Senior Data Scientist
Senior Data Scientist
India - Hyderabad Apply NowWhat you will do
Let's do this. Let's change the world. We are seeking a Senior Data Scientist with expertise in quantitative pharmacology, PBPK/PK/PD modeling, and translational simulation to support biologics discovery. In this vital role, you will develop and apply fit-for-purpose mechanistic modeling and simulation approaches that help discovery teams interpret complex biological and pharmacology information, generate testable hypotheses, and make data-driven decisions. You will work with appropriate scientific data in secure, governed environments while ensuring modeling assumptions, documentation, and outputs are reproducible and decision-ready.
The successful candidate will work in a collaborative, multidisciplinary environment, partnering with scientists, data scientists, translational modelers, pharmacology experts, and discovery teams to design modeling strategies, evaluate uncertainty, and translate quantitative insight into actionable recommendations.
Key Responsibilities
Develop and apply PBPK, TMDD, PK/PD, exposure-response, and related quantitative models for biologics discovery and translational questions
Translate complex scientific information into quantitative assumptions, scenarios, and simulations that support model-informed decision-making
Build reproducible workflows for parameter estimation, model calibration, sensitivity and uncertainty analysis, documentation, and review
Apply statistical, machine learning, or Bayesian methods where appropriate to support parameter inference, model updating, and scenario analysis
Partner with experimental and translational teams to align modeling plans, interpret results, and identify fit-for-purpose data needs
Communicate modeling assumptions, limitations, uncertainty, findings, and recommendations clearly through reports, visualizations, and presentations
Contribute to scalable model-informed drug design practices and reusable modeling frameworks that can support biologics discovery programs
What we expect of you
We are all different, yet we all use our unique contributions to serve patients. The collaborative professional we seek is a Senior Data Scientist with these qualifications.
Basic Qualifications
Doctorate degree with 4+yrs in Pharmacometrics, Quantitative Pharmacology, Pharmacokinetics, Bioengineering, Biomedical Engineering, Computational Biology, Applied Mathematics, Statistics, Data Science, or a related field
Or
Master's degree and 8+years of directly related experience
Preferred Qualifications
Experience developing PBPK, TMDD, PK/PD, exposure-response, quantitative systems pharmacology, or other mechanistic models for biologics or therapeutic discovery
Strong understanding of biologics pharmacology, target-mediated drug disposition, translational scaling, and cross-species extrapolation
Experience working with scientific, preclinical, translational, or literature-derived data sources in a data-governed environment
Proficiency with scientific computing and modeling tools such as R, Python, MATLAB, NONMEM, Monolix, mrgsolve, Stan, PyMC, SimBiology, or related platforms
Experience with model calibration, parameter estimation, sensitivity analysis, uncertainty quantification, simulation-based study design, and model documentation
Ability to translate quantitative models, assumptions, and uncertainty into clear recommendations for cross-functional scientific stakeholders
Experience supporting biologics, antibodies, protein therapeutics, translational science, quantitative pharmacology, or early drug discovery
Familiarity with reproducible scientific computing practices, including version control, workflow automation, code review, testing, documentation, and data provenance
Strong scientific communication skills, with peer-reviewed publications in venues such as CPT: Pharmacometrics & Systems Pharmacology, Journal of Pharmacokinetics and Pharmacodynamics, Clinical Pharmacokinetics, or comparable journals; candidates are encouraged to highlight representative publications on their resume.