Principal Data Scientist - AI Context Architect (Semantic & Context Engineering)
Principal Data Scientist - AI Context Architect (Semantic & Context Engineering)
US - California - Thousand Oaks Apply NowJoin Amgen’s Mission of Serving Patients
At Amgen, if you feel like you’re part of something bigger, it’s because you are. Our shared mission—to serve patients living with serious illnesses—drives all that we do.
Since 1980, we’ve helped pioneer the world of biotech in our fight against the world’s toughest diseases. With our focus on four therapeutic areas –Oncology, Inflammation, General Medicine, and Rare Disease– we reach millions of patients each year. As a member of the Amgen team, you’ll help make a lasting impact on the lives of patients as we research, manufacture, and deliver innovative medicines to help people live longer, fuller happier lives.
Our award-winning culture is collaborative, innovative, and science based. If you have a passion for challenges and the opportunities that lay within them, you’ll thrive as part of the Amgen team. Join us and transform the lives of patients while transforming your career.
Principal Data Scientist
What you will do
Let’s do this. Let’s change the world. In this vital role you will serve as a senior individual-contributor authority onsemantic modeling, context engineering, and AI-first data science—enabling high-performing classical ML, reinforcement learning–informed approaches, and generative AI systems throughwell-architected context.
This role functions as an“AI Context Architect”(titled as a Data Scientist): asemantic architectwho can define domain entities (e.g., payer, provider, patient, product, site, indication) and the relationships between them, so thatdata + contextreliably drive model reasoning, retrieval, and downstream decisions. You will design the semantic foundations that make AI systems accurate, explainable, governable, and performant—partnering with engineering, product, security/compliance, and domain teams acrossR&D, Manufacturing, and Commercial
Roles & Responsibilities
Semantic architecture & AI-first context modeling
- Define enterprise-grade semantic representationsfor healthcare/life-sciences concepts and specifyhow relationships and interactionsare represented for AI consumption.
- Create and maintainsemantic schemas / ontologies / knowledge-graph modelsthat describe entities, attributes, constraints, and linkages—optimized for both analytics and AI reasoning.
- Establishcontext engineering standards: how data is shaped into prompts, tools, memory, retrieval indices, and structured outputs so models behave consistently across use cases.
Feature engineering & model performance (core emphasis)
- Leadfeature engineering strategy tied directly to model performance, including feature definition, transformations, leakage prevention, stability monitoring, and explainability.
- Perform exploratory data analysis on complex, high-dimensional datasets to identify predictive signals andcontext variablesthat improve model robustness and generalization.
Context-aware ML, GenAI, and reinforcement learning–informed approaches
- Build and evaluatecontext-aware ML/GenAI solutions, integrating semantic layers with retrieval, tools, and structured outputs.
- Applyreinforcement learning concepts(reward modeling, policy optimization intuition, offline evaluation, exploration/exploitation framing) to improve decisioning, ranking, orchestration, and system behavior—without overfitting to short-term metrics.
- Prototype and benchmark algorithms and approaches (classical ML, deep learning, LLM-based reasoning) and advise onscalability and production readiness.
Retrieval, knowledge, and governance foundations
- Architect and implementretrieval and memory patterns(RAG, vector stores, knowledge graphs, session memory).
- Definedata quality and semantic quality gates(entity completeness, relationship validity, taxonomy drift, grounding coverage) that impact downstream model reliability.
Cross-functional leadership
- Translate domain needs intosemantic + AI roadmaps, aligning stakeholders on definitions, metrics, and tradeoffs.
- Act as a principal-level mentor and technical leader: establish standards, review semantic designs, and guide teams on best practices for context engineering and feature excellence.
What we expect of you
We are all different, yet we all use our unique contributions to serve patients. The professional we seek will have these qualifications.
