Role Description
The Senior Data Scientist will support R&D efforts in bio-polymers and sustainable materials, focusing on applying advanced data science, statistical modeling, and machine learning to experimental, process, and materials data to accelerate innovation, improve material performance, and reduce development cycles.
-
Partner with polymer scientists, chemists, and engineers to support bio-polymer research and development using data-driven methods.
-
Analyze and model experimental, formulation, and process data to identify structure–property–process relationships.
-
Develop predictive models to support:
-
Material performance and property optimization.
-
Formulation design and screening.
-
Scale-up and process optimization.
-
Design and analyze experiments (DOE) to maximize learning efficiency and reduce development timelines.
-
Build and maintain reproducible data workflows for R&D data ingestion, cleaning, and analysis.
-
Apply machine learning techniques (e.g., regression, classification, clustering, time-series modeling) to complex scientific datasets.
-
Collaborate with data engineering and IT teams to enable scalable data infrastructure for R&D.
-
Communicate insights, tradeoffs, and recommendations clearly to technical and non-technical stakeholders.
-
Understanding of data visualization best practices.
-
Experience working with batch or streaming data processes a plus.
-
Contribute to data dictionaries and process flow diagrams for complex data solutions.
-
Mentor junior data scientists or technical staff and contribute to data science best practices within R&D.
-
Stay current with advances in materials informatics, polymer modeling, and applied AI in scientific research.
Qualifications
-
Bachelor’s degree in Data Science, Computer Science, Statistics, Materials Science, Chemical Engineering, or a related field; Master’s or PhD preferred.
-
10+ years of professional experience in data science, applied analytics, or scientific computing; experience working with materials science, polymer science or chemical R&D data preferred.
-
Strong proficiency in Python and/or R for data analysis and modeling.
-
Solid experience with SQL and working with structured and semi-structured datasets.
-
Strong foundation in statistics, experimental design, and multivariate analysis.
-
Demonstrated experience applying machine learning to real-world, noisy scientific or experimental data.
-
Ability to work effectively in a cross-functional R&D environment.
-
Strong communication skills with the ability to translate complex analyses into actionable insights.
-
Familiarity with bio-polymers, sustainable materials, or polymer processing preferred.
-
Experience with DOE software, laboratory data management systems (LIMS), or scientific databases preferred.
-
Experience deploying models to support R&D decision-making or manufacturing scale-up preferred.
-
Familiarity with cloud platforms (e.g., AWS, Azure) and data science lifecycle tools preferred.
-
Prior experience mentoring or leading technical projects preferred.
Benefits
-
Competitive pay.
-
Extensive benefits that support you and your family.
-
Exciting career development opportunities.
-
Ongoing training and support to enhance your skills or advance your career.