
Distinguished, Data Scientist
- Bellevue, WA
- Permanent
- Full-time
- Develop LLM-powered intelligent experiences that interpret and generate insights from both tabular and unstructured data.
- Build and optimize personalized Q&A systems using large language models, enabling context-aware responses tailored to user needs.
- Design and enhance conversational talent recommendation systems, combining autonomous agent architectures with personalized recommendation algorithms.
- Advance traditional recommendation systems by evolving them from simple ranked lists to multi-topic, interactive experiences that better reflect user intent.
- Construct multi-agent intelligent workflows that translate natural language inputs into complex, goal-directed task sequences.
- Collaborate within a highly cross-functional team, including data scientists, machine learning engineers, product managers, and UX designers.
- Partner with fellow data scientists to design, prototype, and iterate on AI/ML models and system architectures.
- Work closely with machine learning engineers to deploy, monitor, and optimize scalable AI/ML solutions in production environments.
- Collaborate with product managers to design intuitive user experiences, define feedback loops, and analyze user telemetry to guide product improvements.
- Engage in end-to-end AI/ML product development, from ideation to deployment, while continually expanding your technical and product skillset.
- Follow and help define robust development standards to ensure the creation of trustworthy, safe, and responsible AI systems.
- Contribute to internal and external AI/ML research through experimentation, whitepapers, and collaboration with the broader AI community.
- Proven experience deploying high-risk NLP applications in real-world, production environments—such as those involving regulatory compliance, privacy, safety, or fairness.
- Demonstrated ability to advance and implement Trustworthy AI and Responsible ML practices, working cross-functionally with engineering, legal, policy, and product stakeholders across a large enterprise.
- Track record of mentoring and coaching junior data scientists, especially in navigating ambiguous or novel problem spaces.
- Strong applied machine learning experience, with solid foundational knowledge in statistics, optimization, and deep learning—preferably gained at leading technology companies (e.g., Google, Meta, Microsoft) or AI-first startups.
- Excellent communication skills with the ability to synthesize complex technical work into accessible insights for executive briefings, research publications, and external presentations.
- Advanced proficiency in Python and common ML/DS libraries such as NumPy, pandas, scikit-learn, as well as deep learning frameworks like TensorFlow, PyTorch.
- Experience designing and deploying scalable deep learning systems, including neural network architecture optimization, model distillation, quantization, or on-device inference.
- Strong understanding of machine learning infrastructure, including experience with Kubeflow, MLflow, Airflow is a plus.
- 8+ years of industry experience, with a demonstrated ability to take ownership of complex projects and deliver impactful AI/ML solutions from concept to production.
- Hands-on experience with Text-to-SQL or Text-to-Cypher based applications, or the design of modern recommender systems.
- Experience developing or fine-tuning large language models (LLMs), including prompt engineering, retrieval-augmented generation (RAG), or open-weight model customization.
- Publication history in top-tier ML/NLP conferences such as NeurIPS, ICML, ACL, EMNLP, or ICLR.