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Modeling Simulation Biology Jobs (NOW HIRING)

Modeling & Simulation: Experience with mathematical modeling of biological processes and molecular dynamics. * Problem-Solving: Excellent analytical thinking to translate biological questions into ...

Modeling & Simulation: Experience with mathematical modeling of biological processes and molecular dynamics. * Problem-Solving: Excellent analytical thinking to translate biological questions into ...

Modeling & Simulation: Experience with mathematical modeling of biological processes and molecular dynamics. * Problem-Solving: Excellent analytical thinking to translate biological questions into ...

Modeling & Simulation: Experience with mathematical modeling of biological processes and molecular dynamics. * Problem-Solving: Excellent analytical thinking to translate biological questions into ...

Modeling & Simulation: Experience with mathematical modeling of biological processes and molecular dynamics. * Problem-Solving: Excellent analytical thinking to translate biological questions into ...

... and models and initiates requests for equipment maintenance. Administration * Supports simulation ... Bachelor's Degree in a biological science or healthcare-related field or equivalent combination of ...

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Modeling Simulation Biology information

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$39K

$101.3K

$144K

How much do modeling simulation biology jobs pay per year?

As of Jun 7, 2026, the average yearly pay for modeling simulation biology in the United States is $101,255.00, according to ZipRecruiter salary data. Most workers in this role earn between $78,500.00 and $129,500.00 per year, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as a Modeling Simulation Biologist, and why are they important?

To thrive as a Modeling Simulation Biologist, you need strong foundations in computational biology, mathematics, and systems biology, often supported by an advanced degree such as a PhD in a related field. Proficiency in simulation software (e.g., MATLAB, COPASI), programming languages (such as Python or R), and experience with bioinformatics tools are typically required. Critical thinking, problem-solving, and effective communication are important soft skills that enable collaboration with interdisciplinary teams. These skills are crucial for accurately modeling biological systems, interpreting complex data, and advancing research in a collaborative scientific environment.

What is modeling simulation in biology?

Modeling simulation in biology involves using computer-based models to represent biological systems and processes. These simulations allow scientists to predict the behavior of complex biological systems, test hypotheses, and analyze data in a virtual environment. By creating mathematical and computational models, researchers can explore scenarios that may be difficult or impossible to study experimentally, leading to a deeper understanding of biological mechanisms and aiding in drug development, disease research, and more.

What is the difference between Modeling Simulation Biology vs Computational Biologist?

AspectModeling Simulation BiologyComputational Biologist
Required CredentialsTypically a master's or Ph.D. in biology, bioinformatics, or related fieldsOften a master's or Ph.D. in biology, bioinformatics, or computational sciences
Work EnvironmentResearch labs, biotech companies, academic institutionsResearch institutions, biotech firms, healthcare organizations
Industry UsageUsed for simulating biological systems, drug discovery, and systems biologyUsed for analyzing biological data, genomics, and bioinformatics projects
Common Search/ComparisonModeling Simulation Biology vs Computational Biologist

While both roles involve computational skills and biological knowledge, Modeling Simulation Biology focuses on creating simulations of biological systems to understand their behavior, whereas Computational Biologists analyze biological data to uncover insights. Both careers often require similar educational backgrounds and work environments, but their primary applications differ—simulation versus data analysis.

What are some common challenges faced by professionals in Modeling Simulation Biology, and how can they be addressed?

Professionals in Modeling Simulation Biology often encounter challenges related to integrating complex biological data from various sources and ensuring the accuracy of their computational models. Collaborating closely with experimental biologists and data scientists is essential to validate model predictions and refine simulations. Additionally, staying current with rapidly evolving software tools and computational methods can be demanding but is crucial for producing reliable results. Engaging in interdisciplinary teamwork and ongoing professional development helps address these challenges and enhances career growth in this dynamic field.
Infographic showing various Modeling Simulation Biology job openings in the United States as of May 2026, with employment types broken down into 4% Internship, 2% As Needed, 76% Full Time, 12% Part Time, 2% Temporary, and 4% Contract. Highlights an 98% In-person, and 2% Remote job distribution, with an average salary of $101,255 per year, or $48.7 per hour.
Computational Biologist

Full-time

Posted 6 days ago


Job description

URUS is seeking a Computational Biologist to join our Innovation group as part of the team focused on Genetic Advancement and Trait Discovery. This role is suited for a creative and career motivated individual who brings strong expertise across multiple disciplines of genomics, bioinformatics, and systems biology. The successful candidate will lead the integration, analyses and interpretation of genomic and multi-omics data to identify biological pathways, DNA sequence motifs or genomic variation for rationale design of genetic traits to express phenotypes that significantly improve fertility, protein quality, health or well-being across cattle breeding systems.  

