Computational Scientist Lead - DBM

Sanofi
Barcelona, Spain
12 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Barcelona, Spain

Tech stack

Agile Methodologies
Artificial Intelligence
Amazon Web Services (AWS)
Data analysis
Azure
Clinical Data Repository
Data Cleansing
Information Engineering
Data Structures
Python
Machine Learning
NumPy
TensorFlow
Scientific Computating
SciPy
SQL Databases
Data Streaming
Feature Engineering
PyTorch
Snowflake
Pandas
Scikit Learn
Information Technology
Data Analytics
Feature Extraction
Data Pipelines
Database Tools and Utilities

Job description

At Sanofi, we chase the miracles of science to improve people's lives. We believe our cutting-edge science and manufacturing, fueled by data and digital technologies, have the potential to transform the practice of medicine, turning the impossible into possible for millions of people. As one of the leading investors in life sciences, manufacturing and research and development, we focus on delivering new and better ways to address unmet medical needs. Our products empower self-care, prevent and treat diseases, and help people live better.

The R&D Data & Computational Sciences Team is a key team within R&D Digital, focused on developing and delivering Data and AI products for R&D use cases. This team plays a critical role in pursuing broader democratization of data across R&D and providing the foundation to scale AI/ML, advanced analytics, and operational analytics capabilities. Specifically, the Data for New Technologies group focusses on developing AI models to support initatives involving Digital Biomarkers, Spatial Transcriptomics, Digital Histopathology and other emerging data modalities.

As a Computational Scientist specializing in Digital Biomarkers, you will join a dynamic team committed to advancing strategic and operational digital priorities within R&D. In this role, you will analyze complex, multimodal patient data collected from digital sensors and wearables, integrate these data streams with clinical trial and disease outcomes, and develop robust models that extract clinically meaningful insights. You will contribute to the design and validation of digital biomarkers by creating algorithms that capture patient functioning in real-world settings and by building models that combine multiple data modalities (such as physiology, clinical, imaging, etc.) to deepen disease understanding and support decision-making across programs.

You will have the opportunity to work across multiple digital biomarker initiatives, collaborating closely with clinical, operational, biostatistics, and data teams to transform raw patient-generated data into actionable scientific and clinical insights., * Evaluate feasibility of developing digital biomarkers and analysis pipelines from complex sensor-based patient data (e.g., wearables, smartphone sensors, passive monitoring).

  • Conduct advanced analyses of high-frequency, multimodal patient data to extract features related to physiology, behavior, function, and symptoms.
  • Develop machine learning and statistical models to derive robust clinical measurements, including models that may combine multiple data modalities and link them to clinical outcomes.
  • Integrate digital biomarker outputs with data from other R&D products, such as clinical trial datasets, disease progression models, or real-world evidence sources.
  • Communicate scientific results through clear visualizations, dashboards, and structured summaries that support decision-making by clinicians, program teams, and leadership.
  • Contribute to regulatory and medical submissions, ensuring models, analyses, and digital biomarkers meet appropriate scientific and quality standards.
  • Drive publication of methodologies and results in scientific journals and conferences to advance the field of digital biomarkers and sensor-based analytics.
  • Contribute to data pipelines and features required to operationalize digital biomarkers at scale, partnering with data engineering and product teams.
  • Provide scientific and analytical guidance to junior team members on study design, modeling strategies, feature engineering, and validation methodologies.
  • Identify opportunities for innovation in digital endpoint development, multimodal modeling, and use of real-world or continuous monitoring data.
  • Collaborate on the development of ML algorithms for new and emerging data modalities beyond the Digital Biomarkers area, supporting cross-functional innovation and broader analytical capabilities.
  • Drive knowledge-transfer to other areas, enabling broader adoption of modeling approaches, and analytic frameworks across the organization.
  • Collaborate on the development of ML algorithms for new data modalities.
  • Stay current on industry trends, emerging technologies, and best practices in data product engineering and AI.
  • Contribute to a team culture of of innovation, collaboration, and continuous learning within the product team.

Requirements

5+ years of experience in data science, machine learning, biomedical data analysis, digital biomarker development, and/or related quantitative fields., * Bachelor's or Master's degree in data science, computer science, biomedical engineering, applied mathematics, statistics, or a related quantitative discipline.

  • Strong proficiency in data analytics and modeling tools, including Python, scientific computing libraries (NumPy, SciPy, Pandas), machine learning frameworks (scikit-learn, PyTorch, TensorFlow), and statistical software.
  • Hands-on experience analyzing complex, high-frequency or sensor-based datasets, such as wearable devices, smartphone sensors, actigraphy, digital phenotyping data, or physiological signals.
  • Proficiency in machine learning, including feature engineering, model development, validation, and interpretation for multimodal or clinical data.
  • Strong communication and collaboration skills, with the ability to translate complex analyses into insights for scientific, clinical, and product stakeholders., * PhD in data science, computer science, biomedical engineering, applied mathematics, statistics, or a related quantitative discipline.
  • Experience with cloud environments, database tools, and compute workflows (e.g., AWS, Azure, Snowflake, SQL).
  • Comfort working in Agile or cross-functional product development environments, partnering with engineering, clinical, product, and science teams.
  • Experience building data pipelines and workflows, including data cleaning, feature extraction, QC pipelines, and reproducible analysis frameworks.
  • Familiarity with clinical research, clinical trial data structures, real-world evidence, or disease-area-specific biological context., Better is out there. Better medications, better outcomes, better science. But progress doesn't happen without people - people from different backgrounds, in different locations, doing different roles, all united by one thing: a desire to make miracles happen. So, let's be those people.

Benefits & conditions

  • Bring the miracles of science to life alongside a supportive, future-focused team.
  • Discover endless opportunities to grow your talent and drive your career, whether it's through a promotion or lateral move, at home or internationally.
  • Enjoy a thoughtful, well-crafted rewards package that recognizes your contribution and amplifies your impact.
  • Take good care of yourself and your family, with a wide range of health and wellbeing benefits including high-quality healthcare, prevention and wellness programs and at least 14 weeks' gender-neutral parental leave.

#LI-Hybrid #BarcelonaHub #SanofiHubs

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