Company Description
About AbbVie
AbbVies mission is to discover and deliver innovative medicines and solutions that solve serious health issues today and address the medical challenges of tomorrow. We strive to have a remarkable impact on peoples lives across several key therapeutic areas including immunology, oncology and neuroscience - and products and services in our Allergan Aesthetics portfolio. For more information about AbbVie, please visit us at www.abbvie.com. Follow @abbvie on LinkedIn, Facebook, Instagram, X and YouTube.
Job Description
The Computational Toxicology group is dedicated to advancing in-silico approaches that improve the prediction and mechanistic understanding of drug safety across small molecules, biologics, and emerging modalities. This role sits at the intersection of biological science and computational innovation and that intersection is intentional.
We are looking for a scientist with deep domain knowledge in biology who has also developed computational skills to independently design, build, and deploy data-driven solutions. The ideal candidate can stand at the bench conceptually, understand what drives experimental variability, and architect computational solutions that reflect biological reality.
The role focuses on integrating diverse data sources including pharmacology, toxicology, genomics, pathology, chemistry, and clinical datasets into predictive and interpretable models. You will work directly with research scientists to understand their workflows, co-design solutions, and build tools that make computational capabilities accessible to generalist scientists across Development Sciences.
Responsibilities
Clearly communicate methods and results to multidisciplinary stakeholders, tailoring messages for both technical and non-technical audiences
Qualifications
Senior Scientist I Qualifications: Bachelors Degree and typically 10 years of experience OR Masters Degree and typically 8 years of experience, OR PhD and no experience necessary.
Senior Scientist II Qualifications: Bachelors Degree and typically 12 years of experience OR Masters Degree and typically 10 years of experience, OR PhD and 4 years of experience
PhD in Computational Biology, Biology, Pharmacology, Biochemistry, or a related life science field, with meaningful exposure to computational methods through coursework, dissertation research, or applied experience. Postdoctoral or industry experience preferred
A genuine scientific foundation in biology whether through formal training, research experience, or applied industry work sufficient to critically evaluate experimental data, identify biological confounders, and contextualize computational outputs in mechanistic terms.
Scientific coding fluency in Python (preferred) or R. We do not expect a software engineering background we expect the ability to write clean, functional, reproducible code in service of scientific questions.
Working knowledge of machine learning applied to biological or safety datasets, with the ability to select and justify methods based on scientific context, not just algorithmic performance.
Strong foundation in statistical and applied analytical methods, including hypothesis testing, Bayesian inference, regression, multivariate, and time-series analyses.
Expertise in advanced machine learning, including deep learning, supervised/unsupervised clustering, and classification algorithms (e.g., SVMs, random forests, gradient boosting).
Demonstrated ability to communicate computational approaches and results to non-computational scientists, including presenting analytical strategies and translating findings into actionable scientific insights.
Preferred
Demonstrated experience working with pathology and/or safety datasets; familiarity with integrating histopathology, clinical pathology, or safety study data into computational workflows.
Hands-on wet lab experience (e.g., experimental design, assay development, or mechanistic biology studies) that informs a deeper understanding of data generation, variability, and biological constraints.
Experience with scalable computing (parallelization, cloud platforms) and database querying for large biological datasets.
Experience with generative AI (GANs, VAEs) or large language models (LLMs) in a scientific context.
Experience in data visualization and interface development, with an emphasis on presenting biological and safety-related data intuitively for non-technical users.
Additional Information
Applicable only to applicants applying to a position in any location with pay disclosure requirements under state or local law: ?
The compensation range described below is the range of possible base pay compensation that the Company believes in good faith it will pay for this role at the time of this posting based on the job grade for this position. Individual compensation paid within this range will depend on many factors including geographic location, and we may ultimately pay more or less than the posted range. This range may be modified in the future. ?
We offer a comprehensive package of benefits including paid time off (vacation, holidays, sick), medical/dental/vision insurance and 401(k) to eligible employees.?
This job is eligible to participate in our long-term incentive programs. ?
Note: No amount of pay is considered to be wages or compensation until such amount is earned, vested, and determinable. The amount and availability of any bonus, commission, incentive, benefits, or any other form of compensation and benefits that are allocable to a particular employee remains in the Companys sole and absolute discretion unless and until paid and may be modified at the Companys sole and absolute discretion, consistent with applicable law.?
AbbVie is an equal opportunity employer and is committed to operating with integrity, driving innovation, transforming lives and serving our community. Equal Opportunity Employer/Veterans/Disabled.
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