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Pfizer
Pfizer

Breakthroughs that change patients' lives.

Postdoctoral Research Fellow - Agentic AI for Spatial Modeling of Disease Microenvironments

職種機械学習
経験Staff+
勤務地United States - California - San Diego
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We are seeking a highly motivated Postdoctoral Research Fellow to develop next-generation AI methods for modeling disease microenvironments using spatial omics, digital pathology, and language-model–based cell representations. This is a joint role spanning Oncology R&D (ORD) and Inflammation & Immunology R&D (I&I), designed to accelerate cross-portfolio discovery through integrative computational modeling of tissue architecture, immune engagement, and disease biology.

The successful candidate will work on an interdisciplinary project aimed at understanding how cellular states, spatial interfaces, and tissue architecture jointly shape therapeutic response in human disease. The postdoc will help build an agentic AI platform that integrates cell-state language models, boundary-resolved spatial profiling, and digital pathology foundation models to generate interpretable, mechanistically grounded insights from multimodal tissue data.

This role offers the opportunity to contribute to both oncology and immunology/inflammation research programs, with a strong emphasis on translational impact, biomarker discovery, reverse translation, and human disease stratification.

Role Responsibilities
The project is centered on three major scientific ideas:

  • Immune activation and suppression may be spatially restricted to defined tissue interface zones.

  • Disease transcriptional programs may regulate immune cell biodistribution, accessibility, and functional contact probability.

  • Fibroblast- and myeloid-driven suppressive niches may constrain effector-cell distribution and function.

To address these questions, the postdoc will help develop and apply methods that combine:

  • Spatial transcriptomics / spatial omics.

  • Digital pathology foundation models.

  • Cell-state language models, including scGPT, cell2sentence, etc.

  • Heterogeneity profiling based on spatial biology and/or digital pathology.

  • Agentic AI workflows for iterative multimodal reasoning and analysis.

  • Develop computational methods for spatial modeling of tumor–immune and pathogenic tissue–immune interactions using multimodal datasets.

  • Build and evaluate AI/ML workflows that integrate spatial omics, histopathology, and clinical outcome data.

  • Advance cell-state representation learning using language-model–based approaches for single-cell and spatial biology.

  • Apply and extend boundary-resolved profiling methods to quantify immune–disease interactions in spatial contexts.

  • Fine-tune and adapt digital pathology foundation models using internal histopathology datasets for biomarker discovery, reverse translation, and patient stratification.

  • Contribute to the design of an agentized AI platform for scalable analysis and reasoning over multimodal biomedical data.

  • Collaborate closely with scientists across Oncology R&D and Inflammation & Immunology R&D, including computational, translational, pathology, and biology stakeholders.

  • Present findings internally and externally, prepare manuscripts, and support the generation of new project ideas and translational hypotheses.

Reporting Structure

This postdoctoral position will be jointly monitored and mentored by investigators from both Oncology R&D and Inflammation & Immunology R&D. The postdoc will operate in a highly collaborative matrix environment and will be expected to engage with scientific mentors and stakeholders across both therapeutic areas.

Required Qualifications

  • PhD in Computational Biology, Bioinformatics, Computer Science, Biomedical Engineering, Systems Biology, Statistics, Machine Learning, or a related quantitative discipline.

  • Hands-on experience in one or more of the following areas:

  • Spatial transcriptomics and/or single-cell omics

  • Computational pathology and/or digital pathology

  • Large Language Models, Agentic AI, and their applications on computational biology.

  • Less than 2 years post-degree experience

  • Willingness to make a minimum 2-year commitment.

  • Provide two letters of recommendation

  • Demonstrated record of scientific accomplishment, evidenced by peer-reviewed scientific publications and/or conference presentations, including at least one first-author publication.

  • Proficiency in Python and modern scientific computing and machine learning frameworks.

  • Ability to work independently while collaborating effectively within a multidisciplinary research team.

  • Strong written and verbal communication skills, with the ability to clearly convey complex scientific concepts.

Preferred Qualifications

  • Experience with foundation models, representation learning, or LLM-inspired approaches in biology.

  • Experience working with whole-slide imaging, histopathology, or tissue image analysis.

  • Familiarity with spatial statistics, graph-based modeling, or boundary/interface analysis in tissue biology.

  • Experience integrating molecular, imaging, and clinical datasets.

  • Background in oncology, immunology, inflammation biology, or translational biomarker research.

