Life Sciences Analytics

We help life science organizations optimize production schedules, capacity utilization, and marketing effectiveness.

Home / Who we serve / Industry - Life Sciences

Accelerate digital transformation with data-driven engineering and predictive analytics

The top challenges in the life sciences industry include a lack of high-quality data sources, difficulties in integrating diverse data, and the absence of cross-functional analytics teams. At Sigmoid, we specialize in delivering data engineering and advanced analytics solutions tailored specifically for life science organizations. Our cross-technology expertise helps integrate diverse data sources, clean and prepare complex data for ML modeling and build innovative analytics solutions to deliver faster insights for pharmaceuticals, biotechnology, and life science companies.

Building org-wide capabilities with life science data and analytics services

Reduce operational margins by increasing the efficiency of your entire manufacturing process from procurement to production.


  • Quality control and monitoring
  • Overall equipment effectiveness
  • Master production scheduling
  • Schedule adherence
manufacturing process from procurement to production.

Data processing, ML model development, and forecasting help optimize inventory planning, scheduling, and overall supply chain costs.


  • Demand forecasting
  • Cost driver analysis
  • Procurement analytics
  • Vendor management
Warehouse management software

Optimize sales and marketing efforts by powering sales force sizing, territory alignment, call planning, and incentive compensation.


  • Sales forecasting
  • eCommerce analytics for consumer healthcare
  • Marketing attribution
  • Promotion response modeling
Optimize sales and marketing efforts
Option: Discover the cure for data dilemmas and accelerate lab to market speed with tailored life science data solutions.

What we do

High-volume data integration

High-volume data integration

Collect, integrate, and analyze high-volume data from diverse sources to create centralized data hubs for commercial business insights.

Granular metric <analysis></analysis>

Granular metric analysis

Perform granular analysis of metrics like average ingredient cost per prescription and drug utilization to increase revenue.

Visualization of complex data

Visualization of complex data

Enable better decision-making with faster reporting and visual insights for research, clinical trials, and healthcare operations.

Customer success stories

Insights and perspectives

Whitepaper Data analytics team

How to build a data analytics team for digital business

Blog data validation for long-term data success

Why is data validation crucial for long-term data success

Infographic Data strategy on cloud

Checklist to evaluate a data strategy on the cloud