Basic Qualifications:
Doctorate degree and 2 years of Data Science, Computer Science, Statistics, Applied Math, or related experience
Or
Master’s degree and 4 years of Data Science, Computer Science, Statistics, Applied Math, or related experience
Or
Bachelor’s degree and 6 years of Data Science, Computer Science, Statistics, Applied Math, or related experience
Or
Associate’s degree and 10 years of Data Science, Computer Science, Statistics, Applied Math, or related experience
Or
High school diploma / GED and 12 years of Data Science, Computer Science, Statistics, Applied Math, or related experience
Preferred Qualifications:
- 10–12+ yearsapplying data science in enterprise environments with demonstrated principal-level influence (or equivalent depth of expertise).
- Deep expertise insemantic modeling: ontologies, taxonomies, entity resolution, knowledge graphs, metadata and data contracts—built for operational use.
- Strong understanding ofmachine learning fundamentalsand performance drivers, especiallyfeature engineeringand evaluation rigor.
- Practical experience implementingRAG / retrieval / vector search / knowledge graphsolutions with clear governance patterns.
- Working knowledge ofreinforcement learning conceptsand how they apply to ranking, orchestration, personalization, or decision systems (even if not “pure RL” production).
- Proficiency inPython(and strong comfort with modern data/ML stacks); ability to collaborate effectively with engineering teams on production concerns.
- Exceptional stakeholder management: can drive alignment on, relationships, and metrics, and communicate tradeoffs clearly.
Good-to-Have Skills
- Experience inbiotech/pharmaand healthcare commercial concepts (payer/provider dynamics, formulary/coverage).
- Familiarity with agentic/tool-using LLM patterns, prompt management, and structured outputs.
- Experience with feature stores, ML observability, and robust evaluation tooling.
- Publications, conference talks, or thought leadership in semantic AI / knowledge systems / enterprise GenAI.
Soft Skills:
- Excellent analytical and troubleshooting skills.
- Strong verbal and written communication skills
- Ability to work effectively with global, virtual teams
- High degree of initiative and self-motivation.
- Ability to manage multiple priorities successfully.
- Team-oriented, with a focus on achieving team goals.
- Ability to learn quickly, be organized and detail oriented.
- Strong presentation and public speaking skills.
Certifications
- Cloud/AI certifications (AWS/Azure/GCP) are a plus.
What you can expect of us
As we work to develop treatments that take care of others, we also work to care for your professional and personal growth and well-being. From our competitive benefits to our collaborative culture, we’ll support your journey every step of the way.
The expected annual salary range for this role in the U.S. (excluding Puerto Rico) is posted. Actual salary will vary based on several factors including but not limited to, relevant skills, experience, and qualifications.
In addition to the base salary, Amgen offers a Total Rewards Plan, based on eligibility, comprising of health and welfare plans for staff and eligible dependents, financial plans with opportunities to save towards retirement or other goals, work/life balance, and career development opportunities that may include:
- A comprehensive employee benefits package, including a Retirement and Savings Plan with generous company contributions, group medical, dental and vision coverage, life and disability insurance, and flexible spending accounts
- A discretionary annual bonus program, or for field sales representatives, a sales-based incentive plan
- Stock-based long-term incentives
- Award-winning time-off plans
- Flexible work models where possible. Refer to the Work Location Type in the job posting to see if this applies.
Apply now and make a lasting impact with the Amgen team.
careers.amgen.com
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Application deadline
Amgen does not have an application deadline for this position; we will continue accepting applications until we receive a sufficient number or select a candidate for the position.
Sponsorship
Sponsorship for this role is not guaranteed.
As an organization dedicated to improving the quality of life for people around the world, Amgen fosters an inclusive environment of diverse, ethical, committed and highly accomplished people who respect each other and live the Amgen values to continue advancing science to serve patients. Together, we compete in the fight against serious disease.
Amgen is an Equal Opportunity employer and will consider all qualified applicants for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, protected veteran status, disability status, or any other basis protected by applicable law.
We will ensure that individuals with disabilities are provided reasonable accommodation to participate in the job application or interview process, to perform essential job functions, and to receive other benefits and privileges of employment. Please contact us to request accommodation.