

Location: Seattle, WA (On-site downtown) - Hybrid
Type: Full-Time
Industry: Software (AI)
Specialty: Identity verification, fraud prevention, background screening, and risk intelligence.
Our publicly traded client develops proprietary technology and analytics to deliver identity intelligence, powering critical solutions that help organizations operate confidently. Their solutions enable real-time identification and location of people, businesses, assets, and their relationships for risk mitigation, due diligence, fraud prevention, regulatory compliance, and customer acquisition. These solutions support frictionless commerce, enhance safety, reduce fraud, and lower related societal costs.
Our client is looking for a collaborative and forward-thinking Principal Applied Scientist to join their Seattle-based AI team. In this role, your work will drive the research, development, and refinement of generative AI, agentic AI, and deep learning models and algorithms to address complex challenges in fraud detection, risk management, and identity verification.
You’ll partner with a diverse team of scientists, engineers, and product leaders to build scalable solutions that solve meaningful real-world challenges. This is an opportunity for someone who enjoys balancing research, experimentation, and hands-on product impact in a fast-moving environment where curiosity, creativity, and continuous learning are valued.
Education
Ph.D. in Computer Science, Artificial Intelligence, or a related field with a focus on: generative AI, agentic AI, deep learning, reinforcement learning, and/or graph neural networks.
-or-
Equivalent industry experience
Experience:
7+ years with Applied research in AI.
Large language models (LLMs), agentic systems, reinforcement learning, and/or graph neural networks.
Successfully shipping AI-powered products (not just publishing or prototyping).
Strengths:
Hands-on experience designing and deploying agentic AI systems, including tool usage, function calling, planning, multi-agent orchestration, retrieval-augmented generation, and evaluating agent behavior in production environments.
Pre-training and/or fine-tuning foundational large language models.
Proficiency in programming languages such as , along with expertise in s (e.g., PyTorch, TensorFlow, JAX).
Deep understanding of transformer architectures, deep learning, and generative AI, with experience in natural language processing (NLP) for generative and agentic AI applications.
Experience building and deploying scalable AI/ML solutions in real-world applications, including those at national or global scales.
Demonstrated ability to drive projects forward independently with minimal guidance. Ownership of ambiguous problem framing through research, prototyping, productionization, and post-launch iteration.
Bonus
Familiarity with supervised fine-tuning, RLHF/DPO, LoRA/PEFT, distillation, and large-scale distributed training.
AWS certifications related to generative AI.
Published research findings at top-tier conferences and journals.
Big Data | Research | Innovation | Problem Solving | Experimentation | Productization
You thrive in communicative, collaborative, cross-functional environments.
Comfortable working at the intersection of research and engineering, able to read papers on Friday and ship a prototype by Monday. Enjoys transforming ambiguous research ideas into reliable production systems.
Benefits: stock (RSU) grants, a 401K and generous company match, flexible PTO policy, medical, dental and vision coverage, commuter benefits, in-office healthy snacks, team events
Our client is a proud to be an Equal Opportunity Employer.