2026 年 7 月 16 日
See Model Designer in action
Want the full picture? Watch the on demand webinar to see Model Designer and the NLME MCP Server demonstrated live, from building a model in the browser through a complete AI assisted population PK analysis. See every step from a raw dataset to a final, reproducible report.
常见问题解答
What is Certara Model Designer?
Model Designer is a cloud based pharmacometric modeling tool that runs in the browser with no installation. It lets scientists browse a curated model library, configure PK, PD, and PK/PD models through guided wizards, author PML directly, and simulate and visualize model behavior in real time, with AI guidance at every step.
Do I need to know how to code to use Model Designer?
No. Model Designer is built for pharmacometricians rather than software engineers. Guided wizards frame each modeling decision in familiar terms, while the annotated PML and context aware AI assistant help you learn the syntax as you go. Experienced users can still drop straight into PML authoring for full control.
What is the NLME MCP Server, and which tools does it work with?
The NLME MCP Server is a Model Context Protocol connector that links AI coding environments such as Cursor, OpenAI Codex, and Claude Code to the Phoenix NLME engine and the RsNLME packages. It provides purpose built tools for tasks like NLME fits, visual predictive checks, and PML validation, and it produces reproducible R scripts you can keep, share, and rerun.
How does Model Designer fit into the wider Phoenix Cloud roadmap?
Model Designer and the NLME MCP Server are the now phase, the smart front end on top of the NLME engine and RsNLME. The next phase adds elastic cloud compute and a cloud Model Workbench, and a later phase adds Model Discovery powered by Darwin and a Simulation Studio for trial design, all designed to connect into one workflow.
参考文献
1. Tosca EM, Aiello L, De Carlo A, Magni P. Pharmacometrics in the age of large language models: a vision of the future. Pharmaceutics. 2025;17(10):1274. https://doi.org/10.3390/pharmaceutics17101274
2. Androulakis IP, Cucurull-Sanchez L, Kondic A, et al. The dawn of a new era: can machine learning and large language models reshape QSP modeling? J Pharmacokinet Pharmacodyn. 2025;52(4):36. https://doi.org/10.1007/s10928-025-09984-5
3. Marshall S, Madabushi R, Manolis E, et al. Model informed drug discovery and development: current industry good practice and regulatory expectations and future perspectives. CPT Pharmacometrics Syst Pharmacol. 2019;8(2):87-96. https://doi.org/10.1002/psp4.12372
4. Pan X, Wang L, Liu J, et al. Model informed approaches to support drug development for patients with obesity: a regulatory perspective. J Clin Pharmacol. 2023;63 Suppl 2:S65-S77. https://doi.org/10.1002/jcph.2349
5. Mao B, Gao Y, Xu C, Macha S, Shao S, Ahamadi M. Evaluating the impact of AI based model informed drug development (MIDD): a comparative review. AAPS J. 2025;27(4):102. https://doi.org/10.1208/s12248-025-01075-0
Explore the engine behind Model Designer
Model Designer and the NLME MCP Server are built on Phoenix, the fastest, best converging NLME engine on the market. See how Phoenix supports PK, PD, popPK, and toxicokinetic analysis across your programs.

Arjen Bos
Principal Product Manager, CertaraArjen is a product manager with more than 20 years of experience in the life sciences industry. He joined Certara two years ago and is involved with a variety of Phoenix Cloud modules.

James Craig, MS
Principal Software Engineer, PMxJames is a Staff Software Engineer with 14 years of experience developing scientific and pharmacometric software in highly collaborative, cross-functional environments. He specializes in statistical computing, modeling workflow systems, and scientific application development, with deep expertise in R, Shiny, Python, and domain-specific languages for Non-Linear Mixed-Effects Modeling, including PML for Phoenix NLME and NMTRAN for NONMEM. James also has strong experience in enterprise and cloud-native web application development, including Java, JavaScript/TypeScript, React, database systems, APIs, and containerized execution environments. His work bridges pharmacometrics, software engineering, applied statistics, and machine learning, and he has coauthored seven scientific publications in leading journals.



