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Building a Backbone for Machine Learning Increases Speed of Discovery by 230%
Technology Category
- Analytics & Modeling - Machine Learning
- Platform as a Service (PaaS) - Data Management Platforms
Applicable Industries
- Healthcare & Hospitals
- Life Sciences
Applicable Functions
- Product Research & Development
- Quality Assurance
Use Cases
- Predictive Maintenance
- Machine Condition Monitoring
Services
- Data Science Services
- System Integration
The Challenge
Enveda Biosciences, a company that uses a computational metabolomics platform to discover new chemicals for drug development, was facing challenges in organizing and scaling their foundational data. The company was generating a large amount of structure-activity relationship (SAR), biomarker, and mechanistic readout data that they could no longer manage with siloed data solutions. They needed a data platform that could automatically structure experimental data and feed it into their machine learning pipelines. The platform also needed to be intuitive and user-friendly, as well as capable of handling robust and iterative data models customized to Enveda’s use case.
About The Customer
Enveda Biosciences is a company that uses the power of nature’s chemistry to inspire new medicines for the toughest diseases. Their core technology is a computational metabolomics platform, which works like a powerful chemical search engine to unearth millions of new chemicals from mass spectral data, link them to activity in preclinical assays, and inspire drug-like modifications at scale. They are using this technology to create a diverse range of chemical libraries to target hitherto undruggable disease mechanisms, and “reverse translate” active leads in long-used medicinal plants into successful drugs.
The Solution
Enveda Biosciences chose Benchling as their data platform solution. Benchling's user-friendly interface and high adoption rates made it an ideal choice for Enveda. The platform also offered a user-configurable data model that could handle the high volume of multi-dimensional data that Enveda needed to process. Benchling's solution was designed to scale, which meant that Enveda could rely on it as their data production increased exponentially. The platform also offered solutions for process managers and larger teams, making it a future-proof choice for Enveda. Benchling's centralized data storage replaced disconnected Google Slides and Excel sheets, providing Enveda with a centralized source of truth. The platform's custom data model allowed lab results to be piped directly into machine learning models, saving scientists from time-consuming data cleaning.
Operational Impact
Quantitative Benefit
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