We are seeking a Lead Security Engineer - AI Red Teaming Engineer to focus on the behavioral and algorithmic safety of LLMs and Generative AI systems, ensuring they cannot be tricked into bypassing guardrails or leaking sensitive data.
Responsibilities
- Execute Direct and Indirect Prompt Injection attacks and jailbreaking techniques including multi-turn and roleplay scenarios to test LLM guardrails
- Identify vulnerabilities related to model behavior manipulation and potential data leakage
- Apply MITRE ATLAS and OWASP Top 10 for LLMs frameworks to structure adversarial testing methodologies
- Test Retrieval-Augmented Generation pipelines for data poisoning vulnerabilities
- Validate Agentic workflows against tool-use manipulation, goal hijacking and unauthorized permission escalation
- Develop and script custom boundary-testing payloads using Python
- Leverage AI red teaming and evaluation frameworks to assess model safety and resilience
- Document findings and provide remediation guidance to engineering teams
- Collaborate with cross-functional teams to strengthen defenses across AI systems
Requirements
- 5+ years of experience in adversarial AI testing including Direct and Indirect Prompt Injection, Jailbreaking and model behavior manipulation
- Familiarity with MITRE ATLAS, MITRE ATT&CK and OWASP Top 10 for LLMs frameworks
- Experience testing RAG pipelines for data poisoning and validating Agentic workflows against tool-use manipulation and goal hijacking
- Proficiency in AI red teaming tools such as PyRIT, GARAK and Giskard or enterprise suites like Confident AI or Repello
- Understanding of LLM fundamentals including tokens, embeddings and context windows
- Skills in Python programming for scripting custom boundary-testing payloads
- Knowledge of LLM security, Prompt Engineering and Security practices
- Background in Multi-Agent Systems Evaluation and Testing
- English proficiency at B2 level or higher
Nice to have
- Expertise in AI Solution Engineering
- Knowledge of Machine Learning