Solution Data Scientist
Role details
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Job description
Are you a data scientist with a passion for analytical depth, scientific curiosity, and clear communication? Looking to guide customers in leveraging advanced AI-driven digital twins for bioprocess optimization?, Proclinical is seeking a highly motivated and scientifically minded Solution Data Scientist to join our customer-facing data science team. In this role, you will manage customer projects end-to-end: From data intake and preprocessing to building hybrid models using our proprietary technology and delivering scientifically sound and actionable insights to our clients.
You will act as the technical bridge between our customers and our modeling platform-capable of understanding biological processes, interpreting model results, and communicating them in a clear, impactful, and business-relevant way., Customer Project Execution
- Lead and manage customer modeling projects from data acquisition to result delivery.
- Build, calibrate, and validate hybrid models combining mechanistic and AI-based approaches.
- Translate biological and process data into predictive models of cell culture behavior.
Data Science and Modeling
- Apply statistical modeling, machine learning, and hybrid modeling techniques to bioprocess data.
- Design and execute virtual experiments to predict and optimize process performance.
- Ensure scientific rigor, reproducibility, and documentation quality throughout the modeling process.
Customer Engagement and Communication
- Communicate results and insights effectively to both scientific and non-technical audiences.
- Collaborate with customers to define modeling goals, interpret outcomes, and identify opportunities for further value creation.
- Serve as a trusted advisor and key technical contact during and after project execution.
Cross-Functional Collaboration
- Work closely with application scientists, ML engineers, and product teams to enhance our modeling workflows.
- Contribute to the continuous improvement of internal tools, best practices, and modeling frameworks., Clinical Administrator Clinical Development Clinical Operations Clinical Program Manager Clinical Project Manager Clinical Research Associate Clinical Research Nurse Clinical Research Scientist Clinical Services Clinical Study Manager Clinical Supplies Clinical Trials Manager / Administrator Drug Safety Feasibility Investigator Patient Recruitment Pharmacoeconomics Pharmacovigilance Study Site Coordinator Study Start Up
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Requirements
- MSc or PhD in Data Science, Systems Biology, Bioprocess Engineering, Computational Biology, or related field.
- Prior experience in a customer-facing data science or scientific consulting role.
- Experience with hybrid or mechanistic modeling of biological systems.
- Familiarity with biopharmaceutical development or process modeling workflows.
- Strong background in data science, applied mathematics, or computational biology.
- Proficiency in Python and relevant data science/ML libraries (NumPy, Pandas, SciPy, PyTorch, JAX, Scikit-learn).
- Understanding of mechanistic modeling concepts (ODEs, kinetic models, or hybrid modeling approaches).
- Familiarity with bioprocess or omics data is highly desirable.
- Profound experience in data visualization, model validation, and result presentation.
- Working knowledge of cloud environments (Azure, AWS, or GCP) is a plus.
- Outstanding communication skills, capable of conveying complex modeling concepts to executive stakeholders and cross-functional teams.
- Strategic thinking with a proven ability to align technical initiatives with business objectives.
- Leadership and mentoring abilities to inspire and grow technical teams.
- High-level problem-solving mindset and passion for innovation in biopharma digitalization.