Posted 25 June, 2026

Job Id: 628943

Computational Scientist II


Location: South San Francisco, CA
Category: Data Sciences
Salary: Apply for details
Country: United States
Employment: Contract
Worksite: On-Site
Apply For This Position

Job Description

Description:

The Opportunity

In our Developmental Sciences (DevSci) organization, we are transforming how quantitative drug development is conducted through the integration of AI and agentic workflows. Our Clinical Pharmacology and Pharmacometrics (CPP) group is at the forefront of this effort, embedding large language model (LLM)-powered tools directly into pharmacometric workflows to accelerate scientific planning, analysis, and decision-making.

We are seeking a Computational Scientist to help design, build, and deploy these agentic systems. You will work at the interface of AI engineering and quantitative pharmacology, partnering closely with M&S Scientists and Clinical Pharmacologists to develop tools that are scientifically grounded, reliable, and impactful. Your contributions will help CPP scale its capabilities and free scientists to focus on higher-value work — ultimately accelerating the delivery of effective therapies to patients.

In This Role, You Will

Build and Deploy Agentic LLM Workflows

  • Design and implement LLM agent-based pipelines that automate or augment complex scientific workflows within the CPP group.

  • Develop human-in-the-loop systems that allow scientists to collaborate with AI tools through natural language, iterative feedback, and structured outputs.

  • Integrate domain-specific context — such as internal guidelines, templates, and scientific reference materials — into LLM workflows to ensure outputs meet scientific and regulatory standards.

  • Package reusable LLM workflow components and libraries, and ensure tools are production-ready, well-documented, and accessible to scientist users with varying technical backgrounds.

Develop Quality and Evaluation Infrastructure

  • Build automated quality control layers to evaluate LLM outputs against structural, scientific, and consistency criteria.

  • Design evaluation frameworks to measure output quality, efficiency gains, and failure modes over time.

  • Maintain versioned evaluation logs and contribute to periodic reports supporting tool improvement and stakeholder communication.

Collaborate and Innovate

  • Work closely with pharmacometricians, data scientists, and automation engineers to understand scientific requirements and translate them into robust system designs.

  • Stay current with advances in LLM tooling, agentic frameworks, and AI applications in drug development and R&D.

  • Contribute to the broader DevSci AI adoption by sharing learnings and best practices across functions as well as providing trainings.

Who You Are

Education

You hold or are pursuing a Master’s or PhD degree in a quantitative or computational field, such as Computer Science, Data Science, Bioinformatics, Computational Biology, Pharmaceutical Sciences, or a related discipline. OR BA/BS w/ 5 years min exp

Domain Knowledge

Familiarity with the drug development or pharmaceutical R&D context is strongly preferred. Candidates with an awareness of clinical development processes, quantitative sciences, or life sciences research — and a genuine interest in applying AI to advance drug development — will thrive in this role. 

Software and AI/LLM Engineering

Solid software engineering experience and familiarity with standard development practices — version control (Git), code review, documentation, and working effectively within collaborative codebases are expected. Comfortable working with structured and unstructured data, and able to pick up new tools and frameworks quickly. Prior exposure to LLM applications is a big plus — whether through building and deploying LLM-powered pipelines, working with agentic frameworks such as LangSmith, retrieval-augmented generation (RAG) architectures, harness engineering or guardrail design, or integrating LLM APIs into functional tools. Familiarity with cloud platforms (AWS, GCP, or Azure) and a portfolio of relevant projects are also welcomed.

Ways of Working

  • Collaborative and communicative — able to bridge engineering and scientific perspectives and explain technical decisions clearly.

  • Self-directed and ownership-oriented, with a track record of delivering in ambiguous or evolving project environments.

  • Curious and motivated by the intersection of AI technology and real-world scientific impact.

Why This Role

This is a meaningful opportunity to shape how AI is applied to one of the most knowledge-intensive processes in drug development. You’ll have real ownership over the tools you build and direct collaboration with the scientists who rely on them — contributing to greater efficiency, consistency, and scientific quality across the CPP group and beyond.

Pay Rate Range: $35-47/hr depending on experience 

Equal Opportunity Employer

We are proud to be an equal opportunity employer. We welcome and encourage applications from all qualified candidates regardless of race, sex, gender identity or expression, disability, age, religion or belief, sexual orientation, or any other characteristic protected by applicable laws and regulations. It is our policy not to discriminate against any applicant or employee, and we are committed to fostering a diverse, inclusive, and respectful work environment across all locations in which we operate. We believe that diversity, equity, and inclusion are fundamental to our mission and enhance our ability to serve clients globally. If you have a disability or require any reasonable accommodations during the application or interview process, please inform your recruiter or contact us directly so that we can explore the appropriate arrangements.

Fraud Alert

Candidate safety is a top priority at Planet Pharma. The industry has seen an increase in people falsely representing themselves as recruiters to gather personal information from job seekers. For your safety, do not provide sensitive data to anyone you have not spoken with thoroughly, never provide banking information during the application process and always double check the email address of the Recruiter to ensure it’s from an official Planet Pharma domain (@planet-pharma.com, @planet-pharma.co.uk, and @ppgadvisorypartners.com) and not a domain with an alternative extension like .net, .org or .jobs.

Job Alerts

Stay up to date with the

latest opportunities

Sign Up for Job Alerts Today →

Related Jobs

APPLY NOW