Advisory, Data Scientist - CMC Data Products
Listed on 2025-12-27
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IT/Tech
Data Analyst, Data Scientist, Data Engineer, Data Science Manager
Overview
At Lilly, we unite caring with discovery to make life better for people around the world. We are a global healthcare leader headquartered in Indianapolis, Indiana. Our employees around the world work to discover and bring life-changing medicines to those who need them, improve the understanding and management of disease, and give back to our communities through philanthropy and volunteerism. We put people first and seek individuals determined to make life better for people around the world.
Organizational &
Position Overview:
The &D organization strives to deliver creative medicines to patients by developing and commercializing insulins, monoclonal antibodies, novel therapeutic proteins, peptides, oligonucleotide therapies, and gene therapy systems. This multidisciplinary group collaborates with discovery and manufacturing teams.
We are seeking an exceptional Data Scientist with deep data expertise in the pharmaceutical domain to lead the development and delivery of enterprise-scale data products that power AI-driven insights, process optimization, and regulatory compliance. In this role, you 'll bridge pharmaceutical sciences with modern data engineering to transform complex CMC, PAT, and analytical data into strategic assets that accelerate drug development and manufacturing excellence.
ResponsibilitiesData Product Development: Define the roadmap and deliver analysis-ready and AI-ready data products that enable AI/ML applications, PAT systems, near-time analytical testing, and process intelligence across CMC workflows.
Data Archetypes & Modern Data Management: Define pharmaceutical-specific data archetypes (process, analytical, quality, CMC submission) and create reusable data models aligned with industry standards (ISA-88, ISA-95, CDISC, eCTD).
Modern Data Management for Regulated Environments: Implement data frameworks that ensure 21 CFR Part 11, ALCOA+, and data integrity compliance, while enabling scientific innovation and self-service access.
AI/ML-ready Data Products: Build training datasets for lab automation, process optimization, and predictive CQA models, and support generative AI applications for knowledge management and regulatory Q&A.
Cross-Functional Leadership: Collaborate with analytical R&D, process development, manufacturing science, quality, and regulatory affairs to standardize data products.
Deliverables include:
Scalable data integration platform that automates compilation of technical-review-ready and submission-ready data packages with demonstrable quality assurance.
Unified CMC data repository supporting current process and analytical method development while enabling future AI/ML applications across R&D and manufacturing.
Data flow frameworks that enable self-service access while maintaining GxP compliance and audit readiness.
Comprehensive documentation, standards, and training programs that democratize data access and accelerate product development.
Master’s degree in Computer Science, Data Science, Machine Learning, AI, or related technical field
8+ years of product management experience focused on data products, data platforms, or scientific data systems and a strong grasp of modern data architecture patterns (data warehouses, data lakes, real-time streaming)
Knowledge of modern data stack technologies (Microsoft Fabric, Databricks, Airflow) and cloud platforms (AWS S3, RDS, Lambda/Glue, Azure)
Demonstrated experience designing data products that support AI/ML workflows and advanced analytics in scientific domains
Proficiency with SQL, Python, and data visualization tools
Experience with analytical instrumentation and data systems (HPLC/UPLC, spectroscopy, particle characterization, process sensors)
Knowledge of pharmaceutical manufacturing processes, including batch and continuous manufacturing, unit operations, and process control
Expertise in data modeling for time-series, spectroscopic, chromatographic, and hierarchical batch/lot data
Experience with laboratory data management systems (LIMS, ELN, SDMS, CDS) and their integration patterns
Understanding of Design of Experiments (DoE), Quality by Design (QbD), and process…
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