Healthcare
Improve ML modeling of patient outcomes, personalize care, disease prediction, and more
Dark Matter thrives in complex problem settings
Discovery and Development
Predict effectively across large, complex population datasets and limited, spares patient groups with ease.
Performance with Privacy
See deep learning level ML results with fully explainable models, all within your network using Dark Matter’s on-prem deployment
Personal Care for Every Patient
Bring personalization to full fruition by providing recommendations and personalized care plans and treatment calibrated to every patient.
Retain control of your data and models
Slots in Seamlessly
Surprisingly lightweight, Dark Matter represents a transformative new step in the data science pipeline that doesn’t alter your existing processes.
Domain and Model Agnostic
We make any model in any domain better simply by creating richer representations of the relationships in your existing data.
Secure Integration
Integration is available on-premises or via cloud API. Retain total control of your pipeline, keeping the privacy and integrity of your data intact.
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Frequently Asked Questions
Dark Matter is available for on-premises installation on your machine and using your compute resources, enabling you to retain complete control over your proprietary data. On-prem deployment ensures that we never see your data.
We encourage you to try Dark Matter with your data and model to compare the results with your existing pipeline. Most customers use it in a testing environment with sample data to minimize resource requirements before putting it into production. If you’d like to set up a trial, please fill out the form here and we will be in touch.
While Dark Matter does create new variables, its mechanics are fundamentally different. Traditional synthetic data recreates existing distributions from Gaussian noise, so no new information is created. This has the virtue of anonymizing data (which is essential for some regulated industries), but it has minimal impact on predictive accuracy as it mirrors the statistical properties of your data.
In contrast, Dark Matter learns how to create embeddings that have different statistical properties and distributions. Using our new machine learning algorithm, it’s able to converge on nearly orthogonal features that measurably improve predictive accuracy.
One of the primary benefits of Dark Matter is that it lowers the barrier to useful predictive performance by creating richer representations of your data. That said, there is a theoretical minimum threshold of data quality and volume that can be useful (i.e. if what you’re working with is mostly noise, it probably won’t help). Our rule of thumb is that if you have a working data science pipeline that’s generating mediocre predictions, Dark Matter can improve its performance.
Research
Feature Enhancement: A New Approach for Representation Learning (Whitepaper)
Discover a novel approach to representing complex, non-linear relationships inherent in real-world data.