Acceligen, as part of the URUS group of brands, is the global leader for deployment of gene-edited traits in cattle. Acceligen has more than a decade of proven commercial expertise in trait deployment through new breeding technologies and advanced reproductive technologies. Acceligen works within a collaborative environment that includes URUS Digital, PEAK Genetics, Trans Ova Genetics, Leachman Cattle CO., and VAS with a common goal to breed "Better Cows for a Better World". The incumbent will report to the Chief Science Officer of Acceligen,who leads the Genetic Advancement and Trait Discovery team as part of the Innovation group at URUS. This position will be based in Madison, WI or New Brighton, MN. 

RESPONSIBILITIES  

The main objectives of our Innovation team are to better understand genomics and genetics at the molecular level and apply these findings to accelerate genetic improvement and reproductive efficiencies of select proprietary lineages of dairy and beef cattle.  

The Computational Biologists' goals are to deliver tools and knowledge that facilitate commercial implementation for advancing these goals in the URUS breeding program. The complex nature of the research requires a scientist with a blend of strong biology fundamentals and advanced tech skills (Python/R, ML, stats, databases, high-performance computing) to analyze large biological datasets, model complex systems, and develop predictive tools, alongside possessing creative analytical and problem-solving abilities and interdisciplinary communication skills to bridge biology and computer science for breakthroughs of economic importance to cattle genetics.  

PROFESSIONAL QUALIFICATIONS AND EXPERIENCE 

  • Ph.D. in Computational Biology, Systems Biology, Genome Science, or a related field. 

  • Biology: Deep understanding of genetics, molecular biology, biochemistry, cellular functions, and organismal systems. 

  • Mathematics & Statistics: Expertise in probability, statistical modeling, and algorithm design. 

  • Computer Science: Principles of programming, data structures, algorithms, high-performance computing (HPC), and database management. 

  • Bioinformatics: Knowledge of specific tools, databases, and analysis methods for genomic/proteomic data.  

  • Livestock Genetics and Genomics: Knowledge and experience in working with genomic and genetic data from food animals is preferred. 

  • Programming: Proficiency in languages like Python (with libraries like Pandas, NumPy, scikit-learn) and R. Experience managing bioinformatics pipelines in Unix/Linux environments. 

  • Data Analysis & Machine Learning: Strong skills in data mining, machine learning (deep learning, pattern recognition), and biostatistics. Proficient in genome-wide association studies (GWAS) and fine-mapping methods to identify causal variants and regulatory regions. Proven experience in identifying causal variants is preferred. 

  • Data Handling: Ability to manage, integrate, analyze, and visualize large, complex datasets (e.g., Next-Gen Sequencing data and other Omics datasets). Knowledge ofSnakemake, Microsoft Azure and AzureDatabricks is preferred. 

  • Modeling & Simulation: Experience with mathematical modeling of biological processes and molecular dynamics. 

  • Problem-Solving: Excellent analytical thinking to translate biological questions into computational problems (e.g. demonstrated skill to integrate multi-omics datasets to identify target genes or regulatory motifs/mechanisms within the expressed genome that link genotype to phenotype). 

  • Communication & Collaboration: Required communication skills are fluency in English. Ability to explain complex technical findings to both technical and non-technical audiences. Includes working and communicating within interdisciplinary teams (e.g., molecular and quantitative geneticists, data scientists, and reproductive biologists). Incumbent is solely responsible for analyzing, interpreting, and reporting research data. Results, in the form of manuscripts, reports, and presentations at scientific meetings, are considered authoritative and technically accurate.  

  • Research Acumen: Skill in formulating hypotheses, finding relevant data, and designing computational experiments.  

  • Adaptability: Eagerness to learn new methods and tools to tackle evolving biological challenges. 

  • Attention to Detail: Precision in coding, data interpretation, and validation. 

  • Strategic Planningfor Innovation: 

  • Incumbent is responsible for planning specific research approaches and designing experimental schemes to achieve research objectives.  

  • Contribute to long-term research planning and innovation strategies, which include activeparticipationin team and cross-functional meetings. 

  • Originality and creativity are required to integrate appropriate company resources, methodologies, technologies into a cohesive set of analyses that successfully characterize genome structure and function.  

  • Originality and creativity are also required to integrate complex datasets from separate functional and structural genome studies into a federated database that channel subsequent studies towards elucidating how alterations in complex biological processes affect phenotypic expression. 

As a holding company with cooperative and private ownership, URUS is a family of businesses at the heart of the dairy and beef industry - Alta Genetics, GENEX, Genetics Australia, Leachman Cattle, Jetstream, PEAK, SCCL, Trans Ova Genetics and VAS.  Each organization has its unique identity, products, and services. These companies work globally to provide cutting-edge dairy and beef genetics, customized reproductive services to maximize conceptions, dairy management information to take producers to the frontline of progressive dairy farming, and an array of products and services to help bovines reach their full genetic potential. URUS has 9 brands in 17 retail countries and employs nearly 2,800 people globally.