RFPs, and solution presentations
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Mentor engineers on AI/ML/Gen AI best practices and emerging technologies
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Translate complex AI concepts into business-friendly narratives
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Must Have Qualifications
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13+ years of experience in software engineering with 3+ years in AI with strong architecture ownership
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Hands on expertise in AI/ML systems, LLM evaluation, and assurance frameworks
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Experience with AI red teaming, model risk management, or AI audit tooling
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Strong understanding of Responsible AI, AI risks, and governance principles
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Experience with security testing, adversarial testing, and reliability engineering
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Proficiency in Python, automation frameworks, and cloud platforms
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Good to Have Skills
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Knowledge of regulatory or compliance considerations for AI systems
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Exposure to performance engineering, chaos engineering, or resilience testing for AI
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Contributions to internal platforms, frameworks, or standards
Education: Bachelor of Engineering
- Preferred skills: Technology->AI Engineering->LLMOps,Foundational->Project Management->Request For Proposal (RFP)/Proposal Development,Technology->AI Engineering->AI/ML Solution Architecture and Design->traditional ai ml,Technology->Testing Technologyes->Test Automation Technology,Technology->Agile Testing->Agile Testing
- ALL->CD/CI,Technology->Generative AI->Conversational AI Platform,Technology->Machine Learning->Generative AI->retrieval augmented generation (rag),Technology->Automated Testing->Automated Testing
- ALL
About Infosys
BANGALORE
Headquarters