  • Interest in interpretable AI and mechanistic modeling in disease biology.

  • High-impact publications, conference presentations, and internal translational assets.

Additional Information

  • High-impact publications, conference presentations, and internal translational assets.

  • Relocation is available

  • Last date to apply April 30th, 2026

The annual base salary for this position ranges from $64,600.00 to $107,600.00. In addition, this position is eligible for participation in Pfizer’s Global Performance Plan with a bonus target of 7.5% of the base salary. We offer comprehensive and generous benefits and programs to help our colleagues lead healthy lives and to support each of life’s moments. Benefits offered include a 401(k) plan with Pfizer Matching Contributions and an additional Pfizer Retirement Savings Contribution, paid vacation, holiday and personal days, paid caregiver/parental and medical leave, and health benefits to include medical, prescription drug, dental and vision coverage. Learn more at Pfizer Candidate Site – U.S. Benefits | (uscandidates.mypfizerbenefits.com). Pfizer compensation structures and benefit packages are aligned based on the location of hire. The United States salary range provided does not apply to Tampa, FL or any location outside of the United States.

Relocation assistance may be available based on business needs and/or eligibility.

Candidates must be authorized to be employed in the U.S. by any employer.

U.S. work visa sponsorship (such as TN, O-1, H-1B, etc.) is not available for this role now or in the future.

Sunshine Act

Pfizer reports payments and other transfers of value to health care providers as required by federal and state transparency laws and implementing regulations. These laws and regulations require Pfizer to provide government agencies with information such as a health care provider’s name, address and the type of payments or other value received, generally for public disclosure. Subject to further legal review and statutory or regulatory clarification, which Pfizer intends to pursue, reimbursement of recruiting expenses for licensed physicians may constitute a reportable transfer of value under the federal transparency law commonly known as the Sunshine Act. Therefore, if you are a licensed physician who incurs recruiting expenses as a result of interviewing with Pfizer that we pay or reimburse, your name, address and the amount of payments made currently will be reported to the government. If you have questions regarding this matter, please do not hesitate to contact your Talent Acquisition representative.

EEO & Employment Eligibility

Pfizer is committed to equal opportunity in the terms and conditions of employment for all employees and job applicants without regard to race, color, religion, sex, sexual orientation, age, gender identity or gender expression, national origin, disability or veteran status. Pfizer also complies with all applicable national, state and local laws governing nondiscrimination in employment as well as work authorization and employment eligibility verification requirements of the Immigration and Nationality Act and IRCA. Pfizer is an E-Verify employer. This position requires permanent work authorization in the United States.

Pfizer endeavors to make www.pfizer.com/careers accessible to all users. If you would like to contact us regarding the accessibility of our website or need assistance completing the application process and/or interviewing, please email disabilityrecruitment@pfizer.com. This is to be used solely for accommodation requests with respect to the accessibility of our website, online application process and/or interviewing. Requests for any other reason will not be returned.

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Pfizerについて

Pfizer

Pfizer

Public

Pfizer Inc. is an American multinational pharmaceutical and biotechnology corporation headquartered at The Spiral in Manhattan, New York City. Founded in 1849 in New York by German entrepreneurs Charles Pfizer (1824–1906) and Charles F.

10,001+

従業員数

New York City

本社所在地

$280B

企業価値

レビュー

10件のレビュー

4.0

10件のレビュー

ワークライフバランス

3.2

報酬

4.3

企業文化

4.1

キャリア

3.4

経営陣

3.5

72%

知人への推奨率

良い点

Good salary and competitive compensation

Supportive management and team collaboration

Innovative and interesting projects

改善点

High workload and overwhelming demands

Long hours and fast-paced environment

Limited career advancement opportunities

給与レンジ

11件のデータ

Junior/L3

Mid/L4

Senior/L5

L3

Junior/L3 · SENIOR ASSOCIATE SCIENTIST

1件のレポート

$86,450

年収総額

基本給

$66,500

ストック

-

ボーナス

-

$86,450

$86,450

面接レビュー

レビュー4件

難易度

3.0

/ 5

期間

14-28週間

面接プロセス

1

Application Review

2

HR Screen

3

HireVue Video Interview

4

Hiring Manager Interview

5

Final Interview/Panel

6

Offer Decision

よくある質問

Behavioral/STAR

Past Experience

Culture Fit

Technical Knowledge

Case Study