Principal Applied AI Scientist
Listed on 2026-06-18
-
IT/Tech
AI Engineer (Applied/Software), Machine Learning/ ML Engineer, Artificial Intelligence
Kai is the AI company rebuilding cybersecurity for the machine-speed era. Founded by second time founders and trusted by Fortune 500 enterprises, Kai is building a future where security has no categories, no silos, and no human speed bottlenecks. The Kai Agentic AI Platform replaces fragmented, human-limited workflows with agentic AI systems that continuously contextualize, assess, reason, and execute security work at machine speed - making human defenders superhuman.
WhyJoin Kai
- Well-funded:
With $125M raised, we have the capital, runway, and resolve to rebuild cybersecurity from first principles. - Proven:
We've earned the trust of Fortune 500 and Global 1000 companies, and we're just getting started. Their confidence in Kai reflects what we've built: an AI-powered cybersecurity platform that performs at the scale and speed the enterprise demands. - Experienced founders:
Our founding team consists of second-time entrepreneurs, each with over 20 years of experience in the cybersecurity industry. Their proven expertise and vision drive our ambitious goals. - World-class leadership team:
Our Heads of AI, Engineering, and Product bring extensive experience from some of the world’s most influential companies, ensuring top-tier mentorship, direction, and vision. - Frontier AI Applied Research Team:
Our researchers operate at the leading edge of agentic AI systems, translating breakthrough capabilities into real-world cybersecurity applications. - Generous compensation:
We offer highly competitive salaries, equity options, and a supportive work environment. Your contributions will be valued and rewarded as we grow together.
We are looking for a Principal Applied AI Scientist to lead the design and deployment of cutting-edge Generative AI and LLM-powered systems for real-world, high-impact applications.
This is a senior, hands‑on leadership role for someone who can operate across the full stack of modern AI — from research and modeling to production systems and productization — while leading teams and defining technical direction.
You will work at the intersection of LLMs, agentic systems, retrieval architectures, and large-scale AI platforms, building systems that move beyond prototypes into robust, production‑grade intelligence systems.
What You’ll Do- Lead the end-to-end design and development of large-scale AI/ML and Generative AI systems
- Architect and deploy LLM-powered applications, including RAG pipelines and multi-agent systems
- Drive the technical vision and roadmap for applied AI across the company
- Build and lead a high-performing team of scientists and engineers
- Design scalable retrieval and embedding systems powering intelligent applications
- Develop agentic AI systems with tool use, memory, and reasoning capabilities
- Own model lifecycle: data curation → training/fine-tuning → evaluation → deployment → monitoring
- Partner with product, engineering, and executive leadership to translate business problems into AI solutions
- 7+ years of experience in Applied AI / Machine Learning / Generative AI
- Proven experience building and deploying production-grade AI systems at scale
- Demonstrated leadership managing large cross-functional teams
- Strong experience engaging with executives and product stakeholders
- Deep expertise in LLMs, RAG, and agentic AI systems at scale
- Strong system design skills across data, models, and infrastructure
- Ability to move from research ideas → production systems → business impact
- Strong ownership mindset with the ability to operate in fast-moving startup environments
- Experience with multi-agent orchestration frameworks and tool ecosystems
- Experience applying AI in cybersecurity, enterprise SaaS, or data-intensive domains
- Background in search or large-scale retrieval systems
- Large Language Models & GenAI
- RAG, Retrieval & Vector Systems
- Fine-Tuning & Model Adaptation
- Agentic AI Systems
- Prompt Engineering & Optimization
- Evaluation & Quality
- Inference & Serving
- Data Engineering & Synthetic Data
- Multimodal AI
- LLMOps & Observability
- Platforms & Infrastructure
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).